
cover
- Published: September 2025
- Pages: 692
- Tables: 173
- Figures: 146
The artificial intelligence revolution stands at a critical inflection point. As AI applications proliferate across every sector of the global economy—from autonomous vehicles navigating complex urban environments to personalized medical diagnostics processing vast genomic datasets—the computational demands have outstripped the capabilities of traditional silicon-based architectures. The convergence of neuromorphic computing, quantum computing, and edge AI processors represents not merely an evolutionary advancement, but a fundamental paradigm shift that will determine the trajectory of artificial intelligence for the next decade and beyond. This technological convergence emerges from the recognition that different AI workloads require fundamentally different computational approaches. Traditional von Neumann architectures, which have powered the digital revolution for over half a century, face insurmountable challenges in meeting the diverse requirements of modern AI systems: the massive parallel processing demands of training large language models, the ultra-low latency requirements of autonomous systems, the energy constraints of mobile and IoT devices, and the real-time adaptation capabilities needed for dynamic environments.
The semiconductor industry's adherence to Moore's Law—the observation that transistor density doubles approximately every two years—has reached fundamental physical limits. As transistors approach atomic dimensions, quantum effects, manufacturing costs, and power density challenges have made continued scaling increasingly difficult. This limitation has profound implications for AI development, as the exponential growth in model complexity and data volumes can no longer be supported through traditional scaling approaches. The response has been a decisive shift toward domain-specific architectures optimized for particular AI workloads. Graphics Processing Units (GPUs) initiated this transformation by providing massively parallel processing capabilities for training deep neural networks. Tensor Processing Units (TPUs) followed, offering specialized acceleration for matrix operations core to machine learning algorithms. However, these solutions represent only the beginning of a more profound architectural revolution.
Neuromorphic computing draws inspiration from the human brain's remarkable efficiency and adaptability, implementing spiking neural networks that process information only when events occur, dramatically reducing power consumption compared to traditional continuously-operating processors. This event-driven processing paradigm proves particularly valuable for applications requiring always-on sensing and real-time adaptation, such as autonomous vehicles processing sensor data or IoT devices monitoring environmental conditions. The technology's commercial viability has been demonstrated through pioneering implementations including Intel's Loihi 2 neuromorphic research chip and IBM's TrueNorth processor. Startups like BrainChip have commercialized neuromorphic accelerators for edge AI applications, while companies like Prophesee have developed neuromorphic vision sensors capable of capturing high-speed motion with microsecond temporal resolution and minimal power consumption. Beyond energy efficiency, neuromorphic systems offer unique advantages in handling temporal data, performing in-memory computation, and enabling continuous learning without extensive retraining. These capabilities prove essential for applications ranging from industrial predictive maintenance to augmented reality systems requiring real-time environmental understanding.
Quantum computing represents perhaps the most revolutionary advancement in computational capability since the invention of digital computers. By leveraging quantum phenomena including superposition and entanglement, quantum systems can potentially solve certain classes of problems exponentially faster than classical computers. For artificial intelligence, this capability promises transformative advances in optimization, pattern recognition, and machine learning algorithm development. Quantum machine learning algorithms like quantum support vector machines and quantum neural networks demonstrate the potential for processing vast datasets more efficiently than classical approaches. Quantum optimization algorithms show particular promise for solving complex combinatorial problems common in AI applications, from drug discovery molecular simulations to financial portfolio optimization and supply chain management. Major technology companies including IBM, Google, and IonQ have developed increasingly sophisticated quantum processors, while cloud-based quantum computing services democratize access to quantum capabilities for AI researchers and developers. The integration of quantum and classical computing through hybrid architectures enables practical applications that leverage quantum advantages while maintaining compatibility with existing AI workflows. The proliferation of connected devices and the need for real-time AI processing has driven the development of specialized edge AI processors capable of running sophisticated algorithms directly on mobile devices, IoT sensors, and embedded systems. This distributed intelligence paradigm addresses critical limitations of cloud-based AI processing: network latency, bandwidth constraints, privacy concerns, and the need for autonomous operation in connectivity-challenged environments.
Edge AI processors employ diverse architectural approaches including dedicated neural processing units (NPUs), analog computing techniques, and neuromorphic processing elements optimized for specific workloads. Companies like NVIDIA with their Jetson ecosystem, Qualcomm with integrated AI accelerators, and startups like Mythic with analog matrix processors are pioneering solutions that deliver increasingly sophisticated AI capabilities within the power and size constraints of edge devices.
The convergence of these three technological domains creates unprecedented opportunities for solving AI's most challenging problems. Neuromorphic principles could enhance quantum error correction and control systems. Quantum algorithms might accelerate neuromorphic network training and optimization. Edge processors could enable hybrid quantum-classical computing workflows and distribute neuromorphic processing capabilities across IoT networks. This technological convergence is reshaping not only the capabilities of AI systems but also the economic dynamics of the technology industry. The market represents a fundamental shift from general-purpose computing platforms to specialized architectures optimized for specific AI workloads, creating new competitive dynamics and investment opportunities across the entire technology ecosystem.
Advanced Electronics Technologies for AI 2026-2036 analyzes the convergence of three revolutionary electronics technologies reshaping the artificial intelligence landscape: neuromorphic computing, quantum computing, and edge AI processors. The report provides detailed market forecasts spanning 2026-2036, examining market dynamics across multiple technology vectors that collectively represent a transformative shift from conventional von Neumann architectures to specialized, brain-inspired, quantum-enhanced, and edge-distributed computing platforms. Our analysis reveals a rapidly accelerating market trajectory driven by exponential demand for energy-efficient, real-time AI processing capabilities across autonomous systems, healthcare applications, industrial automation, and smart city infrastructures.
Technology convergence analysis examines synergistic interactions between these three domains, identifying cross-platform opportunities where quantum algorithms enhance neuromorphic training, where edge processors enable hybrid quantum-classical workflows, and where neuromorphic principles improve quantum error correction systems. The report provides detailed assessments of hybrid computing architectures, multi-modal AI processing systems, and ecosystem standardization requirements driving interoperability across diverse computing platforms. Market segmentation delivers granular analysis across vertical applications including automotive (autonomous vehicles, ADAS), healthcare (medical devices, diagnostics, prosthetics), industrial IoT (predictive maintenance, quality control), smart cities (traffic management, environmental monitoring), aerospace/defense (UAVs, satellite imaging, cybersecurity), and data center infrastructure (high-performance computing, cloud services). Regional market analysis covers North America, Europe, Asia-Pacific, and emerging markets, examining technology adoption patterns, government initiatives, and investment landscapes.
Competitive landscape intelligence provides comprehensive profiles of >400 companies across all three technology domains. Neuromorphic computing profiles span chip manufacturers, sensor developers, memory technology providers, and software framework developers. Quantum computing coverage includes platform providers, specialized hardware companies, software developers, and materials suppliers. Edge AI processor analysis encompasses established semiconductor companies alongside innovative start-ups.
Investment analysis evaluates funding trends, strategic partnerships, and market opportunities across $2+ trillion in combined market potential through 2036. The report includes detailed venture capital analysis, government funding initiatives, corporate R&D investments, and strategic acquisition activity shaping competitive dynamics. Manufacturing capacity analysis addresses supply chain vulnerabilities, quality control procedures, and fabrication process requirements for next-generation computing architectures.
