Nimrod Shabtay — Deployment and Monitoring at Nanit
A look at how Nimrod and the team at Nanit are building smart baby monitor systems, from data collection to model deployment and production monitoring.
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Nimrod Shabtay is a Senior Computer Vision Algorithm Developer at Nanit, a New York-based company that's developing better baby monitoring devices.
Connect with Nimrod:
LinkedIn: https://www.linkedin.com/in/nimrod-shabtay-76072840/
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Transcript:
http://wandb.me/gd-nimrod-shabtay
Timestamps:
0:00 Sneak peek, intro
0:50 The story and models behind Nanit
8:23 Deploying and evaluating models
14:15 The importance of good data collectio…
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Chapters (8)
Sneak peek, intro
0:50
The story and models behind Nanit
8:23
Deploying and evaluating models
14:15
The importance of good data collection
17:25
Production monitoring and preparing to deploy
22:48
On new ideas and research avenues
25:27
Insights into baby sleep
30:46
Building good processes for model deployment
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