Syed Ahmed H. Musavi
Masters Student, Data Sceintist, and Analyst
As a current Master of Science student in Data Science & Business Analytics, I am actively seeking opportunities to apply my comprehensive skill set in data science, programming, and laboratory research within a professional setting. I am enthusiastic about securing roles in jobs or internships that allow me to leverage my expertise in analytics, machine learning, and data analysis to drive impactful insights. I am eager to contribute to the growth and success of an innovative organization while gaining valuable experience and making meaningful contributions to the field.
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Skills
- Programming: Proficient in Python, SQL, R
- Tools: Apache Spark, Hadoop Tableau, Plotly Dash, Microsoft Office Suite, and GAMS
- Data Analysis: Statistical concepts, machine learning techniques, data Manipulation and transformation and data management.
- Laboratory Techniques: spectrophotometry, chromatography, gel electrophoresis, PCR, Western blotting, ELISA, cell culture, microscopy, and DNA extraction and purification
- Fluent in English, Urdu/Hindi
Projects
Comparative Study of Classification Models Across Diverse Datasets
- Led a team project comparing classification models using 20+ different types of datasets, focusing on logistic regression analysis and performance evaluation.
- Implemented ML predictive models, including Linear Regression and XG Boost, demonstrating expertise in regression techniques and model evaluation using a R-based application.
Predictive Analytics Module Development and Evaluation
- Developed Python modules for a Predictive Analytics project, adhering to best practices for modular programming.
- Conducted Exploratory Data Analysis, generating 20 diverse diagrams showcasing correlations, frequencies, and relationships between variables using various visualization techniques.
- Applied machine learning techniques to build regression models, evaluating performance metrics of three models.