Back

Staff Enterprise AI Engineer

PelotonPeloton·Fitness Technology

Apply effort

~12 min

Company site

Posted

103 days

01

About the role

ABOUT THE ROLE

Peloton is looking to transform our enterprise tech strategy with AI adoption. We are looking for a Staff Enterprise AI Engineer to serve as the "Founding Engineer" of our Enterprise AI Platform.This is not a traditional Data Science role. You will not spend your days tweaking hyperparameters. Instead, you will architect and build the Operating System that enables our Product, People, and Operations teams to deploy AI Agents safely and at scale. You will act as a "Player/Coach," laying the technical foundation (Infrastructure, Security, Orchestration) while guiding a team of engineers to execute the vision. You will build the "Golden Path" that helps everyone at Peloton to leverage AI securely for the competitive advantage of Peloton.

YOUR DAILY IMPACT AT PELOTON

  • Architect the "Intelligence & Integration" Layers
  • Design and build a scalable Agentic Orchestration Platform (using LangChain, LangGraph, or custom frameworks) that allows internal developers to spin up autonomous agents.
  • Implement the "Integration Layer" ensuring all AI agents connect to internal APIs (Workday, Snowflake, SAP) via secure, standardized protocols (Model Context Protocol - MCP).
  • Solve the "State Problem" for AI, architecting memory stores (Vector DBs like Pinecone/Weaviate) that persist context across user sessions.
  • Enforce "Security by Design"
  • Partner with Security leadership to implement Identity Propagation. Ensure agents execute tasks using the user’s specific OAuth scopes, preventing privilege escalation.
  • Build "Data Clean Rooms" and PII masking pipelines to ensure sensitive member or employee data is never leaked to model providers.
  • Deploy EvalOps pipelines to automatically test models for hallucination and regression before they hit production
  • Define the Engineering Standards
  • Define the "Guide vs. Control" standards for the organization. Create the templates and libraries that allow analysts to "Vibe Code" (low-code/assisted coding) safely within our guardrails.
  • Perform rigorous code reviews for partner teams and vendors, ensuring high performance, low latency (<200ms), and cost efficiency
  • Capital-Efficient Scale
  • Optimization of inference costs by implementing Semantic Caching and routing logic (e.g., routing simple queries to smaller/cheaper models).
  • Leverage Kubernetes (EKS) to manage ephemeral compute resources for AI workloads.
  • A Systems Builder: You view AI as a distributed systems problem. You care about latency, rate limiting, and eventual consistency just as much as you care about prompt engineering.
  • A Pragmatist: You don't build "Science Projects." You build tools that solve specific business frictions (e.g., automating Content PR approvals or speeding up Supply Chain queries).
  • A Force Multiplier: You enjoy mentoring senior engineers and demystifying AI for non-technical stakeholders (from HR to Product).

YOU BRING TO PELOTON

  • Experience: 10+ years of software engineering experience, with 3+ years specifically focused on MLOps, LLM Orchestration, or Large Scale Distributed Systems.
  • The Stack: Deep fluency in Python (production grade) and Go (preferred for platform services).
  • AI Engineering: Proven experience deploying RAG (Retrieval Augmented Generation) and Agentic Workflows in production. Experience with frameworks like LangChain, Semantic Kernel, or similar.
  • Platform Engineering: Strong background in Kubernetes (EKS), Docker, and Infrastructure-as-Code (Terraform).
  • Security: Solid understanding of OAuth 2.0 (OBO flow), RBAC, and zero-trust networking principles.
  • Communication: Ability to explain complex technical trade-offs (e.g., "Latency vs. Accuracy") to executive stakeholders.

BONUS

  • Experience implementing Model Context Protocol (MCP) or similar standardized tool interfaces.
  • Background in FinOps (managing GPU/Cloud spend).
  • Experience navigating highly regulated environments (HIPAA, SOX, etc.).
02

Aplyr's read

Peloton is a fitness technology innovator, attracting tech-savvy professionals passionate about revolutionizing home workouts with immersive experiences.

Synthesized from recent postings & public sources

What's promising

  • Peloton's subscription model provides recurring revenue and customer engagement.
  • The company's integration of technology with fitness offers unique user experiences.
  • Strong community engagement enhances customer loyalty and brand identity.

What to watch

  • Peloton faces intense competition from other fitness tech companies.
  • High equipment cost may limit market penetration.
  • Supply chain challenges have previously impacted product availability.

Why Peloton

  • Peloton combines high-tech equipment with interactive content for home fitness.
  • The brand fosters a strong, active community through its platform.
  • Peloton's live and on-demand classes offer flexibility and variety.

Aplyr’s read is generated by AI from public sources. Was it useful?

03

About Peloton

Peloton Interactive is a fitness technology company that offers a subscription-based platform for live and on-demand workout classes, primarily through its high-tech stationary bikes and treadmills. By combining cutting-edge equipment with a vibrant community and engaging content, Peloton has transformed the way people approach fitness and wellness at home.

04

Similar roles