Multilingual Language Processing
We're serving over 108+ low resource languages through our innovative products.
EduLang
EduLang, a multilingual library app, bridges the language gap through storytelling. The personalized book library provides learners with culturally sensitive, relatable and learning level appropriate content. Our app uses interactive multilingual books to help learners in grades K-5 from non-English speaking families learn English. Edulang is targeted towards low-resource language speakers with an aim to enable English language learning while continuing to preserve the learner's native language proficiency.
Image Pipeline
Usability Testing
Pytorch
User Flow Optimization
Information Architecture
Prompt Strategies for Summarizing Doctor-Patient Dialogues with LLMs
We're working with Chris Emezue, the founder of the startup Lanfrica, to explore innovative methods for summarizing doctor-patient encounter dialogues using large language models. This system aims to generate concise and actionable summaries of doctor-patient interactions, enhancing communication and record-keeping in medical systems.
Prompt Engineering
Design Thinking
Competitive Analysis
Iterative Testing
Yekola
We're building the MVP for Yekola, an early-stage startup that aims to learn, teach, and preserve low-resource languages. Yekola currently has over 3000+ users on their waitlist and we plan to launch the MVP during our cohort.
Startup Pitching
Design Thinking
Competitive Analysis
Crowd Sourcing
Puzzling
PuzzLing combines the full system for the CALL(Computer Assisted Language Learning) platform especially focusing on low-resource languages, which includes language scoring and feedback functions. With the support from the latest language processing toolkit of the Neural Space, we aim to give a general evaluation and retrieve the error places that the testers can improve.
Startup Pitching
Design Thinking
Competitive Analysis
Crowd Sourcing
EduLang
EduLang, a multilingual library app, bridges the language gap through storytelling. The personalized book library provides learners with culturally sensitive, relatable and learning level appropriate content. Our app uses interactive multilingual books to help learners in grades K-5 from non-English speaking families learn English. Edulang is targeted towards low-resource language speakers with an aim to enable English language learning while continuing to preserve the learner's native language proficiency.
Prompt Strategies for Summarizing Doctor-Patient Dialogues with LLMs
We're working with Chris Emezue, the founder of the startup Lanfrica, to explore innovative methods for summarizing doctor-patient encounter dialogues using large language models. This system aims to generate concise and actionable summaries of doctor-patient interactions, enhancing communication and record-keeping in medical systems.
Yekola
We're building the MVP for Yekola, an early-stage startup that aims to learn, teach, and preserve low-resource languages. Yekola currently has over 3000+ users on their waitlist and we plan to launch the MVP during our cohort.
PuzzLing
PuzzLing combines the full system for the CALL(Computer Assisted Language Learning) platform especially focusing on low-resource languages, which includes language scoring and feedback functions. With the support from the latest language processing toolkit of the Neural Space, we aim to give a general evaluation and retrieve the error places that the testers can improve.
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EduLang
EduLang, a multilingual library app, bridges the language gap through storytelling. The personalized book library provides learners with culturally sensitive, relatable and learning level appropriate content. Our app uses interactive multilingual books to help learners in grades K-5 from non-English speaking families learn English. Edulang is targeted towards low-resource language speakers with an aim to enable English language learning while continuing to preserve the learner's native language proficiency.
Prompt Strategies for Summarizing Doctor-Patient Dialogues with LLMs
We're working with Chris Emezue, the founder of the startup Lanfrica, to explore innovative methods for summarizing doctor-patient encounter dialogues using large language models. This system aims to generate concise and actionable summaries of doctor-patient interactions, enhancing communication and record-keeping in medical systems.
Yekola
We're building the MVP for Yekola, an early-stage startup that aims to learn, teach, and preserve low-resource languages. Yekola currently has over 3000+ users on their waitlist and we plan to launch the MVP during our cohort.
PuzzLing
PuzzLing combines the full system for the CALL(Computer Assisted Language Learning) platform especially focusing on low-resource languages, which includes language scoring and feedback functions. With the support from the latest language processing toolkit of the Neural Space, we aim to give a general evaluation and retrieve the error places that the testers can improve.
Navigation
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