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Meta Joins the Race to Reinvent Search with AI

Meta Joins the Race to Reinvent Search with AI

Meta Joins the Race to Reinvent Search with AI Meta, the parent company of Facebook, Instagram, and WhatsApp, is stepping into the evolving AI-driven search landscape. As vendors increasingly embrace generative AI to transform search experiences, Meta aims to challenge Google’s dominance in this space. The company is reportedly developing an AI-powered search engine designed to provide conversational, AI-generated summaries of recent events and news. These summaries would be delivered via Meta’s AI chatbot, supported by a multiyear partnership with Reuters for real-time news insights, according to The Information. AI Search: A Growing Opportunity The push comes as generative AI reshapes search technology across the industry. Google, the long-standing leader, has integrated AI features such as AI Overviews into its search platform, offering users summarized search results, product comparisons, and more. This feature, now available in over 100 countries as of October 2024, signals a shift in traditional search strategies. Similarly, OpenAI, the creator of ChatGPT, has been exploring its own AI search model, SearchGPT, and forging partnerships with media organizations like the Associated Press and Hearst. However, OpenAI faces legal challenges, such as a lawsuit from The New York Times over alleged copyright infringement. Meta’s entry into AI-powered search aligns with a broader trend among tech giants. “It makes sense for Meta to explore this,” said Mark Beccue, an analyst with TechTarget’s Enterprise Strategy Group. He noted that Meta’s approach seems more targeted at consumer engagement than enterprise solutions, particularly appealing to younger audiences who are shifting away from traditional search behaviors. Shifting User Preferences Generational changes in search habits are creating opportunities for new players in the market. Younger users, particularly Gen Z and Gen Alpha, are increasingly turning to platforms like TikTok for lifestyle advice and Amazon for product recommendations, bypassing traditional search engines like Google. “Recent studies show younger generations are no longer using ‘Google’ as a verb,” said Lisa Martin, an analyst with the Futurum Group. “This opens the playing field for competitors like Meta and OpenAI.” Forrester Research corroborates this trend, noting a diversification in search behaviors. “ChatGPT’s popularity has accelerated this shift,” said Nikhil Lai, a Forrester analyst. He added that these changes could challenge Google’s search ad market, with its dominance potentially waning in the years ahead. Meta’s AI Search Potential Meta’s foray into AI search offers an opportunity to enhance user experiences and deepen engagement. Rather than pushing news content into users’ feeds—an approach that has drawn criticism—AI-driven search could empower users to decide what content they see and when they see it. “If implemented thoughtfully, it could transform the user experience and give users more control,” said Martin. This approach could also boost engagement by keeping users within Meta’s ecosystem. The Race for Revenue and Trust While AI-powered search is expected to increase engagement, monetization strategies remain uncertain. Google has yet to monetize its AI Overviews, and OpenAI’s plans for SearchGPT remain unclear. Other vendors, like Perplexity AI, are experimenting with models such as sponsored questions instead of traditional results. Trust remains a critical factor in the evolving search landscape. “Google is still seen as more trustworthy,” Lai noted, with users often returning to Google to verify AI-generated information. Despite the competition, the conversational AI search market lacks a definitive leader. “Google dominated traditional search, but the race for conversational search is far more open-ended,” Lai concluded. Meta’s entry into this competitive space underscores the ongoing evolution of search technology, setting the stage for a reshaped digital landscape driven by AI innovation. 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 Health Cloud Brings Healthcare Transformation Following swiftly after last week’s successful launch of Financial Services Cloud, Salesforce has announced the second installment in its series Read more

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salesforce government digital transformation

