specopt-mcp

specopt-mcp

Enables prompt and code optimization using DSPy and MCP, with tools for optimizing agent files, specifications, and skills.

Category
Visit Server

README

specopt-mcp

DSPy-Powered Prompt & Code Optimization via the Model Context Protocol (MCP).

Two modes of operation:

  • MCP Server (core/server.py): Exposes 8 optimization tools via stdio MCP. Connect any MCP client (opencode, etc.) for direct tool invocation. Tools are pre-registered via @mcp.tool() — no dynamic discovery.

  • Agent Brain (agent_brain.py): A standalone LangChain agent that dynamically discovers markdown skill definitions from skills/*.md and injects them into its system prompt. The LLM autonomously reasons about which tools to invoke based on natural language requests.

Currently works with LM Studio. Includes stub connectors for Ollama and Lemonade that demonstrate the extension pattern for adding new providers. Includes synthetic dataset generation, LLM-as-judge curation, multi-stage secure evaluation metrics (injection detection, hallucination auditing), blind QA verification on unseen data, and a pluggable skill architecture.


File Structure Blueprint

specopt-mcp/
│
├── core/
│   ├── server.py              # FastMCP stdio transport server (tool entrypoints)
│   ├── optimizer.py           # DSPy optimization pipelines (MIPROv2, GEPA)
│   ├── base_skill.py          # Abstract base class for pluggable skills
│   ├── skill_md_loader.py     # Parses skills/*.md into discoverable manifests
│   ├── config_loader.py       # YAML configuration loader
│   ├── prompt_loader.py       # YAML prompt/description loader
│   ├── artifact_cleanup.py    # Pipeline artifact archival utility
│   └── skills/
│       ├── __init__.py        # SkillRegistry (auto-registers all skills)
│       ├── model_connector.py # LM Studio (working); Ollama / Lemonade (stubs)
│       ├── file_modifier.py   # Surgical markdown file editing
│       ├── spec_optimizer.py  # JSON schema description enhancement
│       ├── verifier.py        # Blind out-of-sample QA evaluation
│       ├── dataset_logger.py  # Dataset persistence to disk
│       └── directory_scanner.py # File discovery and filtering
│
├── skills/                    # Markdown skill definitions (agent brain discovery)
│   ├── file_modifier.md
│   ├── model_connector.md
│   ├── dataset_logger.md
│   ├── prompt_archiver.md
│   └── dataset_metric.md
│
├── agents/
│   └── writer.md              # Sample agent prompt target file (for use with agent_brain.py standalone agent)
│
├── tests/
│   ├── conftest.py            # MockLM for deterministic testing
│   ├── test_skills.py         # Unit tests for skill classes + SkillMDLoader
│   └── test_pipeline_integration.py # Integration tests for pipelines
│
├── opencode.json              # opencode MCP server config
├── agent_brain.py             # LangChain agent with dynamic skill discovery
├── config.yaml                # Pipeline, provider, and artifact config
├── prompts.yaml               # DSPy signatures and tool descriptions
├── requirements.txt           # Python dependencies
├── setup.py                   # Console entrypoint: specopt-server
└── .gitignore

MCP Tools

Note: All tools require a running LM Studio instance at http://localhost:1234/v1 by default. Change api_base in config.yaml to point to your provider. Only LM Studio is currently implemented; Ollama and Lemonade stubs show how to extend support.

optimize_agent_file

Optimizes an agent markdown prompt file using MIPROv2 or GEPA. Optionally accepts a document_dir for supplementary reference docs (.md, .txt, .json, .pdf, .docx, .html, .pptx) to ground dataset generation. Automatically validates the generated dataset before optimization proceeds.

