Skip to content

Release v0.13.0#1027

Merged
mwojtyczka merged 11 commits into
mainfrom
prepare/0.13.0
Feb 9, 2026
Merged

Release v0.13.0#1027
mwojtyczka merged 11 commits into
mainfrom
prepare/0.13.0

Conversation

@mwojtyczka

@mwojtyczka mwojtyczka commented Feb 9, 2026

Copy link
Copy Markdown
Contributor

Change Log for New Release:

  • New DQX Data Quality Dashboard (#1019). The data quality dashboard has been significantly enhanced to provide a centralized view of data quality metrics across all tables, allowing users to monitor and track data quality issues with greater ease. The dashboard now consists of three tabs - Data Quality Summary, Data Quality by Table (Time Series), and Data Quality by Table (Full Snapshot) - each catering to different monitoring scenarios, and offers customizable parameters for reporting column names and filtering tables with data quality issues. Additionally, the installation process for the dashboard has been simplified, with options to import it directly to a Workspace or deploy it automatically using the Databricks CLI.
  • DQX App Skeleton (#982). The DQX application (frontend and backend) has been built with a core set of features, including configuration management and AI-assisted rule generation based on natural-language input from users. A comprehensive README documents the application architecture as well as development and deployment workflows. Future versions of DQX will introduce additional functionality (loading/saving rules, rules authoring in graphical form) and provide a streamlined, user-friendly way to deploy the application directly into a Databricks workspace.
  • Added Decimal support to check functions and to min_max generator (#1013) (#1017). The data quality checks have been enhanced to support Python's Decimal type, in addition to int and float, for min/max validation checks, enabling proper data quality checks for decimal-precise financial and scientific data where floating-point precision issues would cause false positives.
  • Added DQX produciton best practices and fix datetime limit handling (#997). Practical guidance and best practices for using DQX in production have been added, covering aspects such as storing checks in Delta tables, enforcing access controls, and optimizing rules for performance and scalability. Fixes have also been implemented to address issues related to handling date and datetime limits, particularly when provided as strings.
  • Added new row-level check functions: is_null, is_empty, and is_null_or_empty (#1015). DQX now includes three new check functions, is_null, is_empty, and is_null_or_empty, which enable verification of column values as null, empty strings, or both, complementing existing checks like is_not_null, is_not_empty, and is_not_null_and_not_empty. The functions also support optional arguments, like trim_strings to trim spaces from strings.
  • Added tolerance to equality and non-equality check functions (#1011). The library's quality check functionality has been enhanced to support absolute and relative tolerance parameters for numeric value comparisons in is_equal_to, is_not_equal_to, is_aggr_equal and is_aggr_not_equal checks, allowing for more flexible and precise control over data validation. The introduction of tolerance logic, which checks for absolute and relative differences within specified thresholds via abs_tolerance and rel_tolerance parameters, provides more nuanced comparisons for numeric data.
  • Allow new lines in sql expression checks (#1009). SQL expression check function (sql_expression) has been updated to support new lines in its expression argument, allowing for more complex and formatted SQL expressions.
  • Allow summary metrics with SparkConnect sessions (#1000). The library now supports writing summary metrics directly to a table with SparkConnect sessions, eliminating the need for a classic compute cluster in Dedicated access mode. This change lifts the previous restriction and enables generatic summary metrics using Serverless and all standard clusters with Databricks Runtime 17.3LTS or higeher.
  • Fixed loading checks from a delta table with special characters (#992). The loading checks functionality from a delta table has been fixed to handle special characters in the fully qualified table.
  • Fixed resolution of pii detection check function (#1003). The PII detection check function resolution has been enhanced to support the application of checks defined as metadata (YAML).
  • Fixed serialization/deserialization of row filter parameter for dataset-level rules (#1021). The filter field in checks definition now correctly pushes down the filter condition defined at the check-level as row_filter to the check function, allowing checks to operate on the relevant subset of rows before aggregation. The documentation has been updated to advice users to use op-level filter condition for consistency instead of row_filter parameter. Overall, these changes aim to enhance the overall user experience.
  • Improved Lakeflow Declarative Pipeline tests (#1010). The Lakeflow Declarative Pipeline (LDP) tests have been enhanced to utilize full Unity Catalog mode, enabling support for writing to arbitrary catalogs and schemas, and performing additional checks to prevent certain operations.
  • Updated Lakebase authentication method (#975). The Lakebase authentication method has been updated to utilize a client ID instead of a username, simplifying its use in the context of a Databricks App. The lakebase_user parameter has been replaced with lakebase_client_id, an optional service principal client ID used to connect to Lakebase, defaulting to the caller's identity if not provided. This change enhances the security and reliability of the authentication process, making it easier to work with Lakebase as a checks storage.
  • Updated handling of metadata columns during schema validation (#1002). The has_valid_schema check has been enhanced to provide more flexibility in schema validation by introducing an optional exclude_columns parameter, allowing users to specify columns to ignore during validation. This parameter can be used to exclude metadata columns or other columns not relevant to schema validation, and it takes precedence over the columns list.
  • Updated product info when missing in config while verifying workspace client (#987). The workspace client configuration has been enhanced to default product information to dqx with the current version when it is missing, ensuring that product information is always set for telemetry purposes.
  • Updated profiler and generator documentation (#1026). The data profiling and quality checks generation feature has been enhanced with updated documentation, providing reference information for data quality profile types and associated rules.
  • Added filter attribute in rules generated from ODCS (#978). The rules generation process has been enhanced with the introduction of a filter attribute in rules generated from Open Data Contract Standard (ODCS), allowing for more flexible and targeted rules creation.

