Padmanabhan Srinivasan
Analyst · Barclays
Thank you, Melanie. Good morning, everyone, and thank you for joining us. We had a fantastic quarter and a very strong finish to the year, and I'm excited to share the details with all of you. We ended the year with 18% revenue growth in Q4, reaching $901 million for the full year. We delivered $51 million in incremental organic ARR, the highest in the company's history. Our 1 million customers reached $133 million in ARR, growing at 123% year-over-year. We maintained financial discipline and strong profitability with 42% adjusted EBITDA margins and 19% adjusted free cash flow margins for the year. There is a lot to be excited about. And given this momentum that we are seeing and the progress we are making against our long-term strategy, we wanted to provide a more comprehensive update today rather than wait for a separate Investor Day. Our prepared remarks will be slightly longer than usual. We'll advance slides from our earnings presentation on the webcast as we go, and we'll leave plenty of time for questions. AI is reshaping entire industries, and we are built for this shift. Software is being disrupted, not by incremental AI features, but by a structural shift to agentic systems operating at scale. Cloud and AI native disruptors are moving beyond AI [indiscernible] at a breakneck speed. We are deploying agents that reason, act retain memory and run continuously. In this structural shift, we see a secular hyperscale size opportunity by serving AI and cloud native companies driving this disruption. When markets are disrupted like this, there is typically a short window to take advantage of the opportunity, and let me tell you how we are seizing it. First, our top customers are now our growth engine. We have turned what was once viewed as a weakness into a competitive strength. Our top digital native customers or [ D&E ] which include cloud and AI native companies are now our fastest-growing cohort and in fact, growing significantly faster than the market on [ DL ]. In a nutshell, Scaling our top customers was [ 1 second ] train. Today, it's our growth engine. Second, we are on the right side of software disruption driven by AI. Modern cloud and AI native companies are going after large markets with disruptive AI-centric software innovation. They are increasingly choosing DigitalOcean at their natural platform to build and scale their [ IdentiKI ] software. And when these companies disrupt and scale at unprecedented rates on our platform, we win. Third, we put the cloud in Neocloud. These AI natives need more than just GPU rentals or inference APIs. They need access to optimized AI models, both closed and open source, production-grade inferencing and a full stack cloud for their software, all working together at global scale. We deliver all of it in one integrated agentic inference cloud. And finally, we are building a durable and profitable growth engine. We are investing responsibly while driving balanced growth. Without chasing the GPU training arm [indiscernible], we expect to deliver 21% revenue growth in 2026, reaching 25% plus growth by Q4 2026 and 30% growth in 2027. We are on a path to being a weighted rule of 50 company next year on the back of our existing committed data center capacity alone. Put simply, we are accelerating growth the DigitalOcean way. In December, we crossed a major milestone, surpassing $1 billion revenue run rate. This is a remarkable achievement for a company that was founded through [ Techstars ] in 2012. This success is a testament to our passionate team and the vision of our original founders. I also extend my deepest gratitude to all our incredible customers who have supported us throughout this journey. But what matters more than this milestone is where we are going. We exited 2025 at 18% year-over-year growth and are on a path to deliver 21% growth in 2026 with an exit growth rate of 25% plus in Q4 of 2026. We are picking up momentum, and we have outgrown the old narrative. Let me elaborate. Our top customers are now our growth engine. For our first decade, we built an iconic developer cloud. That foundation still matters, and we have over 4 million active developers on our platform that absolutely love us. Over the last several quarters, we have deliberately shifted focus towards serving our top DNE and eliminating any reason for them to leave DigitalOcean as their scale and that focus is working. In Q4, we delivered a record organic incremental ARR of $51 million and $150 million on a trailing 12-month basis, both surpassing even our peak COVID era quarters. This record trailing 12-month incremental ARR was balanced across AI and cloud customers. ARR from D&E reached $604 million in Q4, which is now 62% of total ARR, growing 30% year-over-year. And our D&E NDR reached 102%, continuing to outperform developer NDR. And like I've been reporting for a while now, our largest customers in the D&E cohort are accelerating the fastest. Our $100,000 customers are growing at 58%, our $500,000 customers are growing at 97%, and our $1 million customers who reached $133 million in ARR are growing at 123% year-over-year, all well ahead of market growth rates. And NDR also increases meaningfully as these customers scale. Q4 was 102% for our $100,000 customers, 106% for our $500,000 customers and 