Generative AI Archives - gettectonic.com - Page 4

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Sales Email Prompt Template

Sales Email Prompt Template

Salesforce Guide: Creating a Sales Email Prompt Template Want to create personalized, targeted sales emails efficiently? By leveraging Salesforce’s LLM capabilities, you can design a Sales Email Prompt Template that uses customer insights and relationship history to generate high-quality emails at scale. Reusable for different products and audiences, these templates save time and simplify workflows. Here’s how to set it up: 1. Enable Einstein Setup 2. Enable Einstein for Sales 3. Create a Sales Email Prompt Template 4. Draft and Ground the Prompt in the Template Workspace 🔔🔔  Follow us on LinkedIn  🔔🔔 Example Prompt: plaintextCopy codeYou are a {!$Input:Sender.Title} and your name is {!$Input:Sender.Name} from {!$Input:Sender.CompanyName}. Your prospect is {!$Input:Recipient.Name}, a {!$Input:Recipient.Title}. They are based in {!$Input:Recipient.MailingCity}. In the email, invite the prospect to attend the event “Floating on Clouds: Ontario Kickoff” on September 18. This event is for customers of Cloud Kicks, new and old, to network and preview upcoming products. Keep the email within 70 words, explain the benefits of attending, and mention that you’d be happy to chat further at the event or online if needed. 5. Preview the Template 6. Save and Activate the Prompt 7. Send Emails Using the Prompt 8. Adjust and Finalize the Email By following these steps, you can seamlessly create and use dynamic sales email templates to elevate your outreach efforts. 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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No-Code Generative AI

No-Code Generative AI

The future of AI belongs to everyone, and no-code platforms are the key to making this vision a reality. By embracing this approach, enterprises can ensure that AI-driven innovation is inclusive, efficient, and transformative.

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being ai-driven

The Impact of AI on Jobs

The Impact of AI on Jobs: A Historical and Transformative Perspective For centuries, people have feared losing jobs to technological advancements. From the introduction of the printing press in 1440 to the widespread adoption of assembly lines in manufacturing, history has followed a familiar pattern: a wave of panic followed by a surge of innovation. Today, with AI in the spotlight, headlines warn of job-stealing robots. Yet, AI is not here to take jobs; it’s revealing new ones—and at an unprecedented pace. A Paradigm Shift: AI as a Job Creator Contrary to popular belief, AI is reshaping the job market for the better. Rather than replacing workers, it amplifies human potential, pushing society toward work that is creative, strategic, and uniquely human. Instead of asking, “Will AI take my job?” the better question is, “What new opportunities can AI unlock?” The answers are exciting and transformative. Lessons from the Past Technological disruption is far from new. The printing press, the weaving loom, and even the internet all provoked fears of mass unemployment. Yet, each time, these innovations sparked transformation rather than devastation. Consider the ATM, introduced in the 1960s. Initially, bank tellers feared redundancy. However, rather than replacing tellers, ATMs automated routine tasks, freeing human workers to focus on customer service and financial advising. In fact, the number of bank tellers increased in the decades following ATM adoption. AI follows the same trajectory. By handling repetitive tasks like sorting emails or managing schedules, AI frees workers to focus on areas requiring emotional intelligence, creativity, and problem-solving. AI: A Partner, Not a Competitor AI excels in areas that humans struggle with, such as processing vast datasets, recognizing patterns, and executing repetitive tasks with precision. However, it lacks empathy, context, and abstract thinking—traits that remain uniquely human. For example, IBM Watson can analyze millions of medical journals to suggest treatment options. Yet, a doctor’s role remains indispensable, as patients need empathy, understanding, and a human touch. Similarly, legal AI tools like CaseText can streamline research, but building persuasive arguments and negotiating terms require skills no algorithm can match. Rather than replacing professionals, AI enhances their productivity, enabling them to focus on higher-value tasks. The Birth of Entirely New Industries AI is not only reshaping existing jobs but also creating new roles and industries. The rise of generative AI has introduced positions like prompt engineers, who design effective queries to maximize AI’s output. Similarly, the need for unbiased algorithms has created the field of data ethics, where specialists ensure AI systems prioritize equity and fairness. These roles underscore an important reality: AI doesn’t eliminate opportunities—it redefines them. Addressing Ethical Challenges AI’s reliance on data is both its strength and its vulnerability. Algorithms trained on biased data can perpetuate harmful stereotypes, as seen in Amazon’s failed hiring algorithm, which penalized women. This challenge has given rise to data ethicists tasked with auditing algorithms and designing fair systems, further showcasing how AI disruption creates new fields and opportunities. Augmentation Over Replacement Fear of AI stems from misunderstanding its role. Machines are adept at repetitive and analytical tasks, but they lack the nuanced understanding required for roles in fields like art, music, and medicine. AI tools such as Adobe Sensei or AIVA enhance creativity, allowing artists and musicians to experiment, iterate, and push boundaries. Just as the printing press democratized writing rather than ending it, AI empowers workers to focus on what makes us uniquely human. A Future Worth Working Toward AI represents a profound shift in how society views work. It is not a destroyer of jobs but a catalyst for transformation. By automating inefficiencies and reinforcing human strengths, AI unlocks opportunities yet to be imagined. Rather than fearing the rise of AI, embracing its potential can lead to a future where work is more meaningful, creative, and impactful—an evolution worth striving for. 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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New Service Cloud Tools

