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A package to create representative microdata for the US.

Project description

PolicyEngine US Data

Installation

While it is possible to install via PyPi:

pip install policyengine-us-data

the recommended installation is

pip install -e .[dev]

which installs the development dependencies in a reference-only manner (so that changes to the package code will be reflected immediately); policyengine-us-data is a dev package and not intended for direct access.

Pull Requests

PRs must come from branches pushed to PolicyEngine/policyengine-us-data, not from personal forks. The PR workflow hard-fails fork-based PRs before the real test suite runs because the required secrets are unavailable there.

Before opening a PR, push the current branch to the upstream repo:

make push-pr-branch

That target pushes the current branch to the upstream remote and sets tracking so gh pr create opens the PR from PolicyEngine/policyengine-us-data.

SSA Data Sources

The following SSA data sources are used in this project:

Pipeline Overview

PolicyEngine constructs its representative household datasets through a multi-step pipeline. Public survey data is merged, stratified, and cloned to geographic variants per household. Each clone is simulated through PolicyEngine US with stochastic take-up, then calibrated via L0-regularized optimization against administrative targets at the national, state, and congressional district levels, producing geographically representative datasets.

The Enhanced CPS (make data-legacy) produces a national-only calibrated dataset. For the current geography-specific pipeline, see docs/calibration.md.

The repo currently contains two calibration tracks:

  • Legacy Enhanced CPS (make data-legacy), which uses the older EnhancedCPS / build_loss_matrix() path for national-only calibration.
  • Unified calibration (docs/calibration.md), which uses storage/calibration/policy_data.db and the sparse matrix + L0 pipeline for current national and geography-specific builds.

For detailed calibration usage, see docs/calibration.md and modal_app/README.md.

Running the Full Pipeline

The pipeline runs as sequential steps in Modal:

make pipeline   # prints the steps below

# 1. Build data (CPS/PUF/ACS → source-imputed stratified CPS)
make build-data-modal

# 2. Build calibration matrices (CPU, ~10h)
make build-matrices

# 3. Fit weights (GPU, county + national in parallel)
make calibrate-both

# 4. Build H5 files (state/district/city + national in parallel)
make stage-all-h5s

# 5. Promote to versioned HF paths
make promote

Building the Paper

Prerequisites

The paper requires a LaTeX distribution (e.g., TeXLive or MiKTeX) with the following packages:

  • graphicx (for figures)
  • amsmath (for mathematical notation)
  • natbib (for bibliography management)
  • hyperref (for PDF links)
  • booktabs (for tables)
  • geometry (for page layout)
  • microtype (for typography)
  • xcolor (for colored links)

On Ubuntu/Debian, you can install these with:

sudo apt-get install texlive-latex-base texlive-latex-recommended texlive-latex-extra texlive-fonts-recommended

On macOS with Homebrew:

brew install --cask mactex

Building

To build the paper:

make paper

To clean LaTeX build files:

make clean-paper

The output PDF will be at paper/main.pdf.

Building the Documentation

Prerequisites

The documentation uses Jupyter Book 2 (pre-release) with MyST. To install:

# Install Jupyter Book 2 pre-release
pip install --pre "jupyter-book==2.*"

# Install MyST CLI
npm install -g mystmd

Building

To build and serve the documentation locally:

cd docs
myst start

Or alternatively from the project root:

jupyter book start docs

Both commands will start a local server at http://localhost:3001 where you can view the documentation.

The legacy Makefile command:

make documentation

Note: The Makefile uses the older jb command syntax which may not work with Jupyter Book 2. Use myst start or jupyter book start docs instead.

TRACE provenance output

Each US data release now publishes both:

  • release_manifest.json
  • trace.tro.jsonld

The release manifest remains the operational source of truth for:

  • published artifact paths and checksums
  • build IDs and timestamps
  • build-time policyengine-us provenance

trace.tro.jsonld is a generated TRACE declaration built from that manifest. It gives a standards-based provenance export over the same release artifacts, including a composition fingerprint across the release manifest and the artifacts it describes.

The TRO uses the canonical TROv 0.1 vocabulary and surfaces PolicyEngine-specific build provenance under the https://policyengine.org/trace/0.1# extension namespace. Structured fields on the performance node (pe:dataBuildFingerprint, pe:builtWithModelVersion, pe:builtWithModelGitSha, pe:dataBuildId, pe:emittedIn) let a verifier cross-check this TRO against the certified-bundle TRO emitted by policyengine.py without parsing prose.

The emitted TRO is validated against policyengine_us_data/schemas/trace_tro.schema.json.

Important boundary:

  • the TRACE file does not replace the release manifest
  • the TRACE file does not decide model/data compatibility

For the broader certified-bundle architecture, see policyengine.py release bundles and the official TRACE specification.

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