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AB Test

1 min read

A/B testing (also known as split testing) is a method for comparing two versions of a product, webpage, or marketing element to determine which one performs better. In the context of Search AI and e-commerce, A/B testing helps optimize search results, user experience, and conversions by testing different variations and measuring performance.

A/B testing in AI involves running two or more versions (A and B) of a specific feature or algorithm to compare which one performs best. The AI model automatically analyzes user interactions and data to identify the winning version based on specific metrics like CTR (Click-Through Rate), CVR (Conversion Rate), or revenue per session.

How A/B can help your business #

Optimize Conversion Rates: By comparing two versions of Recommendation or Search widgets, you can identify which version generates higher conversion rates. This allows you to refine your marketing strategies and website design to better engage your audience and drive more conversions.

Enhance Marketing Campaigns: A/B testing allows you to experiment with different approaches in your marketing campaigns. By analyzing the performance of each variation, you can improve your campaigns to resonate more effectively with your target audience and achieve better results.

Reduce Risks: A/B testing provides valuable insights into the preferences and behaviors of your audience without the need for large-scale implementation. This allows you to mitigate the risk associated with major changes by testing them on a smaller scale before rolling them out.

Updated on September 3, 2025

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