In this comprehensive guide, we compare Contextual AI and Glean across various parameters including features, pricing, performance, and customer support to help you make the best decision for your business needs.
Overview
When choosing between Contextual AI and Glean, understanding their unique strengths and architectural differences is crucial for making an informed decision. Both platforms serve the RAG (Retrieval-Augmented Generation) space but cater to different use cases and organizational needs.
Quick Decision Guide
Choose Contextual AI if: you value invented by the original creator of rag technology
Choose Glean if: you value permissions-aware ai is genuinely differentiated - real-time enforcement across 100+ datasources addresses critical enterprise concern
About Contextual AI
Contextual AI is rag 2.0 platform for enterprise-grade specialized ai agents. Contextual AI is an enterprise platform that pioneered RAG 2.0 technology, enabling organizations to build specialized RAG agents with exceptional accuracy for complex, knowledge-intensive workloads through end-to-end optimized systems. Founded in 2023, headquartered in Mountain View, CA, the platform has established itself as a reliable solution in the RAG space.
Overall Rating
91/100
Starting Price
Custom
About Glean
Glean is enterprise work ai with permissions-aware rag across 100+ apps. Glean is a premium enterprise RAG platform with permissions-aware AI as its core differentiator. Founded by ex-Google Search engineers, Glean achieved $100M ARR in three years and a $7.2B valuation (2025). It connects 100+ enterprise apps with real-time access controls, supports 15+ LLMs, and offers comprehensive APIs with 4-language SDKs. Trade-offs: enterprise-only sales (~$50/user/month, ~$60K minimum), no consumer messaging channels, and premium positioning over plug-and-play simplicity. Founded in 2019, headquartered in Palo Alto, CA, the platform has established itself as a reliable solution in the RAG space.
Overall Rating
96/100
Starting Price
$50/mo
Key Differences at a Glance
In terms of user ratings, both platforms score similarly in overall satisfaction. From a cost perspective, Contextual AI starts at a lower price point. The platforms also differ in their primary focus: RAG Platform versus Enterprise RAG. These differences make each platform better suited for specific use cases and organizational requirements.
⚠️ What This Comparison Covers
We'll analyze features, pricing, performance benchmarks, security compliance, integration capabilities, and real-world use cases to help you determine which platform best fits your organization's needs. All data is independently verified from official documentation and third-party review platforms.
Detailed Feature Comparison
Contextual AI
Glean
CustomGPTRECOMMENDED
Data Ingestion & Knowledge Sources
Easily brings in both unstructured files (PDFs, HTML, images, charts) and structured data (databases, spreadsheets) through ready-made connectors.
Does multimodal retrieval—turns images and charts into embeddings so everything is searchable together. Source
Hooks into popular SaaS tools like Slack, GitHub, and Google Drive for seamless data flow.
100+ native connectors covering major enterprise categories
Cloud Storage: Google Drive, SharePoint, OneDrive, Dropbox, Box
Communication: Slack, Microsoft Teams, Gmail, Outlook, Zoom
Indexing API: 10 requests/second for bulk operations, ProcessAll limited to once per 3 hours
Lets you ingest more than 1,400 file formats—PDF, DOCX, TXT, Markdown, HTML, and many more—via simple drag-and-drop or API.
Crawls entire sites through sitemaps and URLs, automatically indexing public help-desk articles, FAQs, and docs.
Turns multimedia into text on the fly: YouTube videos, podcasts, and other media are auto-transcribed with built-in OCR and speech-to-text.
View Transcription Guide
Connects to Google Drive, SharePoint, Notion, Confluence, HubSpot, and more through API connectors or Zapier.
See Zapier Connectors
Supports both manual uploads and auto-sync retraining, so your knowledge base always stays up to date.
Integrations & Channels
Built for API integration first—no plug-and-play web widget included.
Enterprise-grade endpoints and a Snowflake Native App option make tight data integration straightforward. Source
Slack: Official Marketplace app, Gleanbot auto-responses, Real-Time Search API
Microsoft Teams: Native Teams app and agent integration
Zoom: Custom AI Companion integration
No WhatsApp: No native integration
No Telegram: No native integration
No Zapier: No native integration (different product "Glean.ly" exists)
Powers advanced RAG agents with multi-hop retrieval and chain-of-thought reasoning for tough questions.
