MLflow example to track Parameters and Metrics by using MLproject Functionality
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Updated
Feb 8, 2024 - Jupyter Notebook
MLflow example to track Parameters and Metrics by using MLproject Functionality
The repository contains the materials discussed in part 1 of the Image Classification with YonoHub & Tensorflow V2.0 Series
We are going to use CPU for Extract , Transform and Load, and GPU for training model parallelly
Image classification using tf.data and tf.keras API
Examples demonstrating dataset api capabilities
You can freely purchase the block from:
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