Ladies and gentlemen, thank you for standing by. My name is Brent, and I will be your conference operator today. At this time, I would like to welcome everyone to the Q4 fiscal year 2022 Snowflake earnings conference call. All lines have been placed on mute to prevent any background noise. After the speaker's remarks, there will be a question-and-answer session. If you would like to ask a question at that time, simply press star followed by the number one on your telephone keypad. If you would like to withdraw your question, again, press star one. Thank you. It's now my pleasure to turn today's call over to Mr. Jimmy Sexton, Head of Investor Relations. Sir, please go ahead.
Good afternoon, and thank you for joining us on Snowflake's Q4 fiscal 2022 earnings call. With me in Bozeman, Montana, are Frank Slootman, our Chairman and Chief Executive Officer, Mike Scarpelli, our Chief Financial Officer, and Christian Kleinerman, our Senior Vice President of Product, will join us for the Q&A session. During today's call, we will review our financial results for fourth quarter fiscal 2022 and discuss our guidance for the first quarter and full year fiscal 2023. During today's call, we will make forward-looking statements, including statements related to the expected performance of our business, future financial results, strategy, products and features, long-term growth, and overall future prospects. These statements are subject to risks and uncertainties which could cause them to differ materially from actual results.
Information concerning those risks is available in our earnings press release distributed after market close today and in our SEC filings, including our most recently filed Form 10-Q and the Form 10-K for the fiscal year ended January 31, 2022, that we will file with the SEC. We caution you to not place undue reliance on forward-looking statements and undertake no duty or obligation to update any forward-looking statements as a result of new information, future events, or changes in our expectations. We'd also like to point out that on today's call, we will report both GAAP and non-GAAP results. We use these non-GAAP financial measures internally for financial and operational decision-making purposes and as a means to evaluate period-to-period comparisons. Non-GAAP financial measures are presented in addition to, and not as a substitute for, financial measures calculated in accordance with GAAP.
To see reconciliations of GAAP to non-GAAP financial measures, please refer to our earnings press release distributed early today in our investor presentation, which are posted at investors.snowflake.com. A replay of today's call will also be posted on the website. With that, I would now like to turn the call over to Frank.
Thanks, Jimmy. Good afternoon, everybody. We finished fiscal 2022 with record-breaking consumption and bookings results. Product revenues surpassed $1.1 billion for the full year, growing 106% year-over-year. Remaining performance obligations were $2.6 billion, representing year-over-year growth of 99%. Q4 was our strongest bookings quarter to date and included a number of large multi-year commitments. Our net revenue retention rate reached 178%, driven by continued growth from our largest customers. In the quarter, we added 14 Fortune 500 and 21 Global 2000 customers. Key enterprise wins included the California Department of Public Health and KPMG, who is also a new alliance partner. We closed the year with $150 million non-GAAP adjusted free cash flow, pairing high growth with improving unit economics and operational efficiency.
Snowflake's growth is driven by digital transformation in the long-term secular trends in data science and analytics enabled by cloud scale computing and Snowflake's cloud-native architecture. Snowflake is a single data operations platform that addresses a broad spectrum of workload types with incredible performance economy and governance. As a platform, Snowflake enables the Data Cloud, a world without silos, and the promise of unfettered data science. In the most recent Dresner Advisory Survey, 100% of Snowflake customers surveyed said they would recommend Snowflake to other organizations for the fifth year in a row. Our focus is to continually enable more workload types, use cases, and data types. This fully aligns with our consumption model, which drives work to the data instead of data to the work.
During the fourth quarter, we announced several product development milestones, including Snowpark, our developer framework that helps data scientists and developers transform and program data. Snowpark for Python is now in private preview, and Snowpark for Java on AWS is now generally available. ITAR. We now support compliance with the International Traffic in Arms Regulations in our Microsoft Azure Government and AWS GovCloud regions. Generally available data governance capabilities, including Object Tagging and Conditional Data Masking. Object Tagging, in particular, is important for cataloging of data and resource consumption governance. Continued advancements with higher concurrency and lower latency workloads. Snowflake data sharing is seeing continued traction in the field. In fiscal 2022, the number of stable edges grew 130% year-over-year. 18% of our growing customer base has at least one stable edge. That is up from 13% a year ago.
Snowflake's Marketplace listings grew 195% this year, now with more than 1,100 data listings from over 230 providers. Our Snowflake Marketplace fuels our rich application development ecosystem and Powered by Snowflake program. Today, there are over 285 Powered by Snowflake partners, including new members Yext and Habu. We continue to elevate our go-to-market functions with an industry-specific focus. In the fourth quarter, we hosted our first Media Data Cloud Summit. The event highlighted real-world customer use cases. Companies like Experian, Roku, and Warner Music Group showed how they are leveraging the Media Data Cloud to protect consumer data and drive advertising and subscriber growth. Our priority for the year is essentially unchanged and is as follows. First, the enablement and expansion of our workload types. Nothing is more core to our mission to develop the Data Cloud.