Uses a reranker plus groundedness scoring for factual answers with precise attribution. Source
“Instant Viewer” highlights the exact source text backing each part of the answer.
Glean Chat interface: Primary interface for interacting with Glean Assistant offering familiar chat-like experience enabling natural conversations with company knowledge base
Multi-turn conversations: Supports conversational AI with natural language and context awareness maintaining context across conversation turns
Streaming responses: Real-time response streaming for better user experience with automatic source citations for transparency
Chatbot context understanding: Understands thread and sequence of conversations tracking references like "their" and "they" across multiple exchanges
Enterprise knowledge integration: Works across all company apps and knowledge sources including Microsoft 365, Google Workspace, Salesforce, Jira, GitHub and nearly 100 more applications
Personalization and security: Delivers answers highly customized to each user based on deep understanding of company content, employees, and activity while adhering to real-time enterprise data permissions and governance rules
Citation and transparency: Provides full linking to source information across documents, conversations and applications for transparency and trust
Simple chatbot API: Powerful tool for integrating conversational AI into products creating custom conversational interfaces leveraging Glean's AI capabilities
Use case flexibility: Build chatbots answering customer questions using help documentation, FAQs, knowledge bases or create internal tools helping employees find company policies, procedures, documentation
Reduces hallucinations by grounding replies in your data and adding source citations for transparency.
Benchmark Details
Handles multi-turn, context-aware chats with persistent history and solid conversation management.
Speaks 90+ languages, making global rollouts straightforward.
Includes extras like lead capture (email collection) and smooth handoff to a human when needed.
Customization & Branding
Lets you tweak system prompts, tone, and content filters to match company policies—on the back end.
No out-of-the-box UI builder; you’ll embed it in your own branded front end. Source
Comes with a real-time analytics dashboard tracking query volumes, token usage, and indexing status.
Lets you export logs and metrics via API to plug into third-party monitoring or BI tools.
Analytics API
Provides detailed insights for troubleshooting and ongoing optimization.
Support & Ecosystem
High-touch enterprise support with solution engineers and technical account managers.
Grows its ecosystem via partnerships (e.g., Snowflake) and industry thought leadership. Source
Standard support: 24x5 (Mon-Fri) via portal, email, Slack Connect
Premium support: 24x7 (critical only) with additional fee
Dedicated CSMs: Enterprise accounts with hands-on onboarding
Documentation: Excellent at developers.glean.com
GitHub repositories: SDK examples and sample projects
Regular business reviews for enterprise customers
Supplies rich docs, tutorials, cookbooks, and FAQs to get you started fast.
Developer Docs
Offers quick email and in-app chat support—Premium and Enterprise plans add dedicated managers and faster SLAs.
Enterprise Solutions
Benefits from an active user community plus integrations through Zapier and GitHub resources.
Additional Considerations
Great for mission-critical apps that need multimodal retrieval and advanced reasoning.
Requires more up-front setup and technical know-how than no-code tools—best for teams with ML expertise.
Handles complex needs like role-based data access and evolving multimodal content. Source
Cannot create content directly: Glean focuses purely on search and retrieval - not suitable for organizations needing content creation within platform
Platform designed for large organizations: Feature set and pricing optimized for large enterprises - smaller teams may find it overkill and less cost-effective
AI production challenges: 68% of organizations report moving only 30% or fewer AI experiments into full production highlighting persistent scaling difficulties beyond proof-of-concept
Integration complexity: Requires strategic overhaul of processes to ensure seamless technology incorporation into existing workflows
Change management: Overcoming resistance to change demands strong leadership and commitment to fostering innovation and adaptability environment
Data reliability monitoring: Potential for inaccuracies in AI outputs necessitates rigorous monitoring frameworks to ensure data reliability and trustworthiness
Cybersecurity concerns: As AI deployment expands, cybersecurity threats become more pronounced requiring enhanced protective measures for sensitive information
Bias in AI models: Models can inadvertently learn and replicate biases in training data leading to unfair or discriminatory outcomes particularly in hiring, customer service, legal decisions
Training investment required: Enterprises must invest in training workforce to effectively use AI tools - upskilling employees, hiring AI talent, or partnering with consultants
Security risks and shadow IT: Many organizations hesitate due to uncertainties from security risks and shadow IT - ad hoc generative AI adoption comes with heavy risks and costs
Slashes engineering overhead with an all-in-one RAG platform—no in-house ML team required.
