Your browser is out of date

Update your browser to view this website correctly. Update my browser now

×

Watch Now

For enterprise organizations, building robust data pipelines has become increasingly resource-intensive. Modern data engineering requires more advanced data lifecycle integration for streamlining security, governance, and maintaining data quality to enable advanced analytics and machine learning at scale. To tackle these challenges, enterprise organizations need a comprehensive and integrated data engineering experience for data pipeline preparation and management. 

JOIN THIS WEBINAR TO:
  • Learn how Cloudera enables streamlined scheduling and workflow orchestration with Apache Airflow for analytical services such as Data Warehousing and Machine Learning using Spark

  • Experience visual, self-service troubleshooting and complete monitoring service for identifying and solving issues quickly

  • Explore how the Cloudera Shared Data Experience breaks down data silos and enables enterprise-grade security, governance and lineage tracking for data workflows

Speakers


Senior Manager, Product Marketing MLOps

Santiago Giraldo

More

Santiago leads product marketing for Cloudera’s production machine learning products. With over 10 years in the data science and analytics software industry, Santiago focuses on enabling businesses to solve complex challenges with novel data strategies and machine learning approaches.

Senior Manager, Product Management, Data Engineering

Shaun Ahmadian

More

As Senior Product Manager, Shaun leads Cloudera’s data engineering and visualization products. Prior to Cloduera, Shaun was a lead solutions engineer for Arcadia Data, a big data business intelligence company enabling Fortune 500 enterprises with visual analytics and BI capabilities at scale.

Your form submission has failed.

This may have been caused by one of the following:

  • Your request timed out
  • A plugin/browser extension blocked the submission. If you have an ad blocking plugin please disable it and close this message to reload the page.