The existing workload types, such as data lake, data engineering, and data science, develop continuously to become more functional, efficient, and performant. New workload types will be announced later this year. Our focus on Snowpark and enabling workloads driven by languages such as Java and Python fall under this header. Today, we announce our intent to acquire Streamlit to accelerate data applications development on Snowflake. Streamlit enables data scientists to build, deploy, and share data applications. Data scientists will be able to discover governed data to build applications powered by Snowflake. 1.5 million applications have already been built on Streamlit, and we will continue to invest in the open-source framework that developers love. We've agreed to pay $800 million with a mix of cash and stock. The transaction is subject to customary closing conditions.
Secondly, we're expanding our use cases by vertical industry as well as by functions such as IT, sales, marketing, finance, and engineering. We're continuing to drive collaboration through data sharing with leading enterprise software companies to drive this trust. Third, as of February first, we have also verticalized part of our selling motion to address our largest customers by industry. Lastly, we'll continue to deepen and broaden our geographical scope, expecting faster-growing contributions coming from outside the United States. We're excited about starting a new Snowflake fiscal year. With that, I will turn the call over to Mike.
Thank you, Frank. Q4 was another quarter of exceptional execution and strong finish to our fiscal year. Q4 product revenues were $360 million, representing 102% year-over-year growth. Remaining performance obligations accelerated to 99% year-over-year, reaching $2.6 billion. Of the $2.6 billion in RPO, we expect approximately 52% to be recognized as revenue in the next twelve months, representing 85% year-over-year growth. For Q4 product revenue, we anticipated holiday season headwinds. However, we did see a slower-than-expected return to normal consumption in January. We also introduced platform enhancements that improved efficiency higher than expected, which lowered credit consumption. Our increased net revenue retention rate of 178% includes 15 new $1 million customers and reflects durable growth among our largest customers.
Similar to last quarter, six of our top 10 customers' product revenue grew faster than the company overall. Our industry vertical investments are yielding strong results. Q4 was our largest bookings quarter to date, and the outperformance spanned across all our core verticals. Financial services, retail and CPG, advertising and media, healthcare, and technology accounted for 85% of net new bookings in Q4. Large deal volume continues to increase in these verticals. In the quarter, we closed seven deals at or above $30 million in total contract value, up from just one in Q4 of last year. Significant contractual commitments give us confidence that our largest customers' consumption will continue to grow. In Q4, we saw a number of customers with greater than $1 million in trailing twelve-month product revenue increase to 184, up from 148 last quarter.
Turning to margins. On a non-GAAP basis, our product gross margin was 74.99%, up nearly 500 basis points from last year. Enterprise success and growing scale across regions contribute to steady gross margin improvement. Operating margin was 5%, benefiting from revenue outperformance and hiring linearity. Our adjusted free cash flow margin was 27%, positively impacted by strong collections and operating margin outperformance. We do experience free cash flow seasonality, and Q1 and Q4 will continue to be our strongest free cash flow quarters. Given the record bookings in Q4, you should expect to see outsized adjusted free cash flow in Q1 of this year. We are proud of our free cash flow progress, and we will continue to invest for growth with a focus on efficiency. We are committed to showing leverage year-on-year.
We ended the year in a strong cash position with approximately $5.1 billion in cash equivalents, and short-term and long-term investments. Going forward, we are using our strong cash position to transition to a net share settlement for vesting of employee RSUs in almost all countries. This will help us further manage dilution, which has already been running below 1% year-on-year on a fully diluted basis. Now, let's turn to guidance, which includes the full impact of the Streamlit acquisition. For the first quarter of fiscal 2023, we expect product revenues between $385 million and $388 million, representing year-over-year growth between 79% and 81%. Turning to margins, we expect on a non-GAAP basis -2% operating margin, and we expect 359 million diluted weighted average shares outstanding.
For the full fiscal 2023, we expect product revenue between $1.88 billion and $1.9 billion, representing year-over-year growth between 65%- 67%. As we have mentioned before. Certain product improvements create a revenue headwind for our business. We undertake these initiatives because they benefit our customers, and expand our long-term market opportunity. Last year, we called out improvements in storage compression that reduced storage costs for our customers. Similarly, phased throughout this year, we are rolling out platform improvements within our cloud deployments. No two customers are the same, but our initial testing has shown performance improvements ranging on average from 10%- 20%. We have assumed an approximately $97 million revenue impact in our full year forecast, but there is still uncertainty around the full impact these improvements can have.
