Horovod - Distributed Deep Learning for Reliable MLOps

Horovod - Distributed Deep Learning for Reliable MLOps

Linux Foundation via YouTube Direct link

Model Training

12 of 24

12 of 24

Model Training

Class Central Classrooms beta

YouTube videos curated by Class Central.

Classroom Contents

Horovod - Distributed Deep Learning for Reliable MLOps

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

  1. 1 Intro
  2. 2 Early Adoption of Horovod
  3. 3 Deep Learning Refresher
  4. 4 Distributed Deep Learning
  5. 5 Early Distributed Training - Parameter Servers
  6. 6 Parameter Servers - Tradeoffs
  7. 7 Horovod Technique: Allreduce
  8. 8 Benchmarking
  9. 9 Deep Learning in Research
  10. 10 Deep Learning in Production
  11. 11 Feature Store
  12. 12 Model Training
  13. 13 Preprocessing
  14. 14 Spark ML Pipelines
  15. 15 Petastorm: Data Access for Deep Learning Training Challenges of Training on Large Datasets
  16. 16 Spark 3.0: Resource Aware Scheduling
  17. 17 What if my Spark cluster doesn't have GPUs? Horovod Lambda - Run data processing on CPUs with Spark
  18. 18 Online Prediction
  19. 19 Neuropod: Out-of-Process Execution
  20. 20 Workflow Authoring Can we ideate, define, evaluate and deploy a Deep Learning model all within a single script?
  21. 21 Feature Engineering
  22. 22 Model Construction
  23. 23 Model Deployment
  24. 24 Elastic Horovod: Control Flow

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.