Report contents include:
- Neuromorphic Computing
- Market overview with global revenues 2024-2036 and segmentation analysis
- Moore's Law limitations driving neuromorphic adoption
- Technology architectures: spiking neural networks, memory approaches, hardware processors
- Sensing technologies: event-based sensors, hybrid approaches, bio-inspired designs
- Application markets: mobile/consumer, automotive, industrial, healthcare, aerospace/defense, datacenters
- Competitive landscape with 144 company profiles
- Regional market analysis and forecasts
- Technology roadmaps and emerging trends
- Investment landscape and strategic partnerships
- Regulatory considerations and sustainability impact
- Quantum Computing
- First and second quantum revolution context
- Current market landscape with technical progress assessment
- Investment analysis covering $billions in funding 2024-2025
- Global government initiatives across major economies
- Business models and market dynamics
- Hardware technologies: superconducting, trapped ion, silicon spin, photonic, topological qubits
- Software stack and quantum algorithms
- Infrastructure requirements and cloud services
- Applications across pharmaceuticals, chemicals, transportation, financial services, automotive
- Materials requirements: superconductors, photonics, nanomaterials
- 200+ company profiles spanning entire value chain
- Edge AI Processors
- Market size evolution and geographic distribution
- Technology architectures: NPUs, SoC integration, power optimization
- Application analysis: industrial IoT, smartphones, automotive, smart cities, healthcare
- Competitive landscape covering established players and startups
- Market drivers: latency requirements, privacy imperatives, bandwidth limitations
- 49 detailed company profiles
- Technology trends and future roadmaps
- Profiles of 401 companies. Companies profiled include ABR (Applied Brain Research), AiM Future, AI Storm, AlpsenTek, Amazon Web Services, Ambarella, Ambient Scientific, AMD, ANAFLASH, Analog Inference, AnotherBrain, Apple, ARM, Aryballe Technologies, Aspinity, Avalanche Technology, Axelera AI, Baidu, Beijing Xinzhida Neurotechnology, A* Quantum, AbaQus, Aegiq, Agnostiq, Airbus, Alice&Bob, Aliro Quantum, Alpine Quantum Technologies, Anyon Systems, Archer Materials, Arclight Quantum, Arctic Instruments, ARQUE Systems, Atlantic Quantum, Atom Computing, Atom Quantum Labs, Atos Quantum, Baidu, BEIT, Bifrost Electronics, Advanced Micro Devices, Alpha ICs, Amazon Web Services, Ambarella, Anaflash, Apple, Axelera AI, Axera Semiconductor, Blaize, BrainChip Holdings, Cerebras Systems, Corerain Technologies, DEEPX, DeGirum, EdgeCortix, Efinix, Enerzai, Google, Graphcore, GreenWaves Technologies and more.....
The report includes these components:
- PDF report download/by email. Print edition also available.
- Comprehensive Excel spreadsheet of all data.
- Mid-year Update
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1 INTRODUCTION 42
- 1.1 Neuromorphic-Quantum Computing Convergence Potential 42
- 1.2 Edge AI and Neuromorphic System Integration 42
- 1.3 Hybrid Computing Architecture Development 43
- 1.4 Multi-Modal AI Processing System Evolution 43
- 1.5 Ecosystem Standardization Requirements 43
2 NEUROMORPHIC COMPUTING 45
- 2.1 Overview of the neuromorphic computing and sensing market 45
- 2.1.1 Global Market Revenues 2024-2036 46
- 2.1.2 Market segmentation 47
- 2.1.3 Ending of Moore’s Law 48
- 2.1.4 Historical market 49
- 2.1.5 Key market trends and growth drivers 50
- 2.1.6 Market challenges and limitations 51
- 2.1.7 Future outlook and opportunities 52
- 2.1.7.1 Emerging trends 52
- 2.1.7.1.1 Hybrid Neuromorphic-Conventional Computing and Sensing Systems 54
- 2.1.7.1.2 Edge AI and IoT 55
- 2.1.7.1.3 Quantum Computing 55
- 2.1.7.1.4 Explainable AI 56
- 2.1.7.1.5 Brain-Computer Interfaces 57
- 2.1.7.1.6 Energy-efficient AI at scale 57
- 2.1.7.1.7 Real-time learning and adaptation 58
- 2.1.7.1.8 Enhanced Perception Systems 58
- 2.1.7.1.9 Large-scale Neuroscience Simulations 59
- 2.1.7.1.10 Secure, Decentralized AI 59
- 2.1.7.1.11 Robotics that mimic humans 59
- 2.1.7.1.12 Neural implants for healthcare 60
- 2.1.7.1.13 New Application Areas and Use Cases 60
- 2.1.7.1.14 Disruptive Business Models and Services 61
- 2.1.7.1.15 Collaborative Ecosystem Development 61
- 2.1.7.1.16 Skill Development and Workforce Training 61
- 2.1.7.2 Technology roadmap 63
- 2.2 Neuromorphic computing and generative AI 64
- 2.3 Market value chain 65
- 2.4 Market map 68
- 2.5 Funding and investments 70
- 2.6 Strategic Partnerships and Collaborations 70
- 2.7 Regulatory and Ethical Considerations 72
- 2.7.1 Data Privacy and Security 72
- 2.7.2 Bias and Fairness in Neuromorphic Systems 72
- 2.7.3 Intellectual Property and Patent Landscape 72
- 2.8 Sustainability and Environmental Impact 73
- 2.8.1 Carbon Footprint Analysis of Neuromorphic Systems 73
- 2.8.2 Energy Efficiency Metrics and Benchmarking 73
- 2.8.3 Green Manufacturing Practices 74
- 2.8.4 End-of-life and Recycling Considerations 74
- 2.8.5 Environmental Regulations Compliance 74
- 2.9 Introduction 74
- 2.9.1 Definition and concept of neuromorphic computing and sensing 75
- 2.9.2 Main neuromorphic approaches 76
- 2.9.2.1 Large-scale hardware neuromorphic computing systems 78
- 2.9.2.2 Non-volatile memory technologies 78
- 2.9.2.3 Advanced memristive materials and devices 79
- 2.9.3 Fabrication Processes for Neuromorphic Systems 80
- 2.9.4 Key Material Suppliers 80
- 2.9.5 Supply Chain Vulnerabilities and Mitigation 80
- 2.9.6 Manufacturing Capacity Analysis 81
- 2.9.7 Quality Control and Testing Procedures 81
- 2.9.8 Comparison with traditional computing and sensing approaches 82
- 2.9.9 Neuromorphic computing vs. quantum computing 82
- 2.9.10 Key features and advantages 83
- 2.9.10.1 Low latency and real-time processing 84
- 2.9.10.2 Power efficiency and energy savings 84
- 2.9.10.3 Scalability and adaptability 84
- 2.9.10.4 Online learning and autonomous decision-making 84
- 2.9.11 Markets and Applications 85
- 2.9.11.1 Edge AI and IoT 88
- 2.9.11.2 Autonomous Vehicles and Robotics 89
- 2.9.11.3 Cybersecurity and Anomaly Detection 91
- 2.9.11.4 Smart Sensors and Monitoring Systems 92
- 2.9.11.5 Datacenter and High-Performance Computing 93
- 2.10 Neuromorphic Computing Technologies and Architecture 94
- 2.10.1 Spiking Neural Networks (SNNs) 95
- 2.10.1.1 Biological inspiration and principles 96
- 2.10.1.2 Types of SNNs and their characteristics 96
- 2.10.1.3 Advantages and limitations of SNNs 97
- 2.10.2 Memory Architectures for Neuromorphic Computing 97
