ML Exam: 7 - End-to-End Process
ML Exam: 7 - End-to-End Process 1. Define Business Problem and Data Objectives Pick core metric to optimize (e.g., churn rate, fraud detection). See if requires supervised, unsupervised, or reinforcement learning. Map out data availability, regulatory compliance boundaries, and project success metrics. 2. Data Ingestion and Collection Aggregate raw structured, semi-structured, or unstructured data into cloud storage. Use Amazon S3 as the centralized data lake landing zone. Import streaming data in real time using Amazon Kinesis . Extract relational database data using AWS Glue or AWS DMS . 3. Data Cleansing and Preparation Clean raw datasets by handling missing values, filtering duplicates, and removing outliers. Transform features using Amazon SageMaker Data Wrangler to visually profile data quality. Standardize, normalize, and tokenize data text or resize images for computer vision. Store fully processed, reusable data features in the Amazon SageMaker Feature S...