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salesforce ai pitchfield

Salesforce AI Pitchfield

AI Pitchfield is more than a showcase of entrepreneurial talent—it’s a launchpad for the next generation of AI pioneers. By fostering connections and providing critical investment opportunities, Salesforce and its partners are driving the evolution of AI across India and Southeast Asia. This initiative reflects Salesforce’s commitment to advancing technology, empowering startups, and shaping a future where AI continues to transform industries and unlock untapped potential.

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Document Checklist in Salesforce Screen Flow

Document Checklist in Salesforce Screen Flow

One effective way to accomplish this is by using the Document Matrix element in Discovery Framework–based OmniScripts. This approach allows you to streamline the assessment process and ensure that the advisor uploads the correct documents.

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Salesforce Government Cloud Premium

Salesforce Government Cloud Premium

Software company Salesforce announced on Monday that it has rolled out a new version of its government cloud that has Top Secret authorization and is geared toward U.S. national security agencies and intelligence organizations.

The new offering, called Government Cloud Premium, is hosted on Amazon Web Services’ Top Secret cloud.

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Salesforce Flows and LeanData

Salesforce Flows and LeanData

Mastering Opportunity Routing in Salesforce Flows While leads are essential at the top of the funnel, opportunities take center stage as the sales process advances. In Salesforce, the opportunity object acts as a container that can hold multiple contacts tied to a specific deal, making accurate opportunity routing crucial. Misrouting or delays at this stage can significantly impact revenue and forecasting, while manual processing risks incorrect assignments and uneven distribution. Leveraging Salesforce Flows for opportunity routing can help avoid these issues. Salesforce Flows and LeanData. What Is Opportunity Routing? Opportunity routing is the process of assigning open opportunities to the right sales rep based on specific criteria like territory, deal size, industry, or product type. The goal is to ensure every opportunity reaches the right person quickly, maximizing the chance to close the deal. Opportunity routing also helps prioritize high-potential deals, improving pipeline efficiency. Challenges of Manual Routing Manual opportunity routing can lead to several challenges: Benefits of Automating Routing with Salesforce Flows Using Salesforce Flows for opportunity routing offers many benefits: Setting Up Opportunity Routing in Salesforce Flows Here’s an outline for setting up opportunity routing in Salesforce: Managing Complex Salesforce Flows Opportunity routing in Salesforce Flows is powerful, but managing complex sales environments can be challenging: How LeanData Enhances Opportunity Routing LeanData extends Salesforce routing capabilities with advanced, no-code automation and auditing features: Salesforce Flows and LeanData Whether using Salesforce Flows or LeanData, the goal is to optimize time to revenue. While Salesforce Flows offer a robust foundation, organizations without dedicated admins or developers may face challenges in making frequent updates. LeanData provides greater flexibility and real-time automation, helping to streamline the routing process and drive revenue growth. Like Related Posts Salesforce OEM AppExchange Expanding its reach beyond CRM, Salesforce.com has launched a new service called AppExchange OEM Edition, aimed at non-CRM service providers. Read more The Salesforce Story In Marc Benioff’s own words How did salesforce.com grow from a start up in a rented apartment into the world’s Read more Salesforce Jigsaw Salesforce.com, a prominent figure in cloud computing, has finalized a deal to acquire Jigsaw, a wiki-style business contact database, for Read more 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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RIG and RAG

