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Machine learning with Azure Databricks DP-3014

Machine learning with Azure Databricks DP-3014 Certification
Azure Databricks is a cloud-scale platform for data analytics and machine learning. Data scientists and machine learning engineers can use Azure Databricks to implement machine learning solutions at scale.

Machine learning with Azure Databricks DP-3014 Prerequisites Ojectives

  • In this course you will learn how to:
  • Gain proficiency in utilizing Azure Databricks a cloud service offering a scalable platform for data analytics using Apache Spark.
  • Acquire practical knowledge and hands-on experience in employing Spark to transform analyze and visualize data at scale.
  • Develop skills in training machine learning models and evaluating their performance within the Azure Databricks environment.
  • Learn to leverage MLflow an open-source platform for managing the machine learning lifecycle
  • seamlessly integrated with Azure Databricks.
  • Master the art of hyperparameter tuning and optimization using Hyperopt library enhancing the efficiency of machine learning workflows.
  • Explore the simplicity and effectiveness of AutoML in Azure Databricks for automating the model building process.
  • Dive into the realm of deep learning understanding concepts and training models for complex AI workloads like forecasting computer vision and natural language processing.

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  • Machine learning with Azure Databricks DP-3014 Outline

    Explore Azure Databricks:

    - Introduction to Azure Databricks as a cloud service providing a scalable platform for data analytics.
    - Use of Apache Spark in Azure Databricks for performing data transformations, analysis, and visualizations at scale.

    Train a Machine Learning Model in Azure Databricks:

    - Understanding how data is used for training predictive models in Azure Databricks.
    - Overview of the commonly used machine learning frameworks supported by Azure Databricks.

    Use MLflow in Azure Databricks:

    - Introduction to MLflow as an open-source platform managing the machine learning lifecycle.
    - Insight into how MLflow is natively supported in Azure Databricks.

    Tune Hyperparameters in Azure Databricks:

    - The important role of tuning hyperparameters in machine learning.
    - Using the Hyperopt library in Azure Databricks for automated hyperparameters optimization.

    Use AutoML in Azure Databricks:

    - An overview of AutoML’s role in simplifying the process of building effective machine learning models.
    - Insight into how AutoML fits into the Azure Databricks ecosystem.

    Train Deep Learning Models in Azure Databricks:

    - Understanding deep learning and its use of neural networks for training machine learning models.
    - Looking at the complex forecasting, computer vision, natural language processing, and other AI workloads handled by deep learning in Azure Databricks.

  • Machine learning with Azure Databricks DP-3014 Format

    In-Person

    Online

  • Machine learning with Azure Databricks DP-3014 Prerequisites

    Explore Azure Databricks
    Use Apache Spark in Azure Databricks
    Train a machine learning model in Azure Databricks
    Use MLflow in Azure Databricks
    Tune hyperparameters in Azure Databricks
    Use AutoML in Azure Databricks
    Train deep learning models in Azure Databricks
    Manage machine learning in production with Azure Databricks

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