Data Scientist, NLP & Trading Strategies (Quantitative)
at Binance
Posted 7 hours ago
No clicks
- Compensation
- Not specified
- City
- Not specified
- Country
- Not specified
Currency: Not specified
Data Scientist specializing in Quantitative Trading NLP at Binance. Leverage natural language understanding techniques such as sentiment analysis, intent recognition, and named-entity extraction on financial news, social media, and text streams to design and refine algorithmic trading strategies. Build machine-learning models in Python and apply time-series analysis to uncover predictive signals, backtest and optimize strategies to maximize returns while managing risk. Collaborate with data science and trading teams to drive data-informed investment decisions and continuously improve model performance.
Responsibilities:
- Research and develop quantitative trading strategies using NLU methods such as sentiment analysis, intent recognition, named-entity extraction on financial news, social media, and other text sources
- Design and build machine-learning models to uncover predictive trading signals and perform exploratory data analysis on large, complex datasets
- Apply mathematical techniques (probability, statistics, time-series analysis) to refine and strengthen trading models
- Rigorously backtest strategies against historical data and iteratively optimise models to boost performance and curb risk
Requirements:
- At least 2 years of relevant experience in data science, machine learning, or natural language processing
- Bachelor’s or Master’s degree in Computer Science, Mathematics, Statistics, Financial Engineering, or a related discipline
- Strong mathematical foundation: probability, statistics, linear algebra, time-series analysis, and familiarity with ML frameworks (Scikit-learn, TensorFlow, PyTorch)
- Solid grasp of NLU techniques, including sentiment analysis, intent recognition, and named-entity recognition
- Proficiency in Python or R, with hands-on experience in NLP libraries (SpaCy, NLTK, Transformers)
- A passion for exploring undefined problem spaces in the fast-changing crypto world

