Explore

  • Trending
  • Latest
  • Tools
  • Browse
  • Subscription Feed

Logistics

  • Ocean
  • Air Cargo
  • Road & Rail
  • Warehousing
  • Last Mile

Regions

  • Southeast Asia
  • South Asia
  • Central Asia
  • Japan & Korea
  • Middle East
  • Europe
  • Russia
  • Africa
  • North America
  • Latin America
  • Australia
SCI.AI
  • Supply Chain
    • Strategy & Planning
    • Logistics & Transport
    • Manufacturing
    • Inventory & Fulfillment
  • Procurement
    • Strategic Sourcing
    • Supplier Management
    • Supply Chain Finance
  • Technology
    • AI & Automation
    • Robotics
    • Digital Platforms
  • Risk & Resilience
  • Sustainability
  • Research
  • Expert Columns
  • English
    • Chinese
    • English
No Result
View All Result
  • Login
  • Register
SCI.AI
No Result
View All Result
Home Procurement

56% of CSCOs Struggle to Integrate AI with Legacy Systems

2026/05/02
in Procurement, Supplier Management
0 0
56% of CSCOs Struggle to Integrate AI with Legacy Systems

According to www.dcvelocity.com, more than half (56%) of chief supply chain officers (CSCOs) report significant difficulty integrating artificial intelligence (AI) with legacy systems and processes — a key barrier to scaling AI across supply chains.

Legacy Infrastructure Hinders AI Adoption

Gartner’s survey of 140 senior supply chain leaders from organizations with annual revenues of $250 million or more, conducted from October to November 2025, identified legacy environments—not AI technology itself—as the greatest friction point in AI scaling. The research defines an AI-native supply chain as one designed from the ground up to leverage AI, rather than layering AI functionality atop traditional workflows.

“Bolting AI onto an analog-era foundation only locks in existing inefficiencies and yields local optimizations.” — Snigdha Dewal, Director Analyst in Gartner’s Supply Chain practice

Dewal emphasized that pressure to deliver quick results often leads leaders to adopt AI for incremental improvements instead of systemic redesign. According to the report, leading CSCOs are reimagining not only technology but also operating models, team roles, and supporting infrastructure to build AI-native supply chains.

Real-World Deployment Challenges

The source states that supply chains remain among the hardest environments for AI deployment due to inconsistent, inaccessible, and siloed data spread across disconnected enterprise systems — including ERP, TMS, WMS, and order-management platforms. This fragmentation means many businesses lack a single source of truth across operations, undermining AI’s predictive and prescriptive capabilities.

This challenge is compounded by external volatility: tariffs, supplier diversification needs, and rising energy costs are intensifying pressure on organizations already constrained by trapped data and limited operational and financial visibility.

Emerging Vendor Responses

In response, AI-focused supply chain vendors are expanding platform capabilities. Loop, a San Francisco-based AI provider, recently raised $95 million in Series C funding — led by Valor Equity Partners and the Valor Atreides AI Fund, with participation from 8VC, Founders Fund, Index Ventures, J.P. Morgan Growth Equity Partners, and Tao Capital Partners. According to the source, Loop aims to broaden its platform across supplier, trade and compliance, warehouse, procurement, and inbound logistics data, while strengthening integrations across core systems.

“We see every day how much pressure companies are under to manage supply chains through constant disruption, and how often critical decisions are still being made on top of fragmented data and brittle systems.” — Matt McKinney, CEO and Co-founder, Loop

Meanwhile, GreyOrange launched GreyMatter Foundry — an AI simulator for warehouse automation design — at the Modex trade show, illustrating how vendors are targeting specific pain points in physical infrastructure planning.

Source: DC Velocity

Compiled from international media by the SCI.AI editorial team.

