Hardware & Network Engineer

PURVIEW
London
2 months ago
Applications closed

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JPC-221835 - Hardware & Network Engineer
Experience: 4 - 9 years
Qualification:
Job Location: London
Job Type: Full Time
Skills: Hardware, Network Engineer
Vacancies: 0
Job Posted:Jan 18, 2025 |Total views: 1

Job Description:

Key Responsibilities:

  1. New server installation
  2. Rack and Stack X86 Server
  3. Install and rack the machine in the designated rack
  4. Connect the machine with provided cabling
  5. Power on and run hardware diagnostic tests to confirm that the machines conform to specifications as detailed in the machine service manuals. Results to be supplied as part of the agreed template
  6. Remove the existing servers
  7. Install the new servers
  8. Configure the hardware console
  9. Install hypervisor
  10. Aperture record update (internal system)
  11. Check and amend firmware levels, as required, to conform with documented firmware levels
  12. Hardware upgrades
  13. Unpack the hardware parts
  14. Dispose of packaging materials as per agreed processes and procedures
  15. For any removal of assets, will hand these over to arrange secure disposal
  16. Install parts during the agreed schedule
  17. Check server healthiness after the upgrade
  18. Cable Management retrofit
  19. Confirm the server to be worked on had been powered off by the service owner
  20. Have a record of the cable connection mapping provided by the customer; otherwise, record the mapping of the server end's cable connections
  21. Disconnect the server end's connected corresponding cables
  22. Unmount the corresponding server off the rack, and remove its existing rail kit from itself and the rack
  23. Install the new rail kit with CMA on the corresponding server and the rack.

About Company:
Purview is a leading Digital Cloud & Data Engineering company headquartered in Edinburgh, United Kingdom having a presence in 14 countries including India (Hyderabad, Bangalore, Chennai and Pune), Poland, Germany, Finland, Netherlands, Ireland, USA, UAE, Oman, Singapore, Hong Kong, Malaysia and Australia.

We have a strong presence in the UK, Europe and APEC, providing services to Captive Clients (HSBC, NatWest, Northern Trust, IDFC First Bank, Nordia Bank etc.) in fully managed solutions and co-managed capacity models. Also, we support various top IT tier 1 organisations (Capgemini, Deloitte, Wipro, Virtusa, L&T, CoForge, TechM and more) to deliver solutions and workforce/resources.

Company Info:
IN:
3rd Floor, Sonthalia Mind Space
Near Westin Hotel, Gafoor Nagar
Hitechcity, Hyderabad
Phone: +91 40 48549120 / +91 8790177967

UK:
Gyleview House, 3 Redheughs Rigg,
South Gyle, Edinburgh, EH12 9DQ.
Phone:
Email:

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