| Job Position | Company | Posted | Location | Salary | Tags |
|---|---|---|---|---|---|
Kronosresearch | Remote | $121k - $125k | |||
Kronosresearch | Remote | $105k - $112k | |||
Tastylive | Remote | $150k - $165k | |||
Tastylive | Remote | $80k - $90k | |||
| Learn job-ready web3 skills on your schedule with 1-on-1 support & get a job, or your money back. | | by Metana Bootcamp Info | |||
Tastylive | Remote | $109k - $127k | |||
Bitgo | Remote | $165k - $210k | |||
Bitgo | Remote | $180k - $220k | |||
Bitgo | Remote | $165k - $210k | |||
Bitgo | Remote | $180k - $230k | |||
Bitgo | Remote | $180k - $220k | |||
Bitgo | Remote | $165k - $200k | |||
Bitgo | Remote | $160k - $230k | |||
Bitgo | Remote | $260k - $320k | |||
Bitgo | Remote | $95k - $111k | |||
Bitgo | Remote | $120k - $150k |
Role Overview We are seeking an experienced Machine Learning Researcher to join our research team. This role requires expertise in designing and deploying deep learning models within high-performance, low-latency trading systems. You will be working on developing robust, scalable models and integrating them into our trading infrastructure. Responsibilities
Data Analysis & Preprocessing: Understand and preprocess orderbook data. Deep Learning Model Design: Design models for time-series and orderbook data (Transformers, RNNs, CNNs, Attention). Scalable Training Implementation: Implement parallelized data loading pipelines. Feature Engineering: Develop and optimize orderbook features using C++. Backtesting & Evaluation: Conduct rigorous backtesting across markets. Production Integration: Deploy models into real-time, low-latency systems.
Requirements
Background in machine learning or quantitative research, preferably related to financial markets. Experience deploying ML models in real-time, low latency environments is a plus. Familiarity with optimizing model latency and inference speed(e.g., KV caching, quantization, pruning) is advantageous. Open to both experience candidates and highly motivated fresh graduated.
Technical Skills
Deep Learning Architectures: Transformers, RNNs, CNNs, Attention mechanisms. Programming Languages: Python, C++, Jax/PyTorch Model Optimization: Optimizing models for high-performance trading systems.
Analytical & Communication Skills
Strong mathematical and statistical background (probability theory, linear algebra, calculus). Ability to articulate complex technical concepts.
Motivation & Learning
Passion for applying machine learning to quantitative finance. Drive to continuously improve models.