Skip to main content

Caching and synchronization for AIND metadata.

Project description

biodata-cache

License Code Style semantic-release: angular Interrogate Coverage Python

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.

Installation

pip install biodata-cache

Usage

Set backend

export BIODATA_CACHE_BACKEND='S3'

Options are 'S3', 'MEMORY'.

Fetch data

from biodata_cache import unique_project_names

project_names = unique_project_names()

Cache tables

get_cache_registry returns the following information about all available cache tables. Paths are versioned — {version} is the installed biodata-cache package version (e.g. 0.27.3).

Table Description Location Type Partitioned Columns
unique_project_names Unique project names across all assets s3://allen-data-views/data-asset-cache/bdc-v{version}/unique_project_names.pqt metadata False project_name
unique_subject_ids Unique subject_ids across all assets s3://allen-data-views/data-asset-cache/bdc-v{version}/unique_subject_ids.pqt metadata False subject_id
unique_genotypes Unique genotypes across all assets where subject.subject_details.genotype is present s3://allen-data-views/data-asset-cache/bdc-v{version}/unique_genotypes.pqt metadata False genotype
asset_basics Commonly used asset metadata, one row per data asset s3://allen-data-views/data-asset-cache/bdc-v{version}/asset_basics.pqt metadata False _id, _last_modified, modalities, project_name, data_level, subject_id, acquisition_start_time, acquisition_end_time, code_ocean, process_date, genotype, age, acquisition_type, location, name, experimenters, experimenters_normalized, instrument_id, instrument_id_normalized, investigators, investigators_normalized
source_data Mapping from derived asset names to their source raw asset names s3://allen-data-views/data-asset-cache/bdc-v{version}/source_data.pqt metadata False name, source_data, pipeline_name, processing_time
quality_control Quality control table with one row per QC metric, partitioned by subject_id s3://allen-data-views/data-asset-cache/bdc-v{version}/qc/ asset True (by subject_id) name, stage, modality, value, status, asset_name
platform_qc Tag-level QC statuses aggregated per platform, one row per asset/tag combination s3://allen-data-views/data-asset-cache/bdc-v{version}/platform_qc/ platform True (by platform) asset_name, tag, status, timestamp, instrument_id_normalized, experimenters_normalized
assets_smartspim SmartSPIM assets with processing status and neuroglancer links, one row per (asset, channel) s3://allen-data-views/data-asset-cache/bdc-v{version}/assets_smartspim.pqt metadata False name, raw_name, processed, institution, processing_end_time, stitched_link, raw_link, channel, segmentation_link, quantification_link, alignment_link
platform_fib Fiber photometry assets in long form, one row per asset/fiber/channel combination s3://allen-data-views/data-asset-cache/bdc-v{version}/platform_fib.pqt metadata False asset_name, fiber, patch_cord, channel, intended_measurement, targeted_structure
foraging_sessions Foraging behavior sessions with key performance metrics, one row per session s3://allen-data-views/data-asset-cache/bdc-v{version}/foraging_sessions.pqt metadata False subject_id, session_date, session, nwb_suffix, rig, trainer, trainer_normalized, task, curriculum_name, curriculum_version, current_stage_actual, foraging_eff, foraging_eff_random_seed, finished_trials, finished_rate, total_trials, bias_naive
behavior_curriculum Behavior assets with curriculum name and stage, one row per behavior asset s3://allen-data-views/data-asset-cache/bdc-v{version}/behavior_curriculum.pqt asset False asset_name, curriculum_name, stage_name, stage_node_id

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/**',
        hive_partitioning=true,
        union_by_name=true
    )
""")

The cache_registry.json registry lives at s3://allen-data-views/data-asset-cache/bdc-v{version}/cache_registry.json. The top-level s3://allen-data-views/data-asset-cache/cache_versions.json lists all available version folders as a JSON array.

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.

Custom cache table

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")

Update all cache tables

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()

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

biodata_cache-0.32.1.tar.gz (38.3 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

biodata_cache-0.32.1-py3-none-any.whl (44.3 kB view details)

Uploaded Python 3

File details

Details for the file biodata_cache-0.32.1.tar.gz.

File metadata

  • Download URL: biodata_cache-0.32.1.tar.gz
  • Upload date:
  • Size: 38.3 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/6.1.0 CPython/3.13.12

File hashes

Hashes for biodata_cache-0.32.1.tar.gz
Algorithm Hash digest
SHA256 363f1d5f3ca7c1e45c875e6966b1baf6d77ca4e3a9728c851f0c1a225ad3132b
MD5 7337517d4befcab9499f3707db145427
BLAKE2b-256 233a9b247ed958f962c0a802672b569bb4a1789d17db26a336bc3d3ec95a52f9

See more details on using hashes here.

File details

Details for the file biodata_cache-0.32.1-py3-none-any.whl.

File metadata

  • Download URL: biodata_cache-0.32.1-py3-none-any.whl
  • Upload date:
  • Size: 44.3 kB
  • Tags: Python 3
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/6.1.0 CPython/3.13.12

File hashes

Hashes for biodata_cache-0.32.1-py3-none-any.whl
Algorithm Hash digest
SHA256 54de6a19263e3a73e35b4ecd3a0b6ae5f267b7ecf2133e52e92c4bb682ebff9f
MD5 34bb7fb8ed701ed2d316697acdd3f0ce
BLAKE2b-256 59541f80675e75660c70925db04b259b5c8dbb3c507311da60ffdd78c45ea1e4

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page