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# import gradio as gr
# import fitz  # PyMuPDF
# import torch
# import os
# import onnxruntime as ort

# # --- IMPORT SESSION OPTIONS ---
# from onnxruntime import SessionOptions, GraphOptimizationLevel

# # --- LANGCHAIN & RAG IMPORTS ---
# from langchain_text_splitters import RecursiveCharacterTextSplitter
# from langchain_community.vectorstores import FAISS
# from langchain_core.embeddings import Embeddings

# # --- ONNX & MODEL IMPORTS ---
# from transformers import AutoTokenizer
# from optimum.onnxruntime import ORTModelForFeatureExtraction, ORTModelForCausalLM
# from huggingface_hub import snapshot_download

# # Force CPU Provider
# PROVIDERS = ["CPUExecutionProvider"]
# print(f"⚑ Running on: {PROVIDERS}")




# # ---------------------------------------------------------
# # 1. OPTIMIZED EMBEDDINGS (BGE-SMALL)
# # ---------------------------------------------------------
# class OnnxBgeEmbeddings(Embeddings):
#     def __init__(self):
#         model_name = "Xenova/bge-small-en-v1.5"
#         print(f"πŸ”„ Loading Embeddings: {model_name}...")
#         self.tokenizer = AutoTokenizer.from_pretrained(model_name)
#         self.model = ORTModelForFeatureExtraction.from_pretrained(
#             model_name, 
#             export=False, 
#             provider=PROVIDERS[0]
#         )

#     def _process_batch(self, texts):
#         inputs = self.tokenizer(texts, padding=True, truncation=True, max_length=512, return_tensors="pt")
#         with torch.no_grad():
#             outputs = self.model(**inputs)
#         embeddings = outputs.last_hidden_state[:, 0]
#         embeddings = torch.nn.functional.normalize(embeddings, p=2, dim=1)
#         return embeddings.numpy().tolist()

#     def embed_documents(self, texts):
#         return self._process_batch(texts)

#     def embed_query(self, text):
#         return self._process_batch(["Represent this sentence for searching relevant passages: " + text])[0]


# # ---------------------------------------------------------
# # 2. OPTIMIZED LLM (Qwen 2.5 - 0.5B) - STRICT GRADING
# # ---------------------------------------------------------
# class LLMEvaluator:
#     def __init__(self):
#         # Qwen 2.5 0.5B is fast but needs "Few-Shot" examples to be strict.
#         self.repo_id = "onnx-community/Qwen2.5-1.5B-Instruct" 
#         self.local_dir = "onnx_qwen_local"
        
#         print(f"πŸ”„ Preparing CPU LLM: {self.repo_id}...")
        
#         if not os.path.exists(self.local_dir):
#             print(f"πŸ“₯ Downloading FP16 model to {self.local_dir}...")
#             snapshot_download(
#                 repo_id=self.repo_id, 
#                 local_dir=self.local_dir,
#                 allow_patterns=["config.json", "generation_config.json", "tokenizer*", "special_tokens_map.json", "*.jinja", "onnx/model_fp16.onnx*"]
#             )
#             print("βœ… Download complete.")

#         self.tokenizer = AutoTokenizer.from_pretrained(self.local_dir)
        
#         sess_options = SessionOptions()
#         sess_options.graph_optimization_level = GraphOptimizationLevel.ORT_DISABLE_ALL
        
#         self.model = ORTModelForCausalLM.from_pretrained(
#             self.local_dir,
#             subfolder="onnx", 
#             file_name="model_fp16.onnx",
#             use_cache=True,
#             use_io_binding=False,
#             provider=PROVIDERS[0],
#             session_options=sess_options
#         )

#     def evaluate(self, context, question, student_answer, max_marks):
#         # --- IMPROVED PROMPT STRATEGY ---
#         # 1. Role: We set the persona to a "Strict Logical Validator" not a "Teacher".
#         # 2. Few-Shot: We give examples of HALLUCINATIONS getting 0 marks.
        
#         system_prompt = f"""You are a strict Logic Validator. You are NOT a helpful assistant. 
#         Your job is to check if the Student Answer is FACTUALLY present in the Context.

#         GRADING ALGORITHM:
#         1. IF the Student Answer mentions things NOT in the Context -> PENALTY (-50% of the marks).
#         2. IF the Student Answer interprets the text opposite to its meaning -> PENALTY (-100% of the marks).
#         3. IF the Student Answer is generic fluff -> SCORE: 0.

#         --- EXAMPLE 1 (HALLUCINATION) ---
#         Context: The sky is blue due to Rayleigh scattering.
#         Question: Why is the sky blue?
#         Student Answer: Because the ocean reflects the water into the sky.
#         Analysis: The Context mentions 'Rayleigh scattering'. The student mentions 'ocean reflection'. These are different. The student is hallucinating outside facts.
#         Score: 0/{max_marks}

#         --- EXAMPLE 2 (CONTRADICTION) ---
#         Context: One must efface one's own personality. Good prose is like a windowpane.
#         Question: What does the author mean?
#         Student Answer: It means we should see the author's personality clearly.
#         Analysis: The text says 'efface' (remove) personality. The student says 'see' personality. This is a direct contradiction.
#         Score: 0/{max_marks}

#         --- EXAMPLE 3 (CORRECT) ---
#         Context: Mitochondria is the powerhouse of the cell.
#         Question: What is mitochondria?
#         Student Answer: It is the cell's powerhouse.
#         Analysis: Matches the text meaning exactly.
#         Score: {max_marks}/{max_marks}
#         """

#         user_prompt = f"""
#         --- YOUR TASK ---
#         Context: 
#         {context}

#         Question: 
#         {question}

#         Student Answer: 
#         {student_answer}

#         OUTPUT FORMAT:
#         Analysis: [Compare Student Answer vs Context. List any hallucinations or contradictions.]
#         Score: [X]/{max_marks}
#         """

#         messages = [
#             {"role": "system", "content": system_prompt},
#             {"role": "user", "content": user_prompt}
#         ]
        
#         input_text = self.tokenizer.apply_chat_template(messages, tokenize=False, add_generation_prompt=True)
#         inputs = self.tokenizer(input_text, return_tensors="pt")
        
#         # Lower temperature for strictness
#         with torch.no_grad():
#             outputs = self.model.generate(
#                 **inputs,
#                 max_new_tokens=150, 
#                 temperature=0.1,    # Strict logic, no creativity
#                 top_p=0.2,          # Cut off unlikely tokens
#                 do_sample=True,
#                 repetition_penalty=1.2 # Penalize repetition
#             )
        
#         input_length = inputs['input_ids'].shape[1]
#         response = self.tokenizer.decode(outputs[0][input_length:], skip_special_tokens=True)
#         return response


# # ---------------------------------------------------------
# # 3. Main Application Logic
# # ---------------------------------------------------------
# class VectorSystem:
#     def __init__(self):
#         self.vector_store = None
#         self.embeddings = OnnxBgeEmbeddings()
#         self.llm = LLMEvaluator()
#         self.all_chunks = [] 
#         self.total_chunks = 0

#     def process_content(self, file_obj, raw_text):
#         # LOGIC: Check for exclusivity (Cannot have both file and text)
#         has_file = file_obj is not None
#         has_text = raw_text is not None and len(raw_text.strip()) > 0

#         if has_file and has_text:
#             return "❌ Error: Please provide EITHER a file OR paste text, not both at the same time."
        
