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Salesforce Unified Knowledge

Salesforce Unified Knowledge

Salesforce Inc. is introducing a novel feature within its Data Cloud data lake, addressing the growing need for organizations to develop their own artificial intelligence models. This new feature, termed Unified Knowledge, integrates data from various third-party sources into the Data Cloud, facilitating the collection and curation of data crucial for training AI models, particularly for customer service agents. Unified Knowledge enables the importation of unstructured data into the Data Cloud, where it undergoes transformation, tagging, and quality assurance processes. This feature, developed in collaboration with Zoomin, primarily targets the enhancement of Salesforce’s Einstein for Service customer support application. However, its data integration capabilities extend to other Salesforce applications like Sales Cloud, Health Cloud, Financial Services Cloud, and Field Service. The administrative setup process for Unified Knowledge is described as relatively straightforward. Within Salesforce’s knowledge management tool, tagging tools are available, and once content is integrated into the system, much of the content can be automatically processed. Data from external sources such as Microsoft’s SharePoint, Atlassian’s Confluence, Google Drive and YouTube, Amazon Web Services’ S3 storage, Adobe’s Experience Platform, Guru Technologies’ Guru, Zendesk’s customer service platform, and company websites can be utilized to train customer-facing answer bots, streamline employee access to internal information, and facilitate quick searches within company knowledge bases. Unified Knowledge is available in a free beta test for Salesforce customers with Service Cloud Unlimited Edition, Einstein 1 Service Edition, or the Knowledge Add-On. A freemium version of Unified Knowledge will continue to be included with those applications, with Salesforce Lightning Knowledge being a requirement and Classic Knowledge not being supported. In essence, Unified Knowledge aims to consolidate organizational knowledge from disparate third-party systems into Salesforce, thereby improving service agent efficiency, resolving customer cases faster, and enhancing the quality and accuracy of generative AI content. By Tectonic Salesforce Marketing Architect, Shannan Hearne. Like Related Posts Who is Salesforce? Who is Salesforce? Here is their story in their own words. From our inception, we’ve proudly embraced the identity of Read more Salesforce Marketing Cloud Transactional Emails Salesforce Marketing Cloud Transactional Emails are immediate, automated, non-promotional messages crucial to business operations and customer satisfaction, such as order Read more Salesforce Unites Einstein Analytics with Financial CRM Salesforce has unveiled a comprehensive analytics solution tailored for wealth managers, home office professionals, and retail bankers, merging its Financial Read more AI-Driven Propensity Scores AI plays a crucial role in propensity score estimation as it can discern underlying patterns between treatments and confounding variables Read more

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AWS Salesforce

AWS AppFabric Supports Salesforce

Today, AWS AppFabric announces support for three new data sources: Salesforce, Azure Monitor, and Google Analytics. Starting now, IT administrators and security analysts can use AppFabric to quickly integrate with 29 supported SaaS applications, aggregate enriched and normalized SaaS audit logs, and audit end-user access across their SaaS apps.  AWS AppFabric Supports Salesforce. AWS AppFabric quickly connects SaaS applications with security tools like Barracuda XDR, Dynatrace, Logz.io, Netskope, NetWitness, Rapid7, and Splunk, or data lakes like Amazon Security Lake. With AppFabric, IT and security teams can more easily manage and secure SaaS applications by aggregating and normalizing log data into a central repository, and employees can soon complete everyday tasks faster using generative artificial intelligence (AI). With today’s announcement, IT and security analysts can improve their SaaS security posture across 29 SaaS applications without managing application specific API integrations. AWS AppFabric is generally available in the following AWS Regions: US East (N. Virginia), Asia Pacific (Tokyo), and Europe (Ireland). AWS AppFabric Supports Salesforce What is AWS AppFabric? AppFabric quickly connects software-as-a-service (SaaS) applications across your organization. IT and security teams can then easily manage and secure applications using a standard schema, and employees can complete everyday tasks faster using generative artificial intelligence (AI). The core of the data fabric architecture is a data management platform that enables the full breadth of integrated data management capabilities including discovery, governance, curation, and orchestration . Like Related Posts Who is Salesforce? Who is Salesforce? Here is their story in their own words. From our inception, we’ve proudly embraced the identity of Read more Salesforce Marketing Cloud Transactional Emails Salesforce Marketing Cloud Transactional Emails are immediate, automated, non-promotional messages crucial to business operations and customer satisfaction, such as order Read more Salesforce Unites Einstein Analytics with Financial CRM Salesforce has unveiled a comprehensive analytics solution tailored for wealth managers, home office professionals, and retail bankers, merging its Financial Read more AI-Driven Propensity Scores AI plays a crucial role in propensity score estimation as it can discern underlying patterns between treatments and confounding variables Read more

