Arista Networks Inc
NYSE:ANET
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Earnings Call Analysis
Q1-2024 Analysis
Arista Networks Inc
Arista Networks reported a robust financial performance for Q1 2024, exceeding market expectations. Revenues for the quarter reached $1.571 billion, marking a 16.3% year-over-year increase and surpassing the guidance range of $1.52 billion to $1.56 billion. This growth was led by the enterprise vertical, with noteworthy contributions from the cloud sector as well. The gross margin was 64.2%, which is higher than the guided 62%, showing a substantial improvement from 60.3% in Q1 FY '23. This margin accretion was attributed to supply chain productivity gains, a favorable revenue mix, and a stronger portfolio of enterprise business【4:1†source】【4:2†source】.
Arista’s net income for the first quarter stood at $637.7 million, equating to 40.6% of revenue, with a diluted earnings per share (EPS) of $1.99, an impressive 39% year-over-year rise. The company’s operating income was $744 million, representing 47.4% of revenues. They also showed strong cash performance, generating $513.8 million from operations and closing the quarter with approximately $5.45 billion in cash, cash equivalents, and investments. Importantly, Arista completed a $1 billion share repurchase program and announced a new $1.2 billion stock repurchase program starting in May 2024, expected to run until May 2027【4:0†source】【4:1†source】.
Arista is making significant strides in AI and cloud networking. The company is transitioning to pilot stages for four significant AI Ethernet clusters, anticipated to scale to 10,000-100,000 GPUs by 2025. This progression underscores Ethernet’s growing dominance as the network of choice for AI workloads. The AI strategy is projected to generate about $750 million by 2025, marking this as a pivotal development area. The company's AI Ethernet networks are reported to outperform InfiniBand by 10% in job completion times, positioning Arista as a key player in the AI networking domain【4:2†source】【4:8†source】.
Arista has revised its revenue growth guidance for FY 2024 to 12-14%, up from the earlier 10-12% estimate. For Q2 2024, the company anticipates revenues between $1.62 billion to $1.65 billion, with a gross margin of about 64% and an operating margin of about 44%. The effective tax rate is expected to be approximately 21.5%. This optimistic outlook is fueled by heightened activity in cloud, enterprise, and provider segments. The company plans to continue investing in R&D and targeted hires to bolster its market position【4:1†source】【4:4†source】【4:6†source】.
Arista demonstrated operational efficiency improvements, with Accounts Receivable (AR) days sales outstanding (DSO) increasing slightly to 62 days from 61 days in Q4, driven by end-of-quarter service renewals. The company's total deferred revenue balance grew to $1.663 billion from $1.506 billion in Q4 FY 2023, primarily due to service-related deferred revenues. Inventory levels rose to $2 billion, reflecting strategic component receipt and switch-related finished goods, a sign of strong product demand and forward-looking supply chain management【4:0†source】【4:6†source】.
Arista’s leadership, including new CFO Chantelle Breithaupt, highlighted the company’s commitment to innovation and customer success as foundational elements. CEO Jayshree Ullal praised the seasoned management team's execution, emphasizing the alignment of the company's strategic initiatives with market opportunities in AI, cloud, and enterprise networking. Ullal indicated that the company’s AI and cloud projects visibility is improving, supporting a confident outlook for sustained growth【4:0†source】【4:2†source】【4:6†source】.
Welcome to the First Quarter 2024 Arista Networks Financial Results Earnings Conference Call. [Operator Instructions] And as a reminder, this conference is being recorded and will be available for replay from the Investor Relations section at the Arista website following this call. Ms. Liz Stine, Arista's Director of Investor Relations, you may begin.
Thank you, operator. Good afternoon, everyone, and thank you for joining us. With me on today's call are Jayshree Ullal, Arista Networks' Chairperson and Chief Executive Officer; and Chantelle Breithaupt, Arista's Chief Financial Officer.
This afternoon, Arista Networks issued a press release announcing the results for its fiscal first quarter ending March 31, 2024. If you would like a copy of this release, you can access it online at our website. During the course of this conference call, Arista Networks management will make forward-looking statements, including those relating to our financial outlook for the second quarter of the 2024 fiscal year, longer-term financial outlooks for 2024 and beyond. Our total addressable market and strategy for addressing these market opportunities, including AI, customer demand trends, supply chain constraints, component costs, manufacturing output, inventory management and inflationary pressures on our business, lead times, product innovation, working capital optimization and the benefits of acquisitions, which are subject to the risks and uncertainties that we discuss in detail in our documents filed with the SEC, specifically in our most recent Form 10-Q and Form 10-K and which could cause actual results to differ materially from those anticipated by these statements.
These forward-looking statements apply as of today, and you should not rely on them as representing our views in the future. We undertake no obligation to update these statements after this call. Also, please note that certain financial measures we use on this call are expressed on a non-GAAP basis and have been adjusted to exclude certain charges. We have provided reconciliations of these non-GAAP financial measures to GAAP financial measures in our earnings press release.
With that, I will turn the call over to Jayshree.
Thank you, Liz. Thank you, everyone, for joining us this afternoon for our First Quarter 2024 Earnings Call. Amidst all the network consolidation, Arista is looking to establish ourselves as the pure-play networking innovator, for the next era, addressing at least a $60 billion TAM in data-driven client-to-cloud AI networking.
In terms of Q1 specifics, we delivered revenue of $1.57 billion for the quarter with a non-GAAP earnings per share of $1.99. Services and Software Support Renewals contributed strongly at approximately 16.9% of revenue. Our non-GAAP gross margins of 64.2% was influenced by improved supply chain and inventory management, as well as favorable mix of the enterprise.
