Metadata-Version: 2.1
Name: deeppavlov
Version: 1.0.0rc1
Summary: An open source library for building end-to-end dialog systems and training chatbots.
Home-page: https://github.com/deepmipt/DeepPavlov
Download-URL: https://github.com/deepmipt/DeepPavlov/archive/1.0.0rc1.tar.gz
Author: Neural Networks and Deep Learning lab, MIPT
Author-email: info@deeppavlov.ai
License: Apache License, Version 2.0
Keywords: NLP,NER,SQUAD,Intents,Chatbot
Description-Content-Type: text/markdown
Provides-Extra: tests
Provides-Extra: docs
Provides-Extra: s3
License-File: LICENSE

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DeepPavlov is an open-source conversational AI library built on [PyTorch](https://pytorch.org/).

DeepPavlov is designed for
* development of production ready chat-bots and complex conversational systems,
* research in the area of NLP and, particularly, of dialog systems.

## Quick Links

* Demo [*demo.deeppavlov.ai*](https://demo.deeppavlov.ai/)
* Documentation [*docs.deeppavlov.ai*](http://docs.deeppavlov.ai/)
    * Model List [*docs:features/*](http://docs.deeppavlov.ai/en/master/features/overview.html)
    * Contribution Guide [*docs:contribution_guide/*](http://docs.deeppavlov.ai/en/master/devguides/contribution_guide.html)
* Issues [*github/issues/*](https://github.com/deepmipt/DeepPavlov/issues)
* Forum [*forum.deeppavlov.ai*](https://forum.deeppavlov.ai/)
* Blogs [*medium.com/deeppavlov*](https://medium.com/deeppavlov)
* Tutorials [*examples/*](https://github.com/deepmipt/DeepPavlov/tree/master/examples) and [extended colab tutorials](https://github.com/deepmipt/dp_tutorials)
* Docker Hub [*hub.docker.com/u/deeppavlov/*](https://hub.docker.com/u/deeppavlov/) 
    * Docker Images Documentation [*docs:docker-images/*](http://docs.deeppavlov.ai/en/master/intro/installation.html#docker-images)

Please leave us [your feedback](https://forms.gle/i64fowQmiVhMMC7f9) on how we can improve the DeepPavlov framework.

**Models**

[Named Entity Recognition](http://docs.deeppavlov.ai/en/master/features/models/ner.html) | [Intent/Sentence Classification](http://docs.deeppavlov.ai/en/master/features/models/classifiers.html) |

[Question Answering over Text (SQuAD)](http://docs.deeppavlov.ai/en/master/features/models/squad.html) | [Knowledge Base Question Answering](http://docs.deeppavlov.ai/en/master/features/models/kbqa.html)

[Sentence Similarity/Ranking](http://docs.deeppavlov.ai/en/master/features/models/neural_ranking.html) | [TF-IDF Ranking](http://docs.deeppavlov.ai/en/master/features/models/tfidf_ranking.html) 

[Automatic Spelling Correction](http://docs.deeppavlov.ai/en/master/features/models/spelling_correction.html) | [Entity Linking](http://docs.deeppavlov.ai/en/master/features/models/entity_linking.html)

[Russian SuperGLUE](http://docs.deeppavlov.ai/en/master/features/models/superglue.html)

**Skills**

[Open Domain Questions Answering](http://docs.deeppavlov.ai/en/master/features/skills/odqa.html)

[Frequently Asked Questions Answering](http://docs.deeppavlov.ai/en/master/features/skills/faq.html)

**Embeddings**

[BERT embeddings for the Russian, Polish, Bulgarian, Czech, and informal English](http://docs.deeppavlov.ai/en/master/features/pretrained_vectors.html#bert)

[ELMo embeddings for the Russian language](http://docs.deeppavlov.ai/en/master/features/pretrained_vectors.html#elmo)

[FastText embeddings for the Russian language](http://docs.deeppavlov.ai/en/master/features/pretrained_vectors.html#fasttext)

**Auto ML**

[Tuning Models](http://docs.deeppavlov.ai/en/master/features/hypersearch.html)

**Integrations**

[REST API](http://docs.deeppavlov.ai/en/master/integrations/rest_api.html) | [Socket API](http://docs.deeppavlov.ai/en/master/integrations/socket_api.html)

