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This repository provides Python code for converting satellite data into a format suitable for deep learning models. It supports various deep learning architectures, including Convolutional Neural Networks (CNNs), Recurrent Neural Networks (RNNs), and Long Short-Term Memory networks (LSTMs).
Data and scripts from the manuscript: Gene expression and epigenetics reveal species-specific mechanisms acting upon common molecular pathways in the evolution of task division in bees
This project creates a statistical model to predict demand for loans in each region of the USA based on monthly family income and rental costs. The results are displayed on a dashboard updated periodically with data retrieval.
Independent Project - Kaggle Dataset-- I worked on the California Housing dataset, performing data cleaning and preparation; exploratory data analysis; feature engineering; regression model buildings; model evaluation.
A set of SQL data queries was used to analyze the global deforestation from 1990 to 2016 based on a dataset from the World Bank. The analysis at three different geographical scales being a global, regional, and country-level outlook. All queries used are found in the appendix and the 'SQL folder of this repository.
Project for University of Michigan Applied Data Science Specialization -- Predicted viewer engagement based on features related to video metrics; evaluated a large set of classifiers under different scoring metrics to select the "optimal" one.
This repository features an interactive Excel dashboard designed for Vrinda Store's 2022 annual sales report. It includes robust data processing, analysis, visualization, and reporting capabilities. Insights gleaned from the dashboard aid Vrinda Store in understanding customer behavior and devising sales growth strategies for 2023.
Project for University of Michigan Applied Data Science Specialization -- Analyzed network nodes and edges, developing custom features based on various scoring metrics; used features to train classifier model to predict node attribute (employee salary type) and future edges (employee connections)