Data Analyst - Entry Level (#CJ)

Tamayo Federal Solutions LLC (TFS)
Todmorden
3 weeks ago
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Data Analyst – Entry Level

Tamayo Federal Solutions, LLC, a Department of Defense contractor, is now hiring a Data Analyst – Entry Level to support a U.S. Navy program office providing data analysis and management support for aircraft carrier maintenance and modernization efforts.


Job Type: Full‑time


The selected candidate will provide analytical and administrative support in the collection, organization, validation, and reporting of data related to maintenance, modernization, scheduling, and lifecycle sustainment of naval systems. You will support Government requirements related to Class Maintenance Plans (CMP), Baseline Availability Work Packages (BAWP), modernization planning, and data‑driven decision‑making across multiple Navy systems. We are seeking a motivated, detail‑oriented professional who can organize data effectively and support reporting and analysis activities.


Responsibilities

  • Collect, organize, and validate maintenance, modernization, schedule, and cost data
  • Perform data entry, data quality control, and database updates across multiple systems
  • Support data extraction and compilation from Government databases (e.g., M&SWP, eIMPAC, eMRA, NDE)
  • Assist in the development of reports, metrics, and presentations for leadership
  • Support development and maintenance of Class Maintenance Plans (CMP) and Baseline Availability Work Packages (BAWPs)
  • Update maintenance history databases using Availability Work Package (AWP) completion data
  • Support lifecycle maintenance and modernization planning effortsAssist in preparation of briefs and presentations, including Milestone Adherence Board (MAB) briefings
  • Respond to data calls and requests for information (RFIs)
  • Support meetings, including documentation of notes and action items
  • Assist in development and documentation of processes and procedures
  • Support modernization tracking and reporting activities
  • Assist with data visualization efforts using Excel and PowerPoint
  • Ensure proper handling of sensitive or restricted information as required

Requirements

  • 0–1 years of professional experience (1 year preferred)
  • Experience with Microsoft Office 365 (Excel, PowerPoint, Teams)
  • Strong attention to detail and organizational skills
  • Ability to learn new systems and processes quickly
  • Strong written and verbal communication skills

Preferred Experience

  • Experience supporting aircraft carriers, naval ships, or DoD programs
  • Familiarity with Navy data systems (e.g., M&SWP, eIMPAC, eMRA, NDE)
  • Experience with data entry, reporting, or analysis
  • Basic knowledge of data visualization or reporting tools

These positions are contingent upon award of contract. “Contingent” offers for employment may stipulate those one or more requirements be satisfied before final commitment between candidate and Tamayo Federal is established; namely, award of contract to the Tamayo Federal Team.


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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