How AI Can Streamline Maintenance Workflows

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Summary

AI is transforming maintenance workflows by predicting issues before they occur, reducing downtime, and ensuring smoother operations across industries like energy and manufacturing.

  • Adopt predictive tools: Use AI-powered algorithms to monitor equipment and detect potential failures early, transitioning from reactive to proactive maintenance strategies.
  • Streamline scheduling: Implement AI systems to prioritize and automate maintenance tasks based on real-time risk assessments and operational needs.
  • Leverage real-time insights: Integrate data from sensors and historical records to make smarter decisions that minimize disruptions and improve asset reliability.
Summarized by AI based on LinkedIn member posts
  • View profile for Catalina Herrera

    Field CDO at Dataiku | Board Member | Advisor | Innovation with AI | MSEE | Top 1% Industry SSI

    7,153 followers

    🌀 From Predictive Models to Agentic AI — in Just a Few Hours I wanted to experience what it’s like to build an agentic pipeline firsthand. So I did. Use case? Predictive maintenance for wind turbines — minimizing downtime and maximizing efficiency. Here’s the flow I created in Dataiku: 🛠️ Agents in Action: Data Collector Agent → pulls live sensor data (temperature, vibration, performance). Data Processor Agent → cleans, formats, and normalizes the inputs. Predictive Model Agent → Deploys ML models to forecast failures (Offshore, Onshore Small, and Onshore large turbines). Maintenance Scheduler Agent → prioritizes turbine maintenance based on predicted risks. The result? A conversational interface powered by Agentic AI — One place. One entry point. One orchestration layer. And it was built in just a few hours, thanks to the reusable descriptive and predictive artifacts I already had in Dataiku. Here’s what I learned: ✅ Agents get complex fast ✅ Visibility, governance, and usability are critical ✅ If you can’t trust or trace your agents, you’re not scaling — you’re gambling 🔍 With Dataiku, building and debugging agents is possible and straightforward. 📣 Curious how this works in your industry? The Dataiku team will be talking about this stuff live, bring your questions https://lnkd.in/gJ-qJi8s #AgenticAI #PredictiveMaintenance #WindEnergy #DataScience #Dataiku #MLops #AIatScale #ConversationalAI

  • View profile for Abhinav Kohar

    Artificial Intelligence and Energy | Engineering Leader | CS @ UIUC | Microsoft | IIT | President’s Gold Medal

    16,594 followers

    💥 Agentic AI Unleashes the Green Revolution: How Generative Workflows Will Power the Energy Sector Generative AI is no longer just about creating stunning images or crafting compelling text. A new paradigm can alter energy industry - generative AI agentic workflows. Imagine AI not just as a tool for analysis or content creation, but as an autonomous agent, capable of generating solutions, orchestrating actions, and driving complex processes from end-to-end. Nowhere is this transformative potential more profound than in the energy sector, a domain crying out for innovation and efficiency. ✅ What exactly are these agentic workflows? They combine the creative power of generative AI with the proactive execution of intelligent agents. Think of it as AI that can not only imagine optimal energy solutions but also autonomously implement them. These workflows are designed to handle complex, multi-step processes, learn from experience, and adapt to dynamic environments, pushing automation beyond simple rule-based systems ✅ Why is this a game-changer for energy? Because the energy sector faces immense challenges: meeting growing demand, transitioning to renewables, optimizing vast and complex grids, and the like. Generative AI agentic workflows offer a powerful toolkit to tackle these head-on. Let's dive into specific examples of how this will unfold: 🛫 Hyper-Personalized Energy Savings Agents for Consumers: Forget generic energy-saving tips. Agentic AI can analyze a household’s specific energy consumption patterns, appliance usage, and even lifestyle habits. Based on this deep dive, it generates truly personalized energy-saving recommendations – and crucially, it can autonomously implement them. Imagine an AI agent that learns your preferred home temperature, analyzes energy pricing fluctuations, and then subtly adjusts your smart thermostat and appliance schedules to minimize your bill without impacting comfort. 🛫 Predictive Maintenance Agents for Energy Infrastructure: Power plants, wind turbines, and pipelines require constant maintenance to prevent costly failures. Agentic AI can continuously monitor sensor data from these assets, generate predictive maintenance schedules based on subtle anomaly detection, and even autonomously trigger maintenance workflows. This minimizes downtime, extends asset lifespan, and improves the overall reliability of energy infrastructure. ☑️ The implications are staggering: a more resilient, efficient, and sustainable energy sector, powered by AI agents working autonomously to optimize every facet of energy generation, distribution, and consumption. While challenges like data security, ethical considerations, and job displacement need careful consideration, the potential of generative AI agentic workflows to drive a transformation in the energy sector is undeniable. #slb #ai #genAI #energy #tech

  • View profile for Shashank Garg

    Co-founder and CEO at Infocepts

    15,750 followers

    Meet anyone in manufacturing, and for their top two concerns, you'll hear about:   1. Supply Chain Disruptions: Challenges related to inventory and supply chain management. 2. Operating Costs: Navigating economic headwinds and operational inefficiency.   Our clients in the manufacturing sector work in a fast-paced world where maintaining operational efficiency is crucial. One of our clients faced significant challenges with their Clean-In-Place (CIP) process, which directly impacted their quality check procedures. Frequent unplanned downtimes due to equipment failures were hampering productivity and throughput, highlighting the need for a more proactive maintenance approach. They needed real-time insights to make informed preventive maintenance decisions! To address their challenges, our team developed and implemented an AI-based predictive maintenance solution for the CIP equipment. Leveraging data analytics and machine learning, this solution integrated critical datasets from batch processes, sensors, and maintenance records.   By empowering our client with real-time insights through anomaly detection and a risk scoring system, we enabled them to make informed preventive maintenance decisions. This proactive approach not only improved their operational efficiency but also set a new standard for maintenance practices in the manufacturing industry.   Our client went from reactive and corrective maintenance to predictive maintenance! Would love to hear from the network on what you are seeing in this area. If you have a story, let us talk.

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