Service Cloud for HR

Salesforce has expanded its Service Cloud capabilities to include a new HR-focused solution, Employee Service, designed to streamline employee support and enhance productivity. Employee Service introduces a dedicated HR service console paired with an employee portal. This portal acts as a centralized hub for staff to access HR resources, offering instant answers via Generative AI (GenAI), direct communication with HR specialists across multiple channels, and self-service options for tasks like requesting paid time off (PTO). For HR teams, the service console consolidates employee data, case details, and a company’s knowledge base into a unified workspace. It leverages AI-driven tools to resolve cases faster, automate routine tasks, and deliver seamless employee experiences. Salesforce’s Agentforce customers can integrate AI agents into Employee Service to further automate processes, saving time and reducing repetitive workloads. In a LinkedIn announcement, Kishan Chetan, EVP and GM for Service Cloud, highlighted the solution’s potential: “This new solution unifies employee data, case details, and a company’s corporate knowledge base all in one workspace that gives HR teams a 360-degree view of each employee and the ability to manage employee support cases with built-in AI and productivity tools. HR teams can efficiently resolve employee issues using Agentforce to quickly search, respond, summarize, and close cases, extending teams to get work done faster.” Salesforce’s broader goal is to eliminate the reliance on fragmented HR tools and reduce the need for employees to navigate disparate platforms like email, internal systems, and collaboration tools to complete HR-related tasks. By doing so, Salesforce aims to simplify HR processes, minimize manual effort, and enhance overall productivity. Early adopters of Employee Service are already reporting significant results. According to Sherin Sunny, Sr. Director of Product Management at Salesforce, customers have observed a 31% increase in employee productivity. This aligns with broader trends: Recognizing the need for a unified HR ecosystem, Salesforce includes a prebuilt MuleSoft integration with Workday and configurable connectors to other Human Capital Management (HCM) systems. These integrations establish a centralized HR data foundation, reducing inefficiencies caused by siloed tools. Looking ahead, Beth Schultz, VP of Research & Principal Analyst at Metrigy, emphasized the importance of integrating Employee Service with Slack, Salesforce’s collaboration platform: “We’ll be particularly watching how Salesforce’s multifaceted plans for bringing [Employee Service] into Slack play out as Slack evolves into a fully connected, collaborative workspace.” Slack itself is undergoing a transformation, with Salesforce Co-Founder Patrick Harris returning to revamp the platform as a core part of the Salesforce ecosystem. Meanwhile, Salesforce continues to expand Service Cloud’s offerings beyond Employee Service. Recent developments include a revamped CCaaS (Contact Center as a Service) integration program and a new product discovery tool. Still, Agentforce remains a key focus for Salesforce’s marketing efforts, showcasing its potential to redefine how businesses deploy autonomous AI agents across use cases like HR and beyond. 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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Standards in Healthcare Cybersecurity

