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📰 What's NEW!   💖

Recent released features

Feature Status
HIST and IGMTF models 📈 Released on Apr 10, 2022
Qlib notebook tutorial 📖 Released on Apr 7, 2022
Ibovespa index data 🍚 Released on Apr 6, 2022
Point-in-Time database 🔨 Released on Mar 10, 2022
Arctic Provider Backend & Orderbook data example 🔨 Released on Jan 17, 2022
Meta-Learning-based framework & DDG-DA 📈 🔨 Released on Jan 10, 2022
Planning-based portfolio optimization 🔨 Released on Dec 28, 2021
Release Qlib v0.8.0 :octocat: Released on Dec 8, 2021
ADD model 📈 Released on Nov 22, 2021
ADARNN model 📈 Released on Nov 14, 2021
TCN model 📈 Released on Nov 4, 2021
Nested Decision Framework 🔨 Released on Oct 1, 2021. Example and Doc
Temporal Routing Adaptor (TRA) 📈 Released on July 30, 2021
Transformer & Localformer 📈 Released on July 22, 2021
Release Qlib v0.7.0 :octocat: Released on July 12, 2021
TCTS Model 📈 Released on July 1, 2021
Online serving and automatic model rolling 🔨 Released on May 17, 2021
DoubleEnsemble Model 📈 Released on Mar 2, 2021
High-frequency data processing example 🔨 Released on Feb 5, 2021
High-frequency trading example 📈 Part of code released on Jan 28, 2021
High-frequency data(1min) 🍚 Released on Jan 27, 2021
Tabnet Model 📈 Released on Jan 22, 2021

Features released before 2021 are not listed here.

Qlib is an AI-oriented quantitative investment platform, which aims to realize the potential, empower the research, and create the value of AI technologies in quantitative investment.

It contains the full ML pipeline of data processing, model training, back-testing; and covers the entire chain of quantitative investment: alpha seeking, risk modeling, portfolio optimization, and order execution.

With Qlib, users can easily try ideas to create better Quant investment strategies.

For more details, please refer to our paper "Qlib: An AI-oriented Quantitative Investment Platform".

Frameworks, Tutorial, Data & DevOps Main Challenges & Solutions in Quant Research
  • Plans
  • Framework of Qlib
  • Quick Start
  • Quant Dataset Zoo
  • More About Qlib
  • Offline Mode and Online Mode
  • Related Reports
  • Contact Us
  • Contributing
  • Main Challenges & Solutions in Quant Research
  • Plans

    New features under development(order by estimated release time). Your feedbacks about the features are very important.

    Framework of Qlib

    At the module level, Qlib is a platform that consists of the above components. The components are designed as loose-coupled modules, and each component could be used stand-alone.

    Name Description
    Infrastructure layer Infrastructure layer provides underlying support for Quant research. DataServer provides a high-performance infrastructure for users to manage and retrieve raw data. Trainer provides a flexible interface to control the training process of models, which enable algorithms to control the training process.
    Workflow layer Workflow layer covers the whole workflow of quantitative investment. Information Extractor extracts data for models. Forecast Model focuses on producing all kinds of forecast signals (e.g. alpha, risk) for other modules. With these signals Decision Generator will generate the target trading decisions(i.e. portfolio, orders) to be executed by Execution Env (i.e. the trading market). There may be multiple levels of Trading Agent and Execution Env (e.g. an order executor trading agent and intraday order execution environment could behave like an interday trading environment and nested in daily portfolio management trading agent and interday trading environment )
    Interface layer Interface layer tries to present a user-friendly interface for the underlying system. Analyser module will provide users detailed analysis reports of forecasting signals, portfolios and execution results
    • The modules with hand-drawn style are under development and will be released in the future.
    • The modules with dashed borders are highly user-customizable and extendible.

    (p.s. framework image is created with https://draw.io/)

    Quick Start

    This quick start guide tries to demonstrate

    1. It's very easy to build a complete Quant research workflow and try your ideas with Qlib.
    2. Though with public data and simple models, machine learning technologies work very well in practical Quant investment.

    Here is a quick demo shows how to install Qlib, and run LightGBM with qrun. But, please make sure you have already prepared the data following the instruction.

