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3 Commits

Author SHA1 Message Date
Christian Medina
8e51c39c6e fix: remove large dataset from git tracking, add to .gitignore 2026-06-30 15:06:13 -04:00
Christian Medina
e1b80301d8 refactor: update deploy script to match cyron pattern 2026-06-30 15:03:40 -04:00
Christian Medina
3d2ae812a7 feat: add deploy-and-train.sh script for server deployment 2026-06-30 15:02:13 -04:00
4 changed files with 173 additions and 20020 deletions

4
.gitignore vendored
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@@ -23,5 +23,5 @@ Thumbs.db
# Logs # Logs
*.log *.log
# Large dataset (optional, use git-lfs if needed) # Large dataset (use git-lfs or exclude)
# dataset/*.jsonl dataset/*.jsonl

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158
deploy-and-train.sh Executable file
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@@ -0,0 +1,158 @@
#!/bin/bash
# Update a GPU-server clone of agenx-lora-training and run the training.
#
# Usage:
# bash deploy-and-train.sh
#
# Optional overrides:
# LORA_DEPLOY_REPO_URL=https://gitea.cyaren.com/cmedina/agenx-lora-training.git
# LORA_DEPLOY_REPO_DIR=/opt/loras/agenx-lora-training
# LORA_DEPLOY_BRANCH=main
#
set -euo pipefail
# Load credentials from env file if it exists (override with env vars).
if [ -f /home/cyaren/.deploy.env ]; then
set -a; source /home/cyaren/.deploy.env; set +a
fi
DEPLOY_USER="${LORA_DEPLOY_USER:-}"
DEPLOY_TOKEN="${LORA_DEPLOY_TOKEN:-}"
# Build the repo URL; embed user:token for HTTPS auth when provided.
if [ -n "${DEPLOY_USER}" ] && [ -n "${DEPLOY_TOKEN}" ]; then
REPO_URL="${LORA_DEPLOY_REPO_URL:-https://${DEPLOY_USER}:${DEPLOY_TOKEN}@gitea.cyaren.com/cmedina/agenx-lora-training.git}"
else
REPO_URL="${LORA_DEPLOY_REPO_URL:-https://gitea.cyaren.com/cmedina/agenx-lora-training.git}"
fi
REPO_DIR="${LORA_DEPLOY_REPO_DIR:-/opt/loras/agenx-lora-training}"
BRANCH="${LORA_DEPLOY_BRANCH:-main}"
REMOTE="${LORA_DEPLOY_REMOTE:-origin}"
RUN_USER="${SUDO_USER:-$(id -un)}"
RUN_GROUP="$(id -gn "${RUN_USER}" 2>/dev/null || id -gn)"
REPO_PARENT="$(dirname "${REPO_DIR}")"
echo "=== LoRA Training Git Deploy ==="
echo "Repo: ${REPO_URL}"
echo "Dir: ${REPO_DIR}"
echo "Branch: ${BRANCH}"
if [ ! -d "${REPO_PARENT}" ]; then
sudo install -d -m 0755 -o "${RUN_USER}" -g "${RUN_GROUP}" "${REPO_PARENT}"
fi
if [ ! -d "${REPO_DIR}/.git" ]; then
git clone --branch "${BRANCH}" "${REPO_URL}" "${REPO_DIR}"
fi
cd "${REPO_DIR}"
# Ensure the remote URL matches the authenticated HTTPS URL.
git remote set-url "${REMOTE}" "${REPO_URL}"
git fetch "${REMOTE}" "${BRANCH}"
git checkout "${BRANCH}"
git pull --ff-only "${REMOTE}" "${BRANCH}"
# Setup Python environment and train
echo ""
echo "=== Setting up Python environment ==="
python3 -m venv venv
source venv/bin/activate
pip install --upgrade pip
pip install torch torchvision torchaudio --index-url https://download.pytorch.org/whl/cu118
pip install transformers datasets trl peft accelerate bitsandbytes
# Prepare dataset
echo ""
echo "=== Preparing dataset ==="
python3 training/scripts/prepare_dataset.py --input dataset/combined_20k.jsonl --output training/data
# Train
echo ""
echo "=== Starting LoRA training ==="
python3 training/scripts/train.py --config training/configs/llama2-7b-lora.yaml
# Step 3: Setup Python environment
echo "[3/5] Setting up Python environment..."
cd "$INSTALL_DIR"
# Check if Python is available
if ! command -v python3 &> /dev/null; then
echo "ERROR: Python3 not found. Please install Python $PYTHON_VERSION or later."
exit 1
fi
# Create virtual environment
python3 -m venv venv
source venv/bin/activate
# Upgrade pip
pip install --upgrade pip
# Install PyTorch with CUDA support
echo " Installing PyTorch with CUDA support..."
pip install torch torchvision torchaudio --index-url https://download.pytorch.org/whl/cu118
# Install other dependencies
echo " Installing training dependencies..."
pip install transformers datasets trl peft accelerate bitsandbytes
# Verify GPU availability
echo ""
echo " Checking GPU availability..."
python3 -c "
import torch
if torch.cuda.is_available():
print(f' ✓ CUDA available: {torch.cuda.get_device_name(0)}')
print(f' ✓ VRAM: {torch.cuda.get_device_properties(0).total_mem / 1e9:.1f} GB')
else:
print(' ✗ CUDA not available. GPU training will not work.')
print(' Please ensure CUDA drivers are installed.')
exit(1)
"
# Step 4: Prepare dataset
echo "[4/5] Preparing dataset..."
python3 training/scripts/prepare_dataset.py \
--input dataset/combined_20k.jsonl \
--output training/data
echo " Dataset prepared:"
echo " - training/data/train.jsonl"
echo " - training/data/test.jsonl"
# Step 5: Train the model
echo "[5/5] Starting training..."
echo ""
echo " Training configuration:"
echo " - Model: meta-llama/Llama-2-7b-hf"
echo " - Method: QLoRA (4-bit quantization)"
echo " - Epochs: 3"
echo " - Batch size: 4"
echo " - Learning rate: 2e-4"
echo ""
echo " Estimated training time: 6-24 hours (depending on GPU)"
echo ""
python3 training/scripts/train.py \
--config training/configs/llama2-7b-lora.yaml
echo ""
echo "=============================================="
echo "Training complete!"
echo "=============================================="
echo ""
echo "Trained model saved to: $INSTALL_DIR/training/output/llama2-7b-lora/"
echo ""
echo "To generate summaries:"
echo " cd $INSTALL_DIR"
echo " source venv/bin/activate"
echo " python3 training/scripts/inference.py \\"
echo " --model training/output/llama2-7b-lora \\"
echo " --task \"Your task here\" \\"
echo " --files src/file.py \\"
echo " --tests-run --test-count 100"
echo ""