# Direct MCP call
result = await session.call_tool("optimize_agent_file", {
    "agent_markdown_path": "./agents/writer.md",
    "provider": "lm-studio",
    "model": "",
    "optimizer_type": "mipro",
    "document_dir": "./reference_docs"
})
# Agent prompt
Optimize the agent prompt at './agents/writer.md' using LM Studio with 5 trials via MIPROv2

optimize_specification_file

Enhances description, summary, and title fields in a JSON schema file using DSPy while preserving structural layout.

result = await session.call_tool("optimize_specification_file", {
    "spec_json_path": "./api_spec.json",
    "provider": "lm-studio",
    "model": ""
})
# Agent prompt
Enhance all descriptions in './api_spec.json' using Ollama

optimize_skill_logic

Optimizes Python skill source code using MIPROv2 or GEPA with an actual pytest suite run as the reward metric. The optimizer proposes code variants, syntax-checks them, swaps them in, runs pytest tests/test_skills.py, and reverts on failure.

result = await session.call_tool("optimize_skill_logic", {
    "skill_file_path": "./core/skills/file_modifier.py",
    "provider": "lm-studio",
    "model": "",
    "optimizer_type": "mipro"
})
# Agent prompt
Refactor the Python skill at './core/skills/file_modifier.py' using GEPA and validate with pytest

optimize_agents_file_by_section

Parses an AGENTS markdown file into sections by headers, optimizes each section independently, and outputs a side-by-side original-vs-optimized comparison document plus a reconstructed _optimized.md file.

result = await session.call_tool("optimize_agents_file_by_section", {
    "agents_markdown_path": "./agents/writer.md",
    "provider": "lm-studio",
    "model": ""
})
# Agent prompt
Optimize each section of './agents/writer.md' independently and produce a side-by-side comparison

verify_prompt_generalization

Runs a blind out-of-sample QA evaluation comparing the optimized prompt against the original (or a hardcoded fallback) on unseen test scenarios to detect generalization improvement or overfitting.

result = await session.call_tool("verify_prompt_generalization", {
    "agent_markdown_path": "./agents/writer.md",
    "provider": "lm-studio",
    "model": ""
})
# Agent prompt
Run blind QA verification on './agents/writer.md' to check generalization on unseen data

generate_training_dataset

Generates a synthetic training dataset from an agent markdown file without running the full optimization pipeline. Supports chunking for large supplementary docs, LLM-as-judge curation, and multiple output formats: json, jsonl, alpaca, chatml.

result = await session.call_tool("generate_training_dataset", {
    "agent_markdown_path": "./agents/writer.md",
    "provider": "lm-studio",
    "model": "",
    "num_examples": 20,
    "document_dir": "./reference_docs",
    "curate": True,
    "curation_threshold": 7.0,
    "output_format": "alpaca"
})
# Agent prompt
Generate 20 training examples from './agents/writer.md' in Alpaca format and curate with quality threshold 7.0

validate_generated_dataset

Validates a generated dataset against four quality criteria:

  1. Alignment — LLM-as-Judge checks solvability, label correctness, and hardness
  2. Diversity — sentence-transformers embedding similarity (target < 0.75)
  3. Baseline Failure Test — unoptimized agent score (target 40–70%)
  4. Negative Class Ratio — adversarial/out-of-scope cases (target ≥ 15%)

Returns a structured PASS/FAIL verdict with per-metric breakdown.

result = await session.call_tool("validate_generated_dataset", {
    "dataset_path": "./agents/writer_generated_dataset.json",
    "agent_markdown_path": "./agents/writer.md",
    "provider": "lm-studio",
    "model": "",
    "document_dir": ""
})
# Agent prompt
Validate the dataset './agents/writer_generated_dataset.json' against all four quality criteria

cleanup_pipeline_artifacts

Scans a directory for all pipeline-generated artifacts (.bak, _optimized.*, _compiled_prompt.txt, _section_comparison.md, _generated_dataset.json, optimization_report.md) and moves them to an artifacts/<timestamp>/ folder.

result = await session.call_tool("cleanup_pipeline_artifacts", {
    "directory_path": "./agents"
})
# Agent prompt
Clean up all pipeline artifacts in the './agents' directory

Provider Support: Only LM Studio is fully functional. The OllamaLM and LemonadeLM classes in core/skills/model_connector.py are stub implementations that show the extension pattern for adding new providers — they return placeholder responses and need a real API client implementation to go live.

