Skip to main content

Allows filters iterable of dictionary by another dictionary

Project description

QyPy

Query list of dictionaries or objects as if you are filtering in DBMS. You can get dicts/objects that are matched by OR, AND or NOT or all of them.

Installation

pip install QyPy

Usage

from query import Q
l = [{"name":"John","age":"16"}, {"name":"Mike","age":"19"},{"name":"Sarah","age":"21"}]
filtered= Q(l,{'name__contains':"k", "age__lt":20})
print(list(filtered))

output

[{'name': 'Mike', 'age': '19'}]

The above filtration can be written as

from query import Q
l = [{"name":"John","age":"16"}, {"name":"Mike","age":"19"},{"name":"Sarah","age":"21"}]
filtered= Q(l,name__contains="k", age__lt = 20)

Notes:

  1. Q returns an iterator which can be converted to a list by calling list.
  2. Even though, age was str in the dict, as the value of in the query dict was int, QyPy converted the value in dict automatically to match the query data type. This behaviour can be stopped by passing False to convert_types parameter.

Supported filters

  • eq: equals and this default filter
  • gt: greater than.
  • gte: greater than or equal.
  • lt: less than
  • lte: less than or equal
  • in: the value in a list of a tuple.
    • e.g. age__in=[10,20,30]
  • contains: contains a substring as in the example.
  • icontains: case-insensitive contains.
  • startswith: checks if a value starts with a query strings.
  • istartswith: case-insensitive startswith.
  • endswith: checks if a value ends with a query strings.
  • iendswith: case-insensitive endswith.
  • isnull: checks if the value matches any of NULL_VALUES which are ('', '.', None, "None", "null", "NULL")
    • e.g. filter__isnull=True or filter__isnull=False

For eq,gt,gte,lt,lte, in, contains, icontains, startswith,istartswith, endswith and iendswith, you can add a n to negate the results. e.g nin which is equivalent to not in

Advanced examples

This section will cover the use of OR, AND and NOT

Usage of OR

OR or __or__ takes a list of dictionaries to evaluate and returns with the first True.

from query import Q
l = [{"name":"John","age":"16"}, {"name":"Mike","age":"19"},{"name":"Sarah","age":"21"}]
filtered= Q(l,{"OR":[{"name__contains":"k"}, {"age__gte":21}]})
print(list(filtered))

output

[{'name': 'Mike', 'age': '19'}, {'name': 'Sarah', 'age': '21'}]

Usage of NOT

NOT or __not__ takes a dict for query run.

from query import Q
l = [{"name":"John","age":"16"}, {"name":"Mike","age":"19"},{"name":"Sarah","age":"21"}]
filtered= Q(l,{"age__gt":15, "NOT":{"age__eq":19}})
print(list(filtered))

output

[{'name': 'John', 'age': '16'}, {'name': 'Sarah', 'age': '21'}]

Usage of AND

AND or __and__ takes a list of dict for query run, returns with the first False.

from query import Q
l = [{"name":"John","age":"16"}, {"name":"Mike","age":"19"},{"name":"Sarah","age":"21"}]
filtered= Q(l,{"__and__":[{"age__gte":15},{"age__lt":21}]})
print(list(filtered))

output

[{'name': 'John', 'age': '16'}, {'name': 'Mike', 'age': '19'}]

Comparison with Pandas

This is done on Python 3.8 running on Ubuntu 22.04 on i7 11th generation and 32 GB of RAM.

Comparison Pandas QyPy
Package Size
(Lower is better)
29.8 MB 7.5 KB
import Time (Worst)
(Lower is better)
146 ms 1.05 ms
load 10k CSV lines
(Lower is better) [1]
0.295s 0.138s
get first matched record
(Lower is better)
0.310s 0.017s
print all filtered records (10/10k)
(Lower is better)
0.310s 0.137s
filter by integers
(Lower is better)
0.316s 0.138s

[1] This was loading the whole csv in memory which was for sake of fair comparison. Nevertheless, QyPy can work with DictReader as an iterable which executes in 0.014s, for it handles line by line.

Thanks for Asma Tahir for Pandas stats.

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

leopards-0.6.1.tar.gz (8.2 kB view hashes)

Uploaded Source

Supported by

AWS AWS Cloud computing and Security Sponsor Datadog Datadog Monitoring Fastly Fastly CDN Google Google Download Analytics Microsoft Microsoft PSF Sponsor Pingdom Pingdom Monitoring Sentry Sentry Error logging StatusPage StatusPage Status page