Description du Poste
What youโll do
At Doctolib, we're on a mission to transform the way healthcare is delivered by leveraging the power of AI.
We are seeking a highly skilled, motivated, and collaborative MLOps Engineer to join our ML Platform Team. The successful candidate will play a pivotal role in developing, deploying, and maintaining machine learning models and systems, ensuring their performance and scalability. You will collaborate with data scientists, software engineers, platform engineers and other stakeholders to deliver high-quality solutions that power Doctolib products for care teams and patients.
Your responsibilities include but are not limited to:
Collaborate with data scientists and engineers to develop and deploy machine learning models, ensuring they meet performance, scalability, and reliability requirements.
Implement and maintain the MLOps pipeline, including version control, continuous integration, continuous deployment, and monitoring of machine learning models.
Develop tools, frameworks, and best practices to streamline the model development and deployment process.
Ensure the availability, reliability, and performance of machine learning models and systems, proactively addressing any issues that arise.
Monitor the performance of machine learning models in production, identifying areas for improvement and working with data scientists to optimize the models.
Stay up-to-date with the latest advancements in MLOps and machine learning technologies, incorporating them into the ML Platform Team's workflows as appropriate.
Collaborate with cross-functional teams to gather requirements, provide technical guidance, and contribute to the development of machine learning solutions.
Document MLOps processes, standards, and best practices to ensure knowledge transfer and consistency across the team
Share & advocate your work with the tech community
Our stack
Programming languages : Python / Pyspark / SQL.
Cloud providers : AWS / Azure.
Machine Learning platform : AWS SageMaker
Container / Orchestration : AWS ECS / Docker
Data warehouse / storage : AWS S3 / AWS Redshift
Databases : PostgreSQL
Search engine : ElasticSearch
Data capture tool : AWS Kinesis
ML pipeline : AWS Step Functions / AWS Lambda / AWS SageMaker.
Infrastructure as code : Terraform
And any other tool you deem relevant!
Who you are
If you donโt meet all the requirements below but believe this opportunity matches your expectations and experience, we still encourage you to apply!
You could be our next team mate if you:
Have a good team spirit, enjoy learning new skills and have a strong sense of initiative
Excellent communication and collaboration skills, with the ability to work well in cross-functional teams and write clear documentation.
Have a Bachelor's degree in Computer Science, Engineering, or a related field; advanced degree preferred
Idealy a first experience in MLOps Engineer, Cloud engineer for Machine Learning applications or similar role.
Are proficient in our core languages : Python / SQL / Shell Scripting / Terraform
Good understanding of machine learning algorithms / concepts / trends
First experience in Deep Learning Framework, preferably PyTorch
Knowledge of cloud platforms like AWS and services like Amazon SageMaker, EC2, ECS, S3, CloudWatch and/or Azure and GCP equivalents.
Interest in building with HuggingFace Technologies, including Transformers, Diffusers, Accelerate, PEFT
Have experience in building MLOps pipelines for containerizing models and solutions with Docker
Now, it would be fantastic if you:
Have experience with Kubernetes, GitOps tools (e.g. ArgoCD) and/or Kafka
Have experience with Terraform Enterprise / Hashicorp Vault / Cloudflare is a plus
Have experience developing in Javascript / Typescript and using deployment in the browser (transformers.js / langchain.js)
Have experience with ML model quantization and optimization
What we offer
Free health insurance for you and your children
Parent Care Program: receive one additional month of leave on top of the legal parental leave
Free mental health and coaching services through our partner Moka.care
For caregivers and workers with disabilities, a package including an adaptation of the remote policy, extra days off for medical reasons, and psychological support
Work from EU countries and the UK for up to 10 days per year, thanks to our flexibility days policy
Work Council subsidy to refund part of sport club membership or creative class
Up to 14 days of RTT
A subsidy from the work council to refund part of the membership to a sport club or a creative class
Lunch voucher with Swile card
The interview process
HR interview by phone (45 minutes)
Hiring manager interview (1 hour)
Case study & case restitution (1 hour)
Behavioral interview / Meet the team session (1 hour / half day immersion)
At least one reference check
A copy of your criminal records (โextrait de casier judiciaire B3โ)
Job details
Permanent position
Full Time
Workplace : Paris area
Start date: asap
Remuneration : fix + bonus on objectives (according to your profile)
At Doctolib, we believe in improving access to healthcare for everyone - regardless of where you come from, what you look like. This translates into our recruitment process: Doctolib is an equal opportunity employer. We don't just accept diversity at Doctolib, we respect and celebrate it!
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, disability, or place of origin. If you have a disability, let us know if there's any way we can make the interview process smoother for you!
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