Research Program Manager - Research Infrastructure

Research Program Manager - Research Infrastructure

Full-Time 80000 - 100000 £ / year (est.) Home office (partial)
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At a Glance

  • Tasks: Lead cross-functional programs to enhance AI research infrastructure and ensure smooth operations.
  • Company: Join a cutting-edge AI company on a mission to build open superintelligence.
  • Benefits: Top-tier salary, comprehensive health benefits, paid parental leave, and flexible time off.
  • Other info: Be part of a small, dynamic team shaping the future of AI.
  • Why this job: Make a real impact in AI by enabling researchers to create groundbreaking technologies.
  • Qualifications: 7+ years in technical program management with strong knowledge of ML/AI systems.

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

Our Mission Reflection’s mission is to build open superintelligence and make it accessible to all. We’re developing open weight models for individuals, agents, enterprises, and even nation states. Our team of AI researchers and company builders come from DeepMind, OpenAI, Google Brain, Meta, Character.AI, Anthropic and beyond.

About The Role Research Program Managers at Reflection are high‑leverage leaders and operators who embed directly with research and infrastructure teams to accelerate the pace of frontier model development. They are not project trackers. They are force multipliers who bring clarity to ambiguity, drive decisions when the path forward is unclear, and ensure that the work happening across multiple teams connects into a coherent whole. This role focuses on scaling our research infrastructure to support massive, frontier‑scale training runs across pre‑training, mid‑training, and post‑training. You will work closely with teams building on training libraries like Megatron, driving the programs that turn raw clusters into reliable, high‑performance training environments. Your job is to make sure the infrastructure we build works end‑to‑end, that teams are unblocked, and that we can scale with confidence as our ambitions grow. You bring a first‑responder mentality. When things go sideways, you don't wait to be asked. You jump in, assess the situation, cut through noise, align the people who need to be aligned, and drive resolution.

What You’ll Do

  • Own cross‑functional programs spanning training infrastructure and cluster reliability across pre‑training, mid‑training, and post‑training workstreams.
  • Drive end‑to‑end coordination scaling our training stack alongside engineering leads and external partners.
  • Jump into active incidents and escalations to triage, coordinate response, and drive resolution across teams, champion a culture of blameless post‑mortems and continuous learning, turning every incident into a concrete improvement to our systems and processes.
  • Partner with infrastructure and research engineering leads to identify bottlenecks, define priorities, and ensure that infrastructure investments are directly tied to research velocity.
  • Build and maintain visibility into training run health, cluster reliability, and infrastructure performance so that leadership and teams have the context they need to make fast, informed decisions.
  • Create lightweight, durable processes for cross‑team handoffs, configuration management, checkpoint workflows, and other coordination‑heavy touchpoints that currently rely on ad‑hoc communication.
  • Translate technical complexity into clear status updates and decision frameworks for engineering leadership and executives.

About You

  • 7+ years of experience in technical program management, research operations, or infrastructure coordination, ideally in ML/AI or large‑scale distributed systems environments.
  • Deep technical knowledge to engage with engineers on topics like distributed training frameworks, GPU cluster architecture, scheduler behavior, networking, and storage systems.
  • You don't need to write the code, but you need to understand the systems to “speak the language”, i.e., to ask the right questions and identify risks early.
  • Proven ability to operate effectively in high‑ambiguity, fast‑moving environments.
  • You create structure where there is none and drive clarity without waiting for permission.
  • Track record of managing complex, multi‑team programs with competing priorities and hard deadlines.
  • You know how to make tradeoffs and you communicate them clearly.
  • Strong stakeholder management skills across both deeply technical ICs and senior leadership.
  • You build trust by being reliable, direct, and well‑informed.
  • Comfortable operating in crisis mode. You stay calm under pressure, you know how to prioritize when everything is on fire, and you follow through on the other side.
  • Excited to build from zero to one. We are a small, fast‑moving team and this role will help define how Research Program management Works at Reflection.
  • Motivated by enabling researchers and engineers to build the world's most capable open‑weight AI systems.

What We Offer

  • Top‑tier compensation: salary and equity structured to recognize and retain the best talent globally.
  • Health & wellness: comprehensive medical, dental, vision, life, and disability insurance.
  • Life & family: fully paid parental leave for all new parents, including adoptive and surrogate journeys. Financial support for family planning.
  • Benefits & balance: paid time off when you need it, relocation support, and more perks that optimize your time.
  • Opportunities to connect with teammates: lunch and dinner are provided daily. We have regular off‑sites and team celebrations.

Research Program Manager - Research Infrastructure employer: Reflection

At Reflection, we pride ourselves on being an exceptional employer that fosters a culture of innovation and collaboration. As a Research Program Manager, you will be part of a dynamic team dedicated to advancing open superintelligence, with ample opportunities for personal and professional growth in a fast-paced environment. Our commitment to employee well-being is reflected in our top-tier compensation, comprehensive health benefits, and supportive work-life balance, ensuring you can focus on making a meaningful impact in the AI landscape.

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Contact Details:

Reflection Recruitment Team

StudySmarter Expert Advice🤫

We think this is how you could land Research Program Manager - Research Infrastructure

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We think you need these skills to ace Research Program Manager - Research Infrastructure

Technical Program Management
Research Operations
Infrastructure Coordination
Distributed Training Frameworks
GPU Cluster Architecture
Networking
Storage Systems

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