Enterprise AI Archives - gettectonic.com
Autonomous AI Service Agents

The AI Agent Revolution

The AI Agent Revolution: How Tectonic is Unifying Disparate AI Systems for Enterprises AI agents are proliferating at breakneck speed—embedded in platforms, deployed as standalone apps, and built on proprietary or open-source SDKs. Yet as these intelligent systems multiply, enterprises face a critical challenge: getting them to communicate, collaborate, and scale effectively across complex IT environments. Recent moves by Tectonic, Salesforce, and Google Cloud highlight the next frontier of enterprise AI: seamless, cross-platform agent orchestration. We’ve reached an inflection point where human-AI synergy can transform business operations—but only if organizations can unify their agent ecosystems. The AI Agent Collaboration Challenge Today’s enterprises use AI agents for:✔ Salesforce’s Agentforce (CRM automation)✔ Google’s Agentspace (cloud-based workflows)✔ Custom agents (built on Vertex AI, OpenAI, or open-source models) But without interoperability, these agents operate in silos—limiting their potential. Tectonic bridges this gap with secure, enterprise-grade agent orchestration, enabling businesses to: Tectonic and Supported Agent OS: The Glue Holding AI Ecosystems Together Tectonic and Agent Operating Systems (OS) are business-focused platform for orchestrating AI agents across enterprise environments. An “agent operating system” (AOS) is a type of operating system designed to facilitate the development, deployment, and management of AI agents, which are software systems that can act autonomously to achieve goals. AOS systems aim to provide a platform for AI agents to operate efficiently and effectively, offering features like resource management, context switching, and tool integration. AIOS, for example, is a particular implementation of this concept that aims to address the challenges of managing large language model (LLM)-based AI agents How It Works Real-World Use Cases 1. Salesforce + Google Gemini: Smarter CRM Salesforce’s Agentforce now integrates Google Gemini, enabling:🔹 Better RAG (Retrieval-Augmented Generation) for faster, more accurate customer responses🔹 Predictive trend analysis embedded directly in CRM workflows Tectonic’s Role: Deploys multi-agent solutions that turn AI insights into actionable items—like auto-recommending next steps for sales teams. 2. Retail: Unified Customer Experiences A retailer combines: Result: Customers get instant, accurate updates on orders—no manual backend checks required. 3. Financial Services: AI-Powered Risk Analysis Banks use: Outcome: Suspicious transactions trigger automated compliance workflows without leaving Salesforce. Tectonic’s AI Activation Path: From Pilot to Production For enterprises ready to scale AI agents, Tectonic offers a rapid deployment framework:✅ Discovery and Road Mapping – Co-design high-impact use cases✅ Rapid Implementation – Deploy working agents in sandbox environments✅ Pre-Built Industry Libraries – Accelerate time-to-value The Future: Harmonized AI Ecosystems The biggest barrier to AI adoption isn’t technology—it’s fragmentation. With the Agent OS in place, businesses can finally:✔ Break down silos between Salesforce, Google Cloud, and custom AI✔ Automate complex workflows end-to-end✔ Scale AI responsibly with enterprise-grade governance The bottom line? AI agents are powerful alone—but unstoppable when unified. Ready to orchestrate your AI ecosystem?Discover how Tectonic’s Agentforce approach can transform your enterprise AI strategy. 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 Research Pioneers Enterprise-Grade AI Reliability

Bridging the Gap Between AI Potential and Business Reality Salesforce AI Research has unveiled groundbreaking work to solve one of enterprise AI’s most persistent challenges: the “jagged intelligence” phenomenon that makes AI agents unreliable for business tasks. Their latest findings, published in the inaugural Salesforce AI Research in Review report, introduce three critical innovations to make AI agents truly enterprise-ready. The Jagged Intelligence Problem “Today’s AI can solve advanced calculus but might fail at basic customer service queries. This inconsistency is what we call ‘jagged intelligence’ – and it’s the biggest barrier to enterprise adoption.”— Shelby Heinecke, Senior AI Research Manager Key Findings: Three Pillars of Enterprise AI Reliability 1. SIMPLE Benchmark: Testing What Actually Matters 225 real-world business questions that reveal an AI’s true operational readiness: Why it matters: Unlike academic benchmarks, SIMPLE evaluates:✅ Practical reasoning✅ Consistency across repetitions✅ Business context understanding Early Results: Top models score 89% on coding tests but just 62% on SIMPLE. 2. ContextualJudgeBench: Fixing the AI Judge Problem When AIs evaluate other AIs, how do we know the judges are reliable? Salesforce’s solution: Evaluation Criteria Traditional Benchmarks ContextualJudgeBench Assessment Depth Single-score output 2,000+ response pairs Bias Detection None Measures rater consistency Enterprise Focus General knowledge Business decision-making Impact: Reduces “hallucinated” evaluations by 40% in testing. 3. CRMArena: The First AI Agent Proving Ground A specialized framework testing AI agents on real CRM tasks: Test Categories Sample Results: python Copy Download { “Agent”: “Einstein_Service_Pro”, “Task”: “Prioritize 50 support cases”, “Accuracy”: 92%, “Speed”: 3.2 sec/case, “Consistency”: 88% } Enterprise Benefit: Finally answers “Which AI agent actually works for my sales team?” Under-the-Hood Breakthroughs SFR-Embedding v2 SFR-Guard AI watchdog models that monitor:🔒 Toxicity🔒 Prompt injections🔒 Data leakage xLAM Updates TACO Models Generates chains of thought-and-action for complex workflows like: Why This Matters for Businesses “These aren’t flashy demos—they’re the industrial-grade foundations for AI that actually works in your ERP, CRM, and service systems,” explains Chief Scientist Silvio Savarese. Immediate Applications: What’s Next:Salesforce will open-source SIMPLE and expand CRMArena to 50+ industry-specific tasks by EOY 2024. “We’re not chasing artificial general intelligence—we’re building enterprise general intelligence: AI that’s boringly reliable where it matters most.”— Salesforce AI Research Team 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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Agentforce: Modernizing 311 and Case Management

