Combine tabular data with text and images using Wide and Deep models in Pytorch
Project description
pytorch-widedeep
A flexible package to use Deep Learning with tabular data, text and images using wide and deep models.
Documentation: https://pytorch-widedeep.readthedocs.io
Companion posts and tutorials: infinitoml
Experiments and comparisson with LightGBM
: TabularDL vs LightGBM
Slack: if you want to contribute or just want to chat with us, join slack
Introduction
pytorch-widedeep
is based on Google's Wide and Deep Algorithm
In general terms, pytorch-widedeep
is a package to use deep learning with
tabular data. In particular, is intended to facilitate the combination of text
and images with corresponding tabular data using wide and deep models. With
that in mind there are a number of architectures that can be implemented with
just a few lines of code. For details on the main components of those
architectures please visit the
repo.
Installation
Install using pip:
pip install pytorch-widedeep
Or install directly from github
pip install git+https://github.com/jrzaurin/pytorch-widedeep.git
Developer Install
# Clone the repository
git clone https://github.com/jrzaurin/pytorch-widedeep
cd pytorch-widedeep
# Install in dev mode
pip install -e .
Important note for Mac users: at the time of writing the latest torch
release is 1.9
. Some past issues
when running on Mac, present in previous versions, persist on this release
and the data-loaders will not run in parallel. In addition, since python 3.8
, the multiprocessing
library start method changed from 'fork'
to'spawn'
.
This also affects the data-loaders (for any torch
version) and they will
not run in parallel. Therefore, for Mac users I recommend using python 3.7
and torch <= 1.6
(with the corresponding, consistent
version of torchvision
, e.g. 0.7.0
for torch 1.6
). I do not want to
force this versioning in the setup.py
file since I expect that all these
issues are fixed in the future. Therefore, after installing
pytorch-widedeep
via pip or directly from github, downgrade torch
and
torchvision
manually:
pip install pytorch-widedeep
pip install torch==1.6.0 torchvision==0.7.0
None of these issues affect Linux users.
Quick start
Binary classification with the adult
dataset
using Wide
and DeepDense
and defaults settings.
Building a wide (linear) and deep model with pytorch-widedeep
:
import pandas as pd
import numpy as np
import torch
from sklearn.model_selection import train_test_split
from pytorch_widedeep import Trainer
from pytorch_widedeep.preprocessing import WidePreprocessor, TabPreprocessor
from pytorch_widedeep.models import Wide, TabMlp, WideDeep
from pytorch_widedeep.metrics import Accuracy
# the following 4 lines are not directly related to ``pytorch-widedeep``. I
# assume you have downloaded the dataset and place it in a dir called
# data/adult/
df = pd.read_csv("data/adult/adult.csv.zip")
df["income_label"] = (df["income"].apply(lambda x: ">50K" in x)).astype(int)
df.drop("income", axis=1, inplace=True)
df_train, df_test = train_test_split(df, test_size=0.2, stratify=df.income_label)
# prepare wide, crossed, embedding and continuous columns
wide_cols = [
"education",
"relationship",
"workclass",
"occupation",
"native-country",
"gender",
]
cross_cols = [("education", "occupation"), ("native-country", "occupation")]
embed_cols = [
("education", 16),
("workclass", 16),
("occupation", 16),
("native-country", 32),
]
cont_cols = ["age", "hours-per-week"]
target_col = "income_label"
# target
target = df_train[target_col].values
# wide
wide_preprocessor = WidePreprocessor(wide_cols=wide_cols, crossed_cols=cross_cols)
X_wide = wide_preprocessor.fit_transform(df_train)
wide = Wide(wide_dim=np.unique(X_wide).shape[0], pred_dim=1)
# deeptabular
tab_preprocessor = TabPreprocessor(embed_cols=embed_cols, continuous_cols=cont_cols)
X_tab = tab_preprocessor.fit_transform(df_train)
deeptabular = TabMlp(
mlp_hidden_dims=[64, 32],
column_idx=tab_preprocessor.column_idx,
embed_input=tab_preprocessor.embeddings_input,
continuous_cols=cont_cols,
)
# wide and deep
model = WideDeep(wide=wide, deeptabular=deeptabular)
# train the model
trainer = Trainer(model, objective="binary", metrics=[Accuracy])
trainer.fit(
X_wide=X_wide,
X_tab=X_tab,
target=target,
n_epochs=5,
batch_size=256,
val_split=0.1,
)
# predict
X_wide_te = wide_preprocessor.transform(df_test)
X_tab_te = tab_preprocessor.transform(df_test)
preds = trainer.predict(X_wide=X_wide_te, X_tab=X_tab_te)
# Save and load
# Option 1: this will also save training history and lr history if the
# LRHistory callback is used
trainer.save(path="model_weights", save_state_dict=True)
# Option 2: save as any other torch model
torch.save(model.state_dict(), "model_weights/wd_model.pt")
# From here in advance, Option 1 or 2 are the same. I assume the user has
# prepared the data and defined the new model components:
# 1. Build the model
model_new = WideDeep(wide=wide, deeptabular=deeptabular)
model_new.load_state_dict(torch.load("model_weights/wd_model.pt"))
# 2. Instantiate the trainer
trainer_new = Trainer(
model_new,
objective="binary",
)
# 3. Either start the fit or directly predict
preds = trainer_new.predict(X_wide=X_wide, X_tab=X_tab)
Of course, one can do much more. See the Examples folder, the documentation or the companion posts for a better understanding of the content of the package and its functionalities.
Testing
pytest tests
Acknowledgments
This library takes from a series of other libraries, so I think it is just fair to mention them here in the README (specific mentions are also included in the code).
The Callbacks
and Initializers
structure and code is inspired by the
torchsample
library, which in
itself partially inspired by Keras
.
The TextProcessor
class in this library uses the
fastai
's
Tokenizer
and Vocab
. The code at utils.fastai_transforms
is a minor
adaptation of their code so it functions within this library. To my experience
their Tokenizer
is the best in class.
The ImageProcessor
class in this library uses code from the fantastic Deep
Learning for Computer
Vision
(DL4CV) book by Adrian Rosebrock.
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