PDF-Cisco Finesse
Author : giovanna-bartolotta | Published Date : 2016-04-15
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Cisco Finesse: Transcript
LVFRLQHVVHVHUYLFHLVQRWDFWLYDWHGEGHIDXOWHYHQZKHQRXXSGDWHWKHDSSURSULDWHOLFHQVHVRQD8QLILHGGHSOR. All rights reserved Cisco and the Cisco logo are trademarks or registered trademarks of Cisco andor its affiliates in the US and other countries To view a list of Cisco trademarks go to this URL wwwciscocomgotrademarks Thirdparty trademarks mentione All rights reserved Cisco and the Cisco logo are trademarks or registered trademarks of Cisco andor its affiliates in the US and other countries To view a list of Cisco trademarks go to this URL wwwciscocomgotrademarks Thirdparty trademarks mentione 01 First Published HFHPEHU Last Modified HEUXDU Americas Headquarters Cisco Systems Inc 170 W est T asman Drive San Jose CA 951341706 USA httpwww ciscocom el 408 5264000 800 553NETS 6387 Fax 408 5270883 brPage 2br 7 63 7 Fleming NuINT 2004 Gran Sasso Laboratory brPage 2br Motivation for the FINeSSE scibath detector Low energy neutrino scattering physics below DIS Lots of physics to do at these low energies form factor measurements cross section measurements short ba (probability in bridge). “It’s better to be lucky than good.”. “Chance favors the prepared mind.”. “Dans les champs. de l'observation le hasard ne favorise que les esprits préparés.”. Aims. Bridge. 1) Introduction to Bridge. Probability. 2) Number of Bridge hands. 3) Odds against a Yarborough. 4) Prior probabilities: Suit-Splits and Finesse. 5) Combining probabilities: Suit-Splits and Finesse. 7 + ( 6 3 ( &