import dspy import json from typing import Literal # --- 1. LLM Configuration --- def setup_dspy_classifier(save_path, api_key_path): with open(api_key_path, "r") as f: api_keys = json.load(f) # Configure the LM # Note: 'gpt-5-mini' is used per your configuration; ensure this matches your provider openai_model = dspy.LM(model='gpt-5-mini', api_key=api_keys["openai"]) dspy.configure(lm=openai_model) class HealthLiteracySignature(dspy.Signature): """ Judge the health literacy level of a generated medical summary. Identify if the language is suitable for a layperson (low) or requires medical expertise (proficient). """ summary_text: str = dspy.InputField(desc="The generated medical summary to be analyzed.") reasoning: str = dspy.OutputField(desc="Analysis of jargon, acronyms, and sentence complexity.") label: Literal["low_health_literacy", "intermediate_health_literacy", "proficient_health_literacy"] = dspy.OutputField() class HealthLiteracyClassifier(dspy.Module): def __init__(self): super().__init__() self.predictor = dspy.ChainOfThought(HealthLiteracySignature) def forward(self, summary_text): return self.predictor(summary_text=summary_text) # Initialize and load weights classifier_instance = HealthLiteracyClassifier() classifier_instance.load(save_path) return classifier_instance # Global instantiation (optional, or you can call setup in your main script) API_FILE = "/home/mshahidul/api_new.json" SAVE_PATH = "/home/mshahidul/readctrl/data/new_exp/optimized_health_classifier_gpt5-mini_v2.json" # Create the instance to be imported classifier = setup_dspy_classifier(SAVE_PATH, API_FILE)