    Installation

    This table demonstrates the supported Python version of Qlib:

    install with pip install from source plot
    Python 3.7 ✔️ ✔️ ✔️
    Python 3.8 ✔️ ✔️ ✔️
    Python 3.9 ✔️

    Note:

    1. Conda is suggested for managing your Python environment.
    2. Please pay attention that installing cython in Python 3.6 will raise some error when installing Qlib from source. If users use Python 3.6 on their machines, it is recommended to upgrade Python to version 3.7 or use conda's Python to install Qlib from source.
    3. For Python 3.9, Qlib supports running workflows such as training models, doing backtest and plot most of the related figures (those included in notebook). However, plotting for the model performance is not supported for now and we will fix this when the dependent packages are upgraded in the future.
    4. QlibRequires tables package, hdf5 in tables does not support python3.9.

    Install with pip

    Users can easily install Qlib by pip according to the following command.

      pip install pyqlib

    Note: pip will install the latest stable qlib. However, the main branch of qlib is in active development. If you want to test the latest scripts or functions in the main branch. Please install qlib with the methods below.

    Install from source

    Also, users can install the latest dev version Qlib by the source code according to the following steps:

    • Before installing Qlib from source, users need to install some dependencies:

      pip install numpy
      pip install --upgrade  cython
    • Clone the repository and install Qlib as follows.

      git clone https://github.com/microsoft/qlib.git && cd qlib
      pip install .

      Note: You can install Qlib with python setup.py install as well. But it is not the recommended approach. It will skip pip and cause obscure problems. For example, only the command pip install . can overwrite the stable version installed by pip install pyqlib, while the command python setup.py install can't.

    Tips: If you fail to install Qlib or run the examples in your environment, comparing your steps and the CI workflow may help you find the problem.

    Data Preparation

    Load and prepare data by running the following code:

    Get with module

    # get 1d data
    python -m qlib.run.get_data qlib_data --target_dir ~/.qlib/qlib_data/cn_data --region cn
    
    # get 1min data
    python -m qlib.run.get_data qlib_data --target_dir ~/.qlib/qlib_data/cn_data_1min --region cn --interval 1min
    

    Get from source

    # get 1d data
    python scripts/get_data.py qlib_data --target_dir ~/.qlib/qlib_data/cn_data --region cn
    
    # get 1min data
    python scripts/get_data.py qlib_data --target_dir ~/.qlib/qlib_data/cn_data_1min --region cn --interval 1min
    

    This dataset is created by public data collected by crawler scripts, which have been released in the same repository. Users could create the same dataset with it. Description of dataset

    Please pay ATTENTION that the data is collected from Yahoo Finance, and the data might not be perfect. We recommend users to prepare their own data if they have a high-quality dataset. For more information, users can refer to the related document.

    Automatic update of daily frequency data (from yahoo finance)

    This step is Optional if users only want to try their models and strategies on history data.

    It is recommended that users update the data manually once (--trading_date 2021-05-25) and then set it to update automatically.

    NOTE: Users can't incrementally update data based on the offline data provided by Qlib(some fields are removed to reduce the data size). Users should use yahoo collector to download Yahoo data from scratch and then incrementally update it.

    For more information, please refer to: yahoo collector

    • Automatic update of data to the "qlib" directory each trading day(Linux)

      • use crontab: crontab -e

      • set up timed tasks:

        * * * * 1-5 python <script path> update_data_to_bin --qlib_data_1d_dir <user data dir>
        
        • script path: scripts/data_collector/yahoo/collector.py
    • Manual update of data

      python scripts/data_collector/yahoo/collector.py update_data_to_bin --qlib_data_1d_dir <user data dir> --trading_date <start date> --end_date <end date>
      
      • trading_date: start of trading day
      • end_date: end of trading day(not included)

    Auto Quant Research Workflow

    Qlib provides a tool named qrun to run the whole workflow automatically (including building dataset, training models, backtest and evaluation). You can start an auto quant research workflow and have a graphical reports analysis according to the following steps:

    1. Quant Research Workflow: Run qrun with lightgbm workflow config (workflow_config_lightgbm_Alpha158.yaml as following.

        cd examples  # Avoid running program under the directory contains `qlib`
        qrun benchmarks/LightGBM/workflow_config_lightgbm_Alpha158.yaml

      If users want to use qrun under debug mode, please use the following command:

      python -m pdb qlib/workflow/cli.py examples/benchmarks/LightGBM/workflow_config_lightgbm_Alpha158.yaml

      The result of qrun is as follows, please refer to Intraday Trading for more details about the result.