#         if not has_file and not has_text:
#             return "⚠️ No content provided. Please upload a file or paste text."

#         try:
#             text = ""
#             # Case 1: Process File
#             if has_file:
#                 if file_obj.name.endswith('.pdf'):
#                     doc = fitz.open(file_obj.name)
#                     for page in doc: text += page.get_text()
#                 elif file_obj.name.endswith('.txt'):
#                     with open(file_obj.name, 'r', encoding='utf-8') as f: text = f.read()
#                 else:
#                     return "❌ Error: Only .pdf and .txt supported."
            
#             # Case 2: Process Raw Text
#             else:
#                 text = raw_text

#             text_splitter = RecursiveCharacterTextSplitter(chunk_size=800, chunk_overlap=100)
#             self.all_chunks = text_splitter.split_text(text)
#             self.total_chunks = len(self.all_chunks)
            
#             if not self.all_chunks: return "Content empty."

#             metadatas = [{"id": i} for i in range(self.total_chunks)]
#             self.vector_store = FAISS.from_texts(self.all_chunks, self.embeddings, metadatas=metadatas)
            
#             return f"βœ… Indexed {self.total_chunks} chunks."
#         except Exception as e:
#             return f"Error: {str(e)}"

#     def process_query(self, question, student_answer, max_marks):
#         if not self.vector_store: return "⚠️ Please upload a file or paste text first.", ""
#         if not question: return "⚠️ Enter a question.", ""

#         results = self.vector_store.similarity_search_with_score(question, k=1)
#         top_doc, score = results[0]
        
#         center_id = top_doc.metadata['id']
#         start_id = max(0, center_id - 1)
#         end_id = min(self.total_chunks - 1, center_id + 1)
        
#         expanded_context = ""
#         for i in range(start_id, end_id + 1):
#             expanded_context += self.all_chunks[i] + "\n"

#         evidence_display = f"### πŸ“š Expanded Context (Chunks {start_id} to {end_id}):\n"
#         evidence_display += f"> ... {expanded_context} ..."
        
#         llm_feedback = "Please enter a student answer to grade."
#         if student_answer:
#             llm_feedback = self.llm.evaluate(expanded_context, question, student_answer, max_marks)

#         return evidence_display, llm_feedback

# system = VectorSystem()

# with gr.Blocks(title="EduGenius AI Grader") as demo:
#     gr.Markdown("# ⚑ EduGenius: CPU Optimized RAG")
#     gr.Markdown("Powered by **Qwen-2.5-0.5B** and **BGE-Small** (ONNX Optimized)")
    
#     with gr.Row():
#         with gr.Column(scale=1):
#             gr.Markdown("### Source Input (Choose One)")
#             pdf_input = gr.File(label="Option A: Upload Chapter (PDF/TXT)")
#             gr.Markdown("**OR**")
#             text_input = gr.Textbox(label="Option B: Paste Context", placeholder="Paste text here if you don't have a file...", lines=5)
            
#             upload_btn = gr.Button("Index Content", variant="primary")
#             status_msg = gr.Textbox(label="Status", interactive=False)

#         with gr.Column(scale=2):
#             with gr.Row():
#                 q_input = gr.Textbox(label="Question", scale=2)
#                 max_marks = gr.Slider(minimum=1, maximum=20, value=5, step=1, label="Max Marks")
            
#             a_input = gr.TextArea(label="Student Answer")
#             run_btn = gr.Button("Retrieve & Grade", variant="secondary")
            
#             with gr.Row():
#                 evidence_box = gr.Markdown(label="Context Used")
#                 grade_box = gr.Markdown(label="Grading Result")

#     # Pass both inputs to the process_content function
#     upload_btn.click(system.process_content, inputs=[pdf_input, text_input], outputs=[status_msg])
#     run_btn.click(system.process_query, inputs=[q_input, a_input, max_marks], outputs=[evidence_box, grade_box])

# if __name__ == "__main__":
#     demo.launch()




























# import gradio as gr
# import fitz  # PyMuPDF
# import torch
# import os
# import numpy as np

# # --- IMPORT SESSION OPTIONS ---
# from onnxruntime import SessionOptions, GraphOptimizationLevel

# # --- LANGCHAIN & RAG IMPORTS ---
# from langchain_text_splitters import RecursiveCharacterTextSplitter
# from langchain_community.vectorstores import FAISS
# from langchain_core.embeddings import Embeddings
# from langchain_core.documents import Document

# # --- ONNX & MODEL IMPORTS ---
# from transformers import AutoTokenizer
# from optimum.onnxruntime import ORTModelForFeatureExtraction, ORTModelForCausalLM, ORTModelForSequenceClassification
# from huggingface_hub import snapshot_download

# # Force CPU Provider
# PROVIDERS = ["CPUExecutionProvider"]
# print(f"⚑ Running on: {PROVIDERS}")

# # ---------------------------------------------------------
# # 1. OPTIMIZED EMBEDDINGS (BGE-SMALL)
# # ---------------------------------------------------------
# class OnnxBgeEmbeddings(Embeddings):
#     def __init__(self):
#         model_name = "Xenova/bge-small-en-v1.5"
#         print(f"πŸ”„ Loading Embeddings: {model_name}...")
#         self.tokenizer = AutoTokenizer.from_pretrained(model_name)
#         self.model = ORTModelForFeatureExtraction.from_pretrained(
#             model_name, 
#             export=False, 
#             provider=PROVIDERS[0]
#         )

#     def _process_batch(self, texts):
#         inputs = self.tokenizer(texts, padding=True, truncation=True, max_length=512, return_tensors="pt")
#         with torch.no_grad():
#             outputs = self.model(**inputs)
#         embeddings = outputs.last_hidden_state[:, 0]
#         embeddings = torch.nn.functional.normalize(embeddings, p=2, dim=1)
#         return embeddings.numpy().tolist()

#     def embed_documents(self, texts):
#         return self._process_batch(texts)

#     def embed_query(self, text):
#         return self._process_batch(["Represent this sentence for searching relevant passages: " + text])[0]


# # ---------------------------------------------------------
# # 2. OPTIMIZED LLM (Qwen 2.5 - 0.5B) - STRICT GRADING
# # ---------------------------------------------------------
# class LLMEvaluator:
#     def __init__(self):
#         # Qwen 2.5 0.5B is fast but needs "Few-Shot" examples to be strict.
#         self.repo_id = "onnx-community/Qwen2.5-1.5B-Instruct" 
#         self.local_dir = "onnx_qwen_local"
        
#         print(f"πŸ”„ Preparing CPU LLM: {self.repo_id}...")
        
#         if not os.path.exists(self.local_dir):
#             print(f"πŸ“₯ Downloading FP16 model to {self.local_dir}...")
#             snapshot_download(
#                 repo_id=self.repo_id, 
#                 local_dir=self.local_dir,
#                 allow_patterns=["config.json", "generation_config.json", "tokenizer*", "special_tokens_map.json", "*.jinja", "onnx/model_fp16.onnx*"]
#             )
#             print("βœ… Download complete.")

