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WordGuedo

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Mastering Codes in Tensor.Art: ( ), { }, _ and the Art of AI Image Creation

Mastering Codes in Tensor.Art: ( ), { }, _ and the Art of AI Image Creation

Learn how to use parentheses, curly braces, and underscores to control weights, priorities, and precision in your prompts.Introduction: The Power of Symbols in Image GenerationIn the universe of generative AI, every character in a prompt can determine the final outcome. Platforms like Tensor.Art use symbols like ( ), { }, and _ to adjust nuances such as emphasis, variation, and conceptual cohesion. This article explores advanced techniques to maximize precision in realistic and stylized creations (e.g., cartoon), ensuring your ideas are translated accurately into images.Chapter 1: Parentheses '( )' – Controlling Emphasis and HierarchyWhat They Are and How They WorkParentheses are tools to increase or decrease the weight of a term in the prompt. The more layers of ( ), the higher the priority given to the element.Syntax and ExamplesWeight increase:(term): Boosts emphasis by 1.1x.((term)): Increases to 1.21x.(((term))): 1.33x (ideal for critical elements).Weight decrease:(term:0.8): Reduces influence to 80% of the original value.Practical ApplicationsFor Realistic ImagesUse multiple parentheses for focal elements:(((photorealistic portrait))), (detailed skin texture), (natural lighting) This prioritizes realism and anatomical details.For Cartoon StylesHighlight exaggerated features:((cartoonish eyes)), (vibrant colors), (exaggerated proportions) Golden RuleAvoid overloading prompts with parentheses. More than three layers may cause distortions or element saturation.Chapter 2: Curly Braces '{ }' – Variability and Custom WeightsPrimary FunctionsCurly braces serve to:Switch between options (e.g., {A|B}).Define custom weights (e.g., {term:1.5}).Advanced SyntaxSwitching:{sunlight|moonlight}, {red|blue|green} dress Tensor.Art will generate variations by combining these options.Custom weights:{realistic:1.3|cartoon:0.7} Here, "realistic" has 30% more influence than "cartoon".Use CasesRealism with Creative TouchesA {cinematic|documentary} scene of a ((ancient castle)), {stormy|calm} sky Combines opposing atmospheres to generate diversity.Cartoon and StylizationA {Disney-style|Anime-style} character with {sparkling_eyes|glowing_aura} Pro TipUse { } to explore beta versions of concepts without rewriting prompts repeatedly.Chapter 3: Underscore '_' – Unifying ConceptsThe Importance of CohesionThe underscore (_) merges words to avoid fragmented interpretations. For example:medieval_armor is treated as a single concept, whereas medieval armor might split "medieval" and "armor".Applications in Different StylesRealismTechnical precision:futuristic_cityscape, high-tech_vehicle, neon_lighting CartoonCoherent stylization:magical_forest, talking_animals, candy-colored_houses