From e948810328e14caa5914124a0e4f7331dca05175 Mon Sep 17 00:00:00 2001 From: Giorgio Giao Date: Fri, 15 Jul 2022 21:40:36 +0100 Subject: [PATCH] Lab Completed --- your-code/1.-Data-Cleaning.ipynb | 1011 ++++++- your-code/2.-Exploratory-Data-Analysis.ipynb | 2577 +++++++++++++++++- your-code/3.-Inferential-Analysis.ipynb | 417 ++- {data => your-code}/wnba.csv | 0 your-code/wnba_cleaned.csv | 143 + 5 files changed, 4066 insertions(+), 82 deletions(-) rename {data => your-code}/wnba.csv (100%) create mode 100644 your-code/wnba_cleaned.csv diff --git a/your-code/1.-Data-Cleaning.ipynb b/your-code/1.-Data-Cleaning.ipynb index 60a0517..56c9290 100644 --- a/your-code/1.-Data-Cleaning.ipynb +++ b/your-code/1.-Data-Cleaning.ipynb @@ -28,7 +28,7 @@ }, { "cell_type": "code", - "execution_count": 2, + "execution_count": 1, "metadata": {}, "outputs": [], "source": [ @@ -49,9 +49,281 @@ "cell_type": "code", "execution_count": 3, "metadata": {}, - "outputs": [], + "outputs": [ + { + "data": { + "text/html": [ + "
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2Alex BentleyCONG17069.023.875433USOctober 27, 199026Penn State4266178221837.6196429.7354283.343640782232421800
3Alex MontgomerySANG/F18584.024.543462USDecember 11, 198828Georgia Tech6317217519538.5216830.9172181.0351341696520103818820
4Alexis JonesMING17578.025.469388USAugust 5, 199423BaylorR24137165032.072035.0111291.739121270145000
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std8.69812810.9961102.0736913.6671807.075477289.37339355.980754117.1658099.85519917.37282946.15530218.45907536.74305344.24469718.53615121.51964849.66985468.20058541.49079013.41331212.53766921.447141153.0325592.9090020.083918
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Unnamed: 0NameTeamPosHeightWeightBMIBirth_PlaceBirthdateAgeCollegeExperienceGames PlayedMINFGMFGAFG%3PM3PA3P%FTMFTAFT%OREBDREBREBASTSTLBLKTOPTSDD2TD3
00Aerial PowersDALF1837121.200991USJanuary 17, 199423Michigan State28173308535.3123237.5212680.8622281236129300
11Alana BeardLAG/F1857321.329438USMay 14, 198235Duke12309479017750.851827.8324178.019821017263134021700
22Alex BentleyCONG1706923.875433USOctober 27, 199026Penn State4266178221837.6196429.7354283.343640782232421800
33Alex MontgomerySANG/F1858424.543462USDecember 11, 198828Georgia Tech6317217519538.5216830.9172181.0351341696520103818820
44Alexis JonesMING1757825.469388USAugust 5, 199423BaylorR24137165032.072035.0111291.739121270145000
......................................................................................................
137138Tiffany HayesATLG1787022.093170USSeptember 20, 198927Connecticut62986114433143.54311238.413616184.52889117693785046700
138139Tiffany JacksonLAF1918423.025685USApril 26, 198532Texas922127122548.0010.04666.75182331382800
139140Tiffany MitchellINDG1756922.530612USSeptember 23, 198432South Carolina2276718323834.9176924.69410292.2167086393154027700
140141Tina CharlesNYF/C1938422.550941USMay 12, 198829Connecticut82995222750944.6185632.111013581.55621226875212271582110
141142Yvonne TurnerPHOG1755919.265306USOctober 13, 198729Nebraska2303565914042.1114723.4222878.6111324301813215100
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Unnamed: 0NameTeamPosHeightWeightBMIBirth_PlaceBirthdateAgeCollegeExperienceGames PlayedMINFGMFGAFG%3PM3PA3P%FTMFTAFT%OREBDREBREBASTSTLBLKTOPTSDD2TD3
2525Brittney GrinerPHOC2069321.915355USOctober 18, 199026Baylor52268216729357.0000.012715482.5431291723913545246160
5757Imani BoyetteATLC2018821.781639USNovember 10, 199224Texas1294105611947.11333.3142070.04375118149232212710
6464Jennifer HamsonINDC2019523.514269USJanuary 23, 199225Brigham Young1105021216.7030.081080.0561162231200
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11Alana BeardLAG/F1857321.329438USMay 14, 198235Duke12309479017750.851827.8324178.019821017263134021700
2727Camille LittlePHOF1888223.200543USJanuary 18, 198532North Carolina11307599321942.595217.3335263.542711134228135022800
2929Candice DupreeINDF1888122.917610USFebruary 25, 198433Temple122991118937051.1020.0576587.7311241554728124243520
3030Cappie PondexterCHIG1757323.836735USJuly 1, 198334Rutgers11246769425836.483225.0546780.61059691041755625020
4545Diana TaurasiPHOG1837422.096808USNovember 6, 198234Connecticut132059112125547.5226633.311211894.931981293220312837630
5252Érika de SouzaSANC1968622.386506BRSeptember 3, 198234Brazil13305796511258.0000.0293290.65874132351873715900
5959Ivory LattaWASG1686322.321429USSeptember 25, 198432North Carolina12294997921836.24011435.1475585.572027491212224500
6767Jia PerkinsMING1737525.059307USFebruary 23, 198235Texas Tech143093217842042.44712338.211413485.124729610341118351700
8686Leilani MitchellPHOG1655821.303949USJune 15, 198532Utah9306237018238.5319233.7627582.71257691082695023300
8888Lindsay WhalenMING1757825.469388USSeptember 5, 198234Minnesota14225206915345.1123435.3273675.084654901124417700
9495Monique CurriePHOG/F1838023.888441USFebruary 25, 198334Duke113271712128442.6379339.88510382.5191031226722114836400
103104Noelle QuinnSEAG1838124.187046USMarch 1, 198532UCLA1129459245841.4143540.0171894.41484978125277900
105106Plenette PiersonMINF/C1888824.898144USAugust 31, 198135Texas Tech15294025414238.0175133.3152075.0134962481243314000
109110Rebekkah BrunsonMINF1888423.766410USNovember 12, 198135Georgetown14267199721844.5226036.7628374.746135181403194227820
113114Sancho LyttleATLF1937921.208623ESSeptember 20, 198333Houston13257037116343.61714.3131968.4421381804140173415600
116117Seimone AugustusMING/F1837722.992624USApril 30, 198433LSU122775612525149.8184143.9303585.71270821081713929810
