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The right thing for the wrong reasons: FLOSS doesn't imply security

Originally posted 2022-02-02. Last updated 2022-03-17.

Background

I find it easy to handle views different from my own. I feel more troubled when I see people agree with me for the wrong reasons.

It's no secret that I'm a passionate supporter of software freedom: I've written two posts about how Free, Libre, and Open-Source Software (FLOSS) is necessary but insufficient to preserve user autonomy:

Whatsapp and the domestication of users

Keeping platforms open

After two posts spanning over 5000 words, I need to add some nuance.

Introduction

One of the biggest parts of the Free and Open Source Software definitions is the freedom to study a program and modify it; in other words, access to editable source code. I agree that such access is essential; however, far too many people support source availability for the *wrong* reasons. One such reason is that source code is necessary to have any degree of transparency into how a piece of software operates, and is therefore necessary to determine if it is at all secure or trustworthy. Although security through obscurity is certainly not a robust measure, this claim has two issues:

I'd like to expand on these issues, focusing primarily on compiled binaries. Bear in mind that I do not think that source availability is *useless* from a security perspective (it certainly makes audits easier), and I *do* think that source availability is required for user freedom. I'm arguing only that *source unavailability doesn't imply insecurity*, and *source availability doesn't imply security*. It's possible (and often preferable) to perform security analysis on binaries, without necessarily having source code. In fact, vulnerability discovery doesn't typically rely on source code analysis.

I'll update this post occasionally as I learn more on the subject. If you like it, check back in a month or two to see if it has something new.

(PS: this stance is not absolute; I concede to several good counter-arguments in a dedicated section near the bottom!)

How security fixes work

I don't think anyone seriously claims that software's security instantly improves the second its source code is published. The argument I'm responding to is that source code is necessary to to understand what a program does and how (in)secure it is, and without it we can't know for sure.

Assuming a re-write that fundamentally changes a program's architecture is not an option¹, software security typically improves by fixing vulnerabilities via something resembling this process:

1. Someone discovers a vulnerability

2. Developers are informed of the vulnerability

3. Developers reproduce the issue and understand what caused it

4. Developers patch the software to fix the vulnerability

Source code is typically helpful (sometimes essential) to Step 3. If someone has completed Step 3, they will require source code to proceed to Step 4. Source code *isn't necessary for Steps 1 and 2*; these steps rely upon understanding how a program misbehaves. For that, we use *reverse engineering* and/or *fuzzing*.

Reverse engineering

Understanding *how a program is designed* is not the same as understanding *what a program does.* A reasonable level of one type of understanding does not imply the other.

Source code² is essential to describe a program's high-level, human-comprehensible design; it represents a contract that outlines how a developer *expects* a program to behave. A compiler or interpreter³ must then translate it into machine instructions. But source code isn't always easy to map directly to machine instructions because it is part of a complex system:

Furthermore, all programmers are flawed mortals who don't always fully understand source code. Everyone who's done a non-trivial amount of programming is familiar with the feeling of encountering a bug during run-time for which the cause is impossible to find...until they notice it staring them in the face on Line 12. Think of all the bugs that *aren't* so easily noticed.

Reading the source code, compiling, and passing tests isn't sufficient to show us a program's final behavior. The only way to know what a program does when you run it is to...run it.⁵

Special builds

Almost all programmers are fully aware of their limited ability, which is why most already employ techniques to analyze run-time behavior that don't depend on source code. For example, developers of several compiled languages⁵ can build binaries with sanitizers to detect undefined behavior, races, uninitialized reads, etc. that human eyes may have missed when reading source code. While source code is necessary to *build* these binaries, it isn't necessary to run them and observe failures.

Distributing binaries with sanitizers and debug information to testers is a valid way to collect data about a program's potential security issues.

