Track This Job
Add this job to your tracking list to:
- Monitor application status and updates
- Change status (Applied, Interview, Offer, etc.)
- Add personal notes and comments
- Set reminders for follow-ups
- Track your entire application journey
Save This Job
Add this job to your saved collection to:
- Access easily from your saved jobs dashboard
- Review job details later without searching again
- Compare with other saved opportunities
- Keep a collection of interesting positions
- Receive notifications about saved jobs before they expire
AI-Powered Job Summary
Get a concise overview of key job requirements, responsibilities, and qualifications in seconds.
Pro Tip: Use this feature to quickly decide if a job matches your skills before reading the full description.
π About You
Do you love making search actually work well for the user? Are you hands-on with ranking algorithms, query understanding, and excited to ship improvements that users feel the same day? Do you enjoy building pragmatic, low-latency, cost-aware solutions for AI-assisted legal research (where citations, precision, and traceability matter)? If so, weβd love to hear from you.
π About Omnilex
Omnilex is a young dynamic AI legal tech startup with its roots at ETH Zurich. Our passionate interdisciplinary team of 10+ people is dedicated to empowering legal professionals in law firms and legal teams by leveraging the power of AI for legal research and answering complex legal questions. We already stand out with handling unique challenges, including our combination of external data, customer-internal data and our own innovative AI-first legal commentaries.
π οΈ Your Responsibilities
As an AI Engineer - Legal Search, you will focus on building and shipping retrieval, reasoning and context engineering that powers our legal research experience.
- Retrieval & ranking: Implement and iterate domain-sepcific retrieval and reranking algorithms going beyond the standard ones, including knowledge-graphs and custom workflows.
- LLM-powered products: Design and build robust, production-grade LLM systems and chatbots.
- Signals & features: Design scoring features from citations, authority, recency, jurisdiction, section/paragraph structure, and intra-doc anchors.
- Practical considerations: Carefully evaluate decisions like API vs. self-hosted; add batching, early-exit, and caching to control cost/latency.
- Evaluation that guides shipping: Define offline eval sets, run quick ablations, and watch production feedback and dashboards.
- Search infrastructure: Tune indices, analyzers, and embeddings; manage recall/precision trade-offs and de-duplication/near-duplicate suppression.
- Cost & performance: Keep token usage, GPU/CPU time, and indexing costs under control with caching, pre-computation, and fallbacks.
- Collaboration: Work closely with legal experts to turn user pain points into ranking features; document decisions and share clear playbooks.
π Qualifications
β Minimum qualifications
- Strong hands-on experience improving search/retrieval systems (hybrid retrieval, reranking, or query understanding) in production.
- Proven experience in building and deploying LLM-based products from prototyping to production
- Solid algorithms background (data structures, complexity, graph theory, statistics), IR/NLP intuition, and practical SQL skills.
- Proficiency in TypeScript/Node.js (our core stack).
- Experience with one or more of: Azure AI Search, pgvector/PostgreSQL, OpenSearch/Elasticsearch, or similar.
- Familiarity with modern embedding models and cross-encoders for reranking; ability to reason about latency, throughput, and quality trade-offs.
- Ownership mindset, clear communication, and bias for action.
- Proficiency in English;
- Availability full-time. On-site in Zurich at least two days per week (hybrid).
π― Preferred qualifications
- You have a Swiss work permit or EU/EFTA citizenship.
- Working proficiency in German (many sources are in German and we talk to German-speaking customers).
- Experience with evaluation pipelines (AI as judge, human-in-the-loop labeling, inter-annotator agreement, error analysis) applied pragmatically.
- Practical knowledge of sparse methods (BM25+/BM25L/SPLADE), dense models (e5/BGE/ColBERT-style), and semantic re-ranking.
- Experience deploying/operating small models or services (Docker; basic Kubernetes or serverless is a plus).
- Familiarity with our stack: Azure / NestJS / Next.js.
- Knowledge and experience with legal systems, in particular Switzerland, Germany, USA π§ββοΈ
π€ Benefits
- Direct impact: your ranking and retrieval changes immediately improve result quality and user trust.
- Autonomy & ownership: Shape our legal research pipeline, across multi-facetted user intention understanding, dynamic retrieval and reranking
- Team: Work with a sharp, interdisciplinary team at the intersection of AI, search, and law.
- Compensation: CHF 7β000β11β000 per month + ESOP (employee stock options), depending on experience and skills.
Weβre excited to hear from candidates who are passionate about making legal search fast, accurate, and trustworthy. Apply today by pressing the Apply button.
Key Skills
Ranked by relevanceReady to apply?
Join Omnilex and take your career to the next level!
Application takes less than 5 minutes

