Building a Recommender: Best Practices with Apache Mahout and Solr - Emerging Technologies 2014

Building a Recommender: Best Practices with Apache Mahout and Solr - Emerging Technologies 2014

ChariotSolutions via YouTube Direct link

What Does ML Look Like?

2 of 28

2 of 28

What Does ML Look Like?

Class Central Classrooms beta

YouTube videos curated by Class Central.

Classroom Contents

Building a Recommender: Best Practices with Apache Mahout and Solr - Emerging Technologies 2014

Automatically move to the next video in the Classroom when playback concludes

  1. 1 EMERGING TECHNOLOGIES FOR THE ENTERPRISE CONFERENCE
  2. 2 What Does ML Look Like?
  3. 3 Learn a New Language
  4. 4 What Do You See?
  5. 5 Human insight plays an important role
  6. 6 Typical Machine Learning Workflow
  7. 7 Recommendation: Widely Used Machine Learning
  8. 8 Get Useful Indicators from Behaviors
  9. 9 History Matrix: Users by Items
  10. 10 Co-occurrence Matrix: Items by Items
  11. 11 Indicator Matrix: Anomalous Co-Occurrence
  12. 12 Setting up Solr index: Item Meta-Data
  13. 13 Welcome to the Music Machine!!
  14. 14 Sample Music Log File Data
  15. 15 Offline Analysis
  16. 16 Internals of the Recommender Engine
  17. 17 Real-time recontmendations using MapR data platform
  18. 18 A Quick Simplification
  19. 19 Architectural Advantage
  20. 20 Better Long-Term Recommendations
  21. 21 Why Use Dithering?
  22. 22 Apache Mahout: Overview
  23. 23 Mahout and Scala
  24. 24 Mahout and Spark
  25. 25 Mahout and h2o
  26. 26 Roadmap: Apache Mahout 1.0
  27. 27 Join Apache Mahout
  28. 28 Learn about Apache Mahout

Never Stop Learning.

Get personalized course recommendations, track subjects and courses with reminders, and more.

Someone learning on their laptop while sitting on the floor.