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Salesforce OmniStudio Summer 24 Release Notes

Salesforce OmniStudio Summer 24 Release Notes

In Summer ’24, OmniStudio (when the Managed Package Runtime setting is disabled) supports features from OmniStudio for Vlocity, including filling address fields in omniscripts with Google Map data, using Salesforce private connect for HTTP actions in integration procedures, and choosing whether to merge entries within a list in an integration procedure list action. Also, DataRaptor is now Omnistudio Data Mapper. For Winter ’25 upgrades, disable New Order Save Behavior. To prepare for future releases, remove organization and profile standard objects from data mappers, remove OmniStudio components with unlocked packages, and check the impact of the date change in the ADDDAY function return. Salesforce OmniStudio Summer 24 Release Notes. Like Related Posts Who is Salesforce? Who is Salesforce? Here is their story in their own words. From our inception, we’ve proudly embraced the identity of Read more Salesforce Marketing Cloud Transactional Emails Salesforce Marketing Cloud Transactional Emails are immediate, automated, non-promotional messages crucial to business operations and customer satisfaction, such as order Read more Salesforce Unites Einstein Analytics with Financial CRM Salesforce has unveiled a comprehensive analytics solution tailored for wealth managers, home office professionals, and retail bankers, merging its Financial Read more AI-Driven Propensity Scores AI plays a crucial role in propensity score estimation as it can discern underlying patterns between treatments and confounding variables Read more

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Gen AI Depends on Good Data

Gen AI Depends on Good Data

Accelerate Your Generative AI Journey: A Call to Action for Data Leaders Generative AI is generating immense excitement across organizations, with boards of directors conducting educational workshops and senior management teams brainstorming potential use cases. They need to keep in mind, Gen AI Depends on Good Data. Individuals and departments are already experimenting with the technology to enhance productivity and effectiveness. There needs to be as much effort into data quality as to the technology. The critical work required for generative AI success falls to chief data officers (CDOs), data engineers, and knowledge curators. Unfortunately, many have yet to begin the necessary preparations. A survey in late 2023 of 334 CDOs and data leaders, sponsored by Amazon Web Services and the MIT Chief Data Officer/Information Quality Symposium, coupled with interviews, reveals a gap between enthusiasm and readiness. While there’s a shared excitement about generative AI, much work remains to get organizations ready for it. The Current State of Data Preparedness Most companies have yet to develop new data strategies or manage their data to effectively leverage generative AI. This insight outlines the survey results and suggests next steps for data readiness. Maximizing Value with Generative AI Historically, AI has worked with structured data like numbers in rows and columns. Generative AI, however, utilizes unstructured data—text, images, and video—to generate new content. This technology offers both assistance and competition for human content creators. Survey findings show that 80% of data leaders believe generative AI will transform their business environment, and 62% plan to increase spending on it. Yet, many are not yet realizing substantial economic value from generative AI. Only 6% of respondents have a generative AI application in production deployment. A significant 16% have banned employee use, though this is decreasing as companies address data privacy issues with enterprise versions of generative AI models. Focus on Core Business Areas Experiments with generative AI should target core business areas. Universal Music, for instance, is aggressively experimenting with generative AI for R&D, exploring how it can create music, write lyrics, and imitate artists’ voices while protecting intellectual property rights. Gen AI Depends on Good Data For generative AI to be truly valuable, organizations need to customize vendors’ models with their own data and prepare their data for integration. Generative AI relies on well-curated data to ensure accuracy, recency, uniqueness, and other quality attributes. Poor-quality data yields poor-quality AI responses. Data leaders in our survey cited data quality as the greatest challenge to realizing generative AI’s potential, with 46% highlighting this issue. Jeff McMillan, Chief Data, Analytics, and Innovation Officer at Morgan Stanley Wealth Management, emphasizes the importance of high-quality training content and the need to address disparate data sources for successful generative AI implementation. Current Efforts and Challenges Most data leaders have not yet made significant changes to their data strategies. While 93% agree that a data strategy is critical for generative AI, 57% have made no changes, and only 11% strongly agree their organizations have the right data foundation. Organizations making progress are focusing on specific tasks like data integration, cleaning datasets, surveying data, and curating documents for domain-specific AI models. Walid Mehanna, Group Chief Data and AI Officer at Merck Group, and Raj Nimmagadda, Chief Data Officer for R&D at Sanofi, stress the importance of robust data foundations, governance, and standards for generative AI success. Focus on High-Value Data Domains Given the monumental effort required to curate, clean, and integrate all unstructured data for generative AI, organizations should focus on specific data domains where they plan to implement the technology. The most common business areas prioritizing generative AI development include customer operations, software engineering, marketing and sales, and R&D. The Time to Start is Now While other important data projects exist, including improving transaction data and supporting traditional analytics, the preparation for generative AI should not be delayed. Despite some slow pivoting from structured to unstructured data management, and competition among CDOs, CIOs, CTOs, and chief digital officers for leadership in generative AI, the consensus is clear: generative AI is a transformative capability. Preparing a large organization’s data for AI could take several years, and the time to start is now. Like Related Posts Who is Salesforce? Who is Salesforce? Here is their story in their own words. From our inception, we’ve proudly embraced the identity of Read more Salesforce Marketing Cloud Transactional Emails Salesforce Marketing Cloud Transactional Emails are immediate, automated, non-promotional messages crucial to business operations and customer satisfaction, such as order Read more Salesforce Unites Einstein Analytics with Financial CRM Salesforce has unveiled a comprehensive analytics solution tailored for wealth managers, home office professionals, and retail bankers, merging its Financial Read more AI-Driven Propensity Scores AI plays a crucial role in propensity score estimation as it can discern underlying patterns between treatments and confounding variables Read more

