我正在为创建运输通道的项目优化代码。我目前拥有的是由c_match的索引值组合在一起的数据帧。酷,乍看之下一切都看起来正确。
一条运输路线是一组具有相同折扣和最低收费的州。我的代码返回具有相同折扣的州。具有相同折扣的大多数州也具有相同的最低收费。但是,离群值是具有相同折扣和不同最低费用的州。
目标:创建具有相同最低费用和相同折扣百分比的运输通道。
我的想法:创建一个逻辑运算,以合并具有相同费率和成本的州名称,并返回其费率和成本。费用相同,费率相同的州仍然需要考虑。
所需的输出:
Shipping Lane Rate Cost
20_21_RDWY_Purple_AL_AR_KY_LA_MS_SC_TN_PE 50.80% 120
20_21_RDWY_Purple_AZ 50.80% 155
20_21_RDWY_Purple_CA 62.40% 145
20_21_RDWY_Purple_CO_ND_WY_MB_NF_PQ 62.40% 155
20_21_RDWY_Purple_CT_DE_MN_NE 50.00% 145
20_21_RDWY_Purple_DC_IA_KS_MD_MI_OH_OK_WI 49.00% 125
20_21_RDWY_Purple_FL 48.30% 125
当前代码:
def remove_dups(input, output):
input.sort()
n_list = list(input for input, _ in itertools.groupby(input))
output.append(n_list)
def get_matches_discount(state):
state_groups = []
state_rates = []
state_cost = []
final_format = []
match = []
c_match = []
for i, x in enumerate(df_d[state]):
#checks within the column for identical values then maps where the identical values are
match1 = [j for j, y in enumerate(df_d[state].isin([x])) if y is True]
match.append(match1)
remove_dups(match, c_match)
for list in c_match:
for elements in list:
r = elements[0]
state_g = df_d.index[elements]
state_groups.append(state_g)
state_r = df_d[state][r]
state_rates.append(state_r)
print(state_rates)
match_cost = df_m[state][r]
state_cost.append(match_cost)
for i in state_groups:
delimiter = "_"
join_str = delimiter.join(i)
j_str = "20_21_RDWY_Purple_" + join_str
final_format.append(j_str)
master_frame = pd.DataFrame(
{'Shipping Lane': final_format,
'Rate': state_rates,
'Cost': state_cost,
}
)
print(master_frame)
return master_frame
m_col_names = ['AL', 'AR', 'AZ', 'CA', 'CO', 'CT', 'DC', 'DE', 'FL', 'GA', 'IA', 'ID', 'IL', 'IN', 'KS', 'KY', 'LA',
'MA', 'MD', 'ME', 'MI', 'MN', 'MO', 'MS', 'MT', 'NC', 'ND', 'NE', 'NH', 'NJ', 'NM', 'NV', 'NY', 'OH',
'OK', 'OR', 'PA', 'RI', 'SC', 'SD', 'TN', 'TX', 'UT', 'VA', 'VT', 'WA', 'WI', 'WV', 'WY', 'AB', 'BC',
'MB', 'NB', 'NF', 'NS', 'ON', 'PE', 'PQ', 'SK']
# calls the function in a loop to process one column at a time
# creates the master data frame outside of the function calling for loop
master_dataframe0 = pd.DataFrame()
for state in m_col_names:
temp_df = get_matches_discount(state)
# Stores the function call as a variable
master_dataframe0 = master_dataframe0.append(temp_df)
# Creates an appended dataframe outside of the function
print(master_dataframe0)
master_dataframe0.to_excel("shipping_lanes_revised00.xlsx")
样本输入:
最低费用表
这是数据帧:df_m
State AL AR AZ CA CO CT DC
