Position:
Legal Assistant at Fee, Smith & Sharp LLP
Location:
Liberty Hill, Texas, United States
Found email addresses for Danielle Munoz:
Found phone for Danielle Munoz:
Apr 2025 - Current
Jun 2024 - Apr 2025
Feb 2018 - Mar 2024
Aug 2016 - Jan 2018
Their professional focus is Administrative Law, Adobe Acrobat, and Business Process Design across 3 core areas.
Paralegal Certificate at University of Houston
Bachelor of Science - BS at University of Houston
What is Danielle Munoz's email address?
SignalHire found a verified business email address for Danielle Munoz: d****z@feesmith.com.What is Danielle Munoz's phone number?
SignalHire found a verified phone number for Danielle Munoz: +1-***-***-9327.How do I contact Danielle Munoz at Fee, Smith & Sharp LLP?
You can reach Danielle Munoz through SignalHire by unlocking their verified email and direct phone number (free signup, no credit card needed). SignalHire is the fastest route if you need their contact details immediately.What is Danielle Munoz's professional background?
Danielle Munoz has 10 years of professional experience. They have held roles including Legal Assistant, Paralegal, and Legal Assistant at companies such as Texas Medical Board, Williamson County Attorney, Dee Hobbs, and Texas Health and Human Services. Their education includes Paralegal Certificate from University of Houston, and Bachelor of Science - BS from University of Houston.Is Danielle Munoz's contact information up to date?
Yes. Danielle Munoz's SignalHire profile was last updated on 22 May 2026, reflecting their current position as Legal Assistant at Fee, Smith & Sharp LLP in Dallas, Texas, United States.SignalHire complies with the General Data Protection Regulation (GDPR). SignalHire follows GDPR requirements, including but not limited to rights of data subjects to access, correct, or delete their personal information and supports the right to be forgotten.
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