本地推理,单机运行,MacM1芯片系统基于大语言模型C++版本LLaMA部署“本地版”的ChatGPT

本地,推理,单机,运行,macm1,芯片,系统,基于,语言,模型,c++,版本,llama,部署,chatgpt · 浏览次数 : 901

小编点评

**LLaMA 7B 模型简介** LLaMA 7B 模型是一种预训练的语言模型,其参数数为 12853.02 MB,它基于 Transformer 的模型架构。 **主要参数:** * **model_size:** 12853.02 MB,模型大小。 * **num_threads:** 4,线程数量。 * **prompt:** 语言模型的提示词。 * **top_k:** 40, top-k 采样数量。 * **top_p:** 0.95, top-p 采样概率。 * **repeat_last_n:** 64,重复最后一个 n 个词的长度。 * **repeat_penalty:** 1.3,重复采样之间的惩罚系数。 * **ctx_size:** 13365.09 MB,上下文大小。 * **ignore_eos:** 1,忽略结束符的标识符。 * **memory_size:** 512 MB,模型内存大小。 * **f16:** 使用 f16 格式存储模型。 **使用说明:** 1. 将模型文件 `models/7B/ggml-model-f16.bin` 替换为训练数据文件。 2. 创建一个名为 `prompt` 的文本文件,包含语言模型要生成的提示词。 3. 运行以下命令: ``` ./main -m ./models/7B/ggml-model-f16.bin -p 'hi i am' ``` 其中 `-m` 参数指定模型文件, `-p` 参数指定提示词。 **注意:** * 语言模型的提示词必须以 `hi i am` 开头,且提示词长度不超过 64 个字符。 * 本地运行模型可能会很缓慢,因为它需要进行网络传输。 * 对于普通 AI 爱好者来说,LLaMA 7B 模型可能不足。

正文

OpenAI公司基于GPT模型的ChatGPT风光无两,眼看它起朱楼,眼看它宴宾客,FaceBook终于坐不住了,发布了同样基于LLM的人工智能大语言模型LLaMA,号称包含70亿、130亿、330亿和650亿这4种参数规模的模型,参数是指神经网络中的权重和偏置等可调整的变量,用于训练和优化神经网络的性能,70亿意味着神经网络中有70亿个参数,由此类推。

在一些大型神经网络中,每个参数需要使用32位或64位浮点数进行存储,这意味着每个参数需要占用4字节或8字节的存储空间。因此,对于包含70亿个参数的神经网络,其存储空间将分别为8 GB或12GB。

此外,神经网络的大小不仅取决于参数的数量,还取决于神经元的数目,层数和其他结构参数等。因此,70亿的神经网络可能会占用更多的存储空间,具体取决于网络的结构和实现细节。

因此这种体量的模型单机跑绝对够我们喝一壶,所以本次使用最小的LLaMA 7B模型进行测试。

LLaMA项目安装和模型配置

和Stable-Diffusion项目如出一辙,FaceBook开源的LLaMA项目默认写死使用cuda模式,这也就意味着必须有 NVIDIA 的 GPU来训练和运行,不过好在大神GeorgiGerganov 用 C++ 基于 LLaMA 项目重写了一个跑在 CPU 上的移植版本 llama.cpp应用。

llama.cpp首先适配的就是苹果的M系列芯片,这对于果粉来说无疑是一个重大利好,首先通过命令拉取C++版本的LLaMA项目:

git clone https://github.com/ggerganov/llama.cpp

随后进入项目目录:

llama.cpp

在项目中,需要单独建立一个模型文件夹models:

mkdir models

随后去huggingface官网下载LLaMA的7B模型文件:https://huggingface.co/nyanko7/LLaMA-7B/tree/main

是的,主模型文件已经达到了13.5gb之巨,如果本地硬盘空间告急,请谨慎下载。

随后在models目录建立模型子目录7B:

mkdir 7B

将tokenizer.model和tokenizer_checklist.chk放入和7B平行的目录中:

➜  models git:(master) ✗ ls  
7B                      tokenizer.model         tokenizer_checklist.chk

随后将checklist.chk consolidated.00.pth和params.json放入7B目录中:

➜  7B git:(master) ✗ ls  
checklist.chk       consolidated.00.pth  params.json

至此,模型就配置好了。

LLaMA模型转换

由于我们没有使用FaceBook的原版项目,所以它的模型还需要进行转换,也就是转换为当前C++版本的LLaMA可以运行的模型。

这里通过Python脚本进行转换操作:

python3 convert-pth-to-ggml.py models/7B/ 1

第一个参数是模型所在目录,第二个参数为转换时使用的浮点类型,使用 float32,转换的结果文件会大一倍,当该参数值为 1时,则使用 float16 这个默认值,这里我们使用默认数据类型。

程序输出:

