15+ Machine/Deep Learning Projects in Ipython Notebooks
-
Updated
Apr 3, 2020 - Jupyter Notebook
15+ Machine/Deep Learning Projects in Ipython Notebooks
دوره جامع یادگیری عمیق با Tensorflow و Keras
Beginner-friendly collection of Python notebooks for various use cases of machine learning, deep learning, and analytics. For each notebook there is a separate tutorial on the relataly.com blog.
Jupyter Notebook for Human Activity Recognition (HAR) with 1D Convolutional Neural Network in Python and Keras
TensorFlow 2.X hakkında (Türkçe) öğretici notebooklar paylaşıyorum. Repoyu yararlı bulursanız yıldızlayarak destek olabilirsiniz :)
Machine Learning Engineer Nanodegree portfolio, which includes projects and their notebooks/reports.
Jupyter notebooks for practicing Python data analysis and visualization with Matplotlib, NumPy, Pandas, SciPy, and Seaborn.
Exporting the Mask RCNN with TF-Serving (REST, GRPC, Notebooks provided)
Bird Classifier developped in tensorflow using pre-trained model from Tensorflow Hub and running on Google Colab
Some useful examples of Deep Learning (.ipynb)
A collection of deep learning notebooks.
Notebooks for colab that use the TPU
This repository contains the jupyter notebooks for the custom-built DenseNet Model build on Tiny ImageNet dataset
iPython notebook for training a Keras model on the CIFAR-10 dataset
This repository contains the Jupyter Notebook for the InceptionV3 CNN Model trained on the Stanford Dogs Dataset.
The repository contains the Jupyter Notebook that perform semantic segmentation using the famous U-Net. The encoder of the U-Net is replaced with the pretrained encoder.
This is a repository with various classifier written in jupyter notebook that works on hand written digits images.
This repository contains the jupytor notebook code for digit recognition using machine learning.
C3AE: Age Estimation. Implemented in Notebook(Google Colab) using keras.
Add a description, image, and links to the keras-tensorflow topic page so that developers can more easily learn about it.
To associate your repository with the keras-tensorflow topic, visit your repo's landing page and select "manage topics."