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modeling.html
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modeling.html
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{% extends "layout.html" %}
{% block main %}
<script>
const interval = 1000;
function fetchStatus() {
$.get("{{url_for('status')}}", function (data) {
$("#status").html(data);
});
}
setInterval(fetchStatus, interval);
</script>
<main class="main">
<div class="main_content">
<h1>This may take a while...</h1>
<p>How long this process takes depends on the size of the corpus and the number of iterations. This can
range from a few seconds to several hours.</p>
<p class="main_notice -big">
<img src="{{url_for('static', filename='img/logos/dariah-rotate.gif')}}" class="dariah-flower">
<span id="status">Just started topic modeling...</span>
</p>
<p>In the meantime you might want to check out some <a href="#">Jupyter notebooks</a>, where the same workflow as in
this application is explained step by step – but a bit more technically in the programming language Python. This makes
you more flexible with everything and allows you to use more sophisticated topic models. You can
experiment with an example corpus directly in the browser on <a href="#">Binder</a> without installing anything.</p>
<blockquote>With recent scientific advances in support of unsupervised machine learning topic models promise to be an
important component for summarizing and understanding our growing digitized archive of information.<footer>
<cite>
<a href="http://www.cs.columbia.edu/~blei/papers/Blei2012.pdf">David Blei</a>
</cite>
</footer>
</blockquote>
</div>
</main>
{% endblock %}