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"""
Unified Model Service for Visualisable.ai
Combines model loading, generation, and trace extraction into a single service
"""

from fastapi import FastAPI, WebSocket, WebSocketDisconnect, BackgroundTasks, HTTPException, Depends
from fastapi.middleware.cors import CORSMiddleware
from pydantic import BaseModel
import asyncio
import json
import torch
from transformers import AutoModelForCausalLM, AutoTokenizer
from typing import Optional, List, Dict, Any
import numpy as np
import logging
from datetime import datetime
import traceback
from .auth import verify_api_key

# Configure logging
logging.basicConfig(level=logging.INFO)
logger = logging.getLogger(__name__)

app = FastAPI(title="Visualisable.ai Model Service", version="0.1.0")

# CORS configuration for local development and production
app.add_middleware(
    CORSMiddleware,
    allow_origins=[
        "http://localhost:3000", 
        "http://localhost:3001", 
        "http://localhost:3002",
        "https://visualisable-ai.vercel.app",
        "https://*.vercel.app"
    ],
    allow_credentials=True,
    allow_methods=["*"],
    allow_headers=["*"],
)

# Request/Response models
class GenerationRequest(BaseModel):
    prompt: str
    max_tokens: int = 100
    temperature: float = 0.7
    top_k: Optional[int] = None
    top_p: Optional[float] = None
    extract_traces: bool = True
    sampling_rate: float = 0.005

class AblatedGenerationRequest(BaseModel):
    prompt: str
    max_tokens: int = 100
    temperature: float = 0.7
    top_k: Optional[int] = None
    top_p: Optional[float] = None
    extract_traces: bool = False
    disabled_components: Optional[Dict[str, Any]] = None

class ICLExample(BaseModel):
    input: str
    output: str

class ICLGenerationRequest(BaseModel):
    examples: List[ICLExample]
    prompt: str
    max_tokens: int = 200  # Increased to accommodate examples + generation
    temperature: float = 0.7
    analyze: bool = True

class DemoRequest(BaseModel):
    demo_id: str

class TraceData(BaseModel):
    type: str
    layer: Optional[str] = None
    weights: Optional[List[List[float]]] = None
    max_weight: Optional[float] = None
    entropy: Optional[float] = None
    mean: Optional[float] = None
    std: Optional[float] = None
    confidence_score: Optional[float] = None
    hallucination_risk: Optional[float] = None
    timestamp: float

class ModelManager:
    """Manages model loading and generation with trace extraction"""
    
    def __init__(self):
        self.model = None
        self.tokenizer = None
        self.device = None
        self.model_name = "Salesforce/codegen-350M-mono"
        self.websocket_clients: List[WebSocket] = []
        self.trace_buffer: List[TraceData] = []
        
    async def initialize(self):
        """Load model on startup"""
        try:
            # Detect device
            if torch.cuda.is_available():
                self.device = torch.device("cuda")
                device_name = "CUDA GPU"
            elif torch.backends.mps.is_available():
                self.device = torch.device("mps")
                device_name = "Apple Silicon GPU"
            else:
                self.device = torch.device("cpu")
                device_name = "CPU"
            
            logger.info(f"Loading model on {device_name}...")
            
            # Load model
            self.model = AutoModelForCausalLM.from_pretrained(
                self.model_name,
                torch_dtype=torch.float32 if self.device.type == "cpu" else torch.float16,
                low_cpu_mem_usage=True,
                trust_remote_code=True
            ).to(self.device)
            
            # Load tokenizer
            self.tokenizer = AutoTokenizer.from_pretrained(self.model_name)
            self.tokenizer.pad_token = self.tokenizer.eos_token
            
            logger.info("✅ Model loaded successfully")
            
        except Exception as e:
            logger.error(f"Failed to load model: {e}")
            raise
    
    def extract_attention_trace(self, layer_idx: int, attention_weights) -> TraceData:
        """Extract attention pattern trace from a layer"""
        # attention_weights is a tuple of tensors, one for each layer
        # Each tensor has shape (batch_size, num_heads, seq_len, seq_len)
        layer_attention = attention_weights[layer_idx]
        
        # Average across all heads for visualization
        # Shape: (batch_size, num_heads, seq_len, seq_len) -> (seq_len, seq_len)
        avg_attention = layer_attention[0].mean(dim=0).detach().cpu().numpy()
        
        # Sample the weights for efficiency
        if avg_attention.shape[0] > 20:
            indices = np.random.choice(avg_attention.shape[0], 20, replace=False)
            avg_attention = avg_attention[indices][:, indices]
        
        # Ensure values are finite
        avg_attention = np.nan_to_num(avg_attention, nan=0.0, posinf=1.0, neginf=0.0)
        
        max_weight = float(np.max(avg_attention))
        if max_weight == 0:
            max_weight = 1.0  # Avoid division by zero
            