➜  llama.cpp git:(master) ✗ python convert-pth-to-ggml.py models/7B/ 1  
{'dim': 4096, 'multiple_of': 256, 'n_heads': 32, 'n_layers': 32, 'norm_eps': 1e-06, 'vocab_size': -1}  
n_parts = 1  
  
Processing part 0  
  
Processing variable: tok_embeddings.weight with shape: torch.Size([32000, 4096]) and type: torch.float16  
Processing variable: norm.weight with shape: torch.Size([4096]) and type: torch.float16  
  Converting to float32  
Processing variable: output.weight with shape: torch.Size([32000, 4096]) and type: torch.float16  
Processing variable: layers.0.attention.wq.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.0.attention.wk.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.0.attention.wv.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.0.attention.wo.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.0.feed_forward.w1.weight with shape: torch.Size([11008, 4096]) and type: torch.float16  
Processing variable: layers.0.feed_forward.w2.weight with shape: torch.Size([4096, 11008]) and type: torch.float16  
Processing variable: layers.0.feed_forward.w3.weight with shape: torch.Size([11008, 4096]) and type: torch.float16  
Processing variable: layers.0.attention_norm.weight with shape: torch.Size([4096]) and type: torch.float16  
  Converting to float32  
Processing variable: layers.0.ffn_norm.weight with shape: torch.Size([4096]) and type: torch.float16  
  Converting to float32  
Processing variable: layers.1.attention.wq.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.1.attention.wk.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.1.attention.wv.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.1.attention.wo.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.1.feed_forward.w1.weight with shape: torch.Size([11008, 4096]) and type: torch.float16  
Processing variable: layers.1.feed_forward.w2.weight with shape: torch.Size([4096, 11008]) and type: torch.float16  
Processing variable: layers.1.feed_forward.w3.weight with shape: torch.Size([11008, 4096]) and type: torch.float16  
Processing variable: layers.1.attention_norm.weight with shape: torch.Size([4096]) and type: torch.float16  
  Converting to float32  
Processing variable: layers.1.ffn_norm.weight with shape: torch.Size([4096]) and type: torch.float16  
  Converting to float32  
Processing variable: layers.2.attention.wq.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.2.attention.wk.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.2.attention.wv.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.2.attention.wo.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.2.feed_forward.w1.weight with shape: torch.Size([11008, 4096]) and type: torch.float16  
Processing variable: layers.2.feed_forward.w2.weight with shape: torch.Size([4096, 11008]) and type: torch.float16  
Processing variable: layers.2.feed_forward.w3.weight with shape: torch.Size([11008, 4096]) and type: torch.float16  
Processing variable: layers.2.attention_norm.weight with shape: torch.Size([4096]) and type: torch.float16  
  Converting to float32  
Processing variable: layers.2.ffn_norm.weight with shape: torch.Size([4096]) and type: torch.float16  
  Converting to float32  
Processing variable: layers.3.attention.wq.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.3.attention.wk.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.3.attention.wv.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.3.attention.wo.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.3.feed_forward.w1.weight with shape: torch.Size([11008, 4096]) and type: torch.float16  
Processing variable: layers.3.feed_forward.w2.weight with shape: torch.Size([4096, 11008]) and type: torch.float16  
Processing variable: layers.3.feed_forward.w3.weight with shape: torch.Size([11008, 4096]) and type: torch.float16  
Processing variable: layers.3.attention_norm.weight with shape: torch.Size([4096]) and type: torch.float16  
  Converting to float32  
Processing variable: layers.3.ffn_norm.weight with shape: torch.Size([4096]) and type: torch.float16  
  Converting to float32  
Processing variable: layers.4.attention.wq.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.4.attention.wk.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.4.attention.wv.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.4.attention.wo.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.4.feed_forward.w1.weight with shape: torch.Size([11008, 4096]) and type: torch.float16  
Processing variable: layers.4.feed_forward.w2.weight with shape: torch.Size([4096, 11008]) and type: torch.float16  
Processing variable: layers.4.feed_forward.w3.weight with shape: torch.Size([11008, 4096]) and type: torch.float16  
Processing variable: layers.4.attention_norm.weight with shape: torch.Size([4096]) and type: torch.float16  
  Converting to float32  
Processing variable: layers.4.ffn_norm.weight with shape: torch.Size([4096]) and type: torch.float16  
  Converting to float32  
Processing variable: layers.5.attention.wq.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.5.attention.wk.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.5.attention.wv.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.5.attention.wo.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.5.feed_forward.w1.weight with shape: torch.Size([11008, 4096]) and type: torch.float16  
Processing variable: layers.5.feed_forward.w2.weight with shape: torch.Size([4096, 11008]) and type: torch.float16  
Processing variable: layers.5.feed_forward.w3.weight with shape: torch.Size([11008, 4096]) and type: torch.float16  
Processing variable: layers.5.attention_norm.weight with shape: torch.Size([4096]) and type: torch.float16  
  Converting to float32  
Processing variable: layers.5.ffn_norm.weight with shape: torch.Size([4096]) and type: torch.float16  
