AI Field Engineer - AI Natives

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

AI Field Engineer role focused on embedding with AI-native customers to build production GenAI systems, architect inference foundations, deploy models, guide fine-tuning strategies, and provide product feedback. Requires strong hands-on engineering, customer-facing skills, and experience with inference and fine-tuning pipelines.

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

  • 5+ years in a hands-on, customer-facing technical role: Forward Deployed Engineer, Applied AI Engin

Nice to have

  • experience with inference and fine-tuning pipelines
  • experience with model selection, SFT, DPO, RFT, and evaluation methodology
  • experience with vLLM, SGLang, quantization, and serving patterns
  • experience with load testing, latency, and throughput optimization
  • experience with customer engagement and stakeholder management
  • experience translating customer needs into product improvements

What the JD emphasized

  • 5+ years in a hands-on, customer-facing technical role
  • AI Native segment
  • core product is built on GenAI
  • inference foundations
  • production scale
  • customer pain points
  • technical relationship
  • Spend time on-site with customers

Other signals

  • customer-facing technical role
  • building POCs and MVPs
  • architecting inference foundations
  • deploying and validating new model families
  • guiding customers on model selection and fine-tuning strategy
  • building and running fine-tuning pipelines
  • designing and implementing evaluation frameworks
  • translating customer pain points into product proposals