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evanhfw/README.md

Hi πŸ‘‹, I'm Evan

πŸ“Š Statistics Student | πŸ€– ML & AI Enthusiast


πŸš€ About Me

  • πŸŽ“ Statistics Student at Universitas Sebelas Maret (Class of 2026)
  • πŸ“Š Passionate about Machine Learning, AI, and Data Science
  • πŸ” Researching Hybrid Machine Learning & Time Series Forecasting
  • πŸ’‘ Seeking opportunities in Data Science, ML Engineering, and AI Research

πŸ† Achievements

βœ… 1st Place – Olimpiade Statistika SPSS | 2024 (BINUS University)
βœ… Top 4 (Juara Harapan 1) – LKTI Jambore Statistika XIV | 2025 (Univ. Mulawarman)
βœ… 1st/196 (Public), 12/196 (Private) – Hology 7.0 | 2024 (Univ. Brawijaya)
βœ… 16th/202 – FIND IT Data Analytics | 2024 (UGM)
βœ… 38th/107 – DataSlayer 1.0 ML Contest | 2024 (ITP)

πŸ“œ See all my certifications here β†’ Certifications


πŸ§‘β€πŸ’» Experience

🎯 Computer Vision Engineer Intern – DataIns (Dec 2024 - Present)

  • Migrated YOLOv10 to YOLOv11, improving object detection performance with the latest advancements in deep learning.
  • Optimized inference speed and accuracy, enabling real-time processing.
  • Assisted in developing edge AI solutions for deployment on embedded systems.

πŸ“ˆ Research Assistant (Hybrid Machine Learning) – Universitas Sebelas Maret (Jan 2025 - Present)

πŸ“ˆ Research Assistant (Time Series Forecasting) – Universitas Sebelas Maret (Jun 2024 - Present)

  • Part of the XXX grant program, focusing on time series forecasting.
  • Designed and implemented ensemble learning models (Random Forest, Gradient Boosting) for electricity demand prediction.
  • Achieved 1-2% MAPE on a 30-day forecast using sliding window cross-validation (30 folds).
  • Presented research findings at BicoPam 2024 (International Conference).

πŸ›  Languages & Tools

Python R JavaScript MySQL Docker Kubernetes Scikit-Learn TensorFlow PyTorch Git Linux


πŸ“Š GitHub Stats

Evan's GitHub Streak

Evan's Most Used Languages


🌎 Connect with Me

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