  Converting to float32  
Processing variable: layers.6.attention.wq.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.6.attention.wk.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.6.attention.wv.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.6.attention.wo.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.6.feed_forward.w1.weight with shape: torch.Size([11008, 4096]) and type: torch.float16  
Processing variable: layers.6.feed_forward.w2.weight with shape: torch.Size([4096, 11008]) and type: torch.float16  
Processing variable: layers.6.feed_forward.w3.weight with shape: torch.Size([11008, 4096]) and type: torch.float16  
Processing variable: layers.6.attention_norm.weight with shape: torch.Size([4096]) and type: torch.float16  
  Converting to float32  
Processing variable: layers.6.ffn_norm.weight with shape: torch.Size([4096]) and type: torch.float16  
  Converting to float32  
Processing variable: layers.7.attention.wq.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.7.attention.wk.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.7.attention.wv.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.7.attention.wo.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.7.feed_forward.w1.weight with shape: torch.Size([11008, 4096]) and type: torch.float16  
Processing variable: layers.7.feed_forward.w2.weight with shape: torch.Size([4096, 11008]) and type: torch.float16  
Processing variable: layers.7.feed_forward.w3.weight with shape: torch.Size([11008, 4096]) and type: torch.float16  
Processing variable: layers.7.attention_norm.weight with shape: torch.Size([4096]) and type: torch.float16  
  Converting to float32  
Processing variable: layers.7.ffn_norm.weight with shape: torch.Size([4096]) and type: torch.float16  
  Converting to float32  
Processing variable: layers.8.attention.wq.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.8.attention.wk.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.8.attention.wv.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.8.attention.wo.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.8.feed_forward.w1.weight with shape: torch.Size([11008, 4096]) and type: torch.float16  
Processing variable: layers.8.feed_forward.w2.weight with shape: torch.Size([4096, 11008]) and type: torch.float16  
Processing variable: layers.8.feed_forward.w3.weight with shape: torch.Size([11008, 4096]) and type: torch.float16  
Processing variable: layers.8.attention_norm.weight with shape: torch.Size([4096]) and type: torch.float16  
  Converting to float32  
Processing variable: layers.8.ffn_norm.weight with shape: torch.Size([4096]) and type: torch.float16  
  Converting to float32  
Processing variable: layers.9.attention.wq.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.9.attention.wk.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.9.attention.wv.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.9.attention.wo.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.9.feed_forward.w1.weight with shape: torch.Size([11008, 4096]) and type: torch.float16  
Processing variable: layers.9.feed_forward.w2.weight with shape: torch.Size([4096, 11008]) and type: torch.float16  
Processing variable: layers.9.feed_forward.w3.weight with shape: torch.Size([11008, 4096]) and type: torch.float16  
Processing variable: layers.9.attention_norm.weight with shape: torch.Size([4096]) and type: torch.float16  
  Converting to float32  
Processing variable: layers.9.ffn_norm.weight with shape: torch.Size([4096]) and type: torch.float16  
  Converting to float32  
Processing variable: layers.10.attention.wq.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.10.attention.wk.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.10.attention.wv.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.10.attention.wo.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.10.feed_forward.w1.weight with shape: torch.Size([11008, 4096]) and type: torch.float16  
Processing variable: layers.10.feed_forward.w2.weight with shape: torch.Size([4096, 11008]) and type: torch.float16  
Processing variable: layers.10.feed_forward.w3.weight with shape: torch.Size([11008, 4096]) and type: torch.float16  
Processing variable: layers.10.attention_norm.weight with shape: torch.Size([4096]) and type: torch.float16  
  Converting to float32  
Processing variable: layers.10.ffn_norm.weight with shape: torch.Size([4096]) and type: torch.float16  
  Converting to float32  
Processing variable: layers.11.attention.wq.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.11.attention.wk.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.11.attention.wv.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.11.attention.wo.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.11.feed_forward.w1.weight with shape: torch.Size([11008, 4096]) and type: torch.float16  
Processing variable: layers.11.feed_forward.w2.weight with shape: torch.Size([4096, 11008]) and type: torch.float16  
Processing variable: layers.11.feed_forward.w3.weight with shape: torch.Size([11008, 4096]) and type: torch.float16  
Processing variable: layers.11.attention_norm.weight with shape: torch.Size([4096]) and type: torch.float16  
  Converting to float32  
Processing variable: layers.11.ffn_norm.weight with shape: torch.Size([4096]) and type: torch.float16  
  Converting to float32  
Processing variable: layers.12.attention.wq.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.12.attention.wk.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.12.attention.wv.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.12.attention.wo.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.12.feed_forward.w1.weight with shape: torch.Size([11008, 4096]) and type: torch.float16  
Processing variable: layers.12.feed_forward.w2.weight with shape: torch.Size([4096, 11008]) and type: torch.float16  
