Analyze ActiveView price floors and apply confirmed monetization adjustments.
Copy the install command and let the AI configure it · recommended for beginners
No copy-paste install info for "RULER MCP" yet — see the docs or source repo.
Read all existing price rules in ActiveView, summarize them by ad unit, region, and device type, and identify duplicate, conflicting, or missing floor settings.
A summary table of current floor rules with anomalies and missing configurations highlighted.
Based on existing price rules and performance data, analyze which ad units may have floors that are too high or too low, and propose actionable pricing changes ranked by expected revenue impact.
A ranked list of pricing recommendations by ad unit, including rationale, suggested values, and expected impact.
Prepare the suggested floor changes as pending updates, show me each modification first, and only apply them to ActiveView after I explicitly confirm.
First present a pending change list and confirmation step, then apply the updates and return the execution results after approval.
Get context-aware coding rules, development guidance, and AI-curated advice.
Validate code rules, automate reviews, and generate reports across multiple stacks.
Find and compare MCP servers for AI finance agent workflows.
Design and review microfrontend and microservice architectures with guided prompts.
Provide AI agents with coding standards, testing, planning, and requirements guidance.
Build, debug, and manage software tasks with natural language across LLMs.