Made-With-ML/madewithml/data.py

148 lines
5.4 KiB
Python

import re
from typing import Dict, List, Tuple
import numpy as np
import pandas as pd
import ray
from ray.data import Dataset
from ray.data.preprocessor import Preprocessor
from sklearn.model_selection import train_test_split
from transformers import BertTokenizer
from madewithml.config import STOPWORDS
def load_data(dataset_loc: str, num_samples: int = None) -> Dataset:
"""Load data from source into a Ray Dataset.
Args:
dataset_loc (str): Location of the dataset.
num_samples (int, optional): The number of samples to load. Defaults to None.
Returns:
Dataset: Our dataset represented by a Ray Dataset.
"""
ds = ray.data.read_csv(dataset_loc)
ds = ds.random_shuffle(seed=1234)
ds = ray.data.from_items(ds.take(num_samples)) if num_samples else ds
return ds
def stratify_split(
ds: Dataset,
stratify: str,
test_size: float,
shuffle: bool = True,
seed: int = 1234,
) -> Tuple[Dataset, Dataset]:
"""Split a dataset into train and test splits with equal
amounts of data points from each class in the column we
want to stratify on.
Args:
ds (Dataset): Input dataset to split.
stratify (str): Name of column to split on.
test_size (float): Proportion of dataset to split for test set.
shuffle (bool, optional): whether to shuffle the dataset. Defaults to True.
seed (int, optional): seed for shuffling. Defaults to 1234.
Returns:
Tuple[Dataset, Dataset]: the stratified train and test datasets.
"""
def _add_split(df: pd.DataFrame) -> pd.DataFrame: # pragma: no cover, used in parent function
"""Naively split a dataframe into train and test splits.
Add a column specifying whether it's the train or test split."""
train, test = train_test_split(df, test_size=test_size, shuffle=shuffle, random_state=seed)
train["_split"] = "train"
test["_split"] = "test"
return pd.concat([train, test])
def _filter_split(df: pd.DataFrame, split: str) -> pd.DataFrame: # pragma: no cover, used in parent function
"""Filter by data points that match the split column's value
and return the dataframe with the _split column dropped."""
return df[df["_split"] == split].drop("_split", axis=1)
# Train, test split with stratify
grouped = ds.groupby(stratify).map_groups(_add_split, batch_format="pandas") # group by each unique value in the column we want to stratify on
train_ds = grouped.map_batches(_filter_split, fn_kwargs={"split": "train"}, batch_format="pandas") # combine
test_ds = grouped.map_batches(_filter_split, fn_kwargs={"split": "test"}, batch_format="pandas") # combine
# Shuffle each split (required)
train_ds = train_ds.random_shuffle(seed=seed)
test_ds = test_ds.random_shuffle(seed=seed)
return train_ds, test_ds
def clean_text(text: str, stopwords: List = STOPWORDS) -> str:
"""Clean raw text string.
Args:
text (str): Raw text to clean.
stopwords (List, optional): list of words to filter out. Defaults to STOPWORDS.
Returns:
str: cleaned text.
"""
# Lower
text = text.lower()
# Remove stopwords
pattern = re.compile(r"\b(" + r"|".join(stopwords) + r")\b\s*")
text = pattern.sub(" ", text)
# Spacing and filters
text = re.sub(r"([!\"'#$%&()*\+,-./:;<=>?@\\\[\]^_`{|}~])", r" \1 ", text) # add spacing
text = re.sub("[^A-Za-z0-9]+", " ", text) # remove non alphanumeric chars
text = re.sub(" +", " ", text) # remove multiple spaces
text = text.strip() # strip white space at the ends
text = re.sub(r"http\S+", "", text) # remove links
return text
def tokenize(batch: Dict) -> Dict:
"""Tokenize the text input in our batch using a tokenizer.
Args:
batch (Dict): batch of data with the text inputs to tokenize.
Returns:
Dict: batch of data with the results of tokenization (`input_ids` and `attention_mask`) on the text inputs.
"""
tokenizer = BertTokenizer.from_pretrained("allenai/scibert_scivocab_uncased", return_dict=False)
encoded_inputs = tokenizer(batch["text"].tolist(), return_tensors="np", padding="longest")
return dict(ids=encoded_inputs["input_ids"], masks=encoded_inputs["attention_mask"], targets=np.array(batch["tag"]))
def preprocess(df: pd.DataFrame, class_to_index: Dict) -> Dict:
"""Preprocess the data in our dataframe.
Args:
df (pd.DataFrame): Raw dataframe to preprocess.
class_to_index (Dict): Mapping of class names to indices.
Returns:
Dict: preprocessed data (ids, masks, targets).
"""
df["text"] = df.title + " " + df.description # feature engineering
df["text"] = df.text.apply(clean_text) # clean text
df = df.drop(columns=["id", "created_on", "title", "description"], errors="ignore") # clean dataframe
df = df[["text", "tag"]] # rearrange columns
df["tag"] = df["tag"].map(class_to_index) # label encoding
outputs = tokenize(df)
return outputs
class CustomPreprocessor(Preprocessor):
"""Custom preprocessor class."""
def _fit(self, ds):
tags = ds.unique(column="tag")
self.class_to_index = {tag: i for i, tag in enumerate(tags)}
self.index_to_class = {v: k for k, v in self.class_to_index.items()}
def _transform_pandas(self, batch): # could also do _transform_numpy
return preprocess(batch, class_to_index=self.class_to_index)