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1 T-B1 01 Cavendish Monaco(egment Q1_) T-B1 01 Cavendish Monaco(egment Q1_) Team 1 vs Team Team 1 Team Team Team 1 ITI DI BLLO orth ast ZIA DAVOA outh est Board Contract By M D - - Contract By M D - - IMPs x xx PA PA x 00 1x x x x IMPs Team 1 Team This segment Penalty 0 0 Carryover 0 0 total References: BridgeBase online. dited by M.ugino

2 T-B1 01 Cavendish Monaco(egment Q1_) Board 1 : Team 1-0 : Team o 0 c 00 1 Q 00 A J K Q J K A J K Q J A Q AK p p 1 p 1 p 1 p 1 p #1 :: K,A,, # ::,,T,Q # ::,T,J, # :: A,,, # :: K,,, J # :: Q,,, # ::,,, # :: J,,, 1 Board : Team 1-0 : Team - o -1 0 c 1 Q J Q AK A J A A J Q KQ K K J 1 p 1 p p p p p p p p p #1 ::,,T,K # ::,,J, # :: A,,, # ::,,J,K # :: K,, T, Aurora: Hello all :) Here Rankings / cores / Deals: cavendish/01/teams/menu.html..p..p..1..p p..1!..p..1..p....p..p..p.. K.. A T.. Q.... T.. J.... A K J.. Q J..p..1.. Aurora: Hello all :) Here Rankings / cores / Deals: cavendish/01/teams/menu.html Aurora: Live video: channel/uc0nwklhye0dfuqpswlw_xq....p....p....p....p

3 T-B1 01 Cavendish Monaco(egment Q1_) Board : Team 1-0 : Team 1 1 o -1 0 c 0 K Q A J A A AK Q K Q Q J J J K p p p p p p #1 ::,,A, # ::,A,, # ::,,K, # ::,, A, # :: A,J,, # ::,, Q,K # ::,K,, # ::,,, Board : Team 1-0 : Team 1 o x c 0-00 AQ Q K J A K K AKQ J - Q J A J p p X #1 :: T,,K, # ::,Q,, vugrapho1: It is 1 down on previous board..p....p....p..p..p T.. K J.... A J.. K.. K.... T......p....p....p....p..p..p A A K A.... A.. J Q.. K.... K majors vugrapho1: Live results in a few moment..p..p....p..p..p.. T.... K Q.. - -

4 T-B1 01 Cavendish Monaco(egment Q1_) Board : Team 1-0 : Team 1 o 1 c xx 0 J A A K A J Q J Q K J KQ A KQ p p 1 p 1 p p p #1 ::,,Q, # ::,K,, # :: J,A,,T # :: A,,, # ::,J, T, Q Board : Team 1-0 : Team o 00 c Q A AQ J K J K J J AQ A KQ K p p #1 ::,,, T # ::,J,Q,K # :: J,,,A # ::,,, # :: T,,, # ::,K,, T # ::,,,K # :: Q,,, queequeg: Results: /..p..p..1..p p..p...p....p..p..p Q K J.. A.... T.. A J.. T.. Q p...p...p..p..p T.... J - -

5 T-B1 01 Cavendish Monaco(egment Q1_) Board : Team 1 : Team - o -1 0 c 0 0 J J A J AKQ AQ Q AK KQ - K J 1 p p p p p p p p p p Board : Team 1 1 : Team - o -1 0 c 0-0 A Q Q K A J A J K J K - KQ J AQ p p p p p #1 ::,,A, # :: J,,, # ::,, T, # ::,,T,J # :: A,,, # ::,T,K, #1 ::,A,, # ::,,K, # :: A,J,, # ::,,A, # ::,,, # ::,,Q, # :: Q,,, T # ::,J,K, # ::,,K,A Aurora: Results: /cavendish/01/pairs/menu.html.. Q.. K.. J A T K.... T K.. Q p....p.. vugrapho1: is a feature, is splinter..p....p....p...p....p....p vugrapho1: I asked Multon, is A or K, is splinter..p..p.... A K.... A.. J A Q.... Q T.... J.. K K.. A - -

6 T-B1 01 Cavendish Monaco(egment Q1_) Board : Team 1 1 : Team - o PA c 0 0 J K Q J J J A Q AK Q K A Q A K p Board : Team 1 1 : Team - o PA c 0 Q J Q A A J J Q AK - K K AKQ J p p p p vugrapho1: Castner is not at the table yet...p..p....p..p..p A.... J T T.. J.. A T.. K.. vugrapho1: eems he thaught the session ended the previous turn ady: hi all vugrapho1: Ok, it seems we wont play this round vugrapho1: ext session in minutes..p..p..p..p..p..p..p..p vugrapho1: players updated alddk: /cavendish/01/pairs/menu.html - -

7 T-B1 01 Cavendish Monaco(egment Q1_) Board : Team 1 - : Team o x - 00 c 1x K A K K J Q J Q K A AQ A J Q J - - X p p X p p p #1 ::,,A, # :: T,J,K, # ::,,Q, # :: J,A,, # ::,, K,A # ::,, K, # :: A,,,K ady: hi all.... ady: I think T would probably make p..p....p..p..p A.... T.. J.. K Q.... J.. A K.. A K.... A.. Board 1 : Team 1 - : Team o 1 c Q J AK A K Q K A K J Q J J AQ - p p 1 p p X p p p p #1 :: Q,A,, # ::,T,K, # ::,,, # ::,T,,J # :: J,,K, # ::,,A, ady: but this a bad score for n/s.... K ady: light opening from east..p..p..1..p..!..drury..p......p ady: still make good duck by west....p..p..p.. Q.. A T.. K T.. ady: north maybe playimng east for sing. diamond ace or kimng ady: makimng 1.. J.. J.... K.... ady: making.... A.. ady: anyone know why hands and were passed out? vugrapho1: Castner forgot there was boards to play! alddk: /auction/ vugrapho1: they scored 0+%, 0% - -

