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Top 5 SAST Auto-fixing Tools and How They Compare

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October 29, 2024

0 mins read

7 hours. That’s how long, on average, a developer takes to remediate a security issue in their code. 

Vulnerability detection is improving rapidly and scaling, but remediating security risks is still a tedious, time-consuming process that takes developers away from their core work. And now, with AI-generated code introducing vulnerabilities at greater speed and volume than ever before, remediation is taking even more time. 

What insecure code remediation involves

Developers have to figure out what the security issues are, research how best to fix them efficiently, and then implement the fixes. This results in broken momentum, reduced fix rates leading to growing security debt, and unsafe, hasty workarounds.

Key features for modern code remediation

Since developers spend significantly more time looking at code than writing it, it makes sense to write good code from the beginning to avoid wasting time with context-switching and going over old ground (as much). But, developers aren’t security experts. So how can we begin fixing the gnarly issue of efficient, yet effective remediation of unsafe code?

Modern detection requires modern remediation. To fix proliferating new vulnerabilities from AI coding assistants, clear security debt, and abstract away the increasingly time-consuming work of fixing unsafe code, businesses need a remediation tool that: 

  1. Is AI-powered and automated: Remediation needs to be fast enough to keep up with faster detection that has evolved to keep pace with AI-assisted software development.

  2. Has an AI machine that is privately built and self-hosted: Ready-made LLMs that aren’t self-hosted are powerful; they shorten the time to market for AI-powered security tools and slash costs dramatically for cybersecurity providers. The trouble with bolted-on LLMs is that 1) they send your data to third-party servers who have their own retention policies (OpenAI generally holds data for 30 days), and 2) they can be more “general purpose” in nature, most having been trained on all kinds of code, secure or otherwise. Snyk only trains our LLM on repositories with permissive licenses and containing fixed vulnerabilities – this ensures license compliance and high accuracy. The LLM behind Snyk Code’s auto-fixing feature, DeepCode AI Fix, has been created and fine-tuned for remediation and nothing else, which is why it excels at fixing vulnerable code.

  3. Is accurate: Without reliability, AI-fast automatic fixes will only create more problems for teams to solve. Features like automatic fact-based verification which confirm that suggested fixes will address the specific vulnerability without creating new security risks, enhance the accuracy of an auto-fixing feature.

  4. Integrates seamlessly: To genuinely help developers, and for long-term adoption, code fixing should be integrated seamlessly into developer workflows. This would reduce frustrating and unproductive context-switching, and maximize efficiency gains from AI power and automation.

  5. Works with a great detection tool: A code auto-fixing tool should work seamlessly with an equally fast, accurate SAST security tool that intelligently prioritizes detection findings so that you’d only make accurate and impactful fixes (think the most serious and critical ones!). 

Now that you know what to look out for in a robust SAST auto-fixing tool, let’s take a look at the top 5 SAST auto-fixing tools in the market right now. Because these tools are present in different parts of the pipeline, it’s not quite like comparing apples with apples. However, this comparison table (done to the best of our knowledge) should give you a starting point to start thinking about your team’s unique needs and what solution works best for the way you work.

Comparison of top 5 SAST auto-fixing tools

Snyk Code’s DeepCode AI Fix

Copilot Autofix

Veracode Fix

Semgrep Assistant

Checkmarx AI Security Champion

Product Overview

Automated remediation of Snyk Code SAST-detected vulnerabilities

Automated remediation of GitHub Advanced Security SAST-detected vulnerabilities

Automated remediation of Veracode SAST-detected vulnerabilities 

Automated remediation and triage of Semgrep’s SCA and SAST vulnerabilities

Automated remediation of Checkmarx’s IaC and SAST vulnerabilities, and chat

Language Coverage











* Indicates limited support

JavaScript

TypeScript

Java

Python

C/C++ *

Go *

C# *

APEX *

JavaScript

TypeScript

Java

Python

Go 

C# 

Ruby

JavaScript

TypeScript

Java

Python

Go *

C# 

PHP *

Kotlin *

Scala *

JavaScript

TypeScript

Java

Python

C/C++ 

Go 

C# 

Ruby

PHP

Kotlin

Swift 

Scala

JavaScript

TypeScript

Java

Python

C/C++ 

Go 

C# 

Ruby

PHP

Kotlin

Swift 

LLM Model

Custom Starcoder-3B

Custom GPT-4

Veracode GPT

GPT-4

GPT-4

Fixes

SAST

SAST

SAST

SAST + SCA triage

SAST + IaC

Environment

IDE

PR

CLI, IDE

PR, UI

IDE

Supported IDEs

✅ Yes,

VS Code

JetBrains

⛔ No

✅ Yes,

VS Code

⛔ No

✅ Yes,

VS Code

Fix Retention

✅ No

✅ No

✅ No

⛔ 6 months

✅ No

User Feedback

✅ Yes

✅ Yes

⛔ No

✅Yes, only in PR

⛔ No

No. Fixes Generated

5

3

5

1

1

Fix Preview

✅ Yes

✅ Yes

✅ Yes

✅ Yes

✅ Yes

Choice to Fix

✅ on demand

⛔ always applied

✅ on demand

⛔always applied

✅ on demand

Curious about Snyk Code’s DeepCode AI Fix? Book a demo and see how you can slash your median time to remediate by 84% or more. Or, if you’re an existing Snyk Code customer, simply navigate to DeepCode AI Fix in your Snyk settings and toggle it on.

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