Teacher on Special Assignment (TOSA) with BCLAD - Elementary Site Support - Montgomery Elementary School, 1.0 FTE
Updated: May 23
Davis
0
0mi
Job Abstract
Teacher on Special Assignment (TOSA) with BCLAD - Elementary Site Support - Montgomery Elementary School, 1.0 FTE at Davis Joint Unified School District Application Deadline Until Filled Date Posted 5/22/2024 Contact Heidi Rennison Number of Openings 1 Salary Pay Range $56,837 - $101,964 Annually Add'l Salary Info Will give credit up to 20 years of Teaching Experience. Length of Work Year 2024-2025 School Year Employment Type Full Time Requirements / Qualifications Position requires: Appropriate... more details
Teacher on Special Assignment (TOSA) with BCLAD - Elementary Site Support - Montgomery Elementary School, 1.0 FTE at Davis Joint Unified School District
Application Deadline
Until Filled
Date Posted
5/22/2024
Contact
Heidi Rennison
Number of Openings
1
Salary
Pay Range
$56,837 -
$101,964
Annually
Add'l Salary Info
Will give credit up to 20 years of Teaching Experience.
Length of Work Year
2024-2025 School Year
Employment Type
Full Time
Requirements / Qualifications
Position requires: Appropriate California Multiple Subject or Single Subject credential with CLAD.
A complete application packet is required for consideration.
Copy of Transcript
Credential Copy
Letter of Introduction
Letter(s) of Recommendation (At least 3 )
Resume
Bilingual Authorization - Spanish
Multiple Subject Teaching Credential - General Subjects
Comments and Other Information
Candidates in the process of completing their credential program may apply, but need to indicate in letter of introduction when their program will be completed.
Links Related To This Job
Davis Joint Unified School District Website
CalSTRS Links
Not all postings qualify for CalSTRS. Informational Only.
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