LimitationsAvoid long chains like super_detailed_character_design_with_armor – this may confuse the AI. Use concise terms instead.Chapter 4: Priorities and Processing OrderSymbol HierarchyParentheses ( ): Processed first, defining core hierarchy.Curly braces { }: Resolved next, especially for switches.Underscore _: Interpreted as text formatting, not affecting weights.Processing ExampleFor the prompt:(({realistic|painterly} portrait)) of a cyberpunk_samurai, {red|blue}_glowing_eyes Parentheses reinforce "portrait".Curly braces toggle between "realistic" and "painterly".Underscores ensure "cyberpunk_samurai" and "glowing_eyes" are unified concepts.Chapter 5: Combining Codes for Maximum ControlHybrid StrategiesRealistic ScenariosA (((cinematic photo))) of a {warrior|explorer} in (ancient_ruins:1.4), {volumetric lighting|soft shadows}, (hyper-detailed textures:1.3) ((cinematic photo)) ensures visual quality.{warrior|explorer} adds variability.ancient_ruins:1.4 boosts the ruins’ weight.Cartoon StyleA ((children's book illustration)) of a {friendly|mischievous} dragon, (flying over a candy_kingdom), ((vibrant color palette:1.5)) Curly braces define the dragon’s personality.candy_kingdom ensures scene cohesion.Golden FormulaCombine ( ) for emphasis, { } for variation, and _ for precision. Example:(({realistic|watercolor} rendering)) of a {mountain|forest}_landscape at (sunset:1.2) Chapter 6: Tips to Maximize All Parameters1. Start SimpleBegin with lean prompts and add symbols gradually. Example:woman in a dress → (elegant woman) in a {silk|lace} dress 2. Use Fractional WeightsFine-tune influences:(realism:1.2), (cartoonish elements:0.8) 3. Test CombinationsCreate quick variations with { }:{portrait|full-body}, {realistic|anime}, {indoor|outdoor} 4. Avoid ConflictsDon’t mix contradictory terms without adjusting weights:❌ (realistic face), (cartoon body)✅ (realistic face:1.3), (cartoon body:0.7)Chapter 7: Common Mistakes and FixesIssue 1: Overusing ParenthesesSymptom: Dominant elements distort composition.Fix: Limit to 3 layers and use fractional weights.Issue 2: Misconfigured Curly BracesSymptom: Inconsistent or chaotic images.Fix: Limit switches to 2-3 options per brace.Issue 3: Unnecessary UnderscoresSymptom: Truncated terms (e.g., happy_dog vs. happy dog).Fix: Use only for indivisible concepts (e.g., sci-fi_city).Conclusion: The Art of Precision in Tensor.ArtMastering ( ), { }, and _ is like acquiring a remote control for AI: you define priorities, variability, and cohesion. For precise results:Use parentheses for hierarchy.Leverage curly braces for controlled creativity.Apply underscores for clarity.With practice, these symbols will become extensions of your creative process, translating complex visions into stunning images, whether realistic or cartoon.
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How to Train LORAs on Tensor.art for Realistic and Cartoon Images

