bundled/skills/imagegen/SKILL.md
Use when the user asks to generate or edit images via the OpenAI Image API (for example: generate image, edit/inpaint/mask, background removal or replacement, transparent background, product shots, concept art, covers, or batch variants); run the bundled CLI (`scripts/image_gen.py`) and require `OPENAI_API_KEY` for live calls.
npx skillsauth add foryourhealth111-pixel/vco-skills-codex imagegenInstall this skill globally with one command. Works with Claude Code, Cursor, and Windsurf.
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Generates or edits images for the current project (e.g., website assets, game assets, UI mockups, product mockups, wireframes, logo design, photorealistic images, infographics). Defaults to gpt-image-1.5 and the OpenAI Image API, and prefers the bundled CLI for deterministic, reproducible runs.
scripts/image_gen.py) with sensible defaults (see references/cli.md).tmp/imagegen/ for intermediate files (for example JSONL batches); delete when done.output/imagegen/ when working in this repo.--out or --out-dir to control output paths; keep filenames stable and descriptive.Prefer uv for dependency management.
Python packages:
uv pip install openai pillow
If uv is unavailable:
python3 -m pip install openai pillow
OPENAI_API_KEY must be set for live API calls.If the key is missing, give the user these steps:
OPENAI_API_KEY as an environment variable in their system.If installation isn't possible in this environment, tell the user which dependency is missing and how to install it locally.
gpt-image-1.5 unless the user explicitly asks for gpt-image-1-mini or explicitly prefers a cheaper/faster model.OPENAI_API_KEY before any live API call.openai package) for all API calls; do not use raw HTTP.client.images.edit(...) and include input images (and mask if provided).scripts/image_gen.py) over writing new one-off scripts.scripts/image_gen.py. If something is missing, ask the user before doing anything else.Reformat user prompts into a structured, production-oriented spec. Only make implicit details explicit; do not invent new requirements.
Classify each request into one of these buckets and keep the slug consistent across prompts and references.
Generate:
Edit:
Quick clarification (augmentation vs invention):
Template (include only relevant lines):
Use case: <taxonomy slug>
Asset type: <where the asset will be used>
Primary request: <user's main prompt>
Scene/background: <environment>
Subject: <main subject>
Style/medium: <photo/illustration/3D/etc>
Composition/framing: <wide/close/top-down; placement>
Lighting/mood: <lighting + mood>
Color palette: <palette notes>
Materials/textures: <surface details>
Quality: <low/medium/high/auto>
Input fidelity (edits): <low/high>
Text (verbatim): "<exact text>"
Constraints: <must keep/must avoid>
Avoid: <negative constraints>
Augmentation rules:
references/sample-prompts.md.Use case: stylized-concept
Asset type: landing page hero
Primary request: a minimal hero image of a ceramic coffee mug
Style/medium: clean product photography
Composition/framing: centered product, generous negative space on the right
Lighting/mood: soft studio lighting
Constraints: no logos, no text, no watermark
Use case: precise-object-edit
Asset type: product photo background replacement
Primary request: replace the background with a warm sunset gradient
Constraints: change only the background; keep the product and its edges unchanged; no text; no watermark
More principles: references/prompting.md. Copy/paste specs: references/sample-prompts.md.
Asset-type templates (website assets, game assets, wireframes, logo) are consolidated in references/sample-prompts.md.
references/cli.mdreferences/image-api.mdreferences/codex-network.mdreferences/cli.md: how to run image generation/edits/batches via scripts/image_gen.py (commands, flags, recipes).references/image-api.md: what knobs exist at the API level (parameters, sizes, quality, background, edit-only fields).references/prompting.md: prompting principles (structure, constraints/invariants, iteration patterns).references/sample-prompts.md: copy/paste prompt recipes (generate + edit workflows; examples only).references/codex-network.md: environment/sandbox/network-approval troubleshooting.development
Model interpretability and explainability using SHAP (SHapley Additive exPlanations). Use this skill when explaining machine learning model predictions, computing feature importance, generating SHAP plots (waterfall, beeswarm, bar, scatter, force, heatmap), debugging models, analyzing model bias or fairness, comparing models, or implementing explainable AI. Works with tree-based models (XGBoost, LightGBM, Random Forest), deep learning (TensorFlow, PyTorch), linear models, and any black-box model.
development
Use when the user asks to inspect Sentry issues or events, summarize recent production errors, or pull basic Sentry health data via the Sentry API; perform read-only queries with the bundled script and require `SENTRY_AUTH_TOKEN`.
development
World-class prompt engineering skill for LLM optimization, prompt patterns, structured outputs, and AI product development. Expertise in Claude, GPT-4, prompt design patterns, few-shot learning, chain-of-thought, and AI evaluation. Includes RAG optimization, agent design, and LLM system architecture. Use when building AI products, optimizing LLM performance, designing agentic systems, or implementing advanced prompting techniques.
development
World-class ML engineering skill for productionizing ML models, MLOps, and building scalable ML systems. Expertise in PyTorch, TensorFlow, model deployment, feature stores, model monitoring, and ML infrastructure. Includes LLM integration, fine-tuning, RAG systems, and agentic AI. Use when deploying ML models, building ML platforms, implementing MLOps, or integrating LLMs into production systems.