quantum-ai2 / src /quantum_llm /training_engine.py
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"""
Quantum LLM Training Engine
Real training implementation from scratch with actual datasets and real backprop
"""
import json
import math
import random
import time
from dataclasses import dataclass, field
from pathlib import Path
from typing import List, Dict, Any, Optional, Tuple
from collections import deque
import numpy as np
from .quantum_transformer import QuantumTransformer, SimpleTokenizer
@dataclass
class TrainingConfig:
"""Configuration for training"""
# Model architecture (scaled as requested)
vocab_size: int = 20000
d_model: int = 256
n_layers: int = 6
n_heads: int = 8
d_ff: int = 1024
max_seq_len: int = 128
dropout: float = 0.1
# Training hyperparameters
batch_size: int = 8
learning_rate: float = 0.0005
epochs: int = 5
warmup_steps: int = 100
weight_decay: float = 0.01
gradient_clip: float = 1.0
# Data configuration
dataset_path: str = "filtered_books.json"
# Checkpointing
checkpoint_interval: int = 50
save_path: str = "./quantum_llm_checkpoints"
# Logging
log_interval: int = 5
metrics_path: str = "./quantum_llm_metrics"
class Dataset:
"""
Dataset handler for real training data
"""
def __init__(self, texts: List[str], max_seq_len: int, tokenizer):
self.texts = texts
self.max_seq_len = max_seq_len
self.tokenizer = tokenizer
# Pre-compute tokenized sequences
self.tokenized = []
for text in texts:
# Split long text into chunks
tokens = tokenizer.encode(text)
for i in range(0, len(tokens), max_seq_len):
chunk = tokens[i:i + max_seq_len]
if len(chunk) > 10:
self.tokenized.append(chunk)
print(f"πŸ“š Created dataset with {len(self.tokenized)} chunks")
def get_batch(self, batch_size: int, index: int) -> Tuple[np.ndarray, np.ndarray]:
batch_input = []
batch_target = []
for i in range(index, min(index + batch_size, len(self.tokenized))):
tokens = self.tokenized[i]
# Pad if needed
if len(tokens) < self.max_seq_len:
tokens = tokens + [0] * (self.max_seq_len - len(tokens))
# Input: all tokens except last
input_ids = tokens[:-1]
# Target: all tokens except first
target_ids = tokens[1:]
batch_input.append(input_ids)
batch_target.append(target_ids)
return np.array(batch_input), np.array(batch_target)
def __len__(self):
return len(self.tokenized)
def shuffle(self):
random.shuffle(self.tokenized)
class QuantumTrainingEngine:
"""
Training engine for Quantum LLM with real backpropagation
"""
def __init__(self, config: TrainingConfig, model: QuantumTransformer):
self.config = config
self.model = model
self.tokenizer = SimpleTokenizer(vocab_size=config.vocab_size)
self.train_dataset = None
self.global_step = 0
self.current_epoch = 0
self.optimizer_state = self._initialize_optimizer_state()
self.train_losses = []
self.quantum_metrics_history = []
Path(config.save_path).mkdir(parents=True, exist_ok=True)
Path(config.metrics_path).mkdir(parents=True, exist_ok=True)
print("πŸ”§ Initialized QuantumTrainingEngine with Real Backprop")
def _initialize_optimizer_state(self) -> Dict[str, Any]:
state = {}
for name, param in self._get_model_params().items():
state[name] = {
"m": np.zeros_like(param),
"v": np.zeros_like(param),
"t": 0
}
return state
def _get_model_params(self) -> Dict[str, np.ndarray]:
params = {
"embedding": self.model.embedding,
"output_projection": self.model.output_projection,
}
for i, layer in enumerate(self.model.layers):
params[f"layer_{i}_query"] = layer.query_proj
params[f"layer_{i}_key"] = layer.key_proj
params[f"layer_{i}_value"] = layer.value_proj
params[f"layer_{i}_ffn1"] = layer.ffn1
params[f"layer_{i}_ffn2"] = layer.ffn2
params[f"layer_{i}_gamma1"] = layer.gamma1
params[f"layer_{i}_beta1"] = layer.beta1
params[f"layer_{i}_gamma2"] = layer.gamma2
params[f"layer_{i}_beta2"] = layer.beta2
return params
def load_dataset(self, data_path: str):
print(f"\nπŸ“š Loading data from {data_path}...")
