Prompt: Design a minimalist and bold book cover for a non-fiction title called Fork It, I Need a New Brain: A Guide to Mental Clarity and Mood Without Losing Your Mind. The book is an evidence-based yet conversational guide to eating for better cognitive function, memory, mood, and focus. It blends storytelling with science, speaking to readers who are tired of wellness fads and want practical, real-food strategies for rebooting how their brain performs—without becoming obsessive or extreme. Visual Style: Clean and high-contrast with a modern, striking visual. Use a white background with bright green as the dominant accent color. The design should be highly minimalist—no clutter, no photographic food imagery. The mood should feel intelligent, slightly rebellious, and forward-thinking. It should stand out boldly both in thumbnail view (Amazon/Kindle) and on physical shelves. Typography: Use a modern sans-serif font—sharp, clean, and unfussy. Place the main title in the center, with “Fork It” on the top line and “I Need a New Brain” below it. The subtitle should be smaller, black, and placed just beneath the title, aligned center. All-caps or dynamic text spacing can be used to heighten impact. Imagery: Include a single silver fork in the center or integrated cleverly into the title (e.g., acting as the “I” in “Fork It” or piercing through a clean white surface or soft object). Avoid brains, head silhouettes, puzzle pieces, or light bulbs. The fork should symbolize both frustration and transformation—a moment of decision. Mood Board Keywords: Minimalism, bright white, neon green, clean edge, tension, clarity, irreverent wellness, modern intelligence, cognitive refresh, food as design, less-is-more.
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Design a powerful, modern, corporate‑grade promotional infographic for Xperts Inc., an elite executive search firm. Use a light gradient background (cream → deep maroon red → Navy Blue) to symbolize strategic depth, confidentiality, and high‑stakes leadership recruitment. The design should feel corporate, psychological, and visually dramatic, reflecting the firm’s precision, integrity, and global‑class talent acquisition approach. Add the logo on the upper part in the middle Add the website www.xperts-inc.org under the logo Incorporate visual cues inspired by the firm’s website www.xperts-inc.org, including: • Clean, modern typography • Professional, minimalist layout • High‑contrast accents • Executive‑level tone and structure SECTION 1 — Title & Brand Identity (Top Center) • Large, bold title: “Xperts Inc. - Executive Search Excellence” • Subheading: “Precision. Integrity. Leadership Talent Delivered.” • Subtle geometric lines or abstract network patterns to symbolize intelligence, connectivity, and strategic insight. SECTION 2 — Core Value Proposition (Main Body) Use a multi‑column layout with high‑contrast icons and dramatic lighting. 1. Elite Executive Search • Icon: chess king or strategic map • Symbolism: leadership, strategy, top‑tier decision‑making • Text: “We identify, evaluate, and secure high‑impact leaders who transform organizations.” 2. Global Talent Intelligence • Icon: network globe or interconnected nodes • Symbolism: reach, insight, global access • Text: “Access to hidden, high‑performing executive talent across industries and regions.” 3. Confidential & Precise Recruitment • Icon: shield or lock • Symbolism: discretion, trust, risk‑free hiring • Text: “Secure, confidential searches for mission‑critical leadership roles.” 4. Cultural & Leadership Fit Assessment • Icon: interlocking shapes or harmony symbol • Symbolism: alignment, long‑term success • Text: “We match leaders not only by skill — but by values, behavior, and organizational fit.” 5. Strategic Partnership • Icon: handshake or connected pathways • Symbolism: collaboration, long‑term advisory • Text: “More than recruiters — we are advisors in organizational growth and leadership strategy.” SECTION 3 — Why Companies Choose Xperts Inc. Use lighter tones to contrast the dark background. Short, impactful statements: • “Access to hidden executive talent.” • “Faster, more accurate leadership hiring.” • “Reduced risk of mis‑hire.” • “Confidential, high‑stakes recruitment handled with precision.” • “Leadership placements that strengthen culture and performance.” Visual metaphors: • rising light • geometric beams • network grids • spotlight effects SECTION 4 — Website Call‑to‑Action (Bottom Banner) Bold, centered, elegant. Text: “Discover leadership talent that transforms organizations. Visit www.xperts-inc.org.” Visual: A soft upward glow or horizontal beam symbolizing clarity, trust, and executive‑level excellence. Xperts Inc. — Brand‑Aligned Color Palette & Iconography Guide A modern executive search brand needs a visual identity that communicates precision, trust, intelligence, and discretion. This guide is built to align with the tone and aesthetic of Xperts Inc., reinforcing its positioning as a high‑level, strategic recruitment partner. 🎨 COLOR PALETTE (Brand‑Aligned) A palette designed to feel corporate, psychological, dramatic, and elite, mirroring the dark, modern aesthetic of the website. 1. Primary Colors Deep Executive cream • Usage: Backgrounds, hero sections, high‑authority areas • Psychology: Intelligence, stability, leadership Charcoal Black • Usage: Dark gradients, overlays, structural elements • Psychology: Confidentiality, seriousness, executive presence Steel Gray • Usage: Secondary backgrounds, section dividers • Psychology: Professionalism, neutrality, clarity 2. Accent Colors Electric Blue / Maroon red • Usage: Highlights, call‑to‑action, key metrics • Psychology: Precision, innovation, intelligence Platinum Silver • HEX: #C7CCD1 • Usage: Icons, outlines, subtle emphasis • Psychology: Sophistication, refinement, modernity White Ice • HEX: #F5F7FA • Usage: Text on dark backgrounds, clean contrast • Psychology: Clarity, transparency, trust 3. Gradient Recommendation Charcoal Black (#0D0D0D) → Deep Executive Navy (#0A1A2F) • Usage: Hero banners, infographic backgrounds, promotional visuals • Effect: Dramatic, corporate, high‑impact 🔷 ICONOGRAPHY GUIDE (Corporate + Psychological + Modern) Icons should feel minimalist, geometric, and high‑contrast, reflecting the precision and intelligence of an executive search firm. 1. Style • Thin‑line or semi‑bold line icons • Rounded corners for approachability • Angular geometry for authority • Metallic or blue accents for emphasis • High contrast against dark backgrounds 2. Icon Themes for Xperts Inc. These align with the firm’s core services and messaging. Leadership & Strategy Icons • Chess king / queen • Strategic map • Compass • Lighthouse • Target with arrow Talent Intelligence Icons • Network nodes • Globe with connections • Brain‑inspired geometric patterns • Magnifying glass with data points Confidentiality & Precision Icons • Shield • Lock • Fingerprint • Document with checkmark • Secure vault Cultural & Behavioral Fit Icons • Interlocking shapes • Harmony symbol • Two silhouettes merging • Balanced scale Partnership & Advisory Icons • Handshake • Bridge • Connected pathways • Puzzle pieces fitting together 📐 Layout & Typography Recommendations To stay aligned with the brand: Typography • Primary: A modern sans‑serif (e.g., Montserrat, Inter, or Lato) • Secondary: A clean geometric font for headings (e.g., Poppins or Gotham‑style) • Use bold weights for titles, light/regular for body text Spacing • Wide spacing • Clean margins • Strong hierarchy • Minimal clutter Visual Tone • Executive • High‑trust • Analytical • Modern • Discreet 🔥 Brand Essence Summary Xperts Inc. should visually communicate: • Precision (clean lines, sharp geometry) • Confidentiality (dark palette, subtle gradients) • Intelligence (blue accents, data‑driven iconography) • Leadership (strategic symbols, bold typography) • Trust (silver and white contrast, balanced spacing)
Create a BioRender-style, publication-ready vector infographic titled “研究内容框架图” for a grant proposal. Use clean flat BioRender vectors, thick outlines, minimal shadows, consistent spacing, and a readable sans-serif font (Microsoft YaHei). Use a 16:10 landscape canvas (taller than 16:9). All text inside boxes must be Chinese exactly as specified. Do not include any mathematical letters, symbols, or formulas. Layout The figure has two main sections: Section A (left/center): Research Content Framework (main flowchart) A large framed panel with a top-down or left-to-right flow of four major blocks (Step 1 → Step 2 → Step 3 → Step 4). Each block is a rounded rectangle with a short title plus 2–4 bullet points. Add clear arrows between steps. Add a small triangle badge near Step 3 showing the trade-off. Section B (right side): Three embedded mini-schematics aligned vertically, each framed, with titles: “闭环控制框架(流程图)” “耦合误差示意(维恩图)” “深度递归神经网络示意(时间展开)” Use thin dashed connectors from the main Step 1–3 blocks to the corresponding mini-schematics to show correspondence. Icons (flat, minimal) Multi-agent network graph (nodes + edges), drones and mobile robots, wireless signal, clock/bell for event-triggering, sample-and-hold icon, neural network/RNN icon, Lyapunov/stability icon, and a balance scale icon (performance vs communication vs energy). Keep icons minimal and consistent. Chinese text to place in boxes (exact) Title (top center) “学习辨识—事件触发耦合下非线性多智能体系统分布式一致性控制与收敛性/有界性分析:研究内容框架图” Section A: Main research content framework (4 steps) Step 1 (Block 1) Title: “一致性误差机理刻画” Bullets: “建立统一闭环误差建模框架” “刻画学习误差、触发保持误差与拓扑耦合误差的交叉作用” “解释收敛退化、触发频繁与性能下降的成因” “覆盖无领导一致、领导跟随一致与协同跟踪场景” Step 2 (Block 2) Title: “低保守收敛性与有界性分析” Bullets: “显式利用触发区间信息构造分析工具” “建立收敛性与有界性判据并降低保守性” “推导误差上界、无有限时间无限触发条件与触发间隔下界” “刻画触发间隔与拓扑、触发参数、辨识精度的定量关系” Step 3 (Block 3) Title: “协同设计与权衡机制” Bullets: “协同设计学习辨识器、动态事件触发与分布式控制协议” “保证学习参数与内部递归状态有界” “揭示学习率、触发参数、拓扑特征与一致性性能的定量关系” “建立一致性性能—通信次数—能耗开销的可计算权衡” Add-on icon near Step 3: A small triangular trade-off badge with vertex labels (Chinese): “一致性性能 / 通信次数 / 能耗开销” Caption next to triangle: “可计算权衡” Step 4 (Block 4) Title: “仿真分析与实验验证” Bullets: “搭建含未知非线性、扰动与通信约束的仿真平台” “对比不同触发规则、拓扑与学习精度下的性能与通信开销” “在多无人机与多机器人平台开展验证” “形成可推广的低通信、高可靠、可验证方法” Section B: Three mini-schematics (right side) Mini-panel 1: “闭环控制框架(流程图)” Draw a left-to-right flowchart with rounded blocks and arrows: Blocks (in order, Chinese text exact): “非线性多智能体系统” → “局部/邻域信息获取” → “一致性误差计算” → “学习辨识器(深度递归神经网络)” → “分布式控制器” → “动态事件触发器” → “网络传输与采样保持” → Back arrow to “非线性多智能体系统” Add two dashed feedback arrows from “一致性误差计算” to: “学习辨识器(深度递归神经网络)” (label: “误差驱动更新”) “动态事件触发器” (label: “误差驱动更新”) Add small notes: Under “动态事件触发器”: “按需通信/按需更新” Near “网络传输与采样保持”: “触发保持误差” Add a small timeline icon with ticks labeled in Chinese: “触发时刻…下一次触发时刻” and label “触发间隔”. Mini-panel 2: “耦合误差示意(维恩图)” Draw a three-circle Venn diagram with semi-transparent circles: Circle labels (Chinese): “学习辨识误差” (with RNN icon) “触发保持误差” (with clock + sample-and-hold icon) “拓扑耦合误差” (with network graph icon) Pairwise overlap labels: “学习更新×非均匀更新” “异步通信×拓扑传播” “分布式辨识×邻域耦合” Center overlap (bold): “耦合项集合” Under it: “影响一致性误差演化” Arrow from center to a right-side box titled “结果表征” with bullets: “收敛退化(渐近→最终有界)” “触发频繁/触发间隔变小” “稳态误差界增大/性能下降” Mini-panel 3: “深度递归神经网络示意(时间展开)” Draw a time-unrolled recurrent network schematic along a horizontal timeline labeled in Chinese: “上一时刻 → 当前时刻 → 下一时刻” At each time slice, show stacked recurrent blocks: Input label: “本体状态与邻域信息” → Middle label: “递归记忆状态” → Output label: “未知非线性与不确定项的在线辨识输出” Connect time slices with arrows labeled: “共享参数” Add a side arrow from “一致性误差” into a small box: “参数更新(投影/正则化/学习率调度)” Then arrow into: “学习参数更新” Style constraints BioRender clean scientific infographic, no photorealism, no clutter, high readability. Strict rule: do not include any math symbols, letters, equations, or subscripts. Negative prompt: Avoid photorealistic style, avoid dense paragraphs, avoid handwritten fonts, avoid low resolution, avoid formulas, avoid math letters.
Create a BioRender-style, publication-ready vector infographic titled “研究内容框架图” for a grant proposal. Use clean flat BioRender vectors, thick outlines, minimal shadows, consistent spacing, and a readable sans-serif font (Microsoft YaHei). Use a 16:10 landscape canvas (taller than 16:9). All text inside boxes must be Chinese exactly as specified. Do not include any mathematical letters, symbols, or formulas. Layout The figure has two main sections: Section A (left/center): Research Content Framework (main flowchart) A large framed panel with a top-down or left-to-right flow of four major blocks (Step 1 → Step 2 → Step 3 → Step 4). Each block is a rounded rectangle with a short title plus 2–4 bullet points. Add clear arrows between steps. Add a small triangle badge near Step 3 showing the trade-off. Section B (right side): Three embedded mini-schematics aligned vertically, each framed, with titles: “闭环控制框架(流程图)” “耦合误差示意(维恩图)” “深度递归神经网络示意(时间展开)” Use thin dashed connectors from the main Step 1–3 blocks to the corresponding mini-schematics to show correspondence. Icons (flat, minimal) Multi-agent network graph (nodes + edges), drones and mobile robots, wireless signal, clock/bell for event-triggering, sample-and-hold icon, neural network/RNN icon, Lyapunov/stability icon, and a balance scale icon (performance vs communication vs energy). Keep icons minimal and consistent. Chinese text to place in boxes (exact) Title (top center) “学习辨识—事件触发耦合下非线性多智能体系统分布式一致性控制与收敛性/有界性分析:研究内容框架图” Section A: Main research content framework (4 steps) Step 1 (Block 1) Title: “一致性误差机理刻画” Bullets: “建立统一闭环误差建模框架” “刻画学习误差、触发保持误差与拓扑耦合误差的交叉作用” “解释收敛退化、触发频繁与性能下降的成因” “覆盖无领导一致、领导跟随一致与协同跟踪场景” Step 2 (Block 2) Title: “低保守收敛性与有界性分析” Bullets: “显式利用触发区间信息构造分析工具” “建立收敛性与有界性判据并降低保守性” “推导误差上界、无有限时间无限触发条件与触发间隔下界” “刻画触发间隔与拓扑、触发参数、辨识精度的定量关系” Step 3 (Block 3) Title: “协同设计与权衡机制” Bullets: “协同设计学习辨识器、动态事件触发与分布式控制协议” “保证学习参数与内部递归状态有界” “揭示学习率、触发参数、拓扑特征与一致性性能的定量关系” “建立一致性性能—通信次数—能耗开销的可计算权衡” Add-on icon near Step 3: A small triangular trade-off badge with vertex labels (Chinese): “一致性性能 / 通信次数 / 能耗开销” Caption next to triangle: “可计算权衡” Step 4 (Block 4) Title: “仿真分析与实验验证” Bullets: “搭建含未知非线性、扰动与通信约束的仿真平台” “对比不同触发规则、拓扑与学习精度下的性能与通信开销” “在多无人机与多机器人平台开展验证” “形成可推广的低通信、高可靠、可验证方法” Section B: Three mini-schematics (right side) Mini-panel 1: “闭环控制框架(流程图)” Draw a left-to-right flowchart with rounded blocks and arrows: Blocks (in order, Chinese text exact): “非线性多智能体系统” → “局部/邻域信息获取” → “一致性误差计算” → “学习辨识器(深度递归神经网络)” → “分布式控制器” → “动态事件触发器” → “网络传输与采样保持” → Back arrow to “非线性多智能体系统” Add two dashed feedback arrows from “一致性误差计算” to: “学习辨识器(深度递归神经网络)” (label: “误差驱动更新”) “动态事件触发器” (label: “误差驱动更新”) Add small notes: Under “动态事件触发器”: “按需通信/按需更新” Near “网络传输与采样保持”: “触发保持误差” Add a small timeline icon with ticks labeled in Chinese: “触发时刻…下一次触发时刻” and label “触发间隔”. Mini-panel 2: “耦合误差示意(维恩图)” Draw a three-circle Venn diagram with semi-transparent circles: Circle labels (Chinese): “学习辨识误差” (with RNN icon) “触发保持误差” (with clock + sample-and-hold icon) “拓扑耦合误差” (with network graph icon) Pairwise overlap labels: “学习更新×非均匀更新” “异步通信×拓扑传播” “分布式辨识×邻域耦合” Center overlap (bold): “耦合项集合” Under it: “影响一致性误差演化” Arrow from center to a right-side box titled “结果表征” with bullets: “收敛退化(渐近→最终有界)” “触发频繁/触发间隔变小” “稳态误差界增大/性能下降” Mini-panel 3: “深度递归神经网络示意(时间展开)” Draw a time-unrolled recurrent network schematic along a horizontal timeline labeled in Chinese: “上一时刻 → 当前时刻 → 下一时刻” At each time slice, show stacked recurrent blocks: Input label: “本体状态与邻域信息” → Middle label: “递归记忆状态” → Output label: “未知非线性与不确定项的在线辨识输出” Connect time slices with arrows labeled: “共享参数” Add a side arrow from “一致性误差” into a small box: “参数更新(投影/正则化/学习率调度)” Then arrow into: “学习参数更新” Style constraints BioRender clean scientific infographic, no photorealism, no clutter, high readability. Strict rule: do not include any math symbols, letters, equations, or subscripts. Negative prompt: Avoid photorealistic style, avoid dense paragraphs, avoid handwritten fonts, avoid low resolution, avoid formulas, avoid math letters.
