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Natural gas producers have long struggled to differentiate their product in a market that treats gas as a commodity. When it comes to carbon intensity (CI), the industry is reliant on emission factors and self-reported data, and lacks a credible, data-driven approach to proving their gas carries a lower CI.
With new regulations like the Inflation Reduction Act's Waste Emission Charge and Europe's carbon border tax, the opportunity to produce verifiable low-emission gas has grown dramatically. Enter "empirical gas"โnatural gas measured in real time with actual data instead of estimates.
In this episode, I catch up with my buddy Mark Smith, CEO of Clean Connect, about how his company integrates AI, camera-based monitoring, and process simulation software to create real-time, third-party verifiable emissions data. This transformation not only reduces tax burdens but unlocks access to premium markets willing to pay for low-carbon gas. The implications are massive for producers, traders, and tech firms alike.
๐ค About the GuestMark Smith is the CEO of Clean Connect, a technology company based in Colorado. Clean Connect offers AI-powered camera systems, control room software, and blockchain-based trading platforms that enable real-time emissions monitoring, measurement, reporting, and verification. Their technology underpins the emerging market of empirical gas, empowering producers to offer provably low-emission natural gas certified by international standards like ISO 14067 and ISCC+.
Connect with Mark Smith:
๐ Clean Connect Website
๐ LinkedIn - Mark Smith
Additional Tools & Resources๐ Go backstage: My Podcast Studio
๐ Take the course: Digital Strategy for Oil and Gas
Connect with Me๐ Resources
๐ Substack
๐ LinkedIn
โ๏ธ X (Twitter)
Contact for Lectures and KeynotesI speak regularly on these and other topics. Book a brief call about your event.
DisclaimerThe views expressed in this podcast are my own and do not constitute professional advice.
By Geoffrey Cann5
1919 ratings
Natural gas producers have long struggled to differentiate their product in a market that treats gas as a commodity. When it comes to carbon intensity (CI), the industry is reliant on emission factors and self-reported data, and lacks a credible, data-driven approach to proving their gas carries a lower CI.
With new regulations like the Inflation Reduction Act's Waste Emission Charge and Europe's carbon border tax, the opportunity to produce verifiable low-emission gas has grown dramatically. Enter "empirical gas"โnatural gas measured in real time with actual data instead of estimates.
In this episode, I catch up with my buddy Mark Smith, CEO of Clean Connect, about how his company integrates AI, camera-based monitoring, and process simulation software to create real-time, third-party verifiable emissions data. This transformation not only reduces tax burdens but unlocks access to premium markets willing to pay for low-carbon gas. The implications are massive for producers, traders, and tech firms alike.
๐ค About the GuestMark Smith is the CEO of Clean Connect, a technology company based in Colorado. Clean Connect offers AI-powered camera systems, control room software, and blockchain-based trading platforms that enable real-time emissions monitoring, measurement, reporting, and verification. Their technology underpins the emerging market of empirical gas, empowering producers to offer provably low-emission natural gas certified by international standards like ISO 14067 and ISCC+.
Connect with Mark Smith:
๐ Clean Connect Website
๐ LinkedIn - Mark Smith
Additional Tools & Resources๐ Go backstage: My Podcast Studio
๐ Take the course: Digital Strategy for Oil and Gas
Connect with Me๐ Resources
๐ Substack
๐ LinkedIn
โ๏ธ X (Twitter)
Contact for Lectures and KeynotesI speak regularly on these and other topics. Book a brief call about your event.
DisclaimerThe views expressed in this podcast are my own and do not constitute professional advice.

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