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Salesforce’s AI Evolution

Salesforce’s AI Evolution:

Salesforce’s AI Evolution: Efficiency, Expansion, and What Comes Next Salesforce isn’t just a CRM giant anymore—it’s becoming a central hub for AI-driven enterprise automation. Its Agentforce platform, already in use by over 3,000 customers, is proving its worth, both for clients and internally. The company has automated 380,000 support requests with an 84% resolution rate without human intervention, while sales productivity has jumped 7% thanks to AI-generated leads. But the bigger story might be how Salesforce is changing the way businesses pay for AI. Moving toward consumption-based pricing—charging based on how much companies use AI agents and data—means revenue might fluctuate, but it also aligns with how modern tech scales. And with $37.9 billion in FY25 revenue (up 9% YoY) and net income surging 50%, Salesforce has the financial muscle to experiment. What’s Driving the AI Growth? The Risks: Unpredictability in the Shift The move to usage-based pricing means revenue could swing with customer adoption rates. If businesses are slow to ramp up AI usage, growth could stall. But if adoption accelerates—as it has internally, where AI has boosted engineering productivity by 30%—this model could pay off big. The Bottom Line Salesforce is betting that AI will make it indispensable to enterprises. With strong financials, a growing AI customer base, and smart partnerships, it’s well-positioned—but the real test will be whether businesses fully embrace AI agents at scale. If they do, Salesforce could become far more than a CRM. (Originally published on wdstock, April 2025) Like Related Posts Salesforce OEM AppExchange Expanding its reach beyond CRM, Salesforce.com has launched a new service called AppExchange OEM Edition, aimed at non-CRM service providers. Read more The Salesforce Story In Marc Benioff’s own words How did salesforce.com grow from a start up in a rented apartment into the world’s Read more Salesforce Jigsaw Salesforce.com, a prominent figure in cloud computing, has finalized a deal to acquire Jigsaw, a wiki-style business contact database, for Read more Service Cloud with AI-Driven Intelligence Salesforce Enhances Service Cloud with AI-Driven Intelligence Engine Data science and analytics are rapidly becoming standard features in enterprise applications, Read more

