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KERALA PSC RECRUITMENT 2018: 56 NOTIFICATIONS LIVE NOW (APPLY BEFORE JUNE 13TH)

Link to apply
Kerala Public Service Commission
https://thulasi.psc.kerala.gov.in

Kerala PSC invites application from eligible candidates for filling various vacancies in 56 different posts in various department in kerala. The notification published is dated 10/05/2018 and including various posts like Assistant Professor, System Analyst, Vocational Teacher, Higher secondary teacher,Mine mate, Furnace operator and many other NCA notifications etc.

Interested and eligible candidates may apply online for these post through their one time registration profile on or before 13/06/2018.

Summary of KPSC Recruitment for 56 different posts
NAME OF THE ORGANIZATION KERALA PSC
Type of Organization Govt
Total Posts 56
Total Vacancies Many
Educational Qualification 7th Std to Degree/PG
Salary Different for Different posts
Mode of Application Online
Last Date of Application 13/06/2018


Vacancy Details:


AYAH-VARIOUS Category No: 69-75/2018  FIRST NCA NOTIFICATION
DRIVER-EXCISE Category No: 68/2018 FIRST NCA NOTIFICATION
LOWER DIVISION CLERK-EXSERVICEMEN-NCC-SAINIK WELFARE-COMMON NOTIFICATION Category No: 67/2018  THIRD NCA NOTIFICATION
PART TIME HIGH SCHOOL ASSISTANT -URDU-EDUCATION Category No: 66/2018  SEVENTH NCA NOTIFICATION
CIVIL EXCISE OFFICER-EXCISE Category No: 62-65/2018  FIRST NCA NOTIFICATION
FULL TIME JUNIOR LANGUAGE TEACHER-ARABIC-LPS-EDUCATION Category No: 61/2018  SIXTH NCA NOTIFICATION
FULL TIME JUNIOR LANGUAGE TEACHER-ARABIC – JUNIOR –EDUCATION Category No: 60/2018 SECOND NCA NOTIFICATION
LIVESTOCK INSPECTORGR-II-POULTRY ASSISTANT-MILK RECORDER-STORE KEEPER – ENUMERATOR Category No:59/2018  FIRST NCA NOTIFICATION
PHARMACIST GRADE II – HEALTH SERVICES Category No: 58/2018  FIRST NCA NOTIFICATION
JUNIOR PUBLIC HEALTH NURSE GR-II-HEALTH SERVICES-MUNICIPAL COMMON SERVICE Category No: 55-57/2018 FIRST NCA NOTIFICATION
HIGH SCHOOL ASSISTANT – ARABIC – EDUCATION Category No: 49-54/2018 FOURTH NCA NOTIFICATION
HIGH SCHOOL ASSISTANT ARABIC-EDUCATION Category No: 47-48/2018 THIRD NCA NOTIFICATION
HIGH SCHOOL ASSISTANT – ARABIC – EDUCATION Category No: 46/2018  SECOND NCA NOTIFICATION
WATCHMAN-KERALA STATE HANDLOOM DEVELOPMENT CORPORATION Category No: 45/2018  SECOND NCA NOTIFICATION
FIREMAN DRIVER-CUM-PUMP-OPERATOR -TRAINEE-FIRE AND RESCUE SERVICES Category No: 42-44/2018  SECOND NCA NOTIFICATION
HIGHER SECONDARY SCHOOL TEACHER – JUNIOR- ARABIC-KERALA HIGHER SECONDARY EDUCATION Category No: 36-41/2018  SECOND N.C.A. NOTIFICATION
LECTURER IN MRIDANGAM-COLLEGIATE -EDUCATION-MUSIC COLLEGES Category No: 35/2018 FIRST NCA NOTIFICATION
LECTURER IN PHYSICS-COLLEGIATE EDUCATION Category No: 34/2018FOURTH N.C.A .NOTIFICATION
LECTURER IN PHYSICS-COLLEGIATE EDUCATION Category No: 33/2018   FOURTH N.C.A .NOTIFICATION
ASSISTANT PROFESSOR IN MICROBIOLOGY-MEDICAL EDUCATION Category No: 31-32/2018 FIRST NCA NOTIFICATION
ASSISTANT PROFESSOR IN ORAL MEDICINE AND RADIOLOGY-KERALA MEDICAL EDUCATION SERVICES Category No: 30/2018 FIRST NCA NOTIFICATION
ASSISTANT PROFESSOR IN COMMUNITY DENTISTRY-KERALA MEDICAL EDUCATION SERVICE Category No: 29/2018 FIRST NCA NOTIFICATION
FULL TIME JUNIOR LANGUAGE TEACHER – HINDI-GENERAL EDUCATION Category No: 28/2018  Special Recruitment from among SC/ST only)
FURNACE OPERATOR-KERALA MUNICIPAL COMMON SERVICE Category No: 27/2018
MINES MATE – THE KERALA CERAMICS LTD Category No: 26/2018
ASSISTANT MANAGER – PRODUCTION- GR-PHARMACEUTICAL CORPORATION – IM- KERALA LIMITED Category No: 25/2018
HIGHER SECONDARY SCHOOL TEACHER -JR- JOURNALISM-KERALA HIGHER SECONDARY EDUCATION Category No: 24/2018
HIGHER SECONDARY SCHOOL TEACHER – SOCIOLOGY-KERALA HIGHER SECONDARY EDUCATION Category No: 23/2018
VOCATIONAL TEACHER- LIVESTOCK MANAGEMENT-KERALA VOCATIONAL HIGHER SECONDARY EDUCATION Category No: 22/2018 NOTIFICATION (BY TRANSFER)
SYSTEM ANALYST – SENIOR PROGRAMMER-KERALA PUBLIC SERVICE COMMISSION Category No: 21/2018
ASSISTANT PROFESSOR IN RADIOTHERAPY-MEDICAL EDUCATION SERVICE Category No: 20/2018


How to Apply ?
Interested and eligible candidates has to apply through the On Time Registration portal of Keral

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