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羅偉倫
Quant Trader
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羅偉倫

Quant Trader
Quant trader
Undisclosed
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National Taiwan University
New South Wales, Australia

Professional Background

  • Situación actual
    Empleado
    No está abierto a oportunidades
  • Profession
    Machine Learning Engineer
    Trader
    Software Engineer
  • Fields
    Venture Capital & Private Equity
  • Experiencia laboral
    2-4 años (2-4 años relevante)
  • Management
    I've had experience in managing 1-5 people
  • Skills
    Python
    C++
    Machine Learning
    Deep Learning
    Reinforcement Learning
    Trading Strategies
    Credit Analysis
    Recommender Systems
    market making
    Crypto
  • Languages
    Chinese
    Nativo o bilingüe
    English
    Fluido
  • Highest level of education
    Master

Job search preferences

  • Desired job type
    A tiempo completo
    Interesado en trabajar a distancia
  • Desired positions
    Data Scientist/Quantitative Researchers & Traders
  • Lugares de trabajo deseados
    Taipei City, Taiwan
  • Freelance
    Trabajador autónomo a tiempo parcial

Work Experience

Quant Trader

Undisclosed
A tiempo completo
mar 2023 - Presente
Trading: Improve execution of current market-making strategies. Research: Queue Priority and Theo research for market-making strategies. Developer: Meta-programming to apply C++ strategies for different exchanges.
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Research Assistant

sep 2020 - ene 2023
2 yrs 5 mos
There are several projects I did: Multiperiod Corporate Default Prediction • Provide a consistent term structure of cumulative default probabilities by a carefully designed neural network. • Tailor neural networks by economic domain knowledge to prevent our model from overfitting. • Outperform the state-of-art statistical model on AR(10%) and RMSE (20%) for US public companies from 1990-2017. • Publication: Wei-Lun Luo, Yu-Ming Lu, Jheng-Hong Yang, Jin-Chung Duan, Chuan-Ju Wang. ”Multiperiod Corporate Default Prediction Through Neural Parametric Family Learning.” Proceedings of the 2022 SIAM International Conference on Data Mining (SDM). Importance Sampling in Reinforcement Learning • Implement Approximate Bayesian Computation(ABC) algorithm on Multi Armed Bandits (MAB) problems for faster computation. Team leader, Recommendation Algorithms for KKStream • Collaborate with team members and others from KKStream to con- struct a knowledge graph for items to improve performance.
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Intern

jul 2019 - feb 2020
8 mos
• Developed a trading platform with functions of optimization algorithms. • Implemented reinforcement learning to solve backward stochastic differential equations. • Designed an introduction lecture of reinforcement learning for a research group in the company (about 15 persons). • Applied machine learning approaches to Forex forecasting.
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Quantitative trader

ago 2018 - abr 2019
9 mos
• Developed trading strategies on cryptocurrency markets. • Crawled cryptocurrency markets data from different exchanges. • Developed a part of trading API.

Quantitative Trader

jul 2013 - ene 2016
2 yrs 7 mos
Developed over 30 rule-based trading strategies on TX and Forex and evaluated each strategy by return over maximum drawdown.

Education

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Master of Science (MS)
Computer Science and Information Engineering
2018 - 2020
4/4.3 GPA
Actividades y sociedades
IEEE, The 2018 Vechicular Networking Conference, App Contest Award - First Prize
Descripción
Thesis: Risk-based Reward Shaping Reinforcement Learning for Optimal Trading Execution Courses: 1. artificial intelligence-related courses (e.g., machine learning, deep learning) 2. courses about machine learning-based applications in finance
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Bachelor of Science (BS)
Money and Banking
2012 - 2016
3.6/4 GPA
Actividades y sociedades
政大金融系公關長 2013 金融之夜主辦人 2013 政治大學財經實務研習社副社長 2013 - 2014 EMBA酒會協辦人 2014 政大金融系羽 2012 - 2016