Deploying Large Language Models in Healthcare

Study Identifies Cost-Effective Strategies for Deploying Large Language Models in Healthcare Efficient deployment of large language models (LLMs) at scale in healthcare can streamline clinical workflows and reduce costs by up to 17 times without compromising reliability, according to a study published in NPJ Digital Medicine by researchers at the Icahn School of Medicine at Mount Sinai. The research highlights the potential of LLMs to enhance clinical operations while addressing the financial and computational hurdles healthcare organizations face in scaling these technologies. To investigate solutions, the team evaluated 10 LLMs of varying sizes and capacities using real-world patient data. The models were tested on chained queries and increasingly complex clinical notes, with outputs assessed for accuracy, formatting quality, and adherence to clinical instructions. “Our study was driven by the need to identify practical ways to cut costs while maintaining performance, enabling health systems to confidently adopt LLMs at scale,” said Dr. Eyal Klang, director of the Generative AI Research Program at Icahn Mount Sinai. “We aimed to stress-test these models, evaluating their ability to manage multiple tasks simultaneously and identifying strategies to balance performance and affordability.” The team conducted over 300,000 experiments, finding that high-capacity models like Meta’s Llama-3-70B and GPT-4 Turbo 128k performed best, maintaining high accuracy and low failure rates. However, performance began to degrade as task volume and complexity increased, particularly beyond 50 tasks involving large prompts. The study further revealed that grouping tasks—such as identifying patients for preventive screenings, analyzing medication safety, and matching patients for clinical trials—enabled LLMs to handle up to 50 simultaneous tasks without significant accuracy loss. This strategy also led to dramatic cost savings, with API costs reduced by up to 17-fold, offering a pathway for health systems to save millions annually. “Understanding where these models reach their cognitive limits is critical for ensuring reliability and operational stability,” said Dr. Girish N. Nadkarni, co-senior author and director of The Charles Bronfman Institute of Personalized Medicine. “Our findings pave the way for the integration of generative AI in hospitals while accounting for real-world constraints.” Beyond cost efficiency, the study underscores the potential of LLMs to automate key tasks, conserve resources, and free up healthcare providers to focus more on patient care. “This research highlights how AI can transform healthcare operations. Grouping tasks not only cuts costs but also optimizes resources that can be redirected toward improving patient outcomes,” said Dr. David L. Reich, co-author and chief clinical officer of the Mount Sinai Health System. The research team plans to explore how LLMs perform in live clinical environments and assess emerging models to determine whether advancements in AI technology can expand their cognitive thresholds. 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 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 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 Agents Set to Break Through in 2025

AI Agents Set to Break Through in 2025

2025: The Year AI Agents Transform Work and Life Despite years of hype around artificial intelligence, its true disruptive impact has so far been limited. However, industry experts believe that’s about to change in 2025 as autonomous AI agents prepare to enter and reshape nearly every facet of our lives. Since OpenAI’s ChatGPT took the world by storm in late 2022, billions of dollars have been funneled into the AI sector. Big tech and startups alike are racing to harness the transformative potential of the technology. Yet, while millions now interact with AI chatbots daily, turning them into tools that deliver tangible business value has proven challenging. A recent study by Boston Consulting Group revealed that only 26% of companies experimenting with AI have progressed beyond proof of concept to derive measurable value. This lag reflects the limitations of current AI tools, which serve primarily as copilots—capable of assisting but requiring constant oversight and remaining prone to errors. AI Agents Set to Break Through in 2025 The status quo, however, is poised for a radical shift. Autonomous AI agents—capable of independently analyzing information, making decisions, and taking action—are expected to emerge as the industry’s next big breakthrough. “For the first time, technology isn’t just offering tools for humans to do work,” Salesforce CEO Marc Benioff wrote in Time. “It’s providing intelligent, scalable digital labor that performs tasks autonomously. Instead of waiting for human input, agents can analyze information, make decisions, and adapt as they go.” At their core, AI agents leverage the same large language models (LLMs) that power tools like ChatGPT. But these agents take it further, acting as reasoning engines that develop step-by-step strategies to execute tasks. Armed with access to external data sources like customer records or financial databases and equipped with software tools, agents can achieve goals independently. While current LLMs still face reasoning limitations, advancements are on the horizon. New models like OpenAI’s “o1” and DeepSeek’s “R1” are specialized for reasoning, sparking hope that 2025 will see agents grow far more capable. Big Tech and Startups Betting Big Major players are already gearing up for this new era. Startups are also eager to carve out their share of the market. According to Pitchbook, funding deals for agent-focused ventures surged by over 80% in 2024, with the median deal value increasing nearly 50%. Challenges to Overcome Despite the enthusiasm, significant hurdles remain. 2025: A Turning Point Despite these challenges, many experts believe 2025 will mark the mainstream adoption of AI agents. A New World of Work No matter the pace, it’s clear that AI agents will dominate the industry’s focus in 2025. If the technology delivers on its promise, the workplace could undergo a profound transformation, enabling entirely new ways of working and automating tasks that once required human intervention. The question isn’t if agents will redefine the way we work—it’s how fast. By the end of 2025, the shift could be undeniable. 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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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 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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Artificial Intelligence (AI) is significantly transforming threat detection by enabling faster, more accurate identification of potential security breaches through its ability to analyze vast amounts of data in real-time, detect anomalies and patterns that might indicate a threat, even when those threats are new or previously unknown, thus providing a proactive approach to cybersecurity compared to traditional rule-based systems.

