File size: 67,373 Bytes
847a25a
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
1
2
3
4
5
6
7
8
9
10
11
12
13
14
15
16
17
18
19
20
21
22
23
24
25
26
27
28
29
30
31
32
33
34
35
36
37
38
39
40
41
42
43
44
45
46
47
48
49
50
51
52
53
54
55
56
57
58
59
60
61
62
63
64
65
66
67
68
69
70
71
72
73
74
75
76
77
78
79
80
81
82
83
84
85
86
87
88
89
90
91
92
93
94
95
96
97
98
99
100
101
102
103
104
105
106
107
108
109
110
111
112
113
114
115
116
117
118
119
120
121
122
123
124
125
126
127
128
129
130
131
132
133
134
135
136
137
138
139
140
141
142
143
144
145
146
147
148
149
150
151
152
153
154
155
156
157
158
159
160
161
162
163
164
165
166
167
168
169
170
171
172
173
174
175
176
177
178
179
180
181
182
183
184
185
186
187
188
189
190
191
192
193
194
195
196
197
198
199
200
201
202
{"nl": "Get pandas GroupBy object with sum over the rows with same column names within  dataframe `df`", "cmd": "df.groupby(df.columns, axis=1).sum()", "question_id": "13078751-34", "cmd_name": "conala", "oracle_man": ["pandas.reference.api.pandas.dataframe.groupby", "python.library.functions#sum"], "canonical_cmd": "VAR_STR.groupby(VAR_STR.columns, axis=1).sum()"}
{"nl": "divide the value for each key `k` in dict `d2` by the value for the same key `k` in dict `d1`", "cmd": "{k: (d2[k] / d1[k]) for k in list(d1.keys()) & d2}", "question_id": "11840111-76", "cmd_name": "conala", "oracle_man": ["python.library.functions#list", "python.library.stdtypes#dict.keys"], "canonical_cmd": "{VAR_STR: (VAR_STR[VAR_STR] / VAR_STR[VAR_STR]) for VAR_STR in list(VAR_STR.keys()) & VAR_STR}"}
{"nl": "combining rows in pandas by adding their values", "cmd": "df.groupby(df.index).sum()", "question_id": "17438906-51", "cmd_name": "conala", "oracle_man": ["pandas.reference.api.pandas.dataframe.groupby", "python.library.functions#sum"], "canonical_cmd": "df.groupby(df.index).sum()"}
{"nl": "make all keys lowercase in dictionary `d`", "cmd": "d = {(a.lower(), b): v for (a, b), v in list(d.items())}", "question_id": "21833383-37", "cmd_name": "conala", "oracle_man": ["python.library.functions#list", "python.library.stdtypes#str.lower", "python.library.stdtypes#dict.items"], "canonical_cmd": "VAR_STR = {(a.lower(), b): v for (a, b), v in list(VAR_STR.items())}"}
{"nl": "create a dataframe `d` filled with zeros with indices from 0 to length of `data` and column names from `feature_list`", "cmd": "d = pd.DataFrame(0, index=np.arange(len(data)), columns=feature_list)", "question_id": "22963263-45", "cmd_name": "conala", "oracle_man": ["numpy.reference.generated.numpy.arange", "python.library.functions#len", "pandas.reference.api.pandas.dataframe"], "canonical_cmd": "VAR_STR = pd.DataFrame(0, index=np.arange(len(VAR_STR)), columns=VAR_STR)"}
{"nl": "get a dict of variable names `['some', 'list', 'of', 'vars']` as a string and their values", "cmd": "dict((name, eval(name)) for name in ['some', 'list', 'of', 'vars'])", "question_id": "2553354-9", "cmd_name": "conala", "oracle_man": ["python.library.functions#eval", "python.library.stdtypes#dict"], "canonical_cmd": "dict((name, eval(name)) for name in [VAR_STR])"}
{"nl": "Format a date object `str_data` into iso fomrat", "cmd": "datetime.datetime.strptime(str_date, '%m/%d/%Y').date().isoformat()", "question_id": "12772057-25", "cmd_name": "conala", "oracle_man": ["python.library.datetime#datetime.datetime.strptime", "python.library.datetime#datetime.date.isoformat", "python.library.datetime#datetime.datetime.date"], "canonical_cmd": "datetime.datetime.strptime(str_date, '%m/%d/%Y').date().isoformat()"}
{"nl": "sort dictionary `mydict` in descending order based on the sum of each value in it", "cmd": "sorted(iter(mydict.items()), key=lambda tup: sum(tup[1]), reverse=True)[:3]", "question_id": "3411025-33", "cmd_name": "conala", "oracle_man": ["python.library.functions#sorted", "python.library.functions#iter", "python.library.functions#sum", "python.library.stdtypes#dict.items"], "canonical_cmd": "sorted(iter(VAR_STR.items()), key=lambda tup: sum(tup[1]), reverse=True)[:3]"}
{"nl": "get top `3` items from a dictionary `mydict` with largest sum of values", "cmd": "heapq.nlargest(3, iter(mydict.items()), key=lambda tup: sum(tup[1]))", "question_id": "3411025-3", "cmd_name": "conala", "oracle_man": ["python.library.heapq#heapq.nlargest", "python.library.functions#iter", "python.library.functions#sum", "python.library.stdtypes#dict.items"], "canonical_cmd": "heapq.nlargest(3, iter(VAR_STR.items()), key=lambda tup: sum(tup[1]))"}
{"nl": "calculate the md5 checksum of a file named  'filename.exe'", "cmd": "hashlib.md5(open('filename.exe', 'rb').read()).hexdigest()", "question_id": "16874598-40", "cmd_name": "conala", "oracle_man": ["python.library.urllib.request#open", "python.library.hashlib#hashlib.hash.hexdigest", "python.library.os#os.read"], "canonical_cmd": "hashlib.md5(open('VAR_STR', 'rb').read()).hexdigest()"}
{"nl": "get max key in dictionary `MyCount`", "cmd": "max(list(MyCount.keys()), key=int)", "question_id": "3108042-55", "cmd_name": "conala", "oracle_man": ["python.library.functions#max", "python.library.functions#list", "python.library.stdtypes#dict.keys"], "canonical_cmd": "max(list(VAR_STR.keys()), key=int)"}
{"nl": "return a string from a regex match with pattern '<img.*?>' in string 'line'", "cmd": "imtag = re.match('<img.*?>', line).group(0)", "question_id": "18493677-21", "cmd_name": "conala", "oracle_man": ["python.library.re#re.match", "python.library.re#re.Match.group"], "canonical_cmd": "imtag = re.match('VAR_STR', VAR_STR).group(0)"}
{"nl": "In Django, filter `Task.objects` based on all entities in ['A', 'P', 'F']", "cmd": "Task.objects.exclude(prerequisites__status__in=['A', 'P', 'F'])", "question_id": "1516795-1", "cmd_name": "conala", "oracle_man": ["django.ref.contrib.admin.index#django.contrib.admin.ModelAdmin.exclude"], "canonical_cmd": "Task.objects.exclude(prerequisites__status__in=['VAR_STR', 'VAR_STR', 'VAR_STR'])"}
{"nl": "remove duplicated items from list of lists `testdata`", "cmd": "list(map(list, set(map(lambda i: tuple(i), testdata))))", "question_id": "3724551-76", "cmd_name": "conala", "oracle_man": ["python.library.functions#map", "python.library.functions#list", "python.library.functions#tuple", "python.library.stdtypes#set"], "canonical_cmd": "list(map(list, set(map(lambda i: tuple(i), VAR_STR))))"}
{"nl": "uniqueness for list of lists `testdata`", "cmd": "[list(i) for i in set(tuple(i) for i in testdata)]", "question_id": "3724551-76", "cmd_name": "conala", "oracle_man": ["python.library.functions#map", "python.library.functions#list", "python.library.functions#tuple", "python.library.stdtypes#set"], "canonical_cmd": "[list(i) for i in set(tuple(i) for i in VAR_STR)]"}
{"nl": "download file from http url `file_url`", "cmd": "file_name = wget.download(file_url)", "question_id": "19602931-66", "cmd_name": "conala", "oracle_man": ["matplotlib.backend_webagg_api#matplotlib.backends.backend_webagg.WebAggApplication.Download"], "canonical_cmd": "file_name = wget.download(VAR_STR)"}
{"nl": "produce a pivot table as dataframe using column 'Y' in datafram `df` to form the axes of the resulting dataframe", "cmd": "df.pivot_table('Y', rows='X', cols='X2')", "question_id": "9550867-20", "cmd_name": "conala", "oracle_man": ["pandas.reference.api.pandas.dataframe.pivot_table"], "canonical_cmd": "VAR_STR.pivot_table('VAR_STR', rows='X', cols='X2')"}
{"nl": "remove duplicate dict in list `l`", "cmd": "[dict(t) for t in set([tuple(d.items()) for d in l])]", "question_id": "9427163-45", "cmd_name": "conala", "oracle_man": ["python.library.functions#tuple", "python.library.stdtypes#dict", "python.library.stdtypes#set", "python.library.stdtypes#dict.items"], "canonical_cmd": "[dict(t) for t in set([tuple(d.items()) for d in VAR_STR])]"}
{"nl": "request url 'https://www.reporo.com/' without verifying SSL certificates", "cmd": "requests.get('https://www.reporo.com/', verify=False)", "question_id": "28667684-80", "cmd_name": "conala", "oracle_man": ["python.library.webbrowser#webbrowser.get"], "canonical_cmd": "requests.get('VAR_STR', verify=False)"}
{"nl": "Filter queryset for all objects in Django model `MyModel` where texts length are greater than `254`", "cmd": "MyModel.objects.filter(text__regex='^.{254}.*')", "question_id": "23351183-55", "cmd_name": "conala", "oracle_man": ["python.library.logging#logging.Filter.filter"], "canonical_cmd": "VAR_STR.objects.filter(text__regex='^.{254}.*')"}
