Gartner’s top tech trends for 2026: AI supercomputing, multi-agent systems lead the pack

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Gartner’s Top Strategic Technology Trends for 2026: AI Supercomputing and Multi-Agent Systems Lead the Way


Global research and consulting firm Gartner has released its forecast for the Top 10 Strategic Technology Trends for 2026, highlighting the rapid evolution of AI-driven, secure, and decentralised computing ecosystems. The trends underline a major technological inflection point marked by AI supercomputing, multi-agent systems, and domain-specific models reshaping enterprises and governance alike.


KEY TECH TRENDS 2026

1. AI Supercomputing Platforms

  • Integration of CPUs, GPUs, AI ASICs, neuromorphic chips, and orchestration software for complex AI and data workloads.
  • Enables massive computing power, efficiency, and performance across ML, simulation, and analytics.
  • Prediction: By 2028, 40% of enterprises will use hybrid computing architectures (up from 8%).

2. Multi-Agent Systems (MAS)

  • Collections of autonomous AI agents that interact, coordinate, and execute complex goals independently or collaboratively.
  • Reflects the rise of agentic AI—AI systems capable of planning, reasoning, and using tools autonomously.
  • Represents a shift from static AI models to dynamic goal-oriented ecosystems.

3. Domain-Specific Language Models (DSLMs)

  • Industry-focused AI models tailored for specific domains (e.g., law, medicine, finance).
  • Offer higher accuracy, lower cost, and stronger compliance than generic LLMs.
  • Aim to deliver tangible business value from AI investments.

4. AI Security Platforms

  • Provide unified security for custom and third-party AI systems.
  • Safeguard against prompt injection, data leakage, and rogue AI behaviour.
  • Prediction: 50% of enterprises will use such platforms by 2028 to protect AI infrastructure.

5. AI-Native Development Platforms

  • Enable software creation through GenAI-assisted coding and AI–human collaboration.
  • Small teams of developers can rapidly produce applications using natural language and automated tools.
  • Marks a move toward AI-driven software engineering ecosystems.

6. Confidential Computing

  • Protects data in use via hardware-based Trusted Execution Environments (TEEs).
  • Ensures privacy even from infrastructure or cloud operators.
  • Prediction: By 2029, 75% of workloads on untrusted infrastructure will use confidential computing.

7. Physical AI

  • Embedding intelligence in machines, robots, and smart equipment that sense, decide, and act in real environments.
  • Drives automation in sectors like manufacturing, logistics, defence, and healthcare.
  • Demands integration between IT, operations, and engineering disciplines.

8. Preemptive Cybersecurity

  • Focuses on proactive defence through predictive analytics and AI threat modelling.
  • Moves security spending from reactive response to anticipatory protection.
  • Forecast: By 2030, preemptive systems will make up half of global cybersecurity spending.

9. Digital Provenance

  • Ensures traceability and authenticity of software, data, and AI-generated content.
  • Becomes vital amid rising use of open-source and synthetic data.
  • Prediction: By 2029, lack of provenance measures could lead to major sanctions and compliance risks.

10. Geopatriation

  • Shift of company data and apps from global public clouds to sovereign or regional infrastructures due to geopolitical concerns.
  • Expands beyond governments and banks to private corporations amid global instability.
  • Reflects a broader move toward data sovereignty and localisation.

THEME INSIGHT

2026 marks the AI industrialisation phase, where organisations are expected to:

  • Operationalise AI governance and security,
  • Build multi-agent ecosystems,
  • Invest in sovereign and confidential infrastructure, and
  • Balance innovation with compliance and resilience.

    Updated - October 27, 2025 ; 1:26 PM | Business Line