AI Chip Makers and Manufacturers: A Comprehensive Guide

ai chip
artificial intelligence
machine learning
hardware vendor
processor

The popular makers or manufacturers of AI chips include Google, NVIDIA, AMD, Xilinx, Graphcore, Intel, Wave Computing, Via, Qualcomm, Thinci, Amazon, LG, etc.

Artificial Intelligence is a field of computer science (CS). It encompasses any technique that enables machines to mimic human-like behavior to perform various tasks, such as decision-making with experiences, learning, problem-solving, planning, speaking, reasoning, and identifying patterns.

Machine learning (ML) is a subset of AI, whereas Deep Learning (DL) is a subset of ML. AI has made major advancements due to the development of ML algorithms that can process a wide range of data quickly and produce more accurate outputs. Moreover, it requires very little data pre-processing by human developers/operators.

AI hardware architecture depends on computing requirements as per use cases. This relies on the use of CPUs, GPUs, accelerators, FPGAs, ASICs, memory storage, and so on. Different applications require different processing speed, performance features, and hardware interfaces.

Due to the growth in the AI (Artificial Intelligence) market, various segments such as compute, memory, storage, and networking are likely to see higher demand. There are numerous applications of AI which include healthcare, transport, finance, data security, surveillance, gaming, robotics, automotive, social media, entertainment, e-commerce, education, agriculture, astronomy, home automation, face recognition, speech recognition etc.

AI Chip Makers | Manufacturers of AI Chips

The following table mentions a list of AI chip makers.

AI Hardware chip manufacturersDescription
AI CPU (Central Processing Unit)• AMD develops hardware/software solutions for AI such as EPYC CPUs which can be used in deep learning (DL) and machine learning (ML) applications. • Graphcore has developed Rackscale IPU (Intelligent Processing Unit) Pod for data centers. It is based on colossus processor developed by Graphcore. • Adapteva is offering AI chip called “Epiphany” which is 1024 core and 64 bit microprocessor. • Samsung has developed “Exynos” microprocessor which is designed for LTE products. It houses on-device & enhanced NPUs (Neural Processing Units). • IBM has developed AI chip called “TrueNorth” which is modeled as per human brain and houses about 5.4 billion transistors. • Xilinx has developed AI chipsets by name “Versal” or “Everest” which contain about 50 billion transistors.
AI GPU (Graphics Processing Unit)• NVIDIA develops AI chipsets based on GPUs which include Tesla chipset, Xavier and Volta. • AMD offers Radeon Instinct GPUs for ML and DL applications. • Mythic AI offers GPU which delivers performance equivalent to desktop computer. • Imagination Technologies offers “PowerVR GPU” which is complete neural network accelerator for AI chips. It delivers 4 Tera operations per sec.
AI TPU (Tensor Processing Unit)• Alphabet, parent company of Google has developed TPU ASIC. It is designed mainly for TensorFLow framework of Google.
AI FPGA (Field Programmable Gate Array)• Intel offers FPGAs for AI applications. • Lattice semiconductor develops FPGA based machine learning solutions. • Xilinx VITIS AI development environment.
AI platform provider• Wave Computing offers Triton AI SoC (System on Chip) which helps AI developers to develop AI use cases using a single AI platform. The company develops AI solutions which can be used in edge devices, servers, data centers etc.
AI accelerators• NVIDIA AI kits • Company called Via develops “Edge AI Developer Kit” based on qualcomm processor and other parts/components.
Other AI chip makers• Baidu has developed Cloud to Edge AI chip. • Qualcomm has developed “Cloud AI chip” which can also be used in telecom products based on 5G standard. • Thinci is developing solutions for ML, DL, neural networks (NL) and Vision processing (VP). It is developing autonomous car and drones. • HiSilicon, a semiconductor unit of Huawei has developed AI chips. • LG has developed its AI chip called “LG Neural Engine”. • SambaNova develops custom AI chips. • Kalway has developed chip for AI processing which can be used in edge devices and data centers. • Amazon is developing AI chip called AWS Inferentia which can be used for its own business. • Google cloud and NVIDIA has developed first AI on 5G platform used for various applications.

AI hardware landscape is rapidly evolving with new makers and manufacturers. There are several prominent companies and organizations involved in manufacturing AI chips and its hardware specifically designed for artificial intelligence (AI) and machine learning (ML) tasks or operations.

Top 10 Applications of Artificial Intelligence (AI)

Explore the widespread applications of AI across various industries, from healthcare and finance to transportation and entertainment, enhancing efficiency and innovation.

artificial intelligence
ai application
machine learning
ChatGPT: Advantages and Disadvantages Explained

ChatGPT: Advantages and Disadvantages Explained

Explore the benefits and drawbacks of ChatGPT, an AI-powered chatbot. Understand its features, capabilities, and limitations compared to traditional search engines.

chatbot
artificial intelligence
machine learning
Chatbots: Advantages, Disadvantages, and Types

Chatbots: Advantages, Disadvantages, and Types

Explore the advantages and disadvantages of chatbots, from cost-effectiveness and AI power to limitations in query resolution and complex decision-making.

chatbot
artificial intelligence
customer service