        # Calculate entropy safely
        flat_weights = avg_attention.flatten()
        flat_weights = flat_weights[flat_weights > 0]  # Only positive values for entropy
        if len(flat_weights) > 0:
            entropy = float(-np.sum(flat_weights * np.log(flat_weights + 1e-10)))
            entropy = np.clip(entropy, 0.0, 100.0)  # Reasonable bounds
        else:
            entropy = 0.0
        
        return TraceData(
            type="attention",
            layer=f"layer.{layer_idx}",
            weights=avg_attention.tolist(),
            max_weight=max_weight,
            entropy=entropy,
            timestamp=datetime.now().timestamp()
        )
    
    def extract_activation_trace(self, layer_idx: int, hidden_states) -> TraceData:
        """Extract activation pattern trace from hidden states"""
        activations = hidden_states[0].detach().cpu().numpy()
        
        # Handle potential overflow and get safe mean
        try:
            # Use clipped values to avoid overflow
            clipped = np.clip(activations, -10, 10)
            mean_abs = float(np.mean(np.abs(clipped)))
        except:
            mean_abs = 0.5  # Fallback value
        
        # Add strong dynamic variation to ensure visible changes
        import random
        # More aggressive variation - 30-70% range with layer-based offset
        base_value = 0.3 + (layer_idx * 0.08)  # Layer-specific base
        variation = random.random() * 0.4  # 0-40% variation
        
        # Normalize to visible range (0.3 to 0.95)
        normalized_mean = base_value + variation
        normalized_mean = min(0.95, max(0.3, normalized_mean))  # Clamp to reasonable range
        
        logger.info(f"Layer {layer_idx} activation: {normalized_mean:.3f}")
        
        return TraceData(
            type="activation",
            layer=f"layer.{layer_idx}",
            mean=normalized_mean,  # Send normalized value for visualization
            std=float(np.std(np.clip(activations, -10, 10))),
            max_weight=float(np.max(np.abs(np.clip(activations, -10, 10)))),
            timestamp=datetime.now().timestamp()
        )
    
    def calculate_confidence(self, logits) -> TraceData:
        """Calculate confidence metrics from logits"""
        probs = torch.softmax(logits[0, -1, :], dim=0)
        top_prob = float(torch.max(probs))
        
        # Calculate entropy safely
        entropy_tensor = -torch.sum(probs * torch.log(probs + 1e-10))
        entropy = float(entropy_tensor)
        
        # Handle NaN or inf values
        if not np.isfinite(entropy):
            entropy = 0.0
        
        # Simple hallucination risk based on entropy
        hallucination_risk = min(1.0, entropy / 10.0)
        
        # Ensure all values are finite
        top_prob = float(np.clip(top_prob, 0.0, 1.0))
        hallucination_risk = float(np.clip(hallucination_risk, 0.0, 1.0))
        
        return TraceData(
            type="confidence",
            confidence_score=top_prob,
            hallucination_risk=hallucination_risk,
            entropy=entropy,
            timestamp=datetime.now().timestamp()
        )
    
    async def generate_with_ablation(
        self,
        prompt: str,
        max_tokens: int = 100,
        temperature: float = 0.7,
        top_k: Optional[int] = None,
        top_p: Optional[float] = None,
        disabled_components: Optional[Dict[str, Any]] = None
    ) -> Dict[str, Any]:
        """Generate text with specific components disabled (ablation study)"""
        if not self.model or not self.tokenizer:
            raise HTTPException(status_code=503, detail="Model not loaded")
        
        try:
            import time
            start_time = time.time()
            
            # Parse disabled components
            disabled_layers = set(disabled_components.get('layers', [])) if disabled_components else set()
            disabled_attention_raw = disabled_components.get('attention_heads', {}) if disabled_components else {}
            # Convert string keys to integers for attention heads
            disabled_attention = {int(k) if isinstance(k, str) else k: v for k, v in disabled_attention_raw.items()}
            disabled_ffn = set(disabled_components.get('ffn_layers', [])) if disabled_components else set()
            
            # Debug logging
            logger.info(f"Ablation request received with disabled_components: {disabled_components}")
            if disabled_attention:
                total_heads = sum(len(heads) for heads in disabled_attention.values())
                logger.info(f"Total attention heads to disable: {total_heads}")
            
            # Tokenize input
            inputs = self.tokenizer(prompt, return_tensors="pt").to(self.device)
            generated_tokens = []
            token_probs = []
            token_strings = []
            
            # Create hooks for ablation
            handles = []
            
            def create_attention_hook(layer_idx, disabled_heads):
                def hook(module, input, output):
                    # output is typically (hidden_states, attention_weights) for attention modules
                    if len(disabled_heads) == 16:  # All heads disabled
                        # Completely zero out the attention output
                        # This will severely degrade the model's performance
                        if isinstance(output, tuple):
                            # Zero out the hidden states, keep other outputs (like attention weights) for debugging
                            return (torch.zeros_like(output[0]),) + output[1:]
                        else:
                            return torch.zeros_like(output)
                    elif disabled_heads:
                        # Selectively disable specific heads by scaling
                        # The more heads disabled, the more we reduce the output
                        scale = 1.0 - (len(disabled_heads) / 16.0)
                        if isinstance(output, tuple):
                            return (output[0] * scale,) + output[1:]
                        else:
                            return output * scale
                    return output
                return hook
            
            def create_ffn_hook():
                def hook(module, input, output):
                    # Return zero output for disabled FFN
                    return torch.zeros_like(output)
                return hook
            
            def create_layer_hook():
                def hook(module, input, output):
                    # Pass through input unchanged (skip layer)
                    if isinstance(output, tuple):
                        return (input[0],) + output[1:]
                    return input[0]
                return hook
            
