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Trust in AI Data

As companies rapidly embrace Artificial Intelligence and realize its benefits, trust must be their top priority. And to instill trust in AI, they must first instill trust in the data that powers it. Think about data as a well-balanced diet for AI — you’re healthiest when you avoid junk food and consume all the proper nutrients. Simply put, organizations can only harness the full power of AI when it is fueled by accurate, comprehensive data.  The Future is Here AI is no longer a futuristic concept; it has become a reality in our living rooms, cars, and frequently, in our pockets. As this technology continues to play an ever-expanding role in our daily lives, a crucial question arises: To what extent can, and should, we place our trust in these AI systems? Trust in AI data comes more naturally for some than others. As the prevalence of AI increases, so does the concern about ensuring that it aligns with human values. A frequently cited example illustrating this challenge involves the moral decision an autonomous car may face when confronted with a collision scenario. Consider a situation where a driver must swerve to avoid being hit and seriously injured by an oncoming bus. However, the dilemma arises as the car faces the prospect of hitting a baby if it swerves left or an elderly person if it swerves right—posing a complex ethical question for the autonomous car. Arvind Krishna, Senior Vice President of Hybrid Cloud and Director of IBM Research, emphasizes the importance of careful programming in AI systems to prevent biases introduced by programmers from influencing outcomes. Recognizing the complexity of such issues, he discusses the need to develop frameworks for addressing these ethical challenges, a task IBM is tackling through its participation in the Partnership on AI alongside other technology organizations. Trust in AI data vs bias: Instances of machines demonstrating bias have already garnered attention, eroding trust in AI systems. AI technicians are actively working to identify and mitigate the origins of bias, acknowledging that machines can become biased due to inadequate representation in their training data. Guru Banavar, IBM Chief Science Officer for Cognitive Computing, notes that unintentional bias may arise from a lack of care in selecting the right training dataset, while intentional bias can result from a malicious attacker manipulating the dataset. James Hendler, Director of the Institute for Data Exploration and Applications at Rensselaer Polytechnic Institute, reminds us that while AI can be a force for social good, it also holds the potential for diverse social impacts, where actions deemed good by one may be perceived as harmful by another. Hence, an awareness of these complexities is essential in navigating the ethical landscape of AI applications. Artificial Intelligence (AI) is revolutionizing work processes and service delivery, empowering organizations to harness its formidable capabilities for data-driven predictions, product and service optimization, innovation augmentation, increased productivity, and cost reduction. While the benefits of AI adoption are immense, it also introduces risks and challenges, prompting concerns about the current level of trustworthiness in AI applications. Public Trust in AI data Unlocking the full potential and return on investment from AI necessitates a sustained commitment to building and upholding public trust. For widespread adoption, people must have confidence that AI development and utilization adhere to responsible and trustworthy practices. In a pioneering initiative, KPMG Australia, in collaboration with the University of Queensland, conducted a world-first in-depth exploration of trust and global attitudes toward AI across 17 countries. The resulting report, “Trust in Artificial Intelligence: A Global Study 2023,” delivers comprehensive insights into the factors influencing trust, the perceived risks and benefits of AI utilization, community expectations regarding AI governance, and the entities considered trustworthy in AI development, usage, and regulation. This report, titled “Trust in Artificial Intelligence: 2023 Global Study on the Shifting Public Perceptions of AI,” presents key findings from the global study and offers individual country snapshots, serving as a valuable resource for those leading, creating, or governing AI systems. Importantly, it outlines four critical pathways for policymakers, standards setters, governments, businesses, and non-governmental organizations (NGOs) to navigate the challenges associated with trust in the development and deployment of AI. Like Related Posts Salesforce Artificial Intelligence Is artificial intelligence integrated into Salesforce? Salesforce Einstein stands as an intelligent layer embedded within the Lightning Platform, bringing robust Read more Salesforce’s Quest for AI for the Masses The software engine, Optimus Prime (not to be confused with the Autobot leader), originated in a basement beneath a West Read more Salesforce Data Studio Data Studio Overview Salesforce Data Studio is Salesforce’s premier solution for audience discovery, data acquisition, and data provisioning, offering access Read more Salesforce Government Cloud: Ensuring Compliance and Security Salesforce Government Cloud public sector solutions offer dedicated instances known as Government Cloud Plus and Government Cloud Plus – Defense. Read more

