Swap-bot Time: December 23, 2025 5:30 am
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Kitchen In A Box

Launch gallery slideshow

Swap Coordinator:mrsD (contact)
Swap categories: Food 
Number of people in swap:10
Location:Other
Type:None
Last day to signup/drop:April 26, 2006
Date items must be sent by:May 8, 2006
Number of swap partners:1
Description:

You will fill a box - regular shoebox, or thereabouts, or equivalent envelope - with things for a person who loves to create in her kitchen.

These could include items such as cookie cutters, spices, non-pareils, small utensils, cute dishes, packets of tea or coffee, pretty napkins, teatowels, or cookbooks, assorted safe-to-mail food items, etc.

You will have one partner. Value of the swap should be about $20. Please send quality items - Handmade is great! - you yourself would like to receive and use. When you receive your swap please let the sender know by dropping her a note via email.

Discussion

mrsD 04/20/2006 #

please note: swappers with a rating of (1) will be unsubbed from this swap before the cutoff date.

user410 05/ 8/2006 #

thanks to my swap mate. where's the rating window on this one? i received a wonder package of fun stuff includeing her favorite recipes in a cute little pouch.

mrsD 05/11/2006 #

hi teresa, you will be able to rate your partners One Week after the 'send by' deadline, so on or around the 15th :)

anturov 12/22/2025 #

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