Monsters
GP: 82 | W: 31 | L: 46 | OTL: 5 | P: 67
GF: 161 | GA: 204 | PP%: 10.61% | PK%: 85.89%
GM : Yvon Poulin | Morale : 50 | Team Overall : N/A
Your browser screen resolution is too small for this page. Some information are hidden to keep the page readable.

Filter Tips
PriorityTypeDescription
1| or  OR Logical "or" (Vertical bar). Filter the column for content that matches text from either side of the bar
2 &&  or  AND Logical "and". Filter the column for content that matches text from either side of the operator.
3/\d/Add any regex to the query to use in the query ("mig" flags can be included /\w/mig)
4< <= >= >Find alphabetical or numerical values less than or greater than or equal to the filtered query
5! or !=Not operator, or not exactly match. Filter the column with content that do not match the query. Include an equal (=), single (') or double quote (") to exactly not match a filter.
6" or =To exactly match the search query, add a quote, apostrophe or equal sign to the beginning and/or end of the query
7 -  or  to Find a range of values. Make sure there is a space before and after the dash (or the word "to")
8?Wildcard for a single, non-space character.
8*Wildcard for zero or more non-space characters.
9~Perform a fuzzy search (matches sequential characters) by adding a tilde to the beginning of the query
10textAny text entered in the filter will match text found within the column
# Player Name C L R D CON CK FG DI SK ST EN DU PH FO PA SC DF PS EX LD PO MO OV TA SPAgeContractSalary
1Charles HudonXX100.00824499746659646433575854755959625000263650,000$
2Eric Cornel (R)XX100.00797296647279865670475866555151625000243925,000$
3Nicolas RoyX100.00794590687859826272647163254747694600231815,000$
4Kevin Stenlund (R)XX100.00674391658066817554617161254747694900233925,000$
5Nick Moutrey (R)X100.00818082658069744961464764454444565000252925,000$
6Pascal Laberge (R)X100.00706582646552515670466160584444595000223863,333$
7Rasmus Asplund (R)XXX100.00694292686457866155575685254646655000223925,000$
8Tyler Benson (R)X100.00737079717075786350665763544444645000223863,333$
9Paul Bittner (R)X100.00808079688066705150475164484444575000233863,333$
10Michael McCarronXX100.007888536588616259745062665949496150002511,075,833$
11Sonny MilanoXX100.006542868373646366257464592552536750002411,263,333$
12Connor Dewar (R)XX100.00706387656369735468535060484444575000213925,000$
13Brendan GuhleX100.00694289756971755725505474255858635000223946,083$
14Cale Fleury (R)X100.00904694777464735325394769254747595000213883,333$
15Gabriel CarlssonX100.00797589787569755025424165395252565000232894,166$
16Markus NutivaaraX100.0073439682716876622552495925626360500X02632,700,000$
17Slater KoekkoekX100.00804472767270596325554780255758625000261800,000$
18Ben HuttonX100.007143928176758463255348792567676445002731,725,002$
19Mike ReillyX100.0073438478737568732566476725606063500X02631,500,000$
Scratches
1Antoine Morand (R)X100.00716683676670755063494759454444554500213927,500$
2Ryan Collins (R)X100.00828184528155574825384264404444535000243925,000$
3Ville Heinola (R)X100.007666998066505050254739623744445350001931,137,500$
TEAM AVERAGE100.0075588671736671584453536639505061490
Filter Tips
PriorityTypeDescription
1| or  OR Logical "or" (Vertical bar). Filter the column for content that matches text from either side of the bar
2 &&  or  AND Logical "and". Filter the column for content that matches text from either side of the operator.
3/\d/Add any regex to the query to use in the query ("mig" flags can be included /\w/mig)
4< <= >= >Find alphabetical or numerical values less than or greater than or equal to the filtered query
5! or !=Not operator, or not exactly match. Filter the column with content that do not match the query. Include an equal (=), single (') or double quote (") to exactly not match a filter.
6" or =To exactly match the search query, add a quote, apostrophe or equal sign to the beginning and/or end of the query
7 -  or  to Find a range of values. Make sure there is a space before and after the dash (or the word "to")
8?Wildcard for a single, non-space character.
8*Wildcard for zero or more non-space characters.
