SKU: 18256401954
elsa in purple dress

elsa in purple dress Elsa Dress and Top PDF sewing pattern – Silversaga Patterns

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Description

elsa in purple dress Elsa Dress and Top PDF sewing pattern – Silversaga PatternsThe Elsa Dress and Top is a statement piece that balances bold design with thoughtful proportions. Its 3 4 length sleeves, featuring a dipped hemline in the back, are the heart of the design. The bodice comes in two versions: an oversized fit, which is the original, relaxed silhouette from my ready to wear S S2021 collection, and a newly graded fitted bodice with a closer fit, offering a more tailored look. Both versions are shaped with darts and sit

The Elsa Dress and Top is a statement piece that balances bold design with thoughtful proportions. Its 3/4 length sleeves, featuring a dipped hemline in the back, are the heart of the design. The bodice comes in two versions: an oversized fit, which is the original, relaxed silhouette from my ready-to-wear S/S2021 collection, and a newly graded fitted bodice with a closer fit, offering a more tailored look. Both versions are shaped with darts and sit at a high waistline, with a curved waistline that mirrors the shape of the sleeves, creating a harmonious flow throughout the design. View A features a gathered, voluminous skirt with hidden inseam pockets, while View B offers a peplum variation.

Pattern difficulty
This pattern is beginner-friendly but includes a few rewarding techniques for those looking to build their skills. You’ll create sleeve cuffs, finish the neckline with bias binding, insert an invisible zipper, and make gathered tiers for the skirt. The pockets are optional.

Fabric recommendations
Elsa is designed for woven, natural fibers with some structure, such as cotton, linen, or wool. The black floral sample dress is made from a lightweight, textured jacquard polyester. Choose fabrics like lace, organza, or brocade to elevate the design and create a fun party dress.

Fabric usage
Metric EU34 - EU54:
View A: 3.18 meter - 3.81 meter
View B: 1.46 meter - 1.93 meter

Imperial US2/4 - US24:
View A: 3.48 yards - 4.17 yards
View B: 1.6 yards - 2.11 yards

Notions and tools
•  View A-B: Invisible zipper, 55 cm (21.7 inches) in length.
•  Sewing thread. I recommend Gütermann universal 100% polyester.
•  Sharp fabric scissors or rotary cutter, pins, and ruler.
•  Fabric marking pen or tailor’s chalk.

Good-to-have tools (optional)
•  Hook-and-eye closure above the zipper.
•  A clear plastic ruler, a French curve and tracing paper (for any pattern alterations).
•  A thin and sharp hand-stitching needle.

What's included
•  35 page detailed and easy to follow instructions booklet in English
•  A4/US Letter layered print-at-home PDF
•  A0 layered copy-shop PDF
•  Getting started guide

By purchasing this pattern you agree to the terms and conditions. This pattern is available for personal use only. You may not copy, sell, or distribute the pattern or any of the pieces, or sell the finished garment. You may also not use any of the pattern pieces as base for drafting your own pattern, unless it's strictly personal.

Please note that the PDF files are read-only.

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Elsa Dress & Top gallery

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Hashtags for the Elsa Dress and Top
#SilversagaPatterns #ElsaDressPattern #ElsaTopPattern

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SKU: 18256401954

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