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Marketing Automation

AI and Automation

The advent of AI agents is widely discussed as a transformative force in application development, with much of the focus on the automation that generative AI brings to the process. This shift is expected to significantly reduce the time and effort required for tasks such as coding, testing, deployment, and monitoring. However, what is even more intriguing is the change not just in how applications are built, but in what is being built. This perspective was highlighted during last week’s Salesforce developer conference, TDX25. Developers are no longer required to build entire applications from scratch. Instead, they can focus on creating modular building blocks and guidelines, allowing AI agents to dynamically assemble these components at runtime. In a pre-briefing for the event, Alice Steinglass, EVP and GM of Salesforce Platform, outlined this new approach. She explained that with AI agents, development is broken down into smaller, more manageable chunks. The agent dynamically composes these pieces at runtime, making individual instructions smaller and easier to test. This approach also introduces greater flexibility, as agents can interpret instructions based on policy documents rather than relying on rigid if-then statements. Steinglass elaborated: “With agents, I’m actually doing it differently. I’m breaking it down into smaller chunks and saying, ‘Hey, here’s what I want to do in this scenario, here’s what I want to do in this scenario.’ And then the agent, at runtime, is able to dynamically compose these individual pieces together, which means the individual instructions are much smaller. That makes it easier to test. It also means I can bring in more flexibility and understanding so my agent can interpret some of those instructions. I could have a policy document that explains them instead of hard coding them with if-then statements.” During a follow-up conversation, Steinglass further explored the practical implications of this shift. She acknowledged that adapting to this new paradigm would be a significant change for developers, comparable to the transition from web to mobile applications. However, she emphasized that the transition would be gradual, with stepping stones along the way. She noted: “It’s a sea change in the way we build applications. I don’t think it’s going to happen all at once. People will move over piece by piece, but the result’s going to be a fundamentally different way of building applications.” Different Building Blocks One reason the transition will be gradual is that most AI agents and applications built by enterprises will still incorporate traditional, deterministic functions. What will change is how these existing building blocks are combined with generative AI components. Instead of hard-coding business logic into predetermined steps, AI agents can adapt on-the-fly to new policies, rules, and goals. Steinglass provided an example from customer service: “What AI allows us to do is to break down those processes into components. Some of them will still be deterministic. For example, in a service agent scenario, AI can handle tasks like understanding customer intent and executing flexible actions based on policy documents. However, tasks like issuing a return or connecting to an ERP system will remain deterministic to ensure consistency and compliance.” She also highlighted how deterministic processes are often used for high-compliance tasks, which are automated due to their strict rules and scalability. In contrast, tasks requiring more human thought or frequent changes were previously left unautomated. Now, AI can bridge these gaps by gluing together deterministic and non-deterministic components. In sales, Salesforce’s Sales Development Representative (SDR) agent exemplifies this hybrid approach. The definition of who the SDR contacts is deterministic, based on factors like value or reachability. However, composing the outreach and handling interactions rely on generative AI’s flexibility. Deterministic processes re-enter the picture when moving a prospect from lead to opportunity. Steinglass explained that many enterprise processes follow this pattern, where deterministic inputs trigger workflows that benefit from AI’s adaptability. Connections to Existing Systems The introduction of the Agentforce API last week marked a significant step in enabling connections to existing systems, often through middleware like MuleSoft. This allows agents to act autonomously in response to events or asynchronous triggers, rather than waiting for human input. Many of these interactions will involve deterministic calls to external systems. However, non-deterministic interactions with autonomous agents in other systems require richer protocols to pass sufficient context. Steinglass noted that while some partners are beginning to introduce actions in the AgentExchange marketplace, standardized protocols like Anthropic’s Model Context Protocol (MCP) are still evolving. She commented: “I think there are pieces that will go through APIs and events, similar to how handoffs between systems work today. But there’s also a need for richer agent-to-agent communication. MuleSoft has already built out AI support for the Model Context Protocol, and we’re working with partners to evolve these protocols further.” She emphasized that even as richer communication protocols emerge, they will coexist with traditional deterministic calls. For example, some interactions will require synchronous, context-rich communication, while others will resemble API calls, where an agent simply requests a task to be completed without sharing extensive context. Agent Maturity Map To help organizations adapt to these new ways of building applications, Salesforce uses an agent maturity map. The first stage involves building a simple knowledge agent capable of answering questions relevant to the organization’s context. The next stage is enabling the agent to take actions, transitioning from an AI Q&A bot to a true agentic capability. Over time, organizations can develop standalone agents capable of taking multiple actions across the organization and eventually orchestrate a digital workforce of multiple agents. Steinglass explained: “Step one is ensuring the agent can answer questions about my data with my information. Step two is enabling it to take an action, starting with one action and moving to multiple actions. Step three involves taking actions outside the organization and leveraging different capabilities, eventually leading to a coordinated, multi-agent digital workforce.” Salesforce’s low-code tooling and comprehensive DevSecOps toolkit provide a significant advantage in this journey. Steinglass highlighted that Salesforce’s low-code approach allows business owners to build processes and workflows,

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Supercharge Salesforce Agentforce with OpenText AI-Powered Insights

