Calligo Technologies is a semiconductor startup specializing in high-performance computing , big data, and artificial intelligence workloads. The company focuses on developing innovative solutions that address performance bottlenecks in large-scale modeling, simulations, and AI model training and inference. By integrating the POSIT number system into their silicon designs, Calligo enhances computational accuracy and energy efficiency, offering a significant advancement over traditional floating-point arithmetic.
Key Features and Functionality:
- TUNGA System-on-Chip : An advanced SoC integrating multiple POSIT-enabled RISC-V cores, designed to handle complex computations with higher precision and efficiency. It incorporates a fixed-point accumulator structure known as QUIRE, supporting exact dot product computations for large vectors, making it particularly beneficial for applications in machine learning and big data.
- Uttunga PCIe Accelerator Card: A powerful add-on card leveraging the TUNGA SoC to boost the performance of HPC and AI workloads. It seamlessly integrates into servers with PCIe slots, providing a significant uplift in computing power by enabling POSIT-based computing capabilities.
- Modified RISC-V Compilers and Frameworks: Calligo has adapted RISC-V C/C++/gFortran/Python compilers, frameworks, and libraries to support POSIT arithmetic, allowing for the generation of POSIT-enabled executables without requiring source-level code changes.
Primary Value and Problem Solved:
Calligo Technologies addresses the escalating demand for computational power in HPC and AI applications by tackling inefficiencies at the fundamental level of data representation and compute operations. Traditional approaches often involve scaling up hardware, leading to increased energy consumption and costs. By implementing the POSIT number system in their silicon products, Calligo offers a solution that enhances computational accuracy and dynamic range while consuming fewer bits and significantly less energy. This innovation enables faster simulations, more precise AI model training, and reduced power consumption, providing a scalable and efficient path to meet the growing computational needs of various industries.