Health Care Assistant - Part Time (Night)

Gold Care Homes
Ruislip
1 month ago
Applications closed

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About Our Home:

Tucked away in South Ruislip, Brackenbridge House is a haven where nature's beauty meets the warmth of home. Spread across one and a half acres of enchanting gardens, this residence offers both the buzz of London's attractions and the tranquility of the Berkshire countryside. With room for 36 residents, Brackenbridge isn't just about care-it's about wine evenings under the stars, dance sessions that spark joy, and the simple pleasure of a stroll through blossoming pathways. Here, every corner tells a story, and every day is an invitation to make memories. Welcome to our close-knit community.

Please note that this is a Part time Role. NIGHT (22hours)

You must have at least one year experience in care sector and has the ability to show the following:

  • Being responsive and showing compassion to the individual needs of all.
  • Providing residents and staff with a warm, friendly, healthy and safe environment to live and work.
  • Establishing a person-centred approach to care.
  • Building the best team by encouraging training and self-development of all.


What does the role involve?

  • Personal care - assisting with washing and dressing
  • Assisting with meals by supporting with eating and drinking
  • Completing daily care plans
  • Assisting with mobility


What we can offer you:

  • £12 per hour
  • ESAS - Salary Advance
  • Employee Assistance Programme
  • Perkbox
  • Employee of the Month
  • Long term service awards
  • Blue Light Card
  • Professional Development
  • Refer a Friend

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