Dynamic analysis

It's hard to figure out which syscalls and files a large program program needs by reading its source, especially when certain libraries (e.g. the libc implementation/version) can vary. A syscall tracer like strace(1)⁶ makes the process trivial.

strace

A personal example: the understanding I gained from `strace` was necessary for me to write my bubblewrap scripts. These scripts use bubblewrap(1) to sandbox programs with the minimum permissions possible.

bwrap-scripts

bubblewrap

Analyzing every relevant program and library's source code would have taken me months, while `strace` gave me everything I needed to know in an afternoon: analyzing the `strace` output told me exactly which syscalls to allow and which files to grant access to, without even having to know what language the program was written in. I generated the initial version of the syscall allow-lists with the following command:⁷

strace name-of-program program-args 2>&1 \
	| rg '^([a-z_]*)\(.*' --replace '$1' \
	| sort | uniq

This also extends to determining how programs utilize the network: packet sniffers like Wireshark can determine when a program connects to the network, and where it connects.

Wireshark

These methods are not flawless. Syscall tracers are only designed to shed light on how a program interacts with the kernel. Kernel interactions tell us plenty (it's sometimes all we need), but they don't give the whole story. Furthermore, packet inspection can be made a bit painful by transit encryption⁸; tracing a program's execution alongside packet inspection can offer clarity, but this is not easy.

For more information, we turn to *core dumps*, also known as memory dumps. Core dumps share the state of a program during execution or upon crashing, giving us greater visibility into exactly what data a program is processing. Builds containing debugging symbols (e.g. DWARF) have more detailed core dumps. Vendors that release daily snapshots of pre-release builds typically include some symbols to give testers more detail concerning the causes of crashes. Web browsers are a common example: Chromium dev snapshots, Chrome Canary, Firefox Nightly, WebKit Canary builds, etc. all include debug symbols. Until recently, *Minecraft: Bedrock Edition* included debug symbols which were used heavily by the modding community.⁹

Dynamic analysis example: Zoom

In 2020, Zoom Video Communications came under scrutiny for marketing its "Zoom" software as a secure, end-to-end encrypted solution for video conferencing. Zoom's documentation claimed that it used "AES-256" encryption. Without source code, did we have to take the docs at their word?

The Citizen Lab didn't. In April 2020, it published a report revealing critical flaws in Zoom's encryption:

Move Fast and Roll Your Own Crypto: A Quick Look at the Confidentiality of Zoom Meetings

It utilized Wireshark and mitmproxy to analyze networking activity, and inspected core dumps to learn about its encryption implementation. The Citizen Lab's researchers found that Zoom actually used an incredibly flawed implementation of a weak version of AES-128 (ECB mode), and easily bypassed it.

Syscall tracing, packet sniffing, and core dumps are great, but they rely on manual execution which might not hit all the desired code paths. Fortunately, there are other forms of analysis available.

Binary analysis

Tracing execution and inspecting memory dumps can be considered forms of reverse engineering, but they only offer a surface-level view of what's going on. Reverse engineering gets much more interesting when we analyze a binary artifact.

Static binary analysis is a powerful way to inspect a program's underlying design. Decompilation (especially when supplemented with debug symbols) can re-construct a binary's assembly or source code. Symbol names may look incomprehensible in stripped binaries, and comments will be missing. What's left is more than enough to decipher control flow to uncover how a program processes data. This process can be tedious, especially if a program uses certain forms of binary obfuscation.

The goal doesn't have to be a complete understanding of a program's design (incredibly difficult without source code); it's typically to answer a specific question, fill in a gap left by tracing/fuzzing, or find a well-known property. When developers publish documentation on the security architecture of their closed-source software, reverse engineering tools like decompilers are exactly what you need to verify their honesty (or lack thereof).

Decompilers are seldom used alone in this context. Instead, they're typically a component of reverse engineering frameworks that also sport memory analysis, debugging tools, scripting, and sometimes even IDEs. Here are two popular frameworks:

The Rizin framework (I use this)

The Ghidra software reverse engineering suite

Their documentation should help you get started if you're interested.

Example: malware analysis

These reverse-engineering techniques--a combination of tracing, packet sniffing, binary analysis, and memory dumps--make up the workings of most modern malware analysis. See this example of a fully-automated analysis of the Zoom Windows installer:

Falcon Sandbox report for ZoomInstaller.exe

It enumerates plenty of information about Zoom without access to its source code: reading unique machine information, anti-VM and anti-reverse-engineering tricks, reading config files, various types of network access, scanning mounted volumes, and more.

