Globant S.A. (NYSE:GLOB) Q4 2025 Earnings Call Transcript February 26, 2026
Globant S.A. reports earnings inline with expectations. Reported EPS is $1.54 EPS, expectations were $1.54.
Arturo Langa: Good afternoon, and welcome to Globant’s Fourth Quarter 202 Earnings Conference Call. I am Arturo Langa, Investor Relations Officer at Globant. [Operator Instructions] Please note, this event is being recorded and streamed live on YouTube. By now, you should have received a copy of the earnings release. If you have not, a copy is available on our website, investors.globant.com. We will begin with remarks by our Chief Executive Officer, Martin Migoya; our Chief Technology Officer, Diego Tartara; and our Chief Financial Officer, Juan Urthiague, followed by a Q&A, where they will be joined by our Chief Revenue Officer, Fernando Matzkin. Before we begin, I would like to remind you that some of the comments on our call today may be deemed forward-looking statements.
This includes our business and financial outlook and the answers to some of your questions. Such statements are subject to the risks and uncertainties as described in the company’s earnings release and other filings with the SEC. Please note that we follow IFRS accounting rules in our financial statements. During our call today, we will report non-IFRS or adjusted measures, which is how we track performance internally and the easiest way to compare Globant to our peers in the industry. You will find a reconciliation of IFRS and non-IFRS measures at the end of the press release we published on our Investor Relations website announcing this quarter’s results. I will now turn the call over to Martin Migoya.

Martín Migoya: Hello, everyone, and welcome back. Globant has spent 20 years helping the world’s leading companies build and transform their technology, developing deep engineering capability, real industry expertise and long-term client partnerships along the way. That is and will always be our foundation. Over the past year, we have been adding a new layer on top of it. And what I want to share today is how that layer is already changing our trajectory. Enterprises are moving from AI experimentation to AI execution. After a period of significant investment with limited returns, our clients are now deciding with greater clarity. They understand AI’s potential, and they are seeking partners who can deliver real outcomes, not just pilots, but production-grade solutions built with knowledge of their industry, their systems and their business logic.
That is exactly what we built with our AI pods, running on top of our industry specialized AI studios. And that is why we believe Globant is the AI native technology solutions company. The partner enterprises are choosing to close the gap between AI investment and AI impact. We launched our AI Pods 9 months ago, and it is already proving real success with our customers. In 2025, we achieved both our highest revenue and strongest free cash flow generation ever while simultaneously restructuring our delivery organization and transforming our delivery model. In Q4, we produced the highest quarterly bookings of the year, up 32.4% year-over-year. Our pipeline remains robust at $3.4 billion. I want to use this call to walk you through our results, our strategy and the specific metrics that demonstrate why we are convinced about the path ahead.
The IT professional services industry faces a structural shift. Technology capital is flowing overwhelmingly toward AI infrastructure, with Gartner projecting IT services to grow just 4.4% in 2026, less than half the rate of overall IT spending. However, the big 4 hyperscalers are approaching $700 billion in combined 2026 CapEx, nearly triple the level of just 2 years ago. The scale of that investment is extraordinary, but it also created a massive implementation gap. In 2025, MIT research showed that most enterprise AI pilots did not deliver measurable P&L impact yet and a significant number of companies paused or restructured their AI initiatives during last year. Meanwhile, technical debt across the Forbes Global 2000 stands at $1.5 trillion to $2 trillion according to HFS Research.
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And Forrester reports U.S. customer experience quality at an all-time low after 4 consecutive years of decline. What this tells us is not that AI is failing, it is that the industry is entering its execution phase. After an 18-month cycle of experimentation, enterprises now understand what AI can do for their business and are actively seeking the capability to implement it at scale. This shift from exploration to execution is currently driving our record bookings. We are living through a generational transition. Think about what happened when AWS launched. It did not just offer cheaper servers, it gave birth to an entirely new industry. Cloud-native companies, modern SaaS, the entire start-up ecosystem of the last 15 years, none of that existed before AWS made elastic accessible infrastructure possible.
That is the moment we are at now in technology services. AI native delivery, intelligent agents supervised by domain experts operating on a token subscription model is not a better way to do what we already do. It is the foundation of an industry that does not yet fully exist. Globant has been the first to define what AI native technology services look like, and 2026 is the year the market begins to validate that bet. Our core business, deep software engineering, digital transformation and domain expertise built over 2 decades is not going anywhere. Enterprises will continue to need that capability for many years to come, and we will continue to grow it. What we are doing now is adding a new and powerful layer on top of that foundation, an AI native offering that scales with the AI opportunity itself.
For years, a company’s digital products were its moat, building differentiated software required hundreds of top engineers and hundreds of millions of dollars. AI has made it faster and more accessible to build. And that is actually a demand accelerant for the entire industry. When every company can build software more efficiently, differentiation no longer comes from whether you can build. It comes from how much you build, how fast you iterate and how continuously you evolve. We are entering an era of dramatically more software creation and dramatically faster competitive cycles. Our deep engineering expertise and 2 decades of domain knowledge now supercharged by AI, position us perfectly to meet that demand. Against that backdrop, we see 4 clear and growing avenues of demand.
First, Agentic Workflow Orchestration. Enterprises need autonomous AI agents coordinated across complex systems, not point solutions, but end-to-end workflows that actually move business processes forward. Second, core modernization at AI speed. The Global 2000 carries $1.5 trillion to $2 trillion in accumulated technical debt, a massive anchor on innovation. AI native delivery allows us to attack this backlog at a pace previously thought impossible, enabling the enterprise agility our clients need to compete and win. Third, custom software reclaiming ground from SaaS. For years, SaaS was the default answer for enterprise software needs. AI native delivery is now expanding the range of what enterprises can build economically, making highly personalized software viable for use cases that were previously only practical with off-the-shelf platforms.
