Thanks, Shane. Welcome, everyone, to our first quarter earnings call. We had a successful start to the year exceeding our guidance on all metrics. Total revenue grew 64% year-over-year to $126 million, a notable milestone as we surpassed the $0.5 billion revenue run rate mark. Confluent Cloud grew 180% year-over-year, representing 31% of total revenue. Confluent Cloud is not only the fastest growing part of our business, it also serves the vast majority of our customers. And in the first quarter, we closed the largest deal with Confluent Cloud in our company's history. This eight-figure multi-year expansion deal with a massively high scale tech company is significant on a number of fronts, which I'll touch on further in a few minutes. Today, I'd like to use the time to dive a little deeper into the use cases driving Confluent's success and the rise of data in motion. The underlying trend behind this shift is that we are experiencing a phase change in how companies use software. Software is moving from siloed applications on the edge of the business to fully connected applications that drive core parts of the customer interaction and the production of goods and services. This transition is imperative for companies to compete in the modern economy. At the heart of all this software is data and we're seeing an equally large shift in the underlying data architecture to enable this software driven business. Historically, data infrastructure has been built around data storage, and there's a rich set of file systems, databases and data stores that allow applications to store and retrieve bits of data. However, increasingly, this storage-centric paradigm is not sufficient. As companies drive more of their core business with software, that software has to have an upstate view of the business and be able to react and respond intelligently as the business carries out its core activities. This has driven a shift from a storage centric world of data at rest and has enabled the rise of data in motion. Broadly speaking, data in motion is about connecting disparate systems by extracting data as continuous streams and allowing these streams to flow to the rest of the applications and infrastructure that need that data as well as allowing companies to react and respond to that stream of data in real time. Data in motion is now adopted incredibly broadly with a presence in hundreds of thousands of companies in virtually every industry. Giving a complete overview of all use cases is an impossible undertaking. However, in today's call, I'd like to give an overview of some of the patterns we see illustrated with some examples. To engage with customers in the most meaningful and personalized way to foster brand loyalty, companies need to have a data rich, 360 degree view of all aspects of their customers across all interactions. Confluent not only captures changes to the data as it happens, but stitches together data from disconnected databases, files and custom applications to deliver a real-time view of all customer interactions, enable real-time engagement across all channels and reshape experiences. Once this continuous view of the customer is present, stream processing enables the real-time reaction to customer events to drive personalization, so that the right suggestion, experience or recommendation can be delivered to each customer at the right time. And that's what Deutsche Bahn does for their passengers. They have a single source of truth for all the vital travel and train information and make it available on the mobile app, website, even station displays and public announcement systems. Real-time data is what improves the customer experience and gets happy passengers where they want to be on time. Another common pattern our customers embrace Confluent for is data mobilization across hybrid and multi-cloud architectures. Most enterprises on a cloud journey are finding it harder than expected to realize its benefits as the transition to the cloud is often an incremental multi-year effort that's arduous and expensive. So, whether it's modernizing their legacy on-premise data warehouse to fully manage cloud native systems like snowflake, BigQuery, Redshift, Synapse and Databricks or modernizing their monolithic applications to the cloud one microservice at a time, many of our customers use Confluent as the unifying, persistent bridge, enabling data to flow freely between the old legacy stack and new cloud applications wherever it resides on premise and in more than one cloud. This pattern of running Confluent to span environments is increasingly common and Confluent is becoming a critical data fabric for enabling integration across multi-cloud and hybrid cloud environments. That was certainly the case for SecurityScorecard. They're the global leader in cybersecurity ratings, and the first in their industry to offer digital forensics and incident response services. Operating in 64 countries, they continuously rate more than 12 million companies. Their business requires a hybrid cloud architecture, so they turned to Confluent and now data streaming helps them communicate incident ratings and constantly scans for threats to improve their customer security posture. We're proud to work with them on their mission to make the world a safer