- android - 多次调用 OnPrimaryClipChangedListener
- android - 无法更新 RecyclerView 中的 TextView 字段
- android.database.CursorIndexOutOfBoundsException : Index 0 requested, 光标大小为 0
- android - 使用 AppCompat 时,我们是否需要明确指定其 UI 组件(Spinner、EditText)颜色
我对 Python 和 Pandas 很陌生,在一列中有一些 URL 路径,我想将它拆分成单独的列。
字符串的每个参数用分号分隔。
我知道还有很多关于如何通过分隔符将数据拆分为多列的其他答案,但是在我的示例中,我想动态创建列并从参数本身中提取每列中的值。
< br/>每个参数应该放在的列在参数本身内,数据在等号之后。我想把等号后面的数据放到等号前面的列中。
例如:
cat=be_thnky;u1=men
cat=be_thnky;u1=custom
应该变成
cat u1
be_thnky men
be_thnky custom
为了增加复杂性,并非所有参数都存在于每个 URL 中,如果参数不存在,我希望该列包含 NaN。
我正在使用的一些示例 URL 路径字符串是:
;src=4457426;type=be_salec;cat=be_thnky;qty=1;cost=60.00;ord=50608803;gtm=G64;gcldc=*;gclaw=*;gac=UA-32723457-1:*;u1=men;u2=schoenen;u3=none;u5=VA38G1NRI;u6=80;u7=0;u8=1;u9=EUR;u10=be;u11=Suede Old Skool Shoes;u12=checkout;u13=8;u14=VNIWTYI926IW7;u15=https://www.vans.be/webapp/wcs/stores/servlet/OrderOKView?langId=-27&catalogId=11260&storeId=10167&krypto=%2B03C782RqELOiuY1L2ELV7hFeTRMquZ9Eyr1lJqmoSQhClENiUJ6feRNwwAA1ZYd4V7tkAuIwyiIrClp7QaqfLeC%2B%2FPTLl7wSF%2FCyrVWqgiSJRgAS%2BWbXohu0DG8xsdPnSXp%2F%2F4MDb%2FkbPwh%2FT5EpiEWMkGur%2Fx%2FABR7Cvs4jh345776IITNx%2FTRZZXu4zeAco5P%2FvxyqDbmwvLKpPKljf3TpU0wOCmjCDWR5r3uR3ELErPFboWuV5H24FOIy7e%2B2b6m4YhCCDuzceKa5Qllkiwc4YI6AL9rIK1T2jExde343vk%2B4FZtK6XgOMtxbwv6pBIUMX%2Bn3kbb7soGQ%2FjnEwxzxMX5P%2FdMZzts6NkskMSICB955QKsZqPLepiS%2BWY5u5%2Bs9CPjquK%2FlsXmHTi26wq1cLqeiPdyolnE2AxaswLDhQcQbvDengszkSu8U8lTDhqaAxLExYF%2BMstZtKamD14AnMElNAbjZNcTEByzYlXOi1q2FpYg0kCyoaBBBtkRInSDBZtjxNWgd9bl98qs5R2ZqCiHmtOPrfcM53V77Acxcb5wl%2FkpdKEbTGuAijHpHgxpi55kIEcEmkJjvPnW7RwxUXPiVZbFjh34PlGJ10FaGvqPwsijBpR1TXrKWV3t3Z4r03yViU6txghbNtODiQ%3D%3D&ddkey=https%3AVFCWorldpayPunchoutCallbackCmd;~oref=https://www.vans.be/webapp/wcs/stores/servlet/OrderOKView?langId=-27&catalogId=11260&storeId=10167&krypto=%2B03C782RqELOiuY1L2ELV7hFeTRMquZ9Eyr1lJqmoSQhClENiUJ6feRNwwAA1ZYd4V7tkAuIwyiIrClp7QaqfLeC%2B%2FPTLl7wSF%2FCyrVWqgiSJRgAS%2BWbXohu0DG8xsdPnSXp%2F%2F4MDb%2FkbPwh%2FT5EpiEWMkGur%2Fx%2FABR7Cvs4jh345776IITNx%2FTRZZXu4zeAco5P%2FvxyqDbmwvLKpPKljf3TpU0wOCmjCDWR5r3uR3ELErPFboWuV5H24FOIy7e%2B2b6m4YhCCDuzceKa5Qllkiwc4YI6AL9rIK1T2jExde343vk%2B4FZtK6XgOMtxbwv6pBIUMX%2Bn3kbb7soGQ%2FjnEwxzxMX5P%2FdMZzts6NkskMSICB955QKsZqPLepiS%2BWY5u5%2Bs9CPjquK%2FlsXmHTi26wq1cLqeiPdyolnE2AxaswLDhQcQbvDengszkSu8U8lTDhqaAxLExYF%2BMstZtKamD14AnMElNAbjZNcTEByzYlXOi1q2FpYg0kCyoaBBBtkRInSDBZtjxNWgd9bl98qs5R2ZqCiHmtOPrfcM53V77Acxcb5wl%2FkpdKEbTGuAijHpHgxpi55kIEcEmkJjvPnW7RwxUXPiVZbFjh34PlGJ10FaGvqPwsijBpR1TXrKWV3t3Z4r03yViU6txghbNtODiQ%3D%3D&ddkey=https%3AVFCWorldpayPunchoutCallbackCmd
和
;src=4457426;type=be_salec;cat=be_thnky;qty=1;cost=79.17;ord=50619855;gtm=G64;gac=UA-32723457-1:*;u1=custom;u2=undefined;u3=none;u5=AQNNOQ;u6=95;u7=0;u8=1;u9=EUR;u10=be;u11=Men Era Shoes;u12=checkout;u13=;u14=;u15=https://www.vans.be/webapp/wcs/stores/servlet/OrderOKView?langId=-27&catalogId=11260&storeId=10167&krypto=aaHqAAtJa9bzV4lSFEuMWqdyG11jxs2yT0UY242hWRQyCn%2Ff7AHBrF%2ByFm6GF%2BZiumn%2B6cjIaHASWHpiwsBKSa5k5fMJoyz3ex%2B8FTyDOp3WwLgA9U3ibS6gLNMEl68UQ8K7bVk%2FP1%2BC2ckY17vriakRKvUpobXypW0AvXHgHGmaleDoIOlM6dVIX1pSHBPbeKDG4JVoXbUOltTgLUcnYbojIiIGx6m%2FYlHnYjWU%2BaYQpCK%2BRBeFd%2FKyekIN9y9wQlZHHKb7pFar8c3S24tuHj%2FeDGe1jwJ0S7%2BBnUb5WloJ1SSf0LjDyFSZAWBSzhidLIRM2OWyTXJeCBdBFNSw%2BwICm6uWHKPClJD%2FRIzO4D%2F3HQyS4sOeynLgyIR6JHsCv3FH%2B%2BrINsPE0Y3eI51mpm7UEmmcLmNKiONm11LwTD1U%2FZKgnLe50naDdiYj9%2BCt7TUkNuDiOYq1jaC2yOSKcz%2BGdF2i4bgEttXJlK84ZUeCUhfvGbQNebesaoRLrGgU7FkuOhut3LQm7Lqu5lpKYSt5cV8gkGP5%2Fm%2BOa%2FzKbRNmbcwACXuZ1hBJW0alkcX%2F3hfpPiSg9UrT1uZKRwfQUpx6fHzagiSWtcWXJDYO2SfWtlfoS%2B7W%2FIvIoD1FtMbCeVC6oAvltLOnIojrW3VYh1OrFUIlXcl0XMXzCPfRz%2B2v28tFOmsucTRbixJ9WyW3WqN2h3YMHZJQoSFbpUDSN7VQkFJmC1NgHzX09u7X1AUIcwP1TmLqO034RnK6ZSfmS38NuYhWCAmPUIyopyEmxqE3M%2FzqEWjId6S1DTmaJSzo09Rx2UtLnZXMOLKXifzoN8eQy3yQvFeNsKxh3IkJxb6uifVXDBpyelQibch9gDg%3D&ddkey=https%3AVFCWorldpayPunchoutCallbackCmd;~oref=https://www.vans.be/webapp/wcs/stores/servlet/OrderOKView?langId=-27&catalogId=11260&storeId=10167&krypto=aaHqAAtJa9bzV4lSFEuMWqdyG11jxs2yT0UY242hWRQyCn%2Ff7AHBrF%2ByFm6GF%2BZiumn%2B6cjIaHASWHpiwsBKSa5k5fMJoyz3ex%2B8FTyDOp3WwLgA9U3ibS6gLNMEl68UQ8K7bVk%2FP1%2BC2ckY17vriakRKvUpobXypW0AvXHgHGmaleDoIOlM6dVIX1pSHBPbeKDG4JVoXbUOltTgLUcnYbojIiIGx6m%2FYlHnYjWU%2BaYQpCK%2BRBeFd%2FKyekIN9y9wQlZHHKb7pFar8c3S24tuHj%2FeDGe1jwJ0S7%2BBnUb5WloJ1SSf0LjDyFSZAWBSzhidLIRM2OWyTXJeCBdBFNSw%2BwICm6uWHKPClJD%2FRIzO4D%2F3HQyS4sOeynLgyIR6JHsCv3FH%2B%2BrINsPE0Y3eI51mpm7UEmmcLmNKiONm11LwTD1U%2FZKgnLe50naDdiYj9%2BCt7TUkNuDiOYq1jaC2yOSKcz%2BGdF2i4bgEttXJlK84ZUeCUhfvGbQNebesaoRLrGgU7FkuOhut3LQm7Lqu5lpKYSt5cV8gkGP5%2Fm%2BOa%2FzKbRNmbcwACXuZ1hBJW0alkcX%2F3hfpPiSg9UrT1uZKRwfQUpx6fHzagiSWtcWXJDYO2SfWtlfoS%2B7W%2FIvIoD1FtMbCeVC6oAvltLOnIojrW3VYh1OrFUIlXcl0XMXzCPfRz%2B2v28tFOmsucTRbixJ9WyW3WqN2h3YMHZJQoSFbpUDSN7VQkFJmC1NgHzX09u7X1AUIcwP1TmLqO034RnK6ZSfmS38NuYhWCAmPUIyopyEmxqE3M%2FzqEWjId6S1DTmaJSzo09Rx2UtLnZXMOLKXifzoN8eQy3yQvFeNsKxh3IkJxb6uifVXDBpyelQibch9gDg%3D&ddkey=https%3AVFCWorldpayPunchoutCallbackCmd
最佳答案
这是一个使用字典理解后接 pd.concat
的解决方案:
str1 = ';src=4457426;type=be_salec;cat=be_thnky;qty=1;cost=60.00;ord=50608803;gtm=G64;gcldc=*;gclaw=*;gac=UA-32723457-1:*;u1=men;u2=schoenen;u3=none;u5=VA38G1NRI;u6=80;u7=0;u8=1;u9=EUR;u10=be;u11=Suede Old Skool Shoes;u12=checkout;u13=8;u14=VNIWTYI926IW7;u15=https://www.vans.be/webapp/wcs/stores/servlet/OrderOKView?langId=-27&catalogId=11260&storeId=10167&krypto=%2B03C782RqELOiuY1L2ELV7hFeTRMquZ9Eyr1lJqmoSQhClENiUJ6feRNwwAA1ZYd4V7tkAuIwyiIrClp7QaqfLeC%2B%2FPTLl7wSF%2FCyrVWqgiSJRgAS%2BWbXohu0DG8xsdPnSXp%2F%2F4MDb%2FkbPwh%2FT5EpiEWMkGur%2Fx%2FABR7Cvs4jh345776IITNx%2FTRZZXu4zeAco5P%2FvxyqDbmwvLKpPKljf3TpU0wOCmjCDWR5r3uR3ELErPFboWuV5H24FOIy7e%2B2b6m4YhCCDuzceKa5Qllkiwc4YI6AL9rIK1T2jExde343vk%2B4FZtK6XgOMtxbwv6pBIUMX%2Bn3kbb7soGQ%2FjnEwxzxMX5P%2FdMZzts6NkskMSICB955QKsZqPLepiS%2BWY5u5%2Bs9CPjquK%2FlsXmHTi26wq1cLqeiPdyolnE2AxaswLDhQcQbvDengszkSu8U8lTDhqaAxLExYF%2BMstZtKamD14AnMElNAbjZNcTEByzYlXOi1q2FpYg0kCyoaBBBtkRInSDBZtjxNWgd9bl98qs5R2ZqCiHmtOPrfcM53V77Acxcb5wl%2FkpdKEbTGuAijHpHgxpi55kIEcEmkJjvPnW7RwxUXPiVZbFjh34PlGJ10FaGvqPwsijBpR1TXrKWV3t3Z4r03yViU6txghbNtODiQ%3D%3D&ddkey=https%3AVFCWorldpayPunchoutCallbackCmd;~oref=https://www.vans.be/webapp/wcs/stores/servlet/OrderOKView?langId=-27&catalogId=11260&storeId=10167&krypto=%2B03C782RqELOiuY1L2ELV7hFeTRMquZ9Eyr1lJqmoSQhClENiUJ6feRNwwAA1ZYd4V7tkAuIwyiIrClp7QaqfLeC%2B%2FPTLl7wSF%2FCyrVWqgiSJRgAS%2BWbXohu0DG8xsdPnSXp%2F%2F4MDb%2FkbPwh%2FT5EpiEWMkGur%2Fx%2FABR7Cvs4jh345776IITNx%2FTRZZXu4zeAco5P%2FvxyqDbmwvLKpPKljf3TpU0wOCmjCDWR5r3uR3ELErPFboWuV5H24FOIy7e%2B2b6m4YhCCDuzceKa5Qllkiwc4YI6AL9rIK1T2jExde343vk%2B4FZtK6XgOMtxbwv6pBIUMX%2Bn3kbb7soGQ%2FjnEwxzxMX5P%2FdMZzts6NkskMSICB955QKsZqPLepiS%2BWY5u5%2Bs9CPjquK%2FlsXmHTi26wq1cLqeiPdyolnE2AxaswLDhQcQbvDengszkSu8U8lTDhqaAxLExYF%2BMstZtKamD14AnMElNAbjZNcTEByzYlXOi1q2FpYg0kCyoaBBBtkRInSDBZtjxNWgd9bl98qs5R2ZqCiHmtOPrfcM53V77Acxcb5wl%2FkpdKEbTGuAijHpHgxpi55kIEcEmkJjvPnW7RwxUXPiVZbFjh34PlGJ10FaGvqPwsijBpR1TXrKWV3t3Z4r03yViU6txghbNtODiQ%3D%3D&ddkey=https%3AVFCWorldpayPunchoutCallbackCmd'
str2 = ';src=4457426;type=be_salec;cat=be_thnky;qty=1;cost=79.17;ord=50619855;gtm=G64;gac=UA-32723457-1:*;u1=custom;u2=undefined;u3=none;u5=AQNNOQ;u6=95;u7=0;u8=1;u9=EUR;u10=be;u11=Men Era Shoes;u12=checkout;u13=;u14=;u15=https://www.vans.be/webapp/wcs/stores/servlet/OrderOKView?langId=-27&catalogId=11260&storeId=10167&krypto=aaHqAAtJa9bzV4lSFEuMWqdyG11jxs2yT0UY242hWRQyCn%2Ff7AHBrF%2ByFm6GF%2BZiumn%2B6cjIaHASWHpiwsBKSa5k5fMJoyz3ex%2B8FTyDOp3WwLgA9U3ibS6gLNMEl68UQ8K7bVk%2FP1%2BC2ckY17vriakRKvUpobXypW0AvXHgHGmaleDoIOlM6dVIX1pSHBPbeKDG4JVoXbUOltTgLUcnYbojIiIGx6m%2FYlHnYjWU%2BaYQpCK%2BRBeFd%2FKyekIN9y9wQlZHHKb7pFar8c3S24tuHj%2FeDGe1jwJ0S7%2BBnUb5WloJ1SSf0LjDyFSZAWBSzhidLIRM2OWyTXJeCBdBFNSw%2BwICm6uWHKPClJD%2FRIzO4D%2F3HQyS4sOeynLgyIR6JHsCv3FH%2B%2BrINsPE0Y3eI51mpm7UEmmcLmNKiONm11LwTD1U%2FZKgnLe50naDdiYj9%2BCt7TUkNuDiOYq1jaC2yOSKcz%2BGdF2i4bgEttXJlK84ZUeCUhfvGbQNebesaoRLrGgU7FkuOhut3LQm7Lqu5lpKYSt5cV8gkGP5%2Fm%2BOa%2FzKbRNmbcwACXuZ1hBJW0alkcX%2F3hfpPiSg9UrT1uZKRwfQUpx6fHzagiSWtcWXJDYO2SfWtlfoS%2B7W%2FIvIoD1FtMbCeVC6oAvltLOnIojrW3VYh1OrFUIlXcl0XMXzCPfRz%2B2v28tFOmsucTRbixJ9WyW3WqN2h3YMHZJQoSFbpUDSN7VQkFJmC1NgHzX09u7X1AUIcwP1TmLqO034RnK6ZSfmS38NuYhWCAmPUIyopyEmxqE3M%2FzqEWjId6S1DTmaJSzo09Rx2UtLnZXMOLKXifzoN8eQy3yQvFeNsKxh3IkJxb6uifVXDBpyelQibch9gDg%3D&ddkey=https%3AVFCWorldpayPunchoutCallbackCmd;~oref=https://www.vans.be/webapp/wcs/stores/servlet/OrderOKView?langId=-27&catalogId=11260&storeId=10167&krypto=aaHqAAtJa9bzV4lSFEuMWqdyG11jxs2yT0UY242hWRQyCn%2Ff7AHBrF%2ByFm6GF%2BZiumn%2B6cjIaHASWHpiwsBKSa5k5fMJoyz3ex%2B8FTyDOp3WwLgA9U3ibS6gLNMEl68UQ8K7bVk%2FP1%2BC2ckY17vriakRKvUpobXypW0AvXHgHGmaleDoIOlM6dVIX1pSHBPbeKDG4JVoXbUOltTgLUcnYbojIiIGx6m%2FYlHnYjWU%2BaYQpCK%2BRBeFd%2FKyekIN9y9wQlZHHKb7pFar8c3S24tuHj%2FeDGe1jwJ0S7%2BBnUb5WloJ1SSf0LjDyFSZAWBSzhidLIRM2OWyTXJeCBdBFNSw%2BwICm6uWHKPClJD%2FRIzO4D%2F3HQyS4sOeynLgyIR6JHsCv3FH%2B%2BrINsPE0Y3eI51mpm7UEmmcLmNKiONm11LwTD1U%2FZKgnLe50naDdiYj9%2BCt7TUkNuDiOYq1jaC2yOSKcz%2BGdF2i4bgEttXJlK84ZUeCUhfvGbQNebesaoRLrGgU7FkuOhut3LQm7Lqu5lpKYSt5cV8gkGP5%2Fm%2BOa%2FzKbRNmbcwACXuZ1hBJW0alkcX%2F3hfpPiSg9UrT1uZKRwfQUpx6fHzagiSWtcWXJDYO2SfWtlfoS%2B7W%2FIvIoD1FtMbCeVC6oAvltLOnIojrW3VYh1OrFUIlXcl0XMXzCPfRz%2B2v28tFOmsucTRbixJ9WyW3WqN2h3YMHZJQoSFbpUDSN7VQkFJmC1NgHzX09u7X1AUIcwP1TmLqO034RnK6ZSfmS38NuYhWCAmPUIyopyEmxqE3M%2FzqEWjId6S1DTmaJSzo09Rx2UtLnZXMOLKXifzoN8eQy3yQvFeNsKxh3IkJxb6uifVXDBpyelQibch9gDg%3D&ddkey=https%3AVFCWorldpayPunchoutCallbackCmd'
def converter(x):
return dict(i.split('=', 1) for i in str1.split(';') if '=' in i)
res = pd.concat([pd.DataFrame.from_dict(converter(i), orient='index').T \
for i in (str1, str2)])
结果:
print(res)
src type cat qty cost ord gtm gcldc gclaw \
0 4457426 be_salec be_thnky 1 60.00 50608803 G64 * *
0 4457426 be_salec be_thnky 1 60.00 50608803 G64 * *
~oref
0 https://www.vans.be/webapp/wcs/stores/servlet/...
