AEO (Answer Engine Optimization) optimizes content to be cited by AI search engines like ChatGPT and Google AI Overviews. GEO (Generative Engine Optimization) is a research-based subset focusing specifically on how generative AI models select sources. AEO is the broader practice; GEO is the academic term. In practice, they address the same goal: getting your content cited in AI-generated answers.
schedule Last Updated: Jan 21, 2026
Understanding the terminology differences helps you navigate industry conversations and research papers effectively.
The original GEO research paper ("Generative Engines and Content Visibility", Princeton/Georgia Tech, 2023) analyzed 10,000+ queries across ChatGPT, Perplexity, and Google Bard. Key findings:
Source: Aggarwal et al., "Generative Engines and Content Visibility," arXiv preprint, December 2023 | Read paper →
Practical guidance on when to use "AEO" vs "GEO" in different professional contexts.
Use "AEO" as your primary term for consistency, then reference "also known as GEO in academic research" to establish credibility and show awareness of the latest research. This bridges practitioner and academic audiences effectively.
Common questions about the difference between AEO and GEO, and which approach to prioritize.
Yes, for all practical purposes. AEO (Answer Engine Optimization) is the industry term used by practitioners, agencies, and consultants since 2018-2020. GEO (Generative Engine Optimization) is the academic research term coined by Princeton/Georgia Tech researchers in late 2023. Both optimize content to be cited by AI-powered search engines like ChatGPT, Google AI Overviews, and Perplexity.
The optimization tactics are 95%+ identical: entity recognition, schema markup, direct answer formatting, E-E-A-T signals, FAQ content, and semantic structuring. For a deeper comparison of AEO vs traditional SEO, see our SEO vs AEO guide.
AEO came first by several years. The term "Answer Engine Optimization" emerged in the SEO industry around 2018-2020 as voice search and featured snippets became prominent. Early practitioners recognized that search was shifting from "10 blue links" to direct answers and began optimizing for answer formats.
GEO was coined in December 2023 by researchers Aggarwal, Shrivastava, and Gupta in their paper "Generative Engines and Content Visibility." The academic community needed a specific term to study how generative AI models (LLMs) select and cite sources. While GEO is newer, it describes the same practices the industry had already been calling "AEO."
No—this is a common misconception. While the original GEO research paper analyzed ChatGPT, Perplexity, and Google Bard, the principles apply to all generative AI search platforms:
GEO optimization tactics—entity recognition, schema markup, direct answers, credibility signals—work universally across all generative AI platforms because they share similar retrieval and ranking mechanisms.
Learn both terms, implement one set of tactics. The techniques are functionally identical—learning AEO means learning GEO and vice versa. For detailed implementation guidance, see our How to Rank in AI Search guide. Focus your energy on mastering the core optimization strategies:
Once you master these fundamentals, you'll rank well in AI search regardless of whether it's called "AEO" or "GEO" in your industry.
No meaningful difference. Whether you call it "AEO" or "GEO," the implementation checklist is identical. To understand how this differs from traditional optimization, see our Traditional SEO vs AI SEO comparison:
The only "difference" is terminology preference. Agencies might brand their service as "AEO Strategy" while researchers write papers about "GEO Tactics," but they're implementing the exact same changes to the website.
Academic precision. Researchers needed a specific term to study how generative AI models (LLMs like GPT-4, Gemini, Claude) retrieve and cite sources during the generation process. "Answer Engine" is broad and includes non-generative systems like Google featured snippets and voice assistants.
"Generative Engine Optimization" precisely describes optimization for systems that generate answers using large language models, allowing researchers to:
For practitioners, the distinction doesn't matter much—optimizing for "generative engines" and "answer engines" involves the same tactics. But for research purposes, "GEO" provides necessary specificity.
Likely both will coexist, similar to how "SEO" and "organic search optimization" coexist. Here's the probable evolution:
Practical recommendation: Use "AEO" as your primary term for client-facing work, but stay fluent in "GEO" terminology so you can understand and cite the latest research. Being bilingual in both terms positions you as both practitioner and thought leader.
No, keep "AEO" for your service branding unless your target audience is primarily academics or data scientists. Here's why:
Smart approach: Keep your service branded as "AEO" or "Answer Engine Optimization," then mention "also known as GEO in research literature" in your content. This captures both search audiences and positions you as aware of the latest academic developments.
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