mirror of
https://github.com/gsi-upm/senpy
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21a5a3f201
* Fixed Options for extra_params in UI * Enhanced meta-programming for models * Plugins can be imported from a python file if they're named `senpy_<whatever>.py>` (no need for `.senpy` anymore!) * Add docstings and tests to most plugins * Read plugin description from the docstring * Refactor code to get rid of unnecessary `.senpy`s * Load models, plugins and utils into the main namespace (see __init__.py) * Enhanced plugin development/experience with utils (easy_test, easy_serve) * Fix bug in check_template that wouldn't check objects * Make model defaults a private variable * Add option to list loaded plugins in CLI * Update docs
315 lines
11 KiB
ReStructuredText
315 lines
11 KiB
ReStructuredText
Developing new plugins
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----------------------
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This document contains the minimum to get you started with developing new analysis plugin.
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For an example of conversion plugins, see :doc:`conversion`.
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For a description of definition files, see :doc:`plugins-definition`.
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A more step-by-step tutorial with slides is available `here <https://lab.cluster.gsi.dit.upm.es/senpy/senpy-tutorial>`__
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.. contents:: :local:
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What is a plugin?
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=================
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A plugin is a python object that can process entries. Given an entry, it will modify it, add annotations to it, or generate new entries.
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What is an entry?
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=================
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Entries are objects that can be annotated.
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In general, they will be a piece of text.
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By default, entries are `NIF contexts <http://persistence.uni-leipzig.org/nlp2rdf/ontologies/nif-core/nif-core.html>`_ represented in JSON-LD format.
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It is a dictionary/JSON object that looks like this:
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.. code:: python
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{
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"@id": "<unique identifier or blank node name>",
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"nif:isString": "input text",
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"sentiments": [ {
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...
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}
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],
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...
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}
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Annotations are added to the object like this:
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.. code:: python
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entry = Entry()
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entry.vocabulary__annotationName = 'myvalue'
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entry['vocabulary:annotationName'] = 'myvalue'
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entry['annotationNameURI'] = 'myvalue'
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Where vocabulary is one of the prefixes defined in the default senpy context, and annotationURI is a full URI.
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The value may be any valid JSON-LD dictionary.
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For simplicity, senpy includes a series of models by default in the ``senpy.models`` module.
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What are annotations?
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=====================
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They are objects just like entries.
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Senpy ships with several default annotations, including: ``Sentiment``, ``Emotion``, ``EmotionSet``...jk bb
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What's a plugin made of?
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========================
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When receiving a query, senpy selects what plugin or plugins should process each entry, and in what order.
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It also makes sure the every entry and the parameters provided by the user meet the plugin requirements.
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Hence, two parts are necessary: 1) the code that will process the entry, and 2) some attributes and metadata that will tell senpy how to interact with the plugin.
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In practice, this is what a plugin looks like, tests included:
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.. literalinclude:: ../senpy/plugins/example/rand_plugin.py
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:emphasize-lines: 5-11
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:language: python
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The lines highlighted contain some information about the plugin.
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In particular, the following information is mandatory:
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* A unique name for the class. In our example, Rand.
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* The subclass/type of plugin. This is typically either `SentimentPlugin` or `EmotionPlugin`. However, new types of plugin can be created for different annotations. The only requirement is that these new types inherit from `senpy.Analysis`
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* A description of the plugin. This can be done simply by adding a doc to the class.
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* A version, which should get updated.
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* An author name.
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Plugins Code
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============
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The basic methods in a plugin are:
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* analyse_entry: called in every user requests. It takes two parameters: ``Entry``, the entry object, and ``params``, the parameters supplied by the user. It should yield one or more ``Entry`` objects.
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* activate: used to load memory-hungry resources. For instance, to train a classifier.
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* deactivate: used to free up resources when the plugin is no longer needed.
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Plugins are loaded asynchronously, so don't worry if the activate method takes too long. The plugin will be marked as activated once it is finished executing the method.
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How does senpy find modules?
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============================
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Senpy looks for files of two types:
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* Python files of the form `senpy_<NAME>.py` or `<NAME>_plugin.py`. In these files, it will look for: 1) Instances that inherit from `senpy.Plugin`, or subclasses of `senpy.Plugin` that can be initialized without a configuration file. i.e. classes that contain all the required attributes for a plugin.
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* Plugin definition files (see :doc:`advanced-plugins`)
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Defining additional parameters
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==============================
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Your plugin may ask for additional parameters from the users of the service by using the attribute ``extra_params`` in your plugin definition.
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It takes a dictionary, where the keys are the name of the argument/parameter, and the value has the following fields:
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* aliases: the different names which can be used in the request to use the parameter.
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* required: if set to true, users need to provide this parameter unless a default is set.
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* options: the different acceptable values of the parameter (i.e. an enum). If set, the value provided must match one of the options.
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* default: the default value of the parameter, if none is provided in the request.
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.. code:: python
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"extra_params":{
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"language": {
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"aliases": ["language", "lang", "l"],
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"required": True,
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"options": ["es", "en"],
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"default": "es"
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}
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}
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Loading data and files
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======================
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Most plugins will need access to files (dictionaries, lexicons, etc.).
