cx = [1, 3, 5, 7, 2, 1, 8]
def less_than_5(array):
y = []
for i in array:
if i < 5:
y.append(i)
return y
print(less_than_5(x))
#第2題
factory1 = {"條件1" : 30, "條件2" : 10, "溫度容許值" : 20}
factory2 = {"條件1" : 48763, "條件3" : 75, "溫度容許值" : 60}
def dict_merge_with_bigger(Dict1, Dict2):
ND = Dict1
for key in Dict2:
if ND.get(key):
if Dict2[key] > ND[key]:
ND[key]=Dict2[key]
else:
ND[key]=Dict2[key]
return ND
print(dict_merge_with_bigger(factory1, factory2))
#第3題
#對python物件不熟(待補)
#第4題
def min_max(array):
min_arr = np.array([])
max_arr = np.array([])
for i in array.transpose():
min_arr = np.append(min_arr,min(i))
max_arr = np.append(max_arr,max(i))
return (arr - min_arr) / (max_arr - min_arr)
import numpy as np
arr = np.array(
[[1,3,5],
[4,5,6],
[7,8,9]]
)
min_max(arr)
#第5題
def grouped_mean(df, column_name, threshold):
dict1 = dict(df[df[column_name]<threshold].mean())
dict2 = dict(df[df[column_name]>=threshold].mean())
return (dict1,dict2)
import pandas as pd
data = {"height":[150,170,167,158,160],
"weight":[38,80,59,60,50],
"salary":[41, 15, 30, 15, 25]}
df = pd.DataFrame(data)
grouped_mean(df, "weight", 60)
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