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Jinx, on top of a police car, explosions behind her, fire, chaos, minigun, far view, bullet he(Best Quality, Masterpiece), (steampunk theme), centered, front cover of fashion magazine, concept art, design, magazine design, 1girl, cute, blonde ponytail hair, gothic steampunk dress, model pose, (epic composition, epic proportion), vibrant color, text, diagrams, advertisements, magazine title, typography, (Best Quality, Masterpiece), (steampunk theme), centered, front cover of fashion magazine, concept art, design, magazine design, 1girl, cute, blonde ponytail hair, gothic steampunk dress, model pose, (epic composition, epic proportion), vibrant color, text, diagrams, advertisements, magazine title, typography, (Best Quality, Masterpiece), (steampunk theme), centered, front cover of fashion magazine, concept art, design, magazine design, 1girl, cute, blonde ponytail hair, gothic steampunk dress, model pose, (epic composition, epic proportion), vibrant color, text, diagrams, advertisements, magazine title, typography, <lora:more_details:0.7>, <lora:beautiful_detailed_eyes:0.7>, jinxlol, <lora:JinxLol:0.9>
ultra-realistic illustration and highly detailed digital render of panorama view in a forest with rich in huge colorful flowers in the style of Ori and The Blind Forest colorful crystals, highly detailed, vibrant and vivid, smooth, image ratio is 1600x2560 A professional cozy fantasy book cover titled "The Greywood Pantry", painterly storybook illustration, centered composition designed for strong thumbnail readability inside a hollow ancient tree, a warm glowing stone fireplace is built into the trunk, soft golden firelight illuminating a flat stone surface in front of the fire on the stone surface: an abundant but carefully arranged feast of modern foods grouped naturally into a cohesive spread including a steam basket of dim sum, a burger, a tall ice cream sundae, with 1–2 slightly larger hero dishes and the rest supporting, all grounded on the stone lighting is driven primarily by the fireplace, with soft magical ambient glow enhancing highlights, warm light reflecting onto the food, gentle shadows and depth, painterly textures with visible brush softness not a separate overlay, integrated into the environment, three trees forms a carved wooden ornamental frame around the scene, with subtle swirling filigree grown from wood, edges of the frame and small details have a medium-strength magical iridescent glow (gold dominant with hints of pink, blue, green), uneven and organic, like magical light catching edges rather than flat gradients background is deep black with slight texture and faint stars, fading naturally from the warm center light title text "The Greywood Pantry" large, elegant serif with a slightly whimsical cozy feel, softly glowing with warm firelight (stronger glow near bottom, softer at top), highly readable at small size subtitle "A Tale of Seconds, Stew, and Sanctuary" curved above in smaller serif text author name "A.C. Morepork" at the bottom in a simple carved wooden banner minimal clutter, strong visual hierarchy, food and fire as primary focus, cohesive painterly style throughout, high contrast for thumbnail visibility cinematic, high contrast, hdr, 4 k, trending on artstation, unreal engine, magical, hyperrealistic, bokeh, dof
Cinematic movie poster, 2:3 aspect ratio. A dramatic, photorealistic scene of a lone figure on a rain-drenched urban rooftop at twilight, gazing at a neon-lit cityscape. Moody teal-and-orange color grading, volumetric fog, high-contrast cinematic lighting. Top center: elegant, bold title typography with subtle metallic finish. Just above the title: three symmetrical, minimalist festival laurel wreaths (Cannes, Sundance, Venice style). Bottom third: clean, professionally spaced credit block with "A FILM BY [DIRECTOR]", main cast names, studio logos, and a release date. Modern cinematic font hierarchy, proper kerning, ample negative space around text. Ultra-detailed, award-winning graphic design, 4K, professional poster layout, photorealistic rendering, no distorted letters, studio-quality composition.
Epic Movie Poster Prompt (Universal Cinematic Style) Ultra cinematic movie poster of a powerful warrior standing in the middle of a burning ancient city at night, intense expression, dramatic pose, glowing eyes, fire sparks flying in air, dark storm clouds, lightning in background, realistic smoke and destruction, highly detailed armor, cinematic orange and blue lighting, volumetric light rays, ultra realistic skin texture, blockbuster Hollywood style, sharp focus, depth of field, dramatic shadows, epic atmosphere, centered composition, title space at bottom, IMAX style, 8K ultra detail, masterpiece, movie poster design, vertical 4:5 Agar specific type chahiye to ye bhi use karo: 🔥 Mahakal Movie Poster Lord Shiva as Mahakal standing on Himalayan mountains during thunderstorm, glowing blue skin, trishul in hand, damru energy waves, giant moon behind, divine aura, cinematic clouds, powerful expression, ancient temple ruins, fire and smoke, ultra realistic, dark devotional fantasy, movie poster style, dramatic lighting, title at bottom, 8K ⚔️ Action Hero Poster Indian action hero walking through explosion in slow motion, black outfit, sunglasses, blood on face, holding weapon, rain and fire mixed atmosphere, cinematic lighting, intense expression, realistic movie poster, high detail, blockbuster action film vibe, vertical poster composition 😈 Dark Villain Poster terrifying dark king sitting on a massive throne in a ruined kingdom, red glowing eyes, black armor, smoke and fire everywhere, cinematic shadows, gothic atmosphere, ultra realistic movie poster, dramatic lighting, dark fantasy style, title typography space 💘 Romantic Poster romantic movie poster of a couple standing in rain under neon city lights, emotional expressions, cinematic reflections on wet road, soft lighting, dreamy atmosphere, Bollywood romance style, ultra detailed, realistic skin texture, movie title space
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Design a powerful, modern, corporate‑grade promotional infographic for Xperts Inc., an elite executive search firm. Use a light gradient background (cream → deep maroon red → Navy Blue) to symbolize strategic depth, confidentiality, and high‑stakes leadership recruitment. The design should feel corporate, psychological, and visually dramatic, reflecting the firm’s precision, integrity, and global‑class talent acquisition approach. Add the logo on the upper part in the middle Add the website www.xperts-inc.org under the logo Incorporate visual cues inspired by the firm’s website www.xperts-inc.org, including: • Clean, modern typography • Professional, minimalist layout • High‑contrast accents • Executive‑level tone and structure SECTION 1 — Title & Brand Identity (Top Center) • Large, bold title: “Xperts Inc. - Executive Search Excellence” • Subheading: “Precision. Integrity. Leadership Talent Delivered.” • Subtle geometric lines or abstract network patterns to symbolize intelligence, connectivity, and strategic insight. SECTION 2 — Core Value Proposition (Main Body) Use a multi‑column layout with high‑contrast icons and dramatic lighting. 1. Elite Executive Search • Icon: chess king or strategic map • Symbolism: leadership, strategy, top‑tier decision‑making • Text: “We identify, evaluate, and secure high‑impact leaders who transform organizations.” 2. Global Talent Intelligence • Icon: network globe or interconnected nodes • Symbolism: reach, insight, global access • Text: “Access to hidden, high‑performing executive talent across industries and regions.” 3. Confidential & Precise Recruitment • Icon: shield or lock • Symbolism: discretion, trust, risk‑free hiring • Text: “Secure, confidential searches for mission‑critical leadership roles.” 4. Cultural & Leadership Fit Assessment • Icon: interlocking shapes or harmony symbol • Symbolism: alignment, long‑term success • Text: “We match leaders not only by skill — but by values, behavior, and organizational fit.” 5. Strategic Partnership • Icon: handshake or connected pathways • Symbolism: collaboration, long‑term advisory • Text: “More than recruiters — we are advisors in organizational growth and leadership strategy.” SECTION 3 — Why Companies Choose Xperts Inc. Use lighter tones to contrast the dark background. Short, impactful statements: • “Access to hidden executive talent.” • “Faster, more accurate leadership hiring.” • “Reduced risk of mis‑hire.” • “Confidential, high‑stakes recruitment handled with precision.” • “Leadership placements that strengthen culture and performance.” Visual metaphors: • rising light • geometric beams • network grids • spotlight effects SECTION 4 — Website Call‑to‑Action (Bottom Banner) Bold, centered, elegant. Text: “Discover leadership talent that transforms organizations. Visit www.xperts-inc.org.” Visual: A soft upward glow or horizontal beam symbolizing clarity, trust, and executive‑level excellence. Xperts Inc. — Brand‑Aligned Color Palette & Iconography Guide A modern executive search brand needs a visual identity that communicates precision, trust, intelligence, and discretion. This guide is built to align with the tone and aesthetic of Xperts Inc., reinforcing its positioning as a high‑level, strategic recruitment partner. 🎨 COLOR PALETTE (Brand‑Aligned) A palette designed to feel corporate, psychological, dramatic, and elite, mirroring the dark, modern aesthetic of the website. 1. Primary Colors Deep Executive cream • Usage: Backgrounds, hero sections, high‑authority areas • Psychology: Intelligence, stability, leadership Charcoal Black • Usage: Dark gradients, overlays, structural elements • Psychology: Confidentiality, seriousness, executive presence Steel Gray • Usage: Secondary backgrounds, section dividers • Psychology: Professionalism, neutrality, clarity 2. Accent Colors Electric Blue / Maroon red • Usage: Highlights, call‑to‑action, key metrics • Psychology: Precision, innovation, intelligence Platinum Silver • HEX: #C7CCD1 • Usage: Icons, outlines, subtle emphasis • Psychology: Sophistication, refinement, modernity White Ice • HEX: #F5F7FA • Usage: Text on dark backgrounds, clean contrast • Psychology: Clarity, transparency, trust 3. Gradient Recommendation Charcoal Black (#0D0D0D) → Deep Executive Navy (#0A1A2F) • Usage: Hero banners, infographic backgrounds, promotional visuals • Effect: Dramatic, corporate, high‑impact 🔷 ICONOGRAPHY GUIDE (Corporate + Psychological + Modern) Icons should feel minimalist, geometric, and high‑contrast, reflecting the precision and intelligence of an executive search firm. 1. Style • Thin‑line or semi‑bold line icons • Rounded corners for approachability • Angular geometry for authority • Metallic or blue accents for emphasis • High contrast against dark backgrounds 2. Icon Themes for Xperts Inc. These align with the firm’s core services and messaging. Leadership & Strategy Icons • Chess king / queen • Strategic map • Compass • Lighthouse • Target with arrow Talent Intelligence Icons • Network nodes • Globe with connections • Brain‑inspired geometric patterns • Magnifying glass with data points Confidentiality & Precision Icons • Shield • Lock • Fingerprint • Document with checkmark • Secure vault Cultural & Behavioral Fit Icons • Interlocking shapes • Harmony symbol • Two silhouettes merging • Balanced scale Partnership & Advisory Icons • Handshake • Bridge • Connected pathways • Puzzle pieces fitting together 📐 Layout & Typography Recommendations To stay aligned with the brand: Typography • Primary: A modern sans‑serif (e.g., Montserrat, Inter, or Lato) • Secondary: A clean geometric font for headings (e.g., Poppins or Gotham‑style) • Use bold weights for titles, light/regular for body text Spacing • Wide spacing • Clean margins • Strong hierarchy • Minimal clutter Visual Tone • Executive • High‑trust • Analytical • Modern • Discreet 🔥 Brand Essence Summary Xperts Inc. should visually communicate: • Precision (clean lines, sharp geometry) • Confidentiality (dark palette, subtle gradients) • Intelligence (blue accents, data‑driven iconography) • Leadership (strategic symbols, bold typography) • Trust (silver and white contrast, balanced spacing)
Create a BioRender-style, publication-ready vector infographic titled “研究内容框架图” for a grant proposal. Use clean flat BioRender vectors, thick outlines, minimal shadows, consistent spacing, and a readable sans-serif font (Microsoft YaHei). Use a 16:10 landscape canvas (taller than 16:9). All text inside boxes must be Chinese exactly as specified. Do not include any mathematical letters, symbols, or formulas. Layout The figure has two main sections: Section A (left/center): Research Content Framework (main flowchart) A large framed panel with a top-down or left-to-right flow of four major blocks (Step 1 → Step 2 → Step 3 → Step 4). Each block is a rounded rectangle with a short title plus 2–4 bullet points. Add clear arrows between steps. Add a small triangle badge near Step 3 showing the trade-off. Section B (right side): Three embedded mini-schematics aligned vertically, each framed, with titles: “闭环控制框架(流程图)” “耦合误差示意(维恩图)” “深度递归神经网络示意(时间展开)” Use thin dashed connectors from the main Step 1–3 blocks to the corresponding mini-schematics to show correspondence. Icons (flat, minimal) Multi-agent network graph (nodes + edges), drones and mobile robots, wireless signal, clock/bell for event-triggering, sample-and-hold icon, neural network/RNN icon, Lyapunov/stability icon, and a balance scale icon (performance vs communication vs energy). Keep icons minimal and consistent. Chinese text to place in boxes (exact) Title (top center) “学习辨识—事件触发耦合下非线性多智能体系统分布式一致性控制与收敛性/有界性分析:研究内容框架图” Section A: Main research content framework (4 steps) Step 1 (Block 1) Title: “一致性误差机理刻画” Bullets: “建立统一闭环误差建模框架” “刻画学习误差、触发保持误差与拓扑耦合误差的交叉作用” “解释收敛退化、触发频繁与性能下降的成因” “覆盖无领导一致、领导跟随一致与协同跟踪场景” Step 2 (Block 2) Title: “低保守收敛性与有界性分析” Bullets: “显式利用触发区间信息构造分析工具” “建立收敛性与有界性判据并降低保守性” “推导误差上界、无有限时间无限触发条件与触发间隔下界” “刻画触发间隔与拓扑、触发参数、辨识精度的定量关系” Step 3 (Block 3) Title: “协同设计与权衡机制” Bullets: “协同设计学习辨识器、动态事件触发与分布式控制协议” “保证学习参数与内部递归状态有界” “揭示学习率、触发参数、拓扑特征与一致性性能的定量关系” “建立一致性性能—通信次数—能耗开销的可计算权衡” Add-on icon near Step 3: A small triangular trade-off badge with vertex labels (Chinese): “一致性性能 / 通信次数 / 能耗开销” Caption next to triangle: “可计算权衡” Step 4 (Block 4) Title: “仿真分析与实验验证” Bullets: “搭建含未知非线性、扰动与通信约束的仿真平台” “对比不同触发规则、拓扑与学习精度下的性能与通信开销” “在多无人机与多机器人平台开展验证” “形成可推广的低通信、高可靠、可验证方法” Section B: Three mini-schematics (right side) Mini-panel 1: “闭环控制框架(流程图)” Draw a left-to-right flowchart with rounded blocks and arrows: Blocks (in order, Chinese text exact): “非线性多智能体系统” → “局部/邻域信息获取” → “一致性误差计算” → “学习辨识器(深度递归神经网络)” → “分布式控制器” → “动态事件触发器” → “网络传输与采样保持” → Back arrow to “非线性多智能体系统” Add two dashed feedback arrows from “一致性误差计算” to: “学习辨识器(深度递归神经网络)” (label: “误差驱动更新”) “动态事件触发器” (label: “误差驱动更新”) Add small notes: Under “动态事件触发器”: “按需通信/按需更新” Near “网络传输与采样保持”: “触发保持误差” Add a small timeline icon with ticks labeled in Chinese: “触发时刻…下一次触发时刻” and label “触发间隔”. Mini-panel 2: “耦合误差示意(维恩图)” Draw a three-circle Venn diagram with semi-transparent circles: Circle labels (Chinese): “学习辨识误差” (with RNN icon) “触发保持误差” (with clock + sample-and-hold icon) “拓扑耦合误差” (with network graph icon) Pairwise overlap labels: “学习更新×非均匀更新” “异步通信×拓扑传播” “分布式辨识×邻域耦合” Center overlap (bold): “耦合项集合” Under it: “影响一致性误差演化” Arrow from center to a right-side box titled “结果表征” with bullets: “收敛退化(渐近→最终有界)” “触发频繁/触发间隔变小” “稳态误差界增大/性能下降” Mini-panel 3: “深度递归神经网络示意(时间展开)” Draw a time-unrolled recurrent network schematic along a horizontal timeline labeled in Chinese: “上一时刻 → 当前时刻 → 下一时刻” At each time slice, show stacked recurrent blocks: Input label: “本体状态与邻域信息” → Middle label: “递归记忆状态” → Output label: “未知非线性与不确定项的在线辨识输出” Connect time slices with arrows labeled: “共享参数” Add a side arrow from “一致性误差” into a small box: “参数更新(投影/正则化/学习率调度)” Then arrow into: “学习参数更新” Style constraints BioRender clean scientific infographic, no photorealism, no clutter, high readability. Strict rule: do not include any math symbols, letters, equations, or subscripts. Negative prompt: Avoid photorealistic style, avoid dense paragraphs, avoid handwritten fonts, avoid low resolution, avoid formulas, avoid math letters.