AL 120.00 120.00 155.00 145.00 155.00 145.00 125.00
AR 120.00 120.00 155.00 155.00 145.00 155.00 145.00
AZ 155.00 155.00 120.00 120.00 125.00 185.00 185.00
CA 145.00 164.30 120.00 120.00 170.00 185.00 185.00
CO 155.00 145.00 125.00 145.00 120.00 155.00 155.00
CT 145.00 155.00 185.00 185.00 155.00 120.00 120.00
DC 125.00 155.00 185.00 185.00 155.00 120.00 185.00
DE 145.00 155.00 185.00 185.00 155.00 120.00 120.00
FL 125.00 145.00 145.00 185.00 145.00 155.00 145.00
GA 120.00 120.00 155.00 145.00 155.00 145.00 120.00
IA 125.00 125.00 155.00 145.00 125.00 155.00 145.00
ID 145.00 155.00 145.00 145.00 125.00 185.00 185.00
IL 120.00 120.00 155.00 145.00 145.00 125.00 125.00
IN 120.00 120.00 155.00 145.00 145.00 125.00 120.00
KS 125.00 120.00 155.00 155.00 120.00 155.00 145.00
KY 120.00 120.00 155.00 145.00 145.00 125.00 125.00
LA 120.00 120.00 155.00 145.00 155.00 155.00 155.00
MA 155.00 155.00 185.00 185.00 145.00 120.00 120.00
MD 125.00 145.00 185.00 185.00 155.00 120.00 120.00
ME 155.00 155.00 185.00 185.00 145.00 120.00 125.00
MI 125.00 125.00 145.00 145.00 155.00 125.00 120.00
MN 145.00 125.00 155.00 145.00 145.00 155.00 145.00
MO 120.00 120.00 155.00 155.00 125.00 145.00 145.00
MS 120.00 120.00 155.00 155.00 145.00 155.00 145.00
MT 145.00 155.00 155.00 155.00 125.00 185.00 185.00
NC 120.00 125.00 145.00 185.00 155.00 125.00 120.00
ND 155.00 155.00 145.00 145.00 155.00 155.00 155.00
NE 145.00 125.00 155.00 155.00 120.00 155.00 155.00
NH 155.00 155.00 185.00 185.00 145.00 120.00 120.00
NJ 145.00 155.00 185.00 185.00 155.00 120.00 120.00
NM 155.00 125.00 120.00 145.00 120.00 145.00 145.00
NV 145.00 155.00 120.00 120.00 145.00 185.00 185.00
NY 145.00 145.00 185.00 185.00 155.00 120.00 120.00
OH 125.00 125.00 145.00 145.00 155.00 120.00 120.00
OK 125.00 120.00 145.00 155.00 120.00 155.00 155.00
OR 185.00 145.00 155.00 125.00 155.00 185.00 185.00
PA 145.00 145.00 185.00 185.00 155.00 120.00 120.00
RI 155.00 155.00 185.00 185.00 145.00 120.00 120.00
SC 120.00 120.00 145.00 185.00 155.00 125.00 120.00
SD 155.00 145.00 155.00 155.00 120.00 155.00 145.00
TN 120.00 120.00 155.00 145.00 155.00 145.00 125.00
TX 125.00 120.00 145.00 155.00 125.00 145.00 155.00
UT 170.00 164.30 132.50 132.50 127.20 145.00 145.00
VA 120.00 145.00 145.00 185.00 155.00 120.00 120.00
折扣表
这是数据帧:df_d
State AL AR AZ CA CO CT DC
AL 50.80% 44.10% 54.30% 73.10% 53.90% 50.00% 49.00%
AR 50.80% 50.80% 53.90% 65.70% 50.00% 53.90% 50.00%
AZ 56.70% 55.80% 50.80% 54.10% 49.60% 59.50% 64.40%
CA 62.40% 61.00% 54.30% 61.40% 43.00% 52.30% 54.30%