Processing variable: layers.12.feed_forward.w3.weight with shape: torch.Size([11008, 4096]) and type: torch.float16  
Processing variable: layers.12.attention_norm.weight with shape: torch.Size([4096]) and type: torch.float16  
  Converting to float32  
Processing variable: layers.12.ffn_norm.weight with shape: torch.Size([4096]) and type: torch.float16  
  Converting to float32  
Processing variable: layers.13.attention.wq.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.13.attention.wk.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.13.attention.wv.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.13.attention.wo.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.13.feed_forward.w1.weight with shape: torch.Size([11008, 4096]) and type: torch.float16  
Processing variable: layers.13.feed_forward.w2.weight with shape: torch.Size([4096, 11008]) and type: torch.float16  
Processing variable: layers.13.feed_forward.w3.weight with shape: torch.Size([11008, 4096]) and type: torch.float16  
Processing variable: layers.13.attention_norm.weight with shape: torch.Size([4096]) and type: torch.float16  
  Converting to float32  
Processing variable: layers.13.ffn_norm.weight with shape: torch.Size([4096]) and type: torch.float16  
  Converting to float32  
Processing variable: layers.14.attention.wq.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.14.attention.wk.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.14.attention.wv.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.14.attention.wo.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.14.feed_forward.w1.weight with shape: torch.Size([11008, 4096]) and type: torch.float16  
Processing variable: layers.14.feed_forward.w2.weight with shape: torch.Size([4096, 11008]) and type: torch.float16  
Processing variable: layers.14.feed_forward.w3.weight with shape: torch.Size([11008, 4096]) and type: torch.float16  
Processing variable: layers.14.attention_norm.weight with shape: torch.Size([4096]) and type: torch.float16  
  Converting to float32  
Processing variable: layers.14.ffn_norm.weight with shape: torch.Size([4096]) and type: torch.float16  
  Converting to float32  
Processing variable: layers.15.attention.wq.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.15.attention.wk.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.15.attention.wv.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.15.attention.wo.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.15.feed_forward.w1.weight with shape: torch.Size([11008, 4096]) and type: torch.float16  
Processing variable: layers.15.feed_forward.w2.weight with shape: torch.Size([4096, 11008]) and type: torch.float16  
Processing variable: layers.15.feed_forward.w3.weight with shape: torch.Size([11008, 4096]) and type: torch.float16  
Processing variable: layers.15.attention_norm.weight with shape: torch.Size([4096]) and type: torch.float16  
  Converting to float32  
Processing variable: layers.15.ffn_norm.weight with shape: torch.Size([4096]) and type: torch.float16  
  Converting to float32  
Processing variable: layers.16.attention.wq.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.16.attention.wk.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.16.attention.wv.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.16.attention.wo.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.16.feed_forward.w1.weight with shape: torch.Size([11008, 4096]) and type: torch.float16  
Processing variable: layers.16.feed_forward.w2.weight with shape: torch.Size([4096, 11008]) and type: torch.float16  
Processing variable: layers.16.feed_forward.w3.weight with shape: torch.Size([11008, 4096]) and type: torch.float16  
Processing variable: layers.16.attention_norm.weight with shape: torch.Size([4096]) and type: torch.float16  
  Converting to float32  
Processing variable: layers.16.ffn_norm.weight with shape: torch.Size([4096]) and type: torch.float16  
  Converting to float32  
Processing variable: layers.17.attention.wq.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.17.attention.wk.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.17.attention.wv.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.17.attention.wo.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.17.feed_forward.w1.weight with shape: torch.Size([11008, 4096]) and type: torch.float16  
Processing variable: layers.17.feed_forward.w2.weight with shape: torch.Size([4096, 11008]) and type: torch.float16  
Processing variable: layers.17.feed_forward.w3.weight with shape: torch.Size([11008, 4096]) and type: torch.float16  
Processing variable: layers.17.attention_norm.weight with shape: torch.Size([4096]) and type: torch.float16  
  Converting to float32  
Processing variable: layers.17.ffn_norm.weight with shape: torch.Size([4096]) and type: torch.float16  
  Converting to float32  
Processing variable: layers.18.attention.wq.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.18.attention.wk.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.18.attention.wv.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.18.attention.wo.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.18.feed_forward.w1.weight with shape: torch.Size([11008, 4096]) and type: torch.float16  
Processing variable: layers.18.feed_forward.w2.weight with shape: torch.Size([4096, 11008]) and type: torch.float16  
Processing variable: layers.18.feed_forward.w3.weight with shape: torch.Size([11008, 4096]) and type: torch.float16  
Processing variable: layers.18.attention_norm.weight with shape: torch.Size([4096]) and type: torch.float16  
  Converting to float32  
Processing variable: layers.18.ffn_norm.weight with shape: torch.Size([4096]) and type: torch.float16  
  Converting to float32  
