The Role :
We're seeking an Engineering Manager for Data & Platform who thrives at the intersection of real-time data architecture and people leadership. Reporting directly to our CTO, you'll lead a high-performing team of high-performance engineers while driving the technical vision for our real-time streaming platform that powers critical trading infrastructure.
Your team will be responsible for building the backbone of our trading ecosystem, from scalable data ingestion systems to sophisticated trading modules, including PAMM (Percentage Allocation Management Module), MAMM (Multi-Account Manager Module), Copy Trading platforms, and Introducing Broker systems. This is where data engineering meets financial trading at scale.
What You'll Do :
- Lead and scale a specialized data & platform engineering team of talented developers
- Drive architecture decisions for real-time streaming platforms and trading infrastructure
- Spearhead the development of PAMM, MAMM, and Introducing Broker systems, etc.
- Design and implement scalable data ingestion pipelines handling high-volume trade and market data
- Collaborate cross-functionally with Product, QA, and Support teams
- Implement and optimize platform reliability metrics and data quality standards
- Mentor engineers in distributed systems, stream processing, and financial domain expertise
- Champion best practices in real-time data processing, monitoring, and incident response
What We're Looking For :
Experience That Matters :
Industry Depth : 10+ years of progressive software engineering experience with significant focus on data platforms, streaming systems, or high-throughput distributed architecturesData Platform Expertise : 5+ years building and scaling real-time data platforms, streaming architectures, or event-driven systems, with a deep understanding of data consistency, backpressure handling, and fault tolerance patternsTeam Leadership : 4+ years successfully managing and growing engineering teams of 8- 10 developers, with experience hiring specialized data engineers and platform architects during rapid scaling phasesSystem Complexity : Proven track record of architecting and delivering mission-critical data infrastructure that processes high-volume, low-latency data streams with strict reliability and accuracy requirementsFinancial Domain Impact : Experience working with trading systems, financial data feeds, risk management platforms, or other latency-sensitive financial infrastructure where data accuracy and timing are paramountTechnical Excellence :
Streaming & Event Processing : Expert-level experience with Apache Kafka, Apache Flink, and modern stream processing frameworks, including complex event processing, windowing operations, and exactly-once semanticsData Engineering Mastery : Deep expertise in building data pipelines, ETL / ELT processes, data modeling for real-time analytics, and handling both structured and unstructured data at scaleJava & JVM Ecosystem : Advanced proficiency in Java (11+) and JVM performance tuning, with experience building high-throughput applications that handle thousands of transactions per secondCloud-Native Data Architecture : Extensive hands-on experience with FOSS data stack as well as cloud data, containerization of stateful services, and cloud-native data storage solutionsDatabase & Storage Systems : Expert knowledge of both SQL and NoSQL databases, time-series databases, distributed caching, and storage optimization for high-frequency dataMicroservices & APIs : Strong experience in designing event-driven microservices, implementing robust API gateways, handling service mesh complexity, and managing inter-service communication patterns in distributed data systemsPlatform Reliability : Deep understanding of observability frameworks, distributed tracing, metrics collection, alerting strategies, and building self-healing systems that maintain high availabilityAI-Assisted Development : Experience leveraging modern AI coding tools (GitHub Copilot, Cursor, ChatGPT, Claude, Tabnine) to accelerate development workflows, improve code quality, and enhance team productivity while maintaining security and best practicesLeadership & Process :
Agile for Data Teams : Deep expertise in Agile / Scrum methodologies adapted for data and platform teams, with experience managing complex dependencies between data pipelines, platform services, and downstream consumersData Engineering Culture : Proven ability to establish engineering best practices specific to data platforms including comprehensive testing strategies for streaming applications, data quality validation, schema evolution management, and effective incident response for data outagesMetrics-Driven Platform Management : Experience implementing platform-specific metrics such as data processing latency, throughput rates, error rates, data quality scores, SLA adherence for data availability, and consumer satisfaction metricsQuality & Reliability : Strong focus on building reliability into data systems through automated testing, chaos engineering, data validation frameworks, and collaborative practices that ensure data accuracy and system resilienceCross-Functional Process Optimization : Track record of identifying bottlenecks in data workflows and implementing solutions that improve data delivery speed, reduce pipeline complexity, and enable faster time-to-insight for business stakeholdersMentorship-Driven Development : Strong background in pair programming, code mentoring, guided development sessions, and creating structured learning paths that help junior developers grow into senior contributors and future technical leadsCultural Fit :
Data-Driven Customer Focus : Genuine passion for understanding how data serves endusers and translating business requirements into scalable data solutions, with experience gathering feedback from traders, analysts, and business usersPlatform Ownership & Accountability : Demonstrated history of taking end-to-end ownership of data platforms and trading systems, from initial architecture through production operations, with a "you build it, you run it" mentality for critical infrastructureInnovation with Reliability : Ability to balance cutting-edge data technologies with the stability requirements of financial systems, making thoughtful decisions about when to adopt new streaming technologies versus proven solutionsCross-Domain Collaboration : Natural ability to build consensus between engineering, trading, risk management, compliance, and business intelligence teams while maintaining technical standards and data governance requirementsContinuous Learning Mindset : Passionate about staying current with evolving data engineering landscape, financial technology trends, and regulatory requirements, while creating an environment where team members experiment with new tools and methodologiesBias for Action with Precision : Comfortable making architectural decisions with incomplete information while maintaining the precision and accuracy required for financial data processing, and skilled at balancing innovation speed with regulatory complianceNice to Have : Domain & Industry :
Fintech Trading Systems : Deep understanding of trading infrastructure, market data feeds, order management systems, risk management platforms, and the unique challenges of building real-time financial data processing systemsPAMM / MAMM Experience : Direct experience building or maintaining Percentage Allocation Management Modules, Multi-Account Manager systems, Copy Trading platforms, or Introducing Broker infrastructureHigh-Frequency Data Processing : Experience with ultra-low-latency systems, real-time market data processing, algorithmic trading support, or other performance-critical applications where microseconds matterRegulatory & Compliance : Understanding of financial services regulations (MiFID II, EMIR, Dodd-Frank), data governance requirements, audit trails, and compliance reporting for trading platformsGlobal Trading Infrastructure : Experience building systems that handle multiple asset classes, serve international markets, manage complex regulatory requirements across jurisdictions, and handle diverse market data formats(ref : hirist.tech)