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Ines Montani

Founder 💥 Explosion AI
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Position Oct 2016 → Current (2 years, 2 months)
Founder at Explosion AI

Explosion AI is a digital studio specialising in Artificial Intelligence and Natural Language Processing. We design custom algorithms, applications and data assets. We're the makers of spaCy, the leading open source NLP library.

Explosion AI is a digital studio specialising in Artificial Intelligence and Natural Language Processing. We design custom algorithms, applications and data assets. We're the makers of spaCy, the leading open source NLP library.

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Open source Feb 2015 → Current (3 years, 10 months)

spaCy is the leading open-source library for advanced Natural Language Processing (NLP) in Python.

spaCy is the leading open-source library for advanced Natural Language Processing (NLP) in Python.

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Open source Oct 2018 → Oct 2018 (1 month)
Last commit on Oct 28, 18
49 Commits / 15,072 ++ / 2,475 --

🎀 JavaScript API for spaCy with Python REST API

🎀 JavaScript API for spaCy with Python REST API

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Open source Aug 2018 → Aug 2018 (1 month)
Last commit on Aug 01, 18
1 Commits / 445 ++ / 0 --

🤹‍♀️ Query spaCy's linguistic annotations using GraphQL

🤹‍♀️ Query spaCy's linguistic annotations using GraphQL

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Blogs or videos Aug 2018

Making your documentation work for users with vastly different needs is a challenge. Here’s how spaCy, an open-source library for natural language processing, did it.

Making your documentation work for users with vastly different needs is a challenge. Here’s how spaCy, an open-source library for natural language processing, did it.

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Blogs or videos Jul 2018

It’s a great time to be a software developer. Platforms are steadily becoming more mature, useful tools are released almost daily and things that seemed hopelessly futuristic only a few years ago are suddenly commercially viable. Despite this, the software world is awash with bullshit. The success of the largest technology companies has led to a very skewed set of lessons. This narrow focus is amplified by the venture capital industry and the fact that nobody really knows what’s going to happen next.

The good news is, none of this actually matters. The basics of creating something useful and selling it for money remain the same. In this talk, I’m not going to give you “one weird trick” or tell you to ~* just follow your dreams *~. But I’ll share some of the things we’ve learned from building a successful software company around commercial developer tools and our open-source library spaCy.

It’s a great time to be a software developer. Platforms are steadily becoming more mature, useful tools are released almost daily and things that seemed hopelessly futuristic only a few years ago are suddenly commercially viable. Despite this, the software world is awash with bullshit. The success of the largest technology companies has led to a very skewed set of lessons. This narrow focus is amplified by the venture capital industry and the fact that nobody really knows what’s going to happen next.

The good news is, none of this actually matters. The basics of creating something useful and selling it for money remain the same. In this talk, I’m not going to give you “one weird trick” or tell you to ~* just follow your dreams *~. But I’ll share some of the things we’ve learned from building a successful software company around commercial developer tools and our open-source library spaCy.

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Blogs or videos Jul 2018

It’s a great time to be a software developer. Platforms are steadily becoming more mature, useful tools are released almost daily and things that seemed hopelessly futuristic only a few years ago are suddenly commercially viable. Despite this, the software world is awash with bullshit. The success of the largest technology companies has led to a very skewed set of lessons. This narrow focus is amplified by the venture capital industry and the fact that nobody really knows what’s going to happen next.

The good news is, none of this actually matters. The basics of creating something useful and selling it for money remain the same. In this talk, I’m not going to give you “one weird trick” or tell you to ~* just follow your dreams *~. But I’ll share some of the things we’ve learned from building a successful software company around commercial developer tools and our open-source library spaCy.

It’s a great time to be a software developer. Platforms are steadily becoming more mature, useful tools are released almost daily and things that seemed hopelessly futuristic only a few years ago are suddenly commercially viable. Despite this, the software world is awash with bullshit. The success of the largest technology companies has led to a very skewed set of lessons. This narrow focus is amplified by the venture capital industry and the fact that nobody really knows what’s going to happen next.

The good news is, none of this actually matters. The basics of creating something useful and selling it for money remain the same. In this talk, I’m not going to give you “one weird trick” or tell you to ~* just follow your dreams *~. But I’ll share some of the things we’ve learned from building a successful software company around commercial developer tools and our open-source library spaCy.

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Blogs or videos May 2018

Most AI systems today rely on supervised learning: you provide labelled input and output pairs, and get a program that can perform analogous computation for new data. This allows an approach to software engineering Andrej Karpathy has termed "Software 2.0": programming by example data. This is the machine learning revolution that's already here, which we need to be careful to distinguish from more futuristic visions such as Artificial General Intelligence. If "Software 2.0" is driven by example data, how is that example data created – and how can we make that process better?

