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Quantitative Researcher

BlockTech

Amsterdam, NLhybridPosted May 29, 2026

At a glance

Highlights

  • Short feedback loops with traders
  • Competitive compensation and bonus
  • Extensive training and learning budget
  • Gym membership reimbursement

Why this role might suit you

The role provides end‑to‑end ownership of model development in a fast‑moving crypto trading environment, competitive compensation, strong mentorship, and a collaborative culture that blends research, engineering, and trading.

Skills

pythonpytorchtensorflowscikit-learnnumpypandasmodel-deploymentbacktestinganomaly-detectionfeature-engineeringquantitative-researchsoftware-engineering

About the role

About BlockTech

BlockTech is a fast-paced algorithmic trading firm at the frontier of global cryptocurrency derivatives and spot markets. We trade 24/7 across some of the most data-rich, fast-moving venues in finance, and we use that data to build smarter models, sharper signals, and more adaptive systems.

Crypto is one of the few markets where a trader can meaningfully move the edge. Liquidity moves fast, microstructure keeps evolving, and the feedback loop between a trading decision and live PnL couldn’t be shorter.

We’re growing fast, and we’re looking for a Quantitative Trader to take ownership of our linear (Delta1) book and help us push that edge further.

The role

As a Quantitative Researcher on our trading floor, you’ll own ideas end-to-end from hypothesis and dataset construction, through feature engineering, model training and backtesting, all the way to live deployment, monitoring, and iterative improvement.

You’ll sit shoulder-to-shoulder with Quantitative Traders and Quantitative Analysts, and your work will directly drive how we price and trade.

What you’ll work on

Collaborating closely with traders to translate research insights into systematic trading strategies

Designing, developing and deploying models for price prediction, signal generation, execution, and anomaly detection across crypto derivatives and spot markets using state-of-the-art AI and ML techniques.

Building robust trading, backtesting and research infrastructure alongside our engineers, so promising ideas can move into production quickly and safely

Owning models in production: monitoring live performance, diagnosing decay, and iterating on what you ship

What we offer

A seat on a trading floor where research, engineering, and trading happen a few metres apart, guaranteeing short feedback loops, real ownership, and direct impact on live PnL

Competitive compensation consisting of a base salary combined with a very attractive bonus plan based on individual and company performance

Outstanding performance is rewarded with the opportunity to buy into the trading fund

Pension plan, company laptop, and reimbursement of your internet costs at home

An extensive in-house training program and an annual learning & development budget

The opportunity to work at the forefront of automated trading using state-of-the-art technology, in an environment that embraces AI to both accelerate productivity and advance our systems and models

Gym membership reimbursement and the opportunity to engage in various sports during working hours, including kickboxing, CrossFit, fitness, and soccer

Regular social events, including weekly Friday drinks, monthly outings, quarterly sports competitions and bi-annual trips abroad

Daily breakfast and warm lunch. Additionally, snacks and drinks are provided throughout the day

For internationals: All-in relocation package and Dutch classes

Job requirements

A strong academic background in a quantitative discipline (Mathematics, Physics, Statistics, Computer Science, Econometrics, ML/AI, or similar), typically a PhD or an MSc with strong research experience

Fluency in Python and the modern ML stack (PyTorch and/or TensorFlow, scikit-learn, NumPy, pandas)

A deep, intuitive grasp of overfitting, generalisation, validation design, and feature engineering - you can explain why a model works, not just that it does

Solid software engineering instincts: you write code that other people can read, test, and run in production

Genuine curiosity about financial markets and market microstructure - prior finance experience is welcome but not required

Clear written and verbal English, and the ability to communicate complex ideas to a mixed audience of researchers, engineers, and traders

Nice to have

Hands-on experience building and deploying ML models, ideally on time-series, forecasting, or anomaly detection problems

Familiarity with crypto markets, derivatives pricing, and/or high-frequency trading data

Our culture

At our core, we are a team of passionate trading and tech enthusiasts committed to revolutionizing trading through automation. Our collaborative approach ensures that everyone contributes to achieving our ambitious goals.

In this role, you will be both challenged and stretched, with ample opportunities for growth and development, both within and beyond your main responsibilities.

We invest in our people by offering competitive compensation and benefits, fostering innovation, and celebrating success. Our commitment to personal development transcends traditional norms; we provide an equal playing field, promote reverse leadership, and offer boundless growth opportunities for all our employees.

Join us to unlock your potential and drive innovation in the exciting world of algorithmic trading.

Questions about this role

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