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How to Use GPT 3.5 Turbo For SERP Analysis to Identify Low-competition Keywords at Scale

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ChatGPT and generative AI have drastically changed the landscape of SEO. From AI Content Creation, to optimising title tags to increase CTR, to even writing code to solve complex rendering and indexation problems — across the spectrum, t he SEO Community has found some amazing use cases for Generative AI. However, one largely under explored usage is the potential for GPT to be used for advanced types of SERP analysis that would typically require the trained eye of an SEO specialist, or the application of advanced pattern matching techniques. In today’s blog post we’ll look at how you can use a combination of Arefs SERP Data, GPT For Work and the GPT-3.5 Turbo API to unearth extremely low-competition keywords, at scale and cost-effectively! Using GPT 3.5 Turbo to Identify Irrelevant Results Ranking For Your Keywords at Scale GPT 3.5 Turbo and ChatGPT (3.5 Model) are actually adept at determining the relevance of results ranking in relation to the keyword in question based on the title t...