AlgoQuant Asset Management
FinTech
QuantTradeResearcher
Neural analysis suggests this role is
optimal for Mid+ candidates.
“Quant Trade Researcher at AlgoQuant Asset Management. Skills: Quantitative trading, Machine learning, Data analysis. Design systematic trading strategies. Test systematic trading strategies”
What You'll Achieve.
Ship signals in weeks
Industry & Context.
Relentlessly analytical; Unsolved problem analysis
What They're Looking For.
Must Have
5+ years experience, Python required, SQL proficiency, Minimum 5 years experience
Nice to Have
Junior candidates research track record, Senior candidates live track record, PhD preferred, GCP Professional Data Engineer, AWS Data Analytics, Databricks Certified, Dbt Certified
What You'll Do.
Design systematic trading strategies
Test systematic trading strategies
Deploy systematic trading strategies
Generate trading ideas
Validate trading ideas
Ship signals into live capital
Own research end-to-end
How You'll Work.
Team & Collaboration
Work with portfolio managers; Work with engineers
Full Job Description
Quant Trade Researcher AlgoQuant Asset Management Dubai (preferred) · London · New York – Reports to Head of Research – Rolling start About AlgoQuant AlgoQuant Asset Management is a multi-strategy digital asset manager allocating capital across 25+ internal and external quantitative trading pods. Founded in 2018, we have evolved into an institutional platform combining trading edge with strong governance and advanced technology, serving family offices and institutional investors globally. The role We are hiring Quant Trade Researchers at both junior and senior levels to design, test, and deploy systematic trading strategies across digital asset markets. You will generate ideas from first principles, validate them with rigorous statistics, and ship signals into live capital, in weeks, not quarters. You will work directly with portfolio managers and engineers who move at your pace. This role is for people who live in data, mathematics, and code, relentlessly analytical, hungry for P strong experience implementing a wide range of models, including boosting algorithms, transformers, and reinforcement learning. Strong programming ability, Python required, C++ or Rust a plus Relentless curiosity and high agency, someone who cannot walk away from an unsolved problem Comfort owning research end-to-end without hand-holding For junior candidates: a research track record strong enough that we would hire on potential, papers, Kaggle wins, competitive programming results, or systematic trading experiments For senior candidates: a live, attributable track record in systematic trading; crypto exposure a strong plus A genuinely paranoid eye for data quality and bias, not comfortable until every result has a clear explanation A genuine love for the subject, not just the paycheque
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