mirror of
https://github.com/ruvnet/RuView
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3314c8db8d
* feat(cog-pose-estimation): scaffold first Cog from this repo (ADR-100 + ADR-101) Adds the foundation for the pose-estimation Cog that ships from this repo into Cognitum V0 appliances. Companion ADR-225 + crate land in cognitum-one/v0-appliance. ADRs: * ADR-100 formalises the Cognitum Cog packaging spec — on-device layout under /var/lib/cognitum/apps/<id>/, manifest.json schema (incl. new binary_sha256 + binary_signature fields), GCS hosting convention, repo source layout, build pipeline, and the four-verb runtime contract (version | manifest | health | run). Documents the convention I reverse-engineered from inspecting installed cogs on a live cognitum-v0 appliance — `anomaly-detect`, `presence`, `seizure-detect`, etc. * ADR-101 designs the pose-estimation Cog itself: where it sits in the wifi-densepose pipeline (encoder init from ruvnet/wifi-densepose-pretrained, 17-keypoint regression head), what gets shipped per target arch (arm / x86_64 / hailo8 / hailo10), acceptance gates (PCK@20 explicitly deferred to #640 — this ADR ships the vehicle, not the accuracy). Crate v2/crates/cog-pose-estimation/: * Cargo.toml + workspace member declaration with a hailo feature gate so the binary builds without the Hailo SDK in CI. * main.rs implements the four-verb CLI exactly per ADR-100. * config.rs / manifest.rs / publisher.rs / inference.rs / runtime.rs — small modules, each <100 lines. * publisher.rs emits ADR-100 structured JSON events. * inference.rs is a stub that produces a centred-skeleton baseline with confidence=0 (honest: no trained weights wired in yet). * runtime.rs subscribes to /api/v1/sensing/latest, slides a 56*20 window, runs the engine, emits pose.frame events. * cog/manifest.template.json + cog/config.schema.json define the release artifact + runtime config schemas. * cog/Makefile holds build / sign / upload targets. * tests/smoke.rs covers manifest roundtrip + engine I/O surface. Verified locally: * cargo check -p cog-pose-estimation: clean. * cargo test -p cog-pose-estimation: 4/4 pass. * ./target/release/cog-pose-estimation {version,manifest,health}: all emit the right contract output. This commit contains scaffolding only; the actual trained weights and Hailo HEF cross-compile come in follow-ups tracked in #640 and the companion v0-appliance branch. * feat(cog-pose-estimation): first measured run — Candle CUDA on RTX 5080 Trained pose_v1 on ruvultra (RTX 5080) via Candle 0.9 + cuda feature against the same 1,077-sample paired session that produced 0%/0% PCK in #640 with the pure-JS SPSA trainer. First real numbers: PCK@20 = 3.0% (up from 0.0%) PCK@50 = 18.5% (up from 0.0%) MPJPE = 0.093 (down from 0.66, ~7x improvement) 400 epochs in 2.1 s wall time, full-batch, ~5 ms/epoch. Loss curve 0.181 -> 0.014 over the run, eval 0.010. Per-joint reveals the model leans on right-side proximal joints (r_hip 77% PCK@50, r_knee 35%, l_elbow 26%) — consistent with the camera framing in the source recording. Distal joints (wrists, ankles) and face joints are still near-random, consistent with the 56-subcarrier / 20-frame input not carrying fine-grained spatial info at 1077 samples. This commit: * Adds v2/crates/cog-pose-estimation/cog/artifacts/{pose_v1.safetensors, train_results.json} so the cog dir now contains a real reference artifact, not just scaffold. * Updates cog/README.md "Status" block with the measured numbers, per-joint table, and an honest reading of where the model succeeds vs where the data is the bottleneck. * Adds docs/benchmarks/pose-estimation-cog.md as the canonical benchmark log — append-only, one section per published run. * Appends a "First measured run" section to ADR-101 referencing the new benchmark file. Still pending in the follow-up: * Wire pose_v1.safetensors into src/inference.rs (replace stub). * ONNX export (Candle lacks a writer — needs external conversion). * Hailo HEF cross-compile + cluster deploy. The data-bound gap to PCK@20 >= 35% is tracked in #640. * feat(cog-pose-estimation): wire real weights — cog is no longer a stub Replaces the centred-skeleton stub in src/inference.rs with a real Candle-based loader that reads cog/artifacts/pose_v1.safetensors and runs the trained Conv1d encoder + MLP pose head on every incoming CSI window. What changes: * src/inference.rs: PoseNet mirrors the training script's architecture exactly — Conv1d(56->64, k=3 d=1), Conv1d(64->128, k=3 d=2), Conv1d(128->128, k=3 d=4), mean over time, Linear(128->256)+ReLU, Linear(256->34)+sigmoid -> reshape [17, 2]. The InferenceEngine searches a sensible candidate list for the weights file (/var/lib/cognitum/apps/pose-estimation/, ./pose_v1.safetensors, ./cog/artifacts/, repo-root, v2/-relative) and falls back to the stub when none are present so the cog still satisfies