Supply Teacher

Empowering Learning
Oxford
10 months ago
Applications closed

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Empowering Learning are excited to be going through a period of expansion, we have recently expanded our midlands team and are working with schools in a variety of counties, including the re-opening of our Oxfordshire branch which sadly closed during the pandemic.We are looking to work with teachers and cover supervisors, who want flexible work and are happy to do supply teaching. If you are in between jobs, looking for something flexible or at the start of your career - we would like to hear from anyone that is interested in working with our large Midlands based team to work within our client schools.About the Role:This is an excellent opportunity for an individual looking to gain classroom experience and support the learning journey of students. As a supply teacher, you will:Deliver pre-prepared lesson plans in the absence of the class teacher.Be in control of your working weekGain experience in a variety of different settingsManage classroom behaviour effectively to create a positive learning environment.Support students in completing tasks and maintaining their focus.What We Are Looking For:We are looking for someone who:Has experience working with children or young people in a school or similar setting.Who wants to help schools and students alike, to achieve their goalsSomeone who wants to work with different schools and embrace each day as their best dayIs confident in managing groups of students across various year groups and subjects.Holds a degree or equivalent experience in a teaching setting. #ELINDOX

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