[Amazon AWS](http://docs.deeppavlov.ai/en/master/integrations/aws_ec2.html)

## Installation

0. We support `Linux` platform, `Python 3.6`, `3.7`, `3.8` and `3.9`
    * **`Python 3.5` is not supported!**

1. Create and activate a virtual environment:
    * `Linux`
    ```
    python -m venv env
    source ./env/bin/activate
    ```
2. Install the package inside the environment:
    ```
    pip install deeppavlov
    ```

## QuickStart

There is a bunch of great pre-trained NLP models in DeepPavlov. Each model is
determined by its config file.

List of models is available on
[the doc page](http://docs.deeppavlov.ai/en/master/features/overview.html) in
the `deeppavlov.configs` (Python):

```python
from deeppavlov import configs
```

When you're decided on the model (+ config file), there are two ways to train,
evaluate and infer it:

* via [Command line interface (CLI)](https://github.com/deepmipt/DeepPavlov/blob/master/#command-line-interface-cli) and
* via [Python](https://github.com/deepmipt/DeepPavlov/blob/master/#python).

#### GPU requirements

To run supported DeepPavlov models on GPU you should have [CUDA](https://developer.nvidia.com/cuda-toolkit) compatible
with used GPU and [library PyTorch version](https://github.com/deepmipt/DeepPavlov/blob/master/deeppavlov/requirements/pytorch.txt).

### Command line interface (CLI)

To get predictions from a model interactively through CLI, run

```bash
python -m deeppavlov interact <config_path> [-d]
```

* `-d` downloads required data -- pretrained model files and embeddings
  (optional).

You can train it in the same simple way:

```bash
python -m deeppavlov train <config_path> [-d]
```

Dataset will be downloaded regardless of whether there was `-d` flag or not.

To train on your own data you need to modify dataset reader path in the
[train config doc](http://docs.deeppavlov.ai/en/master/intro/config_description.html#train-config).
The data format is specified in the corresponding model doc page. 

There are even more actions you can perform with configs:

```bash
python -m deeppavlov <action> <config_path> [-d]
```

* `<action>` can be
    * `download` to download model's data (same as `-d`),
    * `train` to train the model on the data specified in the config file,
    * `evaluate` to calculate metrics on the same dataset,
    * `interact` to interact via CLI,
    * `riseapi` to run a REST API server (see
    [doc](http://docs.deeppavlov.ai/en/master/integrations/rest_api.html)),
    * `predict` to get prediction for samples from *stdin* or from
      *<file_path>* if `-f <file_path>` is specified.
* `<config_path>` specifies path (or name) of model's config file
* `-d` downloads required data


### Python

To get predictions from a model interactively through Python, run

```python
from deeppavlov import build_model

model = build_model(<config_path>, download=True)

# get predictions for 'input_text1', 'input_text2'
model(['input_text1', 'input_text2'])
```

* where `download=True` downloads required data from web -- pretrained model
  files and embeddings (optional),
* `<config_path>` is path to the chosen model's config file (e.g.
  `"deeppavlov/configs/ner/ner_ontonotes_bert_mult.json"`) or
  `deeppavlov.configs` attribute (e.g.
  `deeppavlov.configs.ner.ner_ontonotes_bert_mult` without quotation marks).

You can train it in the same simple way:

```python
from deeppavlov import train_model 

model = train_model(<config_path>, download=True)
```

* `download=True` downloads pretrained model, therefore the pretrained
model will be, first, loaded and then train (optional).

Dataset will be downloaded regardless of whether there was ``-d`` flag or
not.

To train on your own data you need to modify dataset reader path in the
[train config doc](http://docs.deeppavlov.ai/en/master/intro/config_description.html#train-config).
The data format is specified in the corresponding model doc page. 

You can also calculate metrics on the dataset specified in your config file:

```python
from deeppavlov import evaluate_model 

model = evaluate_model(<config_path>, download=True)
```


## License

DeepPavlov is Apache 2.0 - licensed.

##

<p align="center">
<img src="https://raw.githubusercontent.com/deepmipt/DeepPavlov/master/docs/_static/ipavlov_footer.png" width="50%" height="50%"/>
</p>
