Data Analyst Senior (#CJ)

Tamayo Federal Solutions LLC (TFS)
Todmorden
3 weeks ago
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Tamayo Federal Solutions, LLC, a Department of Defense contractor, is hiring a High‑Mid Senior Data Analyst to support the customer and provide system administration services for both physical and virtual hosted applications. The analyst will ensure the efficient operation of all physical and virtual servers, support Government requirements to maintain data center computing, storage, and networking capabilities at Government data centers and within associated commercial cloud environments.


Job Type

Full‑time


Responsibilities

  • Retrieve, organize and/or analyze data to support life‑cycle maintenance and modernization efforts from various Government databases.
  • Support development, validation, refinement and/or cost‑benefit analyses of existing or proposed maintenance and modernization requirements, including assisting in Reliability Centered Maintenance related tasks.
  • Identify and track cost savings, cost avoidances or cost increases that affect the operating and support (O&S) costs of aircraft carriers.
  • Support the development of the Technical Foundation Paper (TFP) and other documentation to support and defend Program Objective Memorandum (POM) submittals.
  • Retrieve, organize and/or analyze maintenance/modernization and/or cost (labor and materials) data for aircraft carrier availabilities and submit findings for evaluation and action.
  • Support life‑cycle planning efforts, funding and/or schedule development.

Data Analyst (ANP3) – Sr (15‑2031 Operations Research Analysts)


Requirements

  • U.S. Citizenship required
  • Active Secret Clearance
  • Bachelor's level degree in engineering, engineering technology, or statistical analysis
  • 10 years minimum professional experience
  • Proficiency with MS Office 365, Adobe Acrobat; DTS; DISS
  • Experience in development and sustainment of platform Class Maintenance Plans and supporting documentation, understanding/analyzing maintenance philosophy and cost data for availabilities and retrieving/analyzing system maintenance data for Navy ships

Preferred

  • 15+ years of professional experience
  • Experience in DTS, DCPDS, eDACM, ERP, DISS, TWMS, USA Staffing, USA Jobs, Waypoints, SharePoint
  • Experience related to aircraft carriers

Tamayo Federal Solutions, LLC offers a full package of benefits and competitive salary, excellent group medical, vision, and dental programs; 401(k); tuition reimbursement; employee training, development, and education programs; advancement opportunities; and much more!


EEO/AA Employer. Protected Veterans and individuals with disabilities are encouraged to apply.


Please NO RECRUITERS – Job Applicants ONLY


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