--- library_name: peft tags: - meta-llama - code - instruct - databricks-dolly-15k - Llama-2-70b-hf datasets: - databricks/databricks-dolly-15k base_model: meta-llama/Llama-2-70b-hf license: apache-2.0 --- Note: This repo contains the base weights already merged with lora, pls check qblocks/llama2_70B_dolly15k repo for LORA adapters only ### Finetuning Overview: **Model Used:** meta-llama/Llama-2-70b-hf **Dataset:** Databricks-dolly-15k #### Dataset Insights: The Databricks-dolly-15k dataset is an impressive compilation of over 15,000 records, made possible by the hard work and dedication of a multitude of Databricks professionals. It has been tailored to: - Elevate the interactive capabilities of ChatGPT-like systems. - Provide prompt/response pairs spanning eight distinct instruction categories, inclusive of the seven categories from the InstructGPT paper and an exploratory open-ended category. - Ensure genuine and original content, largely offline-sourced with exceptions for Wikipedia in particular categories, and free from generative AI influences. The contributors had the opportunity to rephrase and answer queries from their peers, highlighting a focus on accuracy and clarity. Additionally, some data subsets feature Wikipedia-sourced reference texts, marked by bracketed citation numbers like [42]. #### Finetuning Details: Using [MonsterAPI](https://monsterapi.ai)'s user-friendly [LLM finetuner](https://docs.monsterapi.ai/fine-tune-a-large-language-model-llm), the finetuning: - Stands out for its cost-effectiveness. - Was executed in a total of 17.5 hours for 3 epochs with an A100 80GB GPU. - Broke down to just 5.8 hours and `$19.25` per epoch, culminating in a combined cost of `$57.75` for all epochs. #### Hyperparameters & Additional Details: - **Epochs:** 3 - **Cost Per Epoch:** $19.25 - **Total Finetuning Cost:** $57.75 - **Model Path:** meta-llama/Llama-2-70b-hf - **Learning Rate:** 0.0002 - **Data Split:** Training 90% / Validation 10% - **Gradient Accumulation Steps:** 4 --- ### Prompt Structure: ``` ### INSTRUCTION: [instruction] [context] ### RESPONSE: [response] ``` Loss metrics Training loss (Blue) Validation Loss (orange): ![training loss](train-loss.png "Training loss") --- license: apache-2.0