#         self.tokenizer = AutoTokenizer.from_pretrained(self.local_dir)
        
#         sess_options = SessionOptions()
#         sess_options.graph_optimization_level = GraphOptimizationLevel.ORT_DISABLE_ALL
        
#         self.model = ORTModelForCausalLM.from_pretrained(
#             self.local_dir,
#             subfolder="onnx", 
#             file_name="model_fp16.onnx",
#             use_cache=True,
#             use_io_binding=False,
#             provider=PROVIDERS[0],
#             session_options=sess_options
#         )

#     def evaluate(self, context, question, student_answer, max_marks):
#         # --- IMPROVED PROMPT STRATEGY ---
#         system_prompt = f"""You are a strict Logic Validator. You are NOT a helpful assistant. 
#         Your job is to check if the Student Answer is FACTUALLY present in the Context.

#         GRADING ALGORITHM:
#         1. IF the Student Answer mentions things NOT in the Context -> PENALTY (-50% of the marks).
#         2. IF the Student Answer interprets the text opposite to its meaning -> PENALTY (-100% of the marks).
#         3. IF the Student Answer is generic fluff -> SCORE: 0.

#         --- EXAMPLE 1 (HALLUCINATION) ---
#         Context: The sky is blue due to Rayleigh scattering.
#         Question: Why is the sky blue?
#         Student Answer: Because the ocean reflects the water into the sky.
#         Analysis: The Context mentions 'Rayleigh scattering'. The student mentions 'ocean reflection'. These are different. The student is hallucinating outside facts.
#         Score: 0/{max_marks}

#         --- EXAMPLE 2 (CONTRADICTION) ---
#         Context: One must efface one's own personality. Good prose is like a windowpane.
#         Question: What does the author mean?
#         Student Answer: It means we should see the author's personality clearly.
#         Analysis: The text says 'efface' (remove) personality. The student says 'see' personality. This is a direct contradiction.
#         Score: 0/{max_marks}

#         --- EXAMPLE 3 (CORRECT) ---
#         Context: Mitochondria is the powerhouse of the cell.
#         Question: What is mitochondria?
#         Student Answer: It is the cell's powerhouse.
#         Analysis: Matches the text meaning exactly.
#         Score: {max_marks}/{max_marks}
#         """

#         user_prompt = f"""
#         --- YOUR TASK ---
#         Context: 
#         {context}

#         Question: 
#         {question}

#         Student Answer: 
#         {student_answer}

#         OUTPUT FORMAT:
#         Analysis: [Compare Student Answer vs Context. List any hallucinations or contradictions.]
#         Score: [X]/{max_marks}
#         """

#         messages = [
#             {"role": "system", "content": system_prompt},
#             {"role": "user", "content": user_prompt}
#         ]
        
#         input_text = self.tokenizer.apply_chat_template(messages, tokenize=False, add_generation_prompt=True)
#         inputs = self.tokenizer(input_text, return_tensors="pt")
        
#         # Lower temperature for strictness
#         with torch.no_grad():
#             outputs = self.model.generate(
#                 **inputs,
#                 max_new_tokens=150, 
#                 temperature=0.1,    # Strict logic, no creativity
#                 top_p=0.2,          # Cut off unlikely tokens
#                 do_sample=True,
#                 repetition_penalty=1.2 # Penalize repetition
#             )
        
#         input_length = inputs['input_ids'].shape[1]
#         response = self.tokenizer.decode(outputs[0][input_length:], skip_special_tokens=True)
#         return response


# # ---------------------------------------------------------
# # 3. NEW: ONNX RERANKER (Cross-Encoder)
# # Uses existing 'optimum' & 'transformers' libs (No new deps)
# # ---------------------------------------------------------
# class OnnxReranker:
#     def __init__(self):
#         # TinyBERT is ~17MB and very fast on CPU
#         self.model_name = "Xenova/ms-marco-TinyBERT-L-2-v2"
#         print(f"πŸ”„ Loading Reranker: {self.model_name}...")
#         self.tokenizer = AutoTokenizer.from_pretrained(self.model_name)
#         self.model = ORTModelForSequenceClassification.from_pretrained(
#             self.model_name,
#             export=False,
#             provider=PROVIDERS[0]
#         )

#     def rank(self, query, docs, top_k=3):
#         if not docs:
#             return []
        
#         # Prepare pairs: [query, doc_text]
#         pairs = [[query, doc.page_content] for doc in docs]
        
#         inputs = self.tokenizer(
#             pairs, 
#             padding=True, 
#             truncation=True, 
#             max_length=512, 
#             return_tensors="pt"
#         )
        
#         with torch.no_grad():
#             outputs = self.model(**inputs)
        
#         # Get logits (Relevance scores)
#         # MS-Marco models typically output a single logit or [irrelevant, relevant]
#         logits = outputs.logits
#         if logits.shape[1] == 2:
#             scores = logits[:, 1] # Take the "relevant" class score
#         else:
#             scores = logits.flatten()
            
#         # Sort docs by score (descending)
#         scores = scores.numpy().tolist()
#         doc_score_pairs = list(zip(docs, scores))
#         doc_score_pairs.sort(key=lambda x: x[1], reverse=True)
        
#         # Return top K docs
#         return [doc for doc, score in doc_score_pairs[:top_k]]


# # ---------------------------------------------------------
# # 4. Main Application Logic
# # ---------------------------------------------------------
# class VectorSystem:
#     def __init__(self):
#         self.vector_store = None
#         self.embeddings = OnnxBgeEmbeddings()
#         self.llm = LLMEvaluator()
#         self.reranker = OnnxReranker() # Initialize Reranker
#         self.all_chunks = [] 
#         self.total_chunks = 0

#     def process_content(self, file_obj, raw_text):
#         has_file = file_obj is not None
#         has_text = raw_text is not None and len(raw_text.strip()) > 0

#         if has_file and has_text:
#             return "❌ Error: Please provide EITHER a file OR paste text, not both at the same time."
        
#         if not has_file and not has_text:
#             return "⚠️ No content provided. Please upload a file or paste text."

#         try:
#             text = ""
#             if has_file:
#                 if file_obj.name.endswith('.pdf'):
#                     doc = fitz.open(file_obj.name)
#                     for page in doc: text += page.get_text()
#                 elif file_obj.name.endswith('.txt'):
#                     with open(file_obj.name, 'r', encoding='utf-8') as f: text = f.read()
#                 else:
#                     return "❌ Error: Only .pdf and .txt supported."
#             else:
#                 text = raw_text

#             # Smaller chunks for Reranking precision (500 chars)
#             text_splitter = RecursiveCharacterTextSplitter(chunk_size=500, chunk_overlap=100)
#             texts = text_splitter.split_text(text)
#             self.all_chunks = texts # Keep plain text list for reference
            
#             # Create Document objects with metadata
#             docs = [Document(page_content=t, metadata={"id": i}) for i, t in enumerate(texts)]
#             self.total_chunks = len(docs)
            
#             if not docs: return "Content empty."

#             self.vector_store = FAISS.from_documents(docs, self.embeddings)
            
#             return f"βœ… Indexed {self.total_chunks} chunks."
#         except Exception as e:
#             return f"Error: {str(e)}"

#     def process_query(self, question, student_answer, max_marks):
#         if not self.vector_store: return "⚠️ Please upload a file or paste text first.", ""
#         if not question: return "⚠️ Enter a question.", ""

#         # Step A: Wide Net Retrieval (Get top 15 candidates)
#         # We fetch more than we need to ensure the answer is in the candidate pool
#         initial_docs = self.vector_store.similarity_search(question, k=15)
        
#         # Step B: Rerank (Get top 3 best matches)
#         # The Cross-Encoder strictly judges relevance
#         top_docs = self.reranker.rank(question, initial_docs, top_k=3)
        
#         # Step C: Construct Context
#         # We merge the top 3 specific chunks
#         expanded_context = "\n\n---\n\n".join([d.page_content for d in top_docs])

#         evidence_display = f"### πŸ“š Optimized Context (Top {len(top_docs)} chunks after Reranking):\n"
#         evidence_display += f"> {expanded_context} ..."
        