      'The following are analysis results of the excess return without cost.'
                             risk
      mean               0.000708
      std                0.005626
      annualized_return  0.178316
      information_ratio  1.996555
      max_drawdown      -0.081806
      'The following are analysis results of the excess return with cost.'
                             risk
      mean               0.000512
      std                0.005626
      annualized_return  0.128982
      information_ratio  1.444287
      max_drawdown      -0.091078

      Here are detailed documents for qrun and workflow.

    2. Graphical Reports Analysis: Run examples/workflow_by_code.ipynb with jupyter notebook to get graphical reports

      • Forecasting signal (model prediction) analysis

        • Cumulative Return of groups Cumulative Return
        • Return distribution long_short
        • Information Coefficient (IC) Information Coefficient Monthly IC IC
        • Auto Correlation of forecasting signal (model prediction) Auto Correlation
      • Portfolio analysis

        • Backtest return Report
      • Explanation of above results

    Building Customized Quant Research Workflow by Code

    The automatic workflow may not suit the research workflow of all Quant researchers. To support a flexible Quant research workflow, Qlib also provides a modularized interface to allow researchers to build their own workflow by code. Here is a demo for customized Quant research workflow by code.

    Main Challenges & Solutions in Quant Research

    Quant investment is an very unique scenario with lots of key challenges to be solved. Currently, Qlib provides some solutions for several of them.

    Forecasting: Finding Valuable Signals/Patterns

    Accurate forecasting of the stock price trend is a very important part to construct profitable portfolios. However, huge amount of data with various formats in the financial market which make it challenging to build forecasting models.

    An increasing number of SOTA Quant research works/papers, which focus on building forecasting models to mine valuable signals/patterns in complex financial data, are released in Qlib

    Here is a list of models built on Qlib.

    Your PR of new Quant models is highly welcomed.

    The performance of each model on the Alpha158 and Alpha360 dataset can be found here.

    Run a single model

    All the models listed above are runnable with Qlib. Users can find the config files we provide and some details about the model through the benchmarks folder. More information can be retrieved at the model files listed above.

    Qlib provides three different ways to run a single model, users can pick the one that fits their cases best:

    • Users can use the tool qrun mentioned above to run a model's workflow based from a config file.

    • Users can create a workflow_by_code python script based on the one listed in the examples folder.

    • Users can use the script run_all_model.py listed in the examples folder to run a model. Here is an example of the specific shell command to be used: python run_all_model.py run --models=lightgbm, where the --models arguments can take any number of models listed above(the available models can be found in benchmarks). For more use cases, please refer to the file's docstrings.

      • NOTE: Each baseline has different environment dependencies, please make sure that your python version aligns with the requirements(e.g. TFT only supports Python 3.6~3.7 due to the limitation of tensorflow==1.15.0)

    Run multiple models

    Qlib also provides a script run_all_model.py which can run multiple models for several iterations. (Note: the script only support Linux for now. Other OS will be supported in the future. Besides, it doesn't support parallel running the same model for multiple times as well, and this will be fixed in the future development too.)

    The script will create a unique virtual environment for each model, and delete the environments after training. Thus, only experiment results such as IC and backtest results will be generated and stored.

    Here is an example of running all the models for 10 iterations:

    python run_all_model.py run 10

    It also provides the API to run specific models at once. For more use cases, please refer to the file's docstrings.

    Due to the non-stationary nature of the environment of the financial market, the data distribution may change in different periods, which makes the performance of models build on training data decays in the future test data. So adapting the forecasting models/strategies to market dynamics is very important to the model/strategies' performance.

    Here is a list of solutions built on Qlib.

    Quant Dataset Zoo

    Dataset plays a very important role in Quant. Here is a list of the datasets built on Qlib:

    Dataset US Market China Market
    Alpha360
    Alpha158

    Here is a tutorial to build dataset with Qlib. Your PR to build new Quant dataset is highly welcomed.

    More About Qlib

    If you want to have a quick glance at the most frequently used components of qlib, you can try notebooks here.

    The detailed documents are organized in docs. Sphinx and the readthedocs theme is required to build the documentation in html formats.

    cd docs/
    conda install sphinx sphinx_rtd_theme -y
    # Otherwise, you can install them with pip
    # pip install sphinx sphinx_rtd_theme
    make html

    You can also view the latest document online directly.

