home / skills / openclaw / skills / prompt-engineering
This skill helps you craft precise prompts for LLMs, image and video models, improving output quality, consistency, and task completion.
npx playbooks add skill openclaw/skills --skill prompt-engineeringReview the files below or copy the command above to add this skill to your agents.
---
name: prompt-engineering
description: "Master prompt engineering for AI models: LLMs, image generators, video models. Techniques: chain-of-thought, few-shot, system prompts, negative prompts. Models: Claude, GPT-4, Gemini, FLUX, Veo, Stable Diffusion prompting. Use for: better AI outputs, consistent results, complex tasks, optimization. Triggers: prompt engineering, how to prompt, better prompts, prompt tips, prompting guide, llm prompting, image prompt, ai prompting, prompt optimization, prompt template, prompt structure, effective prompts, prompt techniques"
allowed-tools: Bash(infsh *)
---
# Prompt Engineering Guide
Master prompt engineering for AI models via [inference.sh](https://inference.sh) CLI.

## Quick Start
```bash
curl -fsSL https://cli.inference.sh | sh && infsh login
# Well-structured LLM prompt
infsh app run openrouter/claude-sonnet-45 --input '{
"prompt": "You are a senior software engineer. Review this code for security vulnerabilities:\n\n```python\nuser_input = request.args.get(\"query\")\nresult = db.execute(f\"SELECT * FROM users WHERE name = {user_input}\")\n```\n\nProvide specific issues and fixes."
}'
```
> **Install note:** The [install script](https://cli.inference.sh) only detects your OS/architecture, downloads the matching binary from `dist.inference.sh`, and verifies its SHA-256 checksum. No elevated permissions or background processes. [Manual install & verification](https://dist.inference.sh/cli/checksums.txt) available.
## LLM Prompting
### Basic Structure
```
[Role/Context] + [Task] + [Constraints] + [Output Format]
```
### Role Prompting
```bash
infsh app run openrouter/claude-sonnet-45 --input '{
"prompt": "You are an expert data scientist with 15 years of experience in machine learning. Explain gradient descent to a beginner, using simple analogies."
}'
```
### Task Clarity
```bash
# Bad: vague
"Help me with my code"
# Good: specific
"Debug this Python function that should return the sum of even numbers from a list, but returns 0 for all inputs:
def sum_evens(numbers):
total = 0
for n in numbers:
if n % 2 == 0:
total += n
return total
Identify the bug and provide the corrected code."
```
### Chain-of-Thought
```bash
infsh app run openrouter/claude-sonnet-45 --input '{
"prompt": "Solve this step by step:\n\nA store sells apples for $2 each and oranges for $3 each. If someone buys 5 fruits and spends $12, how many of each fruit did they buy?\n\nThink through this step by step before giving the final answer."
}'
```
### Few-Shot Examples
```bash
infsh app run openrouter/claude-sonnet-45 --input '{
"prompt": "Convert these sentences to formal business English:\n\nExample 1:\nInput: gonna send u the report tmrw\nOutput: I will send you the report tomorrow.\n\nExample 2:\nInput: cant make the meeting, something came up\nOutput: I apologize, but I will be unable to attend the meeting due to an unforeseen circumstance.\n\nNow convert:\nInput: hey can we push the deadline back a bit?"
}'
```
### Output Format Specification
```bash
infsh app run openrouter/claude-sonnet-45 --input '{
"prompt": "Analyze the sentiment of these customer reviews. Return a JSON array with objects containing \"text\", \"sentiment\" (positive/negative/neutral), and \"confidence\" (0-1).\n\nReviews:\n1. \"Great product, fast shipping!\"\n2. \"Meh, its okay I guess\"\n3. \"Worst purchase ever, total waste of money\"\n\nReturn only valid JSON, no explanation."
}'
```
### Constraint Setting
```bash
infsh app run openrouter/claude-sonnet-45 --input '{
"prompt": "Summarize this article in exactly 3 bullet points. Each bullet must be under 20 words. Focus only on actionable insights, not background information.\n\n[article text]"
}'
```
## Image Generation Prompting
### Basic Structure
```
[Subject] + [Style] + [Composition] + [Lighting] + [Technical]
```
### Subject Description
```bash
# Bad: vague
"a cat"
# Good: specific
infsh app run falai/flux-dev --input '{
"prompt": "A fluffy orange tabby cat with green eyes, sitting on a vintage leather armchair"
}'
```
### Style Keywords
```bash
infsh app run falai/flux-dev --input '{
"prompt": "Portrait photograph of a woman, shot on Kodak Portra 400 film, soft natural lighting, shallow depth of field, nostalgic mood, analog photography aesthetic"
}'
```
### Composition Control
```bash
infsh app run falai/flux-dev --input '{
"prompt": "Wide establishing shot of a cyberpunk city skyline at night, rule of thirds composition, neon signs in foreground, towering skyscrapers in background, rain-slicked streets"
}'
```
### Quality Keywords
```
photorealistic, 8K, ultra detailed, sharp focus, professional,
masterpiece, high quality, best quality, intricate details
```
### Negative Prompts
```bash
infsh app run falai/flux-dev --input '{
"prompt": "Professional headshot portrait, clean background",
"negative_prompt": "blurry, distorted, extra limbs, watermark, text, low quality, cartoon, anime"
}'
```
## Video Prompting
### Basic Structure
```
[Shot Type] + [Subject] + [Action] + [Setting] + [Style]
```
### Camera Movement
```bash
infsh app run google/veo-3-1-fast --input '{
"prompt": "Slow tracking shot following a woman walking through a sunlit forest, golden hour lighting, shallow depth of field, cinematic, 4K"
}'
```
### Action Description
```bash
infsh app run google/veo-3-1-fast --input '{
"prompt": "Close-up of hands kneading bread dough on a wooden surface, flour dust floating in morning light, slow motion, cozy baking aesthetic"
}'
```
### Temporal Keywords
```
slow motion, timelapse, real-time, smooth motion,
continuous shot, quick cuts, frozen moment
```
## Advanced Techniques
### System Prompts
```bash
infsh app run openrouter/claude-sonnet-45 --input '{
"system": "You are a helpful coding assistant. Always provide code with comments. If you are unsure about something, say so rather than guessing.",
"prompt": "Write a Python function to validate email addresses using regex."
