Spaces:
Running
Running
File size: 6,179 Bytes
cf5350e 26e0ac6 cf5350e b5b8cda f8e2512 b5b8cda cf5350e 26e0ac6 cf5350e 26e0ac6 cf5350e 26e0ac6 cf5350e 26e0ac6 cf5350e 6a02cc9 26e0ac6 6a02cc9 26e0ac6 cf5350e 26e0ac6 ff762e8 26e0ac6 cf5350e 5f04844 26e0ac6 5f04844 26e0ac6 5f04844 26e0ac6 5f04844 cf5350e 024b191 cf5350e 26e0ac6 024b191 26e0ac6 e5c3583 b5b8cda ff762e8 26e0ac6 b5b8cda |
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60 61 62 63 64 65 66 67 68 69 70 71 72 73 74 75 76 77 78 79 80 81 82 83 84 85 86 87 88 89 90 91 92 93 94 95 96 97 98 99 100 101 102 103 104 105 106 107 108 109 110 111 112 113 114 115 116 117 118 119 120 121 122 123 124 125 126 127 128 129 130 131 132 133 134 135 136 137 138 139 140 141 142 143 144 145 146 147 148 149 150 151 152 153 154 155 156 157 158 159 160 161 162 163 164 165 166 167 168 169 170 171 172 173 174 175 176 177 178 179 180 181 182 183 184 185 186 187 188 189 |
# import pandas as pd
import polars as pl
import numpy as np
from gradio_client import Client
from tqdm.auto import tqdm
import os
import re
from translate import (
translate_pa_outcome, translate_pitch_outcome,
jp_pitch_to_en_pitch, jp_pitch_to_pitch_code,
max_pitch_types
)
# load game data
game_df = pl.read_csv('game.csv').unique()
assert len(game_df) == len(game_df['game_pk'].unique())
# load pa data
pa_df = []
for game_pk in tqdm(game_df['game_pk']):
pa_df.append(pl.read_csv(os.path.join('pa', f'{game_pk}.csv'), schema_overrides={'pa_pk': str}))
pa_df = pl.concat(pa_df)
# load pitch data
pitch_df = []
for game_pk in tqdm(game_df['game_pk']):
pitch_df.append(pl.read_csv(os.path.join('pitch', f'{game_pk}.csv'), schema_overrides={'pa_pk': str, 'on_1b': pl.Int64, 'on_2b': pl.Int64, 'on_3b': pl.Int64}))
pitch_df = pl.concat(pitch_df)
# load player data
player_df = pl.read_csv('player.csv')
# translate pa data
def identify_bb_type(hit_type):
if hit_type in list(range(1, 10)) + list(range(40, 49)):
return 'ground_ball'
elif hit_type in list(range(58, 67))+list(range(201, 209)):
return 'line_drive'
elif hit_type in list(range(28, 31)) + list(range(55, 58)) + list(range(107, 110)) + list(range(247, 251)):
return 'fly_ball'
elif hit_type in list(range(49, 55)) + list(range(103, 107)) + list(range(242, 248)):
return 'pop_up'
elif hit_type in [31, 32]:
return None
else:
raise Exception(f'Unexpect hit_type {hit_type}')
pa_df = (
pa_df
.with_columns(
pl.col('des').str.strip_chars().alias('_des'),
pl.col('des').str.strip_chars(),
pl.col('des_more').str.strip_chars()
)
.with_columns(
pl.col('des').fill_null(pl.col('des_more'))
)
.with_columns(
pl.when(
(pl.col('des').str.split(' ').list.len() > 1) &
(pl.col('des').str.contains(r'+\d+点'))
)
.then(pl.col('des').str.split(' ').list.first())
.otherwise(pl.col('des'))
.alias('des')
)
.with_columns(
pl.when(
pl.col('des').is_in(['ボール', '見逃し', '空振り']) |
pl.col('des').str.ends_with('塁けん制')
)
.then(
pl.col('des_more')
)
.otherwise(
pl.col('des')
)
.alias('des')
)
.with_columns(
pl.col('des').map_elements(translate_pa_outcome, return_dtype=str)
)
.with_columns(
pl.col('bb_type').alias('hit_type').str.strip_prefix('dakyu').cast(int).alias('hit_type')