{"nl": "Get value for  \"username\" parameter in GET request  in Django", "cmd": "request.GET.get('username', '')", "question_id": "23531030-8", "cmd_name": "conala", "oracle_man": [], "canonical_cmd": "request.GET.get('VAR_STR', '')"}
{"nl": "convert binary string '\\x00\\x00\\x80?\\x00\\x00\\x00@\\x00\\x00@@\\x00\\x00\\x80@' to numpy array", "cmd": "np.fromstring('\\x00\\x00\\x80?\\x00\\x00\\x00@\\x00\\x00@@\\x00\\x00\\x80@', dtype='<f4')", "question_id": "11760095-62", "cmd_name": "conala", "oracle_man": ["numpy.reference.generated.numpy.fromstring"], "canonical_cmd": "np.fromstring('VAR_STR', dtype='<f4')"}
{"nl": "convert binary string to numpy array", "cmd": "np.fromstring('\\x00\\x00\\x80?\\x00\\x00\\x00@\\x00\\x00@@\\x00\\x00\\x80@', dtype='>f4')", "question_id": "11760095-48", "cmd_name": "conala", "oracle_man": ["numpy.reference.generated.numpy.fromstring"], "canonical_cmd": "np.fromstring('\\x00\\x00\\x80?\\x00\\x00\\x00@\\x00\\x00@@\\x00\\x00\\x80@', dtype='>f4')"}
{"nl": "convert a pandas `df1` groupby object to dataframe", "cmd": "DataFrame({'count': df1.groupby(['Name', 'City']).size()}).reset_index()", "question_id": "10373660-65", "cmd_name": "conala", "oracle_man": ["pandas.reference.api.pandas.dataframe.reset_index", "pandas.reference.api.pandas.core.groupby.groupby.size", "pandas.reference.api.pandas.dataframe.groupby"], "canonical_cmd": "DataFrame({'count': VAR_STR.groupby(['Name', 'City']).size()}).reset_index()"}
{"nl": "lowercase keys and values in dictionary `{'My Key': 'My Value'}`", "cmd": "{k.lower(): v.lower() for k, v in list({'My Key': 'My Value'}.items())}", "question_id": "764235-66", "cmd_name": "conala", "oracle_man": ["python.library.functions#list", "python.library.stdtypes#str.lower", "python.library.stdtypes#dict.items"], "canonical_cmd": "{k.lower(): v.lower() for k, v in list({VAR_STR}.items())}"}
{"nl": "lowercase all keys and values in dictionary `{'My Key': 'My Value'}`", "cmd": "dict((k.lower(), v) for k, v in {'My Key': 'My Value'}.items())", "question_id": "764235-57", "cmd_name": "conala", "oracle_man": ["python.library.stdtypes#dict", "python.library.stdtypes#dict.items", "python.library.stdtypes#str.lower"], "canonical_cmd": "dict((k.lower(), v) for k, v in {VAR_STR}.items())"}
{"nl": "Convert each key,value pair in a dictionary `{'My Key': 'My Value'}` to lowercase", "cmd": "dict((k.lower(), v.lower()) for k, v in {'My Key': 'My Value'}.items())", "question_id": "764235-84", "cmd_name": "conala", "oracle_man": ["python.library.stdtypes#dict", "python.library.stdtypes#str.lower", "python.library.stdtypes#dict.items"], "canonical_cmd": "dict((k.lower(), v.lower()) for k, v in {VAR_STR}.items())"}
{"nl": "get logical xor of `a` and `b`", "cmd": "(bool(a) != bool(b))", "question_id": "432842-98", "cmd_name": "conala", "oracle_man": ["python.library.functions#bool"], "canonical_cmd": "bool(VAR_STR) != bool(VAR_STR)"}
{"nl": "get logical xor of `a` and `b`", "cmd": "(bool(a) ^ bool(b))", "question_id": "432842-64", "cmd_name": "conala", "oracle_man": ["python.library.functions#bool"], "canonical_cmd": "bool(VAR_STR) ^ bool(VAR_STR)"}
{"nl": "get logical xor of `a` and `b`", "cmd": "xor(bool(a), bool(b))", "question_id": "432842-23", "cmd_name": "conala", "oracle_man": ["python.library.functions#bool", "python.library.operator#operator.xor"], "canonical_cmd": "xor(bool(VAR_STR), bool(VAR_STR))"}
{"nl": "get the logical xor of two variables `str1` and `str2`", "cmd": "return (bool(str1) ^ bool(str2))", "question_id": "432842-18", "cmd_name": "conala", "oracle_man": ["python.library.functions#bool"], "canonical_cmd": "return bool(VAR_STR) ^ bool(VAR_STR)"}
{"nl": "Django check if an object with criteria `name` equal to 'name' and criteria `title` equal to 'title' exists in model `Entry`", "cmd": "Entry.objects.filter(name='name', title='title').exists()", "question_id": "9561243-18", "cmd_name": "conala", "oracle_man": ["python.library.logging#logging.Filter.filter", "python.library.zipfile#zipfile.Path.exists"], "canonical_cmd": "VAR_STR.objects.filter(VAR_STR='VAR_STR', VAR_STR='VAR_STR').exists()"}
{"nl": "get the date 6 months from today", "cmd": "six_months = (date.today() + relativedelta(months=(+ 6)))", "question_id": "546321-38", "cmd_name": "conala", "oracle_man": ["python.library.datetime#datetime.date.today", "matplotlib.dates_api#matplotlib.dates.relativedelta"], "canonical_cmd": "six_months = date.today() + relativedelta(months=+6)"}
{"nl": "calculate the date six months from the current date", "cmd": "print((datetime.date.today() + datetime.timedelta(((6 * 365) / 12))).isoformat())", "question_id": "546321-69", "cmd_name": "conala", "oracle_man": ["python.library.datetime#datetime.date.today", "python.library.datetime#datetime.timedelta", "python.library.datetime#datetime.date.isoformat"], "canonical_cmd": "print((datetime.date.today() + datetime.timedelta(6 * 365 / 12)).isoformat())"}
{"nl": "apply itertools.product to elements of a list of lists `arrays`", "cmd": "list(itertools.product(*arrays))", "question_id": "3034014-76", "cmd_name": "conala", "oracle_man": ["python.library.itertools#itertools.product", "python.library.functions#list"], "canonical_cmd": "list(itertools.product(*VAR_STR))"}
{"nl": "call a Python script \"test2.py\"", "cmd": "exec(compile(open('test2.py').read(), 'test2.py', 'exec'))", "question_id": "1186789-17", "cmd_name": "conala", "oracle_man": ["python.library.functions#exec", "python.library.functions#compile", "python.library.urllib.request#open", "python.library.os#os.read"], "canonical_cmd": "exec(compile(open('VAR_STR').read(), 'VAR_STR', 'exec'))"}
{"nl": "filter dataframe `df` by sub-level index '0630' in pandas", "cmd": "df[df.index.map(lambda x: x[1].endswith('0630'))]", "question_id": "12224778-99", "cmd_name": "conala", "oracle_man": ["pandas.reference.api.pandas.index.map", "pandas.reference.api.pandas.series.str.endswith"], "canonical_cmd": "VAR_STR[VAR_STR.index.map(lambda x: x[1].endswith('VAR_STR'))]"}
{"nl": "evaluate the expression '20<30'", "cmd": "eval('20<30')", "question_id": "10586778-60", "cmd_name": "conala", "oracle_man": ["python.library.functions#eval"], "canonical_cmd": "eval('VAR_STR')"}
{"nl": "Load the url `http://www.google.com` in selenium webdriver `driver`", "cmd": "driver.get('http://www.google.com')", "question_id": "4618373-40", "cmd_name": "conala", "oracle_man": ["python.library.webbrowser#webbrowser.get"], "canonical_cmd": "VAR_STR.get('VAR_STR')"}
{"nl": "convert a 3d array `img` of dimensions 4x2x3 to a 2d array   of dimensions 3x8", "cmd": "img.transpose(2, 0, 1).reshape(3, -1)", "question_id": "32838802-21", "cmd_name": "conala", "oracle_man": ["numpy.reference.generated.numpy.reshape", "numpy.reference.generated.numpy.transpose"], "canonical_cmd": "VAR_STR.transpose(2, 0, 1).reshape(3, -1)"}
{"nl": "close the window in tkinter", "cmd": "self.root.destroy()", "question_id": "8009176-56", "cmd_name": "conala", "oracle_man": ["matplotlib.backend_tools_api#matplotlib.backend_tools.ToolBase.destroy"], "canonical_cmd": "self.root.destroy()"}
{"nl": "format datetime in `dt` as string in format `'%m/%d/%Y`", "cmd": "dt.strftime('%m/%d/%Y')", "question_id": "10624937-25", "cmd_name": "conala", "oracle_man": ["pandas.reference.api.pandas.series.dt.strftime"], "canonical_cmd": "VAR_STR.strftime('%m/%d/%Y')"}
{"nl": "concatenate a list of numpy arrays `input_list` together into a flattened list of values", "cmd": "np.concatenate(input_list).ravel().tolist()", "question_id": "33711985-27", "cmd_name": "conala", "oracle_man": ["numpy.reference.generated.numpy.concatenate", "numpy.reference.generated.numpy.ravel", "numpy.reference.generated.numpy.recarray.tolist"], "canonical_cmd": "np.concatenate(VAR_STR).ravel().tolist()"}
{"nl": "set an array of unicode characters `[u'\\xe9', u'\\xe3', u'\\xe2']` as labels in Matplotlib `ax`", "cmd": "ax.set_yticklabels(['\\xe9', '\\xe3', '\\xe2'])", "question_id": "2406700-79", "cmd_name": "conala", "oracle_man": ["matplotlib._as_gen.matplotlib.axes.axes.set_yticklabels"], "canonical_cmd": "VAR_STR.set_yticklabels(['\u00e9', '\u00e3', '\u00e2'])"}
{"nl": "find all files with extension '.c' in directory `folder`", "cmd": "results += [each for each in os.listdir(folder) if each.endswith('.c')]", "question_id": "3608411-24", "cmd_name": "conala", "oracle_man": ["python.library.os#os.listdir", "python.library.stdtypes#str.endswith"], "canonical_cmd": "results += [each for each in os.listdir(VAR_STR) if each.endswith('VAR_STR')]"}
