Enterprise MLOps: Insights from a Lead ML Engineer

Enterprise MLOps: Insights from a Lead ML Engineer

Pragmatic AI Labs via YouTube Direct link

[00:23.600 --> .960] You know, how do you do it?

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8 of 46

[00:23.600 --> .960] You know, how do you do it?

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Enterprise MLOps: Insights from a Lead ML Engineer

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  1. 1 [00:00.000 --> .260] Hey, three, two, one, there we go, we're live.
  2. 2 [00:02.260 --> .260] All right, so welcome Simon to Enterprise ML Ops interviews.
  3. 3 [00:09.760 --> .480] The goal of these interviews is to get people exposed
  4. 4 [00:13.480 --> .680] to real professionals who are doing work in ML Ops.
  5. 5 [00:17.680 --> .360] It's such a cutting edge field
  6. 6 [00:20.360 --> .760] that I think a lot of people are very curious about.
  7. 7 [00:22.760 --> .600] What is it?
  8. 8 [00:23.600 --> .960] You know, how do you do it?
  9. 9 [00:24.960 --> .760] And very honored to have Simon here.
  10. 10 [00:27.760 --> .200] And do you wanna introduce yourself
  11. 11 [00:29.200 --> .520] and maybe talk a little bit about your background?
  12. 12 [00:31.520 --> .360] Sure.
  13. 13 [00:32.360 --> .960] Yeah, thanks again for inviting me.
  14. 14 [00:34.960 --> .160] My name is Simon Stebelena or Simon.
  15. 15 [00:38.160 --> .440] I am originally from Austria,
  16. 16 [00:40.440 --> .120] but currently working in the Netherlands and Amsterdam
  17. 17 [00:43.120 --> .080] at Transaction Monitoring Netherlands.
  18. 18 [00:46.080 --> .780] Here I am the lead ML Ops engineer.
  19. 19 [00:49.840 --> .680] What are we doing at TML actually?
  20. 20 [00:51.680 --> .560] We are a data processing company actually.
  21. 21 [00:55.560 --> .320] We are owned by the five large banks of Netherlands.
  22. 22 [00:59.320 --> .080] And our purpose is kind of what the name says.
  23. 23 [01:02.080 --> .920] We are basically lifting specifically anti money laundering.
  24. 24 [01:05.920 --> .040] So anti money laundering models that run
  25. 25 [01:08.040 --> .440] on a personalized transactions of businesses
  26. 26 [01:11.440 --> .240] we get from these five banks
  27. 27 [01:13.240 --> .760] to detect unusual patterns on that transaction graph
  28. 28 [01:15.760 --> .000] that might indicate money laundering.
  29. 29 [01:19.000 --> .520] That's a natural what we do.
  30. 30 [01:20.520 --> .800] So as you can imagine,
  31. 31 [01:21.800 --> .160] we are really focused on building models
  32. 32 [01:24.160 --> .280] and obviously ML Ops is a big component there
  33. 33 [01:27.280 --> .920] because that is really the core of what you do.
  34. 34 [01:29.920 --> .680] You wanna do it efficiently and effectively as well.
  35. 35 [01:32.680 --> .760] In my role as lead ML Ops engineer,
  36. 36 [01:34.760 --> .880] I'm on the one hand the lead engineer
  37. 37 [01:36.880 --> .680] of the actual ML Ops platform team.
  38. 38 [01:38.680 --> .200] So this is actually a centralized team
  39. 39 [01:40.200 --> .680] that builds out lots of the infrastructure
  40. 40 [01:42.680 --> .320] that's needed to do modeling effectively and efficiently.
  41. 41 [01:47.320 --> .360] But also I am the craft lead
  42. 42 [01:50.360 --> .640] for the machine learning engineering craft.
  43. 43 [01:52.640 --> .120] These are actually in our case, the machine learning engineers,
  44. 44 [01:55.120 --> .360] the people working within the model development teams
  45. 45 [01:58.360 --> .360] and cross functional teams
  46. 46 [01:59.360 --> .680] ...

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