Machine Learning Manager

Machine Learning Manager

Full-Time 80000 - 100000 £ / year (est.) Working from home possible
tem

At a Glance

  • Tasks: Lead a talented ML team to drive innovation in energy transactions.
  • Company: Join a groundbreaking startup revolutionising the energy market with AI technology.
  • Benefits: Enjoy competitive salary, stock options, flexible remote work, and generous holiday allowance.
  • Other info: Be part of a dynamic, fast-paced environment with opportunities for growth.
  • Why this job: Make a real impact on sustainable energy while developing your leadership skills.
  • Qualifications: Experience managing ML engineers and a passion for people development.

The predicted salary is between 80000 - 100000 £ per year.

Who We Are: We are rebuilding the energy transaction, making it transparent and fair. Our goal is to put power back where it belongs, in the hands of customers and to take on one of the most critical problems of our century, access to low cost electricity. tem exists to fix a broken global energy market that’s long favoured legacy operators, intermediaries, and opaque pricing. Today’s electricity system was not designed for rapid decarbonisation, AI-driven efficiency or fair access for the actual users - businesses and generators. We’ve built the first AI native transaction infrastructure to reinvent how electricity is bought, sold and priced. Our technology is designed to cut out the inefficient fees, automate complex market flows, and bring transparency and fairness to energy transactions at scale.

In late 2025, after extraordinary growth, we closed a $75 million Series B - led by Lightspeed Venture Partners with participation from Albion, Atomico, Allianz, Hitachi Ventures, Schroders Capital and others - positioning us for global expansion, deeper product innovation and category leadership. We’re scaling internationally and building toward a future where AI-driven infrastructure is foundational to electricity markets worldwide. Since launch, our modern utility product, known as RED, has already facilitated thousands of business customers and billions in energy transaction value, proving that modern software and AI can transform an industry built on legacy systems. At tem, we’re not just building another energy company, we’re rearchitecting market infrastructure so that transparency, efficiency and sustainability become the default, not the exception.

The Role: We're looking for a Machine Learning Manager to lead the people side of tem's most technically complex team. Rosso is tem's core IP: the AI-powered engine at the heart of how we price, forecast, and optimise energy transactions. The ML engineers who build it work across multiple distinct specialisations simultaneously: time-series forecasting, pricing, optimisation, and classical ML. The work is technically complex and commercially critical. This role exists because the ML engineers need a dedicated, full-time leader focused entirely on their growth and performance. This is a people leadership role, not a technical authority role. The ML engineers are the experts. Your job is to create the conditions where they can do their best work: clarity, coaching, the right operating systems, and a strong hiring bar as the team grows. You will act as a sounding board, not a reviewer. You will work closely with the Rosso Engineering Manager to ensure the ML and software engineering sides of the service collaborate well. tem is a Series B company and this is a startup environment. The lines are less rigid than they would be at a larger organisation, and the person who thrives here will be comfortable with that.

In your first 12 months, success looks like this: you have built trust with the ML engineers and established yourself as their go-to leader; the team has clear operating rhythms, a strong feedback loop between production monitoring and development priorities, and a predictable hiring pipeline; each engineer has a clear development path; and the collaboration between ML and software engineering within Rosso is noticeably stronger.

Responsibilities:

  • Build a high-performing ML team: Lead hiring, onboarding, performance management, and career development. Set the frameworks, operating rhythms, and succession plans that give ML engineers clarity, support, and room to grow. You are the person who makes sure the team is getting the leadership attention it needs.
  • Own the team's operating systems: Build and maintain the rituals and structures that keep the team effective: sprint cadences, incident review, model monitoring feedback loops, cross-team reporting, and the prioritisation processes that keep the team focused on what matters.
  • Enable technical excellence without owning it: Act as a sounding board for ML engineers on questions and blockers. Ask the right questions, help surface risks, and create space for the experts to make good decisions, without adding another review layer or positioning yourself as a technical authority.
  • Drive collaboration with the Rosso Engineering Manager: Partner closely to align priorities between the ML and software engineering teams within the service. The two teams need to work together effectively, and you are a key part of making that happen.
  • Represent the team and champion tem's culture: Communicate progress, risks, and priorities clearly to the broader organisation. Lead with intention in a fully remote environment, champion what excellent remote work looks like, and represent tem in the ML community when recruiting and engaging externally.