place. In financial services, data in motion has become a mainstay of modern architectures from small fintechs to the largest banks in the world. In capital markets, for instance, we're driving better business outcomes by enabling enterprises to gain a firm-wide view of their trades and risk. Retail bankers use Confluent for secure real-time payments, so their customers can transact with their banks with speed, confidence and trust. Fraud has become a growing problem in payments and is harder to detect than before. And many customers in the payments industry are using us for real-time fraud detection. Adoption of data in motion in financial services is incredibly broad. The top 10 largest banks in the US are all Confluent customers, and we're seeing ongoing demand across the world. For instance, at Bank Rakyat Indonesia, BRI, the largest bank in Indonesia and the largest microfinance institution in the world, Confluent powered their digital transformation with an event-driven architecture for real-time credit scoring, fraud detection and merchant assessment services. Now they're able to detect ATM skimming in real time, block and disable the cards of their customers and proactively protect their customers from fraudulent transactions. They've also been able to reduce loan disbursement times from two weeks to two minutes with automated digital verification by processing massive amounts of information in real time, all flowing through Confluent. In retail, Confluent serves as a massive advantage for retailers looking to meet the demands of heightened expectations from customers for real-time omnichannel personalized experiences. Many retail organizations use Confluent to fundamentally transform inventory and supply chain and for hyper personalization to enable real-time customer interactions that build brand loyalty. In the US, 9 of the 10 largest retailers are Confluent customers. Confluent helps Sainsbury's reimagine their supply chain and inventory management by enabling a continuous view of product inventory. By using Confluent, they can drive lower inventory levels while avoiding selling out and enable agile response to changes in supply and demand. Confluent also acts as interconnectivity between different cloud providers like AWS and Azure, adding a secure, fault tolerant, real time data pipeline that spans these environments. This means they're protected if any cloud service experiences downtime, which greatly improves the strength and flexibility of their supply chain. One very compelling area of opportunity Confluent is growing into is the tech sector. Tech companies were the earliest adopters of open source Apache Kafka, but were not typical customers for earlier open source companies. The emergence of cloud as a delivery model has changed that. Our cloud services reach scale, cost efficiency, elasticity and reliability that no internal self-managed data system can hope to achieve. As we've done this, we've seen some of the earliest Kafka adopters start to shift to our service, including companies like Square that had been mentioned on a previous earnings call. This customer segment is significant because it has built around data in motion in a very foundational way and has amassed mask huge scale. As I mentioned at the beginning of this call, this quarter, we added a very significant new customer in this segment that runs one of the largest Kafka installations in the world. New Relic is the leading observability platform that helps engineers plan, build, deploy and run great software. New Relic is fundamentally a service for providing powerful insights into streams of observability data. Indeed, Kafka is the backbone of all observability and log data ingested into their platform. New Relic is the kind of company that's always thinking about their customers and always innovating. Our expertise, having re architected Kafka for the cloud and the proven scalability and reliability of our fully managed multi-cloud platform, are foundational to this new partnership. Customers can benefit from the joint product innovations we have planned with New Relic, allowing for more insights from their Confluent Cloud telemetry data. We're very excited for the future and how we'll innovate and create even more value going forward. The success with all these customers is driven by the deep differentiation of our product. Confluent builds this differentiation around three key pillars – being cloud native, being a complete offering, and being everywhere. We've discussed these pillars quite a bit on past calls, but we continuously add to them to deepen our competitive moat and better demonstrate value to internal IT teams who might otherwise be building around open source Kafka. First, being cloud native. We announced various new capabilities that make our platform more scalable, more elastic and more reliable. These include greater scalability and unlimited data retention in Azure. Now across all three clouds, customers can scale up to enormous data throughput and store data in Confluent Cloud forever without any limits on size or retention. Finally, we improved our observability and security capabilities allowing richer insight into the use of Confluent and more detailed audit tracking of actions taken with our product. These