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Decision-grade data for AI separates pilots from profits

The business case for why decision-grade data is a board-level priority

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What’s decision-grade data, and why does it matter?

There’s no going back. AI is embedded in core business processes, with its outputs directly influencing strategic operational and financial decisions, as well as everyday workflows and customer experiences.

But AI transformation demands greater rigor than most organizations can provide. Especially when bad data costs the economy $3T per year and the global average cost of a data breach, while declining, is still $4.4M.

To ensure confidence, responsibility, and accuracy, AI systems must be built on decision-grade data. Decision-grade data is clean, consistent, governed, and explainable. It meets a verified threshold of trustworthiness, completeness, consistency, timeliness, and relevance.

Without these strong data foundations, even the most advanced AI can—and will—produce biased, unreliable, or misleading results. In contrast, with decision-grade data, organizations can trust their AI to deliver insights that are transparent, ethical, and actionable. It’s decision-grade data that scales pilots into profits.



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Data quality tradeoffs

MIT Media Lab found that 95% of investments in enterprise generative AI (GenAI) pilots fail to deliver value or move into production.

In other words, 95% of GenAI pilots produce zero returns.

What makes the difference for the 5% of pilots that show tremendous value and speak to the potential of AI? Sustainable growth in AI depends on making deliberate choices about data: balancing agility with stability, clarity with momentum, and preparedness with vulnerability.


Data quality tradeoffs

Risk

Upside

Tradeoff

Escalating rework and AI model drift

Faster cycles from reusable data products

Gain stability, not just agility

“Pilot purgatory” due to low confidence in outputs

Higher adoption because outputs are explainable

Gain momentum, not just clarity

Compliance exposure and breach costs

Built-in regulatory readiness

Mitigate vulnerability with preparedness

 


Metrics to assess and protect decision-grade data

Executives focused on value set clear data goals, build modern data platforms, and govern data for accuracy and completeness. With those foundations in place, metrics expand for developing advanced analytics and AI models built on reliable data, integrating developed AI into their business processes. The most successful also create continuous feedback loops to keep AI aligned with evolving business needs.

The right measures aren’t technical outputs. The right measures are key performance indicators (KPIs) tied to AI value produced by good data. They’re also metrics and outcomes everyone can access based on the data everyone knows and trusts.


Decision-grade data KPIs

KPI

What it shows

Target and cadence

Executive lens

Decision-grade coverage of critical decisions

Share of top revenue or risk decisions running on trusted, documented data

80% of top 10 decisions in two quarters

Review quarterly

CEO, CIO/CTO

Are our biggest decisions running on trusted data and creating advantage?

Time to launch a data product

Speed from idea to first production use

Median ≤ 30 days for priority data products

Monthly

CIO/CTO, COO

Are we removing friction from data to value?

AI outcome acceptance rate

Confidence of business users in AI-assisted decisions

≥ 70% acceptance in first 90 days for targeted roles

Quarterly

CHRO, BU Leaders

Are people using AI outputs with confidence?

Hours of capacity unlocked

Tangible productivity captured when AI is fed with quality data

Track hours saved per role

Quarterly

CEO, CFO

Are we unlocking capacity that shows up in financials?

Customer trust and satisfaction lift

Quality of experience attributable to AI with trusted data

+3-to-+5-point CSAT or NPS lift on AI-assisted journeys

Quarterly

CXO, CMO

Are customers getting faster, clearer answers?

Data incident rate and recovery time

Operational resilience of data pipelines that feed AI

≤ 2 incidents per 1,000 pipelines per month

MTTD ≤ 15 min, MTTR ≤ 2 hours

CIO/CTO, CISO, CRO

Do issues get found and fixed before they hit customers?

Data reuse rate

Efficiency from reusable, documented data products

≥ 2 downstream use cases per critical data product

Quarterly

CIO/CTO, CFO

Are we scaling reuse instead of rebuilding?

Evidence readiness for strategic decisions

Auditability and traceability of data behind decisions

100% of top decisions have lineage, ownership, and assumptions documented

Quarterly

CEO, CFO

Can we stand behind how decisions were made?


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Use cases for data advantage, by industry

The AI advantage depends on differentiated data, and every industry has a starting point.

Industry

Critical Data

Data moves

Financial Services

Credit, underwriting, and know your client (KYC)

Golden record identity, explainable features, lineage to source

Retail & Consumer goods

Personalization and demand planning

Unified customer and catalog data, consent tagging, near-real-time freshness

Healthcare & life sciences

Imaging triage and care coordination, clinical trials

Standardized imaging, routing, and audit trails

Manufacturing

Supply chain, quality, and predictive maintenance

Sensor normalization, event labeling, downtime taxonomy

Technology

Developer productivity, DevOps optimization, and support

Code telemetry, doc standards, ticket taxonomy

Energy & natural resources

Grid and field operations

Work management, asset master data, weather joins, and work-order lineage

Government

Citizen services, social services

Golden record of citizen demographics, service interaction data, decision support tools, secure data sharing, lineage to decision

Higher education

Student support, admissions, and enrollment

Student 360, course/enrollment standardizations

Non-profit

Donor and household profiles, gift history, engagement signals, program outcomes

Next-best fundraising action, golden-record identity and householding, program taxonomy, lineage from source to impact


Decision-grade data for AI is a board-level opportunity

The challenge for leaders has changed: decision-grade data for AI is a board-level mandate, not a data team initiative on the roadmap.

Decision-grade data—clean, governed, explainable, and fit for purpose—is what turns AI experimentation into measurable outcomes. Without it, organizations get stuck in pilot purgatory, mired in rework cycles, and hamstrung by low trust. But with decision-grade data, leaders can confidently decide what to scale, what to stop, and how to hold teams accountable for real value.

The path forward is decisive, not incremental:

  • Align on a data and AI vision
  • Redesign priorities in the next 90 days
  • If necessary, prioritize modernization and fast follow with AI
  • Anchor success to outcomes everyone can see

Trusted data is what scales pilots into profits. It’s also what boards will insist on now.


Don’t let bad data destroy value.




FAQs

Decision-grade data for AI is data that meets a verified standard of trustworthiness, quality, and governance. It is clean, consistent, explainable, and fit for making high-stakes business decisions. Unlike raw or exploratory data, decision-grade data for AI can be confidently used to automate, augment, or inform strategic, operational, and financial decisions.

Most AI pilots fail due to low trust, rework, or poor data foundations. Decision-grade data for AI eliminates these blockers by enabling explainable outputs, reusable data products, and faster paths from pilot to production—turning experimentation into measurable business value.

Without decision-grade data, AI initiatives stall in “pilot purgatory,” produce unreliable insights, and struggle with adoption. Poor data for AI also amplifies risk—driving compliance exposure, model drift, and erosion of trust among leaders, employees, and customers.

No. While regulated industries feel the risk first, every industry benefits from decision-grade data for AI. Trusted data improves adoption, accelerates AI value, and ensures leaders can stand behind how decisions were made—regardless of sector.



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