Join Tectonic for an informational webinar on Salesforce Agentforce, Modernizing 311 services, and Case management. In this webinar you will hear: For more information fill out the contact us form below or reach out to the Public Sector team [email protected] Get ready for the Next Frontier in Enterprise AI: Shaping Public Policies for Trusted AI Agents! AI agents are a technological revolution – the third wave of artificial intelligence after predictive and generative AI. They go beyond traditional automation, being capable of searching for relevant data, analyzing it to formulate a plan, and then putting the plan into action. Users can configure agents with guardrails that specify what actions they can take and when tasks should be handed off to humans. For the past 25 years, Salesforce has led their customers through every major technological shift: from cloud, to mobile, to predictive and generative AI, and, today, agentic AI. We are at the cusp of a pivotal moment for enterprise AI that has the opportunity to supercharge productivity and change the way we work forever. This will require governments working together with industry, civil society, and all stakeholders to ensure responsible technological advancement and workforce readiness. We look forward to continuing our contributions to the public policy discussions on trusted enterprise AI agents. 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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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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Google Data Studio and Salesforce

What Does the Salesforce Google Cloud Partnership Mean?

Salesforce and Google Cloud Expand AI Partnership: What It Means for Your Business Enterprise AI is evolving at an unprecedented pace. This week, Salesforce and Google Cloud announced a major expansion of their strategic partnership, promising to give businesses greater flexibility, power, and choice in building AI-driven customer experiences and data strategies. This collaboration isn’t just about new technology—it’s about reimagining how businesses engage customers, unlock insights, and drive efficiency with AI. But what does that mean in practical terms? Let’s break down the top key opportunities. Why This Matters for Your Business In today’s business arena, AI isn’t just an advantage—it’s a necessity. With this partnership, businesses can: ✅ Unify Data Seamlessly – Break down silos with a zero-copy architecture, eliminating data fragmentation.✅ Leverage AI Flexibility – Choose predictive, generative, and multi-modal AI models without vendor lock-in.✅ Ensure Trust & Security – Use bias detection, explainability tools, and enterprise-grade security.✅ Streamline Workflows – Automate processes across Salesforce, Google Cloud, and other key platforms. This partnership isn’t just about adding AI—it’s about creating an intelligent, unified ecosystem that connects data, applications, and AI models. AI in Action: How Businesses Can Benefit 1️⃣ Smarter, Faster Customer Support with AI Agents With Salesforce Agentforce powered by Google Gemini AI, businesses can deploy multi-modal AI agents that handle text, images, audio, and video, creating more natural and intelligent customer interactions. 🔹 AI-Powered Insurance ClaimsA customer submits an insurance claim by uploading images of car damage and leaving an audio voicemail. Agentforce can:✔️ Analyze both the image and audio to assess the claim.✔️ Cross-check details using real-time Google Search grounding.✔️ Generate a claim recommendation in seconds, reducing wait times. 🔹 AI-Driven Contact CentersSupport agents struggle to gauge frustration over the phone. With Google Cloud AI in Service Cloud, businesses can:✔️ Analyze tone and sentiment in real time.✔️ Escalate calls automatically when frustration is detected.✔️ Provide AI coaching to help agents respond effectively. 2️⃣ Proactive Business Insights: AI That Thinks Ahead AI doesn’t just respond to customer needs—it anticipates them. By integrating Salesforce Data Cloud with Google BigQuery and Vertex AI, businesses can predict and prevent issues before they arise. 🔹 AI-Powered Supply Chain Risk DetectionA global retailer can:✔️ Monitor real-time risks (weather, port congestion, geopolitical issues).✔️ Predict delays before they happen.✔️ Automatically adjust supply routes to minimize disruptions. 🔹 AI-Driven Sales Forecasting & Lead ScoringWith Gemini AI inside Agentforce, sales teams can:✔️ Predict lead conversion rates with AI-driven analytics.✔️ Analyze customer intent from emails, calls, and social interactions.✔️ Get AI-powered recommendations to optimize outreach. 3️⃣ Hyper-Personalized Customer Experiences Customers expect brands to know them. With Salesforce Data Cloud + Google AI, businesses can deliver personalized experiences at scale. 🔹 AI-Powered Shopping AssistantsA luxury e-commerce brand can:✔️ Let customers upload a photo of an item they love.✔️ Use AI to identify similar products and make recommendations.✔️ Incorporate real-time sentiment analysis to refine suggestions. 🔹 AI-Driven Dynamic Pricing & PromotionsA travel company using Salesforce Data Cloud + Vertex AI can:✔️ Analyze real-time demand, competitor pricing, and customer behavior.✔️ Dynamically adjust pricing and offer personalized promotions.✔️ Deploy A/B tests to optimize revenue strategies. 4️⃣ A Unified Data Strategy for Smarter Decisions The biggest advantage of this partnership? Seamless connectivity between Salesforce Data Cloud, Vertex AI, BigQuery, Tableau, and Looker, creating AI-powered business intelligence. 🔹 AI-Powered Business DashboardsA global enterprise with multiple CRM and ERP systems can:✔️ Consolidate real-time data without duplication.✔️ Use AI-powered insights to surface key trends.✔️ Automate predictive analytics dashboards for proactive decision-making. 🔹 AI-Driven Revenue IntelligenceA SaaS company can:✔️ Analyze churn risk and upsell opportunities.✔️ Use AI-driven insights to optimize sales and marketing.✔️ Deploy custom Vertex AI models directly in Salesforce workflows. The Takeaway The Salesforce-Google Cloud partnership brings unmatched AI and data capabilities to businesses, enabling: ✅ Seamless data unification for smarter decision-making.✅ AI-powered automation to reduce workload and drive efficiency.✅ Advanced AI models for hyper-personalized customer experiences. As AI adoption accelerates, businesses that invest in the right strategy today will lead tomorrow. With Salesforce Data Cloud and Google Vertex AI, companies can embrace AI confidently, break down data silos, and drive transformation 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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Agentforce to the Team

