Skip to main content

Benchmark AI coding agents against your own codebase. Mine real tasks from repo history, run agents, interpret results.

Project description

codeprobe

Benchmark AI coding agents against your own codebase.

Mine real tasks from your repo history, run agents against them, and find out which setup actually works best for your code, not someone else's benchmark suite.

Why codeprobe?

Existing benchmarks (SWE-bench, HumanEval) use fixed task sets that AI models may have memorized from training data, and as general public benchmarks likely don't capture what is most important to your unique workflows. codeprobe mines tasks from your private repo history, producing benchmarks that are impossible to contaminate. You can also point the tool at any public repo to mine tasks from.

Prerequisites

codeprobe orchestrates external AI coding agents — you need at least one installed:

Agent Install Required env var
Claude Code claude.ai/download ANTHROPIC_API_KEY
GitHub Copilot npm install -g @github/copilot-cli (>= 1.0.4) GitHub auth via gh auth login
Codex Included via pip install codeprobe[codex] OPENAI_API_KEY

You also need:

  • Python 3.11+
  • Git (for task mining and worktree isolation)
  • GitHub CLI (gh) — optional, for mining tasks from GitHub PRs with linked issues

The assess and mine --enrich commands need an LLM for scoring/enrichment. codeprobe auto-detects the best available backend:

Priority Backend Install Env var
1 Anthropic SDK pip install codeprobe[anthropic] ANTHROPIC_API_KEY
2 OpenAI SDK pip install codeprobe[codex] OPENAI_API_KEY
3 Claude CLI claude.ai/download ANTHROPIC_API_KEY

Override with CODEPROBE_LLM_BACKEND=anthropic|openai|claude-cli. Without any backend, assess falls back to heuristic scoring.

Quick Start

pip install codeprobe

cd /path/to/your/repo

codeprobe assess .      # Score benchmarking potential (optional)
codeprobe mine .        # Extract tasks from repo history
codeprobe run .         # Run agents against tasks
codeprobe interpret .   # Get recommendations

Prefer driving codeprobe through a coding agent instead? See docs/workflows/with-agents.md for the skills-based workflow (/experiment, /assess-codebase, /interpret).

Commands

Command Purpose
codeprobe assess Score a codebase's benchmarking potential
codeprobe init Interactive wizard — choose what to compare
codeprobe mine Mine eval tasks from merged PRs/MRs
codeprobe probe Generate fast micro-benchmark probes (30s each)
codeprobe experiment Manage comparison experiments (init, add-config)
codeprobe run Execute tasks against AI agents
codeprobe interpret Analyze results, rank configurations
codeprobe doctor Check environment readiness (agents, keys, git)
codeprobe preambles list List available preambles at all search levels
codeprobe oracle-check Compare agent answer against oracle ground truth
codeprobe scaffold Create/validate eval task directories
codeprobe ratings Record and analyze agent session quality ratings

Two Ways to Generate Tasks

1. SDLC Tasks (from merged PRs)

Mine real code-change tasks from your git history. Agents must reproduce known fixes and features.

codeprobe mine . --count 10 --source github
codeprobe mine . --count 5 --min-files 4    # Harder tasks (more files changed)
codeprobe mine . --enrich                    # LLM-enriched instructions

2. Micro-Benchmark Probes

Fast exact-match tasks (30s each) that test code navigation and comprehension — no agent sandbox needed.

codeprobe probe . -n 10 -l python -s 42 -o ./probes

Generates four probe types: find-function, count-callers, return-type, module-dependency.

Curation Workflows

End-to-end flows from a raw repo to ranked agent results. Each workflow covers the full assess → mine → validate → run → interpret pipeline.

Workflow When to use Guide
Standard Repo has merged PRs/MRs docs/workflows/standard.md
Cold-start New repo, squashed history, vendored code docs/workflows/cold-start.md
Cross-repo Tasks spanning multiple repositories docs/workflows/cross-repo.md

Quick start (standard path):

codeprobe assess /path/to/repo
codeprobe mine /path/to/repo --goal quality --count 10 --no-interactive
codeprobe validate /path/to/repo/.codeprobe/tasks/<task-id>
codeprobe run /path/to/repo --agent claude --max-cost-usd 5.00
codeprobe interpret /path/to/repo

For the full MCP comparison setup (preambles, baseline vs with-MCP configs), see the next section.

MCP Comparison Experiments

Compare agent performance with and without MCP tools (Sourcegraph, GitHub, etc.).

Mine org-scale comprehension tasks

# Set up Sourcegraph credentials
export SOURCEGRAPH_TOKEN="your-token"

# Mine MCP-optimized tasks with Sourcegraph ground truth enrichment
codeprobe mine /path/to/repo \
  --org-scale --mcp-families --count 5 \
  --no-interactive --no-llm \
  --sg-repo github.com/sg-evals/your-repo

MCP task families: symbol-reference-trace, type-hierarchy-consumers, change-scope-audit.

