biodata-cache is a set of one-line functions that handle the entire process of caching and retrieving data (and metadata) from AIND data assets.
In the background, the cache repackages data/metadata into dataframes and stores them on S3 in versioned folders (data-asset-cache/bdc-v{version}/), or in memory for testing. Each release writes to its own versioned folder, so older versions of the website remain accessible while new versions are deployed. A top-level data-asset-cache/cache_versions.json index lists all available version folders.
Important: this package is not at 1.0. It is changing fast and breaking changes are still occurring, although rarely. To reduce the chance of impact on your code the cache tables are versioned. This does mean that if you want the latest version of the tables you need to keep biodata-cache up-to-date, but it also means your code won't immediately break when I change the way the tables work.
Note that you must set the backend to S3 or biodata-cache will automatically re-cache the tables locally in memory. This can take a LONG time.
pip install biodata-cache
export BIODATA_CACHE_BACKEND='S3'export BIODATA_CACHE_BACKEND='S3'Options are 'S3', 'MEMORY'.
from biodata_cache import unique_project_names
project_names = unique_project_names()Use get_cache_registry() to see all available cache tables and their metadata (descriptions, S3 paths, columns, etc.) for the installed version:
from biodata_cache import get_cache_registry
registry = get_cache_registry()Use get_cache_versions() to list all available version folders across all deployed releases:
from biodata_cache import get_cache_versions
versions = get_cache_versions()The per-version cache_registry.json lives at s3://allen-data-views/data-asset-cache/bdc-v{version}/cache_registry.json. The top-level index s3://allen-data-views/data-asset-cache/cache_versions.json lists all available version folders as a JSON array.
Hive-partitioned tables use key=value directory segments, enabling DuckDB queries like:
import duckdb
duckdb.query("""
SELECT * FROM read_parquet(
's3://allen-data-views/data-asset-cache/bdc-v0.27.3/qc/data.pqt',
hive_partitioning=true,
union_by_name=true
)
""")The raw_to_derived function is not a table stored in S3, instead it is used by passing an asset_name (or list of asset names) and a modality. The function returns the latest derived asset matching the requested pattern.
The custom function allows you to store and retrieve your own user-defined DataFrames in the cache by name. This requires write authentication to the active backend.
from biodata_cache import custom
import pandas as pd
df = pd.DataFrame({"col": [1, 2, 3]})
custom("my_data", df)
retrieved_df = custom("my_data")We run a nightly capsule on Code Ocean with this code to update all cache tables (not the custom ones).
from biodata_cache.sync import update_all_tables
update_all_tables()