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A technology company in Greater London is seeking a Customer Solutions Associate to develop strong client relationships and analyze data. Ideal candidates will have proficiency in Python or strong Excel skills, with a minimum of 2 years' experience. This role involves close collaboration with clients to extract insights and shape product features, within an innovative and AI-focused environment. Competitive salary and hybrid work option available.
We’re looking for people who enjoy working at the intersection of data, customers, and product - helping enterprise teams turn messy real-world data into decisions and outcomes using AI - to join us as Customer Solutions Associates.
We’re pushing the boundaries of AI with next-generation agentic systems that can manage entire procurement workflows. Our mission is to make global manufacturing supply chains robust to an ever-changing world - that’s a $3tn market opportunity.
You will collaborate closely with our customers to understand their problems and data, enabling our product engineers to build impactful features. You will be instrumental in shaping solutions, all while learning and growing your AI skills in a truly AI-first company at the forefront of agentic systems.
If that’s not exciting enough – we’re backed by world‑class investors including Sequoia Capital, and you’d be working along a super talented team which brings together expertise from OpenAI, Meta, Revolut, NASA and McKinsey (and that’s just the first 11 people!).
You’ll have a huge impact on both Magentic’s commercial success and our product direction. This is a rare opportunity to help build a rocket ship. As we grow, you could develop into product management or engineering, into a leader in our customer engineering space, even into sales, as you discover your strengths and interests.
Build strong relationships with our flagship clients — household names in the enterprise manufacturing space.
Analyse large, unstructured data sets — dig around to discover value that our customers are missing and help configure our product to surface that value.
Collaborate directly with executives & operators — run white‑boarding sessions, turn ambiguous requirements into concrete specs, demo our product, and train users.
Shape our roadmap — gather insights from customers to determine the highest‑priority new features and products.
Are proficient in Python or very strong in Excel data analysis and keen to learn Python
Have 2+ years of professional experience
Are a data whizz - can extract insights from large, messy data sets with ease
Can take a loosely defined problem and unstructured inputs and extract commercially‑relevant insights.
Can communicate clearly with both engineers and business stakeholders.
Are keen to travel to spend time with customers on a regular basis.link
Are an enthusiastic student and user of AI.
Thrive in an early‑stage, high‑ownership environment—you learn quickly and by doing.
Familiarity with supply‑chain, procurement, or manufacturing domains.
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 £50,000-£65,000
Hybrid London HQ (3-4 days in the office/customer site)
Lunches provided in our Camden office
Salary sacrifice pension and nursery schemes
Annual team retreat — a fully‑funded off‑site to recharge, bond, and build.
There are a quite 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.
Culture interview (45 mins): this first step is an opportunity for you to hear more about Magentic and the role, and for us to learn more about your how your experience and ambitions align with the role.
Role‑play interview (45 mins): in this step, we present you with a real problem Magentic encounters, and we ask you to design a solution in a whiteboarding exercise.
Take home exercise (2‑3 hours): analyse a data set similar to one that our clients would provide us, and create a presentation with your findings.
In‑person interview (2 hours): Come see the office, meet the team in‑person, present your work to the tech and commercial teams and do a case‑study interview with Robin, our CEO.
At Magentic, we are committed to developing artificial intelligence that benefits humanity. We push the limits of AI’s capabilities and are dedicated to its responsible and safe deployment. Recognising the profound impact of AI, we ensure that its development is centred around human needs and safety, incorporating a wide array of perspectives to fulfil our mission.
Magentic is committed to creating a diverse and inclusive workplace and is proud to be an equal‑opportunity employer. All qualified applicants will receive consideration for employment without regard to race, colour, religion, gender, gender reassignment, marital or civil partnership status, age, disability, pregnancy or maternity, or any other basis as protected by the Equality Act 2010.
We actively encourage applications from candidates of all backgrounds and cultures and believe a diverse workforce enhances our ability to deliver innovative solutions. We also ensure that our employment decisions are based solely on individual qualifications, merit, and business needs.
Magentic is dedicated to providing reasonable accommodations to job applicants with disabilities. If you require any adjustments during the recruitment process, please indicate this in your application or contact us directly.
* The salary benchmark is based on the target salaries of market leaders in their relevant sectors. It is intended to serve as a guide to help Premium Members assess open positions and to help in salary negotiations. The salary benchmark is not provided directly by the company, which could be significantly higher or lower.