How to Train LORAs on Tensor.art for Realistic and Cartoon Images

How to Train LORAs on Tensor.art for Realistic and Cartoon Images: A Complete Guide to Prompts and ParametersIntroduction: The Power of Tensor.art and LORAsTensor.art has established itself as an accessible and powerful platform for generative AI enthusiasts and professionals, especially for creating realistic and stylized images. Among its most versatile tools are LORAs (Low-Rank Adaptation Models), which allow users to adapt pre-trained models (like Stable Diffusion) to generate customized content, from hyper-realistic portraits to unique cartoon characters.In this article, we’ll explore how to train LORAs on Tensor.art and how to maximize parameters, codes, and prompt engineering techniques to achieve precise and creative results.Part 1: Understanding LORAs and Their Role in Image GenerationWhat Are LORAs?LORAs are lightweight adaptations of existing AI models, designed to add specific layers of learning without requiring a full retraining of the base model. This means you can "teach" the model new concepts (e.g., an art style or character) with minimal computational resources.On Tensor.art, LORAs are ideal for:Creating consistent faces or characters across multiple images.Developing unique styles (e.g., "clean line" cartoons or photographic realism).Tailoring models to specific needs (e.g., clothing, settings).Part 2: Training Your Own LORA on Tensor.artStep 1: Preparing the DatasetTraining quality depends directly on your dataset. Follow these guidelines:For Realism: Use high-resolution photos with varied lighting and angles. Include close-ups and full-body shots.For Cartoon: Collect images with consistent linework (e.g., bold outlines, flat colors) and avoid abrupt style variations.Ideal Quantity: 50–200 images, depending on the theme’s complexity.Step 2: Configuring Training on Tensor.artTensor.art simplifies LORA training:Navigate to "Train Model" and upload your dataset.Set parameters:Epochs: 50–150 (avoid overfitting).Batch Size: 2–4 for basic GPUs.Learning Rate: 0.0001–0.0002 to balance speed and precision.Add descriptive tags to images (e.g., "blue_eyes", "anime_style") to link concepts to the model.Step 3: Fine-Tuning for Realism vs. CartoonRealism: Enable "High-Res Fix" and use embeddings like RealisticVision for skin textures and details.Cartoon: Add style triggers to prompts (e.g., "makoto shinkai style") and lower cfg_scale (5–7) for artistic flexibility.Part 3: Mastering Parameters and Prompts for PrecisionKey Technical Parameters on Tensor.artCFG Scale (7–12): Controls adherence to the prompt. Higher values (12+) suit realism; lower values (5–7) favor stylization.Sampler: Use DPM++ 2M Karras for realism and Euler a for cartoons.Steps (30–50): More steps enhance details but increase generation time.Crafting an Effective PromptA well-structured prompt blends technical and descriptive elements. Example for realism:RAW photo, (a detailed portrait of a woman:1.3), (piercing green eyes:1.2), soft natural lighting, skin pores, (cinematic depth of field:0.9), Nikon D850, 85mm lens Negative prompt: cartoon, blurry, deformed, low-res Key Elements:Weighting with Parentheses: (element:1.3) increases emphasis; (element:0.8) reduces it.Specific Details: Mention cameras, lenses, and lighting to reinforce realism.Negative Prompts: Block unwanted styles (e.g., "3D render", "anime").Example for Cartoon:Studio Ghibli style, (a cheerful boy with spiky hair:1.4), vibrant colors, magical forest background, cel-shading, (soft gradients:0.7), by Hayao Miyazaki Negative prompt: realism, photorealistic, noise Part 4: Combining Multiple LORAs and ModelsOn Tensor.art, you can merge LORAs for complex results. For example:Combine a facial realism LORA with a dramatic lighting LORA.Use a base model like DreamShaper for cartoons and add a water texture LORA.Best Practices:Test combinations with adjusted weights (e.g., <lora:lighting:0.7>).Avoid conflicting styles (e.g., realism + cartoon).Part 5: Common Mistakes and How to Fix ThemOverfitting: Repetitive or low-variation images.Solution: Reduce epochs and diversify the dataset.Lack of Detail:Solution: Increase cfg_scale and add descriptors like "4K", "ultra-detailed".Style Inconsistency:Solution: Use unique triggers (e.g., "my_style_v1") and reference them in prompts.Conclusion: Elevating Your Art to the Next LevelTraining LORAs on Tensor.art is a journey of technical and creative experimentation. By mastering parameters, prompts, and dataset curation, you can create everything from photorealistic portraits to immersive cartoon worlds. Remember: The key lies in constant iteration and meticulous analysis of results.Additional Resources:Experiment with hybrid prompts (e.g., "realism with surreal touches").Join the Tensor.art community to share LORAs and tips.Document your tests in a notebook for future refinement.With practice and attention to detail, your Tensor.art creations will reach professional standards, whether for personal or commercial projects.
Mastering VAEs How to Choose Between sdxl-vae-fp16-fix.safetensors and vae-ft-mse-840000-ema-pruned.