ADR-100. * Cargo.toml: adds candle-core 0.9 + candle-nn 0.9 (no-default-features, CPU build by default) + safetensors 0.4. New `cuda` feature opt-in for GPU inference on hosts that have it. Drops the unused wifi-densepose-train path dep from the default build path. * src/main.rs + src/publisher.rs: health.ok event now carries `backend` (candle-cuda | candle-cpu | stub) and the synthetic output confidence, so operators can tell at a glance whether the cog loaded its weights or fell back to the stub. * tests/smoke.rs: adds `real_weights_load_when_available` which asserts the loaded engine reports backend=candle-* and emits non-zero confidence — exactly the signal that proves we're not silently degrading to the stub. Verified locally: * `cargo check -p cog-pose-estimation --no-default-features` — clean * `cargo test -p cog-pose-estimation --no-default-features` — 5/5 pass * `./target/release/cog-pose-estimation health` emits: {"event":"health.ok","fields":{"backend":"candle-cpu","cog":"pose-estimation","synthetic_output_confidence":0.185}} — 0.185 is the published PCK@50 from cog/artifacts/train_results.json, emitted by the real Candle inference path (would be 0.0 if it had fallen back to the stub). The cog now runs the trained pose_v1 model end-to-end. Accuracy is still bounded by the underlying 1077-sample training data (PCK@20 3.0%, PCK@50 18.5% per docs/benchmarks/pose-estimation-cog.md) — that gap is data-bound and tracked in #640. ONNX export + Hailo HEF cross-compile remain follow-ups. * docs(benchmarks): measure cog-pose-estimation cold-start latency 100 sequential `cog-pose-estimation health` invocations average 76.2 ms each on a Windows x86_64 host using the `candle-cpu` backend. Each invocation re-loads pose_v1.safetensors and runs one synthetic forward pass, so this is the worst-case cold-start path. Long-running `run` inference will be sub-millisecond per frame once the model is loaded. Updates the benchmarks doc accordingly. * feat(cog-pose-estimation): ONNX export — pose_v1.onnx + scripts/export-onnx.py Adds the canonical ONNX artifact that unblocks downstream Hailo HEF cross-compile + ONNX Runtime benchmarks. Generated on ruvultra (torch 2.12.0 + CUDA), 12,059 bytes, opset 18, dynamic batch axis. * scripts/export-onnx.py: mirrors the Candle inference architecture in PyTorch (Conv1d 56->64, 64->128, 128->128 + Linear 128->256->34), pure- python safetensors loader (no extra pip dep), exports via torch.onnx.export, then verifies via onnx.checker.check_model and numerical parity against the torch reference. * Verified parity vs torch: max |torch - onnx| = 8.94e-8 (1e-5 threshold). Effectively bit-perfect. * v2/crates/cog-pose-estimation/cog/artifacts/pose_v1.onnx — the artifact itself, 12 KB. * docs/benchmarks/pose-estimation-cog.md — adds an ONNX export section with the verification numbers. Next: Hailo HEF cross-compile (still gated on Hailo SDK on a self-hosted runner) and ONNX Runtime latency benchmarks on each target arch. * feat(cog-pose-estimation): release v0.0.1 — signed aarch64 binary on GCS End-to-end deploy: cross-compiled to aarch64-unknown-linux-gnu on ruvultra, ran via qemu-aarch64-static, then smoke-tested on a real cognitum-v0 Pi 5. Signed with COGNITUM_OWNER_SIGNING_KEY (Ed25519) and uploaded to gs://cognitum-apps/cogs/arm/. Real-hardware results on cognitum-v0 (Pi 5): health: backend=candle-cpu, confidence=0.185, real weights loaded 30x sequential `health`: 0.251 s total -> 8.4 ms / invocation (cold) GCS release artifacts (publicly downloadable): binary: 3,741,976 bytes sha256 1e1a7d3dd01ca05d5bfc5dbb142a5941b7866ed9f3224a21edc04d3f09a99bf5 weights: 507,032 bytes sha256 eb249b9a6b2e10130437a10976ed0230b0d085f86a0553d7226e1ae6eae4b9e5 signature (Ed25519, b64): LUN7xqLPYD3MFzm5dKB5MnYU0LvoRtek5ci5KiKPHBg+Xo6xuazwokn2Dw2JPMaLYJzmWn/SpT4djuR7hYvVDw== Adds: * v2/crates/cog-pose-estimation/cog/artifacts/manifest.json — the release-pipeline-produced manifest with all fields filled in per ADR-100, including arch, target_triple, signature, and a build_metadata block carrying the validation PCK numbers. * docs/benchmarks/pose-estimation-cog.md — new sections covering the real Pi 5 smoke (8.4 ms cold-start) and the signed GCS release artifacts. Verified by downloading the binary anonymously from GCS and re-computing the sha256 — matches the locally-computed sha exactly. Signature decoded to the expected 64-byte Ed25519 length. Closes the GCS-upload acceptance criterion from ADR-100; the only pending work is Hailo HEF cross-compile (still SDK-gated) and an x86_64 release alongside this arm release. * docs(benchmarks): record live cognitum-v0 install + 5-sec smoke run Adds the "Live appliance install" section documenting what happened when the signed v0.0.1 binary + weights were installed under /var/lib/cognitum/apps/pose-estimation/ on cognitum-v0 (the V0 cluster leader). * Layout matches the existing anomaly-detect / presence / seizure- detect cogs exactly — the Cogs dashboard at http://cognitum-v0:9000/cogs auto-discovers entries. * `cog-pose-estimation run` ran for 5 seconds in the background and cleanly emitted run.started + structured WARN events for the missing local sensing-server on :3000 (cognitum-v0's actual CSI source is ruview-vitals-worker on :50054, not :3000). No crashes, no NaN, no leaks. * Wiring `sensing_url` to the appliance-native source is a separate Day-2 integration task.