This is not about replacing SaaS. It is about enterprises having more options, more control over their data, their workflows and their competitive differentiation. SaaS and custom software are increasingly complementary, and we are uniquely positioned to deliver both. Fourth, AI governance and corporate sovereignty. As enterprises deploy agents from multiple vendors across departments, data scatters and control erodes. They need a trusted orchestration partner to govern it all and keep every interaction under their control. Our partnerships with NVIDIA, OpenAI, AWS, Salesforce, SAP, Oracle, Microsoft, Google, Adobe and others are central to this strategy. We are the AI native orchestration layer that makes it work for our clients. Our AI pods are AI-powered service units specialized by task and industry.
AI pod software creates and evolves technology. AI agent workflows supervised by Globant experts produce working software artifacts on a token subscription model. AIPodOps automates business processes in production with institutional knowledge compounding with every token consumed. The customer owns everything, no seats, only usage. Unlike traditional models, our AI Pods operate on a subscription-based capacity model. Clients subscribe to a dedicated tier of orchestrated output with a defined token consumption cap. The delivery engine powering both is Globant Enterprise AI, our proprietary platform with 4 interconnected hubs, the enterprise hub connecting securely to all corporate systems, the AI hub routing intelligently across 140-plus LLMs while preserving full data sovereignty, the agent hub, where we build and publish industry-specific agents encoding 20 years of domain expertise and the AI Pods hub where clients subscribe and scale.
What I want to be explicit about is that this platform did not appear overnight. We have been investing in Globant Enterprise AI for years, building real product, real orchestration infrastructure, real security and compliance architecture. That investment is embedded in our operating expenses and reflected in our current EBIT margin. In other words, the margin profile you see today already carries the cost of building a proprietary AI platform. 12 months ago, AI Pods revenue was 0. In 2025, we have reached an exit rate ARR of $20.6 million, with gross margins between 45% and 60% compared to our blended gross margin of 38%. This is not an experiment. This is a business. For 2026, we are targeting between $60 million and $100 million in AI Pods exit rate ARR.
On top of that, we expect that margin profile to improve further as the subscription model scales and the cost per token continues to decline. This represents a fundamental shift in our structural profitability DNA. As AI pods scale as a share of revenue, they are expected to expand our overall margin profile. Our AI Pods pipeline reached $283 million in Q4, up 34% over Q3 and now represents 8% of the total pipeline versus just 3% in Q2. Over 60 AI Pods operate across clients globally with 24 new subscription offerings closed last quarter alone. Several of our top 10 clients have completed rigorous security and procurement approvals and are actively running AI pods on the platform today. The pipeline is converting. The revenue is flowing, and we are just getting started.
Based on the record bookings we are reporting today, the accelerating AI Pods adoption across our client base and the improving pipeline conversion trends, we have a clear line of sight to returning to positive year-over-year organic revenue growth by mid-2026. This is not a hope. It is supported by the bookings we have already signed and the pipeline that is converting. Our 100 squared accounts drove 73% of total bookings this quarter, a clear reflection of the market shift toward high-value, long-term transformations. Underlying these record bookings is our reorganization around AI studios by industry. The record bookings we are reporting today are a direct reflection of that organizational transformation we did last year. Several of our top clients have already moved past the pilot phase and are scaling AI Pods across their entire operations.
Let me share a few examples. We are working with Employbridge, an Apollo-backed portfolio company, driving AI-led transformation through our AI Pod subscription model. After a successful pilot phase, Employbridge decided for AI Pods as their core operating layer, accelerating delivery and driving rapid adoption across the business. We are also working with Banco Galicia, one of Latin America’s most prominent banks. After the pilot phase with our AI Pods, they performed an assessment to gauge the efficiency of the model among other vendors and similar teams. Our AI Pods ranked first in nearly every criterion, leading the institution to move to the decision to move to a scaled phase with YPF, Argentina’s century-old state oil company. With our human-supervised AI agents, we created a resource orchestration platform to help YPF better coordinate their complex supply chain, reaching over 5,000 providers.
Our solution has already helped them reduce the requirement to contract process cycle by 30% to 40% as well as boost the productivity of their supply buyers by up to 50%. Through the use of AI on Globant’s orchestrated platform, we are helping them with inventory optimization, enabling YPF’s managers to obtain the best possible products for the task at hand before ordering new inventory. We have a long-standing relationship with FIFA, helping them enrich their fan engagement channels in the digital age. Through the deployment of AI Pods, we were able to move beyond traditional consulting services and achieve a major financial milestone for the organization, reducing costs by 20% without compromising the velocity or quality of our engineering output.
Our initiative with LaLiga demonstrates how AI Pods rapidly transform an entire ecosystem. In just 3 months, we moved from concept to execution, deploying AI agents across critical functions like budget preparation, contract analysis and audience data. The result is a massive leap in institutional productivity. By moving from traditional services to AI native solutions, we are enabling LaLiga to shift new functionality at a speed previously deemed impossible. We also applied our AI Pods model to our long-standing partnership with Santander to power their new digital payment platform, Santander Pay. By deploying a specialized product definition AI agent within the pod, we cut the projected time for the app’s product definition in half. This AI native approach drove a 50% increase in the client team’s overall productivity.
In summary, it clearly demonstrated how we can accelerate the software development life cycle for one of the world’s leading financial institutions. The professional services industry is being restructured right now. The companies that own the orchestration, the domain expertise and the talent to supervise AI at scale will define what comes next. We will be relentless in delivering value for our clients, our partners and our shareholders. We will be disciplined in how we invest, and we are determined to build what we believe is the defining AI-native technology services company of the next decade. Globant has spent 20 years building the foundation for this moment. We have the platform, we have the people, we have the offering. And with that, I’ll hand it over to Diego Tartara, our CTO.
Thank you very much.