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Where Will AI Take Us?

Where Will AI Take Us?

Author Jeremy Wagstaff wrote a very thought provoking article on the future of AI, and how much of it we could predict based on the past. This insight expands on that article. Artificial Intelligence (AI) refers to the simulation of human intelligence in machines that are programmed to think and learn. These machines can perform tasks that typically require human intelligence, such as visual perception, speech recognition, decision-making, and language translation. Many people think of artificial intelligence in the vein of how they personally use it. Some people don’t even realize when they are using it. Artificial intelligence has long been a concept in human mythology and literature. Our imaginations have been grabbed by the thought of sentient machines constructed by humans, from Talos, the enormous bronze automaton (self-operating machine) that safeguarded the island of Crete in Greek mythology, to the spacecraft-controlling HAL in 2001: A Space Odyssey. Artificial Intelligence comes in a variety of flavors, if you will. Artificial intelligence can be categorized in several ways, including by capability and functionality: You likely weren’t even aware of all of the above categorizations of artificial intelligence. Most of us still would sub set into generative ai, a subset of narrow AI, predictive ai, and reactive ai. Reflect on the AI journey through the Three C’s – Computation, Cognition, and Communication – as the guiding pillars for understanding the transformative potential of AI. Gain insights into how these concepts converge to shape the future of technology. Beyond a definition, what really is artificial intelligence, who makes it, who uses it, what does it do and how. Artificial Intelligence Companies – A Sampling AI and Its Challenges Artificial intelligence (AI) presents a novel and significant challenge to the fundamental ideas underpinning the modern state, affecting governance, social and mental health, the balance between capitalism and individual protection, and international cooperation and commerce. Addressing this amorphous technology, which lacks a clear definition yet pervades increasing facets of life, is complex and daunting. It is essential to recognize what should not be done, drawing lessons from past mistakes that may not be reversible this time. In the 1920s, the concept of a street was fluid. People viewed city streets as public spaces open to anyone not endangering or obstructing others. However, conflicts between ‘joy riders’ and ‘jay walkers’ began to emerge, with judges often siding with pedestrians in lawsuits. Motorist associations and the car industry lobbied to prioritize vehicles, leading to the construction of vehicle-only thoroughfares. The dominance of cars prevailed for a century, but recent efforts have sought to reverse this trend with ‘complete streets,’ bicycle and pedestrian infrastructure, and traffic calming measures. Technology, such as electric micro-mobility and improved VR/AR for street design, plays a role in this transformation. The guy digging out a road bed for chariots and Roman armies likely considered none of this. Addressing new technology is not easy to do, and it’s taken changes to our planet’s climate, a pandemic, and the deaths of tens of millions of people in traffic accidents (3.6 million in the U.S. since 1899). If we had better understood the implications of the first automobile technology, perhaps we could have made better decisions. Similarly, society should avoid repeating past mistakes with AI. The market has driven AI’s development, often prioritizing those who stand to profit over consumers. You know, capitalism. The rapid adoption and expansion of AI, driven by commercial and nationalist competition, have created significant distortions. Companies like Nvidia have soared in value due to AI chip sales, and governments are heavily investing in AI technology to gain competitive advantages. Listening to AI experts highlights the enormity of the commitment being made and reveals that these experts, despite their knowledge, may not be the best sources for AI guidance. The size and impact of AI are already redirecting massive resources and creating new challenges. For example, AI’s demand for energy, chips, memory, and talent is immense, and the future of AI-driven applications depends on the availability of computing resources. The rise in demand for AI has already led to significant industry changes. Data centers are transforming into ‘AI data centers,’ and the demand for specialized AI chips and memory is skyrocketing. The U.S. government is investing billions to boost its position in AI, and countries like China are rapidly advancing in AI expertise. China may be behind in physical assets, but it is moving fast on expertise, generating almost half of the world’s top AI researchers (Source: New York Times). The U.S. has just announced it will provide chip maker Intel with $20 billion in grants and loans to boost the country’s position in AI. Nvidia is now the third largest company in the world, entirely because its specialized chips account for more than 70 percent of AI chip sales. Memory-maker Micro has mostly run out of high-bandwidth memory (HBM) stocks because of the chips’ usage in AI—one customer paid $600 million up-front to lock in supply, according to a story by Stack. Back in January, the International Energy Agency forecast that data centers may more than double their electrical consumption by 2026 (Source: Sandra MacGregor, Data Center Knowledge). AI is sucking up all the payroll: Those tech workers who don’t have AI skills are finding fewer roles and lower salaries—or their jobs disappearing entirely to automation and AI (Source: Belle Lin at WSJ). Sam Altman of OpenAI sees a future where demand for AI-driven apps is limited only by the amount of computing available at a price the consumer is willing o pay. “Compute is going to be the currency of the future. I think it will be maybe the most precious commodity in the world, and I think we should be investing heavily to make a lot more compute.” Sam Altman, OpenAI CEO This AI buildup is reminiscent of past technological transformations, where powerful interests shaped outcomes, often at the expense of broader societal considerations. Consider early car manufacturers. They focused on a need for factories, components, and roads.