#         llm_feedback = "Please enter a student answer to grade."
#         if student_answer:
#             llm_feedback = self.llm.evaluate(expanded_context, question, student_answer, max_marks)

#         return evidence_display, llm_feedback

# system = VectorSystem()

# with gr.Blocks(title="EduGenius AI Grader") as demo:
#     gr.Markdown("# ⚑ EduGenius: CPU Optimized RAG")
#     gr.Markdown("Powered by **Qwen-2.5-0.5B**, **BGE-Small** & **TinyBERT Reranker**")
    
#     with gr.Row():
#         with gr.Column(scale=1):
#             gr.Markdown("### Source Input (Choose One)")
#             pdf_input = gr.File(label="Option A: Upload Chapter (PDF/TXT)")
#             gr.Markdown("**OR**")
#             text_input = gr.Textbox(label="Option B: Paste Context", placeholder="Paste text here if you don't have a file...", lines=5)
            
#             upload_btn = gr.Button("Index Content", variant="primary")
#             status_msg = gr.Textbox(label="Status", interactive=False)

#         with gr.Column(scale=2):
#             with gr.Row():
#                 q_input = gr.Textbox(label="Question", scale=2)
#                 max_marks = gr.Slider(minimum=1, maximum=20, value=5, step=1, label="Max Marks")
            
#             a_input = gr.TextArea(label="Student Answer")
#             run_btn = gr.Button("Retrieve & Grade", variant="secondary")
            
#             with gr.Row():
#                 evidence_box = gr.Markdown(label="Context Used")
#                 grade_box = gr.Markdown(label="Grading Result")

#     # Pass both inputs to the process_content function
#     upload_btn.click(system.process_content, inputs=[pdf_input, text_input], outputs=[status_msg])
#     run_btn.click(system.process_query, inputs=[q_input, a_input, max_marks], outputs=[evidence_box, grade_box])

# if __name__ == "__main__":
#     demo.launch()




































# import gradio as gr
# import fitz  # PyMuPDF
# import torch
# import os
# import numpy as np

# # --- IMPORT SESSION OPTIONS ---
# from onnxruntime import SessionOptions, GraphOptimizationLevel

# # --- LANGCHAIN & RAG IMPORTS ---
# from langchain_text_splitters import RecursiveCharacterTextSplitter
# from langchain_community.vectorstores import FAISS
# from langchain_core.embeddings import Embeddings
# from langchain_core.documents import Document

# # --- ONNX & MODEL IMPORTS ---
# from transformers import AutoTokenizer
# from optimum.onnxruntime import ORTModelForFeatureExtraction, ORTModelForCausalLM, ORTModelForSequenceClassification
# from huggingface_hub import snapshot_download

# # Force CPU Provider
# PROVIDERS = ["CPUExecutionProvider"]
# print(f"⚑ Running on: {PROVIDERS}")

# # ---------------------------------------------------------
# # 1. OPTIMIZED EMBEDDINGS (BGE-SMALL)
# # ---------------------------------------------------------
# class OnnxBgeEmbeddings(Embeddings):
#     def __init__(self):
#         model_name = "Xenova/bge-small-en-v1.5"
#         print(f"πŸ”„ Loading Embeddings: {model_name}...")
#         self.tokenizer = AutoTokenizer.from_pretrained(model_name)
#         self.model = ORTModelForFeatureExtraction.from_pretrained(
#             model_name, 
#             export=False, 
#             provider=PROVIDERS[0]
#         )

#     def _process_batch(self, texts):
#         inputs = self.tokenizer(texts, padding=True, truncation=True, max_length=512, return_tensors="pt")
#         with torch.no_grad():
#             outputs = self.model(**inputs)
#         embeddings = outputs.last_hidden_state[:, 0]
#         embeddings = torch.nn.functional.normalize(embeddings, p=2, dim=1)
#         return embeddings.numpy().tolist()

#     def embed_documents(self, texts):
#         return self._process_batch(texts)

#     def embed_query(self, text):
#         return self._process_batch(["Represent this sentence for searching relevant passages: " + text])[0]


# # ---------------------------------------------------------
# # 2. OPTIMIZED LLM (Qwen 2.5 - 0.5B) - STRICT GRADING
# # ---------------------------------------------------------
# class LLMEvaluator:
#     def __init__(self):
#         # Qwen 2.5 0.5B is fast but needs "Few-Shot" examples to be strict.
#         self.repo_id = "onnx-community/Qwen2.5-0.5B-Instruct" 
#         self.local_dir = "onnx_qwen_local"
        
#         print(f"πŸ”„ Preparing CPU LLM: {self.repo_id}...")
        
#         if not os.path.exists(self.local_dir):
#             print(f"πŸ“₯ Downloading FP16 model to {self.local_dir}...")
#             snapshot_download(
#                 repo_id=self.repo_id, 
#                 local_dir=self.local_dir,
#                 allow_patterns=["config.json", "generation_config.json", "tokenizer*", "special_tokens_map.json", "*.jinja", "onnx/model_fp16.onnx*"]
#             )
#             print("βœ… Download complete.")

#         self.tokenizer = AutoTokenizer.from_pretrained(self.local_dir)
        
#         sess_options = SessionOptions()
#         sess_options.graph_optimization_level = GraphOptimizationLevel.ORT_DISABLE_ALL
        
#         self.model = ORTModelForCausalLM.from_pretrained(
#             self.local_dir,
#             subfolder="onnx", 
#             file_name="model_fp16.onnx",
#             use_cache=True,
#             use_io_binding=False,
#             provider=PROVIDERS[0],
#             session_options=sess_options
#         )

#     def evaluate(self, context, question, student_answer, max_marks):
#         # --- IMPROVED PROMPT STRATEGY ---
#         system_prompt = f"""You are a strict Logic Validator. You are NOT a helpful assistant. 
#         Your job is to check if the Student Answer is FACTUALLY present in the Context.

#         GRADING ALGORITHM:
#         1. IF the Student Answer mentions things NOT in the Context -> PENALTY (-50% of the marks).
#         2. IF the Student Answer interprets the text opposite to its meaning -> PENALTY (-100% of the marks).
#         3. IF the Student Answer is generic fluff -> SCORE: 0.

