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    2022 4th International Conference on Advances in Computing, Communication Control and Networking (ICAC3N)
    (IEEE, 2022) Ahmad, Qazi Saeed; Khan, Imran Ullah
    Multicarrier transmission is a difficult method for high velocity information transmission over a dispersive media. An Orthogonal Frequency Division Multiplexing (OFDM) plot stays a multicarrier balance as well as multiplexing plan which utilizes a comparative handling technique letting the synchronized transmission of information organized a few completely fanned out, orthogonal sub-transporters. One significant test in multicarrier transmission is PAPR. There are a few strategies and procedures for PAPR decrease. All techniques point significant decrease in PAPR. However, these techniques need to deal with the issue of misfortune in information rate, communicate signal influence increment, BER increment, process intricacy increment, etc. Thusly, there is no particular technique to diminish PAPR that has the best answer for all multicarrier information transmission frameworks. As opposed to the PAPR decrease method should be thoroughly picked in accordance with differed framework necessities.
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    Machine Learning for VLSI Chip Design
    (Scrivener Publishing LLC, 2023) Khan, Imran Ullah; Mittal, Nupur; Ansari, Mohd. Amir
    In our advanced times, complementary metal-oxide semiconductor (CMOS) based organizations like semiconductor and gadgets face extreme scheduling of products and other different pressures. For resolving this issue, electronic design automation (EDA) must provide “design-based equivalent scaling” to continue the critical industry trajectory. For solving this problem machine learning techniques should be used both inside and “peripherally” in the design tools and flows. This article reviews machine learning opportunities, and physical implementation of IC will also be discussed. Cloud intelligence-enabled machine learning-based data analytics has surpassed the scalability of current computing technologies and architectures. The current methods based on deep learning are inefficient, require a lot of data and power consumption, and run on a data server with a long delay. With the advent of self-driving cars, unmanned aerial vehicles and robotics, there is a huge need to analyze only the necessary sensory data with low latency and low power consumption on edge devices. In this discussion, we will talk about effective AI calculations, for example, fast least squares, binary and tensor convolutional neural organization techniques, and compare prototype accelerators created in field preogrammable gate array (FPGA) and CMOS-ASIC chips. Planning on future resistive random access memory (RRAM) gadgets will likewise be briefly depicted.
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    Telecommunication and Electronic Technology
    (Aargon Press, New Delhi, 2021) Khan, Imran Ullah; Charan, Piyush; Yadav, Archana