Binance is hiring a Web3 Junior Quantitative Researcher (Fresh STEM PhD graduates are welcome)
Location: Taiwan, Taipei
Junior Quantitative Researcher (Fresh STEM PhD graduates are welcome)
We are building out a new research function at the intersection of artificial intelligence and quantitative trading to improve the efficiency of execution algo models and more, and we are looking for a Junior Quantitative Researcher to be a founding member of this effort. You will work alongside senior quants, engineers, and traders to design AI-driven workflows that generate alpha signals, diagnose model and PnL behavior, and deepen our understanding of market microstructure.
This is a high-ownership role suited to someone who is genuinely excited about markets, has a strong research background, and is already building with modern AI tooling — including LLM-based agents. We are open to hiring at the fresh-PhD level, provided you can demonstrate research depth and a real interest in trading.
Responsibilities
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Signal research and construction. Develop, test, and productionize predictive signals across asset classes using a combination of statistical methods, machine learning, and AI agent–driven research workflows. Take ideas from hypothesis through backtest, validation, and deployment.
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Root cause analysis (RCA). Investigate model behavior, signal decay, PnL attribution, and unexpected trading outcomes. Build tools — including agentic ones — that accelerate diagnosis and shorten the loop between observation and fix.
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Market microstructure research. Study order book dynamics, execution costs, liquidity, and venue behavior to inform both signal design and execution strategy.
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AI agent infrastructure for research. Help design and extend internal agentic systems that automate parts of the research pipeline — data exploration, hypothesis generation, backtest configuration, results summarization, and report drafting.
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Collaborate broadly. Work closely with traders, engineers, and other researchers to turn ideas into live, monitored strategies.
Requirements
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PhD (recently completed or near completion) in a quantitative field — e.g., Computer Science, Machine Learning, Statistics, Physics, Mathematics, Electrical Engineering, Operations Research, or a related discipline.
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Strong programming skills in Python; comfortable with the modern data and ML stack (NumPy, pandas, PyTorch or JAX, etc.).
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Hands-on experience building with AI agents and LLM-based systems — for example, tool-using agents, multi-step reasoning pipelines, retrieval systems, or evaluation frameworks. We want to see that you have actually built things, not just read papers.
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Solid grounding in statistics, probability, and machine learning, with the rigor to know when a result is real and when it isn't.
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Genuine interest in financial markets and trading, demonstrable through coursework, personal projects, competitions, internships, or self-directed study.
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Strong written and verbal communication; able to explain technical work clearly to a mixed audience.
Nice to Have
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Prior internship or research experience at a hedge fund, prop trading firm, market maker, bank, or fintech.
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Exposure to market microstructure, limit order books, or high-frequency data.
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Experience with backtesting frameworks, time-series analysis, or causal inference.
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Familiarity with low-latency systems, or large-scale data infrastructure.
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Publications, open-source contributions, or trading competition results.
Apply Now: