Remote Research Jobs in Web3

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Job Position Company Posted Location Salary Tags

Kronosresearch

Remote

$121k - $125k

Okx

Remote

$106k - $108k

Integra

Remote

$32k - $54k

Gsrmarkets

Remote

$90k - $120k

Tether Operations Limited

62 Roma IT

$98k - $115k

Zinnia

Remote

Tether Operations Limited

45 Roma IT

$98k - $115k

Zscaler

Remote

$84k - $120k

Okx

Remote

$126k - $131k

Integra

Remote

Nomos

Remote

$81k - $95k

Logos

Remote

$81k - $95k

Dvtrading

Remote

$84k - $120k

Tether Operations Limited

Sao Paulo, Brazil

$90k - $125k

Tether Operations Limited

Dublin, Ireland

$90k - $125k

Kronosresearch
$121k - $125k estimated
Remote

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.