TL;DR
Forward Deployed Engineer (AI): Translating advanced AI research into high-impact enterprise applications with an accent on agentic systems, LLM orchestration, and production deployment. Focus on designing technical strategies, architecting solutions, and delivering reliable AI-driven systems in complex hybrid environments.
Location: On-site in New York or San Francisco
Company
hirify.global is a startup focused on building open-weight foundational models to make superintelligence accessible.
What you will do
- Partner with sales and strategy teams to understand enterprise needs and architect transformative agentic solutions.
- Build and orchestrate LLM workflows, integrating with complex enterprise infrastructure.
- Collaborate with research teams to fine-tune and adapt models for specific customer use cases.
- Deploy reliable systems across hybrid environments, including cloud, VPC, and on-premises setups.
- Contribute to the evolution of internal engineering playbooks and best practices.
Requirements
- Software engineering background with experience shipping production systems using Python and TypeScript.
- Experience deploying enterprise software in cloud or hybrid environments using Docker and Kubernetes.
- Deep understanding of ML concepts and modern AI stacks including RAG pipelines and vector databases.
- 3+ years of experience delivering AI-driven solutions in customer-facing roles.
- High agency and ability to thrive in a fast-paced, evolving startup environment.
Culture & Benefits
- Competitive salary and equity packages designed to attract top-tier talent.
- Comprehensive medical, dental, vision, and disability insurance.
- Fully paid parental leave and financial support for family planning.
- Daily provided lunch and dinner with regular team off-sites and celebrations.
- Flexible paid time off policy to support work-life balance.
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