Salesforce Drives Digital Transformation in Governmental Agencies

How Salesforce Drives Digital Transformation in Governmental Agencies in 2025 In the evolving digital age, government agencies face an increasing demand to modernize their services, improve citizen engagement, and deliver seamless digital experiences. These organizations require transformational technologies that not only streamline internal operations but also adopt a citizen-first approach. Salesforce emerges as a key enabler of this transformation, empowering government agencies with tools to build unified, transparent platforms while fostering efficiency and enhancing citizen interaction. Leveraging Salesforce Commerce Cloud and Salesforce CRM, agencies can overcome common challenges and embrace a more digitally enabled public sector. Let’s explore the pressing challenges government agencies face and how Salesforce provides practical, scalable solutions to address them. 1. Citizen Engagement and Accessibility: Bridging the Digital Divide Challenge: Citizens now expect government services to be as user-friendly and accessible as private-sector experiences. Lengthy response times, disconnected platforms, and inconsistent experiences across digital and physical touchpoints erode trust and hinder accessibility. Solution: 2. Data Security and Compliance: Safeguarding Citizen Trust Challenge: Handling sensitive citizen data requires robust security and strict compliance with regulations like GDPR, CCPA, and other local data privacy laws. Solution: 3. Legacy Systems and Integration: Modernizing Infrastructure Challenge: Legacy systems often limit agility, making it difficult to integrate new technologies and slowing the pace of digital transformation. Solution: 4. Budget Constraints: Implementing Cost-Effective Solutions Challenge: Budget limitations often hinder the adoption of new technologies, especially those requiring significant upfront investment. Solution: 5. Efficient Service Delivery: Streamlining Workflows Challenge: Paper-heavy, bureaucratic processes delay service delivery and frustrate both staff and citizens. Solution: 6. Data-Driven Decision-Making: Analytics for Informed Policies Challenge: Generating actionable insights from vast amounts of data is challenging, affecting policymaking and government efficiency. Solution: 7. Enhancing Collaboration: A Unified Workforce Challenge: Siloed departments hinder collaboration and reduce overall productivity, making it difficult to provide cohesive citizen services. Solution: 8. Real-Time Responsiveness: Meeting Citizen Expectations Challenge: Citizens expect real-time support and proactive communication from government agencies. Delays lead to frustration and diminished trust. Solution: Transforming Government Services with Salesforce Salesforce Commerce Cloud and Salesforce CRM are tailored to address public sector challenges in 2025. By leveraging these tools, government agencies can: Salesforce offers a clear path to a digitally empowered future, enabling government agencies to meet today’s demands while laying the foundation for innovation. Ready to Transform?If your agency is ready to embrace digital transformation, streamline operations, and enhance citizen services, Salesforce can help you get there. Let’s discuss how Salesforce solutions, supported by expert implementation, can drive meaningful change for your organization and your citizens. 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 Health Cloud Brings Healthcare Transformation Following swiftly after last week’s successful launch of Financial Services Cloud, Salesforce has announced the second installment in its series Read more

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Empowering LLMs with a Robust Agent Framework

PydanticAI: Empowering LLMs with a Robust Agent Framework As the Generative AI landscape evolves at a historic pace, AI agents and multi-agent systems are expected to dominate 2025. Industry leaders like AWS, OpenAI, and Microsoft are racing to release frameworks, but among these, PydanticAI stands out for its unique integration of the powerful Pydantic library with large language models (LLMs). Why Pydantic Matters Pydantic, a Python library, simplifies data validation and parsing, making it indispensable for handling external inputs such as JSON, user data, or API responses. By automating data checks (e.g., type validation and format enforcement), Pydantic ensures data integrity while reducing errors and development effort. For instance, instead of manually validating fields like age or email, Pydantic allows you to define models that automatically enforce structure and constraints. Consider the following example: pythonCopy codefrom pydantic import BaseModel, EmailStr class User(BaseModel): name: str age: int email: EmailStr user_data = {“name”: “Alice”, “age”: 25, “email”: “[email protected]”} user = User(**user_data) print(user.name) # Alice print(user.age) # 25 print(user.email) # [email protected] If invalid data is provided (e.g., age as a string), Pydantic throws a detailed error, making debugging straightforward. What Makes PydanticAI Special Building on Pydantic’s strengths, PydanticAI brings structured, type-safe responses to LLM-based AI agents. Here are its standout features: Building an AI Agent with PydanticAI Below is an example of creating a PydanticAI-powered bank support agent. The agent interacts with customer data, evaluates risks, and provides structured advice. Installation bashCopy codepip install ‘pydantic-ai-slim[openai,vertexai,logfire]’ Example: Bank Support Agent pythonCopy codefrom dataclasses import dataclass from pydantic import BaseModel, Field from pydantic_ai import Agent, RunContext from bank_database import DatabaseConn @dataclass class SupportDependencies: customer_id: int db: DatabaseConn class SupportResult(BaseModel): support_advice: str = Field(description=”Advice for the customer”) block_card: bool = Field(description=”Whether to block the customer’s card”) risk: int = Field(description=”Risk level of the query”, ge=0, le=10) support_agent = Agent( ‘openai:gpt-4o’, deps_type=SupportDependencies, result_type=SupportResult, system_prompt=( “You are a support agent in our bank. Provide support to customers and assess risk levels.” ), ) @support_agent.system_prompt async def add_customer_name(ctx: RunContext[SupportDependencies]) -> str: customer_name = await ctx.deps.db.customer_name(id=ctx.deps.customer_id) return f”The customer’s name is {customer_name!r}” @support_agent.tool async def customer_balance(ctx: RunContext[SupportDependencies], include_pending: bool) -> float: return await ctx.deps.db.customer_balance( id=ctx.deps.customer_id, include_pending=include_pending ) async def main(): deps = SupportDependencies(customer_id=123, db=DatabaseConn()) result = await support_agent.run(‘What is my balance?’, deps=deps) print(result.data) result = await support_agent.run(‘I just lost my card!’, deps=deps) print(result.data) Key Concepts Why PydanticAI Matters PydanticAI simplifies the development of production-ready AI agents by bridging the gap between unstructured LLM outputs and structured, validated data. Its ability to handle complex workflows with type safety and its seamless integration with modern AI tools make it an essential framework for developers. As we move toward a future dominated by multi-agent AI systems, PydanticAI is poised to be a cornerstone in building reliable, scalable, and secure AI-driven applications. 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 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 Health Cloud Brings Healthcare Transformation Following swiftly after last week’s successful launch of Financial Services Cloud, Salesforce has announced the second installment in its series Read more Top Ten Reasons Why Tectonic Loves the Cloud The Cloud is Good for Everyone – Why Tectonic loves the cloud You don’t need to worry about tracking licenses. Read more

