Position:
Commuter Assistant at University of New Haven
Location:
East Haven, Connecticut, United States
Found email addresses for Gian Rodriguez:
Found phones for Gian Rodriguez:
Aug 2025 - Current
Jun 2025 - Aug 2025
Jul 2024 - Jun 2025
Jun 2022 - Jul 2024
Their professional focus is Adobe Illustrator, Adobe InDesign, and Adobe Photoshop across 3 core areas.
University of New Haven
What is Gian Rodriguez's email address?
SignalHire found verified email addresses for Gian Rodriguez, both business and personal. Their business email is r**@newhaven.edu, and personal emails include r***@aol.com, g***@hotmail.com, and r***@gmail.com.What is Gian Rodriguez's phone number?
SignalHire found multiple verified phone numbers for Gian Rodriguez: +1-205-***-**65, +1-205-***-**89, and +1-205-***-**00.How do I contact Gian Rodriguez at University of New Haven?
You can reach Gian Rodriguez 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 Gian Rodriguez's professional background?
Gian Rodriguez has 4 years of professional experience. They have held roles including Graphic Web Designer, Gallery Attendant, and Museum Interpreter at companies such as Yale University, Yale Peabody Museum, and Yale Peabody Museum. Their education includes University of New Haven.Is Gian Rodriguez's contact information up to date?
Yes. Gian Rodriguez's SignalHire profile was last updated on 26 May 2026, reflecting their current position as Commuter Assistant at University of New Haven in West Haven, ct, 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.
SignalHire is CCPA-compliant and provides California residents the right to know, access, opt out, and request deletion of their personal data.