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Data Cloud Free Licenses

Data Cloud Free Licenses

Salesforce Announces Data Cloud Free Licenses at Dreamforce 2023 At Dreamforce 2023, Salesforce announced that free Data Cloud licenses are now included for all Enterprise Edition or above customers to help them familiarize themselves with new capabilities and develop use case ideas. Starting September 19th, 2023, Enterprise Edition and above customers can get started with Data Cloud Provisioning at no cost by signing up under Your Account. Data Cloud Provisioning includes: Unlimited Plus Edition customers will get access to 2,500,000 Data Service credits. Two Tableau Creator licenses are a separate line item and can be quoted by your Salesforce Account Executive. Salesforce has been focusing on large data and AI tools for several years, acquiring Tableau, accelerating their Einstein AI tools, and significantly extending the Data Cloud product. Data Cloud allows you to easily harmonize data, analyze it in Tableau, and make it actionable across marketing, sales, and service. What Can I Do with Data Cloud? Data Cloud enables customers to start with one of three use cases: Across these use cases, customers can ingest data from multiple sources, unify data with identity resolution, calculate insights, visualize data in Tableau (with the provisioning of the Tableau Cloud – Creator for Data Cloud SKU), and view consolidated data on the contact record. Differences Between Data Cloud and Data Cloud Provisioning Functionality: Data Cloud Provisioning includes all the features of the existing Data Cloud offerings, except Segmentation and Activation. Credits for Segmentation and Activation can be purchased as add-ons through Marketing Cloud account teams. Capacity: Both include 1 TB of data storage, 1 Data Cloud admin, 100 internal Data Cloud identity users, 1,000 Data Cloud PSL, and 5 integration users. Entitlement: Data Cloud Provisioning entitlement is the same for all Enterprise Edition and above customers. Additional Information Sandbox Availability: Data Cloud is not available in Sandbox orgs; it can only be provisioned to an existing production org. Professional Edition Access: Data Cloud Provisioning is not available to Professional Edition customers. Existing Data Cloud or CDP Customers: Those with an existing Data Cloud or CDP tenant cannot sign up for Data Cloud Provisioning. Unlimited Edition Plus Bundle Customers: Data Cloud Provisioning is not available, as the bundle includes a Data Cloud tenant. Edition Information: Check your Salesforce org’s edition in Setup > Company Information > Organization Edition. Government Cloud: Data Cloud Provisioning is not available. Non-Profit Customers: Data Cloud Provisioning is available. Industry Cloud Customers: Industry Cloud customers with Enterprise Edition and above are eligible. ISV Partners: Data Cloud Provisioning is not accessible via Your Account in ISV Enterprise Edition orgs. ISV Partners need to create a support case with the Partner Ops team to request provisioning. Existing Tableau Customers: Tableau Cloud – Creator for Data Cloud is intended to provision a new Tableau tenant (aka site). Multiple Instances: Only one Data Cloud Provisioning instance is allowed per account/tenant. Access to Tableau Cloud – Creator for Data Cloud: To get access, you must have or include on the same quote any of the following: 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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Bring Your Own Lake With Google BigQuery

