Thanks, Jimmy. Welcome and good afternoon. Q3 product revenue grew 34% year-over-year to reach $698 million. Non-GAAP adjusted free cash flow was $111 million, representing 7% year-over-year growth. Results reflect strong execution in a broadly stabilizing macro environment. while Snowflake's global revenue mix is highly diverse in terms of industries and geographies, the company derives an ever larger revenue share from mainstream enterprises and institutions. This, as compared to a newer crowd of digital natives, have made up many of Snowflake's early adopters. We added 35 $1 million plus customers during the quarter, 9 of our top 10 customers grew sequentially. Generative AI is at the forefront of customer conversations, which in turn drives renewed emphasis on data strategy in preparation of these new technologies. We said it many times, there's no AI strategy without a data strategy. The intelligence we're all aiming for results in the data, hence the quality of that underpinning is critical. Meanwhile, Snowflake has announced and showcased the plethora of new technologies that let customers mobilize AI. We've introduced Snowflake Cortex to leverage AI and machine learning on Snowflake. Cortex is a managed service for inferencing large language models. This opens up direct access to models and specialized operations by translation, sentiment and vector functions. Business analysts and data engineers can now use AI functionality without the fractured highly technical challenges of the AI landscape. Last summer, we introduced Snowpark Container Services, which also serves as the second pillar of our AI enablement strategy. Developers can access any language, any library and flexible hardware inside the governance boundary of Snowflake. More than 70 customers are already using container services in preview with many more waiting in line. Snowflake makes the common AI use case is easy and the advanced use case is possible. We are well positioned for AI based on the scale and scope of our data cloud programmability and governance framework. There are hurdles challenging enterprise adoption of AI and ML. The first is broad access to quality data. Snowflake addresses this challenge through its data sharing architecture. 28% of all our customer share data, up from 22% a year ago and 73% of our $1 million-plus customers are data sharing up from 67% a year ago. AI models can only be as smart as data they are trained on. Security and governance present another challenge for enterprise adoption of AI and the now Snowflake Horizon offers a unified security and governance solution built for AI. Horizon strictly and consistently enforces user privileges on data across use cases, including large language model applications, traditional ML models and ad hoc queries. As part of Horizon, we introduced universal search, which enables customers to search the data cloud. Customers can now discover data and metadata that exists across their accounts and in the Snowflake marketplace. Snowflake continues to win new workloads outside of its traditional. Snowpark's consumption grew 47% quarter-over-quarter. Consumption in October was up over 500% since last year. Over 30% of customers use Snowflake to process unstructured data in October. Consumption of unstructured data was up 17 times year-over-year. Our newest streaming capability, Dynamic Tables entered public preview earlier this year. Approximately 1,500 customers are using the feature and initial adoption is outpacing expectations. We have a number of major new capabilities becoming broadly available in Q4. Our native apps framework will go GA, UniStore for transaction processing, Snowpark Container Services and Apache Iceberg Tables will all enter public preview. These products unlock substantial new workload expansion opportunities. We are campaigning globally to expand our audience. This fall, our Data Cloud World Tour traveled to 26 cities worldwide. In-person attendance at these events reached 23,000 nearly double from last year. Next up is our Build Developer Conference in early December, where we anticipate 35,000 registrations. Build is focused on building apps, data pipelines and AI/ML workflows. We hope to see you there. With that, I will turn the call over to Mike.