How to use _normalize method in autotest

Best Python code snippet using autotest_python

test_filtering.py

Source:test_filtering.py Github

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...50cumprod_expected = data.cumprod().ffill()51cumprod_filtered_expected = data[filter].cumprod().reindex(index).ffill()52cumprod_df_expected = df.cumprod().ffill()53cumprod_df_filtered_expected = df[filter].cumprod().reindex(index).ffill()54def _normalize(x):55 """try and get a vector/dataframe in a format unittest can compare them"""56 if isinstance(x, float):57 if np.isnan(x):58 return -np.inf59 return x60 if isinstance(x, (pa.DataFrame, pa.Series)):61 x = x.values62 if x.ndim == 1:63 return tuple([_normalize(y) for y in x])64 r = x.copy()65 r[np.isnan(r)] = -np.inf66 return tuple(r.tolist())67class NodeFilterTest(unittest.TestCase):68 def setUp(self):69 self.ctx = MDFContext(index[0])70 def test_queue(self):71 actual = self._run(datanode.queuenode(as_list=True))72 self.assertEqual(actual.tolist(), queue_expected)73 actual = self._run(datanode.queuenode(filter=filternode, as_list=True))74 self.assertEqual(actual.tolist(), queue_filtered_expected)75 def test_delay(self):76 actual = self._run(datanode.delaynode(periods=1, initial_value=np.nan))77 self.assertEqual(_normalize(actual), _normalize(delay_expected))78 actual = self._run(datanode.delaynode(periods=1, initial_value=np.nan, filter=filternode))79 self.assertEqual(_normalize(actual), _normalize(delay_filtered_expected))80 def test_delay_df(self):81 actual = self._run(dfnode.delaynode(periods=1, initial_value=np.nan))82 self.assertEqual(_normalize(actual), _normalize(delay_df_expected))83 actual = self._run(dfnode.delaynode(periods=1, initial_value=np.nan, filter=filternode))84 self.assertEqual(_normalize(actual), _normalize(delay_df_filtered_expected))85 def test_nansum(self):86 actual = self._run(datanode.nansumnode())87 self.assertEqual(_normalize(actual), _normalize(nansum_expected))88 actual = self._run(datanode.nansumnode(filter=filternode))89 self.assertEqual(_normalize(actual), _normalize(nansum_filtered_expected))90 def test_nansum_df(self):91 actual = self._run(dfnode.nansumnode())92 self.assertEqual(_normalize(actual), _normalize(nansum_df_expected))93 actual = self._run(dfnode.nansumnode(filter=filternode))94 self.assertEqual(_normalize(actual), _normalize(nansum_df_filtered_expected))95 def test_cumprod(self):96 actual = self._run(datanode.cumprodnode())97 self.assertEqual(_normalize(actual), _normalize(cumprod_expected))98 actual = self._run(datanode.cumprodnode(filter=filternode))99 self.assertEqual(_normalize(actual), _normalize(cumprod_filtered_expected))100 def test_cumprod_df(self):101 actual = self._run(dfnode.cumprodnode())102 self.assertEqual(_normalize(actual), _normalize(cumprod_df_expected))103 actual = self._run(dfnode.cumprodnode(filter=filternode))104 self.assertEqual(_normalize(actual), _normalize(cumprod_df_filtered_expected))105 def _run(self, node):106 result = []107 for t in index:108 self.ctx.set_date(t)109 result.append(self.ctx[node])110 if isinstance(result[0], pa.Series):111 return pa.DataFrame(result, index=index)...

