El Portal de las Tecnologías para la Innovación

Forget one-size-fits-all: 3 reasons hybrid is the future of data integration deployment

As businesses rush to scale generative AI, many encounter a common roadblock: unreliable data.

AI models depend on accurate, unified data, but quality and governance become serious challenges when data is scattered across clouds, apps and systems. With global data volumes expected to grow 250% by 2025, the need to integrate and harmonize data across silos is more urgent than ever.
Data integration, the process of combining data from multiple sources into a coherent, usable format, is essential for trustworthy AI, streamlined operations and better decision-making. Without it, even the most advanced AI can’t deliver real value. But how do you streamline data integration when your data is scattered across hybrid environments?
For starters, do not confine yourself to a single deployment model.


Hybrid deployment, the smart choice for modern data strategies

In recent years, we’ve witnessed incumbent data integration vendors pressure their clients to migrate to singular deployment models, often cloud-based solutions—sometimes even ending support for existing workloads. This shift risks disrupting foundational data integration strategies, which for many organizations are the backbone of their entire data infrastructure.

These cloud-centric options often offer significant scalability and cost benefits. However, retaining flexibility over where you run your data integration workloads is paramount. A hybrid deployment model delivers flexibility for stronger performance, improved security and optimized FinOps.

Let’s dive deeper into why hybrid makes sense.

1.  Enhance data protection and regulatory compliance with hybrid data integration

Many single deployment models—whether in the cloud or on premises—lack the adaptability needed to keep up with changing business and regulatory demands. A hybrid data integration approach gives organizations control over where and how to process data. This flexibility reduces risk and helps ensure compliance across diverse environments. Let’s take a closer look at these specific benefits:

  • Reduce data exposure with minimized movement: A hybrid data integration approach allows organizations to process and transform data where it is stored—whether on premises, in the cloud or across multiple environments. This integration reduces the need to move sensitive information across networks, minimizing the risk of interception, leakage or mismanagement.
  • Help ensure compliance with regional regulations and industry-specific mandates: With in-place processing, hybrid data integration empowers organizations to keep data within specific geographic or system boundaries, in line with regulations such as GDPR, HIPAA or industry-specific mandates. Instead of potentially crossing borders or violating data residency rules, hybrid integration enables processing that maintains data sovereignty and reduces compliance risk.

2.  Drive better performance with hybrid data integration

Single deployment models can introduce performance tradeoffs that impact speed, reliability and efficiency. A hybrid approach addresses these challenges by enabling data to be processed closer to its source, whether on premises, in the cloud or at the edge. Here are three key ways that hybrid deployments offer superior performance:

  • Reduce latency by minimizing unnecessary data movement: Hybrid integration allows data to be processed closer to its source, whether on premises, at the edge or in the cloud. This aspect reduces the need for excessive data movement over networks, significantly cutting down on latency and improving the speed of data-driven operations.
  • Ensure consistent and predictable performance: Some deployment models rely on shared, multitenant resources, whereas hybrid deployments can use dedicated resources where needed. This option avoids performance slowdowns and helps maintain consistent throughput for high-priority workloads.
  • Optimize resource use across environments: Choosing the right environment for each workload helps ensure optimal performance based on use case. On-premise environments are best for sensitive, low-latency tasks while cloud is better for large-scale analytics or transformation.

3.  Improve FinOps with hybrid data integration

With greater control over where and how data is processed, hybrid data integration plays a key role in FinOps optimization. This approach minimizes unnecessary data transfers and allows teams to match workloads to the most cost-effective environment.

As a result, organizations can better manage costs across cloud and on-premises environments, with key benefits that help align data operations with financial goals, such as:

  • Reduced data egress and ingress fees: By processing data closer to the source, hybrid models reduce the volume of data moved across networks, helping avoid expensive cloud data transfer and egress fees.
  • Optimized cloud and infrastructure cost: Choose the most cost-effective environment for each workload based on workload type, data sensitivity and performance needs. This approach uses on-premises resources when possible and cloud when needed—reducing overprovisioning and unnecessary cloud costs.

Tailored deployment options for your data integration needs, powered by IBM

While many competitors push rigid, single deployment options, IBM® Data Integration supports customers with flexible options that meet modern hybrid cloud demands. These flexible deployment approaches support both new and existing environments, wherever the data lives. Each solution is purpose-built to meet specific operational and security demands, empowering organizations and customers to choose the optimal deployment model—whether software, SaaS or hybrid—based on their distinct needs.

IBM Data Integration takes hybrid a step further, blending the power of managed and self-managed models through its advanced remote engine. You can design jobs in a fully managed environment and then deploy anywhere—on your VPC, any cloud, data center or region. This approach keeps integration close to your data to cut latency, avoid egress costs, and help ensure full control and security.

Moving forward with IBM

In the world of multi- and hybrid cloud, it is more critical than ever to have a data integration foundation that can meet you where your data is. IBM is dedicated to evolving to support clients’ modern data and integration needs. With a proprietary migration utility, expert support team and customer success teams, IBM helps clients modernize at their own pace while helping ensure operational continuity.

Join our waitlist for a first look at IBM’s latest data integration innovations 

IBM Blog. S. B. y C. G.

Artículos relacionados

Scroll al inicio