CO 54.30% 67.10% 49.00% 65.70% 50.80% 54.30% 54.30%
CT 50.00% 53.90% 64.40% 72.50% 54.30% 50.80% 50.80%
DC 49.00% 53.90% 64.40% 64.40% 54.30% 50.80% 64.40%
DE 50.00% 53.90% 64.40% 64.40% 54.30% 50.80% 50.80%
FL 48.30% 35.00% 55.50% 55.50% 55.10% 66.40% 62.30%
GA 67.90% 44.10% 71.00% 64.60% 56.00% 50.00% 44.10%
IA 49.00% 49.00% 54.30% 61.80% 49.00% 53.90% 50.00%
ID 61.80% 54.30% 50.00% 75.90% 49.00% 64.40% 64.40%
IL 44.10% 44.10% 54.30% 64.00% 50.00% 49.00% 49.00%
IN 44.10% 1.60% 11.70% 26.10% -0.70% 49.00% 44.10%
KS 49.00% 63.40% 61.00% 67.70% 72.50% 72.20% 50.00%
KY 50.80% 44.10% 54.30% 61.50% 50.00% 49.00% 49.00%
LA 50.80% 44.10% 54.30% 61.80% 53.90% 54.30% 53.90%
MA 63.50% 53.90% 67.70% 63.90% 53.00% 63.50% 44.10%
MD 49.00% 50.00% 64.40% 73.80% 54.30% 50.80% 50.80%
ME 53.90% 54.30% 64.40% 64.40% 61.80% 50.80% 49.00%
MI 49.00% 49.00% 61.80% 55.10% 53.90% 49.00% 44.10%
MN 50.00% 49.00% 54.30% 61.80% 50.00% 53.90% 50.00%
MO 44.10% 50.80% 53.90% 56.10% 49.00% 50.00% 50.00%
MS 50.80% 50.80% 54.30% 63.90% 50.00% 53.90% 50.00%
MT 61.80% 54.30% 53.90% 75.80% 49.00% 64.40% 64.40%
NC 44.10% 59.20% 53.50% 58.60% 57.90% 42.90% 69.60%
ND 54.30% 53.90% 61.80% 61.80% 54.30% 53.90% 53.90%
NE 50.00% 49.00% 54.30% 54.30% 44.10% 53.90% 53.90%
NH 53.90% 54.30% 64.40% 64.40% 61.80% 50.80% 44.10%
NJ 50.50% 51.50% 70.50% 66.20% 59.70% 67.10% 50.80%
NM 53.90% 49.00% 44.10% 68.20% 44.10% 61.80% 61.80%
NV 61.80% 54.30% 52.70% 73.50% 50.00% 64.40% 64.40%
NY 61.10% 69.00% 65.50% 68.90% 63.00% 68.40% 50.80%
OH 49.00% 49.00% 68.50% 71.50% 72.30% 60.70% 44.10%
OK 49.00% 50.80% 50.00% 54.30% 44.10% 54.30% 54.30%
OR 64.40% 61.80% 53.90% 64.00% 53.90% 64.40% 64.40%
PA 47.20% 57.00% 33.70% 51.90% 45.50% 50.80% 50.80%
RI 53.90% 54.30% 64.40% 64.40% 61.80% 50.80% 44.10%
SC 50.80% 44.10% 61.80% 58.70% 54.30% 49.00% 44.10%
SD 53.90% 50.00% 54.30% 54.30% 44.10% 54.30% 61.80%
TN 50.80% 50.80% 52.50% 62.60% 61.30% 53.30% 49.00%
TX 56.60% 46.00% 51.40% 58.30% 53.20% 63.10% 65.10%
UT 45.00% 60.60% 73.50% 73.50% 70.30% 44.40% 61.90%
VA 57.90% 50.00% 61.80% 72.10% 54.30% 44.10% 50.80%
当前输出:
Shipping Lane Rate Cost
0 20_21_RDWY_Purple_AL_AR_KY_LA_MS_SC_TN_PE 50.80% 120.0
1 20_21_RDWY_Purple_AZ 56.70% 155.0
2 20_21_RDWY_Purple_CA 62.40% 145.0
3 20_21_RDWY_Purple_CO_ND_WY_MB_NF_PQ 54.30% 155.0
4 20_21_RDWY_Purple_CT_DE_MN_NE 50.00% 145.0
5 20_21_RDWY_Purple_DC_IA_KS_MD_MI_OH_OK_WI 49.00% 125.0
6 20_21_RDWY_Purple_FL 48.30% 125.0
7 20_21_RDWY_Purple_GA 67.90% 120.0
