simseer and bugwise - web services for binary-level software similarity and defect detection
Post on 18-Nov-2014
837 Views
Preview:
DESCRIPTION
TRANSCRIPT
SILVIO CESARE AND YANG XIANGDEAKIN UNIVERSITY
Simseer and BugwiseWeb Services for Binary-level Software
Similarity and Defect Detection
Introduction
Defect detection Finds software bugs E.g., buffer overflows, divide-by-zeros, use-after-frees
Malware variant detection Discover obfuscated, evolved, mutated copies of
malwareSoftware theft detection
Discover illegitimate copies of softwarePlagiarism detection
Discover unauthorized copying of software code. E.g., student assignments.
Motivation
Defect detection External Auditing Verification of compilation and linkage
Malware variant detection Increase predictive power of signatures Most new malware are variants of existing malware
Software theft detection Protection of intellectual property Automated detection reduces costs of investigation
Plagiarism detection Provide a deterrent through automated detection Manual approach not scalable
Innovation
This research makes the following contributions: We propose an online web service, Bugwise, to
perform binary-level defect detection.
We propose an online web service, Simseer, to address malware variant detection, software theft detection and plagiarism detection.
We use state-of-the-art algorithms in novel applications.
We implement and make our services public
Related Work
Defect detection Formal methods, program analysis, abstract
interpretation, data flow analysis.Software similarity
Features make a birthmark (fingerprint) Similarity function comparing birthmarks (euclidean
distance, cosine similarity etc).Birthmarks
Vectors, strings, sets, trees, graphs etc. Byte-level content, instructions, basic blocks, control
flow, API calls etc. Our system uses control flow.
Our Approach
Bugwise and Simseer use a unified backend from our previous work – Malwise.
We implement two web services using cloud-based virtual private servers.
Simseer Uses control flow as a feature to generate a signature
(birthmark).
Bugwise Combines decompilation with traditional data flow analysis to
detect several bug classes.
Web Services Workflow
Web Frontend Scan Server
Script Scheduler
Script
MalwiseEvolutionary
Tree Creation
SSH Tunnel
SSH Tunnel (Simseer)
Store and Display Results
SSH Tunnel (Bugwise)
The Web Frontend
Accepts submission of archives and executables.
Implemented with server side PHP programming language.
PHP launches script to process submitted binary.
Script performs validation. E.g., Filenames have no special characters.
Launches C++ network client to submit binary to scan server.
The Web Frontend
The Scheduling Work Queue
Listens to TCP port on scan server.
Connects to web frontend via SSH tunnel.
Accepts binaries from web frontend.
Queues jobs so that only 1 is running at any time.
Launches Simseer or Bugwise script to process binary.
Malwise Backend
Malwise is a native C++ application of ~100,000 LOC.
Plugin-based modular system.
Simseer and Bugwise differ by their configuration and plugins.
Configuation specified in XML.
The Simseer Backend
Performs unpacking to remove malware obfsucation.
Decompiles the control flow.
1st pass generates signatures.
2nd pass shows similarity between signatures.
The Bugwise Backend
Performs decompilation of local variables.
Performs compiler-style optimisations (dead code elimiation, copy propagation, constant folding etc).
Performs data flow analysis (reaching defintions, upwards exposed uses etc).
Detects double frees (deallocating the same memory twice) using the data flow analysis results.
Configuration - Simseer (l), Bugwise (r)
<ModuleGroup>
<Name>Scan</Name>
<Run>Packer Detection Using Entropy</Run>
<Run>Unpacker Using Application Level Emulation</Run>
<Run>Structuring</Run>
<Run>NGram Structuring</Run>
</ModuleGroup>
<ModuleGroup>
<Name>Scan</Name>
<Run>Code Optimsation 1</Run>
<Run>Linux Arch</Run>
<Run>Pre Decompiler Data Flow Analysis</Run>
<Run>X86 Decompiler Data Flow Analysis</Run>
<Run>Decompiler Data Flow Analysis</Run>
<Run>Code Optimsation 2</Run>
<Run>IRDataFlowAnalysis</Run>
<Run>Double Free Detection</Run>
</ModuleGroup>
Simseer Evolutionary Tree Visualization
Phylogenetic tree – e.g. tree of life.
The closer nodes are in the tree, the more similar those nodes are.
Simseer backend generates distance/similarity matrix.
PHYLIP software package takes matrix and generates tree.
Tree is rendered to an image.
Program Realtionships Visualization
Results Processing
Parse XML output from Malwise
PHP parser
Simseer Display evolutionary tree and similarity matrix
Bugwise Display table showing address of double frees
Efficiency of Malwise as a Web Services
Does a web service incur much overhead compared to command line usage?
Test case is 9 samples submitted to Simseer.
Python script sends samples and waits for results.
We compare the times of command line versus the web service.
Mean overhead is 0.64 seconds.
Processing timesSimseer Web Service (l), Malwise Command Line (r)
Availability
http://www.FooCodeChu.Com
Rate limiting of submissions.
Limit of sample sizes and the number of samples in archives.
We intend to relax these restrictions as we migrate to more scalable infrastructure.
Future Work
Enterprise messaging to perform load balancing and queuing?
More options to scans to exploit Malwise plugin system.
Any-time clustering to cluster new samples incrementally in real-time?
Bug detection could be developed as bug management system.
Conclusion
We make available new services for bug detection and software similarity.
Our backend Malwise is versatile and allows plugins to implement these services.
Bugwise has found real bugs in Linux.
The web service overhead is minimal.
We believe web services in these applications will have future growth.
top related