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normalize.py

Source:normalize.py Github

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1# -*- coding: utf-8 -*-2import six3from geodata.text import _normalize4from geodata.text.token_types import token_types5from geodata.encoding import safe_decode6# String options7NORMALIZE_STRING_LATIN_ASCII = _normalize.NORMALIZE_STRING_LATIN_ASCII8NORMALIZE_STRING_TRANSLITERATE = _normalize.NORMALIZE_STRING_TRANSLITERATE9NORMALIZE_STRING_STRIP_ACCENTS = _normalize.NORMALIZE_STRING_STRIP_ACCENTS10NORMALIZE_STRING_DECOMPOSE = _normalize.NORMALIZE_STRING_DECOMPOSE11NORMALIZE_STRING_LOWERCASE = _normalize.NORMALIZE_STRING_LOWERCASE12NORMALIZE_STRING_TRIM = _normalize.NORMALIZE_STRING_TRIM13NORMALIZE_STRING_REPLACE_HYPHENS = _normalize.NORMALIZE_STRING_REPLACE_HYPHENS14NORMALIZE_STRING_SIMPLE_LATIN_ASCII = _normalize.NORMALIZE_STRING_SIMPLE_LATIN_ASCII15DEFAULT_STRING_OPTIONS = _normalize.NORMALIZE_DEFAULT_STRING_OPTIONS16# Token options17NORMALIZE_TOKEN_REPLACE_HYPHENS = _normalize.NORMALIZE_TOKEN_REPLACE_HYPHENS18NORMALIZE_TOKEN_DELETE_HYPHENS = _normalize.NORMALIZE_TOKEN_DELETE_HYPHENS19NORMALIZE_TOKEN_DELETE_FINAL_PERIOD = _normalize.NORMALIZE_TOKEN_DELETE_FINAL_PERIOD20NORMALIZE_TOKEN_DELETE_ACRONYM_PERIODS = _normalize.NORMALIZE_TOKEN_DELETE_ACRONYM_PERIODS21NORMALIZE_TOKEN_DROP_ENGLISH_POSSESSIVES = _normalize.NORMALIZE_TOKEN_DROP_ENGLISH_POSSESSIVES22NORMALIZE_TOKEN_DELETE_OTHER_APOSTROPHE = _normalize.NORMALIZE_TOKEN_DELETE_OTHER_APOSTROPHE23NORMALIZE_TOKEN_SPLIT_ALPHA_FROM_NUMERIC = _normalize.NORMALIZE_TOKEN_SPLIT_ALPHA_FROM_NUMERIC24NORMALIZE_TOKEN_REPLACE_DIGITS = _normalize.NORMALIZE_TOKEN_REPLACE_DIGITS25DEFAULT_TOKEN_OPTIONS = _normalize.NORMALIZE_DEFAULT_TOKEN_OPTIONS26TOKEN_OPTIONS_DROP_PERIODS = _normalize.NORMALIZE_TOKEN_OPTIONS_DROP_PERIODS27DEFAULT_TOKEN_OPTIONS_NUMERIC = _normalize.NORMALIZE_DEFAULT_TOKEN_OPTIONS_NUMERIC28def remove_parens(tokens):29 new_tokens = []30 open_parens = 031 for t, c in tokens:32 if c == token_types.PUNCT_OPEN:33 open_parens += 134 elif c == token_types.PUNCT_CLOSE:35 if open_parens > 0:36 open_parens -= 137 elif open_parens <= 0:38 new_tokens.append((t, c))39 return new_tokens40def normalize_string(s, string_options=DEFAULT_STRING_OPTIONS):41 s = safe_decode(s)42 return _normalize.normalize_string(s, string_options)43def normalized_tokens(s, string_options=DEFAULT_STRING_OPTIONS,44 token_options=DEFAULT_TOKEN_OPTIONS,45 strip_parentheticals=True, whitespace=False):46 '''47 Normalizes a string, tokenizes, and normalizes each token48 with string and token-level options.49 This version only uses libpostal's deterministic normalizations50 i.e. methods with a single output. The string tree version will51 return multiple normalized strings, each with tokens.52 Usage:53 normalized_tokens(u'St.-Barthélemy')54 '''55 s = safe_decode(s)56 normalized_tokens = _normalize.normalized_tokens(s, string_options, token_options, whitespace)57 if strip_parentheticals:58 normalized_tokens = remove_parens(normalized_tokens)...

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