#         --- EXAMPLE 1 (HALLUCINATION) ---
#         Context: The sky is blue due to Rayleigh scattering.
#         Question: Why is the sky blue?
#         Student Answer: Because the ocean reflects the water into the sky.
#         Analysis: The Context mentions 'Rayleigh scattering'. The student mentions 'ocean reflection'. These are different. The student is hallucinating outside facts.
#         Score: 0/{max_marks}

#         --- EXAMPLE 2 (CONTRADICTION) ---
#         Context: One must efface one's own personality. Good prose is like a windowpane.
#         Question: What does the author mean?
#         Student Answer: It means we should see the author's personality clearly.
#         Analysis: The text says 'efface' (remove) personality. The student says 'see' personality. This is a direct contradiction.
#         Score: 0/{max_marks}

#         --- EXAMPLE 3 (CORRECT) ---
#         Context: Mitochondria is the powerhouse of the cell.
#         Question: What is mitochondria?
#         Student Answer: It is the cell's powerhouse.
#         Analysis: Matches the text meaning exactly.
#         Score: {max_marks}/{max_marks}
#         """

#         user_prompt = f"""
#         --- YOUR TASK ---
#         Context: 
#         {context}

#         Question: 
#         {question}

#         Student Answer: 
#         {student_answer}

#         OUTPUT FORMAT:
#         Analysis: [Compare Student Answer vs Context. List any hallucinations or contradictions.]
#         Score: [X]/{max_marks}
#         """

#         messages = [
#             {"role": "system", "content": system_prompt},
#             {"role": "user", "content": user_prompt}
#         ]
        
#         input_text = self.tokenizer.apply_chat_template(messages, tokenize=False, add_generation_prompt=True)
#         inputs = self.tokenizer(input_text, return_tensors="pt")
        
#         # Lower temperature for strictness
#         with torch.no_grad():
#             outputs = self.model.generate(
#                 **inputs,
#                 max_new_tokens=150, 
#                 temperature=0.1,    # Strict logic, no creativity
#                 top_p=0.2,          # Cut off unlikely tokens
#                 do_sample=True,
#                 repetition_penalty=1.2 # Penalize repetition
#             )
        
#         input_length = inputs['input_ids'].shape[1]
#         response = self.tokenizer.decode(outputs[0][input_length:], skip_special_tokens=True)
#         return response


# # ---------------------------------------------------------
# # 3. NEW: ONNX RERANKER (Cross-Encoder)
# # Uses existing 'optimum' & 'transformers' libs (No new deps)
# # ---------------------------------------------------------
# class OnnxReranker:
#     def __init__(self):
#         # TinyBERT is ~17MB and very fast on CPU
#         self.model_name = "Xenova/ms-marco-TinyBERT-L-2-v2"
#         print(f"πŸ”„ Loading Reranker: {self.model_name}...")
#         self.tokenizer = AutoTokenizer.from_pretrained(self.model_name)
#         self.model = ORTModelForSequenceClassification.from_pretrained(
#             self.model_name,
#             export=False,
#             provider=PROVIDERS[0]
#         )

#     def rank(self, query, docs, top_k=3):
#         if not docs:
#             return []
        
#         # Prepare pairs: [query, doc_text]
#         pairs = [[query, doc.page_content] for doc in docs]
        
#         inputs = self.tokenizer(
#             pairs, 
#             padding=True, 
#             truncation=True, 
#             max_length=512, 
#             return_tensors="pt"
#         )
        
#         with torch.no_grad():
#             outputs = self.model(**inputs)
        
#         # Get logits (Relevance scores)
#         # MS-Marco models typically output a single logit or [irrelevant, relevant]
#         logits = outputs.logits
#         if logits.shape[1] == 2:
#             scores = logits[:, 1] # Take the "relevant" class score
#         else:
#             scores = logits.flatten()
            
#         # Sort docs by score (descending)
#         scores = scores.numpy().tolist()
#         doc_score_pairs = list(zip(docs, scores))
#         doc_score_pairs.sort(key=lambda x: x[1], reverse=True)
        
#         # Return top K docs
#         return [doc for doc, score in doc_score_pairs[:top_k]]


# # ---------------------------------------------------------
# # 4. Main Application Logic
# # ---------------------------------------------------------
# class VectorSystem:
#     def __init__(self):
#         self.vector_store = None
#         self.embeddings = OnnxBgeEmbeddings()
#         self.llm = LLMEvaluator()
#         self.reranker = OnnxReranker() # Initialize Reranker
#         self.all_chunks = [] 
#         self.total_chunks = 0

#     def process_content(self, file_obj, raw_text):
#         has_file = file_obj is not None
#         has_text = raw_text is not None and len(raw_text.strip()) > 0

#         if has_file and has_text:
#             return "❌ Error: Please provide EITHER a file OR paste text, not both at the same time."
        
#         if not has_file and not has_text:
#             return "⚠️ No content provided. Please upload a file or paste text."

#         try:
#             text = ""
#             if has_file:
#                 if file_obj.name.endswith('.pdf'):
#                     doc = fitz.open(file_obj.name)
#                     for page in doc: text += page.get_text()
#                 elif file_obj.name.endswith('.txt'):
#                     with open(file_obj.name, 'r', encoding='utf-8') as f: text = f.read()
#                 else:
#                     return "❌ Error: Only .pdf and .txt supported."
#             else:
#                 text = raw_text

#             # Smaller chunks for Reranking precision (500 chars)
#             text_splitter = RecursiveCharacterTextSplitter(chunk_size=500, chunk_overlap=100)
#             texts = text_splitter.split_text(text)
#             self.all_chunks = texts # Keep plain text list for reference
            
#             # Create Document objects with metadata
#             docs = [Document(page_content=t, metadata={"id": i}) for i, t in enumerate(texts)]
#             self.total_chunks = len(docs)
            
#             if not docs: return "Content empty."

#             self.vector_store = FAISS.from_documents(docs, self.embeddings)
            
#             return f"βœ… Indexed {self.total_chunks} chunks."
#         except Exception as e:
#             return f"Error: {str(e)}"

#     def process_query(self, question, student_answer, max_marks):
#         if not self.vector_store: return "⚠️ Please upload a file or paste text first.", ""
#         if not question: return "⚠️ Enter a question.", ""

#         # Step A: Wide Net Retrieval (Get top 15 candidates)
#         # We fetch more than we need to ensure the answer is in the candidate pool
#         initial_docs = self.vector_store.similarity_search(question, k=15)
        
#         # Step B: Rerank (Get top 3 best matches)
#         # The Cross-Encoder strictly judges relevance
#         top_docs = self.reranker.rank(question, initial_docs, top_k=3)
        
#         # Step C: Construct Context
#         # We merge the top 3 specific chunks
#         expanded_context = "\n\n---\n\n".join([d.page_content for d in top_docs])

#         evidence_display = f"### πŸ“š Optimized Context (Top {len(top_docs)} chunks after Reranking):\n"
#         evidence_display += f"> {expanded_context} ..."
        
#         llm_feedback = "Please enter a student answer to grade."
#         if student_answer:
#             llm_feedback = self.llm.evaluate(expanded_context, question, student_answer, max_marks)

#         return evidence_display, llm_feedback

# system = VectorSystem()

# with gr.Blocks(title="EduGenius AI Grader") as demo:
#     gr.Markdown("# ⚑ EduGenius: CPU Optimized RAG")
#     gr.Markdown("Powered by **Qwen-2.5-0.5B**, **BGE-Small** & **TinyBERT Reranker**")
    
#     with gr.Row():
#         with gr.Column(scale=1):
#             gr.Markdown("### Source Input (Choose One)")
#             pdf_input = gr.File(label="Option A: Upload Chapter (PDF/TXT)")
#             gr.Markdown("**OR**")
#             text_input = gr.Textbox(label="Option B: Paste Context", placeholder="Paste text here if you don't have a file...", lines=5)
            
#             upload_btn = gr.Button("Index Content", variant="primary")
#             status_msg = gr.Textbox(label="Status", interactive=False)

#         with gr.Column(scale=2):
#             with gr.Row():
#                 q_input = gr.Textbox(label="Question", scale=2)
#                 max_marks = gr.Slider(minimum=1, maximum=20, value=5, step=1, label="Max Marks")
            
