Image Source : Business Standard
Poor data readiness hampers AI impact across Indian businesses, with 54% citing quality issues as top barrier per IDC-Qlik study. Fragmented data, governance gaps, and bias slow scaling despite $9.2B investments by 2028, urging modernization focus.
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Indian enterprises face a stark AI paradox: surging investments yet stalled outcomes due to inadequate data foundations. IDC-Qlik research reveals 54% struggle with poor data quality—highest in APAC—while 62% flag governance/privacy shortcomings. Salesforce notes 94% of production AI yields inaccurate outputs from untrustworthy data (25% deemed unreliable).
Critical Readiness Gaps:
Fragmented/unstructured data (70% volume) undermines model accuracy; 39% doubt AI output reliability.
Bias, legacy integration, and compliance (GDPR/DPDP) risks amplify, with 28% facing data bias vs. APAC averages.
Hitachi survey: 58% tie AI success to quality data; 43% fear insufficient training datasets amid skills shortages.
Despite 47% running multiple GenAI cases (EY-CII), leaders prioritize modernization—89% per Salesforce—for ROI via integration tools and governance.
Sources: IDC-Qlik, Salesforce, Hitachi Vantara, EY-CII.
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