AI is Transforming Threat Detection

Artificial Intelligence (AI) is significantly transforming threat detection by enabling faster, more accurate identification of potential security breaches through its ability to analyze vast amounts of data in real-time, detect anomalies and patterns that might indicate a threat, even when those threats are new or previously unknown, thus providing a proactive approach to cybersecurity compared to traditional rule-based systems.

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Transforming the Role of Data Science Teams

Transforming the Role of Data Science Teams

GenAI: Transforming the Role of Data Science Teams Challenges, Opportunities, and the Evolving Responsibilities of Data Scientists Generative AI (GenAI) is revolutionizing the AI landscape, offering faster development cycles, reduced technical overhead, and enabling groundbreaking use cases that once seemed unattainable. However, it also introduces new challenges, including the risks of hallucinations and reliance on third-party APIs. For Data Scientists and Machine Learning (ML) teams, this shift directly impacts their roles. GenAI-driven projects, often powered by external providers like OpenAI, Anthropic, or Meta, blur traditional lines. AI solutions are increasingly accessible to non-technical teams, but this accessibility raises fundamental questions about the role and responsibilities of data science teams in ensuring effective, ethical, and future-proof AI systems. Let’s explore how this evolution is reshaping the field. Expanding Possibilities Without Losing Focus While GenAI unlocks opportunities to solve a broader range of challenges, not every problem warrants an AI solution. Data Scientists remain vital in assessing when and where AI is appropriate, selecting the right approaches—whether GenAI, traditional ML, or hybrid solutions—and designing reliable systems. Although GenAI broadens the toolkit, two factors shape its application: For example, incorporating features that enable user oversight of AI outputs may prove more strategic than attempting full automation with extensive fine-tuning. Differentiation will not come from simply using LLMs, which are widely accessible, but from the unique value and functionality they enable. Traditional ML Is Far from Dead—It’s Evolving with GenAI While GenAI is transformative, traditional ML continues to play a critical role. Many use cases, especially those unrelated to text or images, are best addressed with ML. GenAI often complements traditional ML, enabling faster prototyping, enhanced experimentation, and hybrid systems that blend the strengths of both approaches. For instance, traditional ML workflows—requiring extensive data preparation, training, and maintenance—contrast with GenAI’s simplified process: prompt engineering, offline evaluation, and API integration. This allows rapid proof of concept for new ideas. Once proven, teams can refine solutions using traditional ML to optimize costs or latency, or transition to Small Language Models (SMLs) for greater control and performance. Hybrid systems are increasingly common. For example, DoorDash combines LLMs with ML models for product classification. LLMs handle cases the ML model cannot classify confidently, retraining the ML system with new insights—a powerful feedback loop. GenAI Solves New Problems—But Still Needs Expertise The AI landscape is shifting from bespoke in-house models to fewer, large multi-task models provided by external vendors. While this simplifies some aspects of AI implementation, it requires teams to remain vigilant about GenAI’s probabilistic nature and inherent risks. Key challenges unique to GenAI include: Data Scientists must ensure robust evaluations, including statistical and model-based metrics, before deployment. Monitoring tools like Datadog now offer LLM-specific observability, enabling teams to track system performance in real-world environments. Teams must also address ethical concerns, applying frameworks like ComplAI to benchmark models and incorporating guardrails to align outputs with organizational and societal values. Building AI Literacy Across Organizations AI literacy is becoming a critical competency for organizations. Beyond technical implementation, competitive advantage now depends on how effectively the entire workforce understands and leverages AI. Data Scientists are uniquely positioned to champion this literacy by leading initiatives such as internal training, workshops, and hackathons. These efforts can: The New Role of Data Scientists: A Strategic Pivot The role of Data Scientists is not diminishing but evolving. Their expertise remains essential to ensure AI solutions are reliable, ethical, and impactful. Key responsibilities now include: By adapting to this new landscape, Data Scientists will continue to play a pivotal role in guiding organizations to harness AI effectively and responsibly. GenAI is not replacing them; it’s expanding their 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 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 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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Generative AU and the Future of UCD

