Deterministic architectural drift detection for AI-accelerated Python repositories through cross-file coherence analysis
Project description
Drift
Deterministic architecture erosion detection for AI-accelerated codebases
97.3% precision (single-rater) · 22 signals · deterministic · no LLM in pipeline · full study · docs
AI coding tools write code that works — but doesn't fit. Error handling fragments across 4 patterns, layer boundaries erode, near-identical utilities accumulate silently. Drift finds exactly that: deterministic structural analysis in seconds, no LLM required.
pip install drift-analyzer
drift analyze --repo .
╭─ drift analyze myproject/ ──────────────────────────────────────────────────╮
│ DRIFT SCORE 0.52 Δ -0.031 ↓ improving │ 87 files │ AI: 34% │ 2.1s │
╰──────────────────────────────────────────────────────────────────────────────╯
Module Score Bar Findings Top Signal
src/api/routes/ 0.71 ██████████████░░░░░░ 12 PFS 0.85
src/services/auth/ 0.58 ███████████░░░░░░░░░ 7 AVS 0.72
src/db/models/ 0.41 ████████░░░░░░░░░░░░ 4 MDS 0.61
◉ PFS 0.85 Error handling split 4 ways
→ src/api/routes.py:42
→ Next: consolidate into shared error handler
◉ AVS 0.72 DB import in API layer
→ src/api/auth.py:18
→ Next: move DB access behind service interface
What drift catches
Drift finds the structural problems AI-generated code introduces quietly: the same error handling done 4 different ways, database imports leaking into the API layer, near-identical helper functions across 6 files. Problems that pass every test but make the codebase harder to change.
Try it now
drift analyze --repo . # see your top findings
drift explain PFS # learn what a signal means
drift fix-plan --repo . # get actionable repair tasks
Add to CI (start report-only)
- uses: sauremilk/drift@v1
with:
fail-on: none # report findings without blocking
upload-sarif: "true" # findings appear as PR annotations
Once the team trusts the output, tighten: fail-on: high.
More: Quick Start · Example Findings · Team Rollout
AI-assisted workflows
Drift integrates with AI coding sessions (Copilot, Cursor, Claude) and MCP-capable editors:
drift scan --repo . --max-findings 5 # session baseline for agents
drift diff --staged-only # pre-commit check
drift mcp --serve # MCP server for IDE integration
drift fix-plan --repo . # agent-friendly repair tasks
Full setup: Integrations · MCP · Vibe-Coding Guide
Why teams use drift
Your linter, type checker, and test suite can tell you whether code is valid. They do not tell you whether the repository is quietly splitting into incompatible patterns across modules.
Drift focuses on that gap:
- Ruff / formatters / type checkers: local correctness and style, not cross-module coherence.
- Semgrep / CodeQL / security scanners: risky flows and policy violations, not architectural consistency.
- Maintainability dashboards: broad quality heuristics, not a drift-specific score with reproducible signal families.
Current public evidence: 15 real-world repositories in the study corpus, 22 signal families (15 scoring-active, 7 report-only), and auto-calibration that rebalances weights at runtime. Full study → · Trust & limitations
Use cases
Pattern fragmentation in a connector layer
Problem: A FastAPI service has 4 connectors, each implementing error handling differently — bare except, custom exceptions, retry decorators, and silent fallbacks.
Solution:
drift analyze --repo . --sort-by impact --max-findings 5
Output: PFS finding with score 0.96 — "26 error_handling variants in connectors/" — shows exactly which files diverge and suggests consolidation.
Architecture boundary violation in a monorepo
Problem: A database model file imports directly from the API layer, creating a circular dependency that breaks test isolation.
Solution:
drift check --fail-on high
Output: AVS finding — "DB import in API layer at src/api/auth.py:18" — blocks the CI pipeline until the import direction is fixed.
Duplicate utility code from AI-generated scaffolding
Problem: AI code generation created 6 identical _run_async() helper functions across separate task files instead of finding the existing shared utility.
