Year 4 Teacher

Northampton
9 months ago
Applications closed

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Teaching Tomorrow, a top education agency in Northamptonshire, is seeking passionate Year 4 Teachers across all subjects to spark curiosity and foster a love for learning. With immediate opportunities for daily, short-, and long-term placements, this is your chance to make a real impact in schools across Northamptonshire and beyond.

💡 Why Join Us?
✅ Flexible schedule – choose when and where you work
✅ Competitive pay rates
✅ Supportive team & ongoing professional development
✅ Seamless online timesheets
✅ Access to exciting long-term & permanent roles

🎓 What We’re Looking For:
✔️ QTS (or equivalent)
✔️ Strong UK curriculum knowledge or teaching experience abroad
✔️ Engaging, adaptable teaching style
✔️ Passion for inspiring young learners

Ready to take the next step in your teaching journey? Apply now and shape the future of education!

Teaching Tomorrow Ltd is committed to safeguarding and promoting the welfare of children and young people. All applicants are subject to pre-employment checks including satisfactory references and an enhanced Disclosure and Barring Service (DBS) check. This role is exempt from the Rehabilitation of Offenders Act 1974 and the amendments to the Exceptions Order 1975, 2013 and 2020.

It is an offence to apply for this role if you are barred from engaging in regulated activity relevant to children

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