Gets you to value quickly: launch a functional AI assistant in minutes.
Stays current with ongoing GPT and retrieval improvements, so you’re always on the latest tech.
Balances top-tier accuracy with ease of use, perfect for customer-facing or internal knowledge projects.
No- Code Interface & Usability
Web console helps manage agents, but there's no drag-and-drop chatbot builder.
UI integration is a coding project—APIs are powerful, but non-tech users will need developer help.
Natural language agent configuration: Describe goals in plain language
Visual builder: Drag-and-drop workflow creation
AI-assisted creation: Glean suggests starting points and auto-generates draft agents
Agent Library: Pre-built templates for common use cases
30+ prebuilt agents: Sales, engineering, IT, HR use cases
RBAC hierarchy: Setup Admin, Admin, Super Admin with granular permissions
4.8/5 ease of use rating on G2
Offers a wizard-style web dashboard so non-devs can upload content, brand the widget, and monitor performance.
Supports drag-and-drop uploads, visual theme editing, and in-browser chatbot testing.
User Experience Review
Uses role-based access so business users and devs can collaborate smoothly.
Competitive Positioning
Market position: Enterprise RAG 2.0 platform with proprietary Grounded Language Model (GLM) optimized for factual accuracy and multimodal retrieval capabilities
Target customers: Large enterprises and ML teams requiring mission-critical AI applications with advanced reasoning, multimodal content handling (images, charts), and strict accuracy requirements (88% factual accuracy benchmarked)
Key competitors: OpenAI Enterprise, Azure AI, Deepset, Vectara.ai, and custom-built RAG solutions using LangChain/Haystack
Competitive advantages: Proprietary GLM model with superior RAG performance, multimodal retrieval (images/charts), SOC 2 compliance with VPC/on-prem deployment options, Snowflake Native App integration, groundedness scoring with "Instant Viewer" for source attribution, and multi-hop retrieval with chain-of-thought reasoning
Pricing advantage: Usage-based enterprise pricing with standalone component APIs (reranker, generator) priced per token; flexible for organizations that want to mix and match components; best value for high-accuracy, high-volume use cases
Use case fit: Ideal for mission-critical enterprise applications requiring multimodal retrieval (technical documentation with diagrams), domain-specific AI agents with advanced reasoning, and organizations needing role-based data access with query-time permission checks
vs CustomGPT: Enterprise-premium vs developer-friendly; permissions-aware AI vs flexible customization
vs Zendesk: Enterprise search + RAG vs customer service platform
Unique strength: Real-time permissions-aware AI across 100+ datasources (no competitor matches this)
Target audience: Large enterprises (1K-100K users) with complex permission hierarchies
Pricing barrier: ~$50/user/month with ~$60K minimum excludes SMBs
Enterprise focus: Security, governance, compliance over plug-and-play simplicity
Market position: Leading all-in-one RAG platform balancing enterprise-grade accuracy with developer-friendly APIs and no-code usability for rapid deployment
Target customers: Mid-market to enterprise organizations needing production-ready AI assistants, development teams wanting robust APIs without building RAG infrastructure, and businesses requiring 1,400+ file format support with auto-transcription (YouTube, podcasts)
Key competitors: OpenAI Assistants API, Botsonic, Chatbase.co, Azure AI, and custom RAG implementations using LangChain
Competitive advantages: Industry-leading answer accuracy (median 5/5 benchmarked), 1,400+ file format support with auto-transcription, SOC 2 Type II + GDPR compliance, full white-labeling included, OpenAI API endpoint compatibility, hosted MCP Server support (Claude, Cursor, ChatGPT), generous data limits (60M words Standard, 300M Premium), and flat monthly pricing without per-query charges
Pricing advantage: Transparent flat-rate pricing at $99/month (Standard) and $449/month (Premium) with generous included limits; no hidden costs for API access, branding removal, or basic features; best value for teams needing both no-code dashboard and developer APIs in one platform
Use case fit: Ideal for businesses needing both rapid no-code deployment and robust API capabilities, organizations handling diverse content types (1,400+ formats, multimedia transcription), teams requiring white-label chatbots with source citations for customer-facing or internal knowledge projects, and companies wanting all-in-one RAG without managing ML infrastructure
A I Models
