Why Google Advises Against Creating Content in Bite-Sized Chunks for AI

Google warns that crafting bite-sized content purely for AI and LLM rankings is not advisable. Instead, content should prioritize human readers for long-term SEO success.

Google’s Danny Sullivan, a key Search Liaison, recently emphasized the importance of creating content primarily for humans rather than segmenting it into bite-sized chunks tailored for AI and large language models (LLMs). This guidance is crucial for content creators aiming to maintain sustainable SEO performance in an evolving search landscape.

The Myth of Bite-Sized Content for AI Optimization

A growing trend suggests breaking down content into small, easily digestible parts, supposedly favored by AI-powered search algorithms and LLMs. The assumption is that shorter segments improve the chances of getting highlighted or directly used by AI-generated search results.

However, Sullivan firmly challenges this idea, stating that Google does not want publishers to create special versions of content just to cater to LLMs or other AI-based systems. He clarifies that the search engine’s algorithms are designed to reward content written naturally for human readers, not for automated systems alone.

“We don’t want you to do that. We really don’t. We don’t want people crafting anything specifically for Search or making two versions of their content, one for LLMs and one for the web,” Sullivan explained during the Search Off the Record podcast.

Why Google Prefers Content Designed for Humans

The philosophy behind Google’s approach lies in the continual evolution of its ranking systems. While some publishers might temporarily see benefits in restructuring their content for AI, those advantages are unlikely to last long.

As search algorithms become more sophisticated, they are expected to increasingly reward content that is comprehensive, well-structured, and reader-focused. The transient advantage of bite-sized, AI-tailored content will be overtaken by content that genuinely serves human needs.

“The systems improve, probably the way they always try to improve, to reward content written for humans. What you did to please this LLM system that may have worked won’t carry through the long term,” Sullivan noted.

The Risks of Creating Separate Content Versions

One significant risk in developing fragmented content specifically for LLMs is diluting the cohesion and depth of the original message. SEO practitioners warn that splitting content into isolated chunks might harm the overall quality, reduce context, and negatively impact user experience.

Moreover, maintaining multiple versions of content increases complexity for content managers and can lead to confusion for indexing bots about which version to prioritize. This inefficiency ultimately works against long-term search visibility goals.

Expert Perspectives on Content Strategy in the Age of AI

Industry experts recommend focusing on producing high-value, comprehensive content that fully addresses user intent. Instead of tailoring content for AI parsing, it is more beneficial to optimize for clarity, depth, readability, and relevance.

SEO consultant Rachel Kim explains, “The future-proof content strategy involves thinking about what your audience truly needs, not what you think an algorithm prefers. User-centric content naturally performs well and remains resilient despite algorithm changes.”

Balancing AI Tools and Human-Centered Writing

While AI-powered tools can assist in content creation, brainstorming, or structuring, it is essential to retain a human touch that prioritizes meaningful information and coherent storytelling. Google encourages using AI as a support, not as the sole driver for content formatting.

Content creators should aim to maintain authenticity, provide context, and build comprehensive pages that answer complex queries instead of fragmenting insight into disjointed pieces solely to attract AI snippets.

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Practical Advice for Maintaining Strong SEO Amid AI Advances

To align with Google’s guidance and stay ahead, publishers should consider the following:

Focus on User Intent and Content Depth

Create content that thoroughly satisfies user queries with clear explanations, examples, and relevant details, ensuring it remains useful for the target audience.

Maintain Content Cohesion

Avoid splitting articles unnecessarily just to create shorter segments. Well-structured, logically flowing content aids both users and search engines in understanding the material.

Use AI to Enhance, Not Replace, Human Input

Leverage AI for drafting or ideation but refine and enrich content with expert insights and human editorial standards.

Monitor Algorithm Updates and Adjust Accordingly

Stay informed on Google’s evolving best practices by referencing reliable sources like Google’s Search Central blog (https://developers.google.com/search/blog) and SEO industry thought leaders.

SEO strategist Marcus Linton adds, “Skating to where the puck is going means anticipating Google’s emphasis on content quality and user focus rather than trying to game AI systems with artificial formatting tricks.”

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Conclusion: Emphasize Human-Centric Content Creation

In summary, Google advises content creators to resist the temptation of creating bite-sized content solely for AI ranking advantages. Instead, prioritizing in-depth, coherent, and user-friendly content remains the best strategy for sustained search performance. As AI continues to shape the digital landscape, content authenticity and quality will always retain paramount importance.

For those seeking to refine their SEO strategies, investing in content that genuinely serves visitor needs will ultimately align with Google’s evolving algorithms, resulting in improved visibility and engagement.

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About the author

Picture of Danny Da Rocha - Founder of Adsroid
Danny Da Rocha - Founder of Adsroid
Danny Da Rocha is a digital marketing and automation expert with over 10 years of experience at the intersection of performance advertising, AI, and large-scale automation. He has designed and deployed advanced systems combining Google Ads, data pipelines, and AI-driven decision-making for startups, agencies, and large advertisers. His work has been recognized through multiple industry distinctions for innovation in marketing automation and AI-powered advertising systems. Danny focuses on building practical AI tools that augment human decision-making rather than replacing it.

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