Build machine learning solutions using Azure Databricks (DP-3014)
- Código del Curso M-DP3014
- Duración 1 Día
- Idioma English
Otros Métodos de Impartición
Método de Impartición
Este curso está disponible en los siguientes formatos:
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Cerrado
Cerrado
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Clase de calendario
Aprendizaje tradicional en el aula
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Aprendizaje Virtual
Aprendizaje virtual
Solicitar este curso en un formato de entrega diferente.
Temario
Parte superiorVirtual Learning
This interactive training can be taken from any location, your office or home and is delivered by a trainer. This training does not have any delegates in the class with the instructor, since all delegates are virtually connected. Virtual delegates do not travel to this course, Global Knowledge will send you all the information needed before the start of the course and you can test the logins.
Calendario
Parte superior-
- Método de Impartición: Aprendizaje Virtual
- Fecha: 15 abril, 2026 | 10:30 AM to 6:00 PM Evento Garantizado
- Sede: Aula Virtual (W. Europe )
- Idioma: Inglés
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Guaranteed To Run
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- Método de Impartición: Aprendizaje Virtual
- Fecha: 02 julio, 2026 | 9:00 AM to 5:00 PM
- Sede: Aula Virtual (W. Europe )
- Idioma: Inglés
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- Método de Impartición: Aprendizaje Virtual
- Fecha: 08 julio, 2026 | 9:00 AM to 5:00 PM
- Sede: Aula Virtual (W. Europe )
- Idioma: Español
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- Método de Impartición: Aprendizaje Virtual
- Fecha: 12 agosto, 2026 | 10:30 AM to 6:00 PM
- Sede: Aula Virtual (W. Europe )
- Idioma: Inglés
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- Método de Impartición: Aprendizaje Virtual
- Fecha: 04 noviembre, 2026 | 9:00 AM to 5:00 PM
- Sede: Aula Virtual (W. Europe )
- Idioma: Español
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- Método de Impartición: Aprendizaje Virtual
- Fecha: 18 noviembre, 2026 | 9:00 AM to 5:00 PM
- Sede: Aula Virtual (W. Europe )
- Idioma: Inglés
Dirigido a
Parte superiorData scientists and machine learning engineers.
Objetivos del Curso
Parte superiorStudents will learn to,
- 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
Contenido
Parte superiorModule 1 : Explore Azure Databricks
- Provision an Azure Databricks workspace.
- Identify core workloads and personas for Azure Databricks.
- Use Data Governance tools Unity Catalog and Microsoft Purview
- Describe key concepts of an Azure Databricks solution.
Module 2 : Use Apache Spark in Azure Databricks
- Describe key elements of the Apache Spark architecture.
- Create and configure a Spark cluster.
- Describe use cases for Spark.
- Use Spark to process and analyze data stored in files.
- Use Spark to visualize data.
Module 3 : Train a machine learning model in Azure Databricks
- Prepare data for machine learning
- Train a machine learning model
- Evaluate a machine learning model
Module 4 : Use MLflow in Azure Databricks
- Use MLflow to log parameters, metrics, and other details from experiment runs.
- Use MLflow to manage and deploy trained models.
Module 5 : Tune hyperparameters in Azure Databricks
- Use the Hyperopt library to optimize hyperparameters.
- Distribute hyperparameter tuning across multiple worker nodes.
Module 6 : Use AutoML in Azure Databricks
- Use the AutoML user interface in Azure Databricks
- Use the AutoML API in Azure Databricks
Module 7 : Train deep learning models in Azure Databricks
- Train a deep learning model in Azure Databricks
- Distribute deep learning training by using the Horovod library
Module 8 : Manage machine learning in production with Azure Databricks
- Automate feature engineering and data pipelines
- Model development and training
- Model deployment strategies
- Model versioning and lifecycle management
Pre-requisitos
Parte superior- This learning path assumes that you have experience of using Python to explore data and train machine learning models with common open source frameworks, like Scikit-Learn, PyTorch, and TensorFlow. Consider completing the Create machine learning models learning path before starting this one.