Grounded Language Model (GLM): Proprietary model tuned specifically for RAG with ~88% factual accuracy on FACTS benchmark
Industry-Leading Groundedness: GLM achieves 88% vs. Gemini 2.0 Flash (84.6%), Claude 3.5 Sonnet (79.4%), GPT-4o (78.8%) on factuality benchmarks
Inline Attribution: Model provides citations showing exact source documents for each part of response as generated
Standalone APIs: Exposes separate reranker and generator APIs with simple token-based pricing for flexible integration
Model-Agnostic Option: Platform supports integration with other LLMs if needed for specific use cases
Optimized for RAG: GLM specifically designed for retrieval-augmented generation scenarios vs. general-purpose LLMs
Model Hub supports 15+ LLMs across multiple hosting providers with per-step model selection
OpenAI: GPT-3.5, GPT-4 via OpenAI or Azure OpenAI endpoints
Google Vertex AI: Gemini 1.5 Pro with multimodal capabilities
Amazon Bedrock: Claude 3 Sonnet for high-accuracy enterprise use cases
Temperature controls: Factual, balanced, or creative output settings per workflow
Model tiers: Basic, Standard, Premium (premium consumes FlexCredits on Enterprise Flex plan)
Two access options: Glean Universal Key (managed) or Customer Key (BYOK) for data sovereignty
Zero data retention: Customer data never used for model training with automatic model updates
Automatic routing: Optimizes using best-in-class models per query type for accuracy and cost
Primary models: GPT-4, GPT-3.5 Turbo from OpenAI, and Anthropic's Claude for enterprise needs
Automatic model selection: Balances cost and performance by automatically selecting the appropriate model for each request
Model Selection Details
Proprietary optimizations: Custom prompt engineering and retrieval enhancements for high-quality, citation-backed answers
Managed infrastructure: All model management handled behind the scenes - no API keys or fine-tuning required from users
Anti-hallucination technology: Advanced mechanisms ensure chatbot only answers based on provided content, improving trust and factual accuracy
R A G Capabilities
RAG 2.0 Architecture: Advanced approach tops industry benchmarks for document understanding and factuality with multi-hop retrieval
Multimodal Retrieval: Turns images and charts into embeddings for unified search across text and visual content
Groundedness Scoring: Built-in evaluation shows groundedness scores with "Instant Viewer" highlighting exact source text backing each answer part
Reranker + Scoring: Uses reranker plus groundedness scoring for factual answers with precise attribution
Multi-Hop Retrieval: Advanced RAG agents with multi-hop retrieval and chain-of-thought reasoning for tough questions
Handles Noisy Datasets: Robust reranking and retrieval for large, noisy datasets with multiple datastores by role or permission
Query-Time Access Checks: Role-based permissions with query-time access validation for secure data retrieval
Hybrid search: Combines semantic (vector-based) and lexical (keyword) approaches for maximum accuracy
Knowledge Graph Framework: Proprietary anchors and signals across enterprise data with rich, scalable crawler
LLM Control Layer: Optimizes and controls LLM outputs with permission-safe document retrieval and ranking
Real-time permissions enforcement: Users only see authorized content with identity crawling and connector-level permission mirroring
Context-aware query rewriting: LLM determines optimal query set with enterprise-specific rewrites
Hallucination prevention: RAG grounding, permission-aware retrieval, citation/source attribution for every answer
74% human-agreement rate on AI Evaluator benchmarks with 25% precision increases in customer case studies
141% ROI over 3 years: $15.6M NPV for composite organizations, 110 hours saved per employee annually (Forrester)
Permissions-aware AI (unique): Real-time access control enforcement across all 100+ datasources - no competitor matches this capability
Core architecture: GPT-4 combined with Retrieval-Augmented Generation (RAG) technology, outperforming OpenAI in RAG benchmarks
RAG Performance
Anti-hallucination technology: Advanced mechanisms reduce hallucinations and ensure responses are grounded in provided content
Benchmark Details
Automatic citations: Each response includes clickable citations pointing to original source documents for transparency and verification
Optimized pipeline: Efficient vector search, smart chunking, and caching for sub-second reply times
Scalability: Maintains speed and accuracy for massive knowledge bases with tens of millions of words
Context-aware conversations: Multi-turn conversations with persistent history and comprehensive conversation management