Bring Your Own Lake With Google BigQuery

Can BigQuery Function as a Data Lake? Why you should Bring Your Own Lake With Google BigQuery. Google BigQuery serves as a fully-managed, petabyte-scale data warehouse, utilizing Google’s infrastructure’s processing power. The combination of Google Cloud Storage and BigQuery transforms Google Cloud Platform into a scalable data lake capable of storing both structured and unstructured data. Why Embrace BigQuery’s Serverless Model? In a serverless model, processing is automatically distributed across numerous machines operating in parallel. BigQuery’s serverless model allows data engineers and database administrators to concentrate less on infrastructure and more on server provisioning and deriving insights from data. Advantages of Using BigQuery as a Data Warehouse: BigQuery is a completely serverless and cost-effective cloud data warehouse designed to work across clouds, scaling seamlessly with your data. With integrated business intelligence, machine learning, and AI features, BigQuery provides a unified data platform for storing, analyzing, and sharing insights effortlessly. The Relevance of Data Lakes: Data Lakes and Data Warehouses are complementary components of data processing and reporting infrastructure, each serving distinct purposes rather than being alternatives. Data Lakes in the Evolving Landscape: Data lakes, once immensely popular, are gradually being supplanted by more advanced storage solutions like data warehouses. Data Lake Content Formats: A data lake encompasses structured data from relational databases (rows and columns), semi-structured data (CSV, logs, XML, JSON), unstructured data (emails, documents, PDFs), and binary data (images, audio, video). Building a Data Lake on GCP: Constructing a Data Lake: Introduction to Google Big Lake: BigLake serves as a storage engine, offering a unified interface for analytics and AI engines to query multiformat, multicloud, and multimodal data securely, efficiently, and in a governed manner. It aspires to create a single-copy AI lakehouse, minimizing the need for custom data infrastructure management. Data Extraction from a Data Lake: Distinguishing BigQuery as a Data Warehouse: BigQuery stands out as a serverless and cost-effective enterprise data warehouse, functioning across clouds and seamlessly scaling with data. It incorporates built-in ML/AI and BI for scalable insights. Data Lake Implementation Time: Building a fully productive data lake involves several steps, including workflow creation, security mapping, and tool and service configuration. As a result, a comprehensive data lake implementation can take several months. Acquiring a Data Lake: One option is to buy a Data Lake through a decentralized exchange (DEX) supporting the blockchain where the Data Lake resides. Connecting a crypto wallet to a DEX and utilizing a Binance account to purchase the base currency is outlined in a guide for this purpose. Like Related Posts Guide to Creating a Working Sales Plan Creating a sales plan is a pivotal step in reaching your revenue objectives. To ensure its longevity and adaptability to Read more CRM Cloud Salesforce What is a CRM Cloud Salesforce? Salesforce Service Cloud is a customer relationship management (CRM) platform for Salesforce clients to Read more Web Pages That Helped With My Google Data Engineer Exam Google Data Engineer Exam It seems like every day more resources appear to help you study for the Google Data Read more What is Advanced Reporting in Salesforce? Cross Filters, Summary Formulas, and More: Advanced Reporting in Salesforce Salesforce comes with report types out-of-the-box for all standard objects Read more

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Salesforce Net Zero Enhancements

Salesforce Net Zero Enhancements

Salesforce AI Innovations Boost ESG Reporting in Net Zero Cloud Powered by Einstein, Net Zero Cloud’s generative AI capabilities will suggest reliable, auto-generated responses for ESG reports – Salesforce Net Zero Enhancements CSRD Report Builder automates reporting, and Materiality Assessment empowers ESG managers to identify most relevant ESG topics  Global sports brand Rossignol Group uses Net Zero Cloud to track its carbon footprint; joins 1t.org with commitment to plant 100,000 trees Today at Dreamforce 2023, Salesforce unveiled new Einstein features for Net Zero Cloud to make corporate environmental, social, and governance (ESG) reporting easier for companies as they navigate a rapidly evolving regulatory landscape.  Beginning in 2024, approximately 50,000 companies — including many large, multinationals based in the United States — must comply with the Corporate Sustainability Reporting Directive (CSRD). This includes disclosing both climate-related financial risks and societal impact, along with scope 3 or the emissions generated by a company’s supply chain. The company also introduced two new capabilities for Net Zero Cloud — CSRD Report Builder and Materiality Assessment. The Report Builder automates CSRD report generation, and Materiality Assessment helps organizations determine what is material – both to their business and broader societal impact, the “double materiality” assessment that is a requirement of CSRD. Integrate a complete sustainability management solution into 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 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 is Hiring