Most AI systems today rely on supervised learning: you provide labelled input and output pairs, and get a program that can perform analogous computation for new data. This allows an approach to software engineering Andrej Karpathy has termed "Software 2.0": programming by example data. This is the machine learning revolution that's already here, which we need to be careful to distinguish from more futuristic visions such as Artificial General Intelligence. If "Software 2.0" is driven by example data, how is that example data created – and how can we make that process better?

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Open source Apr 2018 → Apr 2018 (1 month)
Last commit on Aug 10, 18
10 Commits / 12,916 ++ / 2,394 --

🍇 Edit and execute code snippets in the browser using Jupyter kernels

🍇 Edit and execute code snippets in the browser using Jupyter kernels

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Blogs or videos Apr 2018

In this talk, I'll present a fast, flexible and even somewhat fun approach to named entity annotation. Using our approach, a model can be trained for a new entity type in only a few hours, starting from only a feed of unannotated text and a handful of seed terms. Given the seed terms, we first perform an interactive lexical learning phase, using a semantic similarity model that can be trained from raw text via an algorithm such as word2vec. The similarity model can be made to learn vectors for longer phrases by pre-processing the text, and abstract patterns can be created referencing attributes such as part-of-speech tags. The patterns file is then used to present the annotator with a sequence of candidate phrases, so that the annotation can be conducted as a binary choice. The annotator's eyes remain fixed near the centre of the screen, decisions can be made with a click, swipe or single keypress, and tasks are buffered to prevent delays.

Using this interface, annotation rates of 10-30 decisions per minute are common. If the decisions are especially easy (e.g. confirming that instances of a phrase are all valid entities), the rate may be several times faster. As the annotator accepts or rejects the suggested phrases, the responses are used to start training a statistical model. Predictions from the statistical model are then mixed into the annotation queue. Despite the sparsity of the signal (binary answers on one phrase per sentence), the model begins to learn surprisingly quickly. A global neural network model is used, with beam-search to allow a form of noise-contrastive estimation training. The pattern matcher and entity recognition model is available in our open-source library spaCy, while the interface, task queue and workflow management are implemented in our annotation tool Prodigy.

In this talk, I'll present a fast, flexible and even somewhat fun approach to named entity annotation. Using our approach, a model can be trained for a new entity type in only a few hours, starting from only a feed of unannotated text and a handful of seed terms. Given the seed terms, we first perform an interactive lexical learning phase, using a semantic similarity model that can be trained from raw text via an algorithm such as word2vec. The similarity model can be made to learn vectors for longer phrases by pre-processing the text, and abstract patterns can be created referencing attributes such as part-of-speech tags. The patterns file is then used to present the annotator with a sequence of candidate phrases, so that the annotation can be conducted as a binary choice. The annotator's eyes remain fixed near the centre of the screen, decisions can be made with a click, swipe or single keypress, and tasks are buffered to prevent delays.

Using this interface, annotation rates of 10-30 decisions per minute are common. If the decisions are especially easy (e.g. confirming that instances of a phrase are all valid entities), the rate may be several times faster. As the annotator accepts or rejects the suggested phrases, the responses are used to start training a statistical model. Predictions from the statistical model are then mixed into the annotation queue. Despite the sparsity of the signal (binary answers on one phrase per sentence), the model begins to learn surprisingly quickly. A global neural network model is used, with beam-search to allow a form of noise-contrastive estimation training. The pattern matcher and entity recognition model is available in our open-source library spaCy, while the interface, task queue and workflow management are implemented in our annotation tool Prodigy.

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Blogs or videos Jan 2018

We founded Explosion AI in October 2016, so this was our first full calendar year in operation. We set ourselves ambitious goals this year, and we're very happy with how we achieved them. Here's what we got done.

We founded Explosion AI in October 2016, so this was our first full calendar year in operation. We set ourselves ambitious goals this year, and we're very happy with how we achieved them. Here's what we got done.

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Open source Oct 2016 → Nov 2017 (1 year, 2 months)
Last commit on Jan 23, 18
11 Commits / 1,215 ++ / 15 --

An open-source NLP visualiser for the modern web

An open-source NLP visualiser for the modern web

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Open source Oct 2017 → Oct 2017 (1 month)
Last commit on Dec 09, 17
6 Commits / 500 ++ / 11 --

💙 Emoji handling and meta data for spaCy with custom extension attributes

💙 Emoji handling and meta data for spaCy with custom extension attributes

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Blogs or videos Oct 2017

As the release candidate for spaCy v2.0 gets closer, we've been excited to implement some of the last outstanding features. One of the best improvements is a new system for adding pipeline components and registering extensions to the Doc, Span and Token objects. In this post, we'll introduce you to the new functionality, and finish with an example extension package, spacymoji.

