AI Field Engineer - Enterprise

Fireworks AI Fireworks AI · Data AI · New York, NY +1 · Remote · Go To Market

AI Field Engineer role focused on embedding with enterprise customers to build and deploy generative AI solutions, architecting inference foundations, guiding fine-tuning strategies, and translating customer needs into product improvements. Requires strong Python, Kubernetes, cloud infrastructure, and LLM stack knowledge (inference, fine-tuning, evaluation).

What you'd actually do

  1. Build end-to-end POCs and MVPs alongside customer engineering teams, working inside their codebases, infrastructure, and constraints.
  2. For customers whose core product is built on GenAI, architect the inference foundations that capability depends on, and size deployments so they can scale in their market without infrastructure becoming the bottleneck.
  3. Run load tests and establish latency, throughput, and cost baselines against realistic customer traffic profiles, and tune deployments to hit those targets
  4. Deploy and validate new model families on inference frameworks (vLLM, SGLang), determining optimal shapes, quantization configs, and serving patterns across workloads.
  5. Guide customers on model selection, fine-tuning strategy (SFT, DPO, RFT), and evaluation methodology.

Skills

Required

  • Python
  • Kubernetes
  • Cloud infrastructure (AWS, Azure, GCP)
  • LLM inference
  • LLM fine-tuning (SFT, DPO, RFT)
  • Model serving
  • GPU deployment

Nice to have

  • vLLM
  • SGLang
  • quantization
  • cost optimization
  • executive-level conversations
  • stakeholder management

What the JD emphasized

  • 5+ years in a hands-on, customer-facing technical role
  • Demonstrated ability to build production software with customers
  • Strong Python skills
  • Working knowledge of the LLM stack: inference trade-offs, model serving, fine-tuning workflows
  • Experience with cloud infrastructure (AWS, Azure, GCP) and deploying models on GPU

Other signals

  • customer-facing technical role
  • build POCs and MVPs
  • architect inference foundations
  • deploy and validate new model families
  • guide customers on model selection, fine-tuning strategy
  • build and run fine-tuning pipelines
  • design and implement evaluation frameworks
  • translate customer pain points into product improvements