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Roman Grebennikov@shutty

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Profile rank: lablab No-rank

Next rank: lablab Apprentice

1

Events attended

1

Submissions made

Principal Engineer

Germany

1 year of experience

I built with

CohereQdrant

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šŸ¤“ Submissions

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    Hackathon link

    Semantic recommendations

    Recommendations cold-start problem is not actually a problem, if you leverage content and item metadata to build your recommendations. To showcase this idea we build a movie recommender, so you can visually see the difference between collaborative-filtering and content recommendations. We made two PRs to an existing open-source project Metarank: * support semantic recommendations with cohere-ai and sentence-transformers embeddings * use qdrant as a vector search engine to quickly perform vector similarity search With these two PRs merged building such a recommender is just a matter of a few lines of YAML code. But the semantic-similarity approach is not only about movies, but can be applied more generically in traditional places like e-commerce. For example, in fashion with high inventory churn, being able to recommend something for new clothes having zero feedback is really valuable.

šŸ‘Œ Attended Hackathons

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    Cohere and Qdrant Multilingual Semantic Search Hackathon

    šŸ—“ļø Take part in this 7-day virtual hackathon from March 10 to March 17! šŸ’» Create AI applications utilizing Cohere's LLM-powered Multilingual Text Understanding model and Qdrant's vector search engine. āœ”ļø Are you new to AI or an experienced data scientist? Designer, or business developer? Regardless of your experience and background, we welcome you and value your domain expertise. šŸ±ā€šŸ’» Join us for free and let's get started!

šŸ“ Certificates

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    Cohere and Qdrant Multilingual Semantic Search Hackathon | Certificate