Tuesday, 10 March 2026

Urgent Need ML Engineer / Data scientist with PyTorch Experience at New York City, NY (hybrid)

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Hi,

 

Need locals Candidates

 

An early response is really appreciated.

 

Job Title               : ML Engineer / Data scientist with PyTorch Experience

Location               : New York City, NY (hybrid)

Duration              : 12+ Months  

 

 

Role Objective

We are looking for a Quantitative ML Engineer to lead the technical migration of complex PPNR (Pre-Provision Net Revenue) forecasting models from a Hadoop/C++/R environment to a modern Databricks and PyTorch ecosystem. You will be responsible for translating legacy mathematical logic into optimized PyTorch tensors while ensuring strict numerical parity required for US regulatory compliance (CCAR/DFAST).

 

Key Responsibilities

  • Model Translation: Reverse-engineer legacy C++ and R codebases to extract core mathematical logic, econometric formulas, and simulation parameters.
  • PyTorch Implementation: Re-implement these models in PyTorch, utilizing advanced features like torch.nn for modularity and custom Autograd functions where necessary.
  • Optimization: Refactor code to leverage Databricks’ distributed computing and PyTorch’s GPU/parallel processing capabilities to reduce model execution time.
  • Data Integration: Build high-performance pipelines from Snowflake into Databricks using Spark and PyTorch DataLoaders.
  • Parity & Validation: Conduct rigorous back-testing and sensitivity analysis to ensure the new PyTorch models yield results statistically identical to the legacy Hadoop outputs.
  • Regulatory Documentation: Collaborating with Model Risk Management (MRM) to document the migration process, architectural changes, and validation results in compliance with SR 11-7 standards.

 

Required Technical Skills

  • Frameworks: Expert-level PyTorch (specifically for non-computer vision tasks like time-series, regression, or Monte Carlo simulations).
  • Languages: High proficiency in Python and a strong ability to read and interpret C++ and R (specifically statistical packages like lme4 or forecast).
  • Platforms: Hands-on experience with Databricks (MLflow, Spark) and Snowflake (Snowpark is a plus).
  • Quantitative Finance: Deep understanding of statistical modeling, econometric forecasting, or financial risk management.
  • Big Data: Experience migrating workloads out of Hadoop/Hive environments.

 

Preferred Qualifications

  • Experience specifically with PPNR, CCAR, or DFAST regulatory modeling.
  • Masters or PhD in a quantitative field (Statistics, Financial Engineering, Physics, or Math).
  • Experience with TorchScript or ONNX for model productionisation.

 

 

Thanks & Regards,

Suresh Kumar Reddy Kandula

Lead - US IT

E: Sureshr@tekskillsinc.com | P: 732-847-0934

YOUR IT CONDUIT

INDIA | USA | CANADA | UK  I AUSTRALIA

www.tekskillsinc.com | Follow us on LinkedIn 

ISO 9001:2015 | Appraised at CMM Level 3 | WMBE Certified Company

 

 

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