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May 31.2025
2 Minutes Read

Why Enhanced Support Is Crucial for Business Success in AI Technology

Chart of SAS support service levels with safety gear, highlighting Enhanced AI Support Services.

The Shift To Proactive Support in AI Technology

As businesses increasingly rely on artificial intelligence and data-driven solutions, the implications of system downtimes have grown exponentially. No longer is it sufficient to rely solely on reactive support services that only engage once a problem arises. Organizations, especially those implementing sophisticated systems like SAS Viya, can face significant operational challenges during critical transitions. The risk of data loss and productivity disruptions highlights the pressing need for a support model that anticipates issues before they escalate.

Why Enhanced Support Matters in AI Learning Orchestrations

Enhanced support bridges the gap between technological knowledge and operational execution. Companies like Aria, which face complex system environments, are prime examples of how tailored support levels can transform user experiences and outcomes. These organizations require not just a support center but a reliable expert who understands their specific needs and intricacies. The Technical Support Account Manager (TSAM) is more than just a problem-solver—they act as a strategic partner. This relationship empowers organizations by providing tailored solutions that enable the businesses to adopt new technologies confidently.

The Importance of Continuous Learning and Adaptation

In a world where AI technology is rapidly evolving, continuous learning is paramount. This is where enhanced support becomes invaluable. SAS's model offers in-depth engagement, including regular strategic discussions and customized workshops to bolster user competence. This investment in knowledge builds internal capabilities and fosters a culture of proactive problem-solving. Moreover, having real-time insights through personalized dashboards ensures that organizations remain aware of the status of their systems, paving the way for informed decision-making.

Building Resilience in Business Through Enhanced Support

Embracing a proactive support model translates into operational resilience. SAS's enhanced support services prioritize downtime reduction and efficient maintenance planning, allowing organizations to focus on their core functions. The shift to this model reflects a broader trend in AI learning paths, where organizations are recognizing the importance of continuous and adaptive support as they navigate the landscape of emerging technologies.

Future Predictions: Support Models in the Age of AI

The future of technical support is poised for transformation as artificial intelligence and machine learning advance. Predictive analytics, powered by AI, will become integral in identifying potential issues before they affect operations. Enhanced support services will evolve to leverage these technologies, creating a new paradigm in proactive management strategies. This not only ensures system stability but allows organizations to capitalize on opportunities for innovation and growth.

Conclusion

As we move forward into a tech-driven future, understanding the value of enhanced support services will be crucial for organizations aiming to harness the full potential of AI. A proactive approach is not just a luxury but a necessity for operational success. To ensure your organization thrives in an increasingly complex technological landscape, consider how enhanced support can transform your engagement with AI tools.