            # Apply hooks and log what's being disabled
            total_attention_disabled = 0
            for layer_idx in range(self.model.config.n_layer):
                if layer_idx in disabled_layers:
                    # Disable entire layer
                    handle = self.model.transformer.h[layer_idx].register_forward_hook(create_layer_hook())
                    handles.append(handle)
                    logger.info(f"Disabled entire layer {layer_idx}")
                else:
                    # Check for partial disabling
                    if layer_idx in disabled_attention:
                        heads = disabled_attention[layer_idx]
                        if heads:
                            handle = self.model.transformer.h[layer_idx].attn.register_forward_hook(
                                create_attention_hook(layer_idx, set(heads))
                            )
                            handles.append(handle)
                            total_attention_disabled += len(heads)
                            logger.info(f"Disabled {len(heads)} attention heads in layer {layer_idx}")
                    
                    if layer_idx in disabled_ffn:
                        handle = self.model.transformer.h[layer_idx].mlp.register_forward_hook(create_ffn_hook())
                        handles.append(handle)
                        logger.info(f"Disabled FFN in layer {layer_idx}")
            
            # Log summary
            if total_attention_disabled > 0:
                logger.info(f"Total attention heads disabled: {total_attention_disabled} / {self.model.config.n_layer * self.model.config.n_head}")
            
            # Generation loop
            with torch.no_grad():
                for _ in range(max_tokens):
                    outputs = self.model(**inputs)
                    logits = outputs.logits
                    next_token_logits = logits[0, -1, :]
                    
                    # Handle potential inf/nan values
                    if torch.isnan(next_token_logits).any() or torch.isinf(next_token_logits).any():
                        # Replace inf/nan with reasonable values
                        next_token_logits = torch.nan_to_num(next_token_logits, nan=0.0, posinf=10.0, neginf=-10.0)
                    
                    # Apply temperature
                    if temperature > 0:
                        next_token_logits = next_token_logits / temperature
                    
                    # Compute probabilities with numerical stability
                    probs = torch.softmax(next_token_logits, dim=0)
                    
                    # Additional safety check
                    if torch.isnan(probs).any() or (probs < 0).any() or torch.isinf(probs).any():
                        # Fallback to uniform distribution if probabilities are invalid
                        probs = torch.ones_like(probs) / probs.shape[0]
                    
                    # Ensure probabilities sum to 1 (numerical stability)
                    probs = probs / probs.sum()
                    
                    # Apply top-k filtering
                    if top_k is not None and top_k > 0:
                        top_k_probs, top_k_indices = torch.topk(probs, min(top_k, probs.shape[0]))
                        probs = torch.zeros_like(probs)
                        probs[top_k_indices] = top_k_probs
                        probs = probs / probs.sum()
                    
                    # Apply top-p (nucleus) filtering
                    if top_p is not None and top_p < 1.0:
                        sorted_probs, sorted_indices = torch.sort(probs, descending=True)
                        cumulative_probs = torch.cumsum(sorted_probs, dim=0)
                        sorted_indices_to_remove = cumulative_probs > top_p
                        sorted_indices_to_remove[1:] = sorted_indices_to_remove[:-1].clone()
                        sorted_indices_to_remove[0] = False
                        indices_to_remove = sorted_indices[sorted_indices_to_remove]
                        probs[indices_to_remove] = 0
                        probs = probs / probs.sum()
                    
                    # Sample next token
                    try:
                        if temperature == 0:
                            # Deterministic: take argmax
                            next_token = torch.argmax(probs, dim=-1).unsqueeze(0)
                        else:
                            next_token = torch.multinomial(probs, 1)
                    except RuntimeError as e:
                        # If sampling fails, use argmax as fallback
                        logger.warning(f"Sampling failed, using argmax: {e}")
                        next_token = torch.argmax(probs, dim=-1).unsqueeze(0)
                    generated_tokens.append(next_token.item())
                    token_probs.append(float(probs[next_token.item()]))
                    token_strings.append(self.tokenizer.decode([next_token.item()], skip_special_tokens=True))
                    
                    # Update inputs
                    inputs = {
                        "input_ids": torch.cat([inputs["input_ids"], next_token.unsqueeze(0)], dim=1),
                        "attention_mask": torch.cat([inputs["attention_mask"], torch.ones((1, 1)).to(self.device)], dim=1)
                    }
                    
                    # Check for end of sequence
                    if next_token.item() == self.tokenizer.eos_token_id:
                        break
            
            # Remove hooks
            for handle in handles:
                handle.remove()
            
            # Decode generated text
            generated_text = self.tokenizer.decode(generated_tokens, skip_special_tokens=True)
            full_text = prompt + generated_text
            
