Crypto & Stock* price prediction with regression models.
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Updated
Jul 26, 2024 - Python
Crypto & Stock* price prediction with regression models.
This repository contains Python functions for predicting time series.
Time series processing library
Serverless ML system to predict the direction and volume of electricity flows to and from the Netherlands and its energy transmission partners.
The objective of this project is to model the prices of Airbnb appartments in London.The aim is to build a model to estimate what should be the correct price of their rental given different features and their property.
Hybrid RecSys, CF-based RecSys, Model-based RecSys, Content-based RecSys, Finding similar items using Jaccard similarity
Machine Learning model for price prediction using an ensemble of four different regression methods.
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This repo is a part of K136. Kodluyoruz & Istanbul Metropolitan Municipality Data Science Bootcamp. The project aims to produce a machine learning model for home price estimation. The model was built on the Kaggle House Prices - Advanced Regression Techniques competition dataset.
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Almost and AutoML around xgb, catboost and lightgbm
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Python package that converts an XGBRegressor model to an Excel formula expression.
AQI Predictor V2 use multiple Supervised Machine Learning with Hyper tuning. ML algorithms used Linear Regressor, Lasso Regressor, Decision Tree Regressor, Random Forest Regressor, XGboost Regressor. The Model deployed on web and can predict AQI visit https://aqipredictor.up.railway.app/
Development of new ML library
Predicting Big mart sales
The goal is to model the change in hedge words between early and published versions of papers from these journals using the gender of their authors and the text (BERT embeddings) as features.
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