Applied AI ML - Senior Associate - Machine Learning Engineer

JPMorgan Chase JPMorgan Chase · Banking · LONDON, LONDON, United Kingdom · Commercial & Investment Bank

JPMorgan Chase is seeking an Applied AI/ML Senior Associate Machine Learning Engineer to join their Commercial & Investment Bank team. The role involves combining AI techniques with financial data to optimize business decisions and automate processes. Responsibilities include building scalable data science capabilities, deploying ML services, researching datasets, communicating AI capabilities, documenting processes for regulatory compliance, and collaborating on production architectures. The position requires a Masters or PhD in a quantitative discipline, strong ML theory, NLP specialization, MLOps knowledge, PyTorch experience, and cloud provider familiarity. Experience with containerization and model monitoring is also expected.

What you'd actually do

  1. Build robust Data Science capabilities which can be scaled across multiple business use cases
  2. Collaborate with software engineering team to design and deploy Machine Learning services that can be integrated with strategic systems
  3. Research and analyse data sets using a variety of statistical and machine learning techniques
  4. Communicate AI capabilities and results to both technical and non-technical audiences
  5. Document approaches taken, techniques used and processes followed to comply with industry regulation

Skills

Required

  • Masters or PhD in a quantitative discipline, e.g. Computer Science, Mathematics, Statistics
  • Solid understanding of fundamentals of statistics, optimization and ML theory. Familiarity with popular deep learning architectures (transformers, CNN, autoencoders etc.)
  • Specialism or well-researched interest in NLP
  • Broad knowledge of MLOps tooling – for versioning, reproducibility, observability etc.
  • Experience monitoring, maintaining, enhancing existing models over an extended time period
  • Extensive experience with pytorch and related data science python libraries (e.g. pandas)
  • Experience of containerising applications or models for deployment (Docker)
  • Experience with one of the major public cloud providers (Azure, AWS, GCP)
  • Ability to communicate technical information and ideas at all levels; convey information clearly and create trust with stakeholders.

Nice to have

  • Experience designing/ implementing pipelines using DAGs (e.g. Kubeflow, DVC, Ray)
  • Experience of big data technologies
  • Have constructed batch and streaming microservices exposed as REST/gRPC endpoints
  • Experience with container orchestration tools (e.g. Kubernetes, Helm)
  • Knowledge of open source datasets and benchmarks in NLP
  • Hands-on experience in implementing distributed/multi-threaded/scalable applications
  • Track record of developing, deploying business critical machine learning models

What the JD emphasized

  • comply with industry regulation
  • Track record of developing, deploying business critical machine learning models

Other signals

  • building products that automate processes
  • optimize business decisions
  • leverage latest research
  • MLOps tooling
  • deploying business critical machine learning models