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Salesforce Heroku

Salesforce Modernizes Heroku

Salesforce Modernizes Heroku PaaS with Kubernetes, .NET, and More Salesforce is rolling out a significant upgrade to Heroku, its popular Platform-as-a-Service (PaaS), to better align with modern developer needs. Key enhancements include support for Amazon Elastic Container Registry (ECR), AWS Global Accelerator, Elastic Kubernetes Service (EKS), AWS Graviton processors, and AWS Bedrock. The revamped platform, dubbed the Heroku Next Generation Platform, was unveiled at the AWS Re:Invent 2024 conference. While some features are in public beta, Salesforce plans to fully release additional capabilities by 2025. Catering to the Modern DeveloperHeroku’s overhaul reflects the growing dominance of Kubernetes and the increasing demand for AI-enabled applications, including autonomous ones built in Salesforce’s Agentforce. Rebecca Wettemann, founder of Valoir, notes that these trends required Salesforce to evolve Heroku to remain competitive in the PaaS market. Kubernetes, for instance, is widely used for app containerization across clouds, while AI applications are becoming a focal point for many developers. “The update broadens Heroku’s appeal to developers who rely on Kubernetes or are building AI applications,” Wettemann said. Another notable addition is support for open telemetry, a standardized approach to monitoring app performance. Developers can now stream real-time metrics such as app health and container logs into their preferred visualization tools. “This integration offers unparalleled flexibility for our customers to work with a wide ecosystem of telemetry collectors,” said Gail Frederick, Heroku’s CTO at Salesforce. Introducing .NET SupportOne of the standout updates is the inclusion of .NET, a widely used open-source framework. Developers can now use .NET languages such as C#, F#, and Visual Basic alongside Heroku’s existing support for languages like Python, Ruby, Java, Node.js, and Scala. This strategic move aligns Heroku with a broader audience, especially developers familiar with Microsoft’s ecosystem. “Heroku is all about developer choice,” said Frederick. “Adding .NET ensures we continue to serve diverse needs.” Streamlining Development and DeploymentHeroku aims to simplify app development by automating infrastructure management and lifecycle tasks. “Heroku is the platform developers turn to when they need things to work without thinking about infrastructure,” said Adam Zimman, Senior Director of Product Marketing at Heroku. The platform abstracts complex deployment steps, such as configuration, provisioning, and autoscaling, enabling developers to focus on coding and innovation. Apps are deployed as pre-packaged “slugs” that run on Heroku’s dynos, isolated Unix-based containers. Developers can scale their apps dynamically by adding or removing dynos via the platform’s management interface. Efficiency Gains for BusinessesZimman highlighted the efficiency benefits of Heroku’s approach, projecting up to a 40% boost in developer productivity and a 30% reduction in developer expenses. “By taking care of the heavy lifting, we enable businesses to deliver applications faster and more cost-effectively,” he explained. Heroku also offers over 500 pre-built add-ons and build packs, covering functions like messaging, database management, and email services. These integrations provide additional flexibility and speed up the development lifecycle. Scaling Beyond StartupsWhile Heroku is often associated with startups, Salesforce has scaled the platform to accommodate enterprise-grade applications. “Heroku now evolves with your business,” said Chris Peterson, Senior Director of Product Management at Heroku. The platform has powered over 13 million applications and 38 million managed data stores since its launch in 2007. Many Salesforce applications also run on Heroku, leveraging deep integrations to extend the Salesforce ecosystem seamlessly. Heroku’s pricing starts at $7 per month for a basic plan and scales up to $40,000 per month for enterprise-grade solutions, ensuring it meets the needs of organizations of all sizes. With these updates, Heroku continues to position itself as a go-to platform for developers, enabling faster time-to-market, reduced operational complexity, and a better overall development experience. 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 Health Cloud Brings Healthcare Transformation Following swiftly after last week’s successful launch of Financial Services Cloud, Salesforce has announced the second installment in its series Read more