International contribution for the quarter registered at 20% and with the Americas strong at 80%. As we kick off 2024, I'm so proud of the Arista team work and our consistent execution. We have been fortunate to build a seasoned management team for the past 10 to 15 years. Our core founders are very engaged in the company for the past 20 years. Ken is still actively programming and writing code, while Andy is our full-time chief architect for next-generation AI, silicon and optics initiatives. Hugh Holbrook, our recently promoted Chief Development Officer, is driving our major platform initiatives in tandem, with John McCool and Alex on the hardware side.
This engineering team is one of the best in tech and networking that I have ever had the pleasure of working with. On behalf of Arista though, I would like to express our sincere gratitude for Anshul Sadana's 16-plus wonderful years of instrumental service to the company in a diverse set of roles. I know he will always remain a well-wisher and supporter of the company. But Anshul, I'd like to invite you to say a few words.
Thank you, Jayshree. The Arista journey has been a very special one. We've come a long way from our startup base to over an $80 billion company today. Every milestone, every event, the ups and downs are all etched in my mind.
I've had a multitude of roles and learned and grown more than what I could have ever imagined. I have decided to take a break and spend more time with family, especially when the kids are young. I'm also looking at exploring different areas in the future. I want to thank all of you on the call today, our customers, our investors, our partners and all the well wishes over these years.
Arista isn't just a workplace. It's family to me. It's the people around you that make life fun. Special thanks to Arista leadership, Chris, Ashwin, John McCool, Mark Foss, Ita and Chantelle, Marc Taxay, Hugh Holbrook, Ken Duda and many more. Above all, there are 2 very special people I want to thank. Andy Bechtolsheim for years of vision, passion, guidance and listening to me. And of course, Jayshree. She hasn't been just my manager, but also by mentor and coach for over 15 years. Thank you for believing in me. I will always continue to be an Arista well-wisher.
Back to you, Jayshree.
Anshul, thank you for that very genuine and hard-sell expression of your huge contributions to Arista. It gives me goosebumps hearing your nostalgic memories. We will miss you and hope someday you will return back home.
At this time, Arista will not be replacing the COO role and instead flattening the organization. We will be leveraging our deep bench strength of our executives who stepped up to drive our new Arista 2.0 initiatives. In particular, John McCool, our Chief Platform Officer; and Ken Kiser, our Group Vice President, have taken standard responsibility for our cloud, AI, tech initiatives, operations and sales.
On the noncloud side, 2 seasoned executives have been promoted Ashwin Kohli, Chief Customer Officer; and Chris Schmidt, Chief Sales Officer, will together address the global enterprise and provider opportunity. Our leaders have grown up in Arista for a long time with long tenures of a decade or more.
We are quite pleased with the momentum across all our 3 sectors: Cloud and AI Titans, Enterprise and Providers. Customer activity is high as Arista continues to impress our customers and prospects with our undeniable focus on quality and innovation. As we build our programmable network on delays based on our Universal Leaf/Spine topology, we are are also constructing network, as I said, the suite of overlays such as zero-touch automation, security, telemetry and observability. I would like to invite Ken Duda, our Founder, CTO and recently elected to the Arista Board to describe our enterprise NaaS strategy, as we drive to our enterprise campus goal of $750 million in 2025.
Over to you, Ken.
Thank you, Jayshree, and thanks, everyone, for being here. I'm Ken Duda, CTO of Arista Networks. Excited to talk to you today about NetDL, the Arista Network Data Link and how it supports our Network-as-a-Service strategy.
From the inception of networking decades ago, networking has involved rapidly changing data. Data about how the network is operating, which paths through the network our best and how the network is being used. But historically, most of this data was to simply discarded as the network changes state and that which was collected can be difficult to interpret because it lacks context. Network addresses and port numbers by themselves, provide a little insight into what users are doing or experiencing.
Recent developments in AI have proved the value of data. But to take advantage of these breakthroughs, you need to gather and store large data sets, labeled suitably for machine learning. Arista is solving this problem with NetDL, we continually monitor every device, not simply taking snapshots, but rather streaming every network event, every counter, every piece of data in real time, archiving a full history in NetDL.
Alongside this device data, we also collect flow data and inbound network telemetry data gathered by our switches. Then we enrich this performance data further with user, service and application layer data from external sources outside the network, enabling us to understand not just how each part of the network is performing, but also which users are using the network for what purposes. And how the network behavior is influencing their experience.
NetDL is a foundational part of the EOS stack, enabling advanced functionality across all of our use cases. For example, in AI fabrics, NetDL enables fabric-wide visibility, integrating network data and NIC data to enable operators to identify misconfigurations or misbehaving hosts and pinpoint performance bottlenecks. But for this call, I want to focus on how NetDL enables Network-as-a-Service.
Network-as-a-Service or NaaS is Arista's strategy for up-leveling our relationship with our customers, taking us beyond simply providing network hardware and software by also providing customers or service provider partners with tools for building and operating services. The customer selects the service model, configure service instances and Arista's CV NaaS handles the rest, equipment selection, deployment, provisioning, building, monitoring and troubleshooting.
In addition, CV NaaS provides end user self-service, enabling customers to manage their service systems, provision new endpoints, provision new virtual topologies, set traffic prioritization policies, set access rules and get visibility into their use of the service and its performance. One can think of NaaS as applying cloud computing principles to the physical network, reusable design patterns, scale autonomous operations, multi-tenant from top to bottom with cost-effective automated end user self service.
