
SambaNova Systems
Founded Year
2017Stage
Secondary Market | AliveTotal Raised
$1.132BMosaic Score The Mosaic Score is an algorithm that measures the overall financial health and market potential of private companies.
-11 points in the past 30 days
About SambaNova Systems
SambaNova Systems specializes in advanced artificial intelligence and machine learning with a focus on enterprise-scale AI platform development. The company offers a full-stack AI solution, including hardware and software designed for generative AI, which enables the deployment of large complex foundation models that can transform business operations and unlock new insights from data. SambaNova's products cater to a variety of sectors, including financial services, healthcare, manufacturing, energy, and the public sector. It was founded in 2017 and is based in Palo Alto, California.
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SambaNova Systems's Product Videos

SambaNova Systems's Products & Differentiators
SambaNova Suite
SambaNova Suite delivers the most accurate pre-trained generative AI models, optimized for enterprise and government organizations, deployed on-premises or in the cloud, and adapted with an organization’s data for greater accuracy. Continuously updated with state-of-the-art open source models, customers retain ownership of models that have been adapted with their data and no customer data needs to be sent outside of their environment. SambaNova Suite empowers enterprises and government organizations to take advantage of the full potential of generative AI to solve their biggest business and operational challenges, while delivering the flexibility, privacy, and security required of modern technologies and tools.
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Expert Collections containing SambaNova Systems
Expert Collections are analyst-curated lists that highlight the companies you need to know in the most important technology spaces.
SambaNova Systems is included in 4 Expert Collections, including Unicorns- Billion Dollar Startups.
Unicorns- Billion Dollar Startups
1,257 items
Conference Exhibitors
5,302 items
AI 100
100 items
Artificial Intelligence
7,146 items
SambaNova Systems Patents
SambaNova Systems has filed 230 patents.
The 3 most popular patent topics include:
- parallel computing
- instruction processing
- computer memory

Application Date | Grant Date | Title | Related Topics | Status |
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1/16/2023 | 12/3/2024 | Chess arbiters, Microwave technology, Switches, Wireless networking, Parallel computing | Grant |
Application Date | 1/16/2023 |
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Grant Date | 12/3/2024 |
Title | |
Related Topics | Chess arbiters, Microwave technology, Switches, Wireless networking, Parallel computing |
Status | Grant |
Latest SambaNova Systems News
Jan 19, 2025
News provided by Share this article Share toX NEW YORK, Jan. 18, 2025 /PRNewswire/ -- Report on how AI is redefining market landscape - The global artificial intelligence (AI) chips market size is estimated to grow by USD 902.65 billion from 2025-2029, according to Technavio. The market is estimated to grow at a CAGR of over 81.2% during the forecast period. Increased focus on developing AI chips for smartphones is driving market growth, with a trend towards convergence of AI and IoT. However, dearth of technically skilled workers for ai chips development poses a challenge. Key market players include Advanced Micro Devices Inc., Baidu Inc., Broadcom Inc., Cerebras, Fujitsu Ltd., Google LLC, Graphcore Ltd., Huawei Technologies Co. Ltd., Intel Corp., International Business Machines Corp., MediaTek Inc., Microchip Technology Inc., NVIDIA Corp., NXP Semiconductors NV, Qualcomm Inc., SambaNova Systems Inc., Samsung Electronics Co. Ltd., SenseTime Group Inc., Taiwan Semiconductor Manufacturing Co. Ltd., and Tesla Inc.. Technavio has announced its latest market research report titled Global Artificial Intelligence (AI) Chips Market 2025-2029 Key insights into market evolution with AI-powered analysis. Explore trends, segmentation, and growth drivers- View Free Sample PDF Artificial Intelligence (AI) Chips Market Scope Report Coverage Key companies profiled Advanced Micro Devices Inc., Baidu Inc., Broadcom Inc., Cerebras, Fujitsu Ltd., Google LLC, Graphcore Ltd., Huawei Technologies Co. Ltd., Intel Corp., International Business Machines Corp., MediaTek Inc., Microchip Technology Inc., NVIDIA Corp., NXP Semiconductors NV, Qualcomm Inc., SambaNova Systems Inc., Samsung Electronics Co. Ltd., SenseTime Group Inc., Taiwan Semiconductor Manufacturing Co. Ltd., and Tesla Inc. Market Driver Artificial Intelligence (AI) is revolutionizing industries from healthcare to retail, finance, and automotive with deep learning and machine learning algorithms. The demand for AI technologies is driving the growth of AI chips market. Companies like Advanced Micro Devices, Nvidia, and Huawei are leading the way with AI chip lines, such as the Trainium2 chip and Ascend 910B chipset. These chips are designed to handle the high computing requirements of AI technologies, including quantum computing and generative AI. Major cloud providers like Microsoft Azure, Amazon Web Services, and Google Cloud are investing in AI data centers to offer AI services to businesses and developers. Edge computing is also gaining popularity for real-time applications, reducing latency and improving data processing efficiency. Energy efficiency is a key consideration for AI chip manufacturers, as AI applications consume vast amounts of power. AI chip lines include CPUs, GPUs, FPGAs, and ASICs, each optimized for