PassiveLogic Advances Swift AI Compiler to Deliver Superior Energy Efficiency Over Industry Giants TensorFlow and PyTorch

PassiveLogic’s latest optimizations to Differentiable Swift yield massive energy efficiency gains for real-time computations, unlocking AI for novel industries


Salt Lake City, Aug. 20, 2024 (GLOBE NEWSWIRE) -- PassiveLogic, creator of the first platform for generative autonomy to enable autonomous infrastructural robots, today announced that its Differentiable Swift compiler toolchain has established the industry record for AI energy efficiency. This groundbreaking achievement positions PassiveLogic at the forefront of AI innovation, unlocking unprecedented potential for AI applications across sectors. This breakthrough enables edge-based robotics and addresses AI’s growing climate impact.

PassiveLogic’s extensive work to advance Differentiable Swift has set a new energy efficiency precedent, surpassing Google’s TensorFlow and Meta’s PyTorch. It is 992x more efficient than TensorFlow and 4,948x more efficient than PyTorch.

AI is the defining technology of this decade. With that, the energy required to power its computational infrastructure has grown exponentially. The energy intensiveness of AI models produced by today’s compilers not only impacts the climate but also impedes technological advancements that require battery power or small edge processors in mobile, robotic, and autonomous applications. Energy-efficient AI models help solve both the energy consumption and climate impact problem while simultaneously enabling next-generation edge applications.

AI efficiency is measured by the amount of energy consumed per compute operation. Here, it is denoted in Joules per gigaOperations (J/GOps). PassiveLogic’s optimizations to Differentiable Swift equated to Swift consuming a mere 34 J/GOps, while TensorFlow consumed 33,713 J/GOps and PyTorch 168,245 J/GOps—as benchmarked on NVIDIA’s Jetson Orin processor. Details about the benchmark are available in PassiveLogic’s article and open-source documentation on PassiveLogic’s GitHub.

PassiveLogic has enabled the first general-purpose AI compiler with world-class support for automatic differentiation—the technology that powers deep learning. By leveraging Swift’s static analysis and efficient optimization a priori, the compiler generates highly compact AI models that consume dramatically less energy without sacrificing quality. Because Swift is a general-purpose systems language, PassiveLogic has enabled the merging of AI and application code into a single paradigm. This greatly accelerates the development process, allowing researchers to build new AI technologies unbound from the narrow lens of existing AI toolchains.

“Our work on Differentiable Swift opens the door for new AI frontiers. The energy demands of AI training have artificially bifurcated the AI world into runtime inferencing and backroom training – blocking customers’ applications from getting smarter at the edge,” said Troy Harvey, CEO of PassiveLogic. “By slashing compiler energy consumption by over 99% for novel AI models that don’t conform to the current deep learning orthodoxy, we're paving the way for countless new AI use-cases that were previously impractical—be it physics, ecology, or economics.” He continued, “Our innovation on these technical challenges was borne from a clear customer need for AI that enables more kinds of compute for new applications. This is more than just a technological advancement; it catalyzes innovation and sustainability.”

PassiveLogic’s advancements in Differentiable Swift are the result of collaboration with the Swift Core Team and ongoing work with the open-source Swift community. As a collaborator in the Swift language, the PassiveLogic team has submitted thousands of commits and provided 33 patches and feature merges since August 2023.

Leveraging more efficient AI compute promotes continued development and exploration while also addressing growing concerns about AI's energy consumption. Though PassiveLogic’s compiler advancements are general purpose, the company is first applying them to logistics, simulations, and autonomous infrastructural robots such as buildings and factories.

About PassiveLogic 

PassiveLogic enables autonomy for controlled systems and unlocks collaboration between teams to manage those systems. PassiveLogic has reimagined how we design, build, operate, maintain, and manage infrastructural robots, whose current technology has remained unchanged for decades. By using revolutionary physics-based Quantum digital twins and leveraging the world’s fastest AI compiler to simulate future-forward controls, PassiveLogic empowers users to easily create their own generative digital twins in minutes to launch autonomous control. This control optimizes for energy use, equipment longevity, and occupant comfort levels in real time for the system’s lifetime. Autonomous control lays the foundation for decarbonization at scale and enables truly smart, connected cities. PassiveLogic is backed by leading investors including nVentures, Era Ventures, Keyframe Capital, Addition, RET Ventures, noa (formerly A/O Proptech), and Brookfield Growth.

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PassiveLogic's Differentiable Swift AI Compiler Sets Energy Efficiency Record

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