Major Takeaways
What are agentic AI frameworks and why are they important for B2B in 2025?
Agentic AI frameworks refer to autonomous systems that plan, execute, and optimize go-to-market workflows with minimal human input. Unlike generative AI, these frameworks act proactively, streamlining prospecting, outreach, and campaign management for GTM teams in SaaS, telecom, and managed services.
How do agentic AI frameworks improve sales performance and pipeline generation?
By combining predictive, generative, and action-oriented AI agents, agentic AI frameworks can deliver up to 7x higher conversion rates, reduce outbound costs by 80%, and execute campaigns in minutes, not months, driving faster and smarter revenue growth.
Why should companies adopt agentic AI frameworks now?
In 2025, leading B2B companies are moving from static automation to AI that continuously learns and adapts. Businesses that integrate agentic AI frameworks now will gain a significant competitive edge by automating GTM at scale and engaging high-intent buyers with hyper-personalized outreach.
Introduction
In the world of B2B marketing and sales, a profound technological shift is underway. Over the past two years, generative AI – think of tools like GPT-based content generators and chatbots – took center stage, helping teams automate copywriting and data analysis. But as we move into 2025, a new paradigm is emerging: agentic AI frameworks. These advanced AI systems don’t just generate content; they autonomously plan and execute tasks to drive go-to-market (GTM) outcomes. Industry analysts are already hailing 2025 as “the year of agentic AI”(6), signaling that businesses are shifting from passive AI assistants to proactive AI agents. For executives in SaaS, telecom, managed services, and e-commerce, this shift presents both an opportunity and a mandate to stay competitive.
One company at the forefront of this evolution is Landbase. Founded in 2024 by AppDirect co-founder Daniel Saks, Landbase introduced GTM-1 Omni, the world’s first agentic AI platform for go-to-market(1). As Saks bluntly put it, “generative AI’s very last year, and next year is the year of agentic”(1). In other words, merely generating content is no longer enough – the future belongs to AI that can autonomously drive strategy and execution. And the race is on: in a recent industry survey, 81% of sales teams report investing in AI to drive efficiency, and those who leverage AI tend to see significantly higher revenue growth than those who do not. In short, adopting the next generation of AI capabilities is fast becoming a necessity, not an experiment.
This article explores the shift from generative to agentic AI frameworks in B2B GTM, why it’s happening now, and how embracing this new generation of AI can transform your go-to-market results.
Understanding Agentic AI Frameworks
What does “agentic AI” mean in plain language? Simply put, it refers to AI systems that have a level of agency – they can make independent decisions and take actions to achieve goals, rather than just generating outputs when prompted. An agentic AI framework is the underlying system or platform that enables these autonomous agents. It combines advanced AI models with decision logic and tool integrations so that the AI can not only think, but also act. As one VC firm described it, AI is moving “from thought to action”(3) with agentic systems. These frameworks leverage the creative and analytical power of generative AI (e.g. large language models) but go beyond it by endowing AI with the ability to plan, execute, and adapt on its own(3).
It’s worth noting that this evolution didn’t happen in a vacuum – a few converging technological trends have made agentic AI possible now. Advanced large language models (LLMs) have dramatically improved their ability to reason, plan, and handle multi-step tasks, providing a brain capable of autonomy. Meanwhile, expanded memory and context windows let AI agents retain and reference more information when making decisions (no more forgetting what happened two conversations ago). Techniques like reinforcement learning have taught agents to self-improve through trial and error. And critically, AI systems are now better at connecting to external tools and data via APIs, so they can take real actions (like querying databases or sending messages) rather than just analyzing text(3). All these ingredients – smarter models, more memory, learning feedback loops, and tool integrations – have combined to propel the rise of agentic AI frameworks.
Key characteristics of agentic AI frameworks include:
- Autonomous decision-making – They operate with minimal human guidance, capable of making choices about what steps to take next. Instead of waiting for a user prompt for each action, an agentic AI can determine its next move based on a high-level goal (for example, “schedule a demo with high-priority leads”)(3).