RIG and RAG

Imagine you’re a financial analyst tasked with comparing the GDP of France and Italy over the last five years. You query a language model, asking: “What are the current GDP figures of France and Italy, and how have they changed over the last five years?” Using Retrieval-Augmented Generation (RAG), the model first retrieves relevant information from external sources, then generates this response: “France’s current GDP is approximately $2.9 trillion, while Italy’s is around $2.1 trillion. Over the past five years, France’s GDP has grown by an average of 1.5%, whereas Italy’s GDP has seen slower growth, averaging just 0.6%.” In this case, RAG improves the model’s accuracy by incorporating real-world data through a single retrieval step. While effective, this method can struggle with more complex queries that require multiple, dynamic pieces of real-time data. Enter Retrieval Interleaved Generation (RIG)! Now, you submit a more complex query: “What are the GDP growth rates of France and Italy in the past five years, and how do these compare to their employment rates during the same period?” With RIG, the model generates a partial response, drawing from its internal knowledge about GDP. However, it simultaneously retrieves relevant employment data in real time. For example: “France’s current GDP is $2.9 trillion, and Italy’s is $2.1 trillion. Over the past five years, France’s GDP has grown at an average rate of 1.5%, while Italy’s growth has been slower at 0.6%. Meanwhile, France’s employment rate increased by 2%, and Italy’s employment rate rose slightly by 0.5%.” Here’s what happened: RIG allowed the model to interleave data retrieval with response generation, ensuring the information is up-to-date and comprehensive. It fetched employment statistics while continuing to generate GDP figures, ensuring the final output was both accurate and complete for a multi-faceted query. What is Retrieval Interleaved Generation (RIG)? RIG is an advanced technique that integrates real-time data retrieval into the process of generating responses. Unlike RAG, which retrieves information once before generating the response, RIG continuously alternates between generating text and querying external data sources. This ensures each piece of the response is dynamically grounded in the most accurate, up-to-date information. How RIG Works: For example, when asked for GDP figures of two countries, RIG first retrieves one country’s data while generating an initial response and simultaneously fetches the second country’s data for a complete comparison. Why Use RIG? Real-World Applications of RIG RIG’s versatility makes it ideal for handling complex, real-time data across various sectors, such as: Challenges of RIG While promising, RIG faces a few challenges: As AI evolves, RIG is poised to become a foundational tool for complex, data-driven tasks, empowering industries with more accurate, real-time insights for decision-making. 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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NYT Issues Cease-and-Desist Letter to Perplexity AI

NYT Issues Cease-and-Desist Letter to Perplexity AI

NYT Issues Cease-and-Desist Letter to Perplexity AI Over Alleged Unauthorized Content Use The New York Times (NYT) has issued a cease-and-desist letter to Perplexity AI, accusing the AI-powered search startup of using its content without permission. This move marks the second time the NYT has confronted a company for allegedly misappropriating its material. According to reports, the Times claims Perplexity is accessing and utilizing its content to generate summaries and other outputs, actions it argues infringe on copyright laws. The startup now has two weeks to respond to the accusations. A Growing Pattern of Tensions Perplexity AI is not the only publisher-facing scrutiny. In June, Forbes threatened legal action against the company, alleging “willful infringement” by using its text and images. In response, Perplexity launched the Perplexity Publishers’ Program, a revenue-sharing initiative that collaborates with publishers like Time, Fortune, and The Texas Tribune. Meanwhile, the NYT remains entangled in a separate lawsuit with OpenAI and its partner Microsoft over alleged misuse of its content. A Strategic Legal Approach The NYT’s decision to issue a cease-and-desist letter instead of pursuing an immediate lawsuit signals a calculated move. “Cease-and-desist approaches are less confrontational, less expensive, and faster,” said Sarah Kreps, a professor at Cornell University. This method also opens the door for negotiation, a pragmatic step given the uncharted legal terrain surrounding generative AI and copyright law. Michael Bennett, a responsible AI expert from Northeastern University, echoed this view, suggesting that the cease-and-desist approach positions the Times to protect its intellectual property while maintaining leverage in ongoing legal battles. If the NYT wins its case against OpenAI, Bennett added, it could compel companies like Perplexity to enter financial agreements for content use. However, if the case doesn’t favor the NYT, the publisher risks losing leverage. The letter also serves as a warning to other AI vendors, signaling the NYT’s determination to safeguard its intellectual property. Perplexity’s Defense: Facts vs. Expression Perplexity AI has countered the NYT’s claims by asserting that its methods adhere to copyright laws. “We aren’t scraping data for building foundation models but rather indexing web pages and surfacing factual content as citations,” the company stated. It emphasized that facts themselves cannot be copyrighted, drawing parallels to how search engines like Google operate. Kreps noted that Perplexity’s approach aligns closely with other AI platforms, which typically index pages to provide factual answers while citing sources. “If Perplexity is culpable, then the entire AI industry could be held accountable,” she said, contrasting Perplexity’s citation-based model with platforms like ChatGPT, which often lack transparency about data sources. The Crux of the Copyright Argument The NYT’s cease-and-desist letter centers on the distinction between facts and the creative expression of facts. While raw facts are not protected under copyright, the NYT claims that its specific interpretation and presentation of those facts are. Vincent Allen, an intellectual property attorney, explained that if Perplexity is scraping data and summarizing articles, it may involve making unauthorized copies of copyrighted content, strengthening the NYT’s claims. “This is a big deal for content providers,” Allen said, “as they want to ensure they’re compensated for their work.” Implications for the AI Industry The outcome of this dispute could set a precedent for how AI platforms handle content generated by publishers. If Perplexity’s practices are deemed infringing, it could reshape the operational models of similar AI vendors. At the heart of the debate is the balance between fostering innovation in AI and protecting intellectual property, a challenge that will likely shape the future of generative AI and its relationship with content creators. 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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Third Wave of AI at Salesforce