As the release candidate for spaCy v2.0 gets closer, we've been excited to implement some of the last outstanding features. One of the best improvements is a new system for adding pipeline components and registering extensions to the Doc, Span and Token objects. In this post, we'll introduce you to the new functionality, and finish with an example extension package, spacymoji.

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Blogs or videos Sep 2017

In this video, we'll show you how to use Prodigy to train a classifier to detect disparaging or insulting comments. Prodigy makes text classification particularly powerful, because you can try out new ideas very quickly. The same approach can be used to solve problems such as sentiment analysis or chatbot intent detection.

In this video, we'll show you how to use Prodigy to train a classifier to detect disparaging or insulting comments. Prodigy makes text classification particularly powerful, because you can try out new ideas very quickly. The same approach can be used to solve problems such as sentiment analysis or chatbot intent detection.

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Feature or Apps Aug 2017

Radically efficient machine teaching. An annotation tool powered by active learning.

Radically efficient machine teaching. An annotation tool powered by active learning.

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Blogs or videos Aug 2017

Prodigy is a project very dear to my heart and seeing it come to life has been one of the most exciting experiences as a software developer so far. A lot of the consulting projects we've worked on in the past year ended up circling back to the problem of labelling data to train custom models. Data annotation can be very tedious and time consuming. I've always had a hard time accepting that this was simply how things are.

Prodigy is a project very dear to my heart and seeing it come to life has been one of the most exciting experiences as a software developer so far. A lot of the consulting projects we've worked on in the past year ended up circling back to the problem of labelling data to train custom models. Data annotation can be very tedious and time consuming. I've always had a hard time accepting that this was simply how things are.

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Blogs or videos Aug 2017

Machine learning systems are built from both code and data. It's easy to reuse the code but hard to reuse the data, so building AI mostly means doing annotation. This is good, because the examples are how you program the behaviour – the learner itself is really just a compiler. What's not good is the current technology for creating the examples. That's why we're pleased to introduce Prodigy, a downloadable tool for radically efficient machine teaching.

Machine learning systems are built from both code and data. It's easy to reuse the code but hard to reuse the data, so building AI mostly means doing annotation. This is good, because the examples are how you program the behaviour – the learner itself is really just a compiler. What's not good is the current technology for creating the examples. That's why we're pleased to introduce Prodigy, a downloadable tool for radically efficient machine teaching.

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Feature or Apps Jun 2017

A lightweight and modern terminal animations using async/await

A lightweight and modern terminal animations using async/await

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Feature or Apps May 2017

A micro-form for user-specific installation instructions

A micro-form for user-specific installation instructions

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Blogs or videos May 2017

As more and more people and companies are getting involved with open-source software, balancing the expectations of an open community and a traditional provider vs. consumer relationship is becoming increasingly difficult. Are maintainers becoming too authoritarian? Are users becoming too demanding? Are large companies selling out open-source?

As more and more people and companies are getting involved with open-source software, balancing the expectations of an open community and a traditional provider vs. consumer relationship is becoming increasingly difficult. Are maintainers becoming too authoritarian? Are users becoming too demanding? Are large companies selling out open-source?

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Blogs or videos Apr 2017

Short of Artificial General Intelligence, we'll always need some way of specifying what we're trying to compute. Labelled examples are a great way to do that, but the process is often tedious. However, the dissatisfaction with supervised learning is misplaced. Instead of waiting for the unsupervised messiah to arrive, we need to fix the way we're collecting and reusing human knowledge.

Short of Artificial General Intelligence, we'll always need some way of specifying what we're trying to compute. Labelled examples are a great way to do that, but the process is often tedious. However, the dissatisfaction with supervised learning is misplaced. Instead of waiting for the unsupervised messiah to arrive, we need to fix the way we're collecting and reusing human knowledge.

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Blogs or videos Mar 2017

The way we talk about AI is a mess. It starts with the most obvious, the imagery. Just like stock photos of happy people pointing at whiteboards were a symbol of the modern workplace, wired brains and robots have now come to represent "the AI". But the visual messaging is only a small part of a much larger problem.

