Neuromorphic Computing Market – Outlook, Size, Share & Forecast 2030

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Neuromorphic Computing Market Research Report— By Offering (Hardware, Software), By Application (Image Recognition, Object Detection, Data Mining, Signal Recognition), By End-User (Aerospace and Defense, Automotive, Healthcare, Industrial) - Forecast till 2030

Neuromorphic Computing: A Promising Way to Emulate the Human Brain

Neuromorphic Computing Market Size is predicted to touch USD 8,351 Million at a whopping 21% CAGR between 2020- 2030

What is Neuromorphic Computing?

Neuromorphic computing is a type of computing that uses architecture and algorithms inspired by the structure of the human brain. It mimics the biological neurons, synapses, and network connectivity to process information in a manner similar to the human brain. This approach to computing is different from traditional computing, which employs a digital, von Neumann-style architecture with sequential processing.

Advantages of Neuromorphic Computing

  1. Energy Efficiency: Neuromorphic computing requires less power than traditional computing, making it a more energy-efficient option. The brain's ability to process information in parallel and its use of analog signals instead of digital ones enables neuromorphic computing to conserve energy.

  2. Complex Pattern Recognition: Neuromorphic computing has the potential to perform complex pattern recognition tasks that are challenging for traditional computers. The human brain has the ability to recognize patterns and make connections between seemingly unrelated concepts, which is difficult for traditional computing systems.

  3. Real-Time Processing: Neuromorphic computing can process information in real-time, making it more suitable for applications that require rapid decision-making. For instance, it can be used in self-driving cars to process sensor data and make decisions in real-time.

Demand for artificial intelligence and machine learning is predicted to bolster market growth over the forecast period. AI is utilized as applications in robotics, non-linear controls, translation and chatterbots, image processing, computer vision, and language processing.

Potential Applications of Neuromorphic Computing

  1. Robotics: Neuromorphic computing can be used in robotic systems to enable self-learning and adaptation. Robots equipped with neuromorphic processors can learn from their environment, recognize patterns, and make decisions based on their experience.

  2. Medical Applications: Neuromorphic computing can be used in medical applications to assist doctors in diagnosing diseases or to develop new treatment options. With the ability to analyze large sets of patient data and recognize patterns, neuromorphic computing can help identify diseases earlier and make personalized treatment recommendations.

  3. Security: Neuromorphic computing can be used in security applications to detect and prevent fraud. It can analyze large datasets and recognize patterns of fraudulent behavior that traditional methods would not be able to detect.

Browse In-depth Market Research Report (113 Pages) on Neuromorphic Computing Market

Key Players 

  • Vicarious (US)
  • General Vision(US)
  • Qualcomm Incorporated (US)
  • HRL Laboratories (US)
  • Hewlett Packard Development LP (US)
  • BrainChip Holdings Ltd (Australia)
  • SAMSUNG (South Korea)
  • Applied Brain Research (Canada)

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