Building Advanced Neural Networks with Tensorflow: A Deepdive
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Updated
Sep 22, 2024 - Jupyter Notebook
Building Advanced Neural Networks with Tensorflow: A Deepdive
Utilities for easy use of custom losses in CatBoost, LightGBM, XGBoost.
This code is a custom implementation of the Supervised Contrastive Learning paper (https://arxiv.org/abs/2004.11362).
Multi-task deep learning for predicting house price and category using PyTorch and Lightning
This repository contains code used for the numerical experiments in the Supervised Learning for Integrated Forecasting and Inventory Control paper by Joost F. van der Haar, Arnoud P. Wellens, Robert N. Boute and Rob J.I. Basten.
Facial Landmark Detection Using Knowledge Distillation-Based Neural Networks
An HR predictive analytics tool for forecasting the likely range of a worker’s future job performance using multiple ANNs with custom loss functions.
Detect keypoints at a football pitch
custom loss functions
Custom Loss Functions and Evaluation Metrics for XGBoost and LightGBM
Used the Functional API to built custom layers and non-sequential model types in TensorFlow, performed object detection, image segmentation, and interpretation of convolutions. Used generative deep learning including Auto Encoding, VAEs, and GANs to create new content.
Neural Style Transfer implementation for images and videos using Tensorflow2.
Simulation of autonomous driving by deep learning with GPU accelerated computing on Google Cloud. Augmentation and custom loss-functions allow self-driving vehicles to maintain lanes, for single trips around virtual tracks, in speed-controlled environments.
Deep-Learning approach for generating Fair and Accurate Input Representation for crime rate estimation in continuous protected attributes and continuous targets.
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