Category: aws

  • Databricks scalability

    Databricks is designed with scalability as a core tenet, allowing users to handle massive amounts of data and complex analytical workloads. Its scalability stems from several key architectural components and features: 1. Apache Spark as the Underlying Engine: 2. Decoupled Storage and Compute: 3. Elastic Compute Clusters: 4. Auto Scaling: 5. Serverless Options: 6. Optimized Read more

  • Developing and training machine learning models within an MLOps framework

    The “MLOps training workflow” specifically focuses on the steps involved in developing and training machine learning models within an MLOps framework. It’s a subset of the broader MLOps lifecycle but emphasizes the automation, reproducibility, and tracking aspects crucial for effective model building. Here’s a typical MLOps training workflow: Phase 1: Data Preparation (MLOps Perspective) Phase Read more