Method
and Apparatus for Low-Power Branch Prediction
Introduction
Effective prediction remains a key enabler of high-end microprocessor
performance, for branches, load/store dependencies, load cache
hits, and other phenomenon. Modern branch predictors have
gotten more and more complex, and now use considerable state
and energy, and are also susceptible to soft errors, hard
errors, and process variation, which are all growing in importance
as the industry moves to smaller semiconductor devices.
Benefits:
- Makes highly accurate neural-based predictors competitive
from a power perspective for the first time
- Can be operated with very high power efficiency, accuracy
and low latency
- Tolerant of soft errors, hard run-time faults, and process
variation
- Highly resilient in the face of process variation and
device errors
Market Potential/Applications:
High-performance, low-power data processing systems
Contact:
University of Texas,
Austin, USA
Website : www.otc.utexas.edu

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