Senior Quantitative Developer
8–12 Years | Beacon by CWAN | India
About Beacon Platform by CWAN
Beacon is a cloud-native, cross-asset risk analytics and quantitative development platform used by top-tier asset managers and banks. It provides a transparent, extensible environment for building, deploying, and scaling valuation models, pricing libraries, and risk analytics across asset classes — including derivatives, structured products and fixed income — combining pre-built financial applications with a flexible developer infrastructure that enables quants and model developers to write custom pricing and valuation logic, run scenario analysis, and integrate models directly into front-office and risk workflows, all without the constraints of legacy systems.
About the Role
As a Senior Quantitative Developer you will be a technical authority on Beacon's pricing and risk platform — setting the architectural direction for our model libraries, mentoring the team, and driving the delivery of complex quantitative features across fixed income, commodities, equities, and FX. You will own the quality, correctness, and performance of our core pricing engines, lead the design of scalable risk infrastructure, and act as the bridge between engineering, product, and clients.
What You'll Do
Lead the architectural design of Beacon's Python pricing and risk libraries — establishing patterns for model extensibility, calibration frameworks, and performance optimisation.
Own end-to-end delivery of pricing models for complex fixed income instruments (exotics, structured credit, callable/putable bonds, swaptions, CMS) and commodity derivatives (Asian options, spread options, energy forwards), FX and Index products.
Define and enforce standards for pricing model implementation, testing (unit, integration, regression), validation workflows.
Serve as the primary technical reviewer for model implementations, architectural proposals, and code standards across the quant engineering team.
Architect and manage scalable cloud infrastructure (AWS EMR, S3, Glue, Lambda, ECS) supporting quant research and front-office production at scale.
Ensure platform reliability through robust EOD processing pipelines, automated regression testing, and observability tooling.
Design flexible infrastructure to support client-specific configurations without compromising performance or maintainability.
Implement market data pipelines to source data from various market data vendors.
Act as a senior technical voice in client discussions, implementation scoping, and pre-sales engagements where deep pricing expertise is required.
Mentor mid-level developers; conduct technical interviews and contribute to hiring decisions.
What You Bring
Required
8–12 years of experience in quantitative development or financial engineering, with a strong production track record in pricing and risk systems.
Expert-level Python — ability to design libraries from scratch, optimise hot paths (numpy vectorisation, Cython, multiprocessing), and set team-wide coding standards.
Deep fixed income pricing knowledge across multiple instrument types: rates derivatives (vanilla and exotic), credit products, structured products — including model calibration and Greeks.
Strong commodities derivatives knowledge — energy, metals, or agricultural markets; seasonality models, multi-factor commodity models.
Proven experience owning a quant model or library end-to-end in a production fintech or financial services environment.
Experience with CI/CD pipelines, automated testing frameworks, and production observability tooling.
Proven ability to lead and grow technical teams — mentoring junior/mid developers and contributing to hiring.
Degree (B.Tech / M.Tech / MSc / MFE) in a quantitative discipline — mathematics, physics, engineering, computer science, or financial engineering.
Nice to Have
Experience with stochastic volatility models (SABR, Heston, LMM) and their numerical implementation, Monte-Carlo Simulation.
C++ expertise — writing or maintaining shared pricing libraries consumed by Python wrappers (pybind11, ctypes).
Familiarity with XVA (CVA, DVA, FVA) frameworks and their computational demands.
Experience with real-time risk (intraday VaR, P&L attribution) pipelines at scale.
Experience with distributed job orchestration (Airflow, Prefect) and large-scale EOD risk workflows.
Familiarity with real-time data ingestion frameworks (Kafka, Kinesis).
Experience with distributed computing frameworks (PySpark, Spark) for large-scale data processing.
What Will Make You Stand Out
Track record of delivering and operating robust quant systems at scale in a front-office or risk platform environment.
Experience designing systems for automated recovery, failover, and monitoring of analytics jobs.
Prior experience integrating complex model libraries into production platforms while maintaining reliability and transparency.
Demonstrated ability to act as a technical bridge between quant research, engineering, and client-facing teams.
Skills at a Glance
Expert Python · Fixed Income & Exotic Derivatives · Commodities Pricing · SABR / HJM / LMM · AWS (EMR, S3, Glue, Lambda, ECS) · Risk Infrastructure Architecture · EOD Data Pipelines · Data Governance · CI/CD & Observability · C++ (nice to have) · XVA (nice to have) · · Team work, Leadership & Mentoring

