Systems Integrators Bet on AI Agents for Business Transformation
Systems integrators and services firms are investing in AI agents, frameworks, and multi-agent systems to drive enterprise transformation, but long-term success remains uncertain.
Systems integrators and services companies are increasingly focusing on AI agents, releasing frameworks, and assisting enterprises in building multi-agent systems. The critical question is whether AI agents will prove to be a long-term advantage or a setback for these firms.
Key Developments in AI Agent Adoption
Kyndryl's Agentic AI Framework
- Kyndryl, traditionally infrastructure-focused, has launched the Kyndryl Agentic AI Framework.
- The framework orchestrates AI agents to adapt to dynamic conditions, enabling Kyndryl to move beyond infrastructure into workflow and process optimization.
- Leverages algorithms, self-learning, and AI agents to manage applications and processes.
Wipro's AI Integration
- Wipro highlighted on its Q1 earnings call that enterprises are reallocating budgets toward AI and data modernization.
- CEO Srinivas Pallia stated, "AI is no longer a niche. It's becoming essential to how businesses operate at scale."
- Wipro has deployed over 200 AI-powered agents for applications like smart lending, claims processing, and autonomous network management.
Deloitte and Accenture's AI Agent Push
- Deloitte plans to offer nearly 180 AI agents on AWS Marketplace, targeting specific business problems and processes.
- Example: AI Advantage for CFOs, a digital twin solution built on Deloitte's institutional knowledge base.
- Zora AI, an AI agent integrated with SAP Joule, focuses on process execution.
- Accenture reports 30-40% productivity gains for clients automating processes with AI agents.
- Challenges include integration complexity, data infrastructure, and change management.
The Big Question: Boon or Bust?
While systems integrators view AI agents as a growth opportunity, there are concerns about their long-term impact on the traditional integrator model.
Holger Mueller, Constellation Research analyst, notes:
"Enterprises may prioritize in-house AI capabilities, especially as inter-enterprise agents become critical to success. The lack of deep experience in GenAI across the industry adds uncertainty."
Key Takeaways
- AI agents are becoming central to business transformation.
- Systems integrators are expanding offerings but face scaling and integration hurdles.
- The shift to outcome-based models (e.g., Deloitte) reflects evolving service delivery approaches.
- Enterprises must weigh building in-house AI expertise versus relying on integrators.
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About the Author

Dr. Emily Wang
AI Product Strategy Expert
Former Google AI Product Manager with 10 years of experience in AI product development and strategy formulation. Led multiple successful AI products from 0 to 1 development process, now provides product strategy consulting for AI startups while writing AI product analysis articles for various tech media outlets.