コード例 #1
0
for idx, pair in enumerate(sorted_exp_wins):

    # edge case for ties; check that current expected wins not same (when rounded) as previous
    curr_ew = (idx + 1, pair[1])
    curr_aw = owners_wins[pair[0]]

    if round(curr_ew[1], 4) == round(prev_ew[1], 4):
        print('{0: >4} | {1: >19} | {2: >13.3f} | {3: >11} | {4: >+6.3f}'.format(prev_ew[0], pair[0], prev_ew[1], curr_aw, curr_aw - prev_ew[1]))

    else:
        print('{0: >4} | {1: >19} | {2: >13.3f} | {3: >11} | {4: >+6.3f}'.format(idx + 1, pair[0], pair[1], curr_aw, curr_aw - pair[1]))
        prev_ew = curr_ew

print('\nESPN Power Rankings:')
for row in league_obj.power_rankings(week_num):
    print('{0: >19} | {1: >5}'.format(row[1].owner, row[0]))


# update expected wins dictionary
for pair in sorted_scores:
    expected_wins[pair[0]] = '{0:.6f}'.format(pair[1])  # round to 6 decimal places

# values are now updated, need to save to a new file for this week

# determine proper filename
if new_wk_num < 10:
    new_file = latest_rankings[0:-6] + '0' + str(new_wk_num) + '.csv'
else:
    new_file = latest_rankings[0:-6] + str(new_wk_num) + '.csv'
コード例 #2
0
# -*- coding: utf-8 -*-

from espnff import League
import datetime
import numpy as np
from flask import Flask, render_template
app = Flask(__name__)

# Logic for web app. Look into breaking this into modules later.
league_id = 646859
year = 2017
league = League(league_id,year)
team1 = league.teams[0]
powerRankings= league.power_rankings(week=2)
topTeamRank = str(powerRankings[0:][1])
topTeamRank = topTeamRank[5:-1]

points= []
teams = []

pRanks = np.asarray(powerRankings, str)

# Custom date time filter
@app.template_filter()
def datetimefilter(value, format='%Y/%m/%d %H:%M'):
    """convert a datetime to a different format"""
    return value.strftime(format)
app.jinja_env.filters['datetimefilter'] = datetimefilter

@app.route("/")
def template_test():
コード例 #3
0
ファイル: graphs.py プロジェクト: bwilgus/espnff
def power_graphs(league_id=None,
                 year=None,
                 espn_s2=None,
                 swid=None,
                 latestWeek=17):
    if league_id == None:
        raise Exception('Must enter league ID...Exiting')
    elif year == None:
        raise Exception('Must enter league year...Exiting')

    league = League(league_id, year, espn_s2, swid)

    wks = []
    twks = []
    trks = []

    def find_index(df, column, find_term):
        df = df[column][df.index[df[column] == find_term]]
        return (df.index[0])

    for i in range(0, latestWeek):
        w = i + 1
        wk = league.power_rankings(week=w)
        wk = pd.DataFrame(wk, columns=['Score', 'Team'])
        wks.append(wk)

    wk = wks
    wks = []

    for i in range(len(wk)):
        t = []
        s = []
        for x in range(len(wk[i])):
            tb = str(wk[i]['Team'][x])
            tb = str(tb)[5:(len(tb) - 1)]
            t.append(tb)
            s.append(float(wk[i]['Score'][x]))
        ts = pd.DataFrame({'Team': t, 'Score': s})
        wks.append(ts)

    for i in range(len(wks)):
        wks[i].sort_values('Team', inplace=True)
        wks[i].reset_index(drop=True, inplace=True)

    wksTeam = []

    for i in range(len(wks)):
        place = [i + 1]
        place.extend(list(wks[i]['Score']))
        wksTeam.append(place)

    c = ['Week']
    c.extend(sorted(t))

    ##Change this to fit your league's team names
    color_dict = {
        'Team1': '#00e9ff',
        'Team2': '#0083ff',
        "Team3": '#2e00ff',
        'Team4': '#981E32',
        'Team5': '#521f6d',
        'Team6': '#d8ff00',
        "Team7": '#002C5F',
        'Team8': '#ffa100',
        'Team9': '#6d571f',
        'Team10': '#ff0000',
        'Team11': '#46b230',
        'Team12': '#00ff11'
    }

    for i in range(len(sorted(t))):
        color_dict[t[i]] = color_dict['Team' + str(i + 1)]

    tpd = pd.DataFrame(data=wksTeam, columns=c)
    tpd.to_csv('wk' + str(len(wksTeam)) + ' power scores.csv', index=False)
    tpd = pd.read_csv('wk' + str(len(wksTeam)) + ' power scores.csv',
                      index_col='Week')

    for i in range(len(wks)):
        test = wks[i].sort_values('Score', ascending=False)
        twks.append(test.reset_index(drop=True))

    for x in range(len(twks)):
        place = [x + 1]
        for i in range(len(sorted(t))):
            place.append(find_index(twks[x], 'Team', sorted(t)[i]) + 1)
        trks.append(place)

    ranks = pd.DataFrame(data=trks, columns=c)
    ranks.to_csv('wk' + str(len(wksTeam)) + ' power rankings.csv', index=False)
    ranks = pd.read_csv('wk' + str(len(wksTeam)) + ' power rankings.csv',
                        index_col='Week')

    lines = tpd.plot.line(
        title='Power Rankings',
        table=True,
        use_index=False,
        color=[color_dict.get(x, '#333333') for x in ranks.columns])
    plt.axes().get_xaxis().set_visible(False)
    plt.legend(bbox_to_anchor=(1.25, 1), loc='upper right', borderaxespad=0.)
    plt.plot(marker='o')

    plt.subplots_adjust(0.13, 0.36, 0.81, 0.96, 0.2, 0.2)

    lines = ranks.plot.line(
        title='Power Score',
        table=True,
        use_index=False,
        color=[color_dict.get(x, '#333333')
               for x in ranks.columns]).invert_yaxis()
    plt.axes().get_xaxis().set_visible(False)
    plt.legend(bbox_to_anchor=(1.25, 1), loc='upper right', borderaxespad=0.)
    plt.plot(marker='o')

    plt.subplots_adjust(0.13, 0.36, 0.81, 0.96, 0.2, 0.2)

    plt.show()