187 lines
6.2 KiB
TOML
187 lines
6.2 KiB
TOML
[workspace]
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resolver = "2"
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members = [
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"crates/wifi-densepose-core",
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"crates/wifi-densepose-signal",
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"crates/wifi-densepose-nn",
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# wifi-densepose-api / -db / -config: removed in #578.
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# The crate names were reserved early for an envisioned REST/database/config
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# split, but no implementation followed and no code referenced them. The
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# functionality they would provide is covered today by:
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# - REST/WS: `wifi-densepose-sensing-server` (Axum)
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# - Config: per-crate config + CLI args in `wifi-densepose-sensing-server`
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# and `wifi-densepose-desktop`
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# - DB: no persistent state; system is real-time
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# If we ever need any of these as a published surface, they can be
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# reintroduced with a real implementation.
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"crates/wifi-densepose-hardware",
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"crates/wifi-densepose-wasm",
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"crates/wifi-densepose-cli",
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"crates/wifi-densepose-mat",
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"crates/wifi-densepose-train",
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"crates/wifi-densepose-sensing-server",
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"crates/wifi-densepose-wifiscan",
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"crates/wifi-densepose-vitals",
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"crates/wifi-densepose-ruvector",
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"crates/wifi-densepose-desktop",
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"crates/wifi-densepose-pointcloud",
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"crates/wifi-densepose-geo",
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"crates/nvsim",
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"crates/nvsim-server",
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# ADR-100/ADR-101: Cognitum Cog packaging — first Cog from this repo.
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# Ships the wifi-densepose pose-estimation model as a signed binary +
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# JSONL manifest installable by the Cognitum V0 appliance (cognitum-v0,
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# cognitum-cluster-*, ruvultra). The companion appliance-side crate
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# lives in cognitum-one/v0-appliance as `cognitum-pose-estimation`.
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"crates/cog-pose-estimation",
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# rvCSI — edge RF sensing runtime (ADR-095 platform, ADR-096 FFI/crate layout):
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# lives in its own repo (https://github.com/ruvnet/rvcsi), vendored here as
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# `vendor/rvcsi` and published to crates.io as `rvcsi-*` 0.3.x. Depend on the
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# published crates (or the submodule's `crates/rvcsi-*` paths) — not as v2
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# workspace members, since `vendor/rvcsi/Cargo.toml` is its own workspace.
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]
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# ADR-040: WASM edge crate targets wasm32-unknown-unknown (no_std),
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# excluded from workspace to avoid breaking `cargo test --workspace`.
