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Product Advisory Studio

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Product Advisory Studio

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Sets

Polyvore (acquired by Yahoo)

At Polyvore, I was hired to be the first Product Manager in charge of Search, the Product Catalog data pipeline, and a new product, the Taste Graph. The Taste Graph was the core engine that calculated personalized recommendations for users based on their person style and tastes in fashion. I managed various engineers, data editors, and content managers in the areas of search, content, and data analysis. I enjoyed working cross-functionally with the Revenue, account management, and editorial teams, as well.

Polyvore (acquired by Yahoo)

At Polyvore, I was hired to be the first Product Manager in charge of Search, the Product Catalog data pipeline, and a new product, the Taste Graph. The Taste Graph was the core engine that calculated personalized recommendations for users based on their person style and tastes in fashion. I managed various engineers, data editors, and content managers in the areas of search, content, and data analysis. I enjoyed working cross-functionally with the Revenue, account management, and editorial teams, as well.

Sets

Sets

Unique user-generated sets like these provided examples of how users paired and combined clothing items that were aggregated on Polyvore from across the web. Studying tens of thousands of sets helped our Product team understand how the various personas on Polyvore liked to define their style. 

Color, Brand, & Price Point

Color, Brand, & Price Point

Polyvore's extensive Product Catalog contained clothing, shoes, accessories, and beauty products from all over the web,  so clearly, classifying and categorizing the data from these items was critical in building an optimal search product with an enjoyable user interface. The Product team found that among the many attributes that were gathered about each item, the most important ones for users were the item's color, brand name, and the price point. These factors also turned out to be popular keywords used in searches. 

Taste Feed v1

Taste Feed v1

The first launched version of the Taste Feed could determine a user's unique style based on the items they picked from a feed and then calculated recommended clothing items in real time.

The power of Auto-suggest

The power of Auto-suggest

Studies suggested that a clean Auto-suggest interface at the search bar could increased successful search result rates by 10x, thereby increasing the overall CTR on shop pages.

Information Architecture

Information Architecture

While some users liked browsing feeds and digests of fashion trends, other users were on the hunt for a specific item. For these users, it was important to offer plenty of filters and surface multiple options in one elegant view, for a more specifications-driven search experience. 

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