Implementing a Machine Learning solution with Azure Databricks (DP-3014) Training in Germany

  • Learn via: Classroom
  • Duration: 1 Day
  • Level: Intermediate
  • Price: From €1,248+VAT

Azure Databricks is a cloud-scale platform for data analytics and machine learning. This course equips data scientists and machine learning engineers with the skills to implement scalable data processing and machine learning solutions using Azure Databricks. Participants will explore key concepts, including Apache Spark for data analytics, model training and tuning, AutoML, and MLflow for experiment tracking. The course emphasises data transformation, feature engineering, and model deployment. Through hands-on labs, learners will gain practical experience in building, training, and deploying models in a collaborative environment.

Read more +
We can host this training at your preferred location.

Prerequisites

Participants should have:

  • Experience using Python to explore data and train machine learning models.
  • Familiarity with common open-source frameworks such as Scikit-Learn, PyTorch, and TensorFlow.
  • Recommended: Completion of the Create machine learning models learning path before starting this course.

Target audience

This course is designed for:

  • Data scientists and machine learning engineers looking to scale their ML solutions.
  • AI and data professionals working with large-scale data analytics and processing.
  • Teams responsible for implementing machine learning workflows in Azure.
Read more +

What You Will Learn

By the end of this course, learners will be able to:

  • Describe the capabilities of Azure Databricks and its role in both data analytics and machine learning.
  • Use Apache Spark in Azure Databricks to process, transform, and analyse large-scale data.
  • Train and evaluate machine learning models within Azure Databricks.
  • Leverage MLflow for experiment tracking, model registration, and deployment.
  • Optimise hyperparameters using Hyperopt and review trial results.
  • Implement AutoML using both the Azure Databricks user interface and code-based approaches.
  • Manage machine learning workflows in production, including data automation, versioning, and deployment strategies.
Read more +

Outline

Explore Azure Databricks

  • Overview of Azure Databricks as a cloud-scale platform for data analytics and machine learning
  • Key concepts and workloads in Azure Databricks
  • Data governance using Unity Catalog and Microsoft Purview
  • Hands-on exercise: Exploring Azure Databricks

Use Apache Spark in Azure Databricks

  • Introduction to Apache Spark and its role in large-scale data analytics
  • Creating and managing Spark clusters
  • Using Spark notebooks to process and transform large datasets
  • Working with structured and unstructured data files in Spark
  • Visualising data using Spark and Databricks
  • Hands-on exercise: Using Spark for data analytics

Train a machine learning model in Azure Databricks

  • Principles of machine learning and predictive modelling
  • Preparing data for machine learning, including feature engineering and transformations
  • Training machine learning models using Scikit-Learn, PyTorch, and TensorFlow
  • Evaluating model performance using standard machine learning metrics
  • Hands-on exercise: Training a machine learning model

Use MLflow in Azure Databricks

  • Introduction to MLflow and its role in the machine learning lifecycle
  • Running experiments and tracking performance metrics with MLflow
  • Registering, serving, and managing models using MLflow
  • Deploying trained models for inference within Databricks
  • Hands-on exercise: Using MLflow for model management

Tune hyperparameters in Azure Databricks

  • Understanding hyperparameter tuning and its impact on machine learning models
  • Using Hyperopt for automated hyperparameter tuning in Azure Databricks
  • Reviewing and analysing Hyperopt trials for optimisation insights
  • Scaling Hyperopt trials for improved performance
  • Hands-on exercise: Tuning model hyperparameters using Hyperopt

Use AutoML in Azure Databricks

  • Overview of AutoML and its benefits in machine learning
  • Running AutoML experiments via the Azure Databricks user interface
  • Using Python code to execute AutoML workflows
  • Comparing AutoML results with traditional model development
  • Hands-on exercise: Using AutoML for machine learning model development

Train deep learning models in Azure Databricks

  • Fundamentals of deep learning and neural networks
  • Training deep learning models using PyTorch in Databricks
  • Using TorchDistributor for distributed deep learning model training
  • Deploying deep learning models for real-world AI tasks
  • Hands-on exercise: Training and optimising deep learning models in Databricks

Manage machine learning in production with Azure Databricks

  • Automating data transformations and machine learning workflows in Databricks
  • Exploring model development, versioning, and lifecycle management
  • Deploying models for real-time inference and decision-making
  • Monitoring deployed models for performance and drift detection
  • Hands-on exercise: Managing a machine learning model in production

Exams and assessments

This course does not include formal exams. Participants will complete interactive labs and knowledge checks to reinforce learning outcomes.