Jinx, on top of a police car, explosions behind her, fire, chaos, minigun, far view, bullet he(Best Quality, Masterpiece), (steampunk theme), centered, front cover of fashion magazine, concept art, design, magazine design, 1girl, cute, blonde ponytail hair, gothic steampunk dress, model pose, (epic composition, epic proportion), vibrant color, text, diagrams, advertisements, magazine title, typography, (Best Quality, Masterpiece), (steampunk theme), centered, front cover of fashion magazine, concept art, design, magazine design, 1girl, cute, blonde ponytail hair, gothic steampunk dress, model pose, (epic composition, epic proportion), vibrant color, text, diagrams, advertisements, magazine title, typography, (Best Quality, Masterpiece), (steampunk theme), centered, front cover of fashion magazine, concept art, design, magazine design, 1girl, cute, blonde ponytail hair, gothic steampunk dress, model pose, (epic composition, epic proportion), vibrant color, text, diagrams, advertisements, magazine title, typography, <lora:more_details:0.7>, <lora:beautiful_detailed_eyes:0.7>, jinxlol, <lora:JinxLol:0.9>
Epic Movie Poster Prompt (Universal Cinematic Style) Ultra cinematic movie poster of a powerful warrior standing in the middle of a burning ancient city at night, intense expression, dramatic pose, glowing eyes, fire sparks flying in air, dark storm clouds, lightning in background, realistic smoke and destruction, highly detailed armor, cinematic orange and blue lighting, volumetric light rays, ultra realistic skin texture, blockbuster Hollywood style, sharp focus, depth of field, dramatic shadows, epic atmosphere, centered composition, title space at bottom, IMAX style, 8K ultra detail, masterpiece, movie poster design, vertical 4:5 Agar specific type chahiye to ye bhi use karo: 🔥 Mahakal Movie Poster Lord Shiva as Mahakal standing on Himalayan mountains during thunderstorm, glowing blue skin, trishul in hand, damru energy waves, giant moon behind, divine aura, cinematic clouds, powerful expression, ancient temple ruins, fire and smoke, ultra realistic, dark devotional fantasy, movie poster style, dramatic lighting, title at bottom, 8K ⚔️ Action Hero Poster Indian action hero walking through explosion in slow motion, black outfit, sunglasses, blood on face, holding weapon, rain and fire mixed atmosphere, cinematic lighting, intense expression, realistic movie poster, high detail, blockbuster action film vibe, vertical poster composition 😈 Dark Villain Poster terrifying dark king sitting on a massive throne in a ruined kingdom, red glowing eyes, black armor, smoke and fire everywhere, cinematic shadows, gothic atmosphere, ultra realistic movie poster, dramatic lighting, dark fantasy style, title typography space 💘 Romantic Poster romantic movie poster of a couple standing in rain under neon city lights, emotional expressions, cinematic reflections on wet road, soft lighting, dreamy atmosphere, Bollywood romance style, ultra detailed, realistic skin texture, movie title space
Prompt: Design a minimalist and bold book cover for a non-fiction title called Fork It, I Need a New Brain: A Guide to Mental Clarity and Mood Without Losing Your Mind. The book is an evidence-based yet conversational guide to eating for better cognitive function, memory, mood, and focus. It blends storytelling with science, speaking to readers who are tired of wellness fads and want practical, real-food strategies for rebooting how their brain performs—without becoming obsessive or extreme. Visual Style: Clean and high-contrast with a modern, striking visual. Use a white background with bright green as the dominant accent color. The design should be highly minimalist—no clutter, no photographic food imagery. The mood should feel intelligent, slightly rebellious, and forward-thinking. It should stand out boldly both in thumbnail view (Amazon/Kindle) and on physical shelves. Typography: Use a modern sans-serif font—sharp, clean, and unfussy. Place the main title in the center, with “Fork It” on the top line and “I Need a New Brain” below it. The subtitle should be smaller, black, and placed just beneath the title, aligned center. All-caps or dynamic text spacing can be used to heighten impact. Imagery: Include a single silver fork in the center or integrated cleverly into the title (e.g., acting as the “I” in “Fork It” or piercing through a clean white surface or soft object). Avoid brains, head silhouettes, puzzle pieces, or light bulbs. The fork should symbolize both frustration and transformation—a moment of decision. Mood Board Keywords: Minimalism, bright white, neon green, clean edge, tension, clarity, irreverent wellness, modern intelligence, cognitive refresh, food as design, less-is-more.
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Create a BioRender-style, publication-ready vector infographic titled “研究内容框架图” for a grant proposal. Use clean flat BioRender vectors, thick outlines, minimal shadows, consistent spacing, and a readable sans-serif font (Microsoft YaHei). Use a 16:10 landscape canvas (taller than 16:9). All text inside boxes must be Chinese exactly as specified. Do not include any mathematical letters, symbols, or formulas. Layout The figure has two main sections: Section A (left/center): Research Content Framework (main flowchart) A large framed panel with a top-down or left-to-right flow of four major blocks (Step 1 → Step 2 → Step 3 → Step 4). Each block is a rounded rectangle with a short title plus 2–4 bullet points. Add clear arrows between steps. Add a small triangle badge near Step 3 showing the trade-off. Section B (right side): Three embedded mini-schematics aligned vertically, each framed, with titles: “闭环控制框架(流程图)” “耦合误差示意(维恩图)” “深度递归神经网络示意(时间展开)” Use thin dashed connectors from the main Step 1–3 blocks to the corresponding mini-schematics to show correspondence. Icons (flat, minimal) Multi-agent network graph (nodes + edges), drones and mobile robots, wireless signal, clock/bell for event-triggering, sample-and-hold icon, neural network/RNN icon, Lyapunov/stability icon, and a balance scale icon (performance vs communication vs energy). Keep icons minimal and consistent. Chinese text to place in boxes (exact) Title (top center) “学习辨识—事件触发耦合下非线性多智能体系统分布式一致性控制与收敛性/有界性分析:研究内容框架图” Section A: Main research content framework (4 steps) Step 1 (Block 1) Title: “一致性误差机理刻画” Bullets: “建立统一闭环误差建模框架” “刻画学习误差、触发保持误差与拓扑耦合误差的交叉作用” “解释收敛退化、触发频繁与性能下降的成因” “覆盖无领导一致、领导跟随一致与协同跟踪场景” Step 2 (Block 2) Title: “低保守收敛性与有界性分析” Bullets: “显式利用触发区间信息构造分析工具” “建立收敛性与有界性判据并降低保守性” “推导误差上界、无有限时间无限触发条件与触发间隔下界” “刻画触发间隔与拓扑、触发参数、辨识精度的定量关系” Step 3 (Block 3) Title: “协同设计与权衡机制” Bullets: “协同设计学习辨识器、动态事件触发与分布式控制协议” “保证学习参数与内部递归状态有界” “揭示学习率、触发参数、拓扑特征与一致性性能的定量关系” “建立一致性性能—通信次数—能耗开销的可计算权衡” Add-on icon near Step 3: A small triangular trade-off badge with vertex labels (Chinese): “一致性性能 / 通信次数 / 能耗开销” Caption next to triangle: “可计算权衡” Step 4 (Block 4) Title: “仿真分析与实验验证” Bullets: “搭建含未知非线性、扰动与通信约束的仿真平台” “对比不同触发规则、拓扑与学习精度下的性能与通信开销” “在多无人机与多机器人平台开展验证” “形成可推广的低通信、高可靠、可验证方法” Section B: Three mini-schematics (right side) Mini-panel 1: “闭环控制框架(流程图)” Draw a left-to-right flowchart with rounded blocks and arrows: Blocks (in order, Chinese text exact): “非线性多智能体系统” → “局部/邻域信息获取” → “一致性误差计算” → “学习辨识器(深度递归神经网络)” → “分布式控制器” → “动态事件触发器” → “网络传输与采样保持” → Back arrow to “非线性多智能体系统” Add two dashed feedback arrows from “一致性误差计算” to: “学习辨识器(深度递归神经网络)” (label: “误差驱动更新”) “动态事件触发器” (label: “误差驱动更新”) Add small notes: Under “动态事件触发器”: “按需通信/按需更新” Near “网络传输与采样保持”: “触发保持误差” Add a small timeline icon with ticks labeled in Chinese: “触发时刻…下一次触发时刻” and label “触发间隔”. Mini-panel 2: “耦合误差示意(维恩图)” Draw a three-circle Venn diagram with semi-transparent circles: Circle labels (Chinese): “学习辨识误差” (with RNN icon) “触发保持误差” (with clock + sample-and-hold icon) “拓扑耦合误差” (with network graph icon) Pairwise overlap labels: “学习更新×非均匀更新” “异步通信×拓扑传播” “分布式辨识×邻域耦合” Center overlap (bold): “耦合项集合” Under it: “影响一致性误差演化” Arrow from center to a right-side box titled “结果表征” with bullets: “收敛退化(渐近→最终有界)” “触发频繁/触发间隔变小” “稳态误差界增大/性能下降” Mini-panel 3: “深度递归神经网络示意(时间展开)” Draw a time-unrolled recurrent network schematic along a horizontal timeline labeled in Chinese: “上一时刻 → 当前时刻 → 下一时刻” At each time slice, show stacked recurrent blocks: Input label: “本体状态与邻域信息” → Middle label: “递归记忆状态” → Output label: “未知非线性与不确定项的在线辨识输出” Connect time slices with arrows labeled: “共享参数” Add a side arrow from “一致性误差” into a small box: “参数更新(投影/正则化/学习率调度)” Then arrow into: “学习参数更新” Style constraints BioRender clean scientific infographic, no photorealism, no clutter, high readability. Strict rule: do not include any math symbols, letters, equations, or subscripts. Negative prompt: Avoid photorealistic style, avoid dense paragraphs, avoid handwritten fonts, avoid low resolution, avoid formulas, avoid math letters.
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ultra-realistic illustration and highly detailed digital render of panorama view in a forest with rich in huge colorful flowers in the style of Ori and The Blind Forest colorful crystals, highly detailed, vibrant and vivid, smooth, image ratio is 1600x2560 A professional cozy fantasy book cover titled "The Greywood Pantry", painterly storybook illustration, centered composition designed for strong thumbnail readability inside a hollow ancient tree, a warm glowing stone fireplace is built into the trunk, soft golden firelight illuminating a flat stone surface in front of the fire on the stone surface: an abundant but carefully arranged feast of modern foods grouped naturally into a cohesive spread including a steam basket of dim sum, a burger, a tall ice cream sundae, with 1–2 slightly larger hero dishes and the rest supporting, all grounded on the stone lighting is driven primarily by the fireplace, with soft magical ambient glow enhancing highlights, warm light reflecting onto the food, gentle shadows and depth, painterly textures with visible brush softness not a separate overlay, integrated into the environment, three trees forms a carved wooden ornamental frame around the scene, with subtle swirling filigree grown from wood, edges of the frame and small details have a medium-strength magical iridescent glow (gold dominant with hints of pink, blue, green), uneven and organic, like magical light catching edges rather than flat gradients background is deep black with slight texture and faint stars, fading naturally from the warm center light title text "The Greywood Pantry" large, elegant serif with a slightly whimsical cozy feel, softly glowing with warm firelight (stronger glow near bottom, softer at top), highly readable at small size subtitle "A Tale of Seconds, Stew, and Sanctuary" curved above in smaller serif text author name "A.C. Morepork" at the bottom in a simple carved wooden banner minimal clutter, strong visual hierarchy, food and fire as primary focus, cohesive painterly style throughout, high contrast for thumbnail visibility cinematic, high contrast, hdr, 4 k, trending on artstation, unreal engine, magical, hyperrealistic, bokeh, dof
Cinematic movie poster, 2:3 aspect ratio. A dramatic, photorealistic scene of a lone figure on a rain-drenched urban rooftop at twilight, gazing at a neon-lit cityscape. Moody teal-and-orange color grading, volumetric fog, high-contrast cinematic lighting. Top center: elegant, bold title typography with subtle metallic finish. Just above the title: three symmetrical, minimalist festival laurel wreaths (Cannes, Sundance, Venice style). Bottom third: clean, professionally spaced credit block with "A FILM BY [DIRECTOR]", main cast names, studio logos, and a release date. Modern cinematic font hierarchy, proper kerning, ample negative space around text. Ultra-detailed, award-winning graphic design, 4K, professional poster layout, photorealistic rendering, no distorted letters, studio-quality composition.
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Create a BioRender-style, publication-ready vector infographic titled “研究内容框架图” for a grant proposal. Use clean flat BioRender vectors, thick outlines, minimal shadows, consistent spacing, and a readable sans-serif font (Microsoft YaHei). Use a 16:10 landscape canvas (taller than 16:9). All text inside boxes must be Chinese exactly as specified. Do not include any mathematical letters, symbols, or formulas. Layout The figure has two main sections: Section A (left/center): Research Content Framework (main flowchart) A large framed panel with a top-down or left-to-right flow of four major blocks (Step 1 → Step 2 → Step 3 → Step 4). Each block is a rounded rectangle with a short title plus 2–4 bullet points. Add clear arrows between steps. Add a small triangle badge near Step 3 showing the trade-off. Section B (right side): Three embedded mini-schematics aligned vertically, each framed, with titles: “闭环控制框架(流程图)” “耦合误差示意(维恩图)” “深度递归神经网络示意(时间展开)” Use thin dashed connectors from the main Step 1–3 blocks to the corresponding mini-schematics to show correspondence. Icons (flat, minimal) Multi-agent network graph (nodes + edges), drones and mobile robots, wireless signal, clock/bell for event-triggering, sample-and-hold icon, neural network/RNN icon, Lyapunov/stability icon, and a balance scale icon (performance vs communication vs energy). Keep icons minimal and consistent. Chinese text to place in boxes (exact) Title (top center) “学习辨识—事件触发耦合下非线性多智能体系统分布式一致性控制与收敛性/有界性分析:研究内容框架图” Section A: Main research content framework (4 steps) Step 1 (Block 1) Title: “一致性误差机理刻画” Bullets: “建立统一闭环误差建模框架” “刻画学习误差、触发保持误差与拓扑耦合误差的交叉作用” “解释收敛退化、触发频繁与性能下降的成因” “覆盖无领导一致、领导跟随一致与协同跟踪场景” Step 2 (Block 2) Title: “低保守收敛性与有界性分析” Bullets: “显式利用触发区间信息构造分析工具” “建立收敛性与有界性判据并降低保守性” “推导误差上界、无有限时间无限触发条件与触发间隔下界” “刻画触发间隔与拓扑、触发参数、辨识精度的定量关系” Step 3 (Block 3) Title: “协同设计与权衡机制” Bullets: “协同设计学习辨识器、动态事件触发与分布式控制协议” “保证学习参数与内部递归状态有界” “揭示学习率、触发参数、拓扑特征与一致性性能的定量关系” “建立一致性性能—通信次数—能耗开销的可计算权衡” Add-on icon near Step 3: A small triangular trade-off badge with vertex labels (Chinese): “一致性性能 / 通信次数 / 能耗开销” Caption next to triangle: “可计算权衡” Step 4 (Block 4) Title: “仿真分析与实验验证” Bullets: “搭建含未知非线性、扰动与通信约束的仿真平台” “对比不同触发规则、拓扑与学习精度下的性能与通信开销” “在多无人机与多机器人平台开展验证” “形成可推广的低通信、高可靠、可验证方法” Section B: Three mini-schematics (right side) Mini-panel 1: “闭环控制框架(流程图)” Draw a left-to-right flowchart with rounded blocks and arrows: Blocks (in order, Chinese text exact): “非线性多智能体系统” → “局部/邻域信息获取” → “一致性误差计算” → “学习辨识器(深度递归神经网络)” → “分布式控制器” → “动态事件触发器” → “网络传输与采样保持” → Back arrow to “非线性多智能体系统” Add two dashed feedback arrows from “一致性误差计算” to: “学习辨识器(深度递归神经网络)” (label: “误差驱动更新”) “动态事件触发器” (label: “误差驱动更新”) Add small notes: Under “动态事件触发器”: “按需通信/按需更新” Near “网络传输与采样保持”: “触发保持误差” Add a small timeline icon with ticks labeled in Chinese: “触发时刻…下一次触发时刻” and label “触发间隔”. Mini-panel 2: “耦合误差示意(维恩图)” Draw a three-circle Venn diagram with semi-transparent circles: Circle labels (Chinese): “学习辨识误差” (with RNN icon) “触发保持误差” (with clock + sample-and-hold icon) “拓扑耦合误差” (with network graph icon) Pairwise overlap labels: “学习更新×非均匀更新” “异步通信×拓扑传播” “分布式辨识×邻域耦合” Center overlap (bold): “耦合项集合” Under it: “影响一致性误差演化” Arrow from center to a right-side box titled “结果表征” with bullets: “收敛退化(渐近→最终有界)” “触发频繁/触发间隔变小” “稳态误差界增大/性能下降” Mini-panel 3: “深度递归神经网络示意(时间展开)” Draw a time-unrolled recurrent network schematic along a horizontal timeline labeled in Chinese: “上一时刻 → 当前时刻 → 下一时刻” At each time slice, show stacked recurrent blocks: Input label: “本体状态与邻域信息” → Middle label: “递归记忆状态” → Output label: “未知非线性与不确定项的在线辨识输出” Connect time slices with arrows labeled: “共享参数” Add a side arrow from “一致性误差” into a small box: “参数更新(投影/正则化/学习率调度)” Then arrow into: “学习参数更新” Style constraints BioRender clean scientific infographic, no photorealism, no clutter, high readability. Strict rule: do not include any math symbols, letters, equations, or subscripts. Negative prompt: Avoid photorealistic style, avoid dense paragraphs, avoid handwritten fonts, avoid low resolution, avoid formulas, avoid math letters.