Redefining AI-Driven Customer Service

Salesforce’s Agentforce: Redefining AI-Driven Customer Service Salesforce has made major strides in AI-powered customer service with Agentforce, its agentic AI platform. The CRM leader now resolves 85% of customer queries without human intervention—an achievement driven by three key factors: Speaking at the Agentforce World Tour, Salesforce Co-Founder & CTO Parker Harris emphasized the platform’s role in handling vast volumes of customer interactions. The remaining 15% of queries are escalated to human agents for higher-value interactions, ensuring complex issues receive the necessary expertise. “We’re all shocked by the power of these LLMs. AI has truly hit a tipping point over the past two years,” Harris said. Currently, Agentforce manages 30,000 weekly conversations for Salesforce, proving its growing impact. Yet, the journey to adoption wasn’t without its challenges. From Caution to Acceleration: Agentforce’s Evolution Initially, Salesforce approached the Agentforce rollout with caution, concerned about AI hallucinations and accuracy. However, the company ultimately embraced a learn-by-doing approach. “So, we went for it!” Harris recalled. “We put it out there and improved it every hour. Every interaction helped us refine it.” This iterative process led to significant advancements, with Agentforce now seamlessly handling a high volume of inquiries. Expanding Beyond Customer Support Agentforce’s impact extends beyond customer service—it’s also revolutionizing sales operations at Salesforce. The platform acts as a virtual sales coach for 25,000 sales representatives, offering real-time guidance without the social pressures of a human supervisor. “Salespeople aren’t embarrassed to ask an AI coach questions, which makes them more effective,” Harris noted. This AI-driven coaching has enhanced sales efficiency and confidence, allowing teams to perform at a higher level. Real-World Impact and Competitive Edge Salesforce isn’t just promoting Agentforce—it’s using it to prove its value. Harris shared success stories, including reMarkable, which automated 35% of its customer service inquiries, reducing workload by 7,350 queries per month. Salesforce CEO Marc Benioff highlighted this competitive edge during the launch of Agentforce 2.0, pointing out that while many companies talk about AI adoption, few truly implement it at scale. “When you visit their websites, you still find a lot of forms and FAQs—but not a lot of AI agents,” Benioff said. He specifically called out Microsoft, stating: “If you look for Co-Pilot on their website, or how they’re automating support, it’s the same as it was two years ago.” Microsoft pushed back on Benioff’s critique, sparking a war of words between the tech giants. What’s Next for Salesforce? Beyond AI-driven service and sales, Salesforce is making bold moves in IT Service Management (ITSM), positioning itself against competitors like ServiceNow. During a recent Motley Fool podcast, Benioff hinted at Salesforce’s ITSM ambitions, stating: “We’re building new apps, like ITSM.” At the TrailheadDX event, Salesforce teased this new product, signaling its expansion into enterprise IT management—a move that could shake up the ITSM landscape. With AI agents redefining work across industries, Salesforce’s aggressive push into automation and ITSM underscores its vision for the future of enterprise AI. 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 end to end

