Comments (5)
Which model? What is the learning rate?
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If the learning rate is too high, you may need to reduce it.
from collm.
I meet the same problem when I use Llama2-based Vicuna model (vicuna-7b-v1.5), and the setting of learning rate is as follows:
lr_sched: "linear_warmup_cosine_lr"
init_lr: 1e-4
min_lr: 8e-5
warmup_lr: 1e-5
However, when I use Llama1-based Vicunas (v1.1 and v1.3) it runs successfully. Are there any settings in the code that solely works for Llama1 while incompatible with Llama2 ?
Which model? What is the learning rate?
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Related Issues (10)
- About the code HOT 7
- 关于Lora微调中参数设置的问题。 HOT 4
- Inconsistency of ML-1M statistics in paper and released propcessed dataset HOT 1
- What is the dataset config format HOT 2
- Minimum hardware to reproduce the work. HOT 2
- Hyperparameters to reproduce the result of collab. model on amazon book dataset? HOT 1
- running time HOT 2
- CIE tuning HOT 2
- hot and cold datasets HOT 1
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