Third Wave of AI at Salesforce

The Third Wave of AI at Salesforce: How Agentforce is Transforming the Landscape At Dreamforce 2024, Salesforce unveiled several exciting innovations, with Agentforce taking center stage. This post explores the key changes and enhancements designed to improve efficiency and elevate customer interactions. Introducing Agentforce Agentforce is a customizable AI agent builder that empowers organizations to create and manage autonomous agents for various business tasks. But what exactly is an agent? An agent is akin to a chatbot but goes beyond traditional capabilities. While typical chatbots are restricted to scripted responses and predefined questions, Agentforce agents leverage large language models (LLMs) and generative AI to comprehend customer inquiries contextually. This enables them to make independent decisions, whether processing requests or resolving issues using real-time data from your company’s customer relationship management (CRM) system. The Role of Atlas At the heart of Agentforce’s functionality lies the Atlas reasoning engine, which acts as the operational brain. Unlike standard assistive tools, Atlas is an agentic system with the autonomy to act on behalf of the user. Atlas formulates a plan based on necessary actions and can adjust that plan based on evaluations or new information. When it’s time to engage, Atlas knows which business processes to activate and connects with customers or employees via their preferred channels. This sophisticated approach allows Agentforce to significantly enhance operational efficiency. By automating routine inquiries, it frees up your team to focus on more complex tasks, delivering a smoother experience for both staff and customers. Speed to Value One of Agentforce’s standout features is its emphasis on rapid implementation. Many AI projects can be resource-intensive and take months or even years to launch. However, Agentforce enables quick deployment by leveraging existing Salesforce infrastructure, allowing organizations to implement solutions rapidly and with greater control. Salesforce also offers pre-built Agentforce agents tailored to specific business needs—such as Service Agent, Sales Development Representative Agent, Sales Coach, Personal Shopper Agent, and Campaign Agent—all customizable with the Agent Builder. Agentforce for Service and Sales will be generally available starting October 25, 2024, with certain elements of the Atlas Reasoning Engine rolling out in February 2025. Pricing begins at $2 per conversation, with volume discounts available. Transforming Customer Insights with Data Cloud and Marketing Cloud Dreamforce also highlighted enhancements to Data Cloud, Salesforce’s backbone for all cloud products. The platform now supports processing unstructured data, which constitutes up to 90% of company data often overlooked by traditional reporting systems. With new capabilities for analyzing various unstructured formats—like video, audio, sales demos, customer service calls, and voicemails—businesses can derive valuable insights and make informed decisions across Customer 360. Furthermore, Data Cloud One enables organizations to connect siloed Salesforce instances effortlessly, promoting seamless data sharing through a no-code, point-and-click setup. The newly announced Marketing Cloud Advanced edition serves as the “big sister” to Marketing Cloud Growth, equipping larger marketing teams with enhanced features like Path Experiment, which tests different content strategies across channels, and Einstein Engagement Scoring for deeper insights into customer behavior. Together, these enhancements empower companies to engage customers more meaningfully and measurably across all touchpoints. Empowering the Workforce Through Education Salesforce is committed to making AI accessible for all. They recently announced free instructor-led courses and AI certifications available through 2025, aimed at equipping the Salesforce community with essential AI and data management skills. To support this initiative, Salesforce is establishing AI centers in major cities, starting with London, to provide hands-on training and resources, fostering AI expertise. They also launched a global Agentforce World Tour to promote understanding and adoption of the new capabilities introduced at Dreamforce, featuring repackaged sessions from the conference and opportunities for specialists to answer questions. The Bottom Line What does this mean for businesses? With the rollout of Agentforce, along with enhancements to Data Cloud and Marketing Cloud, organizations can operate more efficiently and connect with customers in more meaningful ways. Coupled with a focus on education through free courses and global outreach, getting on board has never been easier. If you’d like to discuss how we can help your business maximize its potential with Salesforce through data and AI, connect with us and schedule a meeting with our team. Legacy systems can create significant gaps between operations and employee needs, slowing lead processes and resulting in siloed, out-of-sync data that hampers business efficiency. Responding to inquiries within five minutes offers a 75% chance of converting leads into customers, emphasizing the need for rapid, effective marketing responses. Salesforce aims to help customers strengthen relationships, enhance productivity, and boost margins through its premier AI CRM for sales, service, marketing, and commerce, while also achieving these goals internally. Recognizing the complexity of its decade-old processes, including lead assignment across three systems and 2 million lines of custom code, Salesforce took on the role of “customer zero,” leveraging Data Cloud to create a unified view of customers known as the “Customer 360 Truth Profile.” This consolidation of disparate data laid the groundwork for enterprise-wide AI and automation, improving marketing automation and reducing lead time by 98%. As Michael Andrew, SVP of Marketing Decision Science at Salesforce, noted, this initiative enabled the company to provide high-quality leads to its sales team with enriched data and AI scoring while accelerating time to market and enhancing data quality. Embracing Customer Zero “Almost exactly a year ago, we set out with a beginner’s mind to transform our lead automation process with a solution that would send the best leads to the right sales teams within minutes of capturing their data and support us for the next decade,” said Andrew. The initial success metric was “speed to lead,” aiming to reduce the handoff time from 20 minutes to less than one minute. The focus was also on integrating customer and lead data to develop a more comprehensive 360-degree profile for each prospect, enhancing lead assignment and sales rep productivity. Another objective was to boost business agility by cutting the average time to implement assignment changes from four weeks to mere days. Accelerating Success with

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Ambient AI Enhances Patient-Provider Relationship

