AC26 Integrating Machine Learning and Artificial Intelligence into Management of Systems in the Water Industry

Recorded On: 04/07/2026

CWEA Members: $35.00
Non-Members $45.00
CWEA Contact Hours: 1.0 contact hours towards CWEA Certifications: EIT, LAB

The water industry is experiencing a transformative shift driven by the convergence of digital technologies and data science. Among these, artificial intelligence (AI) is emerging as a powerful and disruptive technology to address challenges in water resource management, infrastructure optimization, and operations. AI models' ability to learn from and predict patterns directly from data, examples, and experience, rather than relying on mechanisms or pre-defined rules, makes this technology highly applicable to the water industry.

Machine learning (ML) is a subset of AI that enables systems to learn from data and improve performance over time without explicit programming. ML sits within the broader AI landscape and is particularly relevant for water applications due to its ability to handle structured and unstructured data, adapt to changing conditions, and uncover hidden insights. In water management, ML can be leveraged to predict equipment failures, optimize treatment processes, forecast influent flows, and enhance decision-making.

This presentation explores the evolving role of ML in the water sector, demystifies core concepts, and illustrates their application through real-world case studies. It also highlights the critical importance of data quality, system integration, and human factors for successful deployment. The presentation emphasizes that while ML may appear complex, it is fundamentally rooted in mathematical relationships and pattern recognition—making it accessible and highly valuable when applied correctly.

The presentation will provide a practical assessment of the ML algorithms gaining utility in the water industry and discuss the data requirements and challenges when implementing ML technologies. Four primary ML paradigms will be discussed: supervised learning, unsupervised learning, reinforcement learning, and deep learning. Real-world case studies will demonstrate the practical applications of ML in predicting influent flows and forecasting biogas production. The presentation will also provide an overview of the current state of ML applications in the water industry across five stages of maturity, from research/embryonic to mature applications. Finally, the presentation will highlight the challenges associated with poor data quality and the importance of a robust system architecture for successful ML deployment in the water industry.

Learning Objectives:
Understand the Role of AI and ML in the Water Industry: Gain insights into how AI and ML are transforming water resource management, infrastructure optimization, and operations.
Describe different ML paradigms and applications relevant to the water industry supervised learning, unsupervised learning, reinforcement learning, and deep learning.
Recognize the importance of data quality, system integration and human factors in the successful deployment of ML technologies in the water sector.

AC26 Recorded Session Sponsored By: 

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Sandeep Sathyamoorthy

Sandeep Sathyamoorthy

VP, Director of Innovation and Technology

Stantec

Sandeep Sathyamoorthy is Vice President and Director of Water Innovation and Technology at Stantec, where he leads transformative initiatives at the intersection of advanced treatment, digital solutions, and sustainable water infrastructure. With over two decades of experience, Sandeep specializes in integrating emerging technologies into utility and industrial applications, driving impact across water reuse, resource recovery, and climate resilience. He holds a Ph.D. in Environmental and Water Resources Engineering from Tufts University and a B.S. in Chemical Engineering from Cornell University, grounding his work in both technical rigor and systems-level thinking. Sandeep is passionate about fostering cross-sector collaboration and mentoring the next generation of water professionals.

Registrants who view the live webinar to see the slides and hear the audio and then enter the correct attention check code (directions below)1.0  contact hours towards CWEA's Contact Hours, EIT, LAB

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AC26 Integrating Machine Learning and Artificial Intelligence into Management of Systems in the Water Industry
Recorded 04/07/2026
Recorded 04/07/2026 Learn more about the contact hour process under the "Contact Hour / CEU" tab. Registrants can receive contact hours for watching the entire recording and providing the correct attention check code(s) as instructed within 48 hours of the webinar.
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Attendance Check Code
Enter code to continue.
Enter code to continue. To receive your contact hours for viewing the recording, please note the attention check code that will be displayed during the webinar in the top right or left corner of the presentation for approximately 90 seconds. Please enter this code in the Attention Check Code component under the "Contents" tab. Once you have entered the correct attendance check code, you will be able to create and download an electronic Certificate of Completion under the "Contents" tab.
Certificate of Completion
1.00 contact hours towards CWEA's Contact Hours: EIT, LAB credit  |  Certificate available
1.00 contact hours towards CWEA's Contact Hours: EIT, LAB credit  |  Certificate available Please do not return this certificate to CWEA when applying for or renewing your CWEA Certification(s). These contact hours will be reflected in your mycwea.org account within 2-3 weeks following completion.