DSPy
Skill Verifiziert AktivBuild complex AI systems with declarative programming, optimize prompts automatically, create modular RAG systems and agents with DSPy - Stanford NLP's framework for systematic LM programming
To empower users to build and optimize sophisticated AI systems using DSPy's declarative programming paradigm for improved reliability and maintainability.
Funktionen
- Declarative LM programming with DSPy
- Automatic prompt optimization
- Modular RAG system development
- Agent creation and management
- Comprehensive examples and documentation
Anwendungsfälle
- Building complex AI systems with multiple components
- Systematically improving LM outputs with optimizers
- Creating maintainable and portable AI pipelines
- Developing RAG systems, agents, or classifiers with higher reliability
Nicht-Ziele
- Manual prompt engineering
- Simple, single-step LM calls without optimization
- Building AI systems without a structured framework
Workflow
- Configure LM provider
- Define task signatures
- Build modules (Predict, ChainOfThought, ReAct, etc.)
- Compose modules into pipelines or agents
- Optimize modules using training data
- Deploy and use optimized models
Praktiken
- Declarative Programming
- Prompt Optimization
- Modular AI Design
- Agent Development
Voraussetzungen
- Python 3.8+
- pip package manager
- Access to an LM provider (OpenAI, Anthropic, Ollama, etc.)
Installation
Zuerst Marketplace hinzufügen
/plugin marketplace add Orchestra-Research/AI-Research-SKILLs/plugin install AI-Research-SKILLs@ai-research-skillsQualitätspunktzahl
VerifiziertVertrauenssignale
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