Skip to content

Tools, procedures and processes required for data analysis and data science in general in R programming, SPSS, and python

Notifications You must be signed in to change notification settings

ryannthegeek/Data-Science

Repository files navigation

<<<<<<< HEAD

ryannthegeek

Data Scientist | Python | R | SQL | Power BI | Statistics

Welcome to my GitHub repository! Here you will find a collection of projects that showcase my expertise as a data scientist, highlighting my skills in Python, R, SQL, Power BI, and statistical analysis. I hold a bachelor's degree in Actuarial Science, providing a solid foundation in mathematical modeling and risk assessment.

About Me

I am a dedicated and passionate data scientist, constantly exploring complex data sets to extract meaningful insights that drive informed decision-making. With a strong background in statistics, I employ a data-driven approach to tackle real-world problems and deliver innovative solutions.

What to Expect

In this repository, you can expect to find a diverse range of projects that demonstrate my technical proficiency and analytical mindset. From exploratory data analysis to building machine learning models to statistical inference, each project is designed to showcase the practical application of data science techniques.

Skills and Tools

  • Python: I leverage the power of Python to wrangle, clean, and transform large datasets. Whether it's data preprocessing, feature engineering, or model implementation, I utilize Python's rich ecosystem of libraries such as NumPy, Pandas, and Scikit-learn.

  • R: R is another powerful tool in my arsenal, particularly when it comes to statistical analysis, data visualization, and creating reproducible research. I utilize R's extensive libraries like ggplot2, dplyr, and tidyr to uncover patterns and trends in the data.

  • SQL: Proficient in SQL, I can effectively query databases and perform data manipulation tasks. I utilize SQL to extract relevant information, join tables, and aggregate data for analysis.

  • Power BI: I specialize in creating interactive and visually appealing dashboards using Power BI. These dashboards provide an intuitive way to communicate complex insights and facilitate data-driven decision-making.

  • Statistics: With a solid foundation in statistics, I employ a range of statistical techniques, including hypothesis testing, regression analysis, and time series forecasting, to uncover patterns and derive meaningful insights from data.

Connect with Me

I'm always eager to connect with fellow data enthusiasts, industry professionals, and researchers. Please feel free to reach out if you have any questions, project proposals, or simply want to discuss the latest developments in data science.

Let's collaborate and leverage the power of data science to drive innovation and create a brighter future together!

ryannthegeek

Data Scientist | Python | R | SQL | Power BI | Statistics

Welcome to my GitHub repository! Here you will find a collection of projects that showcase my expertise as a data scientist, highlighting my skills in Python, R, SQL, Power BI, and statistical analysis. I hold a bachelor's degree in Actuarial Science, providing a solid foundation in mathematical modeling and risk assessment.

About Me

I am a dedicated and passionate data scientist, constantly exploring complex data sets to extract meaningful insights that drive informed decision-making. With a strong background in statistics, I employ a data-driven approach to tackle real-world problems and deliver innovative solutions.

What to Expect

In this repository, you can expect to find a diverse range of projects that demonstrate my technical proficiency and analytical mindset. From exploratory data analysis to building machine learning models to statistical inference, each project is designed to showcase the practical application of data science techniques.

Skills and Tools

  • Python: I leverage the power of Python to wrangle, clean, and transform large datasets. Whether it's data preprocessing, feature engineering, or model implementation, I utilize Python's rich ecosystem of libraries such as NumPy, Pandas, and Scikit-learn.

  • R: R is another powerful tool in my arsenal, particularly when it comes to statistical analysis, data visualization, and creating reproducible research. I utilize R's extensive libraries like ggplot2, dplyr, and tidyr to uncover patterns and trends in the data.

  • SQL: Proficient in SQL, I can effectively query databases and perform data manipulation tasks. I utilize SQL to extract relevant information, join tables, and aggregate data for analysis.

  • Power BI: I specialize in creating interactive and visually appealing dashboards using Power BI. These dashboards provide an intuitive way to communicate complex insights and facilitate data-driven decision-making.

  • Statistics: With a solid foundation in statistics, I employ a range of statistical techniques, including hypothesis testing, regression analysis, and time series forecasting, to uncover patterns and derive meaningful insights from data.

Connect with Me

I'm always eager to connect with fellow data enthusiasts, industry professionals, and researchers. Please feel free to reach out if you have any questions, project proposals, or simply want to discuss the latest developments in data science.

Let's collaborate and leverage the power of data science to drive innovation and create a brighter future together!

04c2347 (First Commit on Kubuntu)

About

Tools, procedures and processes required for data analysis and data science in general in R programming, SPSS, and python

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published