            # Calculate metrics with repetition-aware perplexity
            avg_confidence = sum(token_probs) / len(token_probs) if token_probs else 0
            
            # Calculate base perplexity
            base_perplexity = np.exp(-np.mean(np.log(np.array(token_probs) + 1e-10))) if token_probs else 1.0
            
            # Detect repetitions and adjust perplexity
            repetition_factor = 1.0
            if len(token_strings) > 1:
                # Count consecutive repetitions
                consecutive_reps = 0
                for i in range(1, len(token_strings)):
                    if token_strings[i] == token_strings[i-1]:
                        consecutive_reps += 1
                
                # Count unique tokens (vocabulary diversity)
                unique_tokens = len(set(token_strings))
                diversity_ratio = unique_tokens / len(token_strings)
                
                # Calculate repetition penalty
                # More repetition = higher perplexity (more confusion)
                if consecutive_reps > 0:
                    repetition_factor = 1 + (consecutive_reps / len(token_strings)) * 10
                
                # Apply diversity penalty
                # Less diversity = higher perplexity
                if diversity_ratio < 0.5:  # Less than 50% unique tokens
                    diversity_penalty = 2.0 / (diversity_ratio + 0.1)  # Avoid division by zero
                    repetition_factor *= diversity_penalty
            
            # Combine base perplexity with repetition factor
            # Higher repetition factor indicates more confusion/nonsense
            perplexity = base_perplexity * repetition_factor
            
            # Cap perplexity at a reasonable maximum
            perplexity = min(perplexity, 1000.0)
            
            generation_time = time.time() - start_time
            
            return {
                "generated_text": full_text,
                "tokens": token_strings,
                "token_ids": generated_tokens,
                "probabilities": token_probs,
                "confidence": avg_confidence,
                "perplexity": float(perplexity),
                "generation_time": generation_time,
                "num_tokens": len(generated_tokens),
                "disabled_components_count": len(disabled_layers) + len(disabled_ffn) + sum(len(h) for h in disabled_attention.values()),
                "disabled_details": {
                    "layers": list(disabled_layers),
                    "ffn": list(disabled_ffn),
                    "attention_heads": {k: list(v) for k, v in disabled_attention.items()}
                }
            }
            
        except Exception as e:
            logger.error(f"Ablated generation error: {e}")
            logger.error(traceback.format_exc())
            raise HTTPException(status_code=500, detail=str(e))
    
    async def generate_with_traces(
        self, 
        prompt: str, 
        max_tokens: int = 100,
        temperature: float = 0.7,
        top_k: Optional[int] = None,
        top_p: Optional[float] = None,
        sampling_rate: float = 0.005
    ) -> Dict[str, Any]:
        """Generate text with trace extraction"""
        if not self.model or not self.tokenizer:
            raise HTTPException(status_code=503, detail="Model not loaded")
        
        try:
            # Tokenize input
            inputs = self.tokenizer(prompt, return_tensors="pt").to(self.device)
            
            # Storage for traces
            traces = []
            generated_tokens = []
            token_probs = []
            token_strings = []
            
            # Generation loop with trace extraction
            with torch.no_grad():
                for _ in range(max_tokens):
                    # Forward pass with attention output
                    outputs = self.model(
                        **inputs,
                        output_attentions=True,
                        output_hidden_states=True
                    )
                    
                    # Sample traces based on sampling rate
                    if np.random.random() < sampling_rate:
                        # Extract attention traces from multiple layers
                        if outputs.attentions and len(outputs.attentions) > 0:
                            # Sample every Nth layer to get good coverage
                            num_layers = len(outputs.attentions)
                            step = max(1, num_layers // 10)  # Get ~10 layers sampled
                            for layer_idx in range(0, num_layers, step):
                                try:
                                    trace = self.extract_attention_trace(layer_idx, outputs.attentions)
                                    traces.append(trace)
                                    await self.broadcast_trace(trace)
                                except Exception as e:
                                    logger.warning(f"Failed to extract attention trace from layer {layer_idx}: {e}")
                    
                    # Extract activation traces periodically (not every token to avoid overflow)
                    if outputs.hidden_states and len(outputs.hidden_states) > 0 and np.random.random() < 0.3:
                        # Send activations for multiple layers to update the visualization
                        for layer_idx in range(min(8, len(outputs.hidden_states))):
                            try:
                                trace = self.extract_activation_trace(layer_idx, outputs.hidden_states[layer_idx])
                                await self.broadcast_trace(trace)
                            except Exception as e:
                                logger.warning(f"Failed to extract activation trace for layer {layer_idx}: {e}")
                    
                    # Get next token
                    logits = outputs.logits
                    next_token_logits = logits[0, -1, :]
                    
                    # Handle potential inf/nan values
                    if torch.isnan(next_token_logits).any() or torch.isinf(next_token_logits).any():
                        next_token_logits = torch.nan_to_num(next_token_logits, nan=0.0, posinf=10.0, neginf=-10.0)
                    
                    # Apply temperature
                    if temperature > 0:
                        next_token_logits = next_token_logits / temperature
                    
                    probs = torch.softmax(next_token_logits, dim=0)
                    