Architecture

The system is organized in five layers:

Layer Component Description
Transport core/server.py FastMCP stdio server exposing 8 tools, threaded with AnyIO
Pipeline core/optimizer.py DSPy MIPROv2/GEPA optimizers, dataset generation, validation, verification
Python Skill core/skills/*.py Strategy-pattern skills registered in SkillRegistry
Markdown Skill skills/*.md Zero-code skill definitions discovered by SkillMDLoader
Agent agent_brain.py LangChain agent with dynamic skill discovery

Evaluation Pipeline Flow

Agent Markdown File
    │
    ▼
Dataset Generation (LLM-as-Judge) ──► Dataset Validation (4 criteria)
    │
    ▼
Baseline Evaluation (secure_universal_llm_metric)
    │
    ▼
MIPROv2 / GEPA Compile
    │
    ▼
Optimized Evaluation
    │
    ▼
Report Generation ──► QA Verification (blind out-of-sample)

The default evaluation metric is a 3-stage guard:

  1. Security Auditor — rejects prompts with injection vulnerabilities
  2. Fact Grounding Auditor — rejects hallucinated content
  3. Universal Judge — passes only correct, non-trivial predictions

Quickstart

# 1. Clone and set up a virtual environment
python -m venv venv
source venv/bin/activate   # Windows: venv\Scripts\activate.ps1

# 2. Install dependencies
pip install -r requirements.txt

# 3. Install the server CLI entrypoint
pip install -e .

# 4. Run tests
pytest -v

# Mode 1 — Start the MCP server (for opencode):
python -m core.server

# Mode 2 — Launch the LangChain agent brain (standalone):
python agent_brain.py

Two Modes of Operation

Mode 1: MCP Server Mode 2: Agent Brain
Entry point core/server.py (via specopt-server) agent_brain.py
Client opencode, or any MCP client over stdio Standalone terminal script
Tool source 8 hardcoded @mcp.tool() functions Dynamic discovery from skills/*.md
Markdown skill awareness Not aware Fully aware via SkillMDLoader
LLM orchestration Handled by the client (e.g., opencode) Built-in LangChain agent loop
Best for Direct optimization via chat Autonomous multi-step reasoning

Mode 1: MCP Server (for opencode)

opencode Integration

Add the following to opencode.json or opencode.jsonc in your project root:

{
  "$schema": "https://opencode.ai/config.json",
  "mcp": {
    "specopt": {
      "type": "local",
      "command": ["specopt-server"],
      "enabled": true
    }
  },
  "experimental": {
    "mcp_timeout": 36000000
  }
}

Note: The specopt-server command is registered by setup.py via pip install -e .. If you prefer not to install the entrypoint, use:

"command": ["python", "-m", "core.server"]

Once configured, opencode discovers all 8 MCP tools automatically. You can optimize prompts or code conversationally:

Optimize the agent prompt at './agents/writer.md' using LM Studio

Verify the tools are available:

opencode mcp list

Expected: specopt_optimize_agent_file, specopt_verify_prompt_generalization, etc.


Mode 2: Agent Brain (Standalone LangChain Agent)

The agent brain (agent_brain.py) is a standalone script that runs a LangChain agent loop. It dynamically discovers markdown skill definitions from the skills/ directory and injects them into the LLM's system prompt. Adding a new skills/*.md file automatically makes the agent brain aware of the new capability — no code changes, no config edits, no redeployment.

How Markdown Skill Discovery Works

At startup, SkillMDLoader.load_all() scans skills/ for *.md files, parses the YAML frontmatter and body, and passes them to _build_system_prompt(). The resulting system prompt looks like:

Available markdown skill definitions:
- prompt_archiver: inputs(source_dir: str, archive_name: str) -> outputs(archive_path: str)
  Archives prompt files from a source directory into a timestamped zip archive.
- surgical_file_modifier: inputs(file_path: str, new_prompt: str, demos: list[dict]) -> outputs(success: bool)
  Surgically modifies markdown text bodies while preserving YAML frontmatter.
- model_connector: inputs(provider: str, model: str) -> outputs(lm_client: dspy.LM)
  Dynamically configures DSPy clients for LM Studio, Ollama, Lemonade.
- dataset_logger: inputs(dataset: list[dspy.Example], output_path: str) -> outputs(result: str)
  Persists generated datasets to disk as JSON files.

The LLM can then reason about which skill to use and how to chain multiple skills together.

