Who should attend this Amazon SageMaker Training Course?
The Amazon SageMaker Training Course is designed for individuals who want to gain an understanding of machine learning and deploy the same for practical applications. The Amazon SageMaker Training Course can benefit professionals such as:
- Data Scientists
- Machine Learning Engineers
- Data Engineers
- Data Analysts
- Cloud Architects
- Financial Analysts
- Technical Managers
Prerequisites of the Amazon SageMaker Training Course
There are no formal prerequisites for this Amazon SageMaker Course. However, a basic understanding of machine learning can be beneficial for the delgates.
Amazon SageMaker Training Course Overview
Amazon SageMaker,a pivotal service within the AWS (Amazon Web Service) cloud, revolutionizes machine learning model development, training, and deployment. This training provides an in-depth exploration of Amazon SageMaker, empowering participants with the skills to harness the potential of machine learning in AWS. Understanding SageMaker is crucial as it enables developers to build and train machine learning models for predictive or analytical applications.
Professionals specializing in machine learning, data science, and cloud computing are well-positioned to benefit significantly from mastering Amazon SageMaker. This course is particularly relevant for developers, data engineers, and AI practitioners who aim to enhance their proficiency in building and deploying machine learning models using SageMaker.
This 2-days training by The Knowledge Academy offers a comprehensive learning experience, covering essential aspects such as running training jobs, hyperparameter tuning, model packaging, and reinforcement learning with Amazon SageMaker RL. Delegates will gain hands-on experience with popular machine learning frameworks like Apache Spark, TensorFlow, and Apache MXNet.
Course Objectives
- To run a training job, hyperparameter tuning job, and create a model using Amazon SageMaker
- To become familiar with machine learning frameworks, including Apache Spark, TensorFlow, and Apache MXNet
- To gain in-depth knowledge of reinforcement learning with Amazon SageMaker RL
- To understand the use of Jupyter notebooks and their role in collaborative and interactive machine learning development
- To learn how to protect data at rest and in transit using encryption in Amazon SageMaker
- To acquire practical skills for deploying machine learning models using Amazon SageMaker
Upon completing this course, delegates will benefit by gaining expertise in Amazon SageMaker, positioning themselves as proficient contributors to machine learning projects in AWS. The practical knowledge acquired during the training empowers participants to leverage SageMaker effectively, enhancing their capabilities in building, training, and deploying machine learning models for real-world applications in the cloud.