Salesforce and Google Announcement

Salesforce (NYSE:CRM) has entered into a deal with Google (NASDAQ:GOOGL) to offer its customer relations management software, Agentforce artificial intelligence assistants, and Data Cloud offerings through Google Cloud, the companies announced today. Google and Salesforce already have many of the same clients, and this new deal will allow for more product integration between Google Workspace and Salesforce’s customer relationship management and AI offerings. Salesforce already uses Amazon (AMZN) Web Services for much of its cloud computing. “Our mutual customers have asked us to be able to work more seamlessly across Salesforce and Google Cloud, and this expanded partnership will help them accelerate their AI transformations with agentic AI, state-of-the-art AI models, data analytics, and more,” said Thomas Kurian, CEO of Google Cloud. The deal is expected to total $2.5B over the next seven years, according to a report by Bloomberg. Salesforce and Google today announced a major expansion of their strategic partnership, delivering choice in the models and capabilities businesses use to build and deploy AI-powered agents. In today’s constantly evolving AI landscape, innovations like autonomous agents are emerging so quickly that businesses struggle to keep pace. This expanded partnership provides crucial flexibility, empowering customers to develop tailored AI solutions that meet their specific needs, rather than being locked into a single model provider. Google Cloud is at the forefront of enterprise AI innovation with millions of developers building with Google’s cutting-edge Gemini models and on Google Cloud’s AI-optimized infrastructure. This expanded partnership will empower Salesforce customers to build Agentforce agents using Gemini and to deploy Salesforce on Google Cloud. This is an expansion of the existing partnership that allows customers to use data from Data Cloud and Google BigQuery bi-directionally via zero-copy technology—further equipping customers with the data, AI, trust, and actions they need to bring autonomous agents into their businesses. Additionally, this integration empowers Agentforce agents with the ability to reference up-to-the-minute data, news, current events, and credible citations, substantially enhancing their contextual awareness and ability to deliver accurate, evidence-backed responses. For example, in supply chain management and logistics, an agent built with Agentforce could track shipments and monitor inventory levels in Salesforce Commerce Cloud and proactively identify potential disruptions using real-time data from Google Search, including weather conditions, port congestion, and geopolitical events. Availability is expected in the coming months. AI: Unlocking the Power of Choice and Flexibility with Gemini and Agentforce Businesses need the freedom to choose the best models for their needs rather than be locked into one vendor. In 2025, Google’s Gemini models will also be available for prompt building and reasoning directly within Agentforce. With Gemini and Agentforce, businesses will benefit from: For example, an insurance customer can submit a claim with photos of the damage and an audio voicemail from a witness. Agentforce, using Gemini, can then help the insurance provider deliver better customer experiences by processing all these inputs, assessing the claim’s validity, and even using text-to-speech to contact the customer with a resolution, streamlining the traditionally lengthy claims process. Availability is expected this year. Trust: Salesforce Platform deployed on Google Cloud Customers will be able to use Salesforce’s unified platform (Agentforce, Data Cloud, Customer 360) on Google Cloud’s highly secure, AI-optimized infrastructure, benefiting from features like dynamic grounding, zero data retention, and toxicity detection provided by the Einstein Trust Layer. Once Salesforce products are available on Google Cloud, customers will also have the ability to procure Salesforce offerings through the Google Cloud Marketplace, opening up new possibilities for global businesses to optimize their investments across Salesforce and Google Cloud and benefiting thousands of existing joint customers. Action: Enhanced Employee Productivity and Customer Service with AI-Powered Integrations Millions use Salesforce and Google Cloud daily. This partnership prioritizes choice and flexibility, enabling seamless cross-platform work. New and deeper connections between platforms like Salesforce Service Cloud and Google Cloud’s Customer Engagement Suite, as well as Slack and Google Workspace, will empower AI agents and service representatives with unified data access, streamlined workflows, and advanced AI capabilities, regardless of platform. Salesforce and Google Cloud are deeply integrating their customer service platforms—Salesforce Service Cloud and Google Cloud’s Customer Engagement Suite—to create a seamless and intelligent support experience. Expected later this year, this unified approach empowers AI agents in Service Cloud with: Salesforce and Google Cloud are also exploring deeper integrations between Slack and Google Workspace, boosting productivity and creating a more cohesive digital workspace for teams and organizations. The companies are currently exploring use cases such as: Expanding Partnership Capabilities and Integrations This partnership goes beyond core product integrations to deliver a more connected and intelligent data foundation for businesses. Expected availability throughout 2025: This landmark partnership between Salesforce and Google represents a strategic paradigm shift in enterprise AI deployment, emphasizing infrastructure innovation, AI capability enhancement, and enterprise value. The integration of Google Search grounding provides a unique competitive advantage, offering real-time, factual responses backed by the world’s most comprehensive search engine. The companies are committed to ongoing innovation and deeper collaboration to empower businesses with even more powerful solutions. 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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Generative AI Prompts with Retrieval Augmented Generation