Jinx, on top of a police car, explosions behind her, fire, chaos, minigun, far view, bullet he(Best Quality, Masterpiece), (steampunk theme), centered, front cover of fashion magazine, concept art, design, magazine design, 1girl, cute, blonde ponytail hair, gothic steampunk dress, model pose, (epic composition, epic proportion), vibrant color, text, diagrams, advertisements, magazine title, typography, (Best Quality, Masterpiece), (steampunk theme), centered, front cover of fashion magazine, concept art, design, magazine design, 1girl, cute, blonde ponytail hair, gothic steampunk dress, model pose, (epic composition, epic proportion), vibrant color, text, diagrams, advertisements, magazine title, typography, (Best Quality, Masterpiece), (steampunk theme), centered, front cover of fashion magazine, concept art, design, magazine design, 1girl, cute, blonde ponytail hair, gothic steampunk dress, model pose, (epic composition, epic proportion), vibrant color, text, diagrams, advertisements, magazine title, typography, <lora:more_details:0.7>, <lora:beautiful_detailed_eyes:0.7>, jinxlol, <lora:JinxLol:0.9>
ultra-realistic illustration and highly detailed digital render of panorama view in a forest with rich in huge colorful flowers in the style of Ori and The Blind Forest colorful crystals, highly detailed, vibrant and vivid, smooth, image ratio is 1600x2560 A professional cozy fantasy book cover titled "The Greywood Pantry", painterly storybook illustration, centered composition designed for strong thumbnail readability inside a hollow ancient tree, a warm glowing stone fireplace is built into the trunk, soft golden firelight illuminating a flat stone surface in front of the fire on the stone surface: an abundant but carefully arranged feast of modern foods grouped naturally into a cohesive spread including a steam basket of dim sum, a burger, a tall ice cream sundae, with 1–2 slightly larger hero dishes and the rest supporting, all grounded on the stone lighting is driven primarily by the fireplace, with soft magical ambient glow enhancing highlights, warm light reflecting onto the food, gentle shadows and depth, painterly textures with visible brush softness not a separate overlay, integrated into the environment, three trees forms a carved wooden ornamental frame around the scene, with subtle swirling filigree grown from wood, edges of the frame and small details have a medium-strength magical iridescent glow (gold dominant with hints of pink, blue, green), uneven and organic, like magical light catching edges rather than flat gradients background is deep black with slight texture and faint stars, fading naturally from the warm center light title text "The Greywood Pantry" large, elegant serif with a slightly whimsical cozy feel, softly glowing with warm firelight (stronger glow near bottom, softer at top), highly readable at small size subtitle "A Tale of Seconds, Stew, and Sanctuary" curved above in smaller serif text author name "A.C. Morepork" at the bottom in a simple carved wooden banner minimal clutter, strong visual hierarchy, food and fire as primary focus, cohesive painterly style throughout, high contrast for thumbnail visibility cinematic, high contrast, hdr, 4 k, trending on artstation, unreal engine, magical, hyperrealistic, bokeh, dof
Epic Movie Poster Prompt (Universal Cinematic Style) Ultra cinematic movie poster of a powerful warrior standing in the middle of a burning ancient city at night, intense expression, dramatic pose, glowing eyes, fire sparks flying in air, dark storm clouds, lightning in background, realistic smoke and destruction, highly detailed armor, cinematic orange and blue lighting, volumetric light rays, ultra realistic skin texture, blockbuster Hollywood style, sharp focus, depth of field, dramatic shadows, epic atmosphere, centered composition, title space at bottom, IMAX style, 8K ultra detail, masterpiece, movie poster design, vertical 4:5 Agar specific type chahiye to ye bhi use karo: 🔥 Mahakal Movie Poster Lord Shiva as Mahakal standing on Himalayan mountains during thunderstorm, glowing blue skin, trishul in hand, damru energy waves, giant moon behind, divine aura, cinematic clouds, powerful expression, ancient temple ruins, fire and smoke, ultra realistic, dark devotional fantasy, movie poster style, dramatic lighting, title at bottom, 8K ⚔️ Action Hero Poster Indian action hero walking through explosion in slow motion, black outfit, sunglasses, blood on face, holding weapon, rain and fire mixed atmosphere, cinematic lighting, intense expression, realistic movie poster, high detail, blockbuster action film vibe, vertical poster composition 😈 Dark Villain Poster terrifying dark king sitting on a massive throne in a ruined kingdom, red glowing eyes, black armor, smoke and fire everywhere, cinematic shadows, gothic atmosphere, ultra realistic movie poster, dramatic lighting, dark fantasy style, title typography space 💘 Romantic Poster romantic movie poster of a couple standing in rain under neon city lights, emotional expressions, cinematic reflections on wet road, soft lighting, dreamy atmosphere, Bollywood romance style, ultra detailed, realistic skin texture, movie title space
Prompt: Design a minimalist and bold book cover for a non-fiction title called Fork It, I Need a New Brain: A Guide to Mental Clarity and Mood Without Losing Your Mind. The book is an evidence-based yet conversational guide to eating for better cognitive function, memory, mood, and focus. It blends storytelling with science, speaking to readers who are tired of wellness fads and want practical, real-food strategies for rebooting how their brain performs—without becoming obsessive or extreme. Visual Style: Clean and high-contrast with a modern, striking visual. Use a white background with bright green as the dominant accent color. The design should be highly minimalist—no clutter, no photographic food imagery. The mood should feel intelligent, slightly rebellious, and forward-thinking. It should stand out boldly both in thumbnail view (Amazon/Kindle) and on physical shelves. Typography: Use a modern sans-serif font—sharp, clean, and unfussy. Place the main title in the center, with “Fork It” on the top line and “I Need a New Brain” below it. The subtitle should be smaller, black, and placed just beneath the title, aligned center. All-caps or dynamic text spacing can be used to heighten impact. Imagery: Include a single silver fork in the center or integrated cleverly into the title (e.g., acting as the “I” in “Fork It” or piercing through a clean white surface or soft object). Avoid brains, head silhouettes, puzzle pieces, or light bulbs. The fork should symbolize both frustration and transformation—a moment of decision. Mood Board Keywords: Minimalism, bright white, neon green, clean edge, tension, clarity, irreverent wellness, modern intelligence, cognitive refresh, food as design, less-is-more.
Design a powerful, modern, corporate‑grade promotional infographic for Xperts Inc., an elite executive search firm. Use a light gradient background (cream → deep maroon red → Navy Blue) to symbolize strategic depth, confidentiality, and high‑stakes leadership recruitment. The design should feel corporate, psychological, and visually dramatic, reflecting the firm’s precision, integrity, and global‑class talent acquisition approach. Add the logo on the upper part in the middle Add the website www.xperts-inc.org under the logo Incorporate visual cues inspired by the firm’s website www.xperts-inc.org, including: • Clean, modern typography • Professional, minimalist layout • High‑contrast accents • Executive‑level tone and structure SECTION 1 — Title & Brand Identity (Top Center) • Large, bold title: “Xperts Inc. - Executive Search Excellence” • Subheading: “Precision. Integrity. Leadership Talent Delivered.” • Subtle geometric lines or abstract network patterns to symbolize intelligence, connectivity, and strategic insight. SECTION 2 — Core Value Proposition (Main Body) Use a multi‑column layout with high‑contrast icons and dramatic lighting. 1. Elite Executive Search • Icon: chess king or strategic map • Symbolism: leadership, strategy, top‑tier decision‑making • Text: “We identify, evaluate, and secure high‑impact leaders who transform organizations.” 2. Global Talent Intelligence • Icon: network globe or interconnected nodes • Symbolism: reach, insight, global access • Text: “Access to hidden, high‑performing executive talent across industries and regions.” 3. Confidential & Precise Recruitment • Icon: shield or lock • Symbolism: discretion, trust, risk‑free hiring • Text: “Secure, confidential searches for mission‑critical leadership roles.” 4. Cultural & Leadership Fit Assessment • Icon: interlocking shapes or harmony symbol • Symbolism: alignment, long‑term success • Text: “We match leaders not only by skill — but by values, behavior, and organizational fit.” 5. Strategic Partnership • Icon: handshake or connected pathways • Symbolism: collaboration, long‑term advisory • Text: “More than recruiters — we are advisors in organizational growth and leadership strategy.” SECTION 3 — Why Companies Choose Xperts Inc. Use lighter tones to contrast the dark background. Short, impactful statements: • “Access to hidden executive talent.” • “Faster, more accurate leadership hiring.” • “Reduced risk of mis‑hire.” • “Confidential, high‑stakes recruitment handled with precision.” • “Leadership placements that strengthen culture and performance.” Visual metaphors: • rising light • geometric beams • network grids • spotlight effects SECTION 4 — Website Call‑to‑Action (Bottom Banner) Bold, centered, elegant. Text: “Discover leadership talent that transforms organizations. Visit www.xperts-inc.org.” Visual: A soft upward glow or horizontal beam symbolizing clarity, trust, and executive‑level excellence. Xperts Inc. — Brand‑Aligned Color Palette & Iconography Guide A modern executive search brand needs a visual identity that communicates precision, trust, intelligence, and discretion. This guide is built to align with the tone and aesthetic of Xperts Inc., reinforcing its positioning as a high‑level, strategic recruitment partner. 🎨 COLOR PALETTE (Brand‑Aligned) A palette designed to feel corporate, psychological, dramatic, and elite, mirroring the dark, modern aesthetic of the website. 1. Primary Colors Deep Executive cream • Usage: Backgrounds, hero sections, high‑authority areas • Psychology: Intelligence, stability, leadership Charcoal Black • Usage: Dark gradients, overlays, structural elements • Psychology: Confidentiality, seriousness, executive presence Steel Gray • Usage: Secondary backgrounds, section dividers • Psychology: Professionalism, neutrality, clarity 2. Accent Colors Electric Blue / Maroon red • Usage: Highlights, call‑to‑action, key metrics • Psychology: Precision, innovation, intelligence Platinum Silver • HEX: #C7CCD1 • Usage: Icons, outlines, subtle emphasis • Psychology: Sophistication, refinement, modernity White Ice • HEX: #F5F7FA • Usage: Text on dark backgrounds, clean contrast • Psychology: Clarity, transparency, trust 3. Gradient Recommendation Charcoal Black (#0D0D0D) → Deep Executive Navy (#0A1A2F) • Usage: Hero banners, infographic backgrounds, promotional visuals • Effect: Dramatic, corporate, high‑impact 🔷 ICONOGRAPHY GUIDE (Corporate + Psychological + Modern) Icons should feel minimalist, geometric, and high‑contrast, reflecting the precision and intelligence of an executive search firm. 1. Style • Thin‑line or semi‑bold line icons • Rounded corners for approachability • Angular geometry for authority • Metallic or blue accents for emphasis • High contrast against dark backgrounds 2. Icon Themes for Xperts Inc. These align with the firm’s core services and messaging. Leadership & Strategy Icons • Chess king / queen • Strategic map • Compass • Lighthouse • Target with arrow Talent Intelligence Icons • Network nodes • Globe with connections • Brain‑inspired geometric patterns • Magnifying glass with data points Confidentiality & Precision Icons • Shield • Lock • Fingerprint • Document with checkmark • Secure vault Cultural & Behavioral Fit Icons • Interlocking shapes • Harmony symbol • Two silhouettes merging • Balanced scale Partnership & Advisory Icons • Handshake • Bridge • Connected pathways • Puzzle pieces fitting together 📐 Layout & Typography Recommendations To stay aligned with the brand: Typography • Primary: A modern sans‑serif (e.g., Montserrat, Inter, or Lato) • Secondary: A clean geometric font for headings (e.g., Poppins or Gotham‑style) • Use bold weights for titles, light/regular for body text Spacing • Wide spacing • Clean margins • Strong hierarchy • Minimal clutter Visual Tone • Executive • High‑trust • Analytical • Modern • Discreet 🔥 Brand Essence Summary Xperts Inc. should visually communicate: • Precision (clean lines, sharp geometry) • Confidentiality (dark palette, subtle gradients) • Intelligence (blue accents, data‑driven iconography) • Leadership (strategic symbols, bold typography) • Trust (silver and white contrast, balanced spacing)
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Cinematic movie poster, 2:3 aspect ratio. A dramatic, photorealistic scene of a lone figure on a rain-drenched urban rooftop at twilight, gazing at a neon-lit cityscape. Moody teal-and-orange color grading, volumetric fog, high-contrast cinematic lighting. Top center: elegant, bold title typography with subtle metallic finish. Just above the title: three symmetrical, minimalist festival laurel wreaths (Cannes, Sundance, Venice style). Bottom third: clean, professionally spaced credit block with "A FILM BY [DIRECTOR]", main cast names, studio logos, and a release date. Modern cinematic font hierarchy, proper kerning, ample negative space around text. Ultra-detailed, award-winning graphic design, 4K, professional poster layout, photorealistic rendering, no distorted letters, studio-quality composition.
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Create a BioRender-style, publication-ready vector infographic titled “研究内容框架图” for a grant proposal. Use clean flat BioRender vectors, thick outlines, minimal shadows, consistent spacing, and a readable sans-serif font (Microsoft YaHei). Use a 16:10 landscape canvas (taller than 16:9). All text inside boxes must be Chinese exactly as specified. Do not include any mathematical letters, symbols, or formulas. Layout The figure has two main sections: Section A (left/center): Research Content Framework (main flowchart) A large framed panel with a top-down or left-to-right flow of four major blocks (Step 1 → Step 2 → Step 3 → Step 4). Each block is a rounded rectangle with a short title plus 2–4 bullet points. Add clear arrows between steps. Add a small triangle badge near Step 3 showing the trade-off. Section B (right side): Three embedded mini-schematics aligned vertically, each framed, with titles: “闭环控制框架(流程图)” “耦合误差示意(维恩图)” “深度递归神经网络示意(时间展开)” Use thin dashed connectors from the main Step 1–3 blocks to the corresponding mini-schematics to show correspondence. Icons (flat, minimal) Multi-agent network graph (nodes + edges), drones and mobile robots, wireless signal, clock/bell for event-triggering, sample-and-hold icon, neural network/RNN icon, Lyapunov/stability icon, and a balance scale icon (performance vs communication vs energy). Keep icons minimal and consistent. Chinese text to place in boxes (exact) Title (top center) “学习辨识—事件触发耦合下非线性多智能体系统分布式一致性控制与收敛性/有界性分析:研究内容框架图” Section A: Main research content framework (4 steps) Step 1 (Block 1) Title: “一致性误差机理刻画” Bullets: “建立统一闭环误差建模框架” “刻画学习误差、触发保持误差与拓扑耦合误差的交叉作用” “解释收敛退化、触发频繁与性能下降的成因” “覆盖无领导一致、领导跟随一致与协同跟踪场景” Step 2 (Block 2) Title: “低保守收敛性与有界性分析” Bullets: “显式利用触发区间信息构造分析工具” “建立收敛性与有界性判据并降低保守性” “推导误差上界、无有限时间无限触发条件与触发间隔下界” “刻画触发间隔与拓扑、触发参数、辨识精度的定量关系” Step 3 (Block 3) Title: “协同设计与权衡机制” Bullets: “协同设计学习辨识器、动态事件触发与分布式控制协议” “保证学习参数与内部递归状态有界” “揭示学习率、触发参数、拓扑特征与一致性性能的定量关系” “建立一致性性能—通信次数—能耗开销的可计算权衡” Add-on icon near Step 3: A small triangular trade-off badge with vertex labels (Chinese): “一致性性能 / 通信次数 / 能耗开销” Caption next to triangle: “可计算权衡” Step 4 (Block 4) Title: “仿真分析与实验验证” Bullets: “搭建含未知非线性、扰动与通信约束的仿真平台” “对比不同触发规则、拓扑与学习精度下的性能与通信开销” “在多无人机与多机器人平台开展验证” “形成可推广的低通信、高可靠、可验证方法” Section B: Three mini-schematics (right side) Mini-panel 1: “闭环控制框架(流程图)” Draw a left-to-right flowchart with rounded blocks and arrows: Blocks (in order, Chinese text exact): “非线性多智能体系统” → “局部/邻域信息获取” → “一致性误差计算” → “学习辨识器(深度递归神经网络)” → “分布式控制器” → “动态事件触发器” → “网络传输与采样保持” → Back arrow to “非线性多智能体系统” Add two dashed feedback arrows from “一致性误差计算” to: “学习辨识器(深度递归神经网络)” (label: “误差驱动更新”) “动态事件触发器” (label: “误差驱动更新”) Add small notes: Under “动态事件触发器”: “按需通信/按需更新” Near “网络传输与采样保持”: “触发保持误差” Add a small timeline icon with ticks labeled in Chinese: “触发时刻…下一次触发时刻” and label “触发间隔”. Mini-panel 2: “耦合误差示意(维恩图)” Draw a three-circle Venn diagram with semi-transparent circles: Circle labels (Chinese): “学习辨识误差” (with RNN icon) “触发保持误差” (with clock + sample-and-hold icon) “拓扑耦合误差” (with network graph icon) Pairwise overlap labels: “学习更新×非均匀更新” “异步通信×拓扑传播” “分布式辨识×邻域耦合” Center overlap (bold): “耦合项集合” Under it: “影响一致性误差演化” Arrow from center to a right-side box titled “结果表征” with bullets: “收敛退化(渐近→最终有界)” “触发频繁/触发间隔变小” “稳态误差界增大/性能下降” Mini-panel 3: “深度递归神经网络示意(时间展开)” Draw a time-unrolled recurrent network schematic along a horizontal timeline labeled in Chinese: “上一时刻 → 当前时刻 → 下一时刻” At each time slice, show stacked recurrent blocks: Input label: “本体状态与邻域信息” → Middle label: “递归记忆状态” → Output label: “未知非线性与不确定项的在线辨识输出” Connect time slices with arrows labeled: “共享参数” Add a side arrow from “一致性误差” into a small box: “参数更新(投影/正则化/学习率调度)” Then arrow into: “学习参数更新” Style constraints BioRender clean scientific infographic, no photorealism, no clutter, high readability. Strict rule: do not include any math symbols, letters, equations, or subscripts. Negative prompt: Avoid photorealistic style, avoid dense paragraphs, avoid handwritten fonts, avoid low resolution, avoid formulas, avoid math letters.
