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Diskless databases: What happens when storage isn’t the bottleneck
2026-05-05 · via InfoWorld

Peter Barnett

by Peter Barnett

opinion

May 5, 20265 mins

In 2021, I was developing software for an aerospace manufacturer and met with our machine learning team to discuss innovative approaches for tracking FOD (free-orbiting debris), a major security and operational concern in the industry. What struck me wasn’t the algorithms or tracking equipment, but the terabytes of data (up to petabytes) that were being produced.

Old-school problems of limited hardware resources and inefficient data compression were bottlenecking cutting-edge visual learning models and traditional tracking solutions alike. The team was smart and could fine-tune quickly, but the real challenge was making sure our infrastructure could scale with them.

In aerospace, performance hinges on how fast systems can absorb and interpret massive telemetry streams, and storage is often the silent limiter. When you’re generating terabytes to petabytes of data in a single test cycle, even a brief stall in the storage layer becomes a bottleneck. A few milliseconds of delay between what’s happening and what the system can write, index, or retrieve doesn’t just slow things down. It can compound through an entire run.

Traditional databases were built around disk constraints and batch workloads. But what happens when those limits no longer define what’s possible?

The diskless shift

Diskless architectures sidestep traditional constraints by separating compute from storage and removing local persistence from the critical path. Data is ingested and indexed in memory for immediate availability, while object storage provides the durable, elastic foundation underneath. The result is a database that accelerates both ingestion and retrieval without sacrificing persistence.

This design offers the best of both worlds: the elasticity and durability of object storage with the speed of in-memory caching. Compute and storage scale independently. Systems can scale continuously, recover automatically, and adapt to changing workloads without planned downtime or manual intervention.

Diskless design means data can be ingested, queried, and acted upon in real-time without trade-offs between cost, performance, and scale.

Why disks became the bottleneck

Traditional databases were built around disk constraints and transactional workloads, where latency between ingestion and retrieval doesn’t matter much. But for time series workloads, whether it’s telemetry, observability, IoT, industrial, or physical AI systems, that latency becomes the difference between insight and incident.

Diskless design combines the elasticity of cloud storage with the speed of in-memory indexing and caching. There is no complicated HA setup or heavy orchestration across a distributed system. Just linear, predictable performance.

Diskless architecture brings several benefits out of the box:

  • High availability: Multi-AZ durability without complex replication.
  • Zero migration: No data movement when upgrading or moving instances.
  • Fault isolation: If one node fails, another can continue servicing requests with no downtime.
  • Simplified scaling: Add or remove nodes on demand for ingest or query load.

What changes when the disk disappears

When storage is no longer the constraint, the entire performance profile of the database shifts. Instead of planning around limits, teams can rely on a system that remains responsive as data volumes grow, with capacity expanding in the background and compute scaling alongside demand.

This separation of compute and storage also unlocks operational simplicity. There’s no need to manage replicas or create fault isolation per node; the object store itself is able to provide this redundancy automatically. Enterprises gain petabyte-scale storage, continuous uptime, and a deployment model that adapts seamlessly across environments, whether it’s on-prem, cloud, or hybrid.

A new foundation for real-time systems

Removing the disk isn’t just a performance optimization, it’s a paradigm shift.

Predictive maintenance systems can now analyze live sensor telemetry continuously instead of batching overnight. Industrial control systems can react instantly to anomalies instead of waiting for downstream processors. AI and machine learning models can train against live data streams that tell a story instead of static snapshots that lack context.

When you eliminate the dependency on local storage, you eliminate an entire class of operational drag. The database becomes an active, real-time engine, not just a place to store data.

Architecting for what’s next

Diskless design is not an end point, but a foundation. Over the next decade, databases will continue to evolve from managing persistence to powering intelligence. Diskless architectures are a step in that direction, making the database not just faster, but fundamentally more capable of keeping up with the pace of the physical world.

Because when your systems depend on real-time decisions, the slowest part of your stack can’t be your database.

New Tech Forum provides a venue for technology leaders—including vendors and other outside contributors—to explore and discuss emerging enterprise technology in unprecedented depth and breadth. The selection is subjective, based on our pick of the technologies we believe to be important and of greatest interest to InfoWorld readers. InfoWorld does not accept marketing collateral for publication and reserves the right to edit all contributed content. Send all inquiries to doug_dineley@foundryco.com.

Peter Barnett

by Peter Barnett

Contributor

Peter Barnett is Lead Product Manager at InfluxData, where he guides the development of new InfluxDB solutions. With ten years of experience in software engineering and product management, his expertise lies in data analytics and time series products. Peter previously was the Director of Product at a Series B startup and worked as a software engineer for a Fortune 500 organization. With multiple degrees in technology and business, Peter is passionate about solving complex problems and delivering value through innovative, customized solutions.