Purpose
Design and build high-performance trading systems and data infrastructure from the ground up for Nuvama's capital markets operations. This role combines quantitative finance expertise with cutting-edge Data Engineering to create real-time trading execution systems, market data pipelines, and risk management platforms that directly impact trading profitability and operational efficiency.
1. Functional Responsibilities / KPIs
Primary Responsibilities
Trading System Development : Build live trading execution systems, order management platforms, and order book management systems from scratch
Real-time Data Infrastructure : Design and implement high-throughput market data ingestion and preprocessing pipelines using Databricks and AWS
Backtesting Frameworks : Develop comprehensive backtesting and simulation engines for strategy validation across multiple asset classes
Solution Architecture : Create scalable system designs that handle market volatility and high-frequency data streams
Trader Collaboration : Work directly with traders and portfolio managers to understand requirements and build custom solutions
Performance Optimization : Ensure ultra-low latency execution and real-time risk monitoring capabilities
Key Performance Indicators
System Performance : Achieve sub-millisecond latency for critical trading operations
Data Accuracy : Maintain 99.99% data integrity across all market data feeds
System Uptime : Deliver 99.9% availability during market hours with zero trading halts due to system issues
Processing Throughput : Handle 1M+ market data updates per second during peak trading
Project Delivery : Complete trading system modules within agreed timelines
Trader Satisfaction : Achieve 90%+ satisfaction scores from trading desk stakeholders.
2. Qualifications
Educational Requirements
Bachelor's / Master's degree in Computer Science, Engineering, Mathematics, Physics, or Quantitative Finance
Strong foundation in data structures, algorithms, and system design principles
Understanding of financial markets, trading mechanics, and quantitative methods
Technical Certifications (Preferred)
AWS certifications (Solutions Architect, Developer, or Developer)
Databricks certifications in data engineering or analytics
Financial industry certifications (CQF, FRM) are advantageous
3. Experience
Required Experience
2-5 years of hands-on experience in quantitative finance or financial technology
Recent experience (within last 2 years) working with equity markets and trading systems
Proven track record of building trading systems, backtesting frameworks, or market data infrastructure
Experience with high-frequency data processing and real-time streaming systems
Direct collaboration experience with trading desks or portfolio management teams
Preferred Experience
Previous experience at investment banks, hedge funds, prop trading firms, or fintech companies
Experience building systems from scratch rather than maintaining legacy applications
Background in algorithmic trading strategy development and implementation
Exposure to Indian capital markets (NSE / BSE) and regulatory requirements (SEBI compliance)
Leadership experience in technical projects or mentoring junior developers
4. Functional Competencies
Programming & Development
Expert-level proficiency in at least 2 of : PySpark, Scala, Rust, C++, Java
Python ecosystem : Advanced skills in pandas, numpy, scipy for quantitative analysis
Performance optimization : Experience with memory management, parallel processing, and low-latency programming
API development : RESTful and WebSocket APIs for real-time market data distribution
Data Engineering & Infrastructure
AWS services : EC2, S3, RDS, Kinesis, Lambda, CloudFormation for scalable deployments
Database technologies : Time-series databases (InfluxDB, TimescaleDB), columnar stores (ClickHouse), traditional RDBMS
Streaming technologies : Real-time data processing frameworks (Kafka, Kinesis, Apache Spark Streaming)
Trading Systems Architecture
Order Management Systems : Order routing, execution algorithms, and trade lifecycle management
Market Data Processing : Tick data ingestion, order book reconstruction, and market microstructure analysis
Risk Management : Real-time position monitoring, limit checking, and risk control systems
Backtesting Frameworks : Zipline, Backtrader, QuantConnect, bt, PyAlgoTrade, and custom framework development
Financial Markets Knowledge
Equity Markets : Order types, market microstructure, settlement cycles, and trading regulations
Quant Developer • Nagpur, Maharashtra, India