Ambient AI Enhances Patient-Provider Relationship

How Ambient AI is Enhancing the Patient-Provider Relationship Ambient AI is transforming the patient-provider experience at Ochsner Health by enabling clinicians to focus more on their patients and less on their screens. While some view technology as a barrier to human interaction, Ochsner’s innovation officer, Dr. Jason Hill, believes ambient AI is doing the opposite by fostering stronger connections between patients and providers. Researchers estimate that physicians spend over 40% of consultation time focused on electronic health records (EHRs), limiting face-to-face interactions. “We have highly skilled professionals spending time inputting data instead of caring for patients, and as a result, patients feel disconnected due to the screen barrier,” Hill said. Additionally, increased documentation demands related to quality reporting, patient satisfaction, and reimbursement are straining providers. Ambient AI scribes help relieve this burden by automating clinical documentation, allowing providers to focus on their patients. Using machine learning, these AI tools generate clinical notes in seconds from recorded conversations. Clinicians then review and edit the drafts before finalizing the record. Ochsner began exploring ambient AI several years ago, but only with the advent of advanced language models like OpenAI’s GPT did the technology become scalable and cost-effective for large health systems. “Once the technology became affordable for large-scale deployment, we were immediately interested,” Hill explained. Selecting the Right Vendor Ochsner piloted two ambient AI tools before choosing DeepScribe for an enterprise-wide partnership. After the initial rollout to 60 physicians, the tool achieved a 75% adoption rate and improved patient satisfaction scores by 6%. What set DeepScribe apart were its customization features. “We can create templates for different specialties, but individual doctors retain control over their note outputs based on specific clinical encounters,” Hill said. This flexibility was crucial in gaining physician buy-in. Ochsner also valued DeepScribe’s strong vendor support, which included tailored training modules and direct assistance to clinicians. One example of this support was the development of a software module that allowed Ochsner’s providers to see EHR reminders within the ambient AI app. “DeepScribe built a bridge to bring EHR data into the app, so clinicians could access important information right before the visit,” Hill noted. Ensuring Documentation Quality Ochsner has implemented several safeguards to maintain the accuracy of AI-generated clinical documentation. Providers undergo training before using the ambient AI system, with a focus on reviewing and finalizing all AI-generated notes. Notes created by the AI remain in a “pended” state until the provider signs off. Ochsner also tracks how much text is generated by the AI versus added by the provider, using this as a marker for the level of editing required. Following the successful pilot, Ochsner plans to expand ambient AI to 600 clinicians by the end of the year, with the eventual goal of providing access to all 4,700 physicians. While Hill anticipates widespread adoption, he acknowledges that the technology may not be suitable for all providers. “Some clinicians have different documentation needs, but for the vast majority, this will likely become the standard way we document at Ochsner within a year,” he said. Conclusion By integrating ambient AI, Ochsner Health is not only improving operational efficiency but also strengthening the human connection between patients and providers. As the technology becomes more widespread, it holds the potential to reshape how clinical documentation is handled, freeing up time for more meaningful patient interactions. 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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Secret ChatGPT Prompts

