Commit graph

4 commits

Author SHA1 Message Date
ruvnet
96d8fdc172 chore(workspace): cargo fmt — mechanical whitespace fix across 427 files
Pre-existing rustfmt drift across the workspace was blocking CI's
`Rustfmt` check on PR #373 + PR #377. Running plain `cargo fmt`
reformats 427 files; no semantic changes, no logic changes, no
behavior changes — just what rustfmt already wanted.

None of the touched files are in ruvector-rabitq, ruvector-rulake,
or the new mirror-rulake workflow — those were already fmt-clean
per the per-crate checks on commits 5a4b0d782, 5f32fd450, f5003bc7b.
Drift is in cognitum-gate-kernel, mcp-brain, nervous-system,
prime-radiant, ruqu-core, ruvector-attention, ruvector-mincut,
ruvix/* and sub-crates, plus several examples.

Verified post-fmt:
  cargo check -p ruvector-rabitq -p ruvector-rulake            → clean
  cargo clippy -p ... -p ... --all-targets -- -D warnings      → clean
  cargo test   -p ... -p ... --release                         → 82/82 pass

Intentionally does NOT touch clippy drift — many more warnings
(missing docs, precision-loss casts, too-many-args, unsafe-safety-
docs) spread across unrelated crates, each category a cross-cutting
design decision that deserves its own review.

With this commit Rustfmt CI goes green on PR #373 and PR #377.
Clippy will still fail — that's honest pre-existing state for a
separate dedicated PR.

Co-Authored-By: claude-flow <ruv@ruv.net>
2026-04-24 10:44:02 -04:00
rUv
6fe406aae5 feat(decompiler): graph-derived hierarchical folder structure (Phase 7)
Folder structure emerges from the dependency graph — not hardcoded keywords.

tree.rs (362 lines):
- Agglomerative clustering on inter-module edge weights
- TF-IDF naming: most discriminative strings name each folder
- Recursive depth control (configurable max_depth, min_folder_size)

inferrer.rs: infer_folder_name() with TF-IDF scoring
types.rs: ModuleTree struct, hierarchical config options
run_on_cli.rs: --output-dir prints folder tree to disk
module-splitter.js: JS-side tree builder with same approach

Key principle: tightly-coupled code shares a folder,
MinCut boundaries become folder boundaries, names from context.

59 tests passing, zero warnings.

Co-Authored-By: claude-flow <ruv@ruv.net>
2026-04-03 03:26:54 +00:00
rUv
84e1886451 feat(decompiler): GPU training pipeline for neural name inference (ADR-136)
Training pipeline:
- generate-deobfuscation-data.mjs: 1,200+ training pairs from fixtures + synthetic
- train-deobfuscator.py: 6M param transformer (3 layers, 4 heads, 128 embed)
- export-to-rvf.py: PyTorch → ONNX → GGUF Q4 → RVF OVERLAY
- launch-gpu-training.sh: GCloud L4 GPU (--local, --cloud-run, --spot)
- Dockerfile.deobfuscator: pytorch/pytorch:2.2.0-cuda12.1

Decompiler integration:
- NeuralInferrer behind optional `neural` feature flag
- model_path in DecompileConfig
- Falls through to pattern-based when model unavailable
- Zero binary impact without feature flag

All tests pass, cargo check clean with and without neural feature.

Co-Authored-By: claude-flow <ruv@ruv.net>
2026-04-03 02:08:19 +00:00
rUv
19578402e3 feat(decompiler): MinCut-based JS decompiler with witness chains (ADR-135)
5-phase decompilation pipeline:
1. Regex-based parser extracts declarations, strings, property accesses
2. MinCut graph partitioning detects original module boundaries
3. Name inference with confidence scoring (HIGH/MEDIUM/LOW)
4. V3 source map generation (browser DevTools compatible)
5. SHAKE-256 Merkle witness chains for cryptographic provenance

Ground-truth validation:
- 5 test fixtures (Express, MCP Server, React, Multi-Module, Tools)
- Self-learning feedback loop via learn_from_ground_truth()
- 14 tests, all passing

SOTA research document covering JSNice, DeGuard, cross-version
fingerprinting, and RuVector's unique advantage combining MinCut,
IIT Phi, SONA, and HNSW for decompilation.

Co-Authored-By: claude-flow <ruv@ruv.net>
2026-04-03 00:04:36 +00:00