The way we talk about AI is a mess. It starts with the most obvious, the imagery. Just like stock photos of happy people pointing at whiteboards were a symbol of the modern workplace, wired brains and robots have now come to represent "the AI". But the visual messaging is only a small part of a much larger problem.

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Blogs or videos Feb 2017

I've seen a couple of these posts pop up over the past year or so, and I've always enjoyed reading other people's stories. So here's mine.

I've seen a couple of these posts pop up over the past year or so, and I've always enjoyed reading other people's stories. So here's mine.

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Blogs or videos Feb 2017

A few weeks ago, I finally made the switch to Microsoft's Visual Studio Code. I'm not gonna lie, abandoning Atom broke my heart. But it turned out VSCode wasn't just a rebound — it's really fast, comes with a bunch of great, built-in features and can be surprisingly pretty, given the right configuration.

A few weeks ago, I finally made the switch to Microsoft's Visual Studio Code. I'm not gonna lie, abandoning Atom broke my heart. But it turned out VSCode wasn't just a rebound — it's really fast, comes with a bunch of great, built-in features and can be surprisingly pretty, given the right configuration.

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Blogs or videos Jan 2017

The bottleneck in AI is data, not algorithms. But how do we get data and knowledge from humans to ML systems? What will the future of data collection look like? And which skills and strategies do we need to improve the process and make our products useful?

The bottleneck in AI is data, not algorithms. But how do we get data and knowledge from humans to ML systems? What will the future of data collection look like? And which skills and strategies do we need to improve the process and make our products useful?

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Blogs or videos Nov 2016

In the run-up to the 1.0 release, we asked the spaCy community to give us their feedback on the library. If you're one of the 224 participants who took part – thanks! Here's what we've learned from your responses, how we're already using them to improve the library, and what we're planning next.

In the run-up to the 1.0 release, we asked the spaCy community to give us their feedback on the library. If you're one of the 224 participants who took part – thanks! Here's what we've learned from your responses, how we're already using them to improve the library, and what we're planning next.

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Blogs or videos Nov 2016

What's holding back Artificial Intelligence? While researchers rightly focus on better algorithms, there are a lot more things to be done. We discuss why AI needs a new, interdisciplinary approach, how it will be used, and what we've learned from our recent State of AI industry survey.

What's holding back Artificial Intelligence? While researchers rightly focus on better algorithms, there are a lot more things to be done. We discuss why AI needs a new, interdisciplinary approach, how it will be used, and what we've learned from our recent State of AI industry survey.

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Blogs or videos Nov 2016

What's holding back Artificial Intelligence? While researchers rightly focus on better algorithms, there are a lot more things to be done. We discuss why AI needs a new, interdisciplinary approach, how it will be used, and what we've learned from our recent State of AI industry survey.

What's holding back Artificial Intelligence? While researchers rightly focus on better algorithms, there are a lot more things to be done. We discuss why AI needs a new, interdisciplinary approach, how it will be used, and what we've learned from our recent State of AI industry survey.

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Open source Oct 2016 → Oct 2016 (1 month)
Last commit on Apr 08, 18
11 Commits / 1,026 ++ / 61 --

An open-source named entity visualiser for the modern web

An open-source named entity visualiser for the modern web

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Project Oct 2016
The State of AI
The State of AI

thestateofai.com: An industry survey on the current state of Machine Learning, Natural Language Processing and Computer Vision

thestateofai.com: An industry survey on the current state of Machine Learning, Natural Language Processing and Computer Vision

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Blogs or videos Oct 2016

Named Entity Recognition is a crucial technology for NLP. Whatever you're doing with text, you usually want to handle names, numbers, dates and other entities differently from regular words. To help you make use of NER, we've released displaCy-ent.js.

Named Entity Recognition is a crucial technology for NLP. Whatever you're doing with text, you usually want to handle names, numbers, dates and other entities differently from regular words. To help you make use of NER, we've released displaCy-ent.js.

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Blogs or videos Oct 2016

With new offerings from Google, Microsoft and others, there are now a range of excellent cloud APIs for syntactic dependencies. A key part of these services is the interactive demo, where you enter a sentence and see the resulting annotation. We're pleased to announce the release of displaCy.js, a modern and service-independent visualisation library. We hope this makes it easy to compare different services, and explore your own in-house models.

With new offerings from Google, Microsoft and others, there are now a range of excellent cloud APIs for syntactic dependencies. A key part of these services is the interactive demo, where you enter a sentence and see the resulting annotation. We're pleased to announce the release of displaCy.js, a modern and service-independent visualisation library. We hope this makes it easy to compare different services, and explore your own in-house models.