{"nl": "check if a local variable `myVar` exists", "cmd": "('myVar' in locals())", "question_id": "843277-82", "cmd_name": "conala", "oracle_man": ["python.library.functions#locals"], "canonical_cmd": "'VAR_STR' in locals()"}
{"nl": "check if a global variable `myVar` exists", "cmd": "('myVar' in globals())", "question_id": "843277-28", "cmd_name": "conala", "oracle_man": ["python.library.functions#globals"], "canonical_cmd": "'VAR_STR' in globals()"}
{"nl": "check if a local variable 'myVar' exists", "cmd": "if ('myVar' in locals()):\n    pass", "question_id": "843277-2", "cmd_name": "conala", "oracle_man": ["python.library.functions#locals"], "canonical_cmd": "if 'VAR_STR' in locals():\n    pass"}
{"nl": "check if a global variable 'myVar' exists", "cmd": "if ('myVar' in globals()):\n    pass", "question_id": "843277-2", "cmd_name": "conala", "oracle_man": ["python.library.functions#locals"], "canonical_cmd": "if 'VAR_STR' in globals():\n    pass"}
{"nl": "get a list of tuples of every three consecutive items in list `[1, 2, 3, 4, 5, 6, 7, 8, 9]`", "cmd": "list(zip(*((iter([1, 2, 3, 4, 5, 6, 7, 8, 9]),) * 3)))", "question_id": "2231663-1", "cmd_name": "conala", "oracle_man": ["python.library.functions#zip", "python.library.functions#iter", "python.library.functions#list"], "canonical_cmd": "list(zip(*((iter([VAR_STR]),) * 3)))"}
{"nl": "read an excel file 'ComponentReport-DJI.xls'", "cmd": "open('ComponentReport-DJI.xls', 'rb').read(200)", "question_id": "118516-73", "cmd_name": "conala", "oracle_man": ["python.library.urllib.request#open", "python.library.os#os.read"], "canonical_cmd": "open('VAR_STR', 'rb').read(200)"}
{"nl": "create a new 2D array with 2 random rows from array `A`", "cmd": "A[(np.random.choice(A.shape[0], 2, replace=False)), :]", "question_id": "14262654-99", "cmd_name": "conala", "oracle_man": ["numpy.reference.random.generated.numpy.random.choice"], "canonical_cmd": "VAR_STR[(np.random.choice(VAR_STR.shape[0], 2, replace=False)), :]"}
{"nl": "create a new 2 dimensional array containing two random rows from array `A`", "cmd": "A[(np.random.randint(A.shape[0], size=2)), :]", "question_id": "14262654-92", "cmd_name": "conala", "oracle_man": ["numpy.reference.random.generated.numpy.random.randint"], "canonical_cmd": "VAR_STR[(np.random.randint(VAR_STR.shape[0], size=2)), :]"}
{"nl": "Create an array containing the conversion of string '100110' into separate elements", "cmd": "np.array(map(int, '100110'))", "question_id": "28207743-2", "cmd_name": "conala", "oracle_man": ["numpy.reference.generated.numpy.array", "python.library.functions#map"], "canonical_cmd": "np.array(map(int, 'VAR_STR'))"}
{"nl": "convert a string 'mystr' to numpy array of integer values", "cmd": "print(np.array(list(mystr), dtype=int))", "question_id": "28207743-2", "cmd_name": "conala", "oracle_man": ["numpy.reference.generated.numpy.array", "python.library.functions#map"], "canonical_cmd": "print(np.array(list(VAR_STR), dtype=int))"}
{"nl": "print letter that appears most frequently in string `s`", "cmd": "print(collections.Counter(s).most_common(1)[0])", "question_id": "4131123-37", "cmd_name": "conala", "oracle_man": ["python.library.collections#collections.Counter", "python.library.collections#collections.Counter.most_common"], "canonical_cmd": "print(collections.Counter(VAR_STR).most_common(1)[0])"}
{"nl": "Exit script", "cmd": "sys.exit()", "question_id": "3376534-57", "cmd_name": "conala", "oracle_man": ["python.library.sys#sys.exit"], "canonical_cmd": "sys.exit()"}
{"nl": "match the pattern '[:;][)(](?![)(])' to the string `str`", "cmd": "re.match('[:;][)(](?![)(])', str)", "question_id": "14571103-97", "cmd_name": "conala", "oracle_man": ["python.library.re#re.match"], "canonical_cmd": "re.match('VAR_STR', VAR_STR)"}
{"nl": "execute file 'filename.py'", "cmd": "exec(compile(open('filename.py').read(), 'filename.py', 'exec'))", "question_id": "1027714-50", "cmd_name": "conala", "oracle_man": ["python.library.functions#exec", "python.library.functions#compile", "python.library.urllib.request#open", "python.library.os#os.read"], "canonical_cmd": "exec(compile(open('VAR_STR').read(), 'VAR_STR', 'exec'))"}
{"nl": "select records of dataframe `df` where the sum of column 'X' for each value in column 'User' is 0", "cmd": "df.groupby('User')['X'].filter(lambda x: x.sum() == 0)", "question_id": "27868020-50", "cmd_name": "conala", "oracle_man": ["pandas.reference.api.pandas.dataframe.groupby", "python.library.functions#filter", "pandas.reference.api.pandas.dataframe.sum"], "canonical_cmd": "VAR_STR.groupby('VAR_STR')['VAR_STR'].filter(lambda x: x.sum() == 0)"}
{"nl": "Find all records from collection `collection` without extracting mongo id `_id`", "cmd": "db.collection.find({}, {'_id': False})", "question_id": "12345387-21", "cmd_name": "conala", "oracle_man": ["python.library.stdtypes#str.find"], "canonical_cmd": "db.VAR_STR.find({}, {'VAR_STR': False})"}
{"nl": "find the magnitude (length) squared of a vector `vf` field", "cmd": "np.einsum('...j,...j->...', vf, vf)", "question_id": "19863964-8", "cmd_name": "conala", "oracle_man": ["numpy.reference.generated.numpy.einsum"], "canonical_cmd": "np.einsum('...j,...j->...', VAR_STR, VAR_STR)"}
{"nl": "Get `3` unique items from a list", "cmd": "random.sample(list(range(1, 16)), 3)", "question_id": "6494508-48", "cmd_name": "conala", "oracle_man": ["python.library.random#random.sample", "python.library.functions#range", "python.library.functions#list"], "canonical_cmd": "random.sample(list(range(1, 16)), 3)"}
{"nl": "convert string of bytes `y\\xcc\\xa6\\xbb` into an int", "cmd": "struct.unpack('<L', 'y\\xcc\\xa6\\xbb')[0]", "question_id": "444591-34", "cmd_name": "conala", "oracle_man": ["python.library.struct#struct.unpack"], "canonical_cmd": "struct.unpack('<L', 'VAR_STR')[0]"}
{"nl": "get a list of all integer points in a `dim` dimensional hypercube with coordinates from `-x` to `y` for all dimensions", "cmd": "list(itertools.product(list(range(-x, y)), repeat=dim))", "question_id": "41727442-65", "cmd_name": "conala", "oracle_man": ["python.library.functions#list", "python.library.itertools#itertools.product", "python.library.functions#range"], "canonical_cmd": "list(itertools.product(list(range(-x, VAR_STR)), repeat=VAR_STR))"}
{"nl": "extract data field 'bar' from json object", "cmd": "json.loads('{\"foo\": 42, \"bar\": \"baz\"}')['bar']", "question_id": "6407780-2", "cmd_name": "conala", "oracle_man": ["python.library.json#json.loads"], "canonical_cmd": "json.loads('{\"foo\": 42, \"bar\": \"baz\"}')['VAR_STR']"}
{"nl": "webbrowser open url `url`", "cmd": "webbrowser.open_new(url)", "question_id": "4302027-94", "cmd_name": "conala", "oracle_man": ["python.library.webbrowser#webbrowser.open_new"], "canonical_cmd": "webbrowser.open_new(VAR_STR)"}
{"nl": "pandas subtract a row from dataframe `df2` from dataframe `df`", "cmd": "pd.DataFrame(df.values - df2.values, columns=df.columns)", "question_id": "22093471-66", "cmd_name": "conala", "oracle_man": ["pandas.reference.api.pandas.dataframe"], "canonical_cmd": "pd.DataFrame(VAR_STR.values - VAR_STR.values, columns=VAR_STR.columns)"}
{"nl": "delete file `filename`", "cmd": "os.remove(filename)", "question_id": "39998424-26", "cmd_name": "conala", "oracle_man": ["python.library.os#os.remove"], "canonical_cmd": "os.remove(VAR_STR)"}
{"nl": "update the `globals()` dictionary with the contents of the `vars(args)` dictionary", "cmd": "globals().update(vars(args))", "question_id": "8306171-4", "cmd_name": "conala", "oracle_man": ["python.library.functions#vars", "python.library.functions#globals", "python.library.stdtypes#dict.update"], "canonical_cmd": "globals().update(vars(args))"}
{"nl": "convert a string of date strings `date_stngs ` to datetime objects and put them in a dataframe", "cmd": "pd.to_datetime(pd.Series(date_stngs))", "question_id": "17690738-39", "cmd_name": "conala", "oracle_man": ["pandas.reference.api.pandas.to_datetime", "pandas.reference.series"], "canonical_cmd": "pd.to_datetime(pd.Series(VAR_STR))"}
{"nl": "Formate current date and time to a string using pattern '%Y-%m-%d %H:%M:%S'", "cmd": "datetime.datetime.now().strftime('%Y-%m-%d %H:%M:%S')", "question_id": "7999935-36", "cmd_name": "conala", "oracle_man": ["python.library.datetime#datetime.datetime.now", "python.library.datetime#datetime.datetime.strftime"], "canonical_cmd": "datetime.datetime.now().strftime('VAR_STR')"}
{"nl": "combine two dictionaries `d ` and `d1`, concatenate string values with identical `keys`", "cmd": "dict((k, d.get(k, '') + d1.get(k, '')) for k in keys)", "question_id": "17604837-13", "cmd_name": "conala", "oracle_man": ["python.library.stdtypes#dict", "python.library.stdtypes#dict.get"], "canonical_cmd": "dict((k, VAR_STR.get(k, '') + VAR_STR.get(k, '')) for k in VAR_STR)"}
{"nl": "Get day name from a datetime object", "cmd": "date.today().strftime('%A')", "question_id": "8380389-66", "cmd_name": "conala", "oracle_man": ["python.library.datetime#datetime.date.today", "python.library.datetime#datetime.date.strftime"], "canonical_cmd": "date.today().strftime('%A')"}
{"nl": "generate pdf file `output_filename` from markdown file `input_filename`", "cmd": "with open(input_filename, 'r') as f:\n    html_text = markdown(f.read(), output_format='html4')\npdfkit.from_string(html_text, output_filename)", "question_id": "4135344-11", "cmd_name": "conala", "oracle_man": ["python.library.urllib.request#open", "django.ref.templates.api#django.template.Engine.from_string", "python.library.os#os.read"], "canonical_cmd": "with open(VAR_STR, 'r') as f:\n    html_text = markdown(f.read(), output_format='html4')\npdfkit.from_string(html_text, VAR_STR)"}
{"nl": "return http status code 204 from a django view", "cmd": "return HttpResponse(status=204)", "question_id": "12476452-40", "cmd_name": "conala", "oracle_man": ["python.library.http.client#http.client.HTTPResponse"], "canonical_cmd": "return HttpResponse(status=204)"}
{"nl": "assign an array of floats in range from 0 to 100 to a variable `values`", "cmd": "values = np.array([i for i in range(100)], dtype=np.float64)", "question_id": "23638638-89", "cmd_name": "conala", "oracle_man": ["numpy.reference.generated.numpy.array", "python.library.functions#range"], "canonical_cmd": "VAR_STR = np.array([i for i in range(100)], dtype=np.float64)"}
{"nl": "create a NumPy array containing elements of array `A` as pointed to by index in array `B`", "cmd": "A[np.arange(A.shape[0])[:, (None)], B]", "question_id": "37878946-16", "cmd_name": "conala", "oracle_man": ["numpy.reference.generated.numpy.arange"], "canonical_cmd": "VAR_STR[np.arange(VAR_STR.shape[0])[:, (None)], VAR_STR]"}
{"nl": "remove adjacent duplicate elements from a list `[1, 2, 2, 3, 2, 2, 4]`", "cmd": "[k for k, g in itertools.groupby([1, 2, 2, 3, 2, 2, 4])]", "question_id": "3460161-42", "cmd_name": "conala", "oracle_man": ["python.library.itertools#itertools.groupby"], "canonical_cmd": "[k for k, g in itertools.groupby([VAR_STR])]"}
{"nl": "set labels `[1, 2, 3, 4, 5]` on axis X in plot `plt`", "cmd": "plt.xticks([1, 2, 3, 4, 5])", "question_id": "10839719-92", "cmd_name": "conala", "oracle_man": ["matplotlib._as_gen.matplotlib.pyplot.xticks"], "canonical_cmd": "VAR_STR.xticks([VAR_STR])"}
{"nl": "get value of the environment variable 'KEY_THAT_MIGHT_EXIST'", "cmd": "print(os.environ.get('KEY_THAT_MIGHT_EXIST'))", "question_id": "4906977-8", "cmd_name": "conala", "oracle_man": ["python.library.webbrowser#webbrowser.get"], "canonical_cmd": "print(os.environ.get('VAR_STR'))"}
{"nl": "get value of the environment variable 'HOME' with default value '/home/username/'", "cmd": "print(os.environ.get('HOME', '/home/username/'))", "question_id": "4906977-57", "cmd_name": "conala", "oracle_man": ["python.library.webbrowser#webbrowser.get"], "canonical_cmd": "print(os.environ.get('VAR_STR', 'VAR_STR'))"}
{"nl": "find all the indexes in a Numpy 2D array where the value is 1", "cmd": "zip(*np.where(a == 1))", "question_id": "27175400-13", "cmd_name": "conala", "oracle_man": ["numpy.reference.generated.numpy.where", "python.library.functions#zip"], "canonical_cmd": "zip(*np.where(a == 1))"}
{"nl": "How to find the index of a value in 2d array in Python?", "cmd": "np.where(a == 1)", "question_id": "27175400-85", "cmd_name": "conala", "oracle_man": ["numpy.reference.generated.numpy.where"], "canonical_cmd": "np.where(a == 1)"}
{"nl": "split dictionary/list inside a pandas column 'b' into separate columns in dataframe `df`", "cmd": "pd.concat([df.drop('b', axis=1), pd.DataFrame(df['b'].tolist())], axis=1)", "question_id": "38231591-22", "cmd_name": "conala", "oracle_man": ["pandas.reference.api.pandas.dataframe.drop", "pandas.reference.api.pandas.dataframe", "pandas.reference.api.pandas.concat"], "canonical_cmd": "pd.concat([VAR_STR.drop('VAR_STR', axis=1), pd.DataFrame(VAR_STR['VAR_STR'].tolist(\n    ))], axis=1)"}
{"nl": "reorder indexed rows `['Z', 'C', 'A']` based on a list in pandas data frame `df`", "cmd": "df.reindex(['Z', 'C', 'A'])", "question_id": "30009948-74", "cmd_name": "conala", "oracle_man": ["pandas.reference.api.pandas.dataframe.reindex"], "canonical_cmd": "VAR_STR.reindex([VAR_STR])"}
{"nl": "store the output of command 'ls' in variable `direct_output`", "cmd": "direct_output = subprocess.check_output('ls', shell=True)", "question_id": "19267591-38", "cmd_name": "conala", "oracle_man": ["python.library.subprocess#subprocess.check_output"], "canonical_cmd": "VAR_STR = subprocess.check_output('VAR_STR', shell=True)"}
{"nl": "reverse all x-axis points in pyplot", "cmd": "plt.gca().invert_xaxis()", "question_id": "2051744-10", "cmd_name": "conala", "oracle_man": ["matplotlib.figure_api#matplotlib.figure.FigureBase.gca", "matplotlib._as_gen.matplotlib.axes.axes.invert_xaxis"], "canonical_cmd": "plt.gca().invert_xaxis()"}
{"nl": "reverse y-axis in pyplot", "cmd": "plt.gca().invert_yaxis()", "question_id": "2051744-44", "cmd_name": "conala", "oracle_man": ["matplotlib.figure_api#matplotlib.figure.FigureBase.gca", "matplotlib._as_gen.matplotlib.axes.axes.invert_yaxis"], "canonical_cmd": "plt.gca().invert_yaxis()"}
{"nl": "Iterate over dictionary `d` in ascending order of values", "cmd": "sorted(iter(d.items()), key=lambda x: x[1])", "question_id": "674509-57", "cmd_name": "conala", "oracle_man": ["python.library.functions#sorted", "python.library.functions#iter", "python.library.stdtypes#dict.items"], "canonical_cmd": "sorted(iter(VAR_STR.items()), key=lambda x: x[1])"}
{"nl": "read file 'myfile.txt' using universal newline mode 'U'", "cmd": "print(open('myfile.txt', 'U').read())", "question_id": "2798627-16", "cmd_name": "conala", "oracle_man": ["python.library.urllib.request#open", "python.library.os#os.read"], "canonical_cmd": "print(open('VAR_STR', 'VAR_STR').read())"}
{"nl": "Change the mode of file 'my_script.sh' to permission number 484", "cmd": "os.chmod('my_script.sh', 484)", "question_id": "14104778-7", "cmd_name": "conala", "oracle_man": ["python.library.os#os.chmod"], "canonical_cmd": "os.chmod('VAR_STR', 484)"}
{"nl": "multiply array `a` and array `b`respective elements then sum each row of the new array", "cmd": "np.einsum('ji,i->j', a, b)", "question_id": "21562986-78", "cmd_name": "conala", "oracle_man": ["numpy.reference.generated.numpy.einsum"], "canonical_cmd": "np.einsum('ji,i->j', VAR_STR, VAR_STR)"}
{"nl": "add field names as headers in csv constructor `writer`", "cmd": "writer.writeheader()", "question_id": "20347766-10", "cmd_name": "conala", "oracle_man": ["python.library.csv#csv.DictWriter.writeheader"], "canonical_cmd": "VAR_STR.writeheader()"}
{"nl": "execute sql query 'INSERT INTO table VALUES(%s,%s,%s,%s,%s,%s,%s,%s,%s)' with all parameters in list `tup`", "cmd": "cur.executemany('INSERT INTO table VALUES(%s,%s,%s,%s,%s,%s,%s,%s,%s)', tup)", "question_id": "8134602-90", "cmd_name": "conala", "oracle_man": ["python.library.sqlite3#sqlite3.Connection.executemany"], "canonical_cmd": "cur.executemany('VAR_STR', VAR_STR)"}
{"nl": "lowercase string values with key 'content' in a list of dictionaries `messages`", "cmd": "[{'content': x['content'].lower()} for x in messages]", "question_id": "42353686-21", "cmd_name": "conala", "oracle_man": ["python.library.stdtypes#str.lower"], "canonical_cmd": "[{'VAR_STR': x['VAR_STR'].lower()} for x in VAR_STR]"}
{"nl": "Unpack column 'stats' in dataframe `df` into a series of columns", "cmd": "df['stats'].apply(pd.Series)", "question_id": "29370211-89", "cmd_name": "conala", "oracle_man": ["pandas.reference.api.pandas.series.apply"], "canonical_cmd": "VAR_STR['VAR_STR'].apply(pd.Series)"}
{"nl": "lookup an attribute in any scope by name 'range'", "cmd": "getattr(__builtins__, 'range')", "question_id": "2850966-83", "cmd_name": "conala", "oracle_man": ["python.library.functions#getattr"], "canonical_cmd": "getattr(__builtins__, 'VAR_STR')"}
{"nl": "Remove character `char` from a string `a`", "cmd": "a = a.replace(char, '')", "question_id": "3939361-45", "cmd_name": "conala", "oracle_man": ["numpy.reference.generated.numpy.char.replace"], "canonical_cmd": "VAR_STR = VAR_STR.replace(VAR_STR, '')"}
{"nl": "Remove characters in `b` from a string `a`", "cmd": "a = a.replace(char, '')", "question_id": "3939361-16", "cmd_name": "conala", "oracle_man": ["numpy.reference.generated.numpy.char.replace"], "canonical_cmd": "VAR_STR = VAR_STR.replace(char, '')"}
{"nl": "SQLAlchemy count the number of rows in table `Congress`", "cmd": "rows = session.query(Congress).count()", "question_id": "10822635-77", "cmd_name": "conala", "oracle_man": ["python.library.stdtypes#str.count"], "canonical_cmd": "rows = session.query(VAR_STR).count()"}
{"nl": "find the index of the second occurrence of the substring `bar` in string `foo bar bar bar`", "cmd": "\"\"\"foo bar bar bar\"\"\".replace('bar', 'XXX', 1).find('bar')", "question_id": "1883980-4", "cmd_name": "conala", "oracle_man": ["python.library.stdtypes#str.find", "python.library.stdtypes#str.replace"], "canonical_cmd": "\"\"\"VAR_STR\"\"\".replace('VAR_STR', 'XXX', 1).find('VAR_STR')"}
{"nl": "concatenate a series `students` onto a dataframe `marks` with pandas", "cmd": "pd.concat([students, pd.DataFrame(marks)], axis=1)", "question_id": "20512297-60", "cmd_name": "conala", "oracle_man": ["pandas.reference.api.pandas.concat", "pandas.reference.api.pandas.dataframe"], "canonical_cmd": "pd.concat([VAR_STR, pd.DataFrame(VAR_STR)], axis=1)"}
{"nl": "create list `randomList` with 10 random floating point numbers between 0.0 and 1.0", "cmd": "randomList = [random.random() for _ in range(10)]", "question_id": "20733827-49", "cmd_name": "conala", "oracle_man": ["python.library.functions#range"], "canonical_cmd": "VAR_STR = [random.random() for _ in range(10)]"}
{"nl": "create dictionary from list of variables 'foo' and 'bar' already defined", "cmd": "dict((k, globals()[k]) for k in ('foo', 'bar'))", "question_id": "9495262-53", "cmd_name": "conala", "oracle_man": ["python.library.functions#globals", "python.library.stdtypes#dict"], "canonical_cmd": "dict((k, globals()[k]) for k in ('VAR_STR', 'VAR_STR'))"}
{"nl": "get a dataframe `df2` that contains all the columns of dataframe `df` that do not end in `prefix`", "cmd": "df2 = df.ix[:, (~df.columns.str.endswith('prefix'))]", "question_id": "38426168-57", "cmd_name": "conala", "oracle_man": ["pandas.reference.api.pandas.series.str.endswith"], "canonical_cmd": "VAR_STR = VAR_STR.ix[:, (~VAR_STR.columns.str.endswith('VAR_STR'))]"}
{"nl": "substract 1 hour and 10 minutes from current time", "cmd": "t = datetime.datetime.now()\n(t - datetime.timedelta(hours=1, minutes=10))", "question_id": "14043934-77", "cmd_name": "conala", "oracle_man": ["python.library.datetime#datetime.datetime.now", "python.library.datetime#datetime.timedelta"], "canonical_cmd": "t = datetime.datetime.now()\nt - datetime.timedelta(hours=1, minutes=10)"}
{"nl": "add 1 hour and 2 minutes to time object `t`", "cmd": "dt = datetime.datetime.combine(datetime.date.today(), t)", "question_id": "14043934-78", "cmd_name": "conala", "oracle_man": ["python.library.datetime#datetime.date.today", "python.library.datetime#datetime.datetime.combine"], "canonical_cmd": "dt = datetime.datetime.combine(datetime.date.today(), VAR_STR)"}
{"nl": "Create new string with unique characters from `s` seperated by ' '", "cmd": "print(' '.join(OrderedDict.fromkeys(s)))", "question_id": "29360607-46", "cmd_name": "conala", "oracle_man": ["python.library.stdtypes#dict.fromkeys", "python.library.stdtypes#str.join"], "canonical_cmd": "print(' '.join(OrderedDict.fromkeys(VAR_STR)))"}
{"nl": "create a set from string `s` to remove duplicate characters", "cmd": "print(' '.join(set(s)))", "question_id": "29360607-46", "cmd_name": "conala", "oracle_man": ["python.library.stdtypes#dict.fromkeys", "python.library.stdtypes#str.join"], "canonical_cmd": "print(' '.join(set(VAR_STR)))"}
{"nl": "find the index of the maximum value in the array `arr` where the boolean condition in array `cond` is true", "cmd": "np.ma.array(np.tile(arr, 2).reshape(2, 3), mask=~cond).argmax(axis=1)", "question_id": "31767173-52", "cmd_name": "conala", "oracle_man": ["numpy.reference.generated.numpy.ma.array", "numpy.reference.generated.numpy.tile", "numpy.reference.generated.numpy.ma.argmax", "numpy.reference.generated.numpy.ma.reshape"], "canonical_cmd": "np.ma.array(np.tile(VAR_STR, 2).reshape(2, 3), mask=~VAR_STR).argmax(axis=1)"}
{"nl": "Get data from matplotlib plot", "cmd": "gca().get_lines()[n].get_xydata()", "question_id": "8938449-32", "cmd_name": "conala", "oracle_man": ["matplotlib._as_gen.matplotlib.lines.line2d#matplotlib.lines.Line2D.get_xydata", "matplotlib.legend_api#matplotlib.legend.Legend.get_lines", "matplotlib.figure_api#matplotlib.figure.SubFigure.gca"], "canonical_cmd": "gca().get_lines()[n].get_xydata()"}
{"nl": "BeautifulSoup search string 'Elsie' inside tag 'a'", "cmd": "soup.find_all('a', string='Elsie')", "question_id": "31958637-91", "cmd_name": "conala", "oracle_man": [], "canonical_cmd": "soup.find_all('VAR_STR', string='VAR_STR')"}
{"nl": "create a dataframe containing the multiplication of element-wise in dataframe `df` and dataframe `df2` using index name and column labels of dataframe `df`", "cmd": "pd.DataFrame(df.values * df2.values, columns=df.columns, index=df.index)", "question_id": "21022865-77", "cmd_name": "conala", "oracle_man": ["pandas.reference.api.pandas.dataframe"], "canonical_cmd": "pd.DataFrame(VAR_STR.values * VAR_STR.values, columns=VAR_STR.columns, index=\n    VAR_STR.index)"}
{"nl": "sort a list of dictionaries `list_of_dct` by values in an order `order`", "cmd": "sorted(list_of_dct, key=lambda x: order.index(list(x.values())[0]))", "question_id": "35078261-21", "cmd_name": "conala", "oracle_man": ["python.library.functions#sorted", "python.library.functions#list", "pandas.reference.api.pandas.index.values"], "canonical_cmd": "sorted(VAR_STR, key=lambda x: VAR_STR.index(list(x.values())[0]))"}
{"nl": "concatenate dataframe `df1` with `df2` whilst removing duplicates", "cmd": "pandas.concat([df1, df2]).drop_duplicates().reset_index(drop=True)", "question_id": "21317384-58", "cmd_name": "conala", "oracle_man": ["pandas.reference.api.pandas.concat", "pandas.reference.api.pandas.dataframe.reset_index", "pandas.reference.api.pandas.dataframe.drop_duplicates"], "canonical_cmd": "pandas.concat([VAR_STR, VAR_STR]).drop_duplicates().reset_index(drop=True)"}
{"nl": "pretty-print ordered dictionary `o`", "cmd": "pprint(dict(list(o.items())))", "question_id": "4301069-72", "cmd_name": "conala", "oracle_man": ["python.library.stdtypes#dict", "python.library.functions#list", "python.library.stdtypes#dict.items", "python.library.pprint#pprint.pprint"], "canonical_cmd": "pprint(dict(list(VAR_STR.items())))"}
{"nl": "import a nested module `c.py` within `b` within `a` with importlib", "cmd": "importlib.import_module('.c', 'a.b')", "question_id": "10675054-45", "cmd_name": "conala", "oracle_man": ["python.library.importlib#importlib.import_module"], "canonical_cmd": "importlib.import_module('.c', 'a.b')"}
{"nl": "import a module 'a.b.c' with importlib.import_module in python 2", "cmd": "importlib.import_module('a.b.c')", "question_id": "10675054-25", "cmd_name": "conala", "oracle_man": ["python.library.importlib#importlib.import_module"], "canonical_cmd": "importlib.import_module('VAR_STR')"}
{"nl": "update fields in Django model `Book` with arguments in dictionary `d` where primary key is equal to `pk`", "cmd": "Book.objects.filter(pk=pk).update(**d)", "question_id": "5503925-38", "cmd_name": "conala", "oracle_man": ["python.library.logging#logging.Filter.filter", "python.library.stdtypes#dict.update"], "canonical_cmd": "VAR_STR.objects.filter(VAR_STR=VAR_STR).update(**VAR_STR)"}
{"nl": "update the fields in django model `Book` using dictionary `d`", "cmd": "Book.objects.create(**d)", "question_id": "5503925-47", "cmd_name": "conala", "oracle_man": ["python.library.venv#venv.create"], "canonical_cmd": "VAR_STR.objects.create(**VAR_STR)"}
{"nl": "Generate MD5 checksum of file in the path `full_path` in hashlib", "cmd": "print(hashlib.md5(open(full_path, 'rb').read()).hexdigest())", "question_id": "3431825-77", "cmd_name": "conala", "oracle_man": ["python.library.urllib.request#open", "python.library.hashlib#hashlib.hash.hexdigest", "python.library.os#os.read"], "canonical_cmd": "print(hashlib.md5(open(VAR_STR, 'rb').read()).hexdigest())"}
{"nl": "Get the number of NaN values in each column of dataframe `df`", "cmd": "df.isnull().sum()", "question_id": "26266362-41", "cmd_name": "conala", "oracle_man": ["pandas.reference.api.pandas.dataframe.isnull", "python.library.functions#sum"], "canonical_cmd": "VAR_STR.isnull().sum()"}
{"nl": "find all anchor tags in html `soup` whose url begins with `http://www.iwashere.com`", "cmd": "soup.find_all('a', href=re.compile('http://www\\\\.iwashere\\\\.com/'))", "question_id": "15313250-71", "cmd_name": "conala", "oracle_man": ["python.library.re#re.compile"], "canonical_cmd": "VAR_STR.find_all('a', href=re.compile('http://www\\\\.iwashere\\\\.com/'))"}
{"nl": "find all anchors with a hyperlink that matches the pattern '^(?!(?:[a-zA-Z][a-zA-Z0-9+.-]*:|//))'", "cmd": "soup.find_all('a', href=re.compile('^(?!(?:[a-zA-Z][a-zA-Z0-9+.-]*:|//))'))", "question_id": "15313250-56", "cmd_name": "conala", "oracle_man": ["python.library.re#re.compile"], "canonical_cmd": "soup.find_all('a', href=re.compile('VAR_STR'))"}
{"nl": "generate a random 12-digit number", "cmd": "int(''.join(str(random.randint(0, 9)) for _ in range(12)))", "question_id": "13496087-15", "cmd_name": "conala", "oracle_man": ["python.library.random#random.randint", "python.library.functions#range", "python.library.functions#int", "python.library.stdtypes#str", "python.library.stdtypes#str.join"], "canonical_cmd": "int(''.join(str(random.randint(0, 9)) for _ in range(12)))"}
{"nl": "generate a random 12-digit number", "cmd": "\"\"\"\"\"\".join(str(random.randint(0, 9)) for _ in range(12))", "question_id": "13496087-80", "cmd_name": "conala", "oracle_man": ["python.library.random#random.randint", "python.library.functions#range", "python.library.stdtypes#str", "python.library.stdtypes#str.join"], "canonical_cmd": "\"\"\"\"\"\".join(str(random.randint(0, 9)) for _ in range(12))"}
{"nl": "How to delete a record in Django models?", "cmd": "SomeModel.objects.filter(id=id).delete()", "question_id": "3805958-22", "cmd_name": "conala", "oracle_man": ["python.library.logging#logging.Filter.filter", "python.library.ast#ast.Delete"], "canonical_cmd": "SomeModel.objects.filter(id=id).delete()"}
{"nl": "retrieve all items in an numpy array 'x' except the item of the index 1", "cmd": "x[(np.arange(x.shape[0]) != 1), :, :]", "question_id": "8712332-35", "cmd_name": "conala", "oracle_man": ["numpy.reference.generated.numpy.arange"], "canonical_cmd": "VAR_STR[(np.arange(VAR_STR.shape[0]) != 1), :, :]"}
{"nl": "split dataframe `df` where the value of column `a` is equal to 'B'", "cmd": "df.groupby((df.a == 'B').shift(1).fillna(0).cumsum())", "question_id": "13353233-57", "cmd_name": "conala", "oracle_man": ["pandas.reference.api.pandas.dataframe.groupby", "pandas.reference.api.pandas.dataframe.fillna", "pandas.reference.api.pandas.dataframe.shift", "pandas.reference.api.pandas.dataframe.cumsum"], "canonical_cmd": "VAR_STR.groupby((VAR_STR.VAR_STR == 'VAR_STR').shift(1).fillna(0).cumsum())"}
{"nl": "removing control characters from a string `s`", "cmd": "return ''.join(ch for ch in s if unicodedata.category(ch)[0] != 'C')", "question_id": "4324790-58", "cmd_name": "conala", "oracle_man": ["python.library.unicodedata#unicodedata.category", "python.library.stdtypes#str.join"], "canonical_cmd": "return ''.join(ch for ch in VAR_STR if unicodedata.category(ch)[0] != 'C')"}
{"nl": "return a DateTime object with the current UTC date", "cmd": "today = datetime.datetime.utcnow().date()", "question_id": "27587127-62", "cmd_name": "conala", "oracle_man": ["python.library.datetime#datetime.datetime.utcnow", "python.library.datetime#datetime.datetime.date"], "canonical_cmd": "today = datetime.datetime.utcnow().date()"}
{"nl": "remove decimal points in pandas data frame using round", "cmd": "df.round()", "question_id": "37084812-85", "cmd_name": "conala", "oracle_man": ["pandas.reference.api.pandas.dataframe.round"], "canonical_cmd": "df.round()"}
{"nl": "print the truth value of `a`", "cmd": "print(bool(a))", "question_id": "39604780-88", "cmd_name": "conala", "oracle_man": ["python.library.functions#bool"], "canonical_cmd": "print(bool(VAR_STR))"}
{"nl": "Parsing HTML string `html` using BeautifulSoup", "cmd": "parsed_html = BeautifulSoup(html)\nprint(parsed_html.body.find('div', attrs={'class': 'container', }).text)", "question_id": "11709079-7", "cmd_name": "conala", "oracle_man": ["python.library.stdtypes#str.find"], "canonical_cmd": "parsed_html = BeautifulSoup(VAR_STR)\nprint(parsed_html.body.find('div', attrs={'class': 'container'}).text)"}
{"nl": "convert a column of list in series `s` to dummies", "cmd": "pd.get_dummies(s.apply(pd.Series).stack()).sum(level=0)", "question_id": "29034928-61", "cmd_name": "conala", "oracle_man": ["pandas.reference.api.pandas.get_dummies", "python.library.functions#sum", "pandas.reference.api.pandas.series.apply", "pandas.reference.api.pandas.dataframe.stack"], "canonical_cmd": "pd.get_dummies(VAR_STR.apply(pd.Series).stack()).sum(level=0)"}
{"nl": "create a matrix from a list `[1, 2, 3]`", "cmd": "x = scipy.matrix([1, 2, 3]).transpose()", "question_id": "4690366-20", "cmd_name": "conala", "oracle_man": ["numpy.reference.generated.numpy.matrix.transpose"], "canonical_cmd": "x = scipy.matrix([VAR_STR]).transpose()"}
{"nl": "convert radians 1 to degrees", "cmd": "math.cos(math.radians(1))", "question_id": "9875964-60", "cmd_name": "conala", "oracle_man": ["python.library.math#math.radians", "python.library.math#math.cos"], "canonical_cmd": "math.cos(math.radians(1))"}
{"nl": "create an empty data frame `df2` with index from another data frame `df1`", "cmd": "df2 = pd.DataFrame(index=df1.index)", "question_id": "18176933-47", "cmd_name": "conala", "oracle_man": ["pandas.reference.api.pandas.dataframe"], "canonical_cmd": "VAR_STR = pd.DataFrame(index=VAR_STR.index)"}
{"nl": "make a window `root` jump to the front", "cmd": "root.attributes('-topmost', True)", "question_id": "1892339-81", "cmd_name": "conala", "oracle_man": ["python.library.xml.dom#xml.dom.Node.attributes"], "canonical_cmd": "VAR_STR.attributes('-topmost', True)"}
{"nl": "apply function `log2` to the grouped values by 'type' in dataframe `df`", "cmd": "df.groupby('type').apply(lambda x: np.mean(np.log2(x['v'])))", "question_id": "18137341-8", "cmd_name": "conala", "oracle_man": ["numpy.reference.generated.numpy.log2", "numpy.reference.generated.numpy.mean", "pandas.reference.api.pandas.dataframe.groupby", "pandas.reference.api.pandas.dataframe.apply"], "canonical_cmd": "VAR_STR.groupby('VAR_STR').apply(lambda x: np.mean(np.VAR_STR(x['v'])))"}
{"nl": "Convert JSON array `array` to Python object", "cmd": "data = json.loads(array)", "question_id": "10973614-40", "cmd_name": "conala", "oracle_man": ["python.library.json#json.loads"], "canonical_cmd": "data = json.loads(VAR_STR)"}
{"nl": "Convert JSON array `array` to Python object", "cmd": "data = json.loads(array)", "question_id": "10973614-6", "cmd_name": "conala", "oracle_man": ["python.library.json#json.loads"], "canonical_cmd": "data = json.loads(VAR_STR)"}
{"nl": "print number 1255000 as thousands separators", "cmd": "locale.setlocale(locale.LC_ALL, 'en_US')\nlocale.format('%d', 1255000, grouping=True)", "question_id": "1823058-88", "cmd_name": "conala", "oracle_man": ["python.library.locale#locale.setlocale", "python.library.locale#locale.format"], "canonical_cmd": "locale.setlocale(locale.LC_ALL, 'en_US')\nlocale.format('%d', 1255000, grouping=True)"}
{"nl": "Filter a json from a key-value pair as `{'fixed_key_1': 'foo2'}` in Django", "cmd": "Test.objects.filter(actions__contains=[{'fixed_key_1': 'foo2'}])", "question_id": "34358278-63", "cmd_name": "conala", "oracle_man": ["python.library.logging#logging.Filter.filter"], "canonical_cmd": "Test.objects.filter(actions__contains=[{VAR_STR}])"}
{"nl": "Move x-axis of the pyplot object `ax` to the top of a plot in matplotlib", "cmd": "ax.xaxis.set_ticks_position('top')", "question_id": "14406214-99", "cmd_name": "conala", "oracle_man": ["matplotlib._as_gen.matplotlib.axis.xaxis.set_ticks_position"], "canonical_cmd": "VAR_STR.xaxis.set_ticks_position('top')"}
{"nl": "check if date `yourdatetime` is equal to today's date", "cmd": "yourdatetime.date() == datetime.today().date()", "question_id": "6407362-46", "cmd_name": "conala", "oracle_man": ["python.library.datetime#datetime.date.today", "python.library.datetime#datetime.date"], "canonical_cmd": "VAR_STR.date() == datetime.today().date()"}
{"nl": "disable the certificate check in https requests for url `https://kennethreitz.com`", "cmd": "requests.get('https://kennethreitz.com', verify=False)", "question_id": "15445981-81", "cmd_name": "conala", "oracle_man": ["python.library.webbrowser#webbrowser.get"], "canonical_cmd": "requests.get('VAR_STR', verify=False)"}
{"nl": "create a list containing all cartesian products of elements in list `a`", "cmd": "list(itertools.product(*a))", "question_id": "798854-41", "cmd_name": "conala", "oracle_man": ["python.library.itertools#itertools.product", "python.library.functions#list"], "canonical_cmd": "list(itertools.product(*VAR_STR))"}
{"nl": "generate a random string of length `x`  containing lower cased ASCII letters", "cmd": "\"\"\"\"\"\".join(random.choice(string.lowercase) for x in range(X))", "question_id": "1957273-17", "cmd_name": "conala", "oracle_man": ["python.library.random#random.choice", "python.library.functions#range", "python.library.stdtypes#str.join"], "canonical_cmd": "\"\"\"\"\"\".join(random.choice(string.lowercase) for VAR_STR in range(X))"}
{"nl": "get current datetime in ISO format", "cmd": "datetime.datetime.now().isoformat()", "question_id": "2150739-61", "cmd_name": "conala", "oracle_man": ["python.library.datetime#datetime.datetime.now", "python.library.datetime#datetime.datetime.isoformat"], "canonical_cmd": "datetime.datetime.now().isoformat()"}
{"nl": "get UTC datetime in ISO format", "cmd": "datetime.datetime.utcnow().isoformat()", "question_id": "2150739-5", "cmd_name": "conala", "oracle_man": ["python.library.datetime#datetime.datetime.utcnow", "python.library.datetime#datetime.datetime.isoformat"], "canonical_cmd": "datetime.datetime.utcnow().isoformat()"}
{"nl": "Keep only unique words in list of words `words` and join into string", "cmd": "print(' '.join(sorted(set(words), key=words.index)))", "question_id": "7794208-3", "cmd_name": "conala", "oracle_man": ["python.library.functions#sorted", "python.library.stdtypes#set", "pandas.reference.api.pandas.index.join"], "canonical_cmd": "print(' '.join(sorted(set(VAR_STR), key=VAR_STR.index)))"}
{"nl": "plot logarithmic axes with matplotlib", "cmd": "ax.set_yscale('log')", "question_id": "773814-28", "cmd_name": "conala", "oracle_man": ["matplotlib.projections_api#matplotlib.projections.polar.PolarAxes.set_yscale"], "canonical_cmd": "ax.set_yscale('log')"}
{"nl": "convert a number 2130706433 to ip string", "cmd": "socket.inet_ntoa(struct.pack('!L', 2130706433))", "question_id": "9590965-88", "cmd_name": "conala", "oracle_man": ["python.library.struct#struct.pack", "python.library.socket#socket.inet_ntoa"], "canonical_cmd": "socket.inet_ntoa(struct.pack('!L', 2130706433))"}
{"nl": "numpy:  check if array 'a' contains all the numbers in array 'b'.", "cmd": "numpy.array([(x in a) for x in b])", "question_id": "10565598-47", "cmd_name": "conala", "oracle_man": ["numpy.reference.generated.numpy.array"], "canonical_cmd": "numpy.array([(x in VAR_STR) for x in VAR_STR])"}
{"nl": "Write column 'sum' of DataFrame `a` to csv file 'test.csv'", "cmd": "a.to_csv('test.csv', cols=['sum'])", "question_id": "21206395-91", "cmd_name": "conala", "oracle_man": ["pandas.reference.api.pandas.dataframe.to_csv"], "canonical_cmd": "VAR_STR.to_csv('VAR_STR', cols=['VAR_STR'])"}
{"nl": "filter dataframe `grouped` where the length of each group `x` is bigger than 1", "cmd": "grouped.filter(lambda x: len(x) > 1)", "question_id": "13167391-7", "cmd_name": "conala", "oracle_man": ["python.library.functions#len", "python.library.logging#logging.Filter.filter"], "canonical_cmd": "VAR_STR.filter(lambda VAR_STR: len(VAR_STR) > 1)"}
{"nl": "set the y axis range to `0, 1000` in subplot using pylab", "cmd": "pylab.ylim([0, 1000])", "question_id": "2849286-49", "cmd_name": "conala", "oracle_man": ["matplotlib._as_gen.matplotlib.pyplot.ylim"], "canonical_cmd": "pylab.ylim([0, 1000])"}
{"nl": "get yesterday's date as a string in `YYYY-MM-DD` format using timedelta", "cmd": "(datetime.now() - timedelta(1)).strftime('%Y-%m-%d')", "question_id": "30483977-35", "cmd_name": "conala", "oracle_man": ["python.library.datetime#datetime.datetime.now", "python.library.datetime#datetime.datetime.strftime", "python.library.datetime#datetime.timedelta"], "canonical_cmd": "(datetime.now() - timedelta(1)).strftime('%Y-%m-%d')"}
{"nl": "Display a image file `pathToFile`", "cmd": "Image.open('pathToFile').show()", "question_id": "5333244-64", "cmd_name": "conala", "oracle_man": ["python.library.urllib.request#open"], "canonical_cmd": "Image.open('VAR_STR').show()"}
{"nl": "convert decimal `8` to binary list", "cmd": "[int(x) for x in bin(8)[2:]]", "question_id": "13557937-95", "cmd_name": "conala", "oracle_man": ["python.library.functions#bin", "python.library.functions#int"], "canonical_cmd": "[int(x) for x in bin(8)[2:]]"}
{"nl": "Rename a folder `Joe Blow` to `Blow, Joe`", "cmd": "os.rename('Joe Blow', 'Blow, Joe')", "question_id": "8735312-37", "cmd_name": "conala", "oracle_man": ["python.library.os#os.rename"], "canonical_cmd": "os.rename('VAR_STR', 'VAR_STR')"}
{"nl": "create a 2D array of `Node` objects with dimensions `cols` columns and `rows` rows", "cmd": "nodes = [[Node() for j in range(cols)] for i in range(rows)]", "question_id": "6480441-53", "cmd_name": "conala", "oracle_man": ["python.library.functions#range", "python.library.platform#platform.node"], "canonical_cmd": "nodes = [[VAR_STR() for j in range(VAR_STR)] for i in range(VAR_STR)]"}
{"nl": "get the indexes of the x and y axes in Numpy array `np` where variable `a` is equal to variable `value`", "cmd": "i, j = np.where(a == value)", "question_id": "18079029-69", "cmd_name": "conala", "oracle_man": ["numpy.reference.generated.numpy.where"], "canonical_cmd": "i, j = VAR_STR.where(VAR_STR == VAR_STR)"}
{"nl": "Convert a binary value '1633837924' to string", "cmd": "struct.pack('<I', 1633837924)", "question_id": "33769531-95", "cmd_name": "conala", "oracle_man": ["python.library.struct#struct.pack"], "canonical_cmd": "struct.pack('<I', 1633837924)"}
{"nl": "get rows of dataframe `df` where column `Col1` has values `['men', 'rocks', 'mountains']`", "cmd": "df[df.Col1.isin(['men', 'rocks', 'mountains'])]", "question_id": "39988589-27", "cmd_name": "conala", "oracle_man": ["pandas.reference.api.pandas.dataframe.isin"], "canonical_cmd": "VAR_STR[VAR_STR.VAR_STR.isin([VAR_STR])]"}
{"nl": "print current date and time in a regular format", "cmd": "datetime.datetime.now().strftime('%Y-%m-%d %H:%M')", "question_id": "311627-6", "cmd_name": "conala", "oracle_man": ["python.library.datetime#datetime.datetime.now", "python.library.datetime#datetime.datetime.strftime"], "canonical_cmd": "datetime.datetime.now().strftime('%Y-%m-%d %H:%M')"}
{"nl": "reverse a list `array`", "cmd": "reversed(array)", "question_id": "3940128-54", "cmd_name": "conala", "oracle_man": ["python.library.functions#reversed"], "canonical_cmd": "reversed(VAR_STR)"}
{"nl": "reverse a list `array`", "cmd": "list(reversed(array))", "question_id": "3940128-11", "cmd_name": "conala", "oracle_man": ["python.library.functions#reversed", "python.library.functions#list"], "canonical_cmd": "list(reversed(VAR_STR))"}
{"nl": "How do I create a LIST of unique random numbers?", "cmd": "random.sample(list(range(100)), 10)", "question_id": "9755538-3", "cmd_name": "conala", "oracle_man": ["python.library.random#random.sample", "python.library.functions#range", "python.library.functions#list"], "canonical_cmd": "random.sample(list(range(100)), 10)"}
{"nl": "find the index of element closest to number 11.5 in list `a`", "cmd": "min(enumerate(a), key=lambda x: abs(x[1] - 11.5))", "question_id": "9706041-13", "cmd_name": "conala", "oracle_man": ["python.library.functions#enumerate", "python.library.functions#abs", "python.library.functions#min"], "canonical_cmd": "min(enumerate(VAR_STR), key=lambda x: abs(x[1] - 11.5))"}
{"nl": "create 4 numbers in range between 1 and 3", "cmd": "print(np.linspace(1, 3, num=4, endpoint=False))", "question_id": "31143732-11", "cmd_name": "conala", "oracle_man": ["numpy.reference.generated.numpy.linspace"], "canonical_cmd": "print(np.linspace(1, 3, num=4, endpoint=False))"}
{"nl": "Create numpy array of `5` numbers starting from `1` with interval of `3`", "cmd": "print(np.linspace(1, 3, num=5))", "question_id": "31143732-14", "cmd_name": "conala", "oracle_man": ["numpy.reference.generated.numpy.linspace"], "canonical_cmd": "print(np.linspace(1, 3, num=5))"}
{"nl": "split list `mylist` into a list of lists whose elements have the same first five characters", "cmd": "[list(v) for k, v in itertools.groupby(mylist, key=lambda x: x[:5])]", "question_id": "13368723-57", "cmd_name": "conala", "oracle_man": ["python.library.itertools#itertools.groupby", "python.library.functions#list"], "canonical_cmd": "[list(v) for k, v in itertools.groupby(VAR_STR, key=lambda x: x[:5])]"}
{"nl": "find the minimum value in a numpy array `arr` excluding 0", "cmd": "arr[arr != 0].min()", "question_id": "11764260-82", "cmd_name": "conala", "oracle_man": ["python.library.functions#min"], "canonical_cmd": "VAR_STR[VAR_STR != 0].min()"}
{"nl": "Retrieve an arbitrary value from dictionary `dict`", "cmd": "next(iter(dict.values()))", "question_id": "3097866-25", "cmd_name": "conala", "oracle_man": ["python.library.stdtypes#dict.values", "python.library.functions#iter", "python.library.functions#next"], "canonical_cmd": "next(iter(VAR_STR.values()))"}
{"nl": "access an arbitrary value from dictionary `dict`", "cmd": "next(iter(list(dict.values())))", "question_id": "3097866-93", "cmd_name": "conala", "oracle_man": ["python.library.stdtypes#dict.values", "python.library.functions#iter", "python.library.functions#next", "python.library.functions#list"], "canonical_cmd": "next(iter(list(VAR_STR.values())))"}
{"nl": "rearrange tuple of tuples `t`", "cmd": "tuple(zip(*t))", "question_id": "16040156-42", "cmd_name": "conala", "oracle_man": ["python.library.functions#zip", "python.library.functions#tuple"], "canonical_cmd": "tuple(zip(*VAR_STR))"}
{"nl": "read a single character from stdin", "cmd": "sys.stdin.read(1)", "question_id": "510357-53", "cmd_name": "conala", "oracle_man": ["python.library.os#os.read"], "canonical_cmd": "sys.stdin.read(1)"}
{"nl": "Get a list values of a dictionary item `pass_id` from post requests in django", "cmd": "request.POST.getlist('pass_id')", "question_id": "5430470-56", "cmd_name": "conala", "oracle_man": ["python.library.cgi#cgi.FieldStorage.getlist"], "canonical_cmd": "request.POST.getlist('VAR_STR')"}
{"nl": "get number in list `myList` closest in value to number `myNumber`", "cmd": "min(myList, key=lambda x: abs(x - myNumber))", "question_id": "12141150-81", "cmd_name": "conala", "oracle_man": ["python.library.functions#abs", "python.library.functions#min"], "canonical_cmd": "min(VAR_STR, key=lambda x: abs(x - VAR_STR))"}
{"nl": "Concat each values in a tuple `(34.2424, -64.2344, 76.3534, 45.2344)` to get a string", "cmd": "\"\"\"\"\"\".join(str(i) for i in (34.2424, -64.2344, 76.3534, 45.2344))", "question_id": "17426386-88", "cmd_name": "conala", "oracle_man": ["python.library.stdtypes#str", "python.library.stdtypes#str.join"], "canonical_cmd": "\"\"\"\"\"\".join(str(i) for i in (VAR_STR))"}
{"nl": "run the code contained in string \"print('Hello')\"", "cmd": "eval(\"print('Hello')\")", "question_id": "1015142-46", "cmd_name": "conala", "oracle_man": ["python.library.functions#eval"], "canonical_cmd": "eval('VAR_STR')"}
{"nl": "convert bytes string `s`  to an unsigned integer", "cmd": "struct.unpack('>q', s)[0]", "question_id": "4433017-13", "cmd_name": "conala", "oracle_man": ["python.library.struct#struct.unpack"], "canonical_cmd": "struct.unpack('>q', VAR_STR)[0]"}
{"nl": "Get a random string of length `length`", "cmd": "return ''.join(random.choice(string.lowercase) for i in range(length))", "question_id": "2030053-18", "cmd_name": "conala", "oracle_man": ["python.library.random#random.choice", "python.library.functions#range", "python.library.stdtypes#str.join"], "canonical_cmd": "return ''.join(random.choice(string.lowercase) for i in range(VAR_STR))"}
{"nl": "access the class variable `a_string` from a class object `test`", "cmd": "getattr(test, a_string)", "question_id": "13303100-52", "cmd_name": "conala", "oracle_man": ["python.library.functions#getattr"], "canonical_cmd": "getattr(VAR_STR, VAR_STR)"}
{"nl": "disable abbreviation in argparse", "cmd": "parser = argparse.ArgumentParser(allow_abbrev=False)", "question_id": "10750802-58", "cmd_name": "conala", "oracle_man": ["python.library.argparse#argparse.ArgumentParser"], "canonical_cmd": "parser = argparse.ArgumentParser(allow_abbrev=False)"}
{"nl": "get a dictionary in list `dicts` which key 'ratio' is closer to a global value 1.77672955975", "cmd": "min(dicts, key=lambda x: (abs(1.77672955975 - x['ratio']), -x['pixels']))", "question_id": "42442428-5", "cmd_name": "conala", "oracle_man": ["python.library.functions#abs", "python.library.functions#min"], "canonical_cmd": "min(VAR_STR, key=lambda x: (abs(1.77672955975 - x['VAR_STR']), -x['pixels']))"}
{"nl": "copy the content of file 'file.txt' to file 'file2.txt'", "cmd": "shutil.copy('file.txt', 'file2.txt')", "question_id": "36875258-12", "cmd_name": "conala", "oracle_man": ["python.library.shutil#shutil.copy"], "canonical_cmd": "shutil.copy('VAR_STR', 'VAR_STR')"}
{"nl": "Calling an external command \"echo Hello World\"", "cmd": "print(subprocess.Popen('echo Hello World', shell=True, stdout=subprocess.PIPE).stdout.read())", "question_id": "89228-69", "cmd_name": "conala", "oracle_man": ["python.library.subprocess#subprocess.Popen", "python.library.os#os.read"], "canonical_cmd": "print(subprocess.Popen('VAR_STR', shell=True, stdout=subprocess.PIPE).stdout.\n    read())"}
{"nl": "Calling an external command \"echo Hello World\"", "cmd": "print(os.popen('echo Hello World').read())", "question_id": "89228-17", "cmd_name": "conala", "oracle_man": ["python.library.os#os.popen", "python.library.os#os.read"], "canonical_cmd": "print(os.popen('VAR_STR').read())"}
{"nl": "Calling an external command \"ls\"", "cmd": "p = subprocess.Popen('ls', shell=True, stdout=subprocess.PIPE, stderr=subprocess.STDOUT)\nfor line in p.stdout.readlines():\n    print(line, end=' ')\nretval = p.wait()", "question_id": "89228-83", "cmd_name": "conala", "oracle_man": ["python.library.subprocess#subprocess.Popen", "python.library.subprocess#subprocess.Popen.wait", "python.library.io#io.IOBase.readlines"], "canonical_cmd": "p = subprocess.Popen('VAR_STR', shell=True, stdout=subprocess.PIPE, stderr=\n    subprocess.STDOUT)\nfor line in p.stdout.readlines():\n    print(line, end=' ')\nretval = p.wait()"}
{"nl": "convert numpy array into python list structure", "cmd": "np.array([[1, 2, 3], [4, 5, 6]]).tolist()", "question_id": "1966207-46", "cmd_name": "conala", "oracle_man": ["numpy.reference.generated.numpy.array", "python.library.array#array.array.tolist"], "canonical_cmd": "np.array([[1, 2, 3], [4, 5, 6]]).tolist()"}
{"nl": "rename file `dir` to `dir` + '!'", "cmd": "os.rename(dir, dir + '!')", "question_id": "11816315-65", "cmd_name": "conala", "oracle_man": ["python.library.os#os.rename"], "canonical_cmd": "os.rename(VAR_STR, VAR_STR + 'VAR_STR')"}
{"nl": "find the current directory", "cmd": "os.getcwd()", "question_id": "5137497-38", "cmd_name": "conala", "oracle_man": ["python.library.os#os.getcwd"], "canonical_cmd": "os.getcwd()"}
{"nl": "Find current directory", "cmd": "cwd = os.getcwd()", "question_id": "5137497-54", "cmd_name": "conala", "oracle_man": ["python.library.os#os.getcwd"], "canonical_cmd": "cwd = os.getcwd()"}
{"nl": "use operations like max/min within a row to a dataframe 'd' in pandas", "cmd": "d.apply(lambda row: min([row['A'], row['B']]) - row['C'], axis=1)", "question_id": "12376863-62", "cmd_name": "conala", "oracle_man": ["python.library.functions#min"], "canonical_cmd": "VAR_STR.apply(lambda row: min([row['A'], row['B']]) - row['C'], axis=1)"}
{"nl": "How to plot with x-axis at the top of the figure?", "cmd": "ax.xaxis.set_ticks_position('top')", "question_id": "8639973-88", "cmd_name": "conala", "oracle_man": ["matplotlib._as_gen.matplotlib.axis.xaxis.set_ticks_position"], "canonical_cmd": "ax.xaxis.set_ticks_position('top')"}
{"nl": "sum the column `positions` along the  other columns `stock`, `same1`, `same2` in a pandas data frame `df`", "cmd": "df.groupby(['stock', 'same1', 'same2'], as_index=False)['positions'].sum()", "question_id": "17166601-53", "cmd_name": "conala", "oracle_man": ["pandas.reference.api.pandas.dataframe.groupby", "python.library.functions#sum"], "canonical_cmd": "VAR_STR.groupby(['VAR_STR', 'VAR_STR', 'VAR_STR'], as_index=False)['VAR_STR'].sum()"}
{"nl": "Summing across rows of Pandas Dataframe", "cmd": "df.groupby(['stock', 'same1', 'same2'])['positions'].sum().reset_index()", "question_id": "17166601-28", "cmd_name": "conala", "oracle_man": ["pandas.reference.api.pandas.dataframe.groupby", "python.library.functions#sum", "pandas.reference.api.pandas.dataframe.reset_index"], "canonical_cmd": "df.groupby(['stock', 'same1', 'same2'])['positions'].sum().reset_index()"}