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erp-ai-latest/test.py
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# Example usage
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'''from scripts.run_assessment_prediction_trainer import CompanyModelPipeline
company_ids = ['testid']
input_base_path = '/root/ds_erp_ai/data/raw/erp_assessment_prediction' # The base path where the raw data for each company is stored
pipeline = CompanyModelPipeline(company_ids=company_ids, input_base_path=input_base_path)
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pipeline.run_pipeline()'''
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'''from src.pipeline.inference import AssessmentInference
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inference = AssessmentInference(
company_id="testid",num_assessments=2
)
result = inference.run()
print(result)
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'''
'''
response2 = bot.predict_next_n_assessment(
company_info=company_info,
companyid="testid",
N=3
)
print(f"Predictions {response2}")
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from src.services.chatbot import Chatbot
company_info = {
'company_name': "ABC Corp",
'company_size': "Medium", # Can be "Small", "Medium", or "Large"
'departments': ["Sales", "Marketing", "IT", "Finance", "HR", "Logistics"]
}
bot = Chatbot()
response = bot.predict_based_on_past_assessment(
query="Should i make my next assessment weekly or biweekly to meet up to deadline?",
company_info=company_info,
companyid="testid"
)
print(f"Result: {response}")'''
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from src.services.sop_document_parser import DocumentParser
from src.utils.document_loader import load_document
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path = r"/root/ds_erp_ai/data/raw/test_sop.pdf"
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parser = DocumentParser()
workers_department = [
{"name": "sales", "workers": ["sales manager"]},
{"name": "development", "workers": ["deployment officer"]}
]
res = parser.extract_sops_for_workers_by_department(
docs=load_document(path), # Load the document for processing
depts_workers=workers_department
)
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print(res)