python操作mysql数据中fetchone()和fetchall()⽅式fetchone()
返回单个的元组,也就是⼀条记录(row),如果没有结果则返回 None
fetchall()
返回多个元组,即返回多个记录(rows),如果没有结果则返回 ()
需要注明:在MySQL中是NULL,⽽在Python中则是None
补充知识:python之cur.fetchall与cur.fetchone提取数据并统计处理mysql下载32位
数据库中有⼀字段type_code,有中⽂类型和中⽂类型编码,现在对type_code字段的数据进⾏统计处理,编码对应的字典如下:{'ys4ng35toofdviy9ce0pn1uxw2x7trjb':'娱乐',
'vekgqjtw3ax20udsniycjv1hdsa7t4oz':'经济',
'vjzy0fobzgxkcnlbrsduhp47f8pxcoaj':'军事',
'uamwbfqlxo7bu0warx6vkhefigkhtoz3':'政治',
'lyr1hbrnmg9qzvwuzlk5fas7v628jiqx':'⽂化',
}
其中数据库的32位随机编码⽣成程序如下:
string.ascii_letters 对应字母(包括⼤⼩写), string.digits(对应数字) ,string.punctuation(对应特殊字符)
import string
import random
def get_code():
return ''.join(random.sample(string.ascii_letters + string.digits + string.punctuation, 32))
print(get_code())
def get_code1():
return ''.join(random.sample(string.ascii_letters + string.digits, 32))
testresult= get_code1()
print(testresult.lower())
print(type(testresult))
结果:
)@+t37/b|UQ[K;!spj<(>%r9"PokwTe=
igwle98kgqtcprke7byvq12xnhucmz4v
<class 'str'>
cur.fetchall:
import pymysql
import pandas as pd
conn = pymysql.Connect(host="127.0.0.1",port=3306,user="root",password="123456",charset="utf8",db="sql_prac")
cur = conn.cursor()
print("连接成功")
sql = "SELECT type_code,count(1) as num FROM test GROUP BY type_code ORDER BY num desc"
res = cur.fetchall()
print(res)
(('ys4ng35toofdviy9ce0pn1uxw2x7trjb', 8), ('vekgqjtw3ax20udsniycjv1hdsa7t4oz', 5),
('vjzy0fobzgxkcnlbrsduhp47f8pxcoaj', 3), ('uamwbfqlxo7bu0warx6vkhefigkhtoz3', 3), ('娱乐', 2), ('lyr1hbrnmg9qzvwuzlk5fas7v628jiqx', 1), ('政治', 1), ('经济', 1), ('军事', 1), ('⽂化', 1))
res = pd.DataFrame(list(res), columns=['name','value'])
print(res)
dicts = {'ys4ng35toofdviy9ce0pn1uxw2x7trjb':'娱乐',
'vekgqjtw3ax20udsniycjv1hdsa7t4oz':'经济',
'vjzy0fobzgxkcnlbrsduhp47f8pxcoaj':'军事',
'uamwbfqlxo7bu0warx6vkhefigkhtoz3':'政治',
'lyr1hbrnmg9qzvwuzlk5fas7v628jiqx':'⽂化',
}
res['name'] = res['name'].map(lambda x:dicts[x] if x in dicts else x)
print(res)
name value
0 娱乐 8
1 经济 5
2 军事 3
3 政治 3
4 娱乐 2
5 ⽂化 1
6 政治 1
7 经济 1
8 军事 1
9 ⽂化 1
#分组统计
result = upby(['name']).sum().reset_index()
print(result)
name value
0 军事 4
1 娱乐 10
2 政治 4
3 ⽂化 2
4 经济 6
#排序
result = result.sort_values(['value'], ascending=False)
name value
1 娱乐 10
4 经济 6
0 军事 4
2 政治 4
3 ⽂化 2
#输出为list,前端需要的数据格式
data_dict = _dict(orient='records')
print(data_dict)
[{'name': '娱乐', 'value': 10}, {'name': '经济', 'value': 6}, {'name': '军事', 'value': 4}, {'name': '政治', 'value': 4}, {'name': '⽂化', 'value': 2}]
cur.fetchone
先测试SQL:
代码:
import pymysql
import pandas as pd
conn = pymysql.Connect(host="127.0.0.1",port=3306,user="root",password="123456",charset="utf8",db="sql_prac")
cur = conn.cursor()
print("连接成功")
sql = "select count(case when type_code in ('ys4ng35toofdviy9ce0pn1uxw2x7trjb','娱乐') then 1 end) 娱乐," \
"count(case when type_code in ('vekgqjtw3ax20udsniycjv1hdsa7t4oz','经济') then 1 end) 经济," \
"count(case when type_code in ('vjzy0fobzgxkcnlbrsduhp47f8pxcoaj','军事') then 1 end) 军事," \
"count(case when type_code in ('uamwbfqlxo7bu0warx6vkhefigkhtoz3' ,'政治') then 1 end) 政治," \
"count(case when type_code in ('lyr1hbrnmg9qzvwuzlk5fas7v628jiqx','⽂化') then 1 end) ⽂化 from test"
res = cur.fetchone()
print(res)
返回结果为元组:
(10, 6, 4, 4, 2)
data = [
{"name": "娱乐", "value": res[0]},
{"name": "经济", "value": res[1]},
{"name": "军事", "value": res[2]},
{"name": "政治", "value": res[3]},
{"name": "⽂化", "value": res[4]}
]
result = sorted(data, key=lambda x: x['value'], reverse=True)
print(result)
结果和 cur.fetchall返回的结果经过处理后,结果是⼀样的:
[{'name': '娱乐', 'value': 10}, {'name': '经济', 'value': 6}, {'name': '军事', 'value': 4}, {'name': '政治', 'value': 4}, {'name': '⽂化', 'value': 2}]
以上这篇python 操作mysql数据中fetchone()和fetchall()⽅式就是⼩编分享给⼤家的全部内容了,希望能给⼤家⼀个参考,也希望⼤家多多⽀持。
版权声明:本站内容均来自互联网,仅供演示用,请勿用于商业和其他非法用途。如果侵犯了您的权益请与我们联系QQ:729038198,我们将在24小时内删除。
发表评论