Official Ncaa Baseball Statistics Summary

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Official Ncaa Baseball Statistics Summary OFFICIAL NCAA BASEBALL STATISTICS SUMMARY K\3 P'®*"® TYPE all data Indicate Injured players with asterisk (*) and, AIRMAIL every Saturday 1^3 itight during baseball season to NCAB, Box 757, Grand Central Station, N Y 10017 jp^ngt. Norbert Col, including Game of 5-20-6? Mexi Gf^me none Record 8-9 (Date) (Date) (Won Lost Tied) CUMULATIVE TOTALS FORIZ GAMES PLAYED TO DATE (number) ABBREVIATIONS CL—class in school BR L—bats right or left G—number of games played AB—times at bat R—runs H—hits 2B—two base hits 3B—three base hits HR—home runs TB—total bases SB—stolen bases RBI—runs batted m BB—bases on balls SO—strikeouts Avg — batting average R L—throws right or left SP—games played as pitcher SS—number of games started CG—number of complete qames W—games won L—games lost IP—innings pitched ER—earned runs HA—hits allowed SHO—shutouts ERA—earned run average per nine innings IN—innings played PO—putouts A-—assists E—errors TC—total chances DP—double plays Pct—fielding percentage TOP 4 BATTERS - REGULARS ONLY FULL NAME (Position) CL BR L G AB R H 2B 3B HR TB SB RBI BB so Avg / k 20 0 0 23' 0 1 \}/00 Perry, Dan rf. J L 15 50 5 9 3 17 56 8 20 2 0 0 22 6 8 k Larkin, Tim If. ,s Tl 7 .357 OSTATall, Rill f-,f. •T T, 16 58 1? ?0 ? 1 f) ?5 k k 7 9 .3^5 Palasz, Jim c. J R 17 50 11 lk 3 1 0 1,9 k 10 11 -7- .?R0 If your teams individual leader m any category represented by above columns (such as doubles triples home runs stolen bases or RBIs) was someone other than the four players named above please list these leaders below with number of games played and ABs (viz most doubles — John Doe ss 10 in 30 games 85 ABs) TOP 4 PITCHERS FULL NAME CL RL GP GS CG w L IP R ER HA BB so J^O ^^ J Wilmet, Steve SO L k 4 J 7 7 3 50Qi 311 8 20 3k v^ 0 ^ ^ Tormey, Tony SO R 8 6 k 3 3 k9,e 23 14 26 27 5k 2 2.5; Schlles, Jim so R 5 2 2 2 1 22.: 6 6 12 8 21 1 2.41 TEAM TOTALS (Fielding) TOTALS G AB IN R ER H 2B 3B MR TB SB BB SO Avg PO A E TC DP Pct OWN TOTALS 17 492 133 76 64 LQ9 )2k 4 1 16^ •17 62 100 .22] 30 k5: 6 .93^ OPPONENTS 17 458 133 5S 40 '64 10 2 5 94 8 86 178 .13S 33 k35 .927 Remarks NCAB form No 044 Signature of Reporting Official OFFICIAL SERVICE lUREAU OF THE NATIONAL COLLEGIATE ATHLETIC ASSOCIATION .
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