Difference between revisions of "Category:NVIDIA Corporation"
Wikipatents (talk | contribs) (Created page with "'''Nvidia Corporation''' is a prominent technology company widely recognized for its innovations in the field of graphics processing units (GPUs) and artificial intelligence (...") |
Wikipatents (talk | contribs) |
||
(4 intermediate revisions by the same user not shown) | |||
Line 1: | Line 1: | ||
'''Nvidia Corporation''' is a prominent technology company widely recognized for its innovations in the field of graphics processing units (GPUs) and artificial intelligence (AI). Founded in 1993, Nvidia has become a key player in various high-tech industries, including gaming, professional visualization, data centers, and automotive markets. | '''Nvidia Corporation''' is a prominent technology company widely recognized for its innovations in the field of graphics processing units (GPUs) and artificial intelligence (AI). Founded in 1993, Nvidia has become a key player in various high-tech industries, including gaming, professional visualization, data centers, and automotive markets. | ||
+ | |||
+ | == NVIDIA Patent Applications in 2024 == | ||
+ | In 2024, NVIDIA has been actively filing patent applications across various technology areas. The following chart illustrates the number of patent applications filed by NVIDIA in different Cooperative Patent Classification (CPC) classes from January to May 2024. | ||
+ | |||
+ | [[File:Screenshot 2024-06-27 at 3.18.49 PM.png|thumb]] | ||
+ | |||
+ | |||
+ | === Key Observations === | ||
+ | '''Image Processing and Analysis''' (CPC G06T2207/20084): This category saw the highest number of applications, with a significant spike in May. | ||
+ | |||
+ | '''Neural Networks''' (CPC G06N3/08): Consistent application filings throughout the period, indicating NVIDIA's ongoing focus on machine learning technologies. | ||
+ | |||
+ | '''Computer Vision''' (CPC G06V10/82): Showed strong activity, particularly in February and March. | ||
+ | |||
+ | '''Graphics Processing''' (CPC G06T1/20): Experienced a substantial increase in applications in May. | ||
+ | |||
+ | '''Parallel Computing''' (CPC G06T1/60): After minimal activity in the first four months, saw a significant rise in May. | ||
+ | |||
+ | This suggests that NVIDIA is particularly invested in advancing technologies related to image processing, neural networks, and computer vision, with a recent emphasis on graphics processing and parallel computing capabilities. | ||
== History and Development == | == History and Development == | ||
Line 31: | Line 50: | ||
* [[:Category:G06F15|G06F15]]: Electric digital data processing | * [[:Category:G06F15|G06F15]]: Electric digital data processing | ||
* [[:Category:G06T15|G06T15]]: 3D or stereo imaging | * [[:Category:G06T15|G06T15]]: 3D or stereo imaging | ||
+ | |||
+ | |||
+ | ==What are the key factors behind Nvidia's success in the competitive tech industry?== | ||
+ | |||
+ | Nvidia's success in the competitive tech industry can be attributed to several key factors. First, the company has consistently focused on innovation, especially in the development of GPUs and AI technologies, which has allowed it to stay ahead of competitors. Nvidia's strategic investments in research and development have led to breakthrough products like the GeForce series and CUDA technology, which revolutionized computing performance. Additionally, Nvidia has effectively diversified its business ventures beyond gaming into data centers, professional visualization, and automotive industries, allowing for multiple revenue streams. The company's ability to form strategic partnerships and acquisitions has also played a crucial role in expanding its technology portfolio and market reach. Furthermore, Nvidia's patent strategy protects its innovations and gives it a competitive edge in the marketplace. Finally, Nvidia's strong corporate leadership and vision have guided the company through rapid technological changes and market challenges, maintaining its position as a leader in the tech industry. | ||
+ | |||
+ | |||
+ | ==How does Nvidia's CUDA technology impact the field of parallel computing?== | ||
+ | |||
+ | Nvidia's Compute Unified Device Architecture (CUDA) technology has had a profound impact on the field of parallel computing. Introduced in 2007, CUDA is a parallel computing platform and programming model that enables dramatic increases in computing performance by harnessing the power of the graphics processing unit (GPU). Prior to CUDA, GPUs were primarily used for graphics rendering. CUDA allowed developers to use GPUs for general purpose processing (GPGPU), making it possible to execute complex computational tasks more efficiently than traditional CPUs in certain scenarios. This capability has been particularly beneficial in areas requiring intense computational power, such as scientific research, simulation, and artificial intelligence. CUDA has democratized access to parallel computing, enabling researchers and developers to accelerate computing applications without needing specialized hardware. It has also spurred innovation across various fields, including bioinformatics, computational finance, and deep learning, contributing to advancements in drug discovery, financial modeling, and AI algorithms. Overall, CUDA has significantly expanded the applications of parallel computing, making it a cornerstone of modern computational science and engineering. | ||
+ | |||
+ | |||
+ | ==What challenges does Nvidia face in maintaining its market leadership in GPUs and AI?== | ||
+ | |||
+ | Nvidia faces several challenges in maintaining its market leadership in GPUs and AI. Firstly, the rapid pace of technological advancement requires continuous innovation and substantial investment in research and development to stay ahead of competitors. This includes developing new architectures, improving energy efficiency, and enhancing AI capabilities. Secondly, the competitive landscape is intensifying with existing companies like AMD and Intel expanding their GPU offerings, and new players entering the AI and machine learning market. Thirdly, Nvidia must navigate complex regulatory environments across different countries, especially with increasing scrutiny on data privacy and use of AI technologies. Additionally, supply chain disruptions, as seen with the global semiconductor shortage, pose significant risks to production timelines and product availability. Nvidia also faces challenges in diversifying its application areas and customer base, ensuring it can sustain growth beyond its traditional markets. Finally, as AI technologies become more pervasive, ethical and societal implications of AI applications, including autonomous driving and facial recognition, require careful consideration and management. | ||
+ | |||
+ | |||
+ | ==How has Nvidia's entry into the automotive industry and autonomous vehicles shaped its business strategy?== | ||
+ | |||
+ | Nvidia's entry into the automotive industry and the field of autonomous vehicles has significantly shaped its business strategy by diversifying its product offerings and opening new revenue streams. Recognizing the potential of AI and GPU technologies in transforming automotive applications, Nvidia has developed platforms like DRIVE for autonomous driving and AI cockpit solutions. This strategic move leverages Nvidia's strengths in AI, deep learning, and parallel computing, positioning the company as a key supplier of the technology underpinning autonomous vehicles and advanced driver-assistance systems (ADAS). Nvidia's automotive ventures have necessitated collaborations with car manufacturers, tech companies, and startups, expanding its ecosystem and fostering partnerships that integrate its technologies into vehicles. This shift towards automotive and AI has also influenced Nvidia's research and development focus, driving innovations in sensor processing, simulation, and data analysis crucial for autonomous driving. By entering the automotive industry, Nvidia is not just diversifying its portfolio but is also contributing to the advancement of autonomous vehicle technologies, which could have profound impacts on transportation, safety, and urban planning. | ||