- Goal-oriented and proactive – Agentic agents are driven by objectives and can pursue long-term goals through iterative steps. They don’t just react; they proactively initiate tasks in pursuit of outcomes (e.g. increasing pipeline or optimizing campaign performance)(3).
- Learning and adaptation – These systems learn from results. Through techniques like reinforcement learning and continuous feedback, an agentic AI framework can improve its strategies over time, adapting to what works and what doesn’t(3). This means the longer it’s in action, the smarter it gets about your GTM context.
- Tool and data integration – Unlike a standalone chatbot, an agentic AI often connects to external tools, databases, and APIs to get things done(3). It might pull data from your CRM, send emails through marketing automation platforms, update records, or perform web research – all autonomously as part of its workflow.
- Multi-agent orchestration – Many agentic AI frameworks deploy multiple specialized agents working in tandem as a “team.” For instance, one agent might handle prospect research while another drafts outreach messages, and yet another optimizes send times. Together, they coordinate to achieve the overall goal. Landbase’s GTM-1 Omni is a prime example: it uses a team of AI agents (an AI strategist, an AI marketer, an AI SDR, etc.) collaborating 24/7 to run campaigns(6).
In essence, agentic AI frameworks turn AI from a supportive assistant into an autonomous teammate. Instead of just producing a draft email or analysis when asked, it can own entire workflows – identifying prospects, sending outreach, following up, adjusting strategy – all in a cohesive loop. To illustrate, imagine the difference between two approaches: In the first, your marketing team uses a generative AI to help write email copy for a campaign. It saves time on content creation, but your team still has to decide who to send it to, schedule the emails, and monitor replies to follow up. In the second approach, an agentic AI framework takes the reins – it identifies a high-value prospect segment from your CRM, writes a tailored email for each prospect, sends the emails at optimal times, and then analyzes the responses. If Prospect A clicks a link, the AI agent automatically schedules a follow-up call and even drafts a personalized LinkedIn message as a next touch. Meanwhile, it might pause outreach to Prospect B who showed no engagement, or tweak the messaging for Prospect C based on an objection they replied with. All of this happens with minimal human intervention. This scenario isn’t science fiction; it’s exactly the kind of coordinated, multi-step execution agentic AI enables.
This shift has massive implications for B2B go-to-market teams, as we’ll explore next.
From Generative AI to Agentic AI Frameworks in B2B GTM
From Hype to Reality: Generative AI’s Limits
Not long ago, generative AI was the buzzword in B2B sales and marketing. Teams eagerly adopted AI copywriters, chatbots, and analytics tools to automate parts of their workflow. These generative AI solutions were great at producing content or insights on demand – for example, auto-generating email templates or summarizing customer data. However, they had clear limits. Many tools were essentially fancy assistants waiting for instructions, rather than proactive problem-solvers. As a result, GTM teams still shouldered the burden of orchestrating campaigns and making strategic decisions. In practice, this meant that while an AI might draft emails faster, humans still had to decide who to email, when to follow up, and how to adjust if responses were poor.
Moreover, early AI-powered sales outreach often struggled with quality and personalization. Pumping out automated messages at scale led to diminishing returns – prospects started to tune out the barrage of generic AI-generated emails. Spam filters got smarter at flagging mass AI content. Conversion rates in many cases began to decline once the novelty wore off(6). One analysis found sales reps were still spending roughly 70% of their time on non-selling tasks, and 67% of reps fell short of their quotas even amid the AI hype(6). The takeaway: generative AI alone wasn’t a silver bullet for pipeline growth. It could assist, but it wasn’t running the show.
2025: The Shift to Proactive Agentic AI Frameworks
Fast-forward to 2025, and a new AI approach has taken center stage. Instead of just helping with isolated tasks, AI is now stepping up to own entire workflows. In the words of Landbase’s CEO, generative AI was “last year’s” trend – agentic AI frameworks are the new frontier(1). These systems can autonomously plan and execute GTM tasks end-to-end. Early adopter companies are moving from using one-off AI assistants (like a bot that writes emails) to deploying multi-agent AI teams that function like an always-on digital sales crew(6).
