Skip to content

petablox/arbitrar

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

Arbitrar: User Guided API Misuse Detection

This project aims to apply Active Learning on API Misuse detection. Arbitrar first fetch, compile, and analyze a given codebase, to create a database. After static analysis, the user will answer simple yes and no questions to guide the search on API Misuses.

Roughly, this tool provides the following:

  1. Data Collection - fetching real-life projects and compile
  2. Static Analysis - using symbolic execution to capture execution traces and extract features
  3. Learning - use active learning guided by human to detect API Misuses

How to use

Please first build the project, and then refer to doc/how_to_use.md to learn to use the tool.

Build

From Source

Infrastructure Prerequisites:

Application Prerequisites

  • Graphviz
  • libmagic

After installing the prerequisites, please run the following commands

$ make setup    # install the conda environments
$ make          # build the static analyzer in rust
$ make install  # install to ~/.local/bin for fast access of `arbitrar` command

Also, please refer to https://github.com/travitch/whole-program-llvm for tutorial to setup wllvm.

Docker

(Work In Progress)

The Data Collection framework of this project requires Linux/Ubuntu environment and the user needs to have root access. Therefore it's the best if we can use Docker Image. We prepared the docker image for you to play with:

cd docker/
docker build -f Dockerfile .
docker run -d --name arbitrar-docker
docker exec -it arbitrar-docker bash

The default user is aspire and the password is ai4code.

When you first run the docker container, please be sure to execute the following scripts:

# Inside user aspire's home directory
./install-arbitrar.sh