44,444 research outputs found
Common Representation of Information Flows for Dynamic Coalitions
We propose a formal foundation for reasoning about access control policies
within a Dynamic Coalition, defining an abstraction over existing access
control models and providing mechanisms for translation of those models into
information-flow domain. The abstracted information-flow domain model, called a
Common Representation, can then be used for defining a way to control the
evolution of Dynamic Coalitions with respect to information flow
SDN Access Control for the Masses
The evolution of Software-Defined Networking (SDN) has so far been
predominantly geared towards defining and refining the abstractions on the
forwarding and control planes. However, despite a maturing south-bound
interface and a range of proposed network operating systems, the network
management application layer is yet to be specified and standardized. It has
currently poorly defined access control mechanisms that could be exposed to
network applications. Available mechanisms allow only rudimentary control and
lack procedures to partition resource access across multiple dimensions.
We address this by extending the SDN north-bound interface to provide control
over shared resources to key stakeholders of network infrastructure: network
providers, operators and application developers. We introduce a taxonomy of SDN
access models, describe a comprehensive design for SDN access control and
implement the proposed solution as an extension of the ONOS network controller
intent framework
Shai: Enforcing Data-Specific Policies with Near-Zero Runtime Overhead
Data retrieval systems such as online search engines and online social
networks must comply with the privacy policies of personal and selectively
shared data items, regulatory policies regarding data retention and censorship,
and the provider's own policies regarding data use. Enforcing these policies is
difficult and error-prone. Systematic techniques to enforce policies are either
limited to type-based policies that apply uniformly to all data of the same
type, or incur significant runtime overhead.
This paper presents Shai, the first system that systematically enforces
data-specific policies with near-zero overhead in the common case. Shai's key
idea is to push as many policy checks as possible to an offline, ahead-of-time
analysis phase, often relying on predicted values of runtime parameters such as
the state of access control lists or connected users' attributes. Runtime
interception is used sparingly, only to verify these predictions and to make
any remaining policy checks. Our prototype implementation relies on efficient,
modern OS primitives for sandboxing and isolation. We present the design of
Shai and quantify its overheads on an experimental data indexing and search
pipeline based on the popular search engine Apache Lucene
The Challenges in SDN/ML Based Network Security : A Survey
Machine Learning is gaining popularity in the network security domain as many
more network-enabled devices get connected, as malicious activities become
stealthier, and as new technologies like Software Defined Networking (SDN)
emerge. Sitting at the application layer and communicating with the control
layer, machine learning based SDN security models exercise a huge influence on
the routing/switching of the entire SDN. Compromising the models is
consequently a very desirable goal. Previous surveys have been done on either
adversarial machine learning or the general vulnerabilities of SDNs but not
both. Through examination of the latest ML-based SDN security applications and
a good look at ML/SDN specific vulnerabilities accompanied by common attack
methods on ML, this paper serves as a unique survey, making a case for more
secure development processes of ML-based SDN security applications.Comment: 8 pages. arXiv admin note: substantial text overlap with
arXiv:1705.0056
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