+ | |||
+ | |||
+ | ==What role do collaborations and partnerships play in Nvidia's innovation strategy?== | ||
+ | |||
+ | Collaborations and partnerships play a pivotal role in Nvidia's innovation strategy, enabling the company to stay at the forefront of technological advancements and expand its market reach. Nvidia collaborates with a wide range of entities, including tech companies, academic institutions, research organizations, and industry consortia, to drive innovation and development in GPUs, AI, and parallel computing. These partnerships allow Nvidia to access diverse expertise and resources, accelerating the development of new technologies and solutions. For example, collaborations with academic institutions contribute to cutting-edge research in AI and computing, while partnerships with tech companies facilitate the integration of Nvidia's technologies into a broad spectrum of products and services. Additionally, Nvidia | ||
+ | |||
+ | ==See also== | ||
+ | |||
+ | [[NVIDIA Patent Applications and Strategy]] | ||
+ | |||
+ | |||
== External Links == | == External Links == | ||
Line 36: | Line 86: | ||
[[Category:G06F15]] | [[Category:G06F15]] | ||
+ | [[Category:G06T15]] | ||
[[Category:G06T15]] | [[Category:G06T15]] | ||
[[Category:Technology Companies]] | [[Category:Technology Companies]] | ||
Line 41: | Line 92: | ||
[[Category:Artificial Intelligence]] | [[Category:Artificial Intelligence]] | ||
[[Category:Graphics Processing Unit]] | [[Category:Graphics Processing Unit]] | ||
+ | [[Category:NVIDIA Corporation]] |
Latest revision as of 07:20, 27 June 2024
Nvidia Corporation is a prominent technology company widely recognized for its innovations in the field of graphics processing units (GPUs) and artificial intelligence (AI). Founded in 1993, Nvidia has become a key player in various high-tech industries, including gaming, professional visualization, data centers, and automotive markets.
Contents
- 1 NVIDIA Patent Applications in 2024
- 2 History and Development
- 3 Innovations and Patents
- 4 Business Ventures
- 5 Lesser-Known Innovators in GPU Technology
- 6 IPC Classifications
- 7 What are the key factors behind Nvidia's success in the competitive tech industry?
- 8 How does Nvidia's CUDA technology impact the field of parallel computing?
- 9 What challenges does Nvidia face in maintaining its market leadership in GPUs and AI?
- 10 How has Nvidia's entry into the automotive industry and autonomous vehicles shaped its business strategy?
- 11 What role do collaborations and partnerships play in Nvidia's innovation strategy?
- 12 See also
- 13 External Links
NVIDIA Patent Applications in 2024
In 2024, NVIDIA has been actively filing patent applications across various technology areas. The following chart illustrates the number of patent applications filed by NVIDIA in different Cooperative Patent Classification (CPC) classes from January to May 2024.
Key Observations
Image Processing and Analysis (CPC G06T2207/20084): This category saw the highest number of applications, with a significant spike in May.
Neural Networks (CPC G06N3/08): Consistent application filings throughout the period, indicating NVIDIA's ongoing focus on machine learning technologies.
Computer Vision (CPC G06V10/82): Showed strong activity, particularly in February and March.
Graphics Processing (CPC G06T1/20): Experienced a substantial increase in applications in May.
Parallel Computing (CPC G06T1/60): After minimal activity in the first four months, saw a significant rise in May.
This suggests that NVIDIA is particularly invested in advancing technologies related to image processing, neural networks, and computer vision, with a recent emphasis on graphics processing and parallel computing capabilities.
History and Development
Nvidia's journey began with a focus on GPU development for gaming but rapidly expanded into other areas. The company's invention of the GPU in 1999 sparked a revolution in graphics computing. This was followed by significant advancements in parallel computing, which greatly enhanced the processing capabilities of computers, particularly beneficial for complex tasks like 3D rendering and scientific computation.
Innovations and Patents
Nvidia has been at the forefront of several breakthroughs:
- GeForce Series: Nvidia's flagship product line, the GeForce series, revolutionized PC gaming with its advanced graphics rendering capabilities.
- CUDA Technology: The introduction of CUDA (Compute Unified Device Architecture) enabled dramatic increases in computing performance by harnessing the power of GPUs.
- Deep Learning and AI: Nvidia has made significant strides in AI and deep learning, with technologies like the Tesla and Tegra series, which are widely used in data centers and autonomous vehicles.
Nvidia's patent portfolio is extensive, showcasing a wide range of innovations in graphics processing, wireless communication, and AI. Notable patents include techniques for scalable graphics rendering and multi-threaded processing architectures.
Business Ventures
Nvidia's business ventures span across various sectors:
- Gaming: Continues to be a major focus, with the company consistently releasing new GPUs and technologies to enhance gaming experiences.
- Data Centers: Nvidia's GPUs are extensively used in data centers for their ability to handle massive computational tasks.
- Automotive Industry: Nvidia has ventured into the automotive industry, focusing on autonomous driving technologies and AI.
Lesser-Known Innovators in GPU Technology
While Nvidia is a giant in the GPU market, there are lesser-known companies making significant contributions, such as:
- Imagination Technologies: Specializing in multimedia, processor, and communication technologies.
- ARM Holdings: Known for its processor designs and architecture used in a multitude of devices.
IPC Classifications
Nvidia's innovations often fall under several IPC classifications, notably in areas related to processing architectures and graphics rendering. For instance:
What are the key factors behind Nvidia's success in the competitive tech industry?
Nvidia's success in the competitive tech industry can be attributed to several key factors. First, the company has consistently focused on innovation, especially in the development of GPUs and AI technologies, which has allowed it to stay ahead of competitors. Nvidia's strategic investments in research and development have led to breakthrough products like the GeForce series and CUDA technology, which revolutionized computing performance. Additionally, Nvidia has effectively diversified its business ventures beyond gaming into data centers, professional visualization, and automotive industries, allowing for multiple revenue streams. The company's ability to form strategic partnerships and acquisitions has also played a crucial role in expanding its technology portfolio and market reach. Furthermore, Nvidia's patent strategy protects its innovations and gives it a competitive edge in the marketplace. Finally, Nvidia's strong corporate leadership and vision have guided the company through rapid technological changes and market challenges, maintaining its position as a leader in the tech industry.
