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{{Infobox dot-com company
{{Infobox dot-com company
| name = eyefitu
| name = eyefitu
| company_slogan = You Shop. We Size
| logo_caption = You Shop. We Size
| logo = [[File:Eyefitulogo2.png|thumb]]
| logo = [[File:Eyefitulogo2.png|thumb]]
| caption =
| caption =
Line 18: Line 18:
==History and background==
==History and background==


[[Isabelle Ohnemus]] founded EyeFitU on the 12th of December 2012. Previously she had a background in investment banking working for more than ten years in an investment bank, as a broker in stocks and derivatives. But fashion was always a part of her life and she eventually decided to turn this passion into something more concrete<ref>https://www.youtube.com/watch?v=h1ALpIymRMk</ref>. She started organising private sales at her home, for her friends who wanted to access the world of fashion in an easy way. The sales included new and ground- breaking designers from Italy, Denmark and France, who had no actual stores with her own place becoming their exclusive store and in this environment she realised the inconsistency of sizing and the potential of developing a platform based on solving this. At this point [[1SEO.com]] was utilised as a consultant.
Isabelle Ohnemus founded EYEFITU on the 12th of December 2012. To get quick access to highly talented software developers and to remain flexible, EYEFITU started up by working with Ergon Informatik AG in Zürich, Switzerland, an award-winning, respected, experienced and knowledgeable software company and system integrator for large corporations and successful start-ups. Together with Ergon, a significant effort went into development and prototyping of QR-/Bar-code scanning capabilities, a feature that will be appealing when brands and retailers start attaching garment data to these and to fashion print.
In order to reduce costs, speed-up and keep development of our App/Platform agile, we are now working with Ciklum, a Danish software company with a big development center in Minsk, Belarus and with whom the EYEFITU team has worked with previously.

Isabelle Ohnemus, Founder and CEO. Born in Geneva. Lived her first 18 years in 8 countries and 3 continents, fluent in 6 languages. University studies in Geneva: BA in Economics and Marketing.



To get quick access to highly talented software developers and to remain flexible, EyeFitU started by working with [[Ergon Informatik AG]] in Zürich, Switzerland, a software company and system integrator for large corporations and successful start-ups. Together with Ergon, effort went into development and prototyping of QR-/Bar-code scanning capabilities, a feature that is used by brands and retailers as they start attaching garment data to these and to fashion print. In order to reduce costs, speed-up and keep development of their App/Platform agile, they started working with [[Ciklum]], a Danish software company with a development center in Minsk, Belarus.


== Platform and functionality ==
== Platform and functionality ==


Many Apparel brands do not use standardised sizing and often sizing across brands and countries is inconsistent also with increasingly using Vanity Sizing or size inflation and as a result shoppers often are left without knowing their exact measurements. <ref name="onesizeforall>[https://http://womenuk.co.uk/style/one-size-fits-all-not/#prettyPhoto One Size Fits All? NOT…], Women UK, November 21, 2016</ref> The EyeFitU app uses smart learning technology to target this problem by continuously learning from billions of data points, and then matching clothes not only to measurements but also to typical body shapes and style preferences globally. Via the app and the desktop platforms the users can browse through their chosen online stores not wasting time worrying about what will fit them.
Sizing Methodology


The user enters gender, height and weight to get size recommendations for all brands. For more precise recommendations, the user can enter body measurements. If a user happens to know her or his correct size for a certain garment type or brand, these can be entered alongside the EyeFitU recommendations. By incorporating this user generated content, the algorithm is continuously improved. They can create multiple fashion profiles and share their own to a particular shop for family and friends and thus allow gift purchases in the right size. In order to give sizing recommendations the app matches user body sizes, measures and preferences with the sizing of the clothing combining information provided by users, brands/retailers, statistical data and crowdsourcing to provide the most accurate sizing recommendations. The user also provides gender, age, height and weight and the system statistically correlates this information with a large database of human body measurements and automatically fills it into the user profile. Users of the app can also specify their preferred size for brands and garments. Based on big data/crowdsourcing, groups of users with similar profiles and sizing preferences act as sizing recommendations for other users with similar profiles. This is a type of fact crowdsourcing of virtual size charts.
The Problem - Sizing
Apparel brands don’t use standardized sizing.
Sizing across brands and countries is inconsistent.
Brands increasingly use Vanity Sizing or size inflation.
Shoppers don’t know their measurements. <ref name="onesizeforall>[https://http://womenuk.co.uk/style/one-size-fits-all-not/#prettyPhoto One Size Fits All? NOT…], Women UK, November 21, 2016</ref>

The user enters gender, height and weight to get size recommendations for all brands. For more precise recommendations, the user can enter body measurements. If a user happens to know her or his correct size for a certain garment type or brand, these can be entered alongside the EYEFITU recommendations. By incorporating this user generated content, the algorithm is continuously improved

In order to give sizing recommendations, we match user body sizes, measures and preferences with the sizing of the clothing. We are using a combination of information provided by users, brands/retailers, statistical data and crowdsourcing to provide the most accurate sizing recommendations.
User data
We capture user data in various ways:
The user provides gender, age, height and weight in order to get sizing recommendations. Our system statistically correlates this information with a large database of human body measurements and automatically fills it into the user profile.
Users provide their actual body measures using a measuring tape. This is more accurate but only a limited number of users will use a measuring tape.
Shopping history and sizing preferences. Consumers can specify their preferred size for brands and garments. Based on big data/crowdsourcing, groups of users with similar profiles and sizing preferences act as sizing recommendations for other users with similar profiles. By incorporating this user-generated content, the algorithm is continuously improved. This is in fact crowdsourcing of virtual size charts.
As technology improves, we will be able to use input from body scanners and photos.

