AI Field Engineer
AI Field Engineers embed with ambitious AI-native customers to build production AI systems. They architect inference deployments, run fine-tuning pipelines, and translate field insights into product improvements while spending significant time on-site with customers.
Technical Delivery and Deployment
- Build end-to-end POCs and MVPs alongside customer engineering teams, working inside their codebases, infrastructure, and constraints.
- Architect inference foundations for GenAI products and size deployments for scale.
- Run load tests and establish latency, throughput, and cost baselines; tune deployments to hit targets.
- Deploy and validate new model families on inference frameworks (vLLM, SGLang), determining optimal shapes, quantization configs, and serving patterns.
Model Strategy and Fine-Tuning
- Guide customers on model selection, fine-tuning strategy (SFT, DPO, RFT), and evaluation methodology.
- Build and run fine-tuning pipelines directly with customers, navigating trade-offs between model families, compute cost, and quality targets.
- Design and implement evaluation frameworks that measure production-quality metrics.
Customer Engagement and Stakeholder Management
- Lead structured discovery conversations to unpack customer pain points, constraints, and success criteria.
- Own the technical relationship from first engagement through production deployment.
- Spend time on-site with customers, embedding with their engineering teams.
Product Feedback and Platform Improvement
- Identify recurring customer pain points and translate them into concrete product proposals.
- Codify repeatable deployment patterns and contribute them back to internal tooling and documentation.
- Feed customer signals back into the product roadmap.
Minimum Qualifications
- 5+ years in a hands-on, customer-facing technical role (Forward Deployed Engineer, Applied AI Engineer, Solutions Architect, ML Engineer with field exposure, or technical founder).
- Demonstrated ability to build production software with customers.
- Strong Python skills; familiarity with Kubernetes and infrastructure engineering.
- Working knowledge of the LLM stack: inference trade-offs, model serving, fine-tuning workflows (SFT at minimum; DPO/RFT a strong plus).
- Experience with cloud infrastructure (AWS, Azure, GCP) and deploying models on GPU infrastructure.
- Exceptional communication skills.
- Experience building or integrating agentic systems, tool-use chains, or AI-native developer toolchains.
Preferred Qualifications
- 10+ years in technical field or engineering roles.
- Experience with inference serving frameworks (vLLM, SGLang, TensorRT-LLM).
- Prior experience at a company with a forward-deployed or embedded engineering model (Palantir, Scale AI, Anthropic, OpenAI, BCG X, McKinsey Quantum Black, AI Native startups with FDE motions).
- Prior experience as a technical founder or early engineer at an AI-native company.
- Track record taking GenAI POCs from prototype to production-scale deployments.
- Experience with hyperscaler AI platforms (Azure AI Foundry, AWS Bedrock/SageMaker, GCP Vertex).
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