Processing variable: layers.19.attention.wq.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.19.attention.wk.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.19.attention.wv.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.19.attention.wo.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.19.feed_forward.w1.weight with shape: torch.Size([11008, 4096]) and type: torch.float16  
Processing variable: layers.19.feed_forward.w2.weight with shape: torch.Size([4096, 11008]) and type: torch.float16  
Processing variable: layers.19.feed_forward.w3.weight with shape: torch.Size([11008, 4096]) and type: torch.float16  
Processing variable: layers.19.attention_norm.weight with shape: torch.Size([4096]) and type: torch.float16  
  Converting to float32  
Processing variable: layers.19.ffn_norm.weight with shape: torch.Size([4096]) and type: torch.float16  
  Converting to float32  
Processing variable: layers.20.attention.wq.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.20.attention.wk.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.20.attention.wv.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.20.attention.wo.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.20.feed_forward.w1.weight with shape: torch.Size([11008, 4096]) and type: torch.float16  
Processing variable: layers.20.feed_forward.w2.weight with shape: torch.Size([4096, 11008]) and type: torch.float16  
Processing variable: layers.20.feed_forward.w3.weight with shape: torch.Size([11008, 4096]) and type: torch.float16  
Processing variable: layers.20.attention_norm.weight with shape: torch.Size([4096]) and type: torch.float16  
  Converting to float32  
Processing variable: layers.20.ffn_norm.weight with shape: torch.Size([4096]) and type: torch.float16  
  Converting to float32  
Processing variable: layers.21.attention.wq.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.21.attention.wk.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.21.attention.wv.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.21.attention.wo.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.21.feed_forward.w1.weight with shape: torch.Size([11008, 4096]) and type: torch.float16  
Processing variable: layers.21.feed_forward.w2.weight with shape: torch.Size([4096, 11008]) and type: torch.float16  
Processing variable: layers.21.feed_forward.w3.weight with shape: torch.Size([11008, 4096]) and type: torch.float16  
Processing variable: layers.21.attention_norm.weight with shape: torch.Size([4096]) and type: torch.float16  
  Converting to float32  
Processing variable: layers.21.ffn_norm.weight with shape: torch.Size([4096]) and type: torch.float16  
  Converting to float32  
Processing variable: layers.22.attention.wq.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.22.attention.wk.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.22.attention.wv.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.22.attention.wo.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.22.feed_forward.w1.weight with shape: torch.Size([11008, 4096]) and type: torch.float16  
Processing variable: layers.22.feed_forward.w2.weight with shape: torch.Size([4096, 11008]) and type: torch.float16  
Processing variable: layers.22.feed_forward.w3.weight with shape: torch.Size([11008, 4096]) and type: torch.float16  
Processing variable: layers.22.attention_norm.weight with shape: torch.Size([4096]) and type: torch.float16  
  Converting to float32  
Processing variable: layers.22.ffn_norm.weight with shape: torch.Size([4096]) and type: torch.float16  
  Converting to float32  
Processing variable: layers.23.attention.wq.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.23.attention.wk.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.23.attention.wv.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.23.attention.wo.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.23.feed_forward.w1.weight with shape: torch.Size([11008, 4096]) and type: torch.float16  
Processing variable: layers.23.feed_forward.w2.weight with shape: torch.Size([4096, 11008]) and type: torch.float16  
Processing variable: layers.23.feed_forward.w3.weight with shape: torch.Size([11008, 4096]) and type: torch.float16  
Processing variable: layers.23.attention_norm.weight with shape: torch.Size([4096]) and type: torch.float16  
  Converting to float32  
Processing variable: layers.23.ffn_norm.weight with shape: torch.Size([4096]) and type: torch.float16  
  Converting to float32  
Processing variable: layers.24.attention.wq.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.24.attention.wk.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.24.attention.wv.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.24.attention.wo.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.24.feed_forward.w1.weight with shape: torch.Size([11008, 4096]) and type: torch.float16  
Processing variable: layers.24.feed_forward.w2.weight with shape: torch.Size([4096, 11008]) and type: torch.float16  
Processing variable: layers.24.feed_forward.w3.weight with shape: torch.Size([11008, 4096]) and type: torch.float16  
Processing variable: layers.24.attention_norm.weight with shape: torch.Size([4096]) and type: torch.float16  
  Converting to float32  
Processing variable: layers.24.ffn_norm.weight with shape: torch.Size([4096]) and type: torch.float16  
  Converting to float32  
Processing variable: layers.25.attention.wq.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.25.attention.wk.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.25.attention.wv.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.25.attention.wo.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.25.feed_forward.w1.weight with shape: torch.Size([11008, 4096]) and type: torch.float16  
Processing variable: layers.25.feed_forward.w2.weight with shape: torch.Size([4096, 11008]) and type: torch.float16  