Salesforce is Hiring

Salesforce is hiring approximately 3,000 new employees, CEO Marc Benioff announced in an interview with Bloomberg this week. This hiring initiative comes after the company laid off 10% of its workforce earlier this year as part of a significant cost-cutting effort. Salesforce is hiring. Yahoo story here. In January, Salesforce announced the layoffs of 8,000 employees, reducing its workforce from around 79,390. The job cuts were met with internal backlash, with employees criticizing the handling of the layoffs. According to Insider’s Ashley Stewart, staff were left in the dark, having to use Slack to check who among their colleagues had been let go, likening the experience to checking a missing persons bulletin board after a disaster. Despite the recent layoffs, Benioff is now focused on growth and expansion. He emphasized the need for new hires in a Bloomberg interview during Salesforce’s annual conference in San Francisco. “Our job is to grow the company and to continue to achieve great margins,” Benioff stated. “We know we have to hire thousands of people.” The new employees will be distributed across various departments, including sales, engineering, and the data cloud product teams. These roles are crucial as Salesforce aims to bolster its artificial intelligence business and attract further investments. Chief Operating Officer Brian Millham also spoke to Bloomberg, highlighting the company’s successful business segments and the need for a surge in those areas. Millham explained, “We have some very successful parts of our business right now, and we want a surge in those areas.” This strategic hiring push aims to capitalize on these thriving sectors, driving Salesforce’s continued growth and innovation. In an effort to bring back former employees, Benioff is particularly interested in attracting “boomerangs”—those who left Salesforce for other opportunities. He shared with Bloomberg that he recently held an “alumni event” to encourage these former employees to return, reassuring them that it is “OK” to come back to the company. This move signifies a shift in Salesforce’s strategy, from drastic cost-cutting measures to a renewed focus on expansion and talent acquisition. By rehiring experienced former employees and bringing in new talent, Salesforce aims to strengthen its workforce and position itself for future success. 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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Einstein Advancement

Einstein Advancement

Salesforce, the enterprise software giant, announced on Tuesday the latest Einstein advancement in its artificial intelligence (AI) technology, unveiling a new generative AI tool called Einstein Copilot. This tool is set to revolutionize its suite of applications, including popular platforms like Slack and Tableau. What Happened: Einstein Copilot is introduced as a conversational AI assistant, seamlessly integrated within every Salesforce application. This integration aims to enhance user productivity by enabling interactions through natural language queries and providing responses based on proprietary company data. Unlike previous AI copilots, which often operated as separate, non-integrated applications, Einstein Copilot can access data from any Salesforce app, ensuring more accurate AI-powered recommendations and content generation. Einstein Copilot offers a wide range of functionalities, from summarizing video calls to automatically drafting sales emails tailored to individual customer contexts. It assists service teams by providing generative answers to customer concerns and helps marketers craft email content for campaigns. Developers can also benefit from its ability to convert natural language prompts directly into Apex code. Salesforce highlighted that 45% of executives are increasing their AI investments, with some already experiencing benefits, such as a 30% release of employee time. The San Francisco-based company mentioned that Einstein Copilot would leverage a vast pool of data, including customer information, enterprise content, and Slack conversations, to provide reliable and relevant recommendations. These recommendations can aid in tasks such as constructing digital storefronts or providing actionable insights for sales associates. Einstein Advancement This move aligns Salesforce with tech giants like Microsoft Corp and Alphabet Inc, which are capitalizing on the growing demand for generative AI. With previous initiatives such as the Einstein GPT genAI product launch in March and the expansion of its AI venture capital fund to 0 million in June, Salesforce is positioned to redefine the enterprise software landscape with its AI-driven initiatives. 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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Google 360 Analytics Dashboard in Marketing Cloud