It’s also worth distinguishing agentic AI from the traditional automation or “playbooks” that B2B teams have used for years. Earlier-generation sales automation tools could send a sequence of emails on a schedule, or move a lead to sales when they clicked a link – but these were rigid, pre-programmed flows. There was no real intelligence or adaptation; if a prospect’s behavior didn’t fit the predefined rules, the system couldn’t adjust. By contrast, an agentic AI framework isn’t just following a script. It can truly think and adapt on the fly – rewriting messaging, altering cadence, or trying a new channel based on live feedback from prospects. This is a fundamental shift from rule-based automation to AI-driven orchestration. The result is a GTM engine that feels far more responsive and “human” to the end customer, because it’s constantly optimizing itself rather than executing a fixed set of steps.
This shift isn’t just anecdotal – it’s backed by data. A recent Capgemini survey of 1,100 executives found that only about 10% of organizations use AI agents today, but 50% plan to implement agentic AI frameworks in their operations by 2025(3). Within three years, that number is expected to soar to 82%(3). Industry watchers have dubbed 2025 a tipping point: Gartner named agentic AI the #1 strategic technology trend of the year(7), and BCG reports 67% of executives anticipate autonomous AI agents will be part of their AI transformation strategy(7). In short, what was a niche experiment in 2024 is becoming a mainstream strategy in 2025. Businesses are realizing that to stay competitive in GTM, they need AI that can do more than chat – they need AI that can act.
Even the tech titans are embracing this evolution. Microsoft, for instance, used its Build 2025 developer conference to unveil an “agentic web” toolkit for creating autonomous AI-driven applications(1). And one leading CRM company aired a prime-time ad showing a frantic businessman missing his flight because he “didn’t enlist” an AI agent to handle his booking(7) – a tongue-in-cheek sign that the concept of AI agents has entered the popular lexicon. At the same time, venture investment in this space has surged – aside from the headline-grabbing mega-funds going to AI giants, countless startups have sprung up with agentic solutions for specific domains(7)(from AI sales reps to AI customer support agents and beyond). The momentum is clearly behind agentic AI as the next big leap in productivity.
How Agentic AI Frameworks Elevate B2B Go-to-Market Performance
Organizations that embrace agentic AI frameworks in their go-to-market see a host of benefits. Among the most significant are:
- Higher conversion rates through hyper-personalization. Agentic AI can tailor outreach with a level of granularity impossible to achieve manually. Traditional email campaigns might see dismal response rates, but personalization changes the game – for instance, personalized emails have 29% higher open rates and 41% higher click-through rates compared to generic sends(5). By analyzing each prospect’s context and behavior, an agentic AI crafts messages that truly resonate. In early use cases, this has translated to dramatic gains – companies have reported up to 7x higher response and conversion rates when using multi-agent AI outreach compared to traditional campaigns(1). Instead of generic sales blasts, every touchpoint feels bespoke, which means more replies, more meetings, and ultimately more revenue.
- Cost efficiency and scalable growth. Automating GTM workflows with AI agents can replace or augment a large human SDR/BDR team at a fraction of the cost. Businesses deploying agentic AI have seen operational savings of 80% in outbound sales costs(6). By offloading repetitive tasks to AI, companies reduce the manpower needed for prospecting and follow-ups. This doesn’t just cut costs – it also means your existing team can scale their reach without increasing workload. One AI “dream team” can engage thousands of accounts in parallel, something that would require multiplying headcount in a traditional model. And those human reps you do have? They’re freed up to focus on closing deals and building relationships, not grinding through cold calls and emails(6).
- Faster campaign execution and 24/7 productivity. In fast-moving markets, speed is a competitive advantage. Agentic AI frameworks launch and iterate campaigns with lightning speed. Landbase’s platform, for example, can spin up a full multi-channel outreach sequence in minutes rather than the months a manual effort might take(6). The AI agents work around the clock – there’s no “end of the workday” for an AI SDR. This always-on approach means leads get followed up with instantly, campaigns can respond to real-time triggers, and you capture opportunities the moment they arise. The outcome is a much faster time-to-pipeline. Your sales funnel fills sooner, and you can iterate campaigns on the fly based on immediate feedback.