Mastering VAEs How to Choose Between sdxl-vae-fp16-fix.safetensors and vae-ft-mse-840000-ema-pruned.

Introduction: The Importance of VAEs in Image GenerationVariational Autoencoders (VAEs) are critical components in image generation models like Stable Diffusion. They act as "decoders" that transform latent representations (abstract data) into visible pixels, directly influencing image sharpness, colors, and details. On Tensor.art, two VAEs stand out: sdxl-vae-fp16-fix.safetensors and vae-ft-mse-840000-ema-pruned.ckpt. This article explores their technical differences, ideal use cases, and strategies to maximize their efficiency through prompts and parameters.Chapter 1: Understanding the Two VAEs1.1 sdxl-vae-fp16-fix.safetensorsArchitecture and Training: This VAE is optimized for the SDXL (Stable Diffusion XL) framework, focusing on high resolution and realistic details. The "fp16-fix" version uses 16-bit precision (float16) to reduce memory usage, with fixes to avoid common artifacts found in unoptimized VAEs.Strengths:Generates vibrant colors and complex textures (e.g., human skin, fabrics).Ideal for prompts requiring photorealism or hyper-detailed scenes (e.g., "close-up portrait of an elderly woman with deep wrinkles and soft sunlight").Performs well at resolutions above 1024x1024.Limitations:May produce oversaturated images if prompts are unbalanced.Requires fine-tuning of parameters like CFG Scale to avoid distortions.1.2 vae-ft-mse-840000-ema-pruned.ckptArchitecture and Training: This model is fine-tuned using Mean Squared Error (MSE), prioritizing fidelity to training data. The "ema-pruned" suffix indicates pruning to remove redundant weights and the use of Exponential Moving Average (EMA) for stability.Strengths:Produces consistent images with fewer artifacts.Excellent for stylized or artistic scenes (e.g., "surreal landscape with glowing trees and pastel skies").Efficient on modest hardware due to pruning.Limitations:Less detailed in micro-textures compared to the SDXL VAE.May oversmooth complex elements.Chapter 2: Technical Comparison and Use CasesComparative Tablesdxl-vae-fp16-fix.safetensorsIdeal Resolution>1024x1024Image StylePhotorealistic, DetailedMemory ConsumptionHigh (due to FP16)Generation SpeedSlowerBest ForPortraits, Realistic Scenesvae-ft-mse-840000-ema-pruned.ckptIdeal Resolution 512x512 to 768x768Image Style Artistic, StylizedMemory Consumption Moderate (due to pruning)Generation Speed FasterBest For Concept Art, IllustrationsPractical ExamplesExample 1: For a realistic elderly portrait, use the SDXL VAE with descriptive prompts:"close-up portrait of an 80-year-old man, detailed wrinkles, realistic skin pores, soft natural lighting, film grain, 8k, photograph, sharp focus" Recommended parameters: CFG Scale: 7-9, Steps: 30-40, Sampler: DPM++ 2M Karras.Example 2: For a fantasy scene, the MSE VAE is more suitable:"mystical forest with glowing mushrooms, vibrant colors, dreamlike atmosphere, matte painting style, soft edges, trending on ArtStation" Recommended parameters: CFG Scale: 5-7, Steps: 20-30, Sampler: Euler a.Chapter 3: Strategies to Optimize Prompts and Parameters3.1 Prompt LanguageSDXL VAE: Use technical details and photographic terms:E.g., "35mm lens, f/2.8 aperture, ISO 100, depth of field".Include keywords like "ultra-detailed", "textured", "photorealistic".MSE VAE: Prioritize artistic adjectives and style references:E.g., "watercolor texture", "impressionist brushstrokes", "Studio Ghibli aesthetic".3.2 Parameter CombinationsDenoising Strength:For SDXL VAE, high values (>0.7) may introduce noise; keep between 0.5-0.65.For MSE VAE, values up to 0.7 are safe to preserve smoothness.CFG Scale:SDXL: 7-9 for precise control; higher values risk oversaturation.MSE: 5-7 to balance creativity and fidelity.3.3 Post-ProcessingFor SDXL VAE, use upscalers like ESRGAN to enhance details.For MSE VAE, apply smoothing filters (e.g., Gaussian Blur with radius 2) to harmonize stylized areas.Chapter 4: Common Mistakes and How to Avoid ThemMixing Incompatible VAEs: Using SDXL VAE with non-SDXL base models causes inconsistencies. Check compatibility on Tensor.art.Generic Prompts: Avoid vague terms like "high quality". Be specific: "skin with subcutaneous veins and freckles".Ignoring Seed: Fix the seed (e.g., --seed 1234) to test controlled variations when adjusting parameters.Conclusion: Choosing the Right VAE for Your NeedsMastering VAEs on Tensor.art requires understanding their technical nuances and adapting prompts and parameters to your goals. While sdxl-vae-fp16-fix.safetensors excels in realism and detail, vae-ft-mse-840000-ema-pruned.ckpt offers efficiency and consistency for artistic projects. Experiment with combinations, document your results, and refine your approach to turn ideas into stunning visuals.Next Step: Create a personal benchmark by testing both VAEs with the same prompt and parameters, then compare textures, colors, and processing time!AttWordGuedo
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Understanding DPM++ SDE, 2M SDE Karras, 3M SDE Karras, and Prompt Techniques for Realistic Images

Understanding DPM++ SDE, 2M SDE Karras, 3M SDE Karras, and Prompt Techniques for Realistic Images

