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AppAgent: Multimodal Agents as Smartphone Users, an LLM-based multimodal agent framework designed to operate smartphone apps.

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Chi Zhang*†,Zhao Yang*,Jiaxuan Liu*,Yucheng Han,Xin Chen,Zebiao Huang,
Bin Fu,Gang Yu✦
(* equal contribution, † Project Leader, ✦ Corresponding Author )

ℹ️Should you encounter any issues⚠️while using our project, please feel free to report them onGitHub Issuesor reach out toDr. Chi Zhangvia email atdr.zhang.chi@outlook.

ℹ️This project will be synchronously updated on the officialTencentQQGYLabGithub Page.

📝 Changelog

  • [2024.2.8]:Addedqwen-vl-max( thông nghĩa ngàn hỏi -VL) as an alternative multi-modal model. The model is currently free to use but has a relatively poorer performance compared with GPT-4V.
  • [2024.1.31]:Released theevaluation benchmarkused during our testing of AppAgent
  • [2024.1.2]:🔥Added an optional method for the agent to bring up a grid overlay on the screen totap/swipe anywhereon the screen.
  • [2023.12.26]:AddedTipssection for better use experience; added instruction for using theAndroid Studio emulatorfor users who do not have Android devices.
  • [2023.12.21]:🔥🔥 Open-sourced the git repository, including the detailed configuration steps to implement our AppAgent!

🔆 Introduction

We introduce a novel LLM-based multimodal agent framework designed to operate smartphone applications.

Our framework enables the agent to operate smartphone applications through a simplified action space, mimicking human-like interactions such as tapping and swiping. This novel approach bypasses the need for system back-end access, thereby broadening its applicability across diverse apps.

Central to our agent's functionality is its innovative learning method. The agent learns to navigate and use new apps either through autonomous exploration or by observing human demonstrations. This process generates a knowledge base that the agent refers to for executing complex tasks across different applications.

✨ Demo

The demo video shows the process of using AppAgent to follow a user on X (Twitter) in the deployment phase.

x_deploy_720p_1to1.mp4

An interesting experiment showing AppAgent's ability to pass CAPTCHA.

X_authenticate.mp4

An example of using the grid overlay to locate a UI element that is not labeled with a numeric tag.

grid_example.mp4

🚀 Quick Start

This section will guide you on how to quickly usegpt-4-vision-preview(orqwen-vl-max) as an agent to complete specific tasks for you on your Android app.

⚙️ Step 1. Prerequisites

  1. On your PC, download and installAndroid Debug Bridge(adb) which is a command-line tool that lets you communicate with your Android device from the PC.

  2. Get an Android device and enable the USB debugging that can be found in Developer Options in Settings.

  3. Connect your device to your PC using a USB cable.

  4. (Optional) If you do not have an Android device but still want to try AppAgent. We recommend you download Android Studioand use the emulator that comes with it. The emulator can be found in the device manager of Android Studio. You can install apps on an emulator by downloading APK files from the internet and dragging them to the emulator. AppAgent can detect the emulated device and operate apps on it just like operating a real device.

    Screenshot 2023-12-26 at 22 25 42
  5. Clone this repo and install the dependencies. All scripts in this project are written in Python 3 so make sure you have installed it.

cdAppAgent
pip install -r requirements.txt

🤖 Step 2. Configure the Agent

AppAgent needs to be powered by a multi-modal model which can receive both text and visual inputs. During our experiment , we usedgpt-4-vision-previewas the model to make decisions on how to take actions to complete a task on the smartphone.

To configure your requests to GPT-4V, you should modifyconfig.yamlin the root directory. There are two key parameters that must be configured to try AppAgent:

  1. OpenAI API key: you must purchase an eligible API key from OpenAI so that you can have access to GPT-4V.
  2. Request interval: this is the time interval in seconds between consecutive GPT-4V requests to control the frequency of your requests to GPT-4V. Adjust this value according to the status of your account.

Other parameters inconfig.yamlare well commented. Modify them as you need.

Be aware that GPT-4V is not free. Each request/response pair involved in this project costs around $0.03. Use it wisely.

You can also tryqwen-vl-max( thông nghĩa ngàn hỏi -VL) as the alternative multi-modal model to power the AppAgent. The model is currently free to use but its performance in the context of AppAgent is poorer compared with GPT-4V.

To use it, you should create an Alibaba Cloud account andcreate a Dashscope API keyto fill in theDASHSCOPE_API_KEYfield in theconfig.yamlfile. Change theMODELfield fromOpenAItoQwenas well.

If you want to test AppAgent using your own models, you should write a new model class inscripts/model.pyaccordingly.

🔍 Step 3. Exploration Phase

Our paper proposed a novel solution that involves two phases, exploration, and deployment, to turn GPT-4V into a capable agent that can help users operate their Android phones when a task is given. The exploration phase starts with a task given by you, and you can choose to let the agent either explore the app on its own or learn from your demonstration. In both cases, the agent generates documentation for elements interacted during the exploration/demonstration and saves them for use in the deployment phase.

Option 1: Autonomous Exploration

This solution features a fully autonomous exploration which allows the agent to explore the use of the app by attempting the given task without any intervention from humans.

To start, runlearn.pyin the root directory. Follow the prompted instructions to selectautonomous exploration as the operating mode and provide the app name and task description. Then, your agent will do the job for you. Under this mode, AppAgent will reflect on its previous action making sure its action adheres to the given task and generate documentation for the elements explored.

Python learn.py

Option 2: Learning from Human Demonstrations

This solution requires users to demonstrate a similar task first. AppAgent will learn from the demo and generate documentations for UI elements seen during the demo.

To start human demonstration, you should runlearn.pyin the root directory. Follow the prompted instructions to select human demonstrationas the operating mode and provide the app name and task description. A screenshot of your phone will be captured and all interactive elements shown on the screen will be labeled with numeric tags. You need to follow the prompts to determine your next action and the target of the action. When you believe the demonstration is finished, typestopto end the demo.

Python learn.py

📱 Step 4. Deployment Phase

After the exploration phase finishes, you can runrun.pyin the root directory. Follow the prompted instructions to enter the name of the app, select the appropriate documentation base you want the agent to use and provide the task description. Then, your agent will do the job for you. The agent will automatically detect if there is documentation base generated before for the app; if there is no documentation found, you can also choose to run the agent without any documentation (success rate not guaranteed).

Python run.py

💡 Tips

  • For an improved experience, you might permit AppAgent to undertake a broader range of tasks through autonomous exploration, or you can directly demonstrate more app functions to enhance the app documentation. Generally, the more extensive the documentation provided to the agent, the higher the likelihood of successful task completion.
  • It is always a good practice to inspect the documentation generated by the agent. When you find some documentation not accurately describe the function of the element, manually revising the documentation is also an option.

📊 Evaluation

Please refer toevaluation benchmark.

📖 To-Do List

  • Incorporate more LLM APIs into the project.
  • Open source the Benchmark.
  • Open source the configuration.

😉 Citation

@misc{yang2023appagent,
title={AppAgent: Multimodal Agents as Smartphone Users},
author={Chi Zhang and Zhao Yang and Jiaxuan Liu and Yucheng Han and Xin Chen and Zebiao Huang and Bin Fu and Gang Yu},
year={2023},
eprint={2312.13771},
archivePrefix={arXiv},
primaryClass={cs.CV}
}

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TheMIT license.

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