Description
What you’ll learn
-
Introduction to Amazon SageMaker: Explore the features and capabilities of SageMaker as a machine learning platform.
-
Introduction to Machine Learning: Understand the basics of machine learning, including supervised and unsupervised learning, algorithms, and models.
-
Data Visualization: Explore techniques for visualizing and understanding your data using tools and libraries available in SageMaker.
-
Model Training: Understand how to train machine learning models using SageMaker’s infrastructure, including distributed training and hyperparameter tuning.
Course Description:
Unlock the full potential of AWS SageMaker and become a machine learning and data science expert with our comprehensive “Mastering AWS SageMaker” course. Whether you are a beginner looking to explore the world of machine learning or a seasoned professional seeking to enhance your skills, this course is your key to mastering the AWS SageMaker platform.
Course Highlights:
-
Fundamentals of AWS SageMaker: Begin your journey by understanding the core concepts of AWS SageMaker, cloud computing, and machine learning. You’ll gain insights into the key components of SageMaker and how they fit into the machine-learning workflow.
-
Data Preprocessing and Feature Engineering: Learn how to prepare and preprocess data for machine learning, an essential step in building robust models. Explore feature engineering techniques to extract meaningful insights from your data.
-
Model Building and Training: Dive into the heart of machine learning by creating, training, and fine-tuning models on SageMaker. Understand various algorithms, optimization strategies, and hyperparameter tuning for better model performance.
-
Deploying Models: Discover how to deploy your machine learning models into production with SageMaker. You’ll explore best practices for deploying models at scale, ensuring high availability, and achieving optimal performance.
-
Automated Machine Learning (AutoML): Uncover the power of AutoML with SageMaker, allowing you to automate many aspects of the machine learning process, saving you time and effort in model development.
-
MLOps and Model Monitoring: Learn how to implement MLOps best practices and set up automated model monitoring to ensure your deployed models remain accurate and reliable.
-
Advanced Topics: Delve into advanced topics such as natural language processing (NLP), computer vision, and reinforcement learning on AWS SageMaker. Explore real-world use cases and applications.
-
Hands-On Projects: Throughout the course, you will work on practical projects and exercises, applying what you’ve learned to real-world scenarios.
-
Certification Preparation: If you’re looking to earn AWS certification in machine learning, this course provides a strong foundation to help you succeed in your certification exam.
Who Should Enroll:
-
Data scientists and analysts
-
Software developers
-
Machine learning engineers
-
Data engineers
-
IT professionals
-
Anyone interested in mastering AWS SageMaker and machine learning
Who this course is for:
- Data Scientists: Data scientists looking to expand their machine learning and data modeling skills with a focus on using AWS SageMaker for developing, training, and deploying machine learning models.
- Machine Learning Engineers: Machine learning engineers interested in mastering the tools and techniques within SageMaker to build, test, and deploy machine learning models at scale.
- Software Developers: Developers who want to integrate machine learning into their applications and are interested in using SageMaker to streamline model development and deployment.
- Business Analysts: Business analysts looking to gain insights from data using machine learning techniques and SageMaker.
- AWS Enthusiasts: Those who are already familiar with AWS services and want to explore SageMaker’s capabilities.
Reviews
There are no reviews yet.