Metadata-Version: 2.1
Name: mlhub
Version: 3.6.8
Summary: Machine learning model repository manager
Home-page: https://mlhub.ai
Author: Graham Williams
Author-email: mlhub@togaware.com
License: UNKNOWN
Description: The Machine Learning Hub
        ========================
        
        [![MLHub Status](http://badge.kloud51.com/pypi/s/mlhub.svg)](https://mlhub.ai)
        [![PyPi version](https://img.shields.io/pypi/v/mlhub.svg)](https://mlhub.ai)
        [![PyPi downloads](https://pypip.in/d/mlhub/badge.png)](https://mlhub.ai)
        
        A *Command Line* framework and platform for presenting and utilising
        Machine Learning, Artificial Intelligence, and Data Science
        capabilities.
        
        Introduction
        ------------
        
        The [machine learning hub](https://mlhub.ai) is a free and open source
        project hosted on [github](https://github.com/mlhubber/mlhub) aimed at
        easily sharing [machine learning, artificial intelligence, and data
        science models and technologies](https://github.com/mlhubber/mlmodels). The
        source code for such models will be found on
        [github](https://github.com), [gitlab](https://gitlab.com), or
        [bitbucket](https://bitbucket.org). The models are installed and
        managed using the *ml* command from the *mlhub* package designed to
        install the model and run a demonstration within 5 minutes, as well as
        providing a suite of useful command line tools based on the pre-built
        models. Each model has been tested on Ubuntu (GNU/Linux).
        
        A number of demonstration models have been packaged and are listed in
        the [repository index](https://mlhub.ai/Packages.html) on
        [mlhub.ai](https://mlhub.ai/) where the models themselves can be
        browsed.
        
        In this blog post we first review how to get started with MLHub and
        then illustrate some of its functionality. See the growing
        documentation at the [GNU/Linux Survival
        Guide](https://togaware.com/linux/survivor/AI_Machine.html).
        
        Quick Start
        -----------
        
        The command line interface can be installed using
        [PyPi](https://pypi.org/project/mlhub/):
        
            $ pip3 install mlhub
        
        Once installed you will be able to run any curated or other model. The quick
        start version is below. Note that you type the command `ml ...` and
        that everything from the `#` to the end of the line is ignored (it's
        a comment):
        
            $ ml install <model> # Install the named model.
            $ ml demo    <model> # Run the demonstration of the model.
            $ ml gui     <model> # Graphical display to utilise the mode.
        
        The following commands are available and below is a brief description of
        each command:
        
            $ ml                # Show a usage message.
            $ ml available      # List of pre-buld models on the MLHub.
            $ ml installed      # List of pre-built models installed locally
            $ ml install   <model> # Install the model named 'rain'.
            $ ml configure <model> # Install required dependencies.
            $ ml readme    <model> # View background information about the model.
            $ ml commands  <model> # List of commands supported by the model.
            $ ml demo      <model> # Run the demonstration of the model
            $ ml gui       <model> # Graphical display of pre-built model.
            $ ml score     <model> # Run model on your own data.
        
        Different model packages will have different dependencies and these will
        be installed by the *configure* command.
        
        Quick Start: Azure DSVM
        -----------------------
        
        A particularly attractive and simple way to get started with exploring
        the mlhub functionality is to fire up a [Ubuntu Data Science Virtual
        Machine](https://aka.ms/dsvm) (DSVM) on Azure for as little as USD10 per
        month for quite a small server or USD90 for a reasonable one. You can
        get free credit (USD200) from Microsoft to [trial the
        DSVM](https://aka.ms/free).
        
        Using this virtual machine will save a lot of time compared with setting
        up your own machine with the required dependencies, which of course you
        can do if you wish as all the dependencies are open source.
        
        To set up the virtual machine, with an Azure subscription log in to the
        [portal](https://portal.azure.com/) and add a new Data Science Virtual
        Machine for Linux (Ubuntu). You need to provide a name (for the virtual
        machine), a user name and a password, and then create a new resource
        group and give it a name, and finally choose a location. Go with all the
        defaults for everything else, except choose a size to suit the budget
        (B1s is cheap though a D2s is a better interactive experience). Note
        that you are only charged whilst the machine is fired up so USD90 per
        month is no where near what you will spend if you only fire up the
        server when you need.
        
        Once the DSVM is set up go to its Overview page and click on DNS name
        Configure and provide a name by which to refer to the server publicly
        (e.g., myml.westus2.cloudapp.azure.com).
        