Secret ChatGPT Prompts

Only 1% of ChatGPT Users Know These Secret Prompts That 10X Response Quality Let’s be honest. Generic prompts like:“Write a 1500-word article on ‘Top 10 Foods That DESTROY Your KIDNEY’” …are not tapping into the true potential of ChatGPT. But what if such prompts could deliver incredible results with just a few tweaks? The answer lies in specialized prompts—a set of strategies that amplify the depth, clarity, and quality of ChatGPT’s output. Below is a collection of 7 powerful prompts that can instantly transform your experience with ChatGPT. These are personal favorites that have delivered game-changing results time and time again. Get ready—these are about to blow your writing out of the water. 1. “Do not start writing yet. First, explain everything I wanted you to do in this prompt in detail.” How to Use It:This prompt ensures that ChatGPT fully understands your request before generating a response. By asking for an explanation of its interpretation, you can spot misunderstandings and align its output with your expectations. Why It Works:When you review ChatGPT’s interpretation, you can fine-tune the original instructions, guaranteeing better results. 2. “I need this written in a human tone. Humans have fun when they write—robots don’t. Engagement is the highest priority. Be conversational, empathetic, and occasionally humorous. Use idioms, metaphors, anecdotes, and natural dialogue.” How to Use It:Add this to prompts for content that needs to feel authentic and engaging, such as articles or blog posts. Why It Works:ChatGPT can sometimes sound too robotic. This prompt encourages a more natural, relatable tone, making the output resonate with readers. 3. “Before you answer, ask me any missing information you need to understand my request better.” How to Use It:Follow up your prompt with this request to encourage ChatGPT to identify gaps in your instructions. Why It Works:Most prompts miss critical details, leading to subpar results. This approach ensures ChatGPT has all the context it needs to produce a tailored response. 4. “Criticize yourself.” How to Use It:After receiving a response, ask ChatGPT to critique its own work. Why It Works:ChatGPT’s self-critique often surfaces new ideas and reveals areas for improvement that you might not have considered. 5. “Why did you write what you wrote? Provide a detailed analysis and breakdown in a table. Include suggestions for improvement based on my original prompt.” How to Use It:After receiving a response, ask for an explanation of the rationale behind its choices. Why It Works:Understanding the “why” behind ChatGPT’s response gives you insights into its logic and suggestions for fine-tuning the output further. 6. “Before you answer this, highlight 20 potential risks or blind spots I might not have considered based on my request.” How to Use It:Use this prompt to anticipate potential pitfalls or overlooked details. Why It Works:ChatGPT can act as a second set of eyes, helping you identify areas that could be improved or clarified before executing your ideas. 7. “Identify areas in this article where examples, analogies, or case studies would improve understanding.” How to Use It:After generating content, ask ChatGPT to pinpoint where additional context would enhance clarity or engagement. Why It Works:Adding relatable examples and analogies strengthens your message and helps readers better connect with your content. These 7 prompts are your secret weapon to unlock ChatGPT’s full potential. By incorporating them into your workflow, you’ll create smarter, richer, and more impactful content that’s a cut above the rest. Pro Tip: Combine multiple prompts for even more refined outputs! 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 Success Story

Case Study: Children’s Hospital Use Cases