- 2.10.2.1 Conventional memory approaches (SRAM, DRAM) 98
- 2.10.2.2 Emerging non-volatile memory (eNVM) technologies 98
- 2.10.2.2.1 Phase-Change Memory (PCM) 98
- 2.10.2.2.2 Resistive RAM (RRAM) 99
- 2.10.2.2.3 Magnetoresistive RAM (MRAM) 99
- 2.10.2.2.4 Ferroelectric RAM (FeRAM) 100
- 2.10.2.3 In-memory computing and near-memory computing 100
- 2.10.2.4 Hybrid memory architectures 101
- 2.10.3 Neuromorphic Hardware and Processors 101
- 2.10.3.1 Digital neuromorphic processors 102
- 2.10.3.2 Analog neuromorphic processors 102
- 2.10.3.3 Mixed-signal neuromorphic processors 103
- 2.10.3.4 FPGA-based neuromorphic systems 103
- 2.10.3.5 Neuromorphic accelerators and co-processors 103
- 2.10.4 Software and Frameworks for Neuromorphic Computing 104
- 2.10.4.1 Neuromorphic programming languages and tools 104
- 2.10.4.2 Neuromorphic simulation platforms and frameworks 105
- 2.10.4.3 Neuromorphic algorithm libraries and repositories 106
- 2.10.4.4 Neuromorphic software development kits (SDKs) 107
- 2.10.1 Spiking Neural Networks (SNNs) 95
- 2.11 Neuromorphic Sensing Technologies and Architectures 108
- 2.11.1 Event-Based Sensors and Processing 108
- 2.11.1.1 Neuromorphic vision sensors 109
- 2.11.1.2 Neuromorphic auditory sensors 110
- 2.11.1.3 Neuromorphic olfactory sensors 111
- 2.11.1.4 Event-driven processing and algorithms 112
- 2.11.2 Hybrid Sensing Approaches 112
- 2.11.2.1 Combination of conventional and event-based sensors 114
- 2.11.2.2 Fusion of multiple sensing modalities 114
- 2.11.2.3 Advantages and challenges of hybrid sensing 115
- 2.11.3 Neuromorphic Sensor Architectures and Designs 115
- 2.11.3.1 Pixel-level processing and computation 115
- 2.11.3.2 Sensor-processor co-design and integration 116
- 2.11.3.3 Bio-inspired sensor designs and materials 116
- 2.11.4 Signal Processing and Feature Extraction Techniques 117
- 2.11.4.1 Spike-based Encoding and Decoding 118
- 2.11.4.2 Temporal and Spatiotemporal Feature Extraction 119
- 2.11.4.3 Neuromorphic Filtering and Denoising 120
- 2.11.4.4 Adaptive and Learning-Based Processing 121
- 2.11.1 Event-Based Sensors and Processing 108
- 2.12 Market Analysis and Forecasts 122
- 2.12.1 Mobile and Consumer Applications 122
- 2.12.1.1 Smartphones and wearables 122
- 2.12.1.2 Smart home and IoT devices 123
- 2.12.1.3 Consumer health and wellness 124
- 2.12.1.4 Entertainment and gaming 125
- 2.12.2 Automotive and Transportation 127
- 2.12.2.1 Advanced Driver Assistance Systems (ADAS) 128
- 2.12.2.2 Autonomous vehicles and robotaxis 130
- 2.12.2.3 Vehicle infotainment and user experience 132
- 2.12.2.4 Smart traffic management and infrastructure 133
- 2.12.3 Industrial and Manufacturing 136
- 2.12.3.1 Industrial IoT and smart factories 137
- 2.12.3.2 Predictive maintenance and anomaly detection 138
- 2.12.3.3 Quality control and inspection 139
- 2.12.3.4 Logistics and supply chain optimization 140
- 2.12.4 Healthcare and Medical Devices 142
- 2.12.4.1 Medical imaging and diagnostics 143
- 2.12.4.2 Wearable health monitoring devices 145
- 2.12.4.3 Personalized medicine and drug discovery 146
- 2.12.4.4 Assistive technologies and prosthetics 147
- 2.12.5 Aerospace and Defense 150
- 2.12.5.1 Unmanned Aerial Vehicles (UAVs) and drones 151
- 2.12.5.2 Satellite imaging and remote sensing 153
- 2.12.5.3 Missile guidance and target recognition 154
- 2.12.5.4 Cybersecurity and threat detection: 155
- 2.12.6 Datacenters and Cloud Services 158
- 2.12.6.1 High-performance computing and scientific simulations: 158
- 2.12.6.2 Big data analytics and machine learning 160
- 2.12.6.3 Cloud-based AI services and platforms 161
- 2.12.6.4 Energy-efficient datacenter infrastructure 162
- 2.12.7 Regional Market Analysis and Forecasts 165
- 2.12.8 Competitive Landscape and Key Players 166
- 2.12.8.1 Overview of the Neuromorphic Computing and Sensing Ecosystem 166
- 2.12.8.2 Neuromorphic Chip Manufacturers and Processors 166
- 2.12.8.3 Neuromorphic Sensor Manufacturers 167
- 2.12.8.4 Emerging Non-Volatile Memory (eNVM) Manufacturers 168
- 2.12.8.5 Neuromorphic Software and Framework Providers 168
- 2.12.8.6 Research Institutions and Academia 169
- 2.12.9 Competing Emerging Technologies 172
- 2.12.9.1 Quantum Computing 172
- 2.12.9.2 Photonic Computing 173
- 2.12.9.3 DNA Computing 173
- 2.12.9.4 Spintronic Computing 173
- 2.12.9.5 Chemical Computing 173
- 2.12.9.6 Superconducting Computing 174
- 2.12.9.7 Analog AI Chips 174
- 2.12.9.8 In-Memory Computing 174
- 2.12.9.9 Reversible Computing 174
- 2.12.9.10 Quantum Dot Computing 174
- 2.12.9.11 Technology Substitution Analysis 175
- 2.12.9.12 Migration Pathways 177
- 2.12.9.13 Comparative Advantages/Disadvantages 177
- 2.12.1 Mobile and Consumer Applications 122
- 2.13 Neuromorphic Computing Company Profiles 179 (144 company profiles)
3 QUANTUM COMPUTING 297
- 3.1 First and Second quantum revolutions 297
- 3.2 Current quantum computing market landscape 299
- 3.2.1 Technical Progress and Persistent Challenges 300
- 3.2.2 Key developments 300
- 3.3 Investment Landscape 302
- 3.3.1 Quantum Technologies Investments 2024-2025 303
- 3.4 Global Government Initiatives 309
- 3.5 Market Landscape 312
- 3.6 Recent Quantum Computing Industry Developments 2023-2025 316
- 3.7 End Use Markets and Benefits of Quantum Computing 322
- 3.8 Business Models 323
- 3.9 Roadmap 325
- 3.10 Challenges for Quantum Technologies Adoption 325
- 3.11 SWOT analysis 328
- 3.12 Quantum Computing Value Chain 329
- 3.13 Quantum Computing and Artificial Intelligence 329
- 3.14 Global market forecast 2025-2046 330
- 3.14.1 Revenues 331
- 3.14.2 Installed Base Forecast 333
- 3.14.2.1 By system 333
- 3.14.2.2 By technology 334
- 3.14.3 Pricing 335
- 3.14.4 Hardware 336
- 3.14.4.1 By system 337
- 3.14.4.2 By technology 338
- 3.14.5 Quantum Computing in Data centres 339
- 3.15 Introduction 341
- 3.15.1 What is quantum computing? 341
- 3.15.2 Operating principle 342
- 3.15.3 Classical vs quantum computing 344
- 3.15.4 Quantum computing technology 346
- 3.15.4.1 Quantum emulators 348
- 3.15.4.2 Quantum inspired computing 349
- 3.15.4.3 Quantum annealing computers 349
- 3.15.4.4 Quantum simulators 349
- 3.15.4.5 Digital quantum computers 349
- 3.15.4.6 Continuous variables quantum computers 350
- 3.15.4.7 Measurement Based Quantum Computing (MBQC) 350
- 3.15.4.8 Topological quantum computing 350
- 3.15.4.9 Quantum Accelerator 350
- 3.15.5 Competition from other technologies 350
- 3.15.6 Market Overview 353
- 3.15.6.1 Investment in Quantum Computing 354
- 3.15.6.2 Business Models 354
- 3.15.6.2.1 Quantum as a Service (QaaS) 354
- 3.15.6.2.2 Strategic partnerships 356
