Security News
Research
Data Theft Repackaged: A Case Study in Malicious Wrapper Packages on npm
The Socket Research Team breaks down a malicious wrapper package that uses obfuscation to harvest credentials and exfiltrate sensitive data.
Python implementation of Library of Congress EDTF (Extended Date Time Format) specification
An implementation of EDTF format in Python, together with utility functions for parsing natural language date texts, and converting EDTF dates to related Python date
or struct_time
objects.
See http://www.loc.gov/standards/datetime/ for the final draft specification.
This project is based on python-edtf and was developed to include the newest specification
pip install edtf
>>> from edtf import parse_edtf
# Parse an EDTF string to an EDTFObject
>>>
>>> e = parse_edtf("1979-08~") # approx August 1979
>>> e
UncertainOrApproximate: '1979-08~'
# normalised string representation (some different EDTF strings have identical meanings)
>>>
>>> unicode(e)
u'1979-08~'
# Derive Python date objects
# lower and upper bounds that strictly adhere to the given range
>>>
>>> e.lower_strict()[:3], e.upper_strict()[:3]
((1979, 8, 1), (1979, 8, 31))
# lower and upper bounds that are padded if there's indicated uncertainty
>>>
>>> e.lower_fuzzy()[:3], e.upper_fuzzy()[:3]
((1979, 7, 1), (1979, 9, 30))
# Date intervals
>>>
>>> interval = parse_edtf("1979-08~/..")
>>> interval
Level1Interval: '1979-08~/..'
# Intervals have lower and upper EDTF objects
>>>
>>> interval.lower, interval.upper
(UncertainOrApproximate: '1979-08~', UnspecifiedIntervalSection: '..')
>>> interval.lower.lower_strict()[:3], interval.lower.upper_strict()[:3]
((1979, 8, 1), (1979, 8, 31))
>>> interval.upper.upper_strict() # '..' is interpreted to mean open interval and is returning -/+ math.inf
math.inf
# Date collections
>>>
>>> coll = parse_edtf('{1667,1668, 1670..1672}')
>>> coll
MultipleDates: '{1667, 1668, 1670..1672}'
>>> coll.objects
(Date: '1667', Date: '1668', Consecutives: '1670..1672')
The object returned by parse_edtf()
is an instance of an edtf.parser.parser_classes.EDTFObject
subclass, depending on the type of date that was parsed. These classes are:
# Level 0
Date
DateAndTime
Interval
# Level 1
UncertainOrApproximate
Unspecified
Level1Interval
UnspecifiedIntervalSection
LongYear
Season
# Level 2
PartialUncertainOrApproximate
PartialUnspecified
OneOfASet
MultipleDates
Level2Interval
Level2Season
ExponentialYear
All of these implement upper/lower_strict/fuzzy()
methods to derive struct_time
objects, except of UnspecifiedIntervalSection, that can also return math.inf value
The *Interval
instances have upper
and lower
properties that are themselves EDTFObject
instances.
OneOfASet
and MultipleDates
instances have an objects
property that is a list of all of the EDTF dates parsed in the set or list.
The library includes implementation of levels 0, 1 and 2 of the EDTF spec.
Test coverage includes every example given in the spec table of features.
>>> parse_edtf('1979-08') # August 1979
Date: '1979-08'
>>> parse_edtf('2004-01-01T10:10:10+05:00')
DateAndTime: '2004-01-01T10:10:10+05:00'
>>> parse_edtf('1979-08-28/1979-09-25') # From August 28 to September 25 1979
Interval: '1979-08-28/1979-09-25'
>>> parse_edtf('1979-08-28~') # Approximately August 28th 1979
UncertainOrApproximate: '1979-08-28~'
>>> parse_edtf('1979-08-XX') # An unknown day in August 1979
Unspecified: '1979-08-XX'
>>> parse_edtf('1979-XX') # Some month in 1979
Unspecified: '1979-XX'
>>> parse_edtf('1984-06-02?/2004-08-08~')
Level1Interval: '1984-06-02?/2004-08-08~'
>>> parse_edtf('Y-12000') # 12000 years BCE
LongYear: 'Y-12000'
>>> parse_edtf('1979-22') # Summer 1979
Season: '1979-22'
>>> parse_edtf('2004-06~-11') # year certain, month/day approximate.
