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icemduru/README.md

Hi, I am Ilhan Cem Duru πŸ‘‹

πŸ”­ About Me (Scientist Me)

  • I am a postdoctoral research scientist at University of Helsinki.

  • My expertise is cracking the code of tiny life forms. (Genomic and transciptomic data analysis of bacteria and viruses). However, I have also worked with data from human, seal, and butterfly.

  • Currently, I am involved in several projects with a primary focus on population genomics for silver birch tree breeding. We aim to create genomic prediction models for silver birch tree breeding. The model will help to improve breeding efficiency of silver birch trees.

  • I love creating interactive web browser-based visualizations for my scientific data. For example;

  • Do you need to trim adapter+barcode sequences from your Pacbio HiFi reads ?

  • Feel free to explore my scientific papers on my Google scholar profile

πŸ’» About Me (Tech Enthusiast Me)

  • πŸ“Š Machine learning and data science are my passions. I enjoy sharpening my skills on the Kaggle platform, where I participate in various competitions. You can see my achievements on my Kaggle profile

  • I have completed Data Scientist Career Path at Codecademy. Where I learned:

    • How to acquire, manipulate, wrangle, and tidy data using SQL and Python.
    • How to visualize data using matplotlib, seaborn, and plotly.
    • How to analyze data using pandas, numpy, scipy, and statsmodels.
    • How to design experiments and test hypotheses using inferential statistics and causal inference.
    • How to build and evaluate machine learning and deep learning models using scikit-learn, TensorFlow, and Keras.
    • Check my codecademy exercises at my codecademy exercises github repository.
  • I’m also interested in cloud computing. In fact, I have recently earned the Azure AI Fundamentals certification.

Pinned Loading

  1. Heart-Failure-Prediction-with-Machine-Learning Heart-Failure-Prediction-with-Machine-Learning Public

    Creating ML model using "Heart Failure Prediction Dataset" (from kaggle.com) to predict Heart failure of patients.

    Jupyter Notebook 1

  2. Parkinson_Disease_Gut_Microbiota_Phage_Plasmid_Diversity_ML Parkinson_Disease_Gut_Microbiota_Phage_Plasmid_Diversity_ML Public

    Analysis of phage and plasmid diversity, machine learning, and alpha/beta diversity in Parkinson's disease gut microbiota.

    Jupyter Notebook