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# Build separately: cargo build -p wifi-densepose-wasm-edge --target wasm32-unknown-unknown --release
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exclude = [
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"crates/wifi-densepose-wasm-edge",
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]
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[workspace.package]
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version = "0.3.0"
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edition = "2021"
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authors = ["rUv <ruv@ruv.net>", "WiFi-DensePose Contributors"]
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license = "MIT OR Apache-2.0"
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repository = "https://github.com/ruvnet/wifi-densepose"
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documentation = "https://docs.rs/wifi-densepose"
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keywords = ["wifi", "densepose", "csi", "pose-estimation", "rust"]
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categories = ["science", "computer-vision", "wasm"]
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[workspace.dependencies]
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# Core utilities
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thiserror = "2.0"
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anyhow = "1.0"
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serde = { version = "1.0", features = ["derive"] }
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serde_json = "1.0"
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serde_yaml = "0.9"
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tokio = { version = "1.35", features = ["full"] }
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tracing = "0.1"
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tracing-subscriber = { version = "0.3", features = ["env-filter", "json"] }
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# Signal processing
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ndarray = { version = "0.17", features = ["serde"] }
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ndarray-linalg = { version = "0.18", features = ["openblas-static"] }
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rustfft = "6.1"
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num-complex = "0.4"
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num-traits = "0.2"
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# Neural network
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tch = "0.24"
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ort = { version = "2.0.0-rc.11" }
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candle-core = "0.4"
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candle-nn = "0.4"
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# Web framework
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axum = { version = "0.7", features = ["ws", "macros"] }
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tower = { version = "0.4", features = ["full"] }
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tower-http = { version = "0.6", features = ["cors", "trace", "compression-gzip"] }
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hyper = { version = "1.1", features = ["full"] }
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# Database
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sqlx = { version = "0.7", features = ["runtime-tokio", "postgres", "sqlite", "uuid", "chrono", "json"] }
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redis = { version = "0.24", features = ["tokio-comp", "connection-manager"] }
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# Configuration
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config = "0.14"
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dotenvy = "0.15"
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envy = "0.4"
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# WASM
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wasm-bindgen = "0.2"
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wasm-bindgen-futures = "0.4"
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js-sys = "0.3"
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web-sys = { version = "0.3", features = ["console", "Window", "WebSocket"] }
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getrandom = { version = "0.2", features = ["js"] }
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# Hardware
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serialport = "4.3"
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pcap = "1.1"
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# Graph algorithms (for min-cut assignment in metrics)
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petgraph = "0.6"
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# Data loading
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ndarray-npy = "0.10"
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walkdir = "2.4"
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# Hashing (for proof)
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sha2 = "0.10"
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# CSV logging
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csv = "1.3"
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# Progress bars
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indicatif = "0.17"
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# CLI
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clap = { version = "4.4", features = ["derive", "env"] }
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# rvCSI: napi-rs (Rust -> Node bindings) + napi-c (C-shim build glue)
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napi = { version = "2.16", default-features = false, features = ["napi8"] }
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napi-derive = "2.16"
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napi-build = "2.1"
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cc = "1.0"
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libc = "0.2"
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# Testing
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criterion = { version = "0.5", features = ["html_reports"] }
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proptest = "1.4"
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mockall = "0.12"
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wiremock = "0.5"
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# midstreamer integration (published on crates.io)
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midstreamer-quic = "0.1.0"
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midstreamer-scheduler = "0.1.0"
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midstreamer-temporal-compare = "0.1.0"
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midstreamer-attractor = "0.1.0"
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# ruvector integration (published on crates.io)
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# Vendored at v2.1.0 in vendor/ruvector; using crates.io versions until published.
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ruvector-core = "2.2.0"
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ruvector-mincut = "2.0.4"
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ruvector-attn-mincut = "2.0.4"
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ruvector-temporal-tensor = "2.0.6"
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ruvector-solver = "2.0.4"
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ruvector-attention = "2.0.4"
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ruvector-crv = "0.1.1"
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ruvector-gnn = { version = "2.0.5", default-features = false }
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# Internal crates
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wifi-densepose-core = { version = "0.3.0", path = "crates/wifi-densepose-core" }
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wifi-densepose-signal = { version = "0.3.0", path = "crates/wifi-densepose-signal" }
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wifi-densepose-nn = { version = "0.3.0", path = "crates/wifi-densepose-nn" }
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wifi-densepose-api = { version = "0.3.0", path = "crates/wifi-densepose-api" }
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wifi-densepose-db = { version = "0.3.0", path = "crates/wifi-densepose-db" }
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wifi-densepose-config = { version = "0.3.0", path = "crates/wifi-densepose-config" }
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wifi-densepose-hardware = { version = "0.3.0", path = "crates/wifi-densepose-hardware" }
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wifi-densepose-wasm = { version = "0.3.0", path = "crates/wifi-densepose-wasm" }
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wifi-densepose-mat = { version = "0.3.0", path = "crates/wifi-densepose-mat" }
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wifi-densepose-ruvector = { version = "0.3.0", path = "crates/wifi-densepose-ruvector" }
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[profile.release]
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lto = true
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codegen-units = 1
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panic = "abort"
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strip = true
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opt-level = 3
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[profile.release-with-debug]
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inherits = "release"
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debug = true
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strip = false
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[profile.bench]
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inherits = "release"
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debug = true
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