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"image": ["368", 0]}, "class_type": "ImageResize+", "_meta": {"title": "\ud83d\udd27 Image Resize"}}, "577": {"inputs": {"upscale_method": "lanczos", "width": 1216, "height": 0, "crop": "disabled", "image": ["368", 0]}, "class_type": "ImageScale", "_meta": {"title": "Upscale Image"}}, "578": {"inputs": {"text": "Bikini"}, "class_type": "ttN text", "_meta": {"title": "text"}}, "580": {"inputs": {"lora_name": "Migration_Lora_cloth.safetensors", "strength_model": 0, "model": ["194", 0]}, "class_type": "LoraLoaderModelOnly", "_meta": {"title": "LoraLoaderModelOnly"}}, "581": {"inputs": {"crop": "center", "clip_vision": ["189", 0], "image": ["577", 0]}, "class_type": "CLIPVisionEncode", "_meta": {"title": "CLIP Vision Encode"}}, "582": {"inputs": {"lora_name": "comfyui_subject_lora16.safetensors", "strength_model": 1, "model": ["580", 0]}, "class_type": "LoraLoaderModelOnly", "_meta": {"title": "LoraLoaderModelOnly"}}}
Jinx, on top of a police car, explosions behind her, fire, chaos, minigun, far view, bullet he(Best Quality, Masterpiece), (steampunk theme), centered, front cover of fashion magazine, concept art, design, magazine design, 1girl, cute, blonde ponytail hair, gothic steampunk dress, model pose, (epic composition, epic proportion), vibrant color, text, diagrams, advertisements, magazine title, typography, (Best Quality, Masterpiece), (steampunk theme), centered, front cover of fashion magazine, concept art, design, magazine design, 1girl, cute, blonde ponytail hair, gothic steampunk dress, model pose, (epic composition, epic proportion), vibrant color, text, diagrams, advertisements, magazine title, typography, (Best Quality, Masterpiece), (steampunk theme), centered, front cover of fashion magazine, concept art, design, magazine design, 1girl, cute, blonde ponytail hair, gothic steampunk dress, model pose, (epic composition, epic proportion), vibrant color, text, diagrams, advertisements, magazine title, typography, <lora:more_details:0.7>, <lora:beautiful_detailed_eyes:0.7>, jinxlol, <lora:JinxLol:0.9>
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Prompt: Design a minimalist and bold book cover for a non-fiction title called Fork It, I Need a New Brain: A Guide to Mental Clarity and Mood Without Losing Your Mind. The book is an evidence-based yet conversational guide to eating for better cognitive function, memory, mood, and focus. It blends storytelling with science, speaking to readers who are tired of wellness fads and want practical, real-food strategies for rebooting how their brain performs—without becoming obsessive or extreme. Visual Style: Clean and high-contrast with a modern, striking visual. Use a white background with bright green as the dominant accent color. The design should be highly minimalist—no clutter, no photographic food imagery. The mood should feel intelligent, slightly rebellious, and forward-thinking. It should stand out boldly both in thumbnail view (Amazon/Kindle) and on physical shelves. Typography: Use a modern sans-serif font—sharp, clean, and unfussy. Place the main title in the center, with “Fork It” on the top line and “I Need a New Brain” below it. The subtitle should be smaller, black, and placed just beneath the title, aligned center. All-caps or dynamic text spacing can be used to heighten impact. Imagery: Include a single silver fork in the center or integrated cleverly into the title (e.g., acting as the “I” in “Fork It” or piercing through a clean white surface or soft object). Avoid brains, head silhouettes, puzzle pieces, or light bulbs. The fork should symbolize both frustration and transformation—a moment of decision. Mood Board Keywords: Minimalism, bright white, neon green, clean edge, tension, clarity, irreverent wellness, modern intelligence, cognitive refresh, food as design, less-is-more.
Create a BioRender-style, publication-ready vector infographic titled “研究内容框架图” for a grant proposal. Use clean flat BioRender vectors, thick outlines, minimal shadows, consistent spacing, and a readable sans-serif font (Microsoft YaHei). Use a 16:10 landscape canvas (taller than 16:9). All text inside boxes must be Chinese exactly as specified. Do not include any mathematical letters, symbols, or formulas. Layout The figure has two main sections: Section A (left/center): Research Content Framework (main flowchart) A large framed panel with a top-down or left-to-right flow of four major blocks (Step 1 → Step 2 → Step 3 → Step 4). Each block is a rounded rectangle with a short title plus 2–4 bullet points. Add clear arrows between steps. Add a small triangle badge near Step 3 showing the trade-off. Section B (right side): Three embedded mini-schematics aligned vertically, each framed, with titles: “闭环控制框架(流程图)” “耦合误差示意(维恩图)” “深度递归神经网络示意(时间展开)” Use thin dashed connectors from the main Step 1–3 blocks to the corresponding mini-schematics to show correspondence. Icons (flat, minimal) Multi-agent network graph (nodes + edges), drones and mobile robots, wireless signal, clock/bell for event-triggering, sample-and-hold icon, neural network/RNN icon, Lyapunov/stability icon, and a balance scale icon (performance vs communication vs energy). Keep icons minimal and consistent. Chinese text to place in boxes (exact) Title (top center) “学习辨识—事件触发耦合下非线性多智能体系统分布式一致性控制与收敛性/有界性分析:研究内容框架图” Section A: Main research content framework (4 steps) Step 1 (Block 1) Title: “一致性误差机理刻画” Bullets: “建立统一闭环误差建模框架” “刻画学习误差、触发保持误差与拓扑耦合误差的交叉作用” “解释收敛退化、触发频繁与性能下降的成因” “覆盖无领导一致、领导跟随一致与协同跟踪场景” Step 2 (Block 2) Title: “低保守收敛性与有界性分析” Bullets: “显式利用触发区间信息构造分析工具” “建立收敛性与有界性判据并降低保守性” “推导误差上界、无有限时间无限触发条件与触发间隔下界” “刻画触发间隔与拓扑、触发参数、辨识精度的定量关系” Step 3 (Block 3) Title: “协同设计与权衡机制” Bullets: “协同设计学习辨识器、动态事件触发与分布式控制协议” “保证学习参数与内部递归状态有界” “揭示学习率、触发参数、拓扑特征与一致性性能的定量关系” “建立一致性性能—通信次数—能耗开销的可计算权衡” Add-on icon near Step 3: A small triangular trade-off badge with vertex labels (Chinese): “一致性性能 / 通信次数 / 能耗开销” Caption next to triangle: “可计算权衡” Step 4 (Block 4) Title: “仿真分析与实验验证” Bullets: “搭建含未知非线性、扰动与通信约束的仿真平台” “对比不同触发规则、拓扑与学习精度下的性能与通信开销” “在多无人机与多机器人平台开展验证” “形成可推广的低通信、高可靠、可验证方法” Section B: Three mini-schematics (right side) Mini-panel 1: “闭环控制框架(流程图)” Draw a left-to-right flowchart with rounded blocks and arrows: Blocks (in order, Chinese text exact): “非线性多智能体系统” → “局部/邻域信息获取” → “一致性误差计算” → “学习辨识器(深度递归神经网络)” → “分布式控制器” → “动态事件触发器” → “网络传输与采样保持” → Back arrow to “非线性多智能体系统” Add two dashed feedback arrows from “一致性误差计算” to: “学习辨识器(深度递归神经网络)” (label: “误差驱动更新”) “动态事件触发器” (label: “误差驱动更新”) Add small notes: Under “动态事件触发器”: “按需通信/按需更新” Near “网络传输与采样保持”: “触发保持误差” Add a small timeline icon with ticks labeled in Chinese: “触发时刻…下一次触发时刻” and label “触发间隔”. Mini-panel 2: “耦合误差示意(维恩图)” Draw a three-circle Venn diagram with semi-transparent circles: Circle labels (Chinese): “学习辨识误差” (with RNN icon) “触发保持误差” (with clock + sample-and-hold icon) “拓扑耦合误差” (with network graph icon) Pairwise overlap labels: “学习更新×非均匀更新” “异步通信×拓扑传播” “分布式辨识×邻域耦合” Center overlap (bold): “耦合项集合” Under it: “影响一致性误差演化” Arrow from center to a right-side box titled “结果表征” with bullets: “收敛退化(渐近→最终有界)” “触发频繁/触发间隔变小” “稳态误差界增大/性能下降” Mini-panel 3: “深度递归神经网络示意(时间展开)” Draw a time-unrolled recurrent network schematic along a horizontal timeline labeled in Chinese: “上一时刻 → 当前时刻 → 下一时刻” At each time slice, show stacked recurrent blocks: Input label: “本体状态与邻域信息” → Middle label: “递归记忆状态” → Output label: “未知非线性与不确定项的在线辨识输出” Connect time slices with arrows labeled: “共享参数” Add a side arrow from “一致性误差” into a small box: “参数更新(投影/正则化/学习率调度)” Then arrow into: “学习参数更新” Style constraints BioRender clean scientific infographic, no photorealism, no clutter, high readability. Strict rule: do not include any math symbols, letters, equations, or subscripts. Negative prompt: Avoid photorealistic style, avoid dense paragraphs, avoid handwritten fonts, avoid low resolution, avoid formulas, avoid math letters.
Epic Movie Poster Prompt (Universal Cinematic Style) Ultra cinematic movie poster of a powerful warrior standing in the middle of a burning ancient city at night, intense expression, dramatic pose, glowing eyes, fire sparks flying in air, dark storm clouds, lightning in background, realistic smoke and destruction, highly detailed armor, cinematic orange and blue lighting, volumetric light rays, ultra realistic skin texture, blockbuster Hollywood style, sharp focus, depth of field, dramatic shadows, epic atmosphere, centered composition, title space at bottom, IMAX style, 8K ultra detail, masterpiece, movie poster design, vertical 4:5 Agar specific type chahiye to ye bhi use karo: 🔥 Mahakal Movie Poster Lord Shiva as Mahakal standing on Himalayan mountains during thunderstorm, glowing blue skin, trishul in hand, damru energy waves, giant moon behind, divine aura, cinematic clouds, powerful expression, ancient temple ruins, fire and smoke, ultra realistic, dark devotional fantasy, movie poster style, dramatic lighting, title at bottom, 8K ⚔️ Action Hero Poster Indian action hero walking through explosion in slow motion, black outfit, sunglasses, blood on face, holding weapon, rain and fire mixed atmosphere, cinematic lighting, intense expression, realistic movie poster, high detail, blockbuster action film vibe, vertical poster composition 😈 Dark Villain Poster terrifying dark king sitting on a massive throne in a ruined kingdom, red glowing eyes, black armor, smoke and fire everywhere, cinematic shadows, gothic atmosphere, ultra realistic movie poster, dramatic lighting, dark fantasy style, title typography space 💘 Romantic Poster romantic movie poster of a couple standing in rain under neon city lights, emotional expressions, cinematic reflections on wet road, soft lighting, dreamy atmosphere, Bollywood romance style, ultra detailed, realistic skin texture, movie title space
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Cinematic movie poster, 2:3 aspect ratio. A dramatic, photorealistic scene of a lone figure on a rain-drenched urban rooftop at twilight, gazing at a neon-lit cityscape. Moody teal-and-orange color grading, volumetric fog, high-contrast cinematic lighting. Top center: elegant, bold title typography with subtle metallic finish. Just above the title: three symmetrical, minimalist festival laurel wreaths (Cannes, Sundance, Venice style). Bottom third: clean, professionally spaced credit block with "A FILM BY [DIRECTOR]", main cast names, studio logos, and a release date. Modern cinematic font hierarchy, proper kerning, ample negative space around text. Ultra-detailed, award-winning graphic design, 4K, professional poster layout, photorealistic rendering, no distorted letters, studio-quality composition.
Design a powerful, modern, corporate‑grade promotional infographic for Xperts Inc., an elite executive search firm. Use a light gradient background (cream → deep maroon red → Navy Blue) to symbolize strategic depth, confidentiality, and high‑stakes leadership recruitment. The design should feel corporate, psychological, and visually dramatic, reflecting the firm’s precision, integrity, and global‑class talent acquisition approach. Add the logo on the upper part in the middle Add the website www.xperts-inc.org under the logo Incorporate visual cues inspired by the firm’s website www.xperts-inc.org, including: • Clean, modern typography • Professional, minimalist layout • High‑contrast accents • Executive‑level tone and structure SECTION 1 — Title & Brand Identity (Top Center) • Large, bold title: “Xperts Inc. - Executive Search Excellence” • Subheading: “Precision. Integrity. Leadership Talent Delivered.” • Subtle geometric lines or abstract network patterns to symbolize intelligence, connectivity, and strategic insight. SECTION 2 — Core Value Proposition (Main Body) Use a multi‑column layout with high‑contrast icons and dramatic lighting. 1. Elite Executive Search • Icon: chess king or strategic map • Symbolism: leadership, strategy, top‑tier decision‑making • Text: “We identify, evaluate, and secure high‑impact leaders who transform organizations.” 2. Global Talent Intelligence • Icon: network globe or interconnected nodes • Symbolism: reach, insight, global access • Text: “Access to hidden, high‑performing executive talent across industries and regions.” 3. Confidential & Precise Recruitment • Icon: shield or lock • Symbolism: discretion, trust, risk‑free hiring • Text: “Secure, confidential searches for mission‑critical leadership roles.” 4. Cultural & Leadership Fit Assessment • Icon: interlocking shapes or harmony symbol • Symbolism: alignment, long‑term success • Text: “We match leaders not only by skill — but by values, behavior, and organizational fit.” 5. Strategic Partnership • Icon: handshake or connected pathways • Symbolism: collaboration, long‑term advisory • Text: “More than recruiters — we are advisors in organizational growth and leadership strategy.” SECTION 3 — Why Companies Choose Xperts Inc. Use lighter tones to contrast the dark background. Short, impactful statements: • “Access to hidden executive talent.” • “Faster, more accurate leadership hiring.” • “Reduced risk of mis‑hire.” • “Confidential, high‑stakes recruitment handled with precision.” • “Leadership placements that strengthen culture and performance.” Visual metaphors: • rising light • geometric beams • network grids • spotlight effects SECTION 4 — Website Call‑to‑Action (Bottom Banner) Bold, centered, elegant. Text: “Discover leadership talent that transforms organizations. Visit www.xperts-inc.org.” Visual: A soft upward glow or horizontal beam symbolizing clarity, trust, and executive‑level excellence. Xperts Inc. — Brand‑Aligned Color Palette & Iconography Guide A modern executive search brand needs a visual identity that communicates precision, trust, intelligence, and discretion. This guide is built to align with the tone and aesthetic of Xperts Inc., reinforcing its positioning as a high‑level, strategic recruitment partner. 🎨 COLOR PALETTE (Brand‑Aligned) A palette designed to feel corporate, psychological, dramatic, and elite, mirroring the dark, modern aesthetic of the website. 1. Primary Colors Deep Executive cream • Usage: Backgrounds, hero sections, high‑authority areas • Psychology: Intelligence, stability, leadership Charcoal Black • Usage: Dark gradients, overlays, structural elements • Psychology: Confidentiality, seriousness, executive presence Steel Gray • Usage: Secondary backgrounds, section dividers • Psychology: Professionalism, neutrality, clarity 2. Accent Colors Electric Blue / Maroon red • Usage: Highlights, call‑to‑action, key metrics • Psychology: Precision, innovation, intelligence Platinum Silver • HEX: #C7CCD1 • Usage: Icons, outlines, subtle emphasis • Psychology: Sophistication, refinement, modernity White Ice • HEX: #F5F7FA • Usage: Text on dark backgrounds, clean contrast • Psychology: Clarity, transparency, trust 3. Gradient Recommendation Charcoal Black (#0D0D0D) → Deep Executive Navy (#0A1A2F) • Usage: Hero banners, infographic backgrounds, promotional visuals • Effect: Dramatic, corporate, high‑impact 🔷 ICONOGRAPHY GUIDE (Corporate + Psychological + Modern) Icons should feel minimalist, geometric, and high‑contrast, reflecting the precision and intelligence of an executive search firm. 1. Style • Thin‑line or semi‑bold line icons • Rounded corners for approachability • Angular geometry for authority • Metallic or blue accents for emphasis • High contrast against dark backgrounds 2. Icon Themes for Xperts Inc. These align with the firm’s core services and messaging. Leadership & Strategy Icons • Chess king / queen • Strategic map • Compass • Lighthouse • Target with arrow Talent Intelligence Icons • Network nodes • Globe with connections • Brain‑inspired geometric patterns • Magnifying glass with data points Confidentiality & Precision Icons • Shield • Lock • Fingerprint • Document with checkmark • Secure vault Cultural & Behavioral Fit Icons • Interlocking shapes • Harmony symbol • Two silhouettes merging • Balanced scale Partnership & Advisory Icons • Handshake • Bridge • Connected pathways • Puzzle pieces fitting together 📐 Layout & Typography Recommendations To stay aligned with the brand: Typography • Primary: A modern sans‑serif (e.g., Montserrat, Inter, or Lato) • Secondary: A clean geometric font for headings (e.g., Poppins or Gotham‑style) • Use bold weights for titles, light/regular for body text Spacing • Wide spacing • Clean margins • Strong hierarchy • Minimal clutter Visual Tone • Executive • High‑trust • Analytical • Modern • Discreet 🔥 Brand Essence Summary Xperts Inc. should visually communicate: • Precision (clean lines, sharp geometry) • Confidentiality (dark palette, subtle gradients) • Intelligence (blue accents, data‑driven iconography) • Leadership (strategic symbols, bold typography) • Trust (silver and white contrast, balanced spacing)
Create a BioRender-style, publication-ready vector infographic titled “研究内容框架图” for a grant proposal. Use clean flat BioRender vectors, thick outlines, minimal shadows, consistent spacing, and a readable sans-serif font (Microsoft YaHei). Use a 16:10 landscape canvas (taller than 16:9). All text inside boxes must be Chinese exactly as specified. Do not include any mathematical letters, symbols, or formulas. Layout The figure has two main sections: Section A (left/center): Research Content Framework (main flowchart) A large framed panel with a top-down or left-to-right flow of four major blocks (Step 1 → Step 2 → Step 3 → Step 4). Each block is a rounded rectangle with a short title plus 2–4 bullet points. Add clear arrows between steps. Add a small triangle badge near Step 3 showing the trade-off. Section B (right side): Three embedded mini-schematics aligned vertically, each framed, with titles: “闭环控制框架(流程图)” “耦合误差示意(维恩图)” “深度递归神经网络示意(时间展开)” Use thin dashed connectors from the main Step 1–3 blocks to the corresponding mini-schematics to show correspondence. Icons (flat, minimal) Multi-agent network graph (nodes + edges), drones and mobile robots, wireless signal, clock/bell for event-triggering, sample-and-hold icon, neural network/RNN icon, Lyapunov/stability icon, and a balance scale icon (performance vs communication vs energy). Keep icons minimal and consistent. Chinese text to place in boxes (exact) Title (top center) “学习辨识—事件触发耦合下非线性多智能体系统分布式一致性控制与收敛性/有界性分析:研究内容框架图” Section A: Main research content framework (4 steps) Step 1 (Block 1) Title: “一致性误差机理刻画” Bullets: “建立统一闭环误差建模框架” “刻画学习误差、触发保持误差与拓扑耦合误差的交叉作用” “解释收敛退化、触发频繁与性能下降的成因” “覆盖无领导一致、领导跟随一致与协同跟踪场景” Step 2 (Block 2) Title: “低保守收敛性与有界性分析” Bullets: “显式利用触发区间信息构造分析工具” “建立收敛性与有界性判据并降低保守性” “推导误差上界、无有限时间无限触发条件与触发间隔下界” “刻画触发间隔与拓扑、触发参数、辨识精度的定量关系” Step 3 (Block 3) Title: “协同设计与权衡机制” Bullets: “协同设计学习辨识器、动态事件触发与分布式控制协议” “保证学习参数与内部递归状态有界” “揭示学习率、触发参数、拓扑特征与一致性性能的定量关系” “建立一致性性能—通信次数—能耗开销的可计算权衡” Add-on icon near Step 3: A small triangular trade-off badge with vertex labels (Chinese): “一致性性能 / 通信次数 / 能耗开销” Caption next to triangle: “可计算权衡” Step 4 (Block 4) Title: “仿真分析与实验验证” Bullets: “搭建含未知非线性、扰动与通信约束的仿真平台” “对比不同触发规则、拓扑与学习精度下的性能与通信开销” “在多无人机与多机器人平台开展验证” “形成可推广的低通信、高可靠、可验证方法” Section B: Three mini-schematics (right side) Mini-panel 1: “闭环控制框架(流程图)” Draw a left-to-right flowchart with rounded blocks and arrows: Blocks (in order, Chinese text exact): “非线性多智能体系统” → “局部/邻域信息获取” → “一致性误差计算” → “学习辨识器(深度递归神经网络)” → “分布式控制器” → “动态事件触发器” → “网络传输与采样保持” → Back arrow to “非线性多智能体系统” Add two dashed feedback arrows from “一致性误差计算” to: “学习辨识器(深度递归神经网络)” (label: “误差驱动更新”) “动态事件触发器” (label: “误差驱动更新”) Add small notes: Under “动态事件触发器”: “按需通信/按需更新” Near “网络传输与采样保持”: “触发保持误差” Add a small timeline icon with ticks labeled in Chinese: “触发时刻…下一次触发时刻” and label “触发间隔”. Mini-panel 2: “耦合误差示意(维恩图)” Draw a three-circle Venn diagram with semi-transparent circles: Circle labels (Chinese): “学习辨识误差” (with RNN icon) “触发保持误差” (with clock + sample-and-hold icon) “拓扑耦合误差” (with network graph icon) Pairwise overlap labels: “学习更新×非均匀更新” “异步通信×拓扑传播” “分布式辨识×邻域耦合” Center overlap (bold): “耦合项集合” Under it: “影响一致性误差演化” Arrow from center to a right-side box titled “结果表征” with bullets: “收敛退化(渐近→最终有界)” “触发频繁/触发间隔变小” “稳态误差界增大/性能下降” Mini-panel 3: “深度递归神经网络示意(时间展开)” Draw a time-unrolled recurrent network schematic along a horizontal timeline labeled in Chinese: “上一时刻 → 当前时刻 → 下一时刻” At each time slice, show stacked recurrent blocks: Input label: “本体状态与邻域信息” → Middle label: “递归记忆状态” → Output label: “未知非线性与不确定项的在线辨识输出” Connect time slices with arrows labeled: “共享参数” Add a side arrow from “一致性误差” into a small box: “参数更新(投影/正则化/学习率调度)” Then arrow into: “学习参数更新” Style constraints BioRender clean scientific infographic, no photorealism, no clutter, high readability. Strict rule: do not include any math symbols, letters, equations, or subscripts. Negative prompt: Avoid photorealistic style, avoid dense paragraphs, avoid handwritten fonts, avoid low resolution, avoid formulas, avoid math letters.
