Purpose
Lead the Quality Assurance effort within his/her organization, to minimize quality risks across its processes (end to end) – through their early identification and minimization/elimination.
Risk Assessment, Data Analysis, and Compliance:
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Lead quality risk assessment across the whole processes under their responsibility, and ensures they are documented and updated regularly – especially those related to new/change in process and new product introduction.
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Working with other stakeholders, identify and implement actions to minimize risks identified through risk assessments – such as codifying and leading the implementation of fir-for-purpose First Article (FA) protocol for specific component types.
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Schedule and the lead implementation of quality audits within their scope of operation.
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Lead assurance effort to ensure ongoing compliance with applicable internal, customer and industry quality and regulatory requirements.
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Lead the analysis of available data to identify key trends/causes of NCRs and Service Qualities, and the root cause(s) of those key causes.
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Perform analysis of runlife performance of installed ESP systems to identify key trends and causes, at various organizational level.
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Lead the analysis of the yield, process variance and measurements done across overall manufacturing process, to identify key processes that require improvements.
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Provide input and recommendation on how to add/update/upgrade business systems to enable incorporating various data analysis as part of routine operation.
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As Subject Matter Expert (SME), train the organization on applicable topics related to root cause analysis, statistical quality tool, reliability engineering and data analysis.
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Performs other duties as assigned.
Knowledge and Experience:
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Minimum 3 years working experience in similar role, with 2 years of practical experience in data analytics and/or reliability engineering and/or statistical quality tools.
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Practical experience in using Minitab and/or Reliasoft suite-of-software (or equivalent).
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Basic knowledge in cloud computing.
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Basic knowledge in development and use of Machine Learning and Artificial Intelligence.
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Knowledge of ISO 9001 is mandatory.
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Preferred experience in Aerospace, Automotive or Electronics industry.
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Excellent English written and verbal communication skills.
Education and Certifications:
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Bachelor (or higher) degree in any Science/Engineering discipline; Master (or higher) degree preferred.
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ASQ Certified Quality Engineer certification highly preferable.
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Six Sigma Green/Black Belt certification preferable.
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Certified auditor certification preferable.
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PMP (Project Management Professional) certification preferable.
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Familiarity with API Q1 Quality Management Standards.