pull/995/head
王祥宇 1 month ago
parent 932a3e7a47
commit 6cdf3d84c8

@ -1,22 +1,91 @@
from swarms.structs.conversation import Conversation
from dotenv import load_dotenv
# Create a conversation object
conversation = Conversation(backend="in-memory")
# Add a message to the conversation
conversation.add(
role="user", content="Hello, how are you?", category="input"
)
# Load environment variables from .env file
load_dotenv()
# Add a message to the conversation
conversation.add(
role="assistant",
content="I'm good, thank you!",
category="output",
)
print(
conversation.export_and_count_categories(
tokenizer_model_name="claude-3-5-sonnet-20240620"
def demonstrate_truncation():
# Using a smaller context length to clearly see the truncation effect
context_length = 25
print(f"Creating a conversation instance with context length {context_length}")
# Using Claude model as the tokenizer model
conversation = Conversation(
context_length=context_length,
tokenizer_model_name="claude-3-7-sonnet-20250219"
)
)
# Adding first message - short message
short_message = "Hello, I am a user."
print(f"\nAdding short message: '{short_message}'")
conversation.add("user", short_message)
# Display token count
from swarms.utils.litellm_tokenizer import count_tokens
tokens = count_tokens(short_message, conversation.tokenizer_model_name)
print(f"Short message token count: {tokens}")
# Adding second message - long message, should be truncated
long_message = "I have a question about artificial intelligence. I want to understand how large language models handle long texts, especially under token constraints. This issue is important because it relates to the model's practicality and effectiveness. I hope to get a detailed answer that helps me understand this complex technical problem."
print(f"\nAdding long message:\n'{long_message}'")
conversation.add("assistant", long_message)
# Display long message token count
tokens = count_tokens(long_message, conversation.tokenizer_model_name)
print(f"Long message token count: {tokens}")
# Display current conversation total token count
total_tokens = sum(count_tokens(msg["content"], conversation.tokenizer_model_name)
for msg in conversation.conversation_history)
print(f"Total token count before truncation: {total_tokens}")
# Print the complete conversation history before truncation
print("\nConversation history before truncation:")
for i, msg in enumerate(conversation.conversation_history):
print(f"[{i}] {msg['role']}: {msg['content']}")
print(f" Token count: {count_tokens(msg['content'], conversation.tokenizer_model_name)}")
# Execute truncation
print("\nExecuting truncation...")
conversation.truncate_memory_with_tokenizer()
# Print conversation history after truncation
print("\nConversation history after truncation:")
for i, msg in enumerate(conversation.conversation_history):
print(f"[{i}] {msg['role']}: {msg['content']}")
print(f" Token count: {count_tokens(msg['content'], conversation.tokenizer_model_name)}")
# Display total token count after truncation
total_tokens = sum(count_tokens(msg["content"], conversation.tokenizer_model_name)
for msg in conversation.conversation_history)
print(f"\nTotal token count after truncation: {total_tokens}")
print(f"Context length limit: {context_length}")
# Verify if successfully truncated below the limit
if total_tokens <= context_length:
print("✅ Success: Total token count is now less than or equal to context length limit")
else:
print("❌ Failure: Total token count still exceeds context length limit")
# Test sentence boundary truncation
print("\n\nTesting sentence boundary truncation:")
sentence_test = Conversation(context_length=15, tokenizer_model_name="claude-3-opus-20240229")
test_text = "This is the first sentence. This is the second very long sentence that contains a lot of content. This is the third sentence."
print(f"Original text: '{test_text}'")
print(f"Original token count: {count_tokens(test_text, sentence_test.tokenizer_model_name)}")
# Using binary search for truncation
truncated = sentence_test._binary_search_truncate(test_text, 10, sentence_test.tokenizer_model_name)
print(f"Truncated text: '{truncated}'")
print(f"Truncated token count: {count_tokens(truncated, sentence_test.tokenizer_model_name)}")
# Check if truncated at period
if truncated.endswith("."):
print("✅ Success: Text was truncated at sentence boundary")
else:
print("Note: Text was not truncated at sentence boundary")
if __name__ == "__main__":
demonstrate_truncation()
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