
Source: AWS
Published: November 2019
AWS Machine Learning Explained (with examples)
Circulated: December 16, 2019
SageMaker: Build, train, and deploy machine learning models
Comprehend: Find insights and relationships in text
- Example: find negative customer interactions with customer service agents 
Forecast: Highly accurate time-series forecasts
- Example: predict the future sales of a raincoat by looking only at its previous sales data 
Lex: Convert speech to text and recognize the intent
- Example: when Alexa listens to your request 
Personalize: Individualize recommendations for customers
- Example: Amazon.com product recommendations 
Polly: Convert text to speech and sound like a human voice
- Example: when Alexa responds to your request 
Rekognition: Identify objects, people, text, scenes, and activities in images and videos
- Example: get a person’s predicted gender, age range, glasses, and facial hair from an image 
Textract: Extract text from scanned documents
- Example: digitize paper healthcare records 
Transcribe: Turn an audio file into a text file
- Example: generate captions to display with a video 
Translate: Translate text between languages
- Example: make product reviews accessible to global customers 

