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IoT Predictive Maintenance: The Complete Guide With Examples & Use Cases

With IoT predictive maintenance, internet-connected sensors and artificial intelligence help monitor machine health and forecast equipment failures — before they occur.

Jordan Lee , Associate Manager, Product Marketing, Salesforce

May 7, 2026
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Challenges & Solutions of IoT Predictive Maintenance

Challenge Solution
Legacy equipment integration Install external, aftermarket sensors onto older machinery instead of replacing the entire unit.
Data silos Connect all sensor data into a single enterprise field service management platform for cross-department visibility.
Unreliable network connectivity Deploy edge computing hubs to store data locally during internet outages and sync when connections return.
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IoT Predictive Maintenance FAQs

Internet-connected devices gather continuous performance data from physical machinery. This constant stream of information allows software to detect early signs of wear and tear. Service teams use these insights to schedule repairs before parts break.

Technicians commonly deploy vibration, acoustic, temperature, and pressure sensors. The specific choice depends on the machinery involved. A hydraulic press requires pressure monitoring, while a conveyor belt needs vibration tracking.

Savings vary widely depending on the size of the operation and the cost of unexpected downtime. Avoiding a single hour of halted production can save thousands of dollars. It also reduces costs associated with emergency parts shipping and overtime labor.

Artificial intelligence acts as the brain behind the sensors. It processes massive volumes of historical and real-time data to identify microscopic anomalies. These algorithms spot failure patterns that human operators can't see on their own.