ThesemicolonThis repository contains Ipython notebooks and datasets for the data analytics youtube tutorials on The Semicolon.
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Image Caption GeneratorA neural network to generate captions for an image using CNN and RNN with BEAM Search.
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Image CaptioningImage Captioning: Implementing the Neural Image Caption Generator with python
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Libfaceidlibfaceid is a research framework for prototyping of face recognition solutions. It seamlessly integrates multiple detection, recognition and liveness models w/ speech synthesis and speech recognition.
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VpilotScripts and tools to easily communicate with DeepGTAV. In the future a self-driving agent will be implemented.
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Actionaicustom human activity recognition modules by pose estimation and cascaded inference using sklearn API
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Up Down CaptionerAutomatic image captioning model based on Caffe, using features from bottom-up attention.
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AilearningAiLearning: 机器学习 - MachineLearning - ML、深度学习 - DeepLearning - DL、自然语言处理 NLP
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Image CaptioningImage Captioning using InceptionV3 and beam search
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Repo 2016R, Python and Mathematica Codes in Machine Learning, Deep Learning, Artificial Intelligence, NLP and Geolocation
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Getting Things Done With PytorchJupyter Notebook tutorials on solving real-world problems with Machine Learning & Deep Learning using PyTorch. Topics: Face detection with Detectron 2, Time Series anomaly detection with LSTM Autoencoders, Object Detection with YOLO v5, Build your first Neural Network, Time Series forecasting for Coronavirus daily cases, Sentiment Analysis with BERT.
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SelfdrivingcarA collection of all projects pertaining to different layers in the SDC software stack
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Ai Reading MaterialsSome of the ML and DL related reading materials, research papers that I've read
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MachineLearningImplementations of machine learning algorithm by Python 3
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CS231nMy solutions for Assignments of CS231n: Convolutional Neural Networks for Visual Recognition
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stylenetA pytorch implemention of "StyleNet: Generating Attractive Visual Captions with Styles"
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Neural Image CaptioningImplementation of Neural Image Captioning model using Keras with Theano backend
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Caption generatorA modular library built on top of Keras and TensorFlow to generate a caption in natural language for any input image.
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Image Caption Generator[DEPRECATED] A Neural Network based generative model for captioning images using Tensorflow
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Show and TellShow and Tell : A Neural Image Caption Generator
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automated-essay-gradingSource code for the paper A Memory-Augmented Neural Model for Automated Grading
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object detectorObject detector from HOG + Linear SVM framework
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MogrifierLSTMA quick walk-through of the innards of LSTMs and a naive implementation of the Mogrifier LSTM paper in PyTorch
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bearidHypraptive BearID project. FaceNet for bears.
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explainyexplainy is a Python library for generating machine learning model explanations for humans
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DLCV2018SPRINGDeep Learning for Computer Vision (CommE 5052) in NTU
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CharLSTMBidirectional Character LSTM for Sentiment Analysis - Tensorflow Implementation
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road-simulator🛣️ Easy-to-use road simulator for little self-driving cars
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scikit-activemlOur package scikit-activeml is a Python library for active learning on top of SciPy and scikit-learn.
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Learning-Lab-C-LibraryThis library provides a set of basic functions for different type of deep learning (and other) algorithms in C.This deep learning library will be constantly updated
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generative deep learningGenerative Deep Learning Sessions led by Anugraha Sinha (Machine Learning Tokyo)
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lite.ai.toolkit🛠 A lite C++ toolkit of awesome AI models with ONNXRuntime, NCNN, MNN and TNN. YOLOX, YOLOP, MODNet, YOLOR, NanoDet, YOLOX, SCRFD, YOLOX . MNN, NCNN, TNN, ONNXRuntime, CPU/GPU.
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Manhattan-LSTMKeras and PyTorch implementations of the MaLSTM model for computing Semantic Similarity.
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JChineseChessSimple Chinese Chess Game(简单的安卓中国象棋游戏)
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ar-resume-with-visual-recognitionAn augmented reality based résumé with Face recognition. The iOS app recognizes the face and presents you with the AR view that contains 3D mock face and details of your resume.
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handson-ml2핸즈온 머신러닝 2/E의 주피터 노트북
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dtsA Keras library for multi-step time-series forecasting.
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question-pairA siamese LSTM to detect sentence/question pairs.
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scikit-learnبه فارسی، برای مشارکت scikit-learn
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Attendance-PortalWe have developed a cutting-edge attendance recorder. Using face recognition, you can easily record attendance and have access to in-depth analysis and a wide range of functionalities. Because of the covid-19 pandemic, stringent guidelines have been established, and precautions must be made to minimise unnecessary physical encounters. As a resul…
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Robust-Deep-Learning-PipelineDeep Convolutional Bidirectional LSTM for Complex Activity Recognition with Missing Data. Human Activity Recognition Challenge. Springer SIST (2020)
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kdd99-scikitSolutions to kdd99 dataset with Decision tree and Neural network by scikit-learn
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Swayam-Self-Driving-CarThis is an implementation of various algorithms and techniques required to build a simple Self Driving Car. A modified versions of the Udacity Self Driving Car Simulator is used as a testing environment.
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textlyticsText processing library for sentiment analysis and related tasks
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sklearn-audio-classificationAn in-depth analysis of audio classification on the RAVDESS dataset. Feature engineering, hyperparameter optimization, model evaluation, and cross-validation with a variety of ML techniques and MLP
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