Manufacturing Engineer

Tata Consultancy Services
Birmingham
1 year ago
Applications closed

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If you need support in completing the application or if you require a different format of this document, please get in touch withator callTCS London Office numberwith the subject line: “Application Support Request”.


Role:Manufacturing Engineer (ME)

Job Type:Fixed-Term

Location:Birmingham(Onsite)


Ready to utilise your skills inManufacturing processes & IOT?


Are you keen to build your career with aglobal IT Consultancy and give yourself a platform for continuous learning, and access to an incredible breadth and depth of opportunities to grow your career?


Join us as aManufacturing Engineer


Careers at TCS: It means more

TCS is a purpose-led transformation company, built on belief. We do not just help businesses to transform through technology. We support them in making a meaningful difference to the people and communities they serve - our clients include some of the biggest brands in the UK and worldwide. For you, it means more to make an impact that matters, through challenging projects which demand ambitious innovation and thought leadership.

  • Gain access to endless learning opportunities.
  • Be part of an exciting team who challenge themselves every day.
  • Fast track your growth with diverse career opportunities internally.


The Role

As aManufacturing Engineeryou willprovide technical support to ME community and execute Manufacturing Engineering activities to develop, maintain and continuously improve manufacturing processes, rework, salvaging and methods engineering. In this role you will provide digital solutions in manufacturing environment to enable data integration (Going paperless).

The project is working in the auto-mobile.


Key responsibilities:

  • Work with key ME stakeholders to understand the requirements with regards to standardisation of reworks, digitisation of Non conformances (NC) and going paperless.
  • Fully understand the requirement from NC databases, coordinating with ME and create Defect brochures.
  • Execute CAPP related activities on teamcenter and bridge the same into MES and verify.


Your Profile

Key skills/knowledge/experience:

  • General understanding of Manufacturing Processes.
  • General awareness of Manufacturing Systems and enabling software tools .
  • General understanding of Manufacturing Engineering processes.
  • General understanding of Smart factory and digital solutions .
  • General understanding of CAPP on Teamcenter.
  • General awareness of Power Applications, Cognos, MES, Power BI, Kanbanize and Thingworx
  • Excellent communication skills and be highly driven, striving to maintain excellent delivery performance.


Good to have:

  • Data engineering & Digital Platform experience.
  • Automation ideas and skills.
  • Hands on experience with Thingworx, MES and Cognos.


Rewards & Benefits

TCS is consistently voted a Top Employer in the UK and globally. Our competitive salary packages feature pension, health care, life assurance, laptop, phone, access to extensive training resources and discounts within the larger Tata network.


Diversity, Inclusion & Wellbeing

Tata Consultancy Services UK&I is committed to meeting the accessibility needs of all individuals in accordance with the UK Equality Act 2010 and the UK Human Rights Act 1998.

We believe in building and sustaining a culture of equity and belonging where everyone can thrive. Our diversity and inclusion motto is ‘Inclusion without Exception’. Our continued commitment to Culture and Diversity is reflected across our workforce implemented through equitable workplace policies and processes.

You’ll find a welcoming culture and many internal volunteering and social networks to join (these are optional). Our diversity, inclusion and social activities include 12 employee networks such as gender diversity, LGBTQIA+ & Allies, mental health, disability & neurodiversity inclusion and many more, as well as health & wellness initiatives and sports events and we sponsor the London Marathon.


We welcome and embrace diversity in race, nationality, ethnicity, disability, neurodiversity, gender identity, age, physical ability, gender reassignment, sexual orientation. We are a disability inclusive employer and encourage disabled people to apply for this role.

If you are an applicant who needs any adjustments to the application process or interview, please contact usatwith the subject line: “Adjustment Request” or callTCS London Officeto request an adjustment. We welcome requests prior to you completing the application and at any stage of the recruitment process.


Due to a high volume of applications, we will be unable to contact each applicant individually on the status of their application. If you have not received a direct response within 30 days, then it should be deemed unsuccessful on this occasion.


Join us and do more of what matters. Apply online now.

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