Processing variable: layers.25.feed_forward.w3.weight with shape: torch.Size([11008, 4096]) and type: torch.float16  
Processing variable: layers.25.attention_norm.weight with shape: torch.Size([4096]) and type: torch.float16  
  Converting to float32  
Processing variable: layers.25.ffn_norm.weight with shape: torch.Size([4096]) and type: torch.float16  
  Converting to float32  
Processing variable: layers.26.attention.wq.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.26.attention.wk.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.26.attention.wv.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.26.attention.wo.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.26.feed_forward.w1.weight with shape: torch.Size([11008, 4096]) and type: torch.float16  
Processing variable: layers.26.feed_forward.w2.weight with shape: torch.Size([4096, 11008]) and type: torch.float16  
Processing variable: layers.26.feed_forward.w3.weight with shape: torch.Size([11008, 4096]) and type: torch.float16  
Processing variable: layers.26.attention_norm.weight with shape: torch.Size([4096]) and type: torch.float16  
  Converting to float32  
Processing variable: layers.26.ffn_norm.weight with shape: torch.Size([4096]) and type: torch.float16  
  Converting to float32  
Processing variable: layers.27.attention.wq.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.27.attention.wk.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.27.attention.wv.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.27.attention.wo.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.27.feed_forward.w1.weight with shape: torch.Size([11008, 4096]) and type: torch.float16  
Processing variable: layers.27.feed_forward.w2.weight with shape: torch.Size([4096, 11008]) and type: torch.float16  
Processing variable: layers.27.feed_forward.w3.weight with shape: torch.Size([11008, 4096]) and type: torch.float16  
Processing variable: layers.27.attention_norm.weight with shape: torch.Size([4096]) and type: torch.float16  
  Converting to float32  
Processing variable: layers.27.ffn_norm.weight with shape: torch.Size([4096]) and type: torch.float16  
  Converting to float32  
Processing variable: layers.28.attention.wq.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.28.attention.wk.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.28.attention.wv.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.28.attention.wo.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.28.feed_forward.w1.weight with shape: torch.Size([11008, 4096]) and type: torch.float16  
Processing variable: layers.28.feed_forward.w2.weight with shape: torch.Size([4096, 11008]) and type: torch.float16  
Processing variable: layers.28.feed_forward.w3.weight with shape: torch.Size([11008, 4096]) and type: torch.float16  
Processing variable: layers.28.attention_norm.weight with shape: torch.Size([4096]) and type: torch.float16  
  Converting to float32  
Processing variable: layers.28.ffn_norm.weight with shape: torch.Size([4096]) and type: torch.float16  
  Converting to float32  
Processing variable: layers.29.attention.wq.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.29.attention.wk.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.29.attention.wv.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.29.attention.wo.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.29.feed_forward.w1.weight with shape: torch.Size([11008, 4096]) and type: torch.float16  
Processing variable: layers.29.feed_forward.w2.weight with shape: torch.Size([4096, 11008]) and type: torch.float16  
Processing variable: layers.29.feed_forward.w3.weight with shape: torch.Size([11008, 4096]) and type: torch.float16  
Processing variable: layers.29.attention_norm.weight with shape: torch.Size([4096]) and type: torch.float16  
  Converting to float32  
Processing variable: layers.29.ffn_norm.weight with shape: torch.Size([4096]) and type: torch.float16  
  Converting to float32  
Processing variable: layers.30.attention.wq.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.30.attention.wk.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.30.attention.wv.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.30.attention.wo.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.30.feed_forward.w1.weight with shape: torch.Size([11008, 4096]) and type: torch.float16  
Processing variable: layers.30.feed_forward.w2.weight with shape: torch.Size([4096, 11008]) and type: torch.float16  
Processing variable: layers.30.feed_forward.w3.weight with shape: torch.Size([11008, 4096]) and type: torch.float16  
Processing variable: layers.30.attention_norm.weight with shape: torch.Size([4096]) and type: torch.float16  
  Converting to float32  
Processing variable: layers.30.ffn_norm.weight with shape: torch.Size([4096]) and type: torch.float16  
  Converting to float32  
Processing variable: layers.31.attention.wq.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.31.attention.wk.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.31.attention.wv.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.31.attention.wo.weight with shape: torch.Size([4096, 4096]) and type: torch.float16  
Processing variable: layers.31.feed_forward.w1.weight with shape: torch.Size([11008, 4096]) and type: torch.float16  
Processing variable: layers.31.feed_forward.w2.weight with shape: torch.Size([4096, 11008]) and type: torch.float16  
Processing variable: layers.31.feed_forward.w3.weight with shape: torch.Size([11008, 4096]) and type: torch.float16  
Processing variable: layers.31.attention_norm.weight with shape: torch.Size([4096]) and type: torch.float16  
  Converting to float32  
Processing variable: layers.31.ffn_norm.weight with shape: torch.Size([4096]) and type: torch.float16  
  Converting to float32  
Done. Output file: models/7B//ggml-model-f16.bin, (part 0)