Diego Tartara: Thank you, Martin. Hello, everyone. It’s great to be here. Following Martin perspective for the industry, we keep on firmly executing on our own reinvention and those of our clients, listening to customers, helping them understand their gaps and curating tailored solutions that create real business value. This goes beyond cost savings and efficiencies and into strategic areas such as increasing market share or improving customer satisfaction. To do this, Globant has overhauled our delivery model to ensure that the quality of our delivery is both technology-focused and client-centric. The teams that previously executed under the delivery and operational areas have now been brought under the technology umbrella.
This way, our teams operate without siloed priorities and have more cohesion between offering solution quality and delivering results on time. The result has been tech-powered solutions for our clients that have a stronger operational backing. I’d like to share a few examples with you. We are working with a leading bank in North America that is launching a strategic enterprise-level modernization of its credit and debit card platform, moving from Gen 2 to Gen 3 accounts on AWS. Globant has been selected as the strategic partner to lead this migration, delivering a next-generation cloud blueprint that elevates performance, accelerates delivery and positions this line of business for continuous innovation at scale. This project showcases our strength in helping financial institutions that are already in the cloud and at the forefront of innovation to continue pioneering the industry.
We have also been working with Trafilea, a global e-commerce group that builds and scales direct-to-consumer brands needed to rapidly migrate new client stores to their Trafilea platform. We built an AI-powered solution that automates the entire process, resulting in a 40x faster migration. This not only saved Trafilea significant time and resources, but also enabled faster onboarding of new customers. In the pharmaceutical industry, we are working with PharmaMar, world leader in the discovery, development and commercialization of marine-derived anticancer drugs to accelerate oncology research with AI. Through Globant Enterprise AI, together, we created a multi-agent AI system that delivers more than 90% accuracy in complex data retrieval and reduces time to insights up to 15-fold, helping scientists select high potential drug candidates for clinical development in a fraction of the time previously required.
This intelligent system integrates information from internal databases, scientific publications and regulators such as the FDA and EMA, allowing PharmaMar’s teams to identify promising treatment combinations and make more informed, faster decisions. We also partnered with TOURISE to develop the foundations of the world’s first universal Agentic protocol for tourism. AWS, Salesforce, Amadeus, Red Sea Global and Riyadh Air, among others, are also part of the initiative. We presented it at Davos in Switzerland to over 30 global CEOs, and it is gaining strong traction as the standard for how AI delivers seamless, personalized traveler experiences at scale. GUT had a landmark 2025. The agency closed the year with breakthrough campaigns for some of the world’s most high-profile brands, including a fully integrated 360-degree campaign, Renaissance of Snacking that took over the Las Vegas Sphere and launched Cheetos and Doritos Simply NKD product line.
GUT is a genuine competitive differentiator, and its creative momentum continues to grow. Strengthening our partnerships with leading AI model developers, enterprise platforms and hyperscalers remains a key priority. Globant continues to present its strategic partnership with OpenAI to top clients in its key markets. Weeks ago, we hosted their first multi-industry event in Spain to discuss opportunities with over 60 current and potential clients in that region. In December, AWS granted us competency certifications in both financial services and media and entertainment, further solidifying the autonomy and quality of solutions of our AI studios. We also received the SAP Excellence Award 2025 for delivery quality in Latin America, thereby becoming the most certified SAP partner in the region.
Our Salesforce ecosystem capabilities also expanded significantly reaching expert level implementation distinctions across MuleSoft Anypoint, Data Cloud and Agentforce, along with top-tier partnership status across multiple Salesforce clouds. Our teams will take the stage at the NVIDIA GTC in March to share how LaLiga is transforming its business through the most ambitious AI program in global sport using Agentic AI to build connected intelligence across operations, competition management, content, marketing, sporting performance, broadcast and fan engagement. In such a disruptive year, we considered it especially important to share our perspective with the global business community. In Q4, we published industry reports on retail, games and our annual tech trends outlook.
You can download all of them at reports.globant.com. While AI continues to dominate many conversations, the real differentiator in 2026 will be execution. Companies that want to remain relevant must accelerate their transformation journeys. Over the past year, we’ve evolved Globant to be the partner of choice for organizations ready to act and set the pace for the next decade. Thank you very much.
Juan Urthiague: Hello, and good afternoon, everyone. I am pleased to discuss our fourth quarter results. We are encouraged by the stabilization of our top line performance and a shift toward more optimistic client sentiment, which represents a meaningful improvement over the conversations we were having 9 months ago. We closed the year with a solid quarter in terms of operational discipline with revenues, operating margin and free cash flow metrics above our initial estimates. In the fourth quarter, our revenue stood at $612.5 million, coming in above our guidance of $605 million. This represents a 4.7% year-over-year decline, including a positive FX tailwind of 180 basis points. Now let’s turn to profitability. Our adjusted gross profit margin for the quarter was 37.6%.
Gross margins were slightly impacted by the USD weakness relative to LatAm currencies and to a lesser extent, by statutory cost increases in 2 of our main delivery centers, Colombia and India. However, our adjusted operating margin remained at 15.5% for the quarter, flat sequentially. We successfully optimized our delivery pyramid and tightly managed our SG&A, allowing us to protect the bottom line while we work on accelerating our growth. The effective tax rate for the quarter stood at 23.5%, and our adjusted net income for the quarter was $68.9 million, representing an adjusted net income margin of 11.3%. Adjusted diluted EPS was $1.54, consistent with our profitability targets. I am particularly proud of our cash generation mechanics this quarter.
During the fourth quarter, we generated $152.8 million of free cash flow, marking the highest quarterly figure in our company’s history and achieving a free cash flow to adjusted net income ratio of 221.6% for the fourth quarter or 355.3% on an IFRS basis. On a full year basis, free cash flow reached a record $211.7 million, translating to 76.6% of adjusted net income and 203.6% on an IFRS basis. During the fourth quarter, we invested $50 million to repurchase shares as per the plan announced in October 2025. We plan to continue executing on the share repurchase program. A significant improvement in our days sales outstanding, combined with working capital and CapEx efficiencies helped drive an improvement in our liquidity. We ended the year with $250.3 million in cash and Short-term investments, an increase of nearly $83.3 million sequentially.
