SNMP Administrative Model

@article{Davin1992SNMPAM,
  title={SNMP Administrative Model},
  author={James R. Davin and James M. Galvin and Keith McCloghrie},
  journal={RFC},
  year={1992},
  volume={1351},
  pages={1-35}
}
This memo presents an elaboration of the SNMP administrative model set forth in [1]. This model provides a unified conceptual basis for administering SNMP protocol entities to support 

Tables from this paper

SNMP Security Protocols
TLDR
This memo defines protocols to support the following three security services for SNMP network management: denial-of-service (DDoS), denial of service (DoS) and identity theft (IoT) protection.
MIB view language (MVL) for SNMP
TLDR
“MIB view language (MVL)” for network management systems to provide capability of restructuring management information models based on SNMP architecture and can provide “atomic operation” feature as well as “select” and “join” features to management applications without changing SNMP protocol itself.
Definitions of Managed Objects for Administration of SNMP Parties
TLDR
This memo defines a portion of the Management Information Base for use with network management protocols in TCP/IP-based internets and describes a representation of the SNMP parties defined in [8] as objects defined according to the Internet Standard SMI.
VISUALIZATION AND CLUSTERING FOR SNMP INTRUSION DETECTION
TLDR
The mobile visualization connectionist agent-based intrusion detection system (MOVICAB-IDS), previously proposed as a hybrid intelligent IDS based on visualization techniques, is upgraded by adding automatic response thanks to clustering methods, to check the validity of the proposed clustering extension.
A FEATURE SELECTION AGENT-BASED IDS
TLDR
This work shows the benefits of applying connectionist models and agent technology to the Intrusion Detection (ID) field and helps network administrators to decide if anomalous situations are real intrusions or not.
Clustering extension of MOVICAB-IDS to identify SNMP community searches
TLDR
This work proposes the application of clustering techniques to provide automatic response to MOVICAB-IDS to quickly abort intrusive actions while happening to improve the detection capability on a continuous basis.
Mutating network scans for the assessment of supervised classifier ensembles
TLDR
A mutation technique is proposed in this study to test and evaluate the performance of a full range of classifier ensembles for Network Intrusion Detection when trying to recognize new attacks.
SNMP Administrative Model
TLDR
This model provides a unified conceptual basis for administering SNMP protocol entities to support and is presented as an elaboration of the SNMP administrative model set forth in [1].

References

SHOWING 1-6 OF 6 REFERENCES
SNMP Security Protocols
TLDR
This memo defines protocols to support the following three security services for SNMP network management: denial-of-service (DDoS), denial of service (DoS) and identity theft (IoT) protection.
Structure and identification of management information for TCP/IP-based internets
This RFC is a re-release of RFC 1065, with a changed "Status of this Memo", plus a few minor typographical corrections. The technical content of the document is unchanged from RFC 1065.
Definitions of Managed Objects for Administration of SNMP Parties
TLDR
This memo defines a portion of the Management Information Base for use with network management protocols in TCP/IP-based internets and describes a representation of the SNMP parties defined in [8] as objects defined according to the Internet Standard SMI.
Simple Network Management Protocol
TLDR
This RFC defines a simple protocol by which management information for a network element may be inspected or altered by logically remote users and specifies a draft standard for the Internet community.
SNMP Administrative Model
TLDR
This model provides a unified conceptual basis for administering SNMP protocol entities to support and is presented as an elaboration of the SNMP administrative model set forth in [1].
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