Not currently being sold:

Instant Noodles (Teppanyaki Flavour) (日本麵)

  • Shipping Weight: 0.3245kg
  • Brand: Nikko

Description:Put 2 bundles of noodles into boiling water and cook for about 4-5 minutes.
Noodles will taste even better if rinsed with cold water right after cooking.
Drain noodles and put onto a plate. Put a paste sachet into the noodles and mix well, then sprinkle sesame seeds onto noodles.
Ingredients:Noodles (77%): Wheat Flour, Salt.
Oil Pack: Palm Oil, Onion.
Paste: Salt, Spices, Brown Sugar, Yeast, Soy Sauce (Soy Bean, Water, Wheat Flour, Salt), Flavour Enhancer (E621), Colour (Caramel)

Here are a few altenatives you may like:

Product Filter:

1054 Unknown column 'mt.metatags_size' in 'field list'
in:
[SELECT DISTINCT p.products_image, m.manufacturers_name, p.products_quantity , m.manufacturers_id, p.products_id, mt.metatags_size, pd.products_name, p.products_price, p.products_tax_class_id, p.products_price_sorter, p.products_qty_box_status FROM (products p LEFT JOIN manufacturers m USING(manufacturers_id), products_description pd, categories c, categories_description cd , products_to_categories p2c ) LEFT JOIN meta_tags_products_description mtpd ON mtpd.products_id= p2c.products_id AND mtpd.language_id = 1 WHERE p.products_status = 1 and p.products_quantity > 0 AND p.products_id = pd.products_id AND pd.language_id = 1 AND p.products_id = p2c.products_id AND p2c.categories_id = c.categories_id AND c.categories_id = cd.categories_id AND ((pd.products_name LIKE '%instant%' OR p.products_model LIKE '%instant%' OR m.manufacturers_name LIKE '%instant%' OR (mtpd.metatags_keywords LIKE '%instant%' AND mtpd.metatags_keywords !='') OR (mtpd.metatags_description LIKE '%instant%' AND mtpd.metatags_description !='')) and (pd.products_name LIKE '%noodles%' OR p.products_model LIKE '%noodles%' OR m.manufacturers_name LIKE '%noodles%' OR (mtpd.metatags_keywords LIKE '%noodles%' AND mtpd.metatags_keywords !='') OR (mtpd.metatags_description LIKE '%noodles%' AND mtpd.metatags_description !='')) ) order by pd.products_name limit 10]