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28 lines
1.5 KiB
ReStructuredText
What is Senpy?
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Senpy is a framework for sentiment and emotion analysis services.
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Its goal is to produce analysis services that are interchangeable and fully interoperable.
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.. image:: senpy-architecture.png
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:width: 100%
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:align: center
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All services built using senpy share a common interface.
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This allows users to use them (almost) interchangeably, with the same API and tools, simply by pointing to a different URL or changing a parameter.
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The common schema also makes it easier to evaluate the performance of different algorithms and services.
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In fact, Senpy has a built-in evaluation API you can use to compare results with different algorithms.
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Services can also use the common interface to communicate with each other.
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And higher level features can be built on top of these services, such as automatic fusion of results, emotion model conversion, and service discovery.
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These benefits are not limited to new services.
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The community has developed wrappers for some proprietary and commercial services (such as sentiment140 and Meaning Cloud), so you can consult them as.
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Senpy comes with a built-in client in the client package.
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To achieve this goal, Senpy uses a Linked Data principled approach, based on the NIF (NLP Interchange Format) specification, and open vocabularies such as Marl and Onyx.
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You can learn more about this in :doc:`vocabularies`.
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Check out :doc:`development` if you have developed an analysis algorithm (e.g. sentiment analysis) and you want to publish it as a service.
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