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Senior MLOps Engineer - Data Ingestion (x/f/m)
Отличная позиция в одной из ведущих health-tech компаний Европы с сильной инженерной культурой, современным стеком и расширенным соцпакетом. Высокая социальная значимость продукта.
Сложность вакансии
Высокая сложность обусловлена требованием 7+ лет опыта, глубокими знаниями SRE и специфическим фокусом на безопасности данных (анонимизация, GDPR). Процесс отбора включает технический кейс и системный дизайн.
Анализ зарплаты
Зарплата в объявлении не указана, но для позиции Senior MLOps в Париже рыночный диапазон составляет 75,000–95,000 евро в год. Doctolib известен конкурентными предложениями, часто находящимися в верхней части рынка.
Сопроводительное письмо
I am writing to express my strong interest in the Senior MLOps Engineer position within the Panda Team at Doctolib. With over 7 years of experience in building production-grade ML lifecycles and a deep background in Site Reliability Engineering, I am particularly drawn to your mission of transforming healthcare data handling while maintaining the highest standards of patient privacy. My expertise in Python, Kubernetes, and Terraform, combined with a proven track record of managing complex ML orchestration via tools like MLflow, aligns perfectly with your requirements for building secure data ingestion and anonymization pipelines.
In my previous roles, I have focused on bridging the gap between data science and production operations, ensuring that models are not only performant but also robustly monitored and scalable. I am especially excited about the opportunity to work on Tier 0 to Tier 1 data pseudo-anonymization and ML-based threat detection. I am confident that my technical skills in infrastructure-as-code and my commitment to ethical AI will allow me to contribute significantly to Doctolib's innovative data platform and help mentor the next generation of MLOps talent within your team.
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Описание вакансии
Your Impact
We are looking for a Senior MLOps Engineer to join the Panda Team (Data & ML Operations) in Data & AI Platform team.
Your mission will be to build and maintain secure ML pipelines in production, transforming how we handle healthcare data at scale. You will work in a feature team developing critical data infrastructure that enables data-driven decision-making while protecting patient privacy across millions of users.
Working in the tech team at Doctolib means building innovative products and features to improve the daily lives of care teams and patients.
What you'll build
Your responsibilities include but are not limited to:
- Design and implement end-to-end ML model pipelines in production (LLM and custom models) with robust deployment, evaluation, and monitoring frameworks
- Own data pseudo-anonymization architecture within ingestion services, converting Tier 0 (personal identifiers) to Tier 1 (anonymized data) while ensuring data quality and model performance
- Build and maintain secure data export services with ML-based threat detection to prevent attack vectors (SQL injection, etc.) using adaptive models rather than manual rules
- Manage golden datasets and implement production model evaluation frameworks to ensure anonymization quality and system reliability
- Build and maintain data pipelines that efficiently extract, transform, and load data from various sources, handling multiple data formats (text, images, audio, video)
- Implement automation and orchestration tools using ML orchestration platforms (MLflow, Braintrust, or similar) to streamline infrastructure provisioning and reduce manual effort
- Monitor data and ML platforms for performance, reliability, and security; identify and troubleshoot issues proactively
- Mentor team members on MLOps expertise and best practices to reduce knowledge silos and build organizational capability
Life at Doctolib Tech
- Our solutions are built on a single fully cloud-native platform that supports web and mobile app interfaces, multiple languages, and is adapted to country and healthcare specialty requirements.
- Our stack is composed of Rails, TypeScript, Java, Python, Kotlin, Swift, and React Native.
- We leverage AI ethically across our products to empower patients and health professionals. Discover our AI visionhere.
Want to learn more about our tech culture and environment? Visit theDoctolib Tech site.
What you'll bring
Before you read on: if you don't have the exact profile described below, but you feel this job description matches your skill set, we still encourage you to apply.