To try this out yourself, use a sandbox designed for dynamic analysis. Cuckoo is a common and easy-to-use solution, while DRAKVUF is more advanced.

Cuckoo Sandbox: automated malware analysis

DRAKVUF® Black-box Binary Analysis System

Extreme example: the truth about Intel ME and AMT

The Intel Management Engine (ME) is a mandatory subsystem of all Intel processors (after 2008) with extremely privileged access to the host system. Active Management Technology (AMT) runs atop it on the subset of Intel processors with "vPro" branding. The latter can be disabled and is intended for organizations to remotely manage their inventory (installing software, monitoring, remote power-on/sleep/wake, etc).

The fact that Intel ME has such deep access to the host system and the fact that it's proprietary have both made it the subject of a high degree of scrutiny. Many people (most of whom have little experience in the area) connected these two facts together to allege that the ME is a backdoor, often by confusedly citing functionality of Intel AMT instead of ME. Is it really impossible to know for sure?

I picked Intel ME+AMT to serve as an extreme example: it shows both the power and limitations of the analysis approaches covered. ME isn't made of simple executables you can just run in an OS because it sits far below the OS, in what's sometimes called "Ring -3".¹⁰ Analysis is limited to external monitoring (e.g. by monitoring network activity) and reverse-engineering unpacked partially-obfuscated firmware updates, with help from official documentation. This is slower and harder than analyzing a typical executable or library.

Answers are a bit complex and...more boring than what sensationalized headlines would say. Reverse engineers such as Igor Skochinsky and Nicola Corna (the developers of me-tools and me_cleaner, respectively) have analyzed ME, while Vassilios Ververis thoroughly analyzed AMT in 2010. Interestingly, the former pair argues that auditing binary code is preferable to potentially misleading source code: binary analysis allows auditors to "cut the crap" and inspect what software is truly made of. However, this was balanced by a form of binary obfuscation that the pair encountered; I'll describe it in a moment.

Intel ME: Myths and Reality (PDF)

Intel ME secrets

Security Evaluation of Intel's Active Management Technology

Simply monitoring network activity and systematically testing all claims made by the documentation allowed Ververis to uncover a host of security issues in Intel AMT. However, no undocumented features have (to my knowledge) been uncovered. The problematic findings revolved around flawed/insecure implementations of documented functionality. In other words: there's been no evidence of AMT being "a backdoor", but its security flaws could have had a similar impact. Fortunately, AMT can be disabled. What about ME?

This is where some binary analysis comes in. Neither of Skochinsky's linked presentations seem to enumerate any contradictions with official Intel documentation. Unfortunately, some components are poorly understood due to being obfuscated using Huffman compression with unknown dictionaries:

Intel ME Huffman algorithm

Understanding the inner workings of the obfuscated components blurs the line between software reverse-engineering and figuring out how the chips are actually made, the latter of which is nigh-impossible if you don't have access to a chip lab full of cash. However, black-box analysis does tell us about the capabilities of these components: see page 21 of "ME Secrets". Thanks to zdctg for clarifying this.

Skochinsky's and Corna's analysis was sufficient to clarify (but not completely contradict) sensationalism claiming that ME can remotely lock any PC (it was a former opt-in feature), can spy on anything the user does (they clarified that access is limited to unblocked parts of the host memory and the integrated GPU, but doesn't include e.g. the framebuffer), etc.

While claims such as "ME is a black box that can do anything" are misleading, ME not without its share of vulnerabilities. My favorite look at its issues is a presentation by Mark Ermolov and Maxim Goryachy at Black Hat Europe 2017:

How to Hack a Turned-Off Computer, or Running Unsigned Code in Intel Management Engine.

In short: ME being proprietary doesn't mean that we can't find out how (in)secure it is. Binary analysis when paired with runtime inspection can give us a good understanding of what trade-offs we make by using it. While ME has a history of serious vulnerabilities, they're nowhere near what borderline conspiracy theories claim.¹¹

Example sensationalism around Intel ME

(Note: Intel is not alone here. Other chips typically have equivalents, e.g. AMD Secure Technology).

