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JPMorgan Vice President Applied AI/ML Lead 
United States, Texas, Plano 
446811049

23.11.2024

Responsibilities:

  • Build and train production grade ML models on large-scale datasets to solve various business use cases for Commercial Banking.
  • Use large scale data processing frameworks such as Spark, AWS EMR for feature engineering and be proficient across various data both structured and un-structured.
  • Use Deep Learning models like CNN, RNN and NLP (BERT) for solving various business use cases like name entity resolution, forecasting and anomaly detection.
  • Build ML models across Public and Private clouds including container-based Kubernetes environments.
  • Develop end-to-end ML pipelines necessary to transform existing applications and business processes into true AI systems.
  • Build both batch and real-time model prediction pipelines with existing application and front-end integrations.
  • Collaborate to develop large-scale data modeling experiments, evaluating against strong baselines, and extracting key statistical insights and/or cause and effect relations.

Required qualifications, capabilities and skills:

  • 6+ years working experience as a Data Scientist.
  • Advanced Degree in field of Computer Science, Data Science or equivalent discipline.
  • Expertise with Python, PySpark, DL frameworks like TensorFlow and MLOps.
  • Experience in designing and building highly scalable distributed ML models in production (Scala, applied machine learning, proficient in statistical methods, algorithms).
  • Experience with analytics (ex: SQL, Presto, Spark, Python, AWS suite).
  • Experience with machine learning techniques and advanced analytics (e.g. regression, classification, clustering, time series, econometrics, causal inference, mathematical optimization).

Preferred qualifications, capabilities and skills:

  • Experience working with end-to-end pipelines using frameworks like KubeFlow, TensorFlow and/or crowd-sourced data labeling a plus.