Salesforce Audience Insights

Salesforce Audience Insights By Tectonic’s Marketing Consultant, Shannan Hearne Salesforce Marketing Cloud is so much more than just an email sending platform. This insight explores how it can power your advertising.; Marketing Cloud offers robust audience segmentation capabilities, empowering marketers to effectively segment their customer base. The integration of AI through Audience Insights enhances this power. Formerly known as Advertising Studio, the platform is now recognized as Marketing Cloud Advertising. Audience Insights provides a deeper understanding of customers by unveiling unique characteristics, interests, and behaviors of user groups interacting with your ads and converting. By connecting Marketing Cloud Advertising to paid media channels, you can optimize your audience strategy, gaining a unified, cross-channel view and assessing the effectiveness of first-party audiences through a dedicated dashboard. Key features of Audience Insights include: To leverage Audience Insights, your Marketing Cloud Intelligence admin needs to configure it before connecting Advertising to paid media channels. This integration allows you to analyze the effectiveness of first-party audiences with a single, cross-channel perspective. As a Marketing Cloud Advertising customer with a Marketing Cloud Intelligence license, you gain access to comprehensive audience and campaign analytics through Audience Insights for Marketing Cloud Advertising. This application is conveniently available in the Marketing Cloud Intelligence Marketplace. Utilize the Audience Insights for Advertising Studio dashboard to refine campaigns using first-party audiences. Additionally, the Marketing Insights for Sales Cloud solution facilitates a deeper understanding of how marketing efforts and spend translate into revenue, offering insights into the sales funnel and guiding strategic decisions. Salesforce Audience Insights The Marketing Insights for Sales Cloud solution utilizes objects such as Leads, Opportunities, Accounts, Contacts, Campaigns, and Campaign Members to provide a holistic view of marketing and sales alignment. Setting up your digital advertising strategy within Salesforce, particularly through Advertising Studio, yields significant benefits. Integration with Google Analytics 360 expands your digital marketing and analytics possibilities. Advertising Studio seamlessly connects with advertising platforms like Google Display Ads, Facebook Ads, Instagram, Pinterest, Twitter, LinkedIn, AdWords, Gmail, and YouTube. Are you ready to employ the full power of Salesforce Marketing Cloud and Advertising Studio? Contact Tectonic today. Like3 Related Posts 50 Advantages of Salesforce Sales Cloud According to the Salesforce 2017 State of Service report, 85% of executives with service oversight identify customer service as a Read more Salesforce Artificial Intelligence Is artificial intelligence integrated into Salesforce? Salesforce Einstein stands as an intelligent layer embedded within the Lightning Platform, bringing robust Read more Salesforce’s Quest for AI for the Masses The software engine, Optimus Prime (not to be confused with the Autobot leader), originated in a basement beneath a West Read more Salesforce Data Studio Data Studio Overview Salesforce Data Studio is Salesforce’s premier solution for audience discovery, data acquisition, and data provisioning, offering access Read more

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Crucial Role of Data and Integration in AI at Dreamforce

