Designed with parents and little ones in mind, the Huggies Skill is a fun, easy & hands-free way to engage with your bub.
Age-specific content libraries allow you to interact safely with songs and activities that are tailored to child developmental stage in a fun and engaging voice experience.
Help foster your young one/s’ imaginations while developing communication, listening, language and coordination skills through the variety of content libraries available: • Active Time: Get you and your young one moving and grooving in this fun audio experience • Sing-a-long: Sing with bub with well-known songs and nursery rhymes • Quiet Time: Wind down with meditative & white noise audio to support bub’s rest • Farm Escape Game: Help Farmer Brown herd back his escaped animals in this fun animal sounds game – perfect for the whole family!
With bespoke content developed in conjunction with Kinderling – Australia’s most popular kid’s radio station – and selected children’s music and nursery rhymes, to reinforce everyday play and learning (in line with the Abecedarian approach of Enriched Caregiving.) during key stages of your baby/child’s growth.
All content within the Huggies skill has been informed by the Victorian Department of Education and Training’s Maternal & Child Health Department guidelines on child's growth and milestones.
Once you’ve saved your child/children’s details you’ll be able to ask for Quiet time, Active time, a Sing Along or play the Farm Game – personalised to them. For example “Alexa, ask Huggies to play quiet time for Emily.”
Get the most out of the Huggies skill by saying: “Alexa, ask Huggies to play Active Time” “Alexa, ask Huggies to play Quiet Time” “Alexa, ask Huggies to play a song” “Alexa, ask Huggies to play the Farm Escape game.” “Alexa, open Huggies”
This skill contains dynamic content, which is content that is updated real-time based on inputs from the developer. The maturity rating associated with this skill pertains only to the content of the skill at the time of the submission.
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