How does Nvidia's CUDA technology impact the field of parallel computing?
Nvidia's Compute Unified Device Architecture (CUDA) technology has had a profound impact on the field of parallel computing. Introduced in 2007, CUDA is a parallel computing platform and programming model that enables dramatic increases in computing performance by harnessing the power of the graphics processing unit (GPU). Prior to CUDA, GPUs were primarily used for graphics rendering. CUDA allowed developers to use GPUs for general purpose processing (GPGPU), making it possible to execute complex computational tasks more efficiently than traditional CPUs in certain scenarios. This capability has been particularly beneficial in areas requiring intense computational power, such as scientific research, simulation, and artificial intelligence. CUDA has democratized access to parallel computing, enabling researchers and developers to accelerate computing applications without needing specialized hardware. It has also spurred innovation across various fields, including bioinformatics, computational finance, and deep learning, contributing to advancements in drug discovery, financial modeling, and AI algorithms. Overall, CUDA has significantly expanded the applications of parallel computing, making it a cornerstone of modern computational science and engineering.
What challenges does Nvidia face in maintaining its market leadership in GPUs and AI?
Nvidia faces several challenges in maintaining its market leadership in GPUs and AI. Firstly, the rapid pace of technological advancement requires continuous innovation and substantial investment in research and development to stay ahead of competitors. This includes developing new architectures, improving energy efficiency, and enhancing AI capabilities. Secondly, the competitive landscape is intensifying with existing companies like AMD and Intel expanding their GPU offerings, and new players entering the AI and machine learning market. Thirdly, Nvidia must navigate complex regulatory environments across different countries, especially with increasing scrutiny on data privacy and use of AI technologies. Additionally, supply chain disruptions, as seen with the global semiconductor shortage, pose significant risks to production timelines and product availability. Nvidia also faces challenges in diversifying its application areas and customer base, ensuring it can sustain growth beyond its traditional markets. Finally, as AI technologies become more pervasive, ethical and societal implications of AI applications, including autonomous driving and facial recognition, require careful consideration and management.
How has Nvidia's entry into the automotive industry and autonomous vehicles shaped its business strategy?
Nvidia's entry into the automotive industry and the field of autonomous vehicles has significantly shaped its business strategy by diversifying its product offerings and opening new revenue streams. Recognizing the potential of AI and GPU technologies in transforming automotive applications, Nvidia has developed platforms like DRIVE for autonomous driving and AI cockpit solutions. This strategic move leverages Nvidia's strengths in AI, deep learning, and parallel computing, positioning the company as a key supplier of the technology underpinning autonomous vehicles and advanced driver-assistance systems (ADAS). Nvidia's automotive ventures have necessitated collaborations with car manufacturers, tech companies, and startups, expanding its ecosystem and fostering partnerships that integrate its technologies into vehicles. This shift towards automotive and AI has also influenced Nvidia's research and development focus, driving innovations in sensor processing, simulation, and data analysis crucial for autonomous driving. By entering the automotive industry, Nvidia is not just diversifying its portfolio but is also contributing to the advancement of autonomous vehicle technologies, which could have profound impacts on transportation, safety, and urban planning.
What role do collaborations and partnerships play in Nvidia's innovation strategy?
Collaborations and partnerships play a pivotal role in Nvidia's innovation strategy, enabling the company to stay at the forefront of technological advancements and expand its market reach. Nvidia collaborates with a wide range of entities, including tech companies, academic institutions, research organizations, and industry consortia, to drive innovation and development in GPUs, AI, and parallel computing. These partnerships allow Nvidia to access diverse expertise and resources, accelerating the development of new technologies and solutions. For example, collaborations with academic institutions contribute to cutting-edge research in AI and computing, while partnerships with tech companies facilitate the integration of Nvidia's technologies into a broad spectrum of products and services. Additionally, Nvidia
See also
NVIDIA Patent Applications and Strategy
