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EY Challenge 2024
To the given dataset, we integrate weather, vegetation indices, and population to develop a two-fold AI strategy. The first model returns fire-prone regions, and the second - the severity of wildfires
Analysis of data provided by the Alberta Fire Department to extract insights about wildfires.
Predict missing IAQ values with the power of Tensorflow, multivariate LSTMs and monkes!
We attempt to devise a solution to predict missing values for data generated by Indoo Air Quality sensors in the occasion of outages.
Using machine learning with PyTorch to predict sensor readings during outages.
Learning data science
By leveraging historical data from Infinite Investment Systems and insights gained from research on wealth management and ML techniques, our team built a highly performant predictive model.
Datathon submission by Anthony Tecsa & Jason Wu
Recognizing the importance of customer retention, we leveraged advanced data analytics and artificial intelligence to develop a machine-learning model to predict and analyze customer churn.
Machine Learning Model for Customer Churning
CxC 2024 Hackathon EY Wildfire Prediction
#wildfire #machine learning #datascience #uwaterloo
Amazing neural network
Using real data on client portfolio accounts from Infinite Investment Systems, this model predicts the customer churn
Never lose a customer again
We aim to provide a comprehensive analysis of wildfire risk and vulnerability specific to Alberta, offering valuable insights for stakeholders involved in wildfire management and mitigation efforts.
Our AI model accurately predicts wildfires, empowering proactive measures to safeguard communities and ecosystems from devastation.
Our project leverages data analysis and ML techniques to predict customer churn in a wealth management platform, enabling proactive retention strategies and enhancing financial service efficiency.
Explore the factors that contribute to the wildfires in Alberta and Beyond
AI-Driven Customer Churn Prediction for Infinite Investments - maximizing growth, minimizing churn
Revolutionize wealth management marketing using our interpretable AI-driven churn predictor.
Flame Forecaster is an AI-driven wildfire prediction project dedicated to safeguarding Alberta by leveraging data analysis and machine learning
Group IIIIIIII's work~
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