DataHour: Deploying Deep Learning model to production using FastAPI & Docker
DataHour: Deploying Deep Learning model to production using FastAPI & Docker
05 Aug 202213:08pm - 05 Aug 202214:08pm
DataHour: Deploying Deep Learning model to production using FastAPI & Docker
About the Event
Deploying a model to production is an ART. From evaluating the right fitted model for the use case to choosing a model that has low latency, is reliable and handles edge-cases are all the decisions a data science expert makes. In this DataHour, Shahebaz will speak regarding best practices and have a walk-through of deploying a deep learning model in production.
Prerequisites: Enthusiasm for learning Data Science and Deep Learning
- Best articles get published on Analytics Vidhya’s Blog Space
- Best articles get published on Analytics Vidhya’s Blog Space
- Best articles get published on Analytics Vidhya’s Blog Space
- Best articles get published on Analytics Vidhya’s Blog Space
- Best articles get published on Analytics Vidhya’s Blog Space
Who is this DataHour for?
- Best articles get published on Analytics Vidhya’s Blog Space
- Best articles get published on Analytics Vidhya’s Blog Space
- Best articles get published on Analytics Vidhya’s Blog Space
About the Speaker
Shahebaz is a Kaggle Grandmaster and Data Scientist at DataRobot. He has experience building accurate, value-generating models that are scalable, creating an impact on millions of users with expertise in building state-of-the-art models from the latest research, creative feature engineering, and building continuous training pipelines with live model monitoring in production.You can follow him on Linkedin, Kaggle and Github.
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Registration Details
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