Posted at: 9 July

AI Engineer - Enterprise (Remote, USA - San Mateo, CA)

Company

CompanyHR POD - Hiring Talent Globally

Remote Hiring Policy:

The company embraces a flexible remote work policy, hiring talent from various regions to build a diverse workforce. Team members are located in multiple countries, collaborating across time zones.

Job Type

Full-time

Allowed Applicant Locations

United States

Job Description

Requirements:

  • 4–8 years of experience in AI Engineering, Applied AI, Machine Learning Engineering, Infrastructure Engineering, Field Engineering, Solutions Architecture, or a similar technical role.
  • 3+ years of experience in customer-facing AI/ML or infrastructure roles, with a proven track record of leading technical workstreams for enterprise customers.
  • Strong Python development experience.
  • Proven experience deploying production AI or machine learning systems in enterprise environments.
  • Hands-on experience with Large Language Models (LLMs), open-model inference frameworks, and modern model-serving stacks.
  • Experience supporting model training, evaluation, and fine-tuning workflows, including SFT, DPO, and RFT.
  • Strong understanding of cloud platforms, including AWS, Azure, or GCP, with hands-on experience in Kubernetes and containerized environments.
  • Experience working with GPUs, distributed systems, performance-critical infrastructure, and AI infrastructure products and platforms.
  • Knowledge of Retrieval-Augmented Generation (RAG) architectures.
  • Strong communication skills, with the ability to engage both technical and executive audiences.
  • Ability to navigate ambiguity, solve complex technical challenges, and maintain a customer-centric mindset with strong business acumen.
  • Demonstrated executive presence, with the ability to engage deeply with engineers while clearly communicating technical trade-offs to senior leadership.
  • Experience working in customer-facing engineering, field engineering, or solutions architecture roles.
  • Experience deploying enterprise AI solutions and taking AI solutions from proof-of-concept to production.
  • Experience influencing product strategy through customer engagement.
  • Experience working in a startup or high-growth technology company, with the ability to thrive in fast-paced environments where speed, sound judgment, and ownership are essential.

Responsibilities:

  • Lead technical discovery sessions with enterprise customers to understand business objectives, deployment requirements, and success criteria.
  • Scope and execute proof-of-concepts, pilot programs, and production deployment initiatives.
  • Conduct load testing and evaluations to validate model architectures and deployment configurations.
  • Design and implement end-to-end AI solutions within complex enterprise environments.
  • Build production-grade AI and machine learning systems that meet enterprise performance, security, and compliance requirements.
  • Conduct model evaluations, benchmarking, and performance testing.
  • Advise customers on model selection strategies and deployment architectures.
  • Support fine-tuning methodologies, including Supervised Fine-Tuning (SFT), Direct Preference Optimization (DPO), and Reinforcement Fine-Tuning (RFT).
  • Develop evaluation frameworks to measure model quality and business impact.
  • Design scalable inference architectures that support enterprise workloads.
  • Work with GPU infrastructure, containerized applications, Kubernetes, and cloud platforms.
  • Collaborate with customer engineering teams to optimize system reliability, latency, scalability, and performance.
  • Address infrastructure, security, and compliance challenges to ensure successful production deployments.
  • Present technical recommendations to engineering teams and executive leadership.
  • Build trusted relationships with customer stakeholders, identify champions, address objections, and drive successful deployments.
  • Identify recurring customer pain points and provide actionable feedback to internal product and engineering teams.
  • Influence product roadmap decisions through customer insights and field experience.