120121Shay MurphySANG1807422.839506USApril 15, 198532Southern California923242236237.1123534.381266.712263817101126600
126127Sue BirdSEAG1756822.204082USOctober 16, 198036Connecticut152780610324442.25013437.3172470.8746531773135727310
130131Sylvia FowlesMINC1989624.487297USJune 10, 198532LSU102989522233666.1000.012816279.011318429739396171572160
138139Tiffany JacksonLAF1918423.025685USApril 26, 198532Texas922127122548.0010.04666.75182331382800
139140Tiffany MitchellINDG1756922.530612USSeptember 23, 198432South Carolina2276718323834.9176924.69410292.2167086393154027700
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Unnamed: 0NameTeamPosHeightWeightBMIBirth_PlaceBirthdateAgeCollegeExperienceGames PlayedMINFGMFGAFG%3PM3PA3P%FTMFTAFT%OREBDREBREBASTSTLBLKTOPTSDD2TD3
1212Amanda Zahui B.NYC19611329.414827SEAugust 9, 199324Minnesota325133205337.72825.091275.051823745125100
2323Brionna JonesCONF19110428.507990USDecember 18, 199521MarylandR19112142653.8000.0161984.211142527174400
3636Courtney ParisDALC19311330.336385USSeptember 21, 198729Oklahoma716217325756.1000.061250.0283462568187000
4141Danielle AdamsCONF/C18510831.555880USFebruary 19, 198928Texas A&M51881164337.2123040.055100.0641044474900
8989Lynetta KizerCONC19310427.920213USApril 4, 199027Maryland5202384810048.0010.0233076.722355761171011900
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NY C 196 113 29.414827 \n", + "23 23 Brionna Jones CON F 191 104 28.507990 \n", + "36 36 Courtney Paris DAL C 193 113 30.336385 \n", + "41 41 Danielle Adams CON F/C 185 108 31.555880 \n", + "89 89 Lynetta Kizer CON C 193 104 27.920213 \n", + "\n", + " Birth_Place Birthdate Age College Experience Games Played \\\n", + "12 SE August 9, 1993 24 Minnesota 3 25 \n", + "23 US December 18, 1995 21 Maryland R 19 \n", + "36 US September 21, 1987 29 Oklahoma 7 16 \n", + "41 US February 19, 1989 28 Texas A&M 5 18 \n", + "89 US April 4, 1990 27 Maryland 5 20 \n", + "\n", + " MIN FGM FGA FG% 3PM 3PA 3P% FTM FTA FT% OREB DREB REB \\\n", + "12 133 20 53 37.7 2 8 25.0 9 12 75.0 5 18 23 \n", + "23 112 14 26 53.8 0 0 0.0 16 19 84.2 11 14 25 \n", + "36 217 32 57 56.1 0 0 0.0 6 12 50.0 28 34 62 \n", + "41 81 16 43 37.2 12 30 40.0 5 5 100.0 6 4 10 \n", + "89 238 48 100 48.0 0 1 0.0 23 30 76.7 22 35 57 \n", + "\n", + " AST STL BLK TO PTS DD2 TD3 \n", + "12 7 4 5 12 51 0 0 \n", + "23 2 7 1 7 44 0 0 \n", + "36 5 6 8 18 70 0 0 \n", + "41 4 4 4 7 49 0 0 \n", + "89 6 11 7 10 119 0 0 " + ] + }, + "execution_count": 10, + "metadata": {}, + "output_type": "execute_result" + } + ], "source": [ - "#your code here" + "wnba.loc[wnba['Weight'] >= 100]" ] }, { @@ -89,11 +2361,44 @@ }, { "cell_type": "code", - "execution_count": 8, + "execution_count": 34, "metadata": {}, - "outputs": [], + "outputs": [ + { + "data": { + "image/png": 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wBkk78wZyL+kfxhH5+fvZ3Z9+NrsHo7R9feQ+/ROBDaS9iTFISR44rFNxFOYXgXHgS5L+r6QrJB1M7fXXMyLih6S6/ggwBvwoIm4jnXa5NCLmkFqv/w+4Q9IRFe9dT6rrfwLcGhE/6XD4lYquqzMlgZ/H7tY31DkUuoU+BHw4IhYAHya3qGrEMZu0t/BWSY9Lejy/53jgcFKXyNEVr68cEfgocEdEzMkbyK8BmyPiQ/n53wEulLSR1KXxwhRxtGx9SDoEuAG4JCKemeql7YyjQPuTdun/NiJOBH5M2o3vebmveCmpe+FI4GBJv135moh4idQ9+BLwpqo/8RXgI6TWeC8qoq4Wn8Dz7tt7ga9VFHd6KPQy4Mb8+O/Zvas1WRyLSBV6MXBCvh0L3Ek6sHkj8HFJB0n65Vw24Vbg30v6gKTZ7N6FPRYgIh6MiNMi4nWkf2gTR/bbtj5yHDcA10bExDrYLml+fn4+sKPdcRRqG7AtIjbk5etJCb3W+usl7wAejojxiPgpqd6+kVS358LPY38OOJTUvVbp88Cp7O7y65ai62rxCZxUkR6MiG0VZTcD50p6maTXkJLmt9sYw2OkvjyAtwETXTmTxfFG4EsR8UhEPD5xA74AvB+4iNQt8jhwDSkRPw8/72c+jTS0+zHSQcvDSbuqSDos3+9H2j39uyniaHp95GMPV5L2Aj5b8dTN7D6zZhlwUzvjKFX+3R+VdEwuejvwXWqvv17yCHBybmiIFPtmUsK+VtIuYCvpwOyyqBrJGhFPRcSayEcMu6jsutrto6j13kiJbIy0S7YNuCB2H9n+vUle/8ekFuhD5DNE2hUHafdwI+mo9Qbgda2KA7gcGKkzjotJZ4L8K7CSPNK2Xesjf+8g9cVvyrd3Aa8C1pD+ka0B5rb7dyn1RtoDG83r8Ouk1mrN9ddLN+ATwIOkYy/XkBoSPRt7jW2m6LrqofQ9JnebHEA6/er1wDdJp5l9vZtxmVnvaeqamNYWryC1FI4k9cd9ht7chTazLnML3MysUDPhIKaZWV/qaBfKvHnzYnBwsJMfaX1k48aNT0TEQDc+23Xb2qlW3e5oAh8cHGR0dLSTH2l9RNIPuvXZrtvWTrXqtrtQrK9JmpWHsd+al4uYCdAMnMDNLmbPUYIrgDURsYh0XnARQ9utPzmBW9+SdDRwBnBFRXEpMwGaTd8HnidpX0caZbU/cH1EfEzSXNL8I4OkIbPnRMTT7Qu1tQZXfGOf37N15RltiMS66C+BPyKdez9hj9npJqYnmIyk5cBygIULF7YxzPo1Uq/BdbtU9bTAnwfeFhHHk4b9LpF0Mt7VtIJJejewI9J87A2JiOGIGIqIoYGBrpz8Yn1u2gQeya68ODvfAu9qWtlOAd4jaSvpCkhvk/QVypgJ0Ayosw88H6nfRKrMqyNNf1nXpPOSlitdJ3J0fHy8RWGbNSciLo2IoyNikDS74z9HxG9TxkyAZkCdCTwiXoqIE0hz4p4k6bh6P8C7mVaYlcCp+aK8p+Zls560TwN5ImKnpLWkK0lvlzQ/H+jxrqYVKyLWAmvz4ydJc1ub9bxpW+CSBiTNyY8PJF9AAe9qmpl1VT0t8PnASL5i+n6kK6nfKukuYJWkC0hX5zi7jXGamVmVaRN4RNxLutp4dbl3Nc3MusgjMc3MCuUEbmZWKF9Szcw8BL9QTuAd4I3DzNrBXShmZoVyAjczK5QTuJlZoZzAzcwK5QRuZlYoJ3Azs0I5gZuZFcoJ3MysUB7IY2YN8yC17nIL3MysUE7gZmaFcgI3MyuUE7iZWaGcwM3MCuUEbmZWKCdwM7NCOYGbmRVq2gQuaYGk2yVtlvSApItz+VxJqyVtyfeHtj9cMzObUE8L/EXgIxFxLHAycKGkxcAKYE1ELALW5GUzM+uQaRN4RIxFxD358bPAZuAoYCkwkl82ApzVphjNzGwS+9QHLmkQOBHYABweEWOQkjxwWI33LJc0Kml0fHy8yXDNzGxC3Qlc0iHADcAlEfFMve+LiOGIGIqIoYGBgUZiNDOzSdSVwCXNJiXvayPixly8XdL8/Px8YEd7QjQzs8nUcxaKgCuBzRHx2YqnbgaW5cfLgJtaH56ZmdVSz3zgpwAfAO6TtCmXXQasBFZJugB4BDi7LRGamdmkpk3gEbEeUI2n397acMzMrF4eiWlmVigncDOzQjmBm5kVyhc1noF8oVmz/uAWuJlZoZzArW95pk0rnRO49TPPtGlFcwK3vuWZNq10TuBmeKZNK1PxZ6E0esaF2YTqmTbT9D/Ti4hhYBhgaGgo2heh2eTcAre+5pk2rWRO4Na3PNOmla74LhSzJnimTSuaE7j1Lc+0aaVzF4qZWaGcwM3MCuUEbmZWKCdwM7NC+SDmPvCgITPrJW6Bm5kVygnczKxQ03ahSLoKeDewIyKOy2Vzga8Bg8BW4JyIeLqZQNw9YWa2b+ppgV8NLKkq83zJZmZdNm0Cj4h1wFNVxZ4v2cysyxo9C2WP+ZIlTTpfMqQ5k4HlAAsXLmzw48xsJmmky9QX3d5b2w9iRsRwRAxFxNDAwEC7P87MrG80msA9X7KZWZc1msA9X7KZWZdNm8AlfRW4CzhG0rY8R/JK4FRJW4BT87KZmXXQtAcxI+K8Gk95vmSzNvG4CKuHR2KamRXKk1n1sE63wjr5eT4lzKx5boGbmRXKCdzMrFBO4GZmhXICNzMrlBO4mVmhnMDNzArlBG5mVigncDOzQnkgj3VFo4OGPADIbDe3wM3MCuUEbmZWKCdwM7NCOYGbmRXKBzHN2sjzels7uQVuZlYoJ3Azs0K5C8XMiuCxA3tzC9zMrFBugZvZjNbplnsnP88tcDOzQjXVApe0BPgcMAu4IiJWtiQqsy5z3bYSTgFtuAUuaRbw18DpwGLgPEmLWxWYWbe4blspmulCOQn4XkR8PyJeAK4DlrYmLLOuct22IjTThXIU8GjF8jbgDdUvkrQcWJ4Xd0l6qInP7LR5wBPdDqIBMzZuXT7l+1/dojh6rW6X+ntOZaZ9p6a/TyN1u5kErknKYq+CiGFguInP6RpJoxEx1O049pXjblpP1e0eWi8tM9O+U7e+TzNdKNuABRXLRwOPNReOWU9w3bYiNJPA7wYWSXqNpAOAc4GbWxOWWVe5blsRGu5CiYgXJV0E/CPpVKurIuKBlkXWG4rs+sFxN6UH63ZPrJcWm2nfqSvfRxF7de2ZmVkBPBLTzKxQTuBmZoVyAgckLZB0u6TNkh6QdHEu/7ikH0ralG/v6naslSS9XNK3JX0nx/2JXD5X0mpJW/L9od2OtdIUcff0+u6EKepiT/+mtZS6bU2ll7Y794EDkuYD8yPiHkmvADYCZwHnALsi4tPdjK8WSQIOjohdkmYD64GLgfcCT0XESkkrgEMj4qPdjLXSFHEvoYfXdydMURfPp4d/01pK3bam0kvbnVvgQESMRcQ9+fGzwGbSaLyeFsmuvDg734I07Hskl4+QNpieMUXcfW+KutjTv2ktpW5bU+ml7c4JvIqkQeBEYEMuukjSvZKu6sXdVkmzJG0CdgCrI2IDcHhEjEHagIDDuhjipGrEDT2+vjupqi72/G86ndK2ran0ynbnBF5B0iHADcAlEfEM8LfALwEnAGPAZ7oX3eQi4qWIOIE0WvAkScd1OaS61Ii759d3p0xSF4tW4rY1lV7Z7pzAs9yXdQNwbUTcCBAR2/MP9TPgi6RZ6npSROwE1pL6kbfnvseJPsgd3YtsapVxl7S+22myukhBv2m10retqXR7u3MC5+cHJa4ENkfEZyvK51e87D8C93c6tqlIGpA0Jz8+EHgH8CBp2Pey/LJlwE1dCbCGWnH3+vruhFp1kR7/TWspdduaSi9tdz4LBZD0JuBO4D7gZ7n4MuA80i5eAFuB/zzRx9ULJP0a6WDJLNI/41UR8eeSXgWsAhYCjwBnR8RT3Yt0T1PEfQ09vL47YYq6uIEe/k1rKXXbmkovbXdO4GZmhXIXiplZoZzAzcwK5QRuZlYoJ3Azs0I5gZuZFcoJ3MysUE7gZmaF+v9vjY2l+NmfygAAAABJRU5ErkJggg==\n", + "text/plain": [ + "
" + ] + }, + "metadata": { + "needs_background": "light" + }, + "output_type": "display_data" + } + ], "source": [ - "#your code here" + "#your code here\n", + "\n", + "figure, axis = plt.subplots(2, 2)\n", + "\n", + "\n", + "axis[0, 0].hist(wnba[\"Height\"])\n", + "axis[0, 0].set_title(\"Height\")\n", + " \n", + "\n", + "axis[0, 1].hist(wnba[\"Weight\"])\n", + "axis[0, 1].set_title(\"Weight\")\n", + " \n", + "\n", + "axis[1, 0].hist(wnba[\"Age\"])\n", + "axis[1, 0].set_title(\"Age\")\n", + " \n", + "\n", + "axis[1, 1].hist(wnba[\"BMI\"])\n", + "axis[1, 1].set_title('BMI')\n", + " \n", + "plt.show()" ] }, { @@ -109,7 +2414,11 @@ "metadata": {}, "outputs": [], "source": [ - "#your conclusions here" + "#your conclusions here\n", + "#most values for BMI are between 20 and 26\n", + "\n", + "#height and weoght are pretty similar\n", + "#Age peaks at 25 and decreases gradually from there" ] }, { @@ -134,11 +2443,118 @@ }, { "cell_type": "code", - "execution_count": null, + "execution_count": 35, "metadata": {}, - "outputs": [], + "outputs": [ + { + "data": { + "image/png": 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O8FfpE8Dx7nbDNpjvUbkXes6BPwX+tct3Evibbnxh5/sCmXubay9rIEkNW+TDNZKkKVnyktQwS16SGmbJS1LDLHlJapglL0kNs+QlqWH/C91SJ+zjel3BAAAAAElFTkSuQmCC\n", + "text/plain": [ + "
" + ] + }, + "metadata": { + "needs_background": "light" + }, + "output_type": "display_data" + } + ], + "source": [ + "#your code here\n", + "plt.hist(wnba[\"REB\"])\n", + "plt.show()" + ] + }, + { + "cell_type": "code", + "execution_count": 36, + "metadata": {}, + "outputs": [ + { + "data": { + "image/png": "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\n", + "text/plain": [ + "
" + ] + }, + "metadata": { + "needs_background": "light" + }, + "output_type": "display_data" + } + ], "source": [ - "#your code here" + "plt.hist(wnba[\"AST\"])\n", + "plt.show()" + ] + }, + { + "cell_type": "code", + "execution_count": 37, + "metadata": {}, + "outputs": [ + { + "data": { + "image/png": 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V4RKKJGkFFrgkNWWBS1JTFrgkNWWBS1JTFrgkNWWBS1JT/wdDoDMRJ8yFIAAAAABJRU5ErkJggg==\n", 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" + ] + }, + "metadata": { + "needs_background": "light" + }, + "output_type": "display_data" + } + ], + "source": [ + "plt.hist(wnba[\"BLK\"])\n", + "plt.show()" ] }, { @@ -154,7 +2570,9 @@ "metadata": {}, "outputs": [], "source": [ - "#your conclusions here" + "#your conclusions here\n", + "#All have a peak in the left and decrease from there\n", + "# always the same players tat actually play so it's normal to have a lower # of players with most stats" ] }, { @@ -173,11 +2591,118 @@ }, { "cell_type": "code", - "execution_count": 10, + "execution_count": 40, "metadata": {}, - "outputs": [], + "outputs": [ + { + "data": { + "image/png": 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+ "text/plain": [ + "
" + ] + }, + "metadata": { + "needs_background": "light" + }, + "output_type": "display_data" + } + ], + "source": [ + "#your code here\n", + "plt.hist(wnba[\"REB\"]/wnba[\"MIN\"])\n", + "plt.show()" + ] + }, + { + "cell_type": "code", + "execution_count": 41, + "metadata": {}, + "outputs": [ + { + "data": { + "image/png": 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" + ] + }, + "metadata": { + "needs_background": "light" + }, + "output_type": "display_data" + } + ], "source": [ - "#your code here" + "plt.hist(wnba[\"BLK\"]/wnba[\"MIN\"])\n", + "plt.show()" ] }, { @@ -193,7 +2718,8 @@ "metadata": {}, "outputs": [], "source": [ - "#your conclusions here" + "#your conclusions here\n", + "#They are all much closer to a normal dist but the BLK" ] }, { @@ -222,13 +2748,16 @@ "metadata": {}, "outputs": [], "source": [ - "#your comments here" + "#your comments here\n", + "#Yes, we hav weight and BMI for the first\n", + "#Free throw made/attempts for second\n", + "# Assists for third" ] } ], "metadata": { "kernelspec": { - "display_name": "Python 3", + "display_name": "Python 3 (ipykernel)", "language": "python", "name": "python3" }, @@ -242,7 +2771,7 @@ "name": "python", "nbconvert_exporter": "python", "pygments_lexer": "ipython3", - "version": "3.6.8" + "version": "3.9.7" } }, "nbformat": 4, diff --git a/your-code/3.-Inferential-Analysis.ipynb b/your-code/3.-Inferential-Analysis.ipynb index edc1da0..6aaa196 100644 --- a/your-code/3.-Inferential-Analysis.ipynb +++ b/your-code/3.-Inferential-Analysis.ipynb @@ -21,7 +21,7 @@ }, { "cell_type": "code", - "execution_count": 3, + "execution_count": 2, "metadata": {}, "outputs": [], "source": [ @@ -46,11 +46,289 @@ }, { "cell_type": "code", - "execution_count": null, + "execution_count": 3, "metadata": {}, - "outputs": [], - "source": [ - "#your code here" + "outputs": [ + { + "data": { + "text/html": [ + "