with open(data_path, 'r') as f:
data = json.load(f)
texts = [item["text"] for item in data]
self.train_dataset = Dataset(texts, self.config.max_seq_len, self.tokenizer)
print(f"βœ… Loaded {len(self.train_dataset)} training chunks")
def compute_loss(self, logits: np.ndarray, target_ids: np.ndarray) -> Tuple[float, np.ndarray]:
batch_size, seq_len, vocab_size = logits.shape
logits_flat = logits.reshape(-1, vocab_size)
target_flat = target_ids.reshape(-1)
# Softmax
probs = self._softmax(logits_flat)
# Loss
target_probs = probs[np.arange(len(target_flat)), target_flat]
loss = -np.log(target_probs + 1e-10)
avg_loss = np.mean(loss)
# Gradient of loss w.r.t. logits
grad_logits = probs.copy()
grad_logits[np.arange(len(target_flat)), target_flat] -= 1.0
grad_logits = grad_logits / (batch_size * seq_len)
grad_logits = grad_logits.reshape(batch_size, seq_len, vocab_size)
return avg_loss, grad_logits
def _softmax(self, x: np.ndarray) -> np.ndarray:
x_shifted = x - np.max(x, axis=-1, keepdims=True)
exp_x = np.exp(x_shifted)
return exp_x / (np.sum(exp_x, axis=-1, keepdims=True) + 1e-10)
def train_step(self, batch_input: np.ndarray, batch_target: np.ndarray) -> Dict[str, float]:
# 1. Forward pass
logits, quantum_metrics = self.model.forward(batch_input)
# 2. Compute loss
loss, grad_logits = self.compute_loss(logits, batch_target)
# 3. Backward pass (REAL BACKPROP)
gradients = self.model.backward(grad_logits)
# 4. Optimizer step
self.optimizer_step(gradients)
self.global_step += 1
return {"loss": loss, **quantum_metrics}
def optimizer_step(self, gradients: Dict[str, np.ndarray]):
beta1 = 0.9
beta2 = 0.999
epsilon = 1e-8
lr = self._get_learning_rate()
params = self._get_model_params()
for name, grad in gradients.items():
if name not in self.optimizer_state:
continue
param = params[name]
state = self.optimizer_state[name]
# Clip grad
if self.config.gradient_clip > 0:
grad = np.clip(grad, -self.config.gradient_clip, self.config.gradient_clip)
# Adam update
state["t"] += 1
state["m"] = beta1 * state["m"] + (1 - beta1) * grad
state["v"] = beta2 * state["v"] + (1 - beta2) * (grad ** 2)
m_hat = state["m"] / (1 - beta1 ** state["t"])
v_hat = state["v"] / (1 - beta2 ** state["t"])
param -= lr * m_hat / (np.sqrt(v_hat) + epsilon)
# Weight decay
if self.config.weight_decay > 0:
param -= lr * self.config.weight_decay * param
def _get_learning_rate(self) -> float:
if self.global_step < self.config.warmup_steps:
return self.config.learning_rate * (self.global_step / self.config.warmup_steps)
return self.config.learning_rate
def train(self):
print(f"\nπŸš€ Starting training for {self.config.epochs} epochs...")
start_time = time.time()
for epoch in range(self.config.epochs):
self.current_epoch = epoch
self.train_dataset.shuffle()
epoch_loss = 0
for i in range(0, len(self.train_dataset), self.config.batch_size):
batch_input, batch_target = self.train_dataset.get_batch(self.config.batch_size, i)
if batch_input.shape[0] == 0: continue
metrics = self.train_step(batch_input, batch_target)
epoch_loss += metrics["loss"]
if self.global_step % self.config.log_interval == 0:
print(f"Epoch {epoch} | Step {self.global_step} | Loss: {metrics['loss']:.4f} | Coherence: {metrics['avg_coherence']:.3f}")
if self.global_step % self.config.checkpoint_interval == 0:
self.model.save(f"{self.config.save_path}/checkpoint_{self.global_step}.json")
avg_epoch_loss = epoch_loss / (len(self.train_dataset) / self.config.batch_size)
print(f"βœ… Epoch {epoch} completed. Avg Loss: {avg_epoch_loss:.4f}")
print(f"🏁 Training finished in {time.time() - start_time:.2f}s")
self.model.save(f"{self.config.save_path}/final_model.json")