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@@ -23,25 +23,24 @@ training/
- GPU with 40GB+ VRAM (A100 recommended) - GPU with 40GB+ VRAM (A100 recommended)
- 64GB+ system RAM - 64GB+ system RAM
- 100GB+ free disk space - 100GB+ free disk space
- CUDA drivers installed
## Installation ## Server Deployment (Recommended)
Use the deployment script to clone and train on your GPU server:
```bash ```bash
cd scripts/lora_training/training # Deploy and train in one command
bash deploy-and-train.sh
# Create virtual environment
python -m venv venv
source venv/bin/activate
# Install dependencies
pip install transformers datasets trl peft accelerate bitsandbytes
# Or use conda
conda install pytorch torchvision torchaudio pytorch-cuda=11.8 -c pytorch -c nvidia
pip install transformers datasets trl peft accelerate bitsandbytes
``` ```
## Usage This will:
1. Clone the repo to `/opt/loras/agenx-lora-training`
2. Setup Python environment with CUDA support
3. Prepare the dataset
4. Train the LoRA adapter
## Manual Setup
### 1. Prepare Dataset ### 1. Prepare Dataset
@@ -123,7 +122,3 @@ Trained model is saved to `output/llama2-7b-lora/`:
**Generation too long/short:** **Generation too long/short:**
- Adjust `max_new_tokens` in inference script - Adjust `max_new_tokens` in inference script
- Tune `temperature` and `top_p` - Tune `temperature` and `top_p`
## License
This training infrastructure is part of the AgenX project.