External Links
Subcategories
This category has the following 2 subcategories, out of 2 total.
N
Pages in category "NVIDIA Corporation"
The following 200 pages are in this category, out of 401 total.
(previous page) (next page)1
- 17581550. IDENTIFYING OBJECTS USING NEURAL NETWORK-GENERATED DESCRIPTORS simplified abstract (NVIDIA Corporation)
- 17684314. APPLICATION PROGRAMMING INTERFACE TO DETERMINE WHETHER WIRELESS CELLS HAVE BEEN ALLOCATED simplified abstract (NVIDIA Corporation)
- 17709111. MULTICAST-REDUCTION ASSISTED BY NETWORK DEVICES simplified abstract (NVIDIA Corporation)
- 17737888. NEURAL NETWORK TRAINING BASED ON CAPABILITY simplified abstract (NVIDIA Corporation)
- 17748739. OBJECT ANIMATION USING NEURAL NETWORKS simplified abstract (NVIDIA Corporation)
- 17749936. APPLICATION PROGRAMMING INTERFACE TO MODIFY CODE simplified abstract (NVIDIA Corporation)
- 17832400. GENERATING MASK INFORMATION simplified abstract (NVIDIA Corporation)
- 17836810. PROGRAM CODE VERSIONS simplified abstract (NVIDIA Corporation)
- 17837354. TECHNIQUES TO MODIFY PROCESSOR PERFORMANCE simplified abstract (NVIDIA Corporation)
- 17846409. CHANGING PRECISION OF OPERANDS simplified abstract (NVIDIA Corporation)
- 17846866. NEURAL NETWORK-BASED LANGUAGE RESTRICTION simplified abstract (NVIDIA Corporation)
- 17848274. TECHNIQUES TO MODIFY PROCESSOR PERFORMANCE simplified abstract (NVIDIA Corporation)
- 17864989. COOLING DISTRIBUTION WITH ADAPTIVE CONTROL VALVES simplified abstract (NVIDIA Corporation)
- 17870481. INTELLIGENT TWO-PHASE PUMPED COOLING simplified abstract (NVIDIA Corporation)
- 17889279. WIRELESS BEAM SELECTION simplified abstract (NVIDIA Corporation)
- 17891908. REFERENCE SIGNAL CONFIGURATION INFORMATION TRANSMISSION simplified abstract (NVIDIA Corporation)
- 17895793. GENERATING TEXTURED MESHES USING ONE OR MORE NEURAL NETWORKS simplified abstract (NVIDIA Corporation)
- 17903959. FREQUENCY ADJUSTMENT FOR PROCESSORS simplified abstract (NVIDIA Corporation)
- 17932808. FLEXIBLE ONE-HOT DECODING LOGIC FOR CLOCK CONTROLS simplified abstract (NVIDIA Corporation)
- 17933911. TUNING OF CONTROL PARAMETERS FOR SIMULATION SYSTEMS AND APPLICATIONS simplified abstract (NVIDIA Corporation)
- 17945951. VIDEO GENERATION TECHNIQUES simplified abstract (NVIDIA Corporation)
- 17946093. REDUCING FALSE POSITIVE RAY TRAVERSAL IN A BOUNDING VOLUME HIERARCHY simplified abstract (NVIDIA Corporation)
- 17946193. REDUCING FALSE POSITIVE RAY TRAVERSAL USING POINT DEGENERATE CULLING simplified abstract (NVIDIA Corporation)
- 17946201. REDUCING FALSE POSITIVE RAY TRAVERSAL USING RAY CLIPPING simplified abstract (NVIDIA Corporation)
- 17946509. EFFICIENCY OF RAY-BOX TESTS simplified abstract (NVIDIA Corporation)
- 17947491. DIALOGUE SYSTEMS USING KNOWLEDGE BASES AND LANGUAGE MODELS FOR AUTOMOTIVE SYSTEMS AND APPLICATIONS simplified abstract (NVIDIA Corporation)
- 17947946. NATURAL LANGUAGE PROCESSING APPLICATIONS USING LARGE LANGUAGE MODELS simplified abstract (NVIDIA Corporation)
- 17948138. USING A NEURAL NETWORK TO GENERATE AN UPSAMPLED IMAGE simplified abstract (NVIDIA Corporation)
- 17948883. COMPONENT ANALYSIS FROM MULTIPLE MODALITIES IN AN INTERACTION ENVIRONMENT simplified abstract (NVIDIA Corporation)
- 17949153. VIDEO FRAME BLENDING simplified abstract (NVIDIA Corporation)
- 17949817. OFFLOADED TASK COMPUTATION ON NETWORK-ATTACHED CO-PROCESSORS simplified abstract (NVIDIA Corporation)
- 17949991. VIRTUAL AGENT TRAJECTORY PREDICTION AND TRAFFIC MODELING FOR MACHINE SIMULATION SYSTEMS AND APPLICATIONS simplified abstract (NVIDIA Corporation)
- 17955734. FRAME SELECTION FOR STREAMING APPLICATIONS simplified abstract (NVIDIA Corporation)
- 17955740. FRAME SELECTION FOR STREAMING APPLICATIONS simplified abstract (NVIDIA Corporation)
- 17955746. FRAME SELECTION FOR STREAMING APPLICATIONS simplified abstract (NVIDIA Corporation)
- 17955754. FEATURE RECONSTRUCTION USING NEURAL NETWORKS FOR VIDEO STREAMING SYSTEMS AND APPLICATIONS simplified abstract (NVIDIA Corporation)
- 17955841. HARDWARE-BASED FEATURE TRACKER FOR AUTONOMOUS SYSTEMS AND APPLICATIONS simplified abstract (NVIDIA Corporation)
- 17956638. IDENTIFYING IDLE-CORES IN DATA CENTERS USING MACHINE-LEARNING (ML) simplified abstract (NVIDIA Corporation)
- 17957423. ESTIMATING FLOW VECTORS FOR OCCLUDED CONTENT IN VIDEO SEQUENCES simplified abstract (NVIDIA Corporation)
- 17959934. IMAGE STITCHING WITH COLOR HARMONIZATION FOR SURROUND VIEW SYSTEMS AND APPLICATIONS simplified abstract (NVIDIA Corporation)
- 17959940. IMAGE STITCHING WITH COLOR HARMONIZATION OF DE-PROCESSED IMAGES FOR SURROUND VIEW SYSTEMS AND APPLICATIONS simplified abstract (NVIDIA Corporation)
- 17959958. AUTOMATIC SPEECH RECOGNITION WITH MULTI-FRAME BLANK DECODING USING NEURAL NETWORKS FOR CONVERSATIONAL AI SYSTEMS AND APPLICATIONS simplified abstract (NVIDIA Corporation)
- 17959982. GENERATING AND INTERPOSING INTERPOLATED FRAMES WITH APPLICATION FRAMES FOR DISPLAY simplified abstract (NVIDIA Corporation)