And we couldn't get to the starting line without NetDL, as NetDL provides a database foundation of NaaS service deployment and monitoring. Now NaaS is not a separate SKU, but really refers to a collection of functions in audition. For example, Arista Validated Designs or AVD, is a provisioning system. It's an early version of our NaaS Service Instance Configuration tool.
Our AGNI services provide global location independent identity management needed to identify customers within NaaS. Our UNO product or Universal Network Observability, will ultimately become the service monitoring element of NaaS. And finally, our NaaS solution has security integrated through our ZTN or Zero Trust Networking product that we showcased at RSA this week.
Thus, our NaaS vision simultaneously represents a strategic business opportunity for us, while also serving as a guiding principle for our immediate CloudVision development efforts. While we are really excited about the future here, our core promise to our investors and customers is unchanging and uncompromised we will always put all these first. We are incredibly proud of the amount of success customers have had deploying our products because they really work. And as we push hard building sophisticated new functions in the NetDL and NaaS areas, we will never put our customers' networks at risk by cutting corners on quality. Thank you.
Thank you, Ken, for your tireless execution in the typical Arista way. In an era characterized by stringent cybersecurity, observability is an essential perimeter and imperative. We cannot secure what we cannot see. We launched CloudVision and UNO in February 2024 based on the EOS Network Data Link Foundation that Ken just described for universal network observability.
CloudVision UNO delivers fall detection, correction and recovery. It also brings deep analysis to provide a composite picture of the entire network with improved discovery of applications, hosts, workloads and IT systems of record.
Okay. Switching to AI. Of course, no call is complete without that. As generative AI training tasks evolve, they are made up of many thousands of individual iterations. Any slowdown due to network and critically impact the application performance, creating inefficient wait stage and idling away processor performance by 30% or more.
The time taken to reach coherence known, as job completion time is an important benchmark achieved by building proper scale-out AI networking to improve the utilization of these precious and expensive GPUs. Arista continues to have customer success across our innovative AI for networking platforms.
In a recent blog from one of our large Cloud and AI Titan customers, Arista was highlighted for building a 24,000 node GPU cluster based on our flagship 7,800 AI Spine. This cluster tackles complex AI training tasks that involve a mix of model and data penalization across thousands of processors and ethernet is proving to offer at least 10% improvement of job completion performance across all packet sizes versus InfiniBand.
We are witnessing an inflection of AI networking and expect this to continue throughout the year and decade. Ethernet is emerging as a critical infrastructure across both front-end and back-end AI data centers. AI applications simply cannot work in isolation and demand seamless communication among the compute nodes, consisting of back-end GPUs and AI accelerators and as well as the front end nodes like the CPUs, alongside storage and IP/WAN systems as well.
If you recall, in February, I shared with you that we are progressing well in 4 major AI Ethernet clusters, that we won versus InfiniBand recently. In all 4 cases, we are now migrating from trials to pilots, connecting thousands of GPUs this year, and we expect production in the range of 10,000 to 100,000 GPUs in 2025. Ethernet at scale is becoming the de facto network at premier choice for scale-out AI training workloads.
A good AI network needs a good data strategy, delivered by our highly differentiated EOS and network data lake architecture. We are, therefore, becoming increasingly constructive about achieving our AI target of $750 million in 2025.
In summary, as we continue to set the direction of Arista 2.0 networking, our visibility to new AI and cloud projects is improving and our enterprise and provider activity continues to progress well. We are now projecting above our Analyst Day range of 10% to 12% annual growth in 2024. And with that, I'd like to turn it over to Chantelle for the very first time as Arista's CFO, to review financial specifics and tell us more. Warm welcome to you, Chantelle.
Thank you, Jayshree, and good afternoon. The analysis of our Q1 results and our guidance for Q2 2024 is based on non-GAAP and excludes all noncash stock-based compensation impacts, certain acquisition-related charges and other nonrecurring items. A full reconciliation of our selected GAAP to non-GAAP results is provided in our earnings release.
Total revenues in Q1 were $1.571 billion, up 16.3% year-over-year and above the upper end of our guidance of $1.52 billion to $1.56 billion. This year-over-year growth was led by strength in the enterprise vertical with cloud doing well as expected.
Services and subscription software contributed approximately 16.9% of revenue in the first quarter, down slightly from 17% in Q4. International revenues for the quarter came in at $316 million or 20.1% of total revenue, down from 22.3% in the last quarter. This quarter-over-quarter reduction reflects the quarterly volatility and includes the impact of an unusually high contribution from our EMEA in-region customers in the prior quarter.
In addition, we continue to see strong revenue growth in the U.S. with solid contributions from our Cloud Titan and Enterprise customers. Gross margin in Q1 was 64.2%, above our guidance of approximately 62%. This is down from 65.4% last quarter and up from 60.3% in Q1 FY '23.
The year-over-year margin accretion was driven by 3 key factors: Supply chain productivity gains led by the efforts of John McCool, Mike Capes and his operational team, a stronger mix of Enterprise business and a favorable revenue mix between product, services and software.
Operating expenses for the quarter were $265 million or 16.9% of revenue, up from last quarter at $262.7 million. R&D spending came in at $164.6 million or 10.5% of revenue, down slightly from $165 million last quarter. This reflected increased head count offset by lower new product introduction costs in the period due to timing of prototypes and other costs associated with our next-generation products.
Sales and marketing expense was $83.7 million or 5.3% of revenue, compared to $83.4 million last quarter, with increased head count costs offset by discretionary spending that is delayed until later this year. Our G&A costs came in at $16.7 million or 1.1% of revenue, up from 0.9% of revenue in the prior quarter. Income from operations for the quarter was $744 million or 47.4% of revenue.