- 3.15.6.2.3 Vertically integrated and modular 356
- 3.15.6.2.4 Mixed quantum stacks 357
- 3.15.6.3 Semiconductor Manufacturers 357
- 3.16 Quantum Algorithms 358
- 3.16.1 Quantum Software Stack 359
- 3.16.1.1 Quantum Machine Learning 359
- 3.16.1.2 Quantum Simulation 360
- 3.16.1.3 Quantum Optimization 360
- 3.16.1.4 Quantum Cryptography 360
- 3.16.1.4.1 Quantum Key Distribution (QKD) 361
- 3.16.1.4.2 Post-Quantum Cryptography 361
- 3.16.1 Quantum Software Stack 359
- 3.17 Quantum Computing Hardware 362
- 3.17.1 Qubit Technologies 364
- 3.17.1.1 Overview 364
- 3.17.1.2 Noise effects 364
- 3.17.1.3 Logical qubits 366
- 3.17.1.4 Quantum Volume 366
- 3.17.1.5 Algorithmic Qubits 367
- 3.17.1.6 Superconducting Qubits 367
- 3.17.1.6.1 Technology description 367
- 3.17.1.6.2 Initialization, Manipulation, and Readout 368
- 3.17.1.6.3 Materials 370
- 3.17.1.6.4 Market players 373
- 3.17.1.6.5 Roadmap 375
- 3.17.1.6.6 Swot analysis 376
- 3.17.1.7 Trapped Ion Qubits 376
- 3.17.1.7.1 Technology description 376
- 3.17.1.7.2 Initialization, Manipulation, and Readout 378
- 3.17.1.7.3 Hardware 379
- 3.17.1.7.4 Materials 380
- 3.17.1.7.4.1 Integrating optical components 381
- 3.17.1.7.4.2 Incorporating high-quality mirrors and optical cavities 381
- 3.17.1.7.4.3 Engineering the vacuum packaging and encapsulation 381
- 3.17.1.7.4.4 Removal of waste heat 382
- 3.17.1.7.5 Roadmap 382
- 3.17.1.7.6 Market players 383
- 3.17.1.7.7 Swot analysis 384
- 3.17.1.8 Silicon Spin Qubits 384
- 3.17.1.8.1 Technology description 384
- 3.17.1.8.2 Initialization, Manipulation, and Readout 385
- 3.17.1.8.3 Integration with CMOS Electronics 386
- 3.17.1.8.4 Quantum dots 387
- 3.17.1.8.5 Market players 390
- 3.17.1.8.6 SWOT analysis 390
- 3.17.1.9 Topological Qubits 391
- 3.17.1.9.1 Technology description 391
- 3.17.1.9.1.1 Cryogenic cooling 392
- 3.17.1.9.2 Initialization, Manipulation, and Readout of Topological Qubits 393
- 3.17.1.9.3 Scaling topological qubit arrays 394
- 3.17.1.9.4 Roadmap 394
- 3.17.1.9.5 Market players 395
- 3.17.1.9.6 SWOT analysis 396
- 3.17.1.9.1 Technology description 391
- 3.17.1.10 Photonic Qubits 396
- 3.17.1.10.1 Photonics for Quantum Computing 396
- 3.17.1.10.2 Technology description 397
- 3.17.1.10.3 Initialization, Manipulation, and Readout 400
- 3.17.1.10.4 Hardware Architecture 401
- 3.17.1.10.5 Roadmap 401
- 3.17.1.10.6 Market players 401
- 3.17.1.10.7 Swot analysis 403
- 3.17.1.11 Neutral atom (cold atom) qubits 404
- 3.17.1.11.1 Technology description 404
- 3.17.1.11.2 Market players 406
- 3.17.1.11.3 Swot analysis 408
- 3.17.1.12 Diamond-defect qubits 408
- 3.17.1.12.1 Technology description 408
- 3.17.1.12.2 SWOT analysis 412
- 3.17.1.12.3 Market players 412
- 3.17.1.13 Quantum annealers 413
- 3.17.1.13.1 Technology description 413
- 3.17.1.13.2 Initialization and Readout of Quantum Annealers 414
- 3.17.1.13.3 Solving combinatorial optimization 416
- 3.17.1.13.4 Applications 417
- 3.17.1.13.5 Roadmap 418
- 3.17.1.13.6 SWOT analysis 418
- 3.17.1.13.7 Market players 419
- 3.17.2 Architectural Approaches 420
- 3.17.1 Qubit Technologies 364
- 3.18 Quantum Computing Infrastructure 420
- 3.18.1 Infrastructure Requirements 421
- 3.18.2 Hardware agnostic platforms 421
- 3.18.3 Cryostats 422
- 3.18.4 Qubit readout 423
- 3.19 Quantum Computing Software 423
- 3.19.1 Technology description 424
- 3.19.2 Cloud-based services- QCaaS (Quantum Computing as a Service) 424
- 3.19.3 Market players 425
- 3.20 Markets and Applications for Quantum Computing. 428
- 3.20.1 Pharmaceuticals 429
- 3.20.1.1 Market overview 429
- 3.20.1.1.1 Drug discovery 430
- 3.20.1.1.2 Diagnostics 430
- 3.20.1.1.3 Molecular simulations 430
- 3.20.1.1.4 Genomics 431
- 3.20.1.1.5 Proteins and RNA folding 431
- 3.20.1.2 Market players 432
- 3.20.1.1 Market overview 429
- 3.20.2 Chemicals 432
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- 3.20.2.1.1 Market overview 432
- 3.20.2.2 Market players 433
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- 3.20.3 Transportation 433
- 3.20.3.1 Market overview 433
- 3.20.3.2 Market players 435
- 3.20.4 Financial services 436
- 3.20.4.1 Market overview 437
- 3.20.4.2 Market players 438
- 3.20.5 Automotive 439
- 3.20.5.1 Market overview 439
- 3.20.5.2 Market players 440
- 3.20.6 Other Crossover Technologies 441
- 3.20.6.1 Quantum chemistry and AI 441
- 3.20.6.1.1 Technology description 441
- 3.20.6.1.2 Applications 441
- 3.20.6.1.3 Market players 442
- 3.20.6.2 Quantum Communications 442
- 3.20.6.2.1 Technology description 442
- 3.20.6.2.2 Types 443
- 3.20.6.2.3 Applications 443
- 3.20.6.2.4 Market players 444
- 3.20.6.3 Quantum Sensors 447
- 3.20.6.3.1 Technology description 447
- 3.20.6.3.2 Applications 448
- 3.20.6.3.3 Companies 448
- 3.20.6.1 Quantum chemistry and AI 441
- 3.20.7 Quantum Computing and AI 452
- 3.20.7.1 Introduction 452
- 3.20.7.2 Applications 453
- 3.20.7.3 AI Interfacing with Quantum Computing 453
- 3.20.7.4 AI in Classical Computing 454
- 3.20.7.5 Market Players and Strategies 455
- 3.20.7.6 Relationship between quantum computing and artificial intelligence 456
- 3.20.8 Materials for Quantum Computing 457
- 3.20.8.1 Superconductors 458
- 3.20.8.1.1 Overview 458
- 3.20.8.1.2 Types and Properties 459
- 3.20.8.1.3 Temperature (Tc) of superconducting materials 459
- 3.20.8.1.4 Superconducting Nanowire Single Photon Detectors (SNSPD) 460
- 3.20.8.1.5 Kinetic Inductance Detectors (KIDs) 461
- 3.20.8.1.6 Transition Edge Sensors (TES) 461
- 3.20.8.1.7 Opportunities 462
- 3.20.8.2 Photonics, Silicon Photonics and Optical Components 463
- 3.20.8.2.1 Overview 463
- 3.20.8.2.2 Types and Properties 463
- 3.20.8.2.3 Vertical-Cavity Surface-Emitting Lasers (VCSELs) 464
- 3.20.8.2.4 Alkali azides 464
- 3.20.8.2.5 Optical Fiber and Quantum Interconnects 464
- 3.20.8.2.6 Semiconductor Single Photon Detectors 465
- 3.20.8.2.7 Opportunities 465
- 3.20.8.3 Nanomaterials 466
- 3.20.8.3.1 Overview 466
- 3.20.8.3.2 Types and Properties 466
- 3.20.8.3.2.1 2D Materials 467
- 3.20.8.3.2.2 Transition metal dichalcogenide quantum dots 467
- 3.20.8.3.2.3 Graphene Membranes 467
- 3.20.8.3.2.4 2.5D materials 468
- 3.20.8.3.2.5 Carbon nanotubes 468
- 3.20.8.3.2.5.1 Single Walled Carbon Nanotubes 468
- 3.20.8.3.2.5.2 Boron Nitride Nanotubes 469
- 3.20.8.3.2.6 Diamond 469
- 3.20.8.3.2.7 Metal-Organic Frameworks (MOFs) 470
- 3.20.8.3.3 Opportunities 470
- 3.20.8.1 Superconductors 458
- 3.20.1 Pharmaceuticals 429
- 3.20.9 Market Analysis 472
- 3.20.9.1 Key industry players 472
- 3.20.9.1.1 Start-ups 472
- 3.20.9.1.2 Tech Giants 472
- 3.20.9.1.3 National Initiatives 473
- 3.20.9.1 Key industry players 472
