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Marsh

Marsh McLennan Agency (MMA) provides business insurance, employee health & benefits, retirement, and private client insurance solutions to organizations and individuals seeking limitless possibilities. With offices across North America, we combine the personalized service model of a local consultant with the global resources of the world’s leading professional services firm, Marsh (NYSE: MRSH).

Senior Managing Consultant - Property Engineer

EngineerEngineerOtherRemoteSeniorTeam 10,001

Location

United States

Posted

40 days ago

Salary

$112.6K - $239.8K / year

Seniority

Senior

No structured requirement data.

Job Description

Senior Managing Consultant - Property Engineer

Marsh

Role Description We are seeking a talented individual to join our team at Marsh as a Senior Consultant for our Property Risk Consulting practice. Please note- this is a remote role. The successful candidate will lead daily operations from a support and administrative level, coordinating complex logistics and task assignments for client relationship projects while ensuring effective communication and problem resolution. We will count on you to: - Technically assess property risk from fire, natural hazards, and related perils, providing expert guidance and leadership on complex client accounts. - Collaborate with client brokerage teams to drive beneficial outcomes and support business development efforts to grow the practice. - Produce technically sound reports, plan review letters, and consultative client guidance that meet rigorous quality assurance standards. - Manage project work plans, budgets, and resources while adhering to company policies and continuous risk improvement methodologies. - Maintain client confidentiality and build positive, long-term client relationships through effective communication and problem-solving. Qualifications - Minimum 5 years of experience in risk management or property engineering consulting. - Bachelor’s degree or higher in an Engineering discipline, preferably fire science, fire protection engineering technology, or fire protection engineering. - Strong written and oral communication skills with experience preparing professional or technical summaries. - Ability to work independently and collaboratively within a team environment. - Commitment to professional growth through continued education, certifications, and mentorship. Requirements - National Fire Protection Association (NFPA) Certified Fire Protection Specialist credential (preferred). - Experience in commercial insurance or brokerage environments. - Proven ability to apply national standards (NFPA, FM Global) and diagnostic skills to design and implement risk mitigation solutions. - Demonstrated success in business development and client relationship management. - Positive, solutions-oriented mindset with a focus on delivering value to clients. Benefits - Professional development opportunities. - Interesting work and supportive leaders. - A vibrant and inclusive culture. - A range of career opportunities. - Health and welfare benefits. - Tuition assistance. - 401K savings and other retirement programs. - Employee assistance programs. Company Description Marsh Risk is a business of Marsh (NYSE: MRSH), a global leader in risk, reinsurance and capital, people and investments, and management consulting, advising clients in 130 countries. With annual revenue of over $27 billion and more than 95,000 colleagues, Marsh helps build the confidence to thrive through the power of perspective. Marsh is committed to embracing a diverse, inclusive and flexible work environment. We aim to attract and retain the best people and embrace diversity of age background, disability, ethnic origin, family duties, gender orientation or expression, marital status, nationality, parental status, personal or social status, political affiliation, race, religion and beliefs, sex/gender, sexual orientation or expression, skin color, veteran status (including protected veterans), or any other characteristic protected by applicable law. If you have a need that requires accommodation, please let us know by contacting reasonableaccommodations@marsh.com. The applicable base salary range for this role is $112,600 to $239,800. The base pay offered will be determined on factors such as experience, skills, training, location, certifications, education, and any applicable minimum wage requirements. Decisions will be determined on a case-by-case basis. In addition to the base salary, this position may be eligible for performance-based incentives. Applications will be accepted until: September 1, 2026.

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