opus-42 / superset-api-clientLinks
A Python Client for Apache Superset REST API
☆64Updated last year
Alternatives and similar repositories for superset-api-client
Users that are interested in superset-api-client are comparing it to the libraries listed below
Sorting:
- Snowflake SQLAlchemy☆248Updated last week
- Helm charts for deploying Prefect Services☆125Updated last week
- Fast iterative local development and testing of Apache Airflow workflows☆201Updated 2 months ago
- Making DAG construction easier☆266Updated last month
- Make simple storing test results and visualisation of these in a BI dashboard☆45Updated last week
- Airflow Providers containing Deferrable Operators & Sensors from Astronomer☆149Updated last week
- Pylint plugin for static code analysis on Airflow code☆95Updated 4 years ago
- A Dagster plugin that allows you to run Meltano in Dagster☆46Updated 7 months ago
- Soda SQL and Soda Spark have been deprecated and replaced by Soda Core. docs.soda.io/soda-core/overview.html☆61Updated 2 years ago
- ☆74Updated 4 months ago
- Make dbt docs and Apache Superset talk to one another☆146Updated 5 months ago
- re_data - fix data issues before your users & CEO would discover them 😊☆98Updated last year
- Great Expectations Airflow operator☆166Updated last week
- The shared semantic layer definitions that dbt-core and MetricFlow use.☆79Updated last week
- dbt-mysql contains all of the code enabling dbt to work with MySQL and MariaDB☆82Updated last year
- Pipeline definitions for managing data flows to power analytics at MIT Open Learning☆43Updated this week
- Airflow plugin to export dag and task based metrics to Prometheus.☆254Updated 3 weeks ago
- Prometheus Exporter for Airflow☆160Updated last year
- PyAirbyte brings the power of Airbyte to every Python developer.☆273Updated this week
- Tutorials for Fugue - A unified interface for distributed computing. Fugue executes SQL, Python, and Pandas code on Spark and Dask withou…☆113Updated last year
- The Prefect API and backend☆242Updated last year
- Astro SDK allows rapid and clean development of {Extract, Load, Transform} workflows using Python and SQL, powered by Apache Airflow.☆369Updated last month
- Learn how to add data validation and documentation to a data pipeline built with dbt and Airflow.☆169Updated last year
- Generate and Visualize Data Lineage from query history☆326Updated last year
- Dry run capability for dbt projects using BigQuery☆98Updated 2 months ago
- Code examples showing flow deployment to various types of infrastructure☆107Updated 2 years ago
- Apache Airflow integration for dbt☆405Updated last year
- Swiple enables you to easily observe, understand, validate and improve the quality of your data☆84Updated this week
- a dbt package to make auditing dbt runs easy.☆100Updated 6 months ago
- Astronomer Core Docker Images☆107Updated last year