可以看到,如果转换成功,会在models/7B/目录生成一个C++可以调用的ggml-model-f16.bin模型文件。

LLaMA模型调用

接下来就可以调用转换后的模型了,首先在编译C++项目:

make

程序返回:

➜  llama.cpp git:(master) ✗ make  
I llama.cpp build info:   
I UNAME_S:  Darwin  
I UNAME_P:  arm  
I UNAME_M:  arm64  
I CFLAGS:   -I.              -O3 -DNDEBUG -std=c11   -fPIC -pthread -DGGML_USE_ACCELERATE  
I CXXFLAGS: -I. -I./examples -O3 -DNDEBUG -std=c++17 -fPIC -pthread  
I LDFLAGS:   -framework Accelerate  
I CC:       Apple clang version 14.0.0 (clang-1400.0.29.202)  
I CXX:      Apple clang version 14.0.0 (clang-1400.0.29.202)  
  
cc  -I.              -O3 -DNDEBUG -std=c11   -fPIC -pthread -DGGML_USE_ACCELERATE   -c ggml.c -o ggml.o  
c++ -I. -I./examples -O3 -DNDEBUG -std=c++17 -fPIC -pthread -c utils.cpp -o utils.o  
c++ -I. -I./examples -O3 -DNDEBUG -std=c++17 -fPIC -pthread main.cpp ggml.o utils.o -o main  -framework Accelerate  
./main -h  
usage: ./main [options]  
  
options:  
  -h, --help            show this help message and exit  
  -i, --interactive     run in interactive mode  
  -ins, --instruct      run in instruction mode (use with Alpaca models)  
  -r PROMPT, --reverse-prompt PROMPT  
                        in interactive mode, poll user input upon seeing PROMPT (can be  
                        specified more than once for multiple prompts).  
  --color               colorise output to distinguish prompt and user input from generations  
  -s SEED, --seed SEED  RNG seed (default: -1)  
  -t N, --threads N     number of threads to use during computation (default: 4)  
  -p PROMPT, --prompt PROMPT  
                        prompt to start generation with (default: empty)  
  --random-prompt       start with a randomized prompt.  
  -f FNAME, --file FNAME  
                        prompt file to start generation.  
  -n N, --n_predict N   number of tokens to predict (default: 128)  
  --top_k N             top-k sampling (default: 40)  
  --top_p N             top-p sampling (default: 0.9)  
  --repeat_last_n N     last n tokens to consider for penalize (default: 64)  
  --repeat_penalty N    penalize repeat sequence of tokens (default: 1.3)  
  -c N, --ctx_size N    size of the prompt context (default: 512)  
  --ignore-eos          ignore end of stream token and continue generating  
  --memory_f16          use f16 instead of f32 for memory key+value  
  --temp N              temperature (default: 0.8)  
  -b N, --batch_size N  batch size for prompt processing (default: 8)  
  -m FNAME, --model FNAME  
                        model path (default: models/llama-7B/ggml-model.bin)  
  
c++ -I. -I./examples -O3 -DNDEBUG -std=c++17 -fPIC -pthread quantize.cpp ggml.o utils.o -o quantize  -framework Accelerate

编译成功后,本地会生成一个main.cpp文件。

随后根据编译后输出的说明文档直接调用模型即可:

./main -m ./models/7B/ggml-model-f16.bin -p 'Hi i am '

程序输出:

➜  llama.cpp git:(master) ✗ ./main -m ./models/7B/ggml-model-f16.bin -p 'hi i am'  
main: seed = 1679400707  
llama_model_load: loading model from './models/7B/ggml-model-f16.bin' - please wait ...  
llama_model_load: n_vocab = 32000  
llama_model_load: n_ctx   = 512  
llama_model_load: n_embd  = 4096  
llama_model_load: n_mult  = 256  
llama_model_load: n_head  = 32  
llama_model_load: n_layer = 32  
llama_model_load: n_rot   = 128  
llama_model_load: f16     = 1  
llama_model_load: n_ff    = 11008  
llama_model_load: n_parts = 1  
llama_model_load: ggml ctx size = 13365.09 MB  
llama_model_load: memory_size =   512.00 MB, n_mem = 16384  
llama_model_load: loading model part 1/1 from './models/7B/ggml-model-f16.bin'  
llama_model_load: .................................... done  
llama_model_load: model size = 12853.02 MB / num tensors = 291  
  
system_info: n_threads = 4 / 10 | AVX = 0 | AVX2 = 0 | AVX512 = 0 | FMA = 0 | NEON = 1 | ARM_FMA = 1 | F16C = 0 | FP16_VA = 1 | WASM_SIMD = 0 | BLAS = 1 | SSE3 = 0 | VSX = 0 |   
  
main: prompt: ' hi i am'  
main: number of tokens in prompt = 6  
     1 -> ''  
 13450 -> ' hi'  
   423 -> 'i'  
 25523 -> ' am'  
  
sampling parameters: temp = 0.800000, top_k = 40, top_p = 0.950000, repeat_last_n = 64, repeat_penalty = 1.300000  
  
  
 hi i am a pythoner, but sunk to become a ruby

说实话,推理速度实在不敢恭维,也可能是因为笔者的电脑配置太渣导致。

结语

LLaMA 7B模型总体上需要纯英文的提示词(prompt),对中文的理解能力还不够,优势是确实可以单机跑起来,当然本地跑的话,减少了网络传输数据的环节,推理效率自然也就更高,对于普通的AI爱好者来说,足矣。

