At a Glance
- Tasks: Architect and deploy innovative AI workflows to solve real business challenges.
- Company: Join a fast-growing AI start-up revolutionising biomedicine with cutting-edge technology.
- Benefits: Enjoy competitive salary, equity, flexible work options, and professional growth opportunities.
- Why this job: Shape the future of AI in biology and make a real impact on groundbreaking projects.
- Qualifications: STEM degree and 2-5 years in applied ML or MLOps; Python and SQL skills required.
- Other info: Collaborative culture focused on inclusivity and diverse perspectives.
The predicted salary is between 36000 - 60000 ÂŁ per year.
Bioptimus is building the first universal AI foundation model for biology to fuel breakthrough discoveries and accelerate innovation in biomedicine. With more than $75M in funding, Bioptimus is a fast-growing start‑up headquartered in Paris, incorporated in October 2023. Backed by leading international venture capitalists, our world‑class team of scientists and engineers is redefining the frontiers of AI and life sciences.
Location: Paris / London / Berlin / Remote (EU)
About the role: As an AI Technical Operations Manager, you will architect, build, and deploy cross‑functional agentic AI workflows. You will partner with business stakeholders to understand real operational problems, translate them into technical system designs, and implement them using LLMs, agents, RAG, orchestration, and MLOps best practices. This role requires ML intuition, engineering capability, product mindset, and strong communication skills.
You will:
- Understand business workflows and requirements
- Design the system to solve them
- Build the agentic/LLM solution
- Deploy and monitor it in production
- Iterate based on performance
You will report to the COO and collaborate closely with Engineering, Operations, and cross‑functional teams.
What you’ll be doing:
- Build & Deploy Agentic AI Systems: Design and implement production‑grade agentic systems automating/augmenting internal operations. Build multi‑step agents using LLMs, RAG pipelines, orchestration frameworks, and custom tool‑use logic. Integrate classical ML models into workflows (supervised, unsupervised, or clustering where relevant) and deploy them in production. Build simple generative AI components (text models, embeddings, fine‑tuned variants) when required for functional workflows. Optimize prompts, retrieval strategies, guardrails, and agent policies using principles from fine‑tuning or RL‑style optimization. Ensure stability, correctness, and reliability for business‑critical automations.
- Technical Product Building – Business / ML Integration: Partner with Finance, HR, Legal, Marketing, Product, and R&D to map their workflows and identify automation opportunities. Translate ambiguous business needs into clear technical specifications and system architectures. Evaluate ROI, feasibility, risk, and adoption complexity. Own solutions through the full lifecycle: requirements → design → build → deploy → iterate. Communicate decisions and constraints clearly to both technical and non‑technical stakeholders.
- MLOps, Engineering & Infrastructure: Build CI/CD pipelines for prompts, models, tools, and agent behavior. Deploy agents and services using Docker, AWS, server‑less workflows, or lightweight micro‑services. Implement evaluation frameworks for accuracy, reliability, latency, and safety. Build observability loops to monitor systems drift, agent degradation, failure modes; implement guardrails and alerts. Maintain clean, reproducible, well‑documented codebases and system diagrams.
- Cross‑Functional Collaboration & Rollout Support: Continuously track rapidly‑changing technological trends and SOTA to make the best build vs. buy recommendations to the function challenges. Train end‑users on new systems and gather structured feedback. Work with business functions to refine workflows and embed agents sustainably. Be a technical advisor to leadership on automation opportunities and architecture evolution.
What you’ll bring:
The successful candidate is a hybrid applied ML engineer + MLOps builder + product thinker who enjoys solving real business problems with technical systems in a high‑growth, technology‑driven environment. You thrive in an ambiguous environment and naturally combine:
- Business intuition + technical depth
- System design + ML evaluation + deployment discipline
- Product mindset + engineering execution
- Curiosity + ownership + clarity of communication
Skills & Experience:
- Education: STEM degree (Computer Science, AI, Data Science, Applied Mathematics, or Engineering); or Dual‑degree blending business and ML/data science (e.g., engineering school + management/innovation program)
- 2–5 years in applied ML, AI/data consulting, ML engineering, or MLOps.
- Proficiency in Python and SQL.
- Experience with Docker, AWS, CI/CD, and deploying ML systems.
- Experience building and deploying ML models (supervised learning, unsupervised learning, or light generative AI applications).
- Ability to evaluate and debug ML systems using appropriate metrics (AUC, precision/recall, F1, clustering validity, drift diagnostics).
- Experience delivering ML or automation projects end‑to‑end, from scoping and modeling to deployment and iteration.
- Familiarity with LLMs, prompting, RAG, orchestration, fine‑tuning.
How to stand out:
- Experience building agentic or multi‑step LLM systems (LangChain, CrewAI, LlamaIndex).
- Working knowledge of vector databases (e.g., Weaviate, Pinecone).
- Experience with workflow automation platforms (e.g., n8n, Make, Zapier).
