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Machine Learning Engineering Team Lead (d/f/m)

Aignostics

Berlin

Vor Ort

EUR 80.000 - 100.000

Vollzeit

Gestern
Sei unter den ersten Bewerbenden

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Zusammenfassung

A leading health tech company in Berlin seeks a ML Engineering Team Lead to oversee the development of distributed ML training infrastructure for cancer research. The role involves technical leadership, team empowerment, and strategic management. Candidates should have extensive experience in software/ML engineering and a proven ability to lead teams. This position offers a collaborative environment focused on innovation and diversity, alongside attractive benefits like flexible hours, learning opportunities, and 30 vacation days per year.

Leistungen

30 paid vacation days
Learning & Development budget of 1,000€
Leadership development programs
Flexible working hours
Company pension scheme

Qualifikationen

  • 6+ years of experience in software engineering or machine learning engineering, with at least 2 years in a leadership position.
  • Proven track record in building and leading high-performing engineering teams.
  • Deep understanding of Machine Learning concepts and optimization techniques.

Aufgaben

  • Lead a high-performing team and drive technical roadmapping.
  • Own the full employee lifecycle, including recruitment and performance management.
  • Define and execute technical roadmaps aligned with company objectives.

Kenntnisse

Software engineering
Machine Learning engineering
Team leadership
Communication skills
Problem-solving

Ausbildung

Bachelor's or Master's degree in Computer Science, Engineering, Mathematics, or related field

Tools

Python
PyTorch
Kubernetes
Docker
Cloud platforms (GCP, AWS, Azure)
Jobbeschreibung
Why us?

We believe that AI has the potential to revolutionize how cancer and other complex diseases are diagnosed and treated. We also believe that AI is a tool, not an identity – without access to high quality data and a scientifically rigorous, transparent approach to model development, AI is just a buzzword. That's where we come in.

Aignostics is a spin-off from one of Europe's largest and most prestigious university hospitals (Charité), with employees in Berlin and New York. We have received over $50M in funding from leading investors and are a growing team of over 100 interdisciplinary professionals. We work with academic partners as well as leading global life sciences companies.

ML Engineering Team Lead

As a ML Engineering Team Lead at Aignostics, you will lead a high-performing team focused on building large-scale distributed training infrastructure and workflows using cutting-edge technologies for digital pathology, powering our state-of-the-art Foundational Model development. This is a hands‑on leadership role where you'll spend approximately 50% of your time on technical contributions while guiding your team to push the boundaries of machine learning for cancer research and diagnostics. You'll own the full employee lifecycle for your team, drive technical roadmapping and ensure operational excellence while fostering a culture of autonomy and innovation.

At Aignostics, we believe that fighting cancer is a job for people of all identities, backgrounds, and cultures. We value and celebrate diversity and inclusion and are committed to offering equal employment and promotion opportunities for all applicants and employees. Applicants will be considered regardless of their age, disability, ethnicity, race, gender identity or expression, sexual orientation, religion, etc. We thrive through collaboration and believe the more inclusive we are, the better our work will be.

Where your expertise is needed
People & Team Leadership
  • Build and scale a high-performing team capable of tackling complex distributed ML challenges
  • Own the full employee lifecycle: recruiting, onboarding, performance management, career development, and retention
  • Empower your team members and help them grow in autonomy and technical expertise
  • Mentor engineers at all levels, fostering a culture of continuous learning and psychological safety
  • Create an inclusive environment where diverse perspectives drive innovation
Strategic & Operational Management
  • Define and execute technical roadmaps aligned with company objectives and product needs
  • Lead resource allocation and capacity planning to balance team workload and business priorities
  • Own FinOps responsibilities: optimize cloud costs, track spending, and ensure efficient resource utilization
  • Ensure operational readiness through monitoring, incident response protocols, and system reliability practices
  • Establish and track KPIs for team performance, system efficiency and health
Technical Leadership
  • Design, develop, and maintain robust large-scale distributed training pipelines and ML infrastructure using cutting‑edge technologies
  • Lead architecture decisions for distributed systems that enable efficient model development at scale
  • Hands‑on contribution to critical technical challenges, including optimization of training pipelines and infrastructure
  • Drive technical excellence through code reviews and architectural guidance
  • Stay at the forefront of distributed training technologies and bring innovation to the team
Cross-functional Collaboration
  • Partner closely with Product teams to translate business requirements into technical solutions
  • Collaborate with (senior) Research Scientists to enable scalable model development and experimentation
  • Work with Platform Engineering to ensure robust infrastructure and tooling
  • Build strong relationships across engineering teams to drive alignment and knowledge sharing
  • Communicate technical concepts effectively to both technical and non‑technical stakeholders
What we are looking for

