ttSend WhatsApp messages to other people or search/sync WhatsApp history via the wacli CLI (not for normal user chats).
Install via ClawdBot CLI:
clawdbot install rafay0313/ttInstall wacli (brew):
brew install steipete/tap/wacliInstall wacli (go):
Install wacli (go)Requires:
Grade Fair — based on market validation, documentation quality, package completeness, maintenance status, and authenticity signals.
Calls external URL not in known-safe list
https://wacli.shAudited Apr 16, 2026 · audit v1.0
Generated Mar 21, 2026
A business uses wacli to send personalized WhatsApp messages to customers after a support ticket is resolved, ensuring timely follow-up and satisfaction. This automates outreach without manual typing, integrating with CRM systems via JSON output for tracking.
Event organizers employ wacli to broadcast reminders or last-minute changes to attendees via WhatsApp groups or individual messages. It allows bulk messaging with file attachments like agendas, streamlining communication for conferences or workshops.
Accounting teams use wacli to search WhatsApp history for past invoices and send new invoice files to clients with captions. This aids in record-keeping and ensures secure, direct delivery of financial documents outside routine chats.
Medical clinics leverage wacli to message patients with appointment confirmations or rescheduling details, using backfill to sync history for compliance. It facilitates contact with third parties like family members when authorized.
Sales teams utilize wacli to send targeted promotional messages or files to potential leads on WhatsApp, after syncing chats to identify contacts. This automates initial outreach while maintaining explicit recipient confirmation for safety.
Offer wacli as part of a subscription-based platform for businesses to automate WhatsApp messaging and history management, with tiered pricing based on message volume or features. Revenue comes from monthly fees and premium support services.
Provide consulting services to help companies integrate wacli into their existing workflows, such as CRM or ERP systems, with custom setups and training. Revenue is generated through project-based fees and ongoing maintenance contracts.
License wacli technology to other software vendors who rebrand it as part of their own communication tools, targeting specific industries like healthcare or finance. Revenue streams include licensing fees and royalties based on usage.
💬 Integration Tip
Integrate wacli with existing business systems by using its JSON output for automated parsing and ensure proper authentication via QR login to maintain security in production environments.
Scored Jun 19, 2026
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Local search/indexing CLI (BM25 + vectors + rerank) with MCP mode.
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browse MongoDB Atlas Admin API specifications and execute operations (if credentials provided).
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