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Cano1998/README.md
A GitHub cat

About me

Hello! πŸ˜„ I'm a passionate and motivated aspiring data analyst, recently graduated from a comprehensive Data Science bootcamp at HyperionDev. My journey in data science has equipped me with the skills and knowledge to analyze complex datasets, uncover insights, and drive data-informed decisions. πŸš€πŸ”₯

Interests

-Data analysis: I enjoy diving into data to discover patterns, trends, and actionable insights. I am proficient in using statistical methods and data visualization techniques to interpret and communicate findings effectively.

-Machine learning: I have a keen interest in machine learning algorithms and their applications in solving real-world problems.

-Data visualization: Creating clear and impactful visualizations to present data findings is one of my key strengths.

Skills

Rank THING-TO-RANK
1 Programming language: Python 🐍
2 Database: SQL πŸ“Š
3 Data analysis: Pandas, NumPy, Scikit-Learn πŸ“ˆ
4 Data visualization: Matplotlib, Seaborn, Plotly πŸ“Š
4 Machine learning: Regression, Classification, Clustering πŸ€–
5 Tools: Jupyter Notebook, Git, Excel πŸ’»

Projects

During my bootcamp, I worked on various projects, including:

-Titanic Survival Analysis: Analyzed determinants of survival using EDA and statistical analysis.

-Linear Regression Model for Predicting Charges: Applied linear regression to predict charges for individuals based on age.

-Diabetes Progression Analysis: Built a multiple linear regression model to predict diabetes progression, including data preprocessing and model evaluation.

Goals

I am eager to start my career as an apprentice or junior data analyst. I am enthusiastic about applying my skills in a professional setting, contributing to meaningful projects, and continuously learning and growing in the field of data analysis.

Contact

Feel free to connect with me on LinkedIn! πŸ“± https://www.linkedin.com/in/alex-perez-cano-aaa818211/

Or Email! πŸ“§ alexperezcano98@gmail.com

Let's connect and explore opportunities to collaborate and make data-driven decisions together!

Popular repositories Loading

  1. EDA-survival-of-the-Titanic EDA-survival-of-the-Titanic Public

    This project focuses on Exploratory Data Analysis (EDA) to identify the key determinants that influenced survival during the infamous Titanic accident.

    Jupyter Notebook 1

  2. Cano1998 Cano1998 Public

  3. Simple-linear-regression Simple-linear-regression Public

    Project where I applied simple linear regression to predict the charges for individuals based on their age. Specifically, I focus on predicting the charges for a 70-year-old person.

    Jupyter Notebook

  4. Income-and-demographic-analysis-report Income-and-demographic-analysis-report Public

    Report that addresses several key demographic and financial questions based on our dataset. The analysis provides insights into income, marital status, and demographic distributions.

    Jupyter Notebook

  5. Data-visualization-project Data-visualization-project Public

    A project focused on data visualization to explore various aspects of a car dataset. The visualizations provide insights into car performance, efficiency, and characteristics based on different man…

    Jupyter Notebook

  6. Daibetes-multiple-linear-regression Daibetes-multiple-linear-regression Public

    In this project I focused on applying multiple linear regression to analyze and interpret factors influencing diabetes outcomes. The project also evaluates the model's fit using the R-squared (RΒ²) …

    Jupyter Notebook