While these efforts negatively impact our revenue in the near term, over time, they lead customers to deploy more workloads to Snowflake due to the improved economics. Turning to profitability for the full year fiscal 2023, we expect on a non-GAAP basis 74.5% product gross margin, 1% operating margin, and 15% adjusted free cash flow margin. We expect 360 million diluted weighted average shares outstanding. Our gross margin guidance includes performance improvements and investments in additional deployments around the world, most notably government deployments and international. In order to support our continued growth initiatives, we plan on adding more than 1,500 net new employees during the year. Lastly, we will host our in-person Investor Day, the week of June 13th in Las Vegas, in conjunction with Snowflake Summit, our annual users conference.
If you are interested in attending, please email ir@snowflake.com. With that, operator, you can now open up the line for questions.
At this time, I would like to remind everyone, in order to ask a question, press star followed by the number one on your telephone keypad. Your first question comes from the line of Brad Zelnick with Deutsche Bank. Your line is open.
Great, thanks. It's actually Brad Zelnick for Deutsche Bank. Congrats on an amazing quarter and a strong finish to the year. Mike, I wanna drill down a little bit more into the platform enhancements that you talked about that resulted in optimization and consumption efficiency in the quarter. And you mentioned, I think it had a 10%-20% impact, and you called out the $97 million that I think you baked in that's going forward. To what extent does that compare to the expectations that maybe you had in your forecast? More importantly, how should we think about the slope of the curve and cadence of future improvements that clearly benefit the customer, but the impact that that then has on the model? I guess maybe the confidence that you have in calling out $97 million. Thanks.
Yeah, good question. First of all, as an example for Q4, there was a rollout of what we call our warehouse scheduling service. We only rolled that out in January for three weeks, and we saw a $2 million improvement or impact, an improvement for our customers using less, but doing the same number of queries because they're not, it's much more efficient when you're scheduling queries to run them. Rolling that out for next year, that is much bigger than what we were anticipating. The full year impact on that next year is quite significant. What we generally see is when we do these things, there's usually a lag of about six months when we start to see more workloads move to Snowflake.
There's other platform improvements that we're doing that we rolled out in a beta in Q in the end of the quarter, and it's starting to be rolled out now throughout the year. The gross is actually more like $160 million, but I do expect that will be offset by over $60 million in additional workloads coming from our customers. In terms of what were we expecting, we knew these were gonna come next year, and we never gave any guidance for next year yet. It's within what we were guiding. I just wanna remind people of these.
It's very helpful context, Mike. I mean, the growth that you're delivering at scale I think is unprecedented. Maybe a real quick follow-up for Frank as we contemplate the results and the guide for next year. Is the Streamlit acquisition, which congratulations on it by the way, any response to competitive changes in the market, or is this something that, you know, has been teed up and part of the vision for a while? Thanks.
All right. Hey, Brad, it's Frank. No, this is definitely, you know, part of a strategy focus that we've been talking about and making announcements on, you know, for the better part of last year, and that's the focus of driving, you know, workloads really from the developer to Snowflake. You know, we've been obviously, you know, super successful to drive it from the data engineering, data warehousing, data analytics side. But, you know, with the initiatives, you know, around Snowpark, all the programmability options, you know, for us to really address the, you know, the Python developer community, this is going to be a superb asset for, you know, for Snowflake.
We have to address workloads across the spectrum, and this is going to help us, you know, do that in places where we historically, you know, have not been as well represented, you know, as we've been in other areas. Yeah.
It's a great asset. Congrats on the deal, and thanks for taking my questions, guys.
You bet.
Your next question comes from the line of Mark Murphy with JPMorgan. Your line is open.
Yes, thank you very much. I'll add my congrats on just a very strong bookings quarter that you're reporting here, especially on the RPO line. I wanted to ask about the comment on the slower than normal return to consumption growth in January. Plenty of other software companies saw slower consumption over the holidays. I'm curious, did you get any sense of what occurred in January that might have driven that behavior, perhaps relating to Omicron or other factors? Have you seen that change in any direction so far in February?
Yeah. As I said, we did see kind of a little bit more of a holiday effect going into January, whether people were taking longer vacations, I don't know. We did see it return to more normal in January. You do see about 70% of our work is really driven by machines, the other 30% is humans. We can see that machine layer stays consistent on a daily basis, and it's the human interaction that changes. We did see a decrease in human interaction early in January, which leads us to believe people were taking vacations. As an example, last week we look at it on a daily basis was Presidents' Week and ski week for a number of people.
We see it decrease there as well too, but then we see a return in a week like this.
Okay, understood. Just as a quick follow-up, I think recently you've had a favorable spread where retention seems like it's giving you 70 points or more of revenue growth. But you've had the product revenue has been growing around 100%. Do you have any sense of how that relationship could end up playing out in fiscal year 2023, just given the dynamics with the platform improvements?