- 17960751. APPLICATION PROGRAMMING INTERFACE TO INDICATE A DEVICE IN AN ACCESS NETWORK TO SHARE INFORMATION WITH A DEVICE IN A TRANSPORT NETWORK simplified abstract (NVIDIA Corporation)
- 17960754. APPLICATION PROGRAMMING INTERFACE TO INDICATE A DEVICE IN AN ACCESS NETWORK TO SHARE INFORMATION WITH A DEVICE IN A CORE NETWORK simplified abstract (NVIDIA Corporation)
- 17960762. APPLICATION PROGRAMMING INTERFACE TO INDICATE A DEVICE IN A TRANSPORT NETWORK TO SHARE INFORMATION WITH A DEVICE IN AN ACCESS NETWORK simplified abstract (NVIDIA Corporation)
- 17960763. APPLICATION PROGRAMMING INTERFACE TO INDICATE A DEVICE IN A TRANSPORT NETWORK TO SHARE INFORMATION WITH A DEVICE IN A CORE NETWORK simplified abstract (NVIDIA Corporation)
- 17960764. APPLICATION PROGRAMMING INTERFACE TO INDICATE A DEVICE IN A CORE NETWORK TO SHARE INFORMATION WITH A DEVICE IN AN ACCESS NETWORK simplified abstract (NVIDIA Corporation)
- 17960770. APPLICATION PROGRAMMING INTERFACE TO INDICATE A DEVICE IN A CORE NETWORK TO SHARE INFORMATION WITH A DEVICE IN A TRANSPORT NETWORK simplified abstract (NVIDIA Corporation)
- 17960774. APPLICATION PROGRAMMING INTERFACE TO INDICATE A CONTROLLER TO A DEVICE IN AN ACCESS NETWORK simplified abstract (NVIDIA Corporation)
- 17960777. APPLICATION PROGRAMMING INTERFACE TO INDICATE A CONTROLLER TO A DEVICE IN A TRANSPORT NETWORK simplified abstract (NVIDIA Corporation)
- 17960784. APPLICATION PROGRAMMING INTERFACE TO INDICATE A CONTROLLER TO A DEVICE IN A CORE NETWORK simplified abstract (NVIDIA Corporation)
- 17960788. APPLICATION PROGRAMMING INTERFACE TO INDICATE A DEVICE IN AN ACCESS NETWORK TO BE STORED simplified abstract (NVIDIA Corporation)
- 17960793. APPLICATION PROGRAMMING INTERFACE TO INDICATE A DEVICE IN A TRANSPORT NETWORK TO BE STORED simplified abstract (NVIDIA Corporation)
- 17960796. APPLICATION PROGRAMMING INTERFACE TO INDICATE A DEVICE IN A CORE NETWORK TO BE STORED simplified abstract (NVIDIA Corporation)
- 17962248. SPEAKER IDENTIFICATION, VERIFICATION, AND DIARIZATION USING NEURAL NETWORKS FOR CONVERSATIONAL AI SYSTEMS AND APPLICATIONS simplified abstract (NVIDIA Corporation)
- 17964583. REVERSE EMBEDDED POWER STRUCTURE FOR GRAPHICAL PROCESSING UNIT CHIPS AND SYSTEM-ON-CHIP DEVICE PACKAGES simplified abstract (NVIDIA Corporation)
- 17969514. IMAGE STITCHING WITH SACCADE-BASED CONTROL OF DYNAMIC SEAM PLACEMENT FOR SURROUND VIEW VISUALIZATION simplified abstract (NVIDIA Corporation)
- 17984590. SYNTHETIC SPEECH GENERATION FOR CONVERSATIONAL AI SYSTEMS AND APPLICATIONS simplified abstract (NVIDIA Corporation)
- 17987109. FRACTIONALIZED TRANSFERS OF SENSOR DATA FOR STREAMING AND LATENCY-SENSITIVE APPLICATIONS simplified abstract (NVIDIA Corporation)
- 17988438. SELECTING SOLID STATE DEVICES FOR DATA STORAGE simplified abstract (NVIDIA Corporation)
- 18007867. SYNTHETIC AUDIO-DRIVEN BODY ANIMATION USING VOICE TEMPO simplified abstract (NVIDIA Corporation)
- 18048952. ASYNCHRONOUS IN-SYSTEM TESTING FOR AUTONOMOUS SYSTEMS AND APPLICATIONS simplified abstract (NVIDIA Corporation)
- 18051114. ALLOCATING RESPONSIBILITY FOR AUTONOMOUS AND SEMI-AUTONOMOUS MACHINE INTERACTIONS AND APPLICATIONS simplified abstract (NVIDIA Corporation)
- 18055047. DUAL PORT DUAL POWER RAIL MEMORY ARCHITECTURE simplified abstract (NVIDIA Corporation)
- 18055788. RESOURCE PREDICTION FOR WORKLOADS simplified abstract (NVIDIA Corporation)
- 18056158. PHYSICALLY UNCLONABLE CELL USING DUAL-INTERLOCKING AND ERROR CORRECTION TECHNIQUES simplified abstract (NVIDIA Corporation)
- 18058692. CHANNEL ESTIMATION USING ARTIFICIAL INTELLIGENCE simplified abstract (NVIDIA Corporation)
- 18060376. SENSOR FUSION USING ULTRASONIC SENSORS FOR AUTONOMOUS SYSTEMS AND APPLICATIONS simplified abstract (NVIDIA Corporation)
- 18060444. SENSOR FUSION USING ULTRASONIC SENSORS FOR AUTONOMOUS SYSTEMS AND APPLICATIONS simplified abstract (NVIDIA Corporation)
- 18060498. SIMULATING QUANTUM COMPUTING CIRCUITS USING KRONECKER FACTORIZATION simplified abstract (NVIDIA Corporation)
- 18066127. ALLOCATING RADIO RESOURCES USING ARTIFICIAL INTELLIGENCE simplified abstract (NVIDIA Corporation)
- 18070084. APPLICATION PROGRAMMING INTERFACE TO CAUSE PERFORMANCE OF ACCELERATOR OPERATIONS simplified abstract (NVIDIA Corporation)
- 18070148. APPLICATION PROGRAMMING INTERFACE TO INDICATE ACCELERATOR ERROR HANDLERS simplified abstract (NVIDIA Corporation)
- 18070156. APPLICATION PROGRAMMING INTERFACE TO INDICATE STORAGE OF ACCELERATOR ERRORS simplified abstract (NVIDIA Corporation)
- 18070180. APPLICATION PROGRAMMING INTERFACE TO TRANSFER INFORMATION BETWEEN ACCELERATOR MEMORY simplified abstract (NVIDIA Corporation)
- 18081547. APPLICATION PROGRAMMING INTERFACE TO PROVIDE MEMORY TRANSACTION INFORMATION simplified abstract (NVIDIA Corporation)
- 18081550. APPLICATION PROGRAMMING INTERFACE TO CHECK MEMORY TRANSACTION INFORMATION simplified abstract (NVIDIA Corporation)
- 18086457. APPLICATION PROGRAMMING INTERFACE TO INDICATE IMAGE-TO-COLUMN TRANSFORMATION simplified abstract (NVIDIA Corporation)