Fuzzing

Manual invocation of a program paired with a tracer like `strace` won't always exercise all code paths or find edge-cases. Fuzzing helps to bridge this gap: it automates the process of causing a program to fail by generating random or malformed data to feed it. Researchers then study failures and failure-conditions to isolate a bug.

Fuzzing doesn't necessarily depend on access to source code, as it is a black-box technique. Fuzzers like American Fuzzy Loop (AFL) normally use special builds:

AFL

Other fuzzing setups can work with just about any binaries.

AFL: Binary-only fuzzing

In fact, some types of fuzz tests (e.g. fuzzing a web API) hardly need any implementation details.

APIFuzzer

Fuzzing frequently catches bugs that are only apparent by running a program, not by reading source code. Even so, the biggest beneficiaries of fuzzing are open source projects. cURL, OpenSSL, web browsers, text rendering libraries (HarfBuzz, FreeType) and toolchains (GCC, Clang, the official Go toolchain, etc.) are some notable examples.

I've said it before but let me say it again: fuzzing is really the top method to find problems in curl once we've fixed all flaws that the static analyzers we use have pointed out. The primary fuzzing for curl is done by OSS-Fuzz, that tirelessly keeps hammering on the most recent curl code.

--- Daniel Stenberg "A Google grant for libcurl work"

Example: CVE-2022-0185

A recent example of how fuzzing helps spot a vulnerability in an open-source project is CVE-2022-0185: a Linux 0-day found by the Crusaders of Rust a few weeks ago. It was discovered using the syzkaller kernel fuzzer.

oss-security: Linux kernel: Heap buffer overflow in fs_context.c since version 5.1

Syzkaller

The process was documented on Will's Root:

CVE-2022-0185 - Winning a $31337 Bounty after Pwning Ubuntu and Escaping Google's KCTF Containers

I *highly* encourage giving it a read; it's the perfect example of fuzzing with sanitizers to find a vulnerability, reproducing the vulnerability (by writing a tiny C program), *then* diving into the source code to find and fix the cause, and finally reporting the issue (with a patch!). When source isn't available, the vendor would assume responsibility for the "find and fix" steps.

The fact that some of the most-used pieces of FLOSS in existence have been the biggest beneficiaries of source-agnostic approaches to vulnerability analysis should be quite revealing. The source code to these projects has received attention from millions of eyes, yet they *still* invest in fuzzing infrastructure and vulnerability-hunters prefer analyzing artifacts over inspecting the source.

Good counter-arguments

I readily concede to several points in favor of source availability from a security perspective:

Most of this post is written with the assumption that binaries are inspectable and traceable. Binary obfuscation and some forms of content protection/DRM violate this assumption and actually do make analysis more difficult.

Beyond source code, transparency into the development helps assure users of compliance with good security practices. Viewing VCS history, patch reviews, linter configurations, etc. reveal the standards that code is being held up to, some of which can be related to bug-squashing and security.

Patience on Matrix also had a great response, which I agree with and adapt below:

Whether or not the source code is available for software does not change how insecure it is. However, there are good security-related incentives to publish source code.

Both Patience and Drew Devault argue that given the above points, a project whose goal is maximum security would release code. Strictly speaking, I agree. Good intentions don't imply good results, but they can *supplement* good results to provide some trust in a project’s future.

Conclusion

I've gone over some examples of how analyzing a software's security properties need not depend on source code, and vulnerability discovery in both FLOSS and in proprietary software uses source-agnostic techniques. Dynamic and static black-box techniques are powerful tools that work well from user-space (Zoom) to kernel-space (Linux) to low-level components like Intel ME+AMT. Source code enables the vulnerability-fixing process but has limited utility for the evaluation/discovery process.