In need of help to implement requisite configuration updates to establish a usable data model for data segmentation that supports best practices utilization of Marketing Cloud features including Contact Builder, Email Studio and Journey Builder.

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AI and Legacy

AI and Legacy

In most new application builds, AI is rarely considered an active consumer. The prevailing assumption seems to be that AI is just a variation of reporting, which essentially translates to “not my problem” for application developers. In this mindset, the data platform gets treated like an afterthought, receiving the “exhaust fumes” of the application without much concern for data quality. Even when data or AI is acknowledged as important, it’s often sidelined, with data becoming one of the first things sacrificed during the development process. In the past, this was merely a “minor” problem that led to the rise of the data quality industry. AI and Legacy. But as we move forward, this will become a significant issue due to one undeniable fact: AI will be the primary consumer of applications and data. Old Thinking Creates Instant Legacy What this means is that if you’re building a new application—whether it’s a website, ERP, CRM, or anything else—and you’re not considering AI as a user, you’re actively choosing to implement a legacy system. Even if your system has an AI solution baked in, if the core application isn’t designed for a data-driven world, the best you’ll achieve is an AI sidecar—just a nice wrapper, but limited in scope. Tools like Microsoft Copilot or Salesforce Agentforce, for instance, can easily be implemented in a way that minimizes or even eliminates opportunities for AI to thrive. If you’re building applications that treat data as merely a reporting tool and assume AI is a downstream consumer, you’re engaging in legacy thinking in a world increasingly powered by AI. Don’t Build Legacy Systems Avoiding legacy systems isn’t difficult. If you believe AI and data are important, treat them as such from the outset. This boils down to one simple principle: Design for the destination. If you think AI will be a primary consumer of applications in the next one, two, or five years, you should design your applications with that challenge in mind. This means considering AI personas, figuring out how AI assistants will integrate into human workflows, and planning how AI automation bots will function within the system. It also requires embracing a crucial decision: Your design should prioritize data, and assume AI is a primary consumer. This doesn’t mean just designing a robust database schema. It means ensuring your application’s operational reality can accurately reflect the business situation for both human and AI users. It’s not about technical database design—it’s about understanding the business’s accountability for digital accuracy and establishing the mechanisms to maintain that accuracy and represent it effectively. Building Legacy Is a Choice Everyone Is Making To be clear, this isn’t about adopting some “holistic” view or designing for every possible scenario. It’s about designing from a data and digital perspective first. Instead of treating use cases or business processes as the main design focus, the primary design thread should be the ability to reflect the reality of the business. Use cases and business processes still matter at the execution level, but they should not drive application design in a data-driven, AI-enabled world. You must assume that AI will be the primary consumer of your application and design accordingly, rather than focusing solely on human users and screens. Right now, nearly every application is still built as though data is a byproduct of transactions, with the assumption that AI is merely a sidecar, not an active participant. AI and Legacy. In the words of Sir Humphrey, that is a “courageous” decision. 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 Powering EVPassport