Source verification: Always cites sources so users can verify facts on the spot
Use Cases
Industries Served: Finance, technology, media, professional services, regulated industries (healthcare, telecommunications) requiring high-accuracy AI
Mission-Critical Applications: Applications where factual accuracy is paramount and hallucinations must be minimized
Multimodal Use Cases: Technical documentation with diagrams, charts in business documents, visual content requiring understanding
Domain-Specific AI Agents: Custom agents requiring advanced reasoning with access to structured and unstructured data
Role-Based Access: Organizations needing fine-grained data access control with query-time permission enforcement
Team Sizes: Large enterprises and ML teams with technical expertise for integration and deployment
Enterprise knowledge retrieval: Unified search across 100+ datasources (Google Drive, SharePoint, Confluence, Salesforce, Zendesk, GitHub, Slack) for 10K-100K user organizations
Permissions-aware search: Complex permission hierarchies requiring real-time enforcement - healthcare, finance, legal industries with sensitive data access controls
AI agents and automation: 30+ prebuilt agents for sales, engineering, IT, HR use cases with workflow automation capabilities
Developer-friendly RAG: Official SDKs (Python, Java, Go, TypeScript), LangChain integration, MCP Server for Claude Desktop/Cursor/VS Code
Active Data Governance: Continuous scanning with 100+ predefined infotypes (PII, PCI, M&A) and customizable policies with auto-hide
Cloud-Prem deployment: Customer-hosted in AWS or GCP for regulated industries requiring full data residency control
NOT suitable for: SMBs with <100 users or <$60K budgets, simple document Q&A without permission requirements, consumer messaging channels (WhatsApp, Telegram)
Customer support automation: AI assistants handling common queries, reducing support ticket volume, providing 24/7 instant responses with source citations
Internal knowledge management: Employee self-service for HR policies, technical documentation, onboarding materials, company procedures across 1,400+ file formats
Sales enablement: Product information chatbots, lead qualification, customer education with white-labeled widgets on websites and apps
Documentation assistance: Technical docs, help centers, FAQs with automatic website crawling and sitemap indexing
Educational platforms: Course materials, research assistance, student support with multimedia content (YouTube transcriptions, podcasts)
Healthcare information: Patient education, medical knowledge bases (SOC 2 Type II compliant for sensitive data)
FlexCredits (Enterprise Flex): For premium LLM usage with consumption-based billing
Support tiers: Standard (24x5, included) or Premium (24x7 critical, additional fee)
Dedicated CSMs: Assigned to enterprise accounts with regular business reviews and hands-on onboarding
Pricing barrier: Excludes SMBs and startups - targets Fortune 500 and mid-market enterprises with 1K-100K users
Standard Plan: $99/month or $89/month annual - 10 custom chatbots, 5,000 items per chatbot, 60 million words per bot, basic helpdesk support, standard security
View Pricing
Premium Plan: $499/month or $449/month annual - 100 custom chatbots, 20,000 items per chatbot, 300 million words per bot, advanced support, enhanced security, additional customization
Enterprise Plan: Custom pricing - Comprehensive AI solutions, highest security and compliance, dedicated account managers, custom SSO, token authentication, priority support with faster SLAs
Enterprise Solutions
7-Day Free Trial: Full access to Standard features without charges - available to all users
Annual billing discount: Save 10% by paying upfront annually ($89/mo Standard, $449/mo Premium)
Flat monthly rates: No per-query charges, no hidden costs for API access or white-labeling (included in all plans)
Managed infrastructure: Auto-scaling cloud infrastructure included - no additional hosting or scaling fees
Support & Documentation
High-Touch Enterprise Support: Solution engineers and technical account managers for dedicated customer success
API Documentation: Solid REST APIs and Python SDK documentation for managing agents, ingesting data, and querying
Endpoint Coverage: APIs for tuning, evaluation, standalone components with clear, token-based pricing transparency
Partnership Ecosystem: Grows via partnerships (Snowflake) and industry thought leadership for enterprise integration
Learning Resources: Technical documentation and integration guides for ML teams and developers
Response Times: Enterprise support includes dedicated resources for onboarding and technical assistance
