openashbyhqsequoia
Data Scientist
Magentic
LocationLondon
WorkplaceHybrid
EmploymentFullTime
Posted2026-06-10T15:09:59.719+00:00
Last observed2026-06-13 05:24:28.374208
Job idsequoia-magentic:ashbyhq:03a070ac-262f-4d87-8028-e78d98d3cb8e
About Magentic At Magentic, we’re building AI systems that can autonomously run complex procurement and supply chain workflows for some of the world’s largest companies. We’re tackling a genuinely hard real-world problem, helping global manufacturing supply chains become more resilient in an increasingly unpredictable world. It’s a massive space with huge untapped potential for AI. We’re an early-stage company backed by Sequoia Capital, with a team bringing experience from OpenAI, Meta, Revolut, NASA and McKinsey & Company. We’re looking for a Data Scientist to help us apply LLMs and AI tooling to large-scale, messy, real-world datasets, solving operational problems where the answers aren’t obvious and the impact is very tangible. The Role This is not a traditional analytics or engineering role. We’re looking for someone who enjoys working deeply with data, experimentation, AI tooling, and problem solving, someone comfortable using Python, notebooks, LLMs, and structured thinking to solve non-trivial operational challenges. You’ll work on applying AI models and data science approaches to complex enterprise datasets, helping uncover insights, automate workflows, and prototype intelligent systems quickly. The ideal person is highly curious, pragmatic, and comfortable operating in ambiguity. You don’t need to be a production software engineer, but you do need to be technically capable, thoughtful, and able to independently execute meaningful work. What You’ll Do: - Work with large, messy, real-world enterprise datasets - Apply LLMs and AI tooling to operational and analytical problems at scale - Build data workflows and experiments using Python and Jupyter notebooks - Run and analyse large-scale queries and model outputs - Prototype and iterate quickly on AI-driven approaches - Work closely with product, engineering, and founders on exploratory projects - Translate ambiguous problems into structured investigations and solutions - Help shape how AI is applied across procurement and supply chain workflows You Might Be a Great Fit if You: - Have 3+ years of hands-on experience in data science, applied AI, analytics, or similar work - OR a strong academic background (e.g. Master’s in Data Science, Machine Learning, Statistics, Mathematics, Computer Science, Physics, etc.) combined with 1–2 years of industry experience - Strong Python skills - Experience working in Jupyter notebooks - Familiarity with LLMs, AI tooling, or applied machine learning workflows - Strong analytical and problem-solving ability - Comfort working independently on open-ended problems - Ability to work pragmatically rather than over-engineering solutions - Curiosity and enthusiasm for AI-native ways of working Bonus Points: - Experience applying LLMs to real-world datasets - Experience with vector databases, embeddings, or retrieval systems - Exposure to operational or enterprise data environments - Background in highly analytical disciplines such as medicine, physics, maths, or engineering Compensation And Benefits At Magentic, we recognise and reward the talent that drives our success. We offer: - Competitive Equity: play a real part in Magentic’s upside - A salary of £60-70k - Enhanced parental leave - 25 days holiday exc bank holidays, plus an extra day for our Christmas shutdown - In-office lunches provided - Monthly organised socials and an additional flexible monthly social budget for team lunches, coffees, dinners, or activities with colleagues - Salary sacrifice pension and nursery schemes - Hybrid London HQ (WFH Thurs and every other Tues, with flex if you have appointments etc) - Annual team retreat—a fully-funded off-site to recharge, bond, and build Our Interview Process There are a few components because it's really important that both we and you have all the information to make a great decision at this stage of our journey. We can move quickly through these stages, so let us know if you have any timelines we need to meet. - Initial call (30 mins):
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