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SOC Design Verification Engineer

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Location
Austin, TX
Job Type
Direct Hire
Date
Oct 25, 2018
Job ID
2635732
The company's platform delivers the power of desktop GPU in a single low-power chip, supporting inference for large deep neural networks. The company's technology is based upon an entirely new hybrid digital/analog flash calculation using 8-bit non-volatile memory arrays which has been under development since 2012. This step change in performance brings in a range of new applications in a broad array of verticals, including safety and security, autonomous vehicles, VR/AR, robotics and media.

The company is a fast-growing company with 60 employees, $56M in funding from top tier investors, and >$1M NRE revenue from two existing customer accounts. The company's investors include Softbank, DFJ, Lux Capital, and Data Collective.

About the role:
The Company  is a fast-paced startup looking for individuals that enjoy wide-reaching, flexible roles. The primary responsibility for this position is verification of SoC features of the company's chips. This individual will work closely with digital designers, Firmware engineers, DFT engineers and post-silicon teams to ensure first pass silicon success.

Here's what you will do:

    • Hands on chip- and block-level verification.
    • Development of test and coverage plans.
    • Further responsibilities will depend on background and skills.

Here's the background we hope you have:

    •  BS/MS in EE or CS
    • 3-8 years of industry experience
    • Knowledge of verification methodologies
    • Knowledge of computer architecture
    • Understanding and experience with Verilog, SV, and UVM

The following would be nice to have, but Not required

    • Experience working at startups
    • Experience with Python or Ruby
    • Experience with chip debug features - design, verification or post-silicon
    • Experience with Design-for-Test (DFT) features - design, verification or post-silicon
    • Knowledge of neural networks, audio processing, and/or image processing

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