capabilities come together with our operational practices to allow us to deliver industry-leading reliability around data streaming. In recognition of this, we've strengthened our contractual SLA to 99.99% as Confluent Cloud offers unmatched reliability for real-time streaming. Our second pillar of being a complete offering continues to be an area of ongoing innovation for us. We expanded role-based access control to help enable secure usage across large companies and teams while still ensuring tight control on data access. We added six new fully managed connectors to Confluent Cloud and our Oracle Change Data Capture Premium Connector went GA. This allows us to set in motion the vast amount of data at rest locked up in Oracle databases, a mainstay technology in our enterprise customer base. Our third pillar of product differentiation, being able to run everywhere, manifests in our ability to run across all our customers' environments, whether on-premise, hybrid, or multi cloud. In this area, we simplify the user experience for cluster linking, our proprietary technology that allows transparent linking of clusters across cloud providers and on-premise clusters. We also had a major release of Confluent platform which supports on-premise and private cloud environments. This new release brings hundreds of new features and improvements that were first launched in our cloud to our customers' on-premise environments, enabling richer hybrid cloud deployments. A key part of our strategy to be everywhere is our relationship and integration with the three major cloud service providers. These relationships are critical for us, but also mutually beneficial for the cloud providers because Confluent enables data flow from on-premise environments into the cloud, unlocking use cases that would otherwise be tied to legacy environments by data gravity. In our last earnings call, we announced a significant deepening of the partnership with AWS. This quarter, we followed that up with the announcement of a new multi-year strategic partnership with Microsoft, which extends our existing relationship with joint technical, marketing and sales investments across our organizations. This deeper partnership helps us tighten the integration with Azure as well as better serve joint customers. We also had two notable announcements around our partnership with Google Cloud. The first was the founding of the Data Cloud Alliance, a new initiative that aims to make data more portable and accessible across disparate business systems, platforms and environments, with a goal of ensuring that access to data is never a barrier to digital transformation. Additionally, we have been recognized in the Google Cloud ready BigQuery validation program, which ensures the best possible integration with BigQuery using our fully managed connector. As part of this program, Confluent will collaborate closely with Google Partner engineering and BigQuery teams to develop joint roadmaps and continue improving our products. By driving deeper alignment, we are making it easier for our customers to connect and migrate hybrid and multi cloud data to BigQuery to power real-time analytics. To wrap up on the point of product differentiation, the value of Confluent versus open source Kafka can be summarized from the findings of Forrester's Total Economic Impact study, which they recently conducted for Confluent. The study specifically quantified the cost savings and benefits that businesses can achieve when they offload the burden of self-managed Kafka to Confluent. Overall, Forrester identified TCO savings of more than $2.5 million to businesses that used Confluent, which translates to an ROI of 257%, with a payback period of less than six months. The two key areas of savings included development and operations cost savings of over $1.4 million, plus scalability and infrastructure cost savings of over $1.1 million. And perhaps most importantly, Confluent enables organizations to free their teams to focus on strategic efforts that drive competitive differentiation versus managing the underlying data infrastructure. We think this is a key point of understanding that's emerging. Confluent is not just better and faster than self-managed open source, but can also be cheaper as well because of the high expense of cloud infrastructure and developers. We have vast economies of scale by offering these services to thousands of customers. We think these cost savings are a critical aspect of our value proposition and have made us successful in both companies focused on innovation as well as those focused on cost savings and efficiency. A great example of this ROI is Swiggy. India's leading on-demand food ordering and delivery platform that serves millions of customers every day. To connect those customers with hundreds of thousands of restaurant partners and all of their drivers requires real-time data. Originally, they managed their own Kafka clusters. But the time and energy spent on that deviated from delivering key business goals. Swiggy needed a fully managed solution to refocus their engineers' time, reduce costs and handle significant spikes in demand. Speed of delivery is a competitive advantage for Swiggy and Confluent is at the heart of their data in motion architecture. Another