Sharing
Users can share their fashion profiles (size information – not personal information) with friends and family to allow gifting in the right size. They will also be able to create wish lists of the most wanted fashion items and share these socially on Facebook and other social media. This will engage users and make the App feel more personal to them. This will trigger worth of mouth growth.


Personalization
The personalization aspect of EYEFITU is unique because it offers shoppers the ability to:
Create their individual shop with their favorite brands.
Browse and shop clothing in their size selected from hundreds of brands and online stores on one platform.
See what is relevant to them according to their size preferences.
Have immediate access to deals and discounts.


== Awards and nominations ==


EyeFitU was awarded the Nouvo Prize, conferred by RTS (Swiss National TV) for being the most promising start-up in February 2015<ref>http://www.nouvo.ch/lift2015</ref> and recognised by Netcomm Suisse - Ladies in e-commerce, in July 2016, for the best pitch. Both awards were publicly voted for.


The EyeFitu app was named as one of the Favourite Fashion Apps 2015 from FashInvest, in December 2015, recognising it as the app that made the most impact on the fashion tech scene in 2015.<ref>http://www.fashinvest.com/app-of-the-week-eyefitu/</ref>


==References==
==References==
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== External links ==
== External links ==
* {{URL|https://eyefitu.ch/}}
* {{URL|https://eyefitu.ch/}}
* {{URL|http://www.menswearstyle.co.uk/2016/09/23/introducing-the-eyefitu-app/7372/}}

* {{URL|http://lovelymobile.news/app-lets-customers-shop-in-their-size/}}
[[Category:Clothing industry]]
* {{URL|http://www.fashinvest.com/app-of-the-week-eyefitu/}}
* {{URL|https://eyefitu.ch/press/meet-eyefitus-founder-and-ceo-isabelle-ohnemus/}}
* {{URL|http://fashnerd.com/2015/08/apps-with-stylish-pulling-power/}}

Latest revision as of 17:41, 8 November 2019

eyefitu
You Shop. We Size
FoundedZurich, Switzerland
Area servedWorldwide
Founder(s)Isabelle Ohnemus
Key peopleIsabelle Ohnemus, CEO Henrik Steffensen, COO
URLeyefitu.ch
LaunchedDecember 2012

EyeFitU is a Zurich based company using app based technology that lets users create a profile of their clothing measurements and matches this against sizing charts from thousands of brands, filtering online shopping results down to the items most likely to fit. [1]

History and background

[edit]

Isabelle Ohnemus founded EyeFitU on the 12th of December 2012. Previously she had a background in investment banking working for more than ten years in an investment bank, as a broker in stocks and derivatives. But fashion was always a part of her life and she eventually decided to turn this passion into something more concrete[2]. She started organising private sales at her home, for her friends who wanted to access the world of fashion in an easy way. The sales included new and ground- breaking designers from Italy, Denmark and France, who had no actual stores with her own place becoming their exclusive store and in this environment she realised the inconsistency of sizing and the potential of developing a platform based on solving this. At this point 1SEO.com was utilised as a consultant.

To get quick access to highly talented software developers and to remain flexible, EyeFitU started by working with Ergon Informatik AG in Zürich, Switzerland, a software company and system integrator for large corporations and successful start-ups. Together with Ergon, effort went into development and prototyping of QR-/Bar-code scanning capabilities, a feature that is used by brands and retailers as they start attaching garment data to these and to fashion print. In order to reduce costs, speed-up and keep development of their App/Platform agile, they started working with Ciklum, a Danish software company with a development center in Minsk, Belarus.

Platform and functionality

[edit]

Many Apparel brands do not use standardised sizing and often sizing across brands and countries is inconsistent also with increasingly using Vanity Sizing or size inflation and as a result shoppers often are left without knowing their exact measurements. [3] The EyeFitU app uses smart learning technology to target this problem by continuously learning from billions of data points, and then matching clothes not only to measurements but also to typical body shapes and style preferences globally. Via the app and the desktop platforms the users can browse through their chosen online stores not wasting time worrying about what will fit them.

The user enters gender, height and weight to get size recommendations for all brands. For more precise recommendations, the user can enter body measurements. If a user happens to know her or his correct size for a certain garment type or brand, these can be entered alongside the EyeFitU recommendations. By incorporating this user generated content, the algorithm is continuously improved. They can create multiple fashion profiles and share their own to a particular shop for family and friends and thus allow gift purchases in the right size. In order to give sizing recommendations the app matches user body sizes, measures and preferences with the sizing of the clothing combining information provided by users, brands/retailers, statistical data and crowdsourcing to provide the most accurate sizing recommendations. The user also provides gender, age, height and weight and the system statistically correlates this information with a large database of human body measurements and automatically fills it into the user profile. Users of the app can also specify their preferred size for brands and garments. Based on big data/crowdsourcing, groups of users with similar profiles and sizing preferences act as sizing recommendations for other users with similar profiles. This is a type of fact crowdsourcing of virtual size charts.

Awards and nominations

[edit]

EyeFitU was awarded the Nouvo Prize, conferred by RTS (Swiss National TV) for being the most promising start-up in February 2015[4] and recognised by Netcomm Suisse - Ladies in e-commerce, in July 2016, for the best pitch. Both awards were publicly voted for.

The EyeFitu app was named as one of the Favourite Fashion Apps 2015 from FashInvest, in December 2015, recognising it as the app that made the most impact on the fashion tech scene in 2015.[5]

References

[edit]
[edit]