Hands-on learning

This course includes:

  • Hands-on labs for data processing, model training, hyperparameter tuning, and model deployment.
  • Practical exercises using Apache Spark, MLflow, AutoML, and Hyperopt.
  • Real-world case studies on implementing scalable machine learning solutions.
Read more +


Contact us for more detail about our trainings and for all other enquiries!

Avaible Training Dates

Join our public courses in our Germany facilities. Private class trainings will be organized at the location of your preference, according to your schedule.

04 April 2025 (1 Day)
Berlin, Hamburg, Münih
Classroom / Virtual Classroom
€1,248 +VAT
12 April 2025 (1 Day)
Berlin, Hamburg, Münih
Classroom / Virtual Classroom
€1,248 +VAT
19 April 2025 (1 Day)
Berlin, Hamburg, Münih
Classroom / Virtual Classroom
€1,248 +VAT
23 April 2025 (1 Day)
Berlin, Hamburg, Münih
Classroom / Virtual Classroom
€1,248 +VAT
27 April 2025 (1 Day)
Berlin, Hamburg, Münih
Classroom / Virtual Classroom
€1,248 +VAT
14 Mai 2025 (1 Day)
Berlin, Hamburg, Münih
Classroom / Virtual Classroom
€1,248 +VAT
14 Mai 2025 (1 Day)
Berlin, Hamburg, Münih
Classroom / Virtual Classroom
€1,248 +VAT
06 Juni 2025 (1 Day)
Berlin, Hamburg, Münih
Classroom / Virtual Classroom
€1,248 +VAT
Implementing a Machine Learning solution with Azure Databricks (DP-3014) Training Course in Germany

The Federal Republic of Germany is the second most populous country in Europe and is located in Central Europe. The official language of the country is German. Germany is one of the richest countries in the world. The main exports of the country include motor vehicles and iron and steel products.

Here are some fun facts about Germany:
The fairy tale writer, the Brothers Grimm, came from Germany and wrote many famous stories such as Cinderella, Snow White, and Sleeping Beauty.
Germany is home to the largest theme park in Europe, the Europa-Park.
The famous composer Ludwig van Beethoven was born in Germany.
The Autobahn, the German highway system, is known for having no general speed limit.


Berlin was divided by the Berlin Wall from 1961 to 1989. Known for its street art, Berlin has many colorful murals and graffiti throughout the city. Also, Berlin is home to many famous museums, such as the Pergamon Museum and the Museum Island. Many clubs and bars stay open until the early hours of the morning in this big city.

Another popular city is Munich, which is famous for its Oktoberfest beer festival that attracts millions of visitors every year. Munich is also home to many historic buildings, including Nymphenburg Palace and the Marienplatz town square.

The country's capital and largest city is Berlin, however Frankfurt is considered to be the business and financial center of Germany. It is home to the Frankfurt Stock Exchange, the European Central Bank, and many other financial institutions. Because of its central location within Europe and its status as a major financial hub, Frankfurt is often referred to as the "Mainhattan," a play on the city's name and its association with the Manhattan financial district in New York City.

Frankfurt is also a major transportation hub, with the largest airport in Germany and one of the largest in Europe, Frankfurt Airport. Additionally, it is a popular destination for tourists, with its historic city center, beautiful parks, and vibrant cultural scene.

Some of the top German technology companies like Siemens AG, Bosch, SAP SE, Deutsche Telekom, Daimler AG and Volkswagen has business centers in Frankfurt. The country has a strong tradition of engineering and innovation, and is home to many other world-class technology companies and research institutions.

Tailored to meet the specific needs of Germany, Bilginç IT Academy combines cutting-edge training methodologies with our comprehensive range of Certification Exam preparation courses and accredited corporate training programs. Experience a transformative approach to IT training that will redefine your expectations.
By using this website you agree to let us use cookies. For further information about our use of cookies, check out our Cookie Policy.