* New DQX Data Quality Dashboard ([#1019](#1019)). The data quality dashboard has been significantly enhanced to provide a centralized view of data quality metrics across all tables, allowing users to monitor and track data quality issues with greater ease. The dashboard now consists of three tabs - Data Quality Summary, Data Quality by Table (Time Series), and Data Quality by Table (Full Snapshot) - each catering to different monitoring scenarios, and offers customizable parameters for reporting column names and filtering tables with data quality issues. Additionally, the installation process for the dashboard has been simplified, with options to import it directly to a Workspace or deploy it automatically using the Databricks CLI.
* DQX App Skeleton ([#982](#982)). The DQX application (frontend and backend) has been built with a core set of features, including configuration management and AI-assisted rule generation based on natural-language input from users. A comprehensive README documents the application architecture as well as development and deployment workflows. Future versions of DQX will introduce additional functionality (loading/saving rules, rules authoring in graphical form) and provide a streamlined, user-friendly way to deploy the application directly into a Databricks workspace.
* Added Decimal support to check functions and to min_max generator ([#1013](#1013)) ([#1017](#1017)). The data quality checks have been enhanced to support Python's Decimal type, in addition to int and float, for min/max validation checks, enabling proper data quality checks for decimal-precise financial and scientific data where floating-point precision issues would cause false positives.
* Added DQX produciton best practices and fix datetime limit handling ([#997](#997)). Practical guidance and best practices for using DQX in production have been added, covering aspects such as storing checks in Delta tables, enforcing access controls, and optimizing rules for performance and scalability. Fixes have also been implemented to address issues related to handling date and datetime limits, particularly when provided as strings.
* Added new row-level check functions: is_null, is_empty, and is_null_or_empty ([#1015](#1015)). DQX now includes three new check functions, `is_null`, `is_empty`, and `is_null_or_empty`, which enable verification of column values as null, empty strings, or both, complementing existing checks like `is_not_null`, `is_not_empty`, and `is_not_null_and_not_empty`. The functions also support optional arguments, like `trim_strings` to trim spaces from strings.
* Added tolerance to equality and non-equality check functions ([#1011](#1011)). The library's quality check functionality has been enhanced to support absolute and relative tolerance parameters for numeric value comparisons in `is_equal_to`,  `is_not_equal_to`, `is_aggr_equal` and `is_aggr_not_equal` checks, allowing for more flexible and precise control over data validation. The introduction of tolerance logic, which checks for absolute and relative differences within specified thresholds via `abs_tolerance` and `rel_tolerance` parameters, provides more nuanced comparisons for numeric data.
* Allow new lines in sql expression checks ([#1009](#1009)). SQL expression check function (`sql_expression`) has been updated to support new lines in its expression argument, allowing for more complex and formatted SQL expressions.
