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REALTYEXECUTIVESBESTCHOICE

CHESHIRE-USA

Company Name:
Corporate Name:
REALTYEXECUTIVESBESTCHOICE
Company Title: Sinclair Insurance Group, Inc. 
Company Description: sinclair insurance group, inc connecticut's largest independent insurance agent specializing in commercial auto home marine group health 
Keywords to Search: sinclair insurance connecticut auto marine property casualty pc group health benefits life commercial personal bonding 
Company Address: 1113SouthMinStrt,CHESHIRE,CT,USA 
ZIP Code:
Postal Code:
6410 
Telephone Number: 8605269578 (+1-860-526-9578) 
Fax Number: 8605269606 (+1-860-526-9606) 
Website:
starkinsurance. com 
Email:
 
USA SIC Code(Standard Industrial Classification Code):
653118 
USA SIC Description:
Real Estate 
Number of Employees:
 
Sales Amount:
 
Credit History:
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Contact Person:
 
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