ultra-realistic illustration and highly detailed digital render of panorama view in a forest with rich in huge colorful flowers in the style of Ori and The Blind Forest colorful crystals, highly detailed, vibrant and vivid, smooth, image ratio is 1600x2560 A professional cozy fantasy book cover titled "The Greywood Pantry", painterly storybook illustration, centered composition designed for strong thumbnail readability inside a hollow ancient tree, a warm glowing stone fireplace is built into the trunk, soft golden firelight illuminating a flat stone surface in front of the fire on the stone surface: an abundant but carefully arranged feast of modern foods grouped naturally into a cohesive spread including a steam basket of dim sum, a burger, a tall ice cream sundae, with 1–2 slightly larger hero dishes and the rest supporting, all grounded on the stone lighting is driven primarily by the fireplace, with soft magical ambient glow enhancing highlights, warm light reflecting onto the food, gentle shadows and depth, painterly textures with visible brush softness not a separate overlay, integrated into the environment, three trees forms a carved wooden ornamental frame around the scene, with subtle swirling filigree grown from wood, edges of the frame and small details have a medium-strength magical iridescent glow (gold dominant with hints of pink, blue, green), uneven and organic, like magical light catching edges rather than flat gradients background is deep black with slight texture and faint stars, fading naturally from the warm center light title text "The Greywood Pantry" large, elegant serif with a slightly whimsical cozy feel, softly glowing with warm firelight (stronger glow near bottom, softer at top), highly readable at small size subtitle "A Tale of Seconds, Stew, and Sanctuary" curved above in smaller serif text author name "A.C. Morepork" at the bottom in a simple carved wooden banner minimal clutter, strong visual hierarchy, food and fire as primary focus, cohesive painterly style throughout, high contrast for thumbnail visibility cinematic, high contrast, hdr, 4 k, trending on artstation, unreal engine, magical, hyperrealistic, bokeh, dof
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Prompt: Design a minimalist and bold book cover for a non-fiction title called Fork It, I Need a New Brain: A Guide to Mental Clarity and Mood Without Losing Your Mind. The book is an evidence-based yet conversational guide to eating for better cognitive function, memory, mood, and focus. It blends storytelling with science, speaking to readers who are tired of wellness fads and want practical, real-food strategies for rebooting how their brain performs—without becoming obsessive or extreme. Visual Style: Clean and high-contrast with a modern, striking visual. Use a white background with bright green as the dominant accent color. The design should be highly minimalist—no clutter, no photographic food imagery. The mood should feel intelligent, slightly rebellious, and forward-thinking. It should stand out boldly both in thumbnail view (Amazon/Kindle) and on physical shelves. Typography: Use a modern sans-serif font—sharp, clean, and unfussy. Place the main title in the center, with “Fork It” on the top line and “I Need a New Brain” below it. The subtitle should be smaller, black, and placed just beneath the title, aligned center. All-caps or dynamic text spacing can be used to heighten impact. Imagery: Include a single silver fork in the center or integrated cleverly into the title (e.g., acting as the “I” in “Fork It” or piercing through a clean white surface or soft object). Avoid brains, head silhouettes, puzzle pieces, or light bulbs. The fork should symbolize both frustration and transformation—a moment of decision. Mood Board Keywords: Minimalism, bright white, neon green, clean edge, tension, clarity, irreverent wellness, modern intelligence, cognitive refresh, food as design, less-is-more.
Cinematic movie poster, 2:3 aspect ratio. A dramatic, photorealistic scene of a lone figure on a rain-drenched urban rooftop at twilight, gazing at a neon-lit cityscape. Moody teal-and-orange color grading, volumetric fog, high-contrast cinematic lighting. Top center: elegant, bold title typography with subtle metallic finish. Just above the title: three symmetrical, minimalist festival laurel wreaths (Cannes, Sundance, Venice style). Bottom third: clean, professionally spaced credit block with "A FILM BY [DIRECTOR]", main cast names, studio logos, and a release date. Modern cinematic font hierarchy, proper kerning, ample negative space around text. Ultra-detailed, award-winning graphic design, 4K, professional poster layout, photorealistic rendering, no distorted letters, studio-quality composition.
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Jinx, on top of a police car, explosions behind her, fire, chaos, minigun, far view, bullet he(Best Quality, Masterpiece), (steampunk theme), centered, front cover of fashion magazine, concept art, design, magazine design, 1girl, cute, blonde ponytail hair, gothic steampunk dress, model pose, (epic composition, epic proportion), vibrant color, text, diagrams, advertisements, magazine title, typography, (Best Quality, Masterpiece), (steampunk theme), centered, front cover of fashion magazine, concept art, design, magazine design, 1girl, cute, blonde ponytail hair, gothic steampunk dress, model pose, (epic composition, epic proportion), vibrant color, text, diagrams, advertisements, magazine title, typography, (Best Quality, Masterpiece), (steampunk theme), centered, front cover of fashion magazine, concept art, design, magazine design, 1girl, cute, blonde ponytail hair, gothic steampunk dress, model pose, (epic composition, epic proportion), vibrant color, text, diagrams, advertisements, magazine title, typography, <lora:more_details:0.7>, <lora:beautiful_detailed_eyes:0.7>, jinxlol, <lora:JinxLol:0.9>
Design a powerful, modern, corporate‑grade promotional infographic for Xperts Inc., an elite executive search firm. Use a light gradient background (cream → deep maroon red → Navy Blue) to symbolize strategic depth, confidentiality, and high‑stakes leadership recruitment. The design should feel corporate, psychological, and visually dramatic, reflecting the firm’s precision, integrity, and global‑class talent acquisition approach. Add the logo on the upper part in the middle Add the website www.xperts-inc.org under the logo Incorporate visual cues inspired by the firm’s website www.xperts-inc.org, including: • Clean, modern typography • Professional, minimalist layout • High‑contrast accents • Executive‑level tone and structure SECTION 1 — Title & Brand Identity (Top Center) • Large, bold title: “Xperts Inc. - Executive Search Excellence” • Subheading: “Precision. Integrity. Leadership Talent Delivered.” • Subtle geometric lines or abstract network patterns to symbolize intelligence, connectivity, and strategic insight. SECTION 2 — Core Value Proposition (Main Body) Use a multi‑column layout with high‑contrast icons and dramatic lighting. 1. Elite Executive Search • Icon: chess king or strategic map • Symbolism: leadership, strategy, top‑tier decision‑making • Text: “We identify, evaluate, and secure high‑impact leaders who transform organizations.” 2. Global Talent Intelligence • Icon: network globe or interconnected nodes • Symbolism: reach, insight, global access • Text: “Access to hidden, high‑performing executive talent across industries and regions.” 3. Confidential & Precise Recruitment • Icon: shield or lock • Symbolism: discretion, trust, risk‑free hiring • Text: “Secure, confidential searches for mission‑critical leadership roles.” 4. Cultural & Leadership Fit Assessment • Icon: interlocking shapes or harmony symbol • Symbolism: alignment, long‑term success • Text: “We match leaders not only by skill — but by values, behavior, and organizational fit.” 5. Strategic Partnership • Icon: handshake or connected pathways • Symbolism: collaboration, long‑term advisory • Text: “More than recruiters — we are advisors in organizational growth and leadership strategy.” SECTION 3 — Why Companies Choose Xperts Inc. Use lighter tones to contrast the dark background. Short, impactful statements: • “Access to hidden executive talent.” • “Faster, more accurate leadership hiring.” • “Reduced risk of mis‑hire.” • “Confidential, high‑stakes recruitment handled with precision.” • “Leadership placements that strengthen culture and performance.” Visual metaphors: • rising light • geometric beams • network grids • spotlight effects SECTION 4 — Website Call‑to‑Action (Bottom Banner) Bold, centered, elegant. Text: “Discover leadership talent that transforms organizations. Visit www.xperts-inc.org.” Visual: A soft upward glow or horizontal beam symbolizing clarity, trust, and executive‑level excellence. Xperts Inc. — Brand‑Aligned Color Palette & Iconography Guide A modern executive search brand needs a visual identity that communicates precision, trust, intelligence, and discretion. This guide is built to align with the tone and aesthetic of Xperts Inc., reinforcing its positioning as a high‑level, strategic recruitment partner. 🎨 COLOR PALETTE (Brand‑Aligned) A palette designed to feel corporate, psychological, dramatic, and elite, mirroring the dark, modern aesthetic of the website. 1. Primary Colors Deep Executive cream • Usage: Backgrounds, hero sections, high‑authority areas • Psychology: Intelligence, stability, leadership Charcoal Black • Usage: Dark gradients, overlays, structural elements • Psychology: Confidentiality, seriousness, executive presence Steel Gray • Usage: Secondary backgrounds, section dividers • Psychology: Professionalism, neutrality, clarity 2. Accent Colors Electric Blue / Maroon red • Usage: Highlights, call‑to‑action, key metrics • Psychology: Precision, innovation, intelligence Platinum Silver • HEX: #C7CCD1 • Usage: Icons, outlines, subtle emphasis • Psychology: Sophistication, refinement, modernity White Ice • HEX: #F5F7FA • Usage: Text on dark backgrounds, clean contrast • Psychology: Clarity, transparency, trust 3. Gradient Recommendation Charcoal Black (#0D0D0D) → Deep Executive Navy (#0A1A2F) • Usage: Hero banners, infographic backgrounds, promotional visuals • Effect: Dramatic, corporate, high‑impact 🔷 ICONOGRAPHY GUIDE (Corporate + Psychological + Modern) Icons should feel minimalist, geometric, and high‑contrast, reflecting the precision and intelligence of an executive search firm. 1. Style • Thin‑line or semi‑bold line icons • Rounded corners for approachability • Angular geometry for authority • Metallic or blue accents for emphasis • High contrast against dark backgrounds 2. Icon Themes for Xperts Inc. These align with the firm’s core services and messaging. Leadership & Strategy Icons • Chess king / queen • Strategic map • Compass • Lighthouse • Target with arrow Talent Intelligence Icons • Network nodes • Globe with connections • Brain‑inspired geometric patterns • Magnifying glass with data points Confidentiality & Precision Icons • Shield • Lock • Fingerprint • Document with checkmark • Secure vault Cultural & Behavioral Fit Icons • Interlocking shapes • Harmony symbol • Two silhouettes merging • Balanced scale Partnership & Advisory Icons • Handshake • Bridge • Connected pathways • Puzzle pieces fitting together 📐 Layout & Typography Recommendations To stay aligned with the brand: Typography • Primary: A modern sans‑serif (e.g., Montserrat, Inter, or Lato) • Secondary: A clean geometric font for headings (e.g., Poppins or Gotham‑style) • Use bold weights for titles, light/regular for body text Spacing • Wide spacing • Clean margins • Strong hierarchy • Minimal clutter Visual Tone • Executive • High‑trust • Analytical • Modern • Discreet 🔥 Brand Essence Summary Xperts Inc. should visually communicate: • Precision (clean lines, sharp geometry) • Confidentiality (dark palette, subtle gradients) • Intelligence (blue accents, data‑driven iconography) • Leadership (strategic symbols, bold typography) • Trust (silver and white contrast, balanced spacing)
ultra-realistic illustration and highly detailed digital render of panorama view in a forest with rich in huge colorful flowers in the style of Ori and The Blind Forest colorful crystals, highly detailed, vibrant and vivid, smooth, image ratio is 1600x2560 A professional cozy fantasy book cover titled "The Greywood Pantry", painterly storybook illustration, centered composition designed for strong thumbnail readability inside a hollow ancient tree, a warm glowing stone fireplace is built into the trunk, soft golden firelight illuminating a flat stone surface in front of the fire on the stone surface: an abundant but carefully arranged feast of modern foods grouped naturally into a cohesive spread including a steam basket of dim sum, a burger, a tall ice cream sundae, with 1–2 slightly larger hero dishes and the rest supporting, all grounded on the stone lighting is driven primarily by the fireplace, with soft magical ambient glow enhancing highlights, warm light reflecting onto the food, gentle shadows and depth, painterly textures with visible brush softness not a separate overlay, integrated into the environment, three trees forms a carved wooden ornamental frame around the scene, with subtle swirling filigree grown from wood, edges of the frame and small details have a medium-strength magical iridescent glow (gold dominant with hints of pink, blue, green), uneven and organic, like magical light catching edges rather than flat gradients background is deep black with slight texture and faint stars, fading naturally from the warm center light title text "The Greywood Pantry" large, elegant serif with a slightly whimsical cozy feel, softly glowing with warm firelight (stronger glow near bottom, softer at top), highly readable at small size subtitle "A Tale of Seconds, Stew, and Sanctuary" curved above in smaller serif text author name "A.C. Morepork" at the bottom in a simple carved wooden banner minimal clutter, strong visual hierarchy, food and fire as primary focus, cohesive painterly style throughout, high contrast for thumbnail visibility cinematic, high contrast, hdr, 4 k, trending on artstation, unreal engine, magical, hyperrealistic, bokeh, dof