Oh, I don't even try to compare net retention with revenue growth rates. I will say definitely our net revenue retention will go down next year because of all these improvements. It will stay above 150, but it's not gonna stay in the 170s.
Understood. Thank you very much.
Your next question comes from the line of Gregg Moskowitz with Mizuho. Your line is open.
Okay. Thank you very much for taking my questions. Frank, you mentioned that as of February 1st, you implemented changes with respect to verticalizing your sales motion. Can you elaborate on that? It sounds like you're seeing real progress with respect to verticalization. Just trying to get a sense of how substantial these changes may be as you kind of go after that opportunity.
Yeah. First of all, this is not a reorientation of our entire selling motion. It's really the upper stratum in terms of our large account focus. We really replaced the geographical backbone with an industry equivalent of that because we don't think, you know, for large account, the geographical breakdown really adds anything. You know, we've been talking on this call probably, I think, for the last four quarters, you know, about how we are really in all aspects of our business, you know, bringing a much stronger industry aperture to everything we're doing. The sales organization has been working all of last year on making this transition happen. You know, by the time February 1 came around, you know, everybody was fully up to speed.
We're locked and loaded to let that go. You know, the broader context to industry orientation is that you know, our selling motions and really our whole posture towards the industry is really shifting from you know, from a workload you know, oriented you know, way of thinking to really you know, what are the use cases that the customer needs to address. I will tell you that in my almost three years here you know, initially, I mean, all the conversations were around you know, architecture and moving workloads from on-premise to the cloud and how our database migrations are. Today, nine out of ten conversations are industry specific you know, very, very industry specific.
Oftentimes, you know, not necessarily with IT types, but with business people and data science types. People are really trying to, you know, drive predictive insights into the business, you know, things that are becoming possible that have never been done before. The company, you know, really wants to evolve towards this posture in the marketplace. Doesn't mean that we're gonna walk away from workload transitions. That is bread and butter. We're gonna be doing that for forever, literally, because we're still in the very early stages of that transition as well. We think the industry posture is all about us assuming the customer's point of view rather than our own, and we think that's correct way to do things.
Super helpful. Thanks for that. Just as a follow-up, so obviously, having Java available on Snowpark is great. We think eventually getting Python to be GA is gonna become a big deal, and Streamlit clearly enhances your exposure to Python. What are your expectations of adoption of Snowpark over the next 12 months? How do you see this progressing?
I take that, Christian.
Yeah, sure. Hi, this is Christian. I don't know how to project as a percentage of the overall consumption, but if you just look at current adoption, Java is trending quite well. We see migrations from Spark, from Hadoop and other workloads. I can also share that for Python, right now we have way more customers requesting access to the preview than we can onboard currently. The interest is super high. They generate a lot of consumption. Trends are very positive.
All right. Terrific. Thank you.
Your next question comes from the line of Keith Weiss with Morgan Stanley. Your line is open.
Is in the guidance. Is there a significant revenue contribution and, is there any significant sort of operating margin lag that we could be aware of in the-
Keith, sorry.
Frank.
Keith, your first part of your question was cut off. We couldn't hear it. Could you start from the beginning and re-ask that?
I was just asking about the FY 2023 guidance. You mentioned that Streamlit was in the guide, but didn't give us much detail in terms of how it was in the guide. Is there a significant revenue contribution or operating margin impact that we should expect from the acquisition?
Yeah. There is about $25 million in expenses associated with Streamlit. There is no revenue. Streamlit has no rev or it's de minimis, it's less than $100,000. We won't be having a product ready on Streamlit until the end of the year, so we're not factoring in any revenue. It could come sooner.
Got it. When we think about the impacts from the platform improvements, obviously you're calling out the revenue impact. From the way that we look at the numbers and the net dollar expansion rate, I would assume that that's also gonna be a impact. Any way you could help us kinda understand what the impact on that's gonna be on a go-forward basis?
Yeah. Well, I did say earlier on one of the questions, the net revenue retention is definitely going to come down. We're not gonna guide to net revenue retention. It's hard to do. I'll just say it'll be above 150%. It's definitely gonna drop below 170%.
Got it. That's super helpful. Thank you, guys.
Your next question comes from the line of Kamil Mielczarek with William Blair. Your line is open.
Hi, thanks for taking my question, and congrats on another strong year. You've delivered very strong net expansion rates, impressively, I think accelerating off an already strong level this quarter. Can you provide some detail around some of the specific drivers? How should we think about the relative contribution among adoption of new workloads, more data just being loaded onto platforms for existing use cases and maybe expansion into newer departments within existing customers?
Well, you see the net expansion rate of 178% for the quarter. That is really driven by expansion, obviously, within existing customers, and it's a combination of new workloads or new divisions within companies. It's across the board. New use cases as well too in there. Can't give really much more color than that.