Other income for the quarter was $62.6 million, and our effective tax rate was 20.9%. This resulted in net income for the quarter of $637.7 million or 40.6% of revenue. Our diluted share number was 319.9 million shares, resulting in a diluted earnings per share number for the quarter of $1.99, up 39% from the prior year.
Now turning to the balance sheet. Cash, cash equivalents and investments ended the quarter at approximately $5.45 billion. During the quarter, we repurchased $62.7 million of our common stock. And in April, we repurchased an additional 82 million for a total of $144.7 million at an average price of $269.80 per share. We have now completed share repurchases under our existing $1 billion Board authorization, whereby we repurchased 8.5 million shares at an average price of $117.20 per share.
In May 2024, our Board of Directors authorized a new $1.2 billion stock repurchase program, which commences in May 2024 and expires in May 2027. The actual timing and amount of future repurchases will be dependent upon market and business conditions, stock price and other factors.
Now turning to operating cash performance for the first quarter. We generated approximately $513.8 million of cash from operations in the period, reflecting strong earnings performance, partially offset by ongoing investments in working capital. DSLs Came in at 62 days, up from 61 days in Q4 driven by significant end of quarter service renewals. Inventory turns were 1, flat to last quarter. Inventory increased slightly to $2 billion in the quarter, up from $1.9 billion in the prior period, reflecting the receipt of components from our purchase commitments and an increase in switch-related finished goods.
Our purchase commitments at the end of the quarter were $1.5 billion, down from $1.6 billion at the end of Q4. We expect this number to level off as lead times continue to improve but will remain somewhat volatile as we ramp up new product introductions. Our total deferred revenue balance was $1.663 billion, up from $1.506 billion in Q4 of fiscal year 2023. The majority of the deferred revenue balance is services related and directly linked to the timing and term of service contracts, which can vary on a quarter-by-quarter basis.
Our product deferred revenue balance decreased by approximately $25 million versus last quarter. We expect 2024 to be a year of significant new product introductions, new customers and expanded use cases. These trends may result in increased customer-specific acceptance clauses and increase the volatility of our product deferred revenue balances.
As mentioned in prior quarters, the deferred balance can move significantly on a quarterly basis independent of underlying business drivers. Accounts payable days were 36 days, down from an unusually high 75 days in Q4, reflecting the timing of inventory receipts and payments. Capital expenditures for the quarter were $9.4 million.
Now turning to our outlook for the second quarter and beyond. I have now had a quarter working with Jayshree, the leadership team and the broader Arista ecosystem, and I am excited about both our current and long-term opportunities in the markets that we serve. The passion for innovation, our agile business operating model and employee commitment to our customers' success are foundational. We are pleased with the momentum being demonstrated across the segments, Enterprise, Cloud and Providers.
With this, we are raising our revenue guidance to an outlook of 12% to 14% growth for fiscal year 2024. On the gross margin front, given the expected end customer mix combined with continued operational improvements, we remain with the fiscal year 2024 outlook of 62% to 64%.
Now turning to spending and investments. We continue to monitor both the overall macro environment and overall market opportunities. which will inform our investment prioritization as we move through the year. This will include a focus on targeted hires and leadership roles, R&D and the go-to-market team as we see opportunities to acquire strong talent.
On the cash front, while we will continue to focus on supply chain and working capital optimization, we expect some continued growth in inventory on a quarter-by-quarter basis, as we receive components from our purchase commitments. With these sets of conditions and expectations, our guidance for the second quarter, which is based on non-GAAP results and excludes any noncash stock-based compensation impacts and other nonrecurring items is as follows: revenues of approximately $1.62 billion to $1.65 billion, gross margin of approximately 64% and operating margin at approximately 44%. Our effective tax rate is expected to be approximately 21.5% with diluted shares of approximately 320.5 million shares.
I will now turn the call back to Liz for Q&A. Liz?
Thank you, Chantelle. We will now move to the Q&A portion of the Arista earnings call. To allow for greater participation, I'd like to request that everyone please limit themselves to a single question. Thank you for your understanding. Operator, take it away.
[Operator Instructions] And your first question comes from the line of Atif Malik with Citi.
It's Adrienne for Atif. I was hoping you could comment on your raised expectations for the full year with regards to customer mix it sounds like from your gross margin guidance, you're seeing a higher contribution from Enterprise, but I was hoping you could comment on the dynamics you're seeing with your Cloud Titans.
Yes. So as Chantelle and I described, when we gave our guidance in November, we didn't have much visibility beyond 3 to 6 months, and so we had to go with that. The activity in Q1 alone, and I believe it will continue in the first half, has been much beyond what we expected. And this is true across all 3 sectors, Cloud and AI Titans, Providers and Enterprise. So we're feeling good about all 3 and therefore, have raised our guidance earlier than we probably would have done in May. I think we would have ideally liked to look at 2 quarters, Chantelle, what do you think, but I think we felt good enough.
Yes. No, I think we saw because of the diversified momentum and the mix of the momentum that gave us confidence.
And your next question comes from the line of Samik Chatterjee with JPMorgan.
I guess, Jayshree and Chantelle, I appreciate the sort of raise in guidance for the full year here. But when I look at it on a half-over-half basis in terms of what you're implying. If I'm doing the math correct, you're implying about a sort of 5%, 6% half-over-half growth, which when I go back and look at previous years, you're -- probably there's only 1 year out of the last 5 or 6 that you've been in that sort of range or below that.
