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NY Realty: Upper West Side Pad For Sale For Only $1.85M

Dakota has been known as the home of rich and famous personalities, like Yoko Ono and Lauren Bacall. Recently, Bacall sold her apartment for a whopping price of $21 million. However, there is a property that offers a relatively low price of $1.85 million.

This one-bedroom apartment is a spacious one. Like pre-war apartments, this kind is mostly configured so there's plenty of room for the occupants and their things. The estate is so elegant in every aspect.

The place has well-kept pre-war details, such as gabled windows, a stained-glass panel, and hardwood floors. It is also accentuated with built-in-bookcases, and a spacious living room with windows lining one wall. A tidy eat-in kitchen in the one-bedroom apartment is both modern and vintage, with renovated white cabinetry and updated appliances, as reported by 6sqft.

The bedroom has a renovated unsuited bath and a large walk-in closet in front of a dressing area. Guests need to pass through the bedroom to access the bath.

The full-service, white-glove Dakota is a New York City landmark designed by Henry J Hardenbergh and was completed in 1884. The listing calls the building a "perfect pied-a-terre" so it's open for the possibility.

A rare small apartment at the famous Dakota building has come up for sale. This fairy tale apartment at 1 West 72nd Street is on the top floor, but should not be mistaken as a penthouse. Of course, that is the charm of it - at least for a potential buyer who craves to live in one of the city's most iconic buildings.

According to Street Easy, the one-bedroom unit which is listed for sale for $1.85 million carries a monthly maintenance charge of $2,295. This apartment unit is usable as a pied-a-terre. The pad is quiet and comes with pre-war details, a load of storage, and lots of closet space.

Dakota is one of the most famous NYC apartment buildings. It attracts famous names who relish the stately UWS location and the classic description of the building.


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