You'll be a great fit if you:
- You have at least 7+ years as an MLOps Engineer or ML Platform Engineer with proven production model lifecycle management experience
- You have expert-level experience with ML orchestration tools (MLflow, Braintrust, or similar) for batch processing and inference pipelines
- You have a strong Site Reliability Engineering (SRE) foundation with focus on operations excellence, reliability, and observability
- You have expertise in Python for automation and ML pipeline scripting
- You have strong proficiency with infrastructure-as-code tools such as Terraform and container orchestration (Kubernetes)
- You have experience with model evaluation frameworks and golden dataset management
- You have a solid understanding of cloud infrastructure (preferably GCP, AWS, or Azure)
- You have excellent problem-solving skills with focus on identifying and resolving infrastructure bottlenecks
- You are fluent in English
It would be fantastic if you:
- Have production LLM or custom model deployment experience
- Have knowledge of data security and privacy frameworks (GDPR, data anonymization, pseudonymization)
- Have experience building and monitoring security services and threat detection systems
- Have strong communication and mentoring skills to drive knowledge transfer across teams
What we offer
- Free comprehensive health insurance for you and your children
- 25 days of paid vacation per year, plus up to 14 days of RTT
- Free mental health and coaching services through our partner Moka.care
- Work from abroad for up to 10 days per year thanks to our flexibility days policy
- Lunch vouchers (Swile card) worth €8.50 per working day, with €4.50 covered by Doctolib
- A subsidy from the work council to refund part of the membership to a sport club or a creative class
- 50% reimbursement of your public transport subscription
- Parent Care Program: receive one additional month of leave on top of the legal parental leave
- For caregivers and workers with disabilities, a package including an adaptation of the remote policy, extra days off for medical reasons, and psychological support
- Relocation support in case of international mobility
- Access to the best AI tools for coding, development and dedicated training
Our interview process
- Recruiter Interview
- Technical Case Study Interview
- System Design Interview
- Behavioral Interview
- At least one reference check
We want your experience to be clear, respectful, and transparent. Learn more about our hiring process on ourcandidate experience page.
Job details
- Permanent position (CDI)
- Tech stack: Python
- Full-time
- Nantes & Paris (Hybrid Policy: 2 days remote / week)
- Start date: as soon as possible
We welcome everyone
At Doctolib, we are committed to improving access to healthcare for everyone. This translates into our recruitment process. We evaluate candidates based solely on qualifications and motivation, without any form of discrimination.
The more diverse ideas are heard, the more our product will truly improve healthcare for all. You are welcome to apply to Doctolib, regardless of your gender, religion, age, sexual orientation, ethnicity, or disability.
To ensure equal opportunities, we invite you to exclude personal information (e.g., pictures, age) from your applications. If you require any accommodation, please let us know for support during the hiring process.
Join us in building the healthcare we all dream of!
Your data privacy
All information provided is processed by Doctolib for application management. For data processing details, click here:France. Please contact hr.dataprivacy(at)doctolib.com for inquiries or to exercise your rights.
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Навыки
- AWS
- Azure
- Python
- Terraform
- LLM
- Kubernetes
- SRE
- Google Cloud Platform
- Docker
- Infrastructure as Code
- MLflow
- Braintrust
Возможные вопросы на собеседовании
Проверка опыта работы с жизненным циклом моделей в продакшене.
Расскажите о самом сложном ML-конвейере, который вы развертывали: как вы обеспечивали его надежность и мониторинг?
Вакансия делает упор на анонимизацию данных.
Какие стратегии и инструменты вы бы использовали для автоматизации процесса псевдоанонимизации данных Tier 0 в Tier 1?
Оценка навыков SRE и работы с инфраструктурой.
Как вы организуете процесс CI/CD для ML-моделей, используя Kubernetes и Terraform, чтобы минимизировать время простоя?
Проверка знаний в области безопасности.
Как можно использовать адаптивные ML-модели для обнаружения угроз, таких как SQL-инъекции, вместо классических правил?
Оценка лидерских качеств.
Опишите ваш опыт менторства: как вы помогали команде внедрять лучшие практики MLOps и сокращать разрывы в знаниях?
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