Metadata-Version: 2.1
Name: cotk
Version: 0.0.1
Summary: Conversational Toolkits
Home-page: https://github.com/thu-coai/cotk
Author: thu-coai
Author-email: thu-coai-developer@googlegroups.com
License: Apache
Description: 
        # Conversational Toolkits
        
        [![CodeFactor](https://www.codefactor.io/repository/github/thu-coai/cotk/badge)](https://www.codefactor.io/repository/github/thu-coai/cotk)
        [![Coverage Status](https://coveralls.io/repos/github/thu-coai/cotk/badge.svg?branch=master)](https://coveralls.io/github/thu-coai/cotk?branch=master)
        [![Build Status](https://travis-ci.com/thu-coai/cotk.svg?branch=master)](https://travis-ci.com/thu-coai/cotk)
        [![codebeat badge](https://codebeat.co/badges/dc64db27-7e25-4fea-a231-3c9baac916f8)](https://codebeat.co/projects/github-com-thu-coai-cotk-master)
        
        ``cotk`` is an open-source lightweight framework for model building and evaluation.
        We provides standard dataset and evaluation suites in the domain of general language generation.
        It easy to use and make you focus on designing your models!
        
        Features included:
        
        * Light-weight, easy to start. Don't bother your way to construct models.
        * Predefined standard datasets, in the domain of language modeling, dialog generation and more.
        * Predefined evaluation suites, test your model with multiple metrics in several lines.
        * A dashboard to show experiments, compare your and others' models fairly.
        * Long-term maintenance and consistent development.
        
        This project is a part of ``dialtk`` (Toolkits for Dialog System by Tsinghua University), you can follow [dialtk](http://coai.cs.tsinghua.edu.cn/dialtk/) or [cotk](http://coai.cs.tsinghua.edu.cn/dialtk/cotk/) on our home page.
        
        **Quick links**
        
        * [Tutorial & Documents](https://thu-coai.github.io/cotk_docs/)
        * [Dashboard](http://coai.cs.tsinghua.edu.cn/dashboard/)
        
        **Index**
        
        - [Installation](#installation)
          - [Requirements](#requirements)
          - [Install from pip](#install-from-pip)
          - [Install from source](#install-from-source)
        - [Quick Start](#quick-start)
          - [Dataloader](#Dataloader)
          - [Metrics](#metrics)
          - [Publish Experiments](#publish-experiments)
          - [Reproduce Experiments](#reproduce-experiments)
          - [Predefined Models](#predefined-models)
        - [Issues](#issues)
        - [Contributions](#Contributions)
        - [Team](#team)
        - [License](#license)
        
        
        
        ## Installation
        
        ### Requirements
        
        -  python 3
        -  numpy >= 1.13
        -  nltk >= 3.4
        -  tqdm >= 4.30
        -  checksumdir >= 1.1
        -  pytorch >= 1.0.0 (optional)
        -  pytorch-pretrained-bert (optional)
        
        ### Install from pip
        
        You can simply get the latest stable version from pip using
        
        ```bash
            pip install cotk
        ```
        
        ### Install from source code
        
        * Clone the cotk repository
        
        ```bash
            git clone https://github.com/thu-coai/cotk.git
        ```
        
        * Install cotk via pip
        
        ```bash
            cd cotk
            pip install -e .
        ```
        
        * If you want to run the models in ``./models``, you have to additionally install [TensorFlow](https://www.tensorflow.org) or [PyTorch](https://pytorch.org/).
        
        
        
        ## Quick Start
        
        Let us skim through the whole package to find what you want. 
        
        ### Dataloader
        
        Load common used dataset and preprocess for you:
        
        * Download online resources or import from local
        * Split training set, development set and test set
        * Construct vocabulary list
        
        ```python
            >>> # automatically download online resources
            >>> dataloader = cotk.dataloader.MSCOCO("resources://MSCOCO_small")
            >>> # or download from a url
            >>> dl_url = cotk.dataloader.MSCOCO("http://cotk-data.s3-ap-northeast-1.amazonaws.com/mscoco_small.zip#MSCOCO")
            >>> # or import from local file
            >>> dl_zip = cotk.dataloader.MSCOCO("./MSCOCO.zip#MSCOCO")
            
            >>> print("Dataset is split into:", dataloader.key_name)
            ["train", "dev", "test"]
        ```
        
