Who should attend this AWS Associate Machine Learning Engineer Training Course?
The AWS Associate Machine Learning Engineer Training Course is perfectly suited for individuals eager to deepen their expertise in machine learning and cloud computing within the AWS ecosystem. It is particularly beneficial for:
- Data Scientists
- Machine Learning Engineers
- Cloud Architects
- Software Engineers
- IT Managers and Directors
- System Administrators
- Big Data Analysts
- AI Research Scientists
Prerequisites of AWS Associate Machine Learning Engineer Training Course
There are no formal prerequisites to attend this AWS Associate Machine Learning Engineer Training Course.
AWS Associate Machine Learning Engineer Training Course Overview
AWS, or Amazon Web Services, is a comprehensive and widely adopted cloud platform that offers over 200 fully featured services from data centres globally. Its importance lies in its vast array of tools and capabilities that allow businesses to scale and grow by providing powerful computing power, database storage, and other functionality. For organisations, this training enhances their team's ability to effectively use AWS for innovative and efficient cloud solutions, reducing operational costs and improving system scalability. For individuals, the training offers the skills to confidently utilise AWS technologies, making them invaluable assets to their teams and enhancing job performance. Lastly, for delegates, this certification opens up numerous career opportunities, as AWS skills are highly sought after in the tech industry, potentially leading to higher job security and advancement prospects.
In this AWS Associate Machine Learning Engineer Training, delegates will gain comprehensive insights into the end-to-end processes of machine learning on the AWS platform. From data preparation, model building, and training to deployment and securing machine learning solutions, the course covers essential skills for effectively harnessing the power of AWS for machine learning projects. Delegates will explore various AWS services and tools that facilitate data handling, feature engineering, model evaluation, and the deployment of machine learning models in production environments.
Course Objectives
- To understand AWS data ingestion and storage solutions
- To apply feature engineering on diverse datasets
- To develop and train machine learning models
- To evaluate models using AWS SageMaker
- To deploy models for batch and real-time processing
- To manage and monitor machine learning solutions
- To implement security best practices in AWS
After attending this training, delegates will be able to apply their knowledge to set up complete machine learning workflows on AWS. They will have the skills to choose the appropriate AWS tools for different stages of machine learning projects, from data collection and processing to training and deploying models.