Right Tool For The Job: Running Apache Spark At Scale In The Cloud

Discover how to supercharge your data processing with Apache Spark on Qubole, a leading open cloud data lake platform. This webinar delves into why Apache Spark has become a standard for scalable data processing and how Qubole’s managed service maximizes Spark’s capabilities for your business.

What You’ll Learn:

  1. Introduction to Apache Spark:
    • Understand Apache Spark’s role in handling exponentially growing data volumes and its advantages over traditional data processing tools.
  2. Apache Spark on Qubole:
    • Explore how Qubole enhances Spark with auto-scaling, performance optimizations, usability improvements, and enterprise-grade security features.
  3. Real-world Customer Successes:
    • Learn from customer case studies how companies transitioned to the cloud, improved productivity, and achieved significant cost savings with Spark on Qubole.
  4. Qubole’s Platform Features:
    • Delve into Qubole’s multi-cloud and multi-engine support, intuitive workbenches, notebooks for collaborative work, and seamless integration with services like Airflow for end-to-end data pipeline orchestration.
  5. Efficient Data Engineering Workflows:
    • Understand how Qubole’s features like auto-scaling and container packing optimize resource usage and reduce operational costs.
  6. Demo:
    • Get a hands-on look at creating Spark clusters, running Spark workloads, and operationalizing Spark pipelines in the Qubole environment.

Please fill in the form to watch the webinar

Note: By filling and submitting this form you understand and agree that the use of Qubole’s website is subject to the General Website Terms of Use. Additional details regarding Qubole’s collection and use of your personal information, including information about access, retention, rectification, deletion, security, cross-border transfers and other topics, is available in the Privacy Policy. If you have any questions regarding the webform language, please contact [email protected].