Company
AI Growth
SeniorAIEngineer
Neural analysis suggests this role is
optimal for Senior candidates.
“Senior AI Engineer. Skills: AI knowledge infrastructure, LLM application architecture, RAG pipelines, Vector databases. Design AI knowledge infrastructure. Build AI knowledge infrastructure”
Industry & Context.
Make sound technical decisions
What They're Looking For.
Must Have
4-7 years backend engineering experience, 2 years LLM application development experience, Production-level LLM application experience, Experience owning full engineering delivery, English working proficiency
Nice to Have
Node.js backend development experience, Go backend development experience, Mandarin fluency
What You'll Do.
Design AI knowledge infrastructure
Build AI knowledge infrastructure
Develop LLM application architecture
Own technical delivery of AI tools
Integrate basic frontend
Translate business needs into AI systems
Create technical roadmaps
Optimize system performance
Evaluate AI coding tools
Integrate LLM frameworks
Integrate vector databases
Integrate third-party APIs
Mentor junior engineers
Establish technical standards
Establish documentation practices
Establish reusable engineering workflows
How You'll Work.
Team & Collaboration
Work with stakeholders; Work with business teams; Work with brand teams; Work with PR teams; Work with IR teams; Work with leadership
Process & Methodology
Technical roadmaps
Full Job Description
## Key Responsibilities Design and build the company-wide AI knowledge infrastructure, including company wiki, internal knowledge base, retrieval layer, and context management system. Develop scalable LLM application architecture, including RAG pipelines, vector database integration, prompt workflows, API services, monitoring, and deployment. Own the end-to-end technical delivery of internal AI tools, from backend architecture and basic frontend integration to deployment, testing, and monitoring. Work closely with business, brand, PR, IR, and leadership stakeholders to translate ambiguous business needs into practical AI systems and technical roadmaps. Optimize system performance, including token efficiency, latency, caching strategy, retrieval quality, data architecture, and model inference flow. Evaluate and integrate AI coding tools, LLM frameworks, vector databases, and third-party APIs to improve development efficiency and product quality. Mentor junior engineers or interns when needed, and help establish technical standards, documentation practices, and reusable engineering workflows. ## Requirements 4–7 years of backend engineering experience, with at least 2 years of hands-on LLM application development experience. Strong backend development skills in Python; experience with Node.js or Go is a plus. Solid computer science fundamentals, including algorithms, system design, database design, API architecture, distributed systems, caching, and performance optimization. Production-level LLM application experience, not limited to demos or prototypes. Experience should include prompt engineering at scale, model selection, inference pipeline design, or RAG architecture. Hands-on experience with RAG and vector databases such as Pinecone, Weaviate, Chroma, or similar tools. Experience owning full engineering delivery, including backend services, basic frontend integration, API deployment, monitoring, and troubleshooting. Heavy user of AI coding tools such as Cursor, C
Applying for this Senior AI Engineer role?
Most applicants get filtered before a human reads their resume. See if yours makes the cut.
How to Apply on Lever
- Lever uses a streamlined one-page form — apply in under 5 minutes.
- LinkedIn import works well; review parsed data before submitting.
- The cover letter field is optional but visible to reviewers — use it to differentiate.
- Referral codes from employees can significantly boost visibility of your application.
ANONYMOUS · UNFILTERED
What do employees actually say about this company?
Real rants from real employees. Read before you apply.