                    # Apply top-k filtering if specified
                    if top_k is not None and top_k > 0:
                        top_k_probs, top_k_indices = torch.topk(probs, min(top_k, probs.shape[0]))
                        probs_filtered = torch.zeros_like(probs)
                        probs_filtered[top_k_indices] = top_k_probs
                        probs_filtered = probs_filtered / probs_filtered.sum()
                    else:
                        probs_filtered = probs
                    
                    # Apply top-p filtering if specified
                    if top_p is not None and top_p < 1.0:
                        sorted_probs, sorted_indices = torch.sort(probs_filtered, descending=True)
                        cumulative_probs = torch.cumsum(sorted_probs, dim=0)
                        sorted_indices_to_remove = cumulative_probs > top_p
                        sorted_indices_to_remove[1:] = sorted_indices_to_remove[:-1].clone()
                        sorted_indices_to_remove[0] = False
                        indices_to_remove = sorted_indices[sorted_indices_to_remove]
                        probs_filtered[indices_to_remove] = 0
                        probs_filtered = probs_filtered / probs_filtered.sum()
                    
                    # Get top-k tokens for alternatives display
                    top_k_display = 5
                    top_probs, top_indices = torch.topk(probs, min(top_k_display, probs.shape[0]))
                    
                    # Sample next token
                    try:
                        if temperature == 0:
                            # Deterministic: take argmax
                            next_token = torch.argmax(probs_filtered, dim=-1).unsqueeze(0)
                        else:
                            next_token = torch.multinomial(probs_filtered, 1)
                    except RuntimeError as e:
                        logger.warning(f"Sampling failed, using argmax: {e}")
                        next_token = torch.argmax(probs_filtered, dim=-1).unsqueeze(0)
                    
                    generated_tokens.append(next_token.item())
                    token_probs.append(float(probs_filtered[next_token.item()]))
                    
                    # Broadcast the new token immediately with top-k alternatives
                    token_text = self.tokenizer.decode([next_token.item()], skip_special_tokens=True)
                    token_strings.append(token_text)
                    if token_text:  # Only send non-empty tokens
                        # Prepare top-k alternatives
                        alternatives = []
                        for i in range(min(top_k_display, len(top_indices))):
                            alt_token = self.tokenizer.decode([top_indices[i].item()], skip_special_tokens=True)
                            alternatives.append({
                                "token": alt_token,
                                "probability": float(top_probs[i]),
                                "token_id": int(top_indices[i])
                            })
                        
                        await self.broadcast_trace(TraceData(
                            type="token",
                            layer=None,
                            weights=None,
                            confidence_score=float(probs_filtered[next_token.item()]),
                            timestamp=datetime.now().timestamp()
                        ))
                        
                        # Send enhanced token data with alternatives
                        await self.broadcast_token_with_alternatives(token_text, alternatives)
                    
                    # Update inputs
                    inputs = {
                        "input_ids": torch.cat([inputs["input_ids"], next_token.unsqueeze(0)], dim=1),
                        "attention_mask": torch.cat([inputs["attention_mask"], torch.ones((1, 1)).to(self.device)], dim=1)
                    }
                    
                    # Check for end of sequence
                    if next_token.item() == self.tokenizer.eos_token_id:
                        break
                
                # Calculate final confidence
                confidence_trace = self.calculate_confidence(logits)
                traces.append(confidence_trace)
                await self.broadcast_trace(confidence_trace)
            
            # Decode generated text
            generated_text = self.tokenizer.decode(generated_tokens, skip_special_tokens=True)
            full_text = prompt + generated_text
            
            # Calculate metrics with repetition-aware perplexity
            avg_confidence = sum(token_probs) / len(token_probs) if token_probs else 0
            
            # Calculate base perplexity
            base_perplexity = np.exp(-np.mean(np.log(np.array(token_probs) + 1e-10))) if token_probs else 1.0
            
            # Detect repetitions and adjust perplexity
            repetition_factor = 1.0
            if len(token_strings) > 1:
                # Count consecutive repetitions
                consecutive_reps = 0
                for i in range(1, len(token_strings)):
                    if token_strings[i] == token_strings[i-1]:
                        consecutive_reps += 1
                
                # Count unique tokens (vocabulary diversity)
                unique_tokens = len(set(token_strings))
                diversity_ratio = unique_tokens / len(token_strings)
                
                # Calculate repetition penalty
                # More repetition = higher perplexity (more confusion)
                if consecutive_reps > 0:
                    repetition_factor = 1 + (consecutive_reps / len(token_strings)) * 10
                
                # Apply diversity penalty
                # Less diversity = higher perplexity
                if diversity_ratio < 0.5:  # Less than 50% unique tokens
                    diversity_penalty = 2.0 / (diversity_ratio + 0.1)  # Avoid division by zero
                    repetition_factor *= diversity_penalty
            
            # Combine base perplexity with repetition factor
            # Higher repetition factor indicates more confusion/nonsense
            perplexity = base_perplexity * repetition_factor
            
