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Automated Software Hardening for Entrypoints

ASHE aims to automatically enhance software robustness against unforeseen or harmful inputs. By focusing on entrypoint methods—those callable from outside the program—ASHE checks for potential undesired behaviors, such as array overflows or null-pointer dereferences. When ASHE detects such a vulnerability, it auto-synthesizes patches to harden the software.

ASHE first employs a minimization tool to reduce a program, ensuring it only encompasses a single method and that method's dependencies. Subsequently, it utilizes a verification tool, like a pluggable typechecker, to pinpoint code that may be susceptible to unexpected inputs. Concluding this process, a large language model (LLM) is used to rewrite the code, ensuring its compliance with the verification tool. Through this procedure, ASHE generates provably-hardened code.

Overview

ASHE has three main components: a verification minimizer, a set of verification tools, and a patch generator.
In our prototype, those three tools are:

  • Specimin: A tool that, given a Java program P and a set of methods M, produces a minimized, compilable version of P preserving the signatures of methods, structure of classes, and other specifications used in methods within M.
  • Checker Framework: A compiler-integrated tool that checks for specific types of errors in the Java code.
  • LLM (e.g., ChatGPT): Utilized to generate the expected appropriate code patches based on the warnings and errors identified by the Checker Framework.


Workflow

  1. Use Specimin to minimize the targeted Java code in a temporary directory, focusing on methods that require verification.
  2. Compile and check the minimized code using the Checker Framework.
  3. Any errors found during compilation are prompted to the LLM to generate a patch. If no errors are found, skip to step 7.
  4. The patch from the LLM response is then applied to the minimized code within the temporary directory.
  5. Recompile the modified code using the Checker Framework. If additional errors are identified after compilation, repeat steps 3-5 until no further errors are found.
  6. Replace the original code that was minimized from the absolute path with the modified code in the temporary directory.
  7. If there were no original errors, or the original code was successfully overwritten, exit the program.


Usage

🔴 Important Note: ASHE is still under active development, so expect frequent changes to its setup and usage. If you'd like to use ASHE, we suggest contacting us first.

Initial Setup

Download ASHE

  • Download ASHE from our GitHub to your local machine.

Creating a Configuration File

  • Using example.properties as a Template:
    • Rename the example.properties file in the resources directory to config.properties.
    • 🔴 Important Note: Ensure this file is ignored by git to prevent any sensitive information from being committed. The config.properties file will contain your OpenAI API key. If any sensitive information is committed, immediately revoke your API key and generate a new one.

Downloading Specimin

  • Navigate to Specimin on GitHub and download the project to your local machine.
  • Add the absolute path you downloaded Specimin to, to the config.properties file in the resources directory, replacing the specimin.tool.path placeholder.

Creating the ChatGPT API Key

  1. Create an OpenAI account:
    • Create an account on the OpenAI website.
  2. Create an OpenAI API key:
    • Create an API key for the ChatGPT API under View API Keys.
  3. Add the API key to config.properties:
    • Copy the API key from OpenAI and paste it into the config.properties file in the resources directory, replacing the openai.api.key placeholder.

Compiling ASHE

🔴 Important Note: This will be changing to a Gradle build.

  1. Navigate to project directory:
    • Open your terminal and navigate to the project root directory using the cd command.
  2. Compile ASHE:
    • Execute the following command:
      javac -cp ".:../resources:../../../libs/*" edu/njit/jerse/*.java

Running ASHE

  1. Execute ASHE:
    • 🔴 Important Note: This will be changing to a Gradle build.

    • After successful compilation, run ASHE using the following command:
      java -cp ".:../../../libs/*:../resources" edu.njit.jerse.ashe.ASHE "/root/path/to/your/targeted/project" "path/to/targetFile/Example.java" "com.example.Example#foo()" "llm-model"

Command Arguments:

  • --root: specifies the root directory of the target project
    • Format: absolute path to the project directory
    • Example: --root /root/path/to/your/targeted/project
  • --targetFile: identifies the source file within the project where the target methods are located
    • Format: relative path from the root directory to the source file
    • Example: --targetFile path/to/targetFile/Example.java
  • --targetMethod: specifies the target method that needs to be preserved
    • Format: fully.qualified.ClassName#methodName(ParameterType1, ParameterType2, ...)
    • Example: --targetMethod com.example.Example#foo()

Optional Argument:

  • --model: large language model to use. Currently, only GPT-4, mock, and dryrun are supported, where mock is a test mode that responds with a mock patch and dryrun is a test mode that skips the error correction process.
    • Example: gpt-4, mock, or dryrun
    • Note: if no LLM is specified, the default is gpt-4

Logging

🟡 Note: All logs are written to the logs directory in the project root directory.



Automation Process

ASHE includes an automation layer that streamlines the application of its hardening mechanisms on Java files and repositories. This is accomplished through two primary components:

AsheAutomation Class

The AsheAutomation class in edu.njit.jerse.automation automates the application of ASHE's minimization and error correction features on Java files within a specified directory.

Key functionalities include:

  • Processing All Java Files: Iterates over all Java files in a given Java source directory, applying ASHE's mechanisms to each file. The Java source directory is expected to match Maven/Gradle's standards, where the source code is located in src/main/java.
  • Method-Level Precision: Targets public methods in public classes within the Java files for minimization and error correction.

