Develop and maintain scalable data pipelines for high-quality healthcare datasets, playing a crucial role in AI technology that directly impacts patient outcomes.
The Data Engineer will play a crucial role in developing and fine-tuning data specifically for our LLMs and machine learning models. This individual will be responsible for the entire data lifecycle, including gathering, cleaning, structuring, and optimizing large, diverse healthcare datasets. The ideal candidate will have a strong background in data engineering principles, experience with big data technologies, and a keen understanding of the unique challenges and requirements of healthcare data.
You will design, build, and maintain scalable data pipelines that source, preprocess, and deliver high-quality, high-volume datasets to our machine learning engineers. This role requires a deep understanding of data engineering best practices coupled with specific knowledge of the data requirements for LLM training and refinement
Requirements
Benefits
Why Join Us?
Joining C the Signs is not just about building AI; it’s about shaping the future of healthcare. If you are a technical leader with an unshakable belief in the power of AI to save lives and the ability to make it happen at scale, this is your opportunity to create a tangible, global impact.
Benefits:
Flexible Work Hours
Flexible working arrangements (remote or hybrid options available).
C the Signs builds an AI-powered platform designed to enhance early detection of cancer and improve survival rates. Our solution is targeted at healthcare professionals and patients, providing them with the essential tools and information needed to identify cancer symptoms promptly and ensure timely treatment. What sets us apart is our commitment to reducing healthcare disparities and our innovative approach to cancer care.
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