In collaboration with the Research teams, the Front Prediction team develops and maintains the prediction models (alpha signals) used to make decisions for our automated trading systems.
As a member of this team, you will play a key role in the full lifecycle of predictive models, from research integration to robust, scalable production deployment.
We seek a Full Stack Engineer with 5-10 years of experience to build and scale our Prediction Services platform. You'll develop cloud-native infrastructure, AI-powered applications, and user interfaces that enable quantitative researchers to deploy and monitor predictive models across global markets. Banking or hedge fund experience highly valued.
Key Responsibilities
• Design and implement scalable APIs and backend services for predictor deployment, testing and orchestration
• Build React-based frontends for model monitoring, metadata management, and what-if analysis capabilities
• Develop and integrate generative AI agents for code generation, workflow automation, and model transformation
• Architect cloud infrastructure (AWS preferred) with IaC practices and comprehensive observability
• Provide L2 support for production systems serving quantitative trading strategies
Required Technical Skills
• Cloud Infrastructure: Production experience with AWS, GCP, or Azure (compute, storage, networking, security)
• Backend Development: Python API development (FastAPI/Flask), service architecture (REST over HTTP), async patterns
• AI & Agents: Hands-on experience with LLMs, agent frameworks (LangChain/LangGraph), prompt engineering
• Frontend Development: React, TypeScript, state management, component libraries, responsive design
• Databases: SQL proficiency with Oracle or PostgreSQL, query optimization, schema design
• CI/CD: Terraform, Jenkins/GitLab CI, containerization (Docker & Kubernetes), automated testing
• Observability: Metrics, logging, tracing, alerting (Prometheus/Grafana/ELK or cloud-native equivalents)
Profile description:
Preferred Technical Skills
• AWS Ecosystem: CodeBuild, S3, ECR, ECS/EKS, Lambda, CloudWatch, IAM best practices
• Distributed Computing: Ray framework for ML workload orchestration and parallel processing
• Vector Databases: ChromaDB, Pinecone, or Weaviate for RAG applications
• ML Frameworks: scikit-learn, PyTorch for model integration and inference pipelines
Soft Skills & Team Dynamics
• Collaborate within cross-functional Agile/Scrum teams (researchers, software engineers, quant devs)
• Strong communication skills for technical documentation and stakeholder engagement
• Problem-solving mindset with ability to triage production issues and provide L2 support
• Adaptability to evolving requirements in a fast-paced quantitative finance environment
Meet Tifenn, Associate- Prediction- Front Office Technology
Meet Haithem, Executive director - Head of IT Portfolio
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