Top GitLab Code Review Tools to Supercharge Your Workflow in 2025



This content originally appeared on DEV Community and was authored by Panto AI

Top GitLab Code Review Tools to Supercharge Your Workflow in 2025

GitLab Code Review Tools 2025

Looking for the best GitLab code review tools in 2025? This guide breaks down the leading solutions that can improve code quality, accelerate pull requests, and streamline your DevOps workflow.

Why GitLab Code Review Tools Matter

Code review isn’t just a step in the pipeline — it’s the heartbeat of software quality. GitLab’s native merge request features are solid: inline comments, approval settings, pipelines, and discussions all help teams ship.

But for fast-scaling projects, native tools alone often fall short. Teams today need:

  • AI-driven insights

  • Automated checks at scale

  • Deeper compliance enforcement

  • Context across massive codebases

That’s where third-party GitLab code review tools come in. By reducing grunt work and surfacing high-signal insights, they cut review times, reduce merge friction, and help teams move faster without compromising security.

Leading GitLab Code Review Tools in 2025

1. Panto AI

Panto AI adds context-driven AI to GitLab reviews — bridging business requirements, security, and engineering insights. Features include:

  • Automated PR summaries and conversational Q&A

  • Integration with Jira, Confluence, and more for business context

  • 30,000+ security rules and 30+ language support

  • Cloud and on-prem options with zero code retention

Teams report reduced cognitive load, faster shipping, and more confidence. Panto AI transforms GitLab’s native flow into a context-rich, high-signal review process.

2. Greptile

Greptile provides full codebase-aware reviews, not just diff checks. Ideal for enterprises, it supports monorepos, microservices, and customizable rule sets. SOC 2 compliance and enterprise-grade security make it a strong pick for compliance-heavy teams.

3. CodeAnt AI

CodeAnt AI speeds up reviews with:

  • AI-powered summaries in plain English

  • Static analysis and custom rule enforcement

  • Security scans across languages and frameworks

  • Notifications via IDE, Slack, and email

It’s designed to halve review time for large GitLab projects.

4. SonarQube

SonarQube integrates directly into GitLab CI, enforcing “quality gates” before merges. It checks for bugs, vulnerabilities, and code smells, while dashboards help teams track and prioritize remediation. Popular in regulated industries and enterprises.

5. Codacy

Codacy reviews for style, complexity, duplication, test coverage, and vulnerabilities. Its dashboards give a clear health overview across repos, and its rule sets are highly customizable.

6. Snyk (DeepCode)

Snyk’s DeepCode engine specializes in real-time security scanning. It runs dependency checks, flags vulnerabilities, and integrates with GitLab CI/CD. A must-have for teams prioritizing supply chain security.

7. Elipsis AI Reviewer

With @ellipsis-dev mentions in GitLab, teams get instant AI-powered bug detection and fixes. SOC 2 certified, Elipsis focuses on speed and automation — great for startups and mid-tier orgs.

8. CodeRabbit

A lightweight AI reviewer that provides GPT-powered comments. It’s simple, fast, and easy to deploy, making it ideal for small teams, though larger orgs may outgrow its limited context.

9. Crucible

Atlassian’s Crucible offers enterprise-ready peer reviews with deep metrics, workflows, and integrations. Its power comes with a learning curve, making it better suited to larger orgs.

10. Review Board

An open-source option with flexible review workflows and static analysis integration. Strong for distributed teams, though setup and UI can feel dated.

11. CodiumAI

CodiumAI generates automated tests and validates logic pre-merge, boosting TDD practices. It doesn’t replace GitLab reviews but adds value earlier in the dev cycle.

How to Choose the Right Tool

Each tool integrates with GitLab, but your ideal choice depends on priorities:

The Future of GitLab Code Review

As teams and codebases grow, code review must evolve from a bottleneck into a strategic enabler. The next wave of tools focuses on:

  • Automation to eliminate repetitive checks

  • Context that links code to business goals

  • Security baked into every merge request

Platforms like Panto AI lead this shift by blending AI, compliance, and business context into GitLab reviews.

The result: faster merges, cleaner code, and teams that ship with confidence.

Ready to upgrade your GitLab workflow? Explore these tools and see how Panto AI can help your team bridge the gap between code and business context.


This content originally appeared on DEV Community and was authored by Panto AI