More on This Topic

  • Vendor Risk Assessment: 75% Faster Legal Hold in Third-Party Programs (May 3, 2026)
  • 7 Negotiation Strategies for Strategic Sourcing Success (May 3, 2026)
  • AI-Driven Supply Chain Finance: $7.75T Data Center Capex by 2030 (May 3, 2026)
  • Best Supply Chain Finance Company 2026 Awards Open (May 3, 2026)
  • Loop Secures $95M Series C for Supply Chain AI (May 2, 2026)
ShareTweet

Related Posts

Vendor Risk Assessment: 75% Faster Legal Hold in Third-Party Programs
Procurement

Vendor Risk Assessment: 75% Faster Legal Hold in Third-Party Programs

May 3, 2026
0
7 Negotiation Strategies for Strategic Sourcing Success
Procurement

7 Negotiation Strategies for Strategic Sourcing Success

May 3, 2026
0
AI-Driven Supply Chain Finance: $7.75T Data Center Capex by 2030
Procurement

AI-Driven Supply Chain Finance: $7.75T Data Center Capex by 2030

May 3, 2026
0
Best Supply Chain Finance Company 2026 Awards Open
Procurement

Best Supply Chain Finance Company 2026 Awards Open

May 3, 2026
0
Loop Secures $95M Series C for Supply Chain AI
Procurement

Loop Secures $95M Series C for Supply Chain AI

May 2, 2026
2
MSC Baltic III Wreck Removal Contract Awarded After 14 Months
Procurement

MSC Baltic III Wreck Removal Contract Awarded After 14 Months

May 2, 2026
1

Leave a Reply Cancel reply

Your email address will not be published. Required fields are marked *

Recommended

The 2026 FBA Logistics Inflection Point: Why Amazon’s Pre-Processing Sunset Is Forcing a $47B Global Headhaul Reset

The 2026 FBA Logistics Inflection Point: Why Amazon’s Pre-Processing Sunset Is Forcing a $47B Global Headhaul Reset

17 Views
March 11, 2026
Nearshoring Infrastructure Gap: LATAM Needs 3–5% GDP Annually

Nearshoring Infrastructure Gap: LATAM Needs 3–5% GDP Annually

7 Views
March 29, 2026
UiPath 自动化专业人员报告亮点:2024 年为 AI 集成之年

UiPath Automation Professional Report Highlights: 2024 as the Year of AI Integration

10 Views
February 16, 2026
**A Framework for Multi-Stage Bonus Allocation in Meal Delivery Platforms: Operationalizing Real-Time Incentive Optimization at Scale**

**A Framework for Multi-Stage Bonus Allocation in Meal Delivery Platforms: Operationalizing Real-Time Incentive Optimization at Scale**

0 Views
April 4, 2026
Show More

SCI.AI

Global Supply Chain Intelligence. Delivering real-time news, analysis, and insights for supply chain professionals worldwide.

Categories

  • Supply Chain Management
  • Procurement
  • Technology

 

  • Risk & Resilience
  • Sustainability
  • Research

© 2026 SCI.AI. All rights reserved.

Powered by SCI.AI Intelligence Platform

Welcome Back!

Sign In with Facebook
Sign In with Google
Sign In with Linked In
OR

Login to your account below

Forgotten Password? Sign Up

Create New Account!

Sign Up with Facebook
Sign Up with Google
Sign Up with Linked In
OR

Fill the forms below to register

All fields are required. Log In

Retrieve your password

Please enter your username or email address to reset your password.

Log In

Scan to share via WeChat

Open WeChat and scan the QR code to share

QR Code

Add New Playlist

No Result
View All Result
  • Supply Chain
    • Strategy & Planning
    • Logistics & Transport
    • Manufacturing
    • Inventory & Fulfillment
  • Procurement
    • Strategic Sourcing
    • Supplier Management
    • Supply Chain Finance
  • Technology
    • AI & Automation
    • Robotics
    • Digital Platforms
  • Risk & Resilience
  • Sustainability
  • Research
  • Expert Columns
  • English
    • Chinese
    • English
  • Login
  • Sign Up

© 2026 SCI.AI