AI Applied Radar: AI Applied To Supply Chain Resilience

Access this research

Access all Digital Transformation Leaders content with a strategic subscription or buy this single report

Need help or have a question about this report? Contact us for assistance

Executive Summary

This report provides a comprehensive assessment of AI-augmented use cases for supply chain resilience, enabling relevant leaders to assess each use case’s trustworthiness, business value and operational viability. The Verdantix AI Applied Radar evaluates an array of AI-driven solutions, utilizing proprietary information obtained from expert interviews, global surveys and technical review. Verdantix segmented use cases based on levels of market adoption and tech availability, spanning mainstream and commercialized applications such as machine learning (ML)-driven demand sensing, to emerging areas such as agentic multi-step workflow automation and task execution. The Radar provides actionable insights for supply chain leaders and vendors seeking scalable, high-impact AI adoption.

Introducing the AI Applied Radar analysis
Key questions answered by the AI Applied Radar analysis
AI Applied Radar analysis aligns with supply chain technology buyers’ demands for practical and scalable AI solutions
AI Applied Radar for supply chain resilience
Defining the market for emerging, pilot-phase and mainstream AI technologies for supply chain resilience
Methodology overview
Identifying the three critical pillars of compelling AI use cases
Assessing the market adoption phase of AI use cases
Determining the tech availability for AI use cases
AI Applied Radar: supply chain resilience

Figure 1. AI Applied Radar for supply chain resilience
Figure 2.
AI Applied Radar use case groupings
Figure 3.
Description of mainstream AI-augmented use cases
Figure 4.
Additional details on mainstream AI-augmented use cases
Figure 5.
Description of AI-augmented use cases worthy of piloting
Figure 6.
Additional details on AI-augmented use cases worthy of piloting
Figure 7.
Description of AI-augmented use cases that are continuing to emerge
Figure 8.
Additional details on AI-augmented use cases that are continuing to emerge

About the Authors

Aleksander Milligan

Aleksander Milligan

Analyst

Aleks is an Analyst at Verdantix, specializing in enterprise AI adoption. He advises technology vendors and corporate buyers on GenAI integration and LLM market trends, the AI...

View Profile
Chris Sayers

Chris Sayers

Senior Manager

Chris is a Senior Manager at Verdantix. His current research agenda targets enterprise AI integration and adoption, AI market trends and agentic AI. Chris joined Verdantix in ...

View Profile

Other related content

Webinar
Digital Transformation Leaders
Digital Grid Technologies
Corporate Energy Transition Solutions
Corporate Energy Leaders
Built Environment Energy & Decarbonization
Carbon Management Software
Corporate Sustainability & Climate Change Services
Corporate Sustainability Leaders
Future Of Digital Decarbonization: Why ...

Digital decarbonization is evolving rapidly, and many of the tools used for carbon reporting today are not designed to support the operational decisions organizations need to make ...

Upcoming / 28 May, 2026

Blog
Digital Transformation Leaders
Buyers Need To Ask Harder Questions Abo...

If implemented correctly, AI agent platforms hold the promise of unlocking newfound process automation, efficiency gains, cost savings and differentiation. However, buyers are navi...

17 April, 2026

Webinar
Industrial Transformation Leaders
Asset Maintenance Software
Field Services Management
Industrial Analytics & Data Management
Corporate Sustainability Leaders
Sustainable Supply Chains
Corporate Risk Leaders
Enterprise Risk & GRC
Corporate Energy Leaders
Digital Transformation Leaders
Industrial Agility In Action: Digital S...

Industrial firms are being hit by operational shocks with growing frequency and complexity. Supply chain disruptions, energy price volatility, labour shortages and rapid shifts in ...

16 April, 2026

Blog
Digital Transformation Leaders
Active Vs. Passive Human-In-The-Loop: K...

Passive human-in-the-loop models are currently the primary enterprise SaaS control mechanism for avoiding AI hallucination risk. In this process, humans are not actively intervenin...

16 April, 2026

Blog
EHSQ Corporate Leaders
Corporate Risk Leaders
Real Estate Leaders
Industrial Transformation Leaders
Digital Transformation Leaders
Corporate Energy Leaders
Corporate Sustainability Leaders
Industrial Firms Are Entering The Age O...

Industrial firms are becoming accustomed to operating in environments that change faster than their traditional planning processes were designed to handle. Supply chains shift unex...

15 April, 2026

Webinar
Quality Management Software
Process Safety Management Software
Manufacturing Operations Management
Industrial Transformation Leaders
Industrial Design Engineering Software
Industrial Analytics & Data Management
Field Services Management
Digital Transformation Leaders
Asset Performance Management Software
Asset Maintenance Software
AI Platforms & Applications
Building Digital Platforms & Operational Tech
Benchmarking Industrial Investments: Tr...

Industrial leaders face increasing pressure to allocate limited budgets effectively while delivering tangible results across operations, maintenance, and production. This webinar w...

09 April, 2026