Senior AI Platform Engineer

Posted Yesterday
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Boston, MA, USA
In-Office
200K-325K Annually
Senior level
Financial Services
The Role
Design and operate AI platform infrastructure, ensuring security, compliance, and enabling self-service onboarding while collaborating across engineering teams.
Summary Generated by Built In

Job Description

We are building an AI Engineering function to enable productivity and agentic capabilities across the firm, for end users, developers, and business teams.

As a Senior AI Platform Engineer, you will design and own the shared platform that powers AI systems firm-wide: inference services, agentic platforms, developer tooling, and observability.

This is a financial services environment where data protection, auditability, and regulatory compliance are foundational requirements. You will ensure that AI capabilities are secure by default, auditable end-to-end, and easy for engineering teams to adopt.

You will report to the Head of AI Engineering and partner closely with Security Engineering, AI Integration/Application teams, and core infrastructure groups.

Responsibilities

Platform Infrastructure

  • Design, build, and operate the core AI platform, including managed LLM inference services (Amazon Bedrock and related), model access management, versioning, and routing across foundation models

  • Design and operate shared integration layers, including MCP servers, an MCP registry/gateway, and authorization services that connect AI platforms with core firm systems

  • Design and operate AI productivity data pipelines and dashboards for usage, cost, and adoption metrics

  • Design the infrastructure that supports AI-assisted developer tooling (Linux VDI environments), office productivity integrations (M365/Excel), and autonomous agent frameworks

  • Develop standardized inference and agentic AI platforms that teams can adopt across use cases, including reusable components for RAG, vector databases, and model integration patterns

Security & Guardrails

  • Partner with Security Engineering to embed security controls across the full AI lifecycle

  • Design, with the AI Security Engineer and infrastructure/platform teams, the controls that prevent destructive agent actions: filesystem permissions, IAM policies, network allowlists, sandbox configurations, and execution-time policy enforcement

  • Architect a default-deny posture: agents and tools access only explicitly permitted resources, with no ability to modify or delete production data unless specifically authorized through a human-approval workflow

  • Implement pre-execution guardrails (hooks, policy engines) that intercept and validate agent actions before they run

  • Ensure AI workloads operate within the corporate network boundary: VPC endpoints, PrivateLink, no public internet egress for inference traffic

Enablement & Scale

  • Build self-service onboarding so teams can consume AI platform services with appropriate access controls

  • Design systems that enable cost-effective operation of AI workloads, including quota management and chargeback visibility

  • Operate firm-wide AI applications and centrally managed AI services

  • Define reference architectures and patterns that other engineering teams use to build on the platform

Qualifications

  • 10+ years as an infrastructure, platform, or systems engineer, with demonstrated experience building and operating shared services consumed by multiple teams, on-premises and on AWS

  • Strong expertise in AWS Bedrock (inference / agent core) and Azure OpenAI

  • Strong expertise in designing and implementing MCP registries, gateways, servers and Authorization flows

  • Hands-on experience supporting LLM-based workloads in production environments

  • Experience designing and enforcing AI security controls at the platform layer in a regulated or security-sensitive environment

  • Track record of building production-quality agentic AI patterns: tool use, function calling, MCP gateway/servers, retrieval-augmented generation, human-in-the-loop workflows

  • Track record of building production-quality platforms and developer-facing services, with emphasis on usability, standardization, and reliability

  • Strong written and verbal communication skills, with the ability to work effectively across security, application, and infrastructure teams

Preferred Qualifications

  • Experience in financial services, healthcare, or another heavily regulated industry

  • Experience with Microsoft M365 Copilot / Copilot Agents

  • Experience building observability pipelines (Splunk, ELK, Datadog, or Grafana)

  • Familiarity with containerized and Kubernetes-based environments

  • Experience with model fine-tuning workflows and ML lifecycle tooling

  • Familiarity with DLP tooling and data classification frameworks

The base salary range for this position is $200,000 - $325,000 per year.

Arrowstreet Capital operates a robust talent acquisition program, and we also seek to compensate and reward our employees competitively within our industry and in line with our merit-based culture. Our approach to total compensation includes base salaries and annual discretionary bonuses, as well as a robust benefits package. The determination of a successful candidate’s base salary placement within the listed range will vary based on the candidate’s relevant experience and qualifications (which may also include relevant certifications, credentials and other education), the job responsibilities and scope, the commensurate resulting level of the position and other relevant factors. The listed range is also an estimate, and additional information regarding base salary and other elements of total compensation offered by Arrowstreet Capital to successful applicants will be communicated during the recruitment process.  

Arrowstreet Capital is a Boston-based systematic investment firm that manages global equity portfolios for institutional investors around the world. 

All qualified applicants will receive consideration for employment without regard to sex, race, color, religion, national origin, ancestry, genetic information, age, pregnancy, medical condition, disability, veteran or military status, marital status or any other characteristic protected by federal, state, or local law.

Arrowstreet Capital is committed to working with and providing reasonable accommodations for qualified individuals with disabilities and disabled veterans. If you need a reasonable accommodation for any part of the employment process due to a disability, contact us to discuss the nature of your request and contact information.

Skills Required

  • 10+ years as an infrastructure, platform, or systems engineer
  • Strong expertise in AWS Bedrock and Azure OpenAI
  • Hands-on experience supporting LLM-based workloads in production
  • Experience designing and enforcing AI security controls
  • Track record of building production-quality agentic AI patterns
  • Strong written and verbal communication skills
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The Company
HQ: Boston, MA
438 Employees
Year Founded: 1999

What We Do

Arrowstreet Capital is a Boston-based investment manager that provides global and international equity investment strategies and fund products to institutional investors such as pension plans, endowments, foundations, and registered/unregistered commingled investment funds. We offer a select range of global equity investment strategies managed as long-only, alpha extension and long/short utilizing a broad range of instruments, including swaps and futures. Our investment process utilizes quantitative methods that focus on identifying and incorporating investment signals into our proprietary return, risk and transaction cost models. Our investment approach involves creating and investing in diversified equity portfolios. We utilize a structured investment process that attempts to add value relative to a client specific benchmark. This involves identifying opportunities across companies, sectors and countries by evaluating a diverse set of fundamental and market-based predictive factors. Portfolios are constructed through the use of a mean variance optimizer and proprietary risk and transaction cost models. Arrowstreet Capital manages approximately $100 billion for over 200 client relationships in North America, the United Kingdom, Europe and the Asia-Pacific regions.

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