        We now have a server ready to showcase the pre-built Machine Learning
        models. There are several options to connect to the server but a
        recommended one is to use [X2Go](https://x2go.org/) which supports
        Linux, Windows, and Mac. Install it and point it to your server (e.g.,
        myml.westus2.cloudapp.azure.com) in the setup.
        
        Connect to the DSVM. Close the Firefox window that pops up. Click on the
        terminal icon down the bottom, and you are ready to go:
        
            $ pip install mlhub
            $ ml
            $ ml available
        
        etc.
        
        Pre-Built Model Archives
        ------------------------
        
        A model is a zip file archived as .mlm files and hosted in a repository.
        The public repository is [mlhub.ai](https://mlhub.ai/). The *ml* command
        can install the pre-built model locally, ready to run a demo, to print
        and display the model, and to score new data using the model. Some
        models provide ability to retrain the model with user provided data.
        
        Contributing Models to ML Hub
        -----------------------------
        
        Anyone is welcome to contribute a pre-built model package to ML Hub.
        Please submit a pull request through
        [github](https://github.com/mlhubber).
        
        Installing Pip3
        ---------------
        
        On Ubuntu this is as simple as:
        
            $ sudo apt install python3-pip
        
        Alternative pip Install
        -----------------------
        
        Depending on your setup of pip, you may need to use:
        
            $ pip3 install mlhub
        
        The executable may be placed into `~/.local/bin` which will need to be
        on your path. Edit your shell startup which is either `.profile` or
        `.bashrc`, etc:
        
            PATH="$HOME/.local/bin:$PATH"
        
        Alternative Install
        -------------------
        
        A tar.gz containing the mlhub package and the command line interface is
        available as
        [mlhub_3.6.8.tar.gz](https://mlhub.ai/dist/mlhub_3.6.8.tar.gz) within
        the [distribution folder](https://mlhub.ai/dist/) of the MLHub.
        
        To install from the tar.gz file:
        
            $ wget https://mlhub.ai/dist/mlhub_3.6.8.tar.gz
            $ pip install mlhub_3.6.8.tar.gz
            $ ml
        
        Or extract the above downloaded .tar.gz and install:
        
            $ wget https://mlhub.ai/dist/mlhub_3.6.8.tar.gz
            $ tar xvf mlhub_3.6.8.tar.gz
            $ cd mlhub
            $ python3 setup.py install --user
        
        Under Development
        -----------------
        
        An interactive MLHub session that is initiated through the demo
        command is quite similar to a Jupyter Notebook presentation running on
        top of a Jupyter interpreter. Notebooks can be automatically
        transformed into a MLHub package so that the notebook becomes the
        source for the interactive demo.py or demo.R script required by
        MLHub. In this way users have the choice to either run the Notebook
        interactively within Jupyter or from the command line as an
        interactive script.
        
        Contributions
        -------------
        
        The open source mlhub command line tool (ml) and sample models are being
        hosted on [github](https://github.com/mlhubber) and contributions to
        both the command line tool and contributions of new open source
        pre-built machine learning models are most welcome. Feel free to submit
        pull requests.
        
        Metrics
        -------
        
        MLHub PyPI download statistics: https://pepy.tech/project/mlhub
        
        [![Downloads](https://pepy.tech/badge/mlhub)](https://pepy.tech/project/mlhub)
        [![Downloads](https://pepy.tech/badge/mlhub/month)](https://pepy.tech/project/mlhub)
        [![Downloads](https://pepy.tech/badge/mlhub/week)](https://pepy.tech/project/mlhub)
        
        MLHub Dev PyPI download statistics: https://pepy.tech/project/mlhubdev
        
        [![Downloads](https://pepy.tech/badge/mlhubdev)](https://pepy.tech/project/mlhubdev)
        [![Downloads](https://pepy.tech/badge/mlhubdev/month)](https://pepy.tech/project/mlhubdev)
        [![Downloads](https://pepy.tech/badge/mlhubdev/week)](https://pepy.tech/project/mlhubdev)
        
        
Keywords: machine learning models repository
Platform: UNKNOWN
Classifier: Development Status :: 5 - Production/Stable
Classifier: Environment :: Console
Classifier: Intended Audience :: End Users/Desktop
Classifier: License :: OSI Approved :: MIT License
Classifier: Programming Language :: Python :: 3
Description-Content-Type: text/markdown
