Roles in AI - gettectonic.com
Learning AI

AI Success is a Team Sport

The contemporary workplace is currently experiencing a profound transformation. The Future of Jobs Report from the World Economic Forum predicts that AI will replace approximately 85 million jobs by 2025, while concurrently generating around 97 million AI-related jobs. AI Success is a Team Sport and will require hiring and training people. This significant shift necessitates a reevaluation of work dynamics, introducing new roles that involve collaboration between “humans, machines, and algorithms.” Amidst this transformative period, AI provides opportunities for organizations to reimagine existing roles, offer upskilling opportunities, and design innovative positions to meet evolving needs. For leaders in the data domain, the crucial task is to assess which jobs could benefit from AI. This requires a thorough understanding of organizational tasks, skills, and strategic goals, complemented by a scalable change management process to accommodate the growth of AI initiatives. To pinpoint relevant jobs, the following steps can be taken: Despite 67% of global business leaders considering the use of generative AI, an equal number of IT leaders acknowledge a skills gap among their employees. “I think most business leaders have a good sense of what the key jobs are inside their organizations. Of those key jobs, what are the good candidates for AI? I think it’s important for any executive—data or not—to understand what they are and plan accordingly.” SOLOMON KAHN DATA LEADERSHIP COLLABORATIVE  The implementation of AI necessitates a specialized team, encompassing roles from project managers to domain experts. The composition of the team depends on the project’s complexity, scope, budget, and overall strategic objectives. But to be sure, AI Success is a Team Sport. Key roles for AI initiatives include: AI acts as a disruptor to traditional business practices, and this disruption is viewed positively. The bonuses far outweigh the challenges. The new generation of user-friendly AI technologies, such as generative AI, has moved beyond the hype cycle, offering applications that generate personalized offers and automated chatbots capable of solving complex customer support issues. In this era powered by AI, data leaders play a pivotal role in driving transformative change. 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 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 How Travel Companies Are Using Big Data and Analytics In today’s hyper-competitive business world, travel and hospitality consumers have more choices than ever before. With hundreds of hotel chains Read more

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Developing Your AI Workforce in the Public Sector

Even the most advanced and technically robust AI solutions can only achieve their full potential with a dedicated team proficient in their utilization. Developing Your AI Workforce in the Public Sector has some primary challenges. Key considerations include: This insight delves into the composition of an Integrated Product Team, strategies for assembling and overseeing AI talent, and the creation of learning programs designed to foster transformative AI capabilities. Start with People: Identifying AI Talent Survey your organization to identify existing analytics talent or teams with an analytics orientation. Although analytics and AI differ, overlapping baseline skills can be developed. Assess existing talent by identifying individuals who exhibit qualities such as supporting decisions with data, comfort with statistics and math, proficiency in creating macros in Excel, an interest in computer programming, and an understanding of technology’s role in enhancing processes. Leverage the existing pool of intelligent individuals within your organization. Some may already possess AI and ML skills, while others may have skills that can be augmented to become AI-related.  Are they in IT, in one of the business functions, or part of the Office of the Chief Experience Officer (CXO)? Augment Talent When Needed: Consider public-private partnerships to access innovation emerging from private industry, particularly when faced with challenges in attracting, training, and retaining data science talent. Bringing in outside talent or vendors may be suitable when dealing with limited use cases requiring niche skills or for quickly testing the potential benefits of an AI solution. Developing and Retaining AI Talent: Mission and Practitioner Support Ensure that AI work aligns closely with the agency’s mission, providing a unique value proposition for AI practitioners. Meaningful work and practitioner support are crucial for retaining AI talent. Retention incentives and skill development can be optimized by providing federal employees with awareness and access to AI-related training opportunities. Formal education, training programs, conferences, and exchanges with industry and academia contribute to the continuous development of AI practitioners. An important part of assessing an organization’s existing talent is acknowledging that some people may already be leveraging defined AI and ML skills. Others, however, may work in technical roles or have skills that are not directly AI related, but could easily be supplemented to become AI skills. Understanding AI Job Roles and Career Paths Identify where AI practitioners should sit within mission areas and program offices. Roles include data analysts, data engineers, data scientists, technical program managers, AI champions, project sponsors, mission or program office practitioners, project managers, and business analysts. The success of AI projects depends on the Integrated Project Team’s makeup and understanding the challenge at hand. Certainly, many agencies want to increase the AI know-how of their internal staff. However, much of the innovation emerging in the AI field comes from private industry. Public-private partnerships are often an excellent way to get more support for AI projects. Career Path: AI-focused practitioners may start as junior data engineers or data scientists, with career paths evolving based on experience and education. Senior technical positions such as senior data architects or principal data scientists may exist, indicating extensive technical experience. Management career paths can transition from data engineer or data scientist to technical program manager. Recruiting AI Talent: Competing with Private Industry While the government may not compete with private industry on salary and bonuses, it can offer interesting and meaningful work tied to company missions. Centralized recruitment and certification through the central AI resource can ensure that incoming AI talent is well-qualified and suitable for the agency’s practitioner environment. This is even more important in public sector and nonprofit organizations. Placing AI Talent: The central AI resource, with access to technical infrastructure, data, security, legal, and human capital support, can provide well-qualified candidates. Mission and business centers should coordinate closely with the AI resource to ensure that vetted candidates align with staffing needs and contribute to mission and program goals. Developing Your AI Workforce in the Public Sector Mission and practitioner support The most powerful tools for retaining government AI talent are ensuring that AI work is closely tied to the agency mission and ensuring that AI talent has the technical and institutional support to work effectively as AI practitioners. This combination forms the unique value proposition for an AI career that only federal agencies can provide, and is usually the reason AI practitioners chose government over industry and academia. Developing Your AI Workforce in the Public Sector means meeting the correct balance of opportunity, reward, and challenge. If AI practitioners love the company mission but are unable to function as AI practitioners, they are also unlikely to stay if the agency is unable to leverage their skill set. Both meaningful work and practitioner support are crucial for retaining AI talent. Developing Your AI Workforce should be started early and focused on continually. Retention incentives and skill development One way to make the best use of these usually limited incentives is to ensure federal employees have full awareness and access to AI related training and skill development opportunities. AI and data science are fields that often require a significant technical and academic background for success. However, it’s also important for people to be open-minded about who might have (most of) the relevant skills and capabilities. Developing Your AI Workforce in the Public Sector is no more or less challenging than in nonprofit or for profit industries. They should not assume that only people with computer science or statistics education are going to be appropriate for AI-centric positions. A culture that prizes and generously supports learning not only ensures the continued effectiveness of the AI workforce, but also serves as a powerful recruitment and retention tool.  The success of an AI project hinges on the composition of the Integrated Project Team (IPT). While technical expertise is undeniably crucial, the project’s failure is inevitable without a thorough understanding of the challenges to be addressed and obtaining support from the mission and program team. And we can’t emphasize enough the seriousness of the human element. This distinction

