split & concat string from dataframe












0















From dataframe,
I want to split from (col1) the number before first symbol | into a list, the second number after that into b list and string from(col1), (text1), (text2), (text3) into text list



col1       | text1     | text2           | text3
1|6|Show | us the | straight way | null
109|2|I | worship | not that | which ye worship


the output that I expected



a = [1, 109]
b = [6, 2]
text = [‘Show us the straight way’, ‘I worship not that which ye worship’]



what is the best way to do this?










share|improve this question





























    0















    From dataframe,
    I want to split from (col1) the number before first symbol | into a list, the second number after that into b list and string from(col1), (text1), (text2), (text3) into text list



    col1       | text1     | text2           | text3
    1|6|Show | us the | straight way | null
    109|2|I | worship | not that | which ye worship


    the output that I expected



    a = [1, 109]
    b = [6, 2]
    text = [‘Show us the straight way’, ‘I worship not that which ye worship’]



    what is the best way to do this?










    share|improve this question



























      0












      0








      0


      0






      From dataframe,
      I want to split from (col1) the number before first symbol | into a list, the second number after that into b list and string from(col1), (text1), (text2), (text3) into text list



      col1       | text1     | text2           | text3
      1|6|Show | us the | straight way | null
      109|2|I | worship | not that | which ye worship


      the output that I expected



      a = [1, 109]
      b = [6, 2]
      text = [‘Show us the straight way’, ‘I worship not that which ye worship’]



      what is the best way to do this?










      share|improve this question
















      From dataframe,
      I want to split from (col1) the number before first symbol | into a list, the second number after that into b list and string from(col1), (text1), (text2), (text3) into text list



      col1       | text1     | text2           | text3
      1|6|Show | us the | straight way | null
      109|2|I | worship | not that | which ye worship


      the output that I expected



      a = [1, 109]
      b = [6, 2]
      text = [‘Show us the straight way’, ‘I worship not that which ye worship’]



      what is the best way to do this?







      python pandas dataframe split concat






      share|improve this question















      share|improve this question













      share|improve this question




      share|improve this question








      edited Nov 26 '18 at 8:49









      Rishabh Agarwal

      910320




      910320










      asked Nov 26 '18 at 8:15









      RuzannahRuzannah

      587




      587
























          1 Answer
          1






          active

          oldest

          votes


















          1














          This is straightforward assuming col1 has 3 pipe-separated elements throughout.



          a,b,C = zip(*df.col1.str.split('|'))
          D = df.drop('col1', 1).agg(lambda x: ' '.join(x.dropna()), axis=1)

          c = [c + ' ' + d for c,d in zip(c,D)]




          print(a)
          ('1', '109')

          print(b)
          ('6', '2')

          print(c)
          ['Show us the straight way', 'I worship not that which ye worship']


          Note that a and b is a collection of strings, you can map them to numeric with



          a, b = map(pd.to_numeric, (a,b))


          ...to get arrays of integers.





          To handle the generic case of col1 having any number of values, you will need to



          v = df.col1.str.split('|', expand=True)
          m = v.applymap(str.isdigit)
          a,b,*_ = v[m].T.agg(lambda x: x.dropna().tolist(), axis=1)

          print(a)
          ['1', '109']

          print(b)
          ['6', '2']


          C can be computed similarly:



          C = v[~m].agg(lambda x: x.dropna().str.cat(sep=' '), axis=1).tolist()


          and then small c can be computed as before.






          share|improve this answer


























          • cool! thank you!!

            – Ruzannah
            Nov 26 '18 at 9:27











          • @Ruzannah Thanks for accepting, please also consider upvoting the answer, tia :-)

            – coldspeed
            Nov 26 '18 at 23:08











          • i really appreciate, but sorry for my newbie respon 😂

            – Ruzannah
            Nov 26 '18 at 23:14











          Your Answer






          StackExchange.ifUsing("editor", function () {
          StackExchange.using("externalEditor", function () {
          StackExchange.using("snippets", function () {
          StackExchange.snippets.init();
          });
          });
          }, "code-snippets");

          StackExchange.ready(function() {
          var channelOptions = {
          tags: "".split(" "),
          id: "1"
          };
          initTagRenderer("".split(" "), "".split(" "), channelOptions);

