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Hi Clear Ml Community, I’M Interested In Technical Deep Dive Of Clear Ml Feature Store. I Know This Is An Enterprise Offering, But Would Be Good To See Future Perspective Of Enterprise Package On At Least A Level Of Architecture Of Fs. Thanks!


My favourite is the one that https://www.youtube.com/watch?v=E8839ENL-WY , because it touches the higher level picture of how feature store helps Data Scientists to progress further towards deploying model to production and continuously monitor its performance rather then too deep tech dive into challenges of having one place to avoid feature training serving skew.

  
  
Posted 3 years ago
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3 years ago
one year ago