As machine learning systems begin to transition from the research phase to the production phase, it’s becoming clear that they have unique QA and testing related challenges.
Deepchecks offers a customizable, plug & play, algorithm-based solution, for testing and monitoring machine learning systems.
Deepchecks is a VC-backed startup tackling the huge problem of controlling Machine Learning systems.
AI systems are being adopted by more and more organizations and are taking an increasingly important role in their business. Although many resources are allocated to creating and optimizing the machine learning models, they still lack “common sense” and make various mistakes that may go undetected for long periods of time. We focus on detecting, preventing, and fixing these “AI glitches”, using mathematical concepts and algorithmic research. Our product monitors these systems in production, identifies a wide range of potential problems, and offers different types of alerts and explanations (depending on the type and the severity of the issue).
The startup was founded by two Talpiot graduates / Data Scientists and a leading professor in this field. Following a few months of R&D and initial customer traction, the time has come to expand our extremely talented (and fun!) team. Our offices are in Tel-Aviv, although we’ve recently been working from home most of the time.
We’re looking for a top-notch cloud engineer to join us! As part of your job, you will be responsible to manage a massive Kubernetes platform, developing and improving CI/CD processes, being a part of the Design of CI/CD stages, and have strong influence and responsibility on the core product architecture.
You will work in a dynamic environment where multiple projects will be active at once.
Your daily work will include a wide range of tools such as Kubernetes, Helm, Terraform, Prometheus, Gitlab-ci, Docker, Apache Kafka, Git, Python focusing on managing Kubernetes resources on a high-scale environment.