Introduction: The Art of AI Image GenerationAI image generation has revolutionized how we create visual content. Platforms like Tensor.art allow users to explore advanced diffusion models, such as those based on Stable Diffusion, to produce hyper-realistic images. However, achieving precise results requires understanding not only prompts but also samplers—algorithms that control how the AI "draws" the image step by step. In this article, we’ll explore the differences between the DPM++ SDE, DPM++ 2M SDE Karras, and DPM++ 3M SDE Karras samplers, along with techniques to maximize the efficiency of parameters and prompts.Part 1: Understanding Samplers and Their Differences1.1 What Are Samplers?Samplers are algorithms that guide the "denoising" process, transforming random noise into a coherent image. Each sampler uses a distinct mathematical approach to balance speed, quality, and stability during generation.1.2 DPM++ SDE (Stochastic Differential Equation)Functionality: Combines deterministic and stochastic (random) methods to explore creative variations.Strengths: Ideal for generating images with complex details and diversity, especially in dynamic or abstract scenes.Weaknesses: May require more steps to converge, increasing processing time.Recommendation: Use with 25–35 steps and CFG Scale between 7–12 to balance creativity and control.1.3 DPM++ 2M SDE KarrasFunctionality: An optimized version of DPM++ SDE, featuring 2 multistage steps and the Karras noise scheduler, which smooths transitions between stages.Strengths: Faster than standard SDE, with comparable quality. Excellent for realistic portraits and static compositions.Weaknesses: Less effective for scenes with implied motion (e.g., flowing water).Recommendation: Works well with 20–30 steps and CFG Scale 7–10.1.4 DPM++ 3M SDE KarrasFunctionality: Similar to 2M but with 3 multistage steps, offering greater precision in noise removal.Strengths: Sharper, more consistent results, ideal for technical images (e.g., architecture, product design).Weaknesses: Requires more computational resources.Recommendation: Use with 30–40 steps and CFG Scale 8–12.1.5 Direct ComparisonSamplerSpeedQualityRecommended UseDPM++ SDEMediumHighConcept art, diversityDPM++ 2M SDE KarrasFastHighPortraits, static scenesDPM++ 3M SDE KarrasSlowVery HighTechnical details, precisionPart 2: Mastering Prompts and Parameters2.1 Structuring Effective PromptsA clear prompt is key to accurate images. Use this structure:Main Subject: Describe the central element (e.g., "a cyberpunk warrior").Adjectives and Details: Add specific traits (e.g., "neon pink hair, glowing eyes").Context: Define the environment (e.g., "in a futuristic city at night, artificial rain").Style and References: Specify realism, digital art, etc. (e.g., "realistic photography, Canon EOS R5").Example of an advanced prompt:(an astronaut:1.3) wearing (detailed metallic-colored suit:1.2), (floating in space:1.1), (galaxies in the background:1.0), (style: NASA photography, soft lighting, 8k) 2.2 Word Weighting and SyntaxParentheses: (word:1.5) increases emphasis.Brackets: [word:0.8] reduces priority.Blending: Balance terms (e.g., (realism:1.2)/(digital art:0.9)).2.3 Technical Parameters on Tensor.artCFG Scale (Classifier-Free Guidance):Low values (3–7): More creativity, less prompt fidelity.High values (10–15): More precision but risk of overprocessing.Steps:20–30: Balanced for most samplers.40+: Only for slow samplers like 3M SDE Karras.Resolution:Use 512x512 or 768x768 to avoid distortions.2.4 Combining Samplers and ParametersFor realistic portraits:Sampler: DPM++ 2M SDE KarrasSteps: 25CFG: 9Prompt: "(young woman:1.3) with (intense green eyes:1.2), (detailed skin:1.1), (professional studio, soft lighting:1.4)"For fantasy scenes:Sampler: DPM++ SDESteps: 35CFG: 11Prompt: "(crystalline dragon:1.4) over (floating mountains:1.2), (northern lights:1.3), digital concept art style"Part 3: Common Mistakes and How to Avoid Them3.1 Overloading the PromptMistake: Listing dozens of elements without hierarchy.Solution: Prioritize 3–5 key elements and use weights to adjust importance.3.2 Ignoring the SamplerMistake: Using the same sampler for all projects.Solution: Test quick samples with each sampler before finalizing.3.3 Inconsistent SettingsMistake: Using CFG 15 with 20 steps on a slow sampler.Solution: Adjust CFG based on the sampler:Fast samplers (2M): CFG 7–10Slow samplers (3M, SDE): CFG 10–13Conclusion: The Science Behind the ArtMastering Tensor.art requires balancing technical knowledge and creativity. Understanding sampler nuances—such as the stochastic flexibility of DPM++ SDE versus the precision of 3M Karras—helps you choose the right tool for each project. Combining this with structured prompts and tuned parameters transforms image generation into an intentional and rewarding process. Experiment, document your results, and refine your strategies: perfection lies in the details.AttWordGuedo
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How to Create Realistic and Humanized Images, Complete Guide to Maximize Results!

How to Create Realistic and Humanized Images, Complete Guide to Maximize Results!

