Amazon Forecast Samples
Workshops, Notebooks and examples on how to learn and use various features of Amazon Forecast
Announcements and New Service Features
- Learn in a workshop
- Building a Strong Time-Series ML Model: AutoPredictor
- New Feature: Forecast with Cold-Start Items
- New Feature: What-if Analysis
- New Feature: Custom Time Alignment Boundary
- New Feature: Forecast on Selected Time-Series
- New Feature: Predictor Monitoring
- No Code Guide to Automate Forecast for PoC and production workloads
- Python developers: A Quick Start Guide
Introduction and Best Practices
Please visit our growing library which serves as a guide for onboarding data and learning how to use Amazon Forecast.
MLOps: Run a proof of concept (PoC) and learn how to automate production workloads
The purpose of this guidance is to provide customers with a complete end-to-end workflow that serves as an example -- a model to follow. As delivered, the guidance creates forecasted data points from an open-source input data set. The template can be used to create Amazon Forecast Dataset Groups, import data, train machine learning models, and produce forecasted data points, on future unseen time horizons from raw data. All of this is possible without having to write or compile code. Get Started Here
Notebooks
Here you will find examples how to use Amazon Forecast Python SDK to make API calls, with manual waits between API calls. Primary audience is Developers, MLOps Enginners, and Integration Partners who need to see how to put forecasts into production.
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Getting started notebooks:
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Advanced folder contains notebooks to show API calls for more complex tasks:
License Summary
This sample code is made available under a modified MIT license. See the LICENSE file.