
Master Transportation Security Officer-Security Training Instructor
Transportation Security AdministrationSecuring Travel, Protecting People - At the Transportation Security Administration, you will serve in a high-stakes environment to safeguard the American way of life. In cities across the country, you would secure airports, seaports, railroads, highways, and/or public transit systems, thus protecting America's transportation infrastructure and ensuring freedom of movement for people and commerce. Per TSA Office of the Administrator, this position has been reinstated as bargaining unit eligibleThis Master Transportation Security Officer-Security Training Instructor position is located at Cherry Capital Airport (TVC), Transportation Security Administration, Department of Homeland Security (DHS). As a Master Transportation Security Officer (MTSO), you will support the airport training program through performance of a variety of training-related functions. In addition to training programresponsibilities, you will also perform pre-board security screening of persons, cargo, carry-on, and checked baggage as directed by the Federal Security Director (FSD), or his/her designee, a minimum of 20% of the time.Duties include but are not limited to: Performing training instruction within established guidelines and standards in support of nationally developed training programs (e.g., new hire training, On-Screen Alarm Resolution Protocol, Crossover); supporting recurrent training needs, and conducting return to duty and remediation training. Adapting/developing local training materials to meetrequirements; conducting local training in accordance with training standards; assisting with the training department administrative support (e.g., Online Learning Center (OLC) entry, training resource room facilitation, roster management, conducting testing, and ensuring evaluations are done); assisting with training logistics support components (e.g., coordinating needed supplies and materials); managing classroom dynamics; resolving routine classroom problems; monitoring and evaluating training and providing feedback on needed adjustments; recommending enhancements; and maintaining communication with management and supervisors concerning issues with training that may reveal security-screening weaknesses or vulnerabilities. As directed, providing mentoring/coaching to address identified training needs. Administering and scoring training tests (e.g., job knowledge, image). Assisting with PASS Practical Skills Observations (PSOs) and conducting Level 3 Assessments, as needed. NOTE: Employees must maintain all screening certificationrequirements and perform screening functions (passenger, baggage, or both) a minimum of 20% of the time. Emergency Essential Position: This position is designated as an Emergency Essential (EE) position. This designation requires the employee to remain in a duty status if an emergency arises.
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