Industrial companies are getting better at using AI to detect faults and recommend interventions, but most still struggle when those recommendations must be converted into action on the plant floor, according to the second paper in a joint research series by MIT Sloan Management Review India and Infinite Uptime.
The findings are part of the second stage of the three-part research series, The Trust Architecture of Industrial AI, and build on the first paper’s argument that prediction quality is constrained by missing plant context and fragmented data.
Part 2 shifts the focus from whether AI can generate usable prescriptions to whether those prescriptions are actually executed in real operating conditions. Based on an expanded respondent base of 68 industrial leaders as of March 2026, the study finds that execution remains weak across much of the sector.
Among the 68 respondents, 52% said they execute fewer than one in four AI-generated recommendations, while 66% said they execute fewer than half. Only 10% reported execution rates above 75%, suggesting low execution is not a marginal issue but a defining condition in many industrial AI deployments.
That matters because industrial AI creates value only when prescriptions are executed, not merely generated, the report argues. If a recommendation is left unacted upon, there is no operational outcome to observe, no result to validate, and little basis for a company to claim measurable gains in efficiency, uptime, or throughput.
If the first paper in the series argued that context sets the ceiling for prediction accuracy, the second shows that value depends on whether organizations can act on what the system already knows.
The report identifies five barriers behind this execution gap. Workforce adoption and change-management challenges were cited by 60% of respondents, making them the most common obstacle.
Conflicts with production priorities followed at 46%, followed by low trust in recommendation credibility at 40%, recommendations that were not operationally actionable at 38%, and lack of clear ownership for execution at 26%.
Respondents cited an average of 2.1 barriers each, while 54% reported two or more and 34% reported three or more, reinforcing the report’s key argument that execution failure is systemic rather than the result of a single breakdown.
The shortfall is especially sharp in roles closest to production risk. Chief operating officers and plant head respondents showed the highest concentration in the lowest execution band, with 69% executing less than 25% of recommendations. Energy managers followed, with 75% also reporting execution rates below 25%.
Even more striking, the report says 53% of respondents with fully integrated execution systems still reported execution rates below 25%, suggesting infrastructure maturity on its own does not solve the problem. Workflow integration, ownership clarity, and plant-level change management still determine whether action happens.
That helps explain why trust sits at the center of the story.