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Generative AI Trends for 2024

Generative AI Trends for 2024

It’s hard to believe that ChatGPT is only a year old. The number of exciting new product launches over the past 12 months has been astonishing — and there’s no sign of slowing down. In fact, quite the opposite. Earlier in November, OpenAI hosted DevDay, where the company announced extensive offerings across B2C and B2B markets. Cohere has doubled down on its knowledge search capabilities and private deployments. Amazon Web Services launched PartyRock, its no-code gen AI app-building playground. Generative AI Trends for 2024 you can expect to see. We believe that last month’s activity sets the stage for 2024 in the gen AI space. Here are six major trends happening across the space: While the technology’s possibilities continue to grow, we believe there are four principles for CEOs to consider as they drive their gen AI agendas. These principles draw from our experiences building gen AI applications with our clients throughout the year, as well as decades of delivering digital and analytics transformations. Be Intentional: Set Gen AI Strategy Top-Down Gen AI is a gold rush. Everyone from shareholders to employees to boards is scrambling to deploy the latest and most powerful gen AI tools, and many large organizations have over 150 gen AI use cases on backlog. While we share their excitement and admire their ambition, allowing dozens of gen AI projects to spawn across an organization puts at-scale value creation at risk. Generative AI Trends for 2024 With recent developments in the gen AI space, the proliferation of use cases and opportunities will continue to split the already divided attention of leadership teams. C-suites must bring focus with a top-down gen AI strategy, constantly asking how the technology can create enduring strategic distance between the organization and its competitors. Here are some examples from first movers: Smart organizations are taking a 2×2 approach: identifying two fast use cases to register quick wins and excite the organization while working on two slower, more transformational use cases that will change day-to-day business operations. Reimagine Entire Domains Rather Than Isolated Use Cases During 2023, most organizations began experimenting with gen AI, building one-off prototypes and buying off-the-shelf solutions. Yet, as these solutions are rolled out to end users, organizations are struggling to capture value. For example, some organizations that invested in GitHub Copilot have yet to figure out how the value capture is passed back to the business. Organizations need to reframe from isolated use cases to the full software delivery lifecycle. Scrum teams need to commit to shipping more product features, or sales need to offer more competitive pricing to win more business. Stopping at just buying a new shiny tool means the productivity gains will not translate to bottom-line gains. This often means reimagining entire workflows and domains. This serves two purposes: 1) it creates a more seamless end-user experience by avoiding point solutions; and 2) organizations can more easily track value against clear business outcomes. For example, an insurer we worked with is reimagining its end-to-end claims process — from first notice of loss to payment. For each step along the way, the insurer has identified gen AI, digital, and analytics opportunities, while never losing sight of the claims adjuster’s experience. Ultimately, this comprehensive approach made a step-change impact on end-to-end handling time. Buy Selectively, Build Strategically Matching the pace of innovation, many new startups and software offerings are entering the market, leaving enterprises with a familiar question: “Buy or build?” On the “buy” side, organizations are wary about investing in capabilities that will eventually be available for a fraction of the cost. These organizations are also skeptical of off-the-shelf solutions, unsure if the software will perform at scale without significant customization. As these solutions mature and prove their value, “buy” strategies will continue to play a central role in any gen AI strategy. Meanwhile, some organizations find compelling business cases to “build.” These players start by identifying use cases that create strategic competitive advantages against their peers by compounding existing strengths in their domain expertise, workflow integration, or regulatory know-how. For example, deploying gen AI to accelerate drug discovery has become standard in the pharmaceutical industry. Additionally, organizations are investing in data and IT infrastructure to enable their portfolio of gen AI use cases. For many organizations, there has been little to no investment in unstructured data governance. Now is the time. Build Products, Not Proofs of Concept (POCs) With the new tooling available, a talented engineer can build a proof-of-concept over a weekend. In some cases, this might be sufficient to serve an enterprise need (e.g., a summarization chatbot). However, for most use cases in a large enterprise context, proofs-of-concept are not sufficient. They do not scale well into production and their performance degrades without the appropriate engineering and experimentation. At OpenAI’s Dev Day, engineers demonstrated how hard it is to turn a POC into a production-grade product. Initially, a demo POC only achieved 45% accuracy for a retrieval task. After a few months and numerous experiments (e.g., fine-tuning, re-ranking, metadata tagging, data labeling, model self-assessment, risk guardrails), the engineers achieved 98% accuracy. Implications of Generative AI Trends for 2024 This has two implications. First, organizations cannot seek near-perfection on every use case. They need to be selective about when it is worthwhile to invest scarce engineering talent to develop high-performance gen AI applications. For some situations, 45% accuracy may be sufficient to deliver business benefits. Second, organizations need to scale their gen AI capabilities to meet their ambitions. Most organizations have identified hundreds of gen AI use cases. Therefore, organizations are turning to reusable code components to accelerate development. Dedicated engineers, often in a Center of Excellence (COE), codify best practices into these code components, allowing subsequent gen AI efforts to build off the lessons learned from pioneering projects. We have seen these components accelerate delivery by 25% to 50%. Throughout the past year, there has been an endless stream of gen AI news and hype. The coming year will likely be similar

