A leading financial services organization in APAC needed to modernize its analytics capabilities and reduce the heavy dependency on manual data modeling. Their data scientists struggled with siloed datasets, slow experimentation cycles, and inconsistent model deployment processes.
By implementing IBM Watson Studio with Nexright, the organization established a unified environment for data exploration, model development, training, and deployment — boosting team productivity, improving model accuracy, and enabling faster decision-making.
The organization faced mounting pressure to operationalize data science and extract meaningful insights from large, complex datasets. Multiple teams were working in isolation, using different tools and inconsistent processes, resulting in long development cycles and low model reliability.
Key Challenges:
The organization needed a centralized, scalable, and automated data science platform capable of supporting advanced analytics, simplifying governance, and speeding up model delivery.
Partnering with Nexright, the organization deployed IBM Watson Studio to unify its data science operations end-to-end. Watson Studio enabled seamless collaboration, governed model development, accelerated experimentation, and automated deployment through integrated MLOps capabilities.
Solution Highlights:
Watson Studio enabled our teams to collaborate seamlessly and deliver high-quality models faster than ever. With Nexright’s expertise, we moved from fragmented analytics to a fully governed, scalable AI environment. It has transformed how we use data to drive business decisions.
— Head of Data Science, Leading APAC Financial Services Organization
"*" indicates required fields
"*" indicates required fields
"*" indicates required fields
"*" indicates required fields
"*" indicates required fields
"*" indicates required fields
"*" indicates required fields
"*" indicates required fields
"*" indicates required fields