          StackExchange.using("externalEditor", function() {
          // Have to fire editor after snippets, if snippets enabled
          if (StackExchange.settings.snippets.snippetsEnabled) {
          StackExchange.using("snippets", function() {
          createEditor();
          });
          }
          else {
          createEditor();
          }
          });

          function createEditor() {
          StackExchange.prepareEditor({
          heartbeatType: 'answer',
          autoActivateHeartbeat: false,
          convertImagesToLinks: true,
          noModals: true,
          showLowRepImageUploadWarning: true,
          reputationToPostImages: 10,
          bindNavPrevention: true,
          postfix: "",
          imageUploader: {
          brandingHtml: "Powered by u003ca class="icon-imgur-white" href="https://imgur.com/"u003eu003c/au003e",
          contentPolicyHtml: "User contributions licensed under u003ca href="https://creativecommons.org/licenses/by-sa/3.0/"u003ecc by-sa 3.0 with attribution requiredu003c/au003e u003ca href="https://stackoverflow.com/legal/content-policy"u003e(content policy)u003c/au003e",
          allowUrls: true
          },
          onDemand: true,
          discardSelector: ".discard-answer"
          ,immediatelyShowMarkdownHelp:true
          });


          }
          });














          draft saved

          draft discarded


















          StackExchange.ready(
          function () {
          StackExchange.openid.initPostLogin('.new-post-login', 'https%3a%2f%2fstackoverflow.com%2fquestions%2f53477006%2fsplit-concat-string-from-dataframe%23new-answer', 'question_page');
          }
          );

          Post as a guest















          Required, but never shown

























          1 Answer
          1






          active

          oldest

          votes








          1 Answer
          1






          active

          oldest

          votes









          active

          oldest

          votes






          active

          oldest

          votes









          1














          This is straightforward assuming col1 has 3 pipe-separated elements throughout.



          a,b,C = zip(*df.col1.str.split('|'))
          D = df.drop('col1', 1).agg(lambda x: ' '.join(x.dropna()), axis=1)

          c = [c + ' ' + d for c,d in zip(c,D)]




          print(a)
          ('1', '109')

          print(b)
          ('6', '2')

          print(c)
          ['Show us the straight way', 'I worship not that which ye worship']


          Note that a and b is a collection of strings, you can map them to numeric with



          a, b = map(pd.to_numeric, (a,b))


          ...to get arrays of integers.





          To handle the generic case of col1 having any number of values, you will need to



          v = df.col1.str.split('|', expand=True)
          m = v.applymap(str.isdigit)
          a,b,*_ = v[m].T.agg(lambda x: x.dropna().tolist(), axis=1)

          print(a)
          ['1', '109']

          print(b)
          ['6', '2']


          C can be computed similarly:



          C = v[~m].agg(lambda x: x.dropna().str.cat(sep=' '), axis=1).tolist()


          and then small c can be computed as before.






          share|improve this answer


























          • cool! thank you!!

            – Ruzannah
            Nov 26 '18 at 9:27











          • @Ruzannah Thanks for accepting, please also consider upvoting the answer, tia :-)

            – coldspeed
            Nov 26 '18 at 23:08











          • i really appreciate, but sorry for my newbie respon 😂

            – Ruzannah
            Nov 26 '18 at 23:14
















          1














          This is straightforward assuming col1 has 3 pipe-separated elements throughout.



          a,b,C = zip(*df.col1.str.split('|'))
          D = df.drop('col1', 1).agg(lambda x: ' '.join(x.dropna()), axis=1)

          c = [c + ' ' + d for c,d in zip(c,D)]




          print(a)
          ('1', '109')

          print(b)
          ('6', '2')

          print(c)
          ['Show us the straight way', 'I worship not that which ye worship']


          Note that a and b is a collection of strings, you can map them to numeric with



          a, b = map(pd.to_numeric, (a,b))


          ...to get arrays of integers.





          To handle the generic case of col1 having any number of values, you will need to



          v = df.col1.str.split('|', expand=True)
          m = v.applymap(str.isdigit)
          a,b,*_ = v[m].T.agg(lambda x: x.dropna().tolist(), axis=1)

          print(a)
          ['1', '109']

          print(b)
          ['6', '2']


          C can be computed similarly:



          C = v[~m].agg(lambda x: x.dropna().str.cat(sep=' '), axis=1).tolist()


          and then small c can be computed as before.






          share|improve this answer


























          • cool! thank you!!

            – Ruzannah
            Nov 26 '18 at 9:27











          • @Ruzannah Thanks for accepting, please also consider upvoting the answer, tia :-)

            – coldspeed
            Nov 26 '18 at 23:08











          • i really appreciate, but sorry for my newbie respon 😂

            – Ruzannah
            Nov 26 '18 at 23:14














          1












          1








          1







          This is straightforward assuming col1 has 3 pipe-separated elements throughout.



          a,b,C = zip(*df.col1.str.split('|'))
          D = df.drop('col1', 1).agg(lambda x: ' '.join(x.dropna()), axis=1)

          c = [c + ' ' + d for c,d in zip(c,D)]




          print(a)
          ('1', '109')

          print(b)
          ('6', '2')

          print(c)
          ['Show us the straight way', 'I worship not that which ye worship']


          Note that a and b is a collection of strings, you can map them to numeric with



          a, b = map(pd.to_numeric, (a,b))


          ...to get arrays of integers.