Standard support: 24x5 (Mon-Fri) via portal, email, Slack Connect channels
Premium support: 24x7 for critical issues with additional fee
Dedicated CSMs: Enterprise accounts with hands-on onboarding and regular business reviews
Excellent documentation: developers.glean.com with OpenAPI specs, CodeSandbox demos, comprehensive API references
Official SDKs: Python (pip install glean), Java (Maven), Go, TypeScript with async support and framework integrations
Web SDK: @gleanwork/web-sdk for embeddable components (chat, search, autocomplete, recommendations)
GitHub repositories: github.com/gleanwork with SDK repositories and sample projects
NO FedRAMP certification: Not suitable for US federal government deployments
Limited consumer channels: No native WhatsApp, Telegram integrations - designed for internal enterprise use only
Complex implementation: Initial indexing takes "few days" depending on data volume, requires enterprise IT coordination
Cross-language queries in early access: English query finding Spanish documents still in testing phase
Best for: Large enterprises (1K-100K users) with complex permission hierarchies, $60K+ budgets, and need for permissions-aware AI across 100+ datasources
NOT suitable for: SMBs, startups, simple document Q&A without permission requirements, organizations prioritizing transparent pricing
Managed service approach: Less control over underlying RAG pipeline configuration compared to build-your-own solutions like LangChain
Vendor lock-in: Proprietary platform - migration to alternative RAG solutions requires rebuilding knowledge bases
Model selection: Limited to OpenAI (GPT-4, GPT-3.5) and Anthropic (Claude) - no support for other LLM providers (Cohere, AI21, open-source models)
Pricing at scale: Flat-rate pricing may become expensive for very high-volume use cases (millions of queries/month) compared to pay-per-use models
Customization limits: While highly configurable, some advanced RAG techniques (custom reranking, hybrid search strategies) may not be exposed
Language support: Supports 90+ languages but performance may vary for less common languages or specialized domains
Real-time data: Knowledge bases require re-indexing for updates - not ideal for real-time data requirements (stock prices, live inventory)
Enterprise features: Some advanced features (custom SSO, token authentication) only available on Enterprise plan with custom pricing
Core Agent Features
RAG 2.0 Agents: Specialized RAG agents for expert knowledge work with advanced contextual understanding and multi-hop retrieval capabilities
Multi-Hop Retrieval: Advanced RAG agents execute multi-hop retrieval and chain-of-thought reasoning for tough, complex questions
Task-Oriented Assistants: Domain-specific AI agents designed for mission-critical applications requiring high accuracy and minimal hallucinations
Multiple Datastore Support: Create multiple datastores and link them to agents by role or permission for fine-grained access control
Custom Logic Integration: Tune LLM on your own data, add guardrails, and embed custom logic as needed for specialized workflows
Agent APIs: Programmatic agent creation, management, and querying through comprehensive REST APIs and Python SDK
Grounded Generation: Inline citations showing exact document spans that informed each response part with built-in hallucination reduction
Document-Level Security: Enterprise controls for access permissions on sensitive data with query-time access validation
Platform Generally Available (January 2025): Helping enterprises build specialized RAG agents to support expert knowledge work
State-of-the-Art Performance: Each component achieves state-of-the-art benchmarks on BIRD (structured reasoning), RAG-QA Arena (end-to-end RAG), OmniDocBench (document understanding)
Autonomous AI agents: Agents use AI to understand tasks and take action on behalf of users from answering questions and retrieving information to executing work autonomously
Natural language agent builder: Build agents by describing desired output in simple natural language - Glean understands goal and designs complex multi-step workflows
Agentic reasoning engine: LLM-agnostic engine enables agents to go beyond retrieval and generation - powers sophisticated automation and decision-making by understanding outcomes, building multi-step plans, and using action library
100+ native actions: Supports 100+ new native actions across Slack, Microsoft Teams, Salesforce, Jira, GitHub, Google Workspace and other applications
MCP host support: Gives agents dramatically larger surface area to operate across enterprise applications