- Unified, data-driven strategy (no more silos). Agentic platforms often serve as a centralized hub that brings together data and actions that used to live in separate tools. This is a huge relief for GTM teams plagued by fragmented systems. (How many different apps do your sales reps log into each day?) When your AI agent can access customer contact data, engagement history, CRM records, and more in one place, it can make smarter, holistic decisions about who to target and how. This unified approach also closes the gap between marketing and sales teams – the AI can carry leads from initial engagement all the way to sales handoff in one seamless process. Landbase specifically built its solution as an all-in-one GTM engine to eliminate disjointed processes across CRMs, email tools, data providers, and so on(1). The result is a cohesive, aligned strategy where every outreach – whether via email, LinkedIn, or phone – is informed by the same intelligence. No leads fall through the cracks due to system gaps, and marketing and sales stay on the same page through a single AI-driven playbook.
These benefits aren’t just theory – they’re playing out in practice. For instance, a telecom provider recently used an AI-powered GTM campaign to add $400,000 in new monthly recurring revenue during what would normally be a slow season(6). In the SaaS arena, startups are leveraging agentic AI to expand globally without waiting to hire local sales teams – their AI agents can prospect into new regions around the clock from day one. Managed service providers and consultancies are using AI agents to nurture partner networks and uncover cross-sell opportunities that their stretched sales teams often missed. Even in B2B e-commerce, where large wholesale orders and repeat clients are common, agentic AI can re-engage dormant customers with personalized offers and timely outreach, driving renewed interest and revenue. In each case, the pattern is similar: tasks that used to fall through the cracks or require significant manpower are now handled intelligently by AI, at scale.
Landbase’s GTM-1 Omni: A Leading Agentic AI Framework for Go-to-Market
Landbase stands out in the agentic AI landscape as an early pioneer, purpose-built for B2B go-to-market needs. The company emerged from stealth in 2024 with $12.5 million in seed funding(1) and recently raised $30 million in Series A funding to develop GTM-1 Omni, touted as the world’s first agentic AI platform for GTM. This platform takes an “AI team” approach to sales and marketing. Rather than a single AI assistant, GTM-1 Omni deploys multiple specialized AI agents that work in concert – much like a digital revenue team working 24/7. For example, one agent acts as a GTM Strategist, designing and optimizing campaign workflows; another as an AI Marketer, crafting targeted content; another as an AI Sales Development Rep, conducting personalized outreach at scale; and even agents that handle RevOps and IT tasks like integrating data and managing email deliverability(6). Each agent has its domain expertise, and together they coordinate seamlessly through the GTM-1 Omni framework. Crucially, they don’t just follow static rules – they learn from each interaction, adapting and improving campaign performance continuously.
So how does a campaign run with GTM-1 Omni in practice? Imagine a new product launch: GTM-1 Omni’s AI Research agent will begin by scanning Landbase’s extensive proprietary B2B database (over 220 million contacts across 24 million companies)(2) and your CRM to discover and qualify the best-fit prospects for this product. Next, the AI Marketer agent generates hyper-personalized outreach content for each prospect – emails, LinkedIn messages, maybe even call scripts – tailoring the angle to each recipient’s industry, role, and pain points. The SDR agent then kicks off an omnichannel campaign: it sends out the emails and connection requests, and might stagger touchpoints based on optimal engagement times. As replies start coming in, GTM-1 Omni doesn’t stop: it analyzes responses. If a prospect expresses interest, the system can automatically flag sales to schedule a meeting (or even book it directly on a rep’s calendar). If another prospect clicks a link but doesn’t reply, the AI SDR knows to send a polite follow-up or give them a call. Throughout, the Strategist agent is monitoring aggregate performance – maybe noticing that prospects in the healthcare sector are clicking more on a certain value prop. GTM-1 Omni can adjust mid-campaign, doubling down on what works and rewriting messages that underperform. This tight feedback loop continues until the campaign objectives are met (or the AI decides to pivot strategy for better results). In essence, GTM-1 Omni orchestrates the whole funnel from prospecting to appointment-setting, learning and optimizing at each step.
