Session
From Data to Decisions: AI for the Backoffice
This session focuses on practical finance applications: turning messy data into AI-ready formats, building analysis tools for problems previously 'too expensive to explore,' and automating the manual work that finance teams have normalized.
Outcome: Identification of high-ROI AI opportunities in back-office operations
Takeaway: Two or three specific back-office AI applications to evaluate for your organization
Key Discussion Points:
• Why back-office AI delivers better ROI than front-office investments
• The hidden cost of manual work finance teams have normalized
• Data readiness: turning messy data into AI-ready formats
• Use case: automating data extraction and categorization
• Use case: exception-based processing and anomaly detection
• Use case: analysis tools for previously unexplored problems
• Building vs. buying: when to use off-the-shelf vs. custom solutions
• Change management: helping teams adopt AI-assisted workflows
• Measuring success: KPIs for back-office AI initiatives
• Case study: real-world back-office transformation results
Gagan Preet Singh
Principal AI Architect at HP | AI Agents & Enterprise Financial Systems
Houston, Texas, United States
Links
Please note that Sessionize is not responsible for the accuracy or validity of the data provided by speakers. If you suspect this profile to be fake or spam, please let us know.
Jump to top