Hello there!
Welcome to my data science playground! I'm a data enthusiast with a knack for turning numbers into stories and patterns into insights. With a flair for machine learning and a love for all things data, I'm here to explore, innovate, and, most importantly, have fun with data! Dive in to see how I blend analytical rigor with a dash of creativity to solve real-world problems!
- Email: mnnamchi@gmail.com
- LinkedIn: linkedin.com/mnnamchi
Link to All ML-DS Project GitHub Repo
Predictive Modeling of Wind-Energy Generation with FLASK deployment: Time Series and Regression Analyses
In this project, I explored time series and regression for renewable-energy forcasting. I developed XGBOOST-trained ML models to predict the amount of wind energy that can be generated over a period. I deployed the model using FLASK, creating an interactive web app that delivers real-time energy predictions. This project kickstarts my learning in time series analysis and end-to-end model development/deployment.
SpaceX Launch Analysis and Landing Predictions
In this project, I predict if the Falcon 9 first stage will land successfully. The predictions will help determine launch costs and aid operational planning. I implement Dash/Plotly Interactive Dashboards, REST APIs, Web scraping, SQL queries, Data Wrangling/Preprocessing, EDA, and ML pipeline development. Full PDF Report
In this project, I built models that predict if a financial transaction is fraudulent or not, aiming to enhance credit card security. I model the task as a binary classification problem and implement SVM and DT models using both Scikit-Learn and Snap ML. Linkedin Report Article
Rainfall Prediction in Australia
In this project, I employ supervised classification models to predict rainfall in Australia. Four different classification models were implemented: K Nearest Neighbors, Decision Tree, Logistic Regression, and Support Vector Machine. The Logistic Regression model exhibited the best performance, with a prediction accuracy of 84%.
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- Stock Data Extraction and Visualization Using REST APIs and Webscraping: In this project, I extract and vizualize stock data with the
yfinance
API and Web scraping. - Car Dealership's Inventory Management System: This Python program simulates a car dealership's inventory management system. The system aims to model cars and their attributes accurately.
- Chicago Dataset SQL Querying: In this file, I attempt to comprehensively understand three Chicago datasets using SQL queries and %sql magic.
- Stock Data Extraction and Visualization Using REST APIs and Webscraping: In this project, I extract and vizualize stock data with the
- Methodologies: Machine Learning, Deep Learning, Time Series Analysis, Natural Language Processing, Statistics and Probability, Explainable AI, A/B Testing and Experimentation Design, Big Data Analytics
- Languages: Python (Pandas, Numpy, Scikit-Learn, Snap ML, Scipy, Keras, Matplotlib), R (Dplyr, Tidyr, Caret, Ggplot2), SQL, Javascript, HTML5, CSS, LaTex.
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IBM Data Science Professional Certificate
- Generative AI: Elevate Your Data Science Career
- Tools for Data Science
- Databases and SQL for Data Science with Python
- Python for Data Science, AI & Development
- Machine Learning with Python
- Data Analysis with Python
- Data Visualization with Python
- Data Science Methodology
- Applied Data Science Capstone
- Python Project for Data Science
- What is Data Science?
- Data Scientist Career Guide and Interview Preparation
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Foundations of Data Structures and Algorithms Specialization, University of Colorado Boulder
- Algorithms for Searching, Sorting, and Indexing
- Trees and Graphs
- Dynamic Programming, Greedy Algorithms (Ongoing)
- Approximation Algorithms and Linear Programming
- Advanced Data Structures, RSA, and Quantum Algorithms
- Foundational and Advanced Math (Brilliant.org)
- 3Blue1brown (Youtube)
- StatQuest with Josh Starmer (Youtube)
- Simplilearn (Youtube)
- Becoming a Data Head: How to Think, Speak, and Understand Data Science, Statistics, and Machine Learning (Book by Alex J. Gutman and Jordan Goldmeier)
- Getting Started with Data Science: Making Sense of Data with Analytics (IBM Press; book by Murtaza Haider)
- Hands-On Machine Learning with Scikit-Learn, Keras, and TensorFlow (Book by Aurélien Géron) -Essential Math for Data Science: Take Control of Your Data with Fundamental Linear Algebra, Probability, and Statistics (Book by Thomas Nield)