• 欢迎访问搞代码网站,推荐使用最新版火狐浏览器和Chrome浏览器访问本网站!
  • 如果您觉得本站非常有看点,那么赶紧使用Ctrl+D 收藏搞代码吧

python自动化测试之DDT数据驱动的实现代码

python 搞代码 4年前 (2022-01-09) 18次浏览 已收录 0个评论

时隔已久,再次冒烟,自动化测试工作仍在继续,自动化测试中的数据驱动技术尤为重要,不然咋去实现数据分离呢,对吧,这里就简单介绍下与传统unittest自动化测试框架匹配的DDT数据驱动技术。

话不多说,先撸一波源码,其实整体代码并不多

# -*- coding: utf-8 -*-
# This file is a part of DDT (https://github.com/txels/ddt)
# Copyright 2012-2015 Carles Barrobés and DDT contributors
# For the exact contribution history, see the git revision log.
# DDT is licensed under the MIT License, included in
# https://github.com/txels/ddt/blob/master/LICENSE.md
import inspect
import json
import os
import re
import codecs
from functools import wraps
try:
  import yaml
except ImportError: # pragma: no cover
  _have_yaml = False
else:
  _have_yaml = True
__version__ = '1.2.1'
# These attributes will not conflict with any real python attribute
# They are added to the decorated test method and processed later
# by the `ddt` class decorator.
DATA_ATTR = '%values'   # store the data the test must run with
FILE_ATTR = '%file_path'  # store the path to JSON file
UNPACK_ATTR = '%unpack'  # remember that we have to unpack values
index_len = 5       # default max length of case index
try:
  trivial_types = (type(None), bool, int, float, basestring)
except NameError:
  trivial_types = (type(None), bool, int, float, str)
def is_trivial(value):
  if isinstance(value, trivial_types):
    return True
  elif isinstance(value, (list, tuple)):
    return all(map(is_trivial, value))
  return False
def unpack(func):
  """
  Method decorator to add unpack feature.
  """
  setattr(func, UNPACK_ATTR, True)
  return func
def data(*values):
  """
  Method decorator to add to your test methods.
  Should be added to methods of instances of ``unittest.TestCase``.
  """
  global index_len
  index_len = len(str(len(values)))
  return idata(values)
def idata(iterable):
  """
  Method decorator to add to your test methods.
  Should be added to methods of instances of ``unittest.TestCase``.
  """
  def wrapper(func):
    setattr(func, DATA_ATTR, iterable)
    return func
  return wrapper
def file_data(value):
  """
  Method decorator to add to your test methods.
  Should be added to methods of instances of ``unittest.TestCase``.
  ``value`` should be a path relative to the directory of the file
  containing the decorated ``unittest.TestCase``. The file
  should contain JSON encoded data, that can either be a list or a
  dict.
  In case of a list, each value in the list will correspond to one
  test case, and the value will be concatenated to the test method
  name.
  In case of a dict, keys will be used as suffixes to the name of the
  test case, and values will be fed as test data.
  """
  def wrapper(func):
    setattr(func, FILE_ATTR, value)
    return func
  return wrapper
def mk_test_name(name, value, index=0):
  """
  Generate a new name for a test case.
  It will take the original test name and append an ordinal index and a
  string representation of the value, and convert the result into a valid
  python identifier by replacing extraneous characters with ``_``.
  We avoid doing str(value) if dealing with non-trivial values.
  The problem is possible different names with different runs, e.g.
  different order of dictionary keys (see PYTHONHASHSEED) or dealing
  with mock objects.
  Trivial scalar values are passed as is.
  A "trivial" value is a plain scalar, or a tuple or list consisting
  only of trivial values.
  """
  # Add zeros before index to keep order
  index = "{0:0{1}}".format(index + 1, index_len)
  if not is_trivial(value):
    return "{0}_{1}".format(name, index)
  try:
    value = str(value)
  except UnicodeEncodeError:
    # fallback for python2
    value = value.encode('ascii', 'backslashreplace')
  test_name = "{0}_{1}_{2}".format(name, index, value)
  return re.sub(r'\W|^(?=\d)<i style="color:transparent">本文来源gaodai$ma#com搞$代*码*网(</i>', '_', test_name)
def feed_data(func, new_name, test_data_docstring, *args, **kwargs):
  """
  This internal method decorator feeds the test data item to the test.
  """
  @wraps(func)
  def wrapper(self):
    return func(self, *args, **kwargs)
  wrapper.__name__ = new_name
  wrapper.__wrapped__ = func
  # set docstring if exists
  if test_data_docstring is not None:
    wrapper.__doc__ = test_data_docstring
  else:
    # Try to call format on the docstring
    if func.__doc__:
      try:
        wrapper.__doc__ = func.__doc__.format(*args, **kwargs)
      except (IndexError, KeyError):
        # Maybe the user has added some of the formating strings
        # unintentionally in the docstring. Do not raise an exception
        # as it could be that user is not aware of the
        # formating feature.
        pass
  return wrapper
def add_test(cls, test_name, test_docstring, func, *args, **kwargs):
