- Madrid
- 07:07
(UTC +02:00) - in/jason-ronald
Hello, I'm Jason! 👋🎯 Data Scientist | Problem Solver | Machine Learning Enthusiast
Welcome to my GitHub! I'm a passionate data scientist with a deep curiosity for uncovering insights through data and creating solutions that drive real-world impact. My journey in data science has been focused on leveraging data-driven approaches to solve complex problems, build predictive models, and collaborate across teams to generate value.
🚀 What I Do:Data Analysis: Turning raw data into actionable insights.Machine Learning: Developing models that make accurate predictions and optimize business decisions.Data Wrangling: Cleaning and preparing datasets for analysis.Visualization: Communicating data insights effectively using tools like Matplotlib, Seaborn, and Tableau.Collaboration: Working closely with cross-functional teams to integrate data-driven solutions into broader strategies.
🛠️ My Toolset:Programming Languages: Python, R, SQLMachine Learning Libraries: scikit-learn, TensorFlow, Keras, XGBoostData Analysis & Visualization: pandas, NumPy, Matplotlib, Seaborn, PlotlyDatabases: SQL, MongoDB, PostgreSQLCloud & Big Data: AWS (S3, EC2), Google Cloud, Hadoop, SparkVersion Control: Git, GitHub
🌟 What Drives Me:Curiosity: Constantly learning new techniques, algorithms, and tools to stay ahead in this ever-evolving field.Impact: Delivering solutions that not only perform well in models but also bring tangible value to businesses and users.Collaboration: I believe data science is best when done collaboratively, ensuring alignment between data and business goals.Problem-Solving: From messy data to complex models, I thrive on challenges and enjoy solving problems using data.
📝 My Projects:Here are a few projects that demonstrate my skills and interests:
Body Signal of Smoking Classifier: Using body signals from medical data, this is a binary classifier to detect smoking in humans. Techniques used range from Logistic Regression to Neural Network deployment.
Technologies: Python, scikit-learn, pandas, etc.
Secondary School Grade Predictor: Using data from schools and cognitive aptitude tests, data visualisation techniques used with matplotlib, seaborn. Supervised learning approach was taken here.
Technologies: matplotlib, seaborn, random forest, XGBoost, etc.
🤝 Let’s Connect:I'm always open to new opportunities, collaborations, and discussions around data science. If you're interested in connecting or learning more about my work, feel free to reach out!
LinkedIn:https://www.linkedin.com/in/jason-ronald/
Email:jasonronaldbsc@gmail.com
Thank you for visiting my GitHub! Looking forward to connecting and exploring the exciting world of data together!
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