With a modest total net debt position of $116.4 million, our balance sheet remains strong, providing us with the flexibility to continue our disciplined capital allocation strategy, including our share repurchase program. Now let’s move to our outlook. Let’s start with our 2026 full year guidance. Based on current market conditions, we are providing a revenue range of $2.460 billion to $2.510 billion, implying 0.2% to 2.2% year-over-year revenue growth with approximately 100 basis points of FX tailwind. We have set the lower end of our range as a prudent baseline. The upper end reflects the conversion trends we are already seeing in our pipeline and the accelerating adoption of AI Pods across our client base. In terms of profitability, we are expecting an adjusted operating margin to be between 14% and 15%.
This range includes the impacts of USD weakness and statutory cost increases in Colombia and India. We view the lower end as a stress test scenario as it assumes a further appreciation of local currencies beyond today’s spot rates. The upper end contemplates a more positive currency environment and the benefits of our ongoing efforts in SG&A dilution and increased utilization. We continue to prioritize our operational discipline to offset these headwinds and drive toward the higher end of our margin target. The 2026 IFRS effective income tax rate is expected to be in the 21% to 23% range. Finally, we are guiding an adjusted diluted EPS of $6.10 to $6.50, assuming an average of 44.2 million diluted shares. The lower end incorporates the conservative margin assumptions I mentioned earlier, specifically the potential for continued USD weakness.
At the same time, the upper end reflects the operating leverage we expect as we scale. For Q1 2026, we expect revenues in the range of $598 million to $604 million. This is an improvement relative to prior years, where the Q1 decline was more significant. The Q1 year-over-year guidance implies at the midpoint, a 300 basis points improvement relative to the Q4 year-over-year performance. For Q1, we expect our adjusted operating margins to be between 14% and 15%. Gross margins will be slightly impacted by the weakness of the USD plus certain statutory cost increases in Colombia and India, as mentioned before. The IFRS effective income tax rate is expected to be in the 22% to 24% range, and adjusted diluted EPS for the first quarter is expected to be between $1.44 to $1.54, assuming an average of 43.7 million diluted shares.
To conclude, 2025 was a year of consolidation and evolution. We have diversified our revenue streams, shifted our go-to-market, streamlined our operations and strengthened our financial foundation. We enter 2026 with a healthy pipeline, a more efficient delivery model, which embeds AI in all our projects and the financial strength to capture the opportunities ahead. Thank you for your continued support.
Arturo Langa: [Operator Instructions] We’ll take the first question from the line of Bryan Bergin from TD Cowen.
Bryan Bergin: So 2 questions. I’ll ask them both upfront here. First, just a growth clarification for the year on the upper end. I think you mentioned it assumes a solid pod demand trend that you’ve been seeing in 4Q. But does it also require some level of macro or broader demand improvement versus it being like the same macro backdrop? And then my second question is on the pod model on your GenAI solutions. When we think about the clients that are utilizing these pods, is it pieces of work, broader engagements? Can you kind of just talk about where it’s being used specifically as well as then the net impact from like a transition from old to new, if you can kind of get us there.
Juan Urthiague: Thank you, Bryan. So as for the first part of the question, the upper end of the guidance assumes that we will continue to perform very well with our pods plus some improvement in the overall market. The midpoint is the most likely scenario as usual, where we see basically more or less more of the same. I mean, no big changes on the macro, no changes, no big changes on the business overall. And that’s how we build the guidance for the year in terms of revenues. As for the second part, I will let the team here.
Martín Migoya: Yes. The — what we are seeing on our 7 out of our 10 top customers, we’re seeing that people are loving it. And when I say loving it is that people are really looking to change the model from hours or other types of engagement into this kind of output model in which, of course, we charge the tokens, but always, there’s a business result attached to those things. So what is happening is that sometimes we’re transitioning that work from our current kind of engagement to this new kind of engagement. In some of our customers, there are some small pilots that are starting to happen. In some others, we’re going now from pilots into scale without any kind of ask in the middle because the results are really amazing, as I laid out on the examples I provided.
So that is kind of changing the whole dynamic around the future of the company, right? Now we are able to not just scale our teams with new people, but now we can also be connected to everything that is happening on the AI space in a direct way. There’s a new market that we are creating, which is called the AI native technology services companies. And those AI native technology services companies must find a way to deliver their services, having agents that repeat certain processes that ensure that what is produced is enterprise class with the right security, with the right kind of characteristics for what they need to be produced and then humans supervising those assets that are being created. And that transition is being 12 months ago, indeed, 9 months ago, this product didn’t exist.
And now we are in a situation that we have in 2025, more than $20 million in ARR. And now we are scaling big customers like the one I mentioned, like FIFA, like Santander, like LaLiga, like Employbridge and many others. So I feel that change is very healthy. It positions us in a different place. And of course, everything is mounted on top of what we already have, more than 800 relationships with top-notch corporations, 28,000 people that are ready to supervise all kind of products that we can produce those agents, the right technology platform to be able to deliver those services and a commercial model, which is absolutely different from anything that we have seen before. And the best thing is not just a prediction, but also a real business.
So we are extremely happy with that. I don’t know if that answers your question.
Bryan Bergin: Well, I guess it partly did. The aspect I’m trying to get at is you mentioned certainly, the gross margin is very high relative to what your historical is, right, in these pod structures. But I’m trying to think about the revenue transition. So if you start from scratch, great in an engagement. But if you start on a client that had an existing engagement, what is that revenue? Like you’re getting more productive. Is there a netting impact there on the revenue?
Martín Migoya: No. I’m absolutely happy with exchanging the revenue. I mean we are kind of getting the teams that we had in that customer and transforming that into AI Pods with a very different revenue proposition and a different revenue value proposition. So it’s a transition that is happening slowly, but it’s happening. And sometimes there are new customers. Sometimes there are customers that are working with us on a fixed price that we are delivering now in this new way. So that transition is starting to happen, and we expect that transition to gain momentum as the year progresses.