Human-in-the-loop design: Agents can autonomously do work end-to-end with human review checkpoints - process customer support tickets, conduct research, prepare responses for employee review before execution
Vibe coding: Upgraded builder makes agent creation as simple as chatting - anyone (not just developers) can create and refine agents without understanding or interacting with code
Grounded in enterprise data: Autonomous agents grounded in most relevant authoritative information for confident work automation
Automatic agent triggering: Orchestrates agents automatically based on schedules or events and surfaces agent recommendations across enterprise
Visual and conversational workflow design: Turn ideas into structured workflows using simple natural language prompts or visual builder
Custom AI Agents: Build autonomous agents powered by GPT-4 and Claude that can perform tasks independently and make real-time decisions based on business knowledge
Decision-Support Capabilities: AI agents analyze proprietary data to provide insights, recommendations, and actionable responses specific to your business domain
Multi-Agent Systems: Deploy multiple specialized AI agents that can collaborate and optimize workflows in areas like customer support, sales, and internal knowledge management
Memory & Context Management: Agents maintain conversation history and persistent context for coherent multi-turn interactions
View Agent Documentation
Tool Integration: Agents can trigger actions, integrate with external APIs via webhooks, and connect to 5,000+ apps through Zapier for automated workflows
Hyper-Accurate Responses: Leverages advanced RAG technology and retrieval mechanisms to deliver context-aware, citation-backed responses grounded in your knowledge base
Continuous Learning: Agents improve over time through automatic re-indexing of knowledge sources and integration of new data without manual retraining
R A G-as-a- Service Assessment
Platform Type: TRUE ENTERPRISE RAG 2.0 PLATFORM - Proprietary Grounded Language Model (GLM) optimized for factual accuracy and multimodal retrieval
RAG 2.0 Architecture: Advanced approach tops industry benchmarks for document understanding and factuality with multi-hop retrieval (announced general availability January 2025)
Proprietary GLM Model: ~88% factual accuracy on FACTS benchmark outperforming Gemini 2.0 Flash (84.6%), Claude 3.5 Sonnet (79.4%), GPT-4o (78.8%)
Built-in Evaluation Tools: Assess generated responses for equivalence and groundedness with comprehensive evaluation across every critical component
Multimodal Retrieval: Turns images and charts into embeddings for unified search across text and visual content in technical documentation
Groundedness Scoring: Built-in scoring with "Instant Viewer" highlighting exact source text backing each answer part for transparency
Reranker + Scoring: Uses reranker plus groundedness scoring for factual answers with precise attribution and hallucination reduction
Handles Noisy Datasets: Robust reranking and retrieval for large, noisy datasets with multiple datastores by role or permission
Production-Grade Accuracy: Delivers production-grade accuracy for specialized knowledge tasks with enterprise security, audit trails, high availability, scalability, compliance
Joint Tuning Capability: Retrieval and generation components can be jointly tuned by providing sample queries, gold-standard responses, supporting evidence
Comprehensive Assessment: Measures end-to-end RAG performance, multi-modal document understanding, structured data retrieval, and grounded language generation
Target Market: Large enterprises and ML teams requiring mission-critical AI applications with advanced reasoning and strict accuracy requirements
Use Case Fit: Ideal for mission-critical enterprise applications requiring multimodal retrieval, domain-specific AI agents, and role-based data access with query-time permission checks
Core Architecture: Serverless RAG infrastructure with automatic embedding generation, vector search optimization, and LLM orchestration fully managed behind API endpoints
API-First Design: Comprehensive REST API with well-documented endpoints for creating agents, managing projects, ingesting data (1,400+ formats), and querying chat
API Documentation
Developer Experience: Open-source Python SDK (customgpt-client), Postman collections, OpenAI API endpoint compatibility, and extensive cookbooks for rapid integration
No-Code Alternative: Wizard-style web dashboard enables non-developers to upload content, brand widgets, and deploy chatbots without touching code