AI Prompts for Small Businesses

How AI Prompts Can Help Small Businesses Win More Customers Getting new customers can be a challenge for small businesses. You may be eager to explore artificial intelligence (AI) but unsure where to begin. The answer? AI prompts—a simple yet powerful way to automate and optimize sales efforts. This guide explores five AI prompts designed to enhance your sales process, from personalized outreach to lead generation. Let’s dive in! What Is an AI Prompt? An AI prompt is a specific instruction or question given to an AI tool to generate responses or perform tasks. The more precise the prompt, the better the results. For small businesses, AI prompts can: Why AI Matters for Small Business Sales AI is a game-changer for small business sales. It provides insights into customer behavior, streamlines processes, and enhances decision-making. Unlike enterprise AI applications, SMB-focused AI helps automate repetitive tasks, allowing sales teams to focus on relationship-building and closing deals. A strong starting point? AI-powered CRM tools. Integrating AI with your CRM unlocks predictive analytics, automation, and smarter customer engagement. In fact, small businesses using Salesforce AI have reported: AI Prompts vs. Traditional Sales Methods AI-Powered Prompts Traditional Sales Methods Automated lead generation Manual lead hunting Personalized sales emails Generic mass emails Instant follow-ups Delayed responses AI-generated sales scripts Improvised pitches Smart objection handling Reactive responses 5 AI Prompts to Supercharge Your Sales 1. Lead Generation Prompt Objective: Identify potential leads quickly. AI Prompt: “Generate a list of 10 potential leads based on [industry, location, company size].” How It Helps: AI scans data to find ideal customers, saving time and improving outreach accuracy. Example Output: 2. Sales Email Drafting Prompt Objective: Craft compelling emails that boost click rates. AI Prompt: “Write a persuasive sales email to [target] highlighting our [product/service] and inviting them to a demo.” How It Helps: AI generates tailored emails that resonate with prospects, improving open and response rates. Example Output: Subject: Transform Your Operations with Our CRMHi [First Name],I noticed your business is growing rapidly in [industry]. Our CRM can streamline operations and boost efficiency. Let’s schedule a quick demo this week—let me know your availability![Your Name] 3. Customer Follow-Up Prompt Objective: Keep potential customers engaged. AI Prompt: “Write a follow-up email to [customer] who expressed interest in our [product/service], including a gentle reminder and any new updates.” How It Helps: AI ensures timely, professional follow-ups, maintaining engagement without being pushy. Example Output: Subject: Following Up on Our ConversationHi [First Name],I wanted to check in on our discussion about [product/service]. We recently introduced [new feature], which could be a great fit for you. Let me know if you’d like to reconnect.Thanks,[Your Name] 4. Sales Pitch Script Prompt Objective: Develop a persuasive pitch. AI Prompt: “Create a 2-minute sales pitch for our [product/service] emphasizing key benefits and unique selling points.” How It Helps: A well-structured pitch increases confidence and improves conversion rates. Example Output: “Hello! My name is [Your Name] from [Company Name]. We specialize in [product/service]. What sets us apart is [unique benefit]. Our solution has helped companies like yours achieve [specific results]. Interested in learning more?” 5. Objection Handling Prompt Objective: Overcome sales objections effectively. AI Prompt: “List two common objections about our [product/service] and provide persuasive responses.” How It Helps: Prepares sales teams with effective responses to common objections, increasing deal closures. Example Output: Objection: “It’s too expensive.”Response: “Our solution pays for itself within months through increased efficiency.” Objection: “We’re happy with our current provider.”Response: “That’s great! Many of our clients felt the same until they saw how much more they could achieve with our features.” Unlock Growth with AI-Powered Sales Using AI prompts for sales isn’t just an experiment—it’s a proven way to boost efficiency, personalization, and success. Businesses that embrace AI-driven strategies will outpace competitors and scale faster. Ready to transform your sales game? Start using AI prompts today! Contact Tectonic. 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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Decision Domain Management

Roger’s first week in the office felt like a wilder than 8 second ride on a raging rodeo bull. Armed with top-notch academic achievements, he hoped to breeze through operational routines and impress his new managers. What he didn’t expect was to land in a whirlwind of half-documented processes, half-baked ideas, and near-constant firefighting. While the organization had detailed SOPs for simple, routine tasks—approving invoices, updating customer records, and shipping standard orders—Roger quickly realized that behind the structured facade, there was a deeper level of uncertainty. Every day, he heard colleagues discuss “strategic pivots” or “risky product bets.” There were whispers about AI-based initiatives that promised to automate entire workflows. Yet, when the conversation shifted to major decisions—like selecting the right AI use cases—leaders often seemed to rely more on intuition than any structured methodology. One afternoon, Roger was invited to a cross-functional meeting about the company’s AI roadmap. Expecting an opportunity to showcase his knowledge, he instead found himself in a room filled with brilliant minds pulling in different directions. Some argued that AI should focus on automating repetitive tasks aligned with existing SOPs. Others insisted that AI’s real value lay in predictive modeling—helping forecast new market opportunities. The debate went in circles, with no consensus on where or how to allocate AI resources. After an hour of heated discussion, the group dispersed, each manager still convinced of the merit of their own perspective but no closer to a resolution. That evening, as Roger stood near the coffee machine, he muttered to himself, “We have SOPs for simple tasks, but nothing for big decisions. How do we even begin selecting which AI models or agents to develop first?” His frustration led him to a conversation with a coworker who had been with the company for years. “We’re missing something fundamental here,” Roger said. “We’re rushing to onboard AI agents that can mimic our SOPs—like some large language model trained to follow rote instructions—but that’s not where the real value lies. We don’t even have a framework for weighing one AI initiative against another. Everything feels like guesswork.” His coworker shrugged. “That’s just how it’s always been. The big decisions happen behind closed doors, mostly based on experience and intuition. If you’re waiting for a blueprint, you might be waiting a long time.” That was Roger’s ;ight bulb moment. Despite all his academic training, he realized the organization lacked a structured approach to high-level decision-making. Sure, they had polished SOPs for operational tasks, but when it came to determining which AI initiatives to prioritize, there were no formal criteria, classifications, or scoring mechanisms in place. Frustrated but determined, Roger decided he needed answers. Two days later, he approached a coworker known for their deep understanding of business strategy and technology. After a quick greeting, he outlined his concerns—the disorganized AI roadmap meeting, the disconnect between SOP-driven automation and strategic AI modeling, and his growing suspicion that even senior leaders were making decisions without a clear framework. His coworker listened, then gestured for him to take a seat. “Take a breath,” they said. “You’re not the first to notice this gap. Let me explain what’s really missing.” Why SOPs Aren’t Enough The coworker acknowledged that the organization was strong in SOPs. “We’re great at detailing exactly how to handle repetitive, rules-based tasks—like verifying invoices or updating inventory. In those areas, we can plug in AI agents pretty easily. They follow a well-defined script and execute tasks efficiently. But that’s just the tip of the iceberg.” They leaned forward and continued, “Where we struggle, as you’ve discovered, is in decision-making at deeper levels—strategic decisions like which new product lines to pursue, or tactical decisions like selecting the right vendor partnerships. There’s no documented methodology for these. It’s all in people’s heads.” Roger tilted his head, intrigued. “So how do we fix something as basic but great impact as that?” “That’s where Decision Domain Management comes in,” he explained. In the context of data governance and management, data domains are the high-level blocks that data professionals use to define master data. Simply put, data domains help data teams logically group data that is of interest to their business or stakeholders. “Think of it as the equivalent of SOPs—but for decision-making. Instead of prescribing exact steps for routine tasks, it helps classify decisions, assess their importance, and determine whether AI can support them—and if so, in what capacity.” They broke it down further. The Decision Types “First, we categorize decisions into three broad types: Once we correctly classify a decision, we get a clearer picture of how critical it is and whether it requires an AI agent (good at routine tasks) or an AI model (good at predictive and analytical tasks).” The Cynefin Framework The coworker then introduced the Cynefin Framework, explaining how it helps categorize decision contexts: By combining Decision Types with the Cynefin Framework, organizations can determine exactly where AI projects will be most beneficial. Putting It into Practice Seeing the spark of understanding in Roger’s eyes, the coworker provided some real-world examples: ✅ AI agents are ideal for simple SOP-based tasks like invoice validation or shipping notifications. ✅ AI models can support complicated decisions, like vendor negotiations, by analyzing performance metrics. ✅ Strategic AI modeling can help navigate complex decisions, such as predicting new market trends, but human judgment is still required. “Once we classify decisions,” the coworker continued, “we can score and prioritize AI investments based on impact and feasibility. Instead of throwing AI at random problems, we make informed choices.” The Lightbulb Moment Roger exhaled, visibly relieved. “So the problem isn’t just that we lack a single best AI approach—it’s that we don’t have a shared structure for decision-making in the first place,” he said. “If we build that structure, we’ll know which AI investments matter most, and we won’t keep debating in circles.” The coworker nodded. “Exactly. Decision Domain Management is the missing blueprint. We can’t expect AI to handle what even humans haven’t clearly defined. By categorizing

