You can improve LLM logical reasoning by combining neural networks with symbolic reasoning modules to handle structured logic more effectively.
Here is the code snippet below:

In the above code we are using the following key points:
- 
Neural encoder (LSTM) to process sequence embeddings
 
- 
A symbolic reasoning-inspired layer to perform structured transformations
 
- 
A simple decision classifier to output logical conclusions
 
Hence, neural-symbolic architectures enhance LLMs by adding structured logical manipulation capabilities alongside deep learning flexibility.