The Crucial Role of Data and Integration in AI at Dreamforce

Understanding The Crucial Role of Data and Integration in AI at Dreamforce At this year’s Dreamforce, AI is the star of the show, but two essential supporting actors are data and integration. Enterprises are increasingly recognizing the importance of unifying their diverse data sources for effective analysis and swift action, and the race to harness AI makes this integration even more critical. Integration is key not only for merging data but also for automating end-to-end processes, enabling organizations to move faster and deliver better outcomes to customers. Crucial Role of Data and Integration in AI at Dreamforce. It’s no surprise that MuleSoft, acquired by Salesforce five years ago, is now a major contributor to Salesforce’s growth. Brian Millham, President and COO at Salesforce, highlighted this during the company’s recent Q2 earnings call: “In Q2, nearly half of our greater than $1 million deals included MuleSoft. As customers integrate data from all sources to drive efficiency, growth, and insights, MuleSoft has become mission-critical and was included in half of our top 10 deals.” Breaking Down Silos Param Kahlon, EVP and General Manager for Automation and Integration at Salesforce, recently discussed the investments customers are making in data and integration. He emphasized the importance of breaking down operational silos: “We are in the business of breaking silos across systems to ensure that data can travel seamlessly through multiple systems and people for processes like order-to-cash or procure-to-pay. Our technology connects these dots.” The surge in AI interest has increased the urgency to act, as Kahlon explained: “Creating data repositories for AI algorithms requires real-time data across silos, driving significant demand for our integration solutions.” Consolidating Data Enterprises have long struggled with data consolidation due to monolithic application stacks with separate data stores. This has been a challenge even within Salesforce’s own products. Last year, Salesforce introduced a Customer Data Platform (CDP) called Data Cloud, which includes a real-time data layer named Genie. Kahlon elaborated on its significance: “Data Cloud’s strength lies in its understanding and storage of Salesforce metadata. This native integration allows for real-time actions within Salesforce, enhancing the ability to aggregate, reason over, and act on data.” For example, when a customer contacts a bank, Data Cloud can compile their ATM usage, website interactions, and recent support cases, providing the agent with a comprehensive view to better assist the customer. Leveraging Metadata for AI Salesforce’s metadata layer, which has been fine-tuned over two decades, gives it a distinct advantage. Kahlon noted: “This metadata-based architecture allows us to create meaningful AI algorithms that are natively consumed within Salesforce, enabling visualization and action based on real-time data.” This is crucial for training the underlying Large Language Model (LLM) accurately, ensuring generated content is contextually grounded and trustworthy. Kahlon emphasized: “The trust layer is essential. We need to ensure no hallucination or toxicity in the LLM’s responses, and that communications align with our company’s values.” Real-Time Data and API Management Data Cloud’s ability to connect to other data sources like Snowflake without duplicating data is a significant benefit. Kahlon commented: “Duplicating data is not desirable. Customers need real-time access to the actual source of truth.” On the integration front, APIs have simplified connecting applications and data sources. However, managing API sprawl is crucial. Kahlon explained: “Standardizing API use and publishing them in a centralized portal is essential for reusability and consistency. Low-code platforms and connectors are becoming increasingly relevant, enabling business users to access data without relying on IT.” Automation and AI The demand for automation is growing, and low-code tools are vital. Instead of integration experts being overwhelmed, organizations should establish Centers for Excellence to focus on creating reusable connectors and automations. Kahlon added: “Companies need low-code tools to involve more business users in the transformation journey without slowing down due to legacy applications.” In the future, AI may further ease the workload on integration specialists. MuleSoft recently introduced an API Experience Hub to make APIs discoverable, and AI might eventually help monitor execution logs and manage APIs more effectively. Kahlon concluded: “AI could help developers find and use APIs efficiently, enhancing security and governance while simplifying access to data across the 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 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: Large Faith-Based Religious Entity/Nonprofit-Salesforce Marketing Cloud/Nonprofit Success Pack

Undergoing a profound revitalization and restructuring process that combines six existing Provinces into a single, unified Province that will better serve the organization and its constituents’ needs. nonprofit salesforce marketing cloud success pack