0 https://www.vans.be/webapp/wcs/stores/servlet/...
[2 rows x 25 columns]
关于 python Pandas : Split string into multiple columns and extract data for column from split parameter,我们在Stack Overflow上找到一个类似的问题: https://stackoverflow.com/questions/50946014/
pandas.crosstab 和 Pandas 数据透视表似乎都提供了完全相同的功能。有什么不同吗? 最佳答案 pivot_table没有 normalize争论,不幸的是。 在 crosstab
我能找到的最接近的答案似乎太复杂:How I can create an interval column in pandas? 如果我有一个如下所示的 pandas 数据框: +-------+ |
这是我用来将某一行的一列值移动到同一行的另一列的当前代码: #Move 2014/15 column ValB to column ValA df.loc[(df.Survey_year == 201
我有一个以下格式的 Pandas 数据框: df = pd.DataFrame({'a' : [0,1,2,3,4,5,6], 'b' : [-0.5, 0.0, 1.0, 1.2, 1.4,
所以我有这两个数据框,我想得到一个新的数据框,它由两个数据框的行的克罗内克积组成。正确的做法是什么? 举个例子:数据框1 c1 c2 0 10 100 1 11 110 2 12
TL;DR:在 pandas 中,如何绘制条形图以使其 x 轴刻度标签看起来像折线图? 我制作了一个间隔均匀的时间序列(每天一个项目),并且可以像这样很好地绘制它: intensity[350:450
我有以下两个时间列,“Time1”和“Time2”。我必须计算 Pandas 中的“差异”列,即 (Time2-Time1): Time1 Time2
从这个 df 去的正确方法是什么: >>> df=pd.DataFrame({'a':['jeff','bob','jill'], 'b':['bob','jeff','mike']}) >>> df
我想按周从 Pandas 框架中的列中累积计算唯一值。例如,假设我有这样的数据: df = pd.DataFrame({'user_id':[1,1,1,2,2,2],'week':[1,1,2,1,
数据透视表的表示形式看起来不像我在寻找的东西,更具体地说,结果行的顺序。 我不知道如何以正确的方式进行更改。 df示例: test_df = pd.DataFrame({'name':['name_1
我有一个数据框,如下所示。 Category Actual Predicted 1 1 1 1 0
我有一个 df,如下所示。 df: ID open_date limit 1 2020-06-03 100 1 2020-06-23 500
我有一个 df ,其中包含与唯一值关联的各种字符串。对于这些唯一值,我想删除不等于单独列表的行,最后一行除外。 下面使用 Label 中的各种字符串值与 Item 相关联.所以对于每个唯一的 Item
考虑以下具有相同名称的列的数据框(显然,这确实发生了,目前我有一个像这样的数据集!:() >>> df = pd.DataFrame({"a":range(10,15),"b":range(5,10)
我在 Pandas 中有一个 DF,它看起来像: Letters Numbers A 1 A 3 A 2 A 1 B 1 B 2
如何减去两列之间的时间并将其转换为分钟 Date Time Ordered Time Delivered 0 1/11/19 9:25:00 am 10:58:00 am
我试图理解 pandas 中的下/上百分位数计算,但有点困惑。这是它的示例代码和输出。 test = pd.Series([7, 15, 36, 39, 40, 41]) test.describe(
我有一个多索引数据框,如下所示: TQ bought HT Detailed Instru
我需要从包含值“低”,“中”或“高”的数据框列创建直方图。当我尝试执行通常的df.column.hist()时,出现以下错误。 ex3.Severity.value_counts() Out[85]:
我试图根据另一列的长度对一列进行子串,但结果集是 NaN .我究竟做错了什么? import pandas as pd df = pd.DataFrame([['abcdefghi','xyz'],
我是一名优秀的程序员,十分优秀!