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Apify Tool Converts Yandex Search Results Into Structured JSON for SEO Analysis

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Yandex serves roughly half a billion users across Russia, Turkey, Kazakhstan, and the broader CIS region, yet most SEO tools lack support for tracking its search rankings. A third-party actor on the Apify platform, called Yandex Search API, allows developers to retrieve full Yandex SERPs as structured JSON by submitting a query, domain, and region ID. The returned data includes organic results, paid ads, knowledge graph cards, images, and videos, each tagged by type. The tool bypasses the complexity of Yandex's official Search API, which requires registration, key management, and quota agreements, as well as the challenges of manual scraping such as proxy rotation and CAPTCHA blocks. It supports six Yandex domains, multiple interface languages, and over 123,000 region IDs, making it targeted at SEO teams and ad-intelligence analysts operating in Russian-speaking markets.

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