THANK YOU FOR SUBSCRIBING
Editor's Pick (1 - 4 of 8)

From Code To Impact: Leading Enterprise Ai With Purpose
Jingting Cher, Deputy Director, Data Science, Sp Group


Jingting Cher, Deputy Director, Data Science, Sp Group
have seen how AI can uplift operation efficiency through optimizing information retrieval, drive business decisions through generating real-time insights, and increasing user engagement through natural language interaction. The next frontier for AI would be Agentic AI, which will further drive up operation efficiency through automating complex business processes.
Talent, Trust, and Teamwork in Data Science
The Data Scientist role is also shifting due to the Generative AI landscape. The scope of a Data Scientist now goes beyond statistical analysis and model training, as many pretrained Gen AI models, both open and closed source, are now capable enough to be utilized without further fine-tuning. Therefore, Data Scientists should focus on identifying business opportunities for AI and implementing AI at scale, and the additional qualities that would be essential are soft skills such as business engagement and communication, and hard skills such as AI engineering, evaluating AI tools and implementing AI governance.
Strategic Vision in a Noisy AI Landscape
It is important to ensure that our AI strategy is mapped to our business priorities and goals, and to be able to measure the value of AI through business outcomes. Focus on standards and frameworks that allow flexibility such as switching to new models and adding new tools. Lastly, ensure that AI Governance framework is in place to minimize risks when accelerating AI adoption.
Guiding Data Science with Vision and Value
It is an exciting time to be a Data Scientist in the era of Generative AI, but it is easy to get stuck in the hype and evolving landscape. The enterprise attention and expectations on AI has never been greater, and data science leaders need to step up, own the business engagement to align business value and lead the adoption of AI within the organization.
-
Data Science Leaders Must Own The Business Engagement, Aligning Ai With Real Value, Not Just Emerging Trends