|work|: Ghosts S03e03 Dsrip

As they try to get back to their usual antics, a new ghost makes her presence known. Her name is Lady Amelia, and she died under mysterious circumstances back in the 18th century.

As tensions rise, the living and the dead must band together to uncover the truth behind Lady Amelia's death. Along the way, they encounter a few surprises, including a long-lost family heirloom and a shocking revelation about one of their own. ghosts s03e03 dsrip

It's been a tough week for the gang at Woodstone Manor. In the aftermath of the events of Season 3, Episode 2, they've been dealing with the fallout of the recent haunting. As they try to get back to their

Meanwhile, Alison tries to help Lady Amelia resolve her unfinished business on earth. But as they dig deeper into Lady Amelia's past, they uncover some dark secrets that threaten to upend the entire household. Along the way, they encounter a few surprises,

Lady Amelia quickly becomes infatuated with the charming and handsome, Chas. However, her attempts at flirting only seem to confuse and annoy him.

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