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# ChartQA Example
[![chartqa workflow status](https://github.com/microsoft/agent-lightning/actions/workflows/badge-chartqa.yml/badge.svg)](https://github.com/microsoft/agent-lightning/actions/workflows/examples-chartqa.yml)
This example demonstrates training a visual reasoning agent on the ChartQA dataset using Agent-Lightning with the VERL algorithm and LangGraph framework. The agent answers questions about charts through a multi-step workflow with self-refinement.
## Requirements
This example requires a single node with at least one 40GB GPU. Install dependencies with:
```bash
uv sync --frozen \
--group dev \
--group experiment \
--group image \
--group langchain \
--group vllm-0-10-2 \
--group torch-gpu-stable
```
**Currently vLLM 0.10.2 is the only tested version. You might see issues like `cu_seqlens_q must be on CUDA` or flash-attn installation failures if you use other versions.** (See https://github.com/vllm-project/vllm/issues/27340)
## Dataset
Download the ChartQA dataset and prepare it for training:
```bash
cd examples/chartqa
python prepare_data.py
```
This downloads the ChartQA dataset from HuggingFace (`HuggingFaceM4/ChartQA`), saves images locally, and creates parquet files for training/testing. No HuggingFace token is required (public dataset).
**Dataset Statistics:**
- Training: ~18,000 chart question-answer pairs
- Test: ~2,500 pairs
- Chart types: Bar, line, pie, scatter, etc.
## Included Files
| File/Directory | Description |
|----------------|-------------|
| `chartqa_agent.py` | Chart reasoning agent using LangGraph with multi-step workflow (observe → extract → calculate → check → refine) |
| `train_chartqa_agent.py` | Training script using VERL algorithm with configurable hyperparameters (debug, qwen) |
| `debug_chartqa_agent.py` | Debugging script to test the agent with cloud APIs or a local vLLM proxy |
| `prepare_data.py` | Script to download ChartQA dataset from HuggingFace and prepare parquet files |
| `prompts.py` | Prompt templates for the agent workflow |
| `multimodal_utils.py` | Utility functions for encoding images to base64 |
| `env_var.py` | Environment variables and configurations |
| `data/` | Directory containing images and parquet files after download |
## Running Examples
### Debugging with Cloud API (Default)
For quick testing with OpenAI or other cloud APIs (no local GPU required):
```bash
export OPENAI_API_KEY=<your-api-key>
python debug_chartqa_agent.py
```
For other providers (Azure, etc.), set `OPENAI_API_BASE`:
```bash
export OPENAI_API_BASE=https://your-resource.openai.azure.com/v1
export OPENAI_MODEL=gpt-4o
python debug_chartqa_agent.py
```
### Debugging with Local Model (LLMProxy)
To test the agent with a local vLLM server and LLMProxy:
```bash
# Start a vLLM server (specify image path for VLM)
export CHARTQA_DATA_DIR=<path to chartqa data>
vllm serve Qwen/Qwen2-VL-2B-Instruct \
--gpu-memory-utilization 0.6 \
--max-model-len 4096 \
--allowed-local-media-path $CHARTQA_DATA_DIR \
--enable-prefix-caching \
--port 8088
# Run the agent with LLMProxy
USE_LLM_PROXY=1 \
OPENAI_API_BASE=http://localhost:8088/v1 \
OPENAI_MODEL=Qwen/Qwen2-VL-2B-Instruct \
python debug_chartqa_agent.py
```
### Training with Local Model
```bash
python train_chartqa_agent.py debug --n-runners 2
```
You can also use an external store server (recommended for distributed setups), first start the store:
```bash
agl store --port 4747
```
Then run the training script with the external store address:
```bash
AGL_MANAGED_STORE=0 python train_chartqa_agent.py qwen --external-store-address http://localhost:4747
```
If you want to track experiments with Weights & Biases, set the `WANDB_API_KEY` environment variable before training.
The script automatically launches agent workers and the training server. The agent workers execute chart reasoning rollouts using the vision-language model, while the training server applies the VERL algorithm (GRPO) to improve the model based on answer accuracy rewards.