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April 07.2025
3 Minutes Read

Kickstart Your AI Learning Path at SAS Innovate's Key Sessions

Engaged attendees at AI learning path conference applauding.

Kickstart Your Journey into SAS Innovate

Attending a conference like SAS Innovate can be daunting, especially for those venturing into AI technology for the first time. With a packed agenda, it can be difficult to find the right sessions that will equip newcomers with the essential knowledge and skills to thrive in the world of AI. Fear not, as we have curated five introductory sessions that are critical for any attendee looking to navigate the complexities of AI and data management.

Understanding the Importance of Data Quality and Governance

The first session highlights the intersection of data quality, data stewardship, and data governance. In today's data-driven landscape, organizations often suffer from challenges related to data quality, which can hinder AI initiatives and create compliance challenges. Understanding these areas will provide attendees with a solid foundation in trust-building around data. The session promises to demystify common pitfalls while outlining how good governance practices can lead to a more reliable data strategy. It's a must-attend for business leaders and data management professionals who rely on making informed decisions from their data.

Streamlining Your Transition from SAS® 9 to SAS Viya

The second session focuses on the critical migration process from SAS 9 to SAS Viya, a significant transition that, if mishandled, can result in more headaches than benefits. With insights from experts at Ernst Young, attendees will learn practical strategies to prepare for the migration, reduce risks, and optimize their existing SAS assets. This session is geared towards IT administrators, developers, and analysts who are preparing for this essential transition in their organizations. Being aware of potential data blind spots can help mitigate risks during this change.

Diving Deep into Text Analytics with Model Studio

The wealth of unstructured data available today—ranging from emails to social media posts—holds crucial insights. Therefore, the third session is dedicated to text analytics using Model Studio, showcasing how to leverage SAS Visual Text Analytics effectively. Participants will receive hands-on experience to extract insights from text data, helping them to better understand customer perspectives. This workshop is particularly beneficial for data analysts and scientists eager to enhance their text analytics skills.

Harnessing Intelligent Decisioning for AI Growth

The fourth session, "Getting started with SAS® Intelligent Decisioning," will equip attendees with the knowledge to utilize AI in decision-making processes. This session is vital for professionals who recognize the impact of automated decision-making in enhancing customer interactions. By understanding the capabilities of SAS Intelligent Decisioning, attendees can position their organizations to not only adapt to AI integration but also excel in their customer relations.

AI Learning Path: Your Guide to Future Technologies

As the conference unfolds, it becomes clear that embracing AI technologies relies on perpetual learning. Engaging in these introductory sessions creates a robust AI learning path, bridging the gap between novices and seasoned professionals in the industry. Continuous education enables understanding of AI science and its practical applications, opening doors to innovative practices in businesses.

In summary, SAS Innovate presents an incredible opportunity for professionals to gain invaluable insights into AI and data management. These sessions not only facilitate knowledge acquisition but also foster connections among industry peers, making the experience wholly enriching. So, whether you're a business leader, an IT professional, or just someone curious about AI, these sessions are tailored to elevate your understanding and application of technology. Don’t miss your chance to engage, learn, and innovate.

Join the Conversation

For those enthusiastic about advancing their understanding of AI and looking for practical insights, participating in SAS Innovate is a critical step. Take the opportunity to immerse yourself in the forthcoming sessions, and watch as your skills in AI, technology, and innovation evolve. The future is ripe with potential—make sure you are equipped to seize it!

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