9~Perform a fuzzy search (matches sequential characters) by adding a tilde to the beginning of the query
10textAny text entered in the filter will match text found within the column
# Goalie Name CON SK DU EN SZ AG RB SC HS RT PH PS EX LD PO MO OV TA SP
1Calvin Pickard100.0054587377535852585756305757564900
2Oscar Dansk100.0060688579586556646160304444615100
Scratches
1Jakub Skarek (R)100.0049526579474850544848304444505000
TEAM AVERAGE100.005459747853575359555530484856500
Coaches Name PH DF OF PD EX LD PO CNT Age Contract Salary
Rick Tocchet84927887817667CAN5731,500,000$


Filter Tips
PriorityTypeDescription
1| or  OR Logical "or" (Vertical bar). Filter the column for content that matches text from either side of the bar
2 &&  or  AND Logical "and". Filter the column for content that matches text from either side of the operator.
3/\d/Add any regex to the query to use in the query ("mig" flags can be included /\w/mig)
4< <= >= >Find alphabetical or numerical values less than or greater than or equal to the filtered query
5! or !=Not operator, or not exactly match. Filter the column with content that do not match the query. Include an equal (=), single (') or double quote (") to exactly not match a filter.
6" or =To exactly match the search query, add a quote, apostrophe or equal sign to the beginning and/or end of the query
7 -  or  to Find a range of values. Make sure there is a space before and after the dash (or the word "to")
8?Wildcard for a single, non-space character.
8*Wildcard for zero or more non-space characters.
9~Perform a fuzzy search (matches sequential characters) by adding a tilde to the beginning of the query
10textAny text entered in the filter will match text found within the column
# Player Name Team NamePOSGP G A P +/- PIM PIM5 HIT HTT SHT OSB OSM SHT% SB MP AMG PPG PPA PPP PPS PPM PKG PKA PKP PKS PKM GW GT FO% FOT GA TA EG HT P/20 PSG PSS FW FL FT S1 S2 S3
1Nicolas RoyMonsters (CLB)C812019391655117129107347118.69%16158919.6248122932420272596456.03%134400000.4939001812
2Rasmus AsplundMonsters (CLB)C/LW/RW82172138-16180381551213411514.05%15135516.534711453260000173050.14%71800000.5612000275
3Devon ToewsBlue JacketsD6433336-456078836120474.92%60154224.102810512930220294000.00%000000.4700000213
4Slater KoekkoekMonsters (CLB)D82112334-713801719380295613.75%68168520.569716703480110294000.00%000000.4000000113
5Ben HuttonMonsters (CLB)D6742933-728038778015575.00%41143521.4331316652890002284010.00%000000.4600000111
6Kevin StenlundMonsters (CLB)C/RW81191332-32004677143339513.29%10151818.7467135135011232004050.63%79200100.42611000342
7Mike ReillyMonsters (CLB)D8272431-28801379069255810.14%65179021.8471017643880220352000.00%000000.3500000025
8Sonny MilanoMonsters (CLB)LW/RW82141731-420033115115309712.17%7174721.3157123735221373563230.13%44800000.35311000121
9Tyler BensonMonsters (CLB)LW78121628-12601053110108328411.11%7124816.0102203500031832146.00%15000000.4501101301
10Brendan GuhleMonsters (CLB)D8261824-18480347343193613.95%36124015.133251977000061000.00%000000.3900000023
11Charles HudonMonsters (CLB)LW/RW8213720-13560934370196518.57%3151518.481451935300001392037.37%9900000.2613000112
12Drake CaggiulaBlue JacketsLW/RW438715-583151085550245816.00%489520.821341217211231850035.64%30300000.3414003120
13Paul BittnerMonsters (CLB)LW826814-129515114525563810.91%9114213.9300000000041048.08%5200000.2500102131
14Eric CornelMonsters (CLB)C/RW65551003610478450223910.00%894114.490005620000342054.61%53100000.2100002011
15Cale FleuryMonsters (CLB)D82099-9175517142229140.00%39122114.90000460000123000.00%000000.1500000000
16Mirco MuellerBlue JacketsD1216758061514247.14%1525321.171011050000141000.00%000000.5500000000
17Michael McCarronMonsters (CLB)C/RW30257-74757610259268.00%551017.011347137000000068.00%2500000.2701001110
18Pascal LabergeMonsters (CLB)C46426-922013222171819.05%13407.4000000000021152.26%26600000.3511000111
19Joel Eriksson EkBlue JacketsC/LW/RW8145020721132107.69%218322.950227380000380056.99%19300000.5400000010
20Gabriel CarlssonMonsters (CLB)D70044-326045177560.00%164636.62000416000076000.00%000000.1700000001
21Ville HeinolaMonsters (CLB)D50123-43553815881112.50%3288017.6210131200000121000.00%000000.0700010000
22Nick MoutreyMonsters (CLB)C81022-1421033266670.00%104245.240000390110520049.45%27500000.0900101000
23Markus NutivaaraMonsters (CLB)D11112-1205660616.67%123221.16112549000045100.00%000000.1700000011
24Antoine MorandMonsters (CLB)C631013007881412.50%01582.521015510000150064.15%5300000.1300000000
25Connor DewarMonsters (CLB)C/LW55011-34010189340.00%02224.040112260000510053.85%7800000.0900000000
26Pavel ZachaBlue JacketsC/LW3000-10011011050.00%06822.860004160001120054.41%6800000.0000000000
Team Total or Average1564156276432-132117480151914461302394103111.98%4702461015.7450851355183928691527324925949.92%539500100.3516433111263233
Filter Tips
PriorityTypeDescription
1| or  OR Logical "or" (Vertical bar). Filter the column for content that matches text from either side of the bar
2 &&  or  AND Logical "and". Filter the column for content that matches text from either side of the operator.
