Senior Lead Software Engineer- AI Platform engineer jobs in United States
cer-icon
Apply on Employer Site
company-logo

Chase · 1 month ago

Senior Lead Software Engineer- AI Platform engineer

Chase is a leading financial services firm, and they are seeking a Senior Lead Software Engineer to join their Corporate Sector, Infrastructure Platforms team. This role involves enhancing, building, and delivering technology products while driving significant business impact through technical expertise and collaboration with AI teams.

BankingFinancial Services

Responsibilities

Provide technical guidance and direction to support business objectives, collaborating with technical teams, contractors, and vendors
Develop secure, high-quality production code, and review and debug code written by others
Influence product design, application functionality, and technical operations through informed decision-making
Advocate for firmwide frameworks, tools, and practices within the Software Development Life Cycle
Promote a culture of diversity, equity, inclusion, and respect within the team
Architect and deploy secure, scalable cloud infrastructure platforms optimized for AI and machine learning workloads
Collaborate with AI teams to translate computational needs into infrastructure requirements
Monitor, manage, and optimize cloud resources for performance and cost efficiency
Design and implement continuous integration and delivery pipelines for machine learning workloads
Develop automation scripts and infrastructure as code to streamline deployment and management tasks

Qualification

Cloud infrastructure architectureMachine learning conceptsProgramming languagesInfrastructure as CodeContainerizationCloud computing modelsObservability toolsHigh performance computingSoft skills

Required

Provide technical guidance and direction to support business objectives, collaborating with technical teams, contractors, and vendors
Develop secure, high-quality production code, and review and debug code written by others
Influence product design, application functionality, and technical operations through informed decision-making
Advocate for firmwide frameworks, tools, and practices within the Software Development Life Cycle
Promote a culture of diversity, equity, inclusion, and respect within the team
Architect and deploy secure, scalable cloud infrastructure platforms optimized for AI and machine learning workloads
Collaborate with AI teams to translate computational needs into infrastructure requirements
Monitor, manage, and optimize cloud resources for performance and cost efficiency
Design and implement continuous integration and delivery pipelines for machine learning workloads
Develop automation scripts and infrastructure as code to streamline deployment and management tasks
Formal training or certification in software engineering concepts with 5+ years of applied experience
Hands-on experience in system design, application development, testing, and operational stability
Proficiency in at least one programming language, such as Python, Go, Java, or C#
Ability to independently tackle design and functionality problems with minimal oversight
Background in Computer Science, Computer Engineering, Mathematics, or a related technical field
Strong knowledge of cloud computing delivery models (IaaS, PaaS, SaaS) and deployment models (Public, Private, Hybrid Cloud)
Foundational understanding of machine learning concepts, including transformer architecture, ML training, and inference
Experience in solutions design and engineering, containerization (Docker, Kubernetes), and cloud service providers (AWS, Azure, GCP)
Experience with Infrastructure as Code
Deep understanding of cloud component architecture: Microservices, Containers, IaaS, Storage, Security, and routing/switching technologies

Preferred

Foundational understanding of NVIDIA GPU infrastructure software (e.g., DCGM, BCM, Triton Inference)
Hands-on experience with machine learning frameworks such as PyTorch and TensorBoard
Proficiency with observability tools like Prometheus and Grafana
Experience in ML Ops and related tooling, including MLflow
Background in high performance computing and ML frameworks (e.g., vLLM, Ray.io, Slurm)
Strong knowledge of network architecture, database programming (SQL/NoSQL), and data modeling
Familiarity with cloud data services, big data processing tools, and Linux environments (scripting and administration)

Company

Chase provides broad range of financial services. It is a sub-organization of JP Morgan Chase.

Funding

Current Stage
Late Stage

Leadership Team

leader-logo
Mike McDonnell
Managing Director, Head of Chase Travel Platform Product
linkedin
leader-logo
Nicole Sanchez
Managing Director, Consumer Bank, GM and Product Executive, Growth Financial Products
linkedin
Company data provided by crunchbase