Pedro Noe Mata Saucedo’s Post

View profile for Pedro Noe Mata Saucedo, graphic

Data & Analytics Manager at AB InBev | Power BI | Tableau | Python | JavaScript | Google Apps Script | SQL | Excel | VBA Developer | ETL Developer| Logistica | AppSheet | SAP | Power Automate RPA

🤖 Operational Excellence in AI/ML: Driving Efficiency in Industry 4.0 🤖 #IA #ML #DeepLearning Artificial Intelligence (AI) and Machine Learning (ML) are revolutionizing Industry 4.0, offering unprecedented opportunities to optimize processes and improve decision making. 🚀 To achieve operational excellence in this context, it is crucial to define clear objectives and success metrics. Objectives and Key Metrics (OKRs): Objective: Increase operational efficiency by 15% in the next 6 months. Objective: Reduce prediction errors by 10% in the AI system. Objective: Implement an AI/ML system to automate 20% of manual tasks. Success Metrics: Model accuracy: % of correct predictions. System response time: Average data processing time. System error rate: % of errors in the execution of automated tasks. Cost savings: Difference between costs before and after AI/ML implementation. Customer satisfaction: Measurement of satisfaction with the results obtained. Main KPIs and Formulas: Model Accuracy: (Correct predictions / Total predictions) 100% 📊 Response Time: Average processing time for a request. ⏱️ Error Rate: (Errors / Total tasks) 100% ⚠️ Cost savings: (Previous cost Current cost) 💰 Customer Satisfaction (Customer Satisfaction): Average of satisfaction surveys. ⭐ Key Benefits of Operational Excellence in AI/ML: Greater efficiency: Automation of repetitive tasks and process optimization. ⚙️ Cost reduction: Minimization of errors, optimization of resources and elimination of waste. 📉 More informed decision making: Predictive analysis and generation of valuable insights. 💡 Quality improvement: Early detection of anomalies and improved accuracy. ⬆️ Increased productivity: Greater speed in the execution of tasks and processes. 🚀 Scalability: AI/ML systems adaptable to different data volumes and needs. 📈 Innovation: Development of new products and services based on AI. 💡 Important Considerations: Choosing the right AI/ML model: Adapt the model to the specific needs of the business. Data preparation: Quality and quantity of data to train the model. Risk management: Identification and mitigation of possible risks associated with the implementation. Staff training: Training the team for the use and maintenance of the system. Conclusion: Operational excellence in AI/ML is essential for companies seeking to remain competitive in Industry 4.0. By defining clear OKRs, monitoring relevant KPIs, and leveraging key benefits, organizations can drive efficiency, reduce costs, and improve decision making. #Industry40 #AIindustry #MachineLearning

  • No alternative text description for this image

To view or add a comment, sign in

Explore topics