- 3.21 Quantum Computing Company Profiles 475 (218 company profiles)
4 EDGE AI PROCESSORS 617
- 4.1 Market overview 617
- 4.1.1 Market Size 617
- 4.1.2 Geographic Market 618
- 4.1.3 Technology Architecture Evolution Timeline 618
- 4.2 Edge AI Technology Architectures 618
- 4.2.1 Neural Processing Unit (NPU) Implementations 618
- 4.2.2 System-on-Chip (SoC) Integration Strategies 619
- 4.2.3 Power Efficiency and Performance Optimization 619
- 4.2.3.1 Sub-7W Thermal Envelope Requirements 619
- 4.2.3.2 TOPS/W Optimization Methodologies 619
- 4.2.3.3 Model Compression and Quantization 620
- 4.2.4 Analog Computing and In-Memory Processing 620
- 4.2.5 Dedicated Neural Processing Unit Architectures 621
- 4.2.6 GPU-Based Edge Solutions vs. Specialized DPUs 621
- 4.3 Application Market Analysis 621
- 4.3.1 Industrial IoT and Manufacturing Applications 622
- 4.3.1.1 Predictive Maintenance Systems 622
- 4.3.1.2 Quality Control and Inspection 622
- 4.3.1.3 Real-time Analytics and Optimization 622
- 4.3.2 Smartphone and Mobile Device Integration 623
- 4.3.2.1 AI-Capable CPU Integration 623
- 4.3.2.2 Specialized AI Accelerator Implementation 623
- 4.3.2.3 Always-On Processing Capabilities 623
- 4.3.3 Automotive and Transportation Systems 624
- 4.3.4 Smart Cities and Infrastructure Applications 624
- 4.3.5 Healthcare and Wearable Device Integration 624
- 4.3.6 Consumer Electronics and Home Automation 624
- 4.3.1 Industrial IoT and Manufacturing Applications 622
- 4.4 Competitive Landscape and Market Players 625
- 4.4.1 Established Semiconductor Giants 625
- 4.4.1.1 NVIDIA 625
- 4.4.1.2 Intel 625
- 4.4.1.3 Qualcomm 625
- 4.4.1.4 Xilinx 626
- 4.4.2 AI-Focused Startup Companies 626
- 4.4.2.1 Mythic 626
- 4.4.2.2 Syntiant 627
- 4.4.2.3 Kneron 627
- 4.4.2.4 DeepX 627
- 4.4.3 Cloud Provider Edge Solutions 628
- 4.4.3.1 Google Edge TPU 628
- 4.4.3.2 AWS Inferentia 628
- 4.4.1 Established Semiconductor Giants 625
- 4.5 Market Drivers and Technology Trends 628
- 4.5.1 Latency Requirements and Real-Time Processing Demands 628
- 4.5.2 Data Privacy and Security Imperative Analysis 629
- 4.5.3 Bandwidth Limitation and Connectivity Challenge Solutions 629
- 4.5.4 IoT Device Proliferation Impact Assessment 630
- 4.5.5 Edge-Cloud Computing Architecture Evolution 630
- 4.5.6 Power Efficiency and Battery Life Optimization 630
- 4.5.7 Autonomous System Processing Requirements 630
- 4.6 Edge AI Processor Company Profiles 632 (49 company profiles)
5 REFERENCES 687
List of Tables
- Table 1. Overview of the neuromorphic computing and sensing market. 45
- Table 2. Global market for neuromorphic computing and sensors, 2024-2036 (Millions USD). 46
- Table 3. Neuromorphic Computing and Sensing Market Segmentation 2020-2036. 47
- Table 4. Key market trends and growth drivers. 51
- Table 5. Market challenges and limitations. 52
- Table 6. Emerging Trends in Neuromorphic Computing and Sensing 52
- Table 7. Neuromorphic computing and generative AI strategies. 65
- Table 8. Funding and investments in neuromorphic computing and sensing. 70
- Table 9. Strategic Partnerships and Collaborations in the Neuromorphic Industry. 71
- Table 10. Regulatory and Ethical Considerations of neuromorphic computing & sensing. 73
- Table 11. Main neuromorphic sensing approaches. 75
- Table 12. Main Neuromorphic Computing Approaches. 76
- Table 13. Resistive Non-Volatile Memory (NVM) Technologies. 78
- Table 14. Advanced Memristive Materials, Devices, and Novel Computation Concepts. 79
- Table 15. Fabrication Processes for Neuromorphic Systems. 80
- Table 16. Key Material Suppliers and Dependencies. 80
- Table 17. Comparison with traditional computing and sensing approaches. 82
- Table 18. Comparison between neuromorphic and quantum computing. 83
- Table 19. Key features and advantages of neuromorphic computing and sensing. 83
- Table 20. Markets and Applications of Neuromorphic Computing and Sensing 85
- Table 21. Von neumann architecture versus neuromorphic architecture. 94
- Table 22. Types of SNNs and their characteristics. 97
- Table 23. Advantages and limitations of SNNs. 97
- Table 24. Conventional memory approaches (SRAM, DRAM). 98
- Table 25. Emerging non-volatile memory (eNVM) technologies. 98
- Table 26. Hybrid memory architectures. 101
- Table 27. Neuromorphic accelerators and co-processors. 104
- Table 28. Neuromorphic programming languages and tools. 105
- Table 29. Neuromorphic simulation platforms and frameworks. 105
- Table 30. Neuromorphic algorithm libraries and repositories. 106
- Table 31. Neuromorphic software development kits (SDKs). 107
- Table 32. Hybrid sensing approaches. 113
- Table 33. Advantages and challenges of hybrid sensing. 115
- Table 34. Bio-inspired sensor designs and materials. 117
- Table 35. Signal Processing and Feature Extraction Techniques. 117
- Table 36. Applications of neuromorphic computing and sensing in smartphones and wearables-advantages, limitations and likelihood of market penetration by application. 123
- Table 37. Applications of neuromorphic computing and sensing in smart homes and IoT devices- advantages, limitations and likelihood of market penetration by application. 123
- Table 38. Applications of neuromorphic computing and sensing in Consumer Health and Wellness-- advantages, limitations and likelihood of market penetration by application. 124
- Table 39. Applications of neuromorphic computing and sensing in Entertainment and Gaming-advantages, limitations and likelihood of market penetration by application. 125
- Table 40. Global Neuromorphic Computing and Sensing Market Size and Forecast, in Mobile and Consumer Applications (2024-2036), millions USD. 126
- Table 41. Applications of neuromorphic computing and sensing in Advanced Driver Assistance Systems (ADAS) -advantages, limitations and likelihood of market penetration by application. 129
- Table 42. Applications of neuromorphic computing and sensing in Autonomous Vehicles and Robotaxis-advantages, limitations and likelihood of market penetration by application. 132
- Table 43. Applications of neuromorphic computing and sensing in Vehicle infotainment and user experience-advantages, limitations and likelihood of market penetration by application. 133
- Table 44. Applications of neuromorphic computing and sensing in Vehicle infotainment and user experience-advantages, limitations and likelihood of market penetration by application. 134
- Table 45. Global Neuromorphic Computing and Sensing Market Size and Forecast, in Automotive and Transportation (2024-2036), millions USD. 135
