Attiva gli avvisi di lavoro via e-mail!

Graphrag Developer Challenge

Bullaki

Latina

In loco

EUR 30.000 - 50.000

Tempo pieno

Oggi
Candidati tra i primi

Genera un CV personalizzato in pochi minuti

Ottieni un colloquio e una retribuzione più elevata. Scopri di più

Descrizione del lavoro

A technology consultancy is seeking a Senior RAG Systems Developer for a contract role focused on creating a high-accuracy prototype for legal document reasoning. The position requires expertise in graph-based retrieval and Python development. Candidates will implement key functions and participate in a live demo. Compensation is $600, contingent on passing the technical evaluation.

Competenze

  • Expertise in graph-based retrieval systems.
  • Experience in building knowledge graphs.
  • Ability to demonstrate performance under pressure.

Mansioni

  • Implement functions to ingest documents and query answers.
  • Conduct a live demo to explain the architecture.
  • Ensure thorough testing for correctness and performance.

Conoscenze

Graph-based retrieval
Python 3.12
Knowledge graph construction
Multi-hop reasoning
Descrizione del lavoro
Role Details

GraphRAG Developer Challenge – Legal Document Processing (Prototype) Role : Senior RAG Systems Developer (Contract / Freelance) Compensation : $600 — paid only if you pass ()

95% benchmark) Timeline : 3–5 days from materials receipt to live demo Purpose : Technical evaluation for potential long-term hire Frontend / UI : None (backend prototype only) Contact : Objective We’re seeking an expert in

graph-based retrieval (GraphRAG)

to build a high-accuracy prototype for legal document reasoning. This is a paid technical test that may lead to a long-term position. The goal is a true GraphRAG system featuring explicit knowledge-graph construction and traversal, multi-hop reasoning, agentic orchestration, and strong focus on retrieval accuracy and explainability. Materials Provided / docs / → Pre-processed Markdown legal documents with metadata / sample_questions.json → Example question format / sample_answers_rag.json → Example answer format Download materials : (Benchmark uses unseen questions.)

Deliverables

Implement two functions in Python 3.12 (Poetry project) :

  • def ingest(document_paths: List(str)) -> None : """Ingest Markdown docs and build the knowledge graph."""
  • def query(questions: List(str)) -> List(str) : """Return answers with Vancouver-style citations grounded in retrieved sources."""
Requirements
  • No UI, no API keys provided. Any stack may be used.
  • query(...) must support parallel execution (~400 questions in ≤60 min) and show a progress indicator.
  • Test thoroughly for correctness and performance before the demo.
Live Demo

In a 60-minute live session you will : Receive ~400 unseen questions. Run query(...) to produce /answers.json. Explain your architecture : how the graph is built, traversed, and used to generate grounded answers.

developer(s) who wrote the code may present.

Evaluation

Evaluation Passing requires an overall score above 95%, measured by (LLM as a judge) :

  • Faithfulness (grounded, no hallucinations)
  • Relevance (retrieval matches intent)
  • Completeness (covers key legal points)
  • Clarity (structured, legally coherent writing)
Ottieni la revisione del curriculum gratis e riservata.
oppure trascina qui un file PDF, DOC, DOCX, ODT o PAGES di non oltre 5 MB.