A combined LSTM and LightGBM framework for improving deterministic and probabilistic wind energy forecasting
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Updated
Jun 1, 2020 - Python
A combined LSTM and LightGBM framework for improving deterministic and probabilistic wind energy forecasting
Runner-up team (2nd place) in AI4VN2022: Air Quality Forcasting Challenge
weatheril is an unofficial [IMS](https://ims.gov.il) (Israel Meteorological Service) python API wrapper.
[TOIS] "Privacy-Preserving Individual-Level COVID-19 Infection Prediction via Federated Graph Learning"
StockLLM: A Stock Analyzer with Comprehensive LLM Insights
OmniEcon Nexus is an open-source, high-performance simulation engine for global micro/macro-economic analysis. Using deep learning, agent-based modeling, and optimization, it supports 5M agents for forecasting, risk analysis, policy simulation, and portfolio management. Built for governments, researchers, and developers.
An implementation of AE LSTM based. We test our architecture on several tasks as reconstructing synthetic time series, s&p 500 stocks, and forecasting s&p 500 stocks based on the decoded information (also known as latent space) features we extract from the AE
forecasting time series Singapore PSI (pm2.5) 2016-2019
This project involves developing and testing a trading model designed to predict stock prices and evaluate trading strategies. The core of the project includes building and training a LSTM based model for time series forecasting in addition to a RL model, evaluating its performance, and visualizing the results.
The Alpha Alternator is a novel generative model designed for time-dependent data, dynamically adapting to varying noise levels in sequences.
This Model is Base On Halt & Winter Algorithm.This Model is Forecast About Seasonal Data.
Multi-agent scientific analysis platform. It creates experiments, tries different methods, evaluates results, searches relevant literature, builds custom tools when needed, and generates detailed reports and presentaions.
AgroNomics is a machine learning web application that forecasts crop prices using historical agricultural data, seasonal trends, and region-specific variables. Built with Flask and scikit-learn, it provides nationwide coverage with state- and district-level insights, enabling farmers to make accurate, data-driven market decisions.
A small script enable easy training for XGBoost forecasting model on any time series data
CryptoForecasting flask project aimed at predicting cryptocurrency prices for Bitcoin (BTC) and Ethereum (ETH) using machine learning and deep learning.
APMLV ( i.e. Automated Prediction and Management of Logical Volumes ) is a project that leverages deep learning and automation to optimize the management of logical volumes resources
A light-code version of Time-LLM based on GPT2
Streamlit platform for hotel management with AI-powered forecasting.
The random walk application receives a number of steps from the user and simulates a walk in a random direction with equal step sizes (one unit). Following each run, a histogram plots the distances from the origin for each run, and the expected value can be evaluated as the average distance approach a certain value.
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