We are a Singapore-based quantitative trading firm and fintech startup trading U.S. equities with fully automated intraday strategies. We run real capital, real infrastructure, and real research pipelines.
We also build an AI-native quant research platform internally and commercially — meaning you’ll be working with institution-grade data, backtesting systems, and research workflows, not toy notebooks.
You will not be cleaning CSVs all day. We provide:
Clean, institutional-grade historical & intraday data
A production-grade C++ / Python backtesting engine
Full research infra, logs, factor libraries, and analytics stack
Clear research problems with real PnL impact
Your job is to turn ideas into strategies and features that make or save money.
* What You’ll Do
You will work directly with our quant team on systematic strategy R&D, including:
Research new alpha ideas for intraday U.S. equities (long & short)
Design quantifiable features / factors from price, volume, microstructure, regime, etc.
Implement and test strategies in our backtesting framework
Analyze large-scale backtest results:
PnL distributions
Drawdowns
Regime performance
Failure modes
Improve existing strategies:
Entry logic
Exit logic
Filters
Risk logic
Help build strategy variants and parameterized families instead of one-off ideas
Write clean research notes: hypothesis → test → result → conclusion
If you perform well, your work can and will be deployed to live trading.
* What We Provide (You Don’t Have to Worry About This)
* Clean, survivorship-bias-safe historical data
* Intraday minute data, corporate actions, session logic handled
* Fast backtesting engine
* Research tooling, logs, analytics, dashboards
* Existing factor & strategy libraries
* Guidance on what actually works in small-cap / intraday trading
You focus on thinking, testing, and improving edge.
* What We’re Looking For
Must Have:
Strong logical thinking and quantitative intuition
Comfortable with Python (for research / analysis)
Basic understanding of:
Backtesting
Overfitting
Data leakage
Regime dependency
Able to think in if-this-then-that systematic rules
Curious, skeptical, and not emotionally attached to ideas
Nice to Have:
Experience with:
Trading strategies
Backtesting frameworks
Statistics / ML
Financial time series
Experience with pandas / numpy / vectorized analysis
Interest in market microstructure, intraday behavior, or small caps
We do NOT require:
Prior profitable trading
Finance degree
Fancy ML background
We care about how you think, not your resume.
* What Kind of Problems You’ll Work On
Examples:
Why do some parabolic shorts fail and squeeze while others fade cleanly?
How to detect regime shifts in small caps?
How to cluster trades into behavioral buckets?
How to turn 10 similar strategies into one adaptive strategy?
How to detect crowded vs fragile price structures?
How to build context-aware filters instead of static rules?
* What You’ll Learn
How real quant research is done in a trading firm
How to avoid fake edges and backtest lies
How to think in distributions, not examples
How to design strategies as systems, not one-off setups
How professional research pipelines are structured
How ideas move from research → backtest → production
* Compensation & Upside
Monthly stipend (depends on profile)
High performers may get:
Extension to full-time
Performance-based bonus
Direct ownership over live strategies
* Culture Fit (Important)
You must like being wrong and updating fast
You must enjoy killing your own ideas
You must prefer truth over ego
You must be comfortable with:
“90% of ideas don’t work. That’s normal.”
Kindly note that only shortlisted candidates will be notified.
Related Job Searches:
- Company:
Varsity Holdings - Designation:
Quant Researcher – Strategy Development Intern - Profession:
Banking / Finance - Industry:
Finance - Location:
Downtown Core