Salesforce Powering EVPassport

EVPassport, a global leader in EV charging networks, announced an expanded partnership with Salesforce to enhance its customer experience through the deployment of Salesforce Service Cloud. This initiative solidifies EVPassport’s standing as a top provider in the EV charging space, recognized for customer satisfaction, loyalty, and reliability. With Salesforce Service Cloud, EVPassport can deliver more personalized, efficient service and support to its enterprise, commercial customers, and electric vehicle drivers. The platform enables deeper insights into each driver’s journey, resulting in a seamless, tailored experience. Hooman Shahidi, co-founder and CEO of EVPassport, highlighted the significance of Salesforce in driving the company’s next-generation mobility experience, stating, “As we build the mobility experience of tomorrow, having the right partners is crucial. Salesforce’s innovative solutions will help us exceed the evolving needs of our customers, sites, and communities.” By leveraging Salesforce’s AI, data, and CRM capabilities, EVPassport aims to strengthen customer connections and improve operational efficiency, ensuring a forward-thinking approach to EV charging for years to come. 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 AI Introduces SFR-Judge

Salesforce AI Introduces SFR-Judge

Salesforce AI Introduces SFR-Judge: A Family of Three Evaluation Models with 8B, 12B, and 70B Parameters, Powered by Meta Llama 3 and Mistral NeMO The rapid development of large language models (LLMs) has transformed natural language processing, making the need for accurate evaluation of these models more critical than ever. Traditional human evaluations, while effective, are time-consuming and impractical for the fast-paced evolution of AI models. Salesforce AI Introduces SFR-Judge. To address this, Salesforce AI Research has introduced SFR-Judge, a family of LLM-based judge models designed to revolutionize how AI outputs are evaluated. Built using Meta Llama 3 and Mistral NeMO, the SFR-Judge family includes models with 8 billion (8B), 12 billion (12B), and 70 billion (70B) parameters. These models are designed to handle evaluation tasks such as pairwise comparisons, single ratings, and binary classifications, streamlining the evaluation process for AI researchers. Overcoming Limitations in Traditional Judge Models Traditional LLMs used for evaluation often suffer from biases such as position bias (favoring responses based on their order) and length bias (preferring longer responses regardless of their accuracy). SFR-Judge addresses these issues by leveraging Direct Preference Optimization (DPO), a training method that enables the model to learn from both positive and negative examples, reducing bias and ensuring more consistent and accurate evaluations. Performance and Benchmarking SFR-Judge has been rigorously tested across 13 benchmarks covering three key evaluation tasks. It outperformed existing judge models, including proprietary models like GPT-4o, achieving top performance on 10 of the 13 benchmarks. Notably, on the RewardBench leaderboard, SFR-Judge achieved a 92.7% accuracy, marking a new high in LLM-based evaluation and demonstrating its potential not only as an evaluation tool but also as a reward model for reinforcement learning from human feedback (RLHF) scenarios. Innovative Training Approach The SFR-Judge models were trained using three distinct data formats: These diverse data formats allow SFR-Judge to generate well-rounded, accurate evaluations, making it a more reliable and robust tool for model assessment. Bias Mitigation and Robustness SFR-Judge was tested on EvalBiasBench, a benchmark designed to measure six types of bias. The results demonstrated significantly lower bias levels compared to competing models, along with high consistency in pairwise order comparisons. This robustness ensures that SFR-Judge’s evaluations remain stable, even when the order of responses is altered, making it a scalable and reliable alternative to human annotation. Key Takeaways: Conclusion Salesforce AI Research’s introduction of SFR-Judge represents a breakthrough in the automated evaluation of large language models. By incorporating Direct Preference Optimization and a diverse training approach, SFR-Judge sets a new standard for accuracy, bias reduction, and consistency. Its ability to provide detailed feedback and adapt to various evaluation tasks makes it a powerful tool for the AI community, streamlining the process of LLM assessment and setting the stage for future advancements in AI evaluation. 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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collaboration between humans and AI