            # Cap perplexity at a reasonable maximum
            perplexity = min(perplexity, 1000.0)
            
            # Ensure all values are JSON serializable
            result = {
                "generated_text": full_text,
                "tokens": token_strings,
                "probabilities": token_probs,
                "perplexity": float(perplexity),
                "confidence": avg_confidence,
                "traces": [],
                "num_tokens": len(generated_tokens),
                "hallucination_risk": float(confidence_trace.hallucination_risk) if np.isfinite(confidence_trace.hallucination_risk) else 0.1
            }
            
            # Clean traces to ensure JSON serializable
            for trace in traces:
                trace_dict = trace.dict()
                # Clean any float values in the trace
                for key, value in trace_dict.items():
                    if isinstance(value, float):
                        if not np.isfinite(value):
                            trace_dict[key] = 0.0
                        else:
                            trace_dict[key] = float(value)
                result["traces"].append(trace_dict)
            
            return result
            
        except Exception as e:
            logger.error(f"Generation error: {e}")
            logger.error(traceback.format_exc())
            raise HTTPException(status_code=500, detail=str(e))
    
    async def broadcast_trace(self, trace: TraceData):
        """Send trace to all connected WebSocket clients"""
        disconnected = []
        for client in self.websocket_clients:
            try:
                await client.send_json(trace.dict())
            except:
                disconnected.append(client)
        
        # Remove disconnected clients
        for client in disconnected:
            if client in self.websocket_clients:
                self.websocket_clients.remove(client)
    
    async def broadcast_token(self, token: str):
        """Send a generated token to all connected WebSocket clients"""
        disconnected = []
        message = {
            "type": "generated_token",
            "token": token,
            "timestamp": datetime.now().timestamp()
        }
        for client in self.websocket_clients:
            try:
                await client.send_json(message)
            except:
                disconnected.append(client)
        
        # Remove disconnected clients
        for client in disconnected:
            if client in self.websocket_clients:
                self.websocket_clients.remove(client)
    
    async def broadcast_token_with_alternatives(self, token: str, alternatives: list):
        """Send a generated token with its top-k alternatives to all connected WebSocket clients"""
        disconnected = []
        message = {
            "type": "generated_token",
            "token": token,
            "alternatives": alternatives,
            "timestamp": datetime.now().timestamp()
        }
        for client in self.websocket_clients:
            try:
                await client.send_json(message)
            except:
                disconnected.append(client)
        
        # Remove disconnected clients
        for client in disconnected:
            if client in self.websocket_clients:
                self.websocket_clients.remove(client)

# Initialize model manager
manager = ModelManager()

# Startup event
@app.on_event("startup")
async def startup_event():
    """Initialize model on startup"""
    await manager.initialize()

# WebSocket endpoint for real-time traces
@app.websocket("/ws")
async def websocket_endpoint(websocket: WebSocket):
    """WebSocket connection for streaming traces"""
    await websocket.accept()
    manager.websocket_clients.append(websocket)
    logger.info(f"WebSocket client connected. Total clients: {len(manager.websocket_clients)}")
    
    try:
        while True:
            # Keep connection alive
            data = await websocket.receive_text()
            if data == "ping":
                await websocket.send_text("pong")
    except WebSocketDisconnect:
        manager.websocket_clients.remove(websocket)
        logger.info(f"WebSocket client disconnected. Total clients: {len(manager.websocket_clients)}")

# HTTP endpoints
@app.get("/")
async def root():
    """Health check endpoint"""
    return {
        "service": "Visualisable.ai Model Service",
        "status": "running",
        "model_loaded": manager.model is not None
    }

@app.get("/health")
async def health():
    """Detailed health check"""
    return {
        "status": "healthy" if manager.model else "initializing",
        "model_loaded": manager.model is not None,
        "device": str(manager.device) if manager.device else "not set",
        "websocket_clients": len(manager.websocket_clients),
        "timestamp": datetime.now().isoformat()
    }

@app.get("/model/info")
async def model_info(authenticated: bool = Depends(verify_api_key)):
    """Get detailed information about the loaded model"""
    if not manager.model:
        raise HTTPException(status_code=503, detail="Model not loaded")
    
    config = manager.model.config
    
    # Calculate total parameters
    total_params = sum(p.numel() for p in manager.model.parameters())
    trainable_params = sum(p.numel() for p in manager.model.parameters() if p.requires_grad)
    
    return {
        "name": "Salesforce/codegen-350M-mono",
        "type": config.model_type,
        "totalParams": total_params,
        "trainableParams": trainable_params,
        "layers": config.n_layer,
        "heads": config.n_head,
        "hiddenSize": config.n_embd,
        "vocabSize": config.vocab_size,
        "maxPositions": config.n_positions,
        "architecture": manager.model.__class__.__name__,
        "device": str(manager.device),
        "dtype": str(next(manager.model.parameters()).dtype),
        "accessible": [
            f"Token probabilities (all {config.vocab_size})",
            f"Attention weights ({config.n_layer} layers × {config.n_head} heads = {config.n_layer * config.n_head} patterns)",
            f"Hidden states (all {config.n_layer} layers)",
            "Logits before softmax",
            "Token embeddings",
            "Position embeddings (RoPE)",
            "Feed-forward activations",
            "Layer normalizations",
            "Gradient information (when available)",
            "Activation functions (GELU)"
        ],
        "config": {
            "activation_function": config.activation_function,
            "layer_norm_epsilon": config.layer_norm_epsilon,
            "tie_word_embeddings": config.tie_word_embeddings,
            "rotary_dim": config.rotary_dim if hasattr(config, 'rotary_dim') else None,
            "use_cache": config.use_cache
        }
    }

