region-config

Solid

Configure regional settings. Use when: setting timezone, language, compliance rules, currency, or local preferences.

AI & Automation 136 stars 37 forks Updated 3 days ago MIT

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# /dm:region-config ## Purpose Configure regional and market-specific settings for a brand. Sets the timezone for scheduled content delivery, primary language for content generation, applicable compliance and privacy regulations, preferred local platforms, currency for budget and performance reporting, and business hours for communication scheduling. These settings propagate to all downstream commands so that campaigns, content, and reporting automatically respect regional requirements without manual adjustment each time. This is a setup/configuration command. It writes persistent configuration files that other commands consume. Once a region is configured, commands like `/dm:content-calendar`, `/dm:email-sequence`, `/dm:paid-advertising`, and `/dm:performance-report` automatically inherit the region's timezone, language, compliance rules, and platform preferences. Supports both single-market configurations (e.g., "Japan") and broad regional groupings (e.g., "APAC") depending on how granular the brand's market segmentation needs to be. ## Input Required The user must provide (or will be prompted for): - **Region name**: The market being configured — broad region (North America, Europe, APAC, LATAM, MENA) or specific market (Japan, Germany, Brazil, United Kingdom, Australia). Determines which compliance rules, platforms, and defaults apply - **Timezone**: IANA timezone identifier — e.g., `America/New_York`, `Europe/London`, `Asia/Tokyo`. Used for content scheduling, rep...

Details

Author
indranilbanerjee
Repository
indranilbanerjee/digital-marketing-pro
Created
4 months ago
Last Updated
3 days ago
Language
Python
License
MIT

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