Kreatebots Feature Spec | No-Code AI Assistant & LLM App Builder




📑 Kreatebots Feature Specification


✅ Current Capabilities

1. Prompt Development & Experimentation

  • Define, test, and refine prompts.
  • Evaluate with single/multiple records.
  • Versioning, side-by-side comparison, and metrics.
  • Experiment with prompt + LLM settings.

2. Personalization Engine

  • Domain experts define user attributes (e.g., diet, age, finance profile).
  • Profile-driven assistants personalize responses automatically.
  • Example: Dietitian app generates meal plans from stored preferences.

3. API & Assistant Output

  • Auto-generate REST APIs (OpenAI, Gemini, Azure OpenAI).
  • Built-in assistant UI with profile integration.
  • Deploy 24/7 personalized assistants instantly.

4. Complex Agent Workflows

  • Integrate with Google Drive, OneDrive, document uploads.
  • AI agents fetch, analyze, and act on structured + unstructured data.
  • Example: Tax Research Assistant → fetches docs, builds tax-saving recommendations.

5. Document & Data Analyzers

  • Summarize papers, extract legal clauses, identify complaints, extract numbers.
  • Define analyzers via prompt-driven workflows.

6. Image & Multimodal Workflows

  • Upload images, embed with chosen model, and store in vector DBs.
  • Build image search, recommendations, blog/article generation.

7. RAG & Advanced Pipelines

  • Build with/without RAG.
  • Configure chunking, embeddings, and select vector DBs (Pinecone, Chroma, etc).
  • Retrieve context before LLM calls for accurate, domain-specific answers.

8. Team Collaboration

  • Role-based collaboration for domain experts, developers, and reviewers.
  • Shared workspaces for assistant building.
  • Version history + approvals.

9. Feedback Loops

  • Collect user ratings on responses.
  • Feed insights into prompt improvement.
  • Track accuracy and satisfaction metrics over time.

🚀 Upcoming Capabilities

1. Monitoring & Analytics Dashboard

  • End-to-end observability (usage, latency, hallucination rate).
  • Drift detection when LLMs or embeddings degrade.
  • Visual performance tracking across versions.

2. Multi-Channel Deployment

  • One-click deploy to Slack, MS Teams, WhatsApp, website widgets, and mobile SDKs.
  • Expand reach beyond API/UI.

3. Enterprise Governance & Compliance

  • Guardrails for safe responses (policy enforcement).
  • Support for SOC2, HIPAA, GDPR-ready workflows.
  • Regional hosting/data residency options.

4. Plugin & Extension Ecosystem

  • Allow developers to add custom APIs/tools.
  • Community & marketplace for prebuilt bots, workflows, and templates.
  • Blueprint library: dietitian assistant, tax advisor, stock analyst, legal doc analyzer.

5. Visual Workflow Builder

  • Drag-and-drop UI for chaining prompts, APIs, RAG, and agent flows.
  • Zapier-style interface for non-technical users.
  • Simulation environment for “what if” testing before deployment.

6. End-User Onboarding & UX Enhancements

  • Guided profile onboarding (with suggested questions).
  • Assistant self-introduction to explain capabilities.
  • Auto-suggestions for common queries and scenarios.

🌐 Strategic Positioning

Kreatebots is evolving from an AI assistant builder into a full AI Assistant Lifecycle Platform:

Design → Build → Personalize → Deploy → Monitor → Optimize → Scale

  • Today: End-to-end platform for building and deploying assistants.
  • Tomorrow: Full ecosystem with governance, analytics, multi-channel reach, and extensibility.




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Our Products

KreateBots

  • Ready-to-use front-end—configure in minutes
  • Admin dashboard for full chatbot control
  • Integrated prompt management system
  • Personalization and memory modules
  • Conversation tracking and analytics
  • Continuous feedback learning loop
  • Deploy across GCP, Azure, or AWS
  • Add Retrieval-Augmented Generation (RAG) in seconds
  • Auto-generate FAQs for user queries
  • KreateWebsites

  • Build SEO-optimized sites powered by LLMs
  • Host on Azure, GCP, or AWS
  • Intelligent AI website designer
  • Agent-assisted website generation
  • End-to-end content automation
  • Content management for AI-driven websites
  • Available as SaaS or managed solution
  • Listed on Azure Marketplace
  • Kreate CMS

  • Purpose-built CMS for AI content pipelines
  • Track provenance for AI vs human edits
  • Monitor lineage and version history
  • Identify all pages using specific content
  • Remove or update AI-generated assets safely
  • Generate Slides

  • Instant slide decks from natural language prompts
  • Convert slides into interactive webpages
  • Optimize presentation pages for SEO
  • Content Compass

  • Auto-generate articles and blogs
  • Create and embed matching visuals
  • Link related topics for SEO ranking
  • AI-driven topic and content recommendations