Agile Data Science - Achieving Salesforce-Scale Machine Learning in Production

Agile Data Science - Achieving Salesforce-Scale Machine Learning in Production

Association for Computing Machinery (ACM) via YouTube Direct link

Automated Pipeline

29 of 53

29 of 53

Automated Pipeline

Class Central Classrooms beta

YouTube videos curated by Class Central.

Classroom Contents

Agile Data Science - Achieving Salesforce-Scale Machine Learning in Production

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

  1. 1 Introduction
  2. 2 Why are AI Machine Learning and Data Science still out of reach
  3. 3 What does it mean to move beyond giving your data scientists access
  4. 4 Salesforces approach to AI
  5. 5 Agenda
  6. 6 Building ML apps
  7. 7 No company is building one app
  8. 8 We need a third data scientist
  9. 9 Different degrees of skill set
  10. 10 Different data sizes
  11. 11 Classification
  12. 12 Language
  13. 13 Customization
  14. 14 Trust
  15. 15 Fixing leaks
  16. 16 Traditional AI process
  17. 17 Automation
  18. 18 Data Science Journey
  19. 19 Building Models
  20. 20 Getting Access to Data
  21. 21 Shipping Your App
  22. 22 Everyone Needs a Data Scientist
  23. 23 Data Scientists and Software Developers
  24. 24 Data Scientist
  25. 25 Building a Platform
  26. 26 Working Together
  27. 27 Finding opportunities for reuse
  28. 28 Transmogrify
  29. 29 Automated Pipeline
  30. 30 Data Sampling
  31. 31 Text Data
  32. 32 Stop Words
  33. 33 Learning Opportunities
  34. 34 Model Selection
  35. 35 The Job is Never Done
  36. 36 Metrics to Drive Agility
  37. 37 What Happens After Deployment
  38. 38 Minimum Viable Product
  39. 39 Agile Process
  40. 40 Agile Data Science
  41. 41 Monitoring
  42. 42 Model Monitoring
  43. 43 Investigate
  44. 44 Backlog
  45. 45 Focus
  46. 46 Key takeaways
  47. 47 Join the open source community
  48. 48 Thank you
  49. 49 Getting started in data science
  50. 50 ACM resources
  51. 51 Open source components
  52. 52 Platform secured experimentation
  53. 53 Latency considerations

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.