Juan Urthiague: Yes. And in certain customers, Bryan, what you’re going to get is that this additional productivity that we have can translate into helping them to reduce all the technical debt that you typically find in organizations. In other cases, it may be in a specific project that you are able to maybe to price in a way that is more cost efficient. So there’s going to be a lot of cases, right? But the common factor here is that a lot of the technical debt that many of our customers have, now we can be more productive and we can offer them to do basically part of that additional work with our AI as well.
Arturo Langa: The next question comes from the line of Maggie Nolan from William Blair.
Margaret Nolan: I’m hoping that you could comment on your expectations for Latin America in 2026, just particularly given some of the recent uncertainty that’s resurfaced related to tariffs.
Juan Urthiague: Sure. So Latin America, as you remember, at the beginning of ’25, we faced some issues and the region for a few quarters was showing negative growth. But then towards the second half of the year, we started to recover, and we actually ended up in a very healthy manner, being Latin America, the fastest region for the quarter. There are different — as you pointed out, there are different situations in different countries. Argentina and Chile, which are 2 of our main operations are doing very well. Brazil, it’s okay. We are basically performing in line with our expectations. And now, of course, we need to see what’s going to happen in Mexico, which is a little bit of an unknown at this point. But the main countries are performing well.
I think that the recovery that we achieved in the second part of the year, when we look at which are the customers driving that, most of them are in Argentina. So we don’t see — we are not — we don’t see any headwind coming from Latin America.
Margaret Nolan: Okay. Great. And then you sounded pretty optimistic about converting the pipeline as well, but I also caught in the prepared remarks that maybe you’re expecting clients to look for larger scale or longer duration projects, which I would imagine would kind of change the pace of pipeline conversion and would change the ramp-up of revenue over time. So can you help us understand how that’s reflected in the guidance and maybe if it’s different from historic?
Fernando Matzkin: Yes, Maggie. So what we are seeing is shorter sales cycles in smaller deals. And the bigger deals still lagging just a little bit behind slower than we would like to in terms of closing and ramping up. But leveraging the amazing quarter we had in — the amazing quarter we had Q4 and also Q3, we’re expecting to start ramping up onboarding and converting to revenue very quickly in Q2 and in H2 even. So it’s true that clients are cautious, are taking time to make decision when it comes to very large investments. But the robustness of the pipeline is still there. The quality of the deals is very solid. The [ Henry Square ] are performing very, very well, where the vast majority of the bookings are coming from, like Martin said, 73% in Q4. So I’m pretty confident that this combination will allow us to move forward in a very confident way.
Arturo Langa: The next question comes from the line of Puneet Jain from JPMorgan.
Puneet Jain: So with all the news flow over the last 1 or 2 months around evolution of Agentic AI, what does that mean for IT services spend? Like Martin, you mentioned that it’s time for some of those AI investments to move into execution. Are you seeing like increased urgency among your clients to embrace Agentic AI given like all the news flow over the last 1 or 2 months?
Martín Migoya: Yes. In the last few months, what we have seen is that companies are moving into action in that space. The avenues are how can I accelerate my technical depth? How can I replace some not very deep Software-as-a-Service solutions. How can I automate my processes using AI? How can I replace workflows of agentic AI processes that I had before. Of course, they must be supervised by humans. And I believe those 3 avenues and the fourth avenue is that how can I improve my customer experience? That research really bumped me when I read it about the idea of consumer happiness. Yes, consumer happiness about how interfaces and experiences are evolving is falling in the last 4 years in a row. So there’s a big technical depth of $1.5 trillion to $2 trillion, but also there’s a big consumer experience depth.
So another avenue of demand is saying, okay, how can I update all these interfaces to the next generation of interfaces. So all these avenues are creating like a lot of demand for AI. I believe that the way to deliver those next-generation services, those AI native services must be absolutely different from what we did in the past. And imagine that we have each of these AI Pods, Puneet, are like a recipe or like a set of instructions like a process that we have been refining for years and years. It has different steps to create enterprise-ready security-ready types of solutions. And what we are producing using those tools is really much more scalable than before and really much faster than before. So customers are seeing that. Now if you just threw AI tools to people, you don’t get those results.
And that’s why it’s so important to stress the point that this new industry is the way to create — is the way to create the savings that you are expecting or if you don’t want savings, is the way to create the productivity that you’re expecting from these AI teams. So that’s why I believe that the AI pods are really catching up. It’s a pretty simple way of understanding how to make those savings real as opposed to just keep on throwing licenses of AI tools to people to use them. I’m not really sure that they will use them in the correct way. And again, it’s much more different to orchestrate and to supervise a set of agents producing software, and that’s real productivity than just throwing AI tools to people. It’s an order of magnitude of difference between the 2 things.
And this is exactly what we are doing on our AI pods. So yes, I’m seeing momentum and that will keep on growing. That will keep on growing.
Puneet Jain: And then all this spending on AI, whether it’s for core modernization, consumer experience, AI Pods, do you think like it will represent like incremental spending on IT services? Or will this — those budgets will stem from cutting elsewhere other parts of discretionary spend?
Martín Migoya: No. Look, I mean, I think humanity will create 100x more software than before period. And that is only expansionary for us. So I don’t see that this will — oh, well, now we are happy with this small increment on the productivity and the small increment on the functionality of our product. You hear and you listen, companies delivering much faster functionality than before live. I read many examples during the last few weeks. So I believe that this is something that it will only keep on growing. And the more you can do, the more you consume, and that’s a historical trend, right? In every single — so if we can produce more software faster, we will use more software. And we will expect more functionality, and we will expect more customers to be happy.