8 20_21_RDWY_Purple_ID_MT_NV_AB_SK 61.80% 145.0
9 20_21_RDWY_Purple_IL_IN_MO_NC_WV 44.10% 120.0
10 20_21_RDWY_Purple_MA 63.50% 155.0
11 20_21_RDWY_Purple_ME_NH_NM_RI_SD_VT_NB_NS 53.90% 155.0
12 20_21_RDWY_Purple_NJ 50.50% 145.0
13 20_21_RDWY_Purple_NY 61.10% 145.0
14 20_21_RDWY_Purple_OR_WA_BC 64.40% 185.0
15 20_21_RDWY_Purple_PA 47.20% 145.0
16 20_21_RDWY_Purple_TX 56.60% 125.0
17 20_21_RDWY_Purple_UT 45.00% 170.0
18 20_21_RDWY_Purple_VA 57.90% 120.0
19 20_21_RDWY_Purple_ON 37.30% 145.0
0 20_21_RDWY_Purple_AL_GA_IL_KY_LA_SC 44.10% 120.0
1 20_21_RDWY_Purple_AR_MO_MS_OK_TN_NB_NF_NS_PE 50.80% 120.0
2 20_21_RDWY_Purple_AZ 55.80% 155.0
3 20_21_RDWY_Purple_CA 61.00% 164.3
4 20_21_RDWY_Purple_CO 67.10% 145.0
5 20_21_RDWY_Purple_CT_DC_DE_MA_ND_MB 53.90% 155.0
6 20_21_RDWY_Purple_FL 35.00% 145.0
7 20_21_RDWY_Purple_IA_MI_MN_NE_NM_OH_WI_WV 49.00% 125.0
8 20_21_RDWY_Purple_ID_ME_MT_NH_NV_RI_VT_PQ_SK 54.30% 155.0
9 20_21_RDWY_Purple_IN 1.60% 120.0
10 20_21_RDWY_Purple_KS 63.40% 120.0
11 20_21_RDWY_Purple_MD_SD_VA_WY 50.00% 145.0
12 20_21_RDWY_Purple_NC 59.20% 125.0
13 20_21_RDWY_Purple_NJ 51.50% 155.0
14 20_21_RDWY_Purple_NY 69.00% 145.0
15 20_21_RDWY_Purple_OR_WA_AB 61.80% 145.0
16 20_21_RDWY_Purple_PA 57.00% 145.0
17 20_21_RDWY_Purple_TX 46.00% 120.0
18 20_21_RDWY_Purple_UT 60.60% 164.3
19 20_21_RDWY_Purple_BC 64.40% 185.0
20 20_21_RDWY_Purple_ON 32.10% 145.0
0 20_21_RDWY_Purple_AL_CA_IA_IL_KY_LA_MN_MS_NE_SD_WA_AB_BC 54.30% 155.0
1 20_21_RDWY_Purple_AR_MO_MT_OR 53.90% 155.0
2 20_21_RDWY_Purple_AZ_NB_NF_NS_PE 50.80% 120.0
3 20_21_RDWY_Purple_CO 49.00% 125.0
4 20_21_RDWY_Purple_CT_DC_DE_MD_ME_NH_RI_VT_ON_PQ_SK 64.40% 185.0
5 20_21_RDWY_Purple_FL 55.50% 145.0
6 20_21_RDWY_Purple_GA 71.00% 155.0
7 20_21_RDWY_Purple_ID_OK_WY 50.00% 145.0
8 20_21_RDWY_Purple_IN 11.70% 155.0
9 20_21_RDWY_Purple_KS 61.00% 155.0
10 20_21_RDWY_Purple_MA 67.70% 185.0
11 20_21_RDWY_Purple_MI_ND_SC_VA_WV_MB 61.80% 145.0
12 20_21_RDWY_Purple_NC 53.50% 145.0
13 20_21_RDWY_Purple_NJ 70.50% 185.0
14 20_21_RDWY_Purple_NM 44.10% 120.0
15 20_21_RDWY_Purple_NV 52.70% 120.0
16 20_21_RDWY_Purple_NY 65.50% 185.0
17 20_21_RDWY_Purple_OH 68.50% 145.0
18 20_21_RDWY_Purple_PA 33.70% 185.0
19 20_21_RDWY_Purple_TN 52.50% 155.0
20 20_21_RDWY_Purple_TX 51.40% 145.0
答案 0 :(得分:2)
您有多个状态行,但它们也位于列中。看来您只是在显示AL
列的示例输出?您可以在State
上合并两个数据帧,然后在.groupby
Rate
和Cost
上合并。然后,返回具有相同费率和成本的状态的连接字符串(带有.apply(lambda x: '_'.join(x))
)(由于您按状态分组,它们将具有相同的费率和成本):
master_dataframe0 = (pd.merge(df_d[['State', 'AL']], df_m[['State', 'AL']], how='inner', on='State')
