Senior Data Architect (USA)
Designs and leads unified data architecture integrating vendor datasets for quantitative research, simulation, and alpha generation across asset classes. Requires 7+ years experience in data engineering, Python proficiency, and financial data modeling expertise.
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.
Nice-to-Haves
- Familiarity with cloud-based architectures (e.g., AWS, GCP, Azure) and modern data governance practices.
Compensation & Benefits
- Base salary range: $175,000 - $200,000 depending on candidate’s background.
- Bonus based on individual and company performance.
- PPO health, dental, and vision insurance premiums fully covered.
- Pre-tax commuter benefits.
- Weekly company meals.
Software Engineer, Data Platform
Build and maintain data infrastructure processing petabytes of data. Own end-to-end projects for data ingestion, transformation, and serving systems. Requires 3+ years of software engineering experience.
Staff Analytics Engineer
Design and maintain a robust business data layer in dbt to enable trusted GTM sales analytics, reporting, data science, and AI capabilities. Requires 8+ years in analytics engineering with advanced SQL and dbt expertise.
Data Engineer
Own and extend customer data ingestion platform and large-scale pipelines powering AI workers. Build data lake, retrieval layer, and infrastructure for syncing, enriching, and querying customer data across CRMs and third-party systems.
Staff Software Engineer, Data Platform
Staff Software Engineer building and scaling high-volume, low-latency distributed data platform services and analytics infrastructure using Java, Kinesis, Flink, Snowflake, and Kubernetes. Requires 8+ years experience and U.S. Person status for FedRAMP access.