Principal Machine Learning Engineer - Chat UnitedKingdom

Staatliche Hochschule für Musik und Darstellende KunstMannheim
London
3 weeks ago
Applications closed

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Principal Machine Learning Engineer - Chat UnitedKingdom We strongly encourage applications from people of colour,the LGBTQ+ community, people with disabilities, neurodivergentpeople, parents, carers, and people from lower socio-economicbackgrounds. If there’s anything we can do to accommodate yourspecific situation, please let us know. About Cleo Most people cometo Cleo to do work that matters. Every day, we empower people tobuild a life beyond their next paycheck, building a beloved AI thatenables you to forge your own path toward financial well-being.Machine Learning Engineers at Cleo work on building novel solutionsto real-world problems. This really does vary but could be:creating chatbots to coach our users around their financial health,creating classifiers to better understand transaction data or evenoptimising transactions within our payments platform. Ultimately,we’re looking for a brilliant Principal Machine Learning Engineerto join us on our mission to fight for the world's financialhealth. You’ll be leading technical work within a team ofadaptable, creative and product-focused engineers, who train &integrate cutting edge machine learning across a variety ofproducts and deploy them into production for millions of users.What you’ll be doing - Training and fine-tuning models to solvecustomer problems across our chatbot and the bank transaction databehind it. - Deploying these models into our productionenvironments using our in-house ML platform. - Workingcross-functionally with backend engineers, data analysts, UXwriters, product managers, annotation teams, and others to shipfeatures that improve our users’ financial health. - Taking theinitiative to propose & lead technical work towards problemsthat were previously unknown or poorly understood. - Keeping Cleoat the forefront of NLP by driving the adoption of appropriatestate-of-the-art techniques. - Mentoring & advising colleagueson their choices of models, architecture, and evaluation, promotingbest practices for how we use LLMs. What you’ll need - Experiencein industry machine learning roles as a technical leader orprincipal/staff engineer - Excellent knowledge of both Data Science(python, SQL) and production tools - A deep understanding ofprobability and statistics fundamentals - Top tier communicationskills, to be able to partner with Product and Commercial Leaders -Industry-leading contributions to your field, communicated throughconferences, blogs, talks, or open-source projects Nice to have -Strong experience with additional programming languages, such asJava, Scala, C++ What do you get for all your hard work? - Acompetitive compensation package (base + equity) with bi-annualreviews. This position is a DS5 level and we can pay £111,184 -£145,088 p.a depending on experience. - Work at one of thefastest-growing tech startups, backed by top VC firms, Balderton& EQT Ventures - A clear progression plan. - Flexibility: Wework with everyone to make sure they have the balance they need todo their best work - Work where you work best. We’re a globallydistributed team. - Other benefits; - 25 days annual leave a year +public holidays (+ an additional day for every year you spend atCleo) - 401k matching in the US and 6% employer-matched pension inthe UK - Private Medical Insurance - 1 month paid sabbatical after4 years at Cleo! - Online courses & internal training to levelup your skills - Regular socials and activities, online andin-person - Online mental health support via Spill#J-18808-Ljbffr

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