2025 Gartner Hype Cycle: AI Agents and AI-Ready Data Lead the Way
PorAinvest
viernes, 8 de agosto de 2025, 8:04 am ET1 min de lectura
IT--
AI agents are autonomous or semi-autonomous software systems that leverage AI, often including large language models (LLMs), to perceive, decide, and act within digital or physical environments. They are increasingly being deployed by organizations to handle complex tasks [1]. Gartner recommends that businesses identify the most relevant contexts and use cases for AI agents, as each agent and situation is unique.
AI-ready data refers to datasets optimized for AI use, improving both accuracy and efficiency. Gartner emphasizes that readiness depends on the data’s contextual fitness for specific AI techniques and use cases. This necessitates organizations to rethink traditional data management approaches to meet current and future demands, ensure trust, reduce bias and hallucinations, and protect intellectual property and compliance [1].
The hype cycle provides a visual framework for tracking the maturity and adoption of emerging technologies. It offers insight for businesses to manage deployment and achieve specific goals. AI agents and AI-ready data are expected to drive the next wave of responsible, scalable, and transformative AI applications across industries.
Gartner also highlights multimodal AI and AI TRiSM as key innovations expected to achieve mainstream adoption within five years. Multimodal AI models process and integrate multiple data types—text, images, audio, and video—allowing them to better interpret complex situations than single-mode systems. AI TRiSM ensures that AI systems are deployed responsibly and securely, encompassing four layers of technical capabilities that enforce enterprise policies across AI use cases [1].
These advancements underscore the transformative potential of AI technologies. Businesses should closely monitor these developments to leverage their benefits and navigate the complexities of AI deployment effectively.
References:
[1] https://cxotoday.com/news-analysis/ai-agents-ai-ready-data-top-gartner-2025-hype-cycle-list/
Gartner's 2025 Hype Cycle for Artificial Intelligence highlights AI agents and AI-ready data as the fastest advancing technologies. These technologies are at the peak of inflated expectations, with high interest and ambitious projections. AI agents are autonomous software entities that use AI techniques to achieve complex tasks, while AI-ready data optimizes datasets for AI applications. The hype cycle provides a graphic representation of technology evolution, offering insight for businesses to manage deployment and achieve specific goals.
Gartner's 2025 Hype Cycle for Artificial Intelligence (AI) highlights AI agents and AI-ready data as the fastest-advancing technologies, currently at the peak of inflated expectations. These technologies are driving significant interest and ambitious projections within the AI landscape.AI agents are autonomous or semi-autonomous software systems that leverage AI, often including large language models (LLMs), to perceive, decide, and act within digital or physical environments. They are increasingly being deployed by organizations to handle complex tasks [1]. Gartner recommends that businesses identify the most relevant contexts and use cases for AI agents, as each agent and situation is unique.
AI-ready data refers to datasets optimized for AI use, improving both accuracy and efficiency. Gartner emphasizes that readiness depends on the data’s contextual fitness for specific AI techniques and use cases. This necessitates organizations to rethink traditional data management approaches to meet current and future demands, ensure trust, reduce bias and hallucinations, and protect intellectual property and compliance [1].
The hype cycle provides a visual framework for tracking the maturity and adoption of emerging technologies. It offers insight for businesses to manage deployment and achieve specific goals. AI agents and AI-ready data are expected to drive the next wave of responsible, scalable, and transformative AI applications across industries.
Gartner also highlights multimodal AI and AI TRiSM as key innovations expected to achieve mainstream adoption within five years. Multimodal AI models process and integrate multiple data types—text, images, audio, and video—allowing them to better interpret complex situations than single-mode systems. AI TRiSM ensures that AI systems are deployed responsibly and securely, encompassing four layers of technical capabilities that enforce enterprise policies across AI use cases [1].
These advancements underscore the transformative potential of AI technologies. Businesses should closely monitor these developments to leverage their benefits and navigate the complexities of AI deployment effectively.
References:
[1] https://cxotoday.com/news-analysis/ai-agents-ai-ready-data-top-gartner-2025-hype-cycle-list/

Divulgación editorial y transparencia de la IA: Ainvest News utiliza tecnología avanzada de Modelos de Lenguaje Largo (LLM) para sintetizar y analizar datos de mercado en tiempo real. Para garantizar los más altos estándares de integridad, cada artículo se somete a un riguroso proceso de verificación con participación humana.
Mientras la IA asiste en el procesamiento de datos y la redacción inicial, un miembro editorial profesional de Ainvest revisa, verifica y aprueba de forma independiente todo el contenido para garantizar su precisión y cumplimiento con los estándares editoriales de Ainvest Fintech Inc. Esta supervisión humana está diseñada para mitigar las alucinaciones de la IA y garantizar el contexto financiero.
Advertencia sobre inversiones: Este contenido se proporciona únicamente con fines informativos y no constituye asesoramiento profesional de inversión, legal o financiero. Los mercados conllevan riesgos inherentes. Se recomienda a los usuarios que realicen una investigación independiente o consulten a un asesor financiero certificado antes de tomar cualquier decisión. Ainvest Fintech Inc. se exime de toda responsabilidad por las acciones tomadas con base en esta información. ¿Encontró un error? Reportar un problema

Comentarios
Aún no hay comentarios