- Table 46. Applications of neuromorphic computing and sensing in Industrial IoT and smart factories-advantages, limitations and likelihood of market penetration by application. 137
- Table 47. Applications of neuromorphic computing and sensing in Industrial IoT and smart factories-advantages, limitations and likelihood of market penetration by application. 138
- Table 48. Applications of neuromorphic computing and sensing in Quality control and inspection-advantages, limitations and likelihood of market penetration by application. 139
- Table 49. Applications of neuromorphic computing and sensing in Logistics and supply chain optimization-advantages, limitations and likelihood of market penetration by application. 140
- Table 50. Global Neuromorphic Computing and Sensing Market Size and Forecast, in Industrial and Manufacturing (2024-2036), millions USD. 141
- Table 51. Applications of neuromorphic computing and sensing in medical imaging and diagnostics-advantages, limitations and likelihood of market penetration by application. 144
- Table 52. Applications of neuromorphic computing and sensing in Wearable health monitoring devices-advantages, limitations and likelihood of market penetration by application. 145
- Table 53. Applications of neuromorphic computing and sensing in Personalized medicine and drug discovery-advantages, limitations and likelihood of market penetration by application. 147
- Table 54. Applications of neuromorphic computing and sensing in Assistive technologies and prosthetics -advantages, limitations and likelihood of market penetration by application. 148
- Table 55. Global Neuromorphic Computing and Sensing Market Size and Forecast, in Healthcare and Medical Devices (2024-2036), millions USD. 149
- Table 56. Applications of neuromorphic computing and sensing in Unmanned Aerial Vehicles (UAVs) and drones-advantages, limitations and likelihood of market penetration by application. 152
- Table 57. Applications of neuromorphic computing and sensing in Satellite imaging and remote sensing:-advantages, limitations and likelihood of market penetration by application. 153
- Table 58. Applications of neuromorphic computing and sensing in Missile guidance and target recognition -advantages, limitations and likelihood of market penetration by application. 155
- Table 59. Applications of neuromorphic computing and sensing in Cybersecurity and threat detection -advantages, limitations and likelihood of market penetration by application. 156
- Table 60. Global Neuromorphic Computing and Sensing Market Size and Forecast, in Aerospace and Defence (2024-2036), millions USD. 156
- Table 61. Applications of neuromorphic computing and sensing in High-performance computing and scientific simulations-advantages, limitations and likelihood of market penetration by application. 159
- Table 62. Applications of neuromorphic computing and sensing in Big data analytics and machine learning-advantages, limitations and likelihood of market penetration by application. 160
- Table 63. Applications of neuromorphic computing and sensing in Cloud-based AI services and platforms -advantages, limitations and likelihood of market penetration by application. 161
- Table 64. Applications of neuromorphic computing and sensing in Energy-efficient datacenter infrastructure-advantages, limitations and likelihood of market penetration by application. 163
- Table 65. Global Neuromorphic Computing and Sensing Market Size and Forecast, in Datacenters and Cloud Services (2024-2036), millions USD. 163
- Table 66. Market revenues for neuromorphic computing and sensing by region from 2024-2036 in millions USD. 165
- Table 71. Neuromorphic Chip Manufacturers and Their Product Offerings. 167
- Table 72. Neuromorphic Sensor Manufacturers and Their Product Offerings. 168
- Table 73. Emerging Non-Volatile Memory (eNVM) Manufacturers and Their Product Offerings. 168
- Table 74. Neuromorphic Software and Framework Providers and Their Solutions. 169
- Table 75. Key Research Institutions and Academia in Neuromorphic Computing and Sensing. 169
- Table 76. Competing Emerging Technologies for Neuromorphic Computing and Sensing. 172
- Table 77. Technology Substitution Analysis. 176
- Table 78. Comparative Advantages/Disadvantages. 177
- Table 79. Evolution of Apple Neural Engine. 189
- Table 80. Dynex subscription plans. 210
- Table 81. First and second quantum revolutions. 297
- Table 82. Applications for Quantum Computing. 298
- Table 83. Quantum Computing Business Models. 299
- Table 84. Quantum Computing Investments 2024-2025. 303
- Table 85. Global government initiatives in quantum technologies. 310
- Table 86. Quantum computing industry developments 2023-2025. 316
- Table 87. End Use Markets and Benefits of Quantum Computing 322
- Table 88. Business Models in Quantum Computing. 324
- Table 89. Market challenges in quantum computing. 326
- Table 90. Quantum computing value chain. 329
- Table 91. Global market for quantum computing-by category, 2023-2046 (billions USD). 331
- Table 92. Global Revenue from Quantum Computing Hardware (Billions USD). 332
- Table 93. Quantum Computer Installed Base Forecast (2025-2046)-Units. 333
- Table 94. Forecast for Installed Base of Quantum Computers by Technology, 2025-2046-Units. 335
- Table 95. Quantum Computer Pricing Forecast (Millions USD) by system type. 336
- Table 96. Forecast for Quantum Computer Pricing 2026-2046 by system category. 336
- Table 97. Forecast for Annual Revenue from Quantum Computer Hardware Sales, 2025-2046 (billions USD). 337
- Table 98. Forecast for Annual Revenue from Quantum Computing Hardware Sales (by Technology), 2025-2046. 338
- Table 99. Install Base of Quantum Computers vs Global Number of Data Centres to 2046. 339
- Table 100. Forecast for Volume of Quantum Computers Deployed in Data Centres, 2025-2046 340
- Table 101. Quantum Computing Approaches. 341
- Table 102. Quantum Computer Architectures. 342
- Table 103. Applications for quantum computing 343
- Table 104. Comparison of classical versus quantum computing. 345
- Table 105. Key quantum mechanical phenomena utilized in quantum computing. 345
- Table 106. Types of quantum computers. 346
- Table 107. Comparison of Quantum Computer Technologies. 348
- Table 108. Comparative analysis of quantum computing with classical computing, quantum-inspired computing, and neuromorphic computing. 351
- Table 109. Different computing paradigms beyond conventional CMOS. 352
- Table 110. Applications of quantum algorithms. 358
- Table 111. QML approaches. 359
- Table 112. Commercial Readiness Level by Technology. 363
- Table 113. Qubit Performance Benchmarking. 364
