• 976 Lorraine Avenue

  • Union, NJ 07083
  • Neighborhood: Connecticut Farms
  • $349,000
  • 4 Beds
  • 2.00 Bath
  • HOA: N/a
  • MLS® #: 21920948
  • Year Built: 1929

Description of 976 Lorraine Avenue, Union

PRICED RIGHT. WON'T LAST! Shows great. Well kept 4 bedroom, 2 full bath, Open floor plan with many upgrades. Newer kitchen and baths nicely done in neutral colors, harwood floors. Close proximity to public transportation, Downtown Union shops, restaurants and Kean University. Easy commute to Newark Airport and NYC

Michael KustinN.Y.S. Licensed Real Estate Salesperson

Mortgage Calculator

Down Payment: Monthly Payment:

Home Valuation Map

See what homes in your area are priced at now. This innovative tool puts you in the know about what your home may sell for.

Click Here

Essential Information

  • MLS® #21920948
  • Price$349,000
  • Bedrooms4
  • Bathrooms2.00
  • Full Baths2
  • Acres0.00
  • Year Built1929
  • TypeSingle Family
  • Sub-TypeDetached
  • StyleCape
  • StatusContinue to Show

Interior

  • HeatingRadiator, Steam
  • # of Stories2

Community Information

  • Address976 Lorraine Avenue
  • AreaUnion (UNN)
  • SubdivisionConnecticut Farms
  • CityUnion
  • CountyUnion
  • StateNJ
  • Zip Code07083

Interior Features

Attic - Other, Built-Ins, Sliding Door

Amenities

  • FeaturesDishwasher, Dryer
  • ParkingAsphalt
  • GaragesNone

Exterior

  • ExteriorVinyl
  • Exterior FeaturesDeck
  • Lot DescriptionLevel
  • RoofShingled

Additional Information

  • Listing OfficeWeichert Realtors-freehold
  • Listing AgentAisha Kaloshi
  • ZoningResidential

Property Location

Get directions to this property:
Please provide a valid email address.

The data relating to real estate on this web site comes in part from the Internet Data Exchange program of the MLS of the Monmouth Ocean Regional REALTORS®, and is updated as of August 20th, 2019 at 8:35am EDT (date/time). IDX information is provided exclusively for consumers' personal, non-commercial use and may not be used for any purpose other than to identify prospective properties consumers may be interested in purchasing.