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Title Machine Learning Data Science
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Email : EMAIL AVAILABLE Mobile : PHONE NUMBER AVAILABLEEducationMaster of Science in Data Science and Business Analytics December Street Address  University of North Carolina at Charlotte 3.97/4.0 GPABachelor of Technology in Information Technology May Street Address  Sreenidhi Institute of Science and technology 3.5/4.0 GPAHyderabad, IndiaTechnical SkillsProgramming Languages: Python, Java, ROperating Systems: Linux (Ubuntu, CentOS), WindowsInfrastructure Tools: AWS (S3, Lambda, EC2, SageMaker, CloudWatch), GCP(BigQuery), AzureDatabase Technologies: SQL, Oracle, SnowflakeData Analysis/Visualization Tools: Tableau, Streamlit, MatplotlibVersion Control: Git/GitHubWeb Technologies: HTML, CSS, JavaScript.Machine Learning: Large Language Models (LLMs), Natural Language Processing (NLP), Linear Regression, Logistic Regression, KNN, PCA, Decision Tree, K-Means, Hierarchical Clustering.Work Experience:Research Assistant - Active Aging Insights August 2023  December 2023University of North Carolina at Charlotte, Charlotte, NCEmployed AWS for data storage and processing, facilitating efficient analysis of smart variable data.Generated comprehensive weekly reports summarizing key findings and driving project progress.Performed statistical modeling in Python for data manipulation, data mining and data validation usinglibraries such as Pandas, Scikit learn, matplotlip and Numpy, Seaborn.Utilized Python and Pandas to clean, transform, and prepare smart wearables datasets for rigorous statistical analysis.Analyzed search ranking and relevance requirements, identifying key issues and opportunities for improvement.Conducted ANOVA testing to determine the significant effects of demographic factors on research outcomes within smart variable data, driving deeper understanding of research questions.Leveraged machine learning techniques to build and deploy predictive models for classifying activity types based on smart variable data, enhancing research capabilities.Research Assistant - CO2 Emission in USA tableau DashboardUniversity of North Carolina at Charlotte, Charlotte, NC. January 2023  May 2023Developed a Tableau dashboard showcasing state-wise CO2 emissions in the USA from coal, oil, and gas.Integrated Tableau with Snowflake for data extraction and seamless connectivity.Created different visuals like Symbol Map, Bar charts, Treemap and Line chart.Published the interactive dashboard, demonstrating proficiency in both data engineering and visualization.Dashboard Link: Car CO2 Emission in USA tableau DashboardResearch Assistant - HandBook Web ApplicationUniversity of North Carolina at Charlotte, Charlotte, NC. September 2022  December 2022Developed a user-friendly data visualization and machine learning model selection web application using Python and Streamlit, simplifying data analysis for non-coders.Automated model selection based on data characteristics, enhancing decision-making, and streamlining the process for users, resulting in increased efficiency in data-driven tasks.Tech-Stack- Python and Streamlit.Link: https://handbook.streamlit.app/Data Science and Analytics InternSpark Foundation, Hyderabad, India September 2021  October 2021Analyzed student study time data and deployed predictive models using supervised machine learning techniques (linear regression, decision trees); successfully forecasted exam scores with an average accuracy of 85%, enabling targeted interventions to enhance academic outcomes.Conducted unsupervised machine learning analysis on the Iris dataset using the K-means algorithm to identify clusters and visualize results.Overcame challenges such as handling missing data and selecting appropriate algorithms to achieve high accuracy in predictive models and clustering analysis.Utilized Tableau for creating insightful data visualizations, aiding in the communication of research findings.Data Science InternUnschool, Hyderabad, India August 2020  August 2020Developed a predictive model to detect fraudulent credit card transactions using logistic regression.Utilized a dataset of credit card transactions, focusing on identifying patterns indicative of fraud.Applied data preprocessing techniques, including handling missing values, normalization, and feature engineering.Achieved high accuracy in distinguishing fraudulent transactions from legitimate ones.Employed Python libraries such as Pandas, Scikit-learn, and Matplotlib for data analysis and model building.Visualized results and performance metrics using Power BI to effectively communicate findings.Course Projects:End-to-End Question Answering SystemDeveloped an AI-powered question answering system using BERT for understanding and answering user queries.Fine-tuned pre-trained models and implemented the system in Python using TensorFlow.Evaluated performance with standard metrics to ensure high accuracy and reliability.AWS-Based Predictive Analysis ProjectCollaborated on an AWS-based predictive analysis project for real-time machine failure prediction.Utilized Amazon S3, Lambda, EC2, SageMaker, CloudWatch, and SES for data storage, processing, and monitoring.Assisted in integrating CloudWatch for real-time alerts and SES for automated notifications.Credit Card Fraud DetectionDeveloped a predictive model to detect fraudulent credit card transactions using logistic regression.Utilized a dataset of credit card transactions, focusing on identifying patterns indicative of fraud.Applied data preprocessing techniques, including handling missing values, normalization, and feature engineering.Achieved high accuracy in distinguishing fraudulent transactions from legitimate ones.Employed Python libraries such as Pandas, Scikit-learn, and Matplotlib for data analysis and model building.Visualized results and performance metrics using Power BI to effectively communicate findings.Analyzing Shakespeare TextsDeveloped a web application using Streamlit, Python, and various libraries for analyzing Shakespeare's plays.Included a word cloud generator, a bar chart showing word frequency, and a sentiment analysis tool.Tech-Stack: Streamlit, Python, NLTK, Matplotlib, Pandas, AltairLink: https://rishith2000-streamlit-word-bar-text-analysis-ps0j9n.streamlit.app/Heart Disease PredictionDeveloped a system predicting the likelihood of patients getting heart disease using 15 medical parameters.Enabled significant knowledge about relationships between medical factors and patterns related to heart disease.Tech Stack - Python, Data Science.Crop Recommendation SystemCreated a crop recommendation system predicting suitable crops based on user-provided soil data.Tech Stack - Python, Machine LearningCertificationsPassed LinkedIn Skill Assessment - PythonPassed LinkedIn Skill Assessment- SQLPassed LinkedIn Skill Assessment- GCP

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