3/\d/Add any regex to the query to use in the query ("mig" flags can be included /\w/mig)
4< <= >= >Find alphabetical or numerical values less than or greater than or equal to the filtered query
5! or !=Not operator, or not exactly match. Filter the column with content that do not match the query. Include an equal (=), single (') or double quote (") to exactly not match a filter.
6" or =To exactly match the search query, add a quote, apostrophe or equal sign to the beginning and/or end of the query
7 -  or  to Find a range of values. Make sure there is a space before and after the dash (or the word "to")
8?Wildcard for a single, non-space character.
8*Wildcard for zero or more non-space characters.
9~Perform a fuzzy search (matches sequential characters) by adding a tilde to the beginning of the query
10textAny text entered in the filter will match text found within the column
# Goalie Name Team NameGP W L OTL PCT GAA MP PIM SO GA SA SAR A EG PS % PSA ST BG S1 S2 S3
1Oscar DanskMonsters (CLB)80294550.8682.4346154718714140500.65143800511
2Calvin PickardMonsters (CLB)132100.9011.9034800111110110.0000279000
Team Total or Average93314650.8702.3949644719815250610.651438279511


Filter Tips
PriorityTypeDescription
1| or  OR Logical "or" (Vertical bar). Filter the column for content that matches text from either side of the bar
2 &&  or  AND Logical "and". Filter the column for content that matches text from either side of the operator.
3/\d/Add any regex to the query to use in the query ("mig" flags can be included /\w/mig)
4< <= >= >Find alphabetical or numerical values less than or greater than or equal to the filtered query
5! or !=Not operator, or not exactly match. Filter the column with content that do not match the query. Include an equal (=), single (') or double quote (") to exactly not match a filter.
6" or =To exactly match the search query, add a quote, apostrophe or equal sign to the beginning and/or end of the query
7 -  or  to Find a range of values. Make sure there is a space before and after the dash (or the word "to")
8?Wildcard for a single, non-space character.
8*Wildcard for zero or more non-space characters.
9~Perform a fuzzy search (matches sequential characters) by adding a tilde to the beginning of the query
10textAny text entered in the filter will match text found within the column
Player Name Team NamePOS Age Birthday Rookie Weight Height No Trade Available For Trade Force Waivers Contract Type Current Salary Salary RemainingSalary AverageSalary Ave RemainingSalary Cap Salary Cap Remaining Exclude from Salary Cap Salary Year 2Salary Year 3Salary Year 4Salary Year 5Salary Year 6Salary Year 7Salary Year 8Salary Year 9Salary Year 10Link
Antoine MorandMonsters (CLB)C211999-02-18Yes185 Lbs5 ft10NoNoNo3Pro & Farm927,500$7,480$927,500$7,480$0$0$No927,500$927,500$
Ben HuttonMonsters (CLB)D271993-04-20No207 Lbs6 ft2NoNoNo3Pro & Farm1,725,002$13,911$1,500,000$12,097$0$0$No1,500,000$1,500,000$Link
Brendan GuhleMonsters (CLB)D221997-07-29No186 Lbs6 ft1NoNoNo3Pro & Farm946,083$7,630$888,833$7,168$0$0$No888,833$888,833$Link
Cale FleuryMonsters (CLB)D211998-11-19Yes203 Lbs6 ft1NoNoNo3Pro & Farm883,333$7,124$883,333$7,124$0$0$No883,333$883,333$
Calvin PickardMonsters (CLB)G281992-04-14No207 Lbs6 ft1NoNoNo1Pro & Farm1,000,000$8,065$1,000,000$8,065$0$0$NoLink
Charles HudonMonsters (CLB)LW/RW261994-06-23No188 Lbs5 ft10NoNoNo3Pro & Farm650,000$5,242$725,000$5,847$0$0$No650,000$650,000$Link
Connor DewarMonsters (CLB)C/LW211999-06-26Yes176 Lbs5 ft10NoNoNo3Pro & Farm925,000$7,460$925,000$7,460$0$0$No925,000$925,000$
Eric CornelMonsters (CLB)C/RW241996-04-11Yes194 Lbs6 ft2NoNoNo3Pro & Farm925,000$7,460$925,000$7,460$0$0$No925,000$925,000$