Solution:
drift analyze --repo . --format json | jq '.findings[] | select(.signal=="MDS")'
Output: MDS findings listing all 6 locations with similarity scores ≥ 0.95, enabling a single extract-to-shared-module refactoring.
Setup and rollout options
Full GitHub Action (recommended: start report-only)
name: Drift
on: [push, pull_request]
jobs:
drift:
runs-on: ubuntu-latest
permissions:
contents: read
security-events: write
steps:
- uses: actions/checkout@v4
with:
fetch-depth: 0
- uses: sauremilk/drift@v1
with:
fail-on: none # report findings without blocking CI
upload-sarif: "true" # findings appear as PR annotations
Once the team has reviewed findings for a few sprints, tighten the gate:
- uses: sauremilk/drift@v1
with:
fail-on: high # block only high-severity findings
upload-sarif: "true"
CI gate (local)
drift check --fail-on none # report-only
drift check --fail-on high # block on high-severity findings
pre-commit hook
The fastest way to add drift to your workflow:
# .pre-commit-config.yaml
repos:
- repo: https://github.com/sauremilk/drift
rev: v0.10.2
hooks:
- id: drift-check # blocks on high-severity findings
# - id: drift-report # report-only alternative (start here)
Or use a local hook if you already have drift installed:
# .pre-commit-config.yaml
repos:
- repo: local
hooks:
- id: drift
name: drift
entry: drift check --fail-on high
language: system
pass_filenames: false
always_run: true
More setup paths:
If you want example findings before integrating, start with docs-site/product/example-findings.md.
All 22 signals
Drift scores 22 signal families (15 scoring-active, 7 report-only) — from pattern fragmentation and architecture violations to temporal volatility, security-by-default checks, and co-change coupling. Each finding includes a severity, file location, and concrete next action.
drift explain <SIGNAL> shows what any signal detects and how to fix it.
Signal Reference · Algorithm Deep Dive · Scoring Model
Agent output reference: Negative Context
How drift compares
Data sourced from STUDY.md §9 and benchmark_results/.
| Capability | drift | SonarQube | pylint / mypy | jscpd / CPD |
|---|---|---|---|---|
| Pattern Fragmentation across modules | Yes | No | No | No |
| Near-Duplicate Detection | Yes | Partial (text) | No | Yes (text) |
| Architecture Violation signals | Yes | Partial | No | No |
| Temporal / change-history signals | Yes | No | No | No |
| GitHub Code Scanning via SARIF | Yes | Yes | No | No |
| Zero server setup | Yes | No | Partial | Yes |
| TypeScript Support | Optional ¹ | Yes | No | Yes |
¹ Experimental via drift-analyzer[typescript]. Python is the primary target.
Drift is designed to complement linters and security scanners, not replace them. Recommended stack: linter (style) + type checker (types) + drift (coherence) + security scanner (SAST).
Full comparison: STUDY.md §9 — Tool Landscape Comparison
Is drift a good fit?
Drift is a strong fit for:
- Python teams using AI coding tools in repositories where architecture matters
- repositories with 20+ files and recurring refactors across modules
- teams that want deterministic architectural feedback in local runs and CI
Wait or start more cautiously if:
- the repository is tiny and a few findings would dominate the score
- you need bug finding, security review, or type-safety enforcement rather than structural analysis
- Python 3.11+ is not available in your local and CI execution path yet
The safest rollout path is progressive:
- Start with
drift analyzelocally and review the top findings. - Add
drift check --fail-on nonein CI as report-only discipline. - Gate only on
highfindings once the team understands the output. - Ignore generated or vendor code and tune config only after reviewing real findings in your repo.
Recommended guides:
Trust and limitations
Public claims safe to repeat today: Drift is deterministic, benchmarked on 15 real-world repositories in the current study corpus, and uses 22 signal families (15 scoring-active, 7 report-only) with auto-calibration for runtime weight rebalancing and small-repo noise suppression.
What's limited: Benchmark validation is single-rater; not yet independently replicated. Small repos can be noisy. Temporal signals depend on clone depth. The composite score is orientation, not a verdict.
