By OmidZamani
Build, optimize, evaluate, and deploy DSPy applications with automated skills for prompt engineering, RAG pipelines, agent workflows, fine-tuning, and production deployment.
Use for DSPy adapter selection, JSONAdapter, XMLAdapter, ChatAdapter, native function calling, structured outputs, and multimodal inputs like dspy.Image or dspy.Audio.
Use for composing DSPy modules with Ensemble, MultiChainComparison, ensemble voting, sequential pipelines, and multi-program workflows.
Use for BetterTogether, prompt plus weight optimization, fine-tuning sequences, and strategy chains like p -> w -> p.
Use for BootstrapFewShot, bootstrapped demonstrations, teacher-model demos, and low-data DSPy prompt optimization.
Use for creating custom DSPy modules, extending dspy.Module, reusable components, stateful modules, serialization, and module testing.
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A Claude Code plugin containing 22 focused skills for programming, optimizing, evaluating, and deploying LLM applications with DSPy.
Stable DSPy baseline: 3.2.1, released May 5, 2026. Install the stable series with:
pip install -U "dspy>=3.2.1,<3.3"
DSPy 3.3.0b1 is a prerelease published May 28, 2026. See prerelease notes before opting in.
| Skill | Use it for |
|---|---|
| dspy-signature-designer | Typed signatures and structured outputs |
| dspy-custom-module-design | Reusable dspy.Module architecture |
| dspy-evaluation-suite | Metrics, baselines, and comparisons |
| dspy-optimizer-selection | Choosing among DSPy's optimizer families |
| Skill | Use it for |
|---|---|
| dspy-rag-pipeline | RAG and multi-hop retrieval pipelines |
| dspy-embedding-retrieval | Embedder, Embeddings, FAISS, and local corpora |
| dspy-haystack-integration | Optimizing Haystack-backed pipelines |
| Skill | Use it for |
|---|---|
| dspy-react-agent-builder | ReAct tool agents |
| dspy-mcp-tool-integration | MCP tools in DSPy agents |
| dspy-reasoning-modules | RLM, ProgramOfThought, CodeAct, and Parallel |
| dspy-advanced-module-composition | Ensembles and composed modules |
| Skill | Use it for |
|---|---|
| dspy-bootstrap-fewshot | Fast demo bootstrapping |
| dspy-miprov2-optimizer | Instruction and demo search |
| dspy-gepa-reflective | Reflective instruction optimization |
| dspy-simba-optimizer | Mini-batch introspective optimization |
| dspy-finetune-bootstrap | Weight optimization and distillation |
| dspy-better-together | Sequencing prompt and weight optimizers |
| dspy-optimize-anything | GEPA optimization for text artifacts outside DSPy |
| Skill | Use it for |
|---|---|
| dspy-output-refinement-constraints | Refine and BestOfN constraints |
| dspy-adapters-multimodal | Adapters, native tools, image, audio, and file inputs |
| dspy-production-deployment | Cache hardening, save/load, usage tracking, async, and streaming |
| dspy-debugging-observability | Inspection, callbacks, and MLflow tracing |
# Bayesian search for MIPROv2
pip install -U "dspy[optuna]>=3.2.1,<3.3"
# MCP tool integration
pip install -U "dspy[mcp]>=3.2.1,<3.3"
# Large local embedding corpora
pip install faiss-cpu
# optimize_anything
pip install -U "gepa>=0.1.1,<0.2"
/plugin marketplace add OmidZamani/dspy-skills
/plugin install dspy-skills@dspy-skills-marketplace
python3 scripts/validate_repo.py
python3 -m compileall -q examples skills/dspy-haystack-integration/examples
MIT License. See LICENSE.
npx claudepluginhub omidzamani/dspy-skills --plugin dspy-skillsProduction-grade DSPy 3.2.x skills for coding agents: signatures, modules, evaluation harnesses, GEPA optimization, RLM long-context reasoning, BetterTogether chaining, and a full end-to-end DSPy workflow.
Professional AI/ML Engineering toolkit: Prompt engineering, LLM integration, RAG systems, AI safety with 12 expert plugins
Editorial "LLM Application Developer" bundle for Claude Code from Antigravity Awesome Skills.
LLM application development with RAG, embeddings, LangChain, and prompt engineering
Benchmark, evaluate, and optimize skills to ensure reliable performance across all LLMs
🤖 AI Engineer — AI Engineer + LLM Systems Specialist