What gives GTM-1 Omni its edge is the depth of data and intelligence behind it. Landbase trained the model on billions of data points from real-world GTM efforts – including over 40 million B2B sales campaigns and 175 million sales conversations, alongside tens of millions of company and contact records(2). This massive training corpus means the AI isn’t operating on generic internet text, but on patterns and outcomes from actual prospecting and sales interactions. Additionally, Landbase constructed a proprietary knowledge graph incorporating private datasets on firmographics, individual decision-makers, and past campaign performance, which GTM-1 Omni uses to ground its decisions(1). The AI effectively knows, for example, which messaging has resonated with a VP of Finance at a mid-sized SaaS company versus a CTO at a Fortune 500 in the past, and it uses that insight to inform new outreach. GTM-1 GTM-1 Omni’s “brain” combines three layers: predictive models that analyze market signals and buyer intent, generative models that produce hyper-personalized content, and action models that orchestrate workflows across channels(6). This trifecta enables the platform to not only recommend who to target and how, but also to generate the content and then take the steps (send the email, follow up, schedule the meeting) to make it happen – closing the loop from insight to action.
The results have been impressive. Landbase reports that early customers achieved up to 7× better outbound conversion rates by using GTM-1 Omni versus traditional approaches(1). Clients also see significantly lower customer acquisition costs since the platform can scale outreach with far less human labor – on the order of 60%+ cost reduction per campaign in many cases(6). By late 2024, over 100 companies had adopted GTM-1 Omni, including firms like P2 Telecom and Aeolus, to automate thousands of campaigns while reducing costs, increasing speed and improving conversion rates(2). P2 Telecom’s CEO even noted that with Landbase they added $400k in new MRR during a typically slow period(6), to the point where their account executives “couldn’t keep up” with the volume of qualified opportunities being generated. Such success stories underscore Landbase’s claim as the “leader in agentic AI for go-to-market,” and they illustrate how an agentic framework can revolutionize real businesses.
To further cement its leadership, Landbase has invested heavily in innovation. In 2025, the company launched an Applied AI Lab in Silicon Valley, bringing together experts from Stanford, Meta, NASA and more to advance the state-of-the-art in agentic GTM automation(2). This lab is focused on pushing boundaries in areas like workflow orchestration, reinforcement learning for decision-making, and content optimization for GTM. The team’s mandate is to continuously refine the GTM-1 Omni model and develop new capabilities that keep Landbase customers ahead of the curve. Few providers in the market have this level of dedicated R&D in AI specifically for go-to-market – a testament to Landbase’s vision of what agentic AI can do.
In sum, Landbase’s GTM-1 Omni exemplifies what’s possible when cutting-edge AI is applied to GTM: a unified platform where intelligent agents strategize and execute as one, delivering outsized growth results. It’s a blueprint for how companies can leverage agentic AI frameworks to radically transform their sales and marketing outcomes.
Implementing Agentic AI Frameworks: Best Practices for GTM Teams
Adopting agentic AI in your organization doesn’t happen overnight. It requires thoughtful integration of technology, people, and process. Here are some best practices to help ensure a smooth and successful implementation:
- Start with a focused pilot project: Rather than a sweeping overhaul, pick a specific part of your go-to-market process to introduce an AI agent. For instance, you might deploy an AI SDR agent for one product line or region first. Define the scope and success metrics (e.g. increase meeting bookings by 30%). A targeted pilot lets you demonstrate quick wins and learn lessons before scaling up.
- Ensure data readiness and integration: Agentic AI frameworks thrive on data. Before deploying, make sure your CRM, marketing automation, and data sources are in order. Clean up duplicate or outdated records and integrate the necessary tools so your AI agents have a unified view of prospects and customers. Remember, an agent is only as smart as the data it can access. Eliminating silos through integration (via a platform like Landbase or custom APIs) is key(1).
