Files
llama-2-13b-dolphin_5w/README.md

76 lines
2.5 KiB
Markdown
Raw Permalink Normal View History

---
license: llama2
datasets:
- ehartford/dolphin
---
# Model Card for Model ID
<!-- Provide a quick summary of what the model is/does. -->
在llama-2-13b上使用dolphin前5萬筆資料集進行訓練
# Fine-Tuning Information
- **GPU:** RTX4090 (single core / 24564MiB)
- **model:** meta-llama/Llama-2-13b-hf
- **dataset:** ehartford/dolphin (取前5w筆訓練集)
- **peft_type:** LoRA
- **lora_rank:** 8
- **lora_target:** q_proj, v_proj
- **per_device_train_batch_size:** 8
- **gradient_accumulation_steps:** 8
- **learning_rate :** 5e-5
- **epoch:** 1
- **precision:** bf16
- **quantization:** load_in_4bit
# Fine-Tuning Detail
- **train_loss:** 0.8799
- **train_runtime:** 7:11:23 (use deepspeed)
# Evaluation
- 評估結果來自**HuggingFaceH4/open_llm_leaderboard**
- 與Llama-2-13b和其他使用dolphin的模型比較4種Benchmark
- Benchmark包含**ARC**、**HellaSwag**、**MMLU**、**TruthfulQA**
- **注意**ehartford/dolphin-llama-13b使用的是llama-1
| Model |Average| ARC |HellaSwag| MMLU | TruthfulQA |
|----------------------------------|-------|-------|---------|-------|------------|
|meta-llama/Llama-2-13b-hf | 56.9 | 58.11 | 80.97 | 54.34 | 34.17 |
|meta-llama/Llama-2-13b-chat-hf | 59.93 | 59.04 | 81.94 | 54.64 | 44.12 |
|ehartford/dolphin-llama-13b | 59.26 | 55.55 | 77.11 | 52.16 | 52.23 |
|CHIH-HUNG/llama-2-13b-dolphin_20w | 60.17 | 59.56 | 82.55 | 55.89 | 42.67 |
|CHIH-HUNG/llama-2-13b-dolphin_5w | 61 | 60.67 | 82.69 | 56.23 | 44.41 |
# How to convert dataset to json
- 在**load_dataset**中輸入資料集名稱,並且在**take**中輸入要取前幾筆資料
- 觀察該資料集的欄位名稱,填入**example**欄位中(例如instruction、input、output)
- 最後指定json檔儲存位置 (**json_filename**)
```py
import json
from datasets import load_dataset
# 讀取數據集take可以取得該數據集前n筆資料
dataset = load_dataset("ehartford/dolphin", split="train", streaming=True).take(50000)
# 提取所需欄位並建立新的字典列表
extracted_data = []
for example in dataset:
extracted_example = {
### dolphin
"instruction": example["instruction"],
"input": example["input"],
"output": example["output"]
}
extracted_data.append(extracted_example)
# 指定 JSON 文件名稱
json_filename = "dolphin.json"
# 寫入 JSON 文件
with open(json_filename, "w") as json_file:
json.dump(extracted_data, json_file, indent=4)
print(f"數據已提取並保存為 {json_filename}")
```