Computer Science Teacher

Remedy Education
Colchester
11 months ago
Applications closed

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Teacher of Computer ScienceAre you passionate about computer science education? Do you have the knowledge and skills to inspire the next generation of innovators and problem solvers? We are seeking a talented and dedicated Secondary Teacher of Computer Science to join our dynamic faculty.Responsibilities for Computer science Teacher:· Create a positive and inclusive learning environment that fosters curiosity, critical thinking, and creativity.· Teach students fundamental programming languages, algorithms, data structures, and computational thinking.· Introduce students to various aspects of computer science, such as cybersecurity, artificial intelligence, and robotics.· Facilitate hands-on coding projects and activities to encourage practical application of computer science concepts.· Assess student progress through assignments, tests, and projects, and provide constructive feedback to support their growth.· Collaborate with colleagues to develop curriculum plans and ensure alignment with educational standards.· Stay up-to-date with advancements in computer science education and integrate relevant technologies and tools into the classroom.· Encourage students to participate in extracurricular activities, such as coding clubs or competitions, and provide guidance as needed.Requirements:· Bachelor's degree in Computer Science, Education, or a related field (Master...

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