profile image

Smiral Rashinkar@smiral_rashinkar150

100/200

Learn more about ranks

Profile rank: lablab No-rank

Next rank: lablab Apprentice

2

Events attended

1

Submissions made

Machine Learning Engineer

India

2 years of experience

I built with

CohereQdrant

Socials

๐Ÿค“ Submissions

    Submission image
    Hackathon link

    LegalFruit

    Our project is aimed at developing a comprehensive legal document search system that makes use of advanced technologies to retrieve relevant legal documents that can be relied upon in court. The system utilizes Cohere's multilingual embedding and Qdrant vector database to provide fast and efficient search results. The use of multilingual embedding ensures that the system is capable of searching through legal documents written in various languages, making it suitable for use in multilingual environments. Qdrant vector database, on the other hand, allows for fast and efficient indexing of large volumes of legal documents, thus reducing search time. Our legal document search system is particularly useful for law firms, legal practitioners, and businesses that require access to legal documents for various purposes, including legal research, contract negotiations, and dispute resolution. With our system, users can easily retrieve legal documents that have been signed by mutual assent, thus ensuring that they are reliable and admissible in court. In addition to the legal document search functionality, we have also implemented a question answering system using Cohere's generate endpoint. This feature enables users to ask specific questions related to the legal documents they have retrieved and receive accurate and relevant answers. The question answering system is particularly useful for legal practitioners who require quick access to specific information in legal documents. Overall, our legal document search system provides an efficient and reliable solution for users who require access to legal documents. By leveraging advanced technologies such as Cohere's multilingual embedding and Qdrant vector database, we have developed a powerful search system that can save time and improve productivity for legal practitioners and businesses alike.

๐Ÿ‘Œ Attended Hackathons

    Submission image

    OpenAI Stack Hack

    ๐Ÿ—“๏ธ This will be a week of hacking and fun from 24 February to 3 March ๐Ÿ’ป Create innovative new apps with OpenAI's latest AI tools ๐Ÿ’ก Learn from top AI professionals โš’๏ธ Combine GPT-3, Codex, Dalle-2, and Whisper to build your AI app ๐Ÿฑโ€๐Ÿ’ป Now is the time to register and let's get started!

    Submission image

    Cohere and Qdrant Multilingual Semantic Search Hackathon

    ๐Ÿ—“๏ธ Take part in this 7-day virtual hackathon from March 10 to March 17! ๐Ÿ’ป Create AI applications utilizing Cohere's LLM-powered Multilingual Text Understanding model and Qdrant's vector search engine. โœ”๏ธ 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. ๐Ÿฑโ€๐Ÿ’ป Join us for free and let's get started!

๐Ÿ“ Certificates

    Submission image

    Cohere and Qdrant Multilingual Semantic Search Hackathon | Certificate