Implementation of Machine Learning and Deep Learning techniques to find insights from the satellite data.
-
Updated
May 5, 2022 - Jupyter Notebook
Implementation of Machine Learning and Deep Learning techniques to find insights from the satellite data.
Gesture recognition library for Python
Joint Deep Neural Networks for Simultaneous Object and Depth Detection
SoK: All You Need to Know About On-Device ML Model Extraction - The Gap Between Research and Practice
A repository featurin BeautifulSoup for effective web scraping, enabling data extraction from diverse websites with practical examples and guides.
Compressive Strength of Concrete determines the quality of Concrete. analyze the Concrete Compressive Strength dataset and build a Machine Learning model to predict the quality.
Here is my Bachelor's Degree Thesis, Music and Feelings: A Deep Learning Approach to Emotional Composition
This project aims to take an chest X-Ray image and detect if the patient has the COVID-19 infection. It uses a CNN to train on a large dataset of both normal and COVID lung images to learn how to process the difference in both images.
I'm a self-taught AI and Machine Learning developer, passionate about AI, Machine Learning, Computer Vision and learning new things. I have good experience working with the Python programming language and its libraries, and I am interested in computer vision and image processing using machine learning and deep learning algorithms.
MIST Machine Leaning in Cybersecurity Workshop Code Dump Repository
Template alur kerja machine learning.
Resolución del desafío de la clase cuatro, última clase de la serie Inmersión de Datos de AluraLatam
This is a machine learning minor project for predicting heart stroke using the classification technique. The ML model correctly predicts a heart stroke with 95% accuracy.
ClearFeelings uses logistic regression to analyze Twitter comments about airlines, revealing how people feel about different airlines based on their tweets.
This repository contains an email spam detection system built using logistic regression, achieving an accuracy of 98%. The model was trained on a comprehensive dataset of labeled emails to effectively classify spam and non-spam messages.
numpy resources
Predictive Health Analytics for Diabetic Risk Assessment and Personalized Reporting WebApp using Streamlit
Text Classification using Machine Learning
ML_binary classification application, docker image created by circleci_deployed to Heroku container
Add a description, image, and links to the mahine-learning topic page so that developers can more easily learn about it.
To associate your repository with the mahine-learning topic, visit your repo's landing page and select "manage topics."