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2,285 public repositories
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A python library built to empower developers to build applications and systems with self-contained Computer Vision capabilities
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Dec 4, 2021
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Python
🐗 🐻 Deep Learning based Python Library for Stock Market Prediction and Modelling
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Jan 17, 2021
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Python
A high-level machine learning and deep learning library for the PHP language.
A neural network library built in JavaScript
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Jul 7, 2017
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JavaScript
Machine Learning Platform and Recommendation Engine built on Kubernetes
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Apr 12, 2020
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Java
List of papers, code and experiments using deep learning for time series forecasting
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Dec 27, 2021
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Jupyter Notebook
MLBox is a powerful Automated Machine Learning python library.
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Aug 25, 2021
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Python
RNN based Time-series Anomaly detector model implemented in Pytorch.
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Aug 2, 2021
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Python
Header-only library for using Keras (TensorFlow) models in C++.
🤖 MatLab/Octave examples of popular machine learning algorithms with code examples and mathematics being explained
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Jul 8, 2020
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MATLAB
🚘 "MORE THAN VEHICLE COUNTING!" This project provides prediction for speed, color and size of the vehicles with TensorFlow Object Counting API.
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Sep 11, 2021
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Python
Deep neural network framework for multi-label text classification
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Apr 8, 2020
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Python
Real-time object detection on Android using the YOLO network with TensorFlow
Introducing neural networks to predict stock prices
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Aug 3, 2019
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Python
Deep Learning and Machine Learning stocks represent a promising long-term or short-term opportunity for investors and traders.
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Dec 28, 2021
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Jupyter Notebook
This repository helps you understand python from the scratch.
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Oct 2, 2021
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Jupyter Notebook
Fast webpages for all browsers.
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Oct 1, 2020
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JavaScript
Lecture notes, tutorial tasks including solutions as well as online videos for the reinforcement learning course hosted by Paderborn University
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Jul 14, 2021
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Jupyter Notebook
FBP项目全称FootBallPrediction,历经9个月完成的足球比赛预测项目。项目结合大数据+机器学习,不断摸索开发了一个程序。程序根据各大公司赔率多维度预测足球比赛结果(包含胜和不胜)。机器学习用的是自己建立的“三木板模型”算法,已在国家期刊发表论文并被万方数据库收录,详见_ML_文件。目前准确率可达80%。该项目在自己创建的微信群里已经吸引了很多人,附件为群讨论截图,并且每天均有部分人根据预测结果参考投注竞彩,参考的人都获得了相应的收益。 现在想通过认识更多的有识之士,一起探索如何将项目做大做强,找到合伙人,实现共赢。希望感兴趣的同仁联系本人,微信号acredjb。公众号AI金胆(或AI-FBP),每天都有程序预测的足球比赛。程序优势请看Advantages和README文件。程序3.0版本:(第三轮目前13中12) 8月10日:13让负(正确) 8月11日:27让负(正确) 8月12日:11让负(正确) 8月13日:6胜(不正确) 8月14日:25让负(正确) 8月15日:无预测 8月16日:1胜(正确) 8月17日:6让负(正确) 8月18日:16胜(正确) 8月19日:34让负(正确) ... 1.0版本(第一轮为11中9) 2.0版本(第二轮13中11).
Estimated Marginal Means and Marginal Effects from Regression Models for ggplot2
Tool that predicts the outcome of a Dota 2 game using Machine Learning
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Aug 25, 2021
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Python
Curated Tensorflow code resources to help you get started with Deep Learning.
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Sep 25, 2017
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Python
Regression, Scrapers, and Visualization
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Oct 10, 2021
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Jupyter Notebook
Mathematica implementations of machine learning algorithms used for prediction and personalization.
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Dec 22, 2021
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Mathematica
Applying Machine Learning and AI Algorithms applied to Trading for better performance and low Std.
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Oct 29, 2019
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Python
Temporal Causal Discovery Framework (PyTorch): discovering causal relationships between time series
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Oct 1, 2021
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Jupyter Notebook
An Android app for viewing and predicting the latest World Rugby rankings 🏉
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Jul 22, 2021
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Kotlin
Personal notes about scientific and research works on "Decision-Making for Autonomous Driving"
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