PartialUncertainOrApproximate: '2004-06~-11'
>>> parse_edtf('1979-XX-28') # The 28th day of an uncertain month in 1979
PartialUnspecified: '1979-XX-28'
>>> parse_edtf("[..1760-12-03,1762]")
OneOfASet: '[..1760-12-03, 1762]'
>>> parse_edtf('{1667,1668, 1670..1672}')
MultipleDates: '{1667, 1668, 1670..1672}'
>>> parse_edtf('2004-06-~01/2004-06-~20')
Level2Interval: '2004-06-~01/2004-06-~20'
>>> e = parse_edtf('Y-17E7')
ExponentialYear: 'Y-17E7'
>>> e.estimated()
-170000000
# '1950S2': some year between 1900 and 1999, estimated to be 1950
>>> d = parse_edtf('1950S2')
Date: '1950S2'
>>> d.lower_fuzzy()[:3]
(1900, 1, 1)
>>> d.upper_fuzzy()[:3]
(1999, 12, 31)
# 'Y171010000S3': some year between 171000000 and 171999999 estimated to be 171010000, with 3 significant digits.
>>> l = parse_edtf('Y171010000S3')
LongYear: 'Y171010000S3'
>>> l.estimated()
171010000
>>> l.lower_fuzzy()[:3]
(171000000, 1, 1)
>>> l.upper_fuzzy()[:3]
(171999999, 12, 31)
# 'Y3388E2S3': some year in exponential notation between 338000 and 338999, estimated to be 338800
>>> e = parse_edtf('Y3388E2S3')
ExponentialYear: 'Y3388E2S3S3'
>>> e.estimated()
338800
>>> e.lower_fuzzy()[:3]
(338000, 1, 1)
>>> e.upper_fuzzy()[:3]
(338999, 12, 31)
The library includes a basic English natural language parser (it's not yet smart enough to work with occasions such as 'Easter', or in other languages):
>>> from edtf import text_to_edtf
>>> text_to_edtf("circa August 1979")
'1979-08~'
Note that the result is a string, not an ETDFObject
.
The parser can parse strings such as:
'January 12, 1940' => '1940-01-12'
'90' => '1990' #implied century
'January 2008' => '2008-01'
'the year 1800' => '1800'
'10/7/2008' => '2008-10-07' # in a full-specced date, assume US ordering
# uncertain/approximate
'1860?' => '1860?'
'1862 (uncertain)' => '1862?'
'circa Feb 1812' => '1812-02~'
'c.1860' => '1860~' #with or without .
'ca1860' => '1860~'
'approx 1860' => '1860~'
'ca. 1860s' => '186X~'
'circa 1840s' => '184X~'
'ca. 1860s?' => '186X?~'
'c1800s?' => '180X?~' # with uncertainty indicators, use the decade
# unspecified parts
'January 12' => 'XXXX-01-12'
'January' => 'XXXX-01'
'7/2008' => '2008-07'
'month in 1872' => '1872-XX'
'day in January 1872' => '1872-01-XX'
'day in 1872' => '1872-XX-XX'
#seasons
'Autumn 1872' => '1872-23'
'Fall 1872' => '1872-23'
# before/after
'earlier than 1928' => '/1928'
'later than 1928' => '1928/'
'before January 1928' => '/1928-01'
'after about the 1920s' => '192X~/'
#centuries
'1st century' => '00XX'
'10c' => '09XX'
'19th century?' => '18XX?'
# just showing off now...
'a day in about Spring 1849?' => '1849-21-XX?~'
# simple ranges, which aren't as accurate as they could be. The parser is
limited to only picking the first year range it finds.
'1851-1852' => '1851/1852'
'1851-1852; printed 1853-1854' => '1851/1852'
'1851-52' => '1851/1852'
'1856-ca. 1865' => '1856/1865~'
'1860s-1870s' => '186X/187X'
'1920s - early 1930s' => '192X/193X'
'1938, printed 1940s-1950s' => '1938'
Generating natural text from an EDTF representation is a future goal.
"1800s" is ambiguously a century or decade. If the given date is either uncertain or approximate, the decade interpretation is used. If the date is certain and precise, the century interpretation is used.
If the century isn't specified (EDTF(natural_text="the '70s")
), we imply the century to be "19" if the year is greater than the current year, otherwise we imply the century to be the current century.
US-ordered dates (mm/dd/yyyy) are assumed by default in natural language. To change this, set DAY_FIRST
to True in settings.
