Oracle's 1Q Earnings Highlight Cloud Gains, but Overreliance Looms
By Leo Gergs |
24 Sep 2025 |
IN-7943
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By Leo Gergs |
24 Sep 2025 |
IN-7943
Oracle Presents Strong 1Q Results |
NEWS |
Oracle opened fiscal 2026 (June–May) with 1Q results reported on September 9, 2025, underscoring its accelerating cloud transformation and growing role in global Information Technology (IT) infrastructure. Revenue rose 12% Year-over-Year (YoY) to US$14.9 billion, driven almost entirely by cloud growth. Cloud sales surged 28%, led by a 55% increase in infrastructure services (Infrastructure-as-a-Service (IaaS)), signaling a shift of compute-intensive and Artificial Intelligence (AI) workloads to Oracle’s platform.
A major catalyst behind this momentum is Oracle’s landmark agreement with OpenAI, announced in June 2024. Under the deal, OpenAI uses Oracle Cloud Infrastructure (OCI) to extend Microsoft Azure’s AI platform. This partnership dramatically expanded Oracle’s Graphics Processing Unit (GPU) capacity, with Superclusters scaling to 64,000 NVIDIA Blackwell GPUs. Reports cite commitments of ~US$30 billion annually, with a US$300 billion contract kicking off in 2027, making it one of the largest cloud deals ever signed. While this has elevated Oracle’s visibility and solidified its position in hyperscale computing, it also introduces strategic dependence on a single marquee customer.
Its cloud infrastructure now spans over 60 global regions, positioning Oracle as a true hyperscale provider. Notably, growth is increasingly fueled by infrastructure services, complementing its established strength in Software-as-a-Service (SaaS) offerings like Fusion and NetSuite. This diversification underscores Oracle’s ability to support mission-critical workloads with the resilience and performance expected from top-tier providers such as Amazon Web Services (AWS), Microsoft, and Google.
The Sweet Spot for Cloud Services: Big Enough for Scale, Small Enough for Agility |
IMPACT |
Oracle’s fiscal 2026 opening quarter reflects a company gaining ground in cloud infrastructure through targeted, high-impact bets. Its US$14.9 billion in revenue and US$455 billion in remaining performance obligations suggest scale and momentum. With its dominance in databases (where most training data resides) and advanced networking technologies like Remote Direct Memory Access (RDMA) and RDMA over Converged Edge (RoCE), Oracle is uniquely equipped to support AI workloads. The company is embedding Generative Artificial Intelligence (Gen AI) capabilities from Cohere into its Fusion, NetSuite, and vertical SaaS portfolios, accelerating time-to-value for enterprise customers. Its partnership with OpenAI may serve as a blueprint for future collaborations, potentially replicating that model across the AI ecosystem. Oracle’s infrastructure stack, including GPU clusters optimized for training and inference, is purpose-built for AI scalability. Crucially, Oracle’s ability to integrate AI into core business applications, while maintaining flexibility across on-premises, cloud, and hybrid deployment models underscores a level of agility that few competitors can match.
Oracle’s sovereign cloud strategy is a clear example of its tactical agility. In Europe, where regulatory complexity has slowed hyperscaler expansion, Oracle has moved quickly to establish sovereign cloud regions in Germany, France, and Italy. These regions are designed to meet strict compliance standards, giving Oracle a first-mover advantage in public sector and regulated industries. This responsiveness has allowed Oracle to capture demand in markets where digital sovereignty is becoming a strategic imperative. The company has also leaned into high-performance compute, expanding its GPU infrastructure to support AI workloads. Its ability to deploy cutting-edge clusters rapidly and at competitive pricing has made it attractive to AI startups and enterprises frustrated by GPU shortages on other platforms.
Yet the most significant driver of Oracle’s recent cloud momentum is its partnership with OpenAI. While the deal has elevated Oracle’s profile and secured one of the largest cloud contracts in history, it introduces a critical vulnerability. A substantial portion of Oracle’s projected infrastructure growth is now tied to OpenAI’s continued usage of OCI. If OpenAI shifts its strategy, reduces its footprint, or renegotiates terms, Oracle could face a material impact on its revenue trajectory. This concentration risk is compounded by Oracle’s dependence on NVIDIA for GPU supply. The economics of GPU-driven infrastructure are inherently volatile, subject to pricing pressure, supply chain constraints, and vendor leverage. Oracle’s infrastructure business, while growing rapidly, is exposed to both customer and supplier dependencies that could undermine its margin profile and strategic flexibility.
Building Sustainable AI Growth Beyond a Single Client |
RECOMMENDATIONS |
Hyperscalers can draw several important lessons from Oracle’s recent cloud momentum. Oracle has demonstrated that financial scale, global infrastructure reach, and a diversified revenue mix are critical to reassuring enterprises of long-term reliability. The company was clearly in the right place at the right time, securing a major agreement with OpenAI and scaling its AI infrastructure rapidly. However, it continues to invest in sovereign AI capabilities and expand its presence in regulated cloud regions across Europe, showing a commitment to long-term strategic positioning. For other cloud service providers, this can serve as an important lesson: financial scale and global infrastructure are essential, but they must be paired with adaptability and foresight. Oracle’s ability to respond quickly to geopolitical demands, secure scarce GPU supply, and integrate AI into enterprise applications demonstrates a level of agility that sets it apart. At the same time, its reliance on a single marquee customer highlights the risks of concentration and volatility. Cloud providers must recognize that sustained success will depend not just on capturing Gen AI demand, but on continuously evolving with regulatory, technological, and market shifts.
By fully aligning OCI with Oracle AI, the company has signaled its commitment to becoming a key player in the enterprise AI ecosystem. This move demonstrates the value of clear positioning, but also highlights the limits of relying too heavily on a single high-profile partnership. The lesson here is that cloud providers cannot depend on platform alignment alone—they must also invest in creating differentiated value that resonates with enterprises. This includes developing industry-specific solutions, publishing transparent performance benchmarks, and offering commercial models tied directly to business outcomes. Without these measures, providers risk being seen as overexposed to individual partnerships or hype cycles, rather than as credible, broad-based enablers of enterprise-scale AI.
Enterprises often face a skills gap when it comes to deploying AI at scale. Vendors can help bridge this gap by offering training and enablement programs directly tied to their platforms. Hands-on workshops, certifications, and sandbox environments allow enterprise IT teams to experiment with AI tools in low-risk settings, building confidence and practical expertise. Making these programs accessible and role-specific ensures that training translates into tangible business outcomes.
From a technology perspective, vendors will have to align their services even closer to enterprise outcomes and assist enterprises with deploying these at scale. Again, Oracle’s infrastructure stack serves as a good example. As deployments often includes RDMA, this provides enterprises with ultra-low latencies, high throughput, and reduced overhead. With RoCE, enterprises can achieve all this, while utilizing existing Ethernet connectivity infrastructure, boosting cost-efficiency even further. The combination with a strong database infrastructure (where most of enterprises’ structured data resides) will be key to providing the best environment that convinces enterprises to advance their AI investment projects and break free from the ”Proof of Concept (PoC) trap” to deploy AI use cases at commercial scale in real-life enterprise scenarios.
Written by Leo Gergs
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