At DNOVO Labs, we’re revolutionizing drug delivery through advanced artificial intelligence. We apply cutting-edge machine learning techniques to accelerate the discovery and optimization of innovative delivery systems. Our AI-driven approach enables rapid exploration of vast chemical spaces, allowing us to design and iterate on molecular structures that can transform how drugs and vaccines are transported in the body. This work is tightly coupled with our state-of-the-art wet lab, where we rapidly synthesize and test the most promising candidates, creating a seamless loop between in silico predictions and experimental validation.
As a Machine Learning Infrastructure Engineer, you will be responsible for both developing advanced ML pipelines and managing the robust infrastructure that powers our algorithms. Your role involves architecting and maintaining scalable, distributed systems, optimizing cloud resources, and ensuring the reliability of our computational environment. You'll work on building efficient data processing pipelines, while also focusing on infrastructure management tasks such as capacity planning, performance tuning, and implementing DevOps practices. You’re energized by balancing pipeline development with infrastructure management will be crucial in empowering our research team to make groundbreaking discoveries in drug delivery and therapeutics.