Why I Use Claude First, Then Antigravity for Better Code

Key Takeaways

- Claude handles complex reasoning and project planning better than most AI tools
- Antigravity sees more of your codebase at once, making it stronger at execution
- Treating AI models as specialized team members reduces frustration and bugs
The Single-Tool Trap
Most developers start with a simple expectation: one AI coding assistant should handle everything. That works for small projects. But once you're building something bigger, the cracks show fast.
The problem isn't that these tools are bad. It's that each one has blind spots. Claude struggles with execution speed. Antigravity struggles with planning. Gemini has its own quirks. When you expect any single model to do everything, you're setting yourself up for frustration.
The solution? Treat AI models like a team. Assign roles based on what each tool actually does well.
Claude as Project Manager and Architect
Claude's strength is complex, multistep reasoning. It excels at high-level logic and planning. When you start a project, you can tell Claude to examine existing dependencies and context before touching any code. It will break down your requirements into self-contained steps, create context briefs, build task lists, and set up review checkpoints.
This isn't flashy work. You won't get a working app in 30 seconds. But Claude's planning keeps projects stable. It writes the step-by-step instructions that prevent things from breaking later.
“We are 6–12 months from AI doing everything software engineers do. The gap is closing faster than anyone anticipated.”
— Dario Amodei, CEO at Anthropic
The catch: Claude fails in execution. It plans beautifully, then stumbles when writing the actual code. For quick prototyping or large codebases, you need something else.

Antigravity for Execution
Google Antigravity's biggest advantage is how much of your codebase it can see at once. It's a visual, multi-agent IDE built on VS Code that lets you manage entire fleets of agents working in parallel. Frontend, backend, testing. All at once.
Google spent $2.4 billion in 2025 to acquire the Windsurf team and build Antigravity. The result scores 76.2% on SWE-bench, placing it among the top autonomous coding agents available today.
But Antigravity isn't good at making plans. Neither is Gemini as a whole. You can build small apps with Antigravity without experience. But when you try bigger ideas without proper planning, you'll hit problems.
“I just google and do the monkey-see-monkey-do... I cut out the middleman [myself] and let the agent execute.”
— Linus Torvalds, Creator of Linux
The Workflow That Works
Here's the pattern emerging among developers who use both tools:
- Start with Claude. Describe your project. Let it analyze dependencies, break down requirements, and create a detailed plan with checkpoints.
- Review Claude's plan. Make sure the architecture makes sense before any code gets written.
- Hand execution to Antigravity. Feed it Claude's plan and let it write the actual code across your codebase.
- Return to Claude for debugging complex logic. When something breaks in a way that requires reasoning about multiple systems, Claude's planning ability helps diagnose the issue.
This isn't about brand loyalty. It's about matching tools to tasks. Claude is the architect. Antigravity is the construction crew. Using one for both jobs means accepting compromises you don't need to make.

The Bigger Shift: From Chatbots to Agents
This workflow reflects a larger change in how developers use AI in 2026. We've moved past chatbots. The new category is autonomous agents.
Google's AI Mode ecosystem now has 100 million monthly active users. The enterprise tier for unlimited agent orchestration costs $249.99 per month. These aren't toys anymore.
Sundar Pichai calls this the "Agentic Pivot": AI that doesn't just find answers but performs complex tasks. The question for developers isn't whether to use AI coding tools. It's how to combine them effectively.
More on Anthropic's infrastructure moves to scale Claude
When to Skip the Two-Tool Approach
This workflow makes sense for projects with real complexity. Multiple services. Cross-dependencies. Features that need to work together.
For a quick script or a simple automation? Just use whatever tool you have open. The overhead of planning in one tool and executing in another isn't worth it for a 50-line script.
The two-tool approach pays off when the cost of a mistake is high. When bad architecture early means rewriting everything later. When you need the plan to be solid before the first line of code gets written.
Quick projects where simpler AI workflows work fine
Logicity's Take
Frequently Asked Questions
Is Antigravity better than Claude for coding?
For execution and seeing large codebases, yes. Antigravity scores 76.2% on SWE-bench and can work across multiple files at once. But Claude is better for planning and complex reasoning. Most developers get better results using both.
How much does Google Antigravity cost?
The AI Ultra enterprise tier costs $249.99 per month for unlimited agent orchestration. Google also offers lower tiers for individual developers.
Can I use Claude Code and Antigravity together?
Yes. The emerging workflow uses Claude for project planning and architecture, then feeds that plan to Antigravity for code execution. They complement each other's strengths.
What is the Agentic Pivot?
A term from Google CEO Sundar Pichai describing AI's shift from retrieval (finding answers) to execution (performing complex tasks). It reflects the move from chatbots to autonomous coding agents.
Need Help Implementing This?
Source: MakeUseOf
Manaal Khan
Tech & Innovation Writer
اقرأ أيضاً

رأي مغاير: كيف يؤثر اختراق الأمن الداخلي الأميركي على شركاتنا الخاصة؟
في ظل اختراق عقود الأمن الداخلي الأميركي مع شركات خاصة، نناقش تأثير هذا الاختراق على مستقبل الأمن السيبراني. نستعرض الإحصاءات الموثوقة ونناقش كيف يمكن للشركات الخاصة أن تتعامل مع هذا التهديد. استمتع بقراءة هذا التحليل العميق

الإنسان في زمن ما بعد الوجود البشري: نحو نظام للتعايش بين الإنسان والروبوت - Centre for Arab Unity Studies
في هذا المقال، سنناقش كيف يمكن للبشر والروبوتات التعايش في نظام متكامل. سنستعرض التحديات والحلول المحتملة التي تضعها شركات مثل جوجل وأمازون. كما سنلقي نظرة على التوقعات المستقبلية وفقًا لتقرير ماكنزي

إطلاق ناسا لمهمة مأهولة إلى القمر: خطوة تاريخية نحو استكشاف الفضاء
تعتبر المهمة الجديدة خطوة هامة نحو استكشاف الفضاء وتطوير التكنولوجيا. سوف تشمل المهمة إرسال رواد فضاء إلى سطح القمر لconducting تجارب علمية. ستسهم هذه المهمة في تطوير فهمنا للفضاء وتحسين التكنولوجيا المستخدمة في استكشاف الفضاء.