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2024 The Year of Generative AI

Was 2024 the Year Generative AI Delivered? Here’s What Happened Industry experts hailed 2024 as the year generative AI would take center stage. Operational use cases were emerging, technology was simplifying access, and general artificial intelligence felt imminent. So, how much of that actually came true? Well… sort of. As the year wraps up, some predictions have hit their mark, while others — like general AI — remain firmly in development. Let’s break down the trends, insights from investor Tomasz Tunguz, and what’s ahead for 2025. 1. A World Without Reason Three years into our AI evolution, businesses are finding value, but not universally. Tomasz Tunguz categorizes AI’s current capabilities into: While prediction and search have gained traction, reasoning models still struggle. Why? Model accuracy. Tunguz notes that unless a model has repeatedly seen a specific pattern, it falters. For example, an AI generating an FP&A chart might succeed — but introduce a twist, like usage-based billing, and it’s lost. For now, copilots and modestly accurate search reign supreme. 2. Process Over Tooling A tool’s value lies in how well it fits into established processes. As data teams adopt AI, they’re realizing that production-ready AI demands robust processes, not just shiny tools. Take data quality — a critical pillar for AI success. Sampling a few dbt tests or point solutions won’t cut it anymore. Teams need comprehensive solutions that deliver immediate value. In 2025, expect a shift toward end-to-end platforms that simplify incident management, enhance data quality ownership, and enable domain-level solutions. The tools that integrate seamlessly and address these priorities will shape AI’s future. 3. AI: Cost Cutter, Not Revenue Generator For now, AI’s primary business value lies in cost reduction, not revenue generation. Tools like AI-driven SDRs can increase sales pipelines, but often at the cost of quality. Instead, companies are leveraging AI to cut costs in areas like labor. Examples include Klarna reducing two-thirds of its workforce and Microsoft boosting engineering productivity by 50-75%. Cost reduction works best in scenarios with repetitive tasks, hiring challenges, or labor shortages. Meanwhile, specialized services like EvenUp, which automates legal demand letters, show potential for revenue-focused AI use cases. 4. A Slower but Smarter Adoption Curve While 2023 saw a wave of experimentation with AI, 2024 marked a period of reflection. Early adopters have faced challenges with implementation, ROI, and rapidly changing tech. According to Tunguz, this “dress rehearsal” phase has informed organizations about what works and what doesn’t. Heading into 2025, expect a more calculated wave of AI adoption, with leaders focusing on tools that deliver measurable value — and faster. 5. Small Models for Big Gains In enterprise AI, small, fine-tuned models are gaining favor over massive, general-purpose ones. Why? Small models are cheaper to run and often outperform their larger counterparts when fine-tuned for specific tasks. For example, training an 8-billion-parameter model on 10,000 support tickets can yield better results than a general model trained on a broad corpus. Legal and cost challenges surrounding large proprietary models further push enterprises toward smaller, open-source solutions, especially in highly regulated industries. 6. Blurring Lines Between Analysts and Engineers The demand for data and AI solutions is driving a shift in responsibilities. AI-enabled pipelines are lowering barriers to entry, making self-serve data workflows more accessible. This trend could consolidate analytical and engineering roles, streamlining collaboration and boosting productivity in 2025. 7. Synthetic Data: A Necessary Stopgap With finite real-world training data, synthetic datasets are emerging as a stopgap solution. Tools like Tonic and Gretel create synthetic data for AI training, particularly in regulated industries. However, synthetic data has limits. Over time, relying too heavily on it could degrade model performance, akin to a diet lacking fresh nutrients. The challenge will be finding a balance between real and synthetic data as AI advances. 8. The Rise of the Unstructured Data Stack Unstructured data — long underutilized — is poised to become a cornerstone of enterprise AI. Only about half of unstructured data is analyzed today, but as AI adoption grows, this figure will rise. Organizations are exploring tools and strategies to harness unstructured data for training and analytics, unlocking its untapped potential. 2025 will likely see the emergence of a robust “unstructured data stack” designed to drive business value from this vast, underutilized resource. 9. Agentic AI: Not Ready for Prime Time While AI copilots have proven useful, multi-step AI agents still face significant challenges. Due to compounding accuracy issues (e.g., 90% accuracy over three steps drops to ~50%), these agents are not yet ready for production use. For now, agentic AI remains more of a conversation piece than a practical tool. 10. Data Pipelines Are Growing, But Quality Isn’t As enterprises scale their AI efforts, the number of data pipelines is exploding. Smaller, fine-tuned models are being deployed at scale, often requiring hundreds of millions of pipelines. However, this rapid growth introduces data quality risks. Without robust quality management practices, teams risk inconsistent outputs, bottlenecks, and missed opportunities. Looking Ahead to 2025 As AI evolves, enterprises will face growing pains, but the opportunities are undeniable. From streamlining processes to leveraging unstructured data, 2025 promises advancements that will redefine how organizations approach AI and data strategy. The real challenge? Turning potential into measurable, lasting impact. 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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1 Billion Enterprise AI Agents

