dspy
You are an expert in DSPy, the Stanford framework that replaces prompt engineering with programming. You help developers define LLM tasks as typed signatures, compose them into modules, and automatically optimize prompts/few-shot examples using teleprompters — so instead of manually crafting prompts, you write Python code and DSPy finds the best prompts for your task.
Best use case
dspy is best used when you need a repeatable AI agent workflow instead of a one-off prompt.
You are an expert in DSPy, the Stanford framework that replaces prompt engineering with programming. You help developers define LLM tasks as typed signatures, compose them into modules, and automatically optimize prompts/few-shot examples using teleprompters — so instead of manually crafting prompts, you write Python code and DSPy finds the best prompts for your task.
Teams using dspy should expect a more consistent output, faster repeated execution, less prompt rewriting.
When to use this skill
- You want a reusable workflow that can be run more than once with consistent structure.
When not to use this skill
- You only need a quick one-off answer and do not need a reusable workflow.
- You cannot install or maintain the underlying files, dependencies, or repository context.
Installation
Claude Code / Cursor / Codex
Manual Installation
- Download SKILL.md from GitHub
- Place it in
.claude/skills/dspy/SKILL.mdinside your project - Restart your AI agent — it will auto-discover the skill
How dspy Compares
| Feature / Agent | dspy | Standard Approach |
|---|---|---|
| Platform Support | Not specified | Limited / Varies |
| Context Awareness | High | Baseline |
| Installation Complexity | Unknown | N/A |
Frequently Asked Questions
What does this skill do?
You are an expert in DSPy, the Stanford framework that replaces prompt engineering with programming. You help developers define LLM tasks as typed signatures, compose them into modules, and automatically optimize prompts/few-shot examples using teleprompters — so instead of manually crafting prompts, you write Python code and DSPy finds the best prompts for your task.
Where can I find the source code?
You can find the source code on GitHub using the link provided at the top of the page.
SKILL.md Source
# DSPy — Programming (Not Prompting) LLMs
You are an expert in DSPy, the Stanford framework that replaces prompt engineering with programming. You help developers define LLM tasks as typed signatures, compose them into modules, and automatically optimize prompts/few-shot examples using teleprompters — so instead of manually crafting prompts, you write Python code and DSPy finds the best prompts for your task.
## Core Capabilities
### Signatures and Modules
```python
import dspy
lm = dspy.LM("openai/gpt-4o-mini")
dspy.configure(lm=lm)
# Define task as a signature (not a prompt)
class SentimentAnalysis(dspy.Signature):
"""Classify the sentiment of a review."""
review: str = dspy.InputField()
sentiment: str = dspy.OutputField(desc="positive, negative, or neutral")
confidence: float = dspy.OutputField(desc="0.0 to 1.0")
# Use it
classify = dspy.Predict(SentimentAnalysis)
result = classify(review="Great product, fast shipping!")
print(result.sentiment) # "positive"
print(result.confidence) # 0.95
# Chain of Thought (automatic reasoning)
classify_cot = dspy.ChainOfThought(SentimentAnalysis)
result = classify_cot(review="It works but the manual is confusing")
print(result.reasoning) # Shows step-by-step reasoning
print(result.sentiment) # "neutral"
```
### Composable Modules
```python
class RAGModule(dspy.Module):
def __init__(self, num_passages=3):
self.retrieve = dspy.Retrieve(k=num_passages)
self.generate = dspy.ChainOfThought("context, question -> answer")
def forward(self, question):
context = self.retrieve(question).passages
return self.generate(context=context, question=question)
rag = RAGModule()
answer = rag(question="What is DSPy?")
# Multi-hop reasoning
class MultiHop(dspy.Module):
def __init__(self):
self.generate_query = dspy.ChainOfThought("context, question -> search_query")
self.retrieve = dspy.Retrieve(k=3)
self.generate_answer = dspy.ChainOfThought("context, question -> answer")
def forward(self, question):
context = []
for _ in range(2): # 2 hops
query = self.generate_query(context=context, question=question).search_query
passages = self.retrieve(query).passages
context = deduplicate(context + passages)
return self.generate_answer(context=context, question=question)
```
### Automatic Optimization
```python
from dspy.teleprompt import BootstrapFewShot
# Training data
trainset = [
dspy.Example(question="What is Python?", answer="A programming language").with_inputs("question"),
dspy.Example(question="Who created Linux?", answer="Linus Torvalds").with_inputs("question"),
]
# Metric
def accuracy(example, prediction, trace=None):
return example.answer.lower() in prediction.answer.lower()
# Optimize — finds best few-shot examples and instructions
teleprompter = BootstrapFewShot(metric=accuracy, max_bootstrapped_demos=4)
optimized_rag = teleprompter.compile(RAGModule(), trainset=trainset)
# optimized_rag now has automatically selected few-shot examples
# that maximize accuracy — no manual prompt engineering
```
## Installation
```bash
pip install dspy
```
## Best Practices
1. **Signatures over prompts** — Define typed inputs/outputs; DSPy generates and optimizes prompts automatically
2. **ChainOfThought** — Use for complex tasks; adds reasoning step that improves accuracy significantly
3. **Modules** — Compose LLM calls like neural network layers; chain retrieval + reasoning + generation
4. **Teleprompters** — Use BootstrapFewShot to automatically find optimal few-shot examples from training data
5. **Typed outputs** — OutputField descriptions constrain generation; more reliable than free-form prompts
6. **Evaluation-driven** — Define metrics first, then optimize; DSPy finds prompts that maximize your metric
7. **Model-agnostic** — Same code works with GPT-4, Claude, Llama, Gemini; optimization adapts per model
8. **Assertions** — Use `dspy.Assert` and `dspy.Suggest` for runtime output validation and self-correctionRelated Skills
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