.rename({'AL_x' : 'Rate', 'AL_y' : 'Cost'}, axis=1)
.groupby(['Rate', 'Cost'])['State'].apply(lambda x: '_'.join(x)).reset_index()
.sort_values('State'))
master_dataframe0 = master_dataframe0[['State', 'Rate', 'Cost']].assign(State='20_21_RDWY_Purple_' + master_dataframe0['State'])
master_dataframe0
Out[1]:
State Rate Cost
7 20_21_RDWY_Purple_AL_AR_KY_LA_MS_SC_TN 50.80% 120.0
11 20_21_RDWY_Purple_AZ 56.70% 155.0
15 20_21_RDWY_Purple_CA 62.40% 145.0
9 20_21_RDWY_Purple_CO_ND 54.30% 155.0
5 20_21_RDWY_Purple_CT_DE_MN_NE 50.00% 145.0
4 20_21_RDWY_Purple_DC_IA_KS_MD_MI_OH_OK 49.00% 125.0
3 20_21_RDWY_Purple_FL 48.30% 125.0
18 20_21_RDWY_Purple_GA 67.90% 120.0
14 20_21_RDWY_Purple_ID_MT_NV 61.80% 145.0
0 20_21_RDWY_Purple_IL_IN_MO_NC 44.10% 120.0
16 20_21_RDWY_Purple_MA 63.50% 155.0
8 20_21_RDWY_Purple_ME_NH_NM_RI_SD 53.90% 155.0
6 20_21_RDWY_Purple_NJ 50.50% 145.0
13 20_21_RDWY_Purple_NY 61.10% 145.0
17 20_21_RDWY_Purple_OR 64.40% 185.0
2 20_21_RDWY_Purple_PA 47.20% 145.0
10 20_21_RDWY_Purple_TX 56.60% 125.0
1 20_21_RDWY_Purple_UT 45.00% 170.0
12 20_21_RDWY_Purple_VA 57.90% 120.0
答案 1 :(得分:1)
借助Erickson的.groupby
和lambda函数,我们得出了正确的解决方案:
pd.set_option('display.max_rows', None)
pd.set_option('display.max_columns', None)
pd.set_option('display.width', None)
pd.set_option('display.max_colwidth', None)
df_d = pd.read_excel(path,
sheet_name=0,
header=0,
index_col=False,
keep_default_na=True)
df_m = pd.read_excel(path2,
sheet_name=0,
header=0,
index_col=False,
keep_default_na=True)
m_col_names = ['AL', 'AR', 'AZ', 'CA', 'CO', 'CT', 'DC', 'DE', 'FL', 'GA', 'IA', 'ID', 'IL', 'IN', 'KS', 'KY', 'LA',
'MA', 'MD', 'ME', 'MI', 'MN', 'MO', 'MS', 'MT', 'NC', 'ND', 'NE', 'NH', 'NJ', 'NM', 'NV', 'NY', 'OH',
'OK', 'OR', 'PA', 'RI', 'SC', 'SD', 'TN', 'TX', 'UT', 'VA', 'VT', 'WA', 'WI', 'WV', 'WY', 'AB', 'BC',
'MB', 'NB', 'NF', 'NS', 'ON', 'PE', 'PQ', 'SK']
final_frame = pd.DataFrame()
for state in m_col_names:
master_dataframe0 = (pd.merge(df_d[['State', state]], df_m[['State', state]], how='inner', on='State')
.rename({state + '_x': 'Rate', state + '_y': 'Cost'}, axis=1)
.groupby(['Rate', 'Cost'])['State'].apply(lambda x: '_'.join(x)).reset_index()
.sort_values('State'))
master_dataframe0['Origin'] = state
master_dataframe0 = master_dataframe0[['State', 'Rate', 'Cost', 'Origin']].assign(
State='20_21_RDWY_Purple_' + master_dataframe0['State'])
final_frame = final_frame.append(master_dataframe0)
print(final_frame)
final_frame.to_excel("w3llshipmeright.xlsx")
正确的输出: