Cereja is a bundle of useful functions that I don't want to rewrite.
Project description
Cereja 🍒
Cereja was written only with the Standard Python Library, and it was a great way to improve knowledge in the Language also to avoid the rewriting of code.
Getting Started DEV
Don't be shy \0/ ... Clone the repository and submit a function or module you made or use some function you liked.
See CONTRIBUTING 💻
Setup
Install
pip install --user cereja
or for all users
pip install cereja
Cereja Example usage
See some of the Cereja tools
To access the Cereja's tools you need to import it import cereja as cj
.
📝 FileIO
Create new files
import cereja as cj
file_json = cj.FileIO.create('./json_new_file.json', data={'k': 'v', 'k2': 'v2'})
file_txt = cj.FileIO.create('./txt_new_file.txt', ['line1', 'line2', 'line3'])
file_json.save()
file_txt.save()
print(file_json.exists)
# True
print(file_txt.exists)
# True
# see what you can do .txt file
print(cj.can_do(file_txt))
# see what you can do .json file
print(cj.can_do(file_json))
Load and edit files
import cereja as cj
file_json = cj.FileIO.load('./json_new_file.json')
print(file_json.data)
# {'k': 'v', 'k2': 'v2'}
file_json.add(key='new_key', value='value')
print(file_json.data)
# {'k': 'v', 'k2': 'v2', 'new_key': 'value'}
file_txt = cj.FileIO.load('./txt_new_file.txt')
print(file_txt.data)
# ['line1', 'line2', 'line3']
file_txt.add('line4')
print(file_txt.data)
# ['line1', 'line2', 'line3', 'line4']
file_txt.save(exist_ok=True) # Override
file_json.save(exist_ok=True) # Override
📍 Path
import cereja as cj
file_path = cj.Path('/my/path/file.ext')
print(cj.can_do(file_path))
# ['change_current_dir', 'cp', 'created_at', 'exists', 'get_current_dir', 'is_dir', 'is_file', 'is_hidden', 'is_link', 'join', 'last_access', 'list_dir', 'list_files', 'mv', 'name', 'parent', 'parent_name', 'parts', 'path', 'rm', 'root', 'rsplit', 'sep', 'split', 'stem', 'suffix', 'updated_at', 'uri']
🆗 HTTP Requests
import cereja as cj
# Change url, headers and data values.
url = 'localhost:8000/example'
headers = {'Authorization': 'TOKEN'} # optional
data = {'q': 'test'} # optional
response = cj.request.post(url, data=data, headers=headers)
if response.code == 200:
data = response.data
# have a fun!
⏳ Progress
import cereja as cj
import time
my_iterable = ['Cereja', 'is', 'very', 'easy']
for i in cj.Progress.prog(my_iterable):
print(f"current: {i}")
time.sleep(2)
# Output on terminal ...
# 🍒 Sys[out] » current: Cereja
# 🍒 Sys[out] » current: is
# 🍒 Cereja Progress » [▰▰▰▰▰▰▰▰▰▰▰▰▰▰▰▱▱▱▱▱▱▱▱▱▱▱▱▱▱] - 50.00% - 🕢 00:00:02 estimated
🧠 Data Preparation
📊 Freq
import cereja as cj
freq = cj.Freq([1, 2, 3, 3, 10, 10, 4, 4, 4, 4])
# Output -> Freq({1: 1, 2: 1, 3: 2, 10: 2, 4: 4})
freq.most_common(2)
# Output -> {4: 4, 3: 2}
freq.least_freq(2)
# Output -> {2: 1, 1: 1}
freq.probability
# Output -> OrderedDict([(4, 0.4), (3, 0.2), (10, 0.2), (1, 0.1), (2, 0.1)])
freq.sample(min_freq=1, max_freq=2)
# Output -> {3: 2, 10: 2, 1: 1, 2: 1}
# Save json file.
freq.to_json('./freq.json')
🧹 Text Preprocess
import cereja as cj
text = "Oi tudo bem?? meu nome é joab!"
text = cj.preprocess.remove_extra_chars(text)
print(text)
# Output -> 'Oi tudo bem? meu nome é joab!'
text = cj.preprocess.separate(text, sep=['?', '!'])
# Output -> 'Oi tudo bem ? meu nome é joab !'
text = cj.preprocess.accent_remove(text)
# Output -> 'Oi tudo bem ? meu nome e joab !'
# and more ..
# You can use class Preprocessor ...
preprocessor = cj.Preprocessor(stop_words=(),
punctuation='!?,.', to_lower=True, is_remove_punctuation=False,
is_remove_stop_words=False,
is_remove_accent=True)
print(preprocessor.preprocess(text))
# Output -> 'oi tudo bem ? meu nome e joab !'
print(preprocessor.preprocess(text, is_destructive=True))
# Output -> 'oi tudo bem meu nome e joab'
🔣 Tokenizer
import cereja as cj
text = ['oi tudo bem meu nome é joab']
tokenizer = cj.Tokenizer(text, use_unk=True)
# tokens 0 to 9 is UNK
# hash_ used to replace UNK
token_sequence, hash_ = tokenizer.encode('meu nome é Neymar Júnior')
# Output -> [([10, 12, 11, 0, 1], 'eeb755960ce70c')]
decoded_sequence = tokenizer.decode(token_sequence, hash_=hash_)
# Output -> 'meu nome é Neymar Júnior'
⏸ Corpus
Great training and test separator.