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These files are usually heavy or under a license that does not allow redistribution.
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For this reason, senpy has a `data_folder` that is separated from the source files.
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The location of this folder is controlled programmatically or by setting the `SENPY_DATA` environment variable.
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Plugins have a convenience function `self.open` which will automatically prepend the data folder to relative paths:
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.. code:: python
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import os
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class PluginWithResources(AnalysisPlugin):
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file_in_data = <FILE PATH>
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file_in_sources = <FILE PATH>
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def activate(self):
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with self.open(self.file_in_data) as f:
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self._classifier = train_from_file(f)
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file_in_source = os.path.join(self.get_folder(), self.file_in_sources)
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with self.open(file_in_source) as f:
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pass
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It is good practice to specify the paths of these files in the plugin configuration, so the same code can be reused with different resources.
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Docker image
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============
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Add the following dockerfile to your project to generate a docker image with your plugin:
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.. code:: dockerfile
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FROM gsiupm/senpy
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Once you make sure your plugin works with a specific version of senpy, modify that file to make sure your build will work even if senpy gets updated.
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e.g.:
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.. code:: dockerfile
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FROM gsiupm/senpy:1.0.1
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This will copy your source folder to the image, and install all dependencies.
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Now, to build an image:
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.. code:: shell
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docker build . -t gsiupm/exampleplugin
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And you can run it with:
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.. code:: shell
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docker run -p 5000:5000 gsiupm/exampleplugin
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If the plugin uses non-source files (:ref:`loading data and files`), the recommended way is to use `SENPY_DATA` folder.
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Data can then be mounted in the container or added to the image.
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The former is recommended for open source plugins with licensed resources, whereas the latter is the most convenient and can be used for private images.
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Mounting data:
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.. code:: bash
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docker run -v $PWD/data:/data gsiupm/exampleplugin
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Adding data to the image:
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.. code:: dockerfile
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FROM gsiupm/senpy:1.0.1
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COPY data /
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F.A.Q.
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======
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What annotations can I use?
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???????????????????????????
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You can add almost any annotation to an entry.
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The most common use cases are covered in the :doc:`apischema`.
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Why does the analyse function yield instead of return?
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??????????????????????????????????????????????????????
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This is so that plugins may add new entries to the response or filter some of them.
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For instance, a chunker may split one entry into several.
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On the other hand, a conversion plugin may leave out those entries that do not contain relevant information.
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If I'm using a classifier, where should I train it?
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???????????????????????????????????????????????????
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Training a classifier can be time time consuming. To avoid running the training unnecessarily, you can use ShelfMixin to store the classifier. For instance:
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.. code:: python
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from senpy.plugins import ShelfMixin, AnalysisPlugin
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class MyPlugin(ShelfMixin, AnalysisPlugin):
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def train(self):
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''' Code to train the classifier
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'''
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# Here goes the code
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# ...
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return classifier
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def activate(self):
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if 'classifier' not in self.sh:
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classifier = self.train()
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self.sh['classifier'] = classifier
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self.classifier = self.sh['classifier']
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def deactivate(self):
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self.close()
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By default the ShelfMixin creates a file based on the plugin name and stores it in that plugin's folder.
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However, you can manually specify a 'shelf_file' in your .senpy file.
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Shelves may get corrupted if the plugin exists unexpectedly.
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A corrupt shelf prevents the plugin from loading.
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If you do not care about the data in the shelf, you can force your plugin to remove the corrupted file and load anyway, set the 'force_shelf' to True in your plugin and start it again.
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How can I turn an external service into a plugin?
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?????????????????????????????????????????????????
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This example ilustrate how to implement a plugin that accesses the Sentiment140 service.
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.. code:: python
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class Sentiment140Plugin(SentimentPlugin):
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def analyse_entry(self, entry, params):
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text = entry.text
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lang = params.get("language", "auto")
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res = requests.post("http://www.sentiment140.com/api/bulkClassifyJson",
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json.dumps({"language": lang,
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"data": [{"text": text}]
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}
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)
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)
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p = params.get("prefix", None)
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polarity_value = self.maxPolarityValue*int(res.json()["data"][0]
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["polarity"]) * 0.25
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polarity = "marl:Neutral"
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neutral_value = self.maxPolarityValue / 2.0
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if polarity_value > neutral_value:
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polarity = "marl:Positive"
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elif polarity_value < neutral_value:
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polarity = "marl:Negative"
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sentiment = Sentiment(id="Sentiment0",
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prefix=p,
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marl__hasPolarity=polarity,
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marl__polarityValue=polarity_value)
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sentiment.prov(self)
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entry.sentiments.append(sentiment)
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yield entry
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Can I activate a DEBUG mode for my plugin?
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???????????????????????????????????????????
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You can activate the DEBUG mode by the command-line tool using the option -d.
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.. code:: bash
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senpy -d
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Additionally, with the ``--pdb`` option you will be dropped into a pdb post mortem shell if an exception is raised.
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.. code:: bash
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python -m pdb yourplugin.py
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Where can I find more code examples?
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????????????????????????????????????
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See: `<http://github.com/gsi-upm/senpy-plugins-community>`_.
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