}'
```
### Structured Output
```bash
infsh app run openrouter/claude-sonnet-45 --input '{
"prompt": "Extract information from this text and return as JSON:\n\n\"John Smith, CEO of TechCorp, announced yesterday that the company raised $50 million in Series B funding. The round was led by Venture Partners.\"\n\nSchema:\n{\n \"person\": string,\n \"title\": string,\n \"company\": string,\n \"event\": string,\n \"amount\": string,\n \"investor\": string\n}"
}'
```
### Iterative Refinement
```bash
# Start broad
infsh app run falai/flux-dev --input '{
"prompt": "A castle on a hill"
}'
# Add specifics
infsh app run falai/flux-dev --input '{
"prompt": "A medieval stone castle on a grassy hill"
}'
# Add style
infsh app run falai/flux-dev --input '{
"prompt": "A medieval stone castle on a grassy hill, dramatic sunset sky, fantasy art style, epic composition"
}'
# Add technical
infsh app run falai/flux-dev --input '{
"prompt": "A medieval stone castle on a grassy hill, dramatic sunset sky, fantasy art style by Greg Rutkowski, epic composition, 8K, highly detailed"
}'
```
### Multi-Turn Reasoning
```bash
# First: analyze
infsh app run openrouter/claude-sonnet-45 --input '{
"prompt": "Analyze this business problem: Our e-commerce site has a 70% cart abandonment rate. List potential causes."
}'
# Second: prioritize
infsh app run openrouter/claude-sonnet-45 --input '{
"prompt": "Given these causes of cart abandonment: [previous output], rank them by likely impact and ease of fixing. Format as a priority matrix."
}'
# Third: action plan
infsh app run openrouter/claude-sonnet-45 --input '{
"prompt": "For the top 3 causes identified, provide specific A/B tests we can run to validate and fix each issue."
}'
```
## Model-Specific Tips
### Claude
- Excels at nuanced instructions
- Responds well to role-playing
- Good at following complex constraints
- Prefers explicit output formats
### GPT-4
- Strong at code generation
- Works well with examples
- Good structured output
- Responds to "let's think step by step"
### FLUX
- Detailed subject descriptions
- Style references work well
- Lighting keywords important
- Negative prompts supported
### Veo
- Camera movement keywords
- Cinematic language works well
- Action descriptions important
- Include temporal context
## Common Mistakes
| Mistake | Problem | Fix |
|---------|---------|-----|
| Too vague | Unpredictable output | Add specifics |
| Too long | Model loses focus | Prioritize key info |
| Conflicting | Confuses model | Remove contradictions |
| No format | Inconsistent output | Specify format |
| No examples | Unclear expectations | Add few-shot |
## Prompt Templates
### Code Review
```
Review this [language] code for:
1. Bugs and logic errors
2. Security vulnerabilities
3. Performance issues
4. Code style/best practices
Code:
[code]
For each issue found, provide:
- Line number
- Issue description
- Severity (high/medium/low)
- Suggested fix
```
### Content Writing
```
Write a [content type] about [topic].
Audience: [target audience]
Tone: [formal/casual/professional]
Length: [word count]
Key points to cover:
1. [point 1]
2. [point 2]
3. [point 3]
Include: [specific elements]
Avoid: [things to exclude]
```
### Image Generation
```
[Subject with details], [setting/background], [lighting type],
[art style or photography style], [composition], [quality keywords]
```
## Related Skills
```bash
# Video prompting guide
npx skills add inference-sh/skills@video-prompting-guide
# LLM models
npx skills add inference-sh/skills@llm-models
# Image generation
npx skills add inference-sh/skills@ai-image-generation
# Full platform skill
npx skills add inference-sh/skills@inference-sh
```
Browse all apps: `infsh app list`
This skill teaches practical prompt engineering for LLMs, image generators, and video models to produce more reliable, higher-quality outputs. It covers core techniques—role/system prompts, chain-of-thought, few-shot, negative prompts—and model-specific tips to adapt prompts to Claude, GPT-4, Gemini, FLUX, Veo, and Stable Diffusion-style pipelines. The focus is on repeatable structures and templates that reduce ambiguity and improve consistency.
The skill breaks prompting into reusable building blocks: role/context, task, constraints, and output format for text; subject, style, composition, lighting, technical and negative prompts for images; and shot/action/setting/style for video. It demonstrates iterative refinement, structured output schemas, and multi-turn workflows to decompose complex problems and converge on desired results. Model-specific guidance highlights strengths and preferred keywords for each target model.
How do I stop a model from hallucinating facts?
Constrain the prompt with explicit instructions to cite sources or return only verifiable data, ask for uncertainty estimates, and require structured outputs the model must follow.
When should I use chain-of-thought versus terse answers?
Use chain-of-thought for complex multi-step reasoning or debugging. For short factual answers or production APIs, prefer concise prompts and explicit formats to reduce verbosity and risk.