#             a_input = gr.TextArea(label="Student Answer")
#             run_btn = gr.Button("Retrieve & Grade", variant="secondary")
            
#             with gr.Row():
#                 evidence_box = gr.Markdown(label="Context Used")
#                 grade_box = gr.Markdown(label="Grading Result")

#     # Pass both inputs to the process_content function
#     upload_btn.click(system.process_content, inputs=[pdf_input, text_input], outputs=[status_msg])
#     run_btn.click(system.process_query, inputs=[q_input, a_input, max_marks], outputs=[evidence_box, grade_box])

# if __name__ == "__main__":
#     demo.launch()





























import gradio as gr
import fitz  # PyMuPDF
import torch
import os
import numpy as np
import re
from typing import List, Dict, Tuple, Optional

# --- IMPORT SESSION OPTIONS ---
from onnxruntime import SessionOptions, GraphOptimizationLevel

# --- LANGCHAIN & RAG IMPORTS ---
from langchain_text_splitters import RecursiveCharacterTextSplitter
from langchain_community.vectorstores import FAISS
from langchain_core.embeddings import Embeddings
from langchain_core.documents import Document

# --- ONNX & MODEL IMPORTS ---
from transformers import AutoTokenizer
from optimum.onnxruntime import ORTModelForFeatureExtraction, ORTModelForCausalLM, ORTModelForSequenceClassification
from huggingface_hub import snapshot_download

# Force CPU Provider
PROVIDERS = ["CPUExecutionProvider"]
print(f"⚑ Running on: {PROVIDERS}")

# ---------------------------------------------------------
# 1. OPTIMIZED EMBEDDINGS (BGE-SMALL) - UNCHANGED
# ---------------------------------------------------------
class OnnxBgeEmbeddings(Embeddings):
    def __init__(self):
        model_name = "Xenova/bge-small-en-v1.5"
        print(f"πŸ”„ Loading Embeddings: {model_name}...")
        self.tokenizer = AutoTokenizer.from_pretrained(model_name)
        self.model = ORTModelForFeatureExtraction.from_pretrained(
            model_name, 
            export=False, 
            provider=PROVIDERS[0]
        )

    def _process_batch(self, texts):
        inputs = self.tokenizer(texts, padding=True, truncation=True, max_length=512, return_tensors="pt")
        with torch.no_grad():
            outputs = self.model(**inputs)
        embeddings = outputs.last_hidden_state[:, 0]
        embeddings = torch.nn.functional.normalize(embeddings, p=2, dim=1)
        return embeddings.numpy().tolist()

    def embed_documents(self, texts):
        return self._process_batch(texts)

    def embed_query(self, text):
        return self._process_batch(["Represent this sentence for searching relevant passages: " + text])[0]


# ---------------------------------------------------------
# 2. NEW: ANSWER PRESENCE CHECKER
# Paper insight: Prevent grading blank/missing answers
# ---------------------------------------------------------
class AnswerPresenceChecker:
    """Checks if a student answer actually exists and contains substance."""
    
    def __init__(self):
        self.min_length = 10  # Minimum characters for valid answer
        self.min_words = 3    # Minimum words for valid answer
    
    def check_presence(self, student_answer: str) -> Tuple[bool, str]:
        """
        Returns: (is_present, reason)
        """
        if not student_answer or len(student_answer.strip()) == 0:
            return False, "Answer is empty"
        
        answer = student_answer.strip()
        
        # Check minimum length
        if len(answer) < self.min_length:
            return False, f"Answer too short ({len(answer)} chars, need {self.min_length})"
        
        # Check minimum word count
        words = answer.split()
        if len(words) < self.min_words:
            return False, f"Answer too brief ({len(words)} words, need {self.min_words})"
        
        # Check for placeholder text
        placeholder_patterns = [
            r'^[.\s]*$',  # Only dots/spaces
            r'^[?]+$',    # Only question marks
            r'^(n/?a|na|idk|dunno)\s*$',  # Common non-answers
        ]
        
        for pattern in placeholder_patterns:
            if re.match(pattern, answer.lower()):
                return False, "Answer appears to be placeholder text"
        
        return True, "Answer present and valid"


# ---------------------------------------------------------
# 3. ENHANCED LLM EVALUATOR WITH ENSEMBLE SUPPORT
# Paper insights: Structured prompting, reference grounding, ensemble grading
# ---------------------------------------------------------
class LLMEvaluator:
    def __init__(self):
        self.repo_id = "onnx-community/Qwen2.5-0.5B-Instruct" 
        self.local_dir = "onnx_qwen_local"
        
        print(f"πŸ”„ Preparing CPU LLM: {self.repo_id}...")
        
        if not os.path.exists(self.local_dir):
            print(f"πŸ“₯ Downloading FP16 model to {self.local_dir}...")
            snapshot_download(
                repo_id=self.repo_id, 
                local_dir=self.local_dir,
                allow_patterns=["config.json", "generation_config.json", "tokenizer*", "special_tokens_map.json", "*.jinja", "onnx/model_fp16.onnx*"]
            )
            print("βœ… Download complete.")

        self.tokenizer = AutoTokenizer.from_pretrained(self.local_dir)
        
        sess_options = SessionOptions()
        sess_options.graph_optimization_level = GraphOptimizationLevel.ORT_DISABLE_ALL
        
        self.model = ORTModelForCausalLM.from_pretrained(
            self.local_dir,
            subfolder="onnx", 
            file_name="model_fp16.onnx",
            use_cache=True,
            use_io_binding=False,
            provider=PROVIDERS[0],
            session_options=sess_options
        )

    def evaluate_single(self, context: str, question: str, student_answer: str, 
                       max_marks: int, grader_id: int = 1, 
                       reference_summary: Optional[str] = None) -> Dict:
        """
        Single grader evaluation with structured output.
        Paper insight: Use rigid templates with deterministic validation.
        
        Returns structured dict with:
        - analysis: str
        - score: int
        - raw_response: str
        """
        
        # Enhanced system prompt with reference grounding
        system_prompt = f"""You are Grader #{grader_id}, a strict Logic Validator for educational assessment.

YOUR GRADING ALGORITHM:
1. Compare Student Answer ONLY against the provided Context
2. IF Student Answer mentions facts NOT in Context β†’ PENALTY (-50% of marks)
3. IF Student Answer contradicts the Context β†’ PENALTY (-100% of marks)
4. IF Student Answer is vague/generic without specific facts β†’ SCORE: 0-20%
5. IF Student Answer accurately reflects Context β†’ SCORE: 80-100%

CRITICAL RULES:
[R1] Grade ONLY based on Context provided, not general knowledge
[R2] Penalize hallucinations (facts not in Context) heavily
[R3] Penalize contradictions (opposite meaning) completely
[R4] Reward specific, accurate paraphrasing from Context
[R5] Partial credit for partially correct answers

OUTPUT FORMAT (MANDATORY):
You MUST output in this exact format:

## Analysis
[Your detailed comparison of Student Answer vs Context]

## Score
[X]/{max_marks}

Do NOT deviate from this format."""