specific applications. Ethical concerns around AI use are also driving the development of specific integrated chips for AI applications. AI technologies are being integrated into various industries, from healthcare to manufacturing, with applications ranging from image recognition to cognitive computing. Patent filings for AI technologies are on the rise, with companies seeking to protect their intellectual property. However, system failure and malfunctioning remain concerns, as AI systems can have significant impacts on businesses and individuals. The AI chip market is expected to continue growing, with applications in mobile phones, personal computers, gaming consoles, and embedded systems. The future of AI technologies lies in the integration of AI chips into various devices, from wearable devices to smart homes and connected cars, enabling personalized health, real-time analysis, and more. The Internet of Things (IoT) market is experiencing significant growth due to the advantages it offers in various industries such as aerospace and defense, automotive, consumer electronics, healthcare, and more. IoT devices, which include cameras, drones, smart speakers, smartphones, smart TVs, and others, are making decisions based on data received without human intervention. To enable power-efficient data processing and machine learning computation in these devices, AI chips are being integrated. This trend is driving the demand for AI chips in the IoT market, enabling devices to perform complex tasks and improve overall efficiency. Request Sample of our comprehensive report now to stay ahead in the AI-driven market evolution! Market Challenges Artificial Intelligence (AI) is revolutionizing industries from healthcare to retail, finance, and automotive. However, the increasing demand for AI technologies, including deep learning and machine learning, poses challenges for hardware components like AI chips. Advanced Micro and Nvidia lead the market with their AI chip lines, such as Trainium2 and A100 chip, respectively. These chips power AI algorithms and technologies, enabling applications like image recognition, pose detection, and behavioral patterns analysis. However, developing AI chips comes with challenges. Energy efficiency is crucial as AI applications require high computing power. Quantum computing and highbandwidth memory are potential solutions, but patent filings and system failure risks exist. AI data centers and centralized cloud servers face latency issues, necessitating edge computing and Edge devices. Ethical concerns surrounding AI use also arise. Major cloud providers like Microsoft Azure, Amazon Web Services, and Google Cloud offer AI services, but energy efficiency and latency remain concerns. AI applications in healthcare, retail, finance, and automotive require real-time data processing, making AI chip lines, GPUs, FPGAs, CPUs, ASICs, and DSP essential. The future of AI lies in cognitive computing, machine intelligence, and AI data centers, but challenges persist in ensuring energy efficiency, reliability, and ethical use. The AI chips market is witnessing significant expansion due to the potential financial gains that businesses can reap from artificial intelligence. However, the absence of a sufficient workforce with specialized AI knowledge presents a substantial challenge to market growth. Companies must meticulously evaluate the integration of AI, considering its high research and development costs. The scarcity of skilled professionals in this field is currently the most significant barrier for enterprises looking to implement AI in their operations. Segment Overview Processing Type Technology 1.1 ASICs- Artificial Intelligence (AI) chips market is witnessing significant growth due to the increasing adoption of application-specific integrated circuits (ASICs) in data centers. ASICs are customized chips that offer faster performance compared to GPUs and FPGAs. They are specifically designed for parallel processing, making them ideal for AI applications. Google's Tensor Processing Unit (TPU) is a prime example of ASIC-based AI chips. TPU is a network of hardware and software that can learn specific tasks by analyzing large data sets. It is already being used in applications like Google Search and Google Street View. Data centers are incorporating TPUs at the back end of servers to manage data effectively. TPU's instruction set allows TensorFlow programs to be changed, enabling the development of new algorithms. TensorFlow is an open-source machine learning library with a data flow graph structure, where nodes represent arithmetical operations, and edges denote multidimensional arrays. ASIC-based AI chips are expected to continue gaining market share due to their higher performance and speed compared to GPUs, FPGAs, and CPUs. Download a Sample of our comprehensive report today to discover how AI-driven innovations are reshaping competitive dynamics Research Analysis Artificial Intelligence (AI) Chips Market: The global AI Chips Market is experiencing significant growth due to the increasing adoption of AI technologies in various industries such as healthcare, retail, finance, automotive, and IoT devices. AI Chips are specialized hardware components designed to accelerate AI algorithms, including deep learning and machine learning. These chips are essential for powering AI applications in robotics, autonomous vehicles, and high-performance computing systems. The market includes various types of chips such as Specific Integrated Chips (SICs), CPUs, FPGAs, and GPUs. Advanced Micro, Trainium2 chip, and other players are developing innovative AI Chips to address the growing demand for AI hardware. AI