  """
  Add a test case to this class.
  The test will be based on an existing function but will give it a new
  name.
  """
  setattr(cls, test_name, feed_data(func, test_name, test_docstring,
      *args, **kwargs))
def process_file_data(cls, name, func, file_attr):
  """
  Process the parameter in the `file_data` decorator.
  """
  cls_path = os.path.abspath(inspect.getsourcefile(cls))
  data_file_path = os.path.join(os.path.dirname(cls_path), file_attr)
  def create_error_func(message): # pylint: disable-msg=W0613
    def func(*args):
      raise ValueError(message % file_attr)
    return func
  # If file does not exist, provide an error function instead
  if not os.path.exists(data_file_path):
    test_name = mk_test_name(name, "error")
    test_docstring = """Error!"""
    add_test(cls, test_name, test_docstring,
         create_error_func("%s does not exist"), None)
    return
  _is_yaml_file = data_file_path.endswith((".yml", ".yaml"))
  # Don't have YAML but want to use YAML file.
  if _is_yaml_file and not _have_yaml:
    test_name = mk_test_name(name, "error")
    test_docstring = """Error!"""
    add_test(
      cls,
      test_name,
      test_docstring,
      create_error_func("%s is a YAML file, please install PyYAML"),
      None
    )
    return
  with codecs.open(data_file_path, 'r', 'utf-8') as f:
    # Load the data from YAML or JSON
    if _is_yaml_file:
      data = yaml.safe_load(f)
    else:
      data = json.load(f)
  _add_tests_from_data(cls, name, func, data)
def _add_tests_from_data(cls, name, func, data):
  """
  Add tests from data loaded from the data file into the class
  """
  for i, elem in enumerate(data):
    if isinstance(data, dict):
      key, value = elem, data[elem]
      test_name = mk_test_name(name, key, i)
    elif isinstance(data, list):
      value = elem
      test_name = mk_test_name(name, value, i)
    if isinstance(value, dict):
      add_test(cls, test_name, test_name, func, **value)
    else:
      add_test(cls, test_name, test_name, func, value)
def _is_primitive(obj):
  """Finds out if the obj is a "primitive". It is somewhat hacky but it works.
  """
  return not hasattr(obj, '__dict__')
def _get_test_data_docstring(func, value):
  """Returns a docstring based on the following resolution strategy:
  1. Passed value is not a "primitive" and has a docstring, then use it.
  2. In all other cases return None, i.e the test name is used.
  """
  if not _is_primitive(value) and value.__doc__:
    return value.__doc__
  else:
    return None
def ddt(cls):
  """
  Class decorator for subclasses of ``unittest.TestCase``.
  Apply this decorator to the test case class, and then
  decorate test methods with ``@data``.
  For each method decorated with ``@data``, this will effectively create as
  many methods as data items are passed as parameters to ``@data``.
  The names of the test methods follow the pattern
  ``original_test_name_{ordinal}_{data}``. ``ordinal`` is the position of the
  data argument, starting with 1.
  For data we use a string representation of the data value converted into a
  valid python identifier. If ``data.__name__`` exists, we use that instead.
  For each method decorated with ``@file_data('test_data.json')``, the
  decorator will try to load the test_data.json file located relative
  to the python file containing the method that is decorated. It will,
  for each ``test_name`` key create as many methods in the list of values
  from the ``data`` key.
  """
  for name, func in list(cls.__dict__.items()):
    if hasattr(func, DATA_ATTR):
      for i, v in enumerate(getattr(func, DATA_ATTR)):
        test_name = mk_test_name(name, getattr(v, "__name__", v), i)
        test_data_docstring = _get_test_data_docstring(func, v)
        if hasattr(func, UNPACK_ATTR):
          if isinstance(v, tuple) or isinstance(v, list):
            add_test(
              cls,
              test_name,
              test_data_docstring,
              func,
              *v
            )
          else:
            # unpack dictionary
            add_test(
              cls,
              test_name,
              test_data_docstring,
              func,
              **v
            )
        else:
          add_test(cls, test_name, test_data_docstring, func, v)
      delattr(cls, name)
    elif hasattr(func, FILE_ATTR):
      file_attr = getattr(func, FILE_ATTR)
      process_file_data(cls, name, func, file_attr)
      delattr(cls, name)
  return cls

搞代码网(gaodaima.com)提供的所有资源部分来自互联网,如果有侵犯您的版权或其他权益,请说明详细缘由并提供版权或权益证明然后发送到邮箱[email protected],我们会在看到邮件的第一时间内为您处理,或直接联系QQ:872152909。本网站采用BY-NC-SA协议进行授权
转载请注明原文链接:python自动化测试之DDT数据驱动的实现代码
喜欢 (0)
[搞代码]
分享 (0)
发表我的评论
取消评论

表情 贴图 加粗 删除线 居中 斜体 签到

Hi,您需要填写昵称和邮箱!

  • 昵称 (必填)
  • 邮箱 (必填)
  • 网址