Susan Li
Analyst · Mark Shmulik with Bernstein
Thanks, Mark, and good afternoon, everyone. Let's begin with our segment results. All comparisons are on a year-over-year basis, unless otherwise noted. We estimate 3.56 billion people used at least one of our family of apps on a daily basis in March, which declined slightly from December due to Internet disruptions in Iran and a restriction on access to WhatsApp in Russia. Absent these impacts, growth in family daily active people would have been positive quarter-over-quarter. . Q1 total family of apps revenue was $55.9 billion, up 33% year-over-year. Q1 family of apps ad revenue was $55 billion, up 33% or 29% on a constant currency basis. In Q1, the total number of ad impressions served across our services increased 19%. Impression growth was healthy across all regions, driven primarily by growth in engagement and users as well as ad load optimizations. The global average price per ad increased 12% year-over-year in Q1, with broad-based growth as we benefited from ad performance improvements, better macro conditions versus Q1 of last year, and currency tailwinds in international regions. This was partially offset by strong impression growth, including from lower monetizing regions. Family of Apps Other revenue was $885 million, up 74% driven primarily by WhatsApp paid messaging and subscriptions revenue. Within our Realty lab segment, Q1 revenue was $402 million, down 2% year-over-year due to lower Quest headset sales, which were partially offset by continued strong growth in AI glasses revenue. Moving now to our consolidated results. Q1 total revenue was $56.3 billion, up 33% or 29% on a constant currency basis. Q1 total expenses were $33.4 billion, up 35% compared to last year. Year-over-year growth was driven mainly by infrastructure costs and employee compensation. The growth in infrastructure costs was due to higher depreciation, data center operating costs and third-party cloud spend. The growth in employee compensation was driven by technical hires we've added over the past year, particularly AI talent. We ended Q1 with over 77,900 employees, down 1% from Q4 as the impact of headcount optimization efforts in certain functions was partially offset by hiring in priority areas of monetization and infrastructure. First quarter operating income was $22.9 billion, representing a 41% operating margin. Q1 interest and other income was negative $1.1 billion, driven by unrealized losses on our equity investments. Our tax rate for the quarter was negative 23%, which was favorably impacted by a tax benefit of $8.03 billion. This benefit partially relieves the $15.93 billion noncash tax charge we recorded in the third quarter of 2025, which reflects updated guidance from the U.S. Treasury issued in February 2026 regarding the tax treatment of previously capitalized R&D expenditures in the United States. Absent the tax benefit, our Q1 tax rate would have been 14%. Net income was $26.8 billion or $10.44 per share. Absent the tax benefit, our net income and EPS would have been $18.7 billion and $7.31, respectively. Capital expenditures, including principal payments on finance leases were $19.8 billion, driven by investments in servers, data centers and network infrastructure. Free cash flow was $12.4 billion. We ended the quarter with $81.2 billion in cash and marketable securities and $58.7 billion in debt. Turning now to the business performance. There are two primary factors that drive our revenue performance, our ability to deliver engaging experiences for our community and our effectiveness at monetizing that engagement over time. On the first, we're continuing to see significant gains from our content recommendation initiatives. On Instagram, the ranking improvements that we made in Q1 drove a 10% lift in Reels time spent. On Facebook, total video time increased more than 8% globally in Q1, the largest quarter-over-quarter gain in 4 years. Within the U.S. and Canada, ranking improvements we made drove a 9% increase in video watch time on Facebook in Q1. These gains are benefiting from advances we're making across the full stack. Starting with data, we doubled the length of user interaction sequences we use for training on Instagram in Q1 and increase the richness of how each user interaction is described, enabling our systems to develop a deeper understanding of user interests. Within our models, we've significantly increased the speed with which our ranking models index new posts, which is enabling us to recommend them sooner after they are published. We're also applying more advanced content understanding techniques, which is enabling us to quickly identify posts that may be interesting to someone even if they haven't engaged with a lot of similar content. These and other improvements have enabled us to increase the diversity and recency of recommended content with same-day posts now representing more than 30% of recommended reels on both Instagram and Facebook more than double the levels 1 year ago. We're also using AI to unlock more inventory by auto translating and dubbing videos into a viewer's local language, enabling us to recommend a more diverse set of content. Over 0.5 billion users on each of Facebook and Instagram are now watching AI translated videos weekly. Looking forward, we're making several investments we expect will deliver more valuable recommendations. This year, we will continue scaling up our models in several dimensions, including their size and complexity, while incorporating LLM to deepen content understanding across our platform. This will enable us to better match people to a wider variety of content aligned to their interests. At the same time, we are executing on our longer-term efforts to develop the next generation of our recommendation systems. This includes building foundation models that power organic content and ads recommendations as well as developing LLM based recommender systems. Our focus this year is validating the model architectures and techniques in these domains before we scale them out in future years. Aside from our recommendations work, we are focused on deploying the models from Meta super intelligence labs to enable a new set of product experiences. We're seeing encouraging results within Meta AI since we began powering responses with the first model from MSL, Muhspark. In tests we ran leading up to the launch, we saw meaningful engagement gains that accelerated week-over-week with each new iteration of the model. We're seeing similar games within Meta AI following the broad rollout of our new model with double-digit percent increases in Meta AI sessions per user. Mu Spark is now powering Meta AI in direct chat threads across our family of apps as well as the stand-alone Meta AI app and website, giving billions of people globally access to our latest model. Overall, we're very encouraged by the momentum within our research and product road map and look forward to sharing more detail on what we're building over the course of the year. Turning to the second driver of our revenue performance, increasing monetization efficiency. The first part of this work is optimizing the level of ads within organic engagement. Here, we continue to enhance our systems to show ads at the optimal time and location. In Q1, we also expanded availability of ads on our newer services, including bringing ads on Threads to people in more markets. On WhatsApp, we're making good progress with the rollout of ads and status with hundreds of millions of people now