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The fennec system
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Proceedings of the 1994 ACM symposium on Applied computing table of contents
Phoenix, Arizona, United States
Pages: 126 - 130  
Year of Publication: 1994
ISBN:0-89791-647-6
Author
Beldjehem Mokhtar  Université Aix-Marseille II
Sponsors
SIGAPL: ACM Special Interest Group on APL Programming Language
SIGCUE: ACM Special Interest Group on Computer Uses In Education
SIGICE: ACM Special Interest Group on Individual Computing Environment
SIGAPP: ACM Special Interest Group on Applied Computing
SIGBIO: ACM Special Interest Group on Biomedical Computing
Publisher
ACM  New York, NY, USA
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REFERENCES

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