        Inspect vocabulary list
        
        ```python
            >>> print("Vocabulary size:", dataloader.vocab_size)
            Vocabulary size: 2588
            >>> print("Frist 10 tokens in vocabulary:", dataloader.vocab_list[:10])
            Frist 10 tokens in vocabulary: ['<pad>', '<unk>', '<go>', '<eos>', '.', 'a', 'A', 'on', 'of', 'in']
        ```
        
        Convert between ids and strings
        
        ```python
            >>> print("Convert string to ids", \
            ...           dataloader.convert_tokens_to_ids(["<go>", "hello", "world", "<eos>"]))
            Convert string to string [2, 1379, 1897, 3]
            >>> print("Convert ids to string", \
            ...           dataloader.convert_ids_to_tokens([2, 1379, 1897, 3]))
        ```
        
        Iterate over batches
        
        ```python
            >>> for data in dataloader.get_batch("train", batch_size=1):
            ...     print(data)
            {'sent':
                array([[ 2, 181, 13, 26, 145, 177, 8, 22, 12, 5, 1, 1099, 4, 3]]),
                # <go> This is an old photo of people and a <unk> wagon.
             'sent_allvocabs':
                array([[ 2, 181, 13, 26, 145, 177, 8, 22, 12, 5, 3755, 1099, 4, 3]]),
                # <go> This is an old photo of people and a horse-drawn wagon.
             'sent_length': array([14])}
            ......
        ```
        
        or using ``while`` if you like
        
        ```python
            >>> dataloader.restart("train", batch_size=1):
            >>> while True:
            ...    data = dataloader.get_next_batch("train")
            ...    if data is None: break
            ...    print(data)
        ```
        
        
        **note**: If you want to know more about data loader, please refer to [docs](https://thu-coai.github.io/cotk_docs/index.html#model-zoo).
        
        ### Metrics
        
        We found there are different versions of the same metric in released codes on Github,
        which leads to unfair compare between models. For example, whether considering
        ``unk``, calculating the mean of NLL across sentences or tokens in
        ``perplexity`` may introduce **an error of several times** and **extremely** harm the evaluation.
        
        We provide unified metrics implementation for all models. The metric object
        receives data in batch.
        
        ```python
            >>> metric = cotk.metric.SelfBleuCorpusMetric(dataloader, gen_key="gen")
            >>> metric.forward({
            ...    "gen":
            ...        [[2, 181, 13, 26, 145, 177, 8, 22, 12, 5, 3755, 1099, 4, 3],
            ...         [2, 46, 145, 500, 1764, 207, 11, 5, 93, 7, 31, 4, 3]]
            ... })
            >>> print(metric.close())
            {'self-bleu': 0.02206768072402293,
             'self-bleu hashvalue': 'c206893c2272af489147b80df306ee703e71d9eb178f6bb06c73cb935f474452'}
        ```
        
        We also provide standard metrics for selected dataloader.
        
        ```python
            >>> metric = dataloader.get_inference_metric(gen_key="gen")
            >>> metric.forward({
            ...    "gen":
            ...        [[2, 181, 13, 26, 145, 177, 8, 22, 12, 5, 3755, 1099, 4, 3],
            ...         [2, 46, 145, 500, 1764, 207, 11, 5, 93, 7, 31, 4, 3]]
            ... })
            >>> print(metric.close())
            {'self-bleu': 0.02206768072402293,
             'self-bleu hashvalue': 'c206893c2272af489147b80df306ee703e71d9eb178f6bb06c73cb935f474452',
             'fw-bleu': 0.3831004349785445, 'bw-bleu': 0.025958979254273006, 'fw-bw-bleu': 0.04862323612604027,
             'fw-bw-bleu hashvalue': '530d449a096671d13705e514be13c7ecffafd80deb7519aa7792950a5468549e',
             'gen': [
                 ['<go>', 'This', 'is', 'an', 'old', 'photo', 'of', 'people', 'and', 'a', 'horse-drawn', 'wagon', '.'],
                 ['<go>', 'An', 'old', 'stone', 'castle', 'tower', 'with', 'a', 'clock', 'on', 'it', '.']
             ]}
        ```
        
        ``Hash value`` is provided for checking whether the same dataset is used.
        
        
        **note**: If you want to know more about metrics, please refer to [docs](https://thu-coai.github.io/cotk_docs/metric.html).
        
