TensorFlow neural style transfert computed on GPU
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Updated
Dec 7, 2020 - Python
TensorFlow neural style transfert computed on GPU
Parallel Computations on GPU - Project - N-Body-OpenACC
Custom YOLO V5 Model .Deployed model .API enabled.
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Introduction to PyCuda GPU programming.
GPU & distributed support for SciPy, scikit-learn, scikit-image, and beyond
Project building GPU rack, starting with NVidida Geforce 1080
A general framework to analyse dataset that cannot be fit into memory in one go
Parallel Gravitational N-Body Simulation using CUDA
A library for writing and executing OpenCL kernels directly in Python
Meetup.com analysis using Kinetica platform
About The process involves measuring the carbon emissions generated from deep learning training. If a server's training process produces high carbon emissions, we transfer the workload to servers with lower carbon emissions. Ultimately, this method aims to achieve a carbon net-zero state.
Clustering of Spanish Wikipedia articles.
OpenCL heatmap tile generator (a semi-successful attempt at learning OpenCL)
HTCondor configuration for GPU jobs
Object Tracking of grayscale objects using CUDA
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