* Allow summary metrics with SparkConnect sessions ([#1000](#1000)). The library now supports writing summary metrics directly to a table with SparkConnect sessions, eliminating the need for a classic compute cluster in Dedicated access mode. This change lifts the previous restriction and enables generatic summary metrics  using Serverless and all standard clusters with Databricks Runtime 17.3LTS or higeher.
* Fixed loading checks from a delta table with special characters ([#992](#992)). The loading checks functionality from a delta table has been fixed to handle special characters in the fully qualified table.
* Fixed resolution of pii detection check function ([#1003](#1003)). The PII detection check function resolution has been enhanced to support the application of checks defined as metadata (YAML).
* Fixed serialization/deserialization of row filter parameter for dataset-level rules ([#1021](#1021)). The `filter` field in checks definition now correctly pushes down the `filter` condition defined at the check-level as `row_filter` to the check function, allowing checks to operate on the relevant subset of rows before aggregation. The documentation has been updated to advice users to use  op-level `filter` condition for consistency instead of `row_filter` parameter. Overall, these changes aim to enhance the overall user experience.
* Improved Lakeflow Declarative Pipeline tests ([#1010](#1010)). The Lakeflow Declarative Pipeline (LDP) tests have been enhanced to utilize full Unity Catalog mode, enabling support for writing to arbitrary catalogs and schemas, and performing additional checks to prevent certain operations.
* Updated Lakebase authentication method ([#975](#975)). The Lakebase authentication method has been updated to utilize a client ID instead of a username, simplifying its use in the context of a Databricks App. The `lakebase_user` parameter has been replaced with `lakebase_client_id`, an optional service principal client ID used to connect to Lakebase, defaulting to the caller's identity if not provided. This change enhances the security and reliability of the authentication process, making it easier to work with Lakebase as a checks storage.
* Updated handling of metadata columns during schema validation ([#1002](#1002)). The `has_valid_schema` check has been enhanced to provide more flexibility in schema validation by introducing an optional `exclude_columns` parameter, allowing users to specify columns to ignore during validation. This parameter can be used to exclude metadata columns or other columns not relevant to schema validation, and it takes precedence over the `columns` list.
* Updated product info when missing in config while verifying workspace client ([#987](#987)). The workspace client configuration has been enhanced to default product information to `dqx` with the current version when it is missing, ensuring that product information is always set for telemetry purposes.
* Updated profiler and generator documentation ([#1026](#1026)). The data profiling and quality checks generation feature has been enhanced with updated documentation, providing reference information for data quality profile types and associated rules.
* Added filter attribute in rules generated from ODCS ([#978](#978)). The rules generation process has been enhanced with the introduction of a filter attribute in rules generated from Open Data Contract Standard (ODCS), allowing for more flexible and targeted rules creation.
Comment thread app/src/databricks_labs_dqx_app/ui/components/AICheckGenerator.tsx Outdated
@github-actions