Snowball effect. That's helpful. Just to follow up on the customer count. Your net new customer growth, I think, was down slightly in the last two quarters. I realize that's a long-term expectation. It's for Fortune 500 and other $1 million customers to generate the majority of your revenue. I think 77% was the long-term target. How should we think about the pace of total customer growth going forward? Is it beginning to stabilize? Are we getting to a point where maybe you've landed a large portion of the Fortune 500 and the focus begins to shift more from landing new customers and more towards expanding within existing?
Yeah. To be honest, we don't focus on absolute number of customers. It's more on the quality of customers. As we've talked about before, Fortune 500 is not a great metric because it's too U.S.-centric. We're actually focused more on Global 2000. Doesn't mean we're not focused on Fortune 500. I will say Global 2000 excludes the public sector and large private enterprises. It's really going after quality large customers is what we're going after. You will see fluctuation in the number of new customers we land in the quarter, but that fluctuation tends to be from small customers. I just wanna remind you too, these sales cycles into these large customers, we don't find an opportunity in the quarter and close in a quarter for a new deal.
These are one, two, sometimes three-year sales cycles to break into these large organizations, and those are the ones that become the $10 million+ customers. As I said, we now have 184 paying us north of $1 million a year, and we're very pleased with that growth up from 148. We see based upon the ones that are just on the cusp of $1 million, that number will continue to increase.
Yeah, that's great. Thanks again, and congrats again.
Your next question comes from the line of Derrick Wood with Cowen. Your line is open.
Thanks. First question, Mike, just wanted to touch back on the seasonality and consumption. Can you just talk about how the consumption piece came in versus your expectations, and maybe compare that with how new bookings and sales productivity came in versus expectations?
You know, I would say the quarter actually came in pretty much where we were expecting, slightly off from consumption in January, but not a huge amount. I will say, and I called it out, we were surprised at an enhancement we rolled out, the profound impact of it. It was only out for a few weeks in January and had a $2 million impact. Other than that, we landed from a revenue standpoint where we were forecasting and guiding. What really surprised was the strength in bookings in the quarter. You saw we closed over $1.2 billion in contract value in the quarter, growing our RPO to $2.6 billion. That was well above what we were planning internally.
The other thing I want to call out too is we co-sold with the cloud vendors $1.2 billion in contract value for the year as well.
Great, helpful color. For Frank or Christian, I'm wondering how you're thinking about the opportunity around security. I guess as you look into the new year, I mean, how much demand are you seeing around, you know, customers wanting to build security data lakes or security analytics on your platform? Is there anything you guys may look to do to lean in more aggressively?
Yeah. We are going to make announcements on this topic later on this year. That has been raised a priority and focus, you know, quite a lot for Snowflake. It's one of the best add-on selling motions that we have in large account. You know, we think Snowflake is just an ideal platform for hosting and you know that type of a capability. You will see us lean into that opportunity a lot more going forward.
Thanks for taking my questions.
You bet.
Your next question comes from the line of DJ Hynes with Canaccord Genuity. Your line is open.
Hey, guys. Frank, a two-parter for you on the data sharing stuff. The customers that have embraced it have been quick, or is it typically the platform for a bit? The follow-up with that typically drive.
Well, your first question, you know, most of the time, and not all the time, but most of the time, you know, customers have other priorities in terms of transitioning their databases and their workloads, you know, before they get onto data sharing, if they weren't doing that before. But it's also, you know, quite possible that we have workloads that are driven by data sharing as a core premise. And obviously then it's something that is a starting point and not something that sort of comes, you know, several iterations later. So it all depends. Historically, our business has been, you know, very much a modernization, you know, play from existing workloads.
That's where you have to wait, you know, some time before, you know, people sort of get their sea legs under them, and they sort of move on to these opportunities. But that is starting to change. As we said in our prepared remarks, I mean, we now have 18% of our customers having at least one stable edge as part of their platform, and that was up from 13%, you know, last year. The Data Cloud is really happening, and that is with a rapidly growing, you know, customer base, you know, underneath it. Yeah, what was the second part of your question?
Just how much of an inflection that is in consumption?
Well, it hasn't been, you know, an extraordinary, you know, inflection in consumption in terms of data sharing, you know, driving consumption, you know, per se. You know, data sharing is a core underlying capability, you know, of an overall, you know, workload, you know, footprint. It's really important in that sense rather than, you know, sort of separating data sharing out as a specific workload driver. Yeah.
Yeah. Got it. Mike, a very quick follow-up for you. Of the $800 million for Streamlit, how much is cash?
It's roughly 80-20. 80% stock, 20% cash.
80% stock. Okay. Got it. Thank you.
Your next question comes from the line of Gregg Naklohvic with GS. Your line is open.