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More Cool AI Tools

Salesforce Expands Partnership with AWS

Salesforce Expands Partnership with AWS: AI and Marketplace Integration Salesforce (NYSE: CRM) is making significant strides in its partnership with Amazon (NASDAQ: AMZN), unveiling an expanded collaboration at AWS. Customers can now purchase Salesforce products directly through the AWS Marketplace, paying with AWS credits. This integration aims to simplify access to Salesforce offerings, enhance data integration capabilities, and leverage generative AI tools. Key Announcements: Marc Benioff, Chair and CEO of Salesforce, highlighted the importance of this milestone: “We’re bringing together the No. 1 AI CRM provider and the leading cloud provider to deliver a trusted, open, integrated data and AI platform. With these enhancements to our partnership, we’re enabling all of our customers to be more innovative, productive, and successful in this new AI era.” AWS CEO Adam Selipsky echoed these sentiments, emphasizing how the partnership will enable joint customers to “innovate, collaborate, and build more customer-focused applications.” Strategic Benefits: Revenue-Sharing Structure: Like app stores, Amazon will take a percentage of Salesforce’s revenue generated through AWS Marketplace. Despite this, the potential growth in sales and efficiency gains may outweigh the costs. Market Reaction: Following the announcement, both Salesforce and Amazon shares experienced a boost in premarket trading, signaling investor optimism about the partnership’s potential. This expansion reinforces Salesforce’s strategy of aligning with major cloud providers to meet growing demand for AI-driven, integrated data platforms. As this collaboration evolves, it is poised to drive significant value for businesses navigating the AI and data revolution. 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 Health Cloud Brings Healthcare Transformation Following swiftly after last week’s successful launch of Financial Services Cloud, Salesforce has announced the second installment in its series Read more

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Government CRM System

Salesforce Announces Top Secret Gov Cloud

This advanced cloud solution is hosted on Amazon Web Services’ Top Secret cloud infrastructure. According to Salesforce’s press release, Government Cloud Premium is built with an API-first architecture, enabling agencies to leverage other data sources and systems, including proprietary AI applications, to enhance mission-critical operations.

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Salesforce Agents are Transforming Internal Workflows

How Salesforce Agents are Transforming Internal Workflows Salesforce CIO and Executive Vice President Juan Perez, with three decades of IT leadership experience, is leading the charge in deploying generative AI solutions like Agentforce within Salesforce. Perez’s approach reflects lessons learned during his tenure at UPS, where he oversaw IT operations for a global enterprise. His strategies emphasize scalability, data strategy, and modernization to support growth, with AI now playing a pivotal role. UPS Lessons Applied to Salesforce Perez draws on his UPS experience in managing IT at scale to navigate Salesforce’s needs as a growing enterprise. At UPS, he managed a complex, global IT organization supporting diverse operations, from running an airline to ensuring timely package delivery. Similarly, Salesforce’s IT strategy prioritizes scalable solutions, robust data strategies, and AI integration. “Salesforce intelligently realized the importance of leveraging its own technologies, including AI, to modernize and support growth,” Perez explains. Generative AI’s Transformative Potential Perez views generative AI (GenAI) as a transformative force on par with the internet’s emergence in the 1990s. By reducing the time spent on data analysis and decision-making, AI enables teams to focus on actions that improve productivity and customer service. While GenAI isn’t a solution in itself, Perez sees it as an enabler that amplifies human efforts. Evaluating and Integrating AI in Salesforce’s Stack Salesforce adopts a rigorous, multi-step approach to evaluate new technologies, including large language models (LLMs) and generative AI tools. Perez outlines a “filtering mechanism” for implementation: This structured approach ensures AI investments are both impactful and sustainable. Measuring AI’s ROI To quantify the impact of AI, Salesforce evaluates metrics like lines of code generated using AI tools and time saved through automation. In one example, approximately 26% of production-ready code in a recent deployment was AI-generated. This efficiency is factored into planning and budgeting, allowing resources to be reallocated to other initiatives. Mitigating “Shadow AI” Risks Perez warns against “shadow AI,” where decentralized or unmanaged AI implementations can lead to security, data privacy, and investment inefficiencies. He stresses the need for visibility and governance to prevent these risks. To address this, Salesforce has established an AI Council that is evolving into an Agentforce Center of Excellence. This body ensures responsible development, aligns projects with organizational goals, and maintains oversight of AI implementations across the enterprise. Responsible and Scalable AI Adoption Salesforce’s commitment to using its own products extends to Agentforce, a generative AI suite designed to streamline internal workflows. With a focus on governance, scalability, and measurable impact, Salesforce sets a benchmark for AI adoption. As Perez explains, “We ensure our AI solutions are safe, effective, and capable of driving significant value while remaining aligned with our strategic goals.” By combining rigorous evaluation, measurable outcomes, and proactive governance, Salesforce demonstrates how AI can transform workflows while mitigating risks. 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 Health Cloud Brings Healthcare Transformation Following swiftly after last week’s successful launch of Financial Services Cloud, Salesforce has announced the second installment in its series Read more