If a natural language groups dates with a '/', it's interpreted as "or" rather than "and". The resulting EDTF text is a list bracketed by []
("one of these dates") rather than {}
(all of these dates).
Since EDTF dates are often regions, and often imprecise, we need to use a few different Python dates, depending on the circumstance. Generally, Python dates are used for sorting and filtering, and are not displayed directly to users.
struct_time
date representationBecause Python's datetime
module does not support dates out side the range 1 AD to 9999 AD we return dates as time.struct_time
objects by default instead of the datetime.date
or datetime.datetime
objects you might expect.
The struct_time
representation is more difficult to work with, but can be sorted as-is which is the primary use-case, and can be converted relatively easily to date
or datetime
objects (provided the year is within 1 to 9999 AD) or to date objects in more flexible libraries like astropy.time for years outside these bounds.
If you are sure you are working with dates within the range supported by Python's datetime
module, you can get these more convenient objects using the edtf.struct_time_to_date
and edtf.struct_time_to_datetime
functions.
[!NOTE] This library previously did return
date
anddatetime
objects from methods by default before we switched tostruct_time
. See ticket https://github.com/ixc/python-edtf/issues/26.
lower_strict
and upper_strict
These dates indicate the earliest and latest dates that are strictly in the date range, ignoring uncertainty or approximation. One way to think about this is 'if you had to pick a single date to sort by, what would it be?'.
In an ascending sort (most recent last), sort by lower_strict
to get a natural sort order. In a descending sort (most recent first), sort by upper_strict
:
>>> e = parse_edtf('1912-04~')
>>> e.lower_strict() # Returns struct_time
>>> time.struct_time(tm_year=1912, tm_mon=4, tm_mday=1, tm_hour=0, tm_min=0, tm_sec=0, tm_wday=0, tm_yday=0, tm_isdst=-1)
>>> e.lower_strict()[:3] # Show only interesting parts of struct_time
(1912, 4, 01)
>>> from edtf import struct_time_to_date
>>> struct_time_to_date(e.lower_strict()) # Convert to date
datetime.date(1912, 4, 01)
>>> e.upper_strict()[:3]
(1912, 4, 30)
>>> struct_time_to_date(e.upper_strict())
datetime.date(1912, 4, 30)
lower_fuzzy
and upper_fuzzy
These dates indicate the earliest and latest dates that are possible in the date range, for a fairly arbitrary definition of 'possibly'.
These values are useful for filtering results - i.e. testing which EDTF dates might conceivably fall into, or overlap, a desired date range.
The fuzzy dates are derived from the strict dates, plus or minus a level of padding that depends on how precise the date specfication is. For the case of approximate or uncertain dates, we (arbitrarily) pad the ostensible range by 100% of the uncertain timescale, or by a 12 weeks in the case of seasons. That is, if a date is approximate at the month scale, it is padded by a month. If it is approximate at the year scale, it is padded by a year:
>>> e = parse_edtf('1912-04~')
>>> e.lower_fuzzy()[:3] # padding is 100% of a month
(1912, 3, 1)
>>> e.upper_fuzzy()[:3]
(1912, 5, 30)
>>> e = parse_edtf('1912~')
>>> e.lower_fuzzy()[:3] # padding is 100% of a year
(1911, 1, 1)
>>> e.upper_fuzzy()[:3]
(1913, 12, 31)
One can interpret uncertain or approximate dates as 'plus or minus a [level of precision]'.
If a date is both uncertain and approximate, the padding is applied twice, i.e. it gets 100% * 2 padding, or 'plus or minus two [levels of precision]'.
EDTF objects support properties that provide an overview of how the object is qualified:
.is_uncertain (?)
.is_approximate (~)
.is_uncertain_and_approximate (%)
These properties represent whether the any part of the date object is uncertain, approximate, or uncertain and approximate. For ranges, the properties are true if any part of the range (lower or upper section) is qualified as such. A date is not necessarily uncertain and approximate if it is separately both uncertain and approximate - it must have the "%" qualifier to be considered uncertain and aproximate.
>>> parse_edtf("2006-06-11")
Date: '2006-06-11'
>>> parse_edtf("2006-06-11").is_uncertain
False
>>> parse_edtf("2006-06-11").is_approximate
False
>>> parse_edtf("1984?")
UncertainOrApproximate: '1984?'