Gabriel CarlssonMonsters (CLB)D231997-01-02No192 Lbs6 ft5NoNoNo2Pro & Farm894,166$7,211$894,166$7,211$0$0$No894,166$Link
Jakub SkarekMonsters (CLB)G201999-11-10Yes196 Lbs6 ft3NoNoNo3Pro & Farm927,500$7,480$927,500$7,480$0$0$No927,500$927,500$
Kevin StenlundMonsters (CLB)C/RW231996-09-20Yes210 Lbs6 ft4NoNoNo3Pro & Farm925,000$7,460$925,000$7,460$0$0$No925,000$925,000$
Markus NutivaaraMonsters (CLB)D261994-06-06No191 Lbs6 ft1NoYesNo3Pro & Farm2,700,000$21,774$2,700,000$21,774$0$0$No2,700,000$2,700,000$Link
Michael McCarronMonsters (CLB)C/RW251995-03-06No231 Lbs6 ft6NoNoNo1Pro & Farm1,075,833$8,676$1,075,833$8,676$0$0$NoLink
Mike ReillyMonsters (CLB)D261993-07-12No195 Lbs6 ft2NoYesNo3Pro & Farm1,500,000$12,097$1,500,000$12,097$0$0$No1,500,000$1,500,000$Link
Nick MoutreyMonsters (CLB)C251995-06-23Yes218 Lbs6 ft3NoNoNo2Pro & Farm925,000$7,460$925,000$7,460$0$0$No925,000$
Nicolas RoyMonsters (CLB)C231997-02-05No208 Lbs6 ft4NoNoNo1Pro & Farm815,000$6,573$815,000$6,573$0$0$NoLink
Oscar DanskMonsters (CLB)G261994-02-28No195 Lbs6 ft3NoNoNo2Pro & Farm675,000$5,444$675,000$5,444$0$0$No675,000$Link
Pascal LabergeMonsters (CLB)C221998-04-08Yes173 Lbs6 ft1NoNoNo3Pro & Farm863,333$6,962$863,333$6,962$0$0$No863,333$863,333$
Paul BittnerMonsters (CLB)LW231996-11-03Yes214 Lbs6 ft4NoNoNo3Pro & Farm863,333$6,962$863,333$6,962$0$0$No863,333$863,333$
Rasmus AsplundMonsters (CLB)C/LW/RW221997-12-02Yes176 Lbs5 ft11NoNoNo3Pro & Farm925,000$7,460$925,000$7,460$0$0$No925,000$925,000$
Ryan CollinsMonsters (CLB)D241996-05-06Yes212 Lbs6 ft5NoNoNo3Pro & Farm925,000$7,460$925,000$7,460$0$0$No925,000$925,000$
Slater KoekkoekMonsters (CLB)D261994-02-18No193 Lbs6 ft2NoNoNo1Pro & Farm800,000$6,452$800,000$6,452$0$0$NoLink
Sonny MilanoMonsters (CLB)LW/RW241996-05-11No195 Lbs6 ft2NoNoNo1Pro & Farm1,263,333$10,188$1,263,333$10,188$0$0$NoLink
Tyler BensonMonsters (CLB)LW221998-03-15Yes192 Lbs6 ft0NoNoNo3Pro & Farm863,333$6,962$863,333$6,962$0$0$No863,333$863,333$
Ville HeinolaMonsters (CLB)D192001-03-02Yes181 Lbs5 ft11NoNoNo3Pro & Farm1,137,500$9,173$1,137,500$9,173$0$0$No1,137,500$1,137,500$
Total PlayersAverage AgeAverage WeightAverage HeightAverage ContractAverage Year 1 Salary
2523.56197 Lbs6 ft22.481,042,410$



5 vs 5 Forward
Line #Left WingCenterRight WingTime %PHYDFOF
1Sonny MilanoNicolas RoyKevin Stenlund35122
2Charles HudonRasmus AsplundMichael McCarron30122
3Tyler BensonEric CornelPaul Bittner25122
4Paul BittnerPascal LabergeSonny Milano10122
5 vs 5 Defense
Line #DefenseDefenseTime %PHYDFOF
1Mike ReillyBen Hutton35122
2Markus NutivaaraSlater Koekkoek30122
3Brendan GuhleCale Fleury25122
4Gabriel CarlssonMike Reilly10122
Power Play Forward
Line #Left WingCenterRight WingTime %PHYDFOF
1Sonny MilanoNicolas RoyKevin Stenlund60122
2Charles HudonRasmus AsplundMichael McCarron40122
Power Play Defense
Line #DefenseDefenseTime %PHYDFOF
1Mike ReillyBen Hutton60122
2Markus NutivaaraSlater Koekkoek40122
Penalty Kill 4 Players Forward
Line #CenterWingTime %PHYDFOF
1Sonny MilanoNicolas Roy60122
2Kevin StenlundCharles Hudon40122
Penalty Kill 4 Players Defense
Line #DefenseDefenseTime %PHYDFOF
1Mike ReillyBen Hutton60122
2Markus NutivaaraSlater Koekkoek40122
Penalty Kill 3 Players
Line #WingTime %PHYDFOFDefenseDefenseTime %PHYDFOF
1Sonny Milano60122Mike ReillyBen Hutton60122
2Nicolas Roy40122Markus NutivaaraSlater Koekkoek40122
4 vs 4 Forward
Line #CenterWingTime %PHYDFOF
1Sonny MilanoNicolas Roy60122
2Kevin StenlundCharles Hudon40122
4 vs 4 Defense
Line #DefenseDefenseTime %PHYDFOF
1Mike ReillyBen Hutton60122
2Markus NutivaaraSlater Koekkoek40122
Last Minutes Offensive
Left WingCenterRight WingDefenseDefense
Sonny MilanoNicolas RoyKevin StenlundMike ReillyBen Hutton
Last Minutes Defensive
Left WingCenterRight WingDefenseDefense
Sonny MilanoNicolas RoyKevin StenlundMike ReillyBen Hutton
Extra Forwards
