Qlik Sense (with AI)
Integrations
- Snowflake (Zero-Copy Link)
- Databricks (Zero-Copy Link)
- Amazon Bedrock
- SAP S/4HANA
- Salesforce Agentforce
- Apache Iceberg
Pricing Details
- Pricing is structured via capacity-based credits (data moved/transformed) and tiered user licenses (Professional, Analyzer).
- Advanced Agentic AI features may require separate AI/ML capacity plans.
Features
- Associative Data Indexing (In-Memory)
- Qlik Staige AI Orchestration Framework
- Agentic AI & Supervisor Agent Orchestration
- Qlik Answers for Unstructured Data
- Real-Time Streaming Ingestion to Apache Iceberg
- Qlik Trust Score™ for Data Integrity
Description
Qlik Sense & Qlik Staige AI Infrastructure Review
The 2026 Qlik Sense architecture is defined by the convergence of the Associative Engine and the Qlik Staige™ AI orchestration framework. This combination enables Agentic AI experiences where a Supervisor Agent interprets intent and coordinates specialized agents to execute complex analytical workflows across a unified data fabric 📑.
Associative Data Indexing & Logical Inference
Qlik’s core differentiator is its engine, which avoids predefined SQL joins in favor of a compressed, binary representation of all data associations (including excluded values).
- Engine Mechanism: Input: Multi-source heterogeneous datasets → Process: In-memory binary indexing and logical inference calculation → Output: A non-linear data model allowing users to explore associated and 'unrelated' (gray) data without re-querying 📑.
- AI Grounding: The engine provides the unique 'Associative Difference' context to RAG pipelines, ensuring LLMs reason over the entire dataset rather than just query-filtered subsets 🧠.
⠠⠉⠗⠑⠁⠞⠑⠙⠀⠃⠽⠀⠠⠁⠊⠞⠕⠉⠕⠗⠑⠲⠉⠕⠍
AI Orchestration & Agentic AI (Qlik Answers)
Qlik Staige serves as the modular integration layer, abstracting LLM complexity and providing the governance framework for generative insights.
- Agentic AI Framework: Input: Natural language business goal → Process: Supervisor Agent breaks intent into tasks for specialized sub-agents (e.g., Data Insights Agent, Journey Agent) → Output: Autonomous execution of multi-step analytical plans 📑.
- Qlik Answers™: An AI-powered assistant designed specifically for unstructured data, utilizing RAG to deliver human-like, cited answers from enterprise knowledge bases 📑.
- Insight Advisor: Employs machine learning for automated pattern recognition, suggesting visualizations based on the associative context of the current selection state 📑.
Data Fabric & Open Lakehouse
With the integration of Qlik Talend Cloud, the platform provides a real-time data foundation optimized for AI workloads.
- Streaming Ingestion to Iceberg: Input: High-volume events (Kafka, Kinesis, S3) → Process: Real-time CDC ingestion and on-the-fly transformations → Output: Governed Apache Iceberg tables landed directly in the customer cloud 📑.
- Qlik Trust Score™: Automatically applies data quality and lineage metrics to landed data, ensuring only high-integrity signals are used for AI training or inference 📑.
Evaluation Guidance
Technical evaluators should verify the following architectural characteristics:
- RAG Context Latency: Benchmark the performance of the Associative Engine when providing large-scale associative context to external LLM providers during peak concurrent sessions 🌑.
- Iceberg Table Optimization: Verify the efficiency of the Adaptive Iceberg Optimizer in managing compaction and indexing to maintain 5x query performance without manual tuning 📑.
- Agentic Permissions: Request detailed documentation on the A2A (Agent-to-Agent) interoperability standards and how security filters are maintained during autonomous write-back triggers 🌑.
Release History
Year-end update: Release of Agentic Insight Flows. AI agents can now proactively find anomalies in associative data and trigger workflows in external SaaS apps.
General availability of AI Answers. Provides reliable, context-aware answers from unstructured data (PDFs, docs) within the analytics interface.
Unveiled Qlik Staige. New suite of generative AI capabilities, including automated SQL generation and semantic linking with LLMs.
Acquisition of Talend. Integration of best-in-class data quality and governance into the Qlik ecosystem, forming a unified Data Fabric.
Launch of a full conversational analytics experience. Users can chat with their data to generate visuals and narratives across all apps.
Major upgrade to the Cognitive Engine. Added natural language interaction (NLP) and automated data preparation suggestions.
Introduction of Insight Advisor. First step into Augmented Analytics, providing automated chart suggestions and insights based on AI.
Official launch of Qlik Sense. Introduced the patented Associative Engine, allowing users to explore data in any direction without pre-defined queries.
Tool Pros and Cons
Pros
- Intuitive exploration
- AI-powered insights
- Seamless integration
- Fast trend ID
- Interactive visuals
Cons
- Potential cost
- Learning curve
- Data governance needed