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11.15.2025

Unlock Faster AI Success with SAS and Intel's Collaboration

Update Building Trust in AI Solutions with SAS and Intel As the demand for artificial intelligence (AI) solutions grows, the stakes for teams developing these technologies have never been higher. Organizations face the pressing need for faster decision-making and reliable results while maintaining manageable compute costs. The collaboration between SAS and Intel stands as a prominent example of how technology partnerships can drive innovation and efficiency in the AI landscape. Fast-Tracking Model Development Through Collaboration At the core of efficient AI development is speed. With SAS® Viya® optimized for Intel’s latest Xeon 5 processors, teams can significantly reduce their model development cycles. This optimization allows for quicker iterations and accelerated decisions, enabling businesses to respond to market changes more proficiently. A practical example is the ability for data scientists to validate models faster, ensuring that insights derived from AI can be acted upon without delay. A Flexible Development Environment for Diverse Teams The landscape of AI development is diverse, comprising both seasoned developers and those who prefer low-code environments. The SAS Viya Workbench caters to this need by providing a cloud-based platform that supports languages like SAS, Python, or R. By integrating familiar tools such as Visual Studio Code and Jupyter notebooks, SAS and Intel enable smoother transitions from experimentation to production. This flexibility not only promotes inclusivity but also enhances teamwork, allowing Specialists to collaboratively explore AI developments in ways they find most effective. Responsible AI with Scalable Decision Intelligence One of the fundamental challenges in the AI domain is ensuring responsible use at scale. SAS Decision Builder emerges as a vital tool that transforms analytics insights into real-time decisions seamlessly. Operating on Intel-optimized infrastructure, this combination provides the backbone for scalable AI operations, which is particularly crucial for industries relying on timely, data-driven choices. The end result is a heightened confidence in decision-making processes, which is paramount in today’s data-centric economy. Innovation Without Compromise: The Role of Synthetic Data As organizations increasingly recognize the importance of responsible AI practices, the use of synthetic data becomes more relevant. SAS Data Maker leverages Intel® Advanced Matrix Extensions, allowing users to efficiently process deep learning tasks that involve sensitive or limited datasets. This capability not only accelerates innovation in machine learning but also preserves user privacy, addressing ethical concerns in technology deployment. Synthetic data can thus empower teams to innovate without the constraints of real-world data limitations, demonstrating that such challenges can be effectively overcome with the right tools. The Road Ahead: Emphasizing Trust and Performance The partnership between SAS and Intel highlights a clear vision: building AI solutions that not only perform but also engender trust among users. In an era where AI technologies are rapidly embedding themselves into various sectors, fostering confidence in AI deployments is critical. As more businesses turn to these collaborative solutions, the impact on performance, scalability, and innovation will continue to unfold. In conclusion, as we venture deeper into the emerging field of AI, understanding its technology-driven foundations becomes essential. Companies investing in AI should look beyond mere performance metrics and instead focus on establishing trust, ensuring that the solutions developed will yield transformative results.

11.15.2025

Transforming Workplace Safety: The Game-Changing Role of AI and Digital Twin Technology

Update How Digital Twins are Revolutionizing PPE Compliance In the realm of industrial safety, ensuring that workers wear Personal Protective Equipment (PPE) has always been critical. With advancements in technology, particularly digital twins and artificial intelligence (AI), there is now an unprecedented opportunity to revolutionize how this compliance is monitored and enforced. Understanding the Role of Digital Twins Digital twin technology creates a virtual replica of physical environments, which allows practitioners to simulate various scenarios without the risks associated with real-world trials. This proactive approach addresses traditional challenges, such as the time-consuming and error-prone process of collecting real-world images for AI training on PPE detection. By utilizing synthetic data generated in a controlled environment, companies can train their AI systems with diverse and accurately labeled datasets, improving model performance and safety outcomes. The Power of AI in PPE Monitoring AI-powered systems, such as those developed by Visionify, are transforming workplace safety by moving from a compliance-first mentality to fostering a culture of proactive safety. These systems continuously monitor compliance with remarkable accuracy, providing real-time alerts for violations and freeing human safety personnel from mundane tasks. According to industry data, organizations that have implemented AI-driven solutions have reported reductions in manual monitoring efforts by up to 90%, enhancing overall safety culture and effectiveness. Why Traditional Methods Fall Short Despite the clear need for consistent PPE compliance, traditional monitoring methods are fraught with limitations. Human error, oversight fatigue, and inconsistent application of rules can all lead to dangerous lapses in safety. In high-risk environments, even a minor non-compliance could lead to significant injuries. With AI technologies, companies now have the capability to automate monitoring and enforce compliance in a way that conventional methods cannot achieve. Case Studies Highlighting the Impact Organizations utilizing AI-driven systems have seen measurable benefits. For instance, one manufacturing facility reported an 87% reduction in safety violations within six months of implementing an AI-powered monitoring system. Not only did this lead to fewer injuries and better compliance rates, but it also allowed safety managers to allocate their time more effectively, focusing on strategic safety initiatives rather than tedious manual audits. The Future of Workplace Safety Culture As technology continues to advance, the future of safety in industrial environments looks promising. Emerging trends suggest a shift towards not just preventing incidents but embedding safety in the very fabric of workplace culture. Companies are looking beyond compliance checklists to forge a proactive approach, where compliance becomes a shared responsibility among all employees. Actions enabled by real-time data insights will inspire more rigorous training programs, facilitating a deeper understanding of safety among workers. Final Thoughts: Embracing Change for Safer Workplaces With the integration of AI and digital twins, the potential for creating safer workplaces is greater than ever. More than just compliance technology, these advancements represent a shift in mindset that emphasizes a culture of safety as an intrinsic value of business operations. As industries continue to explore these innovations, it is essential they prioritize worker safety, ensuring every individual returns home safely each day. If you want to stay ahead in understanding how AI learning and digital twin technology are reshaping workplace safety, consider exploring these advancements further. Learn more about how your organization can leverage these technologies to create a more secure work environment.