Normal PowerPlayPenalty Kill
Nick Moutrey, Connor Dewar, Tyler BensonNick Moutrey, Connor DewarTyler Benson
Extra Defensemen
Normal PowerPlayPenalty Kill
Brendan Guhle, Cale Fleury, Gabriel CarlssonBrendan GuhleCale Fleury, Gabriel Carlsson
Penalty Shots
Sonny Milano, Nicolas Roy, Kevin Stenlund, Charles Hudon, Rasmus Asplund
Goalie
#1 : Oscar Dansk, #2 : Calvin Pickard


Filter Tips
PriorityTypeDescription
1| or  OR Logical "or" (Vertical bar). Filter the column for content that matches text from either side of the bar
2 &&  or  AND Logical "and". Filter the column for content that matches text from either side of the operator.
3/\d/Add any regex to the query to use in the query ("mig" flags can be included /\w/mig)
4< <= >= >Find alphabetical or numerical values less than or greater than or equal to the filtered query
5! or !=Not operator, or not exactly match. Filter the column with content that do not match the query. Include an equal (=), single (') or double quote (") to exactly not match a filter.
6" or =To exactly match the search query, add a quote, apostrophe or equal sign to the beginning and/or end of the query
7 -  or  to Find a range of values. Make sure there is a space before and after the dash (or the word "to")
8?Wildcard for a single, non-space character.
8*Wildcard for zero or more non-space characters.
9~Perform a fuzzy search (matches sequential characters) by adding a tilde to the beginning of the query
10textAny text entered in the filter will match text found within the column
OverallHomeVisitor
# VS Team GP W L T OTW OTL SOW SOL GF GA Diff GP W L T OTW OTL SOW SOL GF GA Diff GP W L T OTW OTL SOW SOL GF GA Diff P PCT G A TP SO EG GP1 GP2 GP3 GP4 SHF SH1 SP2 SP3 SP4 SHA SHB Pim Hit PPA PPG PP% PKA PK GA PK% PK GF W OF FO T OF FO OF FO% W DF FO T DF FO DF FO% W NT FO T NT FO NT FO% PZ DF PZ OF PZ NT PC DF PC OF PC NT
1Admirals22000000514110000002111100000030341.000591401625241164042742143555181122281417.14%100100.00%01092211551.63%1038219547.29%591113851.93%2018137619416061015522
2Bruins51400000410-62110000045-13030000005-520.200481200625241167042742143555892868872900.00%32487.50%01092211551.63%1038219547.29%591113851.93%2018137619416061015522
3Condors2010001035-2100000102111010000014-320.500336006252411634427421435554182943800.00%12375.00%01092211551.63%1038219547.29%591113851.93%2018137619416061015522
4Crunch31200000660211000002111010000045-120.3336111701625241164942742143555671466482428.33%20385.00%11092211551.63%1038219547.29%591113851.93%2018137619416061015522
5Flames3030000039-61010000023-12020000016-500.00036900625241165242742143555391538452000.00%15380.00%01092211551.63%1038219547.29%591113851.93%2018137619416061015522
6Griffins32100000862110000004222110000044040.66781422016252411640427421435555416386420315.00%18288.89%11092211551.63%1038219547.29%591113851.93%2018137619416061015522
7IceHogs2110000024-2110000001011010000014-320.500235016252411633427421435553111223712216.67%110100.00%01092211551.63%1038219547.29%591113851.93%2018137619416061015522
8Marlies3120000078-1211000005501010000023-120.3337132000625241165542742143555481752642428.33%19478.95%01092211551.63%1038219547.29%591113851.93%2018137619416061015522
9Monarchs2020000016-51010000012-11010000004-400.00012300625241163242742143555361028411100.00%14192.86%01092211551.63%1038219547.29%591113851.93%2018137619416061015522
10Moose2000000235-21000000123-11000000112-120.50035800625241163142742143555421239361119.09%90100.00%01092211551.63%1038219547.29%591113851.93%2018137619416061015522
11Penguins824000111123-1240200011612-642200000511-670.438111728016252411612342742143555149461211494924.08%49589.80%01092211551.63%1038219547.29%591113851.93%2018137619416061015522
