Thank you, Jess, and thank you to everyone for joining. I'm honored and genuinely excited to speak with you as the CEO of MongoDB. This is an incredible company and stepping into this role is a privilege. I want to start by thanking our customers, partners and employees for everything you have done to build MongoDB into what it is today. I especially want to acknowledge Dev whose leadership and vision created a phenomenal company, which has strong momentum and a tremendous market opportunity ahead. Many have asked why I chose MongoDB, I had multiple opportunities to lead other technology companies but MongoDB stood apart. We are at a true inflection point driven by major shifts across cloud, data and AI. MongoDB has the potential to become the generational modern data platform of this evolving era, an opportunity that comes once in a lifetime. I am a truly customer-obsessed leader. So during my diligence, I spoke with multiple customers. Across these conversations, the message was clear. MongoDB already powers core, mission-critical workloads were enterprises that are modernizing their technology stack. At the same time, MongoDB is uniquely positioned at the center of the AI platform shift. Few technology companies have that combination of durable core strength and emerging platform relevance. Throughout my career, I have driven product to platform transformation at some of the most respected technology companies. Looking at MongoDB today, I see all the ingredients needed to build an iconic modern data platform company. World-class technology, a strong innovation engine, deep developer and customer pool and exceptional talent. We have everything required to become the generational data platform of choice in the AI era. Now onto this quarter's results. Atlas performance was strong, accelerating to 30% year-over-year growth, up from 29% in Q2 and 26% in Q1. We generated total revenue of $628 million (sic) [ $628.3 million ] , up 19% year-over-year and above the high end of our guidance, driven by strength in Atlas. We delivered non-GAAP operating income of $123 million (sic) [ $123.1 million ] or a 20% non-GAAP operating margin. We ended the quarter with over 62,500 customers adding 2,600 in the quarter and 8,000 year-to-date, reflecting 65% growth in customer additions on a year-to-date basis driven by the strong performance of our self-serve motion. Q3 was an exceptional quarter that was driven by our continued go-to-market execution and the broad-based demand we are seeing across business. At the same time, we significantly outperformed on operating margin, demonstrating that we can drive durable revenue growth while simultaneously expanding profitability. Now let me explain why I see such a large opportunity ahead for both core operational data and emerging AI workloads. Our core business is strong across self-served and enterprise customers even before any AI tailwinds. In my first 3 weeks, I've met with over 30-plus customers from AI-native companies to C-suite technology leaders at Fortune 500 companies. Those conversations have only strengthened my conviction in MongoDB's opportunity. Customers already depend on us for mission-critical workloads today, and they are leaning in even further, betting on MongoDB to power the AI applications that will shape their future. The expansion opportunity in front of us is immense. We already serve more than 70% of the Fortune 100 and many of the world's largest banks, health care organizations and manufacturers run their mission-critical workloads on MongoDB. Even with this foundation, there is still significant room to broaden our footprint within the enterprise. A strong example of this expansion opportunity is a major global insurance provider that has adopted MongoDB broadly across its enterprise. The company selected MongoDB Atlas to modernize several mission-critical systems, including its next-generation policy administration platform, analytics rating engine, unstructured data repositories and hundreds of supporting services. Since moving its policy platform to Atlas, the insurer has expanded from just a small set of regions to nationwide and significantly accelerated the rollout of new products and distribution channels. Standardizing on Atlas has given the organization the scalability and reliability to improve customer experience, support more advanced data and AI capabilities and increased development velocity, all central to its transformation and growth ambitions. All of this momentum in the core business is happening before the AI wave has meaningfully impacted our results. We are still early, but the signs are encouraging from AI-native start-ups building intelligent applications on MongoDB to large enterprises developing AI agents that will reshape how they operate. AI applications must connect what LLMs know with what companies know, which is their proprietary data, systems and real-time context. This is fundamentally an information retrieval problem, and it requires a very different architecture than the last generation of software. Rapidly evolving AI models uncover new complex properties about entities and rigid tabular stores cannot deliver the real-time high accuracy performance that AI systems require. At the same time, AI is dramatically increasing the speed at which applications are built and iterated and fixed database schemas simply cannot keep pace. This is where MongoDB has a structural advantage. Our document model, natively, JSON is built for diverse class changing and interdependent data. Our integrated search, vector search and Voyage embeddings removed the need for brittle bolt-ons, and we are seeing industry-leading results. Number one, on the Hugging Face retrieval embedding benchmark with Voyage MongoDB models and the #1 vector database on DB engines. Advances in our embedding and reranking models drive meaningful accuracy gains. Enabling AI applications to deliver more grounded responses with fewer LLM hallucinations, while lowering storage cost and query cost through smaller, more efficient embeddings. Because all of this is delivered in a unified platform that runs anywhere, customers can keep operational and AI workloads together, simplify their architecture and innovate faster. As AI adoption accelerates, MongoDB's positioned not just to participate in the wave, but to help define it. we are already beginning to see this play out with AI-native customers like Mercor, which is redefining hiring with its fully automated platform that uses AI to assess and match talent with the opportunities they are best suited for. Mercor uses MongoDB Atlas to store the AI data behind its platform that directly connects professionals to AI model training and evaluation roles. Originally, a self-serve customer, the company is also utilizing Voyage embeddings and Atlas Vector Search. Atlas has scale to support Mercor's 50% month-over-month growth, allowing the company to keep its software engineering team lean and agile as it expands to over $10 billion in value. This is just one example of how customers are building AI-native applications and companies on MongoDB. We are also seeing meaningful traction among large enterprises that are starting to build AI applications that have a material impact on their business. For example, a highly influential global media company aim to increase engagement via enhanced content recommendation for its vast repository of multimodal assets across its 70-plus websites. That existing stack powered by Elasticsearch hit a performance wall struggling with the complexity of new embedding models. Recognizing that [ rigid ] systems stifle innovation, the engineering team re-architected on MongoDB Atlas and MongoDB Atlas Vector search. Working with MongoDB experts to deliver a proof of concept in just weeks, they integrated Voyage AI models directly alongside their data. The solution scale effortlessly, cutting latency by 90% and reducing operational spend by 65% and driving a 35% increase in click-through rates, ultimately providing millions of global readers with a seamless, deeply personalized discovery journey. The bottom line is that the business is performing exceptionally well. Existing customers are expanding with us and net new customer additions continue to show strength. Companies in nearly every industry and across every geography are choosing MongoDB because we deliver the features, performance, cost effectiveness, and AI readiness they need in single data platform. Given the continued robust performance of Atlas, along with the healthy underlying fundamentals we are seeing in the business, we are raising our financial guidance for the fourth quarter and the full fiscal year 2026 and reiterating our commitment to the long-term financial model outlined at our recent Investor Day. Over the next few months, my focus is straightforward. Deepening customer relationships, advancing our innovation agenda as we build the generational modern data platform for the multi-cloud and AI era, scaling our go-to-market efforts and supporting our people so they can do their best work. I believe MongoDB is a company that has only begun to realize its vast potential and I look forward to unlocking this potential in the years to come. With that, I'll now hand the call over to Mike to discuss the financial results and outlook in greater detail. Mike?