What's next: Independent external validation, multi-rater ground truth, signal-specific confidence intervals.
Drift is designed to earn trust through determinism and reproducibility:
- no LLMs in the detection pipeline
- reproducible CLI and CI output
- signal-specific interpretation instead of score-only messaging
- explicit benchmarking and known-limitations documentation
Interpreting the score
The drift score measures structural entropy, not code quality. Keep these principles in mind:
- Interpret deltas, not snapshots. Use
drift trendto track changes over time. A single score in isolation has limited meaning. - Temporary increases are expected during migrations. Two coexisting patterns (old and new) will raise PFS/MDS signals. This is the migration happening, not a problem.
- Deliberate polymorphism is not erosion. Strategy, Adapter, and Plugin patterns produce structural similarity that MDS flags as duplication. Findings include a
deliberate_pattern_riskhint — verify intent before acting. - The score rewards reduction, not correctness. Deleting code lowers the score just like refactoring does. Do not optimize for a low score — optimize for understood, intentional structure.
For a detailed discussion of epistemological boundaries (what drift can and cannot see), see STUDY.md §14.
Drift vs. erosion: Without
layer_boundariesindrift.yaml, drift detects emergent drift — structural patterns that diverge without explicit prohibition. With configuredlayer_boundaries, drift additionally performs conformance checking against a defined architecture. Both modes are complementary: drift does not replace dedicated architecture conformance frameworks (e.g. PyTestArch for executable layer rules in pytest), but catches cross-file coherence issues those tools do not model.
Start with the strongest, most actionable findings first. If a signal is noisy for your repository shape, tune or de-emphasize it instead of forcing an early hard gate.
Further reading:
Release status
The PyPI classifier remains Development Status :: 3 - Alpha intentionally.
That is a conservative release signal, not a claim that the core workflow is unusable. The strongest path today is the deterministic Python analysis and report-only CI rollout; some adjacent surfaces remain intentionally marked as experimental.
Current release posture:
- core Python analysis: stable
- CI and SARIF workflow: stable
- TypeScript support: experimental
- embeddings-based parts: optional / experimental
- benchmark methodology: evolving
Full rationale and matrix: Stability and Release Status
Contributing
Drift's biggest blind spots are found by people running it on codebases the maintainers have never seen. Your real-world experience is a direct contribution to signal quality — whether you write code or not.
If Drift surprised you with an unexpected result, that's valuable feedback: open an issue or start a discussion. A well-documented false positive can be more valuable than a new feature.
| I want to… | Go here |
|---|---|
| Ask a usage question | Discussions |
| Report a false positive / false negative | FP/FN template |
| Report a bug | Bug report |
| Suggest a feature | Feature request |
| Propose a contribution before coding | Contribution proposal |
| Report a security vulnerability | SECURITY.md — not a public issue |
New here? Start contributing
You don't need to understand the whole analyzer to help. Start at the level that fits your time:
- 15 min: Fix a typo or clarify a docs example → open a PR directly
- 30 min: Report an unexpected finding with reproduction steps → FP/FN template
- 1 hour: Add an edge-case test → pick a
good first issue - 2+ hours: Improve signal logic or finding explanations → see CONTRIBUTING.md
git clone https://github.com/sauremilk/drift.git && cd drift && make install
make test-fast # confirm everything passes, then start
First contribution? We'll help you scope it. Open a contribution proposal or ask in Discussions if you're unsure where to start.
Typical first contributions:
- Report a false positive or false negative with reproduction steps
- Add a ground-truth fixture for a signal edge case
- Improve a finding's explanation text to be more actionable
- Write a test for an untested edge case
- Clarify docs or add a configuration example
What we value most: reproducibility, explainability, false-alarm reduction. What we deprioritize: new output formats without insight value, comfort features, complexity without analysis improvement.
See CONTRIBUTING.md for the full guide, contributor types, and the contribution ladder. See ROADMAP.md for current priorities.
Documentation map
- Getting Started
- How It Works
- Benchmarking and Trust
- Product Strategy
- Contributor Guide
- Developer Guide
License
MIT. See LICENSE.
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