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Data questioning, observability, semantic, and causality library

Project description

dqtlib

A Data Questioning Tool that tells you the what and surfaces the why.

Unifies your scattered data into one source of truth. Upgrades your existing models, dashboards, and queries into a causal semantic layer you didn't have to write. Picks up on trends and surfaces business insights, all wrapped in a quality harness that puts guardrails on the AI so the reports it generates stay on-spec.

pip install dqtlib

The import name is dqt:

from dqt import Check, Runner, MemoryStore

Full documentation and examples: https://github.com/antonbarr-data/dqt

Quality

All 64 detectors are benchmarked against labeled synthetic datasets. Benchmark scripts and raw results live in the GitHub repo and are run on every release:

Median F1: 1.00 | Detectors with F1 >= 0.8: 52/64 | Detectors with F1 >= 0.6: 58/64

Per-detector breakdown: examples/benchmarks/results_summary.md

Reproduce by cloning the repo and running:

python scripts/run_benchmark_suite.py --quick
python scripts/generate_benchmark_summary.py

Adapters

Six adapters ship in v1.0. Nightly CI runs against live credentials for the cloud warehouses.

Adapter CI
PostgreSQL (local) bundled — no credentials needed
ClickHouse clickhouse
Snowflake snowflake
BigQuery bigquery
Databricks databricks
Local (DuckDB) bundled — no credentials needed

Detector documentation

64 statistical detectors across 10 groups — drift, outliers, time series, distribution, information theory, pattern, referential, schema, basic, and custom.

Every detector has a structured page at docs/algorithms/<group>/<slug>.md covering:

  • What it computes and its parameters
  • When it works well and when it fails (with concrete failure-mode table)
  • Default-threshold calibration — empirical FPR across six canonical data shapes (Normal, Lognormal, Poisson, Beta, Pareto, Exponential)
  • Recommended thresholds per data shape
  • Canonical citation and runnable Python API example

Browse the full catalog: docs/algorithms/README.md

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