相关文章推荐
一直单身的手链  ·  panda ...·  1 周前    · 
想出国的拐杖  ·  python dataframe ...·  6 天前    · 
健壮的皮带  ·  python DataFrame循环读取 ...·  4 天前    · 
强悍的梨子  ·  python ...·  昨天    · 
风流倜傥的热带鱼  ·  python-jsonpath ...·  1 年前    · 
多情的莴苣  ·  react-hooks: ...·  1 年前    · 
霸气的沙滩裤  ·  numpy ...·  1 年前    · 
Collectives™ on Stack Overflow

Find centralized, trusted content and collaborate around the technologies you use most.

Learn more about Collectives

Teams

Q&A for work

Connect and share knowledge within a single location that is structured and easy to search.

Learn more about Teams

I have a snippet of code that extracts year, month, week from a date. Year and month works but year-month and week both returns error like the one below:

AttributeError: 'datetime.datetime' object has no attribute 'week'

I imported the library like this:

import datetime

and called on the dt column using col.dt.year, col.dt.month, col.dt.to_period('M'),col.dt.week.

The first 2 works and last 2 doesn't. After searching similar questions I still couldn't get it run. I'm on pandas '0.23.4'. Thanks for any help.

You need to provide code. Without it, we can only say you are referencing col.dt as datetime.datetime as the error says. – Ricky Kim Jan 10, 2019 at 4:05 I realized the issue is that it's a vDDDtype rather than date time, which comes with some known issues in extracting time intervals and the code requires reading ical. I tried to combine the ymd into a proper dt object df['dt']=pd.to_datetime(dict(year=df['Year'], month=df['Month'], day=df['Day'])) and then run df['dt'].dt.week() but it's now returning TypeError: 'Series' object is not callable – santoku Jan 10, 2019 at 4:30 I think you're right; if pandas.Series.dt simply defers to datetime.datetime under the hood, then isocalendar() would still work; otherwise I guess an explicit to_pydatetime() call would be required... – dtanabe Jan 10, 2019 at 4:12

Thanks for contributing an answer to Stack Overflow!

  • Please be sure to answer the question. Provide details and share your research!

But avoid

  • Asking for help, clarification, or responding to other answers.
  • Making statements based on opinion; back them up with references or personal experience.

To learn more, see our tips on writing great answers.