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Sales Cloud Einstein

How Einstein Lead Scoring Works on Your Prospect Data

How Einstein Lead Scoring Works on Your Prospect Data By Shannan Hearne, Tectonic Marketing Consultant The love hate relationship between sales and marketing is based on lead quality.  Each party is tempted to blame the other for deals that fail to close.  Either marketing thinks the sales team dropped the ball following up with the prospect. Or the sales team thinks marketing failed to properly qualify the lead.  With Einstein Lead Scoring, the relationship between sales and marketing can improve. Not every lead holds the same significance, and relying on arbitrary details for accurate scoring is ineffective. Clicks, opens, and form fills vary in value for each lead, and visiting the Careers page does not necessarily diminish a lead’s potential.  Humans from both sales and marketing have to work together to craft scoring criteria that reflects behavior that great customers took before becoming customers.  The development of the scoring model is key to making Einstein Lead Scoring Works on Your Prospect Data. Einstein Lead Scoring, integrated with Sales Cloud Einstein, leverages artificial intelligence to enhance sales conversion efficiency. By automatically analyzing historical sales data and identifying key factors influencing lead conversion, sales reps can effectively segment and prioritize leads. With data supplied by Einstein running lead scoring in the background.  While the human factor is important, the speed of artificial intelligence to analyze data cannot be beaten. Tailored to individual business needs, Einstein Lead Scoring models analyze both standard and custom fields associated with the Lead object. By using predictive models like Logistic Regression, Random Forests, and Naive Bayes (definitions below). The system autonomously selects the best model based on a sample dataset, eliminating the need for statistical or mathematical expertise.  No more pouring through hours of spreadsheets sorting and creating pivot tables. Model Updates Regular model updates ensure accuracy. With leads being scored every hour using the latest model. This allows quick response to changes, ensuring that the prioritization of leads remains effective. The scoring factors are prominently displayed on the lead record page. Thus enabling sales reps to prepare for calls or emails efficiently with accurate engagement data. The true strength of Einstein Lead Scoring lies in its machine learning capabilities. Einstein is continuously refining predictions based on the latest Salesforce data. If new patterns emerge, such as VP titles in a specific industry showing interest in demos, Einstein automatically rescores leads meeting this criteria. Key benefits of Einstein Lead Scoring include increased connection and conversion rates, accelerated engagement with top leads, and a clear understanding of lead scoring factors. Important features encompass zero setup requirements, custom lead score-driven workflows for task assignments, and smart lead lists that prioritize the best leads for reps. Einstein Lead Scoring Works on Your Prospect Data For businesses utilizing or considering Salesforce Sales Cloud, consulting with Tectonic about integrating Einstein Lead Scoring can lead to faster implementation and deal closures. As your Salesforce implementation partner, Tectonic ensures a tailored Salesforce solution. Remaining aligned with your business needs, incorporating the powerful capabilities of Einstein tools within your Salesforce ecosystem.  Contact Tectonic today. Logistic regression estimates the probability of an event occurring, such as voted or didn’t vote, based on a given dataset of independent variables. Random forest is a commonly-used machine learning algorithm trademarked by Leo Breiman and Adele Cutler. It combines the output of multiple decision trees to reach a single result. Its ease of use and flexibility have fueled its adoption, as it handles both classification and regression problems. The Naïve Bayes classifier is a supervised machine learning algorithm, which is used for classification tasks, like text classification. It is also part of a family of generative learning algorithms, meaning that it seeks to model the distribution of inputs of a given class or category. Like1 Related Posts Salesforce OEM AppExchange Expanding its reach beyond CRM, Salesforce.com has launched a new service called AppExchange OEM Edition, aimed at non-CRM service providers. Read more The Salesforce Story In Marc Benioff’s own words How did salesforce.com grow from a start up in a rented apartment into the world’s Read more Salesforce Jigsaw Salesforce.com, a prominent figure in cloud computing, has finalized a deal to acquire Jigsaw, a wiki-style business contact database, for Read more Health Cloud Brings Healthcare Transformation Following swiftly after last week’s successful launch of Financial Services Cloud, Salesforce has announced the second installment in its series Read more

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Salesforce Dedicated Data Model for Public Sector

Salesforce Dedicated Data Model for Public Sector

Public Sector Solutions Data Model Overview The Salesforce Dedicated Data Model for Public Sector leverages a suite of standard Salesforce objects to manage and structure data across various domains such as licensing, permitting, inspections, case management, benefit administration, grantmaking, and more. These objects are designed to facilitate efficient application processing, regulatory compliance, and service delivery within government agencies. Key Features Salesforce Dedicated Data Model for Public Sector Public Sector Solutions Standard Objects The data model includes a comprehensive set of objects tailored to support: Getting Started To implement and utilize the Public Sector Solutions data model effectively: Learn More Discover how Public Sector Solutions empowers government agencies in delivering efficient and effective public services. From automating approval workflows to enhancing constituent engagement, explore the capabilities tailored to meet the diverse needs of public sector organizations. 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 Data Cloud

