PricingStarting at EUR 10
Free trial
Free version

NexLev is an AI-driven niche research tool designed primarily for YouTube content creators and digital entrepreneurs. It automates the process of identifying low-competition, high-monetization YouTube niches by analyzing large volumes of channel and video data. Users can explore niche opportunities ranked by factors such as RPM (revenue per mille), competition score, and audience demand. The platform provides detailed niche reports that include estimated earnings potential, keyword insights, and competitive landscape overviews. NexLev aims to reduce the manual effort involved in niche research by surfacing data-backed recommendations, enabling creators to make more informed decisions about which content categories to enter. The tool is positioned as a starting point for creators looking to build or grow YouTube channels with a focus on monetization efficiency rather than purely on subscriber volume.

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Target audience and deployment

  • Solo / Freelancer
  • Startup
  • SMB
  • Cloud

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Pricing

Pricing details:
Free trial
Free version

NexLev Lite

EUR10
Flat rate
Annual subscription

NexLev Pro

EUR39
Flat rate
Annual subscription
View more pricing information

Key features

AI-powered niche discoveryRPM estimation by nicheCompetition scoringNiche detail reportsKeyword insightsChannel data analysisMonetization potential rankingNiche filtering and search

Use cases

  • Discover profitable YouTube niches
  • Analyze niche competition and RPM
  • Research keyword and content opportunities
  • Validate channel monetization strategy
  • Compare multiple niches side by side

Best for

  • Content creators who need to identify low-competition YouTube niches with strong monetization potential
  • Digital entrepreneurs who need to validate YouTube channel ideas before committing to a content strategy
  • Freelancers who need to advise clients on profitable YouTube content directions backed by data