--- license: other license_name: other license_link: LICENSE --- license for Llama 2 model checkpoints is Llama 2 Community license. \ License for Lumina-T2I 5B checkpoints is Apache-2. In this repo, you will find FP32 (original, un-changed), BF16 and FP16 PTH and FP32, BF16, FP16 safetensor files for Lumina T2I 5B text-to-image model. \ None of the files were confirmed to work yet, I plan to check that later. There could be some code missing in `safetensors` files due to it being removed during conversion, I don't know. If you try to run any of the files, let me know how they work. You can also find un-gated files for Llama 2 7B 4-bit (bnb) and 16-bit. Both are simply copies of those files from unsloth repos. I have not run Lumina locally yet to confirm, but I believe both should work. Script used for converting FP32 pth to FP16 pth ``` import torch # Load the FP32 model fp32_model_path = "consolidated.00-of-01.pth" fp32_model = torch.load(fp32_model_path, map_location='cpu') # Convert the model to FP16 fp16_model = {} for key, value in fp32_model.items(): if isinstance(value, torch.Tensor): fp16_model[key] = value.half() elif isinstance(value, dict): fp16_model[key] = {k: v.half() if isinstance(v, torch.Tensor) else v for k, v in value.items()} else: fp16_model[key] = value # Save the FP16 model fp16_model_path = "consolidated.00-of-01_fp16.pth" torch.save(fp16_model, fp16_model_path) ``` Script used for converting FP32 pth to FP32, BF16, FP16 safetensors and BF16 pth ``` import torch from safetensors.torch import save_file, load_file # Load the FP32 model fp32_model_path = "consolidated.00-of-01.pth" fp32_model = torch.load(fp32_model_path, map_location='cpu') # Convert the model to BF16 bf16_model = {} for key, value in fp32_model.items(): if isinstance(value, torch.Tensor): bf16_model[key] = value.to(torch.bfloat16) elif isinstance(value, dict): bf16_model[key] = {k: v.to(torch.bfloat16) if isinstance(v, torch.Tensor) else v for k, v in value.items()} else: bf16_model[key] = value # Convert the model to FP16 fp16_model = {} for key, value in fp32_model.items(): if isinstance(value, torch.Tensor): fp16_model[key] = value.half() elif isinstance(value, dict): fp16_model[key] = {k: v.half() if isinstance(v, torch.Tensor) else v for k, v in value.items()} else: fp16_model[key] = value # Save the FP32 model in safetensors format fp32_safetensors_path = "consolidated.00-of-01_fp32.safetensors" save_file(fp32_model, fp32_safetensors_path) # Save the BF16 model in safetensors format bf16_safetensors_path = "consolidated.00-of-01_bf16.safetensors" save_file(bf16_model, bf16_safetensors_path) # Save the FP16 model in safetensors format fp16_safetensors_path = "consolidated.00-of-01_fp16.safetensors" save_file(fp16_model, fp16_safetensors_path) # Save the BF16 model in .pth format bf16_model_path = "consolidated.00-of-01_bf16.pth" torch.save(bf16_model, bf16_model_path) ```