Inside Salesforce’s Ambition to Deploy 1 Billion Enterprise AI Agents Salesforce is making a bold play in the enterprise AI space with its recently launched Agentforce platform. Introduced at the annual Dreamforce conference, Agentforce is positioned to revolutionize sales, marketing, commerce, and operations with autonomous AI agents, marking a significant evolution from Salesforce’s previous Einstein AI platform. What Makes Agentforce Different? Agentforce operates as more than just a chatbot platform. It uses real-time data and user-defined business rules to proactively manage tasks, aiming to boost efficiency and enhance customer satisfaction. Built on Salesforce’s Data Cloud, the platform simplifies deployment while maintaining powerful customization capabilities: “Salesforce takes care of 80% of the foundational work, leaving customers to focus on the 20% that truly differentiates their business,” explains Adam Forrest, SVP of Marketing at Salesforce. Forrest highlights how Agentforce enables businesses to build custom agents tailored to specific needs by incorporating their own rules and data sources. This user-centric approach empowers admins, developers, and technology teams to deploy AI without extensive technical resources. Early Adoption Across Industries Major brands have already adopted Agentforce for diverse use cases: These real-world applications illustrate Agentforce’s potential to transform workflows in industries ranging from retail to hospitality and education. AI Agents in Marketing: The New Frontier Salesforce emphasizes that Agentforce isn’t just for operations; it’s poised to redefine marketing. AI agents can automate lead qualification, optimize outreach strategies, and enhance personalization. For example, in account-based marketing, agents can analyze customer data to identify high-value opportunities, craft tailored strategies, and recommend optimal engagement times based on user behavior. “AI agents streamline lead qualification by evaluating intent signals and scoring leads, allowing sales teams to focus on high-priority prospects,” says Jonathan Franchell, CEO of B2B marketing agency Ironpaper. Once campaigns are launched, Agentforce monitors performance in real time, offering suggestions to improve ROI and resource allocation. By integrating seamlessly with CRM platforms, the tool also facilitates better collaboration between marketing and sales teams. Beyond B2C applications, AI agents in B2B contexts can evaluate customer-specific needs and provide tailored product or service recommendations, further enhancing client relationships. Enabling Creativity Through Automation By automating repetitive tasks, Agentforce aims to free marketers to focus on strategy and creativity. Dan Gardner, co-founder of Code and Theory, describes this vision: “Agentic AI eliminates friction and dissolves silos in data, organizational structures, and customer touchpoints. The result? Smarter insights, efficient distribution, and more time for creatives to do what they do best: creating.” Competitive Landscape and Challenges Despite its promise, Salesforce faces stiff competition. Microsoft—backed by its integration with OpenAI’s ChatGPT—has unveiled AI tools like Copilot, and other players such as Google, ServiceNow, and HubSpot are advancing their own AI platforms. Salesforce CEO Marc Benioff has not shied away from the rivalry. On the Masters of Scale podcast, he criticized Microsoft for overpromising on products like Copilot, asserting that Salesforce delivers tangible value: “Our tools show users exactly what is possible, what is real, and how easy it is to derive huge value from AI.” Salesforce must also demonstrate Agentforce’s scalability across diverse industries to capture a significant share of the enterprise AI market. A Transformative Vision for the Future Agentforce represents Salesforce’s commitment to bringing AI-powered automation to the forefront of enterprise operations. With its focus on seamless deployment, powerful customization, and real-time capabilities, the platform aims to reshape how businesses interact with customers and optimize internal processes. By targeting diverse use cases and emphasizing accessibility for both technical and non-technical users, Salesforce is betting on Agentforce to drive adoption at scale—and position itself as a leader in the increasingly competitive AI market. 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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Ushering in the Era of AI-Driven Workforces