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AI Energy Solution

AI Energy Solution

Could the AI Energy Solution Make AI Unstoppable? The Rise of Brain-Based AI In 2002, Jason Padgett, a furniture salesman from Tacoma, Washington, experienced a life-altering transformation after a traumatic brain injury. Following a violent assault, Padgett began to perceive the world through intricate patterns of geometry and fractals, developing a profound, intuitive grasp of advanced mathematical concepts—despite no formal education in the subject. His extraordinary abilities, emerging from the brain’s adaptation to injury, revealed an essential truth: the human brain’s remarkable capacity for resilience and reorganization. This phenomenon underscores the brain’s reliance on inhibition, a critical mechanism that silences or separates neural processes to conserve energy, clarify signals, and enable complex cognition. Researcher Iain McGilchrist highlights that this ability to step back from immediate stimuli fosters reflection and thoughtful action. Yet this foundational trait—key to the brain’s efficiency and adaptability—is absent from today’s dominant AI models. Current AI systems, like Transformers powering tools such as ChatGPT, lack inhibition. These models rely on probabilistic predictions derived from massive datasets, resulting in inefficiencies and an inability to learn independently. However, the rise of brain-based AI seeks to emulate aspects of inhibition, creating systems that are not only more energy-efficient but also capable of learning from real-world, primary data without constant retraining. The AI Energy Problem Today’s AI landscape is dominated by Transformer models, known for their ability to process vast amounts of secondary data, such as scraped text, images, and videos. While these models have propelled significant advancements, their insatiable demand for computational power has exposed critical flaws. As energy costs rise and infrastructure investment balloons, the industry is beginning to reevaluate its reliance on Transformer models. This shift has sparked interest in brain-inspired AI, which promises sustainable solutions through decentralized, self-learning systems that mimic human cognitive efficiency. What Brain-Based AI Solves Brain-inspired models aim to address three fundamental challenges with current AI systems: The human brain’s ability to build cohesive perceptions from fragmented inputs—like stitching together a clear visual image from saccades and peripheral signals—serves as a blueprint for these models, demonstrating how advanced functionality can emerge from minimal energy expenditure. The Secret to Brain Efficiency: A Thousand Brains Jeff Hawkins, the creator of the Palm Pilot, has dedicated decades to understanding the brain’s neocortex and its potential for AI design. His Thousand Brains Theory of Intelligence posits that the neocortex operates through a universal algorithm, with approximately 150,000 cortical columns functioning as independent processors. These columns identify patterns, sequences, and spatial representations, collaborating to form a cohesive perception of the world. Hawkins’ brain-inspired approach challenges traditional AI paradigms by emphasizing predictive coding and distributed processing, reducing energy demands while enabling real-time learning. Unlike Transformers, which centralize control, brain-based AI uses localized decision-making, creating a more scalable and adaptive system. Is AI in a Bubble? Despite immense investment in AI, the market’s focus remains heavily skewed toward infrastructure rather than applications. NVIDIA’s data centers alone generate 5 billion in annualized revenue, while major AI applications collectively bring in just billion. This imbalance has led to concerns about an AI bubble, reminiscent of the early 2000s dot-com and telecom busts, where overinvestment in infrastructure outpaced actual demand. The sustainability of current AI investments hinges on the viability of new models like brain-based AI. If these systems gain widespread adoption within the next decade, today’s energy-intensive Transformer models may become obsolete, signaling a profound market correction. Controlling Brain-Based AI: A Philosophical Divide The rise of brain-based AI introduces not only technical challenges but also philosophical ones. Scholars like Joscha Bach argue for a reductionist approach, constructing intelligence through mathematical models that approximate complex phenomena. Others advocate for holistic designs, warning that purely rational systems may lack the broader perspective needed to navigate ethical and unpredictable scenarios. This philosophical debate mirrors the physical divide in the human brain: one hemisphere excels in reductionist analysis, while the other integrates holistic perspectives. As AI systems grow increasingly complex, the philosophical framework guiding their development will profoundly shape their behavior—and their impact on society. The future of AI lies in balancing efficiency, adaptability, and ethical design. Whether brain-based models succeed in replacing Transformers will depend not only on their technical advantages but also on our ability to guide their evolution responsibly. As AI inches closer to mimicking human intelligence, the stakes have never been higher. 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 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 Health Cloud Brings Healthcare Transformation Following swiftly after last week’s successful launch of Financial Services Cloud, Salesforce has announced the second installment in its series Read more Top Ten Reasons Why Tectonic Loves the Cloud The Cloud is Good for Everyone – Why Tectonic loves the cloud You don’t need to worry about tracking licenses. Read more