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career

Amazon Salesforce

The world’s leading cloud provider and the #1 CRM platform are making it easier for customers to seamlessly and securely manage their data across Salesforce and AWS. Now able to safely and responsibly use the latest generative artificial intelligence (AI) technologies in their applications and workflows. AWS and Salesforce support customers through new and enhanced integrations. Integrations between AWS technologies and Salesforce products, including unified data management, seamless deployment of AWS’s voice, video, and AI services, streamlined purchasing options through AWS Marketplace, and more. Amazon Salesforce is a marriage for the IT ages. In November 2023, Salesforce and Amazon announced a partnership. New joint innovations enhance data management, improve customer experiences, and enable AI-powered applications Salesforce significantly expands its use of AWS across its full portfolio and is taking an AWS-native approach for its most strategic and fastest growing innovation. The Salesforce Data Cloud. AWS increases its company-wide use of Salesforce CRM offerings, including adopting Data Cloud to manage its unified customer profiles. With Salesforce now available on AWS Marketplace, thousands of joint customers can accelerate their deployment of Salesforce products through seamless buying and billing experiences. San Francisco and Las Vegas — November 27, 2023 At AWS re: Invent, Amazon Web Services (AWS), an Amazon.com, Inc. company (NASDAQ: AMZN), and Salesforce, the #1 AI CRM (NYSE: CRM), today announced a significant expansion of their long standing, global strategic partnership. By deepening product integrations across data and artificial intelligence (AI), and for the first time offering select Salesforce products on the AWS Marketplace. The expanded agreement makes it easier for customers to seamlessly and securely manage their data across Salesforce and AWS,. Increasing the ability to safely and responsibly infuse the latest generative AI technologies into their applications and workflows. “Salesforce and AWS make it easy for developers to securely access and leverage data and generative AI technologies to drive rapid transformation for their organizations and industries. With this expanded partnership, our joint customers gain powerful new ways to innovate, collaborate, and build more customer-focused applications using the broadest and deepest set of cloud services.” Adam Selipsky, CEO, AWS How Customers Benefit To make it easier for customers to benefit from the combined value of Salesforce and AWS, the companies will deepen the integrations between AWS and Salesforce products. Salesforce will now support Amazon Bedrock. Bedrock is a fully managed service that makes foundation models (FMs) from leading AI companies available through a single application programming interface (API). This is part of Salesforce’s open model ecosystem strategy. Making Amazon Bedrock available through the Einstein Trust Layer to power AI-driven apps and workflows in Salesforce. In addition, Salesforce Data Cloud will expand to support data sharing across additional AWS technologies. These Data Cloud integrations will be governed by new centralized access controls. Thereby giving customers the ability to manage secure user access at the folder, object, and file level for Data Cloud content stored in Amazon Simple Storage Service (Amazon S3). Expanded Use of Amazon Web Services As part of this partnership, Salesforce will expand its use of Amazon Web Services, including compute, storage, data, and AI technologies through Hyperforce. Therefore further enhancing popular services like Salesforce Data Cloud. AWS will also expand its use of Salesforce products. Data Cloud will allow AWS to create a single unified customer profile allowing them to deliver more personalized experiences to customers.  Notable Quotable “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, and ensuring we meet massive customer demand for our products on the AWS Marketplace. 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.”  Marc Benioff, chair and CEO, Salesforce These new and enhanced integrations will include: Availability: What is Amazon Connect Salesforce? The Amazon Connect CTI Adapter provides a WebRTC browser-based contact control panel (CCP). This is within the Salesforce Lightning, Console, and Classic CRM experience. This CTI integration gives your agents the ability to leverage both inbound caller ID screen pop-ups and outbound click to call/transfer/conferencing. Like Related Posts Who is Salesforce? Who is Salesforce? Here is their story in their own words. From our inception, we’ve proudly embraced the identity of Read more Salesforce Marketing Cloud Transactional Emails Salesforce Marketing Cloud Transactional Emails are immediate, automated, non-promotional messages crucial to business operations and customer satisfaction, such as order Read more Salesforce Unites Einstein Analytics with Financial CRM Salesforce has unveiled a comprehensive analytics solution tailored for wealth managers, home office professionals, and retail bankers, merging its Financial Read more AI-Driven Propensity Scores AI plays a crucial role in propensity score estimation as it can discern underlying patterns between treatments and confounding variables Read more