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Blogs or videos Aug 2016

What's holding back Artificial Intelligence? While researchers rightly focus on better algorithms, there are a lot more things to be done. In this post I'll discuss three ways in which front-end development can improve AI technology: by improving the collection of annotated data, communicating the capabilities of the technology to key stakeholders, and exploring the system's behaviours and errors.

What's holding back Artificial Intelligence? While researchers rightly focus on better algorithms, there are a lot more things to be done. In this post I'll discuss three ways in which front-end development can improve AI technology: by improving the collection of annotated data, communicating the capabilities of the technology to key stakeholders, and exploring the system's behaviours and errors.

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Position Dec 2015 → May 2016 (6 months)
Head of Front-End at spaCy

Development of web-based applications, interfaces and demos for the spaCy NLP tools. Design and development of visual identity, content management solution and design system. Implementation of digital and content-based marketing strategies and social media management.

Development of web-based applications, interfaces and demos for the spaCy NLP tools. Design and development of visual identity, content management solution and design system. Implementation of digital and content-based marketing strategies and social media management.

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Blogs or videos May 2016

The idea behind the duotone effect, how to achieve it using SVGs and the much talked about feColorMatrix, and how to do and automate the matrix calculation.

The idea behind the duotone effect, how to achieve it using SVGs and the much talked about feColorMatrix, and how to do and automate the matrix calculation.

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Blogs or videos May 2016

How to install and set up your blog with Harp in about a minute (yes, really!) and how to write powerful templates using Jade.

How to install and set up your blog with Harp in about a minute (yes, really!) and how to write powerful templates using Jade.

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Blogs or videos Mar 2016

In a small team, everyone should be able to contribute content to the website and make use of the full set of visual components, without having to worry about design or write complex HTML. To help us write docs, tutorials and blog posts about spaCy, we've developed a powerful set of modularized markup components, implemented using Jade.

In a small team, everyone should be able to contribute content to the website and make use of the full set of visual components, without having to worry about design or write complex HTML. To help us write docs, tutorials and blog posts about spaCy, we've developed a powerful set of modularized markup components, implemented using Jade.

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Feature or Apps Feb 2016

Our neural network read every comment posted to Reddit in 2015, and built a semantic map using word2vec and spaCy.

Our neural network read every comment posted to Reddit in 2015, and built a semantic map using word2vec and spaCy.

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Feature or Apps Aug 2015

A dependency parse tree visualizer and annotation tool using JavaScript and CSS

A dependency parse tree visualizer and annotation tool using JavaScript and CSS

Ines Montani

Berlin, Germany https://ines.io

Technical Skills

Likes: artificial-intelligence nlp machine-learning data-science bigdata open-source spacy python javascript reactjs node.js css sass svg user-experience user-interface visualization

Experience

Oct 2016 → Current Founder Explosion AI
artificial-intelligence, nlp, spacy, machine-learning, javascript

Explosion AI is a digital studio specialising in Artificial Intelligence and Natural Language Processing. We design custom algorithms, applications and data assets. We're the makers of spaCy, the leading open source NLP library.

Dec 2015 → May 2016 Head of Front-End spaCy
html, jade, pug, css, sass, javascript, reactjs, harp

Development of web-based applications, interfaces and demos for the spaCy NLP tools. Design and development of visual identity, content management solution and design system. Implementation of digital and content-based marketing strategies and social media management.

Projects & Interests

Feb 2015 → Current spaCy https://github.com/spaCy
spacy, nlp, data-science, machine-learning, python, cython

spaCy is the leading open-source library for advanced Natural Language Processing (NLP) in Python.

Oct 2018 → Oct 2018 ines/spacy-js https://github.com/ines/spacy-js

🎀 JavaScript API for spaCy with Python REST API

Aug 2018 → Aug 2018 ines/spacy-graphql https://github.com/ines/spacy-graphql

🤹‍♀️ Query spaCy's linguistic annotations using GraphQL

Apr 2018 → Apr 2018 ines/juniper https://github.com/ines/juniper

🍇 Edit and execute code snippets in the browser using Jupyter kernels

Oct 2016 → Nov 2017 displacy https://github.com/explosion/displacy
javascript, svg, css, sass

An open-source NLP visualiser for the modern web

Oct 2017 → Oct 2017 ines/spacymoji https://github.com/ines/spacymoji

💙 Emoji handling and meta data for spaCy with custom extension attributes

Oct 2016 → Oct 2016 displacy-ent https://github.com/explosion/displacy-ent
javascript, css, sass

An open-source named entity visualiser for the modern web

Public Artifacts

Aug 2018 The process: Transforming spaCy’s docs https://increment.com/documentation/transforming-spacys-docs/
spacy, documentation, python, jupyter, jupyter-lab, javascript

Making your documentation work for users with vastly different needs is a challenge. Here’s how spaCy, an open-source library for natural language processing, did it.

