Artificial Intelligence Virtual Experience Program
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Updated
Aug 11, 2023 - Jupyter Notebook
Artificial Intelligence Virtual Experience Program
The project deals with determining and predicting the type of accident taking place in the city of Austin. The data would help in understanding what possible factors are leading to the accidents based on the severity of the incident that has occurred.
A series of six hands-on projects completed during my PGP ML and AI academic training with UT Austin and Great Learning
This project is to build a model that *predicts the human activities* such as __Walking, Walking_Upstairs, Walking_Downstairs, Sitting, Standing__ and __Laying__ as done in Smart-Watches.
Sentiment Analysis on Amazon Fine Food Reviews
Student 360 deals with analyzing the student performance based on the various external factors to determine the student dropout rate and predict the CGPA of the students.
ML Interview Questions, Coding Tasks
Learning to training a LLM model
Stroke Prediction using Machine Learning
This repository provides a practical, data-centric AI/ML module for biomedical researchers. It covers R programming, data preparation, model building, and AI/ML applications using AWS SageMaker and Jupyter notebooks.
An image classifier built using Support Vector Machine (SVM) to distinguish between three categories of images. Deployed via an interactive Streamlit web application.
This repository contains the code and resources for a comprehensive machine learning project focused on forecasting the prices of pre-owned vehicles. Exploring a diverse dataset encompassing crucial car attributes such as year, mileage, fuel type, transmission, and more.
Implementation of multiple projects related to Predictive Analytics.
👩🏻🍳🍽️Restaurant Success Prediction using ML
Customer churn is a significant issue for big business companies. Companies are attempting to create methods for predicting customer churn to get a direct impact on getting more revenues, particularly in telecom companies.
The project deals with predicting the number of persons killed based on the contributing factors such that necessary precautions and actions can be taken in order to avoid the accidents and reduce the death rates and injuries of the person in the New York city.
🚗 Engineered a high-performing car price prediction model, empowering informed decisions in the dynamic car market. 🚘💰
SalifortMotorsHRAnalytics repository showcases Data Analytics, Visualization, Python, Statistics, and ML skills. It contains markdown file, pickle files for models, and an executive summary. To run the markdown file, adjust the path variable for pickle files and comment out fitting and saving codes.
This project uses machine learning to predict Turbine Energy Yield (TEY) from gas turbine data, optimizing settings to improve energy output, reduce fuel consumption, and cut costs. TEY predictions help detect deviations from normal operations, signaling potential turbine issues like degradation.
🔍 This repo focuses on detecting Parkinson's Disease using machine learning techniques on vocal features. The project includes data preprocessing, analysis, and model training, achieving a remarkable 99.6% accuracy with the Random Forest Classifier. 🧠
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