Don't assume software is safer than proprietary alternatives just because its source is visible; come to a conclusion after analyzing both. There are lots of great reasons to switch from macOS or Windows to Linux (it's been my main OS for years), but security is low on that list:

Linux (In)security

All other things being mostly equal, FLOSS is obviously *preferable* from a security perspective; I listed some reasons why in the counter-arguments section. Unfortunately, being helpful is not the same as being necessary. All I argue is that source unavailability does not imply insecurity, and source availability does not imply security. Analysis approaches that don't rely on source are typically the most powerful, and can be applied to both source-available and source-unavailable software. Plenty of proprietary software is more secure than FLOSS alternatives; few would argue that the sandboxing employed by Google Chrome or Microsoft Edge is more vulnerable than Pale Moon or most WebKitGTK-based browsers, for instance.

Releasing source code is just one thing vendors can do to improve audits; other options include releasing test builds with debug symbols/sanitizers, publishing docs describing their architecture, and/or just keeping software small and simple. We should evaluate software security through *study* rather than source model. Support the right things for the right reasons, and help others make informed choices with accurate information. There are enough good reasons to support software freedom; we don't need to rely on bad ones.

¹ Writing an alternative or re-implementation doesn't require access to the original's source code, as is evidenced by a plethora of clean-room re-implementations of existing software written to circumvent the need to comply with license terms.

² Ideally well-documented, non-obfuscated code.

³ Or a JIT compiler, or...

⁴ For completeness, I should add that there is one source-based approach that can verify correctness: formal proofs. Functional programming languages that support dependent types can be provably correct at the source level. Assuming their self-hosted toolchains have similar guarantees, developers using these languages might have to worry less about bugs they couldn't find in the source code. This can alleviate concerns that their language runtimes can make it hard to reason about low-level behavior. Thanks to Adrian Cochrane for pointing this out.

https://en.wikipedia.org/wiki/Dependent_type

⁵ For example: C, C++, Objective-C, Go, Fortran, and others can utilize sanitizers from Clang and/or GCC.

⁶ This is probably what people in *The Matrix* were using to see that iconic digital rain.

⁷ This command only lists syscall names, but I did eventually follow the example of sandbox-app-launcher by allowing certain syscalls (e.g. ioctl) only when invoked with certain parameters. Also, I used ripgrep because I'm more familiar with PCRE-style capture groups.

sandbox-app-launcher

⁸ Decrypting these packets typically involves saving and using key logs, or using endpoints with known pre-master secrets. Didier Stevens wrote a good series about this:

Decrypting TLS Streams With Wireshark: Part 1

⁹ I invite any modders who miss these debug symbols to check out the FLOSS Minetest, perhaps with the MineClone2 game.

Minetest

MineClone2

¹⁰ See page 127-130 of the Invisible Things Lab's Quest to the Core slides. Bear in mind that they often refer to AMT running atop ME.

Quest to the Core

¹¹ As an aside: your security isn't necessarily improved by "disabling" it, since it still runs during the initial boot sequence and does provide some hardening measures of its own (e.g., a TPM).

¹² In 2017, Calibre's author wanted to stay with Python 2 after its EOL date, and maintain Python 2 himself:

Calibre bug #1714107: "Python 2 is retiring"

Users and package maintainers were quite unhappy with this, as Python 2 would no longer be receiving security fixes after 2020. While official releases of Calibre use a bundled Python interpreter, distro packages typically use the system Python package; Calibre's popularity and insistence on using Python 2 made it a roadblock to getting rid of the Python 2 package in most distros. What eventually happened was that community members (especially Eli Schwartz and Flaviu Tamas) submitted patches to migrate Calibre away from Python 2. Calibre migrated to Python 3 by version 5.0:

https://calibre-ebook.com/new-in/fourteen

¹³ Linux distributions' CFI+ASLR implementations rely executables compiled with CFI+PIE support, and ideally with stack-smashing protectors and no-execute bits. These implementations are flawed:

On the Effectiveness of Full-ASLR on 64-bit Linux

Brad Spengler's presentation comparing OpenBSD and Linux ASLR attempts with PaX's own implementation

¹⁴ The best attempt I know of is the Signal contact discovery service leveraging Trusted Execution Environments, but for limited functionality using an implementation (Intel SGX) that's far from bulletproof.

Signal blog: private contact discovery

Wikipedia: Trusted Execution Environment

Wikipedia: Intel SGX: Attacks

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