Every other year it's been better than that. I'm just wondering you mentioned the Q1 activity that you've seen across the board, why are we not seeing a bit more of a half-over-half uptick than in sort of the momentum in the back half?
It's like anything else. Our numbers are getting larger and larger. So activity has to translate to larger numbers. So of course, if we see it improve even more, we'll guide appropriately for the quarter.
But at the moment, we're feeling very good just increasing our guide from 10% to 12% to 12% to 14%. As you know, Arista doesn't traditionally do that so early in the year. So please read that as confidence but cautiously confident or optimistically confident, but nevertheless confident.
And your next question comes from the line of Ben Reitzes with Melius Research.
We will move on to the next question from George Notter with Jefferies.
I want to key in on something I think you guys said earlier in the monologue. You mentioned that Ethernet was 10% better than InfiniBand. And I -- my notes are incomplete here. Could you just remind me exactly what you were talking about there? What is the comparison you're making to InfiniBand? And just anything, I'd love to learn more about that.
Certainly, George. Historically, as you know, when you look at InfiniBand and Ethernet in isolation, there are a lot of advantages of each technology. Traditionally, InfiniBand has been considered lossless and Ethernet is considered to have some loss properties.
However, when you actually put a full GPU cluster together along with the optics and everything, and you look at the coherents of the job completion time across all packet sizes, data has shown that and this is data that we have gotten from third parties, including Broadcom, that just about in every packet size in a real-world environment independent of the comparing those technologies, the job completion time of Ethernet was approximately 10% faster.
So you can look at these things in silos. You can look at it in a practical cluster and in a practical cluster we are already seeing improvements on Ethernet. Now don't forget, this is just Ethernet as we know it today. Once we have the ultra Ethernet consortium and some of the improvements you're going to see on packet spring and dynamic load balancing and congestion control, I believe those numbers will get even better.
Got it. I assume you're talking about RoCE here as opposed to just straight up Ethernet, is that correct?
In all cases, right now, pre UEC, we're talking about RDMA or Ethernet, exactly. RoCE version too, which is the most deployed NIC you have in most scenarios. But with [indiscernible] RoCE, we're seeing 10% improvement, Imagine when we go to UEC.
I know you guys are also working on your own version of Ethernet, presumably, it blends into the UEC standard over time. But what do you think the differential might be there relative to InfiniBand? Do you have a sense on what that might look like?
We have metrics yet, but it's not like we're working on our own version of Ethernet, we are working on the UEC compatible and compliant version of Ethernet. And there's 2 aspects of it. What we do on the switch and what others do on the NIC, right? So what we do on the switch, I think, will be -- we've already built an architecture we call it, the Etherlink architecture that takes into consideration the buffering, the congestion control, the load balancing and largely, we'll have to make some software improvements.
The NICs, especially at 400 and 800 is where we are looking to see more improvements because that will give us additional performance from the server onto the switch. So we need both half to work together. Thanks, George.
Your next question comes from the line of Ben Reitzes with Melius Research.
I was wondering if you can characterize how you're seeing NVIDIA in the market right now. And are you seeing yourselves go more head to head? How do you see that evolving? And if you don't mind also, I think NVIDIA moves to a more systems-based approach potentially with Blackwell. How you see that impacting your competitiveness with NVIDIA?
Yes. Thanks, Ben, for a loaded question. First of all, I want to bank NVIDIA and Jensen. I think it's important to understand that we wouldn't have a massive AI networking opportunity if NVIDIA didn't build some fantastic GPUs. So yes, we see them in the market all the time, mostly using our networks to their GPUs and NVIDIA is the market leader there, and I think they've created an incremental market opportunity for us that we are very, very reduced by.
Now do we see them in the market? Of course, we do. I see them on GPUs. We also see them on the RoCE or RDMA ethernet NIC side. And then sometimes we see them, obviously, when they're pushing InfiniBand, which has been, for most part, the de facto network of choice. You might have heard me say, last year or the year before, I was outside looking into this AI networking.
But today, we feel very pleased that we are able to be the scale-out network for NVIDIA's, GPUs and NICs based on Ethernet. We don't see NVIDIA as a direct competitor yet on the Ethernet side. I think it's 1% of their business. It's 100% of our business. So we don't worry about that overlap at all. And we think we've got 20 years of founding to now experience to make our Ethernet switching better and better at both on the front end and back end. So we're very confident that Arista can build the scale up network and work with NVIDIA scale-up GPUs. Thank you, Ben.
Your next question comes from the line of Amit Daryanani with Evercore ISI.
I guess, Jayshree, given some of the executive transitions you've seen at Arista, can you just perhaps talk about [indiscernible] you can, the discussion you've had with the Board around your desire, your commitment to remain the CEO, does anything [indiscernible] that would be really helpful.
And then if I just go back to the job completion data that you talked about, given what you just said and the expected improvement, what are the reasons a customer would still use InfiniBand versus Switch more aggressively with Ethernet?
Well, first of all, you heard Anshul, I'm sorry to see Anshul decide to do other things. I hope he comes back. We've had a lot of executives make a U-turn over time, and we call them boomerangs. So I certainly hope that's true with Anshul. But we have a very strong bench. And we've had -- we've been blessed to have a very constant bench for the last 15 years, which is very rare in our industry and in the Silicon Valley.
So while we're sorry to see Anshul make a personal decision to take a break, we know he'll remain a well-wisher. And we know the bench strength, below Anshul will now step up to do greater things. As for my commitment, to the Board, I have committed for multiple years. I think it's the wrong order. I wish Anshul had stayed and I had retired, but I'm committed to staying here for a long time.
