From Data to Dollars - Predicting Insurance Charges
Join us at a leading insurance company, where well craft a model to predict customer charges and test it with new client data
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Explore transportation time series data analysis to uncover patterns and forecast travel costs.
Use web scraping and NLP to find the most frequent words in classic literature: Herman Melvilles novel, Moby Dick.
Develop an inventory management system for a retail business using OOP in Python.
Analyze product data for an online sports retail company to optimize revenue.
Use SQL to analyze a database containing information about Transport for London journeys over 12 years!
Sharpen your debugging skills to enhance sales data accuracy.
Use OpenAIs powerful API to enrich and summarize stock market data.
Exploring flight data from NYC using advanced data joining techniques in R.
Build models predicting customer churn for Indian telecom customers.
Transcribe customer support audio calls, evaluate sentiment, search in text and identify common entities to improve customer service!
Automatically generate keywords for a search engine marketing campaign using Python to send website visitors to the right landing page.
Powering Data for the Department of Energy - Building an ETL Pipeline
Query the VatComply API to gather exchange rate information and incorporate into a sales orders dataset!
Chart electric vehicle charging trends to inform strategic planning.
Build an AI-powered inbox assistant to classify your emails using Llama.
Perform a hypothesis test to determine if more goals are scored in womens soccer matches than mens!
Analyze online shopping habits: returning vs. new customers using statistics & probability techniques!
Explore facial recognition with ML by distinguishing Arnold Schwarzenegger from others using Python and scikit-learn.
Train a simple reinforcement learning agent in stock trading simulation.
Manipulate and plot time series data from Google Trends to analyze changes in search interest over time.
Use deep learning to automate the classification of service desk tickets.
Use joining techniques to discover the oldest businesses in the world.
Use SQL to analyze a database containing information about Transport for London journeys over 12 years!
Use mean-variance optimization to find optimal portfolio weights and then check how well they would have performed.
Building an image processing pipeline for data augmentation.
Classify food images using Hugging Face models, automatically recognizing and categorizing food items.
Use MLBs Statcast data to compare New York Yankees sluggers Aaron Judge and Giancarlo Stanton.
Use logistic regression to determine which treatment procedure is more effective for kidney stone removal.