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Ready or Not Here AI Agents Come

Ready or Not Here AI Agents Come

As organizations embrace the growing presence of AI agents, leaders must address concerns about allowing autonomous systems to operate in sensitive environments. AI agents, often viewed as the future of how enterprises deploy large language models, raise important questions around security and identity management. The rise of agentic AI has been notable in 2024, with Google launching its Vertex AI Agents, Salesforce introducing Agentforce, and AWS rolling out the re Agent for Amazon Bedrock. These agents promise to deliver significant value by executing tasks using natural language commands, reasoning through the best solutions, and taking action without human intervention. However, as Katie Norton, research manager for DevSecOps & Software Supply Chain Security at IDC, highlighted at Venafi’s Machine Identity Conference, AI agents present unique security challenges. Unlike robotic process automation (RPA), AI agents act autonomously, creating a need for secure machine identities, especially as they access sensitive data across multiple systems. Matt McLarty, CTO at Boomi, added that the complexity of managing agentic AI revolves around ensuring proper authentication and authorization. He pointed out scenarios where agents dynamically interact with systems, such as opening support tickets, which require secure verification of agent access rights. While these agents offer significant potential, businesses are not yet prepared to issue credentials for autonomous agents, according to McLarty. The current reliance on existing authentication and authorization systems needs to evolve to support these new AI capabilities. He also emphasized the importance of pairing agents with human oversight, ensuring that access and actions are traceable. As AI advances into its third wave, characterized by autonomous agents capable of reasoning and action, companies need to rethink their approaches to workforce collaboration. These agents will handle low-value, time-consuming tasks, while human workers focus on strategic initiatives. In sales, for example, AI agents will manage customer interactions, schedule meetings, and resolve basic issues, allowing salespeople to build deeper relationships. At Dreamforce 2024, Salesforce unveiled Agentforce, a platform that empowers organizations to build and deploy customized AI agents across service, sales, marketing, and commerce. This suite aims to increase efficiency, productivity, and customer satisfaction. However, for AI agents to succeed, they must complement human skills and operate within established guardrails. Organizations need to implement audit trails to ensure accountability and develop training programs for employees to effectively collaborate with AI. Ultimately, the future of work will feature a hybrid workforce where humans and AI agents work together to drive innovation and success. As companies move forward, they must ensure AI agents understand their limits and recognize when human intervention is necessary. This balance between AI-driven efficiency and human oversight will enable businesses to thrive in an ever-evolving landscape. 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 Health Cloud Brings Healthcare Transformation Following swiftly after last week’s successful launch of Financial Services Cloud, Salesforce has announced the second installment in its series Read more

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DHS Introduces AI Framework to Protect Critical Infrastructure