- 18086464. APPLICATION PROGRAMMING INTERFACE TO TRANSLATE A TENSOR simplified abstract (NVIDIA Corporation)
- 18086469. APPLICATION PROGRAMMING INTERFACE TO GENERATE A TENSOR ACCORDING TO A TENSOR MAP simplified abstract (NVIDIA Corporation)
- 18091943. EMBEDDED SILICON-BASED DEVICE COMPONENTS IN A THICK CORE SUBSTRATE OF AN INTEGRATED CIRCUIT PACKAGE simplified abstract (NVIDIA Corporation)
- 18094028. APPLICATION EXECUTION ALLOCATION USING MACHINE LEARNING simplified abstract (NVIDIA Corporation)
- 18094159. SYSTEMS AND METHODS FOR ITERATIVE AND ADAPTIVE OBJECT DETECTION simplified abstract (NVIDIA Corporation)
- 18094962. WORKLOAD ASSIGNMENT TECHNIQUE simplified abstract (NVIDIA Corporation)
- 18098061. TECHNIQUES FOR PRUNING NEURAL NETWORKS simplified abstract (NVIDIA Corporation)
- 18100386. DYNAMIC ASSIGNMENT OF DATA STREAM PROCESSING IN MULTI-CODEC SYSTEMS simplified abstract (NVIDIA Corporation)
- 18105679. SCALARIZATION OF INSTRUCTIONS FOR SIMT ARCHITECTURES simplified abstract (NVIDIA Corporation)
- 18106966. APPLICATION PROGRAMMING INTERFACE TO DISABLE FRAME INTERPOLATION simplified abstract (NVIDIA Corporation)
- 18106974. APPLICATION PROGRAMMING INTERFACE TO CAUSE PERFORMANCE OF FRAME INTERPOLATION simplified abstract (NVIDIA Corporation)
- 18110572. AUTOMATIC BOARD PROBING STATION simplified abstract (NVIDIA Corporation)
- 18111799. SYSTEM FOR IMPLEMENTING MUTABLE DEVICE OWNERSHIP TRANSFER (DOT) OF A DEVICE simplified abstract (NVIDIA Corporation)
- 18115520. TECHNIQUES FOR COMPRESSING NEURAL NETWORKS simplified abstract (NVIDIA Corporation)
- 18122594. PROMPT GENERATOR FOR USE WITH ONE OR MORE MACHINE LEARNING PROCESSES simplified abstract (NVIDIA Corporation)
- 18122832. HARDWARE-DRIVEN CALL STACK ATTRIBUTION simplified abstract (NVIDIA Corporation)
- 18123055. LANGUAGE MODEL TUNING IN CONVERSATIONAL ARTIFICIAL INTELLIGENCE SYSTEMS AND APPLICATIONS simplified abstract (NVIDIA Corporation)
- 18125503. CONTROLLING A ROBOT DURING INTERACTION WITH A HUMAN simplified abstract (NVIDIA Corporation)
- 18126900. COLLISION DETECTION FOR OBJECT REARRANGEMENT USING A 3D SCENE REPRESENTATION simplified abstract (NVIDIA Corporation)
- 18141917. TENSOR DIMENSION ORDERING TECHNIQUES simplified abstract (NVIDIA Corporation)
- 18147426. SELECTING REPRESENTATIVE IMAGE VIEWS FOR 3D OBJECT MODELS IN SYNTHETIC CONTENT CREATION SYSTEMS AND APPLICATIONS simplified abstract (NVIDIA Corporation)
- 18147915. VISION-BASED SOUND SIMULATION FOR CORRECTING ACOUSTICS AT A LOCATION simplified abstract (NVIDIA Corporation)
- 18148226. WATERMARKING FOR SPEECH IN CONVERSATIONAL AI AND COLLABORATIVE SYNTHETIC CONTENT GENERATION SYSTEMS AND APPLICATIONS simplified abstract (NVIDIA Corporation)
- 18149248. MANAGEMENT OF ARTIFICIAL INTELLIGENCE RESOURCES IN A DISTRIBUTED RESOURCE ENVIRONMENT simplified abstract (NVIDIA Corporation)
- 18149285. USING STABLE DIFFUSION TO GENERATE SEAMLESS CONTENT TILE SETS IN CONTENT GENERATION SYSTEMS AND APPLICATIONS simplified abstract (NVIDIA Corporation)
- 18149466. OFFLOADING CONNECTION MANAGEMENT FOR NETWORK RESOURCES simplified abstract (NVIDIA Corporation)
- 18149617. MIXED PHASE THERMAL INTERFACE MATERIAL ASSEMBLY WITH HIGH THERMAL CONDUCTIVITY AND LOW INTERNAL CONTACT RESISTANCE simplified abstract (NVIDIA Corporation)
- 18150889. IMAGE PROCESSING USING NEURAL NETWORKS, WITH IMAGE REGISTRATION simplified abstract (NVIDIA Corporation)
- 18151175. VERIFYING SECURITY FOR VIRTUAL MACHINES IN CLOUD STREAMING SYSTEMS AND APPLICATIONS simplified abstract (NVIDIA Corporation)
- 18151653. REMOVING ARTIFACTS USING DITHERING COMPENSATION IN IMAGE STREAMING SYSTEMS AND APPLICATIONS simplified abstract (NVIDIA Corporation)
- 18152320. SUBSURFACE SCATTERING FOR REAL-TIME RENDERING APPLICATIONS simplified abstract (NVIDIA Corporation)
- 18152528. TECHNIQUES FOR BALANCING DYNAMIC INFERENCING BY MACHINE LEARNING MODELS simplified abstract (NVIDIA Corporation)
- 18152666. SOFTWARE PROGRAM ERROR TESTING FOR AUTONOMOUS SYSTEMS AND APPLICATIONS simplified abstract (NVIDIA Corporation)
- 18156017. DATA MINING USING MACHINE LEARNING FOR AUTONOMOUS SYSTEMS AND APPLICATIONS simplified abstract (NVIDIA Corporation)
- 18164215. GENERATIVE MACHINE LEARNING MODELS FOR PRIVACY PRESERVING SYNTHETIC DATA GENERATION USING DIFFUSION simplified abstract (NVIDIA Corporation)
- 18166118. SENSOR CALIBRATION FOR AUTONOMOUS SYSTEMS AND APPLICATIONS simplified abstract (NVIDIA Corporation)
- 18166121. SENSOR CALIBRATION FOR AUTONOMOUS SYSTEMS AND APPLICATIONS simplified abstract (NVIDIA Corporation)
- 18171004. MACHINE LEARNING BASED LANDMARK PERCEPTION FOR LOCALIZATION IN AUTONOMOUS SYSTEMS AND APPLICATIONS simplified abstract (NVIDIA Corporation)
- 18171016. LANDMARK PERCEPTION FOR LOCALIZATION IN AUTONOMOUS SYSTEMS AND APPLICATIONS simplified abstract (NVIDIA Corporation)
- 18171778. RUNTIME CONFIGURATION OF INFRARED AND VISIBLE LIGHT SENSORS FOR OCCUPANT MONITORING IN AUTONOMOUS AND SEMI-AUTONOMOUS SYSTEMS AND APPLICATIONS simplified abstract (NVIDIA Corporation)