key competitive advantage for Confluent is our customer growth go-to-market model. We discussed this in detail on our last call, but I wanted to provide a brief recap of our strategy and some updates that we've made since last quarter. Our go-to-market effort is product-led, consumption oriented and purpose-built for data in motion, aimed at driving customer lands and growing usage of our product from early experiments to large scale central nervous systems. We continue to innovate at each stage in this journey. In the first quarter, we made it even easier for developers to get started with Confluent by allowing signups with the existing Google and GitHub account credentials, as well as removing our credit card paywall, allowing developers to test drive our product without the hassle of adding payment information. We also expanded our developer learning center, developer.confluent.io. We launched expanded training materials for Kafka and Confluent, including material written and presented by one of my co-founders and Kafka's original co-creators, Jun Rao. In addition, we've started a library of code samples and step-by-step tutorials to help customers apply Confluent in common use cases, such as the ones described in the call today. This effort helps us to train the next generation of Kafka users on Confluent Cloud. It helps us more quickly progress our customers to additional use cases and applications. The success of this strategy was reflected in a significant increase in signups and another record quarter of customer additions, growing our total customer count 62% year-over-year to approximately 4,120. This has continued to be a driver of the strong growth in our customer base with 100K or more in ARR, which grew 41% year-over-year to 791 customers. Finally, the spread of use cases, the powerful network effect and the customers' desire to build out their central nervous system with Confluent is reflected in the growth of our largest customer base. Growth of customers with $1 million or more in ARR accelerated to 62% year-over-year, ending the quarter with 97 customers. We are still in the very early innings of this opportunity and look forward to what's ahead. We also recently hosted our first in-person Kafka summit since 2019. More than 1,200 members of the community gathered in London and many more tuned into the live stream. And I've got to tell you, it was great to be back together again. The prevalence of Kafka is also evident in the huge growth of the community. We've seen hundreds of thousands of organizations adopt Kafka, tens of thousands attended meetups throughout the pandemic and a rich community working to document, improve and contribute to Kafka. We also announced our new data streaming industry event, Current 2022, the next generation of Kafka summit, where we will bring the preeminent thought leaders and experts in data streaming together in Austin this October. We invite you to join Current 2022 to learn more about data streaming and our leadership in this space. It's hard to measure open source adoption, but I'd like to share one illustrative statistic today that shows the strength of the growing movement around Kafka and data in motion. Many stats such as downloads aren't available for Apache projects and stats like GitHub stars aren't very representative of actual production usage. One data source we do look at is the active unique IPs using the Kafka Java library, which is available from the company Sonatype that distributes those libraries. This is a comparatively rigorous measure. Because of the deduplication by IP address, full companies may appear only once. Duplicate and automatic downloads are suppressed, and users who do not remain active fall out of the measure. On a trailing 12-month basis, Kafka downloads grew over 50% year-over-year. People often ask about the competitive landscape. And the reality is that we don't feel Kafka has a close competitor in terms of scope of usage, breadth of ecosystem or developer mindshare. As an illustration of this, it's worth considering the adoption rates of one of the most commonly mentioned competitive systems, Apache Pulsar. Apache Kafka sustained a significantly higher growth rate on a percentage basis than Pulsar despite the fact that Kafka's growth rate is off a user base that is over 10x larger. This sustained superior growth at scale is what has made Kafka the de facto standard for data in motion and is a tribute to the strength of the Kafka community, the massive ecosystem of integrations, the network effect inherent in data streaming, as well as the simplicity and superior performance that Kafka offers. Before turning to Steffan, I want to highlight a key leadership hire in the first quarter – Gunjan Aggarwal, our Chief People Officer. Gunjan joined us from RingCentral and is a 20 year industry veteran whose team's efforts have been widely recognized with an A plus culture rating and a host of awards for diversity, happiness and leadership. I look forward to working with Gunjan as we continue to scale our team and culture. We intend to continue to attract top industry talent in every function and create an organization that gets even better as it gets bigger. With that, I will turn the call over to Steffan to walk through the financials.