Hi, it's Kash here, guys. Thank you so much for taking my question. I'm curious to get your Frank, your best case scenario for Streamlit, the dream vision two or three years from now. What is Streamlit going to allow Snowflake to pursue in the machine learning data science realm that would consider this to be a success? Mike, a question for you. I know that you mentioned that you're passing along savings back to customers, but customers also coming back and doing more workloads with you guys. If you can just run through the rationale of why do you think renewal rates, net retention rates are gonna go below 150, because it's coming off of a very, very high base, and you've absolutely earned the goodwill and trust of your customers. Thank you so much.
I'll answer first, then I'm gonna turn it over to Christian, who is very passionate about Streamlit, and what it can do for us. In terms of your question on the enhancement we're doing, listen, we're running at 178% net revenue retention. These are extremely high numbers off such big numbers to begin with, those percentages. Just the law of numbers, as we have new customers that are coming into the pool that we blend. Remember, that looks back two years ago. A customer has to be on for two years. That number will come down. The efficiencies, we're talking 10%-15%, 20%. It depends upon the customer based upon the platform. That has to come down, that number.
As I said, it will remain above 150% for quite some time, but I do think it's gonna drop below 170% for the full year on average next year.
Okay. Christian Kleinerman here to comment on Streamlit. If you recall at Investor Day last June, we shared our vision
To help organizations of all sizes build applications, data applications, and data experiences on Snowflake. What we see with Streamlit is they're super easy to use framework powering all sorts of applications, both for internal consumption of data within companies, but also coming to our marketplace and helping entire businesses. Some of them industry vertical businesses, some of them horizontal experiences. At the end of the day, unlocking the power of data and creating new data experiences.
Your next question comes from the line of Tyler Radke with Citi. Your line is open.
Hey, thanks for taking the question. Mike, your long-term free cash flow guide at Analyst Day was for 15% at $10 billion of product revenue. It looks like you're guiding the 15% free cash flow margin for FY 2023. Maybe just give us a sense for what's driving that big outperformance and how you're able to achieve that so much sooner. Is it mainly the efficiencies that you've discovered over the last year? Just help us understand that.
Couple things. We're entering into larger customer relationships, and you can see, customers' consumption is picking up and which resulting in them renewing contracts early, which drives that free cash flow. I do fully expect, as I said on last call, that we will be revisiting our longer-term free cash flow and operating margin guidance. I do expect it will come up considerably. I told you guys before, I'm not going to give a number now. I want to remind people too, don't be surprised when there's a really big free cash flow number in Q1 because of how big our bookings were. Over the year, that 15% is the full year, and there is seasonality with Q1 and Q4 being the highest of the four quarters.
Got it. Maybe just on the quarter or you know as you recap this past year how did kind of the number of replacement deals you know the legacy on-prem data warehouse you know how fast did that number grow? Just kind of what are you seeing in the pipeline as well on the legacy replacements?
Well, most of our net new customers tend to be a replacement of some legacy. Some can be cloud gen one cloud products as well too, but most of the large Global 2000 tend to be on-premise replacements, and you can see that in our G2K adds, in our Fortune 500 adds. There is a lot of growth as well within existing customers, and that continues to be very strong for us as well.
Thank you.
Your next question comes from the line of Raimo Lenschow with Barclays. Your line is open.
Hey, thank you. Quick question. Two quick question, if I may squeeze it in. Mike, if you look at other vendors, if they have product improvements that actually saves their customer cost, they usually have like a sharing model of like, you know, the customer gains something and you gain something through maybe like price increases, et cetera. Is that something that over time could happen, or are you really happy to continue to give all the benefits back to customer? For Frank, just briefly, any update on the unstructured data opportunity? Because I remember that was a big focus for this year. Thank you.
Yeah. Our whole philosophy is any improvement we do will benefit the customer, but it benefits us long term too, because anything we do allows them to do more with the credits they bought. They pay a certain price per credit. They can run more queries per credit they buy. What happens is when customer sees their performance per credit, and it's trending, that is getting cheaper for them to run things, they realize they can do other things cheaper in Snowflake, and they move more data into us to run more queries. We have no intention on, for existing customers, increasing their pricing. What I will say is on new customers coming in, we will be very disciplined around discounting with new customers.
You know, on the topic, Raimo, on the unstructured data, that actually the uptake has been quite strong on that. You know, we were expecting it, and that's exactly what's been happening. I mean, there's some really interesting new opportunities where, you know, data models are looking for relationships between unstructured data types and other types of data types. Things that just weren't possible before that are now enabled by the platform. So we're driving this hard, and we have tremendous expectations for unstructured data in general and the potential, you know, for data science, innovation, and new data applications. You know, also in the context of the Streamlit acquisition. This is gonna get very interesting for us.
Okay, perfect. Thank you. Over.
Your next question comes from the line of Brent Bracelin with Piper Sandler. Your line is open.