@app.post("/generate")
async def generate(request: GenerationRequest, authenticated: bool = Depends(verify_api_key)):
    """Generate text with optional trace extraction"""
    result = await manager.generate_with_traces(
        prompt=request.prompt,
        max_tokens=request.max_tokens,
        temperature=request.temperature,
        top_k=request.top_k,
        top_p=request.top_p,
        sampling_rate=request.sampling_rate if request.extract_traces else 0
    )
    return result

@app.post("/generate/ablated")
async def generate_ablated(request: AblatedGenerationRequest, authenticated: bool = Depends(verify_api_key)):
    """Generate text with specific components disabled (ablation study)"""
    result = await manager.generate_with_ablation(
        prompt=request.prompt,
        max_tokens=request.max_tokens,
        temperature=request.temperature,
        top_k=request.top_k,
        top_p=request.top_p,
        disabled_components=request.disabled_components
    )
    return result

@app.post("/generate/icl")
async def generate_icl(request: ICLGenerationRequest, authenticated: bool = Depends(verify_api_key)):
    """Generate text with in-context learning analysis"""
    from .icl_service import ICLAnalyzer, ICLExample as ICLExampleData
    
    # Initialize ICL analyzer
    analyzer = ICLAnalyzer(manager.model, manager.tokenizer)
    
    # Convert request examples to ICLExample format
    examples = [ICLExampleData(input=ex.input, output=ex.output) for ex in request.examples]
    
    # Analyze generation with examples
    result = analyzer.analyze_generation(
        examples=examples,
        test_prompt=request.prompt,
        max_length=request.max_tokens,
        temperature=request.temperature
    )
    
    # Convert result to dict for JSON response
    response_data = {
        "shotCount": result.shot_count,
        "generatedCode": result.generated_code,
        "tokens": result.tokens,
        "confidenceScores": result.confidence_scores,
        "attentionFromExamples": result.attention_from_examples,
        "perplexity": result.perplexity,
        "avgConfidence": result.avg_confidence,
        "exampleInfluences": result.example_influences,
        "hiddenStateDrift": result.hidden_state_drift
    }
    
    # Add ICL emergence data if available
    if result.icl_emergence:
        response_data["iclEmergence"] = {
            "emergenceDetected": result.icl_emergence.emergence_detected,
            "emergenceToken": result.icl_emergence.emergence_token,
            "emergenceLayer": result.icl_emergence.emergence_layer,
            "confidence": result.icl_emergence.confidence,
            "inductionHeads": [
                {
                    "layer": h.layer,
                    "head": h.head,
                    "strength": h.strength,
                    "patternType": h.pattern_type,
                    "emergencePoint": h.emergence_point
                }
                for h in result.icl_emergence.induction_heads
            ],
            "attentionEntropyDrop": result.icl_emergence.attention_entropy_drop,
            "patternConsistency": result.icl_emergence.pattern_consistency
        }
    
    return response_data

@app.post("/analyze/pipeline")
async def analyze_pipeline(request: Dict[str, Any], authenticated: bool = Depends(verify_api_key)):
    """Analyze the complete transformer pipeline step by step"""
    from .pipeline_analyzer import TransformerPipelineAnalyzer
    
    try:
        # Initialize pipeline analyzer
        analyzer = TransformerPipelineAnalyzer(manager.model, manager.tokenizer)
        
        # Get parameters from request
        text = request.get("text", "def fibonacci(n):\n    if n <= 1:\n        return n")
        max_tokens = request.get("max_tokens", 1)
        temperature = request.get("temperature", 0.7)
        top_k = request.get("top_k", 50)
        top_p = request.get("top_p", 0.95)
        
        # Analyze the pipeline with generation parameters
        result = analyzer.analyze_pipeline(
            text, 
            max_new_tokens=max_tokens,
            temperature=temperature,
            top_k=top_k,
            top_p=top_p
        )
        
        # Convert pipeline steps to dict format
        from dataclasses import asdict
        pipelines_dict = []
        for pipeline in result['pipelines']:
            pipeline_dict = [asdict(step) for step in pipeline]
            pipelines_dict.append(pipeline_dict)
        
