Male Prompt
Male Haircut Analysis + Image Generation Prompt (Nano Banana Pro Optimized)
Analyze the single image I upload.
Identify my exact face shape and hair type with precision.
Then generate a vertical 9:16 4K 3x3 grid of hairstyle reference images directly on my face.
Requirements:
Analyze the uploaded image to detect:
β’ Face shape
β’ Hair density, texture, curl pattern, and growth direction
Based on this analysis, recommend haircuts for three scenarios:
β’ Professional or workplace
β’ University or college
β’ School or teenage
Provide 4 haircut options per scenario, each with a short, specific explanation of why it suits my geometry and hair behavior.
After the recommendations, generate a 3x3 grid of haircut images, each placed realistically on my face.
Technical requirements:
β’ Vertical 9:16 orientation
β’ 4K quality
β’ Realistic lighting
β’ Natural hair flow and believable texture
β’ No fantasy looks or exaggerated AI styling
Variation rules for the 3x3 grid:
β’ Mix short, medium, and slightly longer styles
β’ Reflect the recommended haircuts
β’ Maintain consistency with my real hair type and proportions
Output must be structured, clean, and easy to compare across scenarios.
Your goal is accuracy, realism, and professional grooming quality.
Female Prompt
Female Haircut Analysis + Image Generation Prompt (Nano Banana Pro Optimized)
Analyze the single image I upload.
Identify my face shape and hair type with high precision.
Then generate a vertical 9:16 4K 3x3 grid of hairstyle reference images directly on my face.
Requirements:
Analyze the uploaded image to detect:
β’ Face shape (jawline, cheekbones, forehead ratio)
β’ Hair density, texture, curl pattern (1Aβ4C), porosity, and parting tendencies
Based on the analysis, recommend haircuts for three scenarios:
β’ Professional or workplace
β’ University or college
β’ School or teenage
Provide 4 haircut options per scenario, each with a short, accurate explanation of why it flatters my geometry and natural hair behavior.
After the recommendations, generate a 3x3 grid of hairstyle images, each shown realistically on my face.
Technical requirements:
β’ Vertical 9:16 orientation
β’ 4K quality
β’ Natural lighting and realistic hair movement
β’ No overly stylized or unrealistic AI artifacts
Variation rules for the 3x3 grid:
β’ Mix short, medium, and long hairstyles
β’ Include silhouettes that match the recommended cuts
β’ Respect my actual hair texture and proportions
Keep the output clean, structured, and easy to compare across all scenarios.
The goal is accuracy, realism, and expert-level styling guidance.
Male Haircut Analysis + Image Generation Prompt (Nano Banana Pro Optimized)
Analyze the single image I upload.
Identify my exact face shape and hair type with precision.
Then generate a vertical 9:16 4K 3x3 grid of hairstyle reference images directly on my face.
Requirements:
Analyze the uploaded image to detect:
β’ Face shape
β’ Hair density, texture, curl pattern, and growth direction
Based on this analysis, recommend haircuts for three scenarios:
β’ Professional or workplace
β’ University or college
β’ School or teenage
Provide 4 haircut options per scenario, each with a short, specific explanation of why it suits my geometry and hair behavior.
After the recommendations, generate a 3x3 grid of haircut images, each placed realistically on my face.
Technical requirements:
β’ Vertical 9:16 orientation
β’ 4K quality
β’ Realistic lighting
β’ Natural hair flow and believable texture
β’ No fantasy looks or exaggerated AI styling
Variation rules for the 3x3 grid:
β’ Mix short, medium, and slightly longer styles
β’ Reflect the recommended haircuts
β’ Maintain consistency with my real hair type and proportions
Output must be structured, clean, and easy to compare across scenarios.
Your goal is accuracy, realism, and professional grooming quality.
Female Prompt
Female Haircut Analysis + Image Generation Prompt (Nano Banana Pro Optimized)
Analyze the single image I upload.
Identify my face shape and hair type with high precision.
Then generate a vertical 9:16 4K 3x3 grid of hairstyle reference images directly on my face.
