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August 07.2025
3 Minutes Read

Discover How ChatGPT Uses Google: A Game Changer for SMBs

ChatGPT Definitely Uses Google to Search the Web

How ChatGPT Accesses the Web for Information

Artificial Intelligence is increasingly becoming essential for small and medium-sized businesses (SMBs). With tools like ChatGPT, marketing and customer engagement have transformed dramatically. A common misconception around ChatGPT is that it solely uses Bing for its web browsing capabilities. However, recent experiments have revealed that Google plays an important role, especially for premium users. This information is vital for SMBs aiming to optimize their online presence and utilize AI effectively.

Not Just Bing: Evidence of Google’s Role in ChatGPT

In a significant revelation, former Google Engineer Abhishek Iyer demonstrated that ChatGPT is indeed capable of accessing information via Google. By creating a webpage focused on a fictional term and subsequently querying ChatGPT about it, he obtained a response with a direct citation linked to his Google-exclusive page. Notably, Leigh McKenzie from Backlinko conducted similar tests and observed that the Plus version of ChatGPT taps into Google, while the free version relies predominantly on Bing.

This divergence can likely be attributed to financial considerations for OpenAI, which may find Google API access more costly than its partnership with Microsoft’s Bing. Understanding this dynamic is crucial because it shapes how businesses should prioritize their Google visibility for better responses from AI tools like ChatGPT.

Understanding ChatGPT’s Search Providers

The prevalent belief that ChatGPT only utilizes Bing stems from its partnership with Microsoft, which has led to Bing being labeled as the 'default search provider.' Yet, OpenAI has not ruled out collaboration with other search engines. The semantics are critical: while Bing may be the default for enterprise workspaces, OpenAI mentions that partnerships with various search engines are a possibility. This nuance matters significantly for marketers looking to leverage AI efficiently.

The Implications for SEO: Why Google Visibility Matters

For marketers, the implications of ChatGPT's ability to reference Google are profound. It emphasizes that the visibility of websites on Google indeed translates into visibility on AI platforms, impacting the effectiveness of digital marketing strategies. The intersection of traditional SEO and what is being termed Generative Engine Optimization (GEO) signifies that businesses should not ignore their Google rankings in favor of solely investing in AI strategies.

Combining Google and ChatGPT Strategies for Success

To effectively navigate the evolving digital landscape, companies must adopt a dual approach focusing on both SEO and AI optimization. This means engaging in traditional search engine optimization efforts while also utilizing tools like Semrush’s Position Tracking to monitor both Google rankings and ChatGPT citations.

This dual approach will not only help businesses understand their visibility across different platforms but also allow them to adapt quickly to changes in how AI tools source information. For SMBs, incorporating effective strategies tailored for both Google and AI will likely yield better overall results in customer engagement and lead generation.

A Future with AI and Search Engines

The future seems to indicate that the fusion of AI and traditional search engines is going to shape new marketing paradigms. As tools like ChatGPT evolve, they may rely increasingly on in-depth, systematic data from both Google and Bing to provide richer, more contextual responses. This is just one way in which the landscape of digital marketing is shifting beneath our feet.

Closing Thoughts: Embracing the Future of AI Marketing

As we stand on the brink of an AI-driven marketing future, it’s essential for small and medium-sized businesses to keep abreast of these changes. A robust understanding of how AI interacts with search engines can inform better strategies and result in more effective online engagement. By embracing a comprehensive approach to both SEO and AI tools, businesses can position themselves favorably in an increasingly competitive marketplace.

Don't wait for the future to come to you; start optimizing your digital strategy today to ensure you remain relevant in this rapidly evolving landscape.

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As you consider AI solutions, remember that choosing the right technology can transform your business strategy and operational capabilities. For guided assistance in integrating the latest AI technologies, reach out to industry experts to align your tools with your business needs.

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