Thank you, and good afternoon. Frank, I wanted to go back to the workload discussion. I think one of the things that stood out to us over the last quarter was just the number of enterprises turning to Snowflake for supply chain, customer support, sales enablement, even machine learning workloads. I get data warehouse migrations will be the bread and butter business, but how big of an opportunity do you see in expanding the Snowflake footprint into these departmental areas and how fast are those workloads, you know, shifting to Snowflake? Any color there would be helpful. Thanks.
Well, I think it's important for everybody on the call to understand that we are super early in this, you know, in terms of the total opportunity. You know, what people are going to attempt to do with data, that's because the technology is running out front, and it's enabling things that have never been done before. Now it's not like throwing a switch, and all of a sudden everything is blinking green. You know, we're in conversations, you know, almost every day now with customers that are trying to do, you know, predictive things with data that they've never done before.
A lot of the challenges they have is with skill sets that translates from their core business to the data side and the gaps that exist there to make that all happen. There's this very normal natural friction in the evolution of that that we're trying to learn how to do these things. You see that in the world of machine learning a lot. I mean, it gets talked about a ton, but it's actually incredibly hard to you know, to drive these benefits in a highly predictable manner. There's lots and lots of attempts at it. You know, people are not already on the first attempt seeing exactly what they were hoping for.
The march is inexorable in the sense that this is where it's all going. I really think that, you know, a lot of the bread and butter that we do today, which is these 24-hour cycles, you know, we're running large, highly scaled analytical batch processes, populating dashboards. When we come in in the morning, we get to see yesterday's data. That's all fine and good. But that's, you know, we're running these workloads really well now compared to what we were doing in the past. What is coming in terms of the potential is enormous. As I said, it is early days in terms of this entire opportunity.
Helpful color there. Just Mike, a follow-up on platform enhancements. As you think about the impact to the guide, how much of it is mostly the warehouse scheduling feature versus, you know, other, let's say, lower CPU pricing resources you're passing on to clients? Just trying to think through what you've baked in, and is it mostly just scheduling or other things as well?
Yeah. What I'd say from the gross impact, roughly 40% is coming from warehouse scheduling on a net basis, about 30%. The balance is coming from other software improvements and hardware improvements that we see happening.
Helpful color. Thank you.
Your next question comes from the line of Kirk Materne with Evercore ISI. Your line is open.
Oh, thanks very much. Yeah, Frank, I was wondering if you could just talk about the GSIs and the progress you're seeing there. I think, you know, Accenture hit a milestone, trained employees, you know, well, pretty recently. Just what can they do for you from just sort of a demand gen perspective in fiscal 2023? Then just Mike, on the platform improvements, can you just kinda conceptualize to us how you think about that from a return perspective? Obviously, it's a $100 million headwind, you know, this year. You know, I think you mentioned you start to see a pickup at six months later.
You know, how should we kind of think about sort of, you know, or at least how you think about it conceptually from, you know, the kind of benefit you get from delivering those improvements back to your customers? Thanks.
The way we look at it, the benefit is first of all, customers see an immediate price performance improvement. Our customers are always looking at price performance. When they compare our price performance versus running it, whether in another cloud or running it on-prem in their existing data warehouses, they make the move to move more things into us. As a reminder, we have landed hundreds of customers to do these big on-prem Teradata migrations. I think we've only completed or completely shut down a little over 30 of those. It's maybe in the mid-30s now. There's piles of other workloads that they plan on moving, and when customers see the price performance, they will accelerate the movement of those other workloads to us, and we have historically seen that.
As I said, I do anticipate that we will see some. As a reminder, we see the gross impact of about $162 million for the year, and we think we will make up about $65.5 million in revenue. A lot of that. There is a lag, and it depends on the customer. It could be a one-month lag, it could be a six-month lag before they realize that and move more workloads. Based upon what we're seeing, we think there'll be about $65 million coming back in to get to that net $96.7 million, if you wanna be precise what we're estimating.
On your question about SIs, you know, you mentioned Accenture in particular. You know, we're expecting much higher, you know, contribution and partnership, you know, with Accenture going forward. We've had, you know, outstanding relationships, you know, obviously with many others, you know, notably Deloitte. We also announced a relationship with KPMG. It is just the intersection, you know, with the large SIs in these large Global 2000 accounts is inevitable. You will see more and more of that business intersecting with Snowflake and those relationships becoming, you know, very large over time. Things that we've seen before in other companies absolutely going to happen for Snowflake as well.
Your next question comes from the line of Karl Keirstead with UBS. Your line is open.
Oh, thanks. Two questions, Mike, to start. Does the Q1 April product revenue guide of $388 million assume a more conservative view on usage ramps given what you flagged in early January? Or does it assume basically a return to normal activity seasonality?
