Science Teachers Urgently required

Chesterfield
9 months ago
Applications closed

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Are you a qualified and passionate Science Teacher looking for a long-term role in the Chesterfield area from September 2025?

We are currently recruiting for several full-time Science teaching positions in secondary schools across Chesterfield, beginning in the new academic year. These roles are 5 days per week, with full planning and marking responsibilities - ideal for dedicated teachers who want to make a real impact in the classroom.

Location: Chesterfield
Start Date: September 2025
Contract: Long-term, full-time (5 days a week)
Responsibilities: Full planning, delivery, and marking of Science lessons (KS3 & KS4)
Pay: Paid to scale (MPS/UPS)

We are looking for teachers who:

Hold UK QTS or equivalent
Can teach General Science at KS3 and KS4 (specialisms welcome)
Have strong classroom management and a commitment to high-quality teaching
Are reliable, organised, and confident in managing a full teaching timetableWhat's on offer:

Consistent, long-term positions with supportive departments
Pay to scale from day one
Opportunities for CPD and potential for permanent roles
Guidance and support throughout your placementJoin welcoming and ambitious schools where your expertise in Science can spark curiosity and inspire achievement.

Apply now to secure your Science teaching role for the new academic year!

Ready to make an impact next academic year? Please submit your application and CV at your earliest convenience to

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