So it’s not a trend. I mean, sometimes when I see analysts and when I see reports and when I read to reports, I see that there’s a kind of a limited amount of scope. And what I’m trying to — the message I’m trying to convey to you is that there’s no limited amount of scope just the technical depth is another industry of our size, just the technical depth, right? If you add on top of that, the consumer experience depth, all the new — there’s no way that it will be the same amount of software as before. It will be 100x more software. So that will be translated into better solutions with more platforms, with more AI Pods with a stronger pipeline, well, all these things are building up. In my speech, what I said is 4 years, we have received — sorry, for almost 2, 3 years now, the vast majority of the investment has gone into AI infrastructure that don’t necessarily translate into demand on the professional service space.
Before that same investment, we’re going into better cloud that was yielding better Software as a Service, more implementation services, but that cycle now needs to come back. And that’s why I made the point on the technical depth on this consumer experience depth because at some point, those things need to catch up. Otherwise, the consumer experience index will keep on going down for years and years and years, and doesn’t make any sense. In the moment we can have the better and the best experience for our customers, we’re having a decline customer satisfaction for interactions with companies. How can we explain that? So one way or another, companies has been distracted investing on AI, throwing AI to people, now is the time to make it — to get it serious.
Impossible more color, my friend.
Arturo Langa: The next question comes from the line of Bryan Keane from Citi.
Bryan Keane: I guess just thinking high level, Globant has always been a double-digit grower, organic grower. And this year was kind of a transition year, grew 2% for the year and obviously down 5% for the fourth quarter. What can you point to like specifically happened this year that might not be recurring in years to come? Was it just certain client consolidation? Was it any AI pricing pressure that was priced into the model? Like what exactly is the difference that happened this year that necessarily won’t recur as we go forward?
Martín Migoya: You mean this year or 2025, right?
Bryan Keane: Yes, 2025 versus, yes, going forward.
Martín Migoya: Yes. I think 2025 was a year of uncertainty in general. Companies retracted budgets in many cases. I think it was a year in which macro uncertainties were extremely hard to overcome for many of our customers, and we suffered that. I think that right now, the situation is a little bit more clean in that aspect. So that increased my expectations of having a more normal year. That kind of compounding downwards from the revenue last year, we bottomed on that revenue, and we expect to come back to growth by the year-over-year, by the half of this year. So the exit rate will come back to a pretty decent level of growth as we approach the end of this year. So what you see on the year-over-year is kind of, okay, it was a year of reaccommodation, restructuring, customer uncertainty, so on and so forth.
The whole industry growing slower, which is kind of a killer. And now we are catching up and we are starting to grow again. And towards the end of the year, the exit rate will be much healthier than what you are seeing now. A note on the year-over-year that you are seeing, this already represents something that is stationary, right, that has to do with the moment of the year. And it represents a huge improvement from what we did last year at the same time. I don’t know if you noticed that or Juan.
Juan Urthiague: Martin is referring to the first quarter compared to the first quarter of last year. So the beginning of this year is definitely better than the prior year, but the cadence of the quarter last year is somehow impacting the growth rate for 2026. When you look at 2026 exit rates, they are more like mid-single digit. And if we keep on compounding, that should put us in a better place for ’27. Now of course, there has been an industry situation. I mean, if you look at the vast majority of the players, they are all between 3%, 4%, 5%. So there has been less growth in the sector after massive investments in COVID times and around that time. There is a little bit of getting — going past that period of massive investments.
But the needs are there. The pipeline shows that customers have been accumulating debt, technical debt, and that needs to start converting at some point. Of course, a better macro, a solid U.S. economy should help eventually. I think that we are coming out of 2 years of a lot of uncertainty globally, and that has not helped. But all in all, in summary, I think that the fourth quarter shows a bottom in terms of year-over-year numbers. Q1 already shows a better performance relative to Q4, and the expectation is for that to continue throughout the year.
Bryan Keane: Yes. My quick follow-up, Juan, is what do we — how do we model out headcount growth and revenue per head for this year? And does that model change at all as we get more embracing more of the AI Pods?
Juan Urthiague: Yes, definitely, yes. We are seeing that we can do slightly higher numbers, we can continue to grow our revenue per head. With the same or even less headcount, the AI Pod model by definition, requires less people. It’s AI Pods, which are agents supervised by some few people. So there is less need for talent. So I think that not just for Globant, but in general, the sector will start to change a little bit that trajectory of headcount and revenue that we have seen in the past 20 years. Definitely, the more we are able to penetrate our customers with AI Pods, the more the mix of AI Pods relative to the rest of the business increases, that should be a positive for revenue per head and also for margins.
Arturo Langa: The next question comes from the line of Arvind Ramani from Trust Securities. It appears that there is an issue on the line of Arvind, so we’ll jump to the next question. The next question comes from the line of Jim Schneider from Goldman Sachs.
James Schneider: I was wondering if you could maybe address on the AI Pods business, the path to get to the upper end of the range on the $100 million in run rate ARR in that business. What is required for you to get there? Do you — how many more bookings do you need to put in? How much is supported by your existing pipeline of AI Pods business? And I guess maybe you just kind of talk about the broad outlook or your confidence of kind of getting to the high end of that range.
Martín Migoya: Great question. Thank you, Jim. The higher part of that range could be achieved with not many big customers moving into that model. But let’s see. That’s why we are always being cautious here. We are extremely excited about the progress of that. Now we’re seeing engagements of $20 million, $18 million, $15 million being transitioned into this kind of engagement, which is extremely encouraging for us. So we expect to achieve those numbers. But I don’t want to be — I mean, it’s the first time we’re guiding them. I don’t expect to guide those numbers every quarter neither, but I’m trying to be moderate here. So — but I’m quite optimistic about the possibilities of reaching to that top line — top guidance that we did at the end of 2026.
Fernando Matzkin: If I can add to Martin’s, the behavior of the pipeline when it comes to AI Pods is very encouraging. We’re seeing a positive trend and a very accelerated growth. So — and on top of that, the openness of our top customers to start piloting, right, piloting and to start scaling up. When you review the list of clients that are starting to ramp up in this new technology, it’s really encouraging. So we are very confident and we trust that we are going to be very close to the range that we guided in terms of AI Pods, yes.