11.14.2025

Transforming from Target to Trusted: How AI is Fighting Fraud

Update Understanding AI's Impact on Fraud Prevention The rise of artificial intelligence (AI) has revolutionized the fight against fraud, providing organizations with tools that not only react to threats but also adapt and anticipate them in real time. As the landscape of fraud evolves with increasingly sophisticated schemes, businesses are transforming from merely targeted victims into trusted entities by leveraging robust AI-driven solutions. The Growing Threat of AI in Fraudulence Identity theft is a prevalent issue that affects countless individuals and institutions. As anyone can relate, the fear of personal data becoming compromised is all too real. According to statistics, identity fraud has increased enormously, with AI technologies now enabling fraudsters to create synthetic identities and automate scams. For example, a startling 3,000% rise in deepfake identity fraud cases has been noted recently. Consequently, the complexity of fraud detection systems must evolve to cope with these emerging threats. How AI Enhances Fraud Detection AI-powered solutions like SAS Fraud Decisioning integrate advanced analytics and machine learning to enhance fraud detection capabilities. This allows banks and financial institutions to respond quickly to threats by consolidating data that reveals suspicious patterns. These systems continuously learn from past fraud attempts, adapting quickly to stay one step ahead of criminals. Real-Time Protection and Predictive Analytics The power of real-time AI solutions lies in their speed. Unlike traditional methods that require time-consuming manual reviews, AI elements can process vast datasets almost instantaneously. For instance, by analyzing transaction behaviors and correlating them with historical data, businesses can detect anomalies before they escalate into significant issues. This proactive approach not only prevents losses but also preserves customer trust—an invaluable currency in today’s competitive marketplace. Benefits of Embracing AI in Fraud Strategies Adopting AI technology for fraud detection delivers numerous advantages. Businesses report reduced operational costs and improved accuracy in identifying genuine fraud cases versus false positives. Enhanced detection capabilities lead to better customer experiences, as legitimate transactions flow uninterrupted while fraudulent activities are swiftly addressed. As organizations build their AI strategy, focusing on continuous monitoring, ethical data usage, and adaptive authentication is crucial. This comprehensive approach can ensure that even more advanced threats, such as AI-driven deepfakes and automated bots, are effectively mitigated. Moving Towards a Secure Future Emerging threats aren't just technological issues; they’re challenges requiring human expertise and strategic foresight. By implementing AI-driven fraud detection strategies, businesses can not only withstand current challenges but also forge ahead into an era of trust and security. As technology continues to advance, the collaboration of human intelligence and AI will define the landscape of fraud prevention. Understanding the nuances of AI learning paths must become a priority for all stakeholders involved in fraud prevention. Continuous education about AI science can empower teams to model robust defenses that evolve with threats, reinforcing their commitment to protecting customer identities and maintaining institutional integrity. As organizations invest in AI fraud detection technologies, they pave the way for an era where fraudsters find it increasingly difficult to penetrate defenses. Staying informed and equipped with the right tools will be paramount in safeguarding not just personal data, but also the reputations of organizations dedicated to the security of their customers. Call to Action If you want to learn how AI technologies can enhance your organization’s fraud detection strategy, consider exploring AI learning paths and resources available that provide insight into the cutting-edge tools and techniques shaping this domain.

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