Work Location: Pittsburgh
Work Mode : Onsite
Pay Range :$110K-$125K /Yr Base + Annual Bonus
The posted range is the hiring range for this role — a subset of the broader range available to employees over time — and reflects base salary across our national hiring scale. Final offers are based on several factors, including the candidate's skills and experience, internal pay equity, work location, market conditions for the role, and the specific scope and responsibilities of the position. The top of the range is reserved for candidates who notably exceed the requirements; the lower end applies to those with less experience or fewer preferred qualifications. For positions based in higher-cost zones (e.g., California, New York, New Jersey), actual compensation may exceed the posted range; your recruiter will share specifics during the process
For more information on benefits and what we offer please visit us at https://www.exlservice.com/us-careers-and-benefits
Job Summary:
Lead the design and development of scalable feature platforms and ML pipelines. Own MLOps practices, contribute to platform architecture, and mentor engineers while incorporating key data engineering best practices. The person is expected to do hands on work as well.
Responsibilities
Key Responsibilities:
- Design and implement scalable, reusable feature pipelines (batch and real-time)
- Develop advanced feature transformations and complex data models
- Optimize performance, latency, and cost efficiency
- Ensure feature quality, validation, and SLAs
- Work closely with data engineering teams on upstream data pipelines and ingestion design
- Contribute to feature store and data platform architecture
- Collaborate across Data Science, MLOps, and Platform teams
- Lead production deployment, monitoring, and incident resolution
- Mentor junior engineers and drive engineering best practices
- Translate business use cases into scalable feature logic
Must-Have Skills:
- Advanced Python and SQL
- Strong experience with distributed processing (Spark / Flink)
- Deep expertise in feature engineering patterns
- Strong understanding of data pipelines and ETL architecture
- Experience with feature stores
- Strong understanding of ML lifecycle and model optimization
- Experience with CI/CD, monitoring, and production systems
- Cloud platform experience (Azure / AWS / GCP)
- Experience in data quality, validation, and drift detection
Good to Have:
- Experience building enterprise feature or ML platforms
- Advanced performance tuning and cost optimization
- Exposure to broader data platform architecture
- Strong stakeholder communication and leadership experience
Experience:
- 6–10+ years with mentoring/technical leadership experience
Qualifications
Required skills:
- Advanced Python and SQL
- Strong experience with distributed processing (Spark / Flink)
- Deep expertise in feature engineering patterns
- Strong understanding of data pipelines and ETL architecture
- Experience with feature stores
- Strong understanding of ML lifecycle and model optimization
- Experience with CI/CD, monitoring, and production systems
- Cloud platform experience (Azure / AWS / GCP)
- Experience in data quality, validation, and drift detection
EXL New York, New York, USA Office
320 Park Avenue, 29th Floor, New York, NY, United States, 10022
EXL Jersey City, New Jersey, USA Office
Jersey City, United States, 0
EXL Newark, New Jersey, USA Office
Newark, United States
Similar Jobs
What you need to know about the NYC Tech Scene
Key Facts About NYC Tech
- Number of Tech Workers: 549,200; 6% of overall workforce (2024 CompTIA survey)
- Major Tech Employers: Capgemini, Bloomberg, IBM, Spotify
- Key Industries: Artificial intelligence, Fintech
- Funding Landscape: $25.5 billion in venture capital funding in 2024 (Pitchbook)
- Notable Investors: Greycroft, Thrive Capital, Union Square Ventures, FirstMark Capital, Tiger Global Management, Tribeca Venture Partners, Insight Partners, Two Sigma Ventures
- Research Centers and Universities: Columbia University, New York University, Fordham University, CUNY, AI Now Institute, Flatiron Institute, C.N. Yang Institute for Theoretical Physics, NASA Space Radiation Laboratory