Requirements:

  • Must haves: Proven experience managing ML engineers or scientists (not just software engineers) at varying ranges of experience (Junior to Staff), with enough understanding of the ML lifecycle and core disciplines including forecasting, optimisation, pricing, and classical ML to manage credibly.
  • A strong people development track record: 1:1s and performance conversations that actually move people forward, action underperformance, clear progression frameworks, and coaching that builds capability across engineers at different career stages.
  • Experience building and owning team operating systems: the prioritisation frameworks, sprint cadences, incident review processes, and feedback loops that make a technically complex team perform consistently.
  • A strong hiring instinct for ML roles: you have defined the bar, built pipelines in a competitive market, and brought in strong people who had other options.
  • Experience managing a technically diverse team: comfortable holding substantive conversations across different ML problem types and helping a multi-disciplinary team prioritise and operate without being the expert in any single domain.
  • Experience in a startup or high-growth environment: comfortable with ambiguity, able to operate effectively when not everything is figured out, and ready to do more than a textbook people-manager role at a larger organisation would require.

Bonus points:

  • Background in energy, fintech, or another domain where ML is mission-critical.
  • Experience building or evolving a career framework or skills matrix from scratch.
  • Familiarity with the intersection of ML and software engineering, and how to facilitate effective collaboration between the two.
  • You have hired top ML talent in a competitive market and know how to attract people who have options.

Benefits & Perks:

  • Competitive salary: We review salaries twice a year using real-time market data, with transparent, consistent pay for the same role and level.
  • Stock Options: everyone on the team has ownership in our mission.
  • 25 days holiday + public holidays: Swap public holidays for ones that matter most to you. Plus, get an extra day off for your birthday.
  • Remote & flexible working: We're fully remote, distributed across Europe with clear core hours, and no internal meetings on Friday afternoons.
  • Home working & wellbeing budgets: Up to £1,200 / €1,200 annually to upgrade your remote setup (co-working passes, equipment, etc.). Up to £150 / €150 monthly on anything that supports your wellbeing - from therapy to gym memberships to meditation apps.

Interview Process: Our processes normally take around 2-3 weeks from first call to offer - please let us know about any adjustments to timelines that may be required. First call with our Talent Team (30 mins). This is to understand your experience, motivations, and discuss the role in more detail. Behaviour Interview with our Head of Data (45 mins). This is your chance to really understand the role, the expectations, and ensure alignment on ways of working. Skills Interview with the Team (75 mins). You'll meet with potential peers in this session and will discuss how you lead and manage high performing teams, and discuss a range of scenarios. Culture-Add Interview with Stakeholders (45 mins). The final session will be with two cross-functional stakeholders, and will explore how your values align with ours, and is designed to be a genuine two-way conversation, your chance to understand what it's really like to work at tem.

We welcome applications from people of all backgrounds, experiences, and identities, including those that are traditionally underrepresented in the tech and energy sectors. If you’re excited about this role but not sure you meet every requirement, we’d still love to hear from you. Your unique perspective could be exactly what we’re looking for.

Machine Learning Manager employer: tem

At tem, we are not just transforming the energy market; we are committed to fostering a vibrant and inclusive work culture that prioritises employee growth and well-being. As a fully remote company, we offer flexible working arrangements, competitive salaries, and generous benefits including stock options and wellness budgets, ensuring our team members can thrive both personally and professionally. Join us in a dynamic startup environment where your leadership will empower talented ML engineers to innovate and excel in reshaping the future of energy transactions.

tem

Contact Details:

tem Recruitment Team

StudySmarter Expert Advice🤫

We think this is how you could land Machine Learning Manager

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We think you need these skills to ace Machine Learning Manager

People Management
Machine Learning Lifecycle Understanding
Team Development
Performance Management
Operating Systems Ownership
Prioritisation Frameworks
Sprint Cadences

Some tips for your application 🫡

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