Hybrid Target Market: Serves both developer teams wanting robust APIs AND business users seeking no-code RAG deployment - unique positioning vs pure API platforms (Cohere) or pure no-code tools (Jotform)
RAG Technology Leadership: Industry-leading answer accuracy (median 5/5 benchmarked), 1,400+ file format support with auto-transcription, proprietary anti-hallucination mechanisms, and citation-backed responses
Benchmark Details
Deployment Flexibility: Cloud-hosted SaaS with auto-scaling, API integrations, embedded chat widgets, ChatGPT Plugin support, and hosted MCP Server for Claude/Cursor/ChatGPT
Enterprise Readiness: SOC 2 Type II + GDPR compliance, full white-labeling, domain allowlisting, RBAC with 2FA/SSO, and flat-rate pricing without per-query charges
Use Case Fit: Ideal for organizations needing both rapid no-code deployment AND robust API capabilities, teams handling diverse content types (1,400+ formats, multimedia transcription), and businesses requiring production-ready RAG without building ML infrastructure from scratch
Competitive Positioning: Bridges the gap between developer-first platforms (Cohere, Deepset) requiring heavy coding and no-code chatbot builders (Jotform, Kommunicate) lacking API depth - offers best of both worlds
Core R A G Features
N/A
Hybrid search: Combines semantic (vector-based) and lexical (keyword) approaches
Knowledge Graph Framework: Proprietary anchors and signals across enterprise data
Rich, Scalable Crawler: Permission rule synchronization at scale
LLM Control Layer: Optimizes and controls LLM outputs
After analyzing features, pricing, performance, and user feedback, both Contextual AI and Glean are capable platforms that serve different market segments and use cases effectively.
When to Choose Contextual AI
You value invented by the original creator of rag technology
Best-in-class accuracy on RAG benchmarks
End-to-end optimized system vs cobbled together solutions
Best For: Invented by the original creator of RAG technology
When to Choose Glean
You value permissions-aware ai is genuinely differentiated - real-time enforcement across 100+ datasources addresses critical enterprise concern
Model flexibility without vendor lock-in - 15+ LLMs with per-step selection and bring-your-own-key option
Best For: Permissions-aware AI is genuinely differentiated - real-time enforcement across 100+ datasources addresses critical enterprise concern
Migration & Switching Considerations
Switching between Contextual AI and Glean requires careful planning. Consider data export capabilities, API compatibility, and integration complexity. Both platforms offer migration support, but expect 2-4 weeks for complete transition including testing and team training.
Pricing Comparison Summary
Contextual AI starts at custom pricing, while Glean begins at $50/month. Total cost of ownership should factor in implementation time, training requirements, API usage fees, and ongoing support. Enterprise deployments typically see annual costs ranging from $10,000 to $500,000+ depending on scale and requirements.
Our Recommendation Process
Start with a free trial - Both platforms offer trial periods to test with your actual data
Define success metrics - Response accuracy, latency, user satisfaction, cost per query
Test with real use cases - Don't rely on generic demos; use your production data
Evaluate total cost - Factor in implementation time, training, and ongoing maintenance
Check vendor stability - Review roadmap transparency, update frequency, and support quality
For most organizations, the decision between Contextual AI and Glean comes down to specific requirements rather than overall superiority. Evaluate both platforms with your actual data during trial periods, focusing on accuracy, latency, ease of integration, and total cost of ownership.
📚 Next Steps
Ready to make your decision? We recommend starting with a hands-on evaluation of both platforms using your specific use case and data.
• Review: Check the detailed feature comparison table above
• Test: Sign up for free trials and test with real queries
• Calculate: Estimate your monthly costs based on expected usage
• Decide: Choose the platform that best aligns with your requirements
Last updated: December 4, 2025 | This comparison is regularly reviewed and updated to reflect the latest platform capabilities, pricing, and user feedback.
The most accurate RAG-as-a-Service API. Deliver production-ready reliable RAG applications faster. Benchmarked #1 in accuracy and hallucinations for fully managed RAG-as-a-Service API.
DevRel at CustomGPT.ai. Passionate about AI and its applications. Here to help you navigate the world of AI tools and make informed decisions for your business.
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