Skip to main content

Reimagining ERP for the agentic AI era

Technology
Global
Started January 21, 2026

The story of enterprise resource planning (ERP) is really a story of businesses learning to organize themselves around the latest, greatest technology of the times. In the 1960s through the ’80s, mainframes, material requirements planning (MRP), and manufacturing resource planning (MRP II) brought core business data from file cabinets to centralized systems. Client-server architectures defined…

Source Articles

🗳️ Join the conversation
5 statements to vote on • Your perspective shapes the analysis
📊 Progress to Consensus Analysis Need: 7+ statements, 50+ votes
Statements 5/7
Total Votes 1/50
💡 Keep voting and adding statements to unlock consensus insights

Your votes count

No account needed — your votes are saved and included in the consensus analysis. Create an account to track your voting history and add statements.

CLAIM Posted by will Jan 21, 2026
Over-reliance on AI in ERP could undermine human judgment, leading to decisions that lack context or understanding of nuanced business dynamics.
0 total votes
CLAIM Posted by will Jan 21, 2026
Embracing agentic AI in ERP can lead to transformative innovation, enabling companies to harness real-time data for strategic advantages.
0 total votes
CLAIM Posted by will Jan 21, 2026
The integration of AI into ERP systems risks exacerbating inequalities, as smaller businesses may lack the resources to compete effectively.
0 total votes
CLAIM Posted by will Jan 21, 2026
Reimagining ERP with AI can vastly improve decision-making efficiency, allowing businesses to adapt faster to market changes.
0 total votes
CLAIM Posted by will Jan 21, 2026
While AI-driven ERP offers potential benefits, organizations must prioritize data privacy and security to avoid significant risks.
1 total votes · 0% agreement

💡 How This Works

  • Add Statements: Post claims or questions (10-500 characters)
  • Vote: Agree, Disagree, or Unsure on each statement
  • Respond: Add detailed pro/con responses with evidence
  • Consensus: After enough participation, analysis reveals opinion groups and areas of agreement