import cereja as cj
X = ['how are you?', 'my name is Joab', 'I like coffee', 'how are you joab?', 'how', 'we are the world']
Y = ['como você está?', 'meu nome é Joab', 'Eu gosto de café', 'Como você está joab?', 'como', 'Nós somos o mundo']
corpus = cj.Corpus(source_data=X, target_data=Y, source_name='en', target_name='pt')
print(corpus) # Corpus(examples: 6 - source_vocab_size: 13 - target_vocab_size:15)
print(corpus.source) # LanguageData(examples: 6 - vocab_size: 13)
print(corpus.target) # LanguageData(examples: 6 - vocab_size: 15)
corpus.source.phrases_freq
# Counter({'how are you': 1, 'my name is joab': 1, 'i like coffee': 1, 'how are you joab': 1, 'how': 1, 'we are the world': 1})
corpus.source.word_freq
# Counter({'how': 3, 'are': 3, 'you': 2, 'joab': 2, 'my': 1, 'name': 1, 'is': 1, 'i': 1, 'like': 1, 'coffee': 1, 'we': 1, 'the': 1, 'world': 1})
corpus.target.phrases_freq
# Counter({'como você está': 1, 'meu nome é joab': 1, 'eu gosto de café': 1, 'como você está joab': 1, 'como': 1, 'nós somos o mundo': 1})
corpus.target.words_freq
# Counter({'como': 3, 'você': 2, 'está': 2, 'joab': 2, 'meu': 1, 'nome': 1, 'é': 1, 'eu': 1, 'gosto': 1, 'de': 1, 'café': 1, 'nós': 1, 'somos': 1, 'o': 1, 'mundo': 1})
# split_data function guarantees test data without data identical to training
# and only with vocabulary that exists in training
train, test = corpus.split_data() # default percent of training is 80%
🔢 Array
import cereja as cj
cj.array.is_empty(data) # False
cj.array.get_shape(data) # (2, 3)
data = cj.array.flatten(data) # [1, 2, 3, 3, 3, 3]
cj.array.prod(data) # 162
cj.array.sub(data) # -13
cj.array.div(data) # 0.006172839506172839
cj.array.rand_n(0.0, 2.0, n=3) # [0.3001196087729699, 0.639679494102923, 1.060200897124107]
cj.array.rand_n(1, 10) # 5.086403830031244
cj.array.array_randn((3, 3,
3)) # [[[0.015077210355770374, 0.014298110484612511, 0.030410666810216064], [0.029319083335697604, 0.0072365209507707666, 0.010677361074992], [0.010576754075922935, 0.04146379877648334, 0.02188348813336284]], [[0.0451851551098092, 0.037074906805326824, 0.0032484586475421007], [0.025633380630695347, 0.010312669541918484, 0.0373624007621097], [0.047923908102496145, 0.0027939333359724224, 0.05976224377251878]], [[0.046869510719106486, 0.008325638358172866, 0.0038702998343255893], [0.06475268683502387, 0.0035638592537234623, 0.06551037943638163], [0.043317416824708604, 0.06579372884523939, 0.2477564291871006]]]
cj.array.group_items_in_batches(items=[1, 2, 3, 4], items_per_batch=3, fill=0) # [[1, 2, 3], [4, 0, 0]]
cj.array.remove_duplicate_items(['hi', 'hi', 'ih']) # ['hi', 'ih']
cj.array.get_cols([['line1_col1', 'line1_col2'],
['line2_col1', 'line2_col2']]) # [['line1_col1', 'line2_col1'], ['line1_col2', 'line2_col2']]
cj.array.dotproduct([1, 2], [1, 2]) # 5
a = cj.array.array_gen((3, 3), 1) # [[1, 1, 1], [1, 1, 1], [1, 1, 1]]
b = cj.array.array_gen((3, 3), 1) # [[1, 1, 1], [1, 1, 1], [1, 1, 1]]
cj.array.dot(a, b) # [[3, 3, 3], [3, 3, 3], [3, 3, 3]]
cj.mathtools.theta_angle((2, 2), (0, -2)) # 135.0
🧰 Utils
import cereja as cj
data = {"key1": 'value1', "key2": 'value2', "key3": 'value3', "key4": 'value4'}
cj.utils.chunk(list(range(10)), batch_size=3)
# [[0, 1, 2], [3, 4, 5], [6, 7, 8], [9]]
cj.utils.chunk(list(range(10)), batch_size=3, fill_with=0, is_random=True)
# [[9, 7, 8], [0, 3, 2], [4, 1, 5], [6, 0, 0]]
# Invert Dict
cj.utils.invert_dict(data)
# Output -> {'value1': 'key1', 'value2': 'key2', 'value3': 'key3', 'value4': 'key4'}
# Get sample of large data
cj.utils.sample(data, k=2, is_random=True)
# Output -> {'key1': 'value1', 'key4': 'value4'}
cj.utils.fill([1, 2, 3, 4], max_size=20, with_=0)
# Output -> [1, 2, 3, 4, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0]
cj.utils.rescale_values([1, 2, 3, 4, 5, 6, 7, 8, 9, 10], granularity=4)
# Output -> [1, 3, 5, 7]
cj.utils.import_string('cereja.file._io.FileIO')
# Output -> <class 'cereja.file._io.FileIO'>
cj.utils.list_methods(cj.Path)
# Output -> ['change_current_dir', 'cp', 'get_current_dir', 'join', 'list_dir', 'list_files', 'mv', 'rm', 'rsplit', 'split']
cj.utils.string_to_literal('[1,2,3,4]')
# Output -> [1, 2, 3, 4]
cj.utils.time_format(3600)
# Output -> '01:00:00'
cj.utils.truncate("Cereja is fun.", k=3)
# Output -> 'Cer...'
data = [[1, 2, 3], [3, 3, 3]]
cj.utils.is_iterable(data) # True
cj.utils.is_sequence(data) # True
cj.utils.is_numeric_sequence(data) # True
License
This project is licensed under the MIT License - see the LICENSE file for details
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