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Unnamed: 0NameTeamPosHeightWeightBMIBirth_PlaceBirthdateAgeCollegeExperienceGames PlayedMINFGMFGAFG%3PM3PA3P%FTMFTAFT%OREBDREBREBASTSTLBLKTOPTSDD2TD3
00Aerial PowersDALF1837121.200991USJanuary 17, 199423Michigan State28173308535.3123237.5212680.8622281236129300
11Alana BeardLAG/F1857321.329438USMay 14, 198235Duke12309479017750.851827.8324178.019821017263134021700
22Alex BentleyCONG1706923.875433USOctober 27, 199026Penn State4266178221837.6196429.7354283.343640782232421800
33Alex MontgomerySANG/F1858424.543462USDecember 11, 198828Georgia Tech6317217519538.5216830.9172181.0351341696520103818820
44Alexis JonesMING1757825.469388USAugust 5, 199423BaylorR24137165032.072035.0111291.739121270145000
\n", + "
" + ], + "text/plain": [ + " Unnamed: 0 Name Team Pos Height Weight BMI \\\n", + "0 0 Aerial Powers DAL F 183 71 21.200991 \n", + "1 1 Alana Beard LA G/F 185 73 21.329438 \n", + "2 2 Alex Bentley CON G 170 69 23.875433 \n", + "3 3 Alex Montgomery SAN G/F 185 84 24.543462 \n", + "4 4 Alexis Jones MIN G 175 78 25.469388 \n", + "\n", + " Birth_Place Birthdate Age College Experience \\\n", + "0 US January 17, 1994 23 Michigan State 2 \n", + "1 US May 14, 1982 35 Duke 12 \n", + "2 US October 27, 1990 26 Penn State 4 \n", + "3 US December 11, 1988 28 Georgia Tech 6 \n", + "4 US August 5, 1994 23 Baylor R \n", + "\n", + " Games Played MIN FGM FGA FG% 3PM 3PA 3P% FTM FTA FT% OREB \\\n", + "0 8 173 30 85 35.3 12 32 37.5 21 26 80.8 6 \n", + "1 30 947 90 177 50.8 5 18 27.8 32 41 78.0 19 \n", + "2 26 617 82 218 37.6 19 64 29.7 35 42 83.3 4 \n", + "3 31 721 75 195 38.5 21 68 30.9 17 21 81.0 35 \n", + "4 24 137 16 50 32.0 7 20 35.0 11 12 91.7 3 \n", + "\n", + " DREB REB AST STL BLK TO PTS DD2 TD3 \n", + "0 22 28 12 3 6 12 93 0 0 \n", + "1 82 101 72 63 13 40 217 0 0 \n", + "2 36 40 78 22 3 24 218 0 0 \n", + "3 134 169 65 20 10 38 188 2 0 \n", + "4 9 12 12 7 0 14 50 0 0 " + ] + }, + "execution_count": 3, + "metadata": {}, + "output_type": "execute_result" + } + ], + "source": [ + "#your code here\n", + "wnba = pd.read_csv('wnba_cleaned.csv')\n", + "wnba.head()" ] }, { @@ -74,7 +352,9 @@ "metadata": {}, "outputs": [], "source": [ - "# your answer here" + "# your answer here\n", + "\n", + "# we can do hypothesis testing?" ] }, { @@ -86,11 +366,33 @@ }, { "cell_type": "code", - "execution_count": 6, - "metadata": {}, - "outputs": [], - "source": [ - "# your code here" + "execution_count": 5, + "metadata": {}, + "outputs": [ + { + "data": { + "text/plain": [ + "(77.15461406720749, 80.80313241166576)" + ] + }, + "execution_count": 5, + "metadata": {}, + "output_type": "execute_result" + } + ], + "source": [ + "# your code here\n", + "import scipy.stats as st\n", + "\n", + "x = wnba[\"Weight\"].mean()\n", + "\n", + "s = wnba[\"Weight\"].std(ddof=1)\n", + "\n", + "n = len(wnba)\n", + "\n", + "c = 0.95\n", + "\n", + "st.t.interval(c, n-1, loc=x, scale=s/np.sqrt(n))" ] }, { @@ -106,7 +408,8 @@ "metadata": {}, "outputs": [], "source": [ - "#your-answer-here" + "#your-answer-here\n", + "#The mean will be between those values with 95% confidence" ] }, { @@ -122,7 +425,8 @@ "metadata": {}, "outputs": [], "source": [ - "#your-answer-here" + "#your-answer-here\n", + "# my sister is 10kg below the min of our intrval, probably our grandmother is right" ] }, { @@ -158,7 +462,8 @@ "metadata": {}, "outputs": [], "source": [ - "# your answer here" + "# your answer here\n", + "#Only assumption is that failing majority is more than 40%" ] }, { @@ -170,11 +475,31 @@ }, { "cell_type": "code", - "execution_count": 12, + "execution_count": 6, "metadata": {}, - "outputs": [], - "source": [ - "# your code here" + "outputs": [ + { + "data": { + "text/plain": [ + "(72.75371835469808, 78.90402812417513)" + ] + }, + "execution_count": 6, + "metadata": {}, + "output_type": "execute_result" + } + ], + "source": [ + "# your code here\n", + "x = wnba[\"FT%\"].mean()\n", + "\n", + "s = wnba[\"FT%\"].std(ddof=1)\n", + "\n", + "n = len(wnba)\n", + "\n", + "c = 0.95\n", + "\n", + "st.t.interval(c, n-1, loc=x, scale=s/np.sqrt(n))" ] }, { @@ -190,7 +515,8 @@ "metadata": {}, "outputs": [], "source": [ - "#your-answer-here" + "#your-answer-here\n", + "#She's wrong, Avg on free throw failure is below 40%" ] }, { @@ -243,11 +569,24 @@ }, { "cell_type": "code", - "execution_count": 15, + "execution_count": 9, "metadata": {}, - "outputs": [], - "source": [ - "#your code here" + "outputs": [ + { + "data": { + "text/plain": [ + "Ttest_1sampResult(statistic=-2.1499947192482898, pvalue=0.033261541354107166)" + ] + }, + "execution_count": 9, + "metadata": {}, + "output_type": "execute_result" + } + ], + "source": [ + "#your code here\n", + "\n", + "st.ttest_1samp(wnba[\"AST\"], 52)\n" ] }, { @@ -256,7 +595,8 @@ "metadata": {}, "outputs": [], "source": [ - "#your-answer-here" + "#your-answer-here\n", + "Pvalue is below 5%, we can reject h0 -> mean is different than 2" ] }, { @@ -268,11 +608,32 @@ }, { "cell_type": "code", - "execution_count": 