The future of intelligent customer engagement is here. OpenText and Salesforce are revolutionizing AI-driven workflows with deep content integration, empowering sales and service teams to work smarter, faster, and with greater accuracy. AI in Sales & Service: The Need for Trusted Data AI is transforming business operations:✅ 83% of AI-powered sales teams report revenue growth✅ 93% of service teams achieve time and cost savings But success depends on trusted data. With 98% of sales leaders emphasizing the need for accurate, secure, and compliant information, OpenText Content Cloud provides the foundation for reliable AI—seamlessly integrated with Salesforce. OpenText + Salesforce: AI Innovation Leaders Since 2016, OpenText has enhanced Salesforce with powerful content management solutions. Now, we’re taking it further with GenAI-powered automation:✔ OpenText™ Content Aviator delivers AI-driven insights from unstructured data (contracts, emails, documents)✔ Selected as a launch partner for the Agentforce Partner Network✔ First-to-market solution on Salesforce’s new AgentExchange—making AI agent deployment faster than ever Key Use Cases 🔹 Sales Teams – Summarize customer buying trends, auto-generate upsell recommendations🔹 Customer Service – Instantly resolve claims by extracting key details from documents🔹 Claims Processing – Automate approvals with AI-powered document analysis How It Works: AI Insights → Agentforce Actions OpenText Content Aviator for Agentforce unlocks hidden insights from unstructured content stored in OpenText Content Management, then feeds them directly into Salesforce Agentforce to trigger smart, automated actions. Key Benefits 🚀 Accelerate Sales Cycles – Auto-summarize contracts, identify upsell opportunities🎯 Enhance Customer Service – Resolve cases faster with AI-generated insights✍ Reduce Manual Work – Auto-update Salesforce records, eliminating errors📧 Personalize at Scale – Draft tailored email responses using AI insights Now Available ✔ Integrated with OpenText Content Management CE 25.1✔ Coming soon to OpenText Core Content SaaS (CE 25.3) OpenText Content Aviator and Salesforce Agentforce integration provides AI-driven insights for Sales and Customer Service teams, enhancing productivity and accelerating processes. This integration enables users to discover, summarize, and translate business workspace content directly within Agentforce, eliminating the need to switch applications. Essentially, it leverages AI to extract valuable insights from unstructured data like documents, contracts, and emails, and then uses those insights to drive data-driven actions within Agentforce What’s Next? The Future of AI-to-AI Integration This is just the beginning. OpenText is expanding AI-driven automation across the entire content lifecycle, with upcoming innovations including:🔹 More AI agents for sales, service, and operations🔹 Industry-specific solutions (banking, insurance, healthcare)🔹 Bi-directional AI – Blending insights from multiple AI systems for smarter decision-making OpenText™ Content Aviator puts AI into the hands of business users to leverage conversational search, discover content, or even summarize a document or workspace, offering new ways to interact with content and extract knowledge. Content Aviator enables organizations to combine the power of generative AI and large language models (LLMs) with OpenText content services platforms, including OpenText™ Core Content Management, OpenText™ Documentum™ Content Management (CM) and OpenText™ Content Management (Extended ECM), to make document management, knowledge discovery, and business process automation more efficient, effective and intelligent. Get Started Today ✅ Explore OpenText Content Aviator for Agentforce on Salesforce AgentExchange✅ Discover all OpenText-Salesforce integrations on the Salesforce AppExchange Unlock the power of AI-driven content intelligence—and transform the way your teams work. Contact Tectonic today to leverage AI-driven content intelligence. Like1 Related Posts Salesforce OEM AppExchange Expanding its reach beyond CRM, Salesforce.com has launched a new service called AppExchange OEM Edition, aimed at non-CRM service providers. Read more The Salesforce Story In Marc Benioff’s own words How did salesforce.com grow from a start up in a rented apartment into the world’s Read more Salesforce Jigsaw Salesforce.com, a prominent figure in cloud computing, has finalized a deal to acquire Jigsaw, a wiki-style business contact database, for Read more Service Cloud with AI-Driven Intelligence Salesforce Enhances Service Cloud with AI-Driven Intelligence Engine Data science and analytics are rapidly becoming standard features in enterprise applications, Read more

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Adecco Group and Salesforce Launch Joint Venture