And your next question comes from the line of Antoine Chkaiban with New Street Research.
So as you can see NVIDIA introduced in-network computing capabilities with NVSwitch, performing some calculations inside the switch itself. Perhaps now is not the best time to announce new products, but I'm curious about whether this is something the broader merchant silicon and Ethernet ecosystem could introduce at some point?
Antoine, are you asking what is our new products for AI? Is that the question?
No, I'm asking specifically about in-network computing capabilities, NVSwitch can do some matrix multiply and add inside the switch itself. And I was wondering if this is something that the broader merchant silicon ethernet ecosystem could introduce as well?
Yes. So just for everyone else's benefit, a lot of the in-network compute is generally done as closest to the compute layer as possible, where you're processing the GPU. So that's a very natural place. I don't see any reason why we could not do those functions in the network and offload the network for some of those compute functions.
It would require a little more state and built in processing power, et cetera, but it's certainly very doable. I think it's going to be 601 and half a dozen of the other. Some would prefer it closest to the compute layer and some would like it network-wide for network scale at the network layer. So the feasibility is very much there in both cases, Antoine.
And your next question comes from the line of James Fish with Piper Sandler.
Anshul, we'll miss having you around. I echo my sentiments there, but I hope to see you soon. Jayshree, how are you guys thinking about timing of the 800 gig optics availability versus kind of use in systems? And you keep alluding to kind of next-gen product announcements for multiple quarters, not just this one, but -- should we expect this to be more around adjacent use cases, the core, including AI or Software, kind of take us in the product road map direction, if you can?
Yes. James, you might remember like deja vu, we've had similar discussions on 400 gig too. And as you well know, to build a good switching system, you need an ecosystem around it, whether it's the NICs, the optics, the cables, the accessories. So I do believe you'll start seeing some early introduction of optical and switching products for 800 gig, but to actually build the entire ecosystem and take advantage, especially in the NICs, I think will take more than a year. So I think probably more into '25 or even '26.
That being said, I think you're going to see a lot of systems I had this discussion earlier. You're going to see 601 and half a dozen of the other, you're going to see a lot of systems where you can demonstrate high rating scale with 400 gig and go East West much wider and build large clusters that are in the tens of thousands. And then once you need -- once you have GPUs that source 800 gig, which even some of the recent GPUs don't, then you'll need not just higher ratings, but higher performance. So I don't see the ecosystem of 800 gig limiting the deployment of the AI networks. That's an important thing to remember.
And your next question comes from the line of Simon Leopold with Raymond James.
This is Victor Chiu in for Simon Leopold. Do you expect Arista to see a knock-on effect from AI networking in the front end or at the edge as customers eventually deploy more AI workloads based -- I'm sorry, biased towards inferencing. And then maybe help us understand how we might be able to size this, if that's the case?
Simon, just [indiscernible] in your question. We haven't [indiscernible] consideration, that's Phase 2 production. But you're absolutely right to say as you have more back end than the back end has to connect to something, which typically rather than reinventing IP and adaptive routing, you would connect to the front end of your compute and storage and WAN networks.
So while we do not take that into consideration and our $750 million projection in 2025, we naturally see the deployment of more back-end clusters resulting in a more uniform compute, storage, memory, overall front-end, back-end holistic network for AI coming in the next phase.
So I think it makes a lot of sense. We -- but we first want to get the clusters deployed and then we'll do the -- a lot of our customers are fully expecting that holistic connection. And that's one -- by the way, one of the reasons they look so favorably at us. They don't want to build these disparate silos and islands of AI clusters. They really want to bring it in terms of a full uniform AI data center.
And your next question comes from the line of Meta Marshall with Morgan Stanley.
Maybe I'll flip James' question and just kind of ask what do you see as kind of some of the bottlenecks from going to -- from pilots to ultimate deployments? It sounds like it's not necessarily 800 gig. And so is it just a matter of time? Are there other pieces of the ecosystem that are -- that need to fall into place before some of those deployments can take place?
I wouldn't call them, Meta, bottlenecks. I would definitely say it's a time-based and familiarity-based situation. The Cloud everybody knows how to deploy that, it's sort of plug and play in some ways. And -- but even in the Cloud, if you may recall, there were many use cases that emerged. .
The first use case that's emerging for AI networking is, let's just build the fastest training workloads and clusters. And they're looking at performance. Power is a huge consideration, the cooling of the GPUs is a huge part of it. You would be surprised to hear a lot of times, it's just waiting on the facilities and waiting for the infrastructure to be set up, right?
Then on the OS and operating side, and Ken has been quiet here. I'd love for him to chime in. But there's a tremendous amount of foundational discovery that goes into what do they need to do in the cluster. Do they need to do some hashing? Do they need to do load balancing? Do they need to do this set Layer 2, Layer 3? Do they need visibility features? Do they need to connect it across the WAN or interconnect?
So -- and of course, as you rightly pointed out, there's the whole 400 to 800. We're -- but we're seeing less of that because a lot of it is familiarity and understanding how to operate the cluster with the best job completion time and visibility, manageability and availability of the GPUs, Nobody can tolerate downtime.
Ken, I'd love to hear your point of view on this.
Yes. Thanks, Jayshree. Look, I think that what's lacking people's deployment is the availability of all the pieces. And so there's a huge pent-up demand for this stuff and we see these clusters getting built, as fast as people can build the facilities, get the GPUs and get the networking they need.
