Thank you, Brian, and thank you to everyone for joining us today. I'm pleased to report that we had another strong quarter as we continue to execute well, despite challenging market conditions. I will start by reviewing our third-quarter results before giving you a broader company update. We generated revenue of $433 million, a 30% year-over-year increase and above the high end of our guidance. Atlas revenue grew 36% Year-over-Year, representing 66% of total revenue. We generated a non-GAAP operating income of $79 million for an 18% non-GAAP operating margin and we had another solid quarter of customer growth and in the quarter with over 46,400 customers. Overall, we delivered a strong Q3. We had a healthy quarter of new business acquisitions, led by continued strength in new workload acquisition within our existing customers. In addition, our Enterprise Advanced business again exceeded our expectations, demonstrating strong demand for our platform and the appeal of our run-anywhere strategy. Moving on to Atlas consumption trends, the quarter played out in line with our expectations. Michael will discuss consumption trends in more detail later. Finally, retention rates remained strong in Q3, reinforcing the mission criticality of our platform, even in a difficult spending environment. This quarter, we held our most recent global customer advisory board meeting, where customers across various geographies and industries came together to share feedback and insight about the experience using MongoDB. From these discussions, as well as our ongoing C-Suite dialog with our customers a few themes emerged. First, AI is in nearly every conversation with customers of all sizes. We're seeing great early feedback from our partnership with AWS's CodeWhisperer, the AI-powered coding companion that is now trained on MongoDB data to generate code suggestions based on MongoDB's best practices from over 15 years of history. Microsoft GitHub Copilot is also proficient at generating code suggestions that reflect best practices, enabling developers to build highly-performing applications even faster on MongoDB. And with the recent advances in Gen AI, building AI applications is no longer the sole domain of AI or ML experts, increasingly it’s software developers who are being asked to build powerful AI functionality directly into their applications. We are well-positioned to help them do just that. We saw exceptional interest in our Vector Search public preview and we announced general availability yesterday. Customers are building a range of AI use cases from semantic search to retrieval augmented generation or RAG where organizations can leverage the use of their private data, to increase the accuracy of LLMs. For example, UKG, a human capital and workflows management technology serves over 80,000 plus customers around the globe chose to use MongoDB Atlas Vector Search for an AI-powered assistant that helps guide their customers employees, people managers, and HR leaders. They chose Atlas Vector Search because of its minimal added architectural complexity, flexibility to handle the rapidly changing data as applications evolve and the scale to handle large workloads. UKG is not alone. In our recent state of AI survey report by Retool, Atlas Vector Search received by far the highest net promoter score from developers compared to all other vector databases available in the market. Moreover, developers can combine Vector Search with any other query capabilities available on MongoDB, namely analytics, tech search, geospatial, and time series. This provides powerful ways of defining additional filters and vector-based queries that other solutions just cannot provide. For example, you can run complex AI enriched queries such as find pants, shirt, shoes in my size that look like the outfit in this image within the particular price range and have free shipping or find real-estate listings with houses that look like this image that were built in the last five years and/or in that area within seven miles west of Downtown Chicago with top-rated schools. Second, customers feel more pressure than ever to modernize their data infrastructure, they are aware that their legacy platforms are holding them back from building modern applications designed for an AI future. However, customers also tell us that they lack the skills and the capacity to modernize. They all want to become modern but are daunted by the challenges as they are aware it's complex -- it's a complex endeavor that involves technology, process, and people. Consequently, customers are increasingly looking to MongoDB, to help them modernize successfully. We launched Relational Migrator early this year to help customers successfully migrate data from the legacy relational databases to MongoDB. Now, we're looking beyond data migrations to the full lifecycle of application modernization. At our local London event, we unveiled a Query Converter, which uses genetic AI to analyze existing sequel queries and stored procedures and convert them to work with MongoDB's query API. Customers already use the tool successfully to convert decades-old procedures to modernize their back-end with minimal need for manual changes. While it's still early days, we're continuing to invest in the Query Converter and other AI features with the goal of significantly reducing the effort involved in monetizing legacy applications to run on MongoDB. To be clear, application modernization will take time to ramp, but as one of the largest long-term growth opportunities for our business. Third, our run-anywhere strategy continues to be a real differentiator as customers greatly appreciate the optionality that our platform provides as they manage often conflicting priorities on the way to the cloud. On one hand, the movement to the cloud continues unabated. Customers in industries and geographies were at first hesitant