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name:-0.02347207069397
name:-0.0051059722900391
name:-0.0072519779205322
Mohapatra; Debabrata Patent Filings

Mohapatra; Debabrata

Patent Applications and Registrations

Patent applications and USPTO patent grants for Mohapatra; Debabrata.The latest application filed is for "methods and apparatus to perform low overhead sparsity acceleration logic for multi-precision dataflow in deep neural network accelerators".

Company Profile
7.3.20
  • Mohapatra; Debabrata - Santa Clara CA
  • Mohapatra; Debabrata - San Jose CA
  • Mohapatra; Debabrata - West Lafayette IN
*profile and listings may contain filings by different individuals or companies with the same name. Review application materials to confirm ownership/assignment.
Patent Activity
PatentDate
Methods And Apparatus To Perform Low Overhead Sparsity Acceleration Logic For Multi-precision Dataflow In Deep Neural Network Accelerators
App 20220292366 - Raha; Arnab ;   et al.
2022-09-15
System And Method For Channel-separable Operations In Deep Neural Networks
App 20220261623 - Sung; Raymond Jit-Hung ;   et al.
2022-08-18
Data Reuse In Deep Learning
App 20220188638 - Mathaikutty; Deepak Abraham ;   et al.
2022-06-16
Floating Point Multiply-accumulate Unit For Deep Learning
App 20220188075 - Raha; Arnab ;   et al.
2022-06-16
Schedule-aware Dynamically Reconfigurable Adder Tree Architecture For Partial Sum Accumulation In Machine Learning Accelerators
App 20220129320 - Mohapatra; Debabrata ;   et al.
2022-04-28
System And Method For Balancing Sparsity In Weights For Accelerating Deep Neural Networks
App 20220083843 - Raha; Arnab ;   et al.
2022-03-17
Runtime Configurable Register Files For Artificial Intelligence Workloads
App 20220075659 - Mohapatra; Debabrata ;   et al.
2022-03-10
Sparsity-aware Datastore For Inference Processing In Deep Neural Network Architectures
App 20220067524 - Mathaikutty; Deepak ;   et al.
2022-03-03
Area And Energy Efficient Multi-precision Multiply-accumulate Unit-based Processor
App 20210397414 - Raha; Arnab ;   et al.
2021-12-23
Methods And Apparatus To Load Data Within A Machine Learning Accelerator
App 20210326144 - Raha; Arnab ;   et al.
2021-10-21
Performance Scaling For Dataflow Deep Neural Network Hardware Accelerators
App 20210271960 - Raha; Arnab ;   et al.
2021-09-02
Arithmetic logic unit with normal and accelerated performance modes using differing numbers of computational circuits
Grant 11,010,166 - Mohapatra , et al. May 18, 2
2021-05-18
Multi-buffered Register Files With Shared Access Circuits
App 20210117197 - Hsu; Steven ;   et al.
2021-04-22
Accelerated Loading Of Unstructured Sparse Data In Machine Learning Architectures
App 20210042617 - Chinya; Gautham ;   et al.
2021-02-11
Schedule-Aware Tensor Distribution Module
App 20200410327 - Chinya; Gautham ;   et al.
2020-12-31
Methods, Systems, Articles Of Manufacture, And Apparatus To Decode Zero-value-compression Data Vectors
App 20200228137 - Chinya; Gautham ;   et al.
2020-07-16
Configurable Processor Element Arrays For Implementing Convolutional Neural Networks
App 20200134417 - Mohapatra; Debabrata ;   et al.
2020-04-30
Instruction and Logic for Configurable Arithmetic Logic Unit Pipeline
App 20170286117 - Mohapatra; Debabrata ;   et al.
2017-10-05
Variation-tolerant self-repairing displays
Grant 8,994,396 - Ho , et al. March 31, 2
2015-03-31
Variation-Tolerant Self-Repairing Displays
App 20120182518 - Ho; Chih-Hsiang ;   et al.
2012-07-19

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