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OpenAlex S3 processor

Project description

pyAlexS3

OpenAlex S3 → DuckDB loader with nice progress bars (powered by rich). It lists, filters, downloads (in parallel), and loads OpenAlex NDJSON dumps into DuckDB—either all at once, in batches, or lazily as an iterator.

Features

  • 🚀 Parallel S3 downloads with a live progress bar

  • 🦆 Zero-setup DuckDB loading via read_ndjson_auto(...)

  • 🧩 Three loading modes:

    • load_table: one-shot into a DuckDB table

    • batch_load_table: append in batches

    • lazy_load: yield a DuckDB relation per batch (no table needed)

  • 🎯 Filter by date range (YYYY-MM-DD) and by part numbers

  • 🔎 Optional SQL-style WHERE predicate

  • 💾 Persistent or in-memory DuckDB

Installation

pip install pyalexs3

or with uv

uv add pyalexs3

Python 3.10+ is required.

Quick start

from pyalexs3.core import OpenAlexS3Processor

p = OpenAlexS3Processor(n_workers=4)
p.load_table(
    obj_type="works",
    start_date="2025-07-05",
    end_date="2025-07-20",
    download_dir="./.cache/oa",
    cols=["id", "title"]
)

table = p.get_table("works")
table.limit(5).show()

Filter with WHERE clause

p.load_table(
    obj_type="works",
    start_date="2025-07-05",
    end_date="2025-07-20",
    download_dir="./.cache/oa",
    cols=["id", "title", "type"],
    where_clause="WHERE title IS NOT NULL AND type='article'"
)

Batching and lazy load

Append in batches

p.batch_load_table(
    obj_type="works",
    batch_sz=5,  # ~number of S3 objects per batch
    start_date="2025-07-01",
    end_date="2025-07-02",
    cols=["id", "title"],
    download_dir="./.cache/oa",
)

# Everything lands in the same DuckDB table:
p.get_table("works").count("*").show()

Iterate lazily (no table required)

titles = []
for rel in p.lazy_load(
    obj_type="works",
    batch_sz=5,
    start_date="2025-07-01",
    end_date="2025-07-02",
    cols=["id", "title"],
    download_dir="./.cache/oa",
):
    df = rel.df()  # materialize this batch
    titles.extend(df["title"].tolist())

API

OpenAlexS3Processor(n_workers: int = 4, persist_path: str | None = None)

  • n_workers: number of threads for downloads.

  • persist_path: if set, uses a persistent DuckDB database file at this path; otherwise an in-memory DB.

  • load_table(...) -> None Downloads all matching files and creates/appends a DuckDB table named after obj_type.

      Args:
      - `obj_type`: one of `{"works","authors","sources","institutions","topics","keywords","publishers","funders","geo"}`
      - `cols`: `list[str]` of columns to select (default `*`)
      - `limit`: `int | None` (applied after read)
      - `start_date`, `end_date`: ISO "YYYY-MM-DD" strings (inclusive). If `start_date` is None, it’s inferred from S3; if `end_date` is None, defaults to today.
      - `parts`: `list[int] | None` — specific part numbers (e.g., [0,2]). None = all.
      - `download_dir`: temporary folder for gz files (deleted after load)
      - `where_clause`: SQL predicate like "WHERE title IS NOT NULL"
    
  • batch_load_table(...) -> None Same args as load_table, plus: - batch_sz: approx. number of S3 objects per batch. Each batch is read and inserted (or CREATE on the first), then temp files are deleted.

  • lazy_load(...) -> Iterator[duckdb.DuckDBPyRelation] Yields one Relation per batch. You can .show(), .df(), or run more SQL. Temp files are removed after each yield.

  • get_table(obj_type: str, cols: list[str] | None = None) -> duckdb.DuckDBPyRelation Convenience accessor to query the created table.

  • s3_obj_types -> list[str] Returns supported OpenAlex object types.

Behavior & notes

  • Progress bars: Per-file totals (from head_object) with per-chunk callbacks.

  • Threading: Downloads via ThreadPoolExecutor; exceptions bubble up when futures complete.

  • DuckDB: Installs/loads httpfs automatically; sets PRAGMA threads to n_workers.

  • Cleanup: download_dir is removed at the end of load_table / each batch in batch_load_table / after each yield in lazy_load.

Testing

Dev dependencies include pytest and moto[s3] to mock S3.

# with uv
uv sync --extra dev
uv run pytest -q

Example end-to-end tests:

  • Mock S3 with moto, upload gzipped NDJSON to openalex bucket keys,

  • Patch WORKS_SCHEMA to a minimal schema for fast runs,

  • Run load_table, batch_load_table, and lazy_load, then assert results.

Development

  • Source layout: src/pyalexs3/

  • Typed package marker: src/pyalexs3/py.typed

License

MIT © EurekAI

Citation

If you are using this for research purpose please use this bibTex for citation:

@misc{pyalexs32025,
	author = {Adityam Ghosh},
	title = {pyalexs3},
	howpublished = {\url{https://github.com/EurekAI-Org/pyalexs3}},
	year = {2025},
	note = {[Accessed 09-10-2025]},
}

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