- 18172571. QUERY RESPONSE GENERATION USING STRUCTURED AND UNSTRUCTURED DATA FOR CONVERSATIONAL AI SYSTEMS AND APPLICATIONS simplified abstract (NVIDIA Corporation)
- 18174906. PARALLEL WORKLOAD SCHEDULING BASED ON WORKLOAD DATA COHERENCE simplified abstract (NVIDIA Corporation)
- 18178817. JOINT NEURAL DENOISING OF SURFACES AND VOLUMES simplified abstract (NVIDIA Corporation)
- 18184071. FEATURE TRACKING FOR AUTONOMOUS SYSTEMS AND APPLICATIONS simplified abstract (NVIDIA Corporation)
- 18184459. RENDERING AND COMPOSITION OF NEURAL 3D OBJECTS WITH NON-NEURAL ASSETS IN CONTENT GENERATION SYSTEMS AND APPLICATIONS simplified abstract (NVIDIA Corporation)
- 18185074. TEMPORAL-BASED PERCEPTION FOR AUTONOMOUS SYSTEMS AND APPLICATIONS simplified abstract (NVIDIA Corporation)
- 18185578. DETECTING CYBER THREATS USING ARTIFICIAL INTELLIGENCE simplified abstract (NVIDIA Corporation)
- 18185870. OPTIMIZING QUANTUM COMPUTING CIRCUIT STATE PARTITIONS FOR SIMULATION simplified abstract (NVIDIA Corporation)
- 18193982. REALISTIC, CONTROLLABLE AGENT SIMULATION USING GUIDED TRAJECTORIES AND DIFFUSION MODELS simplified abstract (NVIDIA Corporation)
- 18194116. PHYSICS-BASED SIMULATION OF HUMAN CHARACTERS IN MOTION simplified abstract (NVIDIA Corporation)
- 18203552. DYNAMIC NEURAL NETWORK MODEL SPARSIFICATION simplified abstract (NVIDIA Corporation)
- 18219622. TENSOR MAP CACHE STORAGE simplified abstract (NVIDIA Corporation)
- 18223473. LONG-RANGE 3D OBJECT DETECTION USING 2D BOUNDING BOXES simplified abstract (NVIDIA Corporation)
- 18232279. HIGH RESOLUTION TEXT-TO-3D CONTENT CREATION simplified abstract (NVIDIA Corporation)
- 18233203. FREQUENCY DIVISION MULTIPLEXING WITH NEURAL NETWORKS IN RADIO COMMUNICATION SYSTEMS simplified abstract (NVIDIA Corporation)
- 18235213. GENERATING MODELS FOR DETECTION OF ANOMALOUS PATTERNS simplified abstract (NVIDIA Corporation)
- 18243348. NEURAL NETWORK PROMPT TUNING simplified abstract (NVIDIA Corporation)
- 18243555. LANDMARK DETECTION WITH AN ITERATIVE NEURAL NETWORK simplified abstract (NVIDIA Corporation)
- 18277949. EFFICIENT DATA TRANSMISSIONS BETWEEN STORAGE NODES IN REPLICATION RELATIONSHIPS simplified abstract (NVIDIA Corporation)
- 18295493. LOW POWER AND AREA CLOCK MONITORING CIRCUIT USING RING DELAY ARRANGEMENT simplified abstract (NVIDIA Corporation)
- 18295537. LOW POWER AND AREA CLOCK MONITORING CIRCUIT USING RING DELAY ARRANGEMENT FOR CLOCK SIGNAL HAVING PHASE-TO-PHASE VARIATION simplified abstract (NVIDIA Corporation)
- 18323795. OBJECT DETECTION USING POLYGONS FOR AUTONOMOUS SYSTEMS AND APPLICATIONS simplified abstract (NVIDIA Corporation)
- 18334285. MULTI-SENSOR OBJECT FUSION AND TRACKING FOR AUTONOMOUS SYSTEMS AND APPLICATIONS (NVIDIA Corporation)
- 18334752. SPEECH PROCESSING USING MACHINE LEARNING FOR CONVERSATIONAL AI SYSTEMS AND APPLICATIONS (NVIDIA Corporation)
- 18336758. SHARED METAL WIRE CAPACITANCE FOR NEGATIVE BIT-LINE (NVIDIA Corporation)
- 18339670. SCENE-AWARE SPEECH RECOGNITION USING VISION-LANGUAGE MODELS simplified abstract (NVIDIA Corporation)
- 18343291. DISTANCE TO OBSTACLE DETECTION IN AUTONOMOUS MACHINE APPLICATIONS simplified abstract (NVIDIA Corporation)
- 18348286. TECHNIQUES FOR HETEROGENEOUS CONTINUAL LEARNING WITH MACHINE LEARNING MODEL ARCHITECTURE PROGRESSION simplified abstract (NVIDIA Corporation)
- 18364982. LEARNING DIRECTABLE VIRTUAL AGENTS THROUGH CONDITIONAL ADVERSARIAL LATENT MODELS simplified abstract (NVIDIA Corporation)
- 18365966. USING LANGUAGE MODELS IN AUTONOMOUS AND SEMI-AUTONOMOUS SYSTEMS AND APPLICATIONS (NVIDIA Corporation)
- 18366286. PRESERVING DETAIL IN DENOISED IMAGES FOR CONTENT GENERATION SYSTEMS AND APPLICATIONS simplified abstract (NVIDIA Corporation)
- 18366298. FREESPACE DETECTION USING MACHINE LEARNING FOR AUTONOMOUS SYSTEMS AND APPLICATIONS simplified abstract (NVIDIA Corporation)
- 18377605. PARALLEL SELECTION OF FIFTH GENERATION (5G) NEW RADIO INFORMATION simplified abstract (NVIDIA Corporation)
- 18379601. OCCUPANCY PREDICTION USING FORWARD-BACKWARD VIEW TRANSFORMATION (NVIDIA Corporation)
- 18385840. TEXT-TO-IMAGE DIFFUSION MODEL WITH COMPONENT LOCKING AND RANK-ONE EDITING simplified abstract (NVIDIA Corporation)
- 18395198. POINT-LEVEL SUPERVISION FOR VIDEO INSTANCE SEGMENTATION simplified abstract (NVIDIA Corporation)
- 18405922. NEURAL NETWORK FOR IMAGE REGISTRATION AND IMAGE SEGMENTATION TRAINED USING A REGISTRATION SIMULATOR simplified abstract (NVIDIA Corporation)
- 18405932. NEURAL NETWORK FOR IMAGE REGISTRATION AND IMAGE SEGMENTATION TRAINED USING A REGISTRATION SIMULATOR simplified abstract (NVIDIA Corporation)
- 18406006. HALLUCINATING DETAILS FOR OVER-EXPOSED PIXELS IN VIDEOS USING LEARNED REFERENCE FRAME SELECTION simplified abstract (NVIDIA Corporation)
- 18409018. USING A LANGUAGE MODEL TO LOCALIZE AND ROUTE PLAN FOR NAVIGATION SYSTEMS AND APPLICATIONS (NVIDIA Corporation)
- 18414292. BARRIER FOR LIQUID METAL THERMAL INTERFACE MATERIAL IN AN ELECTRONIC DEVICE simplified abstract (NVIDIA Corporation)