Salesforce Data Cloud Evolution

Data Cloud stands as the fastest-growing organically built product in Salesforce’s history, signifying a significant milestone in solving the enduring data problem within Customer Relationship Management (CRM). Salesforce Data Cloud Evolution since its beginnings is an interesting story. With an average of 928 systems per company, identity resolution becomes challenging, especially when managing more than one system. Salesforce’s expansion into AI-powered CRM emphasizes the synergy between AI and data, recognizing that AI’s optimal functionality requires robust data support. Data Cloud acts as the foundation accelerating connectivity across different ‘clouds’ within the Salesforce platform. While it’s available for purchase, even Salesforce customers without licensed Data Cloud still benefit from its foundational advantages, with increased strength when utilized as a personalization and data unification platform. The history of Data Cloud reflects its evolution through various iterations, from Customer 360 Audiences to Salesforce Genie, ultimately settling as Data Cloud in 2023. This journey marked significant developments, expanding from a marketer’s tool to catering for sales, service, and diverse use cases across the Salesforce platform. Data harmonization with Data Cloud simplifies the complex process, requiring fewer efforts compared to traditional methods. It comes pre-wired to Salesforce objects, reducing the need for extensive data modeling and integration steps. The technical capability map showcases a comprehensive integration of various technologies, making Data Cloud versatile and adaptable. Data Cloud’s differentiators include being pre-wired to Salesforce objects, industry-specific data models, prompt engineering capabilities, and the inclusion of the Einstein Trust Layer, addressing concerns related to generative AI adoption. Looking ahead, Data Cloud continues to evolve with constant innovation and features in Salesforce’s major releases. The introduction of Data Cloud for Industries, starting with Health Cloud, signifies ongoing enhancements to cater to industry-specific needs. Closing the skills gap is crucial for effective Data Cloud implementation, requiring a blend of developer skills, data management expertise, business analyst skills, and proficiency in prompt engineering. Salesforce envisions Data Cloud, combined with CRM and AI, as the next generation of customer relationship management, emphasizing the importance of sound data and skillful implementation. Data Cloud represents the ‘Holy Grail of CRM,’ offering a solution to the long-standing data challenges in CRM. However, its success as an investment depends on the organization’s readiness to demonstrate return on investment (ROI) through solid use cases, ensuring unified customer profiles and reaping the rewards of this transformative technology. FAQ When did Salesforce introduce data cloud? Customer 360 Audiences: Salesforce’s initial CDP offering, launched in 2020. Salesforce CDP: The name changed in 2021 to align with how the blooming CDP market was referring to this technology. Does Salesforce data cloud compete with Snowflake? They offer distinct capabilities and cater to diverse business needs. Salesforce Data Cloud specializes in data enrichment, personalization, and real-time updates, while Snowflake boasts scalable data warehousing and powerful analytics capabilities. What is the data cloud in Salesforce? Deeply integrated into the Einstein 1 Platform, Data Cloud makes all your data natively available across all Salesforce applications — Sales Cloud, Service Cloud, Marketing Cloud, Commerce Cloud, Tableau, and MuleSoft — to power automation and business processes and inform AI. Is Salesforce Genie now data cloud? Announced at Dreamforce ’22, Salesforce Genie was declared the greatest Salesforce innovation in the company’s history. Now known as Data Cloud, it ingests and stores real-time data streams at massive scale, and combines it with Salesforce data. This paves the way for highly personalized customer experiences Like1 Related Posts Salesforce Artificial Intelligence Is artificial intelligence integrated into Salesforce? Salesforce Einstein stands as an intelligent layer embedded within the Lightning Platform, bringing robust Read more CRM Cloud Salesforce What is a CRM Cloud Salesforce? Salesforce Service Cloud is a customer relationship management (CRM) platform for Salesforce clients to Read more Salesforce’s Quest for AI for the Masses The software engine, Optimus Prime (not to be confused with the Autobot leader), originated in a basement beneath a West Read more Salesforce Government Cloud: Ensuring Compliance and Security Salesforce Government Cloud public sector solutions offer dedicated instances known as Government Cloud Plus and Government Cloud Plus – Defense. Read more

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