Quantitative Developer Internship (Winter 2026)

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Quantitative Developer Intern – Trading Systems
Company: Blockhouse
Location: Remote (US time zones preferred; NYC in person if possible)
Type: Internship (Start ASAP, through end of May. Return offers granted to high performers)
About Blockhouse
Blockhouse is building an integrated systematic investment platform that designs, deploys, and operates fully automated trading strategies across liquid global markets. Our focus is on high-performance execution, robust research infrastructure, and production-grade trading systems that support systematic strategies end to end.
We are actively building the core infrastructure for HFT-style strategies: low-latency execution services, real-time market data pipelines, simulation and backtesting engines, and the operational systems required to run strategies at scale. This is not a research-only environment — the systems we build are used directly in live trading.
We’re looking for engineers who want to work close to the metal, understand the realities of production trading systems, and are excited to help build the foundation of a modern systematic investment platform.
Role Overview
This is a hands-on trading systems and infrastructure role focused on building and optimizing components that sit directly in the trading path. You’ll work closely with senior quant developers and researchers on low-latency services, messaging systems, and execution logic.
This role is ideal for someone who enjoys modern C++, is comfortable in UNIX environments, and wants real exposure to how systematic strategies are run in production.
What You’ll Do
Build and optimize performance-critical components in modern C++ (C++17+)
Develop and maintain event-driven execution systems and real-time services
Work with message buses to handle market data and order flow
Debug and profile low-latency systems using GDB and standard UNIX tooling
Implement and test trading simulations and backtesting components
Collaborate with quant researchers to translate strategy logic into production-ready systems
Improve system reliability, observability, and fault tolerance
Deploy and operate services in UNIX/Linux environments (AWS exposure a plus)
Requirements (Must-Haves)
Strong proficiency in modern C++ (C++17 or newer) — required
Solid experience working in UNIX/Linux environments
Hands-on experience with GDB for debugging complex systems
Familiarity with message buses / messaging systems (e.g., Kafka, ZeroMQ, custom pub/sub)
Strong systems fundamentals: memory management, concurrency, performance tradeoffs
Ability to write clean, modular, and well-tested code
Nice-to-Haves
Exposure to trading systems, market data, or execution infrastructure
Experience with Python for tooling, testing, or research integration
Familiarity with networking concepts (TCP/IP, latency considerations)
Experience with Docker or cloud environments (AWS)
Prior work on simulation, backtesting, or event-driven architectures
Why Join Blockhouse
Build real trading infrastructure used in live systematic strategies
Work directly on HFT-style systems, not toy or research-only projects
Direct mentorship from senior quant developers and ex-HFT engineers
High ownership and technical responsibility
Clear path to a return offer for strong performers
Fast-paced, engineering-driven culture with real production stakes
Compensation: $25 - 40 / hr cash + equity + PnL; structure depends on experience and availability. We offer benefits as well
International Students: CPT/OPT supported; flexible arrangements available.
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