github-actions Bot commented Feb 9, 2026

Copy link
Copy Markdown
Contributor

✅ 567/567 passed, 3 flaky, 41 skipped, 3h15m57s total

Flaky tests:

  • 🤪 test_row_rule_executor_apply (1.277s)
  • 🤪 test_quality_checker_workflow_serverless (3.301s)
  • 🤪 test_e2e_workflow_serverless (11m6.22s)

Running from acceptance #3903

Copilot AI left a comment

Copy link
Copy Markdown
Contributor

Choose a reason for hiding this comment

The reason will be displayed to describe this comment to others. Learn more.

Pull request overview

Release prep for v0.13.0, updating the package version and aligning documentation/demo artifacts with the new tag.

Changes:

  • Bump library version to 0.13.0.
  • Update docs GitHub links from v0.12.0 to v0.13.0.
  • Update demo notebooks to YAML-dump normalized checks via ChecksNormalizer (improves serializability, e.g., for Decimal).

Reviewed changes

Copilot reviewed 10 out of 10 changed files in this pull request and generated 5 comments.

Show a summary per file
File Description
src/databricks/labs/dqx/about.py Version bump to 0.13.0.
CHANGELOG.md Add 0.13.0 release notes.
docs/dqx/docs/reference/quality_checks.mdx Update GitHub blob links to v0.13.0.
docs/dqx/docs/installation.mdx Update GitHub blob links to v0.13.0.
docs/dqx/docs/guide/quality_checks_apply.mdx Update GitHub blob links to v0.13.0.
docs/dqx/docs/dev/contributing.mdx Update GitHub blob links to v0.13.0.
docs/dqx/docs/demos.mdx Update demo notebook links to v0.13.0.
demos/dqx_demo_tool.py Normalize generated checks before YAML dump in demo output.
demos/dqx_demo_llm_pk_detection.py Normalize generated checks before YAML dump in demo output.
demos/dqx_demo_library.py Normalize generated checks before YAML dump in demo output.

💡 Add Copilot custom instructions for smarter, more guided reviews. Learn how to get started.

Comment thread CHANGELOG.md Outdated
Comment thread CHANGELOG.md Outdated
Comment thread CHANGELOG.md Outdated
Comment thread CHANGELOG.md Outdated
Comment thread CHANGELOG.md Outdated

@alexott alexott left a comment

Copy link
Copy Markdown
Contributor

Choose a reason for hiding this comment

The reason will be displayed to describe this comment to others. Learn more.

just need to fix changelog issues reported by copilot

mwojtyczka and others added 2 commits February 9, 2026 13:33
Co-authored-by: Copilot <175728472+Copilot@users.noreply.github.com>
Co-authored-by: Copilot <175728472+Copilot@users.noreply.github.com>

Copilot AI left a comment

Copy link
Copy Markdown
Contributor

Choose a reason for hiding this comment

The reason will be displayed to describe this comment to others. Learn more.

Pull request overview

Copilot reviewed 10 out of 10 changed files in this pull request and generated 4 comments.


💡 Add Copilot custom instructions for smarter, more guided reviews. Learn how to get started.

Comment thread docs/dqx/docs/reference/quality_checks.mdx Outdated
Comment thread docs/dqx/docs/reference/quality_checks.mdx
Comment thread docs/dqx/docs/reference/quality_checks.mdx Outdated
Comment thread docs/dqx/docs/reference/quality_checks.mdx
Co-authored-by: Copilot <175728472+Copilot@users.noreply.github.com>
Co-authored-by: Copilot <175728472+Copilot@users.noreply.github.com>

@ghanse ghanse left a comment

Copy link
Copy Markdown
Collaborator

Choose a reason for hiding this comment

The reason will be displayed to describe this comment to others. Learn more.

LGTM

@codecov

codecov Bot commented Feb 9, 2026

Copy link
Copy Markdown

Codecov Report

✅ All modified and coverable lines are covered by tests.
✅ Project coverage is 91.08%. Comparing base (e5d2701) to head (70769fc).
⚠️ Report is 1 commits behind head on main.

Additional details and impacted files
@@            Coverage Diff             @@
##             main    #1027      +/-   ##
==========================================
- Coverage   91.15%   91.08%   -0.08%     
==========================================
  Files          64       64              
  Lines        6672     6672              
==========================================
- Hits         6082     6077       -5     
- Misses        590      595       +5     

☔ View full report in Codecov by Sentry.
📢 Have feedback on the report? Share it here.

🚀 New features to boost your workflow:
  • ❄️ Test Analytics: Detect flaky tests, report on failures, and find test suite problems.
  • 📦 JS Bundle Analysis: Save yourself from yourself by tracking and limiting bundle sizes in JS merges.

@mwojtyczka
mwojtyczka merged commit 99734cd into main Feb 9, 2026
16 checks passed
@mwojtyczka
mwojtyczka deleted the prepare/0.13.0 branch February 9, 2026 17:12
Sign up for free to join this conversation on GitHub. Already have an account? Sign in to comment

Labels

None yet

Projects

None yet

Development

Successfully merging this pull request may close these issues.

4 participants