Thanks Yuka, and thank you all for joining us this morning. We had a very productive second quarter. First, we welcomed thousands of Datadog users to our DASH conference in June, where we announced a broad range of exciting new products and new features for customers to observe, secure and act in their cloud environment, and we continued to add new customers and help existing ones as they grow in the cloud. Let me start with a review of our Q2 financial performance. Revenue was $645 million, an increase of 27% year-over-year and above the high end of our guidance range. We ended the quarter with about 28,700 customers, up from about 26,100 a year ago. We had about 3,390 customers with an ARR of $100,000 or more, up from about 2,990 last year, and these customers generated about 87% of our ARR, and we generated free cash flow of $144 million with a free cash flow margin of 22%. Turning to platform adoption, our platform strategy continues to resonate in the market. As of the end of Q2, 83% of customers were using two or more products, up from 82% a year ago. Forty-nine percent of customers were using four or more products, up from 45% a year ago. Twenty-five percent of our customers were using six or more products, up from 21% a year ago, and 11% of our customers were using eight or more products, up from 7% a year ago. We continue to expand the capabilities of all of our products over time, enabling our customers to solve more of their critical challenges. These include our efforts in digital experience monitoring, an area of observability which includes synthetics and real user monitoring, or ROM, and both synthetics and ROM are seeing growing adoption and each product today represents more than $100 million in ARR, becoming our fourth and fifth products to achieve that milestone. We have also been innovating rapidly in this area with recent capabilities including mobile app testing, feature flag testing, user journey visualization, and retention analysis, and with our recent announcement of [indiscernible] at DASH, we are excited to go further and allow our customers to consolidate of their usage and business insights into Datadog. Now let’s discuss this quarter’s business drivers. Overall, the business environment for Datadog was roughly unchanged from last quarter. More customers overall are growing their cloud usage, while some are continuing to be cost conscious. In Q2, we saw existing customer usage growth that was broadly in line with our expectations and consistent with the overall improved trend that we had experienced over the past several quarters. Our usage growth with existing customers was higher than in the year ago quarter, and we saw continued healthy growth across our product line with newer products growing faster from a smaller base. Finally, churn continues to be low and gross revenue retention was stable in the mid to high 90s, highlighting the mission critical nature of our platform for our customers. Moving onto R&D, we held our DASH user conference in late June and were excited to announce many new products and features for our users. There’s too much for us to cover in detail, but let me review just some of the announcements we made in the past three months. In the next-gen AI space, we announced the general availability of LLM Observability, which allows application developers and machine learning engineers to efficiently monitor, troubleshoot and secure LLM applications. With LLM Observability, companies can accelerate the development of AI applications into production environments and reliably operate and scale them. We also expanded Bits AI with new capabilities. As a reminder, Bits AI is a Datadog built-in AI copilot. In addition to being able to summarize incidents and answer questions, we previewed at DASH the ability for Bits AI to operate as an agent and perform autonomous investigations. With this capability, Bits AI proactively surfaces key information and performs complex tasks such as investigating alerts and coordinating incident response. Taking a step back and looking at our customer base, we continue to see a lot of excitement around AI technology. More customers are telling us that they are levering up on AI and ramping up experimentation with the goal of delivering additional business value with AI, and we can see them doing this. Today about 2,500 customers use one or more of our AI integrations to get visibility into their increasing use of AI. We also continue to grow our business with AI-native customers, which increased to over 4% of our ARR in June. We see this as a sign of the continuing expansion of this ecosystem and of the value of using Datadog to monitor the production environment. I will note that over time, we think these metrics will become less relevant as AI usage and production broadens beyond this group of customers. Last but not least, we announced Toto, our first foundation model for time series forecasting, which delivers state-of-the-art performance on all relevant benchmarks. In addition to the technical innovations devised by our resource team, Toto derives its record performance from the quality of our training datasets and points to our unique ability to train, build and incorporate AI models into a platform that will meaningfully improve operations for our customers. Moving on from AI, we had a lot more to show in Observability. We announced the general availability of Flex Logs, which expands our Logging without Limits approach and allows our customers to scale storage and compute separately for cost efficiency. Our customers can today use our new Log Workspace for log analysis. Log Workspace is an advanced analytic feature that allows users to connect datasets, build and visualize complex queries, and create readable, [indiscernible] views and reports. It is particularly relevant to customers who previously built sophisticated analysis and workflows in legacy log management tools. We announced the general availability of Data Jobs Monitoring, which allows data engineers to detect and fix issues with their Spark and Databricks workloads and to optimize the cost and performance of their data jobs. Moving and transforming large amounts of data has grown importance and become a mission critical capability for many businesses, a trend that we believe will continue with the adoption of AI. With this, our data observability set of products is expanding. Data jobs monitoring works alongside our data streams monitoring product, which helps customers understand their queueing pipeline in moving components such as Kafka or RabbitMQ, and we’re increasingly providing visibility for data lakes and data warehouses such as Snowflake to deliver end-to-end data observability across customer data resources. Moving on from data observability, we introduced Kubernetes Autoscaling to all our customers to optimize forecast and performance while automatically