115% for our 1 million customers. Churn for our $1 million customers was 0 in Q4 and has averaged 0% over the last 12 months which clearly shows that our top customers are now scaling with us and becoming our growth engine. You should also effectively debunk any misconception that our most successful customers will outgrow our platform. Recapping this section, we are accelerating past the $1 billion revenue run rate milestone and our top customers are driving this acceleration. We are no longer defined just by entry-level developers experimenting on our platform. We are defined by high-growth cloud and AI native companies running production workloads scaling revenue and building their businesses on DigitalOcean. Said simply scaling our top customers was once a constraint. Today, it's our growth engine. On to the next point. We are on the right side of software disruption. There is a structural shift happening in software and DigitalOcean is emerging as a preferred platform for cloud and AI native companies that are driving this disruption. The last generation of Software as a Service or SaaS monetized per user per seat, value, scale with headcount. This next generation of AI-centric software monetizes per token for inference request Value scales with intelligence delivered as AI model capabilities accelerate entire categories of horizontal and vertical software are being reinvented. Incumbents are reacting to transformational change by layering AI into their workflows, seeking to enhance their existing software. But AI native companies are starting from first principles. For them, AI isn't a feature. It is the very engine that defines their product. Every time they deliver value, [indiscernible], tokens are consumed and intelligence is produced. DigitalOcean is uniquely positioned to serve these disruptors, and that is evident in the traction we are getting from leading AI native companies. We have signed and expanded production workloads with scale, cloud and AI native companies like character.ai, workato and Hippocratic AI, companies with product market fit, real revenue and rapidly scaling demand. Our work with character.ai demonstrates this clearly. We delivered 100% throughput increase and roughly 50% lower cost per token. For character.ai on our production inference cloud powered by AMD Instinct GPUs at production scale. This is not a [ lab ] benchmark. This is on live traffic across tens of millions of customers. This demonstrates our ability to support production scale inferencing for leading AI companies with our differentiated performance cost efficiency and integrated AI and cloud platform built for inference first production workloads. Another AI native with a proven product market fit is Hippocratic AI who builds health care-focused conversational AI, designed to support clinical workflows and patient engagement. Hippocratic AI selected DO's agentic inference Cloud to power HIPAA-compliant clinical AI workloads. This validates not just our performance but our enterprise-grade security and compliance. For Hippocratic AI, we optimize their multimodal deployment on NVIDIA hardware, reinforcing the importance of vertical innovation from GPUs to networking, [ cortile ] optimization, cloud integration and inference software. These AI native also scale very differently. While traditional cloud customers may take years to reach $1 million in ARR, AI native can cross that threshold in months or even weeks. When inference is your product demand compounds quickly. DigitalOcean is purpose-built for these disruptors. As software becomes more intelligent and AI-centric, we are building the vertically integrated inferencing cloud designed to power the next generation of AI natives, putting us squarely on the right side of this AI-driven disruption and our Agentic Inference Cloud is capitalizing these disruptors. Next, let me explain how we are enabling this. We do this by putting the cloud in Neocloud. Over the last couple of years, the new category of Neocloud has emerged that is largely optimized for one thing, large-scale AI model training, dense GPU farms, high-performance networking, frontier AI model training workloads. This is an important layer of the AI stack, but serving inferencing is different. As AI diffuses into every software company, workloads shift from training a handful of frontier models to running millions of real-world applications. and real-world AI-centric software needs more than GPU farms. They need compute, storage, databases, networking, observability, security, all working seamlessly together with predictable and transparent unit economics. Over the past 4 quarters, we have evolved our Agentic Inference Cloud to meet that reality. We have combined specialized inference infrastructure with our full stack cloud platform, purpose-built for production AI while staying true to what defines DigitalOcean, simplicity, open standards, enterprise-grade performance and SLAs and predictable and transparent unit economics. A good recent example of this in action is [ Open law], which recently took the world by storm by demonstrating the power of agentic software, giving us a glimpse into what AI-centric software future will look like. [ Open Cloud ] is an open source AI agent framework that allows developers to run real-world task-driven agents. When