    Qlib is in active and continuing development. Our plan is in the roadmap, which is managed as a github project.

    Offline Mode and Online Mode

    The data server of Qlib can either deployed as Offline mode or Online mode. The default mode is offline mode.

    Under Offline mode, the data will be deployed locally.

    Under Online mode, the data will be deployed as a shared data service. The data and their cache will be shared by all the clients. The data retrieval performance is expected to be improved due to a higher rate of cache hits. It will consume less disk space, too. The documents of the online mode can be found in Qlib-Server. The online mode can be deployed automatically with Azure CLI based scripts. The source code of online data server can be found in Qlib-Server repository.

    Performance of Qlib Data Server

    The performance of data processing is important to data-driven methods like AI technologies. As an AI-oriented platform, Qlib provides a solution for data storage and data processing. To demonstrate the performance of Qlib data server, we compare it with several other data storage solutions.

    We evaluate the performance of several storage solutions by finishing the same task, which creates a dataset (14 features/factors) from the basic OHLCV daily data of a stock market (800 stocks each day from 2007 to 2020). The task involves data queries and processing.

    HDF5 MySQL MongoDB InfluxDB Qlib -E -D Qlib +E -D Qlib +E +D
    Total (1CPU) (seconds) 184.4±3.7 365.3±7.5 253.6±6.7 368.2±3.6 147.0±8.8 47.6±1.0 7.4±0.3
    Total (64CPU) (seconds) 8.8±0.6 4.2±0.2
    • +(-)E indicates with (out) ExpressionCache
    • +(-)D indicates with (out) DatasetCache

    Most general-purpose databases take too much time to load data. After looking into the underlying implementation, we find that data go through too many layers of interfaces and unnecessary format transformations in general-purpose database solutions. Such overheads greatly slow down the data loading process. Qlib data are stored in a compact format, which is efficient to be combined into arrays for scientific computation.

    Related Reports

    Contact Us

    • If you have any issues, please create issue here or send messages in gitter.
    • If you want to make contributions to Qlib, please create pull requests.
    • For other reasons, you are welcome to contact us by email(qlib@microsoft.com).
      • We are recruiting new members(both FTEs and interns), your resumes are welcome!

    Join IM discussion groups:

    Gitter
    image

    Contributing

    We appreciate all contributions and thank all the contributors!

    Before we released Qlib as an open-source project on Github in Sep 2020, Qlib is an internal project in our group. Unfortunately, the internal commit history is not kept. A lot of members in our group have also contributed a lot to Qlib, which includes Ruihua Wang, Yinda Zhang, Haisu Yu, Shuyu Wang, Bochen Pang, and Dong Zhou. Especially thanks to Dong Zhou due to his initial version of Qlib.

    Guidance

    This project welcomes contributions and suggestions.
    Here are some code standards and development guidance for submiting a pull request.

    Making contributions is not a hard thing. Solving an issue(maybe just answering a question raised in issues list or gitter), fixing/issuing a bug, improving the documents and even fixing a typo are important contributions to Qlib.

    For example, if you want to contribute to Qlib's document/code, you can follow the steps in the figure below.

    If you don't know how to start to contribute, you can refer to the following examples.

    Type Examples
    Solving issues Answer a question; issuing or fixing a bug
    Docs Improve docs quality ; Fix a typo
    Feature Implement a requested feature like this; Refactor interfaces
    Dataset Add a dataset
    Models Implement a new model, some instructions to contribute models

    Good first issues are labelled to indicate that they are easy to start your contributions.

    You can find some impefect implementation in Qlib by rg 'TODO|FIXME' qlib

    If you would like to become one of Qlib's maintainers to contribute more (e.g. help merge PR, triage issues), please contact us by email(qlib@microsoft.com). We are glad to help to upgrade your permission.

    Licence

    Most contributions require you to agree to a Contributor License Agreement (CLA) declaring that you have the right to, and actually do, grant us the right to use your contribution. For details, visit https://cla.opensource.microsoft.com.

    When you submit a pull request, a CLA bot will automatically determine whether you need to provide a CLA and decorate the PR appropriately (e.g., status check, comment). Simply follow the instructions provided by the bot. You will only need to do this once across all repos using our CLA.

    This project has adopted the Microsoft Open Source Code of Conduct. For more information see the Code of Conduct FAQ or contact opencode@microsoft.com with any additional questions or comments.

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