The SiMa.ai MLSoC device delivers high-performance effortless machine-learning for computer vision based embedded edge applications in markets such as smart vision, robotics, industry 4.0, autonomous vehicles, drones, and the government sector.
It is designed to meet the challenges of integrating machine learning into next generation edge applications.
Feature Highlights
The PCIe half-height, half-length production board is a versatile board that uses the SiMa.ai Machine Learning System on Chip (MLSoC) device.
PCIe form factor (68.9mm x 160mm) with standard 98-pin PCB edge connector to interface with any standard host PC or motherboard.
Low power board with typical workloads 10-15W. Supports PCIe Gen 4.0 up to x8 lanes, LPDDR4 x4, I2C x2, eMMC, µSD card, QSPI-8 x1, 1G Ethernet x2 ports via RJ45, UART x1, and GPIO interfaces.
Machine learning accelerator (MLA) providing up to 50 tera operations per second (50 TOPS) for neural network computation.
Application processing unit (APU) a cluster of four Arm Cortex-A65 dual threaded processors operating up to 1.15 GHz to deliver up to 15K Dhrystone MIPs.
Video encoder/decoder that supports the H.264 compression standards HEVC (High Efficiency Video Coding) with support for baseline/main/high profiles, 4:2:0 pixels and 8-bit precision. The encoder supports rates up to 4K P30, while the decoder supports up to 4K P60.
Computer vision unit (CVU) which consists of a four-core Synopsys ARC EV74 video processor supporting up to 600 16-bit GOPS. Designed to offer the highest performance for low power embedded edge machine learning applications.
The SiMa.ai MLSoC device offers heterogeneous cores for processing any computer vision ML workload. Quad Arm A65 cores, a Machine Learning Accelerator (MLA) block that provides up to 50 TOPS for ML acceleration along with a Computer Vision Processor (CVP) to any ML computational needs for any framework.
The SiMa.ai MLSoC device is available in industrial and consumer temperature grades.
Main configuration support: PCIe HHHL card: To function as an ML accelerator card. However, customers may use this as a stand-alone card.
A good and high quality Smart DMM.. A small suggestion is there could have been a protective cover like a screen guard.. Cheaper Smart DMM s too have such a protective covering.. I noticed some minor scratches on the display, But it's not a deal breaker.. Good value for Money DMM
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