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But this article will show you a case of an SEO context analysis we used to determine the importance and role of SEO. This analysis was one of our deliverables for a marketing agency client who hired us to inform SEO decisions which we then turned into a report template for you to get inspired by and duplicate. Keyword Hero.
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Text analysis variations. When we talk of text analysis tools , it covers more than keyword or hashtag spotting. Thematic Analysis. This type of text analysis dives deeper and is the difference in being able to tell that a person likes your brand versus why they like it. A thematic analysis can tell you this.
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