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Next-Gen Autonomous Game Testing

No complex operations required. Just input natural language commands, and AI will support the entire testing process.
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  • Scalable Computing Power Expansion

    Break through labor bottlenecks, achieve unlimited expansion of testing capacity, and enable 24/7 uninterrupted automated testing.

  • Knowledge Reuse & Accumulation

    Accumulate testing experience and expertise into reusable assets, and build an exclusive game knowledge graph.

  • AI-Powered Game World Understanding

    AI Agents deeply interpret game scenarios, simulate real player behaviors, and support complex task workflows.

  • Full Lifecycle Coverage

    Cover the entire process from R&D, testing to launch and operation, realizing a smart quality assurance closed loop.

How AI Acorn Works: Enabling AI to Understand and Operate Games

Step 1: Information Collection
Collect multi-dimensional information such as UI, Actors, positions, and status via the Unreal Engine (UE) plugin to ensure data integrity.

Step 2: Knowledge Graph Construction
Construct a knowledge graph based on project-specific data to enhance the reliability of decision-making.

Step 3: Agent Decision-Making
The AI Agent makes decisions based on the knowledge graph and real-time game status.

Four Core Highlights

Intelligent Test Case Generation

Based on game design documents and knowledge graphs, LLMs automatically decompose functional points and generate high-coverage test cases.

- Support natural language input for requirements and automatically decompose task operation chains. - Automatically generate test cases for various paths and validate execution results at each step. - Test cases are reusable and editable, with support for data-driven expansion.

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Self-Healing Engine: Resilient to UI Changes

Integrates visual recognition with in-game data collection, enabling autonomous adaptation of scripts.

- No hard-coded element positioning required; UI style and resolution changes do not impact test execution. - Built-in intelligent retries and exception handling automatically address loading delays and pop-up interruptions. - Supports DSL instruction-driven execution, with execution efficiency comparable to traditional automation scripts.

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Multimodal Perception: Capture Game States

Collects full-dimensional test data through video stream collection + game plugin collection.

- Visual Perception: Identifies UI controls, character status, and scene visuals. - Data Perception: Acquires game memory data, performance metrics, and log information. - Behavior Perception: Records keyboard/mouse operations, task progress, and resource changes.

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Intelligent Defect Analysis

Integrate AI large models and log analysis capabilities to automatically cluster test logs, identify root causes of defects, and generate standardized defect reports ready for direct submission.

- Automatically identify defect types and accurately label them as functional/performance/compatibility/logical defects. - Intelligently associate historical similar defects, automatically flag duplicate tickets, and eliminate duplicate submissions and redundant work. - Generate a visualized reproduction path with one click, including video recordings, step-by-step operation instructions, and data snapshots, to accurately restore the issue scenario.

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Three Auxiliary Functions

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  • Test Knowledge Asset Accumulation & Reuse

    · Achievement: Accumulate testing knowledge and experience (e.g., defect patterns, test cases) to form structured, reusable assets. · Core Value: Shift testing knowledge and experience from individual-dependent to organizational assets, eliminate redundant work, and build a valuable knowledge repository for future projects.

  • Large-Scale Parallel Testing Capability

    · Achievement: Support test task execution across multiple machines, accounts, and platforms in parallel; automatically generate test cases, execution paths, and validation rules based on testing requirements. · Core Value: Unlike traditional testing where capacity expansion relies on increased manual effort, AI Agents enable rapid, elastic scaling of testing throughput through automation and parallelization.

  • Game Knowledge Graph Construction & Intelligent QA

    · Achievement: Build a structured game knowledge graph from project data, merging static (game rules, workflows, character attributes) and dynamic (player behavior, defect history) information. · Core Value: Leverage knowledge graphs to enhance AI decision accuracy and reliability, providing accurate, traceable answers for users to quickly obtain game information and improve decision efficiency.

AI-Driven End-to-End Game Testing

Redefine Quality Assurance with Intelligent Closed-Loop Workflows
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Why is Acorn AI superior to traditional solutions?

Access to hundreds of Android/iOS real devices for quick and easy Live Testing.
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FAQ

  • What is AI-Powered Automated Testing?

  • To what extent can POC phase effect verification be supported?

  • Is the POC phase completely free of charge?

  • Are there any requirements for the game engine used?

  • Is there any risk of game information leakage?

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