Training procedure

We finetuned Llama 2 7B model from Meta on nampdn-ai/tiny-codes for ~ 10,000 steps using MonsterAPI no-code LLM finetuner.

This dataset contains 1.63 million rows and is a collection of short and clear code snippets that can help LLM models learn how to reason with both natural and programming languages. The dataset covers a wide range of programming languages, such as Python, TypeScript, JavaScript, Ruby, Julia, Rust, C++, Bash, Java, C#, and Go. It also includes two database languages: Cypher (for graph databases) and SQL (for relational databases) in order to study the relationship of entities.

The finetuning session got completed in 53 hours and costed us ~ $125 for the entire finetuning run!

Hyperparameters & Run details:

  • Model Path: meta-llama/Llama-2-7b-hf
  • Dataset: nampdn-ai/tiny-codes
  • Learning rate: 0.0002
  • Number of epochs: 1 (10k steps)
  • Data split: Training: 90% / Validation: 10%
  • Gradient accumulation steps: 1

Framework versions

  • PEFT 0.4.0

Loss metrics:

training loss

Downloads last month
3
Inference API
Unable to determine this model’s pipeline type. Check the docs .

Model tree for monsterapi/llama2-code-generation

Adapter
(1760)
this model

Dataset used to train monsterapi/llama2-code-generation