Well, it includes about $10 million revenue hit because of these product enhancements that we see. It's based upon what we're seeing today, in terms of how customers are returning after vacations.
Okay. As a second question, if I could just press a little bit on the context to passing on these platform improvements. Companies normally don't willingly make changes that cut 5% out of their revenues. I'm curious, were you getting pushback from customers around price performance relative to alternative products, and you decided to try to alleviate that price pushback by making this change? Like, what's the broader context for doing this? Because it's very rare.
Yeah, I'm gonna let Christian talk from a product standpoint why he and others feel this is very, and including me, the right thing to do for our customers and pays off in the long term.
Yeah. Okay, hi, Karl . We've been doing this since the very beginning of Snowflake. We've always been focused on improving the performance of the system, and we are very cognizant that it improves the economics for our customers. The rationale behind it is that there is so much more data being created every day. The more the marginal cost and effort of getting value out of the data decreases, we know that there's a lot more value for companies to generate out of the data. We see it time and time again. The more we improve the economics of the platform, the more use cases come to Snowflake. We're looking at this with a very long-term view.
Yeah. Let me tell you one thing, Frank, you know, this is not philanthropy. We are very much viewing this as the that this stimulates demand. By the way, we can prove that to ourselves by going back years because we've done this over and over, and it does stimulate demand, but it doesn't do it in real time. You know, there is a lag involved in this process.
I will add, I think this is probably the biggest magnitude impact at one time in any platform improvements that we've done since I've been here.
Also the scale of the business.
Yeah, the scale of the business.
In recent years, that's true.
Yeah.
In prior years, we did similar big things.
Early on in the company, yes.
Got it. Okay. Thank you, all of you. That's helpful.
Your next question comes from the line of Phil Winslow with Credit Suisse. Your line is open. Your next question comes from the line of Brad Reback with Stifel. Your line is open.
Great. Thanks very much. Mike, I think earlier in the call you had mentioned about 30% of the workloads are machine to machine. Can you give us a sense of where that's been historically and where you think that can go to over time?
What I said was about 70% of the queries in the work are machine-
Scheduled
Scheduled. You don't need a human to go in and schedule. These are automated processes that happen because you wanna refresh queries every so often. About 30% is human-driven. That's been pretty consistent for quite some time. Haven't seen any change there.
Yeah, we also think we're projecting our workloads also under influence of, you know, Python becoming available and more developer-centric workloads coming our way, but, you know, which tends to be more interactive. If you balance that out with machine learning models that we believe are gonna be more scheduled in terms of, you know, generating predictive results, and so on. We think that breakdown might well hold over a period of time, but we obviously keep looking at that.
Got it. Sorry for getting that transposed. One other thing I hope I'm not transposing as well. I think you also said that there was $1.2 billion co-sold with the hyperscalers for the year. I think last quarter you talked about $500 million, which would obviously imply you added $700 million. That seems like
Right
a really big number.
Yes. It was a very. We sold in total for the quarter over $1.2 billion just for the quarter, and roughly $700 million was co-sold with the hyperscalers. I will say the vast majority of that is AWS.
Got it.
I would say zero was GCP, and the balance was Azure.
Perfect. Thanks very much.
Your next question comes from the line of Ari Terjanian with Cleveland Research. Your line is open.
Yeah. Thanks for taking the question, and congrats on the close of the year. I just want to double-click on international. Could you provide more color if the consumption trends you saw in terms of the holiday seasonality was consistent across geos? Then just more color on, you know, your plans for FY 2023 and the geographic expansion this year. Thank you.
Didn't really notice anything by geo in terms of differences. I will admit I didn't really dig into that, but I can't think of anything, or I would have heard something from someone. In terms of, you know, we continue to focus on international expansion. We think Europe is set to have a very good year this year. APJ, we've been investing a lot there. I mentioned we are opening new deployments. We're getting requests to open deployments. A new one in India, for instance. There's one in Brazil that we'll be opening this year. We're looking at another one in Asia. As well in Europe, there's another one or two that we'll be opening. The reason we're opening these is we're seeing the opportunity.
I do expect international over time will become a bigger portion of our revenue. It's just that our growth within the U.S. continues to be phenomenal, especially in our enterprise segment.
Right. Just one follow-up, if I may. Could you spell out what were the impact of platform enhancements, both gross and net, to FY 2022 product revenues?
Well, I just said about $2 million was Q4 for one of the enhancements we rolled out in January for about three weeks, that wasn't even to all of our customers. It's now rolled out fully. The other one we talked about at our Investor Day was the storage compression, which we did see a reduction in storage, bringing that down to about 10%. It ends up compute becomes a higher percent, and that helps our margins.
Got it. Thank you.
Ladies and gentlemen, there are no further questions. Thank you for your participation. This concludes today's conference call. You may now disconnect.