Collaboration Between Humans and AI

The Future of AI: What to Expect in the Next 5 Years In the next five years, AI will accelerate human life, reshape behaviors, and transform industries—these changes are inevitable. Collaboration Between Humans and AI. For much of the early 20th century, AI existed mainly in science fiction, where androids, sentient machines, and futuristic societies intrigued fans of the genre. From films like Metropolis to books like I, Robot, AI was the subject of speculative imagination. AI in fiction often over-dramatized reality and caused us to suspend belief in what was and was not possible. But by the mid-20th century, scientists began working to bring AI into reality. A Brief History of AI’s Impact on Society The 1956 Dartmouth Summer Research Project on Artificial Intelligence marked a key turning point, where John McCarthy coined the term “artificial intelligence” and helped establish a community of AI researchers. Although the initial excitement about AI often outpaced its actual capabilities, significant breakthroughs began emerging by the late 20th century. One such moment was IBM’s Deep Blue defeating chess champion Garry Kasparov in 1997, signaling that machines could perform complex cognitive tasks. The rise of big data and Moore’s Law, which fueled the exponential growth of computational power, enabled AI to process vast amounts of information and tackle tasks previously handled only by humans. By 2022, generative AI models like ChatGPT proved that machine learning could yield highly sophisticated and captivating technologies. AI’s influence is now everywhere. No longer is it only discussed in IT circles. AI is being featured in nearly all new products hitting the market. It is part of if not the creation tool of most commercials. Voice assistants like Alexa, recommendation systems used by Netflix, and autonomous vehicles represent just a glimpse of AI’s current role in society. Yet, over the next five years, AI’s development is poised to introduce far more profound societal changes. How AI Will Shape the Future Industries Most Affected by AI Long-term Risks of Collaboration Between Humans and AI AI’s potential to pose existential risks has long been a topic of concern. However, the more realistic danger lies in human societies voluntarily ceding control to AI systems. Algorithmic trading in finance, for example, demonstrates how human decisions are already being replaced by AI’s ability to operate at unimaginable speeds. Still, fear of AI should not overshadow the opportunities it presents. If organizations shy away from AI out of anxiety, they risk missing out on innovations and efficiency gains. The future of AI depends on a balanced approach that embraces its potential while mitigating its risks. In the coming years, the collaboration between humans and AI will drive profound changes across industries, legal frameworks, and societal norms, creating both challenges and opportunities for the future. Tectonic can help you map your AI journey for the best Collaboration Between Humans and AI. Like Related Posts Salesforce OEM AppExchange Expanding its reach beyond CRM, Salesforce.com has launched a new service called AppExchange OEM Edition, aimed at non-CRM service providers. Read more The Salesforce Story In Marc Benioff’s own words How did salesforce.com grow from a start up in a rented apartment into the world’s Read more Salesforce Jigsaw Salesforce.com, a prominent figure in cloud computing, has finalized a deal to acquire Jigsaw, a wiki-style business contact database, for Read more 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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