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ใHIGH-QUALITY MATERIALใ- The files are made of premium material T12 carbon steel and the body hardness up to 62๏ฝ66HRC.
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Updated fa 6 mesos
- ใHIGH-QUALITY MATERIALใ- The files are made of premium material T12 carbon steel and the body hardness up to 62๏ฝ66HRC. The teeth were deeply quenched and coated for durable filing performance.
- ใAPPLICABLE SCOPEใ- File, de-burr, shape, trim, and smooth Metal, Wood, Jewelry, Plastics, Ceramics, Glass and just about anything else. 1. Metal Needle File : Nearly All Uses; 2. Rasp Needle file: Wood, Plastics; 3. Diamond Needle File: Shape and Smooth Anything;
- ใCARE INSTRUCTIONใ 1. Protect the teeth of the files by keeping them in the tool bag. 2. Clean out teeth particles for smoother needle files with the brush. 3. A light touch of machine oil is used to preserve their surface finish.
- ใWaringใ- Because of The teeth were deeply quenched and coated, the file cannot accept being dropped.
- ใQUALITY COMMITMENTใ- Any reason you are not satisfied with your purchase, please contact us. We provide 30-day money back. 100% Satisfaction Guarantee for risk-free shopping!
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Product added to Topelio
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Product Info
- Brand
- TARIST
- Identifiers
- ASIN
- B0BKG8MJKB
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