▷ High Salary: Principal MLOps Engineer

JPMorgan Chase & Co.
London
2 weeks ago
Applications closed

Related Jobs

View all jobs

▷ [15h Left] Staff Data Scientist Data and Insights ·London

▷ 3 Days Left! Data Scientist

▷ (Urgent Search) Senior Data Scientist - Middle Mile &Pitstops

▷ Apply Now: Data Scientist/Business Analyst – PrivateEquity

We know that people want great value combined with anexcellent experience from a bank they can trust, so we launched ourdigital bank, Chase UK, to revolutionise mobile banking withseamless journeys that our customers love. We're already trusted bymillions in the US and we're quickly catching up in the UK – buthow we do things here is a little different. We're building thebank of the future from scratch, channelling our start-up mentalityevery step of the way – meaning you'll have the opportunity to makea real impact. As a Principal MLOps Engineer at JPMorgan Chasewithin the International Consumer Bank, you provide deepengineering expertise and work across agile teams to enhance,build, and deliver trusted market-leading technology products in asecure, stable, and scalable way. You are expected to be involvedin the design and architecture of the solutions while also focusingon the entire SDLC lifecycle stages. Our Machine LearningOperations team is at the heart of this venture, focused on gettingsmart ideas into the hands of our customers. We're looking forpeople who have a curious mindset, thrive in collaborative squads,and are passionate about new technology. By their nature, ourpeople are also solution-oriented, commercially savvy and have ahead for fintech. We work in tribes and squads that focus onspecific products and projects – and depending on your strengthsand interests, you'll have the opportunity to move between them.Job responsibilities: - Advise and lead development of tooling forAI/ML development and deployment. - Lead deployment and maintenanceof infrastructure, model monitoring and observability tools,providing an effective model development platform for datascientists and ML engineers. - Collaborate with machine learningmodel developers to bring ML models to production. - Mentor andlead a team of engineers focused on deploying machine learningpipelines at scale. - Partner with product, architecture, and otherengineering teams to define scalable and performant technicalsolutions. - Influence across business, product, and technologyteams and successfully manage senior stakeholder relationships. -Champion the firm’s culture of diversity, equity, inclusion, andrespect. Required qualifications, capabilities and skills - Formaltraining or certification on software engineering concepts andMLOps applied experience. - Experience with machine learningengineering and operations in a large enterprise. - Experience inbuilding, evaluating and deploying ML models into production. -Experience leading complex projects supporting system design,testing and operational stability. - Demonstrated prior experienceinfluencing across complex organizations and delivering value atscale. - Extensive practical cloud native experience. - Provenexpertise on adoption of agile practices to deliver efficiently andto the expected quality solutions. #ICBCareer #ICBEngineering#J-18808-Ljbffr

Get the latest insights and jobs direct. Sign up for our newsletter.

By subscribing you agree to our privacy policy and terms of service.

Industry Insights

Discover insightful articles, industry insights, expert tips, and curated resources.

Portfolio Projects That Get You Hired for AI Jobs (With Real GitHub Examples)

In the fast-evolving world of artificial intelligence (AI), an impressive portfolio of projects can act as your passport to landing a sought-after role. Even if you’ve aced interviews in the past, employers in AI and machine learning (ML) are increasingly asking candidates to demonstrate hands-on experience through the projects they’ve built and shared online. This is because practical ability often speaks volumes about your suitability for a role—far more than any exam or certification alone could. In this article, we’ll explore how to build an outstanding AI portfolio that catches the eye of recruiters and hiring managers, including: Why an AI portfolio is crucial for job seekers. How to choose AI projects that align with your target roles. Specific project ideas and real GitHub examples to help you stand out. Best practices for showcasing your work, from writing clear READMEs to using Jupyter notebooks effectively. Tips on structuring your GitHub so that employers can instantly see your value. Moreover, we’ll discuss how you can use your portfolio to connect with top employers in AI, with a handy link to our CV-upload page on Artificial Intelligence Jobs for when you’re ready to apply. By the end, you’ll have a clear roadmap to building a portfolio that will help secure interviews—and the AI job—of your dreams.

AI Job Interview Warm‑Up: 30 Real Coding & System‑Design Questions

In today's competitive AI job market, nailing a technical interview can be the difference between landing your dream role and getting lost in the crowd. Whether you're looking to break into machine learning, deep learning, NLP (Natural Language Processing), or data science, your problem-solving skills and system design expertise are certain to be put to the test. AI‑related job interviews typically involve a range of coding challenges, algorithmic puzzles, and system design questions. You’ll often be asked to delve into the principles of machine learning pipelines, discuss how to optimise large-scale systems, and demonstrate your coding proficiency in languages like Python, C++, or Java. Adequate preparation not only boosts your confidence but also reduces the likelihood of fumbling through unfamiliar territory. If you’re actively seeking positions at major tech companies or innovative AI start-ups, then check out www.artificialintelligencejobs.co.uk for some of the latest vacancies in the UK. Meanwhile, this blog post will guide you through 30 real coding & system-design questions you’re likely to encounter during your AI job interview. This list is designed to help you practise, anticipate typical question patterns, and stay ahead of the competition. By reading through each question and thinking about the possible approaches, you’ll sharpen your problem-solving skills, time management, and critical thinking. Each question covers fundamental concepts that employers regularly test, ensuring you’re well-equipped for success. Let’s dive right in.

Negotiating Your AI Job Offer: Equity, Bonuses & Perks Explained

Artificial intelligence (AI) has proven itself to be one of the most transformative forces in today’s business world. From smart chatbots in customer service to predictive analytics in finance, AI technologies are reshaping how organisations operate and innovate. As the demand for AI professionals grows, so does the complexity of compensation packages. If you’re a mid‑senior AI professional, you’ve likely seen job offers that include far more than just a base salary—think equity, bonuses, and a range of perks designed to entice you into joining or staying with a company. For many, the focus remains squarely on salary. While that’s understandable—after all, your monthly take‑home pay is what covers day-to-day expenses—limiting your negotiations to salary alone can leave considerable value on the table. From stock options in ambitious startups to sign‑on bonuses that ‘buy you out’ of your current contract, modern AI job offers often include elements that can significantly boost your long-term wealth and job satisfaction. This article aims to shed light on the full scope of AI compensation—specifically focusing on how equity, bonuses, and perks can enhance (or sometimes detract from) the overall value of your package. We’ll delve into how these elements work in practice, what to watch out for, and how to navigate the negotiation process effectively. Our goal is to provide mid‑senior AI professionals with the insights and tools to land a holistic compensation deal that accurately reflects their technical expertise, leadership potential, and strategic importance in this fast-moving field. Whether you’re eyeing a leadership role in machine learning at an established tech giant, or you’re considering a pioneering position at a disruptive AI startup, the knowledge in this guide will help you weigh the merits of base salary alongside the potential riches—and risks—of equity, bonuses, and other benefits. By the end, you’ll have a clearer sense of how to align your compensation with both your immediate lifestyle needs and long-term career aspirations.