Application Specific Integrated Circuit Engineer (Hiring Immediately)

IC Resources
Bristol
1 year ago
Applications closed

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ASIC Design Engineer

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As an ASIC Design Engineer, you will join a global business, headquartered in Bristol.

You will be part of a team that focus on the Digital Design and Verification of complex processor-based chips.

As the ASIC Design Engineer, you will be part of a group, heavily involved in products including voice processing, biometrics, and artificial intelligence.

Working in a ‘start-up’ environment, you will participate in all aspects of design, working at block and chip level and get the opportunity to work with the entire Chip team through the entire lifecycle of chip development.

To be considered for this role you must good understanding of modern SoCs and microprocessor technology.

You will have a proven track record in the design of complex digital ICs, with demonstrable skills in Digital ASIC Hardware Design, from specification to RTL, and including support for Functional Verification and chip-level integration.

Required Skills

▪ Excellent RTL design skills

▪ Clear ability to take designs through all stages of the lifecycle

▪ Experience in the Integration of 3rd party IP

▪ A proven ability in scripting and flow automation methods

▪ Working knowledge of Synthesis

▪ Experience of Functional Verification

As a top company you can expect a good benefits scheme including private medical, life insurance, Share options and private medical.

For more information on this great opportunity contact Rachel Mason at IC Resources.

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