Senior Data Architect (USA)

Posted 6 Days Ago
Be an Early Applicant
Stamford, CT
In-Office
Senior level
Machine Learning • Business Intelligence
The Role
Design and lead a data architecture platform integrating vendor datasets, support research workflows, mentor engineers, and optimize data retrieval systems.
Summary Generated by Built In

Trexquant is seeking a highly skilled Senior Data Architect to design and lead the next-generation architecture for our research and simulation data ecosystem. This role is central to unifying Trexquant’s extensive collection of datasets—sourced from hundreds of vendors—into an accessible, efficient, and scalable data platform that supports simulation, research, and alpha generation across multiple asset classes.

The successful candidate will architect the end-to-end data infrastructure that enables researchers and simulators to seamlessly discover, query, and combine datasets across equities, futures, FX, ETFs, corporate bonds, and options. This person will design data models, storage systems, and researcher-facing interfaces that make it easy to transform raw vendor data into structured, analysis-ready forms—empowering systematic research and robust backtesting.

Responsibilities
  • Architect and implement a unified data platform that integrates hundreds of vendor datasets, providing consistent, accessible, and high-quality data to simulators and researchers.
  • Design efficient storage and retrieval systems to support both large-scale historical backtesting and high-frequency research workflows.
  • Develop intuitive researcher interfaces and APIs that allow users to easily discover variables, explore metadata, and assemble data into standardized stocks × values matrices for rapid hypothesis testing.
  • Collaborate closely with quantitative researchers and simulation teams to understand their workflows, ensuring the data platform meets real-world analytical and performance needs.
  • Establish best practices for data modeling, normalization, versioning, and quality control across asset classes and data vendors.
  • Work with infrastructure and DevOps teams to optimize data pipelines, caching, and distributed storage for scalability and reliability.
  • Prototype and deploy internal data applications that enhance research productivity and data transparency.
  • Mentor and guide data engineers to maintain robust, maintainable, and well-documented data systems.

Requirements
  • 7+ years of experience in data architecture, quantitative research infrastructure, or large-scale data engineering in a financial or research-driven environment.
  • Proven experience designing and implementing scalable data storage solutions (e.g., columnar databases, time-series systems, object stores, or data lakes).
  • Strong proficiency in Python and familiarity with modern data stack technologies (e.g., Parquet, Arrow, Spark, SQL/NoSQL, distributed file systems).
  • Deep understanding of time-series and financial data modeling, including handling multiple vendors, instruments, and frequencies.
  • Experience building data interfaces, APIs, or tools that serve researchers, data scientists, or quantitative analysts.
  • Ability to translate research needs into efficient data schemas and access patterns.
  • Bachelor’s, Master’s, or Ph.D. in Computer Science, Engineering, Mathematics, or a related quantitative field.
  • Strong collaboration, communication, and documentation skills.
  • Familiarity with cloud-based architectures (e.g., AWS, GCP, Azure) and modern data governance practices is a plus.

Benefits
  • Competitive salary plus bonus based on individual and company performance.
  • Collaborative, casual, and friendly work environment.
  • PPO health, dental, and vision insurance premiums fully covered for you and your dependents.
  • Pre-tax commuter benefits.
  • Weekly company meals.

Top Skills

Arrow
AWS
Azure
GCP
NoSQL
Parquet
Python
Spark
SQL
Am I A Good Fit?
beta
Get Personalized Job Insights.
Our AI-powered fit analysis compares your resume with a job listing so you know if your skills & experience align.

The Company
HQ: Stamford, CT
67 Employees
Year Founded: 2012

What We Do

Being a quantitative finance firm that uses Machine Learning (ML) to create multi-asset portfolios and seek profit from the market, Trexquant has continuously improved its investment and research platform since starting operations, leveraging new and emerging technologies. Trexquant uses rigorous quantitative methods to create multi-asset portfolios in global markets. To do this, Trexquant develops trading signals using its vast and continuously growing collection of data variables used as inputs for more complex trading models called Strategies. The result is an ever-growing and adapting engine built from thousands of intricate models and tens of thousands of signals, tailor-made with the goal to outperform the market during any condition. Capital is managed across 5,500+ cash equity positions across the United States, Europe, Japan, Australia, and Canada.

Similar Jobs

CrowdStrike Logo CrowdStrike

Senior Back-end Engineer

Cloud • Computer Vision • Information Technology • Sales • Security • Cybersecurity
Remote or Hybrid
20 Locations
10000 Employees
140K-215K Annually

Wells Fargo Logo Wells Fargo

Operations Coordinator

Fintech • Financial Services
Hybrid
Westport, CT, USA
213000 Employees
23-30 Hourly
Hybrid
Norwalk, CT, USA
213000 Employees
23-31 Hourly
Hybrid
12 Locations
213000 Employees
35-67 Hourly

Similar Companies Hiring

Compa Thumbnail
Software • Other • HR Tech • Business Intelligence • Artificial Intelligence
Irvine, CA
60 Employees
Amplify Platform Thumbnail
Fintech • Financial Services • Consulting • Cloud • Business Intelligence • Big Data Analytics
Scottsdale, AZ
62 Employees
Credal.ai Thumbnail
Software • Security • Productivity • Machine Learning • Artificial Intelligence
Brooklyn, NY

Sign up now Access later

Create Free Account

Please log in or sign up to report this job.

Create Free Account