DP-100: Designing and Implementing a Data Science Solution on Azure
This course teaches you how to operate machine learning solutions at cloud scale using Azure Machine Learning. The course covers how information is prepared for a machine learning model, how the model is trained and published for use, and how to monitor the use of the model in Microsoft Azure.
This course is designed for Data Scientists with existing knowledge of Python and machine learning frameworks like Scikit-Learn, PyTorch, and Tensorflow, who want to build and operate machine learning solutions in the cloud.
This course prepares you for the certification exam DP-100: Designing and Implementing a Data Science Solution on Azure to obtain the Microsoft Certified: Azure Data Scientist Associate Certificate.
- Familiar with the basics of Azure and have experience in programming.
- Experience with the Python language as well as the Numpy, Pandas and Matplotlib libraries.
- Understanding the basics of Data Science, i.e., data preparation, storage and how models are trained using public libraries such as Scikit-Learn, PyTorch and Tensorflow.
Module 1: Design a data ingestion strategy for machine learning projects
Learn how to design a data ingestion solution for training data used in machine learning projects.
Learning objectives:
- Identify your data source and format
- Choose how to serve data to machine learning workflows
- Design a data ingestion solution
Module 2: Design a machine learning model training solution
Learn how to design a model training solution for machine learning projects.
Learning objectives:
- Identify machine learning tasks
- Choose a service to train a model
- Choose between compute options
Module 3: Design a model deployment solution
Learn how to design a model deployment solution and how the requirements of the deployed model can affect the way you train a model.
Learning objectives:
- Understand how a model will be consumed.
- Decide whether to deploy your model to a real-time or batch endpoint.
Module 4: Explore Azure Machine Learning workspace resources and assets
As a data scientist, you can use Azure Machine Learning to train and manage your machine learning models. Learn what Azure Machine Learning is, and get familiar with all its resources and assets.
Learning objectives:
- Create an Azure Machine Learning workspace.
- Identify resources and assets.
- Train models in the workspace.
Module 5: Explore developer tools for workspace interaction
Learn how you can interact with the Azure Machine Learning workspace. You can use the Azure Machine Learning studio, the Python SDK (v2), or the Azure CLI (v2).
Learning objectives:
- The Azure Machine Learning studio.
- The Python Software Development Kit (SDK).
- The Azure Command Line Interface (CLI).
Module 6: Make data available in Azure Machine Learning
Learn about how to connect to data from the Azure Machine Learning workspace. You’ll be introduced to datastores and data assets.
Learning objectives:
- Work with Uniform Resource Identifiers (URIs).
- Create and use datastores.
- Create and use data assets.
Module 7: Work with compute targets in Azure Machine Learning
Learn how to work with compute targets in Azure Machine Learning. Compute targets allow you to run your machine learning workloads. Explore how and when you can use a compute instance or compute cluster.
Learning objectives:
- Choose the appropriate compute target.
- Create and use a compute instance.
- Create and use a compute cluster.
Module 8: Work with environments in Azure Machine Learning
Learn how to use environments in Azure Machine Learning to run scripts on any compute target.
Learning objectives:
- Understand environments in Azure Machine Learning.
- Explore and use curated environments.
- Create and use custom environments.
Module 9: Find the best classification model with Automated Machine Learning
Learn how to find the best classification model with automated machine learning (AutoML). You’ll use the Python SDK (v2) to configure and run an AutoML job.
Learning objectives:
- Prepare your data to use AutoML for classification.
- Configure and run an AutoML experiment.
- Evaluate and compare models.
Module 10: Track model training in Jupyter notebooks with MLflow
Learn how to use MLflow for model tracking when experimenting in notebooks.
Learning objectives:
- Configure to use MLflow in notebooks
- Use MLflow for model tracking in notebooks
Module 11: Run a training script as a command job in Azure Machine Learning
Learn how to convert your code to a script and run it as a command job in Azure Machine Learning.
Learning objectives:
- Convert a notebook to a script.
- Test scripts in a terminal.
- Run a script as a command job.
- Use parameters in a command job.
Module 12: Track model training with MLflow in jobs
Learn how to track model training with MLflow in jobs when running scripts.
Learning objectives:
- Use MLflow when you run a script as a job.
- Review metrics, parameters, artifacts, and models from a run.
Module 13: Run pipelines in Azure Machine Learning
Learn how to create and use components to build pipeline in Azure Machine Learning. Run and schedule Azure Machine Learning pipelines to automate machine learning workflows.
Learning objectives:
- Create components.
- Build an Azure Machine Learning pipeline.
- Run an Azure Machine Learning pipeline.
Module 14: Perform hyperparameter tuning with Azure Machine Learning
Learn how to perform hyperparameter tuning with a sweep job in Azure Machine Learning.
Learning objectives:
- Define a hyperparameter search space.
- Configure hyperparameter sampling.
- Select an early-termination policy.
- Run a sweep job.
Module 15: Deploy a model to a managed online endpoint
Learn how to deploy models to a managed online endpoint for real-time inferencing.
Learning objectives:
- Use managed online endpoints.
- Deploy your MLflow model to a managed online endpoint.
- Deploy a custom model to a managed online endpoint.
- Test online endpoints.
Module 16: Deploy a model to a batch endpoint
Learn how to deploy models to a batch endpoint. When you invoke a batch endpoint, you’ll trigger a batch scoring job.
Learning objectives:
- Create a batch endpoint.
- Deploy your MLflow model to a batch endpoint.
- Deploy a custom model to a batch endpoint.
- Invoke batch endpoints.
1990 € (Excl. Tax)
Antti “Kontti” Kontiainen
Consulting & Training
Antti is an experienced consultant and trainer who has received a lot of positive feedback about his ability to present difficult technical matters in an understandable way.
Related products
-
AZ-500: Microsoft Azure Security Technologies
1990 € (Excl. Tax)This course covers security in the Azure environment and helps students to develop knowledge and skills needed to implement security controls, maintain an organization’s security posture, and identify and remediate security vulnerabilities. The course includes security for identity and access, security configuration of the various Azure core services, data stored on Azure, and the security... View ArticleImplementation: Class, OnlineLength: 4 daysStarting dates: Ask for details: sales@sulava.comMaterial: Microsoft English Material (MOC) -
Sale!
AI-900: Microsoft Azure AI Fundamentals
790 €Original price was: 790 €.180 €Current price is: 180 €. (Excl. Tax)Please note: The trainings on February 6th and April 23rd are in Finnish. Learn what Azure AI solutions are and what benefits they bring to your business! In the Azure AI Fundamentals one-day course, you will get to learn about what artificial intelligence (AI) solutions are and how Microsoft Azure cloud provides them. Throughout the... View ArticleImplementation: OnlineLength: 1 dayStarting dates: Ask for details: sales@sulava.comMaterial: Microsoft English Material (MOC)Antti “Kontti” Kontiainen
Consulting & Training
-
AI-050: Develop Generative AI Solutions with Azure OpenAI Service
790 € (Excl. Tax)How internal solutions are built on top of OpenAI’s models? How can modern AI be integrated into organisation’s systems and applications? The new Microsoft course AI-050 focuses specifically on these topics! Azure OpenAI Service provides access to OpenAI’s powerful large language models such as GPT; the model behind the popular ChatGPT service. These models enable... View ArticleImplementation: OnlineLength: 1 dayMaterial: Microsoft English Material (MOC)Antti “Kontti” Kontiainen
Consulting & Training