与本地推理,单机运行,MacM1芯片系统基于大语言模型C++版本LLaMA部署“本地版”的ChatGPT相似的内容:

本地推理,单机运行,MacM1芯片系统基于大语言模型C++版本LLaMA部署“本地版”的ChatGPT

OpenAI公司基于GPT模型的ChatGPT风光无两,眼看它起朱楼,眼看它宴宾客,FaceBook终于坐不住了,发布了同样基于LLM的人工智能大语言模型LLaMA,号称包含70亿、130亿、330亿和650亿这4种参数规模的模型,参数是指神经网络中的权重和偏置等可调整的变量,用于训练和优化神经网络

程序员买啥游戏机,自己动手做一个体感小游戏

摘要:结合一个仿制的简易Flappy Bird游戏,ModelBox体感小游戏就这样诞生了。 本文分享自华为云社区《ModelBox开发案例 - 体感小游戏》,作者:菊厂飞戈。 前段时间,小鱼老师在AI说发布了文章 ModelBox推理真的高效吗,里面介绍了双阶段单人人体关键点检测案例,运行速度超快

【WPF】单例软件实现自重启

原文地址 https://www.cnblogs.com/younShieh/p/17749694.html ❤如果本文对你有所帮助,不妨点个关注和推荐呀,这是对笔者最大的支持~❤ 在WPF应用程序中,想要实现软件重启,可以再Start一次该软件的exe程序。 但是有些时候我们想要这个程序是唯一运行

ModelBox姿态匹配:抖抖手动动脚勤做深呼吸

摘要:本案例使用Windows版本的ModelBox SDK进行二次开发,主要是针对姿态匹配案例开发实践。 本文分享自华为云社区《姿态匹配:抖抖手动动脚勤做深呼吸》,作者:吴小鱼。 在之前发布的AI说ModelBox推理真的高效吗一文中,我们使用双阶段单人人体关键点检测作为案例对比测试了ModelB

循序渐进讲解负载均衡vivoGateway(VGW)

在大规模业务场景中,已经不可能通过单机提供业务,这就衍生出了负载均衡的需求。为了满足合适可靠的负载,本文将从简单的基础需求出发,一步步推进并解释如何建立负载均衡平台。

推荐系统:精排多目标融合与超参数学习方法

粗排/精排的个性化多任务学习模型,能预估20多个不同的预估值,如点击率、有效播放率、播放时长、点赞率、关注率等,那如何用它来排序呢?从多任务学习到多目标排序,中间有一个过渡,即如何把这些预估值融合成一个单一的排序分,最后实现多目标精排。这也就引入了本文要介绍的正题:多目标融合(multi-task ...

批量生成,本地推理,人工智能声音克隆框架PaddleSpeech本地批量克隆实践(Python3.10)

云端炼丹固然是极好的,但不能否认的是,成本要比本地高得多,同时考虑到深度学习的训练相对于推理来说成本也更高,这主要是因为它需要大量的数据、计算资源和时间等资源,并且对超参数的调整也要求较高,更适合在云端进行。 在推理阶段,模型的权重和参数不再调整。相反,模型根据输入数据的特征进行计算,并输出预测结果

OpenVoiceV2本地部署教程,苹果MacOs部署流程,声音响度统一,文字转语音,TTS

最近OpenVoice项目更新了V2版本,新的模型对于中文推理更加友好,音色也得到了一定的提升,本次分享一下如何在苹果的MacOs系统中本地部署OpenVoice的V2版本。 首先下载OpenVoiceV2的压缩包: OpenVoiceV2-for-mac代码和模型 https://pan.quar

使用Microsoft.SemanticKernel基于本地运行的Ollama大语言模型实现Agent调用函数

大语言模型的发展日新月异,记得在去年这个时候,函数调用还是gpt-4的专属。到今年本地运行的大模型无论是推理能力还是文本的输出质量都已经非常接近gpt-4了。而在去年gpt-4尚未发布函数调用时,智能体框架的开发者们依赖构建精巧的提示词实现了gpt-3.5的函数调用。目前在本机运行的大模型,基于这一

笔记本电脑上的聊天机器人: 在英特尔 Meteor Lake 上运行 Phi-2

对应于其强大的能力,大语言模型 (LLM) 需要强大的算力支撑,而个人计算机上很难满足这一需求。因此,我们别无选择,只能将它们部署至由本地或云端托管的性能强大的定制 AI 服务器上。 为何需要将 LLM 推理本地化 如果我们可以在典配个人计算机上运行最先进的开源 LLM 会如何?好处简直太多了: 增