Jul 2018 EuroPython 2018 keynote: How to Ignore Most Startup Advice and Build a Decent Software Business https://www.youtube.com/watch?v=Rps9lHflkCg&t=479m0s

It’s a great time to be a software developer. Platforms are steadily becoming more mature, useful tools are released almost daily and things that seemed hopelessly futuristic only a few years ago are suddenly commercially viable. Despite this, the software world is awash with bullshit. The success of the largest technology companies has led to a very skewed set of lessons. This narrow focus is amplified by the venture capital industry and the fact that nobody really knows what’s going to happen next.

The good news is, none of this actually matters. The basics of creating something useful and selling it for money remain the same. In this talk, I’m not going to give you “one weird trick” or tell you to ~* just follow your dreams *~. But I’ll share some of the things we’ve learned from building a successful software company around commercial developer tools and our open-source library spaCy.

Jul 2018 How to Ignore Most Startup Advice and Build a Decent Software Business https://speakerdeck.com/inesmontani/how-to-ignore-most-startup-advice-and-build-a-decent-software-business

It’s a great time to be a software developer. Platforms are steadily becoming more mature, useful tools are released almost daily and things that seemed hopelessly futuristic only a few years ago are suddenly commercially viable. Despite this, the software world is awash with bullshit. The success of the largest technology companies has led to a very skewed set of lessons. This narrow focus is amplified by the venture capital industry and the fact that nobody really knows what’s going to happen next.

The good news is, none of this actually matters. The basics of creating something useful and selling it for money remain the same. In this talk, I’m not going to give you “one weird trick” or tell you to ~* just follow your dreams *~. But I’ll share some of the things we’ve learned from building a successful software company around commercial developer tools and our open-source library spaCy.

May 2018 Teaching AI about Human Knowledge https://speakerdeck.com/inesmontani/teaching-ai-about-human-knowledge
artificial-intelligence, machine-learning, supervised-learning, data-annotations, spacy, prodigy, nlp

Most AI systems today rely on supervised learning: you provide labelled input and output pairs, and get a program that can perform analogous computation for new data. This allows an approach to software engineering Andrej Karpathy has termed "Software 2.0": programming by example data. This is the machine learning revolution that's already here, which we need to be careful to distinguish from more futuristic visions such as Artificial General Intelligence. If "Software 2.0" is driven by example data, how is that example data created – and how can we make that process better?

Apr 2018 Rapid NLP Annotation Through Binary Decisions, Pattern Bootstrapping and Active Learning https://speakerdeck.com/inesmontani/rapid-nlp-annotation-through-binary-decisions-pattern-bootstrapping-and-active-learning
nlp, machine-learning, data-annotations, spacy, prodigy

In this talk, I'll present a fast, flexible and even somewhat fun approach to named entity annotation. Using our approach, a model can be trained for a new entity type in only a few hours, starting from only a feed of unannotated text and a handful of seed terms. Given the seed terms, we first perform an interactive lexical learning phase, using a semantic similarity model that can be trained from raw text via an algorithm such as word2vec. The similarity model can be made to learn vectors for longer phrases by pre-processing the text, and abstract patterns can be created referencing attributes such as part-of-speech tags. The patterns file is then used to present the annotator with a sequence of candidate phrases, so that the annotation can be conducted as a binary choice. The annotator's eyes remain fixed near the centre of the screen, decisions can be made with a click, swipe or single keypress, and tasks are buffered to prevent delays.

Using this interface, annotation rates of 10-30 decisions per minute are common. If the decisions are especially easy (e.g. confirming that instances of a phrase are all valid entities), the rate may be several times faster. As the annotator accepts or rejects the suggested phrases, the responses are used to start training a statistical model. Predictions from the statistical model are then mixed into the annotation queue. Despite the sparsity of the signal (binary answers on one phrase per sentence), the model begins to learn surprisingly quickly. A global neural network model is used, with beam-search to allow a form of noise-contrastive estimation training. The pattern matcher and entity recognition model is available in our open-source library spaCy, while the interface, task queue and workflow management are implemented in our annotation tool Prodigy.

Jan 2018 Explosion AI in 2017: Our Year in Review https://explosion.ai/blog/year-in-review-2017
artificial-intelligence, machine-learning, nlp, spacy

We founded Explosion AI in October 2016, so this was our first full calendar year in operation. We set ourselves ambitious goals this year, and we're very happy with how we achieved them. Here's what we got done.

