Careers Portfolio

Lead AI Engineer

Slice

Slice

Software Engineering, Data Science
Tel Aviv-Yafo, Israel · Tel Aviv District, Israel
Posted on May 21, 2025

About Slice

Issue equity to your teams anywhere, stay in compliance locally, optimize tax for your employees, and do it all easily & quickly.

Slice is a Global Equity Management platform for multinational companies. It handles the full equity lifecycle — from correctly setting up option plans around the globe to awarding grants and liquidity — while keeping companies and employees in compliance with each country’s local equity laws and away from tax penalties. Slice covers 40+ countries, including the US, UK, Australia and Israel, and serves startups from seed to growth stage, plus several unicorns. You can read more about Slice here: https://www.sliceglobal.com/

Role

As the Lead AI Engineer at Slice, you will lead developing the infrastructure and pipelines to power AI-driven solutions for legal, equity, and tax document management. You will be responsible for building and optimizing production-level machine learning systems and AI multi agent systems, with a focus on scalability, reliability, and performance. This is an exciting opportunity for engineers passionate about applying AI cutting edge technology in a rapidly growing startup, particularly within the fintech and legal tech industries.

Key Responsibilities

  • AI System Development: Lead the design, implementation, and deployment of scalable ML models and LLM-based agents for document analysis and intelligent automation.
  • Agent & Multi-Agent Systems: Build and orchestrate production-grade AI agents and multi-agent systems to handle complex workflows using frameworks like LangGraph or AutoGen.
  • ML Pipeline & Infrastructure: Own end-to-end ML pipelines and infrastructure, ensuring efficient data ingestion, model training, and deployment on cloud platforms (GCP, Firebase).
  • Cross-Functional Integration: Collaborate with backend and DevOps teams to integrate AI solutions into the platform, aligning with technical and product goals.
  • Monitoring & Optimization: Set up monitoring for model/agent performance, implement feedback loops, and optimize for robustness and reliability in production.
  • Innovation & Research Integration: Stay current with AI advancements and integrate modern tools and practices to enhance system performance and maintainability.

Qualifications

  • Experience: 5+ years of experience building and deploying machine learning systems in production, with a focus on infrastructure, scalability, and reliability. Proven track record leading ML or AI initiatives end-to-end.
  • AI & Agent Systems: Expertise in ML pipelines and lifecycle management, with hands-on experience developing LLM-based agents, RAG pipelines, and/or multi-agent systems for production use including monitoring, tracing and evaluations.
  • Programming: Proficient in Python (Node.js a plus), with deep experience in ML frameworks (e.g., PyTorch, TensorFlow) and agent/LLM tooling (e.g., LangChain, LangGraph, AutoGen).
  • Cloud & Infrastructure: Strong knowledge of deploying AI workloads (GCP and Firebase a plus), and experience with containerization, and CI/CD for AI.
  • Problem Solving: Ability to independently drive complex projects, optimize infrastructure, and deliver robust AI systems in dynamic startup environments.
  • Leadership & Collaboration: Strong communication and cross-functional collaboration skills. Experience mentoring engineers and aligning AI work with product and platform teams.