DHS Introduces AI Framework to Protect Critical Infrastructure

The Department of Homeland Security (DHS) has unveiled the Roles and Responsibilities Framework for Artificial Intelligence in Critical Infrastructure, a voluntary set of guidelines designed to ensure the safe and secure deployment of AI across the systems that power daily life. From energy grids to water systems, transportation, and communications, critical infrastructure increasingly relies on AI for enhanced efficiency and resilience. While AI offers transformative potential—such as detecting earthquakes, optimizing energy usage, and streamlining logistics—it also introduces new vulnerabilities. Framework Overview The framework, developed with input from cloud providers, AI developers, critical infrastructure operators, civil society, and public sector organizations, builds on DHS’s broader policies from 2023, which align with White House directives. It aims to provide a shared roadmap for balancing AI’s benefits with its risks. AI Vulnerabilities in Critical Infrastructure The DHS framework categorizes vulnerabilities into three key areas: The guidelines also address sector-specific vulnerabilities and offer strategies to ensure AI strengthens resilience while minimizing misuse risks. Industry and Government Support Arvind Krishna, Chairman and CEO of IBM, lauded the framework as a “powerful tool” for fostering responsible AI development. “We look forward to working with DHS to promote shared and individual responsibilities in advancing trusted AI systems.” Marc Benioff, CEO of Salesforce, emphasized the framework’s role in fostering collaboration among stakeholders while prioritizing trust and accountability. “Salesforce is committed to humans and AI working together to advance critical infrastructure industries in the U.S. We support this framework as a vital step toward shaping the future of AI in a safe and sustainable manner.” DHS Secretary Alejandro N. Mayorkas highlighted the urgency of proactive action. “AI offers a once-in-a-generation opportunity to improve the strength and resilience of U.S. critical infrastructure, and we must seize it while minimizing its potential harms. The framework, if widely adopted, will help ensure the safety and security of critical services.” DHS Recommendations for Stakeholders A Call to Action DHS encourages widespread adoption of the framework to build safer, more resilient critical infrastructure. By prioritizing trust, transparency, and collaboration, this initiative aims to guide the responsible integration of AI into essential systems, ensuring they remain secure and effective as technology continues to evolve. 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 Health Cloud Brings Healthcare Transformation Following swiftly after last week’s successful launch of Financial Services Cloud, Salesforce has announced the second installment in its series Read more

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AI Agent Rivalry

AI Agent Rivalry

Microsoft and Salesforce’s AI Agent Rivalry Heats Up The battle for dominance in the AI agent space has escalated, with Salesforce CEO Marc Benioff intensifying his criticism of Microsoft’s AI solutions. Following remarks at Dreamforce 2024, Benioff took to X (formerly Twitter) to call out Microsoft for what he called “rebranding Copilot as ‘agents’ in panic mode.” The AI Agent rivalry winner may be determined not by flashy features but by delivering tangible, transformative outcomes for businesses navigating the complexities of AI adoption. AI Agent Rivalry. Benioff didn’t hold back, labeling Microsoft’s Copilot as “a flop”, citing issues like data leaks, inaccuracies, and requiring customers to build their own large language models (LLMs). In contrast, he touted Salesforce’s Agentforce as a solution that autonomously drives sales, service, marketing, analytics, and commerce without the complications he attributes to Microsoft’s offerings. Microsoft’s Copilot: A New UI for AI Microsoft recently unveiled new autonomous agent capabilities for Copilot Studio and Dynamics 365, positioning these agents as tools to enhance productivity across teams and functions. CEO Satya Nadella described Copilot as “the UI for AI” and emphasized its flexibility, allowing businesses to create, manage, and integrate agents seamlessly. Despite the fanfare, Benioff dismissed Copilot’s updates, likening it to “Clippy 2.0” and claiming it fails to deliver accuracy or transformational impact. Salesforce Expands Agentforce with Strategic Partnerships At Dreamforce 2024, Salesforce unveiled its Agentforce Partner Network, a global ecosystem featuring collaborators like AWS, Google Cloud, IBM, and Workday. The move aims to bolster the capabilities of Agentforce, Salesforce’s AI-driven platform that delivers tailored, autonomous business solutions. Agentforce allows businesses to deploy customizable agents without complex coding. With features like the Agent Builder, users can craft workflows and instructions in natural language, making the platform accessible to both technical and non-technical teams. Flexibility and Customization: Salesforce vs. Microsoft Both Salesforce and Microsoft emphasize AI’s transformative potential, but their approaches differ: Generative AI vs. Predictive AI Salesforce has doubled down on generative AI, with Einstein GPT producing personalized content using CRM data while also providing predictive analytics to forecast customer behavior and sales outcomes. Microsoft, on the other hand, combines generative and predictive AI across its ecosystem. Copilot not only generates content but also performs autonomous decision-making in Dynamics 365 and Azure, positioning itself as a comprehensive enterprise solution. The Rise of Multi-Agent AI Systems The competition between Microsoft and Salesforce reflects a broader trend in AI-driven automation. Companies like OpenAI are experimenting with frameworks like Swarm, which simplifies the creation of interconnected AI agents for tasks such as lead generation and marketing campaign development. Similarly, startups like DevRev are introducing conversational AI builders to design custom agents, offering enterprises up to 95% task accuracy without the need for coding. What Lies Ahead in the AI Agent Landscape? As Salesforce and Microsoft push the boundaries of AI integration, businesses are evaluating these tools for their flexibility, customization, and impact on operations. While Salesforce leads in CRM-focused AI, Microsoft’s integrated approach appeals to enterprises seeking cross-functional AI solutions. In the end, the winner may be determined not by flashy features but by delivering tangible, transformative outcomes for businesses navigating the complexities of AI adoption. AI Agent Rivalry. 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 Health Cloud Brings Healthcare Transformation Following swiftly after last week’s successful launch of Financial Services Cloud, Salesforce has announced the second installment in its series Read more