Introduction: The AI Revolution in Image CreationAI-generated imagery, such as that offered by Tensor.art, is transforming how we create digital art. However, achieving realistic and humanized results requires technical mastery of parameters, codes, and prompting strategies. This article details methods to unlock the platform’s full potential, focusing on realism, expressiveness, and visual coherence.1. Understanding the Tensor.art PlatformTensor.art uses diffusion models (like Stable Diffusion) to generate images from textual descriptions. Its strength lies in advanced parameter adjustments and integrations of pre-trained embeddings that refine details. Before starting, familiarize yourself with:Specialized Models: Choose realism-focused models like Realistic Vision or Humanized V5.Resolution: Images above 1024x768 pixels tend to preserve facial details and textures.Iterations: More sampling steps (20-30) often improve quality but require longer processing times.2. The Art of Prompting: Structuring Effective DescriptionsThe prompt is the heart of image generation. Every word influences the outcome. Follow this structured guide:2.1. Essential Elements in a PromptMain Subject: Describe precisely. Example: "a 30-year-old woman with wavy brown hair, green eyes, fair skin with subtle freckles".Context and Environment: Add scenarios. Example: "in a café lit by morning sunlight, with a blurred background".Style and Aesthetics: Specify terms like "realistic photography, 8K, ultra-detailed skin texture, soft shadows".Emotion and Posture: Use descriptors like "smiling softly, contemplative gaze, relaxed posture".2.2. Advanced Syntax and ModifiersEmphasis: Use ( ) to increase importance and [ ] to reduce it. Example:(detailed eyes:1.3) [cartoonish style:0.7].Numerical Weights: Assign values to balance elements. Example: red dress:1.2 vs. background:0.8.Negative Prompts: Block unwanted elements. Example:"low resolution, deformed hands, blurry face, unnatural lighting".3. Technical Parameters That Make a DifferenceBeyond the prompt, adjust the model’s settings:3.1. Classifier-Free Guidance (CFG Scale)Controls adherence to the prompt. Values between 7-12 are ideal for realism. Higher CFG (>15) may introduce artifacts.3.2. Sampling StepsBetween 20-30 steps with samplers like DPM++ 2M Karras balance quality and speed.3.3. SeedUse a fixed seed (e.g., --seed 1234) to generate consistent variations of the same concept.3.4. High-Resolution FixEnable this option to avoid distortions in high-resolution images.4. Advanced Techniques for Humanization4.1. Anatomical AccuracyHands and Eyes: Include terms like "detailed hands with visible veins", "wet eyes with catchlights".Skin: Use "subsurface scattering, pores, natural skin blemishes" to avoid plastic-like textures.4.2. Lighting and ShadowsDescribe light direction and quality:"Golden hour lighting from the left side, soft shadows under the chin".Avoid generic terms like "good lighting"; be specific.4.3. Facial Expressions and Body LanguageIncorporate micro-expressions:"slight frown lines on forehead, relaxed shoulders, hands gently holding a coffee cup".5. Full Prompt Example and AnalysisPositive Prompt:(Realistic portrait of a 25-year-old woman:1.4), blonde hair with natural highlights, blue eyes with light reflections, smooth skin texture with freckles, wearing a beige wool sweater, seated on a leather armchair in a classic library, warm lighting from table lamps, shallow depth of field, photographic style, Nikon D850, 85mm lens, ultra-detailed skin, subsurface scattering, (soft smile:1.2) Negative Prompt:deformed, cartoonish, low resolution, bad proportions, unnatural skin, flat lighting Parameters:CFG Scale: 10Sampling Steps: 28Model: Realistic Vision V6Resolution: 1152x8966. Common Mistakes and How to Avoid ThemOver-Abstraction: Describe plausible scenes. Avoid impossible combinations (e.g., "glowing eyes in the dark" without a light source).Vague Prompts: Terms like "beautiful person" are subjective. Use measurable details instead.Ignoring Negative Prompts: Without them, the model may fill gaps with unwanted elements.7. Post-Processing and RefinementUse tools like Photoshop or GIMP to:Adjust colors and contrast.Fix minor imperfections (e.g., poorly rendered nails).Add depth effects (lights and shadows).Conclusion: Mastering AI-Driven Image CreationCreating realistic images on Tensor.art combines technique and creativity. By mastering prompt structure, technical parameters, and anatomical nuances, you can turn ideas into stunning visual representations. Experiment, iterate, and document your results to refine your workflow. AI is your tool—your art is the limit.Att:WordGuedo

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