A sample prompt of what you can find in this page
Prompt by 6f471672875

adaptability Nano Banana prompts

very few results

3 months ago

A ultra realistic photo of a girl standing next to a Rolls-Royce, Her eyes are bright, cool blue with a hint of grey, slightly almond-shaped with thick naturally curled lashes and softly defined brows. Her nose is delicate and narrow with a softly rounded tip, clearly adorned with a small silver nose-ring piercing on the left nostril, catching a subtle metallic reflection. Her lips are full and softly textured in warm rose-brown. Deep brunette hair in long natural waves with curtain bangs and a few realistic flyaways. Warm sun-kissed bronze skin with fine freckles across cheeks and nose; visible pores and micro-texture in natural light. with old egyptian buildings in the background. Shot as if on a disposable Fujifilm camera with an 8mm fisheye lens; Portra 400 + Cinestill 800 film aesthetic; heavy grain, dusty frame, slight film imperfections, direct flash. Vogue fashion editorial vibe, gritty film photography style, dark cinematic tones, ultra-realistic textures, glossy reflections, and photo-realism. Moisture-reactive and snug fabric physics, natural fabric tension with contour shaping, subtle highlights on folds and curves with midtones matte for realism, gravity-aware and maximally opulent décolleté effect, ultra-voluminous neckline shaping, celebrity-style glamour, influencer aesthetics with refined, full silhouette, subtle moisture-adaptive skin sheen with natural specular highlights, visible pores, soft skin texture, faint vein detailing for hyperrealism.

2 months ago

Scientific infographic illustrating an AI-driven closed-loop framework for virtual molecular library construction, showing the adaptive cycle of “Representation – Generation – Prediction – Feedback”. Central theme: artificial intelligence empowering drug discovery and molecular design. The diagram is a circular workflow structure centered on the AI virtual molecular library system. Left module: Representation Learning, visualized with neural network icons, molecular graphs, protein structures, and amino acid sequence symbols, representing molecular and protein feature embeddings. Upper-right module: Molecular Generation, showing diffusion or VAE-like model generating diverse small molecules, arrows indicating exploration of chemical space, novelty, and synthesizability constraints. Lower-right module: Property Prediction, containing ADMET, activity, and selectivity metrics represented by radar charts or data panels, feeding results back to the representation module to close the loop. Bottom section: Evolution from virtual to drug-like molecular libraries, shown as a smooth gradient arrow with multi-objective optimization icons balancing drug-likeness and diversity. Right-side branch: Pretrained models for new target ligand design, divided into three submodules—small molecule pretraining, protein pretraining, and cross-modal pretraining (protein–ligand interaction)—depicting embedding fusion or contrastive learning in shared latent space. No human figures, only abstract scientific symbols and molecular visuals. Style: flat vector scientific infographic, modern and minimalistic, clear logical flow, smooth connections between modules. Color scheme: blue for AI and representation, orange-yellow for generation, green for prediction; background light gray or white. Typography: clean sans-serif labels, concise annotations. High resolution (≥600 dpi), suitable for journal publication, ultra-clear, balanced layout, professional academic tone.