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  • Erasmus University Rotterdam
  • Amsterdam, NL

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huytjuh/README.md

About Me

I am Data Scientist with a background in Econometrics and Operations Research. Specialized in Predictive Modeling, Causal Inference, and Optimization methods. Professional experience in all Machine Learning sub-disciplines, including NLP, Computer Vision, and Recommender Systems. Committed to consistency and transparency, dedicated to continuous improvements, and excited for new challenges.


Recent Projects πŸ’Ž

Vision-based Person Detection Model with YOLOv3 using Bayesian CycleGAN on Synthetic Data

An object detection model to predict person in indoor and hospital settings with a custom synthetically created dataset in Blender. An innovative solution to detect person instances without requiring actual person images by utilizing the state-of-the-art Bayesian CycleGAN to tackle down the challenging Synthetic-to-Real translation task.
Language: Python, Blender
Date: Q1 2022


Featured Projects πŸ†

Incorporating Subsequence Time-Series Clustering in LSTM, lightGBM, RF, Fourier-ARIMA, and Hybrid models on daily TV ratings of American TV-channels

Extending the state-of-the-art Time-Series forecasting models by utilizing a data-driven anomaly detection and complex seasonality clustering approach using Self-Organizing Map and Hierarchical Clustering methods. Results showed significant improvements on the existing forecasting models based on a 1-year ahead prediction of multiple time-series of over 10 TV-channels.
Language: Python
Date: Q1 2021

Open In Colab Open In Colab

Gaussian Mixture Model Clustering from scratch

Developed an advanced Gaussian Mixture Model from scratch by generating samples from a mixture of Gaussian distribution, improving the existing Machine Learning clustering methods and allowing for more complex clustering.
Language: Python
Date: Q4 2020

Open In Colab

General Framework of Constructing Hybrid Time-Series Models combining both Parametric and Machine Learning Models incl. RF, SVM, LSTM, (S)ARIMA

Created a general framework of how to construct hybrid models making full use of linear and non-linear models applied on a multiple time-series dataset. Key concepts such as outlier detection, correlation matrices and imputing missing datapoints are also discussed here.
Language: R
Date: Q3 2020

Open In Colab

Basket-sensitive Random Walk & Factorization Machine Recommendations applied on Grocery Shopping

Build a Recommender system based on Collaborative Filtering and extending it with a Facotrization Machine incl. ALS, RW. Suggested an alternative evaluation metric on measuring the performance of Recommender Systems in general.
Language: R
Date: Q2 2019

Open In Colab

Pinned Loading

  1. YOLOv3-Blender YOLOv3-Blender Public

    YOLOv3 Blender implementation of privacy-preserving person-detection model using synthetic data.

    Python 2

  2. Domain-Adaptation Domain-Adaptation Public

  3. Subsequence-Time-Series-Clustering Subsequence-Time-Series-Clustering Public

    Extending state-of-the-art Time Series Forecasting with Subsequence Time Series (STS) Clustering to enforce model seasonality adaptation.

    Python 16 1

  4. Hybrid-Time-Series-Modeling Hybrid-Time-Series-Modeling Public

    Hybridization of Econometric and Machine Learning time-series models for cross-learning linear and non-linear patterns.

    Python 5 1

  5. Recommender-System-Basket-Analysis Recommender-System-Basket-Analysis Public

    Basket-Sensitive Recommender System & Factorization Machines for grocery shopping based on hybrid random walk models.

    R 2 1

  6. Adversarial-ML-Training Adversarial-ML-Training Public