20, + "execution_count": 10, + "metadata": {}, + "outputs": [ + { + "data": { + "text/plain": [ + "Ttest_1sampResult(statistic=-2.1499947192482898, pvalue=0.033261541354107166)" + ] + }, + "execution_count": 10, + "metadata": {}, + "output_type": "execute_result" + } + ], + "source": [ + "#your-answer-here\n", + "st.ttest_1samp(wnba[\"AST\"], 52)" + ] + }, + { + "cell_type": "code", + "execution_count": null, "metadata": {}, "outputs": [], "source": [ - "#your-answer-here" + "#we can't reject h0" ] }, { @@ -343,7 +704,7 @@ ], "metadata": { "kernelspec": { - "display_name": "Python 3", + "display_name": "Python 3 (ipykernel)", "language": "python", "name": "python3" }, @@ -357,7 +718,7 @@ "name": "python", "nbconvert_exporter": "python", "pygments_lexer": "ipython3", - "version": "3.6.8" + "version": "3.9.7" } }, "nbformat": 4, diff --git a/data/wnba.csv b/your-code/wnba.csv similarity index 100% rename from data/wnba.csv rename to your-code/wnba.csv diff --git a/your-code/wnba_cleaned.csv b/your-code/wnba_cleaned.csv new file mode 100644 index 0000000..b365fcb --- /dev/null +++ b/your-code/wnba_cleaned.csv @@ -0,0 +1,143 @@ +,Name,Team,Pos,Height,Weight,BMI,Birth_Place,Birthdate,Age,College,Experience,Games Played,MIN,FGM,FGA,FG%,3PM,3PA,3P%,FTM,FTA,FT%,OREB,DREB,REB,AST,STL,BLK,TO,PTS,DD2,TD3 +0,Aerial Powers,DAL,F,183,71,21.20099137,US,"January 17, 1994",23,Michigan State,2,8,173,30,85,35.3,12,32,37.5,21,26,80.8,6,22,28,12,3,6,12,93,0,0 +1,Alana Beard,LA,G/F,185,73,21.32943755,US,"May 14, 1982",35,Duke,12,30,947,90,177,50.8,5,18,27.8,32,41,78.0,19,82,101,72,63,13,40,217,0,0 +2,Alex Bentley,CON,G,170,69,23.87543253,US,"October 27, 1990",26,Penn State,4,26,617,82,218,37.6,19,64,29.7,35,42,83.3,4,36,40,78,22,3,24,218,0,0 +3,Alex Montgomery,SAN,G/F,185,84,24.54346238,US,"December 11, 1988",28,Georgia Tech,6,31,721,75,195,38.5,21,68,30.9,17,21,81.0,35,134,169,65,20,10,38,188,2,0 +4,Alexis Jones,MIN,G,175,78,25.46938776,US,"August 5, 1994",23,Baylor,R,24,137,16,50,32.0,7,20,35.0,11,12,91.7,3,9,12,12,7,0,14,50,0,0 +5,Alexis Peterson,SEA,G,170,63,21.79930796,US,"June 20, 1995",22,Syracuse,R,14,90,9,34,26.5,2,9,22.2,6,6,100.0,3,13,16,11,5,0,11,26,0,0 +6,Alexis Prince,PHO,G,188,81,22.91760978,US,"February 5, 1994",23,Baylor,R,16,112,9,34,26.5,4,15,26.7,2,2,100.0,1,14,15,5,4,3,3,24,0,0 +7,Allie Quigley,CHI,G,178,64,20.19946976,US,"June 20, 1986",31,DePaul,8,26,847,166,319,52.0,70,150,46.7,40,46,87.0,9,83,92,95,20,13,59,442,0,0 +8,Allisha Gray,DAL,G,185,76,22.20598977,US,"October 20, 1992",24,South Carolina,2,30,834,131,346,37.9,29,103,28.2,104,129,80.6,52,75,127,40,47,19,37,395,0,0 +9,Allison Hightower,WAS,G,178,77,24.30248706,US,"June 4, 1988",29,LSU,5,7,103,14,38,36.8,2,11,18.2,6,6,100.0,3,7,10,10,5,0,2,36,0,0 +10,Alysha Clark,SEA,F,180,76,23.45679012,US,"July 7, 1987",30,Middle Tennessee,6,30,843,93,183,50.8,20,62,32.3,38,51,74.5,29,97,126,50,22,4,32,244,0,0 +11,Alyssa Thomas,CON,F,188,84,23.76641014,US,"December 4, 1992",24,Maryland,3,28,833,154,303,50.8,0,3,0.0,91,158,57.6,34,158,192,136,48,11,87,399,4,0 +12,Amanda Zahui B.,NY,C,196,113,29.41482716,SE,"August 9, 1993",24,Minnesota,3,25,133,20,53,37.7,2,8,25.0,9,12,75.0,5,18,23,7,4,5,12,51,0,0 +13,Amber Harris,CHI,F,196,88,22.90712203,US,"January 16, 1988",29,Xavier,3,22,146,18,44,40.9,0,10,0.0,5,8,62.5,12,28,40,5,3,9,6,41,0,0 +14,Aneika Henry,ATL,F/C,193,87,23.35633171,JM,"February 13, 1986",31,Florida,6,4,22,4,4,100.0,0,0,0.0,0,0,0.0,0,4,4,1,2,0,3,8,0,0 +15,Angel Robinson,PHO,F/C,198,88,22.44668911,US,"August 30, 1995",21,Arizona State,1,15,237,25,44,56.8,1,1,100.0,7,7,100.0,16,42,58,8,1,11,16,58,0,0 +16,Asia Taylor,WAS,F,185,76,22.20598977,US,"August 22, 1991",26,Louisville,3,20,128,10,31,32.3,0,0,0.0,11,18,61.1,16,21,37,9,5,2,10,31,0,0 +17,Bashaara Graves,CHI,F,188,91,25.74694432,US,"March 17, 1994",23,Tennessee,1,5,59,8,14,57.1,0,0,0.0,3,4,75.0,4,13,17,3,0,1,3,19,0,0 +18,Breanna Lewis,DAL,C,196,93,24.20866306,US,"June 22, 1994",23,Kansas State,R,12,50,2,12,16.7,0,0,0.0,3,4,75.0,2,7,9,2,0,0,7,7,0,0 +19,Breanna Stewart,SEA,F/C,193,77,20.67169588,US,"August 27, 1994",22,Connecticut,2,29,952,201,417,48.2,46,123,37.4,136,171,79.5,43,206,249,78,29,47,68,584,8,0 +20,Bria Hartley,NY,G,173,66,22.05219018,US,"September 30, 1992",24,Connecticut,4,29,598,80,192,41.7,32,93,34.4,25,33,75.8,7,50,57,58,15,5,44,217,0,0 +21,Bria Holmes,ATL,G,185,77,22.49817385,US,"April 19, 1994",23,West Virginia,R,28,655,85,231,36.8,9,50,18.0,56,84,66.7,29,56,85,52,23,7,31,235,0,0 +22,Briann January,IND,G,173,65,21.71806609,US,"November 1, 1987",29,Arizona State,9,25,657,81,205,39.5,18,57,31.6,58,71,81.7,12,25,37,98,23,4,53,238,0,0 +23,Brionna Jones,CON,F,191,104,28.50799046,US,"December 18, 1995",21,Maryland,R,19,112,14,26,53.8,0,0,0.0,16,19,84.2,11,14,25,2,7,1,7,44,0,0 +24,Brittany Boyd,NY,G,175,71,23.18367347,US,"November 6, 1993",23,UC Berkeley,3,2,32,9,15,60.0,0,1,0.0,8,11,72.7,3,5,8,5,3,0,2,26,0,0 +25,Brittney Griner,PHO,C,206,93,21.91535489,US,"October 18, 1990",26,Baylor,5,22,682,167,293,57.0,0,0,0.0,127,154,82.5,43,129,172,39,13,54,52,461,6,0 +26,Brittney Sykes,ATL,G,175,66,21.55102041,US,"July 2, 1994",23,Rutgers,10,30,734,146,362,40.3,29,87,33.3,76,102,74.5,25,94,119,59,18,17,49,397,1,0 +27,Camille Little,PHO,F,188,82,23.20054323,US,"January 18, 1985",32,North Carolina,11,30,759,93,219,42.5,9,52,17.3,33,52,63.5,42,71,113,42,28,13,50,228,0,0 +28,Candace Parker,LA,F/C,193,79,21.20862305,US,"April 19, 1986",31,Tennessee,10,29,889,183,383,47.8,40,114,35.1,88,115,76.5,37,205,242,127,43,53,80,494,10,1 +29,Candice Dupree,IND,F,188,81,22.91760978,US,"February 