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Machine Learning Engineer

Lawhive
City of London
2 weeks ago
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About Lawhive

We're on a mission to make sure everyone has access to the law.
Lawhive is an online platform for consumers and small businesses to get legal help for a fraction of the cost of a law firm. Our platform combines regulated human lawyers collaborating alongside the world’s first AI lawyer, specifically built for consumer legal work.

Equal access to the law is one of the biggest and most pressing unsolved problems in society today. We’re passionate about leveling the playing field and believe access to the law should be a basic utility in society.

Our AI lawyer Lawrence is built on top of our own fine tuned LLM and recently passed the UK’s bar exam equivalent.

We’re backed by some of the top US and UK VC funds including Google Ventures, Balderton Capital and TQ Ventures. We recently secured a $40M Series A funding round to facilitate international expansion and to grow our team, representing one of the five largest Series A rounds in Europe for 2024.

The Role

We’re looking for a Machine Learning Engineer to join our AI Engineering & Infrastructure team to bring our latest AI-driven features and services into production. Deploying them at scale, improving infrastructure, and ensuring robustness in production. You’ll work closely with AI researchers, software engineers, and product teams to bridge the gap between cutting-edge AI research and real-world applications.

Responsibilities
  • Developing production-ready APIs and services that expose AI functionality to internal and external applications.

  • Improving reliability & monitoring for AI-driven applications in production.

  • Scaling AI systems to handle real-world legal use cases (e.g., legal document analysis, case predictions, automated legal advice).

  • Collaborating with AI engineers to ensure smooth deployment of AI workflows and models into production.

  • Working with event-driven architectures and async workflows to process large-scale AI workloads efficiently.

  • Ensuring security & compliance in AI-driven legal services.

Requirements
  • Strong Python experience in building scalable backend systems.

  • Familiarity with API design & distributed systems architecture.

  • Experience working with event-driven architectures (e.g. Kafka, Pub/Sub, AWS Step Functions, etc.).

  • Experience working with cloud platforms (AWS, GCP etc).

  • Understanding of best practices in observability, monitoring, and debugging.

Nice to Have
  • LLM Observability & Evaluation – familiarity with tools such as Langfuse for monitoring model generations, managing prompts, and measuring quality in production.

  • Comfortable optimising performance & scaling distributed AI workloads and ML Ops experience.

  • Full-stack Typescript experience.

  • Hands-on work with vector databases, hybrid retrieval methods, and evaluation of retrieval quality.

  • Agentic & Orchestrated Systems – exposure to multi-step reasoning, agent frameworks, or orchestration tools (e.g. LangChain, AutoGen, Inngest, Temporal) where LLMs call tools, plan tasks, or coordinate workflows.

  • Experience working in collaboration with researchers so that new models, pipelines, or research outputs can be integrated and evolved iteratively.

  • Prior Experience in Legal Tech - understanding of the legal industry and experience working with legal technology solutions.

UK Benefits:

️ 34 Holidays (25 days annual leave + your birthday off + bank hols in England)

Equity (Share Options)

Pension

️ Regular team building activities and socials!

20% off legal fees through Lawhive

US Benefits:

???? Healthcare benefits: 'Premium' plan with 100% employee cover and 50% dependent cover

️ Vacation: 20 days + 11 Federal holidays + 1 day of Birthday leave

401k: Matching contribution up to 2% of salary

Equity: Options in Lawhive LTD


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