        # Add reference summary if provided (paper's key insight)
        reference_section = ""
        if reference_summary:
            reference_section = f"""

### REFERENCE SOLUTION (Perfect Answer Example):
{reference_summary}

Use this as calibration for what a 100% answer looks like."""

        user_prompt = f"""
### Context (Retrieved from Source):
{context}
{reference_section}

### Question:
{question}

### Student Answer:
{student_answer}

### Maximum Marks: {max_marks}

Provide your grading following the mandatory output format.
"""

        messages = [
            {"role": "system", "content": system_prompt},
            {"role": "user", "content": user_prompt}
        ]
        
        input_text = self.tokenizer.apply_chat_template(messages, tokenize=False, add_generation_prompt=True)
        inputs = self.tokenizer(input_text, return_tensors="pt")
        
        # Strict sampling for consistency
        with torch.no_grad():
            outputs = self.model.generate(
                **inputs,
                max_new_tokens=200,  # Increased for structured output
                temperature=0.1,     # Very strict
                top_p=0.2,
                do_sample=True,
                repetition_penalty=1.2
            )
        
        input_length = inputs['input_ids'].shape[1]
        response = self.tokenizer.decode(outputs[0][input_length:], skip_special_tokens=True)
        
        # Parse structured output
        analysis, score = self._parse_response(response, max_marks)
        
        return {
            "grader_id": grader_id,
            "analysis": analysis,
            "score": score,
            "raw_response": response
        }
    
    def _parse_response(self, response: str, max_marks: int) -> Tuple[str, int]:
        """
        Parse structured response to extract analysis and score.
        Paper insight: Deterministic parsing of rigid templates.
        """
        # Extract score using regex
        score_pattern = r'##\s*Score\s*\n\s*\[?(\d+)\]?/\d+'
        score_match = re.search(score_pattern, response, re.IGNORECASE)
        
        if score_match:
            score = int(score_match.group(1))
            score = min(score, max_marks)  # Cap at max
        else:
            # Fallback: look for any number/max pattern
            fallback_pattern = r'(\d+)\s*/\s*\d+'
            fallback_match = re.search(fallback_pattern, response)
            if fallback_match:
                score = min(int(fallback_match.group(1)), max_marks)
            else:
                score = 0  # Default if parsing fails
        
        # Extract analysis
        analysis_pattern = r'##\s*Analysis\s*\n(.*?)(?=##\s*Score|$)'
        analysis_match = re.search(analysis_pattern, response, re.DOTALL | re.IGNORECASE)
        
        if analysis_match:
            analysis = analysis_match.group(1).strip()
        else:
            # Fallback: use everything before score section
            analysis = response.split('##')[0].strip() if '##' in response else response
        
        return analysis, score


# ---------------------------------------------------------
# 4. NEW: SUPERVISOR AGGREGATOR
# Paper insight: Merge ensemble outputs into final decision
# ---------------------------------------------------------
# class SupervisorAggregator:
#     """
#     Aggregates multiple grader outputs into a final consensus grade.
#     Paper uses another LLM call; we use statistical aggregation for CPU efficiency.
#     """
    
#     def aggregate(self, grader_results: List[Dict], max_marks: int) -> Dict:
#         """
#         Aggregate K=3 grader results into final score.
        
#         Returns:
#         - final_score: int (median of ensemble)
#         - disagreement: int (max - min score)
#         - needs_review: bool (high disagreement flag)
#         - consensus_analysis: str
#         """
#         scores = [r['score'] for r in grader_results]
        
#         # Use median for robustness (paper uses supervisor LLM call)
#         final_score = int(np.median(scores))
        
#         # Calculate disagreement
#         disagreement = max(scores) - min(scores)
        
#         # Flag for manual review if disagreement too high
#         # Paper uses Dmax thresholds; we use 40% of max marks
#         needs_review = disagreement >= (0.4 * max_marks)
        
#         # Merge analyses
#         consensus_analysis = self._merge_analyses(grader_results, final_score, disagreement)
        
#         return {
#             "final_score": final_score,
#             "individual_scores": scores,
#             "disagreement": disagreement,
#             "needs_review": needs_review,
#             "consensus_analysis": consensus_analysis,
#             "grader_details": grader_results
#         }
    
#     def _merge_analyses(self, results: List[Dict], final_score: int, disagreement: int) -> str:
#         """Create consensus analysis from multiple graders."""
        
#         output = f"**Ensemble Grading Results** (Final: {final_score}, Disagreement: Β±{disagreement})\n\n"
        
#         for i, result in enumerate(results, 1):
#             output += f"**Grader {i} ({result['score']} points):**\n{result['analysis']}\n\n"
        
#         if disagreement > 0:
#             output += f"\n⚠️ **Note:** Graders disagreed by {disagreement} points. "
#             if disagreement >= 5:
#                 output += "Consider manual review."
        
#         return output


# ---------------------------------------------------------
# 5. ONNX RERANKER - UNCHANGED
# ---------------------------------------------------------
class OnnxReranker:
    def __init__(self):
        self.model_name = "Xenova/ms-marco-TinyBERT-L-2-v2"
        print(f"πŸ”„ Loading Reranker: {self.model_name}...")
        self.tokenizer = AutoTokenizer.from_pretrained(self.model_name)
        self.model = ORTModelForSequenceClassification.from_pretrained(
            self.model_name,
            export=False,
            provider=PROVIDERS[0]
        )

    def rank(self, query, docs, top_k=3):
        if not docs:
            return []
        
        pairs = [[query, doc.page_content] for doc in docs]
        
        inputs = self.tokenizer(
            pairs, 
            padding=True, 
            truncation=True, 
            max_length=512, 
            return_tensors="pt"
        )
        
        with torch.no_grad():
            outputs = self.model(**inputs)
        
        logits = outputs.logits
        if logits.shape[1] == 2:
            scores = logits[:, 1]
        else:
            scores = logits.flatten()
            
        scores = scores.numpy().tolist()
        doc_score_pairs = list(zip(docs, scores))
        doc_score_pairs.sort(key=lambda x: x[1], reverse=True)
        
        return [doc for doc, score in doc_score_pairs[:top_k]]


# ---------------------------------------------------------
# 6. ENHANCED MAIN SYSTEM WITH MULTI-STAGE PIPELINE
# ---------------------------------------------------------
class EnhancedVectorSystem:
    def __init__(self):
        self.vector_store = None
        self.embeddings = OnnxBgeEmbeddings()
        self.llm = LLMEvaluator()
        self.reranker = OnnxReranker()
        self.presence_checker = AnswerPresenceChecker()
        # self.supervisor = SupervisorAggregator()
        self.all_chunks = []
        self.total_chunks = 0
        self.reference_summary = None  # Store reference answer summary

    def process_content(self, file_obj, raw_text):
        has_file = file_obj is not None
        has_text = raw_text is not None and len(raw_text.strip()) > 0

        if has_file and has_text:
            return "❌ Error: Please provide EITHER a file OR paste text, not both at the same time."
        
        if not has_file and not has_text:
            return "⚠️ No content provided. Please upload a file or paste text."

        try:
            text = ""
            if has_file:
                if file_obj.name.endswith('.pdf'):
                    doc = fitz.open(file_obj.name)
                    for page in doc: 
                        text += page.get_text()
                elif file_obj.name.endswith('.txt'):
                    with open(file_obj.name, 'r', encoding='utf-8') as f: 
                        text = f.read()
                else:
                    return "❌ Error: Only .pdf and .txt supported."
            else:
                text = raw_text

            # Smaller chunks for precision
            text_splitter = RecursiveCharacterTextSplitter(chunk_size=500, chunk_overlap=100)
            texts = text_splitter.split_text(text)
            self.all_chunks = texts
            
            docs = [Document(page_content=t, metadata={"id": i}) for i, t in enumerate(texts)]
            self.total_chunks = len(docs)
            
            if not docs: 
                return "Content empty."

            self.vector_store = FAISS.from_documents(docs, self.embeddings)
            
            return f"βœ… Indexed {self.total_chunks} chunks. Ready for grading."
        except Exception as e:
            return f"Error: {str(e)}"
    
    def set_reference_answer(self, reference_text: str) -> str:
        """
        Set reference answer for grading calibration.
        Paper insight: Reference grounding prevents over-grading.
        """
        if not reference_text or len(reference_text.strip()) == 0:
            self.reference_summary = None
            return "ℹ️ Reference answer cleared."
        
        self.reference_summary = reference_text.strip()
        return f"βœ… Reference answer set ({len(self.reference_summary)} chars). Will be used to calibrate grading."

