
About Course
The Machine Learning with Amazon SageMaker certification course is designed to provide learners with the practical skills required to build, train, and deploy machine learning models at scale using Amazon SageMaker. This course focuses on streamlining the ML workflow with SageMaker’s integrated tools, enabling participants to implement machine learning solutions efficiently in production environments.
The course highlights real-world use cases and teaches learners how to harness SageMaker’s capabilities to solve complex business challenges, such as predicting customer behavior, optimizing product recommendations, and automating data-intensive processes.
The course covers key areas such as:
- Introduction to Amazon SageMaker: Understand SageMaker’s role in the ML lifecycle and explore its architecture and components.
- Data Preparation and Exploration: Learn techniques for preparing datasets, including transformation, cleaning, and visualization, within the SageMaker environment.
- Model Training with Built-in and Custom Algorithms: Explore supported ML algorithms and integrate frameworks such as Scikit-learn, MXNet, and TensorFlow.
- Model Optimization and Hyperparameter Tuning: Improve model performance using SageMaker’s automatic tuning and evaluation capabilities.
- Deployment and Inference: Deploy models into hosted environments for batch or real-time inference, leveraging SageMaker endpoints.
- Monitoring and Cost Optimization: Implement strategies for model monitoring, performance tracking, and managing cost-effective ML operations.
- Scalability and Automation: Build scalable and automated ML pipelines using SageMaker Pipelines and integrate DevOps practices, including containerization and CI/CD.
- Use Case Implementation: Apply the learned skills to real-world scenarios and explore advanced ML applications across different industries.
Course Prerequisites
To ensure success in this course, participants should meet the following prerequisites:
- Proficiency in Python programming and foundational ML concepts
- Familiarity with AWS services (such as Amazon S3, EC2, and IAM)
- Understanding of machine learning libraries like Scikit-learn, MXNet, or TensorFlow
- Basic knowledge of distributed systems
- Experience with DevOps practices and containerization (beneficial)
- Ability to work in command-line environments and Jupyter Notebooks
These prerequisites ensure that learners are equipped to grasp the advanced features of SageMaker and maximize the value of the course content.
Target Audience
The Machine Learning with Amazon SageMaker certification course is ideal for professionals and enthusiasts looking to gain hands-on experience with scalable ML development on AWS, including:
- Data Scientists
- Machine Learning Engineers
- IT Professionals and Developers transitioning to AI/ML roles
- Students pursuing careers in AI/ML
- Business Analysts and Strategy Consultants
- Technical Product Managers involved in ML-driven projects
- Technology Enthusiasts building real-world ML models
Why Choose us
⭢ Live Online Training (Duration : 24 Hours)
⭢ Guaranteed to run classes
⭢ Experienced & certified trainers
⭢ Query Handling session
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Learning Objectives
After completing the Machine Learning with Amazon SageMaker course, learners will be able to:
- Understand Amazon SageMaker’s role in building scalable ML solutions
- Prepare, clean, and explore datasets using SageMaker’s built-in tools
- Train models using built-in or custom algorithms with ML frameworks
- Perform hyperparameter tuning to enhance model performance
- Deploy models into hosted environments for real-time or batch inference
- Monitor model predictions and implement drift detection strategies
- Optimize the cost and performance of ML workflows on AWS
- Apply knowledge to end-to-end ML projects and industry use cases
- Automate ML pipelines and apply DevOps practices for scalable solutions
- Interpret model outputs and communicate findings effectively
Benefits of the course
- Master Machine Learning with Amazon SageMaker:
- Learn how to build, train, and deploy machine learning models at scale using SageMaker, AWS’s fully managed ML platform.
- Industry-Relevant Skills:
- Gain hands-on experience with data preprocessing, model training, hyperparameter tuning, and model deployment using SageMaker Studio, built-in algorithms, and custom containers.
- Real-World Skills:
- Understand how to manage the end-to-end ML workflow, including feature engineering, model evaluation, and production monitoring, all within a secure and scalable environment.
- Hands-On Experience:
- Includes guided labs and real-world scenarios that help you experiment, iterate, and operationalize machine learning models using SageMaker Pipelines and Model Registry.
- Career Boost:
- Prepares you for roles like Machine Learning Engineer, Data Scientist, and AI Developer in organizations looking to accelerate ML adoption using AWS.
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