dspy-integration-with-langchain
About
This skill enables DSPy modules to be used as LangChain runnables and deployed via FastAPI. It provides integration patterns for incorporating DSPy's programmatic prompting into existing LangChain workflows and production APIs. Use this when you need to bridge DSPy's optimization capabilities with LangChain's ecosystem or serve DSPy models through web endpoints.
Quick Install
Claude Code
Recommendednpx skills add vamseeachanta/workspace-hub -a claude-code/plugin add https://github.com/vamseeachanta/workspace-hubgit clone https://github.com/vamseeachanta/workspace-hub.git ~/.claude/skills/dspy-integration-with-langchainCopy and paste this command in Claude Code to install this skill
GitHub Repository
Related Skills
agenta-1-prompt-versioning-and-management
OtherThis skill enables version control and management for AI prompts, allowing developers to track changes, compare iterations, and maintain prompt history. It provides tools to create versioned prompt templates with parameters like style and length constraints. Use this when you need reproducible, auditable prompt workflows across different model versions or team collaborations.
agenta-1-prompt-versioning-strategy
OtherThis skill provides best practices for versioning AI prompts using semantic versioning and structured metadata. It helps developers track prompt changes, maintain changelogs, and organize different prompt versions systematically. Use this when implementing version control for production prompts in AI applications.
agenta
OtherAgenta is a self-hosted platform for managing and evaluating LLM prompts. It enables developers to version prompts, run A/B tests, and track experiments with evaluation metrics. Use it to systematically test and deploy prompt changes with confidence.
dspy-3-retrieval-augmented-generation
OtherThis DSPy skill implements Retrieval-Augmented Generation (RAG) by integrating document retrieval with language model generation. It allows developers to configure a retriever (like ChromaDB) and define a pipeline that fetches relevant context before generating answers. Use this when you need to ground AI responses in specific external knowledge sources or documentation.