- Define clear objectives and guardrails: Be explicit about what goals the AI agent is pursuing – whether it’s booking meetings, generating leads, or upselling to existing clients. Also set boundaries: for example, you may want the AI to only target certain customer segments, or require approval before sending certain types of communications initially. These guardrails ensure the AI operates within your business and brand context, especially early on.
- Train your team and foster buy-in: An agentic AI framework will work alongside your human team, not in isolation. Educate your sales and marketing staff about what the AI can do and how their roles might evolve. Emphasize that the AI is there to handle grunt work and augment their productivity, not replace them. When reps understand that the AI SDR is filling their pipeline with qualified leads (so they can focus on closing), they’ll be more likely to embrace it. Designate an “AI champion” or operator who will oversee the agent’s output and interface between the AI and the team during the rollout.
- Monitor, measure, and iterate: Once deployed, keep a close eye on performance. Track KPIs like response rates, conversion rates, pipeline generated, etc., compared to your baseline. Solicit feedback from both the AI (via its analytics) and from your team. Maybe certain messaging approaches work better than others – feed that insight back into the AI’s strategy. Perhaps the agent is sending too many emails too fast – you might dial back frequency if it triggers spam warnings. Continuous improvement is part of the process; the framework should learn and get better, but human guidance ensures it aligns with business goals. Deloitte projects 25% of companies using generative AI will pilot agentic AI in 2025, growing to 50% by 2027(4) – so refine your approach early and stay ahead of the curve.
- Choose the right partner/platform: Lastly, success with agentic AI often comes down to using a robust framework that’s suited to your needs. Evaluate platforms on their ease of integration, the intelligence of their models, and their track record. For example, if your focus is B2B sales, an AI that’s been trained on millions of B2B sales interactions (like Landbase’s GTM-1 Omni) will likely perform better out-of-the-box than a generic AI toolkit. Also consider support and security – you want a partner who will work with you on strategy, provide customization where needed, and ensure compliance with data and privacy regulations.
Embracing Agentic AI Frameworks in Your GTM Strategy
The bottom line for B2B leaders is clear: the game is changing. As AI evolves from simply generating content to autonomously driving campaigns, go-to-market strategies will never be the same. Those who embrace agentic AI frameworks early stand to capture more market share with leaner, smarter operations. Those who don’t risk being outpaced by competitors that engage customers faster and more intelligently.
We’re truly at an inflection point. Analysts predict that by 2028, 33% of enterprise software applications will include agentic AI (up from virtually 0% today)(4). In other words, autonomous AI agents are on their way to becoming as standard as CRM systems. Forward-thinking GTM teams across SaaS, telecom, managed services, and beyond are already redesigning their processes around these AI “coworkers.” They’re seeing the payoff in faster sales cycles, richer customer interactions, and more efficient growth.
Looking ahead, the concept of an “AI GTM team” will likely become standard operating procedure. We may see companies structuring their go-to-market departments with a mix of human talent and AI agents: imagine an AI for every major repetitive task, combing through data and engaging leads, while your human team focuses on creative strategy, relationship-building, and complex deal-making. The AI will handle the volume, humans will handle the nuance. This symbiosis can lead to unprecedented efficiency and growth. In the coming years, as agentic AI frameworks become even more advanced, they might tackle tasks we haven’t even considered automating yet – expanding into areas like partner management, channel sales, or real-time pricing strategy. The possibilities are expansive, and the competitive gap will widen between those who leverage these tools and those who stick to business-as-usual.
If you’re looking at 2025 and wondering how to keep your revenue engine ahead of the curve, the answer is simple: don’t just adopt AI, adopt the right AI. Landbase’s agentic AI platform is built to be that competitive edge for your go-to-market. Ready to see what an agentic AI framework can do for your business? Reach out to Landbase for a personalized demo of GTM-1 Omni, and let us show you how our always-on AI agents can fill your pipeline and optimize your GTM strategy. The companies that move now will shape the next decade of B2B growth – and Landbase is here to help you lead that charge.
References
- venturebeat.com
- techstrong.ai
- adamsstreetpartners.com
- cap.csail.mit.edu
- instapage.com
- landbase.com
- innovationleader.com