Beispiel #1
0
class Shell(Cmd):
    """
    Query shell.
    """

    def __init__(self):
        super().__init__()

        self.intro = "query shell"
        self.prompt = "(search) "

        self.embeddings = None
        self.data = None

    def preloop(self):
        # Create embeddings model, backed by sentence-transformers & transformers
        self.embeddings = Embeddings({"method": "transformers", "path": "sentence-transformers/bert-base-nli-mean-tokens"})

        self.data = [
            "US tops 5 million confirmed virus cases",
            "Canada's last fully intact ice shelf has suddenly collapsed, forming a Manhattan-sized iceberg",
            "Beijing mobilises invasion craft along coast as Taiwan tensions escalate",
            "The National Park Service warns against sacrificing slower friends in a bear attack",
            "Maine man wins $1M from $25 lottery ticket",
            "Make huge profits without work, earn up to $100,000 a day",
        ]

    def default(self, line):
        # Get index of best section that best matches query
        uid = self.embeddings.similarity(line, self.data)[0][0]
        print(self.data[uid])
        print()
Beispiel #2
0
def is_most_relevant(query, sources, threshold=0.2, use_api=False):
    if use_api:
        r = requests.post(url + ':8080/is_most_relevant',
                          data=json.dumps({
                              'query': query,
                              'sources': sources
                          }))
        return r.json()
    embeddings = Embeddings({
        "method":
        "transformers",
        "path":
        "sentence-transformers/bert-base-nli-mean-tokens"
    })
    sections = sources
    similarities = embeddings.similarity(query, sections)
    result = zip(sources, similarities)
    result = sorted(result, key=lambda x: x[1], reverse=True)
    print(result)
    result = [x for x in result if x[1] > threshold]
    if result == []:
        return {'result': result}
    result = [result[0][0]]
    response = {'result': result}
    return response
Beispiel #3
0
class TestEmbeddings(unittest.TestCase):
    """
    Embeddings tests
    """
    def setUp(self):
        """
        Initialize test data.
        """

        self.data = [
            "US tops 5 million confirmed virus cases",
            "Canada's last fully intact ice shelf has suddenly collapsed, forming a Manhattan-sized iceberg",
            "Beijing mobilises invasion craft along coast as Taiwan tensions escalate",
            "The National Park Service warns against sacrificing slower friends in a bear attack",
            "Maine man wins $1M from $25 lottery ticket",
            "Make huge profits without work, earn up to $100,000 a day"
        ]

        # Create embeddings model, backed by sentence-transformers & transformers
        self.embeddings = Embeddings({
            "method":
            "transformers",
            "path":
            "sentence-transformers/bert-base-nli-mean-tokens"
        })

    def testIndex(self):
        """
        Test embeddings.index
        """

        # Create an index for the list of sections
        self.embeddings.index([(uid, text, None)
                               for uid, text in enumerate(self.data)])

        # Search for best match
        uid = self.embeddings.search("feel good story", 1)[0][0]

        self.assertEqual(self.data[uid], self.data[4])

    def testSave(self):
        """
        Test embeddings.save
        """

        # Create an index for the list of sections
        self.embeddings.index([(uid, text, None)
                               for uid, text in enumerate(self.data)])

        # Generate temp file path
        index = os.path.join(tempfile.gettempdir(), "embeddings")

        self.embeddings.save(index)
        self.embeddings.load(index)

        # Search for best match
        uid = self.embeddings.search("feel good story", 1)[0][0]

        self.assertEqual(self.data[uid], self.data[4])

    def testSimilarity(self):
        """
        Test embeddings.similarity
        """

        # Get best matching id
        uid = np.argmax(
            self.embeddings.similarity("feel good story", self.data))

        self.assertEqual(self.data[uid], self.data[4])

    def testWords(self):
        """
        Test embeddings backed by word vectors
        """

        # Initialize model path
        path = os.path.join(tempfile.gettempdir(), "model")
        os.makedirs(path, exist_ok=True)

        # Build tokens file
        with tempfile.NamedTemporaryFile(mode="w", delete=False) as output:
            tokens = output.name
            for x in self.data:
                output.write(x + "\n")

        # Word vectors path
        vectors = os.path.join(path, "test-300d")

        # Build word vectors, if they don't already exist
        WordVectors.build(tokens, 300, 1, vectors)

        # Create dataset
        data = [(x, row, None) for x, row in enumerate(self.data)]

        # Create embeddings model, backed by word vectors
        embeddings = Embeddings({
            "path": vectors + ".magnitude",
            "storevectors": True,
            "scoring": "bm25",
            "pca": 3,
            "quantize": True
        })

        # Call scoring and index methods
        embeddings.score(data)
        embeddings.index(data)

        # Test search
        self.assertIsNotNone(embeddings.search("win", 1))