right-sizing Kubernetes resources. For our customers using OpenTelemetry, the Datadog agent will embed a fully configurable OpenTelemetry collector, giving [indiscernible] customers access to Datadog products such as container, network and universal service monitoring, and offering our customers what we believe will be the best fully managed OpenTelemetry experience in the market. In shifting left, our new live debugger enables developers to step through code directly in production environments and find the exact root cause of production errors. As I mentioned earlier, we are building up on our success in digital experience monitoring and [indiscernible] providing in-depth product and user insights for product managers and business owners. In the cloud security space, we launched a new application security capability called Code Security, which allows our customers to detect and prioritize code-level vulnerability in their products and applications. We also announced Data Security, which allows our customers to automatically pinpoint sensitive data, starting in [indiscernible] today and expanding to other environments in the future. For instances where customers can’t or don’t want to deploy agents, our new agent-less scanning capability provides visibility into risks and vulnerabilities within hosts’ containers and [indiscernible] functions without requiring agents to be installed. Finally in the cloud service management space, we’re going further to allow our customers to take actions directly within Datadog’s platform. We announced the general availability of App Builder, which lets teams rapidly create self-service local applications and integrate them securely into their monitoring stacks, and we introduced Datadog On Call, a modern on-call experience with paging and internet management workflows fully integrated with observability. Let’s move on now to sales and marketing. We again saw strong execution from our go-to-market teams this quarter and we added some exciting new customers while expanding with many more, so let’s go through a few examples. First, we landed our largest ever new logo win, a multi-year deal with total contract value in the tens of millions of dollars, with one of the largest banks in South America. This customer was using a commercial observability product as well as open source tools but didn’t have full stack visibility. With Datadog, they will enable end-to-end observability and they expect to transition to modern infrastructure with confidence. They also anticipate better management and predictability of their observability costs thanks to products such as Flex Log. Next, we signed a seven-figure annualized land deal with one of the world’s largest travel management companies. This company was using a commercial log management tool but found it expensive and complex to support. They also worried about stability as the tool would crash and cause fire drills across the organization. By moving to Datadog and replacing this tool, they expect to drive significant savings with log management and will benefit from a unified platform across infrastructure monitoring and APM. Next, we landed a seven-figure annualized land with a security software company. This customer felt they were overspending on their commercial logging tool and lack of visibility led to issues catching incidents, with users notifying them first of outages. This customer is now adopting the Datadog unified platform across all three pillars and displacing one commercial and two open source tools in the process. This customer also expects net savings of half a million dollars every year by switching to Datadog. Next, we signed a seven-figure annual expansion with a leading central bank in Europe. This institution became a Datadog customer three years ago to enable its ambitious plan to move half of its applications to the cloud over a couple of years, and they have been increasing their usage of Datadog as they moved into the cloud, displacing two commercial observability tools which they used in their on-premise environment. They have now adopted a total of 17 Datadog products. Next, we signed a seven-figure annualized expansion with a large American insurance company. This company had been using Datadog for full stack observability at one business unit. With this expansion, they have chosen Datadog as their enterprise-wide observability provider. In comparing us to the performance of other tools, this customer measured strong [indiscernible] adoption and fewer incidents with Datadog, and in displacing its legacy ATM and log management, they expect to save over $1 million annually on tool costs alone. Finally, we signed a high seven-figure annualized expansion with a leading online gambling and entertainment platform. This long-time customer uses Datadog as its strategic observability partner, enabling full visibility across infrastructure applications, logs, network, and their public [indiscernible] with users spanning from hands on keyboard engineers all the way to their [indiscernible]. This renewal supports this customer’s expansion into new use cases through our security embedded into their operations by using all of our cloud security products, to build a culture of cost accountability with cloud cost management, and to take action using incident management and workflow automation. This customer to date has adopted 19 products in the Datadog platform. That’s it for another productive quarter for our go-to-market teams. Now let me say a few words on our longer term outlook. Overall, we continue to see no change to the multi-year trend towards digital transformation and cloud migration. We are seeing continued experimentation with new technologies, including next-gen AI, and we believe this is just one of the many factors that will drive greater use of the cloud and next-gen infrastructure. As indicated by our many announcements at our DASH user conference, we are delivering rapid innovation at scale and we are helping our customers every day to deploy and scale the modern environment with confidence across observability, digital experience, cloud security, cloud service management, software delivery, and product analytics. Finally, I’d like to welcome two new leaders to our team. Yanbing Li is joining us as our Chief Product Officer. Yanbing has more than 25 years of product, technology and engineering experience spanning enterprise software, cloud infrastructure and AI at companies such as VMware, Google and Aurora. She will lead our product team’s efforts to expand the Datadog platform. David Galloreese is joining us as our Chief People Officer. David has more than 20 years of HR experience at tech companies and large scale high visibility enterprises such as Figma, Wells Fargo, and Wal-Mart. He will help us drive the next chapter of growth and scale at Datadog. With that, I will turn it over to our CFO. David?