customers deploy [ open cloud ] on big solution, they need more than just GPUs, because AI agents are stateful. They reason, they take action, they retain memory. They interact with third-party APIs. All this requires more than just a GPU form. It takes a full cloud and AI stack working together side by side. Customers increasingly understand this as inference is the heartbeat of modern AI native. It is their primary operating cost, their performance level and their competitive moat. Their production traction scales directly with model quality, inference performance and unit economics. As they grow, they don't build their products around a single close source model, but rather orchestrate multiple models in real time, often leveraging open source and a mixture of expert approaches to optimize both accuracy and unit economics. Our platform delivers flexibility at every layer, from serverless inference APIs to dedicated clusters and GPU droplets, allowing customers to precisely match performance and cost to their workload requirements. We pair that with performance optimized open source models, delivering high accuracy, strong throughput, low latency and compelling unit economics. And this isn't a stand-alone inference platform. It is deeply integrated with our full stack cloud that we have hardened over the last dozen years so that customers can build, deploy and scale their entire AI application in one integrated environment with enterprise SLAs. Our agent development platform takes them from experimentation to production with real-world AI agents. Underpinning all of this is a deep lineup of GPUs from NVIDIA and AMD, supported by rapidly expanding global data center footprint, built and operated with years of operational expertise supporting mission-critical workloads. This integrated platform and flexibility of choice is precisely what makes DigitalOcean a natural platform for agentic software. Let me explain this again using [ open cloud ] as an example. Customers can build and deploy [ open cloud ] agents on distillation in 2 distinct ways, depending on their need for control, scale and operational complexity. The first path optimizes on simplicity and speed. Customers can launch a preconfigured one-click GPU droplet and have an [ open cloud ] agent running in minutes. This model gives full control over the environment. Ideal for experimentation, customization, performance tuning and for teams that want direct access to the infrastructure layer. The second path optimizes for global scale. Customers can deploy [ open cloud ] on DO's managed serverless platform where DigitalOcean handles provisioning, scaling, security, container orchestration and operational management. This approach is ideal for teams that are scaling a global application. Both approaches run on the same integrated cloud with access to managed databases for agentic memory object storage for artifact, virtual private cloud networking, observability and GPU backed inference. That's what vertical integration looks like in the inference economy, not just providing bare metal GPUs or even just generating inference tokens, but providing a secure, scalable and manageable foundation for intelligent stateful systems. Within days of launching [ Open Cloud ], nearly 30,000 native DigitalOcean, 1-click [ open cloud \ droplets were created, and that was just the starting point. thousands of other open cloud deployments were activated by customers, signaling the emergence of a new ecosystem almost overnight. The success of [ open cloud ] is an early view of how the AI market will continue to evolve and can serve as a blueprint for AI native businesses on how a new generation of software will be built around autonomous agents that orchestrate complex multistep workflows across systems, continuously reason with data and context and execute tax end-to-end with minimal human involvement. As these AI native companies move from proof of concept to production agents, the richness of the underlying platform, the security posture, manageability, scalability and predictable unit economics become mission-critical. And that is exactly where distillation is fast emerging as the natural platform for building and scaling AI agentic software. The competitive landscape is crowded with companies speaking to their ability to address the inference market, but our differentiation from these competitors is very clear. Neoclouds rent out GPUs. Inference [ rapper ] providers stop at inference APIs and model libraries. We continue to effectively compete with hyperscalers who bring scale, but also come with complexity and cost structures that are aimed at traditional large enterprise companies. While each of these competitors address a component of the inference value chain, real-world identic software requires a tightly integrated environment where inference, orchestration, persistence, networking and security are designed to work together with simplicity, global scale, enterprise SLAs and predictable unit economics. That is where DigitalOcean wins. This differentiation is clear to our customers, but it's also very clear in our financial profile. As a full stack cloud provider, that has operated mission-critical workloads for cloud and AI native for over a decade, we look very different from a financial perspective than other