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Designed for Your Success

A consumption-based pricing model for your embedded analytics success.

Low starting price. Scales in tune with your growth. Fully predictable.

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QuaerisAI Pricing Model

QuaerisAI Pricing Model

The only Embedded Analytics platform with true consumption-based pricing:

  • Pay only for what your users actually use
  • Scale with user growth and real usage
  • Provision unlimited users by persona
  • Transparent, fully predictable pricing
  • Same best-in-class experience for every user
  • Free-tier available for startups
  • Effective per-user cost often under $1
  • Includes 50,000 questions per month

Why Traditional Pricing Falls Short

User Based

  • Pays the same for occasional and power users
  • Highest per-user, per-month cost
  • Negotiation fatigue for discounts

Server Based

  • Costs spike in steps, not in line with user growth
  • High upfront cost
  • Poor performance with increased load

Flat, Feature or Data Volume Based

  • Low early-stage value
  • Overcharges customers who scale slowly
  • Data volume pricing lacks predictability

Core Capabilities

Full Featured Product 
Vector
No limit on data analyzed  Vector
Unlimited Notebooks & Use-Cases Vector
Dual Branding - your logo & Your Client's logo
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Personal and shared pinboards Vector
Unlimited Storyboards & Stories Vector
RBAC and row-level security  Vector

Power of Collaboration & History

Collaboration via validated email domains Vector
Auto-provision collaborator personas Vector
3 months free for collaboration users Vector
Customizable question history duration
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Meta-analysis of interaction patterns Vector

Deployment Options

Deploy on-prem or as SaaS Vector
99.5% SLA for SaaS Vector
No data ever moved to QuaerisAI cloud Vector
Deploy on Azure, AWS, GCP, IBM, or your own
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iOS and Android app access Vector
Dedicated support representative Vector

Learn More About Our Platform

 

 

 

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