Data Observability for Data Lake, Warehouse, and Pipeline Prevent critical data issues before it breaks your pipeline or reaches the data users
Autonomously observe for critical errors at all points in the data pipeline and alert data engineers to control data flow.
Challenges with current Observability tools
Data Lake is the starting point for your data journey and the data pipeline is the artery of your organization. Monitoring just the Snowflake Warehouse is good, but grossly insufficient. The most prevalent Observability tools in the market today are designed for monitoring Data Warehouses like Snowflake. They are not unified platforms that can span across an organization.
DataBuck’s unified Observability platform:
Powered by Machine Learning, DataBuck is an advanced Observability tool. It automatically figures out what data is expected, when, and where. The right stakeholders get alerted when there are deviations.
Benefits of DataBuck:
- Ensures data is reliable
- as soon as it lands in the lake
- as it cascades down the pipeline
- and also in the data warehouse
- The only solution that leverages AI/ML to identify hard-to-detect errors
- Plug and play for Data Engineers – no rules writing
- Self-service for business stakeholders
- Auditable
What do you gain?
Every step a data error propagates and flows downstream the cost to fix it is 10x more expensive. Cut cost and increase productivity by a giant leap.
- Observe data autonomously with AI/ML
- Cut data maintenance work and cost by over 50%
- 10x efficient in scaling Data Observability to 1,000’s of data sets