235 research outputs found
Intelligent optical performance monitor using multi-task learning based artificial neural network
An intelligent optical performance monitor using multi-task learning based
artificial neural network (MTL-ANN) is designed for simultaneous OSNR
monitoring and modulation format identification (MFI). Signals' amplitude
histograms (AHs) after constant module algorithm are selected as the input
features for MTL-ANN. The experimental results of 20-Gbaud NRZ-OOK, PAM4 and
PAM8 signals demonstrate that MTL-ANN could achieve OSNR monitoring and MFI
simultaneously with higher accuracy and stability compared with single-task
learning based ANNs (STL-ANNs). The results show an MFI accuracy of 100% and
OSNR monitoring root-mean-square error of 0.63 dB for the three modulation
formats under consideration. Furthermore, the number of neuron needed for the
single MTL-ANN is almost the half of STL-ANN, which enables reduced-complexity
optical performance monitoring devices for real-time performance monitoring
Integration of Physics-Derived Memristor Models with Machine Learning Frameworks
Simulation frameworks such MemTorch, DNN+NeuroSim, and aihwkit are commonly
used to facilitate the end-to-end co-design of memristive machine learning (ML)
accelerators. These simulators can take device nonidealities into account and
are integrated with modern ML frameworks. However, memristors in these
simulators are modeled with either lookup tables or simple analytic models with
basic nonlinearities. These simple models are unable to capture certain
performance-critical aspects of device nonidealities. For example, they ignore
the physical cause of switching, which induces errors in switching timings and
thus incorrect estimations of conductance states. This work aims at bringing
physical dynamics into consideration to model nonidealities while being
compatible with GPU accelerators. We focus on Valence Change Memory (VCM)
cells, where the switching nonlinearity and SET/RESET asymmetry relate tightly
with the thermal resistance, ion mobility, Schottky barrier height, parasitic
resistance, and other effects. The resulting dynamics require solving an ODE
that captures changes in oxygen vacancies. We modified a physics-derived
SPICE-level VCM model, integrated it with the aihwkit simulator and tested the
performance with the MNIST dataset. Results show that noise that disrupts the
SET/RESET matching affects network performance the most. This work serves as a
tool for evaluating how physical dynamics in memristive devices affect neural
network accuracy and can be used to guide the development of future integrated
devices.Comment: This work is published at the 2022 56th Asilomar Conferenc
Development and Validation of Targeted Next-Generation Sequencing Panels for Detection of Germline Variants in Inherited Diseases.
Context.-The number of targeted next-generation sequencing (NGS) panels for genetic diseases offered by clinical laboratories is rapidly increasing. Before an NGS-based test is implemented in a clinical laboratory, appropriate validation studies are needed to determine the performance characteristics of the test. Objective.-To provide examples of assay design and validation of targeted NGS gene panels for the detection of germline variants associated with inherited disorders. Data Sources.-The approaches used by 2 clinical laboratories for the development and validation of targeted NGS gene panels are described. Important design and validation considerations are examined. Conclusions.-Clinical laboratories must validate performance specifications of each test prior to implementation. Test design specifications and validation data are provided, outlining important steps in validation of targeted NGS panels by clinical diagnostic laboratories
Construction of Genetic Linkage Maps From a Hybrid Family of Large Yellow Croaker (Larimichthys crocea)
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