Set up the experiment

# Create experiment
codeprobe experiment init /path/to/repo --name mcp-comparison

# Copy mined tasks into the experiment
cp -r /path/to/repo/.codeprobe/tasks/* /path/to/repo/mcp-comparison/tasks/

# Baseline config (no MCP, no preamble)
codeprobe experiment add-config /path/to/repo/mcp-comparison \
  --label baseline --agent claude --model claude-haiku-4-5-20251001

# Sourcegraph MCP config (preamble + MCP server)
codeprobe experiment add-config /path/to/repo/mcp-comparison \
  --label with-sourcegraph --agent claude --model claude-haiku-4-5-20251001 \
  --preamble sourcegraph \
  --mcp-config '{"mcpServers":{"sourcegraph":{"type":"http","url":"https://sourcegraph.com/.api/mcp/v1","headers":{"Authorization":"token $SOURCEGRAPH_TOKEN"}}}}'

# Run and interpret
codeprobe run /path/to/repo/mcp-comparison --agent claude --max-cost-usd 5.00
codeprobe interpret /path/to/repo/mcp-comparison

Preambles

Preambles are composable instruction templates prepended to the agent's prompt for MCP-enabled configs. Built-in preambles: sourcegraph, github.

Override built-ins by placing a .md file in:

  • <task_dir>/preambles/ (per-task)
  • .codeprobe/preambles/ (project-level)
  • ~/.codeprobe/preambles/ (user-level)

Template variables: {{sg_repo}}, {{repo_name}}, {{repo_path}}, {{task_id}}

Key Flags

# Running
codeprobe run . --parallel 5          # Run 5 tasks concurrently (worktree-isolated)
codeprobe run . --max-cost-usd 2.00   # Stop when cost budget is reached
codeprobe run . --dry-run             # Estimate resource usage without running
codeprobe run . --model opus-4        # Override experiment.json model
codeprobe run . --timeout 600         # Override default 300s timeout
codeprobe run . --repeats 3           # Run each task 3 times
codeprobe run . --show-prompt         # Print resolved prompt without running agent

# Mining
codeprobe mine . --enrich             # Use LLM to improve weak task instructions
codeprobe mine . --org-scale          # Mine comprehension tasks (not SDLC)
codeprobe mine . --mcp-families       # Include MCP-optimized task families
codeprobe mine . --sg-repo REPO       # Sourcegraph repo for ground truth enrichment
codeprobe mine . --preset quick       # Quick scan: count=3
codeprobe mine . --preset mcp         # MCP eval: org-scale + MCP families + enrich

# Mine profiles (save/load custom flag combinations)
codeprobe mine --save-profile my-setup --count 10 --org-scale .
codeprobe mine --profile my-setup .   # Load saved flags
codeprobe mine --list-profiles        # Show available profiles

# Experiment configs
codeprobe experiment add-config . --preamble sourcegraph  # Attach MCP preamble
codeprobe experiment add-config . --mcp-config config.json  # Attach MCP server

# Diagnostics
codeprobe doctor                      # Check agents, API keys, git, Python
codeprobe preambles list              # Show available preambles at all levels

# Output
codeprobe interpret . --format csv    # Export for pivot tables
codeprobe interpret . --format html   # Self-contained HTML report

Supported Agents

  • Claude Code (--agent claude) — headless via claude -p
  • GitHub Copilot (--agent copilot) — via Copilot CLI
  • Codex (--agent codex) — via OpenAI API
  • Custom agents via the AgentAdapter protocol

Supported Git Hosts

GitHub, GitLab, Bitbucket, Azure DevOps, Gitea/Forgejo, and local repos.

Configuration

Configuration lives in experiment.json (created by codeprobe init or codeprobe experiment init). CLI flags override experiment.json values — precedence: built-in defaults < experiment.json < CLI flags.

Run-time observability is on by default: Rich Live dashboard in TTY, JSON event lines with --log-format json for CI. Cost budget warnings at 80% and 100% thresholds are always visible on stderr.

License

Apache-2.0

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

codeprobe-0.5.3.tar.gz (527.0 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

codeprobe-0.5.3-py3-none-any.whl (317.5 kB view details)

Uploaded Python 3

File details

Details for the file codeprobe-0.5.3.tar.gz.

File metadata

  • Download URL: codeprobe-0.5.3.tar.gz
  • Upload date:
  • Size: 527.0 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/6.2.0 CPython/3.12.13

File hashes

Hashes for codeprobe-0.5.3.tar.gz
Algorithm Hash digest
SHA256 177c47960ef0966e8ba63b3f344fca097d340a681c889cd9a929821165c1a42f
MD5 7792e65b32fc8203d5d517deab78f8aa
BLAKE2b-256 990a4932e7608f63efc2224a212b6bd6c298f37192670a4a2aa8de84df7fd1b9

See more details on using hashes here.

File details

Details for the file codeprobe-0.5.3-py3-none-any.whl.

File metadata

  • Download URL: codeprobe-0.5.3-py3-none-any.whl
  • Upload date:
  • Size: 317.5 kB
  • Tags: Python 3
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/6.2.0 CPython/3.12.13

File hashes

Hashes for codeprobe-0.5.3-py3-none-any.whl
Algorithm Hash digest
SHA256 51fae1da42c3f1afc0fe8295a94c25af40491d8dd4960519af9b2bb7b14a78dd
MD5 9ce782240e7c8a7469a07500556633f7
BLAKE2b-256 d23a5a92944f62864aa2d619c2fcf950b9343bb12ea6a6c9e40cf91fdd525934

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page