mirror of
https://github.com/ilri/csv-metadata-quality.git
synced 2024-12-22 20:22:18 +01:00
Alan Orth
898bb412c3
This detects whether text has likely been encoded in one encoding and decoded in another, perhaps multiple times. This often results in display of "mojibake" characters. For example, a file encoded in UTF-8 is opened as CP-1252 (Windows Latin codepage) in Microsoft Excel, and saved again as UTF-8. You will see strings like this in the resulting file: - CIAT Publicaçao - CIAT Publicación The correct version of these in UTF-8 would be: - CIAT Publicaçao - CIAT Publicación I use a code snippet from Martijn Pieters on StackOverflow to de- tect whether a string is "weird" as determined by the excellent "fixes text for you" (ftfy) Python library, then check if a weird string encodes as CP-1252 or not. If so, I can try to fix it. See: https://stackoverflow.com/questions/29071995/identify-garbage-unicode-string-using-python
369 lines
11 KiB
Python
Executable File
369 lines
11 KiB
Python
Executable File
import os
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import re
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from datetime import datetime, timedelta
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import pandas as pd
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import requests
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import requests_cache
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import spdx_license_list
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from colorama import Fore
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from pycountry import languages
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from stdnum import isbn as stdnum_isbn
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from stdnum import issn as stdnum_issn
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from csv_metadata_quality.util import is_mojibake
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def issn(field):
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"""Check if an ISSN is valid.
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Prints the ISSN if invalid.
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stdnum's is_valid() function never raises an exception.
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See: https://arthurdejong.org/python-stdnum/doc/1.11/index.html#stdnum.module.is_valid
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"""
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# Skip fields with missing values
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if pd.isna(field):
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return
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# Try to split multi-value field on "||" separator
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for value in field.split("||"):
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if not stdnum_issn.is_valid(value):
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print(f"{Fore.RED}Invalid ISSN: {Fore.RESET}{value}")
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return
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def isbn(field):
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"""Check if an ISBN is valid.
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Prints the ISBN if invalid.
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stdnum's is_valid() function never raises an exception.
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See: https://arthurdejong.org/python-stdnum/doc/1.11/index.html#stdnum.module.is_valid
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"""
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# Skip fields with missing values
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if pd.isna(field):
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return
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# Try to split multi-value field on "||" separator
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for value in field.split("||"):
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if not stdnum_isbn.is_valid(value):
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print(f"{Fore.RED}Invalid ISBN: {Fore.RESET}{value}")
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return
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def date(field, field_name):
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"""Check if a date is valid.
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In DSpace the issue date is usually 1990, 1990-01, or 1990-01-01, but it
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could technically even include time as long as it is ISO8601.
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Also checks for other invalid cases like missing and multiple dates.
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Prints the date if invalid.
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"""
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if pd.isna(field):
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print(f"{Fore.RED}Missing date ({field_name}).{Fore.RESET}")
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return
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# Try to split multi-value field on "||" separator
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multiple_dates = field.split("||")
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# We don't allow multi-value date fields
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if len(multiple_dates) > 1:
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print(
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f"{Fore.RED}Multiple dates not allowed ({field_name}): {Fore.RESET}{field}"
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)
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return
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try:
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# Check if date is valid YYYY format
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datetime.strptime(field, "%Y")
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return
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except ValueError:
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pass
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try:
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# Check if date is valid YYYY-MM format
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datetime.strptime(field, "%Y-%m")
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return
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except ValueError:
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pass
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try:
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# Check if date is valid YYYY-MM-DD format
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datetime.strptime(field, "%Y-%m-%d")
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return
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except ValueError:
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pass
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try:
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# Check if date is valid YYYY-MM-DDTHH:MM:SSZ format
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datetime.strptime(field, "%Y-%m-%dT%H:%M:%SZ")
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return
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except ValueError:
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print(f"{Fore.RED}Invalid date ({field_name}): {Fore.RESET}{field}")
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return
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def suspicious_characters(field, field_name):
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"""Warn about suspicious characters.
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Look for standalone characters that could indicate encoding or copy/paste
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errors for languages with accents. For example: foreˆt should be forêt.
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"""
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# Skip fields with missing values
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if pd.isna(field):
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return
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# List of suspicious characters, for example: ́ˆ~`
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suspicious_characters = ["\u00B4", "\u02C6", "\u007E", "\u0060"]
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for character in suspicious_characters:
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# Find the position of the suspicious character in the string
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suspicious_character_position = field.find(character)
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# Python returns -1 if there is no match
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if suspicious_character_position != -1:
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# Create a temporary new string starting from the position of the
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# suspicious character
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field_subset = field[suspicious_character_position:]
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# Print part of the metadata value starting from the suspicious
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# character and spanning enough of the rest to give a preview,
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# but not too much to cause the line to break in terminals with
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# a default of 80 characters width.
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suspicious_character_msg = f"{Fore.YELLOW}Suspicious character ({field_name}): {Fore.RESET}{field_subset}"
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print(f"{suspicious_character_msg:1.80}")
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return
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def language(field):
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"""Check if a language is valid ISO 639-1 (alpha 2) or ISO 639-3 (alpha 3).
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Prints the value if it is invalid.
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"""
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# Skip fields with missing values
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if pd.isna(field):
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return
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# need to handle "Other" values here...
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# Try to split multi-value field on "||" separator
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for value in field.split("||"):
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# After splitting, check if language value is 2 or 3 characters so we
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# can check it against ISO 639-1 or ISO 639-3 accordingly.
