Forward Deployed Engineer

Apple Apple · Big Tech · Cupertino, CA +1 · Sales and Business Development

This role is for a Forward Deployed Engineer who bridges the gap between Sales teams and the AI-driven insight platform. The engineer will translate business problems into code, build prototypes, operationalize models, and integrate solutions with platform APIs. The role requires strong full-stack engineering skills, familiarity with AI/ML concepts, and the ability to partner with data science and engineering teams. The goal is to influence the platform roadmap and drive self-service adoption.

What you'd actually do

  1. Serve as the primary technical bridge between Sales teams and the product and engineering organization, translating frontline business problems into engineering specifications and shippable solutions.
  2. Embed directly with Sales teams to understand their workflows, gather actionable signal on platform gaps, and become the trusted technical partner they reach for first.
  3. Build prototypes, demos, and reference implementations on top of the platform that solve concrete Sales problems quickly, then distill the most valuable patterns into reusable abstractions that scale our speed and quality of delivery — partnering with Product and Engineering to graduate them into first-class platform features.
  4. Partner closely with the data science team to operationalize novel models, scoring algorithms, and analytical workflows into scalable, production-grade services.
  5. Partner with the software and AI engineering teams to integrate Sales-facing solutions with platform APIs, SDKs, and shared services — championing the shift from one-off consulting work to self-service adoption.

Skills

Required

  • Python
  • JavaScript/Node.js
  • SQL
  • REST APIs
  • GraphQL
  • microservices
  • distributed systems architectures
  • AI/ML concepts
  • LLM-powered systems lifecycle
  • prompt design
  • retrieval pipelines
  • evaluation harnesses

Nice to have

  • full-stack web frameworks
  • Node.js/Express.js
  • Apollo GraphQL
  • React
  • Dataiku
  • Snowflake
  • Airflow
  • Python-based analytics pipelines
  • Sales support
  • Operations support
  • Finance support
  • commercial workflows

What the JD emphasized

  • 8+ years of experience
  • Functional literacy in AI/ML concepts — you understand the lifecycle of LLM-powered systems (prompts, retrieval, evaluation, inference) and can discuss the engineering trade-offs involved.
  • Demonstrated experience partnering with applied scientists, data scientists, or researchers — you can navigate the ambiguity of research-style workflows and operationalize prototype code into production-grade services.
  • Hands-on experience building or integrating LLM-powered or agentic AI applications, including prompt design, retrieval pipelines, and evaluation harnesses.

Other signals

  • Translating ambiguous business problems into shippable code
  • Building prototypes that solve real Sales problems
  • Operationalize novel models, scoring algorithms, and analytical workflows into scalable, production-grade services
  • Integrate Sales-facing solutions with platform APIs, SDKs, and shared services
  • Act as the voice of the user
  • Partner closely with the data science team to operationalize novel models