I think that we're extraordinarily well positioned here because we've got years of experience building scaled storage clusters in some of the world's largest cloud players and storage clusters are not identical to AI clusters but they have some of the same issues with managing a massive scale back-end network that needs to be properly low-balanced, needs a lot of buffer to manage bursts.
And so -- and then some of the congestion management stuff we've done there is also useful in AI networks. And in particular, this InfiniBand topic keeps coming up. And I'd just like to point out that Ethernet is about 50 years old. And over those 50 years, Ethernet has come head-to-head with a bunch of technologies like Token ring, SONET, ATM, FDDI, HIPPI, Scalable Coherent Interconnect, [ Mirrornet ]. And all of these battles have one thing in common. Ethernet won. And the reason why is because of Metcalfe's law, the value of a network is quadratic in the number of nodes of the interconnect. And so anybody who tries to build something which is not Ethernet, is starting off with a very large quadratic disadvantage. And any temporary advantage they have because of the -- some detail of the tech cycle is going to be quickly overwhelmed by the connectivity advantage you have with Ethernet.
So I think exactly how many years it takes for InfiniBand to go to [ waver ] fiber channel, I'm not sure, but that's where it's all headed.
And your next question comes from the line of Ben Bollin with Cleveland Research Company.
Jayshree, you made a comment that back when we had guidance in November, you had about 3 to 6 months of visibility. Could you take us through what type of visibility you have today? And maybe compare and competes the different subsets of customers and how they differ?
Thank you, Ben. That's a good question. So let me take it by category, like you said. In the Cloud and AI Titans in November, we were really searching for even 3 months visibility, 6 would have been amazing. Today, I think after a year of tough situations for us where the Cloud Titans were pivoting rather rapidly to AI and not thinking about the Cloud as much.
We're now seeing a more balanced approach where they're still doing AI, which is exciting, but they're also expanding their regions on the Cloud. So I would say our visibility has now improved to at least 6 months and maybe it gets longer as time goes by.
On the Enterprise, I don't know. I'm not a bellwether for macro, but everybody else is citing macro, but I'm not seeing macro. What we're seeing with Chris Schmidt and Ashwin and the entire team is a profound amount of activity in Q1, better than we normally see in Q1. Q1 is usually they come back from the holidays. January slow. There's some East Coast storms to deal with, winter is still strong. But we have had one of the strongest activities in Q1, which leads us to believe that it can only get better for the rest of the year, and hence, the guide increase from an otherwise conservative team of Chantelle and myself, right?
And then the Tier 2 cloud providers, I want to speak to them for a moment because not only are they strong for us right now, but they are starting to pick up some AI initiatives as well. So they're not as large as close as the Cloud Titans, but the combination of the Service Providers and the Tier 2 Specialty Providers is also seeing some momentum. So overall, I would say our visibility has now improved from 3 months to over 6 months. And in the case of the Enterprise, obviously, our sales cycles can be even longer. So it takes time to convert into wins. But the activity has never been higher.
And your next question comes from the line of Michael Ng with Goldman Sachs.
It was very encouraging to hear about the migration of trials to pilots with ANET's production roll out to support GPUs in the range of, I think you said 10,000 to 100,000 GPUs for 2025. And First, I was just wondering if you could talk about some of the key determinants about where we -- how we end up in that range, high end versus low end?
And then second, assuming $250,000 per GPU, that would imply about $25 billion of compute spending. ANET's target of $750 million would only be about 3% of the high end. And I think you've talked about 10% to 15% networking as a percentage of compute historically. So I was just wondering if you could talk about what I may be missing there, if there's anything to call out in those assumptions.
Yes. Thank you, Michael. I think we could do better next year. But your point is well taken that in order to go from 10,000 of GPUs to 30,000, 50,000, 100,000, a lot of things have to come together. First of all, let's talk about the data center or AI center facility itself.
There's a tremendous amount of work and lead time that goes into the power, the cooling, the facilities. And so now when you're talking this kind of production as opposed to proving something in the lab, that's a key factor.
The second one is the GPU, the number of GPUs, the location of the GPUs, the scale of the GPUs, the locality of these GPUs, should they go with Blackwell should they build with a scale up inside the server or scale out to the network. So the whole center of gravity, what's nice to watch which is why we're more constructive on the 2025 numbers is that the GPU lead times have significantly improved, which means more and more of our customers will get more GPUs, which in turn means they can build out to scale our network. But again, a lot of work is going into that.
And the third thing I would say is the scale, the performance, how much ratings they want to put in. And then I'll give a quick analogy here. We ran into something similar on the Cloud when we were talking about 4-way CMP or 8-way CMP or these railways designs that is often called and the number of NICs you connect to go 8-way or 4-way or 12-way or switch off and go to 800 gig the performance and scale will be the third metric. So I think power GPU locality and performance of the network are the 3 major considerations that allow us to get more positive on the rate of production in 2025.
And your next question comes from the line of Matthew Niknam with Deutsche Bank.
I got to ask one more on AI. Sorry to beat a dead horse. But as we think about the stronger start to the year and the migration from trials to pilot specific in relation to AI, is there a ramp towards getting to that $750 million next year? And I guess more importantly, is there any material contribution baked into this year's outlook? Or is there any contribution that may be driving the 2 percentage point increase relative to the prior guide for '24.
Chantelle, you want to take that? I've been talking of AI a lot. I think you should.
Yes, I can take this AI question. So I think that when you think about the $750 million target that has become more constructive to Jayshree's prepared remarks, that's a glide path. So it's not 0 in '24, It's a glide path to '25. So I would say there is some assumed in the sense of it's a glide path, but it will end in 2025 at the $750 million in the glide path, not a hockey stick. Yes.
