Files
sheepOp/example_optimized.py
Carlos Gutierrez 3d2da94ce2 Initial commit: SheepOp LLM - Transformer-based language model implementation
- Complete transformer implementation from scratch
- Training pipeline with gradient accumulation and mixed precision
- Optimized inference with KV caching
- Multi-format data processing (PDFs, images, code, text)
- Comprehensive documentation
- Apache 2.0 license
- Example training plots included in docs/images/
2025-11-06 22:07:41 -05:00

200 lines
6.0 KiB
Python

"""
Example usage of optimized inference and retrieval mechanisms
Demonstrates KV caching, retrieval caching, and prefetching for RAG systems
"""
import torch
import sys
import importlib.util
from pathlib import Path
# Ensure current directory is in path
project_root = Path(__file__).parent.absolute()
sys.path.insert(0, str(project_root))
# Explicitly import from local data module to avoid conflicts with stdlib 'data' module
data_module_path = project_root / "data" / "__init__.py"
spec = importlib.util.spec_from_file_location("sheepop_data", data_module_path)
sheepop_data = importlib.util.module_from_spec(spec)
spec.loader.exec_module(sheepop_data)
SimpleTokenizer = sheepop_data.SimpleTokenizer
create_dataloader = sheepop_data.create_dataloader
from models import TransformerModel, OptimizedInference, RetrievalCache
from models.prefetching import PrefetchDataLoader, LookaheadRetriever
def example_optimized_inference():
"""Example: Using optimized inference with KV caching."""
print("=" * 60)
print("Example: Optimized Inference with KV Caching")
print("=" * 60)
# Create model (example configuration)
model = TransformerModel(
vocab_size=128,
d_model=512,
num_layers=6,
num_heads=8,
)
# Get optimized inference utility
optimizer = model.get_optimized_inference()
# Example prompt
tokenizer = SimpleTokenizer()
prompt = "The future of AI"
input_ids = torch.tensor([tokenizer.encode(prompt)])
# Generate with KV caching (faster for autoregressive generation)
generated = optimizer.generate_with_cache(
input_ids=input_ids,
max_length=50,
temperature=0.8,
top_k=50,
top_p=0.95,
)
print(f"Generated: {tokenizer.decode(generated[0].tolist())}")
print()
def example_retrieval_caching():
"""Example: Using retrieval cache for similar queries."""
print("=" * 60)
print("Example: Retrieval Caching")
print("=" * 60)
# Create retrieval cache
cache = RetrievalCache(max_size=1000, similarity_threshold=0.9)
# Example: Simulate retrieval function
def retrieve_documents(query: str):
"""Mock retrieval function."""
return [
{"doc_id": "1", "text": f"Document about {query}", "score": 0.95},
{"doc_id": "2", "text": f"Another document about {query}", "score": 0.92},
]
# Create query embeddings (simplified)
query1 = "What is machine learning?"
query1_embedding = torch.randn(128) # Example embedding
query2 = "What is deep learning?" # Similar query
query2_embedding = torch.randn(128) # Example embedding (would be similar in practice)
# Store first query
import hashlib
query1_hash = hashlib.md5(query1.encode()).hexdigest()
results1 = retrieve_documents(query1)
cache.set(query1_hash, query1_embedding, results1)
# Retrieve from cache (should find similar query)
query2_hash = hashlib.md5(query2.encode()).hexdigest()
cached_results = cache.get(query2_hash, query2_embedding)
if cached_results:
print(f"Found cached results for query: {query2}")
print(f"Retrieved {len(cached_results)} documents")
else:
print("Cache miss, performing retrieval...")
results = retrieve_documents(query2)
cache.set(query2_hash, query2_embedding, results)
print()
def example_prefetching():
"""Example: Using prefetching for data loading."""
print("=" * 60)
print("Example: Prefetching DataLoader")
print("=" * 60)
# Create sample data
texts = ["This is a sample text."] * 100
tokenizer = SimpleTokenizer()
# Create standard dataloader
dataloader = create_dataloader(
texts=texts,
tokenizer=tokenizer,
batch_size=32,
max_length=512,
)
# Wrap with prefetching
device = torch.device('cuda' if torch.cuda.is_available() else 'cpu')
prefetch_loader = PrefetchDataLoader(
dataloader=dataloader,
prefetch_factor=2,
device=device,
)
print(f"Created prefetch loader with {len(prefetch_loader)} batches")
print("Prefetching batches in background thread...")
print()
def example_batch_generation():
"""Example: Batch generation for multiple prompts."""
print("=" * 60)
print("Example: Batch Generation")
print("=" * 60)
# Create model
model = TransformerModel(
vocab_size=128,
d_model=512,
num_layers=6,
num_heads=8,
)
# Get optimized inference utility
optimizer = model.get_optimized_inference()
# Multiple prompts
tokenizer = SimpleTokenizer()
prompts = [
"The future of AI",
"Machine learning applications",
"Deep learning advances",
]
input_ids_list = [torch.tensor([tokenizer.encode(p)]) for p in prompts]
# Generate for all prompts in batches
results = optimizer.batch_generate(
input_ids_list=input_ids_list,
max_length=30,
temperature=0.8,
batch_size=2,
)
print(f"Generated {len(results)} responses:")
for i, (prompt, result) in enumerate(zip(prompts, results)):
# result is already a tensor [batch_size, seq_len], get first item if batch_size > 1
if result.dim() > 1 and result.shape[0] > 1:
generated_ids = result[0].tolist()
else:
generated_ids = result.squeeze(0).tolist() if result.dim() > 1 else result.tolist()
generated_text = tokenizer.decode(generated_ids)
print(f"{i+1}. Prompt: {prompt}")
print(f" Generated: {generated_text[:50]}...")
print()
if __name__ == '__main__':
print("\n" + "=" * 60)
print("Optimized RAG System Examples")
print("=" * 60 + "\n")
# Run examples
example_optimized_inference()
example_retrieval_caching()
example_prefetching()
example_batch_generation()
print("=" * 60)
print("All examples completed!")
print("=" * 60)