1 research outputs found
Towards an MLOps Architecture for XAI in Industrial Applications
Machine learning (ML) has become a popular tool in the industrial sector as
it helps to improve operations, increase efficiency, and reduce costs. However,
deploying and managing ML models in production environments can be complex.
This is where Machine Learning Operations (MLOps) comes in. MLOps aims to
streamline this deployment and management process. One of the remaining MLOps
challenges is the need for explanations. These explanations are essential for
understanding how ML models reason, which is key to trust and acceptance.
Better identification of errors and improved model accuracy are only two
resulting advantages. An often neglected fact is that deployed models are
bypassed in practice when accuracy and especially explainability do not meet
user expectations. We developed a novel MLOps software architecture to address
the challenge of integrating explanations and feedback capabilities into the ML
development and deployment processes. In the project EXPLAIN, our architecture
is implemented in a series of industrial use cases. The proposed MLOps software
architecture has several advantages. It provides an efficient way to manage ML
models in production environments. Further, it allows for integrating
explanations into the development and deployment processes