prediction
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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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Jul 3, 2022 - Python
List of papers, code and experiments using deep learning for time series forecasting
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Jun 28, 2022 - Jupyter Notebook
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Jan 17, 2021 - Python
A high-level machine learning and deep learning library for the PHP language.
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Jul 9, 2022 - PHP
A neural network library built in JavaScript
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Mar 16, 2022 - JavaScript
Machine Learning Platform and Recommendation Engine built on Kubernetes
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Apr 12, 2020 - Java
MLBox is a powerful Automated Machine Learning python library.
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Jun 21, 2022 - Python
Header-only library for using Keras (TensorFlow) models in C++.
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Jun 28, 2022 - C++
RNN based Time-series Anomaly detector model implemented in Pytorch.
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Aug 2, 2021 - Python
Lecture notes, tutorial tasks including solutions as well as online videos for the reinforcement learning course hosted by Paderborn University
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Jun 15, 2022 - Jupyter Notebook
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Jul 8, 2020 - MATLAB
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Sep 11, 2021 - Python
When you use Crane, you may have some questions.
Many questions are in common.
We will select some questions for the FAQ page on the docs web.
If the item is checked, that means that question is added to the FAQ page.
Keep docs up to date as possible.
Install
- CRD conflict -
v1beta1.custom.metrics.k8s.io
helm install crane -n crane-s
Deep neural network framework for multi-label text classification
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Apr 8, 2020 - Python
BUG:operator数组越界异常
midped_batch = []
for idx in range(len(feed_batch)):
predict_res, error_code, error_info = func_timeout.func_timeout(
self._timeout,
self.process,
args=([feed_batch[idx]], typical_logid))
#midped_batch[idx].append
Real-time object detection on Android using the YOLO network with TensorFlow
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Sep 24, 2021 - C++
Deep Learning and Machine Learning stocks represent a promising long-term or short-term opportunity for investors and traders.
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Jul 8, 2022 - Jupyter Notebook
This repository helps you understand python from the scratch.
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Jun 4, 2022 - Jupyter Notebook
Introducing neural networks to predict stock prices
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Aug 3, 2019 - Python
Deep learning time series prediction with TensorFlow - TFTS
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May 26, 2022 - Python
Fast webpages for all browsers.
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Oct 1, 2020 - JavaScript
Estimated Marginal Means and Marginal Effects from Regression Models for ggplot2
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May 23, 2022 - R
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).
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May 30, 2022
Tool that predicts the outcome of a Dota 2 game using Machine Learning
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Jul 6, 2022 - Python
Regression, Scrapers, and Visualization
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Jun 21, 2022 - Jupyter Notebook
Curated Tensorflow code resources to help you get started with Deep Learning.
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Sep 25, 2017 - Python
Mathematica implementations of machine learning algorithms used for prediction and personalization.
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Jun 22, 2022 - Mathematica
Temporal Causal Discovery Framework (PyTorch): discovering causal relationships between time series
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Oct 1, 2021 - Jupyter Notebook
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Collection of follow-ups to #5827. These can/should be broken out into individual PRs. Many are relatively straightforward and would make a good first PR.
General
sm.tsa.arima.ARIMAworks withfix_params(it should fail except when the fit method isstatespace