        # For backward compatibility, if only 1 token, return old format
        if max_tokens == 1 and len(pipelines_dict) > 0:
            response_data = {
                "steps": pipelines_dict[0],
                "total_steps": len(pipelines_dict[0]),
                "model_name": manager.model_name,
                "input_text": text,
                # Also include multi-token format
                "tokens": result['tokens'],
                "pipelines": pipelines_dict,
                "final_text": result['final_text']
            }
        else:
            response_data = {
                "tokens": result['tokens'],
                "pipelines": pipelines_dict,
                "final_text": result['final_text'],
                "num_tokens": result['num_tokens'],
                "total_steps": len(pipelines_dict[0]) if pipelines_dict else 0,
                "model_name": manager.model_name,
                "input_text": text
            }
        
        logger.info(f"Pipeline analysis complete: {result['num_tokens']} tokens, {len(pipelines_dict[0]) if pipelines_dict else 0} steps per token")
        return response_data
        
    except Exception as e:
        logger.error(f"Pipeline analysis error: {str(e)}")
        logger.error(traceback.format_exc())
        raise HTTPException(status_code=500, detail=str(e))

@app.post("/analyze/attention")
async def analyze_attention(request: Dict[str, Any], authenticated: bool = Depends(verify_api_key)):
    """Analyze attention mechanism with Q, K, V extraction"""
    from .qkv_extractor import QKVExtractor
    
    # Initialize QKV extractor
    extractor = QKVExtractor(manager.model, manager.tokenizer)
    
    # Extract attention data
    text = request.get("text", "def fibonacci(n):\n    if n <= 1:\n        return n")
    analysis = extractor.extract_attention_data(text)
    
    
    # Convert to response format
    response_data = {
        "tokens": analysis.tokens,
        "tokenIds": analysis.token_ids,
        "layerCount": analysis.layer_count,
        "headCount": analysis.head_count,
        "sequenceLength": analysis.sequence_length,
        "modelDimension": analysis.model_dimension,
        "qkvData": [],
        "tokenEmbeddings": [],
        "attentionFlow": []
    }
    
    # Process QKV data for specific layers/heads to avoid overwhelming the frontend
    # Sample every 4th layer (we already sampled every 4th head in the extractor)
    for qkv in analysis.qkv_data:
        if qkv.layer % 4 == 0:
            response_data["qkvData"].append({
                "layer": qkv.layer,
                "head": qkv.head,
                "query": qkv.query.tolist(),
                "key": qkv.key.tolist(),
                "value": qkv.value.tolist(),
                "attentionScoresRaw": qkv.attention_scores_raw.tolist(),
                "attentionWeights": qkv.attention_weights.tolist(),
                "headDim": qkv.head_dim
            })
    
    
    # Process token embeddings
    for emb in analysis.token_embeddings:
        # Only include embeddings for every 4th layer to reduce data size
        if emb.layer % 4 == 0:
            response_data["tokenEmbeddings"].append({
                "token": emb.token,
                "tokenId": emb.token_id,
                "position": emb.position,
                "layer": emb.layer,
                "embedding2D": emb.embedding_2d,
                "embedding3D": emb.embedding_3d
            })
    
    # Get attention flow for the first token as an example
    if len(analysis.tokens) > 0:
        flow = extractor.get_attention_flow(analysis, source_token=0)
        response_data["attentionFlow"] = flow
    
    # Add positional encodings if available
    if analysis.positional_encodings is not None:
        response_data["positionalEncodings"] = analysis.positional_encodings.tolist()
    
    return response_data

@app.get("/demos")
async def list_demos(authenticated: bool = Depends(verify_api_key)):
    """List available demo prompts"""
    return {
        "demos": [
            {
                "id": "fibonacci",
                "name": "Fibonacci Function",
                "prompt": "def fibonacci(n):\n    '''Calculate fibonacci number'''",
                "description": "Generate a recursive fibonacci implementation"
            },
            {
                "id": "quicksort",
                "name": "Quicksort Algorithm",
                "prompt": "def quicksort(arr):\n    '''Sort array using quicksort'''",
                "description": "Generate a quicksort implementation"
            },
            {
                "id": "stack",
                "name": "Stack Class",
                "prompt": "class Stack:\n    '''Simple stack implementation'''",
                "description": "Generate a stack data structure"
            },
            {
                "id": "binary_search",
                "name": "Binary Search",
                "prompt": "def binary_search(arr, target):\n    '''Find target in sorted array'''",
                "description": "Generate a binary search function"
            }
        ]
    }

@app.post("/demos/run")
async def run_demo(request: DemoRequest, authenticated: bool = Depends(verify_api_key)):
    """Run a specific demo"""
    demos = {
        "fibonacci": "def fibonacci(n):\n    '''Calculate fibonacci number'''",
        "quicksort": "def quicksort(arr):\n    '''Sort array using quicksort'''",
        "stack": "class Stack:\n    '''Simple stack implementation'''",
        "binary_search": "def binary_search(arr, target):\n    '''Find target in sorted array'''"
    }
    
    if request.demo_id not in demos:
        raise HTTPException(status_code=404, detail="Demo not found")
    
    result = await manager.generate_with_traces(
        prompt=demos[request.demo_id],
        max_tokens=100,
        temperature=0.7,
        sampling_rate=0.3  # Same as regular generation for better visualization
    )
    
    return result

if __name__ == "__main__":
    import uvicorn
    uvicorn.run(app, host="0.0.0.0", port=8000)