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Modern Cloud Analytics

Modern Cloud Analytics

Unlocking the Power of Modern Cloud Analytics: A Tableau and AWS Initiative According to IDC research, analytics spending on the cloud is growing eight times faster than other deployment types. A comprehensive cloud technology stack supports data integration, self-service analytics, and essential use cases for digital transformation and analytics at scale. To help customers harness the power of cloud-based self-service analytics, Tableau continues to invest in its Modern Cloud Analytics initiative, launched at the Tableau Conference in 2019. What is Modern Cloud Analytics? Modern Cloud Analytics (MCA) combines the expertise and resources of Tableau, Amazon Web Services (AWS), and their partner networks. This collaboration maximizes the value of end-to-end data and analytics investments, from data strategy and migration to operational optimization. MCA helps organizations at any digital transformation stage securely deploy and scale cloud analytics, delivering faster time to value and reduced costs with validated migration processes that mitigate risk. Core Product Integration and Connectivity Tableau integrates seamlessly with AWS services, providing a complete solution for analyzing data stored in Amazon’s infrastructure. Key integrations include: Amazon S3 Connector: Leveraging Tableau’s Hyper in-memory data engine, this connector reads Parquet or CSV files directly from Amazon S3, eliminating the need for Hyper extracts. Available in Tableau Cloud and Tableau Exchange.Amazon Athena Connector: Now supports third-party identity providers (IdP) like Azure AD and Okta, offering secure and flexible authentication with multi-factor options.Amazon OpenSearch Connector: Developed by the Amazon OpenSearch Service team, available on Tableau Exchange.Amazon DocumentDB Connector: Created by the Amazon DocumentDB Service team, featured on Tableau Exchange.Amazon Neptune Connector: Developed by the Amazon Neptune Service team, available on Tableau Exchange. Skip Server Administration with Tableau CloudTableau Cloud, hosted on AWS, offers significant cost savings and performance improvements. “With Tableau Cloud, we’re saving over $300,000 annually in server and platform administration costs, with dashboard performance improving by 2x,” said Raj Seenu, Senior Director of Data Technologies at Splunk. This platform allows IT and data engineers to focus on other critical tasks, demonstrating a cloud-first approach. Splunk anticipates doubling its enterprise analytics adoption by the end of 2021. Getting Started with Modern Cloud AnalyticsThe MCA program assists customers in migrating data and analytics workloads to AWS, unlocking the benefits of a cloud-based analytics strategy. *Source: IDC InfoBrief, sponsored by Tableau and AWS, Cloud Business Intelligence and Analytics, doc #US46135420TM, April 2020. Like Related Posts Who is Salesforce? Who is Salesforce? Here is their story in their own words. From our inception, we’ve proudly embraced the identity of Read more Salesforce Marketing Cloud Transactional Emails Salesforce Marketing Cloud Transactional Emails are immediate, automated, non-promotional messages crucial to business operations and customer satisfaction, such as order Read more Salesforce Unites Einstein Analytics with Financial CRM Salesforce has unveiled a comprehensive analytics solution tailored for wealth managers, home office professionals, and retail bankers, merging its Financial Read more AI-Driven Propensity Scores AI plays a crucial role in propensity score estimation as it can discern underlying patterns between treatments and confounding variables Read more

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AWS Salesforce

AWS Salesforce

