Basic UI For GPT J 6B With Low Vram Save

A repository to run gpt-j-6b on low vram machines (4.2 gb minimum vram for 2000 token context, 3.5 gb for 1000 token context). Model loading takes 12gb free ram.

Project README

Basic-UI-for-GPT-J-6B-with-low-vram

A repository to run GPT-J-6B on low vram systems by using both ram, vram and pinned memory.

How to run :

Use - pip install git+https://github.com/finetuneanon/transformers@gpt-neo-localattention3
Use the link - https://drive.google.com/file/d/1tboTvohQifN6f1JiSV8hnciyNKvj9pvm/view?usp=sharing to dowload the model that has been saved as described here - https://github.com/arrmansa/saving-and-loading-large-models-pytorch

Timing (2000 token context)

1

system -

16 gb ddr4 ram . 1070 8gb gpu.
23 blocks on ram (ram_blocks = 23) out of which 18 are on shared/pinned memory (max_shared_ram_blocks = 18).

timing -

single run of the model(inputs) takes 6.5 seconds.
35 seconds to generate 25 tokens at 2000 context. (1.4 seconds/token)

2

system -

16 gb ddr4 ram . 1060 6gb gpu.
26 blocks on ram (ram_blocks = 26) out of which 18 are on shared/pinned memory (max_shared_ram_blocks = 18).

timing -

40 seconds to generate 25 tokens at 2000 context. (1.6 seconds/token)

Open Source Agenda is not affiliated with "Basic UI For GPT J 6B With Low Vram" Project. README Source: arrmansa/Basic-UI-for-GPT-J-6B-with-low-vram
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