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Historical deployment analysis — walk git history, deploy per day, test all endpoints, capture screenshots, restore working fragments

Project description

rebuild

Code Evolution Intelligence Engine

Version Python License Tests Coverage

Historical deployment analysis & Code Intelligence — walk git history day by day, deploy per commit, test all endpoints, capture screenshots, and analyze code evolution to find duplicates, rank quality, and generate refactor plans.

SUMD stats (v0.1.23): 3722 functions · 161 classes · 167 files · CC̄ = 3.9


AI Cost Tracking

PyPI Version Python License AI Cost Human Time Model

  • 🤖 LLM usage: $7.5000 (57 commits)
  • 👤 Human dev: ~$1626 (16.3h @ $100/h, 30min dedup)

Generated on 2026-05-08 using openrouter/qwen/qwen3-coder-next


📖 Documentation

Document Description
Getting Started Installation, quickstart, configuration
Walk Command Core walk workflow — deploy modes, output, rebuild.yaml
Analyze Duplicates, service graph, truth, vector search, multi-repo
Refactor AI-powered refactor plans + execution
Auto-PR Automated GitHub/GitLab PR creation
Plugins Custom scanners & reporters via entry points
CLI Reference All commands and options
Config Reference Full rebuild.yaml field reference
Architecture 5-layer design, services, data flow
Case Study: c2004 Real-world analysis of a large ecosystem
c2004 Testing Log Detailed test log with commands & results
Usage Guide Step-by-step guide (all features)
Changelog Release history (current: v0.1.23)
Roadmap Completed phases 10–16, future plans
Analysis (P1–P4) Refactoring hotspots, infra gaps, missing features, test debt + sprint plan

🚀 Quick Start

# Install
pip install rebuild

# Initialise config
rebuild init /path/to/my-service

# Walk last 14 days (dry-run, no deploy)
rebuild walk /path/to/my-service --deploy none --days 14 --dry-run

# Serve results
rebuild serve --results-dir /path/to/my-service/.rebuild

See Installation and Quick Start for details.


What it does

# Layer Description
1 Intelligence Structural & semantic duplicates (Python/JS/TS), service graphs, vector search, quality ranking
2 Decision Engine AI-powered refactoring plans + automated execution
3 Walk Git history iteration (Incremental, Replay, Accelerator modes)
4 Deploy Docker Compose / Replay / Accelerator hot-reload per commit
5 Scan & Test OpenAPI, FastAPI routes, Traefik discovery; auth, param substitution, body injection
6 Visualization D3.js graphs, health dashboards, SSE streaming, evolution playback
7 Automation Auto PR, DSL scripting, NLP commands, Plugins, Notifications

🚀 c2004 Case Study

Applying rebuild to the massive c2004 project (88 subdirectories, thousands of files). See full details: Case Study · Testing Log

1. Duplication Detection

rebuild analyze duplicates /path/to/c2004

Duplication Analysis Result: Found 1,597 duplicate groups across Python and JS/TS files.

2. Architecture Graph

rebuild analyze services /path/to/c2004/backend --export

Architecture Graph Result: Interactive D3.js map highlighting circular dependencies.

3. AI Refactor Planning

rebuild refactor plan /path/to/c2004/backend --ai
rebuild refactor pr /path/to/c2004/backend

Result: 122 high-impact suggestions with automated PR descriptions.

4. Health Dashboard

rebuild dashboard --repo /path/to/c2004

Health Dashboard Result: Correlation between technical debt and API pass rates.


Examples

Explore ready-to-run scenarios in examples/:


Project Status

All Phases 10–16 completed. See TODO.md for full roadmap.

Milestone Status
c2004 Testing & Intelligence (Phase 10) ✅ Done
Semantic Embeddings & Vector Search (Phase 11) ✅ Done
Multi-Repo & Real-time (Phase 12) ✅ Done
UI/UX (Phase 13) ✅ Done
Production Readiness (Phase 14) ✅ Done
c2004 Integration (Phase 15) ✅ Done
Production Release (Phase 16) ✅ Done — PyPI, CI/CD, Docker, MkDocs, Plugins, Notifications

Current: v0.1.23 · 634 tests · 72% coverage


License

Licensed under Apache-2.0.

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