Oct 2017 Introducing custom pipelines and extensions for spaCy v2.0 https://explosion.ai/blog/spacy-v2-pipelines-extensions
spacy, python, cython, nlp

As the release candidate for spaCy v2.0 gets closer, we've been excited to implement some of the last outstanding features. One of the best improvements is a new system for adding pipeline components and registering extensions to the Doc, Span and Token objects. In this post, we'll introduce you to the new functionality, and finish with an example extension package, spacymoji.

Sep 2017 Training an insults classifier with Prodigy in ~1 hour https://www.youtube.com/watch?v=5di0KlKl0fE
machine-learning, data-science, nlp, spacy, python, user-experience, reactjs

In this video, we'll show you how to use Prodigy to train a classifier to detect disparaging or insulting comments. Prodigy makes text classification particularly powerful, because you can try out new ideas very quickly. The same approach can be used to solve problems such as sentiment analysis or chatbot intent detection.

Aug 2017 Building Prodigy: Our new tool for efficient machine teaching https://ines.io/blog/prodigy-annotation-tool
machine-learning, data-science, nlp, spacy, python, user-experience, reactjs

Prodigy is a project very dear to my heart and seeing it come to life has been one of the most exciting experiences as a software developer so far. A lot of the consulting projects we've worked on in the past year ended up circling back to the problem of labelling data to train custom models. Data annotation can be very tedious and time consuming. I've always had a hard time accepting that this was simply how things are.

Aug 2017 Prodigy: A new tool for radically efficient machine teaching https://explosion.ai/blog/prodigy-annotation-tool-active-learning
machine-learning, data-science, nlp, spacy, python, user-experience, reactjs

Machine learning systems are built from both code and data. It's easy to reuse the code but hard to reuse the data, so building AI mostly means doing annotation. This is good, because the examples are how you program the behaviour – the learner itself is really just a compiler. What's not good is the current technology for creating the examples. That's why we're pleased to introduce Prodigy, a downloadable tool for radically efficient machine teaching.

May 2017 Reflections on running spaCy: commercial open-source NLP https://ines.io/blog/spacy-commercial-open-source-nlp
spacy, open-source, python, nlp, machine-learning

As more and more people and companies are getting involved with open-source software, balancing the expectations of an open community and a traditional provider vs. consumer relationship is becoming increasingly difficult. Are maintainers becoming too authoritarian? Are users becoming too demanding? Are large companies selling out open-source?

Apr 2017 Supervised learning is great – it's data collection that's broken https://explosion.ai/blog/supervised-learning-data-collection
machine-learning, artificial-intelligence, nlp, data-annotations, supervised-learning

Short of Artificial General Intelligence, we'll always need some way of specifying what we're trying to compute. Labelled examples are a great way to do that, but the process is often tedious. However, the dissatisfaction with supervised learning is misplaced. Instead of waiting for the unsupervised messiah to arrive, we need to fix the way we're collecting and reusing human knowledge.

Mar 2017 The wired brain: How not to talk about an AI-powered future https://ines.io/blog/wired-brain-ai-powered-future
artificial-intelligence, machine-learning, visualization

The way we talk about AI is a mess. It starts with the most obvious, the imagery. Just like stock photos of happy people pointing at whiteboards were a symbol of the modern workplace, wired brains and robots have now come to represent "the AI". But the visual messaging is only a small part of a much larger problem.

Feb 2017 Story time: How I started coding https://ines.io/blog/how-i-started-coding
html, css, javascript, python, nlp

I've seen a couple of these posts pop up over the past year or so, and I've always enjoyed reading other people's stories. So here's mine.

Feb 2017 An introduction to Visual Studio Code https://ines.io/blog/visual-studio-code
vscode, javascript, css

A few weeks ago, I finally made the switch to Microsoft's Visual Studio Code. I'm not gonna lie, abandoning Atom broke my heart. But it turned out VSCode wasn't just a rebound — it's really fast, comes with a bunch of great, built-in features and can be surprisingly pretty, given the right configuration.

Jan 2017 Teaching AI about human knowledge http://www.slideshare.net/InesMontani/teaching-ai-about-human-knowledge
artificial-intelligence, nlp, machine-learning, deep-learning, neural-network, spacy

The bottleneck in AI is data, not algorithms. But how do we get data and knowledge from humans to ML systems? What will the future of data collection look like? And which skills and strategies do we need to improve the process and make our products useful?