The world’s leading cloud provider and foremost CRM platform are joining forces to empower customers in the efficient and secure management of their data across Salesforce CRM and Amazon Web Services. This collaboration ensures the responsible integration of cutting-edge generative artificial intelligence (AI) technologies into applications and workflows. Enhanced integrations between AWS technologies and Salesforce products include unified data management, seamless deployment of AWS’s voice, video, and AI services, and simplified purchasing options through AWS Marketplace. AWS Salesforce The collaborative innovations between Salesforce CRM and AWS aim to elevate data management, enhance customer experiences, and empower AI-driven applications. Salesforce is adopting an AWS-native approach for its Salesforce Data Cloud, expanding its use of AWS across its entire portfolio. Simultaneously, AWS is broadening its adoption of Salesforce CRM offerings company-wide, including the utilization of Data Cloud for managing unified customer profiles. Trusted, Integrated Platforms Salesforce announces it is now accessible on AWS Marketplace, streamlining the deployment of Salesforce products for joint customers through seamless buying and billing experiences. This partnership signifies a significant milestone, uniting the top AI CRM provider with the leading cloud provider to deliver a trusted, open, integrated data, and AI platform. Customers can securely leverage Amazon Bedrock within Salesforce Einstein Copilot Studio to develop generative AI-powered skills, apps, and experiences across the Salesforce Customer 360. The seamless and secure unification of data across Salesforce Data Cloud and Amazon Web services like Amazon Redshift and Amazon EMR allows the utilization of foundation models in Amazon Bedrock and Amazon SageMaker. Salesforce Service Cloud Voice seamlessly integrates with Amazon connect, empowering contact center agents with comprehensive tools within their workspace to deliver enhanced customer service. Amazon Connect is chosen as Salesforce’s preferred contact center technology, available through its new offering, Service Cloud Voice. The collaboration between Tableau and AWS leverages resources, technical expertise, and data knowledge to maximize the value of end-to-end data and analytics investments. This collaboration facilitates the secure deployment and scaling of cloud analytics, resulting in faster time to value and reduced costs. The partnership between Mulesoft and AWS accelerates cloud adoption and facilitates seamless connection with data and workflows from various systems. Out-of-the-box connectors for key AWS services and business systems overcome data silos, allowing builders to focus on innovation rather than integration. Slack, powered by AWS, serves as the digital headquarters for engineering, providing an integrated ChatOps environment. IT professionals can enhance cloud-centric workflows by monitoring and managing AWS environments from Slack, bringing together tools and professionals for faster code deployment, reduced incident response time, and increased visibility. Additionally, the partnership enables the virtualization of data from AWS services in Salesforce objects for low-code development. Users can sign into AWS from Salesforce Setup or into Salesforce from the Amazon Management Console, simplifying service authorization, user identity, security, and governance between Salesforce and AWS. Content updated December 2023. Like Related Posts Who is Salesforce? Who is Salesforce? Here is their story in their own words. From our inception, we’ve proudly embraced the identity of Read more Salesforce Marketing Cloud Transactional Emails Salesforce Marketing Cloud Transactional Emails are immediate, automated, non-promotional messages crucial to business operations and customer satisfaction, such as order Read more Salesforce Unites Einstein Analytics with Financial CRM Salesforce has unveiled a comprehensive analytics solution tailored for wealth managers, home office professionals, and retail bankers, merging its Financial Read more AI-Driven Propensity Scores AI plays a crucial role in propensity score estimation as it can discern underlying patterns between treatments and confounding variables Read more

