What connects Industrial IoT, Application and Data Integration, and Process Intelligence? During my time at Software AG, my attention has shifted in line with the company's strategic priorities and the changing needs of the market. My focus on Industrial IoT, moved into Application and Data Integration, and now I specialise on Business Process Management and Process Intelligence through ARIS. While these areas may appear to address different challenges, a common thread runs through them. Take a typical production process as an example. From raw material intake to finished goods delivery, there are countless interdependencies, processes and workflows, and just as many data sources. Industrial IoT plays a key role by capturing real-time data from machines and sensors on the shop floor. This data provides visibility into equipment performance, production rates, energy usage, and more. It enables predictive maintenance, reduces downtime, and supports continuous improvement through real-time monitoring and analytics. Application and Data Integration brings together data from across the value chain, including sensor data, manufacturing execution systems, ERP platforms, quality management systems, logistics, and supply chain management. Synchronising these systems with integration creates a unified, reliable view of production operations. This cohesion is essential for automation, traceability, quality management and responsive decision-making across departments and geographies. Process Management, including modelling, and governance, risk, and controls, takes a different yet equally critical perspective. Modelling helps design optimal process flows, while governance frameworks ensure controls are in place to manage quality, risk, and enforce conformance for standardisation. Process mining uncovers bottlenecks, rework loops, and compliance deviations. It focuses on how the production process actually runs, rather than how it was designed to operate. Despite their different vantage points, each of these domains works toward the same goal: aggregating, normalising, and structuring data to transform it into information that can be easily consumed to create meaningful, actionable insights. If your organisation is capturing process-related data through isolated tools, such as diagramming or collaboration platforms, quality management systems, risk registers, or role-based work instructions, it is likely you are only seeing part of the picture. Without a unified approach to integrating and analysing this data, the deeper insights remain fragmented or out of reach. By aligning physical operations, applications & systems, and business processes, organisations can move beyond surface-level visibility to uncover the root causes of inefficiency, unlock hidden potential, and govern change with clarity and confidence. #Process #Intelligence #OperationalExcellence #QualityManagement #Risk #Compliance
IoT-driven Business Intelligence
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Summary
IoT-driven business intelligence means using smart devices and sensors to collect and analyze data that informs better business decisions. By connecting physical operations with digital analytics, companies can get a much clearer picture of what’s really happening and find new ways to solve problems and improve performance.
- Unify your data: Combine sensor and process information from different systems so you can see complete patterns and trends across your entire operation.
- Act on real-time insights: Use alerts and automated analysis from IoT data to quickly address issues like equipment failures or production delays before they affect your business.
- Focus on long-term growth: Build a strategy that lets you scale up your IoT projects, adapt as new technologies emerge, and keep your data secure and well-managed.
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Part 5: Implementing IoT and Generative AI - A Strategic Roadmap Excited to share insights on implementing IoT and Generative AI as we wrap up our series. This strategic roadmap combines key learnings, paving the way for successful integration: Assessment and Planning: - Evaluate current infrastructure and data capabilities - Identify use cases aligned with business goals - Leverage Transformer models for enhanced IoT data analysis Data Strategy: - Develop a robust data collection and management plan - Ensure data quality for AI training - Implement data governance policies for privacy and security Technology Selection: - Choose suitable IoT devices and sensors - Opt for AI models, considering Transformer-based architectures Integration and Testing: - Pilot projects in a controlled environment - Iterate based on feedback and metrics - Validate AI predictions accuracy and reliability Scaling and Optimization: - Gradually expand implementation - Refine AI models with new data - Optimize edge computing for real-time processing Ethical Considerations: - Establish responsible AI guidelines - Ensure transparency in AI decision-making - Regularly audit AI systems for bias and fairness Skill Development: - Invest in team training on IoT, AI, and data analytics - Encourage continuous learning and innovation - Collaborate with tech partners for ongoing development Key takeaways: - IoT-GenAI convergence drives innovation and efficiency - Strategic phased approach is key to success - Addressing data privacy and ethics is crucial - Continuous adaptation is vital in this dynamic field As we navigate this tech revolution, remember, it's about creating value and solving real-world problems. The journey of IoT and Generative AI integration is ongoing. Staying adaptable is essential for long-term success. Thank you for following the series. How are you approaching IoT and Generative AI in your organization? Share your experiences or questions below! #IoT #GenerativeAI #ImplementationStrategy #Innovation #AWSIoT
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From Data to Dollars: The Business Value of IoT Analytics Paired with AI 📈 Following up on our AI/ML discussion last week, let's talk about the bottom-line impact. Modern operations are generating massive amounts of data - but how do we turn that into real business value? And how are you building AI into your business strategy? Here's the journey we at Very are seeing successful companies take: 1️⃣ Start with Visibility: Get clear sight of your operations in real-time. What's happening on your factory floor? How are your assets performing? 2️⃣ Move to Understanding: Connect the dots between different data points. Why did that production delay happen? What's causing those quality variations? 3️⃣ Graduate to Foresight: Prevent costly surprises. Predict maintenance needs, optimize inventory, and spot potential issues before they impact revenue. 4️⃣ Achieve Optimization: Let AI automatically adjust operations to maximize efficiency and profitability. Focus on quick wins early while building toward long-term transformation. It's about driving value at every stage, not just chasing technology. Curious about what this could mean for your business? Take a look at our 🔥 hot off the presses 🔥 Whitepaper by our Senior Director of Software and Data Solutions, Daniel Fudge. #ArtificialIntelligence #MachineLearning #IoT #Innovation #TechLeadership #DigitalTransformation
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