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Update landing and feature overview
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README.md
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README.md
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@ -6,11 +6,10 @@ spaCy is a library for advanced Natural Language Processing in Python and
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Cython. It's built on the very latest research, and was designed from day one
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to be used in real products. spaCy comes with
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[pre-trained statistical models](https://spacy.io/models) and word vectors, and
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currently supports tokenization for **45+ languages**. It features the
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**fastest syntactic parser** in the world, convolutional
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**neural network models** for tagging, parsing and **named entity recognition**
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and easy **deep learning** integration. It's commercial open-source software,
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released under the MIT license.
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currently supports tokenization for **49+ languages**. It features
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state-of-the-art speed, convolutional **neural network models** for tagging,
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parsing and **named entity recognition** and easy **deep learning** integration.
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It's commercial open-source software, released under the MIT license.
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💫 **Version 2.1 out now!** [Check out the release notes here.](https://github.com/explosion/spaCy/releases)
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@ -66,11 +65,11 @@ valuable if it's shared publicly, so that more people can benefit from it.
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## Features
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- **Fastest syntactic parser** in the world
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- **Named entity** recognition
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- Non-destructive **tokenization**
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- Support for **45+ languages**
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- **Named entity** recognition
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- Support for **49+ languages**
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- Pre-trained [statistical models](https://spacy.io/models) and word vectors
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- State-of-the-art speed
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- Easy **deep learning** integration
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- Part-of-speech tagging
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- Labelled dependency parsing
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@ -80,7 +79,6 @@ valuable if it's shared publicly, so that more people can benefit from it.
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- Export to numpy data arrays
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- Efficient binary serialization
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- Easy **model packaging** and deployment
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- State-of-the-art speed
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- Robust, rigorously evaluated accuracy
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📖 **For more details, see the
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@ -50,7 +50,7 @@ together.
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## Benchmarks {#benchmarks}
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Two peer-reviewed papers in 2015 confirm that spaCy offers the **fastest
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Two peer-reviewed papers in 2015 confirmed that spaCy offers the **fastest
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syntactic parser in the world** and that **its accuracy is within 1% of the
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best** available. The few systems that are more accurate are 20× slower or more.
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@ -75,16 +75,6 @@ const Landing = ({ data }) => {
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<LandingSubtitle>in Python</LandingSubtitle>
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</LandingHeader>
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<LandingGrid blocks>
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<LandingCard title="Fastest in the world">
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<p>
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spaCy excels at large-scale information extraction tasks. It's written from
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the ground up in carefully memory-managed Cython. Independent research has
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confirmed that spaCy is the fastest in the world. If your application needs
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to process entire web dumps, spaCy is the library you want to be using.
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</p>
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<LandingButton to="/usage/facts-figures">Facts & Figures</LandingButton>
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</LandingCard>
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<LandingCard title="Get things done">
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<p>
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spaCy is designed to help you do real work — to build real products, or
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@ -94,6 +84,15 @@ const Landing = ({ data }) => {
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</p>
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<LandingButton to="/usage">Get started</LandingButton>
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</LandingCard>
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<LandingCard title="Blazing fast">
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<p>
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spaCy excels at large-scale information extraction tasks. It's written from
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the ground up in carefully memory-managed Cython. Independent research in
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2015 found spaCy to be the fastest in the world. If your application needs
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to process entire web dumps, spaCy is the library you want to be using.
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</p>
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<LandingButton to="/usage/facts-figures">Facts & Figures</LandingButton>
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</LandingCard>
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<LandingCard title="Deep learning">
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<p>
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@ -129,6 +128,7 @@ const Landing = ({ data }) => {
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<Li>
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Pre-trained <strong>word vectors</strong>
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</Li>
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<Li>State-of-the-art speed</Li>
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<Li>
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Easy <strong>deep learning</strong> integration
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</Li>
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@ -144,7 +144,6 @@ const Landing = ({ data }) => {
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<Li>
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Easy <strong>model packaging</strong> and deployment
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</Li>
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<Li>State-of-the-art speed</Li>
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<Li>Robust, rigorously evaluated accuracy</Li>
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</Ul>
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</LandingCol>
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