guanwenyu1995 commited on
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Update example naming from BitCPM4 to BitCPM

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  1. example/README.md +5 -5
example/README.md CHANGED
@@ -1,6 +1,6 @@
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- # BitCPM4 Training Example
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- This project provides scripts for continue pretraining (CPT) and supervised fine-tuning (SFT) of **BitCPM4-CANN-1B-unquantized**.
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  ## File Description
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@@ -49,7 +49,7 @@ The test dataset used is [C4-Pro](https://huggingface.co/datasets/gair-prox/c4-p
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  Modify the path configuration in `run.sh`:
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  ```bash
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- MODEL_PATH="/path/to/BitCPM4-CANN-1B-unquantized/"
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  DATA_PATH="/path/to/c4-pro/data/your_file.parquet"
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  ```
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@@ -70,7 +70,7 @@ The test dataset used is [UltraChat 200k](https://huggingface.co/datasets/Huggin
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  Modify the path configuration in `run_sft.sh`:
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  ```bash
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- MODEL_PATH="/path/to/BitCPM4-CANN-1B-unquantized/"
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  DATA_PATH="/path/to/ultrachat_200k/data/your_file.parquet"
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  ```
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@@ -102,4 +102,4 @@ Training log CSV files (corresponding to the loss curves above):
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  ---
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- These scripts provide a convenient, ready-to-use toolkit for QAT-aware continued pre-training and fine-tuning of BitCPM4-CANN models, so you can quickly adapt the model to your own data and tasks while preserving ternary quantization constraints.
 
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+ # BitCPM Training Example
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+ This project provides scripts for continue pretraining (CPT) and supervised fine-tuning (SFT) of **BitCPM-CANN-1B-unquantized**.
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  ## File Description
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  Modify the path configuration in `run.sh`:
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  ```bash
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+ MODEL_PATH="/path/to/BitCPM-CANN-1B-unquantized/"
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  DATA_PATH="/path/to/c4-pro/data/your_file.parquet"
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  ```
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  Modify the path configuration in `run_sft.sh`:
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  ```bash
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+ MODEL_PATH="/path/to/BitCPM-CANN-1B-unquantized/"
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  DATA_PATH="/path/to/ultrachat_200k/data/your_file.parquet"
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  ```
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  ---
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+ These scripts provide a convenient, ready-to-use toolkit for QAT-aware continued pre-training and fine-tuning of BitCPM-CANN models, so you can quickly adapt the model to your own data and tasks while preserving ternary quantization constraints.