>>> parse_edtf("1984?").is_approximate
False
>>> parse_edtf("1984?").is_uncertain
True
>>> parse_edtf("1984?").is_uncertain_and_approximate
False
>>> parse_edtf("1984%").is_uncertain
False
>>> parse_edtf("1984%").is_uncertain_and_approximate
True
>>> parse_edtf("1984~/2004-06")
Level1Interval: '1984~/2004-06'
>>> parse_edtf("1984~/2004-06").is_approximate
True
>>> parse_edtf("1984~/2004-06").is_uncertain
False
>>> parse_edtf("2004?-~06-~04")
PartialUncertainOrApproximate: '2004?-~06-~04'
>>> parse_edtf("2004?-~06-~04").is_approximate
True
>>> parse_edtf("2004?-~06-~04").is_uncertain
True
>>> parse_edtf("2004?-~06-~04").is_uncertain_and_approximate
False
[!IMPORTANT] Seasons are interpreted as Northern Hemisphere by default. To change this, override the month mapping in
appsettings.py
.
Two EDTF dates are considered equal if their unicode()
representations are the same. An EDTF date is considered greater than another if its lower_strict
value is later.
The edtf.fields.EDTFField
implements a simple Django field that stores an EDTF object in the database.
To store a natural language value on your model, define another field, and set the natural_text_field
parameter of your EDTFField
.
When your model is saved, the natural_text_field
value will be parsed to set the date_edtf
value, and the underlying EDTF object will set the _earliest
and _latest
fields on the model to a float value representing the Julian Date.
[!WARNING] The conversion to and from Julian Date numerical values can be inaccurate, especially for ancient dates back to thousands of years BC. Ideally Julian Date values should be used for range and ordering operations only where complete accuracy is not required. They should not be used for definitive storage or for display after roundtrip conversions.
Example usage:
from django.db import models
from edtf.fields import EDTFField
class MyModel(models.Model):
date_display = models.CharField(
"Date of creation (display)",
blank=True,
max_length=255,
)
date_edtf = EDTFField(
"Date of creation (EDTF)",
natural_text_field='date_display',
lower_fuzzy_field='date_earliest',
upper_fuzzy_field='date_latest',
lower_strict_field='date_sort_ascending',
upper_strict_field='date_sort_descending',
blank=True,
null=True,
)
# use for filtering
date_earliest = models.FloatField(blank=True, null=True)
date_latest = models.FloatField(blank=True, null=True)
# use for sorting
date_sort_ascending = models.FloatField(blank=True, null=True)
date_sort_descending = models.FloatField(blank=True, null=True)
Since the EDTFField
and the _earliest
and _latest
field values are set automatically, you may want to make them readonly, or not visible in your model admin.
git clone https://github.com/ixc/python-edtf.git
python3 -m venv venv
pip install -r dev-requirements.txt
pre-commit install
python-edtf
, run the unit tests: pytest
python-edtf
, run pytest -m benchmark
to run the benchmarks (published here)python-edtf/edtf_django_tests
, run the integration tests: python manage.py test edtf_integration
act
, e.g. act pull_request
or act --pull=false --container-architecture linux/amd64
. Some steps may require a GitHub PAT: act pull_request --container-architecture linux/amd64 --pull=false -s GITHUB_TOKEN=<your PAT>
ruff check --output-format=github --config pyproject.toml
ruff format --check --config pyproject.toml
ruff format --config pyproject.toml
Coverage reports are generated and added as comments to commits, and also visible in the actions log. Benchmarks are run on pull requests and are published here and also visible in the actions log.
FAQs
Python implementation of Library of Congress EDTF (Extended Date Time Format) specification
We found that edtf demonstrated a healthy version release cadence and project activity because the last version was released less than a year ago. It has 1 open source maintainer collaborating on the project.
Did you know?
Socket for GitHub automatically highlights issues in each pull request and monitors the health of all your open source dependencies. Discover the contents of your packages and block harmful activity before you install or update your dependencies.
Security News
Research
The Socket Research Team breaks down a malicious wrapper package that uses obfuscation to harvest credentials and exfiltrate sensitive data.
Research
Security News
Attackers used a malicious npm package typosquatting a popular ESLint plugin to steal sensitive data, execute commands, and exploit developer systems.
Security News
The Ultralytics' PyPI Package was compromised four times in one weekend through GitHub Actions cache poisoning and failure to rotate previously compromised API tokens.