Modern Foreign Languages (MFL) Teacher

GSL Education - Yorkshire
Sheffield
1 year ago
Applications closed

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Job Title: Modern Foreign Languages (MFL) TeacherLocation: Sheffield Salary Range: £140 - £190 per day (Depending on experience) Start: ASAP Are you a passionate Modern Foreign Languages (MFL) Teacher with the ability to inspire students to embrace new languages and cultures? GSL Education are seeking a dedicated and enthusiastic Modern Foreign Languages (MFL) Teacher to join a welcoming school in Sheffield. This is an exciting opportunity to teach languages such as French, Spanish, or German, helping students develop essential communication skills and an appreciation for global cultures.About the role: As a Modern Foreign Languages (MFL) Teacher, you will be responsible for delivering engaging and interactive language lessons that spark students' interest in learning a new language. You will teach language skills in listening, speaking, reading, and writing, while also promoting cultural understanding.Responsibilities of the Modern Foreign Languages (MFL) Teacher: Plan and deliver creative and engaging lessons in one or more modern foreign languages (e.g., French, Spanish, German).Teach language skills, including listening, speaking, reading, and writing, tailored to students’ varying abilities.Foster a love for languages and promote cultural awareness through interactive and immersive lessons.Create a positive and inclusive learning environment that encourages participation and confidence.Prepa...

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