Requirements:
Analyze the uploaded image to detect:
β’ Face shape (jawline, cheekbones, forehead ratio)
β’ Hair density, texture, curl pattern (1Aβ4C), porosity, and parting tendencies
Based on the analysis, recommend haircuts for three scenarios:
β’ Professional or workplace
β’ University or college
β’ School or teenage
Provide 4 haircut options per scenario, each with a short, accurate explanation of why it flatters my geometry and natural hair behavior.
After the recommendations, generate a 3x3 grid of hairstyle images, each shown realistically on my face.
Technical requirements:
β’ Vertical 9:16 orientation
β’ 4K quality
β’ Natural lighting and realistic hair movement
β’ No overly stylized or unrealistic AI artifacts
Variation rules for the 3x3 grid:
β’ Mix short, medium, and long hairstyles
β’ Include silhouettes that match the recommended cuts
β’ Respect my actual hair texture and proportions
Keep the output clean, structured, and easy to compare across all scenarios.
The goal is accuracy, realism, and expert-level styling guidance.
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Core Directive: Identity Preservation When I provide a reference image for generation, treat the subjectβs facial identity as a hard constraint.
Execution Guidelines:
Feature Locking: Analyze and strictly adhere to the specific facial landmarks of the reference (eye shape, nose structure, jawline, and unique asymmetry). Do not "beautify" or blend these features with generic models.
Prioritization: If a requested pose or lighting style conflicts with facial visibility, prioritize the accuracy of the facial structure above all else.
Contextual Adaptation: Apply changes only to the hair, attire, background, and lighting. The face should appear as if the original subject stepped into the new scene, not as a "lookalike."
Execution Guidelines:
Feature Locking: Analyze and strictly adhere to the specific facial landmarks of the reference (eye shape, nose structure, jawline, and unique asymmetry). Do not "beautify" or blend these features with generic models.
Prioritization: If a requested pose or lighting style conflicts with facial visibility, prioritize the accuracy of the facial structure above all else.
Contextual Adaptation: Apply changes only to the hair, attire, background, and lighting. The face should appear as if the original subject stepped into the new scene, not as a "lookalike."
β€7
SSKTECHY
Core Directive: Identity Preservation When I provide a reference image for generation, treat the subjectβs facial identity as a hard constraint. Execution Guidelines: Feature Locking: Analyze and strictly adhere to the specific facial landmarks of the referenceβ¦
Gemini Face fix setting
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β€6π2
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π9β€7
Gemini Wallpaper Prompt
Make a beautiful 9:16 wallpaper. Leave natural negative space near the top and bottom. Give the wallpaper a subtle top to bottom gradient. No blur effects or cropping. Keep the scene simple.
(Put your subject and style at the end of the prompt.)
Make a beautiful 9:16 wallpaper. Leave natural negative space near the top and bottom. Give the wallpaper a subtle top to bottom gradient. No blur effects or cropping. Keep the scene simple.
(Put your subject and style at the end of the prompt.)
β€10
Create Animations with simple prompt
Website: replit.com
Prompt:
Create a cinematic logo reveal animation for the name "YOUR NAME". The name enters the screen letter by letter with a glowing neon blue and white color scheme on a dark black background. Add a subtle particle or light streak effect behind the text as it builds in. Once the full name appears, make it pulse gently with a soft glow. End with the name centered on screen with a clean, bold, modern typography style. Keep the total duration around 5 to 8 seconds and loop smoothly.
Website: replit.com
Prompt:
Create a cinematic logo reveal animation for the name "YOUR NAME". The name enters the screen letter by letter with a glowing neon blue and white color scheme on a dark black background. Add a subtle particle or light streak effect behind the text as it builds in. Once the full name appears, make it pulse gently with a soft glow. End with the name centered on screen with a clean, bold, modern typography style. Keep the total duration around 5 to 8 seconds and loop smoothly.
β€8
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β€3
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DP-3014 β Get started with Microsoft Fabric
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AI-3002 β Develop generative AI solutions with Azure OpenAI Service
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β€16
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β€8π₯°1
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Anonymous Poll
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13%
No
23%
Not started yet!
18%
Don't know where to start
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AI agents donβt fail because your prompt is weak. They fail because your instructions, tools, and memory dump are wrong. Three fixes: job-style instructions, fewer tools, relevant memory. Test it.
image.png
737.5 KB
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Whatever the plan you are using, you will get that many extra credits.
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