Nov 2016 The spaCy user survey: results and analysis https://explosion.ai/blog/spacy-user-survey
spacy

In the run-up to the 1.0 release, we asked the spaCy community to give us their feedback on the library. If you're one of the 224 participants who took part – thanks! Here's what we've learned from your responses, how we're already using them to improve the library, and what we're planning next.

Nov 2016 The State of AI 2016 https://livestream.com/aktivdebatt2/events/6697317/videos/142935160
artificial-intelligence, nlp, machine-learning, computer-vision, spacy

What's holding back Artificial Intelligence? While researchers rightly focus on better algorithms, there are a lot more things to be done. We discuss why AI needs a new, interdisciplinary approach, how it will be used, and what we've learned from our recent State of AI industry survey.

Nov 2016 The State of AI 2016 http://www.slideshare.net/InesMontani/the-state-of-ai-2016
artificial-intelligence, nlp, machine-learning, computer-vision, spacy

What's holding back Artificial Intelligence? While researchers rightly focus on better algorithms, there are a lot more things to be done. We discuss why AI needs a new, interdisciplinary approach, how it will be used, and what we've learned from our recent State of AI industry survey.

Oct 2016 An open-source named entity visualiser for the modern web https://explosion.ai/blog/displacy-ent-named-entity-visualizer
spacy, nlp, javascript, css, css3, sass

Named Entity Recognition is a crucial technology for NLP. Whatever you're doing with text, you usually want to handle names, numbers, dates and other entities differently from regular words. To help you make use of NER, we've released displaCy-ent.js.

Oct 2016 displaCy.js: An open-source NLP visualiser for the modern web https://explosion.ai/blog/displacy-js-nlp-visualizer
spacy, nlp, javascript, css, css3, sass, svg

With new offerings from Google, Microsoft and others, there are now a range of excellent cloud APIs for syntactic dependencies. A key part of these services is the interactive demo, where you enter a sentence and see the resulting annotation. We're pleased to announce the release of displaCy.js, a modern and service-independent visualisation library. We hope this makes it easy to compare different services, and explore your own in-house models.

Aug 2016 How Front-End Development Can Improve Artificial Intelligence https://ines.io/blog/how-front-end-can-improve-ai
artificial-intelligence, machine-learning, nlp, spacy, user-experience

What's holding back Artificial Intelligence? While researchers rightly focus on better algorithms, there are a lot more things to be done. In this post I'll discuss three ways in which front-end development can improve AI technology: by improving the collection of annotated data, communicating the capabilities of the technology to key stakeholders, and exploring the system's behaviours and errors.

May 2016 Dynamic Duotone Images with feColorMatrix and Jade https://ines.io/blog/dynamic-duotone-svg-jade
svg, svg-filters, pug

The idea behind the duotone effect, how to achieve it using SVGs and the much talked about feColorMatrix, and how to do and automate the matrix calculation.

May 2016 The Ultimate Guide to Static Websites with Harp & Jade https://ines.io/blog/the-ultimate-guide-static-websites-harp-jade
harp, pug

How to install and set up your blog with Harp in about a minute (yes, really!) and how to write powerful templates using Jade.

Mar 2016 Rebuilding a Website with Modular Markup Components https://explosion.ai/blog/modular-markup
harp, pug, css

In a small team, everyone should be able to contribute content to the website and make use of the full set of visual components, without having to worry about design or write complex HTML. To help us write docs, tutorials and blog posts about spaCy, we've developed a powerful set of modularized markup components, implemented using Jade.

Apps & Software

Aug 2017 Prodigy https://prodi.gy
machine-learning, data-science, nlp, spacy, python, cython, user-experience, reactjs

Radically efficient machine teaching. An annotation tool powered by active learning.

Jun 2017 termynal.js https://github.com/ines/termynal
javascript, html, css, ecmascript-6

A lightweight and modern terminal animations using async/await

May 2017 quickstart.js https://github.com/ines/quickstart
javascript, html, css

A micro-form for user-specific installation instructions

Feb 2016 sense2vec: Semantic Analysis of the Reddit Hivemind https://demos.explosion.ai/sense2vec
javascript, css, spacy, nlp, gensim

Our neural network read every comment posted to Reddit in 2015, and built a semantic map using word2vec and spaCy.

Aug 2015 displaCy https://demos.explosion.ai/displacy
javascript, css, nlp, spacy

A dependency parse tree visualizer and annotation tool using JavaScript and CSS

Others

Oct 2016 The State of AI Project

thestateofai.com: An industry survey on the current state of Machine Learning, Natural Language Processing and Computer Vision