It's not 0 this year Matt. for sure.
Yes.
And your next question comes from the line of Sebastien Naji with William Blair.
I've got a non-AI question here. So maybe you can talk a little bit about some of the incremental investments that you're making within your go-to-market this year, particularly as you look to grab some share from competitors. A lot of them are going through some type of disruption, one or the other acquisitions, et cetera. And then what you might be doing with the channel partners to land more of those mid-market customers as well?
Yes. Sebastian, we're probably doing a little more on investment than we have done enough progress on channel partners, to be honest. But last couple of years, we were getting very apologize about our lead times. Our lead times have improved. So we have stepped up our investment on go-to-market, where I'm expecting Chris Schmidt and Ashwin's team to grow significantly and judging from the activities they've had and the investments they've been making in '23 and '24, we're definitely going to continue to pedal to the metal on that.
I think our investments in AI and Cloud Titans remain about the same because while there is a significant technical focus on the systems engineering and product side, we don't see a significant change on the go-to-market side. And on the channel partners, I would say, where this really comes to play and this will play out over multiple years, it's not going to happen this year is on the campus.
Today, our approach on the campus is really going after our larger Enterprise customers. We got 9,000 customers, probably 2,500 that we're really going to target. And so our mid-market is more targeted at specific verticals like health care, education, public sector. and then we appropriately work with the channel partners in the region, in the country, to deal with that.
To get to the first billion, I think this will be a fine strategy. As we aim beyond $750 million to $1 billion, and we need to go to the second billion, absolutely, we need to do more work on channels. This is still work in progress.
Your next question comes from the line of Aaron Rakers with Wells Fargo.
I'm going to shift gears away from AI actually. Jayshree, if we look at the server market over the past handful of quarters, we've seen unit numbers down quite considerably. I'm curious, as you look at some of your larger Cloud customers, how you would characterize the traditional server side and whether or not you're seeing signs of them moving past this kind of optimization phase and whether or not you think a server refresh cycle in front of you could be a incremental catalyst to the company?
Yes. No, I think if you remember, there was this one dreadful year where we -- one of our customers skipped a service cycle. But generally speaking, on the front-end network now, we're going back to the cloud. And we do see service refresh and service cycles continue to be in the 3 to 5 years.
For performance upgrades, they like 3, but occasionally, some of them may go a little higher. So absolutely, we believe there will be another cloud cycle because of the server refresh. And the associated use cases because once you do that on the server, there's appropriately the regional spine and then the data center interconnect and the storage and some much ripple effect from that server use case upgrade.
That side of compute and CPU is not changing. It's continuing to happen. In addition to which we're also seeing more and more regional expansion. New regions are being created and designed and outfitted for the cloud by our major Titans.
And your next question comes from the line of Karl Ackerman with BNP Paribas.
Jayshree, you spoke about how you are not seeing any slowness in Enterprise. I'm curious whether that is being driven by the growing mix of your software revenue? And do you think the deployment of AI Networks on-prem can be a more meaningful driver for your Enterprise and financial customers in the second half of fiscal '24? Or will that be more of a fiscal '25 event?
Well, that's a very good question. I have to analyze this some more. I would say our Enterprise activity is really driven by the fact that Ken has produced some amazing software quality and innovation. And we have a very high quality, universal topology, where you don't have to buy 5 different OSs and 50 different images and operate this network with thousands of people.
It's a very elegant architecture that applies to the data center use case that you just outlined, for Leaf/Spine. The same Universal Spine can apply to the campus. It applies to the wide area. It applies to the branch. It applies to security. It applies to observability. And you bring up a good point that while the enterprise use cases for AI are small, we are seeing some activity there as well. Relative to the large AI Titans, they're still very small.
But think of them as back in the trial phase I was describing earlier, trials, pilot production, -- so a lot of our enterprise customers are starting to go in the trial phase of GPU clusters. So that's a nice use case as well. But the biggest ones are still in the data center campus and the general purpose Enterprise.
Operator, we have time for one last question.
And your final question comes from the line of David Vogt with UBS.
So Jayshree, I have a question about -- I want to go back to AI, the road map and the deployment schedule for Blackwell. So it sounds like it's a bit slower than maybe initially expected with initial customer delivery late this year. How are you thinking about that in terms of your road map specifically and how that plays into what you're thinking about '25 in a little bit more detail.
And does that late delivery maybe put a little bit of a pause on maybe some of the cloud spend in the fall of this year as there seems to be somewhat of a technology transition going on towards Blackwell away from the Legacy product?
Yes. We're not seeing a pause yet. I don't think anybody is going to wait for Blackwell necessarily in 2024 because they're still bringing up their GPU clusters. And how a cluster is divided across multiple tenants, the choice of host, memory, storage architectures, optimizations on the GPU for collective communication, libraries, specific workloads, resilience, visibility, all of that has to be taken into consideration.
All this to say, a good scale-out network has to be built, no matter whether you're connecting to today's GPUs or future Balckwells. And so they're not going to pause the network because they're waiting for Blackwell. they're going to get ready for the network, whether it connects to a Blackwell or a current H100.
So as we see it, the training workloads and the urgency of getting the best job completion time is so important that they're not going to spare any investments on the network side and the network side can be ready no matter what the GPU is.
Thanks, David. This concludes the Arista Networks First Quarter 2024 Earnings Call. We have posted a presentation, which provides additional information on our results, which you can access on the Investors section of our website. Thank you for joining us today, and thank you for your interest in Arista.
Ladies and gentlemen, thank you for joining. This concludes today's call, and you may disconnect now.