This instructor-led hands-on lab will guide you through the data-centric approach for machine learning, along with the benefits of acquiring relevant data, evaluating and using this data to build ML models.
You’ll learn how to:
- Leverage existing Snowflake data and enrich it with the Snowflake Data Marketplace
- Use Snowflake’s Zero Copy Cloning to maintain ML Training Data Sets Use SageMaker Data Wrangler with Snowflake as a data source
- Perform GUI-based feature engineering
- Analyse data sets for bias that can impact ML models
- Perform quick analysis of features (data sets) for impact and relevancy on ML Models
- Initiate steps for deploying the ML pipeline and integrating ML inference with Snowflake
Lab Prerequisites:
- Snowflake Enterprise Account on AWS with ACCOUNTADMIN access – Snowflake Trial Account will work
- AWS Account with admin access – (AWS Credits will be provided)
- In the AWS account create a VPC and subnets in the region similar to the Snowflake account
講演者
-
Andries Engelbrecht
Partner Solutions Architect, Snowflake
-
Dylan Tong
Global Tech Lead, Decision Intelligence, AWS