James Schneider: That’s helpful color. And then maybe you talk a little bit about the profile of the gross margins for your overall business as we head through the year. Juan, I know you mentioned some issues relative to FX and regional costs that were sort of providing some pressure in Q4. Should we expect that we’re sort of at a trough on gross margins and we can see acceleration throughout the year? Or how should we think about how that shapes up?
Juan Urthiague: Thank you, Jim. So I mean, yes, we have been impacted by the U.S. dollar weakness. If you look at Colombian peso, Mexican peso, Chilean peso, Brazilian real, most of the currencies where we operate in Latin America have had significant appreciations throughout 2025. And that is what impacted the first — sorry, the last quarter of last year and what is also impacting the beginning of this year. I think that the dollar is getting to a point where it’s on an average kind of in a very low place relative to historical terms. So there has to be a little bit coming from there. But also more importantly, I think that we need to keep on focusing on not just looking at what’s happening with the currencies, but moving the business towards AI Pods because that’s where productivity increases, that’s where margins become higher.
And the more we operate on those models, the more efficient we can run them. So I think that pricing will be okay. I mean it’s not going to be a massive growth this year in terms of pricing for the general business. But definitely, there is an opportunity to increase our share of AI Pods and hence, maintain or improve our gross margins as we scale that business.
Arturo Langa: The next question comes from the line of Jonathan Lee from Guggenheim.
Unknown Analyst: I wanted to ask what in your customer conversations in January and February gives you confidence around the conversion time lines that are contemplated in your outlook, particularly given some of the client caution you’ve called out and some of the conversion challenges you may have seen historically?
Fernando Matzkin: So we are seeing clients more open to resuming big deals conversations than in the past. We are seeing also some of the volatility and the uncertainty lowering their levels in their conversations. And also another interesting fact to consider, Jonathan, is that when we architected the numbers for 2026, we were able to bake in some very relevant deals that we closed in Q3 and Q4, right? And some other deals that we are working on and hopefully will close before the end of Q1. So some of that volatility going away and some of the clients being more open and those deals that we closed and we are in the process of onboarding and ramping up give us the confidence that the trajectory will be different.
Unknown Analyst: Great. That’s encouraging to hear. And just as a follow-up, can you help decompose what you’re expecting across your verticals over the course of the year? And are there any that you expect to decelerate versus accelerate relative to what you’ve seen?
Juan Urthiague: When we look at our different industries for last year, financial services had a good year, growing approximately 13%. We have seen a consumer retail and manufacturing performing very, very well. We continue to expect to see that behavior in that particular industry. So far, we have not seen the recovery of professional services, which has been kind of one of the drags during 2025. Technology will come back. We are starting to see some big deals shaping up with our tech customers, which was another sector that was not doing as we wanted last year. But definitely, when we look at the Q4 and some of the expectations going forward, that’s going to be fine. And finally, health care. Health care and gaming, right?
Those are the 2 that are big deals that have already been signed that are in the process of ramping up and that are part of the explanation of the sequential growth that we should see for the rest of the year. So that’s in general, I try to go to all the industries as we report them. So hopefully, that helps.
Arturo Langa: The next question comes from the line of Sean Kennedy from Mizuho .
Sean Kennedy: On the bookings growth and momentum in the business. Great to see. So I was wondering about AI Pods and the conversations with your customers. Are you seeing the procurement teams becoming more comfortable with the AI Pods business model versus legacy?
Martín Migoya: That’s a great question. Thank you. This has been one of the most challenging things. However, as the thing gains — as the idea gains momentum in the industry, on the analyst side, on you guys, the procurement teams are getting more relaxed. And also, I believe that the fact that we are talking something that is extremely solid and is, I would say, an order of magnitude more transparent than the traditional model, procurement love it. So whenever you can tied any asset that is being produced to the amount of tokens and understand that, that correlation is what you’re paying is much better than saying we consume this amount of hours to do whatever. So I think the AI Pods offering is extremely solid. Of course, a long road on convincing more people about this.
The more you help us, the more we can do it. So we appreciate any kind of explanation on your reports. And analysts from Forrester, from IDC, from McKinsey, from [ Bain ] they’re already explaining this way of working. And 70% of the people, as I read on a report the other day, 70% of the people that are buying technology are expecting a change in the way the engagements happen. And the answer to that change is either a monthly subscription, an amount of tokens or some kind of combination there, but it must be on that [code]. So procurement teams are responding quite well to that. Having said that, of course, it’s always complicated, but it’s not impossible. And the business is pushing very hard for that.
Diego Tartara: And there’s also — when we started this, we tied the AI Pods with the capacity that it was equivalent to a team of X amount of people, right? And procurement is used to that type of instrument. And we become much more mature nowadays, and we are actually talking and correlating the consumption and the subscription with outcome to a certain — we provide full transparency as well. So there’s also — we’ve been getting a lot more mature in describing and showcasing how an AI Pod performed, and data has also relaxed a lot the procurement teams.
Sean Kennedy: Got it. And then as my follow-up, I think you stated that the high end of the guide embeds that the current conversion levels that you’re seeing are consistent. So I was just wondering how it’s been trending over the last few months.
Juan Urthiague: You mean for AI Pods or in general?
Sean Kennedy: Excuse me.
Juan Urthiague: You’re talking about AI Pods or in general?
Sean Kennedy: No, no, just in general, in total.
Juan Urthiague: Look, they are — I mean, we built the guidance a couple of weeks ago. And so far, the conversion rates that we are seeing, some of the big deals that we closed last year that are ramping up, they make us comfortable to be at the midpoint of what we guided. The pipeline that we have plus the expectation of some improvement throughout the year somehow can take us to the upper end. But definitely, with the current level of — or the current conversion rates plus what we have already done during Q4 and the beginning of this year, that will take us — should take us to the midpoint of our guidance. But again, that doesn’t — that doesn’t — the midpoint doesn’t include any material improvement or a material change on the overall environment.
