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Dimitris Effrosynidis
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    EDA is Fun!
    Dimitris Effrosynidis

    Dimitris Effrosynidis

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    Experienced Data Scientist with a Ph.D. in Data Science, blending 6+ years of research expertise with 4+ years in business. Proven track record in analytics, programming, and modeling. Published 14 papers, executed successful projects, and showcased skills through blogging and GitHub. Dedicated to ongoing learning and staying abreast of industry trends.

    Hard Skills

    • Data Mining
    • Data Analysis
    • Data Mining
    • Generative AI
    • Data Visualization
    • Machine Learning
    • Feature Engineering
    • Time Series Forecasting
    • Anomaly/Outlier Detection
    • Natural Language Processing
    • Supervised/Unsupervised ML

    Tools

    • Python
    • Pandas, Numpy, SciPy
    • Scikit-Learn
    • SkTime
    • LightGBM, XGBoost
    • PyOD, Shap
    • Matplotlib, Seaborn
    • Plotly, Dash
    • Jupyter, Anaconda
    • Docker, Git
    • Django, React
    • MLflow, Airflow, AWS
    • MySQL, PostgreSQL
    • MongoDB
    • LaTeX, Overleaf
    • Notion, Jira, Confluence

    EDA is Fun!

    less than 1 minute read

    A very popular Kaggle kernel (60.000+ views, 1100+ upvotes, 170+ comments) that won me the 1st prize, as the most informative and upvoted kernel for the popular battle royal game PUBG.

    Check it out here!

    Tags: EDA, features, pandas, pre-process, seaborn, sklearn, visualization

    Categories: Data Processing, Exploratory Data Analysis, Feature Engineering, Machine Learning

    Updated: October 09, 2018

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