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Recommendation-Engine-with-KNN-algorithm
Collaborative Filtering , Fuzzy LogicWeather-App
Node.js ProjectCNN-Classification
CNN Architecture- using Data Augmentation & Classify ImagesTensorboard-Tutorial
It gives the Visualization of whole model- Graphs, Computational graphs, Histograms , Distributions and Metric Evaluation too.Neural-Style-Transfer
Amazing Loss Function IntuitionSTOCK--Price-Prediction
Prediction of Stock Price using LSTMConvolutional-Autoencoder
Fashion MNIST DatasetCLAHE
Contrast limited adaptive histogram equalization (CLAHE)Movie-Recommendation-System
Movie Recommendation System using Top 10 recommended movies (Content based Filtering) using NLPImage-Denoising-Autoencoder
Keras Denosing Autoencoder on MNIST Dataset using Conv2DTranspose (additional-tool)COMPUTER-VISION--Practice
All practice modulesImage-Operations-and-Edge-Filters
Channelising and basic conversions between the 3 (RGB) channelsMovie-Recommender-System--LightFM
Movie Recommender system using LightFM libraryTime-Series-Forecasting-
Practice ModelHAR
Human Activity RecognitionCOVID-19-Project
Advanced Visualizations of World Wide spread of Novel Corona Virus using World Map tracking for various countries - India, Italy , South Korea and China(Wuhan)Tuner-with-Fashion-MNIST
Using Tuner Search for Hyperparameter OptimisationStock-Sentiment-Analysis
NLP based analysis of Kaggle dataset: Stock-HeadlinesNatural-Language-Processing
All the features of NLPLSTM--1
Kaggle Dataset PracticeDigital-Image-Processing-
Doing Various Techniques.SMS-Spam-Classifier-
Stack: NLP, Naive Bayer Classifier | Accuracy : 98.6%Spam-Classifier-APP
ML app with FlaskFaceNet-Model
TestingTweet-Sentiment-Analysis
Tweet Sentiment AnalysisChurn-Model
Accuracy of 86% predicting whether the customer continues with the bank or not based on various factors and transactions using XGBOOST (RandomisedSearchCV)UNet-Autoencoder
U-Net is a convolutional neural network that was developed for biomedical image segmentation at the Computer Science Department of the University of Freiburg, Germany. The network is based on the fully convolutional network[2] and its architecture was modified and extended to work with fewer training images and to yield more precise segmentationsVariational-Autoencoder
Great Article for Reference: https://www.machinecurve.com/index.php/2019/12/30/how-to-create-a-variational-autoencoder-with-keras/Devanagari-Character-Recognition
The DHCD (Devnagari Character Dataset) of handwritten digits. It consists 46 characters from เค to เคเฅเค and เฅฆ to เฅฏ.Love Open Source and this site? Check out how you can help us