TY - JOUR
T1 - Trusted Grid computing with security binding and trust integration
AU - Song, Shanshan
AU - Hwang, Kai
AU - Kwok, Yu Kwong
N1 - Funding Information:
The funding support of this work by the NSF ITR Grant ACI-0325409 is appreciated. We are also indebted to the USC GridSec team members, Hua Liu, Min Cai, Ying Chen, and Yu Chen for inspiring discussions during the courses of this research.
Funding Information:
∗ The research work reported here was supported by a NSF ITR Grant 0325409. The paper is significantly extended from preliminary results presented in IFIP International Conference on Network and Parallel Computing (NPC-2004), IEEE International Parallel and Distributed Processing Symposium (IPDPS-2005), and International Workshop on Grid Security and Resource Management (GSRM-2005). The corresponding author is Kai Hwang at the University of Southern California.
PY - 2005/6
Y1 - 2005/6
N2 - Trusted Grid computing demands robust resource allocation with security assurance at all resource sites. Large-scale Grid applications are being hindered by lack of security assurance from remote resource sites. We developed a security-binding scheme through site reputation assessment and trust integration across Grid sites. We do not treat the trust factor deterministically. Instead, we apply fuzzy theory to handle the fuzziness or uncertainties behind all trust attributes. The binding is achieved by periodic exchange of site security information and matchmaking to satisfy user job demands. PKI-based trust model supports Grids in multi-site authentication and single sign-on operations. However, cross certificates are inadequate to assess local security conditions at Grid sites. We propose a new fuzzy-logic trust model for distributed trust aggregation through fuzzification and integration of security attributes. We introduce the trust index of a Grid site, which is determined by site reputation from its track record and self-defense capability attributed to the risk conditions and hardware and software defenses deployed at a Grid site. A Secure Grid Outsourcing (SeGO) system is designed for secure scheduling a large number of autonomous and indivisible jobs to Grid sites. Significant performance gains are observed after trust aggregation, which is evaluated by running scalable NAS and PSA workloads over simulated Grids. Our security-binding scheme scales well with increasing user jobs and Grid sites. The new scheme can guide the security upgrade of Grid sites and predict the Grid performance of large workloads under risky conditions.
AB - Trusted Grid computing demands robust resource allocation with security assurance at all resource sites. Large-scale Grid applications are being hindered by lack of security assurance from remote resource sites. We developed a security-binding scheme through site reputation assessment and trust integration across Grid sites. We do not treat the trust factor deterministically. Instead, we apply fuzzy theory to handle the fuzziness or uncertainties behind all trust attributes. The binding is achieved by periodic exchange of site security information and matchmaking to satisfy user job demands. PKI-based trust model supports Grids in multi-site authentication and single sign-on operations. However, cross certificates are inadequate to assess local security conditions at Grid sites. We propose a new fuzzy-logic trust model for distributed trust aggregation through fuzzification and integration of security attributes. We introduce the trust index of a Grid site, which is determined by site reputation from its track record and self-defense capability attributed to the risk conditions and hardware and software defenses deployed at a Grid site. A Secure Grid Outsourcing (SeGO) system is designed for secure scheduling a large number of autonomous and indivisible jobs to Grid sites. Significant performance gains are observed after trust aggregation, which is evaluated by running scalable NAS and PSA workloads over simulated Grids. Our security-binding scheme scales well with increasing user jobs and Grid sites. The new scheme can guide the security upgrade of Grid sites and predict the Grid performance of large workloads under risky conditions.
KW - Computational Grids
KW - Fuzzy logic
KW - NAS and PSA benchmarks
KW - Performance evaluation
KW - Resource allocation
KW - Scalability analysis
KW - Trust models
UR - http://www.scopus.com/inward/record.url?scp=28844464697&partnerID=8YFLogxK
U2 - 10.1007/s10723-005-5465-x
DO - 10.1007/s10723-005-5465-x
M3 - Article
AN - SCOPUS:28844464697
SN - 1570-7873
VL - 3
SP - 53
EP - 73
JO - Journal of Grid Computing
JF - Journal of Grid Computing
IS - 1-2
ER -