---
language:
- en
tags:
- pytorch
- causal-lm
license: apache-2.0
---
# Sparse GPT-J 6B
## Model Description
The sparse version of GPT-J 6B is a pruned variant derived from the original [GPT-J 6B](https://huggingface.co./EleutherAI/gpt-j-6b) model and the vast majority of linear layers maintain a 40% unstructured sparsity (except for the 'lm_head').
| Hyperparameter | Value |
|----------------------|------------|
| \\(n_{parameters}\\) | 6053381344 |
| \\(n_{layers}\\) | 28* |
| \\(d_{model}\\) | 4096 |
| \\(d_{ff}\\) | 16384 |
| \\(n_{heads}\\) | 16 |
| \\(d_{head}\\) | 256 |
| \\(n_{ctx}\\) | 2048 |
| \\(n_{vocab}\\) | 50257/50400† (same tokenizer as GPT-2/3) |
| Positional Encoding | Rotary Position Embedding RoPE |
| RoPE Dimensions | [64](https://github.com/kingoflolz/mesh-transformer-jax/blob/f2aa66e0925de6593dcbb70e72399b97b4130482/mesh_transformer/layers.py#L223) |
* Each layer consists of one feedforward block and one self attention block.
† Although the embedding matrix has a size of 50400, only 50257 entries are used by the GPT-2 tokenizer.
The model consists of 28 layers with a model dimension of 4096, and a feedforward dimension of 16384. The model
dimension is split into 16 heads, each with a dimension of 256. Rotary Position Embedding (RoPE) is applied to 64
dimensions of each head. The model is trained with a tokenization vocabulary of 50257, using the same set of BPEs as
GPT-2/GPT-3.
## Evaluation results
Evaluating the accuracy of the sparse model of gpt-j-6b using the lambada_openai dataset in lm_eval, providing the accuracy fluctuation under two precisions: FP32 and BF16.
| Sparsity | Dataset | Precision | Dense Acc ↑ | Sparse Acc ↑ | Acc fluctuations |
|------ |---------------- |------- |------- |-------- |------------------ |
| 40% |Lambada_openai | FP32 | 0.6831 | 0.6922 | +1.33% |
| 40% |Lambada_openai | BF16 | 0.6771 | 0.6874 | +0.63% |