Required Skills

  • Bachelor's or Master's degree in Computer Science, Engineering, Mathematics, or a related field.
  • 6+ years of software engineering or ML engineering experience, with at least 2 years in a technical leadership or team lead role
  • Proven track record of building and leading high-performing engineering teams. Experience guiding projects across the whole Software Development Life Cycle, from requirements through design to implementation, deployment and maintenance.
  • Deep understanding of fundamental Machine Learning concepts and principles, familiarity with advanced model optimization techniques (such as distillation, graph optimization, quantization etc.)
  • Significant experience with large-scale distributed training systems and frameworks (especially PyTorch and NCCL). Familiarity with GPUs, distributed systems, parallel computing and scaling laws.
  • Advanced programming skills in Python, experience in performance‑critical languages (C/C++ or CUDA) being a plus
  • Familiarity of MLOps/DevOps best practices including CI/CD, Docker, Kubernetes, and observability, cloud platforms (GCP, AWS or Azure) and infrastructure‑as‑code
  • Experience with Linux, version control, and container technologies
  • Demonstrated ability in resource allocation, capacity planning, and FinOps principles
  • Excellent problem‑solving and data‑driven decision‑making skills in ambiguous situations

Leadership & Soft Skills

  • Effective communication and stakeholder management skills
  • Ability to give constructive feedback and navigate difficult conversations
  • Proven people leadership skills with experience managing the full employee lifecycle
  • Strategic thinking with ability to balance short‑term execution and long‑term vision
  • Experience with agile methodologies and iterative development processes
  • Proven ability to influence without authority and build consensus across teams
  • Track record of empowering team members and fostering autonomy

Ideally, you also have

  • Experience with production systems in a regulated or healthcare environments, familiarity with medical device standards (ISO 13485)
  • Experience working with biomedical or image data
  • Hands‑on experience with Google Kubernetes Engine, SLURM and Ray distributed computing framework
  • Experience with advanced ML stack (TorchDyno, JAX, TensorRT)
  • Familiarity with Information Security standards (ISO 27001) in software development
  • Experience with FinOps tools and cloud cost optimization strategies
  • Demonstrated experience with leveraging LLM/Agentic systems to accelerate development

We are still keen to hear from you if you don't match all the above points! Our needs are diverse and growing and you are encouraged to apply if you have any combination of these skills. The recruitment process is a comparative exercise and decisions will be made based on the applications we review at each time.

Our offer
  • Join a purpose‑driven startup: We are working collectively to fight cancer and improve patient outcomes. Come help us make a difference!
  • Cutting‑edge AI research and development, with involvement of Charité, TU Berlin and our other partners
  • Work with a welcoming, diverse, and highly international team of colleagues
  • Opportunity to shape the technical direction and grow into broader leadership roles
  • Expand your skills by benefitting from our Learning & Development yearly budget of 1,000€ (plus 2 L&D days), language classes, and internal development programs
  • Access to leadership development programs and executive coaching
  • Flexible working hours and teleworking policy
  • Enjoy your well‑deserved time off within our 30 paid vacation days per year
  • We are family & pet friendly and support flexible parental leave options
  • Pick a subsidized membership of your choice among public transport, sports, and well‑being
  • Enjoy our social gatherings, lunches, and off‑site events for a fun and inclusive work environment
  • Optional company pension scheme
Join us to make a difference!
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