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AI Won't Hurt Salesforce

AI Won’t Hurt Salesforce

Marc Benioff Dismisses AI Threats, Sets Sights on a Billion AI Agents in One Year Salesforce CEO Marc Benioff has no doubts about the transformative potential of AI for enterprise software, particularly Salesforce itself. At the core of his vision are AI agents—autonomous software bots designed to handle routine tasks, freeing up human workers to focus on more strategic priorities. “What if your workforce had no limits? That’s a question we couldn’t even ask over the past 25 years of Salesforce—or the 45 years I’ve been in software,” Benioff said during an appearance on TechCrunch’s Equity podcast. The Billion-Agent Goal Benioff revealed that Salesforce’s recently launched Agentforce platform is already being adopted by “hundreds of customers” and aims to deploy a billion AI agents within a year. These agents are designed to handle tasks across industries—from enhancing customer experiences at retail brands like Gucci to assisting patients with follow-ups in healthcare. To illustrate, Benioff shared his experience with Disney’s virtual Private Tour Guides. “The AI agent analyzed park flow, ride history, and preferences, then guided me to attractions I hadn’t visited before,” he explained. Competition with Microsoft and the AI Landscape While Benioff is bullish on AI, he hasn’t hesitated to criticize competitors—particularly Microsoft. When Microsoft unveiled its new autonomous agents for Dynamics 365 in October, Benioff dismissed them as uninspired. “Copilot is the new Clippy,” he quipped, referencing Microsoft’s infamous virtual assistant from the 1990s. Benioff also cited Gartner research highlighting data security issues and administrative flaws in Microsoft’s AI tools, adding, “Copilot has disappointed so many customers. It’s not transforming companies.” However, industry skeptics argue that the real challenge to Salesforce isn’t Microsoft but the wave of AI-powered startups disrupting traditional enterprise software. With tools like OpenAI’s ChatGPT and Klarna’s in-house AI assistant “Kiki,” companies are starting to explore GenAI solutions that can replace legacy platforms like Salesforce altogether. For example, Klarna recently announced it was moving away from Salesforce and Workday, favoring GenAI tools that enable seamless, conversational interfaces and faster data access. Why Salesforce Is Positioned to Win Despite the noise, Benioff remains confident that Salesforce’s extensive data infrastructure gives it a significant edge. “We manage 230 petabytes of customer data with robust security and sharing models. That’s what allows AI to thrive in our ecosystem,” he said. While companies may question how other platforms like OpenAI handle data, Salesforce offers an integrated approach, reducing the need for complex data migrations to other clouds, such as Microsoft Azure. Salesforce’s Own Use of AI Benioff also highlighted Salesforce’s internal adoption of Agentforce, using AI agents in its customer service operations, sales processes, and help centers. “If you’re authenticated on help.salesforce.com, you’re already interacting with our agent,” he noted. AI Startups: Threat or Opportunity? As for concerns about AI startups overtaking Salesforce, Benioff sees them as acquisition opportunities rather than existential threats. “We’ve made over 60 acquisitions, many of them startups,” he said. He pointed to Agentforce itself, which was built using technology from Airkit.ai, a startup founded by a former Salesforce employee. Salesforce Ventures initially invested in Airkit.ai before acquiring and integrating it into its platform. The Path Forward Benioff is resolute in his belief that AI won’t hurt Salesforce—instead, it will revolutionize how businesses operate. While skeptics warn of a seismic shift in enterprise software, Benioff’s strategy is clear: lean into AI, leverage data, and stay agile through innovation and acquisitions. “We’re just getting started,” he concluded, reiterating his vision for a future where AI agents expand the possibilities of work and customer experience like never before. 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 Health Cloud Brings Healthcare Transformation Following swiftly after last week’s successful launch of Financial Services Cloud, Salesforce has announced the second installment in its series Read more

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healthcare Can prioritize ai governance

Healthcare Can Prioritize AI Governance

As artificial intelligence gains momentum in healthcare, it’s critical for health systems and related stakeholders to develop robust AI governance programs. AI’s potential to address challenges in administration, operations, and clinical care is drawing interest across the sector. As this technology evolves, the range of applications in healthcare will only broaden.

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