We use machine learning technology to do auto-translation. Click "English" on top navigation bar to check Chinese version.
Learn to build, train, and iterate machine learning models faster with new Amazon Web Services course
Did you know ML played a key role in reducing the number of potential COVID vaccine candidates from tens of thousands to 26 (
For experienced data scientists working with disparate data science tools, Amazon SageMaker Studio provides an integrated set of ML tools in a single interface. Our new three-day, advanced-level, virtual classroom course,
What is different about machine learning today?
The unstructured data analytics and data management market in the public cloud is expected to grow at a CAGR of 41.9% between 2021 and 2025 (
About Amazon SageMaker Studio
The respondents in the
SageMaker Studio improves data scientists’ productivity by automatically tracking and charting details related to experiments and trials, in addition to providing model debugging and profiling help with
Developing the skills needed to take advantage of these capabilities is critical to organizations migrating from on-premises machine learning to Amazon Web Services Cloud, and for customers building cloud native solutions with SageMaker.
About the three-day classroom course
You’ll learn five major time-saving skills:
- How to engineer features using built-in transformations in SageMaker Data Wrangler and share those features using
SageMaker Feature Store ; - How to build models faster using built-in algorithms,
SageMaker Autopilot , SageMaker Debugger, and automatic model tuning; - How to compare the performance of various trials associated with model training using
SageMaker Experiments , and track them inSageMaker Model Registry ; - How to identify biases in data and model using SageMaker Clarify; and,
- How to automate the model building workflow using
SageMaker Pipelines .
The course follows the ML lifecycle starting with feature engineering, progressing to model building, training, and tuning, followed by deployment, inference, and monitoring. You’ll learn eight major features of Amazon SageMaker Studio with the help of 10 labs.
In addition, Amazon Web Services instructors will use interactive sessions to walk you through SageMaker Studio User Interface (UI), SageMaker Autopilot, and
To get the most out of this course we recommend learners have one+ year of ML experience and foundational knowledge of Amazon Web Services. You can satisfy the foundational knowledge requirement by completing the
Whether you attend the class virtually or in-person, you’ll have the opportunity to ask questions, work through solutions with your peers, and get real-time feedback from accredited Amazon Web Services instructors with deep technical knowledge.
Is the Amazon Web Services Certified Machine Learning – Specialty your goal?
If you want to earn an industry-recognized credential from Amazon Web Services that validates your expertise in Amazon Web Services Machine Learning, you may want to consider the Amazon Web Services Certified Machine Learning – Specialty certification. While the Amazon SageMaker Studio for Data Scientists course explores SageMaker Studio-centered data processing, model building, training, tuning, and pipeline topics, we offer additional information to help you prepare for the
What resources are available if I want to learn more?
If you’re interested in learning more about our Amazon Web Services Training and Certification offerings for ML, download our
The mentioned AWS GenAI Services service names relating to generative AI are only available or previewed in the Global Regions. Amazon Web Services China promotes AWS GenAI Services relating to generative AI solely for China-to-global business purposes and/or advanced technology introduction.