          To handle the generic case of col1 having any number of values, you will need to



          v = df.col1.str.split('|', expand=True)
          m = v.applymap(str.isdigit)
          a,b,*_ = v[m].T.agg(lambda x: x.dropna().tolist(), axis=1)

          print(a)
          ['1', '109']

          print(b)
          ['6', '2']


          C can be computed similarly:



          C = v[~m].agg(lambda x: x.dropna().str.cat(sep=' '), axis=1).tolist()


          and then small c can be computed as before.






          share|improve this answer















          This is straightforward assuming col1 has 3 pipe-separated elements throughout.



          a,b,C = zip(*df.col1.str.split('|'))
          D = df.drop('col1', 1).agg(lambda x: ' '.join(x.dropna()), axis=1)

          c = [c + ' ' + d for c,d in zip(c,D)]




          print(a)
          ('1', '109')

          print(b)
          ('6', '2')

          print(c)
          ['Show us the straight way', 'I worship not that which ye worship']


          Note that a and b is a collection of strings, you can map them to numeric with



          a, b = map(pd.to_numeric, (a,b))


          ...to get arrays of integers.





          To handle the generic case of col1 having any number of values, you will need to



          v = df.col1.str.split('|', expand=True)
          m = v.applymap(str.isdigit)
          a,b,*_ = v[m].T.agg(lambda x: x.dropna().tolist(), axis=1)

          print(a)
          ['1', '109']

          print(b)
          ['6', '2']


          C can be computed similarly:



          C = v[~m].agg(lambda x: x.dropna().str.cat(sep=' '), axis=1).tolist()


          and then small c can be computed as before.







          share|improve this answer














          share|improve this answer



          share|improve this answer








          edited Nov 26 '18 at 8:26

























          answered Nov 26 '18 at 8:19









          coldspeedcoldspeed

          130k23134219




          130k23134219













          • cool! thank you!!

            – Ruzannah
            Nov 26 '18 at 9:27











          • @Ruzannah Thanks for accepting, please also consider upvoting the answer, tia :-)

            – coldspeed
            Nov 26 '18 at 23:08











          • i really appreciate, but sorry for my newbie respon 😂

            – Ruzannah
            Nov 26 '18 at 23:14



















          • cool! thank you!!

            – Ruzannah
            Nov 26 '18 at 9:27











          • @Ruzannah Thanks for accepting, please also consider upvoting the answer, tia :-)

            – coldspeed
            Nov 26 '18 at 23:08











          • i really appreciate, but sorry for my newbie respon 😂

            – Ruzannah
            Nov 26 '18 at 23:14

















          cool! thank you!!

          – Ruzannah
          Nov 26 '18 at 9:27





          cool! thank you!!

          – Ruzannah
          Nov 26 '18 at 9:27













          @Ruzannah Thanks for accepting, please also consider upvoting the answer, tia :-)

          – coldspeed
          Nov 26 '18 at 23:08





          @Ruzannah Thanks for accepting, please also consider upvoting the answer, tia :-)

          – coldspeed
          Nov 26 '18 at 23:08













          i really appreciate, but sorry for my newbie respon 😂

          – Ruzannah
          Nov 26 '18 at 23:14





          i really appreciate, but sorry for my newbie respon 😂

          – Ruzannah
          Nov 26 '18 at 23:14




















          draft saved

          draft discarded




















































          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.




          draft saved


          draft discarded














          StackExchange.ready(
          function () {
          StackExchange.openid.initPostLogin('.new-post-login', 'https%3a%2f%2fstackoverflow.com%2fquestions%2f53477006%2fsplit-concat-string-from-dataframe%23new-answer', 'question_page');
          }
          );

          Post as a guest















          Required, but never shown





















































          Required, but never shown














          Required, but never shown












          Required, but never shown







          Required, but never shown

































          Required, but never shown














          Required, but never shown












          Required, but never shown







          Required, but never shown







          Popular posts from this blog

          A CLEAN and SIMPLE way to add appendices to Table of Contents and bookmarks

          Calculate evaluation metrics using cross_val_predict sklearn

          Insert data from modal to MySQL (multiple modal on website)