- Table 114. Coherence times for different qubit implementations. 365
- Table 115. Quantum Computer Benchmarking Metrics. 365
- Table 116. Logical Qubit Progress. 366
- Table 117. Superconducting Materials Properties. 371
- Table 118. Superconducting qubit market players. 374
- Table 119. Initialization, manipulation and readout for trapped ion quantum computers. 378
- Table 120. Ion trap market players. 383
- Table 121. Initialization, manipulation, and readout methods for silicon-spin qubits. 388
- Table 122. Silicon spin qubits market players. 390
- Table 123. Initialization, manipulation and readout of topological qubits. 392
- Table 124. Topological qubits market players. 395
- Table 125. Pros and cons of photon qubits. 398
- Table 126. Comparison of photon polarization and squeezed states. 398
- Table 127. Initialization, manipulation and readout of photonic platform quantum computers. 399
- Table 128. Photonic qubit market players. 402
- Table 129. Initialization, manipulation and readout for neutral-atom quantum computers. 405
- Table 130. Pros and cons of cold atoms quantum computers and simulators 406
- Table 131. Neural atom qubit market players. 407
- Table 132. Initialization, manipulation and readout of Diamond-Defect Spin-Based Computing. 409
- Table 133. Key materials for developing diamond-defect spin-based quantum computers. 410
- Table 134. Diamond-defect qubits market players. 413
- Table 135. Commercial Applications for Quantum Annealing. 414
- Table 136. Pros and cons of quantum annealers. 415
- Table 137. Quantum annealers market players. 419
- Table 138. Quantum Computing Infrastructure Requirements. 421
- Table 139. Modular vs. Single Core. 422
- Table 140. Quantum computing software market players. 425
- Table 141. Markets and applications for quantum computing. 428
- Table 142. Total Addressable Market (TAM) for Quantum Computing. 429
- Table 143. Market players in quantum technologies for pharmaceuticals. 432
- Table 144. Market players in quantum computing for chemicals. 433
- Table 145. Automotive applications of quantum computing, 434
- Table 146. Market players in quantum computing for transportation. 436
- Table 147. Quantum Computing in Finance. 438
- Table 148. Market players in quantum computing for financial services 438
- Table 149. Automotive Applications of Quantum Computing. 439
- Table 150. Applications in quantum chemistry and artificial intelligence (AI). 441
- Table 151. Market players in quantum chemistry and AI. 442
- Table 152. Main types of quantum communications. 443
- Table 153. Applications in quantum communications. 443
- Table 154. Market players in quantum communications. 444
- Table 155. Comparison between classical and quantum sensors. 447
- Table 156. Applications in quantum sensors. 448
- Table 157. Companies developing high-precision quantum time measurement 448
- Table 158. Materials in Quantum Technology. 457
- Table 159. Superconductor Value Chain in Quantum Technology. 458
- Table 160. Superconductors in quantum technology. 459
- Table 161. SNSPD Players companies. 460
- Table 162. Single Photon Detector Technology Comparison. 462
- Table 163. Photonics, silicon photonics and optics in quantum technology. 463
- Table 164. Materials for Quantum Photonic Applications. 465
- Table 165. Nanomaterials in quantum technology. 466
- Table 166. Synthetic Diamond Value Chain for Quantum Technology. 469
- Table 169. Platform-Specific Revenue Analysis. 617
- Table 170. TOPS/W Optimization Methodologies. 620
- Table 171. AMD AI chip range. 632
- Table 172. Applications of CV3-AD685 in autonomous driving. 637
- Table 173. Evolution of Apple Neural Engine. 640
List of Figures
- Figure 1. Global market for neuromorphic computing and sensors, 2023-2036 (Millions USD). 47
- Figure 2. Neuromorphic Computing and Sensing Market Segmentation 2020-2036. 48
- Figure 3. Neuromorphic computing and sensing technology roadmap. 64
- Figure 4. Market value chain for neuromorphic computing and sensing. 66
- Figure 5. Neuromorphic computing and sensing market map. 69
- Figure 6. Evolution of the main hardware technologies for neuromorphic computing. 77
- Figure 7. Key materials in NVM technology for neuromorphic computing. 79
- Figure 8. Advanced memristive materials for neuromorphic computing. 79
- Figure 9. Neural networks in autonomous vehicles. 87
- Figure 10. Concept illustration of centralized and decentralized intelligence in robotics. 90
- Figure 11. Neuromorphic programmable robot with dynamic vision developed by SynSense. 91
- Figure 12. Comparison of High-Level Conventional and Neuromorphic Memory Architectures. 95
- Figure 13. Spiking Neural Network (SNN) Structure and Operation. 96
- Figure 14. IBM TrueNorth Processor. 102
- Figure 15. Event-Based Sensor Operation and Data Processing Flow. 108
- Figure 16. Conventional sensor vs. Event-based sensor. 109
- Figure 17. Operation of neuromorphic vision sensors. 110
- Figure 18. Cyranose 320 Electronic Nose. 111
- Figure 19. Alpix-Pilatus platform, an integrated event-based vision sensor that combines static and dynamic information. 113
- Figure 20. Technology roadmap for neuromorphic computing and sensing in mobile and consumer applications. 122
- Figure 21. Global Neuromorphic Computing and Sensing Market Size and Forecast, in Mobile and Consumer Applications (2024-2036), millions USD. 127
- Figure 22. Technology Roadmap for Neuromorphic Computing and Sensing in Automotive and Transportation. 128
- Figure 23. Sensors used by the ADAS (Advanced Driver-Assistance System). 129
- Figure 24. Enabling technologies for autonomous vehicles. 131
- Figure 25. Autonomous Vehicle Architecture with Neuromorphic Computing and Sensing. 132
- Figure 26. Global Neuromorphic Computing and Sensing Market Size and Forecast, in Automotive and Transportation (2024-2036), millions USD. 135
- Figure 27. Technology roadmap for neuromorphic computing and sensing in industrial and manufacturing. 136
- Figure 28. Global Neuromorphic Computing and Sensing Market Size and Forecast, in Industrial and Manufacturing (2024-2036), millions USD. 142
- Figure 29. Technology roadmap for neuromorphic computing and sensing in healthcare and medical devices. 143
- Figure 30. Wearable Medical Devices with Neuromorphic Computing and Sensing Capabilities. 145
- Figure 31. Flexible neuromorphic electronics for neuromorphic computing, humanoid robotics, and neuroprosthetics. 148
- Figure 32. Global Neuromorphic Computing and Sensing Market Size and Forecast, in Healthcare and Medical Devices (2024-2036), millions USD. 150