Agentforce: Ushering in the Era of AI-Driven Workforces “Agentforce is redefining what’s possible in business and beyond, ushering in a new era of AI abundance and limitless workforces that augment every employee, build deeper customer relationships, and drive unprecedented growth and profitability.”— Marc Benioff, Salesforce CEO Key Features and Takeaways Out-of-the-Box AI Agents Agentforce introduces pre-built, customizable agents that are deployable with low-code or no-code tools, working tirelessly across any channel. Its first generally available solution, the Agentforce Service Agent, surpasses traditional chatbots by handling a diverse range of tasks—from simple inquiries to complex scenarios. Key capabilities include: Seamless Integration with Salesforce Platform Agentforce eliminates the complexity of building AI solutions from scratch. Unlike other platforms that demand intricate data integration and custom automation, Agentforce is fully embedded within the Salesforce ecosystem. With Agentforce, businesses can: Always-On Automation Agentforce operates independently of human intervention. Agents can be triggered by changes in data, predefined business rules, or pre-built automations, ensuring uninterrupted workflows. This blend of autonomous operation and human collaboration creates a symbiotic relationship between people and AI, enhancing productivity and customer satisfaction. A Competitive Edge in the AI Space Salesforce emphasizes that Agentforce goes beyond chatbots and copilots, setting a new benchmark for enterprise AI. In a strategic swipe at competitors, Marc Benioff likened rival offerings—like Microsoft’s Dynamics 365 AI agents—to “Clippy 2.0,” critiquing their inaccuracies and risks of corporate data leaks. By contrast, Agentforce builds on Salesforce’s proven Einstein AI platform, ensuring reliability, scalability, and secure integration. Redefining Customer Success Agentforce isn’t just about automation—it’s about driving outcomes. By enabling businesses to automate complex processes, deepen customer relationships, and scale operations, it paves the way for limitless growth in the age of AI. Ready to transform your workforce? With Agentforce, the future of AI-driven business is already here. 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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Microsoft Copilot as “Repackaged ChatGPT”

Salesforce CEO Marc Benioff Criticizes Microsoft Copilot as “Repackaged ChatGPT” Salesforce CEO Marc Benioff took aim at Microsoft’s Copilot AI offerings during Salesforce’s latest quarterly earnings call, dismissing them as a rebranding of OpenAI’s generative AI technology. “In many ways, it’s just repackaged ChatGPT,” Benioff asserted. He contrasted this with Salesforce’s platform, emphasizing its unique ability to operate an entire business. “You won’t find that capability on Microsoft’s website,” he added. Benioff highlighted Agentforce, Salesforce’s autonomous AI agent product, as a transformative force for both Salesforce and its customers. The tool, available on Salesforce’s support portal, is projected to manage up to half of the company’s annual support case volume. The portal currently handles over 60 million sessions and 2 million support cases annually. Agentforce Adoption and Partner Involvement Salesforce COO Brian Millham outlined the significant role of partners in driving Agentforce adoption. During the quarter, global partners were involved in 75% of Agentforce deals, including nine of Salesforce’s top 10 wins. More than 80,000 system integrators have completed Agentforce training, and numerous independent software vendors (ISVs) and technology partners are developing and selling AI agents. Millham pointed to Accenture as a notable example, leveraging Agentforce to enhance sales operations for its 52,000 global sellers. “Our partners are becoming agent-first enterprises themselves,” Millham said. Since its general availability on October 24, Agentforce has already secured 200 deals, with thousands more in the pipeline. Benioff described the tool as part of a broader shift toward digital labor, claiming, “Salesforce is now the largest supplier of digital labor.” Expanding Use Cases and Market Impact Agentforce, powered by Salesforce’s extensive data repository of 740,000 documents and 200–300 petabytes of information, supports diverse use cases, including resolving customer issues, qualifying leads, closing deals, and optimizing marketing campaigns. Salesforce has committed to hiring 1,000–2,000 additional salespeople to expand Agentforce adoption further. Benioff positioned Salesforce as the leading enterprise AI provider, citing its 2 trillion weekly transactions through its Einstein AI product. He claimed Salesforce’s unified codebase provides a competitive edge, unlike rival systems that run disparate applications, potentially limiting AI effectiveness. “This is a bold leap into the future of work,” Benioff said, “where AI agents collaborate with humans to revolutionize customer interactions.” AI Growth Across Salesforce Products AI-driven growth extended beyond Agentforce to other Salesforce products: Millham noted that AI-related $1 million+ deals more than tripled year over year. Financial Highlights For Q3 FY2024, Salesforce reported: Looking ahead, Salesforce expects Q4 revenue between $9.9 billion and $10.1 billion, representing 7%–9% year-over-year growth. The company raised its full fiscal year revenue guidance to .8– billion, an 8%–9% increase. Industry and Product Insights Salesforce’s growth was driven by its core clouds and subscription services, with health, life sciences, manufacturing, and automotive industries performing particularly well. However, retail and consumer goods saw slower growth. While subscription revenue for MuleSoft and Tableau decelerated, Salesforce’s broader portfolio continued to deliver robust performance. Benioff concluded by emphasizing the transformative potential of Salesforce’s AI ecosystem: “This is the next evolution of Salesforce—an intelligent, scalable technology that’s no longer tied to workforce growth.” 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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