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1.The Place Catalog t iffany Necklaces  stores which one of the following types of information?

A: QuickPlace servers and places
B: QuickPlace version, administrators, and readers
C: List of who accessed each place in the last ten days
D: QuickPlace authentication information, owners, and place size
Correct Answers:  A

2.Susan, the QuickPlace 190-534 1T6-530  administrator, has configured Search Places so that users will be able to search across all QuickPlaces they are members of on the server. However, users are only getting results from the QuickPlace they are in at the time of the search. Which one of the following is most likely limiting the users?search?

A: The users are typing an incorrect password.
B: The users are not authenticating to a single external directory.
C: The server notes.ini entry for Allow_Multi_QuickPlace_Search=1 has not been entered.
D: The field Allow Searches in the server document for the QuickPlace server is not set to Enabled.
Correct Answers:  B

3.QuickPlace 3 utilizes the  920-115 QPTool for many administrative tasks. From which one of the following can the QPTool can be accessed?

A: From a Web browser
B: From a Notes client
C: From the Domino server console
D: From the QuickPlace administration panel
Correct Answers:  C

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