- Figure 33. Technology roadmap for neuromorphic computing and sensing in aerospace and defense. 151
- Figure 34. Schematic route from bio-inspired behaviours toward neuromorphic sensors for autonomous flight. 152
- Figure 35. Global Neuromorphic Computing and Sensing Market Size and Forecast, in Aerospace and Defence (2024-2036), millions USD. 157
- Figure 36. Technology roadmap for neuromorphic computing and sensing in Datacenters and Cloud Services. 158
- Figure 37. Global Neuromorphic Computing and Sensing Market Size and Forecast, in Datacenters and Cloud Services (2024-2036), millions USD. 164
- Figure 42. Neuromorphic Computing and Sensing Ecosystem Overview. 166
- Figure 43. Cerebas WSE-2. 201
- Figure 44. DeepX NPU DX-GEN1. 208
- Figure 45. Google TPU. 216
- Figure 46. GrAI VIP. 218
- Figure 47. Groq Tensor Streaming Processor (TSP). 219
- Figure 48. DVL-5000 neuromorphic laser profiler. 226
- Figure 49. Spiking Neural Processor 228
- Figure 50. TROOPER robot. 229
- Figure 51. 11th Gen Intel® Core™ S-Series. 231
- Figure 52. Intel Loihi 2 chip. 231
- Figure 53. Envise. 237
- Figure 54. Pentonic 2000. 240
- Figure 55. Azure Maia 100 and Cobalt 100 chips. 243
- Figure 56. Mythic MP10304 Quad-AMP PCIe Card. 246
- Figure 57. Nvidia H200 AI chip. 255
- Figure 58. Grace Hopper Superchip. 256
- Figure 59. Prophesee Metavision starter kit – AMD Kria KV260 and active marker LED board. 263
- Figure 60. Cloud AI 100. 265
- Figure 61. Overview of SpiNNaker2 architecture for the ”SpiNNcloud” cloud system and edge systems. 280
- Figure 62. Untether AI chip. 290
- Figure 63. Quantum computing development timeline. 299
- Figure 64. National quantum initiatives and funding 2015-2023. 309
- Figure 65. Quantum Computing Market Map. 315
- Figure 66. Roadmap for Quantum Commercial Readiness Level (QCRL) Over Time. 325
- Figure 67. SWOT analysis for quantum computing. 328
- Figure 68. Global market for quantum computing-Hardware, Software & Services, 2023-2046 (billions USD). 332
- Figure 69. Global Revenue from Quantum Computing Hardware (Billions USD). 333
- Figure 70. Quantum Computer Installed Base Forecast (2025-2046)-Units. 334
- Figure 71. Forecast for Installed Base of Quantum Computers by Technology, 2025-2046-Units. 335
- Figure 72. Forecast for Annual Revenue from Quantum Computer Hardware Sales, 2025-2046 (billions USD). 338
- Figure 73. Forecast for Annual Revenue from Quantum Computing Hardware Sales (by Technology), 2025-2046. 339
- Figure 74. An early design of an IBM 7-qubit chip based on superconducting technology. 343
- Figure 75. Various 2D to 3D chips integration techniques into chiplets. 344
- Figure 76. IBM Q System One quantum computer. 348
- Figure 77. Unconventional computing approaches. 352
- Figure 78. 53-qubit Sycamore processor. 360
- Figure 79. Interior of IBM quantum computing system. The quantum chip is located in the small dark square at center bottom. 363
- Figure 80. Superconducting quantum computer. 368
- Figure 81. Superconducting quantum computer schematic. 369
- Figure 82. Components and materials used in a superconducting qubit. 370
- Figure 83. Superconducting Hardware Roadmap. 373
- Figure 84. Superconducting Quantum Hardware Roadmap. 375
- Figure 85. SWOT analysis for superconducting quantum computers:. 376
- Figure 86. Ion-trap quantum computer. 377
- Figure 87. Various ways to trap ions 377
- Figure 88. Trapped-Ion Hardware Roadmap. 379
- Figure 89. Universal Quantum’s shuttling ion architecture in their Penning traps. 380
- Figure 90. Trapped-Ion Quantum Computing Hardware Roadmap. 382
- Figure 91. SWOT analysis for trapped-ion quantum computing. 384
- Figure 92. CMOS silicon spin qubit. 385
- Figure 93. Silicon quantum dot qubits. 388
- Figure 94. Silicon-Spin Hardware Roadmap. 389
- Figure 95. SWOT analysis for silicon spin quantum computers. 391
- Figure 96. Topological Quantum Computing Roadmap. 393
- Figure 97. Topological Quantum Computing Hardware Roadmap. 395
- Figure 98. SWOT analysis for topological qubits 396
- Figure 99. Photonic Quantum Hardware Roadmap. 401
- Figure 100 . SWOT analysis for photonic quantum computers. 403
- Figure 101. Neutral atoms (green dots) arranged in various configurations. 404
- Figure 102. Neutral Atom Hardware Roadmap. 406
- Figure 103. SWOT analysis for neutral-atom quantum computers. 408
- Figure 104. NV center components. 409
- Figure 105. Diamond Defect Supply Chain. 411
- Figure 106. Diamond Defect Hardware Roadmap. 411
- Figure 107. SWOT analysis for diamond-defect quantum computers. 412
- Figure 108. D-Wave quantum annealer. 416
- Figure 109. Roadmap for Quantum Annealing Hardware. 418
- Figure 110. SWOT analysis for quantum annealers. 419
- Figure 111. Quantum software development platforms. 424
- Figure 112. Tech Giants quantum technologies activities. 473
- Figure 115. Archer-EPFL spin-resonance circuit. 482
- Figure 116. IBM Q System One quantum computer. 510
- Figure 117. ColdQuanta Quantum Core (left), Physics Station (middle) and the atoms control chip (right). 514
- Figure 118. Intel Tunnel Falls 12-qubit chip. 515
- Figure 119. IonQ's ion trap 516
- Figure 120. IonQ product portfolio. 517
- Figure 121. 20-qubit quantum computer. 518
- Figure 122. Maybell Big Fridge. 525
- Figure 123. PsiQuantum’s modularized quantum computing system networks. 547
- Figure 124. Conceptual illustration (left) and physical mockup (right, at OIST) of Qubitcore’s distributed ion-trap quantum computer, visualizing quantum entanglement via optical fiber links between traps. 566
- Figure 125. SemiQ first chip prototype. 596
- Figure 126. Toshiba QKD Development Timeline. 607
- Figure 127. Toshiba Quantum Key Distribution technology. 608
- Figure 128. AMD Radeon Instinct. 632
- Figure 129. AMD Ryzen 7040. 633
- Figure 130. Alveo V70. 633
- Figure 131. Versal Adaptive SOC. 633
- Figure 132. AMD’s MI300 chip. 634
- Figure 133. Cerebas WSE-2. 646
- Figure 134. DeepX NPU DX-GEN1. 648
- Figure 135. Google TPU. 653
- Figure 136. Colossus™ MK2 GC200 IPU. 655
- Figure 137. GreenWave’s GAP8 and GAP9 processors. 656
- Figure 138. 11th Gen Intel® Core™ S-Series. 662
- Figure 139. Pentonic 2000. 666
- Figure 140. Azure Maia 100 and Cobalt 100 chips. 668
- Figure 141. Mythic MP10304 Quad-AMP PCIe Card. 670
- Figure 142. Nvidia H200 AI chip. 673
- Figure 143. Grace Hopper Superchip. 674
- Figure 144. Cloud AI 100. 677
- Figure 145. MLSoC™. 681
- Figure 146. Grayskull. 683
The report includes these components:
- PDF report download/by email. Print edition also available.
- Comprehensive Excel spreadsheet of all data.
- Mid-year Update
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