players chasing the AI training market or components of the inference market. Where Neocloud has very high revenue concentration with just a few very large customers making up the vast majority of their revenue, [ dissolutions ] top 25 customers represent only 10% of our revenue. While GPU rental providers own bare metal revenue and margins on their infrastructure, DigitalOcean drives higher revenue and margin from our full stack inference and cloud solutions. And when a growing number of Neoclouds are investing massive amounts of capital and burning near-term profits and cash for future returns, this solution is already profitable and generating cash. Our traction with cloud and AI native is no accident. It is the result of relentless focused investment and disciplined execution. We recently strengthened our executive team by adding Vinay Kumar as our Chief Product and Technology Officer. As a founding member of Oracle Cloud Infrastructure, or OCI, Vinay brings deep hyperscale expertise and leads our product, platform, infrastructure and security teams, having built a hyperscaler from the ground up at OCI, he looks forward to scaling up another one at DigitalOcean, one that is purpose-built to meet the complex needs of cloud and AI native workloads globally. In the meantime, our R&D team has been very busy continuing to ship products and features that are helping our customers scale on our platform. On [ GoreCloud], we launched remote MCP support embedding AI directly into the control plane, enabling secure 0 setup infrastructure management. On our AI platform, we introduced the age and development kit, an enhanced agent evaluation tools to help customers move from experimentation to production with measurable performance and reliability. With GPU observability, managed NFS and multi-node GPU support, we significantly expanded our ability to run large-scale mission-critical inference in production. This is what vertical integration looks like, infrastructure, inference, observability, agent tooling, all built to seamlessly work and scale together. And we're just getting started. We'll share the next wave of innovation on our Agentic Inference Cloud at our next deploy conference in San Francisco on April 28, as we continue building the platform, purpose built for the inference economy. Our differentiation is durable and will continue to grow as the market shifts from training to inference. To give investors clearer visibility into this momentum, we are introducing a new metric, ,AI customer revenue. AI customer revenue includes all revenue from customers leveraging our AI products, including both inference and core cloud services. Because AI natives don't just buy GPUs, they build, operate and scale applications which need a full stack inference cloud. In fact, 70% of our AI customer ARR in Q4 2025 was already coming from inference services or general-purpose cloud products rather than from bare [ metal ] GPU rentals. And these customers are growing rapidly with Q4 AI customer ARR reaching $120 million, growing 150% year-over-year, now making up 12% of total ARR. In summary, we don't just rent GPUs. We run production AI. We are not a GPU landlord. We are an AI cloud platform. We deliver hyperscaler grade infrastructure and reliability purpose-built infant services co-located and integrated with a full stack general-purpose cloud designed for the next generation of AI native. Or put simply, DigitalOcean puts the cloud in Neocloud. Now on to my final takeaway. We are building a durable and profitable growth engine. At our Investor Day last April, we laid out a plan to return the business to 18% to 20% growth by 2027. On our last earnings call, we pulled that growth projection forward by a full year guiding that we would reach that 18% to 20% growth range in 2026. And just 9 months after setting that original plan, we've already reached the bottom end of the target range at 18% growth in Q4 of 2025, achieving it 2 full years ahead of our original target. And the momentum we are seeing gives us even greater confidence. We now expect to deliver 21% revenue growth for the full year 2026 with an exit growth rate of 25% plus by Q4 and reaching 30% growth in 2027. As we ramp into our committed 31 megawatts incremental capacity this year, there will be measured near-term pressure on gross margin and adjusted EBITDA, but we remain confident in our 18% to 20% unlevered adjusted free cash flow margin guide for the year. The near-term pressure is just a physics problem, given the start-up cost timing and revenue ramp characteristics of quickly adding new capacity. It is the natural result of pursuing high-return growth opportunities, but we remain disciplined operators. Demand continues to far outstrip supply. And we will take advantage of opportunities to further accelerate growth when they present themselves. We will do so responsibly and we'll continue to pursue investments with attractive returns match investments with revenue timing, maintain a strong balance sheet and allocate capital with trigger even as we accelerate. Growth and discipline are not trade-offs for us. They are both operating principles. With that, I will turn it over to Matt to walk through the quarter and the year in more detail and to provide additional color on our updated outlook. Matt, over to you.