12Phantoms1338000203038-87330001018162605000101222-10100.38530467612625241162164274214355527160202235841214.29%821482.93%21092211551.63%1038219547.29%591113851.93%2018137619416061015522
13Rampage220000001028110000005141100000051441.00010162600625241165242742143555411082011327.27%3166.67%01092211551.63%1038219547.29%591113851.93%2018137619416061015522
14Rocket3100000256-1110000002112000000235-240.6675914006252411648427421435555213385319315.79%19384.21%01092211551.63%1038219547.29%591113851.93%2018137619416061015522
15Senators31200000752211000007341010000002-220.33371320006252411645427421435555421385616425.00%19384.21%01092211551.63%1038219547.29%591113851.93%2018137619416061015522
16Sharks21100000220110000002111010000001-120.5002460062524116294274214355529722341317.69%90100.00%01092211551.63%1038219547.29%591113851.93%2018137619416061015522
17Soldiers2110000023-1110000002111010000002-220.50024600625241163542742143555205283511218.18%14192.86%01092211551.63%1038219547.29%591113851.93%2018137619416061015522
18Sound Tigers834000102530-5421000101615141300000915-680.500254469006252411612542742143555188451021653339.09%491079.59%11092211551.63%1038219547.29%591113851.93%2018137619416061015522
19Stars422000001091211000006512110000044040.500101828006252411652427421435558225599220315.00%23291.30%11092211551.63%1038219547.29%591113851.93%2018137619416061015522
20Wolf Pack817000001423-94130000079-240400000714-720.1251425390062524116114427421435551445410511728517.86%46882.61%01092211551.63%1038219547.29%591113851.93%2018137619416061015522
21Wolves20100010330100000103211010000001-120.5003470062524116204274214355531112034500.00%9188.89%01092211551.63%1038219547.29%591113851.93%2018137619416061015522
Total82254600065161204-4341181600052998910417300001362115-53670.40916127443517625241161295427421435551526439114514834624910.61%4826885.89%61092211551.63%1038219547.29%591113851.93%2018137619416061015522
_Since Last GM Reset82254600065161204-4341181600052998910417300001362115-53670.40916127443517625241161295427421435551526439114514834624910.61%4826885.89%61092211551.63%1038219547.29%591113851.93%2018137619416061015522
_Vs Conference4911320003387128-4125913000215355-224219000123473-39310.316871482351462524116772427421435559132687288542933010.24%3014784.39%31092211551.63%1038219547.29%591113851.93%2018137619416061015522
_Vs Division376220003180114-341949000214752-518213000103362-29190.257801322121362524116578427421435557522055306661942211.34%2263783.63%31092211551.63%1038219547.29%591113851.93%2018137619416061015522

Total For Players
Games PlayedPointsStreakGoalsAssistsPointsShots ForShots AgainstShots BlockedPenalty MinutesHitsEmpty Net GoalsShutouts
8267L1161274435129515264391145148317
All Games
GPWLOTWOTL SOWSOLGFGA
8225460065161204
Home Games
GPWLOTWOTL SOWSOLGFGA
41181600529989
Visitor Games
GPWLOTWOTL SOWSOLGFGA
41730001362115
Last 10 Games
WLOTWOTL SOWSOL
350002
Power Play AttempsPower Play GoalsPower Play %Penalty Kill AttempsPenalty Kill Goals AgainstPenalty Kill %Penalty Kill Goals For
4624910.61%4826885.89%6
Shots 1 PeriodShots 2 PeriodShots 3 PeriodShots 4+ PeriodGoals 1 PeriodGoals 2 PeriodGoals 3 PeriodGoals 4+ Period
4274214355562524116
Face Offs
Won Offensive ZoneTotal OffensiveWon Offensive %Won Defensif ZoneTotal DefensiveWon Defensive %Won Neutral ZoneTotal NeutralWon Neutral %
1092211551.63%1038219547.29%591113851.93%
Puck Time
In Offensive ZoneControl In Offensive ZoneIn Defensive ZoneControl In Defensive ZoneIn Neutral ZoneControl In Neutral Zone
2018137619416061015522


Last Played Games
Filter Tips
PriorityTypeDescription
1| or  OR Logical "or" (Vertical bar). Filter the column for content that matches text from either side of the bar
2 &&  or  AND Logical "and". Filter the column for content that matches text from either side of the operator.