viewing them daily. Moving to the second part of increasing monetization efficiency, improving performance for the businesses who use our services. To do so, we're deploying AI more deeply across each layer of our systems and tools. Within our ad systems, we're delivering performance gains as we deploy more complex and predictive models. In Q1, enhancements we made to Lattice's modeling and learning techniques, along with advances in our GEM model architecture, drove a more than 6% increase in conversion rate for landing page view ads. In addition, we've been investing in more performing inference models for 1 more serving ads. In the second half of last year, we began rolling out our new adaptive ranking model, which is an LLM scale adds recommender model that we use for inference. This model improves our inference ROI by routing requests to more compute-intensive inference models when it determines there is a higher probability of conversion. In Q1, we expanded coverage of our adaptive ranking model to support off-site conversions, which drove a 1.6% increase in conversion rates across the major surfaces on Facebook and Instagram. We're also leveraging AI to make it easier for businesses to manage their customers, develop ad creative and engage with customers. The Meta AI business assistant has now been fully rolled out to all eligible advertisers on supported Meta buying services, providing personalized recommendations to advertisers, resolving account issues, and servicing campaign insights to help optimize results. Performance has been strong since we began testing the assistant in Q4 with common account issues being resolved at a 20% higher rate. This week, we're also introducing Meta ads AI connectors in open beta, providing advertisers the ability to connect their Meta ad account directly to an AI agent We've always supported advertisers both on our platform and through tools like the marketing API. And now we're extending that to AI. So businesses and agencies can analyze and optimize campaigns with the tools they're already using. Usage of our ad creative tools is also scaling with more than 8 million advertisers using at least one of our Gen AI ad creative tools and particularly strong adoption among small- and medium-sized advertisers. These tools are benefiting performance as well with advertisers using our video generation feature seeing more than 3% higher conversion rates in tests. We're also seeing good traction in using AI to facilitate customer engagement. In Q1, we expanded business AIs on WhatsApp to SMBs across Latin America and Indonesia as well as on Messenger in Asia Pacific. We now have more than 10 million conversations each week being facilitated through business AIs, up from 1 million at the start of the year. We'll further expand access to more countries this quarter while adding more capabilities to the AIs. We also continue to invest in the value optimization suite, which helps advertisers maximize their return on ad spend by prioritizing the highest value conversions rather than optimizing solely for the most conversions at the lowest cost. Adoption by businesses has been strong following performance improvements we've made over the past year with the annual revenue run rate of our value optimization suite now over $20 billion, more than doubling year-over-year. Last, I want to touch on our commerce efforts. People discover products on our platforms through ads and organic posts with brands increasingly turning to creators to promote their products. This is contributing to rapid growth in our partnership's ads product with its revenue run rate more than doubling year-over-year in Q1 to $10 billion. To support the product discovery and purchasing happening through creators, we're expanding our solutions beyond ads. Last month, we rolled out our affiliate partnerships offering on Facebook to more test partners, so creators can tag products from participating retailers on their posts and earn a commission when someone makes a purchase. We have also started testing similar experiences on Instagram. We see a real opportunity to help people more easily discover and buy products within our services, particularly as we incorporate AI deeply across our platforms. Next, I would like to discuss our approach to capital allocation. Compute is becoming increasingly important as it determines the quality of services we can provide including powering more capable models and delivering innovative new products. It is also becoming more critical to how we work at a -- as we are entering a world where employees are managing agents to help them generate new ideas, run experiments, execute tasks and build products. We are investing aggressively to meet our infrastructure needs, and ensure we maximize our strategic flexibility over the coming years. This includes substantially expanding our own data center footprint and striking deals throughout the supply chain to secure necessary components for future capacity. We're also signing cloud deals that will come online over the course of this year and 2027, allowing us to scale more quickly. These multiyear cloud deals and our infrastructure purchase agreements drove a $107 billion step-up in our contractual commitments this quarter. Our investments will support our training needs for future models and most importantly, provide us the inference capacity necessary to deliver personal and business agents to billions of people around the world, along with several other AI product experiences we're developing. As we grow our infrastructure spend, we remain committed to operating efficiently, and we recently shared internally that we plan to reduce the size of our employee base in May. We believe a leaner operating model will allow us to move more quickly while also helping to offset the substantial investments we're making. Moving to our financial outlook. We expect second quarter 2026 total revenue to be in the range of $58 billion to $61 billion. Our guidance assumes foreign currency is an approximately 2% tailwind to year-over-year total revenue growth based on current exchange rates. Turning to the expense and CapEx outlooks. We expect full year 2026 total expenses to be in the range of $162 billion to $169 billion, unchanged from our prior outlook. We continue to expect to deliver operating income this year that is above 2025 operating income. We anticipate 2026 capital expenditures including principal payments on finance leases to be in the range of $125 billion to $145 billion, increased from our prior range of $115 billion to $135 billion. This reflects our expectations for higher component pricing this year and to a lesser extent, additional data center costs to support future year capacity. Absent any changes to our tax landscape, we expect our tax rate for the remaining quarters of 2026 to be between 13% and 16%. Finally, we continue to monitor active legal and regulatory matters, including headwinds in the EU and the U.S. that could significantly impact our business and financial results. For example, we continue to see scrutiny on youth-related issues and have additional trials scheduled for this year in the U.S., which may ultimately result in a material loss. In closing, Q1 was a solid start to the year with strong execution across our core ads and engagement initiatives. We're also making exciting progress on our AI research and product efforts and expect to build that momentum over the course of this year. With that, Crystal, let's open up the call for questions.