Chips are also being integrated into quantum computing systems, cloud, and edge computing infrastructure. The market's growth is driven by the increasing use of AI in various applications, such as generative AI, supercomputers, and highbandwidth memory. However, ethical concerns regarding AI technologies and the need for energy-efficient and cost-effective solutions pose challenges to the market's growth. In summary, the AI Chips Market is poised for significant growth due to the increasing adoption of AI technologies in various industries and the development of specialized hardware components to accelerate AI algorithms. However, ethical concerns and the need for energy-efficient and cost-effective solutions present challenges to the market's growth. Market Research Overview Artificial Intelligence (AI) Chips Market: Overview The Artificial Intelligence (AI) Chips Market is a rapidly growing sector that focuses on developing specialized hardware components to support AI algorithms, deep learning, and machine learning applications. These chips are designed to enhance the performance and energy efficiency of AI technologies, including quantum computing, neural networks, and cognitive computing. AI Chips are integral to various industries, including robotics, healthcare, retail, finance, automotive, and manufacturing, where real-time data processing and low latency are essential. The market includes a range of hardware components, such as CPUs, GPUs, FPGAs, ASICs, DSPs, and microcontrollers, each optimized for specific AI applications. Deep learning and machine learning algorithms require high computing power and large amounts of data processing. AI chips, such as the Trainium2 chip, are designed to address these requirements, offering high bandwidth memory and parallel computing capabilities. Advanced AI technologies, such as generative AI and large language models, are driving the demand for more powerful and energy-efficient chips. Edge computing and Edge devices are also gaining popularity, as they enable data processing closer to the source, reducing latency and increasing the speed of real-time applications. Ethical concerns surrounding AI and data privacy are also influencing the market, as companies invest in AI chip lines that prioritize security and data protection. The market is expected to continue growing, driven by the increasing adoption of AI technologies in various industries and the development of new AI applications, such as computer vision, pose detection, and behavioral pattern recognition. Patent filings and system failure or malfunctioning issues are ongoing challenges in the market, as companies race to innovate and improve the performance and reliability of their AI chips. The market is highly competitive, with players such as Nvidia, Ascend, and Microsoft Azure offering a range of AI chip solutions for various applications. In summary, the AI Chips Market is a dynamic and evolving sector, driven by the increasing adoption of AI technologies and the need for specialized hardware components to support their growing demands for high computing power, energy efficiency, and data processing capabilities. The market includes a range of hardware components, from CPUs and GPUs to FPGAs and ASICs, each optimized for specific AI applications and industries, including healthcare, retail, finance, automotive, and manufacturing. Ethical concerns, patent filings, and system reliability are ongoing challenges, but the market is expected to continue growing, driven by the increasing adoption of AI technologies and the development of new applications, such as computer vision, pose detection, and behavioral pattern recognition. Table of Contents: About Technavio Technavio is a leading global technology research and advisory company. Their research and analysis focuses on emerging market trends and provides actionable insights to help businesses identify market opportunities and develop effective strategies to optimize their market positions. With over 500 specialized analysts, Technavio's report library consists of more than 17,000 reports and counting, covering 800 technologies, spanning across 50 countries. Their client base consists of enterprises of all sizes, including more than 100 Fortune 500 companies. This growing client base relies on Technavio's comprehensive coverage, extensive research, and actionable market insights to identify opportunities in existing and potential markets and assess their competitive positions within changing market scenarios. Contacts
SambaNova Systems Frequently Asked Questions (FAQ)
When was SambaNova Systems founded?
SambaNova Systems was founded in 2017.
Where is SambaNova Systems's headquarters?
SambaNova Systems's headquarters is located at 2200 Geng Road, Palo Alto.
What is SambaNova Systems's latest funding round?
SambaNova Systems's latest funding round is Secondary Market.
How much did SambaNova Systems raise?
SambaNova Systems raised a total of $1.132B.
Who are the investors of SambaNova Systems?
Investors of SambaNova Systems include CrossWork, Walden International, Google Ventures, Intel Capital, BlackRock and 8 more.
Who are SambaNova Systems's competitors?
Competitors of SambaNova Systems include Tenstorrent and 6 more.
What products does SambaNova Systems offer?
SambaNova Systems's products include SambaNova Suite and 1 more.
Who are SambaNova Systems's customers?
Customers of SambaNova Systems include Riken Center for Computational Science, Argonne National Laboratory and Lawrence Livermore National Laboratory.
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Compare SambaNova Systems to Competitors
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