El 2025 será un año de transformación, marcado por las altas expectativas en torno a la IA y una mirada más profunda a los datos. Estas son las tendencias en tecnologia 2025 que impulsarán el crecimiento del mundo de los datos.
Data Democratization and Accessibility
In 2025, companies across industries recognize the need for self-service data access to enable all departments — from marketing to supply chain — to drive data-informed decisions. Self-service tools are no longer limited to data teams but are instead reaching a broader range of business users. This accessibility trend, seen in industries like retail and financial services, has accelerated the shift towards empowering employees with intuitive, accessible data tools to enhance decision-making and operational efficiency. Studies from recent years suggest that self-service data analytics adoption could contribute significantly to productivity gains across sectors by minimizing dependencies on IT for data access.
Data Collaboration in Cross-Industry Ecosystems
The interconnected nature of modern business means that organizations increasingly rely on data ecosystems for cross-industry collaboration. Cloud technology, APIs, and platform-based software solutions are essential for seamless data exchange, enabling companies to connect with suppliers, partners, and customers more effectively.
In 2025, the trend evolves further with the rise of AI-enabled services and data-driven APIs. Instead of solely sharing raw data, companies are offering value-based insights or AI services derived from their proprietary data. For example, in sensitive sectors like financial services, organizations might use telecom insights or AI to enrich context around transactions without directly sharing sensitive customer information. This approach emphasizes data-enabled collaboration where the value, not the raw data, is exchanged.
Moreover, data marketplaces are becoming pivotal for monetizing shared data and fostering collaboration, as organizations across automotive, finance, and healthcare integrate their efforts. This integrated approach is expected to support end-to-end supply chain visibility, personalized customer service, and real-time product development collaboration.
Data Privacy and Governance in Software-Driven Environments
With stringent data privacy regulations now a reality, organizations must implement robust data governance frameworks to ensure compliance. In software-driven environments, where data management software solutions automate many governance tasks, data privacy has become a significant competitive advantage. In industries such as healthcare, where patient data is highly regulated, or finance, where customer trust is paramount, organizations are investing heavily in data privacy measures. In 2025, these efforts are expected to consume substantial portions of company budgets across industries, reinforcing the importance of compliance and ethical data handling.
AI and ML Integration for Enhanced Insights
The integration of AI and ML into data analytics systems has become critical for industries ranging from retail to energy. By 2025, it’s anticipated that AI will be a top investment priority for the majority of organizations, with CIOs allocating resources to technologies that transform data processing, offer predictive insights, and improve real-time decision-making.
Beyond business insights, AI is now embedded across the data lifecycle, with tools like natural language query, data analysis interfaces and AI-driven automation revolutionizing workflows. From data engineering to visualization, technologies like AI copilots are enabling faster, more efficient processes. However, while these systems significantly reduce manual work, they still require oversight from specialists to ensure accuracy and reliability.
Value-Based Investment in Data for Business Outcomes
In response to growing demands for measurable returns, organizations across sectors are investing in data initiatives that align with specific business outcomes, such as revenue growth, customer satisfaction, and operational efficiency. For instance, by 2026, companies that prioritize data and analytics (D&A) investments for strategic purposes are projected to yield up to 20% higher ROI than their counterparts. Industries that adopt this trend—particularly finance, manufacturing, and consumer goods—are actively aligning data projects with corporate goals, transforming data from a back-office asset into a critical driver of value creation.
Rise of Open Source and Composable Data Platforms
The ongoing evolution of open-source technologies is reshaping the data landscape, enabling organizations to build data stacks tailored to specific needs. By leveraging open protocols and standardized interfaces for data, metadata, businesses can mix and match tools without being locked into a single vendor. Tools like DuckDB for versatile low-footprint analytics, Apache Arrow format for fast data exchange and in-memory analytics, Great Expectations for data quality, and DataHub for data catalogs exemplify how open-source technologies keep contributing and driving data solutions and innovation.
An emerging concept of Composable Data Stack, based on open-source standardized interfaces between various data architecture and infrastructure modules, gives promise of greater modularity and allows for infrastructure optimization: organizations would be able to dynamically, without a need to reengineer data pipelines, allocate high-powered GPUs for advanced analytics or AI workloads while relying on cost-effective infrastructure for routine, not time sensitive or computationally demanding tasks.
The composable data stack enables interoperability and flexibility, providing companies with greater vendor-independence, control over costs and performance while fostering collaboration across diverse data ecosystems.
Data Monetization as a New Revenue Stream
Data monetization is emerging as a significant trend in sectors where data products can be sold or used to enhance customer experiences. For example, in the retail sector, data on customer preferences and purchasing behaviors is being used to personalize marketing and product recommendations. By 2025, it is expected that a growing number of organizations, particularly in financial services and telecom, will launch data-as-a-service (DaaS) models to generate new revenue streams. Leading companies already attribute over 20% of their revenue to data monetization, a figure expected to increase as more businesses adopt data-driven models to add value to their offerings.
El cambio hacia operaciones impulsadas por datos en múltiples industrias destaca la importancia de que los Chief Data & Analytics Officers (CDAOs) construyan ecosistemas de datos sólidos y preparados para la IA. En este contexto, la analítica de datos se posiciona como un pilar clave. En 2025, se espera que los CDAOs se enfoquen en tres pilares estratégicos:

Cultura y Educación en Datos
Cultura y Educación en Datos
Para 2027, más del 50% de las corporaciones multinacionales financiarán programas integrales de alfabetización en datos, con el objetivo de cerrar brechas de conocimiento y facilitar la adopción generalizada de la IA.

Gestión de Riesgos y Ética en la IA
Gestión de Riesgos y Ética en la IA
Dado que para 2026 se espera la implementación de estándares de IA responsable por parte de organismos reguladores, los CDAOs están desarrollando marcos éticos para garantizar un uso transparente y conforme de los datos.

Infraestructura de Datos Flexible
Infraestructura de Datos Flexible
A medida que cambian los entornos regulatorios y de mercado, los CDAOs están invirtiendo en infraestructuras de datos ágiles que puedan escalar y adaptarse a las necesidades empresariales y avances tecnológicos en evolución.
El 2025 marcará un hito para las empresas que adopten la transformación basada en datos. Aquellas que alineen sus estrategias de datos con los objetivos del negocio y aprovechen la analítica de datos basada en IA estarán mejor posicionadas para liderar en innovación, eficiencia operativa y crecimiento sostenible.
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