Epic Movie Poster Prompt (Universal Cinematic Style) Ultra cinematic movie poster of a powerful warrior standing in the middle of a burning ancient city at night, intense expression, dramatic pose, glowing eyes, fire sparks flying in air, dark storm clouds, lightning in background, realistic smoke and destruction, highly detailed armor, cinematic orange and blue lighting, volumetric light rays, ultra realistic skin texture, blockbuster Hollywood style, sharp focus, depth of field, dramatic shadows, epic atmosphere, centered composition, title space at bottom, IMAX style, 8K ultra detail, masterpiece, movie poster design, vertical 4:5 Agar specific type chahiye to ye bhi use karo: 🔥 Mahakal Movie Poster Lord Shiva as Mahakal standing on Himalayan mountains during thunderstorm, glowing blue skin, trishul in hand, damru energy waves, giant moon behind, divine aura, cinematic clouds, powerful expression, ancient temple ruins, fire and smoke, ultra realistic, dark devotional fantasy, movie poster style, dramatic lighting, title at bottom, 8K ⚔️ Action Hero Poster Indian action hero walking through explosion in slow motion, black outfit, sunglasses, blood on face, holding weapon, rain and fire mixed atmosphere, cinematic lighting, intense expression, realistic movie poster, high detail, blockbuster action film vibe, vertical poster composition 😈 Dark Villain Poster terrifying dark king sitting on a massive throne in a ruined kingdom, red glowing eyes, black armor, smoke and fire everywhere, cinematic shadows, gothic atmosphere, ultra realistic movie poster, dramatic lighting, dark fantasy style, title typography space 💘 Romantic Poster romantic movie poster of a couple standing in rain under neon city lights, emotional expressions, cinematic reflections on wet road, soft lighting, dreamy atmosphere, Bollywood romance style, ultra detailed, realistic skin texture, movie title space
Create a BioRender-style, publication-ready vector infographic titled “研究内容框架图” for a grant proposal. Use clean flat BioRender vectors, thick outlines, minimal shadows, consistent spacing, and a readable sans-serif font (Microsoft YaHei). Use a 16:10 landscape canvas (taller than 16:9). All text inside boxes must be Chinese exactly as specified. Do not include any mathematical letters, symbols, or formulas. Layout The figure has two main sections: Section A (left/center): Research Content Framework (main flowchart) A large framed panel with a top-down or left-to-right flow of four major blocks (Step 1 → Step 2 → Step 3 → Step 4). Each block is a rounded rectangle with a short title plus 2–4 bullet points. Add clear arrows between steps. Add a small triangle badge near Step 3 showing the trade-off. Section B (right side): Three embedded mini-schematics aligned vertically, each framed, with titles: “闭环控制框架(流程图)” “耦合误差示意(维恩图)” “深度递归神经网络示意(时间展开)” Use thin dashed connectors from the main Step 1–3 blocks to the corresponding mini-schematics to show correspondence. Icons (flat, minimal) Multi-agent network graph (nodes + edges), drones and mobile robots, wireless signal, clock/bell for event-triggering, sample-and-hold icon, neural network/RNN icon, Lyapunov/stability icon, and a balance scale icon (performance vs communication vs energy). Keep icons minimal and consistent. Chinese text to place in boxes (exact) Title (top center) “学习辨识—事件触发耦合下非线性多智能体系统分布式一致性控制与收敛性/有界性分析:研究内容框架图” Section A: Main research content framework (4 steps) Step 1 (Block 1) Title: “一致性误差机理刻画” Bullets: “建立统一闭环误差建模框架” “刻画学习误差、触发保持误差与拓扑耦合误差的交叉作用” “解释收敛退化、触发频繁与性能下降的成因” “覆盖无领导一致、领导跟随一致与协同跟踪场景” Step 2 (Block 2) Title: “低保守收敛性与有界性分析” Bullets: “显式利用触发区间信息构造分析工具” “建立收敛性与有界性判据并降低保守性” “推导误差上界、无有限时间无限触发条件与触发间隔下界” “刻画触发间隔与拓扑、触发参数、辨识精度的定量关系” Step 3 (Block 3) Title: “协同设计与权衡机制” Bullets: “协同设计学习辨识器、动态事件触发与分布式控制协议” “保证学习参数与内部递归状态有界” “揭示学习率、触发参数、拓扑特征与一致性性能的定量关系” “建立一致性性能—通信次数—能耗开销的可计算权衡” Add-on icon near Step 3: A small triangular trade-off badge with vertex labels (Chinese): “一致性性能 / 通信次数 / 能耗开销” Caption next to triangle: “可计算权衡” Step 4 (Block 4) Title: “仿真分析与实验验证” Bullets: “搭建含未知非线性、扰动与通信约束的仿真平台” “对比不同触发规则、拓扑与学习精度下的性能与通信开销” “在多无人机与多机器人平台开展验证” “形成可推广的低通信、高可靠、可验证方法” Section B: Three mini-schematics (right side) Mini-panel 1: “闭环控制框架(流程图)” Draw a left-to-right flowchart with rounded blocks and arrows: Blocks (in order, Chinese text exact): “非线性多智能体系统” → “局部/邻域信息获取” → “一致性误差计算” → “学习辨识器(深度递归神经网络)” → “分布式控制器” → “动态事件触发器” → “网络传输与采样保持” → Back arrow to “非线性多智能体系统” Add two dashed feedback arrows from “一致性误差计算” to: “学习辨识器(深度递归神经网络)” (label: “误差驱动更新”) “动态事件触发器” (label: “误差驱动更新”) Add small notes: Under “动态事件触发器”: “按需通信/按需更新” Near “网络传输与采样保持”: “触发保持误差” Add a small timeline icon with ticks labeled in Chinese: “触发时刻…下一次触发时刻” and label “触发间隔”. Mini-panel 2: “耦合误差示意(维恩图)” Draw a three-circle Venn diagram with semi-transparent circles: Circle labels (Chinese): “学习辨识误差” (with RNN icon) “触发保持误差” (with clock + sample-and-hold icon) “拓扑耦合误差” (with network graph icon) Pairwise overlap labels: “学习更新×非均匀更新” “异步通信×拓扑传播” “分布式辨识×邻域耦合” Center overlap (bold): “耦合项集合” Under it: “影响一致性误差演化” Arrow from center to a right-side box titled “结果表征” with bullets: “收敛退化(渐近→最终有界)” “触发频繁/触发间隔变小” “稳态误差界增大/性能下降” Mini-panel 3: “深度递归神经网络示意(时间展开)” Draw a time-unrolled recurrent network schematic along a horizontal timeline labeled in Chinese: “上一时刻 → 当前时刻 → 下一时刻” At each time slice, show stacked recurrent blocks: Input label: “本体状态与邻域信息” → Middle label: “递归记忆状态” → Output label: “未知非线性与不确定项的在线辨识输出” Connect time slices with arrows labeled: “共享参数” Add a side arrow from “一致性误差” into a small box: “参数更新(投影/正则化/学习率调度)” Then arrow into: “学习参数更新” Style constraints BioRender clean scientific infographic, no photorealism, no clutter, high readability. Strict rule: do not include any math symbols, letters, equations, or subscripts. Negative prompt: Avoid photorealistic style, avoid dense paragraphs, avoid handwritten fonts, avoid low resolution, avoid formulas, avoid math letters.
Create a BioRender-style, publication-ready vector infographic titled “研究内容框架图” for a grant proposal. Use clean flat BioRender vectors, thick outlines, minimal shadows, consistent spacing, and a readable sans-serif font (Microsoft YaHei). Use a 16:10 landscape canvas (taller than 16:9). All text inside boxes must be Chinese exactly as specified. Do not include any mathematical letters, symbols, or formulas. Layout The figure has two main sections: Section A (left/center): Research Content Framework (main flowchart) A large framed panel with a top-down or left-to-right flow of four major blocks (Step 1 → Step 2 → Step 3 → Step 4). Each block is a rounded rectangle with a short title plus 2–4 bullet points. Add clear arrows between steps. Add a small triangle badge near Step 3 showing the trade-off. Section B (right side): Three embedded mini-schematics aligned vertically, each framed, with titles: “闭环控制框架(流程图)” “耦合误差示意(维恩图)” “深度递归神经网络示意(时间展开)” Use thin dashed connectors from the main Step 1–3 blocks to the corresponding mini-schematics to show correspondence. Icons (flat, minimal) Multi-agent network graph (nodes + edges), drones and mobile robots, wireless signal, clock/bell for event-triggering, sample-and-hold icon, neural network/RNN icon, Lyapunov/stability icon, and a balance scale icon (performance vs communication vs energy). Keep icons minimal and consistent. Chinese text to place in boxes (exact) Title (top center) “学习辨识—事件触发耦合下非线性多智能体系统分布式一致性控制与收敛性/有界性分析:研究内容框架图” Section A: Main research content framework (4 steps) Step 1 (Block 1) Title: “一致性误差机理刻画” Bullets: “建立统一闭环误差建模框架” “刻画学习误差、触发保持误差与拓扑耦合误差的交叉作用” “解释收敛退化、触发频繁与性能下降的成因” “覆盖无领导一致、领导跟随一致与协同跟踪场景” Step 2 (Block 2) Title: “低保守收敛性与有界性分析” Bullets: “显式利用触发区间信息构造分析工具” “建立收敛性与有界性判据并降低保守性” “推导误差上界、无有限时间无限触发条件与触发间隔下界” “刻画触发间隔与拓扑、触发参数、辨识精度的定量关系” Step 3 (Block 3) Title: “协同设计与权衡机制” Bullets: “协同设计学习辨识器、动态事件触发与分布式控制协议” “保证学习参数与内部递归状态有界” “揭示学习率、触发参数、拓扑特征与一致性性能的定量关系” “建立一致性性能—通信次数—能耗开销的可计算权衡” Add-on icon near Step 3: A small triangular trade-off badge with vertex labels (Chinese): “一致性性能 / 通信次数 / 能耗开销” Caption next to triangle: “可计算权衡” Step 4 (Block 4) Title: “仿真分析与实验验证” Bullets: “搭建含未知非线性、扰动与通信约束的仿真平台” “对比不同触发规则、拓扑与学习精度下的性能与通信开销” “在多无人机与多机器人平台开展验证” “形成可推广的低通信、高可靠、可验证方法” Section B: Three mini-schematics (right side) Mini-panel 1: “闭环控制框架(流程图)” Draw a left-to-right flowchart with rounded blocks and arrows: Blocks (in order, Chinese text exact): “非线性多智能体系统” → “局部/邻域信息获取” → “一致性误差计算” → “学习辨识器(深度递归神经网络)” → “分布式控制器” → “动态事件触发器” → “网络传输与采样保持” → Back arrow to “非线性多智能体系统” Add two dashed feedback arrows from “一致性误差计算” to: “学习辨识器(深度递归神经网络)” (label: “误差驱动更新”) “动态事件触发器” (label: “误差驱动更新”) Add small notes: Under “动态事件触发器”: “按需通信/按需更新” Near “网络传输与采样保持”: “触发保持误差” Add a small timeline icon with ticks labeled in Chinese: “触发时刻…下一次触发时刻” and label “触发间隔”. Mini-panel 2: “耦合误差示意(维恩图)” Draw a three-circle Venn diagram with semi-transparent circles: Circle labels (Chinese): “学习辨识误差” (with RNN icon) “触发保持误差” (with clock + sample-and-hold icon) “拓扑耦合误差” (with network graph icon) Pairwise overlap labels: “学习更新×非均匀更新” “异步通信×拓扑传播” “分布式辨识×邻域耦合” Center overlap (bold): “耦合项集合” Under it: “影响一致性误差演化” Arrow from center to a right-side box titled “结果表征” with bullets: “收敛退化(渐近→最终有界)” “触发频繁/触发间隔变小” “稳态误差界增大/性能下降” Mini-panel 3: “深度递归神经网络示意(时间展开)” Draw a time-unrolled recurrent network schematic along a horizontal timeline labeled in Chinese: “上一时刻 → 当前时刻 → 下一时刻” At each time slice, show stacked recurrent blocks: Input label: “本体状态与邻域信息” → Middle label: “递归记忆状态” → Output label: “未知非线性与不确定项的在线辨识输出” Connect time slices with arrows labeled: “共享参数” Add a side arrow from “一致性误差” into a small box: “参数更新(投影/正则化/学习率调度)” Then arrow into: “学习参数更新” Style constraints BioRender clean scientific infographic, no photorealism, no clutter, high readability. Strict rule: do not include any math symbols, letters, equations, or subscripts. Negative prompt: Avoid photorealistic style, avoid dense paragraphs, avoid handwritten fonts, avoid low resolution, avoid formulas, avoid math letters.
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Epic Movie Poster Prompt (Universal Cinematic Style) Ultra cinematic movie poster of a powerful warrior standing in the middle of a burning ancient city at night, intense expression, dramatic pose, glowing eyes, fire sparks flying in air, dark storm clouds, lightning in background, realistic smoke and destruction, highly detailed armor, cinematic orange and blue lighting, volumetric light rays, ultra realistic skin texture, blockbuster Hollywood style, sharp focus, depth of field, dramatic shadows, epic atmosphere, centered composition, title space at bottom, IMAX style, 8K ultra detail, masterpiece, movie poster design, vertical 4:5 Agar specific type chahiye to ye bhi use karo: 🔥 Mahakal Movie Poster Lord Shiva as Mahakal standing on Himalayan mountains during thunderstorm, glowing blue skin, trishul in hand, damru energy waves, giant moon behind, divine aura, cinematic clouds, powerful expression, ancient temple ruins, fire and smoke, ultra realistic, dark devotional fantasy, movie poster style, dramatic lighting, title at bottom, 8K ⚔️ Action Hero Poster Indian action hero walking through explosion in slow motion, black outfit, sunglasses, blood on face, holding weapon, rain and fire mixed atmosphere, cinematic lighting, intense expression, realistic movie poster, high detail, blockbuster action film vibe, vertical poster composition 😈 Dark Villain Poster terrifying dark king sitting on a massive throne in a ruined kingdom, red glowing eyes, black armor, smoke and fire everywhere, cinematic shadows, gothic atmosphere, ultra realistic movie poster, dramatic lighting, dark fantasy style, title typography space 💘 Romantic Poster romantic movie poster of a couple standing in rain under neon city lights, emotional expressions, cinematic reflections on wet road, soft lighting, dreamy atmosphere, Bollywood romance style, ultra detailed, realistic skin texture, movie title space
Prompt: Design a minimalist and bold book cover for a non-fiction title called Fork It, I Need a New Brain: A Guide to Mental Clarity and Mood Without Losing Your Mind. The book is an evidence-based yet conversational guide to eating for better cognitive function, memory, mood, and focus. It blends storytelling with science, speaking to readers who are tired of wellness fads and want practical, real-food strategies for rebooting how their brain performs—without becoming obsessive or extreme. Visual Style: Clean and high-contrast with a modern, striking visual. Use a white background with bright green as the dominant accent color. The design should be highly minimalist—no clutter, no photographic food imagery. The mood should feel intelligent, slightly rebellious, and forward-thinking. It should stand out boldly both in thumbnail view (Amazon/Kindle) and on physical shelves. Typography: Use a modern sans-serif font—sharp, clean, and unfussy. Place the main title in the center, with “Fork It” on the top line and “I Need a New Brain” below it. The subtitle should be smaller, black, and placed just beneath the title, aligned center. All-caps or dynamic text spacing can be used to heighten impact. Imagery: Include a single silver fork in the center or integrated cleverly into the title (e.g., acting as the “I” in “Fork It” or piercing through a clean white surface or soft object). Avoid brains, head silhouettes, puzzle pieces, or light bulbs. The fork should symbolize both frustration and transformation—a moment of decision. Mood Board Keywords: Minimalism, bright white, neon green, clean edge, tension, clarity, irreverent wellness, modern intelligence, cognitive refresh, food as design, less-is-more.
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Cinematic movie poster, 2:3 aspect ratio. A dramatic, photorealistic scene of a lone figure on a rain-drenched urban rooftop at twilight, gazing at a neon-lit cityscape. Moody teal-and-orange color grading, volumetric fog, high-contrast cinematic lighting. Top center: elegant, bold title typography with subtle metallic finish. Just above the title: three symmetrical, minimalist festival laurel wreaths (Cannes, Sundance, Venice style). Bottom third: clean, professionally spaced credit block with "A FILM BY [DIRECTOR]", main cast names, studio logos, and a release date. Modern cinematic font hierarchy, proper kerning, ample negative space around text. Ultra-detailed, award-winning graphic design, 4K, professional poster layout, photorealistic rendering, no distorted letters, studio-quality composition.