- Exposure to RL concepts (reward shaping, constraints, multi‑step reasoning).
- Experience in client‑facing AI/ML consulting engagements.
The Candidate Journey:
- Screening: Once you have applied, the hiring team will review your application. If your experience and skills align with the role, you will be invited to a 30‑minute introductory call with the Hiring Manager.
- Interviews: Following a successful screening, you will be invited to the core stages of our evaluation process:
- Technical Challenge (Take‑home): You will be invited to complete a practical exercise focused on building an LLM‑driven agentic system. This is designed to assess your coding standards, system thinking, and ability to evaluate complex AI outputs. You will present your solution to the team. This 1‑hour session will cover your live demo, system design choices, deployment roadmap, and thoughts on user adoption. Expect a deep‑dive discussion on the technical and strategic decisions you made.
- Culture & Team Fit (Series of 30‑min chats): You will meet in‑person with cross‑functional members of our team. This is a chance for us to assess your “community builder” mindset and for you to gauge the culture you will be supporting.
- Leadership Interview (30 min): A final conversation to discuss your vision for the role, assess executive maturity, and ensure alignment on expectations.
Why this is a unique opportunity:
- Build the agentic systems that run the company.
- Translate complex business workflows into elegant AI/ML systems.
- Be a multiplier for every function—Finance, HR, Legal, Marketing, Product, R&D.
- Shape automation strategy and architecture within a frontier AI lab.
- Gain rare experience in applied LLM orchestration + MLOps + product building.
Benefits:
- A collaborative and mission‑driven work environment.
- Competitive salary and equity package.
- Flexible work arrangements, including remote options.
- Opportunities for professional growth and leadership development.
- Shape the future of biology and AI by contributing to groundbreaking work.
We believe that the unique contributions of all Bioptimists create our success. To ensure that our culture continues to incorporate everyone’s perspectives and experience, we never discriminate based on race, religion, national origin, gender identity or expression, sexual orientation, age, or marital, or disability status. Decisions related to hiring are made fairly, and we provide equal employment opportunities to all qualified candidates. We take responsibility for always striving to create an inclusive environment that makes every employee and candidate feel welcome.
To be considered, please submit your CV in English.
AI Technical Operations Manager employer: Bioptimus
Contact Detail:
Bioptimus Recruiting Team
StudySmarter Expert Advice 🤫
We think this is how you could land AI Technical Operations Manager
✨Tip Number 1
Network like a pro! Reach out to people in the industry, attend meetups, and connect with potential colleagues on LinkedIn. You never know who might have the inside scoop on job openings or can put in a good word for you.
✨Tip Number 2
Prepare for those interviews! Research Bioptimus and understand their mission in AI and biomedicine. Be ready to discuss how your skills align with their goals and how you can contribute to building those agentic AI systems.
✨Tip Number 3
Show off your projects! If you've built any ML models or automation systems, be sure to highlight them during interviews. Having tangible examples of your work can really set you apart from other candidates.
✨Tip Number 4
Apply through our website! It’s the best way to ensure your application gets seen by the right people. Plus, it shows you're genuinely interested in joining the Bioptimus team and contributing to their groundbreaking work.
We think you need these skills to ace AI Technical Operations Manager
Some tips for your application 🫡
Tailor Your CV: Make sure your CV reflects the skills and experiences that align with the AI Technical Operations Manager role. Highlight your experience in ML, MLOps, and any relevant projects that showcase your ability to build and deploy AI systems.
Craft a Compelling Cover Letter: Use your cover letter to tell us why you're excited about this role at Bioptimus. Share specific examples of how you've tackled similar challenges in the past and how you can contribute to our mission of revolutionising biomedicine.
Showcase Your Technical Skills: Don’t shy away from detailing your technical expertise! Mention your proficiency in Python, SQL, and any experience with Docker or AWS. We want to see how you’ve applied these skills in real-world scenarios.
Apply Through Our Website: We encourage you to apply directly through our website for a smoother application process. This way, we can ensure your application gets the attention it deserves and you can stay updated on your application status!
How to prepare for a job interview at Bioptimus
✨Know Your Tech Inside Out
Make sure you’re well-versed in the technologies mentioned in the job description, like LLMs, MLOps, and orchestration frameworks. Brush up on your Python and SQL skills, and be ready to discuss how you've used these tools in past projects.
✨Understand the Business Side
Since this role involves translating business needs into technical solutions, take time to research Bioptimus and its operations. Think about how AI can solve real-world problems in biomedicine and be prepared to share your insights during the interview.
✨Prepare for Technical Challenges
Expect a practical exercise focused on building an LLM-driven agentic system. Practice coding challenges that involve system design and deployment. Be ready to explain your thought process and decisions clearly, as communication is key.
✨Show Your Collaborative Spirit
This role requires working closely with various teams. Prepare examples of how you’ve successfully collaborated in the past, especially in cross-functional settings. Highlight your ability to communicate complex ideas to both technical and non-technical stakeholders.