examples : fix some typos in examples/model-conversion/README.md (#15477)

Signed-off-by: Jie Fu <jiefu@tencent.com>
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Jie Fu (傅杰) 2025-08-21 22:53:13 +08:00 committed by GitHub
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@ -6,7 +6,7 @@ The motivation for having this is that the conversion process can often be an
iterative process, where the original model is inspected, converted, updates
made to llama.cpp, converted again, etc. Once the model has been converted it
needs to be verified against the original model, and then optionally quantified,
and is some cases perplexity checked of the quantized model. And finally the
and in some cases perplexity checked of the quantized model. And finally the
model/models need to the ggml-org on Hugging Face. This tool/example tries to
help with this process.
@ -62,7 +62,7 @@ Command line arguments take precedence over environment variables when both are
In cases where the transformer implementation for the model has not been released
yet it is possible to set the environment variable `UNRELEASED_MODEL_NAME` which
will the cause the transformer implementation to be loaded explicitely and not
will then cause the transformer implementation to be loaded explicitely and not
use AutoModelForCausalLM:
```
export UNRELEASED_MODEL_NAME=SomeNewModel
@ -87,7 +87,7 @@ from the converted model.
# Or using command line argument
(venv) $ make causal-run-original-model MODEL_PATH=~/work/ai/models/some_model
```
This command will save two file to the `data` directory, one is a binary file
This command will save two files to the `data` directory, one is a binary file
containing logits which will be used for comparison with the converted model
later, and the other is a text file which allows for manual visual inspection.
@ -128,11 +128,11 @@ Quantized model saved to: /path/to/quantized/model-Q8_0.gguf
Export the quantized model path to QUANTIZED_MODEL variable in your environment
```
This will show the path to the quantized model in the terminal, which can then
be used set the `QUANTIZED_MODEL` environment variable:
be used to set the `QUANTIZED_MODEL` environment variable:
```console
export QUANTIZED_MODEL=/path/to/quantized/model-Q8_0.gguf
```
The the quantized model can be run using the following command:
Then the quantized model can be run using the following command:
```console
(venv) $ make causal-run-quantized-model
```
@ -229,11 +229,11 @@ Quantized model saved to: /path/to/quantized/model-Q8_0.gguf
Export the quantized model path to QUANTIZED_EMBEDDING_MODEL variable in your environment
```
This will show the path to the quantized model in the terminal, which can then
be used set the `QUANTIZED_EMBEDDING_MODEL` environment variable:
be used to set the `QUANTIZED_EMBEDDING_MODEL` environment variable:
```console
export QUANTIZED_EMBEDDING_MODEL=/path/to/quantized/model-Q8_0.gguf
```
The the quantized model can be run using the following command:
Then the quantized model can be run using the following command:
```console
(venv) $ make embedding-run-quantized-model
```
@ -246,7 +246,7 @@ token/logits file:
```console
(venv) $ make perplexity-run QUANTIZED_MODEL=~/path/to/quantized/model.gguf
```
This will use the wikitext dataset to run the perplexity evaluation and and
This will use the wikitext dataset to run the perplexity evaluation and
output the perplexity score to the terminal. This value can then be compared
with the perplexity score of the unquantized model.