Azure cloud

Azure Data Scientist Associate Boot Camp

DreamsPlus offers a comprehensive Azure Data Scientist Associate Boot Camp in Singapore, available both in-person and online.

Azure Data Scientist Associate Boot Camp

DreamsPlus offers a comprehensive Azure Data Scientist Associate Boot Camp in Singapore, available both in-person and online. This program is designed to provide hands-on training and prepare you for the prestigious Microsoft Azure Data Science Certification. With expert-led sessions and practical exercises, you’ll gain the skills needed to excel as an Azure-certified data scientist in Singapore’s thriving tech industry.

Syllabus 

  • Design and prepare a machine learning solution (20–25%)
  • Explore data, and train models (35–40%)
  • Prepare a model for deployment (20–25%)
  • Deploy and retrain a model (10–15%)

Design and prepare a machine learning solution (20–25%)

Design a machine learning solution

  • Ascertain which compute specs are suitable for a training workload.
  • Describe the needs for model deployment.
  • Decide the model-building or model-training approach to employ.

Manage an Azure Machine Learning workspace

  • Establish a workspace for Azure Machine Learning.
  • Use developer tools to manage a workspace and facilitate workplace interaction.
  • Set up source control with Git integration.
  • Establish and oversee registries

Manage data in an Azure Machine Learning workspace

  • Choose Azure Storage options.
  • register and keep up datastores
  • Construct and oversee data assets.

Manage compute for experiments in Azure Machine Learning

  • Establish computational targets for training and experimentation.
  • Choose a setting for a use case involving machine learning.
  • Set up the serverless Spark compute and Azure Synapse Spark pools, among other connected compute resources.
  • Track the use of computing resources.

Explore data, and train models (35–40%)

Explore data by using data assets and data stores

  • Obtain and manage data when developing interactive applications.
  • Manage interactive data using serverless Spark computing and connected Synapse Spark pools.

Create models by using the Azure Machine Learning designer

  • Establish a pipeline for training.
  • Consume the designer’s data assets.
  • Utilize unique code segments in the designer.
  • Review the model and incorporate ethical AI principles.

Use automated machine learning to explore optimal models

  • For tabular data, use automated machine learning.
  • For computer vision, use automated machine learning.
  • For natural language processing, employ automated machine learning.
  • Choose and comprehend training options, including algorithms and preprocessing.
  • Analyze a machine learning run that is automated and consider appropriate AI practices.

Use notebooks for custom model training

  • Develop code by using a compute instance.
  • Monitor model training using MLflow.
  • Assess a model
  • Use the Python SDK v2 to train a model.
  • To configure a compute instance, use the terminal. 

Tune hyperparameters with Azure Machine Learning

  • Choose a technique for sampling.
  • Specify the area of interest.
  • Describe the main metric.
  • Describe your choices for an early termination.

Prepare a model for deployment (20–25%)

Run model training scripts

  • Set the parameters for a script’s task run.
  • Set up the computer to execute a job.
  • Use information from a data asset for a task.
  • Create a job using Azure Machine Learning to run a script.
  • Log metrics from a task run using MLflow.
  • To troubleshoot job run failures, use logs.
  • Set up the environment in which a job will operate.
  • Set limits for a task.

Implement training pipelines

  • Build a pipeline.
  • Transfer data between pipeline phases.
  • Execute and plan a pipeline.
  • Keep an eye on pipeline runs.
  • Make unique parts
  • Employ pipelines that are based on components.

Manage models in Azure Machine Learning

  • Explain the MLflow model’s output.
  • Choose a suitable framework for encapsulating a model.
  • Evaluate a model using ethical AI concepts.

Deploy and retrain a model (10–15%)

Deploy a model

  • Set up the environment for the online deployment.
  • Set up the computing for a deployment in batches.
  • Install a model on a web page.
  • Install a model on a batch destination.
  • Examine a deployed online service.
  • To begin a batch scoring job, invoke the batch endpoint. 

Apply machine learning operations (MLOps) practices

  • Start an Azure Machine Learning job from GitHub or Azure DevOps, for example.
  • Retrain the model automatically in response to modifications or additions of fresh data.
  • Explain triggers for event-based retraining.

Course Curriculum

Get ready to earn the Associate certification in Azure Data Science.

Develop your data science expertise in order to pass the Microsoft certification.

Gain more professional opportunities by developing your data science skills.

Obtain the Azure Data Scientist Associate certificate to stay ahead of the competition in the demanding work market.
DreamsPlus Azure Data Scientist Associate Training Package

FAQs for Azure Data Scientist Associate Bootcamp

What is the Azure Data Scientist Associate Bootcamp?

The Azure Data Scientist Associate Bootcamp is an immersive training program offered by DreamsPlus, designed to provide hands-on experience with data science tools and techniques on Azure. It prepares you for the Microsoft Azure Data Scientist Associate Certification (DP-100) and equips you with practical skills for machine learning solutions.

Who should attend this bootcamp?

This course is ideal for:

  • Aspiring data scientists looking to specialize in Azure.
  • IT professionals, analysts, and machine learning engineers.
  • Those aiming to earn the Azure Data Scientist Associate Certification.
What topics are covered in the bootcamp?

The syllabus includes:

  • Designing and preparing machine learning solutions.
  • Exploring data and training models.
  • Preparing models for deployment.
  • Deploying and retraining models.
  • Applying MLOps practices for efficient workflows.
What are the prerequisites for joining?

Participants should have:

  • Basic knowledge of Python programming.
  • Familiarity with data science concepts such as data preparation, model training, and evaluation.
  • Understanding of Azure fundamentals is recommended but not mandatory.
How can I register or get more information?

To register or learn more about the course:

  • 📞 Call: +65 8205 0700
  • 📧 Email: support@dreamsplus.sg
    For more details, visit dreamsplus.sg and start your journey towards Azure security certification today!
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