- 18416828. TECHNIQUES FOR GENERATING INITIALIZATIONS FOR PARALLEL OPTIMIZERS (NVIDIA Corporation)
- 18417105. USING LARGE LANGUAGE MODELS TO UPDATE DATA IN MAPPING SYSTEMS AND APPLICATIONS (NVIDIA Corporation)
- 18424082. SYSTEMS, METHODS, AND APPARATUSES FOR MAKING WRITES TO PERSISTENT MEMORY simplified abstract (NVIDIA Corporation)
- 18432887. SAFETY PROCEDURE ANALYSIS FOR OBSTACLE AVOIDANCE IN AUTONOMOUS VEHICLES simplified abstract (NVIDIA Corporation)
- 18432957. DYNAMIC ALLOCATION OF COMPUTE RESOURCES FOR HIGHLIGHT GENERATION IN CLOUD GAMING SYSTEMS simplified abstract (NVIDIA Corporation)
- 18448049. TRAINING MACHINE LEARNING MODELS USING SIMULATION FOR ROBOTICS SYSTEMS AND APPLICATIONS simplified abstract (NVIDIA Corporation)
- 18453248. TECHNIQUES FOR GENERATING IMAGES OF OBJECT INTERACTIONS simplified abstract (NVIDIA Corporation)
- 18468086. HYBRID LANGUAGE MODELS FOR CONVERSATIONAL AI SYSTEMS AND APPLICATIONS simplified abstract (NVIDIA Corporation)
- 18468642. LOCK-FREE UNORDERED IN-PLACE COMPACTION simplified abstract (NVIDIA Corporation)
- 18472941. PROCESSING SENSOR DATA USING LANGUAGE MODELS IN MAP GENERATION SYSTEMS AND APPLICATIONS (NVIDIA Corporation)
- 18474591. USING LANGUAGE MODELS TO VERIFY MAP DATA IN MAP GENERATION SYSTEMS AND APPLICATIONS (NVIDIA Corporation)
- 18477421. TECHNIQUES FOR PERFORMING WRITE TRAINING ON A DYNAMIC RANDOM-ACCESS MEMORY simplified abstract (NVIDIA Corporation)
- 18477651. IDENTIFYING DUPLICATE OBJECTS USING CANONICAL FORMS IN CONTENT CREATION SYSTEMS AND APPLICATIONS simplified abstract (NVIDIA Corporation)
- 18483089. TRAINING MACHINE LEARNING MODELS USING CAPTURED HUMAN REASONING (NVIDIA Corporation)
- 18484790. LOW-PRECISION FLOATING-POINT DATAPATH IN A COMPUTER PROCESSOR simplified abstract (NVIDIA Corporation)
- 18485239. TECHNIQUES FOR DENOISING DIFFUSION USING AN ENSEMBLE OF EXPERT DENOISERS simplified abstract (NVIDIA Corporation)
- 18497938. TECHNIQUES FOR TRAINING A MACHINE LEARNING MODEL TO RECONSTRUCT DIFFERENT THREE-DIMENSIONAL SCENES simplified abstract (NVIDIA Corporation)
- 18497940. TECHNIQUES FOR RECONSTRUCTING DIFFERENT THREE-DIMENSIONAL SCENES USING THE SAME TRAINED MACHINE LEARNING MODEL simplified abstract (NVIDIA Corporation)
- 18500426. GENERATING HIGHER RESOLUTION MAP DATA USING LANGUAGE MODELS (NVIDIA Corporation)
- 18502747. USING LARGE LANGUAGE MODELS FOR SIMILARITY DETERMINATIONS IN CONTENT GENERATION SYSTEMS AND APPLICATIONS (NVIDIA Corporation)
- 18505283. UNSUPERVISED LEARNING OF SCENE STRUCTURE FOR SYNTHETIC DATA GENERATION simplified abstract (NVIDIA Corporation)
- 18509074. ENCODING OUTPUT FOR STREAMING APPLICATIONS BASED ON CLIENT UPSCALING CAPABILITIES simplified abstract (NVIDIA Corporation)
- 18527770. MOTION VECTOR OPTIMIZATION FOR MULTIPLE REFRACTIVE AND REFLECTIVE INTERFACES simplified abstract (NVIDIA Corporation)
- 18528333. COMPUTATION OFFLOAD REQUESTS WITH DENIAL RESPONSE simplified abstract (NVIDIA Corporation)
- 18531103. OBJECT DETECTION AND CLASSIFICATION USING LIDAR RANGE IMAGES FOR AUTONOMOUS MACHINE APPLICATIONS simplified abstract (NVIDIA Corporation)
- 18531374. LEVERAGING MULTIDIMENSIONAL SENSOR DATA FOR COMPUTATIONALLY EFFICIENT OBJECT DETECTION FOR AUTONOMOUS MACHINE APPLICATIONS simplified abstract (NVIDIA Corporation)
- 18537570. NEURAL NETWORK ACCELERATOR USING LOGARITHMIC-BASED ARITHMETIC simplified abstract (NVIDIA Corporation)
- 18538758. FRAME ALIGNMENT RECOVERY FOR A HIGH-SPEED SIGNALING INTERCONNECT simplified abstract (NVIDIA Corporation)
- 18545856. LANE CHANGE PLANNING AND CONTROL IN AUTONOMOUS MACHINE APPLICATIONS simplified abstract (NVIDIA Corporation)
- 18545911. STREAMING A COMPRESSED LIGHT FIELD simplified abstract (NVIDIA Corporation)
- 18592025. DATA AUGMENTATION FOR MODEL TRAINING IN AUTONOMOUS SYSTEMS AND APPLICATIONS simplified abstract (NVIDIA Corporation)
- 18592238. HARDWARE LATENCY MONITORING FOR MEMORY DEVICE INPUT/OUTPUT REQUESTS simplified abstract (NVIDIA Corporation)
- 18602802. BEHAVIOR PLANNING FOR AUTONOMOUS VEHICLES IN YIELD SCENARIOS simplified abstract (NVIDIA Corporation)
- 18603616. PROGRAM FLOW MONITORING AND CONTROL OF AN EVENT-TRIGGERED SYSTEM simplified abstract (NVIDIA Corporation)
- 18603897. PROVIDING PROACTIVE SAFETY MEASURES FOR ROBOTICS SYSTEMS AND APPLICATIONS simplified abstract (NVIDIA Corporation)
- 18606938. TECHNIQUES FOR TRAINING MACHINE LEARNING MODELS USING ROBOT SIMULATION DATA simplified abstract (NVIDIA Corporation)
- 18607901. RAY TRACING USING RESERVOIR RESAMPLING WITH SPATIAL SHIFT-MAPPING simplified abstract (NVIDIA Corporation)
- 18612058. SCENARIO RECREATION THROUGH OBJECT DETECTION AND 3D VISUALIZATION IN A MULTI-SENSOR ENVIRONMENT simplified abstract (NVIDIA Corporation)
- 18614490. DIGITALLY CONTROLLED UNIFIED RECEIVER FOR MULTI-RANK SYSTEM simplified abstract (NVIDIA Corporation)
- 18615894. INTERSECTION POSE DETECTION IN AUTONOMOUS MACHINE APPLICATIONS simplified abstract (NVIDIA Corporation)