Getting Started with Streaming Analytics
Copyright © 2012-2017 Hortonworks, Inc.
Except where otherwise noted, this document is licensed under Creative Commons Attribution ShareAlike 4.0 License |
2017-06-09
Contents
- 1. Building an End-to-End Stream Application
- 2. Prepare Your Environment
- 3. Creating a Dataflow Application
- 4. Creating a Stream Analytics Application
- Create a Service Pool and Environment
- Create Your First Application
- Creating and Configuring the Kafka Source Stream
- Connecting Components
- Joining Multiple Streams
- Filtering Events in a Stream using Rules
- Using Aggregate Functions over Windows
- Implementing Business Rules on the Stream
- Transforming Data using a Projection Processor
- Creating Alerts with Notifications Sink
- Streaming Alerts to an Analytics Engine for Dashboarding
- Streaming Violation Events to an Analytics Engine for Descriptive Analytics
- Streaming Violation Events into a Data Lake and Operational Data Store
- 5. Deploy an Application
- 6. Stream Operations
- 7. Advanced: Doing Predictive Analytics on the Stream
- Logistical Regression Model
- Export the Model into SAM's Model Registry
- Enrichment and Normalization of Model Features
- Setting up your Enrichment Store and Building Custom UDFs and Processors
- Upload Custom Processors and UDFs for Enrichment and Normalization
- Scoring the Model in the Stream using a Streaming Split Join Pattern
- Streaming Split Join Pattern
- Score the Model using the PMML Processor and Alert
- 8. Creating Visualizations Using Superset