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<title>Bokeh Plot</title>
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Bokeh.safely(function() {
(function(root) {
function embed_document(root) {
var docs_json = document.getElementById('3507').textContent;
var render_items = [{"docid":"91ead0e2-e70b-4e47-8967-ca43ac5d0fc6","root_ids":["3161"],"roots":{"3161":"9c9ef2df-e5ed-450c-a6b5-e0e80b5ec57e"}}];
root.Bokeh.embed.embed_items(docs_json, render_items);
}
if (root.Bokeh !== undefined) {
embed_document(root);
} else {
var attempts = 0;
var timer = setInterval(function(root) {
if (root.Bokeh !== undefined) {
clearInterval(timer);
embed_document(root);
} else {
attempts++;
if (attempts > 100) {
clearInterval(timer);
console.log("Bokeh: ERROR: Unable to run BokehJS code because BokehJS library is missing");
}
}
}, 10, root)
}
})(window);
});
};
if (document.readyState != "loading") fn();
else document.addEventListener("DOMContentLoaded", fn);
})();
</script>
</body>
</html>