Generative AU and the Future of UCD

Generative AI and the Future of UCD: Adapting to New Challenges Discussions about generative AI seem endless—and while the topic may feel saturated, revisiting it in the context of user-centered design (UCD) and service delivery reveals critical opportunities and challenges worth exploring. The Current Landscape of Generative AI Generative AI is being increasingly evaluated for its potential to enhance research and public services. At the Ministry of Justice, for example, teams are exploring how generative AI can streamline user journeys, reduce duplication, and improve access to information—key pillars of effective service design. While enthusiasm and investment in generative AI are high, the reality is more cautious. Most projects remain in the proof-of-concept phase, and feedback often reflects attitudes rather than real-world behaviors. Public trust in AI is low, and many people lack an understanding of how it works or how they might interact with it. In government and public services, unresolved questions about risk tolerance, error management, and human oversight signal that AI integration is still in its early stages. Instead of declaring generative AI as the solution to user problems—or worrying about AI replacing jobs—it’s more productive to focus on adapting UCD practices to harness AI responsibly and effectively. The Risk of ‘Solutionizing’ in UCD Generative AI introduces a familiar challenge for UCD professionals: the risk of “solutionizing.” Many projects prioritize developing AI solutions, even before confirming they meet user needs. While experimentation is vital for exploring AI’s potential, there’s a danger in stakeholders prematurely assuming these proofs-of-concept validate AI as the ultimate solution. This underscores the enduring importance of UCD in the “age of AI.” UCD professionals must ensure that user needs remain central, educating stakeholders not just about AI’s capabilities but also about why user-centered design leads to better outcomes. To achieve this, UCD teams must prioritize ongoing user research and create opportunities for solution-agnostic ideation. Avoiding the “innovation trap”—assuming that the newest technologies inherently produce the best outcomes—requires openly acknowledging biases and finding creative ways to test assumptions. By doing so, decision-making becomes more transparent and adaptable, enabling cost-effective course corrections when needed. How UCD Will Evolve While the foundations of UCD will remain intact, generative AI will require adjustments to specific practices. For example, traditional usability testing might not fully address the variability of AI responses, which can differ even for identical user inputs. This unpredictability challenges conventional testing methods and demands new approaches. Collaboration between UCD teams, data scientists, and AI developers will be essential. By working closely, these teams can better understand how generative AI interacts with users, ensuring its capabilities are leveraged effectively. Rethinking Design Thinking Generative AI might also shift how design thinking is applied within UCD. The traditional double diamond model emphasizes deep discovery and iterative solution exploration. However, when incorporating generative AI, it may be beneficial to experiment with AI’s capabilities earlier in the discovery phase, blending user problem exploration with rapid technical experimentation. This approach would require guardrails to ensure user needs remain the priority, but it could lead to more innovative and practical solutions by aligning technical feasibility with user-centered insights from the outset. Conclusion Generative AI isn’t ready to replace jobs, but it does demand that UCD professionals evolve their practices. By adapting methods, increasing AI literacy, and holding innovation accountable to user needs, UCD teams can ensure that generative AI enhances, rather than detracts from, effective service design. How do you see UCD adapting to the challenges and opportunities of generative AI? What other considerations should we anticipate? Let’s continue the conversation! 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 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 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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google agentspace

