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Mmap
In computing, mmap(2) is a POSIX-compliant Unix system call that maps files or devices into memory. It is a method of memory-mapped file I/O. It…
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Related topics
Related topics
25 relations
Address space layout randomization
Apache Portable Runtime
BSD
C dynamic memory allocation
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Broader (2)
C POSIX library
Inter-process communication
Papers overview
Semantic Scholar uses AI to extract papers important to this topic.
2017
2017
Accelerating Analytical Processing in MVCC using Fine-Granular High-Frequency Virtual Snapshotting
A. Sharma
,
F. Schuhknecht
,
J. Dittrich
SIGMOD Conference
2017
Corpus ID: 30125037
Efficient transaction management is a delicate task. As systems face transactions of inherently different types, ranging from…
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2016
2016
Performance analysis of a family of adaptive blind equalization algorithms for square-QAM
A. W. Azim
,
S. Abrar
,
A. Zerguine
,
A. Nandi
Digit. Signal Process.
2016
Corpus ID: 29064218
Highly Cited
2015
Highly Cited
2015
Zeroizing Without Low-Level Zeroes: New MMAP Attacks and their Limitations
J. Coron
,
Craig Gentry
,
+6 authors
Mehdi Tibouchi
Annual International Cryptology Conference
2015
Corpus ID: 5551716
We extend the recent zeroizing attacks of Cheon, Han, Lee, Ryu and Stehle (Eurocrypt’15) on multilinear maps to settings where no…
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Highly Cited
2013
Highly Cited
2013
A Computational Framework for Infinite-Dimensional Bayesian Inverse Problems Part I: The Linearized Case, with Application to Global Seismic Inversion
T. Bui-Thanh
,
O. Ghattas
,
James Martin
,
G. Stadler
SIAM Journal on Scientific Computing
2013
Corpus ID: 13473158
We present a computational framework for estimating the uncertainty in the numerical solution of linearized infinite-dimensional…
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Highly Cited
2011
Highly Cited
2011
Distributed by Design: On the Promises and Pitfalls of Collaborative Learning with Multiple Representations
Tobin White
,
R. Pea
2011
Corpus ID: 54775290
This article presents a designed learning environment intended to engage students in learning about the relationships among…
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Highly Cited
2006
Highly Cited
2006
Address Space Layout Permutation (ASLP): Towards Fine-Grained Randomization of Commodity Software
Chongkyung Kil
,
Jinsuk Jun
,
Christopher Bookholt
,
Jun Xu
,
P. Ning
Asia-Pacific Computer Systems Architecture…
2006
Corpus ID: 8321294
Address space randomization is an emerging and promising method for stopping a broad range of memory corruption attacks. By…
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Highly Cited
2005
Highly Cited
2005
The Inferential Complexity of Bayesian and Credal Networks
Cassio Polpo de Campos
,
Fabio Gagliardi Cozman
International Joint Conference on Artificial…
2005
Corpus ID: 8391153
This paper presents new results on the complexity of graph-theoretical models that represent probabilities (Bayesian networks…
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2001
2001
A Study in Malloc: A Case of Excessive Minor Faults
Phillip Ezolt
Annual Linux Showcase & Conference
2001
Corpus ID: 45320933
GNU libc's default setting for malloc can cause a significant performance penalty for applications that use it extensively, such…
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2001
2001
Considerations of Learning and Learning Research: Revisiting the "Media Effects" Debate
Mitchell J. Nathan
,
C. Robinson
2001
Corpus ID: 54673146
This article revisits the “Media Effects” debate—whether media, in and of itself, affects learning—and presents an analysis of…
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Highly Cited
1995
Highly Cited
1995
Realtime Signal Processing Data∞ow, Visual, and Functional Programming
H. J. Reekie
1995
Corpus ID: 62667293
This thesis presents and justifies a framework for programming real-time signal processing systems. The framework extends the…
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