25, 1984",33,Temple,12,29,911,189,370,51.1,0,2,0.0,57,65,87.7,31,124,155,47,28,12,42,435,2,0 +30,Cappie Pondexter,CHI,G,175,73,23.83673469,US,"July 1, 1983",34,Rutgers,11,24,676,94,258,36.4,8,32,25.0,54,67,80.6,10,59,69,104,17,5,56,250,2,0 +31,Carolyn Swords,SEA,C,198,95,24.2322212,US,"July 19, 1989",28,Boston College,6,26,218,19,39,48.7,0,0,0.0,16,20,80.0,10,29,39,9,5,4,22,54,0,0 +32,Cayla George,PHO,C,193,87,23.35633171,AU,"April 20, 1987",30,Georgia,1,28,365,40,105,38.1,13,45,28.9,7,12,58.3,10,71,81,15,9,11,13,100,1,0 +33,Chelsea Gray,LA,G,180,77,23.7654321,US,"August 10, 1992",25,Duke,3,30,996,165,326,50.6,48,100,48.0,78,94,83.0,19,80,99,132,29,7,61,456,1,0 +34,Cheyenne Parker,CHI,F,193,86,23.08786813,US,"August 22, 1992",25,Middle Tennessee,2,23,286,32,69,46.4,0,3,0.0,23,36,63.9,31,47,78,13,8,15,21,87,0,0 +35,Clarissa dos Santos,SAN,C,185,89,26.00438276,BR,"October 3, 1988",28,Brazil,4,7,52,8,14,57.1,1,1,100.0,0,0,0.0,3,7,10,7,1,1,5,17,0,0 +36,Courtney Paris,DAL,C,193,113,30.33638487,US,"September 21, 1987",29,Oklahoma,7,16,217,32,57,56.1,0,0,0.0,6,12,50.0,28,34,62,5,6,8,18,70,0,0 +37,Courtney Vandersloot,CHI,G,173,66,22.05219018,US,"August 2, 1989",28,Gonzaga,6,22,673,104,199,52.3,23,60,38.3,24,29,82.8,13,75,88,175,22,5,64,255,10,0 +38,Courtney Williams,CON,G,173,62,20.71569381,US,"November 5, 1994",22,South Florida,1,29,755,168,338,49.7,8,30,26.7,31,36,86.1,38,84,122,60,15,6,39,375,1,0 +39,Crystal Langhorne,SEA,F/C,188,84,23.76641014,US,"October 27, 1986",30,Maryland,10,30,848,160,240,66.7,1,2,50.0,49,68,72.1,35,140,175,46,16,11,50,370,2,0 +40,Damiris Dantas,ATL,C,191,89,24.39626107,BR,"November 17, 1992",24,Brazil,4,30,569,98,243,40.3,25,91,27.5,33,43,76.7,29,84,113,19,17,18,26,254,0,0 +41,Danielle Adams,CON,F/C,185,108,31.5558802,US,"February 19, 1989",28,Texas A&M,5,18,81,16,43,37.2,12,30,40.0,5,5,100.0,6,4,10,4,4,4,7,49,0,0 +42,Danielle Robinson,PHO,G,175,57,18.6122449,US,"October 5, 1989",27,Oklahoma,7,28,680,79,178,44.4,0,5,0.0,51,61,83.6,13,73,86,106,33,4,58,209,0,0 +43,Dearica Hamby,SAN,F,191,86,23.57391519,US,"June 11, 1993",24,Wake Forest,2,31,650,96,207,46.4,3,8,37.5,58,95,61.1,48,91,139,32,29,8,43,253,1,0 +44,Devereaux Peters,IND,F,188,79,22.35174287,US,"August 10, 1989",28,Notre Dame,6,28,796,154,380,40.5,88,225,39.1,118,130,90.8,8,69,77,76,16,9,56,514,0,0 +45,Diana Taurasi,PHO,G,183,74,22.09680791,US,"November 6, 1982",34,Connecticut,13,20,591,121,255,47.5,22,66,33.3,112,118,94.9,31,98,129,32,20,31,28,376,3,0 +46,Elena Delle Donne,WAS,G/F,196,85,22.12619742,US,"May 9, 1989",28,Delaware,5,30,939,133,272,48.9,0,1,0.0,51,78,65.4,99,116,215,43,32,64,36,317,4,0 +47,Elizabeth Williams,ATL,F/C,191,87,23.84803048,US,"June 23, 1993",24,Duke,3,30,377,48,96,50.0,0,1,0.0,32,55,58.2,35,61,96,5,5,4,21,128,0,0 +48,Emma Cannon,PHO,F,188,86,24.33227705,US,"January 6, 1989",28,Central Florida,R,18,508,105,220,47.7,11,33,33.3,31,34,91.2,33,72,105,52,21,27,30,252,1,0 +49,Emma Meesseman,WAS,C,193,83,22.28247738,BE,"May 13, 1993",24,Belgium,5,23,617,89,233,38.2,25,79,31.6,56,65,86.2,23,58,81,70,34,5,30,259,0,0 +50,Epiphanny Prince,NY,G,175,81,26.44897959,US,"November 1, 1988",28,Rutgers,8,26,282,36,86,41.9,1,3,33.3,15,22,68.2,17,44,61,5,4,8,17,88,0,0 +51,Erica Wheeler,IND,G,170,65,22.49134948,US,"February 5, 1991",26,Rutgers,3,30,767,130,321,40.5,42,129,32.6,34,40,85.0,11,57,68,117,38,1,68,336,0,0 +52,Érika de Souza,SAN,C,196,86,22.38650562,BR,"September 3, 1982",34,Brazil,13,30,579,65,112,58.0,0,0,0.0,29,32,90.6,58,74,132,35,18,7,37,159,0,0 +53,Erlana Larkins,IND,F,185,93,27.17311907,US,"February 4, 1986",31,North Carolina,9,20,386,36,92,39.1,9,35,25.7,21,24,87.5,9,26,35,24,11,8,13,102,0,0 +54,Essence Carson,LA,G/F,183,74,22.09680791,US,"July 28, 1986",31,Rutgers,10,15,61,4,16,25.0,0,0,0.0,5,6,83.3,7,2,9,0,1,3,5,13,0,0 +55,Evelyn Akhator,DAL,F,191,82,22.47745402,NG,"March 2, 1995",22,Kentucky,R,30,926,165,365,45.2,20,60,33.3,92,117,78.6,73,199,272,50,37,13,67,442,13,0 +56,Glory Johnson,DAL,F,191,77,21.10687755,US,"July 27, 1990",27,Tennessee,4,4,42,3,9,33.3,3,6,50.0,0,0,0.0,0,3,3,1,0,0,4,9,0,0 +57,Imani Boyette,ATL,C,201,88,21.78163907,US,"November 10, 1992",24,Texas,1,29,410,56,119,47.1,1,3,33.3,14,20,70.0,43,75,118,14,9,23,22,127,1,0 +58,Isabelle Harrison,SAN,C,191,83,22.75156931,US,"September 27, 1993",23,Kentucky,3,31,832,154,300,51.3,1,2,50.0,55,85,64.7,66,134,200,46,26,24,63,364,5,0 +59,Ivory Latta,WAS,G,168,63,22.32142857,US,"September 25, 1984",32,North Carolina,12,29,499,79,218,36.2,40,114,35.1,47,55,85.5,7,20,27,49,12,1,22,245,0,0 +60,Jantel Lavender,LA,C,193,84,22.55094096,US,"December 11, 1988",28,Ohio State,7,28,481,89,184,48.4,4,13,30.8,18,22,81.8,31,56,87,28,8,5,35,200,0,0 +61,Jasmine Thomas,CON,G,175,66,21.55102041,US,"September 30, 1989",27,Duke,6,27,762,151,341,44.3,50,116,43.1,39,55,70.9,9,55,64,118,45,4,58,391,1,0 +62,Jazmon Gwathmey,IND,G,188,65,18.39067451,PR,"January 24, 1993",24,James Madison,2,24,371,50,140,35.7,12,49,24.5,30,39,76.9,15,34,49,17,13,19,32,142,0,0 +63,Jeanette Pohlen,IND,G,183,78,23.29122996,US,"February 5, 1989",28,Stanford,6,25,278,20,52,38.5,13,29,44.8,17,20,85.0,3,19,22,13,5,0,15,70,0,0 +64,Jennifer Hamson,IND,C,201,95,23.51426945,US,"January 23, 1992",25,Brigham Young,1,10,50,2,12,16.7,0,3,0.0,8,10,80.0,5,6,11,6,2,2,3,12,0,0 +65,Jessica Breland,CHI,F,191,77,21.10687755,US,"February 23, 1988",29,North Carolina,5,10,78,9,16,56.3,0,0,0.0,4,5,80.0,5,13,18,2,1,9,3,22,0,0 +66,Jewell Loyd,SEA,G,178,67,21.14631991,US,"May 10, 1993",24,Notre Dame,3,29,715,116,245,47.3,8,21,38.1,28,37,75.7,50,139,189,46,18,50,57,268,4,0 +67,Jia Perkins,MIN,G,173,75,25.05930703,US,"February 23, 1982",35,Texas Tech,14,30,932,178,420,42.4,47,123,38.2,114,134,85.1,24,72,96,103,41,11,83,517,0,0 +68,Jonquel Jones,CON,F/C,198,86,21.93653709,BS,"May 1, 1994",23,George Washington,1,29,463,47,124,37.9,11,32,34.4,11,15,73.3,11,46,57,39,30,1,24,116,0,0 +69,Jordan Hooper,CHI,F,188,84,23.76641014,US,"February 20, 1992",25,Nebraska,3,29,833,164,299,54.8,22,49,44.9,117,142,82.4,108,226,334,40,29,46,46,467,17,0 +70,Kaela Davis,DAL,G,188,77,21.78587596,US,"March 15, 1995",22,South Carolina,R,23,208,27,75,36.0,20,55,36.4,3,4,75.0,2,20,22,5,7,1,6,77,0,0 +71,Kahleah Copper,CHI,G/F,185,70,20.45288532,US,"August 28, 1994",22,Rutgers,1,29,475,62,163,38.0,12,32,37.5,49,65,75.4,10,33,43,32,13,3,48,185,0,0 +72,Kaleena Mosqueda-Lewis,SEA,F,180,82,25.30864198,US,"March 11, 1993",24,Connecticut,3,29,369,60,140,42.9,5,23,21.7,36,45,80.0,11,43,54,11,9,2,22,161,0,0 +73,Karima Christmas-Kelly,DAL,G/F,183,82,24.48565201,US,"November 9, 1989",27,Duke,6,14,142,23,43,53.5,9,21,42.9,10,10,100.0,4,10,14,6,1,1,13,65,0,0 +74,Kayla Alexander,SAN,C,193,88,23.6247953,CA,"May 1, 1991",26,Arizona State,4,30,889,91,239,38.1,25,83,30.1,111,129,86.0,45,75,120,65,39,5,50,318,0,0 +75,Kayla McBride,SAN,G/F,180,79,24.38271605,US,"June 25, 1992",25,Notre Dame,3,31,433,78,141,55.3,0,0,0.0,15,16,93.8,40,47,87,17,13,15,30,171,0,0 +76,Kayla Pedersen,CON,F,193,86,23.08786813,US,"April 14, 1989",28,Stanford,5,27,882,128,337,38.0,47,147,32.0,108,118,91.5,12,93,105,59,32,5,54,411,0,0 +77,Kayla Thornton,DAL,F,185,86,25.12783053,US,"October 20, 1992",24,Texas–El Paso,2,21,224,11,30,36.7,0,1,0.0,10,14,71.4,19,26,45,13,6,2,9,32,0,0 +78,Keisha Hampton,CHI,F,185,78,22.79035793,US,"February 22, 1990",27,DePaul,1,30,504,64,157,40.8,14,52,26.9,65,81,80.2,36,59,95,24,20,7,21,207,0,0 +79,Kelsey Plum,SAN,G,173,66,22.05219018,US,"August 24, 1994",23,Washington,R,28,610,73,210,34.8,29,78,37.2,50,58,86.2,11,42,53,91,13,4,72,225,0,0 +80,Kia Vaughn,NY,C,193,90,24.16172246,US,"January 24, 1987",30,Rutgers,9,23,455,62,116,53.4,0,0,0.0,10,19,52.6,39,71,110,16,8,9,21,134,1,0 +81,Kiah Stokes,NY,C,191,87,23.84803048,US,"March 30, 1993",24,Connecticut,3,29,576,50,98,51.0,0,1,0.0,41,52,78.8,63,122,185,21,8,32,33,141,3,0 +82,Kristi Toliver,WAS,G,170,59,20.41522491,US,"January 27, 1987",30,Maryland,9,29,845,119,284,41.9,67,194,34.5,44,49,89.8,9,50,59,91,20,8,48,349,0,0 +83,Krystal Thomas,WAS,C,196,88,22.90712203,US,"October 6, 1989",27,Duke,6,29,737,81,149,54.4,0,0,0.0,37,61,60.7,97,172,269,30,15,31,45,199,2,0 +84,Lanay Montgomery,SEA,C,196,96,24.98958767,US,"September 17, 1993",23,West Virginia,R,7,28,3,7,42.9,0,0,0.0,0,0,0.0,0,5,5,0,1,4,2,6,0,0 +85,Layshia Clarendon,ATL,G,175,64,20.89795918,US,"February 5, 1991",26,UC Berkeley,5,30,900,124,320,38.8,8,53,15.1,73,81,90.1,27,88,115,206,29,1,82,329,3,0 +86,Leilani Mitchell,PHO,G,165,58,21.30394858,US,"June 15, 1985",32,Utah,9,30,623,70,182,38.5,31,92,33.7,62,75,82.7,12,57,69,108,26,9,50,233,0,0 +87,Lindsay Allen,NY,G,173,65,21.71806609,US,"March 20, 1995",22,Notre Dame,R,23,314,21,50,42.0,0,11,0.0,6,9,66.7,8,28,36,47,13,1,18,48,0,0 +88,Lindsay Whalen,MIN,G,175,78,25.46938776,US,"September 5, 1982",34,Minnesota,14,22,520,69,153,45.1,12,34,35.3,27,36,75.0,8,46,54,90,11,2,44,177,0,0 +89,Lynetta Kizer,CON,C,193,104,27.92021262,US,"April 4, 1990",27,Maryland,5,20,238,48,100,48.0,0,1,0.0,23,30,76.7,22,35,57,6,11,7,10,119,0,0 +90,Maimouna Diarra,LA,C,198,90,22.95684114,SN,"January 30, 1991",26,Sengal,R,9,16,1,3,33.3,0,0,0.0,1,2,50.0,3,4,7,1,1,0,3,3,0,0 +92,Marissa Coleman,IND,G/F,185,73,21.32943755,US,"April 1, 1987",30,Maryland,9,30,539,50,152,32.9,27,79,34.2,27,33,81.8,7,53,60,25,8,4,34,154,0,0 +93,Matee Ajavon,ATL,G,173,73,24.39105884,US,"July 5, 1986",31,Syracruse,R,27,218,22,69,31.9,0,3,0.0,29,35,82.9,8,26,34,27,10,0,26,73,0,0 +94,Maya Moore,MIN,F,183,80,23.88844098,US,"November 6, 1989",27,Connecticut,7,29,904,170,398,42.7,52,132,39.4,98,114,86.0,50,106,156,99,53,13,56,490,3,0 +95,Monique Currie,PHO,G/F,183,80,23.88844098,US,"February 25, 1983",34,Duke,11,32,717,121,284,42.6,37,93,39.8,85,103,82.5,19,103,122,67,22,11,48,364,0,0 +96,Morgan Tuck,CON,F,188,91,25.74694432,US,"April 30, 1994",23,Connecticut,1,17,294,35,101,34.7,8,28,28.6,13,16,81.3,9,34,43,19,7,0,15,91,1,0 +97,Moriah Jefferson,SAN,G,168,55,19.48696145,US,"August 3, 1994",23,Connecticut,1,21,514,81,155,52.3,9,20,45.0,20,27,74.1,6,31,37,92,33,2,43,191,0,0 +98,Natalie Achonwa,IND,C,193,83,22.28247738,CA,"November 22, 1992",24,Notre Dame,3,30,529,82,151,54.3,0,0,0.0,43,55,78.2,31,70,101,21,11,16,25,207,0,0 +99,Natasha Cloud,WAS,G,183,73,21.79820239,US,"February 22, 1992",25,Saint Joseph's,3,24,448,37,118,31.4,12,51,23.5,20,27,74.1,7,52,59,69,17,3,23,106,0,0 +100,Natasha Howard,MIN,F,188,75,21.22000905,US,"February 9, 1991",26,Florida State,4,29,315,48,104,46.2,3,13,23.1,17,23,73.9,25,38,63,16,11,19,20,116,0,0 +101,Nayo Raincock-Ekunwe,NY,F/C,188,79,22.35174287,CA,"August 29, 1991",25,Simon Fraser,R,27,243,33,63,52.4,0,4,0.0,30,49,61.2,24,22,46,8,2,1,13,96,0,0 +102,Nia Coffey,SAN,F,185,77,22.49817385,US,"May 21, 1995",22,Northwestern,R,25,203,16,59,27.1,0,4,0.0,16,22,72.7,16,30,46,6,5,6,14,48,0,0 +103,Nneka Ogwumike,LA,F,188,79,22.35174287,US,"February 7, 1990",27,Stanford,6,30,948,215,386,55.7,18,49,36.7,129,148,87.2,57,179,236,63,53,14,47,577,9,0 +104,Noelle Quinn,SEA,G,183,81,24.18704649,US,"March 1, 1985",32,UCLA,11,29,459,24,58,41.4,14,35,40.0,17,18,94.4,1,48,49,78,12,5,27,79,0,0 +105,Odyssey Sims,LA,G,173,73,24.39105884,US,"July 13, 1992",25,Baylor,4,27,626,86,198,43.4,11,49,22.4,47,55,85.5,10,34,44,87,38,5,39,230,1,0 +106,Plenette Pierson,MIN,F/C,188,88,24.89814396,US,"August 31, 1981",35,Texas Tech,15,29,402,54,142,38.0,17,51,33.3,15,20,75.0,13,49,62,48,12,4,33,140,0,0 +107,Rachel Banham,CON,G,175,76,24.81632653,US,"July 15, 1993",24,Minnesota,2,26,238,32,87,36.8,16,48,33.3,16,20,80.0,2,27,29,20,4,0,12,96,0,0 +108,Ramu Tokashiki,SEA,F,193,80,21.47708663,JP,"November 6, 1991",25,Japan,1,29,378,42,92,45.7,0,3,0.0,22,27,81.5,19,29,48,16,8,8,25,106,0,0 +109,Rebecca Allen,NY,G/F,188,74,20.9370756,AU,"June 11, 1992",25,Australia,3,28,254,31,86,36.0,14,40,35.0,2,6,33.3,13,51,64,15,9,12,17,78,0,0 +110,Rebekkah Brunson,MIN,F,188,84,23.76641014,US,"November 12, 1981",35,Georgetown,14,26,719,97,218,44.5,22,60,36.7,62,83,74.7,46,135,181,40,31,9,42,278,2,0 +111,Renee Montgomery,MIN,G,170,63,21.79930796,US,"February 12, 1986",31,Connecticut,9,29,614,71,181,39.2,30,89,33.7,44,51,86.3,12,34,46,96,24,1,43,216,0,0 +112,Riquna Williams,LA,G,170,75,25.95155709,US,"May 28, 1990",27,Miami (FL),5,23,408,45,140,32.1,20,74,27.0,38,44,86.4,6,26,32,16,19,3,26,148,0,0 +113,Sami Whitcomb,SEA,G,178,66,20.83070319,US,"July 20, 1988",29,Washington,R,29,354,46,120,38.3,33,94,35.1,14,17,82.4,12,40,52,24,22,0,24,139,0,0 +114,Sancho Lyttle,ATL,F,193,79,21.20862305,ES,"September 20, 1983",33,Houston,13,25,703,71,163,43.6,1,7,14.3,13,19,68.4,42,138,180,41,40,17,34,156,0,0 +115,Sandrine Gruda,LA,F/C,193,84,22.55094096,FR,"June 25, 1987",30,France,5,4,12,1,3,33.3,0,0,0.0,0,0,0.0,0,2,2,0,0,0,2,2,0,0 +116,Saniya Chong,DAL,G,173,64,21.383942,US,"June 27, 1994",23,Connecticut,R,29,348,27,74,36.5,8,35,22.9,25,29,86.2,9,19,28,33,21,3,23,87,0,0 +117,Seimone Augustus,MIN,G/F,183,77,22.99262444,US,"April 30, 1984",33,LSU,12,27,756,125,251,49.8,18,41,43.9,30,35,85.7,12,70,82,108,17,1,39,298,1,0 +118,Sequoia Holmes,SAN,G,185,70,20.45288532,US,"June 13, 1986",31,UNLV,2,24,280,31,89,34.8,13,46,28.3,6,11,54.5,12,12,24,23,13,5,11,81,0,0 +119,Shatori Walker-Kimbrough,WAS,G,180,64,19.75308642,US,"May 18, 1995",22,Maryland,R,22,260,29,78,37.2,9,26,34.6,29,32,90.6,4,13,17,10,11,1,12,96,0,0 +120,Shavonte Zellous,NY,G,178,85,26.82742078,US,"August 28, 1986",30,Pittsburgh,9,29,865,107,249,43.0,14,41,34.1,118,144,81.9,30,92,122,87,23,8,62,346,1,0 +121,Shay Murphy,SAN,G,180,74,22.83950617,US,"April 15, 1985",32,Southern California,9,23,242,23,62,37.1,12,35,34.3,8,12,66.7,12,26,38,17,10,1,12,66,0,0 +122,Shekinna Stricklen,CON,G/F,188,81,22.91760978,US,"July 30, 1990",27,Tennessee,5,29,795,80,202,39.6,59,149,39.6,26,31,83.9,15,71,86,30,36,2,23,245,0,0 +123,Shenise Johnson,IND,G,180,78,24.07407407,US,"September 12, 1990",26,Miami (FL),6,14,348,55,127,43.3,10,30,33.3,38,40,95.0,13,35,48,35,21,4,18,158,0,0 +124,Skylar Diggins-Smith,DAL,G,175,66,21.55102041,US,"February 8, 1990",27,Notre Dame,4,30,1018,167,394,42.4,43,119,36.1,168,186,90.3,21,86,107,173,38,24,83,545,1,0 +125,Stefanie Dolson,CHI,C,196,97,25.24989588,US,"August 1, 1992",25,Connecticut,3,28,823,162,293,55.3,24,60,40.0,50,58,86.2,35,121,156,65,14,37,65,398,3,0 +126,Stephanie Talbot,PHO,G,185,87,25.42001461,AU,"December 20, 1990",26,Australia,R,30,555,47,114,41.2,15,38,39.5,29,44,65.9,28,58,86,50,22,8,28,138,0,0 +127,Sue Bird,SEA,G,175,68,22.20408163,US,"October 16, 1980",36,Connecticut,15,27,806,103,244,42.2,50,134,37.3,17,24,70.8,7,46,53,177,31,3,57,273,1,0 +128,Sugar Rodgers,NY,G,175,75,24.48979592,US,"August 12, 1989",28,Georgetown,6,28,745,108,310,34.8,59,163,36.2,42,52,80.8,21,85,106,68,28,17,43,317,0,0 +129,Sydney Colson,SAN,G,173,64,21.383942,US,"June 8, 1989",28,Texas A&M,3,25,296,25,78,32.1,2,10,20.0,20,30,66.7,3,11,14,51,13,2,25,72,0,0 +130,Sydney Wiese,LA,G,183,68,20.30517483,US,"July 13, 1992",25,Oregon State,R,25,189,19,50,38.0,13,32,40.6,4,8,50.0,3,18,21,6,4,3,2,55,0,0 +131,Sylvia Fowles,MIN,C,198,96,24.48729721,US,"June 10, 1985",32,LSU,10,29,895,222,336,66.1,0,0,0.0,128,162,79.0,113,184,297,39,39,61,71,572,16,0 +132,Tamera Young,ATL,G/F,188,77,21.78587596,US,"October 30, 1986",30,Tennessee,9,31,820,105,297,35.4,23,70,32.9,44,65,67.7,23,87,110,66,36,14,61,277,0,0 +133,Tayler Hill,WAS,G,175,66,21.55102041,US,"October 23, 1990",26,Ohio State,5,18,462,69,191,36.1,27,89,30.3,75,80,93.8,5,29,34,47,16,1,26,240,0,0 +134,Temi Fagbenle,MIN,C,193,89,23.89325888,UK,"August 9, 1992",25,Southern California,R,17,74,6,14,42.9,0,0,0.0,5,6,83.3,3,13,16,1,3,3,8,17,0,0 +135,Theresa Plaisance,DAL,F,196,91,23.68804665,US,"May 18, 1992",25,LSU,4,30,604,80,213,37.6,35,101,34.7,22,24,91.7,38,89,127,24,23,22,24,217,1,0 +136,Tianna Hawkins,WAS,F,191,87,23.84803048,US,"February 3, 1991",26,Maryland,4,29,483,79,165,47.9,11,41,26.8,41,43,95.3,42,82,124,9,15,7,23,210,0,0 +137,Tierra Ruffin-Pratt,WAS,G,178,83,26.19618735,US,"November 4, 1991",25,North Carolina,5,29,703,77,217,35.5,0,4,0.0,71,96,74.0,45,120,165,68,30,16,47,225,2,0 +138,Tiffany Hayes,ATL,G,178,70,22.09317005,US,"September 20, 1989",27,Connecticut,6,29,861,144,331,43.5,43,112,38.4,136,161,84.5,28,89,117,69,37,8,50,467,0,0 +139,Tiffany Jackson,LA,F,191,84,23.0256846,US,"April 26, 1985",32,Texas,9,22,127,12,25,48.0,0,1,0.0,4,6,66.7,5,18,23,3,1,3,8,28,0,0 +140,Tiffany Mitchell,IND,G,175,69,22.53061224,US,"September 23, 1984",32,South Carolina,2,27,671,83,238,34.9,17,69,24.6,94,102,92.2,16,70,86,39,31,5,40,277,0,0 +141,Tina Charles,NY,F/C,193,84,22.55094096,US,"May 12, 1988",29,Connecticut,8,29,952,227,509,44.6,18,56,32.1,110,135,81.5,56,212,268,75,21,22,71,582,11,0 +142,Yvonne Turner,PHO,G,175,59,19.26530612,US,"October 13, 1987",29,Nebraska,2,30,356,59,140,42.1,11,47,23.4,22,28,78.6,11,13,24,30,18,1,32,151,0,0