Applied Aiml Associate- Python & Data Science Engineering

JPMorgan Chase JPMorgan Chase · Banking · GLASGOW, LANARKSHIRE, United Kingdom · Asset & Wealth Management

This role focuses on engineering and deploying LLM-based and generative AI applications within a financial institution. It involves developing, deploying, and ensuring the scalability and reliability of AI/ML solutions in production, with a strong emphasis on MLOps practices and utilizing vector databases and cloud platforms like AWS.

What you'd actually do

  1. Co-Develop and implement LLM-based, machine learning models and algorithms to solve complex operational challenges.
  2. Design and deploy generative AI applications to automate and optimize business processes.
  3. Collaborate with stakeholders & Data Scientists to understand business needs and translate them into technical solutions.
  4. Analyze large datasets to extract actionable insights and drive data-driven decision-making.
  5. Ensure the scalability and reliability of AI/ML solutions in a production environment.

Skills

Required

  • API design and engineering
  • Python & async programming
  • testing frameworks such as pytest
  • Index & Vector DBs such as Opensearch./ElasticSearch
  • deploying AI/ML applications in a production environment
  • deploying models on AWS platforms such as SageMaker or Bedrock
  • MLOps practices
  • generative AI models, including GANs, VAEs, or transformers
  • data preprocessing
  • prompt engineering
  • feature engineering
  • model evaluation techniques
  • AI coding tools and editors such as Cursor, Windsurf or CoPilot
  • machine learning frameworks such as TensorFlow, PyTorch, PyTorch Lightning, or Scikit-learn
  • cloud platforms (AWS)
  • containerization technologies (Docker, Kubernetes, Amazon EKS, ECS)

Nice to have

  • cloud storage such as RDS and S3
  • Diffusion models

What the JD emphasized

  • deploy generative AI applications
  • production environment
  • MLOps practices

Other signals

  • deploy generative AI applications
  • production environment
  • MLOps practices