Thanks, Brian, and thank you to everyone for joining us today. I'm pleased to report that we had a good quarter and executed well against our large market opportunity. Let's begin by reviewing our fourth quarter results before giving you a broader company update. We generated revenue of $548.4 million, a 20% year-over-year increase and above the high end of our guidance. Atlas revenue grew 24% year-over-year, representing 71% of revenue. We generated non-GAAP operating income of $112.5 million for a 21% non-GAAP operating margin. We ended the quarter with over 54,500 customers. For the full year, we crossed the $2 billion revenue mark, while growing 19% and are roughly 20 times the size we were the year before we went public. Overall, we were pleased with our fourth quarter performance. We had a healthy new business quarter led by continued strength in new workload acquisition within the existing Atlas customers. In addition, we again benefited from a greater than expected contribution from multi-year non-Atlas deals. Moving on to Atlas consumption. The quarter played out better than our expectations with consumption growth stable compared to the year ago period. Serge will discuss consumption trends in more detail. Finally, retention rates remained strong in Q4, demonstrating the quality of our product and the mission criticality of our platform. As I look into fiscal '26, let me share with you what I see as the main drivers of our business. First, we expect another strong year of new workload acquisition. As we said many times in the past, in today's economy, companies build competitive advantage through custom built software. In fiscal '26, we expect that customers will continue to gravitate towards building their competitive differentiation on MongoDB. Second, we expect to see stable consumption growth for Atlas in fiscal '26 compared to fiscal '25. Usage growth to start fiscal '26 is consistent with the environment we have seen in recent quarters. This consistency, coupled with an improved fiscal '25 cohort of workloads gives us confidence that Atlas will continue to see robust growth as it approaches a $2 billion run rate this year. Third, as Serge will cover in more detail, we expect our non-Atlas business will represent a meaningful headwind to our growth in fiscal '26 because we expect fewer multiyear deals and because we see that historically non-Atlas customers are deploying more of the incremental workloads on Atlas. Fourth, we are very excited about our long-term opportunity in AI, as I will explain a bit later. In fiscal '26, we expect our customers will continue on their AI journey from experimenting with new technology stacks to building prototypes to deploying apps in production. We expect the progress to remain gradual as most enterprise customers are still developing in-house skills to leverage AI effectively. Consequently, we expect the benefits of AI to be only modestly incremental to revenue growth in fiscal '26. Fifth, we'll continue scaling our application modernization efforts. Historically, this segment of the market was not widely available to us because of the effort, cost and risk of modernizing old and complex custom applications. In fiscal '25, our pilots demonstrated that AI tooling combined with services can reduce the cycle time of modernization. This year, we'll expand our customer engagements so that app monetization can meaningfully contribute to our new business growth in fiscal '27 and beyond. To start with, and based on customer demand, we are specifically targeting Java apps running on Oracle, which often have thousands of complex store procedures that need to be understood, converted and tested to successfully monetize the application. We addressed this through a combination of AI tools and agents along with inspection verification by delivery teams. Though the complexity of this work is high, the revenue obtained for modernizing those applications is significant. For example, we successfully modernize our financial application for one of the largest ISVs in Europe, and we're now in talks to modernize the majority of the legacy estate. As I take a step back, I see fiscal '26 as a year of solid Atlas growth, enabled by a large market, superior product and strong go-to-market execution. We expect continued strong win rates as we acquire incremental workloads across our customer base. We will continue building on our core land expand go-to-market motion to further accelerate workload acquisition. In fiscal '25, we saw improved sales force productivity, and we are forecasting continued improvements in fiscal '26. In addition, we will continue investing to become a standard in more of our accounts. We are not market constrained and even our largest accounts. For example, we finished the year with 320 customers with over $1 million in ARR, a year-over-year growth rate of 24%. This reinforces our move up market. To that end, in fiscal '26, we will make significant incremental investments in our strategic accounts program. Looking beyond fiscal '26, I'm incredibly excited about our long-term opportunity, particularly our opportunity to address the expanded requirements of a database in the AI era. Let me tell you what we're seeing in our customer base as they work to adopt AI. AI is ushering in a new era of accelerated change and every company will have to adapt. We are witnessing a once in a generation shift that will fundamentally reshape industries, accelerate the pace of innovation and redefine competitive dynamics in ways we've never seen before. We joke that the world will move so fast that tomorrow's plans will happen yesterday. The winners will be those companies that can transform and adapt quickly to the new pace of change. Those cannot, will fall rapidly behind. AI is transforming software from a static tool into a dynamic decision-making partner. No longer limited to pre-defined tasks, AI powered applications will continuously learn from real time data, but this software can only adapt as fast as the data infrastructure is built-on and legacy systems simply cannot keep up. Legacy technology stacks were not designed for continuous adaptation. Complex architectures, batch processing and rigid data models create friction at every step, slowing development, limiting organization's ability to act quickly and making even small updates time consuming and risky. AI will only magnify these challenges. MongoDB was built for change. MongoDB was designed from the outset to remove the constraints of legacy databases, enabling businesses to scale, adapt and innovate at AI speed. Our flexible document model handles all types of data while seamless scalability ensures high performance for unpredictable workloads. With the Voyage AI acquisition, MongoDB makes AI applications more trustworthy by pairing real time data and sophisticated embedding and retrieval models that ensure accurate and relevant results. We also simplify AI development by natively, including vector and text search directly in the database, providing a seamless developer experience that reduces cognitive load, system complexity, risk and operational overhead, all with the transactional, operational and security benefits intrinsic to MongoDB. But technology alone isn't enough. MongoDB provides a structured solution oriented approach that addresses the challenges customers have with the rapid evolution of AI technology, high complexity and a lack of in-house skills. We are focused on helping customers move from AI experimentation to production faster with best practices that reduce risk and maximize impact. Our decision to acquire Voyage AI addresses one of the biggest problems customers have when building and deploying AI applications, the risk of hallucinations. AI powered applications excel where traditional software often falls short, particularly in scenarios that require nuanced understanding, sophisticated reasoning and interaction and natural language. This means they are uniquely capable of handling tasks that are more complex and open ended. But because AI models are probabilistic and not deterministic, that can hallucinate or generate falls from misleading information. This creates serious risks. Imagine a financial services agent that autonomously allocates capital on behalf of its customers or a cancer screening application in the hospital that analyzes scans to detect early signs of pancreatic cancer. For any mission critical application, inaccurate or low quality results are simply not acceptable. The best way to ensure accurate results is through high quality data retrieval, which ensures that not only the most relevant information is extracted from an organization's data with precision, high quality retrieval is enabled by vector embedding and reranking models. Voyage AI’s embedding and reranking models are among the highest rated in the hugging face community for retrieval, classification, clustering and reranking, and are used by AI leaders like Anthropic, LangChain, Harvey and Replit. Voyage AI led by Stanford professor, Tengyu Ma, who has assembled a world-class AI research team from AI Labs at Stanford, MIT, Berkeley and Princeton. With this acquisition, MongoDB will offer best-in-class embedding and reranking miles to power native AI retrievable. Put simply, MongoDB democratizes the process of building trustworthy AI applications right out of the box. Instead of cobbling together all the necessary piece parts, an operational data store, a vector database and embedding and reranking models, MongoDB delivers all of it with a compelling developer experience. As a result, MongoDB has redefined the database for the AI era. Now I'd like to spend a few minutes reviewing the adoption trends of MongoDB across our customer base. Customers across industries and around the world are running mission-critical projects in Atlas, leveraging the full power of our platform, including Informatica, Sonos,