Adecco Group and Salesforce Launch Joint Venture to Pioneer AI-Human Workforce Integration Strategic Partnership Aims to Redefine Workforce Management The Adecco Group, the world’s second-largest staffing firm, has announced a groundbreaking joint venture with Salesforce to create an AI-powered workforce management platform. The new entity, backed by investments from both corporations, will focus on enabling enterprises to strategically integrate human employees with autonomous AI agents. Bridging the Human-Digital Workforce Divide The partnership combines Adecco’s workforce expertise with Salesforce’s Agentforce platform to deliver: “The mission is to unlock the full potential of humans working alongside AI,” stated Denis Machuel, CEO of Adecco Group. “We’re at a critical juncture where establishing clear frameworks for human-AI collaboration will determine future success.” Market Context and Industry Impact The move follows Adecco’s December 2024 adoption of Salesforce’s Agentforce to enhance its recruitment operations. Industry analysts view this as a strategic response to workforce transformation: “Staffing firms face a choice – lead the AI transition or risk disruption,” noted John Nurthen of Staffing Industry Analysts. “Adecco’s initiative likely signals a broader trend in the trillion digital labor market.” Platform Capabilities and Roadmap The joint venture will offer: Broader Industry Momentum The announcement coincides with Deloitte’s March 26 reveal of its Salesforce-powered marketing agent, part of a broader push to embed AI across enterprise functions. Other staffing technology providers like Bullhorn and Asymbl have also joined AgentExchange, signaling growing industry adoption. “These partnerships demonstrate how agentic AI is moving from concept to commercialization,” commented Brian Landsman of Salesforce. “We’re seeing the emergence of entirely new business models in digital labor.” The joint venture plans to release additional details about its platform and go-to-market strategy in coming months. Contact Tectonic to upgrade your staffing agency. Like Related Posts Salesforce OEM AppExchange Expanding its reach beyond CRM, Salesforce.com has launched a new service called AppExchange OEM Edition, aimed at non-CRM service providers. Read more The Salesforce Story In Marc Benioff’s own words How did salesforce.com grow from a start up in a rented apartment into the world’s Read more Salesforce Jigsaw Salesforce.com, a prominent figure in cloud computing, has finalized a deal to acquire Jigsaw, a wiki-style business contact database, for Read more Service Cloud with AI-Driven Intelligence Salesforce Enhances Service Cloud with AI-Driven Intelligence Engine Data science and analytics are rapidly becoming standard features in enterprise applications, Read more

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Salesforce Unveils Agentforce 2dx

Salesforce Unveils Agentforce 2dx

Salesforce Unveils Agentforce 2dx: A Major Leap in AI Agent Capabilities Proactive, Autonomous AI Agents to Bridge the Skills Gap Salesforce has announced a major upgrade to its AI agent platform with Agentforce 2dx, a next-generation solution designed to move beyond reactive, chat-based interactions. With enhanced efficiency, agility, and scalability, Agentforce 2dx enables AI agents to operate autonomously, integrating seamlessly with existing data systems, business logic, and user interfaces. The Future of Work: AI Agents Filling the Labor Gap “Companies today have more work than workers, and Agentforce is stepping in to fill the gap,” said Adam Evans, EVP and GM of Salesforce’s AI Platform. Unlike traditional AI chatbots that rely on rigid programming or manual prompts, agentic AI dynamically adapts to live data and evolving business needs, making it far more effective in real-world applications. Introducing AgentExchange: A Marketplace for AI Agent Templates Alongside Agentforce 2dx, Salesforce is launching AgentExchange, an online marketplace where businesses can access and share pre-built AI agent templates and actions. From launch, AgentExchange will feature: The AI Agent Race Heats Up Salesforce’s announcement comes amid intensified industry focus on AI agents. Microsoft and AWS have recently made significant moves, with Microsoft research revealing that 72% of business leaders expect AI agents to be fully integrated into their operations soon—21% within the next year and 39% within two years. Meanwhile, AWS is reportedly forming a dedicated AI agent division, led by Swami Sivasubramanian, VP of AI and Data, reporting directly to CEO Matt Garman. Salesforce CEO Marc Benioff has been vocal about the future of AI agents, predicting that tomorrow’s CEOs will need to manage both human employees and AI-powered agents. With Agentforce 2dx and AgentExchange, Salesforce is positioning itself at the forefront of this transformation, empowering businesses to automate, scale, and innovate like never before. Like1 Related Posts Salesforce OEM AppExchange Expanding its reach beyond CRM, Salesforce.com has launched a new service called AppExchange OEM Edition, aimed at non-CRM service providers. Read more The Salesforce Story In Marc Benioff’s own words How did salesforce.com grow from a start up in a rented apartment into the world’s Read more Salesforce Jigsaw Salesforce.com, a prominent figure in cloud computing, has finalized a deal to acquire Jigsaw, a wiki-style business contact database, for Read more Service Cloud with AI-Driven Intelligence Salesforce Enhances Service Cloud with AI-Driven Intelligence Engine Data science and analytics are rapidly becoming standard features in enterprise applications, Read more

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