Google Agentspace

Google Agentspace: Boosting Productivity with AI-Powered Agents Google has unveiled Agentspace, a cutting-edge tool designed to revolutionize workplace productivity by combining the power of AI agents, Google Gemini 2.0, and its advanced search capabilities. This tool aims to streamline workflows, enhance information discovery, and empower enterprises to unlock the full potential of their data. What is Google Agentspace? Google Agentspace is an enterprise-focused productivity platform that simplifies complex tasks involving planning, research, and content generation. By integrating AI-powered tools like NotebookLM Plus, it enables employees to uncover insights, interact with unstructured and structured data, and make informed decisions—all in one centralized platform. Key features include: Core Benefits of Google Agentspace 1. Streamlined Information Discovery Employees often waste hours sifting through fragmented data in emails, documents, and spreadsheets. Agentspace serves as a centralized knowledge hub, offering conversational assistance, proactive suggestions, and actionable insights from both unstructured and structured data sources. With pre-built connectors for tools like Google Drive, Jira, Microsoft SharePoint, and ServiceNow, Agentspace ensures seamless integration with existing systems, providing employees with relevant information faster. 2. Enhanced Multimodal Capabilities Agentspace leverages Google’s search expertise and Gemini 2.0 to provide advanced reasoning capabilities. Employees can query in multiple formats (text, audio, video), translate information into different languages, and generate audio summaries, enhancing productivity and accessibility. 3. Task Automation Across Departments Agentspace empowers teams across various functions to automate repetitive tasks, such as: 4. Scalable AI for Enterprises Agentspace offers a low-code visual tool for creating custom AI agents tailored to specific business needs. These agents can automate multi-step workflows, conduct in-depth research, and assist with data-driven content generation, enabling enterprises to scale AI adoption effortlessly. Security and Responsible AI Google Agentspace is built on Google Cloud’s secure-by-design infrastructure, ensuring that enterprises can deploy AI tools with confidence. Key Security Features Google is also addressing responsible AI concerns with tools for evaluation, content moderation, and bias mitigation, ensuring ethical and explainable AI use in the workplace. Use Cases Google Agentspace provides solutions tailored to various enterprise needs: Challenges and Future Directions Despite its potential, Agentspace faces hurdles such as employee training and adoption. Organizations must ensure that employees understand how to incorporate the tool into their daily workflows effectively. Moreover, Google’s approach to responsible AI will be closely scrutinized. Addressing issues like explainability, bias prevention, and robust data infrastructure will be crucial for building trust and driving adoption. Early Access and the Road Ahead Google is offering early access to Agentspace, allowing enterprises to explore its potential and provide feedback. As AI continues to reshape the workplace, tools like Agentspace position Google as a leader in productivity-enhancing solutions for businesses. For enterprises looking to harness AI to unlock creativity, improve decision-making, and automate workflows, Agentspace is the next step in digital transformation. Sign up for early access today to bring the future of work to your organization. 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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Transforming Fundraising for Nonprofits

Leverage AI to Enhance Customer Retention

Leverage AI to Enhance Customer Retention and Reduce Churn Customer churn is among the most expensive challenges businesses face—and one of the hardest to tackle. Predictive and generative AI technologies offer an immediate opportunity to boost retention rates. When applied strategically, these tools can revolutionize how customer service and support teams operate, creating measurable improvements in retention and overall customer satisfaction. A recent McKinsey & Company study highlights the impact of AI in customer service. One company reported a 14% increase in issue resolution and a 9% reduction in issue handling time with generative AI. Requests to escalate to a manager dropped by 25%, and employee retention in service roles improved. When every percentage point matters, AI’s ability to engage and retain customers (and employees) can significantly affect your bottom line and business success. The Cost of Poor Customer Service on Retention Retaining existing customers is far more cost-effective than acquiring new ones. Happy, long-term customers are also more likely to purchase additional products or services, making upselling and cross-selling efforts easier. However, poor customer service experiences—such as lengthy hold times, repeating information, or unhelpful chatbot interactions—can damage customer relationships and lead to churn. As Salesforce points out, these four signs indicate broken customer service: To address these challenges, a seamless, data-driven approach to customer service is essential. Prevent Churn with CRM + AI Customer data spans multiple touchpoints, from website visits to call center interactions. Without a unified view, even the most skilled service teams struggle to deliver exceptional experiences. A solution like Salesforce Service Cloud, enhanced by AI tools such as Agentforce Service Agents, empowers teams to: By combining predictive analytics with a unified customer experience platform, businesses can deliver personalized, proactive service that fosters loyalty. Retention Agent: The AI Solution for Customer Retention Retention Agent, part of Tectonic’s Agentforce suite, leverages AI to identify at-risk customers and equip sales, service, and support teams with actionable insights. It provides recommendations for re-engagement strategies, personalized offers, and targeted communications to prevent costly churn. Here’s how Retention Agent works: By integrating AI into customer service operations, businesses can stay ahead of churn, improve satisfaction, and build stronger, longer-lasting customer relationships. 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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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 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 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 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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