Running the Agent Brain

source venv/bin/activate
pip install -e .                       # registers specopt-server on PATH
python agent_brain.py

Extending with a New Skill (Zero-Code)

To add a new capability that the agent brain can reason about:

  1. Create skills/my_skill.md with YAML frontmatter (name, inputs, outputs)
  2. Add ## Purpose and ## Behavior sections describing what it does

The agent brain discovers it automatically on the next run. No Python code required. The corresponding Python implementation can be added later when execution is needed.

Example

from agent_brain import AgenticOrchestrator
import asyncio

orchestrator = AgenticOrchestrator()
task = (
    "Please optimize our prompt file at './agents/writer.md' using 10 trials via LM Studio. "
    "Immediately after the optimization pass finishes, execute our QA validation tool on the file "
    "to verify if the changes genuinely improved our accuracy parameters on unseen test data."
)
asyncio.run(orchestrator.run_reasoning_loop(task))

Configuration

Providers (config.yaml)

Only lm-studio is production-ready. The ollama and lemonade provider configurations and stub classes are pre-defined as templates — implement the real API calls in core/skills/model_connector.py to activate them.

providers:
  default: "lm-studio"
  lm-studio:
    api_base: "http://localhost:1234/v1"
    api_key: "not-needed"
    default_model: "mistralai/mistral-7b-instruct-v0.3"
  ollama:
    api_base: "http://localhost:11434/v1"
    default_model: "llama3"
  lemonade:
    api_base: "http://localhost:8000/v1"
    default_model: "lemon-model"

Pipeline Parameters

pipeline:
  mipro:
    num_trials: 5
    num_candidates: 3
    seed: 9
  dataset:
    num_examples: 15
    chunk_size: 4000
    chunk_overlap: 200
  dataset_validation:
    enabled: true
    alignment_threshold: 80.0
    diversity_threshold: 0.75
    baseline_min: 40.0
    baseline_max: 70.0
    negative_class_min: 15.0

Links

  • MIPRO: https://dspy.ai/api/optimizers/MIPROv2/
  • GEPA: https://dspy.ai/api/optimizers/GEPA/overview/

Requirements

  • Python ≥ 3.10
  • LM Studio running locally at http://localhost:1234/v1 (required — Ollama and Lemonade stubs need real API client code to activate)
  • Dependencies: mcp, langchain-core, langchain-openai, dspy, anyio, PyYAML, sentence-transformers, PyMuPDF, pytest

Recommended Servers

playwright-mcp

playwright-mcp

A Model Context Protocol server that enables LLMs to interact with web pages through structured accessibility snapshots without requiring vision models or screenshots.

Official
Featured
TypeScript
Magic Component Platform (MCP)

Magic Component Platform (MCP)

An AI-powered tool that generates modern UI components from natural language descriptions, integrating with popular IDEs to streamline UI development workflow.

Official
Featured
Local
TypeScript
Audiense Insights MCP Server

Audiense Insights MCP Server

Enables interaction with Audiense Insights accounts via the Model Context Protocol, facilitating the extraction and analysis of marketing insights and audience data including demographics, behavior, and influencer engagement.

Official
Featured
Local
TypeScript
VeyraX MCP

VeyraX MCP

Single MCP tool to connect all your favorite tools: Gmail, Calendar and 40 more.

Official
Featured
Local
graphlit-mcp-server

graphlit-mcp-server

The Model Context Protocol (MCP) Server enables integration between MCP clients and the Graphlit service. Ingest anything from Slack to Gmail to podcast feeds, in addition to web crawling, into a Graphlit project - and then retrieve relevant contents from the MCP client.

Official
Featured
TypeScript
Kagi MCP Server

Kagi MCP Server

An MCP server that integrates Kagi search capabilities with Claude AI, enabling Claude to perform real-time web searches when answering questions that require up-to-date information.

Official
Featured
Python
E2B

E2B

Using MCP to run code via e2b.

Official
Featured
Neon Database

Neon Database

MCP server for interacting with Neon Management API and databases

Official
Featured
Exa Search

Exa Search

A Model Context Protocol (MCP) server lets AI assistants like Claude use the Exa AI Search API for web searches. This setup allows AI models to get real-time web information in a safe and controlled way.

Official
Featured
Qdrant Server

Qdrant Server

This repository is an example of how to create a MCP server for Qdrant, a vector search engine.

Official
Featured