8 T-B1 01 Cavendish Monaco(egment Q1_) Board 1 : Team 1 : Team o 0 c 1 0 J Q J KQ K AK AK J J A Q A Q 1 X 1 1 p p p p p p p ady: same tricks #1 ::,,J,K # :: A,,, # :: K,Q,,J # :: T, T,, # ::,,, # ::,,, Q # ::,,, # ::,A,, # :: A,,,Q # :: T, J,, ady: n/s can make T even tricks is risking heart finesse dicy contract frelys on club split p....p ady: relies ady: have got there....p....p...p..p..p.. ady: look to see if club honour drops.... J.. K.. A.... ady: no need K.. Q.... J ady: later will gauge whether to take heart finesse.. T.. T alddk: /cavendish/01/pairs/menu.html ady: diamons was safer Q A A Q.. T.. J

9 T-B1 01 Cavendish Monaco(egment Q1_) Board 1 : Team 1 : Team o -1 0 c 1 Q J K K A AK A J A J Q J KQ Q X p p #1 ::,,T,K # :: A,,, # ::,J,, # ::,,Q, # :: J,A,, # ::,,T, # :: K,,, Q # ::,Q,A, # :: J,K,, # :: T,,, # ::,,, #1 :: A,,,Q #1 :: J,,T,K ady: only Q gives declarer a chance..!.. + A MIOR....p....p...p..p..p.. Board 1 : Team 1 : Team - o c A Q J J K J AQ Q AK K J - - AKQ p 1 #1 :: K,,, # :: T,Q,, # :: Q,A,T, # ::,,, # ::,,, J # ::,J, Q, A # :: A,,, # :: T,,J, ady: cluns too high.... T.. K.. A J Q.... J.. A T.... K Q.... Q.. A.... J.. K T A Q.. J.... T.. K..1..p p ady: clubs ady: spades was too high..p..p ady: trump lead best but K normal.. K ady: Heart switch but I think this will make.. ady: can win A ruff a diamond rounds of trumps nd with J and ruff a diamond T.. Q Q ady: depends how he feels not playing that way.. A.. T J ady: can still do that.... J.. Q.. A ady: different order.. A T

10 T-B1 01 Cavendish Monaco(egment Q1_) J.. Board 1 : Team 1 - : Team - o c A J Q J A K K KQ AQ Q AK J J #1 ::,J,, # ::,K,, # :: T,K,A, # :: Q,,, # ::,,, # ::,,, # :: K,,,A # :: Q,,,A # ::, J, Q, ady: not a good spot this..1..p..p..p.... J K T.. K.. A.. ady: butnormal opening.. Q ady: anythin but heart ady: K best.. K A.. Q.. ady: but still defence ok.... A.... J.. Q.. ady: sorry only 1 down could haved been with K sswitch ady: or low diamond ady: 1 down a fair result ady: for e/w - -

11 T-B1 01 Cavendish Monaco(egment Q1_) Board 1 : Team 1 - : Team 1 1 o 0 c x A AK KQ KQ J Q J J Q A - J K A p p p p p p #1 :: A,,, # ::,A,K, # :: A,,, # :: K,,, # ::,J,A, # ::,,K, # :: Q,,, ady: east will likely open..p ady: will probably get to hearts down with A wrong unless gudessing Q....p....p....p ady: guessing..p ady: or A lead..p ady: and thats the lead.. A ady: poor result for n/s Board 1 : Team 1 - : Team - 1 o -1 0 c 1 1 J KQ Q KQ KQ A A J A J A J K 1 1 p p p #1 :: K,,, # ::,,A, # ::,T,Q, # ::,,K,A # ::,,K,A # ::,J,, # ::,,K, # :: Q,,, # :: Q,,, # ::,,, ady: n/s should win the part score battle playing spades make tricks.. A.. K.... A K J.. A K.... Q p alddk: /cavendish/01/pairs/menu.html ady: too high....p....p....p..p..p vugrapho1: should... vugrapho1: they both apologized.. K ady: A instead of KQ then would need a trump lead to beat spades A T.. Q K.. A K.. A.. alddk: /cavendish/01/pairs/menu.html.. J K.... Q Q

12 T-B1 01 Cavendish Monaco(egment Q1_).... Board 1 : Team 1 - : Team o c J A J Q Q Q J AKQ J K AK A K #1 ::,,T,A # ::,,Q,A # ::,,Q, # ::,,, K # ::,,A,T ady: missed it here....p..p..p ady: especially with J played T.. A ady: Zia has maximum Q.. A - 1 -

13 T-B1 01 Cavendish Monaco(egment Q1_) Board 0 : Team 1 - : Team 1 o x - 0 c 0 Q Q A J K J K J K AQ A A K J Q p p p p p p X #1 :: J,,A, # ::,,K, # ::,Q,, # ::,,Q,K # ::,,T, # :: A,,, ady: only took tricks Q K A.. T vugrapho1: expensive.....p....p...p....p....p..p....p..p..p ady: east tried to swindle n/s but has rebounded ady: will be 10 or 0.. J ady: club tricks A K Q ady: game all east should keep quiet imo too much chance pf 00 or more Q.. K T.... A ady: thx operator thx specks

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