Source files for "Fun Q: A Functional Introduction to Machine Learning in Q"
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Updated
Oct 13, 2023 - q
Source files for "Fun Q: A Functional Introduction to Machine Learning in Q"
Repositório com os códigos para a monitoria da disciplina de séries temporais da pós-graduação em inteligência computacional do centro de informática (CIn) - UFPE.
Prediction of hospital stay duration in heart failure patients using machine learning.
A collection of GitHub gists and other resources that were made & utilized whilst learning Machine Learning and Deep Learning with TensorFlow, Keras, Pandas, MatplotLib, SciKit Learn using Python
Regression in Keras using multi-modal input
Performing analyses on New York City Airbnb and developing business intelligence for both the hosts and the guests
This project aims to develop a predictive model estimating insurance coverage costs for customers based on their attributes and product choices. The dataset includes transaction and quote details for policy purchasers. The objective is to predict quoted coverage costs, considering customer traits and 7 customizable product options.
Perceptron regressing revenue for an ice cream stand according to temperature.
Prediction of medical insurance bill using neural network regression model. Factors considered are age, sex, bmi, smoker, children, region and finally charges.
Machine learning regression model to predict energy consumption and GHG emission
This repository contains a Jupyter notebook that implements and optimizes several machine learning models on a dataset
Machine learning prediction of tempering conditions to reach a target hardness
TensorFlow deep regression model predicting bicycle rental.
Predicting cats feature points using a feature pyramid network
An exploration of neural network architecture using regression in R.
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