Machine learning/deep learning
Posted within 3 months

Work visa required

3 to 5 years

Master

Salary negotiable

9.0 hrs/day, 5 days/wk
HK $80K-140K/Month
Job benefits
Competitive pay
Discretionary bonus
Year-end bonus
Flexible working hours
Job Responsibilities
- In the various market data involved in quantitative trading, conduct high-altitude innovative deep learning model research, explore the laws and predictive ability behind the data;
- Design, build and continuously optimize deep learning algorithm architectures suitable for financial time series data, high-frequency trading signals, etc. ;
- Innovate and improve the evaluation system of deep learning in quantitative trading, including model stability, backtesting effectiveness, and real-time performance;
- Push deep learning models from the experimental stage to the actual trading system, participate in model deployment, monitoring and iterative optimization processes;
- Track the latest advances in machine learning and deep learning, and apply the latest research results to the development of practical trading strategies.
Work requirements
- Computer science, statistics, applied mathematics, artificial intelligence or related professional master's degree or above, with a preference for a doctorate;
- In-depth understanding of representative algorithms in various subfields of machine learning and deep learning (such as supervised learning, reinforcement learning, graph neural networks, time series modeling, self-supervised learning, etc.)
- Have solid research accumulation in a certain deep learning subfield, have in-depth understanding and practical experience of current state-of-the-art models;
- Have published many first-author papers in international top conferences such as NeurIPS, ICML, CVPR, ICCV, ECCV, EMNLP, SIGKDD, IJCAI, AAAI, etc., demonstrating outstanding research and innovation abilities;
- Have solid foundations in deep learning theory, while also having practical experience in modeling complex real-world data, and able to achieve cross-domain model transfer and adaptation;
- Have complete online deep learning modeling experience, including feature engineering, model training, hyperparameter tuning, performance evaluation, and system integration;
- Have strong cross-team collaboration skills, be able to communicate and cooperate efficiently with data engineering, strategy research and system architecture teams.
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Statistical Modeling
Machine Learning (ML)
Natural Language Processing (NLP)
Deep Learning
Pattern Recognition
Mandarin
SIYUAN CHENG
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