)
.with_columns(
pl.col('hit_type').map_elements(lambda hit_type: identify_bb_type(hit_type), return_dtype=str).alias('bb_type')
)
)
# translate pitch data
pitch_df = (
pitch_df
.filter(pl.col('pitch_name').is_not_null())
.with_columns(
pl.col('pitch_name').alias('jp_pitch_name')
)
.with_columns(
pl.col('jp_pitch_name').map_elements(lambda pitch_name: jp_pitch_to_en_pitch[pitch_name], return_dtype=str).alias('pitch_name'),
pl.col('jp_pitch_name').map_elements(lambda pitch_name: jp_pitch_to_pitch_code[pitch_name], return_dtype=str).alias('pitch_type'),
pl.col('description').str.split(' ').list.first().map_elements(translate_pitch_outcome, return_dtype=str),
pl.when(
pl.col('release_speed') != '-'
)
.then(
pl.col('release_speed').str.strip_suffix('km/h')
)
.otherwise(
None
)
.alias('release_speed'),
((pl.col('plate_x') + 13) - 80).alias('plate_x'),
(200 - (pl.col('plate_z') + 13) - 100).alias('plate_z'),
)
.with_columns(
pl.col('release_speed').cast(int), # idk why I can't do this during the strip_suffix step
)
)
# translate player data
player_df = pl.read_csv('player.csv')
register = (
pl.read_csv('register.csv')
.with_columns(
pl.col('en_name').str.replace(',', '').alias('en_name'),
)
.select(
pl.col('en_name'),
pl.col('jp_team').alias('team'),
pl.col('jp_name').alias('name')
)
)
player_df = player_df.join(register, on=['name', 'team'], how='inner').with_columns(pl.col('en_name').alias('name')).drop(pl.col('en_name'))
# merge pitch and pa data
df = (
(
pitch_df
.join(pa_df, on=['game_pk', 'pa_pk'], how='inner')
.join(player_df.rename({'player_id': 'pitcher'}), on='pitcher', how='inner')
)
.with_columns(
pl.col('description').is_in(['SS', 'K']).alias('whiff'),
~pl.col('description').is_in(['B', 'BB', 'LS', 'inv_K', 'bunt_K', 'HBP', 'SH', 'SH E', 'SH FC', 'obstruction', 'illegal_pitch', 'defensive_interference']).alias('swing'),
pl.col('description').is_in(['SS', 'K', 'LS', 'inv_K']).alias('csw'),
~pl.col('description').is_in(['obstruction', 'illegal_pitch', 'defensive_interference']).alias('normal_pitch') # guess
)
).sort(['game_pk', 'pa_pk', 'pitch_id'])
# add players to pa_df
# unfortunately we have pas that don't show up in the pitch data, so this would be useful for
pa_df = pa_df.join(player_df.rename({'player_id': 'pitcher'}), on='pitcher', how='inner')
pitch_stats, rhb_pitch_stats, lhb_pitch_stats = [
(
_df
.group_by(['name', 'pitch_name'])
.agg(
((pl.col('whiff').sum() / pl.col('swing').sum()) * 100).round(1).alias('Whiff%'),
((pl.col('csw').sum() / pl.col('normal_pitch').sum()) * 100).round(1).alias('CSW%'),
pl.col('release_speed').mean().round(1).alias('Velocity'),
pl.len().alias('Count')
)
.sort(['name', 'Count'], descending=[False, True])
# .rename({'name': 'Player', 'pitch_name': 'Pitch'})
)
for _df
in (
df,
df.filter(pl.col('stand') == 'R'),
df.filter(pl.col('stand') == 'L'),
)
]
league_pitch_stats, rhb_league_pitch_stats, lhb_league_pitch_stats = [
_df.group_by('pitch_name').agg(pl.col('release_speed').mean().round(1).alias('Velocity'))
for _df
in (
df,
df.filter(pl.col('stand') == 'R'),
df.filter(pl.col('stand') == 'L'),
)
]
|