Signed in as:
filler@godaddy.com
Signed in as:
filler@godaddy.com
I'm Sagi Timinsky, the founder of OrgOps. I’ve always been fascinated by the dynamics that shape organizations—the forces that bring people together, the constructive and disruptive elements that drive success or failure. My journey has led me to explore these phenomena deeply, and at OrgOps, I’m committed to redefining processes that empower teams to thrive.
My background spans over a decade in the tech industry, with leadership roles in both research and development. Currently, I lead a ML/DataOps team @ General Motors, where I focus on developing scalable software infrastructures to support production-level machine learning and deep learning models deployed in cloud environments. Previously, I served as Vice President of R&D at an Israeli startup, overseeing a multidisciplinary team of 20 developers, driving innovation in computer vision and natural language processing. My early career also includes roles as a data scientist, research assistant at Tel Aviv University, and data analyst for the Israel Defense Forces. Additionally, I served in a Israeli technological unit, which significantly shaped my approach to technology and leadership. I am also an active researcher with an international research group focused on climate technology. My contributions to academic research and publications further deepen my expertise in these fields.
I firmly believe that software development is a ritual—one that requires consistency, structure, and thoughtful design. Join me on this adventure as we redefine what makes a strong team, shape how tasks should be approached, and lead the way to a more effective continuous integration and delivery.
OrgOps is the perfect environment to learn, teach, and experience the development cycle as it should be—guided by expertise and driven by the collective knowledge of the group to achieve excellence.
We use cookies to analyze website traffic and optimize your website experience. By accepting our use of cookies, your data will be aggregated with all other user data.