Detecting Respiratory Diseases via Audio samples using Deep Learning and Librosa
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Updated
Nov 23, 2022 - Jupyter Notebook
Detecting Respiratory Diseases via Audio samples using Deep Learning and Librosa
The TF Gym repo shares daily TensorFlow projects on ML/DL, including RL, providing educational resources for beginners and practical examples for experienced users with detailed instructions for applications like image classification and text generation.
Focused on advancing credit card fraud detection, this project employs machine learning algorithms, including neural networks and decision trees, to enhance fraud prevention in the banking sector. It serves as the final project for a Data Science course at the University of Ottawa in 2023.
Machine Learning - - Supervised, Unsupervised, and deep learning. Processing data for features, training models, assess performance, and tune parameters for better performance. In the process, you'll get an introduction to natural language processing, image processing, and popular libraries such as Spark and Keras.
poverty prediction and analysis
A system that uses deep learning LSTM model to predict the price increase or decrease of one or more stocks for the next three months.
Image Semantic Segmentation
This repo introduces word embeddings. It contains complete code to train word embeddings from scratch on a small dataset.
templates of keras official pretrained model instances
Fashion Recommendation System using Deep Learning
Optimization of Neural Network using Keras Tuner
A Fraud Prediction Model
Given the parameters such as - Year of sale of the house, The age of the house at the time of sale, Distance from city center, Number of stores in the locality, The latitude, The longitude this project is to predict the price of the house.
Code to convert keras model to caffe2 model
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