to move to cloud, such as financial services in Southern Europe are Now moving to the cloud with urgency to become more nimble and to reduce costs. Many of our customers find that the all-in cost of maintaining legacy workloads on-prem is higher than the cost of migrating them to the cloud. On the other hand, our largest enterprise customers tell us they are planning to maintain a meaningful on-prem footprint for the foreseeable future. The reason for keeping workloads on-prem include regulatory requirements, the desire to keep using their existing on-prem infrastructure, or the enormity of the task of migrating all their apps to cloud. In the meantime, they still want to modern data platform to deploy new and existing applications, the continued outperformance of EA business demonstrates that our customers value our ability to run anywhere and to future-proof their eventual move to the cloud by building on EA. Finally, our customers remain focused on cost management, they're looking to do more with less by consolidating vendors and reducing the complexity of the data architecture. MongoDB dramatically increases developer productivity and supports a wide variety of use cases, eliminating the need for many point solutions. This combination resonates with customers in this macro-environment. For example, Atlas search now powers the homepage of one of the most recognizable sports media brands in the world. The customer replaced an incumbent search technology with Atlas search, because they were drawn to the operational ease of running search queries alongside other queries on Atlas as well as the overall cost-savings from consolidating functionality onto a single platform. In short, customers view MongoDB as a true partner, a partner that not only accelerate the pace of innovation, but also drives them to become more efficient. We are deepening investments in our product, partnerships, and customer-facing teams to continue to enable customers to do both. 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 applications on Atlas, leveraging the full power of our developer data platform. These customers include AT&T, Fishbowl by Glassdoor, and Trend Micro. AT&T selected Atlas as a key element of their modernization journey. The location match and application validates 380 million unique customer addresses and handles about 14 million transactions per day. But the various disparate data management solutions led to technical depth and there were duplicative sources of information. The company turned to Atlas as a developer data platform to simplify their data infrastructure, merged their data into a single view, and freed their teams from managing database operations. Now they rely on Atlas change streams to easily track changes with data as well as Atlas's native search capabilities and built-in geospatial functions to quickly identify location information and accelerate time-to-market for mission-critical products and services. EY, Delivery Hero, and ASAP Log are examples of customers turning to MongoDB to free up their developer's time for innovation, while achieving significant cost-savings. One of the 2023 MongoDB Innovation Award winners is EY. Ernst & Young LLP manages high volumes of transactional data and its clients and internal teams work under strict timelines to file taxes and meet regulatory deadlines. The cloud-based global VAT reporting tool or GVRT automates and digitizes the preparation of 242 different types of returns across 79 countries. EY migrated from their previous non-relational database solution to Atlas and experienced a significant performance boost, reduced cost by as much as 50% and are able to scale without limitations to handle increased data volumes, transactional loads, and concurrent user requests during peak periods. Evernorth Health Services, a division of the Cigna Group Manulife and [indiscernible] are turning to MongoDB to modernize applications. Manulife, one of the largest life insurance companies in the world, migrated to Atlas when it became clear that their relational database caused a drag on innovation and increased the time to bring new digital products to market. Manulife selected Atlas, because of the flexible document model speeds up development, scales easily, supports asset transactions, and offers seamless data migration. Using Atlas Device Sync, they successfully launched one critical app's offline mode to ensure uninterrupted app usage went offline or in low connectivity areas to improve mobile data synchronization. Using Atlas allows Manulife to broaden its digital capabilities and enhance the [indiscernible] of customer interactions cost-effectively. In summary, I'm pleased with our third-quarter results, our run-anywhere strategy allows customers flexibility over where they deploy and MongoDB is emerging as a platform of choice for their AI-powered applications and customers are using MongoDB to modernize and become more efficient. Before I turn it over to Michael I'm excited to share that Ann Lewnes, the former Chief Marketing Officer and Executive Vice-President of Corporate Strategy and Development at Adobe just joined MongoDB's Board of Directors, and her leadership roles at Adobe from 2006 to 2023, she was instrumental in driving Adobe's transition from a perpetual to subscription-based business model, and as experienced marketing to creative professionals, whether they are in a small agency, a medium-sized business, or very large enterprise. If you replace creative professionals with developers, this strategy is very similar to what MongoDB is doing and Ann did it at the next level of scale. Prior to Adobe, Ann held a variety of leadership positions at Intel during that 20-year tenure at the company, including Vice-President of Sales and Marketing. We're thrilled for the exceptional perspective Ann will bring to the Board. With that, here's Michael.