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I have a dataframe that looks like this:

dataFrame = pd.DataFrame({'Name': (("' Verbundmörtel ', ' Compound Mortar ', ' Malta per stucchi e per incollaggio '"),
                                   ("' StoLevell In Absolute ', ' StoLevell In Absolute '"),
                                    ("' Anhydrit-FlieÃ\x9festrich ', ' Anhydrite Flowing Screed ', ' Massetto a base di anidrite '"),
                                    ("' Ansetzmörtel SLP ', ' Attachment mortar SLP ', ' Malta minerale adesiva SLP + iQ-Fix '"),
                                    ("' AQUAPANEL Cement Mörtel ', ' AQUAPANEL Cement Mortar '"),
                                    ("' Armatop por ', ' Armatop por '"),
                                    ("' Armatop por ', ' Armatop por '")),
                         
                            "File_name":(( "esiveCoveringPlaster_2" ),
                                        ("AdhesiveMortarLevellInForAEVERO_720"),
                                        ("AnhydriteFlowingScreed_20"),
                                        ("AnsetzmoertelSLPRemmers_21"),
                                        ("AquaboardMoertel_655"),
                                        ("ArmatopPor479korr_797"),
                                        ("ArmatopPor_479"))})

And the keywords I am searching for:

words = ['Mortar','hist','lime',
        'loam','adhesive','clay',
        'cement','insulation','sealing',
        'light','base', 'glue', 
        'gyps', 'mineral', 'fine',
        'Levelling', 'mould','Silicate'
        'Porous','Concrete','screed',
        'Rendering', 'Silicate','Renovation'
        'Perlite','Waterproof','Porous',
        'Old', 'Inside', 'por']

I would like to obtain a list of keywords. I am trying two methods but am not getting the desired result

METHOD 1

test = ((dataFrame['Name'] + dataFrame['File_name'])).str.findall('|'.join(words),flags=re.IGNORECASE).map(','.join)

RESULT 1

0   Mortar
1   Adhesive,Mortar
2   Screed,base,Screed
3   mortar,mineral
4   Cement,Cement,Mortar
5   por,por,Por
6   por,por,Por

METHOD 2

test = pd.concat([(dataFrame['Name'] + dataFrame['File_name'])
               .str
               .contains(word, case=False)
               .map({True: word, False: ''})
               for word in words], axis=1).agg(list, axis=1).str.join(',').str.strip(',')

RESULT 2

0   Mortar
1   Mortar,,,,adhesive
2   base,,,,,,,,,screed
3   Mortar,,,,,,,,,,,,,mineral
4   Mortar,,,,,,cement
5   por
6   por

My goal is to find the words in the two columns. The new column will then be added to the dataframe. I expect a list of words in the results:

words = [['Mortar'],
        ['Mortar', 'adhesive'],
        ['Base', 'screed'],
        ['Mortar', 'mineral'],
        ['Mortar', 'cement'],
        ['por'],
        ['por']]

I am creating scatterplots and the function "hue" will have to refer to the second column. I hope I have made myself clear enough.

3
  • 3
    and what do you expect?
    – mozway
    Mar 14 at 13:47
  • I expect a list of words in the results. 1 [Mortar, adhesive]. Mar 14 at 16:39
  • I have added what I would like to achieve in the question Mar 14 at 16:47

1 Answer 1

0

I assume that you only want to find the occurrence of the words in your list words in your dataframe. Your exact problem is a bit unclear.

words = ['Mortar','hist','lime',
        'loam','adhesive','clay',
        'cement','insulation','sealing',
        'light','base', 'glue', 
        'gyps', 'mineral', 'fine',
        'Levelling', 'mould','Silicate'
        'Porous','Concrete','screed',
        'Rendering', 'Silicate','Renovation'
        'Perlite','Waterproof','Porous',
        'Old', 'Inside', 'por']
pattern = "|".join(words)

regexW = re.compile(pattern)
regexW.findall("".join(str(df.values)))

['Mortar', 'Mortar', 'base', 'mineral', 'Mortar', 'por', 'por', 'por', 'por']
1
  • I have added what I would like to achieve in the question Mar 14 at 16:47

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