3/\d/Add any regex to the query to use in the query ("mig" flags can be included /\w/mig)
4< <= >= >Find alphabetical or numerical values less than or greater than or equal to the filtered query
5! or !=Not operator, or not exactly match. Filter the column with content that do not match the query. Include an equal (=), single (') or double quote (") to exactly not match a filter.
6" or =To exactly match the search query, add a quote, apostrophe or equal sign to the beginning and/or end of the query
7 -  or  to Find a range of values. Make sure there is a space before and after the dash (or the word "to")
8?Wildcard for a single, non-space character.
8*Wildcard for zero or more non-space characters.
9~Perform a fuzzy search (matches sequential characters) by adding a tilde to the beginning of the query
10textAny text entered in the filter will match text found within the column
DayGame Visitor Team Score Home Team Score ST OT SO RI Link
1 - 2020-09-2710Marlies1Monsters2WBoxScore
2 - 2020-09-2813Monsters1Phantoms3LBoxScore
4 - 2020-09-3030Phantoms3Monsters1LBoxScore
5 - 2020-10-0137Monsters4Phantoms3WXXBoxScore
6 - 2020-10-0247Phantoms0Monsters1WBoxScore
9 - 2020-10-0563Monsters0Bruins3LBoxScore
10 - 2020-10-0673Monsters1Penguins0WBoxScore
12 - 2020-10-0882Phantoms3Monsters4WXXBoxScore
14 - 2020-10-1091Monsters3Wolf Pack5LBoxScore
16 - 2020-10-12104Phantoms2Monsters4WBoxScore
18 - 2020-10-14116Monsters4Sound Tigers1WBoxScore
20 - 2020-10-16124Penguins3Monsters0LBoxScore
22 - 2020-10-18137Monsters4Phantoms6LBoxScore
23 - 2020-10-19146Sound Tigers4Monsters5WBoxScore
24 - 2020-10-20159Stars4Monsters3LBoxScore
26 - 2020-10-22178Phantoms0Monsters3WBoxScore
27 - 2020-10-23182Monsters0Flames3LBoxScore
28 - 2020-10-24190Monsters1Phantoms3LBoxScore
30 - 2020-10-26202Sound Tigers2Monsters3WXXBoxScore
32 - 2020-10-28216Phantoms4Monsters2LBoxScore
34 - 2020-10-30222Monsters3Admirals0WBoxScore
37 - 2020-11-02238Monsters0Penguins2LBoxScore
38 - 2020-11-03248Monsters1Penguins7LBoxScore
40 - 2020-11-05258Senators1Monsters6WBoxScore
43 - 2020-11-08274Bruins1Monsters2WBoxScore
45 - 2020-11-10290Sound Tigers4Monsters7WBoxScore
46 - 2020-11-11295Monsters1Wolf Pack2LBoxScore
48 - 2020-11-13309Monsters1Wolf Pack2LBoxScore
49 - 2020-11-14317Crunch0Monsters2WBoxScore
50 - 2020-11-15329Monsters0Bruins1LBoxScore
51 - 2020-11-16336Monsters3Penguins2WBoxScore
52 - 2020-11-17347Wolf Pack1Monsters2WBoxScore
54 - 2020-11-19362Wolf Pack3Monsters2LBoxScore
55 - 2020-11-20376Crunch1Monsters0LBoxScore
56 - 2020-11-21383Monsters4Crunch5LBoxScore
57 - 2020-11-22391Monsters1Griffins4LBoxScore
58 - 2020-11-23403Sharks1Monsters2WBoxScore
59 - 2020-11-24409Monsters1Stars2LBoxScore
61 - 2020-11-26426Penguins3Monsters0LBoxScore
63 - 2020-11-28436Monsters3Sound Tigers5LBoxScore
64 - 2020-11-29449Phantoms4Monsters3LBoxScore
66 - 2020-12-01464Moose3Monsters2LXXBoxScore