    # def process_query(self, question, student_answer, max_marks, enable_ensemble=True):
    def process_query(self, question, student_answer, max_marks):    
        """
        Enhanced grading pipeline with multi-stage processing.
        """
        if not self.vector_store: 
            return "⚠️ Please upload a file or paste text first.", ""
        if not question: 
            return "⚠️ Enter a question.", ""

        # Stage 1: Presence Check (Paper insight)
        is_present, presence_reason = self.presence_checker.check_presence(student_answer)
        
        if not is_present:
            return f"⚠️ **No valid answer detected:** {presence_reason}", f"**Score: 0/{max_marks}**\n\nNo answer to grade."

        # Stage 2: Retrieval + Reranking
        initial_docs = self.vector_store.similarity_search(question, k=15)
        top_docs = self.reranker.rank(question, initial_docs, top_k=3)
        expanded_context = "\n\n---\n\n".join([d.page_content for d in top_docs])

        evidence_display = f"### πŸ“š Retrieved Context (Top {len(top_docs)} chunks):\n"
        evidence_display += f"> {expanded_context[:500]}..."
        
        # Stage 3: Ensemble Grading (Paper's key innovation)
        # if not student_answer:
        #     return evidence_display, "Please enter a student answer to grade."
        
        # if enable_ensemble:
        #     # Run K=3 independent graders
        #     grader_results = []
        #     for grader_id in range(1, 4):  # K=3 ensemble
        #         result = self.llm.evaluate_single(
        #             context=expanded_context,
        #             question=question,
        #             student_answer=student_answer,
        #             max_marks=max_marks,
        #             grader_id=grader_id,
        #             reference_summary=self.reference_summary
        #         )
        #         grader_results.append(result)
            
        #     # Stage 4: Supervisor Aggregation
        #     final_result = self.supervisor.aggregate(grader_results, max_marks)
            
        #     # Format output
        #     llm_feedback = f"# πŸŽ“ Final Grade: {final_result['final_score']}/{max_marks}\n\n"
            
        #     if final_result['needs_review']:
        #         llm_feedback += "⚠️ **Manual Review Recommended** (High grader disagreement)\n\n"
            
        #     llm_feedback += final_result['consensus_analysis']
            
        #     # Add statistics
        #     llm_feedback += f"\n\n---\n**Grading Statistics:**\n"
        #     llm_feedback += f"- Individual Scores: {final_result['individual_scores']}\n"
        #     llm_feedback += f"- Score Range: {min(final_result['individual_scores'])}-{max(final_result['individual_scores'])}\n"
        #     llm_feedback += f"- Disagreement: Β±{final_result['disagreement']} points\n"
            
        # else:
        #     # Single grader mode (for comparison)
        #     result = self.llm.evaluate_single(
        #         context=expanded_context,
        #         question=question,
        #         student_answer=student_answer,
        #         max_marks=max_marks,
        #         grader_id=1,
        #         reference_summary=self.reference_summary
        #     )
        #     llm_feedback = f"# πŸŽ“ Grade: {result['score']}/{max_marks}\n\n{result['analysis']}"

        # return evidence_display, llm_feedback

        # Stage 3: Single Grading
        if not student_answer:
            return evidence_display, "Please enter a student answer to grade."
        
        # Single grader call
        result = self.llm.evaluate_single(
            context=expanded_context,
            question=question,
            student_answer=student_answer,
            max_marks=max_marks,
            grader_id=1,
            reference_summary=self.reference_summary
        )
        
        llm_feedback = f"# πŸŽ“ Grade: {result['score']}/{max_marks}\n\n{result['analysis']}"

        return evidence_display, llm_feedback


# ---------------------------------------------------------
# 7. GRADIO INTERFACE
# ---------------------------------------------------------
system = EnhancedVectorSystem()

with gr.Blocks(title="EduGenius AI Grader - Enhanced", theme=gr.themes.Soft()) as demo:
    gr.Markdown("# ⚑ EduGenius: Enhanced RAG-Based Grader")
    gr.Markdown("Powered by **Ensemble Grading**, **Reference Grounding** & **Presence Checking**")
    gr.Markdown("*Implements multi-stage pipeline from research: arXiv:2601.00730*")
    
    with gr.Row():
        with gr.Column(scale=1):
            gr.Markdown("### πŸ“„ Source Content")
            pdf_input = gr.File(label="Option A: Upload Document (PDF/TXT)")
            gr.Markdown("**OR**")
            text_input = gr.Textbox(label="Option B: Paste Text", placeholder="Paste context here...", lines=5)
            
            upload_btn = gr.Button("πŸ“₯ Index Content", variant="primary")
            status_msg = gr.Textbox(label="Status", interactive=False)
            
            gr.Markdown("---")
            gr.Markdown("### 🎯 Reference Answer (Optional)")
            gr.Markdown("*Providing a reference answer improves grading accuracy*")
            reference_input = gr.Textbox(
                label="Perfect Answer Example", 
                placeholder="What would a 100% answer look like?",
                lines=3
            )
            ref_btn = gr.Button("Set Reference", variant="secondary")
            ref_status = gr.Textbox(label="Reference Status", interactive=False)

        with gr.Column(scale=2):
            gr.Markdown("### ❓ Grading Interface")
            
            with gr.Row():
                q_input = gr.Textbox(label="Question", scale=2)
                max_marks = gr.Slider(minimum=1, maximum=20, value=5, step=1, label="Max Marks")
            
            a_input = gr.TextArea(label="Student Answer", lines=4)
            
            with gr.Row():
                ensemble_check = gr.Checkbox(label="Enable Ensemble Grading (K=3)", value=True)
                run_btn = gr.Button("πŸš€ Grade Answer", variant="primary", scale=2)
            
            gr.Markdown("---")
            
            with gr.Row():
                with gr.Column():
                    evidence_box = gr.Markdown(label="πŸ“š Retrieved Context")
                with gr.Column():
                    grade_box = gr.Markdown(label="πŸŽ“ Grading Result")

    # Event handlers
    upload_btn.click(
        system.process_content, 
        inputs=[pdf_input, text_input], 
        outputs=[status_msg]
    )
    
    ref_btn.click(
        system.set_reference_answer,
        inputs=[reference_input],
        outputs=[ref_status]
    )
    
    # run_btn.click(
    #     system.process_query, 
    #     inputs=[q_input, a_input, max_marks, ensemble_check], 
    #     outputs=[evidence_box, grade_box]
    # )

    run_btn.click(
        system.process_query, 
        inputs=[q_input, a_input, max_marks],  # Removed ensemble_check
        outputs=[evidence_box, grade_box]
    )

if __name__ == "__main__":
    demo.launch()