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Model: ericflo/Llama-3.1-8B-ContinuedTraining2-FFT Source: Original Platform
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README.md
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README.md
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---
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language:
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- en
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tags:
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- llama
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- llm
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- fine-tuning
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- fill-in-the-middle
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- instruction-following
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license: apache-2.0
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datasets:
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- mlabonne/FineTome-100k
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- mlfoundations/dclm-baseline-1.0-parquet
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- wikimedia/wikipedia
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- bigcode/starcoderdata
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pipeline_tag: text-generation
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---
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# Custom LLM with Full Fine-Tuning
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## Model Overview
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This project implements a custom-trained language model based on the Meta-Llama-3.1-8B architecture. Unlike the previous version which used a high-rank adapter, this model employs full fine-tuning for enhanced learning capacity across a variety of tasks.
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- **Developer:** Eric Florenzano
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- **Model Type:** Large Language Model (LLM)
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- **Language(s):** English, with a focus on Python for code-related tasks
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- **License:** Apache-2.0
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- **Base Model:** meta-llama/Meta-Llama-3.1-8B
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## Unique Training Approach
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This model is trained directly on a mixture of high-quality datasets for general text and code completion tasks, as well as instruction-following. Key features include:
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- **Full Fine-Tuning:** Unlike the previous LoRA approach, this version uses full fine-tuning to update all model parameters.
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- **Diverse Dataset Mixture:** Combines pretraining and instruction datasets for comprehensive language understanding.
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- **Multi-Format Instruction Tuning:** Alternates between ChatML and Llama Chat templates for flexible instruction-following.
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- **Contextual Data Prefixing:** Uses source information to address data imbalance during training.
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- **Fill-in-the-Middle (FIM) Training:** Incorporates FIM tasks for enhanced context understanding.
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## Training Data
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The model is trained on a blend of high-quality data sources:
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- **FineTome-100k:** High-quality instruction-tuned data for general language tasks.
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- **dclm-baseline-1.0-parquet:** Apple's pretraining corpus for text completion/prediction.
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- **English, Spanish, and French Wikipedia:** For broad language understanding.
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- **Starcoder:** High-quality Python-focused code dataset for code completion tasks.
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## Training Procedure
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### Setup
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```bash
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pip install -U transformers accelerate trl wandb wheel packaging peft bitsandbytes liger-kernel flash_attn
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```
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## Key Features
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1. **Full Fine-Tuning:** Updates all model parameters for comprehensive learning.
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2. **8-bit AdamW Optimizer:** Uses `adamw_bnb_8bit` for memory-efficient training.
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3. **Flash Attention 2:** Implements `flash_attention_2` for faster training.
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4. **Gradient Checkpointing:** Enables training with limited GPU memory.
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5. **Liger and Packing:** Utilizes `use_liger=true` and `packing=true` for efficient data handling.
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6. **BFloat16 Precision:** Uses `bfloat16` for balanced precision and performance.
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## Advanced Training Techniques
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This model incorporates several advanced training techniques to enhance its capabilities:
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### 1. Fill-in-the-Middle (FIM) Capability
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FIM allows the model to complete text when given both a prefix and a suffix, making it particularly useful for tasks like code completion, text infilling, and context-aware generation.
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#### Using FIM with the Model
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To use the FIM capability, structure your input with special tokens:
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- `<|fim_start|>`: Marks the start of the FIM input
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- `<|fim_marker|>`: Separates the prefix from the suffix
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- `<|fim_gen|>`: Indicates where the generated content should begin
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- `<|fim_end|>`: Marks the end of the FIM input
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Example FIM input:
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```
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<|fim_start|>{prefix}<|fim_marker|>{suffix}<|fim_gen|>
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```
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The model will generate content to replace `<|fim_gen|>`, filling in the middle between the prefix and suffix.
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### 2. Reverse Prediction and Instruction Backtranslation
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This technique enhances the model's context understanding by training it to predict previous parts of a conversation or text. It's also known as instruction backtranslation.
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#### How it works:
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1. The model is given a snippet of conversation or text.
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2. It's then tasked with predicting what came before this snippet.
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3. This process helps the model understand context, conversation flow, and logical progression of ideas.
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#### Benefits:
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- Improved context understanding
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- Enhanced ability to maintain coherent, contextually appropriate conversations
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- Better grasp of cause-and-effect relationships in text
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#### Example use case:
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Input:
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```
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Human: Thank you for the information about Paris. Can you recommend some popular tourist attractions there?
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```
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Task: Predict the previous exchange in this conversation.
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Possible model output:
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```
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Human: What's the capital of France?
