[package] name = "cog-person-count" version.workspace = true edition.workspace = true authors.workspace = true license.workspace = true repository.workspace = true description = "Cognitum Cog: WiFi-CSI presence detector + (data-gated) person count (ADR-103). Candle-based head trained on classes 0/1 (presence); the 8-class count head ships but counts above the trained range are flagged low_confidence. Stoer-Wagner multi-node fusion." [[bin]] name = "cog-person-count" path = "src/main.rs" [lib] name = "cog_person_count" path = "src/lib.rs" [dependencies] clap = { version = "4", features = ["derive"] } serde = { version = "1", features = ["derive"] } serde_json = "1" thiserror = "1" tracing = "0.1" tracing-subscriber = { version = "0.3", features = ["env-filter"] } tokio = { version = "1", features = ["rt-multi-thread", "macros", "signal", "time"] } sha2 = "0.10" ureq = { version = "2", default-features = false, features = ["tls"] } # Same Candle stack the pose cog uses — CPU by default, `cuda` feature # opt-in for hosts with a CUDA GPU. candle-core = { version = "0.9", default-features = false } candle-nn = { version = "0.9", default-features = false } safetensors = "0.4" [dev-dependencies] tempfile = "3" approx = "0.5" # ADR-163: steady-state infer latency bench (real count_v1 weights, Device::Cpu). criterion = { version = "0.5", features = ["html_reports"] } [[bench]] name = "infer_bench" harness = false [features] default = [] cuda = ["candle-core/cuda", "candle-nn/cuda"] hailo = []