        ### Publish Experiments
        
        We provide an online dashboard to manage your experiments.
        
        Here we give an simple example for you.
        
        First initialize a git repo in your command line.
        
        ```bash
            git init
        ```
        
        Then write your model with an entry function in ``main.py``.
        
        ```python
            import cotk.dataloader
            import json
        
            def run():
                dataloader = cotk.dataloader.MSCOCO("resources://MSCOCO_small")
                metric = dataloader.get_inference_metric()
                metric.forward({
                    "gen":
                        [[2, 181, 13, 26, 145, 177, 8, 22, 12, 5, 3755, 1099, 4, 3],
                        [2, 46, 145, 500, 1764, 207, 11, 5, 93, 7, 31, 4, 3]]
                })
                json.dump(metric.close(), open("result.json", 'w'))
        ```
        
        
        **note**: The only requirement of your model is to output a file named ``result.json``,
        you can do whatever you want (even don't load data using ``cotk``).
        
        
        Next, commit your changes and set upstream branch in your command line.
        
        ```bash
            git add -A
            git commit -a -m "init"
            git remote add origin master https://github.com/USERNAME/REPONAME.git
            git push origin -u master
        ```
        
        Finally, type ``cotk run`` to run your model and upload to cotk dashboard.
        
        ``cotk`` will automatically collect your git repo, username, commit and ``result.json``
        to the cotk dashboard (TO BE ONLINE).The dashboard is a website where you can manage
        your experiments or share results with others.
        
        FILL AN IMAGE HERE
        
        If you don't want to use cotk's dashboard, you can also choose to directly upload your model
        to github.
        
        Use ``cotk run --only-run`` instead of ``cotk run``, you will find a ``.model_config.json``
        is generated. Commit the file and push it to github, the other can automatically download
        your model as the way described in next section.
        
        
        **note**: The reproducibility should be maintained by the author. We only make sure all the input
        is the same, but difference can be introduced by different random seed, device or other
        affects. Before you upload, run ``cotk run --only-run`` twice and find whether the results
        is the same.
        
        ### Reproduce Experiments
        
        You can download others' model in dashboard
        and try to reproduce their results.
        
        ```bash
            cotk download ID
        ```
        
        The ``ID`` comes from dashboard id.
        ``cotk`` will download the codes from dashboard and tell you how to run the models.
        
        ```none
        INFO: Fetching USERNAME/REPO/COMMIT
        13386B [00:00, 54414.25B/s]
        INFO: Codes from USERNAME/REPO/COMMIT fetched.
        INFO: Model running cmd written in run_model.sh
        Model running cmd:  cd ./PATH && cotk run --only-run --entry main
        ```
        
        Type ``cotk run --only-run --entry main`` will reproduce the same experiments.
        
        You can also download directly from github if the maintainer has set the ``.model_config.json``.
        
        ```bash
            cotk download USER/REPO/COMMIT
        ```
        
        ``cotk`` will download the codes from github and generate commands by the config file.
        
        ### Predefined Models
        
        
        We have provided some baselines for the classical tasks, see [Model Zoo](https://thu-coai.github.io/cotk_docs/index.html#model-zoo) in docs for details.
        
        You can also use ``cotk download thu-coai/MODEL_NAME/master`` to get the codes.
        
        ## Issues
        
        You are welcome to create an issue if you want to request a feature, report a bug or ask a general question.
        
        ## Contributions
        
        We welcome contributions from community. 
        
        * If you want to make a big change, we recommend first creating an issue with your design.
        * Small contributions can be directly made by a pull request.
        * If you like make contributions for our library, see issues to find what we need.
        
        ## Team
        
        `cotk` is maintained and developed by Tsinghua university conversational AI group (THU-coai). Check our [main pages](http://coai.cs.tsinghua.edu.cn/) (In Chinese).
        
        ## License
        
        Apache License 2.0
        
        
Platform: UNKNOWN
Classifier: Development Status :: 2 - Pre-Alpha
Classifier: License :: OSI Approved :: Apache Software License
Classifier: Programming Language :: Python :: 3.5
Classifier: Programming Language :: Python :: 3.6
Classifier: Intended Audience :: Science/Research
Classifier: Topic :: Scientific/Engineering :: Artificial Intelligence
Requires-Python: >=3.5
Description-Content-Type: text/markdown
Provides-Extra: develop
