Vaishnavi Sonawane
MLOps Engineer
Ahmedabad, India
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Vaishnavi is a MLOps Engineer at Intuitive.Cloud. As a MLOps Engineer, she helps enterprises bridge the data science to production gap and create data-driven value.
She is the lead of Pie & AI (powered by DeepLearning.AI) ~ Ahmedabad & has also led a Google Developer Student Clubs Lead during her undergraduate degree and she believes in upholding the GDSC motto - Learn. Share. Grow.
When she is not fighting neural netherlords with her caffienated code, you will find her writing poetry or on a foodventure (current favorite? Japanese! Give me a ramen anyday)
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ALL THINGS ML... Literally...Oversimplified
"ALL THINGS ML... Literally... Oversimplified" ~ A challenge that we have taken upon us and are extending it to you !
DISCLAIMER: 3 words, Useful - Fun - AI. We would like to stress on the useful part. We are extremely cautious about our sessions not ending up being something you can read in a blog in 5 minutes but you would have to sit through an hour in the event for the same. Exhausting, we relate ☹️
This session is to encourage everyone to start asking the right questions and cut through the hype and the black box approaches when it comes to -
⭐ ML Research vs Applied ML: You NEED to know the difference
⭐ Got a problem?: Make it a problem ML can solve
⭐ Critical Thinking: Got a problem ML can solve? Great! Now how to solve it. HOW TO ALIGN YOUR OBJECTIVES WITH YOUR LOSS FUNCTIONS?
⭐ Data Engineering: Sources, Formats, Models… How to piece it all together in the CORRECT CONTEXT?
⭐ Training Data: Where does it come from? Kaggle? Well yes.. But No. A discussion on the critical thinking and techniques required to create training datasets and avoid disasters taking real-life examples of Language Models & Self-Driving Cars.
⭐ Data Labeling: A sneak-peek with jargon you do need to be aware of
⭐ Dealing with Class Imbalance: Data-level methods and algorithm-level methods
⭐ Hands-On MLOps with PyCaret, MLFlow & DagsHub: Covers everything we learnt so far and also includes the rest - Data & Model versioning, Experiment tracking, Feature Engineering, Model Selection, Model Training, Model Deployment
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