Design a powerful, modern, corporate‑grade promotional infographic for Xperts Inc., an elite executive search firm. Use a light gradient background (cream → deep maroon red → Navy Blue) to symbolize strategic depth, confidentiality, and high‑stakes leadership recruitment. The design should feel corporate, psychological, and visually dramatic, reflecting the firm’s precision, integrity, and global‑class talent acquisition approach. Add the logo on the upper part in the middle Add the website www.xperts-inc.org under the logo Incorporate visual cues inspired by the firm’s website www.xperts-inc.org, including: • Clean, modern typography • Professional, minimalist layout • High‑contrast accents • Executive‑level tone and structure SECTION 1 — Title & Brand Identity (Top Center) • Large, bold title: “Xperts Inc. - Executive Search Excellence” • Subheading: “Precision. Integrity. Leadership Talent Delivered.” • Subtle geometric lines or abstract network patterns to symbolize intelligence, connectivity, and strategic insight. SECTION 2 — Core Value Proposition (Main Body) Use a multi‑column layout with high‑contrast icons and dramatic lighting. 1. Elite Executive Search • Icon: chess king or strategic map • Symbolism: leadership, strategy, top‑tier decision‑making • Text: “We identify, evaluate, and secure high‑impact leaders who transform organizations.” 2. Global Talent Intelligence • Icon: network globe or interconnected nodes • Symbolism: reach, insight, global access • Text: “Access to hidden, high‑performing executive talent across industries and regions.” 3. Confidential & Precise Recruitment • Icon: shield or lock • Symbolism: discretion, trust, risk‑free hiring • Text: “Secure, confidential searches for mission‑critical leadership roles.” 4. Cultural & Leadership Fit Assessment • Icon: interlocking shapes or harmony symbol • Symbolism: alignment, long‑term success • Text: “We match leaders not only by skill — but by values, behavior, and organizational fit.” 5. Strategic Partnership • Icon: handshake or connected pathways • Symbolism: collaboration, long‑term advisory • Text: “More than recruiters — we are advisors in organizational growth and leadership strategy.” SECTION 3 — Why Companies Choose Xperts Inc. Use lighter tones to contrast the dark background. Short, impactful statements: • “Access to hidden executive talent.” • “Faster, more accurate leadership hiring.” • “Reduced risk of mis‑hire.” • “Confidential, high‑stakes recruitment handled with precision.” • “Leadership placements that strengthen culture and performance.” Visual metaphors: • rising light • geometric beams • network grids • spotlight effects SECTION 4 — Website Call‑to‑Action (Bottom Banner) Bold, centered, elegant. Text: “Discover leadership talent that transforms organizations. Visit www.xperts-inc.org.” Visual: A soft upward glow or horizontal beam symbolizing clarity, trust, and executive‑level excellence. Xperts Inc. — Brand‑Aligned Color Palette & Iconography Guide A modern executive search brand needs a visual identity that communicates precision, trust, intelligence, and discretion. This guide is built to align with the tone and aesthetic of Xperts Inc., reinforcing its positioning as a high‑level, strategic recruitment partner. 🎨 COLOR PALETTE (Brand‑Aligned) A palette designed to feel corporate, psychological, dramatic, and elite, mirroring the dark, modern aesthetic of the website. 1. Primary Colors Deep Executive cream • Usage: Backgrounds, hero sections, high‑authority areas • Psychology: Intelligence, stability, leadership Charcoal Black • Usage: Dark gradients, overlays, structural elements • Psychology: Confidentiality, seriousness, executive presence Steel Gray • Usage: Secondary backgrounds, section dividers • Psychology: Professionalism, neutrality, clarity 2. Accent Colors Electric Blue / Maroon red • Usage: Highlights, call‑to‑action, key metrics • Psychology: Precision, innovation, intelligence Platinum Silver • HEX: #C7CCD1 • Usage: Icons, outlines, subtle emphasis • Psychology: Sophistication, refinement, modernity White Ice • HEX: #F5F7FA • Usage: Text on dark backgrounds, clean contrast • Psychology: Clarity, transparency, trust 3. Gradient Recommendation Charcoal Black (#0D0D0D) → Deep Executive Navy (#0A1A2F) • Usage: Hero banners, infographic backgrounds, promotional visuals • Effect: Dramatic, corporate, high‑impact 🔷 ICONOGRAPHY GUIDE (Corporate + Psychological + Modern) Icons should feel minimalist, geometric, and high‑contrast, reflecting the precision and intelligence of an executive search firm. 1. Style • Thin‑line or semi‑bold line icons • Rounded corners for approachability • Angular geometry for authority • Metallic or blue accents for emphasis • High contrast against dark backgrounds 2. Icon Themes for Xperts Inc. These align with the firm’s core services and messaging. Leadership & Strategy Icons • Chess king / queen • Strategic map • Compass • Lighthouse • Target with arrow Talent Intelligence Icons • Network nodes • Globe with connections • Brain‑inspired geometric patterns • Magnifying glass with data points Confidentiality & Precision Icons • Shield • Lock • Fingerprint • Document with checkmark • Secure vault Cultural & Behavioral Fit Icons • Interlocking shapes • Harmony symbol • Two silhouettes merging • Balanced scale Partnership & Advisory Icons • Handshake • Bridge • Connected pathways • Puzzle pieces fitting together 📐 Layout & Typography Recommendations To stay aligned with the brand: Typography • Primary: A modern sans‑serif (e.g., Montserrat, Inter, or Lato) • Secondary: A clean geometric font for headings (e.g., Poppins or Gotham‑style) • Use bold weights for titles, light/regular for body text Spacing • Wide spacing • Clean margins • Strong hierarchy • Minimal clutter Visual Tone • Executive • High‑trust • Analytical • Modern • Discreet 🔥 Brand Essence Summary Xperts Inc. should visually communicate: • Precision (clean lines, sharp geometry) • Confidentiality (dark palette, subtle gradients) • Intelligence (blue accents, data‑driven iconography) • Leadership (strategic symbols, bold typography) • Trust (silver and white contrast, balanced spacing)
ultra-realistic illustration and highly detailed digital render of panorama view in a forest with rich in huge colorful flowers in the style of Ori and The Blind Forest colorful crystals, highly detailed, vibrant and vivid, smooth, image ratio is 1600x2560 A professional cozy fantasy book cover titled "The Greywood Pantry", painterly storybook illustration, centered composition designed for strong thumbnail readability inside a hollow ancient tree, a warm glowing stone fireplace is built into the trunk, soft golden firelight illuminating a flat stone surface in front of the fire on the stone surface: an abundant but carefully arranged feast of modern foods grouped naturally into a cohesive spread including a steam basket of dim sum, a burger, a tall ice cream sundae, with 1–2 slightly larger hero dishes and the rest supporting, all grounded on the stone lighting is driven primarily by the fireplace, with soft magical ambient glow enhancing highlights, warm light reflecting onto the food, gentle shadows and depth, painterly textures with visible brush softness not a separate overlay, integrated into the environment, three trees forms a carved wooden ornamental frame around the scene, with subtle swirling filigree grown from wood, edges of the frame and small details have a medium-strength magical iridescent glow (gold dominant with hints of pink, blue, green), uneven and organic, like magical light catching edges rather than flat gradients background is deep black with slight texture and faint stars, fading naturally from the warm center light title text "The Greywood Pantry" large, elegant serif with a slightly whimsical cozy feel, softly glowing with warm firelight (stronger glow near bottom, softer at top), highly readable at small size subtitle "A Tale of Seconds, Stew, and Sanctuary" curved above in smaller serif text author name "A.C. Morepork" at the bottom in a simple carved wooden banner minimal clutter, strong visual hierarchy, food and fire as primary focus, cohesive painterly style throughout, high contrast for thumbnail visibility cinematic, high contrast, hdr, 4 k, trending on artstation, unreal engine, magical, hyperrealistic, bokeh, dof
Create a BioRender-style, publication-ready vector infographic titled “研究内容框架图” for a grant proposal. Use clean flat BioRender vectors, thick outlines, minimal shadows, consistent spacing, and a readable sans-serif font (Microsoft YaHei). Use a 16:10 landscape canvas (taller than 16:9). All text inside boxes must be Chinese exactly as specified. Do not include any mathematical letters, symbols, or formulas. Layout The figure has two main sections: Section A (left/center): Research Content Framework (main flowchart) A large framed panel with a top-down or left-to-right flow of four major blocks (Step 1 → Step 2 → Step 3 → Step 4). Each block is a rounded rectangle with a short title plus 2–4 bullet points. Add clear arrows between steps. Add a small triangle badge near Step 3 showing the trade-off. Section B (right side): Three embedded mini-schematics aligned vertically, each framed, with titles: “闭环控制框架(流程图)” “耦合误差示意(维恩图)” “深度递归神经网络示意(时间展开)” Use thin dashed connectors from the main Step 1–3 blocks to the corresponding mini-schematics to show correspondence. Icons (flat, minimal) Multi-agent network graph (nodes + edges), drones and mobile robots, wireless signal, clock/bell for event-triggering, sample-and-hold icon, neural network/RNN icon, Lyapunov/stability icon, and a balance scale icon (performance vs communication vs energy). Keep icons minimal and consistent. Chinese text to place in boxes (exact) Title (top center) “学习辨识—事件触发耦合下非线性多智能体系统分布式一致性控制与收敛性/有界性分析:研究内容框架图” Section A: Main research content framework (4 steps) Step 1 (Block 1) Title: “一致性误差机理刻画” Bullets: “建立统一闭环误差建模框架” “刻画学习误差、触发保持误差与拓扑耦合误差的交叉作用” “解释收敛退化、触发频繁与性能下降的成因” “覆盖无领导一致、领导跟随一致与协同跟踪场景” Step 2 (Block 2) Title: “低保守收敛性与有界性分析” Bullets: “显式利用触发区间信息构造分析工具” “建立收敛性与有界性判据并降低保守性” “推导误差上界、无有限时间无限触发条件与触发间隔下界” “刻画触发间隔与拓扑、触发参数、辨识精度的定量关系” Step 3 (Block 3) Title: “协同设计与权衡机制” Bullets: “协同设计学习辨识器、动态事件触发与分布式控制协议” “保证学习参数与内部递归状态有界” “揭示学习率、触发参数、拓扑特征与一致性性能的定量关系” “建立一致性性能—通信次数—能耗开销的可计算权衡” Add-on icon near Step 3: A small triangular trade-off badge with vertex labels (Chinese): “一致性性能 / 通信次数 / 能耗开销” Caption next to triangle: “可计算权衡” Step 4 (Block 4) Title: “仿真分析与实验验证” Bullets: “搭建含未知非线性、扰动与通信约束的仿真平台” “对比不同触发规则、拓扑与学习精度下的性能与通信开销” “在多无人机与多机器人平台开展验证” “形成可推广的低通信、高可靠、可验证方法” Section B: Three mini-schematics (right side) Mini-panel 1: “闭环控制框架(流程图)” Draw a left-to-right flowchart with rounded blocks and arrows: Blocks (in order, Chinese text exact): “非线性多智能体系统” → “局部/邻域信息获取” → “一致性误差计算” → “学习辨识器(深度递归神经网络)” → “分布式控制器” → “动态事件触发器” → “网络传输与采样保持” → Back arrow to “非线性多智能体系统” Add two dashed feedback arrows from “一致性误差计算” to: “学习辨识器(深度递归神经网络)” (label: “误差驱动更新”) “动态事件触发器” (label: “误差驱动更新”) Add small notes: Under “动态事件触发器”: “按需通信/按需更新” Near “网络传输与采样保持”: “触发保持误差” Add a small timeline icon with ticks labeled in Chinese: “触发时刻…下一次触发时刻” and label “触发间隔”. Mini-panel 2: “耦合误差示意(维恩图)” Draw a three-circle Venn diagram with semi-transparent circles: Circle labels (Chinese): “学习辨识误差” (with RNN icon) “触发保持误差” (with clock + sample-and-hold icon) “拓扑耦合误差” (with network graph icon) Pairwise overlap labels: “学习更新×非均匀更新” “异步通信×拓扑传播” “分布式辨识×邻域耦合” Center overlap (bold): “耦合项集合” Under it: “影响一致性误差演化” Arrow from center to a right-side box titled “结果表征” with bullets: “收敛退化(渐近→最终有界)” “触发频繁/触发间隔变小” “稳态误差界增大/性能下降” Mini-panel 3: “深度递归神经网络示意(时间展开)” Draw a time-unrolled recurrent network schematic along a horizontal timeline labeled in Chinese: “上一时刻 → 当前时刻 → 下一时刻” At each time slice, show stacked recurrent blocks: Input label: “本体状态与邻域信息” → Middle label: “递归记忆状态” → Output label: “未知非线性与不确定项的在线辨识输出” Connect time slices with arrows labeled: “共享参数” Add a side arrow from “一致性误差” into a small box: “参数更新(投影/正则化/学习率调度)” Then arrow into: “学习参数更新” Style constraints BioRender clean scientific infographic, no photorealism, no clutter, high readability. Strict rule: do not include any math symbols, letters, equations, or subscripts. Negative prompt: Avoid photorealistic style, avoid dense paragraphs, avoid handwritten fonts, avoid low resolution, avoid formulas, avoid math letters.
Jinx, on top of a police car, explosions behind her, fire, chaos, minigun, far view, bullet he(Best Quality, Masterpiece), (steampunk theme), centered, front cover of fashion magazine, concept art, design, magazine design, 1girl, cute, blonde ponytail hair, gothic steampunk dress, model pose, (epic composition, epic proportion), vibrant color, text, diagrams, advertisements, magazine title, typography, (Best Quality, Masterpiece), (steampunk theme), centered, front cover of fashion magazine, concept art, design, magazine design, 1girl, cute, blonde ponytail hair, gothic steampunk dress, model pose, (epic composition, epic proportion), vibrant color, text, diagrams, advertisements, magazine title, typography, (Best Quality, Masterpiece), (steampunk theme), centered, front cover of fashion magazine, concept art, design, magazine design, 1girl, cute, blonde ponytail hair, gothic steampunk dress, model pose, (epic composition, epic proportion), vibrant color, text, diagrams, advertisements, magazine title, typography, <lora:more_details:0.7>, <lora:beautiful_detailed_eyes:0.7>, jinxlol, <lora:JinxLol:0.9>
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Create a BioRender-style, publication-ready vector infographic titled “研究内容框架图” for a grant proposal. Use clean flat BioRender vectors, thick outlines, minimal shadows, consistent spacing, and a readable sans-serif font (Microsoft YaHei). Use a 16:10 landscape canvas (taller than 16:9). All text inside boxes must be Chinese exactly as specified. Do not include any mathematical letters, symbols, or formulas. Layout The figure has two main sections: Section A (left/center): Research Content Framework (main flowchart) A large framed panel with a top-down or left-to-right flow of four major blocks (Step 1 → Step 2 → Step 3 → Step 4). Each block is a rounded rectangle with a short title plus 2–4 bullet points. Add clear arrows between steps. Add a small triangle badge near Step 3 showing the trade-off. Section B (right side): Three embedded mini-schematics aligned vertically, each framed, with titles: “闭环控制框架(流程图)” “耦合误差示意(维恩图)” “深度递归神经网络示意(时间展开)” Use thin dashed connectors from the main Step 1–3 blocks to the corresponding mini-schematics to show correspondence. Icons (flat, minimal) Multi-agent network graph (nodes + edges), drones and mobile robots, wireless signal, clock/bell for event-triggering, sample-and-hold icon, neural network/RNN icon, Lyapunov/stability icon, and a balance scale icon (performance vs communication vs energy). Keep icons minimal and consistent. Chinese text to place in boxes (exact) Title (top center) “学习辨识—事件触发耦合下非线性多智能体系统分布式一致性控制与收敛性/有界性分析:研究内容框架图” Section A: Main research content framework (4 steps) Step 1 (Block 1) Title: “一致性误差机理刻画” Bullets: “建立统一闭环误差建模框架” “刻画学习误差、触发保持误差与拓扑耦合误差的交叉作用” “解释收敛退化、触发频繁与性能下降的成因” “覆盖无领导一致、领导跟随一致与协同跟踪场景” Step 2 (Block 2) Title: “低保守收敛性与有界性分析” Bullets: “显式利用触发区间信息构造分析工具” “建立收敛性与有界性判据并降低保守性” “推导误差上界、无有限时间无限触发条件与触发间隔下界” “刻画触发间隔与拓扑、触发参数、辨识精度的定量关系” Step 3 (Block 3) Title: “协同设计与权衡机制” Bullets: “协同设计学习辨识器、动态事件触发与分布式控制协议” “保证学习参数与内部递归状态有界” “揭示学习率、触发参数、拓扑特征与一致性性能的定量关系” “建立一致性性能—通信次数—能耗开销的可计算权衡” Add-on icon near Step 3: A small triangular trade-off badge with vertex labels (Chinese): “一致性性能 / 通信次数 / 能耗开销” Caption next to triangle: “可计算权衡” Step 4 (Block 4) Title: “仿真分析与实验验证” Bullets: “搭建含未知非线性、扰动与通信约束的仿真平台” “对比不同触发规则、拓扑与学习精度下的性能与通信开销” “在多无人机与多机器人平台开展验证” “形成可推广的低通信、高可靠、可验证方法” Section B: Three mini-schematics (right side) Mini-panel 1: “闭环控制框架(流程图)” Draw a left-to-right flowchart with rounded blocks and arrows: Blocks (in order, Chinese text exact): “非线性多智能体系统” → “局部/邻域信息获取” → “一致性误差计算” → “学习辨识器(深度递归神经网络)” → “分布式控制器” → “动态事件触发器” → “网络传输与采样保持” → Back arrow to “非线性多智能体系统” Add two dashed feedback arrows from “一致性误差计算” to: “学习辨识器(深度递归神经网络)” (label: “误差驱动更新”) “动态事件触发器” (label: “误差驱动更新”) Add small notes: Under “动态事件触发器”: “按需通信/按需更新” Near “网络传输与采样保持”: “触发保持误差” Add a small timeline icon with ticks labeled in Chinese: “触发时刻…下一次触发时刻” and label “触发间隔”. Mini-panel 2: “耦合误差示意(维恩图)” Draw a three-circle Venn diagram with semi-transparent circles: Circle labels (Chinese): “学习辨识误差” (with RNN icon) “触发保持误差” (with clock + sample-and-hold icon) “拓扑耦合误差” (with network graph icon) Pairwise overlap labels: “学习更新×非均匀更新” “异步通信×拓扑传播” “分布式辨识×邻域耦合” Center overlap (bold): “耦合项集合” Under it: “影响一致性误差演化” Arrow from center to a right-side box titled “结果表征” with bullets: “收敛退化(渐近→最终有界)” “触发频繁/触发间隔变小” “稳态误差界增大/性能下降” Mini-panel 3: “深度递归神经网络示意(时间展开)” Draw a time-unrolled recurrent network schematic along a horizontal timeline labeled in Chinese: “上一时刻 → 当前时刻 → 下一时刻” At each time slice, show stacked recurrent blocks: Input label: “本体状态与邻域信息” → Middle label: “递归记忆状态” → Output label: “未知非线性与不确定项的在线辨识输出” Connect time slices with arrows labeled: “共享参数” Add a side arrow from “一致性误差” into a small box: “参数更新(投影/正则化/学习率调度)” Then arrow into: “学习参数更新” Style constraints BioRender clean scientific infographic, no photorealism, no clutter, high readability. Strict rule: do not include any math symbols, letters, equations, or subscripts. Negative prompt: Avoid photorealistic style, avoid dense paragraphs, avoid handwritten fonts, avoid low resolution, avoid formulas, avoid math letters.