Binary and Categorical Focal loss implementation in Keras.
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Updated
Nov 21, 2022 - Python
Binary and Categorical Focal loss implementation in Keras.
A loss function for categories with a hierarchical structure.
Kaggle Machine Learning Competition Project : In this project, we will create a classifier to classify fashion clothing into 10 categories learned from Fashion MNIST dataset of Zalando's article images
Two ensemble models made from ensembles of LightGBM and CNN for a multiclass classification problem.
This project is about building a artificial neural network using pytorch library. I am sharing the code and output for my project.
Computer Vision and Deep Learning
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A neural network model based on TensorFlow that predicts shape of brick
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Understanding the performance of different neural network architectures on the MNIST handwritten digits dataset, implemented in Tensorflow.
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Deep Learning Nanodegree Project : Given an image of a dog, the algorithm will identify an estimate of the canine’s breed. If supplied with an image of a human, the code will identify the resembling dog breed.
Predict whether a DonorsChoose.org project proposal submitted by a teacher will be approved.
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