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Salesforce

Salesforce Platform Explained

The Salesforce Platform, formerly known as Force.com, serves as the foundational framework that spans the Sales and Service Clouds, offering robust capabilities for tailoring standard Salesforce products. Within this platform, you have the flexibility to construct custom data tables using custom objects, initiate automation through Flow, and design personalized user interfaces utilizing the Lightning App Builder. Salesforce is a CRM platform and also a centralized platform for managing customer accounts, sales leads, activities, customer support cases, and more. Users can access Salesforce through a web browser, mobile app, or desktop application. Salesforce provides users comprehensive tools to manage customer data, automate processes, analyze data and insights, and create personalized customer experiences. Salesforce also offers a variety of solutions for customer service, marketing automation, commerce, app development, and more. For those seeking a wholly unique experience, the option to acquire Salesforce Platform licenses, considerably more economical than, for instance, Sales Cloud licenses, allows you to develop entirely customized applications on the Salesforce platform. What is Salesforce used for? Salesforce is used for streamlining sales, service, and marketing activities via industry-specific products. With seamless software integration. It offers solutions for various needs such as Sales Cloud, Service Cloud, Marketing Cloud, Community Cloud, Field Services, CPQ and Billing etc. Is the Salesforce platform just CRM? Salesforce has completely changed the idea of traditional CRM. It merged all the features of a traditional CRM with a bunch of new unique tools and capabilities. Thus offering its users MUCH more than ever before. Top Salesforce customers in the USA are U.S. Bank, Amazon Web Services, American Express, Walmart, and T-Mobile. Overall, more than 59% of Salesforce clients come from the USA, as for the end of 2022. Salesforce Platform Pricing – click here. The Salesforce Platform is now Einstein 1. The bold new future of enterprise AI requires a new type of platform. One that can handle terabytes of disconnected data, have the freedom to choose your AI models, and connect directly into the flow of work, all while maintaining customer trust. The Einstein 1 Platform unifies your data, AI, CRM, development, and security into a single, comprehensive platform. It empowers IT, admins, and developers with an extensible AI platform, facilitating fast development of generative apps and automation. Accelerate development and maximize your developers and admins time across workflows, app customization and configurations. Keep your data safe and sound by securing your Salesforce org with Salesforce’s portfolio of security and privacy products. Activate all your customer data across Salesforce applications at every touch point using relevant insights and contextual data in the flow of work. Content updated December 2023. Like1 Related Posts Who is Salesforce? Who is Salesforce? Here is their story in their own words. From our inception, we’ve proudly embraced the identity of Read more Salesforce Marketing Cloud Transactional Emails Salesforce Marketing Cloud Transactional Emails are immediate, automated, non-promotional messages crucial to business operations and customer satisfaction, such as order Read more Salesforce Unites Einstein Analytics with Financial CRM Salesforce has unveiled a comprehensive analytics solution tailored for wealth managers, home office professionals, and retail bankers, merging its Financial Read more AI-Driven Propensity Scores AI plays a crucial role in propensity score estimation as it can discern underlying patterns between treatments and confounding variables Read more

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