RepositoryAutomationEngine Class

The RepositoryAutomationEngine class in edu.njit.jerse.automation handles the automation of repository cloning and Java file processing.

Its main features are:

  • Repository Management: Clones or fetches repositories listed in a provided CSV file.
  • Bulk Processing: Applies AsheAutomation to every Java file within the cloned repositories.
  • Customizable Repository Data: Accepts a CSV file with repository URLs and branch information.


Automation Usage

/absolute/path/to/project/src/main/java/com/example/foo /absolute/path/to/project

Running AsheAutomation

  1. Execute AsheAutomation:
    • Run AsheAutomation using the following Gradle command:
      ./gradlew runAsheAutomation -PmodulePath="/path/to/module" -ProotProjectPath="/path/to/root/project" -Pllm="llm-model" -PpropsFilePath="/path/to/props/file"

Command Arguments:

  • --directoryPath: specifies the absolute path to the directory containing Java files to be processed
    • Format: absolute path to the directory
    • Example: /absolute/path/to/project/src/main/java/com/example/foo
  • --projectRootPath: indicates the absolute root path of the project
    • Format: absolute path to the project's root directory
    • Example: /absolute/path/to/project

Optional Argument:

  • --model: large language model to use. Currently, only GPT-4, mock, and dryrun are supported, where mock is a test mode that responds with a mock patch and dryrun is a test mode that skips the error correction process.
    • Example: gpt-4, mock, or dryrun
    • Note: if no LLM is specified, the default is gpt-4

Optional Argument:

  • --propsFilePath: specifies the path to the config.properties file
    • Format: absolute path to the props file
    • Example: /path/to/props/file

Running RepositoryAutomationEngine

To facilitate the automated processing of multiple repositories, RepositoryAutomationEngine requires a CSV file containing the details of each repository. Follow these steps to create and format your CSV file correctly:

  1. CSV File Structure:

    • The CSV file should include a header row followed by rows for each repository.
    • Columns in the CSV file must be formatted as follows:
      • Repository: This column contains the URL of the Git repository. The URL is not required to end in .git.
      • Branch: This column specifies the branch name in the repository that will be cloned or fetched. If this column is left empty, the default branch (usually "main" or "master") will be used.
  2. Formatting Guidelines:

    • Ensure the header row contains exactly two columns named Repository and Branch.
    • Example format of the header row: Repository,Branch
    • Each subsequent row should contain the repository URL in the first column and the branch name in the second column.
  3. Creating the File:

    • Use any text editor or spreadsheet software to create the CSV file.
    • Save the file with a .csv extension.
  4. Example CSV Content:

    Repository,Branch
    https://github.com/example/repo1.git,master
    https://github.com/example/repo2.git,development
    

    🔴 Important Note: It is crucial to adhere to the specified format for the CSV file to ensure proper processing by the RepositoryAutomationEngine.

  5. Choose an LLM:

    • To use ChatGPT-4, pass gpt-4 through the arguments.
    • More LLMs will be added in the future.
  6. Execute RepositoryAutomationEngine:

    • Run RepositoryAutomationEngine using the following Gradle command:
      ./gradlew runRepositoryAutomation -PrepositoriesCsvPath="/path/to/repositories.csv" -PcloneDirectory="/path/to/clone/directory" -Pllm="llm-model" -PpropsFilePath="/path/to/props/file"

Command Arguments:

  • --csvFilePath: specifies the path to the CSV file containing repository details
    • Format: absolute path to the CSV file
    • Example: path/to/repositories.csv
  • --repoDir: indicates the directory where the repositories should be cloned
    • Format: absolute path to the cloning directory
    • Example: /path/to/clone/directory

Optional Argument:

  • --model: large language model to use. Currently, only GPT-4, mock, and dryrun are supported, where mock is a test mode that responds with a mock patch and dryrun is a test mode that skips the error correction process.
    • Example: gpt-4, mock, or dryrun
    • Note: if no LLM is specified, the default is gpt-4

Optional Argument:

  • --propsFilePath: specifies the path to the config.properties file
    • Format: absolute path to the props file
    • Example: /path/to/props/file


Limitations

  • While ASHE utilizes Specimin to minimize the targeted Java code, Specimin is still in its early stages and may not fully function for complex projects.
  • The system's focus is currently on Java, which limits its applicability to other languages.
  • There is potential for the LLM to generate patches that do not fully address the identified errors or cause additional errors.
  • ASHE is currently limited to only utilizing ChatGPT as the LLM. While ChatGPT has shown promising results, the intent is to expand the LLM options to include other models - allowing users to select the model that best fits their needs.
  • The user will need to create their own OpenAI API key to utilize ChatGPT, as stated in Usage.
  • AsheAutomation is currently limited to only processing files in the src/main/java directory of a Maven/Gradle project. This may cause issues with projects that do not follow this standard.

Contributing

If you have suggestions, bug reports, or contributions to the project, please open an issue or submit a pull request.

License

This project is licensed under the MIT License. Refer to the LICENSE file for more details.


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