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    AI in Procurement: Operational Reality or Industry Hype?

    AI in Procurement: Operational Reality or Industry Hype?
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    Digicode

    February 16, 2026

    Procurement Podcast with Denis Rasulev and Daniel Kolarik

    The podcast examines how ai in procurement is shifting from generative assistance to agentic execution. Denis Rasulev @Digicode and procurement advisor Daniel Kolarik discuss practical AI use cases in procurement, governance safeguards, ROI timelines, and how organizations can begin implementation without replacing core systems.

    Watch the Full Podcast

    Why the Conversation Around AI in Procurement Is Changing

    Procurement leaders have heard about AI for years. Most early exposure focused on chatbots, summarization tools, and reporting automation.
    These tools were helpful but incremental.

    The shift discussed in this podcast centers on a structural change: the move from generative AI to agentic systems.
    Generative AI answers questions

    • Agentic AI performs defined operational tasks within structured governance
    • This distinction defines the next phase of artificial intelligence in procurement

    Generative vs. Agentic AI: What Actually Matters

    Generative tools draft emails or summarize contracts. They.

    Traditional generative AI is an answering machine. You ask a question, it generates text. Agentic AI is a doing machine – it perceives the environment, reasons through a problem, and acts to achieve a goal.

    – Denis Rasulev

    Agentic systems operate differently. They:

    • Monitor stock levels
    • Compare supplier pricing against contracts
    • Identify discrepancies
    • Draft purchase orders for review
    • Route approvals through governance workflows

    The key difference is operational autonomy within defined rules.

    In practical terms, this means procurement teams can reduce routine workload by up to 60-70%, reallocating focus toward supplier strategy, negotiation leverage, and risk oversight. That transition is foundational to modern strategic procurement.

    The Data Objection: Structural Barrier or Manageable Constraint?

    One recurring concern from procurement directors is data quality:

    • Legacy ERP systems
    • Contracts stored in email attachments
    • Fragmented supplier records

    Five years ago, this would have halted implementation.

    Today, AI systems can process structured and unstructured data simultaneously. Instead of postponing transformation for large-scale data cleanup, organizations can:

    • Deploy AI to structure existing data incrementally
    • Build value layers above legacy systems
    • Validate ROI before scaling

    The architecture does not require infrastructure replacement. It requires controlled integration.

    Practical AI Use Cases in Procurement

    The discussion identifies two proven ai use cases in procurement that generate measurable results early.

    1. Invoice Audit Automation

    AI agents analyze incoming invoices to detect:

    • Price deviations
    • Duplicate payments
    • Contract misalignment
    • Overpayments

    Financial leakage becomes visible quickly. Many organizations recover measurable cost savings within the first implementation phase.

    2. Supplier Matching and Compliance Screening

    Agentic systems can:

    • Compare internal requirements with supplier databases
    • Validate regulatory and compliance criteria
    • Evaluate ESG or jurisdictional constraints
    • Surface qualified suppliers in reduced timeframes

    Manual sourcing cycles that previously required months can be shortened significantly, with higher consistency.

    These use cases demonstrate that ai in procurement delivers operational impact when applied to defined workflows.

    Governance: Why Transparency Is Non-Negotiable

    Procurement involves regulated spend and compliance accountability.

    So there is a “glass box” architecture:

    • Full audit trails
    • Transparent decision logic
    • Traceable supplier recommendations
    • Human-in-the-loop approval checkpoints

    AI performs analysis and preparation. Final authority remains with procurement professionals.

    This structure aligns with regulatory expectations and reduces internal resistance.

    Adoption Depends on Positioning

    Resistance increases when AI is framed as replacement.

    Adoption increases when AI is positioned as capacity expansion.

    Procurement professionals transition from operational processing to strategic oversight. The technology absorbs repetitive transactions; human expertise concentrates on negotiation, supplier relationships, and long-term value creation.

    This reframing is critical to unlocking the future of ai in procurement.

    How Organizations Should Start

    The recommended first step is structured evaluation.

    An AI readiness assessment connects:

    • Business pain points
    • Process inefficiencies
    • Technology landscape
    • Data accessibility

    The output is a roadmap identifying:

    • Suitable entry use cases
    • Expected ROI
    • Phased deployment sequence

    This approach avoids large-scale disruption and enables measurable pilot validation.

    For organizations evaluating automation in finance and procurement workflows, structured initiatives such as Intelligent AP Document Processing illustrate how targeted AI deployment can deliver operational gains without replacing core ERP systems.

    The Cost of Waiting

    Organizations building operational AI capability now will operate differently by 2027 than those relying solely on manual processes. The difference will be measurable in:

    • Cycle time
    • Compliance accuracy
    • Working capital efficiency
    • Supplier performance visibility

    Obviously, the discussion does not argue for blind adoption. It argues for structured execution.

    If your organization is evaluating where operational AI can generate measurable impact within procurement, start with process clarity rather than technology selection.

    The objective is not adoption for its own sake. It is structured improvement aligned with business outcomes.

    white keyboard

    A focused executive session can clarify where automation delivers measurable value

    Book Your Free Consultation

    FAQ

    • What is AI in procurement?

      AI in procurement refers to the use of artificial intelligence systems to automate, analyze, and optimize procurement workflows such as invoice validation, supplier evaluation, demand forecasting, and compliance monitoring.

    • What are the most practical AI use cases in procurement?

      Common early-stage use cases include invoice audit automation, supplier matching, contract analysis, compliance monitoring, and spend anomaly detection. These deliver measurable ROI within defined pilot projects.

    • What is the difference between generative and agentic AI in procurement?

      Generative AI produces content or summaries based on prompts. Agentic AI performs structured operational tasks autonomously within defined governance rules and approval checkpoints.

    • Does AI replace procurement professionals?

      No. AI reduces repetitive workload and increases processing capacity. Final decisions, negotiations, and strategic oversight remain human-led.

    • How should companies begin implementing artificial intelligence in procurement?

      Organizations should start with a focused readiness assessment to identify high-impact, low-risk workflows suitable for pilot deployment before expanding across broader procurement processes.

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