Automatic prediction tools play a key role in enabling the application of non-functional analysis to the selection and the
assembly of components for component-based systems, without requiring extensive knowledge of analysis methodologies to the
application designer. A key idea to achieve this goal is to define a model transformation that takes as input some “design-oriented” model of the component assembly and produces as a result an “analysis-oriented”
model that lends itself to the application of some analysis methodology. For this purpose, we define a model-driven transformation
framework, centered around a kernel language whose aim is to capture the relevant information for the analysis of non-functional
attributes of component-based systems, with a focus on performance and reliability. Using this kernel language as a bridge
between design-oriented and analysis-oriented notations we reduce the burden of defining a variety of direct transformations
from the former to the latter to the less complex problem of defining transformations to/from the kernel language. The proposed
kernel language is defined within the MOF (Meta-Object Facility) framework, to allow the exploitation of existing model transformation
facilities. In this chapter, we present the key concepts of our methodology and we show its application to the CoCoME case
study.