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Assistant: The capital of France is Paris. It's known as the "City of Light" and is famous for its art, culture, and historic landmarks.
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Human: Thank you for the information about Paris. Can you recommend some popular tourist attractions there?
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```
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### 3. Meta-FIM
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Meta-FIM applies the Fill-in-the-Middle technique to larger chunks of text, including entire conversations or documents. This improves the model's ability to handle complex, nested contexts.
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#### Benefits:
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- Enhanced understanding of long-range dependencies in text
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- Improved ability to maintain coherence across longer contexts
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- Better performance on tasks requiring integration of information from multiple parts of a document or conversation
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#### Example:
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```
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<|fim_start|>Human: What's the weather like today?
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Assistant: I'm sorry, but I don't have access to real-time weather information. Could you please provide your location?<|fim_marker|>Human: Thank you for the information about Paris. Can you recommend some popular tourist attractions there?<|fim_gen|>Human: I'm in Paris, France.
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Assistant: Ah, Paris! While I can't provide real-time weather information, I can tell you that Paris generally has a temperate climate. May I suggest checking a local weather website or app for the most up-to-date information?
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Human: That's a good idea, thanks. While we're on the topic of Paris, can you tell me about some famous landmarks?
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Assistant: Certainly! Paris is known for its iconic landmarks. Here are a few famous ones:
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1. Eiffel Tower
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2. Louvre Museum
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3. Notre-Dame Cathedral
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4. Arc de Triomphe
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5. Sacré-Cœur Basilica<|fim_end|>
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```
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In this example, the model needs to understand and generate a coherent conversation that fits between the given start and end points.
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## Evaluation
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| Tasks |Version| Filter |n-shot| Metric | |Value | |Stderr|
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|-----------------|-------|----------------|-----:|-----------|---|-----:|---|------|
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|tinyBenchmarks | N/A| | | | | | | |
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| - tinyArc | 0|none | 25|acc_norm |↑ |0.5821|± | N/A|
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| - tinyGSM8k | 0|flexible-extract| 5|exact_match|↑ |0.4989|± | N/A|
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| | |strict-match | 5|exact_match|↑ |0.4867|± | N/A|
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| - tinyHellaswag | 0|none | 10|acc_norm |↑ |0.8307|± | N/A|
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| - tinyMMLU | 0|none | 0|acc_norm |↑ |0.6651|± | N/A|
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| - tinyTruthfulQA| 0|none | 0|acc |↑ |0.4991|± | N/A|
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| - tinyWinogrande| 0|none | 5|acc_norm |↑ |0.7558|± | N/A|
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### Training Command
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```bash
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python sft_14.py \
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--run_name="llama3.1-8b-continued2" \
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--model_name_or_path="meta-llama/Meta-Llama-3.1-8B" \
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--dataset_name="mlfoundations/dclm-baseline-1.0-parquet,mlabonne/FineTome-100k" \
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--report_to="wandb" \
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--optim="adamw_bnb_8bit" \
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--lr_scheduler_type="cosine" \
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--max_steps=100000 \
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--max_seq_length=64000 \
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--learning_rate=0.00001 \
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--attn_implementation="flash_attention_2" \
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--save_strategy="steps" \
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--save_steps 50 \
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--save_total_limit=10 \
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--per_device_train_batch_size=1 \
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--per_device_eval_batch_size=1 \
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--gradient_accumulation_steps=8 \
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--logging_steps=1 \
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--num_train_epochs=1 \
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--push_to_hub \
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--hub_model_id="ericflo/Llama-3.1-8B-ContinuedTraining2-FFT" \
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--hub_strategy="all_checkpoints" \
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--gradient_checkpointing \
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--use_liger=true \
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--packing=true \
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--torch_dtype="bfloat16" \
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--output_dir="continuedtraining2_output"
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```
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## Intended Uses
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This model is designed for:
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- Text Completion and Generation
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- Code Completion (especially Python)
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- Instruction Following
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- General Language Understanding
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- Context-Aware Text Infilling (using FIM)
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## Limitations and Biases
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- The model may exhibit biases present in the training data.
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- It lacks real-time knowledge beyond its training data.
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- Should not be used for critical decision-making without human oversight.
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## Technical Specifications
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- **Base Model:** meta-llama/Meta-Llama-3.1-8B
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- **Training Approach:** Full Fine-Tuning
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- **Library:** Hugging Face Transformers and TRL
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## Contact
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For inquiries about this model, please contact Eric Florenzano through the [model repository](https://huggingface.co/ericflo/Llama-3.1-8B-ContinuedTraining2-FFT).
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