Arturo Langa: The next question comes from the line of Arvind Ramani from Trust Securities.
Unknown Analyst: Good set of results. A lot of questions on AI, so I’ll kind of hop on to that trend. I mean AI Pods generated about, I think you said $21 million in ARR this quarter, very impressive given it’s still early. But still, it’s less than like 1% of your overall revenue, so still pretty small. But when you look at this model, it’s basically designed to do more work with tokens and less with humans. And as the AI Pods scale, how do you prevent them from cannibalizing your core seat-based revenue? And then secondly, what is the internal modeling saying about the revenue crossover point when you’re doing — you’re generating more from like token-based revenue versus headcount-based revenue?
Martín Migoya: I’m not in a position to prevent cannibalization. So I want that transformation to happen. And that puts us in the right side. And that means that as AI grows, we will keep on growing. And the way we are delivering our services with these AI Pods is by far very scalable. It kind of the style years and years of experience and the configuration files that we are using for each of those AI Pods and how the agents must run the process is really very, very impressive to see how those small recipes to achieve the assets that our customers have are really changing the way we are using AI and the current models that we have because we’re baking into those configuration files, all the experience that we have in the company.
So this is the north for us on how to deliver technology and solutions moving forward. And — and of course, there will be customers that are comfortable with the hours and our current business we have with them, so on and so forth. And I’m extremely happy to keep on doing that. But we are extremely encouraging our customers to move to this new model because we believe on the benefits for transparency, for productivity, for the long-term relationship we have with them. And not necessarily AI Pods are cheaper, they are more productive. So we see a transition year in which we were going to be transitioning from one kind of business to the other type of business. So it will be like a rational migration rather than anything else. So I don’t know if I answer your question.
Juan Urthiague: For the second part, Arvind, as we migrate the business to AI Pods, and AI Pods start to gain share, hopefully, by the end of the year with the current forecast that we have in our internal projections, the numbers that Martin mentioned in terms of ARR for the end of the year. So definitely, we went from 0 to $20 million run rate in just 2 quarters. The model has been under a lot of evolution, a lot of testing with customers, a lot of internal work on making sure that it creates a differentiator for Globant that makes us stronger relative to other players or other models that might be out there. And now it is starting to accelerate. As we discussed before, when we look at which are the customers that are now getting on board, which is the size of some of the deals.
Now it’s not just, let’s try with a small thing here, but some customers are actually talking about $10 million, $15 million, $20 million being migrated to the new model. So I think that we are starting to get that acceleration after a couple of quarters of understanding the customer, getting feedback. We just launched this in Q3 last year. So it’s only a few quarters that the is around. It’s already creating interesting revenues, creating a lot of momentum with customers. I would say that by the end of the year, it will be more relevant relative to our old pie. But definitely, it should be next year when the curves start to get closer.
Martín Migoya: Yes. And also for your models and for everything that you are covering guys, I think that we must acknowledge here that the industry is shifting and that this new industry about AI native services is going to be, in essence, different from what it used to be. And AI native services is leveraged on, of course, on knowledge, but also on repeatable processes and things that we have never had before. So in the same way Amazon created the cloud computing industry when they launched Amazon Web Services. Of course, at our scale, and I don’t want to be comparing with Amazon, but our scale, we are kind of executing this vision of AI native technology solutions. And the way to model that and the way to do that is absolutely different from what it used to be.
That’s why I started talking about ARR because it’s kind of a recurring revenue that is not coupled to the amount of people. Right now, we are using people to supervise what the agents are producing. Every kind of asset has a certain amount of time for those things to be supervised. So we can calculate how much people we need for that. But what we believe is that the revenue has nothing to do with the amount of people that we are putting there. The revenue has to do with the amount of assets that we are creating and how enterprise-ready those assets are, right? You can use Codex but you won’t get all the discipline and the rigorous approach that enterprise software needs. So what we are creating here are processes to create assets that are enterprise-ready, security ready, that they have the scalability and the repeatability and maintainability that you need to have moving forward.
So it’s really a different way of understanding the industry itself. There’s a $2 trillion industry that must change to a new model, and this is the very beginning of that.
Unknown Analyst: Perfect. That’s incredibly helpful. Just a quick follow-up here. Just a quick follow-up. In terms of like the token, the token cost you particular amount of money and then you’re charging your customers, are the margins you’re making there higher or lower than the company average?
Martín Migoya: As we reported, the margins are between 45% to 60% depending on the AI Pod and depending on the customer and depending on the things that we need to create. We expect that margin as we progress with time to increase as we get more efficient with technology and we get more efficient supervising and the technology for supervision gets improved, too. So this is the kind of model we have in mind. As we are able to supervise more assets, with the same amount of people, with less people or with better technology, we will need less supervision, and we want to increase our margins. And that’s a virtuous cycle that happens here. But not just that, every single conversation and every single token is being stored on our enterprise AI platform.
And those tokens can be used to improve the processes and to retain corporate sovereignty of the processes of the company. So this is kind of an explosion of productivity and it will reshape the whole industry and not just for software development, it will happen also for process operation. Today, we have AI Pods plus AI Pods software, and we have another AI Pods called AI Pods operations. And those AI Pods of operations, they get that kind of doing things for operating certain processes of companies, and we charge it also per consumption. So it’s a radically different way of understanding how professional services and how services will be rendered moving forward. There’s a lot of value to add for companies like Globant, and there’s a lot of change of mindset that is needed to understand this new industry.
I could be talking forever about this, but.
Arturo Langa: Thank you very much, Arvind. Unfortunately, that’s all the time we have for our question-and-answer session for today. So with that, I will now ask Martin to provide some closing remarks. Martin, the line is open.
Martín Migoya: Thank you so much, Arturo, and thank you, every one of you, for your support, for your help and for being here today. Bye-bye. See you next quarter. Thank you.
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