2024-07-18 14:04:51 -07:00
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import os
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import sentence_transformers
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2024-07-30 16:23:23 -07:00
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from gliner import GLiNER
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from transformers import pipeline
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2024-09-19 11:40:31 -07:00
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import sqlite3
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from employee_data_generator import generate_employee_data
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from network_data_generator import generate_device_data, generate_interface_stats_data, generate_flow_data
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2024-07-18 14:04:51 -07:00
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2024-08-06 23:40:06 -07:00
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def load_transformers(models = os.getenv("MODELS", "BAAI/bge-large-en-v1.5")):
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2024-07-18 14:04:51 -07:00
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transformers = {}
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for model in models.split(','):
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transformers[model] = sentence_transformers.SentenceTransformer(model)
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return transformers
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2024-07-30 16:23:23 -07:00
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def load_ner_models(models = os.getenv("NER_MODELS", "urchade/gliner_large-v2.1")):
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ner_models = {}
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for model in models.split(','):
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ner_models[model] = GLiNER.from_pretrained(model)
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return ner_models
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2024-09-16 19:20:07 -07:00
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def load_zero_shot_models(models = os.getenv("ZERO_SHOT_MODELS", "tasksource/deberta-base-long-nli")):
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zero_shot_models = {}
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for model in models.split(','):
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zero_shot_models[model] = pipeline("zero-shot-classification",model=model)
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return zero_shot_models
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2024-09-19 11:40:31 -07:00
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def load_sql():
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# Example Usage
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conn = sqlite3.connect(':memory:')
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# create and load the employees table
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generate_employee_data(conn)
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# create and load the devices table
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device_data = generate_device_data(conn)
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# create and load the interface_stats table
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generate_interface_stats_data(conn, device_data)
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# create and load the flow table
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generate_flow_data(conn, device_data)
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return conn
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