AI/ML Engineer (HealthTech)
Company Background
The client is a healthcare technology company on a mission to improve outcomes through data-driven insights. With a focus on delivering industry-leading Patient-Reported Outcome Measures (PROMs) adoption rates, the company empowers providers with tools for smarter operations and better care. Their current AI maturity presents a greenfield opportunity for technical leaders eager to define and implement strategic AI solutions in a collaborative and fast-paced environment.
Project Description
The project centers around developing a suite of AI-powered tools within a healthcare platform. These tools aim to enhance patient engagement, automate communication via sentiment-aware CRM integration, process unstructured device data using GenAI, and surface predictive analytics to detect early signs of patient risk. Additionally, a natural language-driven insights interface enables dashboard generation and anomaly detection to improve care quality, reduce operational costs, and increase platform engagement.
Technologies
- Python
- FastAPI
- Django (DRF)
- PyTorch
- TensorFlow
- Hugging Face
- OpenAI
- Bedrock
- Docker
- AWS (ECR, ECS, EC2, Lambda)
- CI/CD
- MLflow
- SQL
- NoSQL
- Vector Stores
- Pandas
- OpenCV
- Kafka
- RabbitMQ
- Kubernetes
- AWS SageMaker
- Apache Spark
- Dask
- Azure
- GCP
What You'll Do
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Architect, develop, and deploy ML solutions aligned with cost-reduction and revenue-growth KPIs;
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Own the full ML lifecycle including data acquisition, model training, evaluation, A/B testing, and production deployment;
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Translate business objectives into robust technical solutions in collaboration with stakeholders;
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Refactor and modernize legacy components into scalable infrastructure;
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Ensure high code quality through strong testing and observability practices;
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Lead demos and workshops for business and technical audiences;
Job Requirements
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Minimum 3+ years of experience in machine learning or data engineering roles;
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Solid theoretical foundation in machine learning, natural language processing (NLP), and computer vision;
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Strong Python development skills and experience building end-to-end ML/NLP/CV pipelines in production environments;
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Proven experience deploying ML systems in cloud environments, preferably AWS (ECR, ECS, EC2, Lambda, Bedrock);
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Hands-on experience with containerization tools like Docker and orchestration in production settings;
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Familiarity with distributed systems and message-based architectures; Kafka experience is a plus;
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Experience setting up and maintaining CI/CD pipelines and version control workflows using modern DevOps practices;
What Do We Offer
The global benefits package includes:
- Technical and non-technical training for professional and personal growth;
- Internal conferences and meetups to learn from industry experts;
- Support and mentorship from an experienced employee to help you professional grow and development;
- Internal startup incubator;
- Health insurance;
- English courses;
- Sports activities to promote a healthy lifestyle;
- Flexible work options, including remote and hybrid opportunities;
- Referral program for bringing in new talent;
- Work anniversary program and additional vacation days.
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