S. Tucker Taft, Joshua Bloch, et al.
SPLASH 2011
As the systems we build become more complex, understanding and managing their behavior becomes more challenging. If the system's inputs are within an acceptable range, it will behave predictably. However, the system may “fall off the cliff” if input values are outside this range. This nonlinear behavior is undesirable, because the system no longer behaves predictably: it may not be possible to use, control or even recover the system. In this paper, we describe what it means for a system to fall off the cliff. We outline methods for detecting and predicting these modes of nonlinear behavior, and propose several approaches for designing systems to cope with these instabilities, or to avoid them altogether. We conclude by outlining open research questions for investigation by the systems community.
S. Tucker Taft, Joshua Bloch, et al.
SPLASH 2011
Martin P. Robillard, Peri Tarr, et al.
ICSE 2005
Aaron B. Brown, Joseph L. Hellerstein
HotOS 2005
Aaron B. Brown, Anupam Chanda, et al.
HotOS 2005