# TSDecompose Source Snapshot This folder contains the source snapshot shipped with the benchmark release. It is intentionally included as repository source code rather than as a PyPI-style package release. The import name remains `tsdecomp` for compatibility with the benchmark scripts. ## Layout ```text src/tsdecomp/ Unified decomposition API, method registry, CLI, metrics, and leaderboard runner. src/synthetic_ts_bench/ Synthetic scenario generator and component-recovery utilities. scripts/run_paper_benchmark.py One-command runner for the paper-aligned core benchmark. requirements.txt Runtime dependencies for local execution. ``` ## One-Command Paper Benchmark Install dependencies from this folder, then run the paper core benchmark: ```bash pip install -r requirements.txt export PYTHONPATH="$PWD/src" python scripts/run_paper_benchmark.py ``` The script pins imports to this source snapshot, so it is safe to use even if a different `tsdecomp` package is installed elsewhere on the same machine. Windows PowerShell: ```powershell pip install -r requirements.txt $env:PYTHONPATH = "$PWD\src" python scripts/run_paper_benchmark.py ``` The default command runs the paper-aligned core synthetic benchmark: - 6 scenarios; - 50 deterministic generated draws per scenario; - 300 generated synthetic series total; - the camera-ready six-family Table 2 roster (`ma_baseline`, `stl`, `ssa`, `emd`, `vmd`, `wavelet`). The raw result table is written to: ```text artifacts/paper_core_benchmark/leaderboard.csv ``` In the dataset release, this same paper-core raw output is stored as `data/paper_tables/paper_core_50draw_leaderboard.csv` after stable row sorting. The manuscript Table 2 values are derived from `data/paper_tables/paper_core_50draw_by_tier.csv` using the tier-balanced rule: stationary columns average Tier 1 and Tier 2 means with equal weight, while non-stationary columns use Tier 3 means. The by-tier file records metric-specific valid-row counts because seasonal metrics are undefined for the trend-only scenario. Aggregated summaries are written under: ```text artifacts/paper_core_benchmark/summary/ ``` For a quick dependency and integration check: ```bash python scripts/run_paper_benchmark.py --smoke ``` This smoke run keeps the same 6 paper scenarios but uses 1 draw per scenario and the smaller `stl,wavelet` method subset. ## Optional Direct CLI ```bash python -m tsdecomp validate --suite core --methods ma_baseline,stl,ssa,emd,vmd,wavelet ``` Windows PowerShell: ```powershell python -m tsdecomp validate --suite core --methods ma_baseline,stl,ssa,emd,vmd,wavelet ``` Use the script entrypoint above for reproduction. The direct module CLI is shown only for clean environments where no other editable `tsdecomp` install can shadow this source tree. The native extension binary from the development machine is not included. The release uses the pure-Python fallback path by default. To test a separately built native extension, set `TSDECOMP_ALLOW_EXTERNAL_NATIVE=1` before importing `tsdecomp`.