Raghim AI Reviews β Discover what people think of this product.

What users think of Raghim AI
Maker
Supporters
-Idea
4.0
Product
0.0
Feedback
0
Roasted
0
More about Raghim AI
Raghim AI
Raghim AI is an enterprise-grade AI platform currently in beta, designed to help teams build, deploy, and manage intelligent AI agents without sacrificing control over their data.
At its core, Raghim is a visual AI workflow builder. Using a drag-and-drop flow editor, teams can compose sophisticated agent pipelines from building blocks: knowledge retrieval nodes, SQL data access, intent classifiers, orchestrators, synthesizers, and enterprise guardrails, all wired together with conditional and intent-based routing.
For knowledge work, Raghim's RAG engine turns your documents into a searchable, queryable knowledge base. Upload PDFs, leverage OCR in English and French, and let agents retrieve, synthesize, and cite answers grounded in your content.
For data teams, natural language database access lets users query PostgreSQL, MySQL, and Oracle databases in plain language, with row-level security, a visual query builder, and SQL validation guardrails built in.
For operations, Raghim ships with email campaign management (templates, A/B testing, sender config), enterprise integrations out of the box (Slack, Microsoft Teams, Jira, Asana, GitHub, webhooks), and embeddable chat widgets you can drop into any website or app.
Security is first-class: RBAC, audit logging, IP allowlisting, data retention policies, and optional client-side encryption for sensitive workflows. Whether you run it managed or self-hosted, you stay in full control of your data.
Available now in early access β join teams already using Raghim to go from document upload to production AI agent in minutes, not months.
Tags
Product Categories
Related Tasks
- How to build and deploy enterprise AI agents with role-based access control and audit logging
- How to create self-hosted AI automation with client-side encryption and seamless integration across Slack, Teams, and Jira
- How to implement RAG-powered document processing and natural language database queries for enterprise workflows
Scale globally with less complexity
With Paddle as your Merchant of Record
Compliance? Handled
New country? Done
Local pricing? One click
Payment methods? Tick
Weekly Drops: Launches & Deals
