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{
"cells": [
{
"cell_type": "markdown",
"id": "fd606fdc-e129-4b5d-8e9d-5abed768f7c5",
"metadata": {},
"source": [
"# Analizing Stanza NER pipelines with Rubrix\n",
"\n",
"This is quick example of you can use Stanza in combination with Rubrix.\n",
"\n",
"\n",
"\n",
"Rubrix is a free and open-source tool for building, evaluating, and managing data for NLP. If you are new to Rubrix, the best place to start is https://github.com/recognai/rubrix.\n",
"\n",
"For running this example, you need to launch Rubrix locally: https://rubrix.readthedocs.io/en/stable/getting_started/setup%26installation.html and install Stanza and Rubrix with pip:"
]
},
{
"cell_type": "code",
"execution_count": null,
"id": "5964f709-5948-44c9-af5c-a37caaca0289",
"metadata": {},
"outputs": [],
"source": [
"!pip install stanza rubrix"
]
},
{
"cell_type": "markdown",
"id": "6dca84ac-4bfc-449d-8e56-e838b7b80476",
"metadata": {},
"source": [
"## Imports"
]
},
{
"cell_type": "code",
"execution_count": null,
"id": "2ecf7023-7ca8-4af7-bc0c-8d8aea363450",
"metadata": {},
"outputs": [],
"source": [
"import rubrix as rb\n",
"from rubrix.metrics.token_classification import *\n",
"from datasets import load_dataset\n",
"import stanza"
]
},
{
"cell_type": "markdown",
"id": "eb90a88b-3a0b-4444-87c7-18a43316e9aa",
"metadata": {},
"source": [
"## Compute tag and entity level predictions\n",
"\n",
"Let's use the ConLL dataset as an example. \n",
"\n",
"This corpus is pretokenized and already segmented into sentences so we'll use the `tokenize_pretokenized` Stanza param.\n",
"\n",
"Stanza enables users to access both entity spans and token level tags (with the `BIOES` scheme).\n",
"\n",
"We'll benefit from the `map` method in the `datasets` library and compute both within the same function\n",
"Related docs: \n",
"\n",
"- https://stanfordnlp.github.io/stanza/ner.html#accessing-named-entities-for-sentence-and-document\n",
"- https://stanfordnlp.github.io/stanza/ner.html#accessing-named-entity-recogition-ner-tags-for-token"
]
},
{
"cell_type": "code",
"execution_count": null,
"id": "0191b987-84d6-43bf-bae2-0df03119fa42",
"metadata": {},
"outputs": [],
"source": [
"import stanza\n",
"from datasets import load_dataset\n",
"\n",
"def predict(examples):\n",
" doc = nlp([examples[\"tokens\"]])\n",
" entities = [ent.to_dict() for sent in doc.sentences for ent in sent.ents]\n",
" tags = [token.to_dict()[0] for sent in doc.sentences for token in sent.tokens]\n",
" return {\n",
" \"entities\": entities,\n",
" \"tags\": tags,\n",
" \"text\": doc.sentences[0].text\n",
" }\n",
"\n",
"nlp = stanza.Pipeline(\n",
" lang='en', \n",
" processors='tokenize,ner', \n",
" tokenize_pretokenized=True)\n",
"\n",
"dataset = load_dataset(\"conll2003\", split=\"test\")\n",
"dataset = dataset.select(range(4)).map(predict)"
]
},
{
"cell_type": "markdown",
"id": "00962750-9535-488d-8034-800b5453f14e",
"metadata": {},
"source": [
"## Log and analyze tag level predictions"
]
},
{
"cell_type": "code",
"execution_count": 179,
"id": "a5b53e93-0c08-4ea9-b277-3a0246bab68b",
"metadata": {},
"outputs": [
{
"data": {
"application/vnd.jupyter.widget-view+json": {
"model_id": "2680d1cdd3354980990e12743d864ff5",
"version_major": 2,
"version_minor": 0
},
"text/plain": [
" 0%| | 0/4 [00:00<?, ?it/s]"
]
},
"metadata": {},
"output_type": "display_data"
},
{
"name": "stdout",
"output_type": "stream",
"text": [
"4 records logged to http://localhost:6900/stanza_conll_tags\n"
]
},
{
"data": {
"text/plain": [
"BulkResponse(dataset='stanza_conll_tags', processed=4, failed=0)"
]
},
"execution_count": 179,
"metadata": {},
"output_type": "execute_result"
}
],
"source": [
"records = [\n",
" rb.TokenClassificationRecord(\n",
" text=example[\"text\"],\n",
" tokens=example[\"tokens\"],\n",
" prediction=[(ent[\"ner\"], ent[\"start_char\"], ent[\"end_char\"]) for ent in example[\"tags\"]]\n",
" )\n",
" for example in dataset\n",
"]\n",
"rb.log(records, \"stanza_conll_tags\")"
]
},
{
"cell_type": "code",
"execution_count": 111,
"id": "d308df24-0589-4cda-9127-ef6284bfb16a",
"metadata": {},
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",
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"metadata": {},
"source": [
"## Log and analyze entity predictions"
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"id": "a2eafd1a-be57-4665-a1f4-36c27b94aeb3",
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" 0%| | 0/4 [00:00<?, ?it/s]"
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"BulkResponse(dataset='stanza_conll_ents', processed=4, failed=0)"
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"execution_count": 181,
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"records = [\n",
" rb.TokenClassificationRecord(\n",
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"execution_count": 140,
"id": "925f3c8d-62e0-4f81-ac5e-1e8b8ecfbb40",
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",
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