Date | Venue | Duration | Fee (USD) |
---|---|---|---|
03 Feb - 07 Feb 2025 | Live Online | 5 Day | 3250 |
03 Mar - 07 Mar 2025 | Live Online | 5 Day | 3250 |
21 Apr - 25 Apr 2025 | Live Online | 5 Day | 3250 |
23 Jun - 27 Jun 2025 | Live Online | 5 Day | 3250 |
14 Jul - 18 Jul 2025 | Live Online | 5 Day | 3250 |
25 Aug - 29 Aug 2025 | Live Online | 5 Day | 3250 |
03 Nov - 07 Nov 2025 | Live Online | 5 Day | 3250 |
22 Dec - 26 Dec 2025 | Live Online | 5 Day | 3250 |
In the era of Industry 4.0, where digitization and intelligence define industrial competitiveness, the optimization of control systems has evolved from a mechanical challenge to a data-driven science. Traditional control systems, such as PID and model-based architectures, have long served as the backbone of industrial automation. However, they often struggle with real-time process variations, nonlinearities, and unexpected system behaviors. To address these challenges, Machine Learning for Control Systems Optimization is emerging as a transformative approach that enables systems to learn, adapt, and continuously improve performance.
Pideya Learning Academy introduces this advanced training course to equip engineers, automation professionals, and system designers with the knowledge and skills needed to harness the power of ML in industrial control contexts. This training bridges the gap between control theory and machine intelligence, empowering participants to create more adaptive, responsive, and fault-tolerant control environments.
According to McKinsey & Company, industrial organizations that deploy advanced analytics and machine learning have achieved up to 30% improvements in throughput, 20% reductions in energy usage, and 50% enhancements in predictive maintenance accuracy. A 2024 Statista survey further confirms that over 65% of manufacturing and energy sector organizations have either implemented or are actively piloting ML-based control strategies, highlighting the urgency for professionals to develop expertise in this area.
To support this transition, the course delivers a powerful combination of technical depth and industry relevance, enriched with the following key highlights:
A detailed understanding of real-world applications of ML algorithms in closed-loop control systems
Development of hybrid control models combining physical dynamics with data-driven insights
Integration of ML techniques into PID, Model Predictive Control (MPC), and distributed control system (DCS) architectures
Advanced anomaly detection and diagnostic approaches using time-series, multivariate, and state-space datasets
Optimization strategies leveraging reinforcement learning in dynamic control environments
Exposure to industry case studies from oil & gas, power generation, smart manufacturing, and utilities
Strong focus on model interpretability, ethical considerations, and governance in industrial AI deployment
What sets this Pideya Learning Academy course apart is its carefully structured curriculum that introduces ML concepts from the ground up—ensuring accessibility for professionals without prior experience in data science or AI. From understanding basic supervised and unsupervised learning to building advanced predictive models tailored to control loops, each module is designed to deepen participants’ capabilities progressively.
Participants will also explore how to construct hybrid models that incorporate both physics-based and ML-based components for superior accuracy and responsiveness. Emphasis is placed on applying these techniques to common control tasks such as setpoint tracking, stability improvement, disturbance rejection, and fault prediction.
In an increasingly competitive landscape where operational efficiency and uptime are critical, this course empowers learners to lead automation modernization projects with confidence. Beyond the algorithms, participants will also engage with forward-looking topics like explainable AI, control system auditability, and the role of intelligent agents in future industrial ecosystems.
Through this holistic and forward-thinking training program, Pideya Learning Academy reinforces its mission to empower professionals with next-generation technical skills that enable smarter, safer, and more sustainable control system performance.
After completing this Pideya Learning Academy training, the participants will learn:
How to identify opportunities for ML integration within industrial control systems
Key concepts in supervised, unsupervised, and reinforcement learning relevant to process control
Methods for training and validating ML models using control-relevant datasets
Implementation techniques for hybrid ML-physical models in control loops
Advanced optimization strategies using predictive models and feedback algorithms
Fault detection, diagnostics, and anomaly classification using ML approaches
Best practices for deploying scalable ML models in live control environments
Broadened expertise in cutting-edge control system technologies
Enhanced decision-making through data-informed control models
Increased career advancement potential in AI and automation roles
Confidence in applying machine learning principles to real-world control challenges
Access to a valuable network of AI-in-control professionals through Pideya Learning Academy
Improved operational reliability through predictive and adaptive control systems
Reduced downtime and maintenance costs by enabling early fault detection
Enhanced energy efficiency and throughput optimization across industrial processes
Strategic capability building in AI/ML for next-generation process innovation
Accelerated digital transformation in control system modernization initiatives
Control Systems Engineers and Process Engineers
Automation and Instrumentation Specialists
AI/ML Engineers working in industrial domains
Plant Operations Managers and Technical Supervisors
R&D Professionals and Systems Integrators
Digital Transformation and Innovation Leaders
Course
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