Senior AI/ML Engineer (LLM/RAG/Agents) + Python Backend
Költségvetés: $25.0 - $40.0
HOURLY / FULL_TIME
⭐ 5.00 (2)
JPN
python, artificial-intelligence
Description
We’re building an AI-powered knowledge assistant that lets our team
query internal documents (policies, reports, support docs) through
natural language and get accurate, sourced answers, plus a set of
automated agent workflows that act on that information (triage,
summarization, routing). We need a senior engineer who can own the
AI/ML layer end-to-end and is also comfortable shipping the backend
services around it. This is architecture-level LLM engineering plus
production Python, not prompt-tweaking.
AI/ML work
Design and build a RAG pipeline: chunking strategy, embedding
model selection, vector store (open to your recommendation:
Pinecone, Weaviate, or pgvector, tell us your pick and why)
Build and debug multi-step agent workflows (open to your
recommended framework: LangGraph, LlamaIndex, CrewAI, or
custom orchestration)
Prompt engineering and evaluation. You should be able to talk
about eval frameworks (e.g. RAGAS, custom eval harnesses), not
just “it works when I test it”
Handle hallucination mitigation, context window management, and
cost/latency tradeoffs between models (GPT-4-class vs
smaller/cheaper models)
Fine-tuning or lightweight adaptation experience is a plus (LoRA,
embeddings fine-tuning). Not required, but tell us if you’ve done it
Backend work
Build the FastAPI services that expose the AI pipeline: auth,
request handling, streaming responses
Design the data layer: Postgres schema, background job handling
(Celery/RQ), caching (Redis)
Write production-grade code: tests, logging, error handling. Not
notebook code shipped as-is
Must-Haves
3+ years Python, 1.5+ years hands-on with LLM application
development (not just API calls)
Real production RAG or agent-system experience, can speak to
tradeoffs not just tool names
FastAPI or equivalent async Python backend experience
Git-based workflow, comfortable with code review
Nice-to-Haves
Experience with AWS Bedrock, Azure OpenAI, or self-hosted
models via vLLM
Vector DB tuning experience at scale (millions of documents)
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