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AI Capability Maturity Model

AI Capability Maturity Model

The AI Capability Maturity Model (AI CMM), devised by the Artificial Intelligence Center of Excellence within the GSA IT Modernization Centers of Excellence (CoE), functions as a standardized framework for federal agencies to evaluate their organizational and operational maturity levels. It is equally useful for private organizations in aligning them with predefined objectives. Instead of imposing normative capability assessments, the AI CMM concentrates on illuminating significant milestones indicative of maturity levels along the AI journey. The AI Capability Maturity Model focuses primarily on the development of AI capabilities within an organization. It evaluates an organization’s maturity across four main areas: data, algorithms, technology, and people. Serving as a valuable tool, the AI CMM assists organizations in shaping their unique AI roadmap and investment strategy. The outcomes derived from AI CMM analysis empower decision-makers to identify investment areas that address immediate goals for rapid AI adoption while aligning with broader enterprise objectives in the long run. Maturity vs capability models A maturity model tends to measure activities, such as whether a certain tool or process has been implemented. In contrast, capability models are outcome-based, which means you need to use measurements of key outcomes to confirm that changes result in improvements. AI development rooted in sound software practices underpins much of the content discussed in this and other chapters. Though not explicitly delving into agile development methodology, Dev(Sec)Ops, or cloud and infrastructure strategies, these elements are fundamental to the successful development of AI solutions. The AI CMM elaborates on how a robust IT infrastructure leads to the most successful development of an organization’s AI practice. What are the maturity levels of AI? What are the maturity levels of Artificial Intelligence? Or it can be measured this way. AI Maturity Model Why is AI maturity important? The AI Maturity Assessment is a process designed to help organizations evaluate their current AI capabilities, identify gaps and areas for improvement, and develop a roadmap to build a more effective AI program. Organizational Maturity Areas Organizational maturity areas represent the capacity to embed AI capabilities across the organization. Two approaches, top-down and user-centric, offer distinct perspectives on organizational maturity. Top-Down, Organizational View Bottom-Up, User-centric View Operational Maturity Areas Operational maturity areas represent organizational functions impacting the implementation of AI capabilities. Each area is treated as a discrete capability for maturity evaluation, yet they generally depend on one another. PeopleOps CloudOps DevOps SecOps DataOps MLOps AIOps AI Capability Maturity Model This comprehensive overview of organizational and operational maturity areas underlines the multifaceted nature of AI implementation and the critical role played by diverse elements in ensuring success across different layers of an organization. How AI is transforming the world? AI-powered technologies such as natural language processing, image and audio recognition, and computer vision have revolutionized the way we interact with and consume media. With AI, we are able to process and analyze vast amounts of data quickly, making it easier to find and access the information we need. 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 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 How Travel Companies Are Using Big Data and Analytics In today’s hyper-competitive business world, travel and hospitality consumers have more choices than ever before. With hundreds of hotel chains Read more Sales Cloud Einstein Forecasting Salesforce, the global leader in CRM, recently unveiled the next generation of Sales Cloud Einstein, Sales Cloud Einstein Forecasting, incorporating Read more

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Roles in AI

12 Roles in AI You Didn’t Know You Needed To Know

Exploring new roles in generative AI – 12 new roles to dive into For those intrigued by the possibilities of AI, here are twelve emerging roles to keep an eye on—some already in existence (albeit in early stages), and others envisioned by experts like Berthy for the near future. Could one of these roles be in your career trajectory? 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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