67 - 2020-12-02473Monsters3Stars2WBoxScore
68 - 2020-12-03485Stars1Monsters3WBoxScore
71 - 2020-12-06500Monsters1Condors4LBoxScore
72 - 2020-12-07510Condors1Monsters2WXXBoxScore
73 - 2020-12-08519Monsters1Sound Tigers4LBoxScore
74 - 2020-12-09530Monarchs2Monsters1LBoxScore
77 - 2020-12-12549Monsters0Bruins1LBoxScore
78 - 2020-12-13555Flames3Monsters2LBoxScore
79 - 2020-12-14567Monsters1Moose2LXXBoxScore
80 - 2020-12-15576Senators2Monsters1LBoxScore
82 - 2020-12-17589Monsters0Senators2LBoxScore
84 - 2020-12-19598Marlies4Monsters3LBoxScore
86 - 2020-12-21613Monsters1Sound Tigers5LBoxScore
87 - 2020-12-22622Griffins2Monsters4WBoxScore
88 - 2020-12-23634Monsters1Flames3LBoxScore
90 - 2020-12-25644Admirals1Monsters2WBoxScore
92 - 2020-12-27659Monsters0Sharks1LBoxScore
93 - 2020-12-28665Rocket1Monsters2WBoxScore
95 - 2020-12-30681Monsters5Rampage1WBoxScore
96 - 2020-12-31690Bruins4Monsters2LBoxScore
97 - 2021-01-01705Wolf Pack2Monsters1LBoxScore
98 - 2021-01-02712Monsters2Wolf Pack5LBoxScore
100 - 2021-01-04728Sound Tigers5Monsters1LBoxScore
101 - 2021-01-05741Monsters2Marlies3LBoxScore
102 - 2021-01-06747Penguins3Monsters4WXXBoxScore
104 - 2021-01-08758Monsters1IceHogs4LBoxScore
105 - 2021-01-09772Rampage1Monsters5WBoxScore
Trade Deadline --- Trades can’t be done after this day is simulated!
106 - 2021-01-10780Monsters0Monarchs4LBoxScore
108 - 2021-01-12793Penguins3Monsters2LXXBoxScore
110 - 2021-01-14813Wolves2Monsters3WXXBoxScore
111 - 2021-01-15818Monsters0Soldiers2LBoxScore
113 - 2021-01-17837IceHogs0Monsters1WBoxScore
114 - 2021-01-18840Monsters2Rocket3LXXBoxScore
116 - 2021-01-20858Soldiers1Monsters2WBoxScore
117 - 2021-01-21860Monsters1Phantoms3LBoxScore
118 - 2021-01-22874Monsters3Griffins0WBoxScore
119 - 2021-01-23882Wolf Pack3Monsters2LBoxScore
120 - 2021-01-24883Monsters1Phantoms4LBoxScore
121 - 2021-01-25888Monsters1Rocket2LXXBoxScore
122 - 2021-01-26901Monsters0Wolves1LBoxScore



Arena Capacity - Ticket Price Attendance - %
Level 1Level 2
Capacity20001000
Ticket Price3515
Attendance00
Attendance PCT0.00%0.00%

Income
Home Games LeftAverage Attendance - %Average Income per GameYear to Date RevenueCapacityTeam Popularity
0 0 - 0.00% 0$0$3000100

Expenses
Year To Date ExpensesPlayers Total SalariesPlayers Total Average SalariesCoaches Salaries
4,105,755$ 2,606,023$ 2,585,298$ 0$
Salary Cap Per DaysSalary Cap To DatePlayers In Salary CapPlayers Out of Salary Cap
0$ 2,617,828$ 0 0

Estimate
Estimated Season RevenueRemaining Season DaysExpenses Per DaysEstimated Season Expenses
0$ 1 33,113$ 33,113$




OverallHomeVisitor
Year GP W L T OTW OTL SOW SOL GF GA Diff GP W L T OTW OTL SOW SOL GF GA Diff GP W L T OTW OTL SOW SOL GF GA Diff P G A TP SO EG GP1 GP2 GP3 GP4 SHF SH1 SP2 SP3 SP4 SHA SHB Pim Hit PPA PPG PP% PKA PK GA PK% PK GF W OF FO T OF FO OF FO% W DF FO T DF FO DF FO% W NT FO T NT FO NT FO% PZ DF PZ OF PZ NT PC DF PC OF PC NT