LOG IN
SIGN UP
Canary Wharfian - Online Investment Banking & Finance Community.
Sign In
or continue with e-mail and password
Forgot password?
Don't have an account?
Create an account
or continue with e-mail and password
By signing up, you agree to our Terms & Conditions and Privacy Policy.

Quantitative Researcher -Data Infrastructure & Signal Development

ExperiencedNo visa sponsorship
Millennium logo

at Millennium

Hedge Funds

Posted 4 days ago

No clicks

**Quantitative Researcher - Data Infrastructure & Signal Development** Lead role in a new systematic equities pod, focusing on intraday mean reversion and market microstructure strategies. Responsible for building, maintaining data infrastructure, and developing trading signals. Utilize Python, Polars, and statistical/machine learning methods. Collaborate with the portfolio manager for signal validation and live performance monitoring. Key skills: Python proficiency (Polars, Pandas, NumPy), statistical methods, equity markets knowledge, data engineering instincts. Requires 3+ years of quantitative research/data-intensive role in a financial setting.

Compensation
$150,000 – $200,000 USD

Currency: $ (USD)

City
New York City
Country
United States

Full Job Description

Quantitative Researcher -Data Infrastructure & Signal Development

Please direct all resume submissions to QuantTalentUS@mlp.com and reference REQ-29602 in the subject.

Overview
We are seeking a versatile quantitative researcher with strong data engineering skills to join a newly formed systematic equities pod focused on intraday mean reversion and market microstructure strategies.


You will be responsible for building and maintaining the research data infrastructure, and for developing and testing trading signals using statistical and machine learning methods. This role combines data engineering rigor with quantitative research creativity.


You will work directly with the Portfolio Manager to turn raw market data into actionable trading signals.


Principal Responsibilities

Build and maintain the research data pipeline: ingestion, cleaning, normalization, and storage of tick-level and minute-bar equity data
Design and Implement a high-performance research environment using Python, Polars for interactive analysis of large datasets
Develop, backtest, and validate intraday alpha signals using statistical methods and classical machine learning (Lasso, Ridge, tree-based models)
Perform feature engineering on market microstructure data: order flow, spread dynamics, volume profiles, and cross-sectional patterns
Build automated backtesting frameworks with realistic transaction cost modeling and slippage estimation
Collaborate with the C++ developer to publish validated signals into the production trading engine
Monitor live signal performance, detect regime changes, and maintain signal quality over time
Document research findings, maintain reproducible research notebooks, and contribute to the team knowledge base

Required Skills/ Qualifications

Bachelor's or Master's degree in Mathematics, Statistics, Physics, Computer Science, Financial Engineering, or a related quantitative field
3+ years of experience in a quantitative research or data-intensive role in a buy-side or sell-side financial firm
Strong programming skills in Python with deep proficiency in Polars, Pandas, NumPy, and SciPy

Solid understanding of statistical methods: regression, time-series analysis, hypothesis testing, cross-validation
Familiarity with equity markets, market microstructure, and intraday trading dynamics
Strong data engineering instincts: schema design, data quality, pipeline reliability
Detail-oriented with strong problem-solving skills and intellectual curiosity
Excellent communication skills and ability to work In a small, fast-paced team

Preferred Skills / Experience

Experience with tick-level or order-book data analysis
Familiarity with Apache Arrow, Parquet, and columnar data formats
Experience with kdb+/q for time-series data
Familiarity with Al-assisted development tools (Cursor, Claude Code)

Millennium offers a total compensation package which includes a base salary, discretionary performance bonus, and comprehensive benefits. The estimated base salary range for this position is $150,000 to $200,000, which is specific to New York and may change in the future. When finalizing an offer, we take into consideration an individuals experience level and the qualifications they bring to the role to formulate a competitive total compensation package.

Quantitative Researcher -Data Infrastructure & Signal Development

Compensation

$150,000 – $200,000 USD

City: New York City

Country: United States

Millennium logo
Hedge Funds

4 days ago

No clicks

at Millennium

ExperiencedNo visa sponsorship

**Quantitative Researcher - Data Infrastructure & Signal Development** Lead role in a new systematic equities pod, focusing on intraday mean reversion and market microstructure strategies. Responsible for building, maintaining data infrastructure, and developing trading signals. Utilize Python, Polars, and statistical/machine learning methods. Collaborate with the portfolio manager for signal validation and live performance monitoring. Key skills: Python proficiency (Polars, Pandas, NumPy), statistical methods, equity markets knowledge, data engineering instincts. Requires 3+ years of quantitative research/data-intensive role in a financial setting.

Full Job Description

Quantitative Researcher -Data Infrastructure & Signal Development

Please direct all resume submissions to QuantTalentUS@mlp.com and reference REQ-29602 in the subject.

Overview
We are seeking a versatile quantitative researcher with strong data engineering skills to join a newly formed systematic equities pod focused on intraday mean reversion and market microstructure strategies.


You will be responsible for building and maintaining the research data infrastructure, and for developing and testing trading signals using statistical and machine learning methods. This role combines data engineering rigor with quantitative research creativity.


You will work directly with the Portfolio Manager to turn raw market data into actionable trading signals.


Principal Responsibilities

Build and maintain the research data pipeline: ingestion, cleaning, normalization, and storage of tick-level and minute-bar equity data
Design and Implement a high-performance research environment using Python, Polars for interactive analysis of large datasets
Develop, backtest, and validate intraday alpha signals using statistical methods and classical machine learning (Lasso, Ridge, tree-based models)
Perform feature engineering on market microstructure data: order flow, spread dynamics, volume profiles, and cross-sectional patterns
Build automated backtesting frameworks with realistic transaction cost modeling and slippage estimation
Collaborate with the C++ developer to publish validated signals into the production trading engine
Monitor live signal performance, detect regime changes, and maintain signal quality over time
Document research findings, maintain reproducible research notebooks, and contribute to the team knowledge base

Required Skills/ Qualifications

Bachelor's or Master's degree in Mathematics, Statistics, Physics, Computer Science, Financial Engineering, or a related quantitative field
3+ years of experience in a quantitative research or data-intensive role in a buy-side or sell-side financial firm
Strong programming skills in Python with deep proficiency in Polars, Pandas, NumPy, and SciPy

Solid understanding of statistical methods: regression, time-series analysis, hypothesis testing, cross-validation
Familiarity with equity markets, market microstructure, and intraday trading dynamics
Strong data engineering instincts: schema design, data quality, pipeline reliability
Detail-oriented with strong problem-solving skills and intellectual curiosity
Excellent communication skills and ability to work In a small, fast-paced team

Preferred Skills / Experience

Experience with tick-level or order-book data analysis
Familiarity with Apache Arrow, Parquet, and columnar data formats
Experience with kdb+/q for time-series data
Familiarity with Al-assisted development tools (Cursor, Claude Code)

Millennium offers a total compensation package which includes a base salary, discretionary performance bonus, and comprehensive benefits. The estimated base salary range for this position is $150,000 to $200,000, which is specific to New York and may change in the future. When finalizing an offer, we take into consideration an individuals experience level and the qualifications they bring to the role to formulate a competitive total compensation package.