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if len(value) == 2:
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if not languages.get(alpha_2=value):
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print(f"{Fore.RED}Invalid ISO 639-1 language: {Fore.RESET}{value}")
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pass
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elif len(value) == 3:
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if not languages.get(alpha_3=value):
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print(f"{Fore.RED}Invalid ISO 639-3 language: {Fore.RESET}{value}")
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pass
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else:
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print(f"{Fore.RED}Invalid language: {Fore.RESET}{value}")
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return
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def agrovoc(field, field_name):
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"""Check subject terms against AGROVOC REST API.
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Function constructor expects the field as well as the field name because
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many fields can now be validated against AGROVOC and we want to be able
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to inform the user in which field the invalid term is.
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Logic copied from agrovoc-lookup.py.
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See: https://github.com/ilri/DSpace/blob/5_x-prod/agrovoc-lookup.py
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Prints a warning if the value is invalid.
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"""
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# Skip fields with missing values
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if pd.isna(field):
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return
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# enable transparent request cache with thirty days expiry
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expire_after = timedelta(days=30)
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# Allow overriding the location of the requests cache, just in case we are
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# running in an environment where we can't write to the current working di-
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# rectory (for example from csv-metadata-quality-web).
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REQUESTS_CACHE_DIR = os.environ.get("REQUESTS_CACHE_DIR", ".")
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requests_cache.install_cache(
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f"{REQUESTS_CACHE_DIR}/agrovoc-response-cache", expire_after=expire_after
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)
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# prune old cache entries
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requests_cache.core.remove_expired_responses()
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# Try to split multi-value field on "||" separator
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for value in field.split("||"):
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request_url = "http://agrovoc.uniroma2.it/agrovoc/rest/v1/agrovoc/search"
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request_params = {"query": value}
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request = requests.get(request_url, params=request_params)
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if request.status_code == requests.codes.ok:
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data = request.json()
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# check if there are any results
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if len(data["results"]) == 0:
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print(f"{Fore.RED}Invalid AGROVOC ({field_name}): {Fore.RESET}{value}")
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return
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def filename_extension(field):
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"""Check filename extension.
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CSVs with a 'filename' column are likely meant as input for the SAFBuilder
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tool, which creates a Simple Archive Format bundle for importing metadata
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with accompanying PDFs or other files into DSpace.
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This check warns if a filename has an uncommon extension (that is, other
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than .pdf, .xls(x), .doc(x), ppt(x), case insensitive).
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"""
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# Skip fields with missing values
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if pd.isna(field):
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return
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# Try to split multi-value field on "||" separator
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values = field.split("||")
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# List of common filename extentions
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common_filename_extensions = [
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".pdf",
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".doc",
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".docx",
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".ppt",
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".pptx",
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".xls",
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".xlsx",
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]
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# Iterate over all values
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for value in values:
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# Assume filename extension does not match
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filename_extension_match = False
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for filename_extension in common_filename_extensions:
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# Check for extension at the end of the filename
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pattern = re.escape(filename_extension) + r"$"
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match = re.search(pattern, value, re.IGNORECASE)
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if match is not None:
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# Register the match and stop checking for this filename
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filename_extension_match = True
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break
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if filename_extension_match is False:
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print(f"{Fore.YELLOW}Filename with uncommon extension: {Fore.RESET}{value}")
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return
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def spdx_license_identifier(field):
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"""Check if a license is a valid SPDX identifier.
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Prints the value if it is invalid.
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"""
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# Skip fields with missing values
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if pd.isna(field):
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return
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# Try to split multi-value field on "||" separator
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for value in field.split("||"):
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if value not in spdx_license_list.LICENSES:
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print(f"{Fore.YELLOW}Non-SPDX license identifier: {Fore.RESET}{value}")
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pass
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return
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def duplicate_items(df):
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"""Attempt to identify duplicate items.
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First we check the total number of titles and compare it with the number of
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unique titles. If there are less unique titles than total titles we expand
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the search by creating a key (of sorts) for each item that includes their
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title, type, and date issued, and compare it with all the others. If there
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are multiple occurrences of the same title, type, date string then it's a
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very good indicator that the items are duplicates.
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"""
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# Extract the names of the title, type, and date issued columns so we can
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# reference them later. First we filter columns by likely patterns, then
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# we extract the name from the first item of the resulting object, ie:
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#
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# Index(['dcterms.title[en_US]'], dtype='object')
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#
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title_column_name = df.filter(regex=r"dcterms\.title|dc\.title").columns[0]
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type_column_name = df.filter(regex=r"dcterms\.title|dc\.title").columns[0]
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date_column_name = df.filter(
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regex=r"dcterms\.issued|dc\.date\.accessioned"
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).columns[0]
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items_count_total = df[title_column_name].count()
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items_count_unique = df[title_column_name].nunique()
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if items_count_unique < items_count_total:
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# Create a list to hold our items while we check for duplicates
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items = list()
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for index, row in df.iterrows():
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item_title_type_date = f"{row[title_column_name]}{row[type_column_name]}{row[date_column_name]}"
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if item_title_type_date in items:
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print(
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f"{Fore.YELLOW}Possible duplicate ({title_column_name}): {Fore.RESET}{row[title_column_name]}"
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)
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else:
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items.append(item_title_type_date)
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def mojibake(field, field_name):
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"""Check for mojibake (text that was encoded in one encoding and decoded in
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in another, perhaps multiple times). See util.py.
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Prints the string if it contains suspected mojibake.
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"""
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# Skip fields with missing values
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if pd.isna(field):
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return
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if is_mojibake(field):
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print(
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f"{Fore.YELLOW}Possible encoding issue ({field_name}): {Fore.RESET}{field}"
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)
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return
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