Unite.AI 01月18日
Luke Kim, Founder and CEO of Liner – Interview Series
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Liner是一款由Luke Kim创立的AI驱动研究工具,旨在加速研究过程,提高效率。它通过提供过滤后的搜索结果和自动生成引用的功能,帮助用户更精准地获取信息。Liner最初是一个简单的网页高亮工具,后来发展成为一个AI搜索引擎,专注于为学生、学者和专业人士提供可靠的学术资源。Liner通过用户高亮数据优化AI搜索的准确性和可靠性,并强调透明度和可验证性,为用户提供可信赖的AI研究助手。与ChatGPT等工具不同,Liner专注于学术和专业研究,致力于减少AI幻觉,并构建用户对AI的信任。

💡Liner的核心功能是作为一个AI搜索引擎,通过过滤搜索结果和自动生成各种格式的引用,帮助用户快速找到精准信息。

📚Liner通过用户高亮数据来提升AI搜索的准确性和可靠性,利用这些数据来判断哪些信息更重要、更可信,从而优先展示相关且值得信赖的内容。

🎯Liner与ChatGPT等其他AI搜索工具的不同之处在于,它专注于学术研究,强调可靠性和透明度。它为每个搜索结果提供引用,并允许用户过滤不可靠的来源,确保信息的准确性。

🤝Liner通过与大学和专业机构的合作来扩大其影响力,并提供例如论文模式等新功能,以帮助学生提高写作和研究技能。Liner还与Tako等公司合作,将知识可视化工具整合到平台中,以更易于访问和交互的方式呈现复杂数据。

Luke Kim is the Founder and CEO of Liner, a cutting-edge AI-powered research tool designed to streamline and enhance the research process, helping users complete their tasks 5.5 times faster. As an AI search engine, Liner provides filtered search results for precise information and automatically generates citations in various formats, making it an invaluable resource for researchers, students, and professionals.

Can you tell us about your background and what inspired you to pursue entrepreneurship, especially in the field of AI and technology?

My entrepreneurial journey began with a desire to address real-world problems through technology. As an undergraduate, I was struck by how challenging it was to navigate and trust the abundance of information online. I was motivated to create a tool that streamlines the process and helps students discern between sources. What started as a highlighting tool, weeding through available information, over time developed into what Liner is today: an AI search that provides only the most reliable results. I was drawn to AI for its potential to transform how we process and interact with data. The opportunity to create meaningful solutions for students, like my younger self, continues to inspire me.

How did your experience with the browser extension you built during your university days shape the vision for Liner?

The Liner highlighter browser extension was my first real dive into solving the problem of information overload. It showed me how much people value tools that make finding and organizing key information easier. I learned that simplifying even one step of a workflow can have a big impact, whether it’s highlighting important points or surfacing relevant sources. This project shaped Liner’s commitment to creating a seamless experience for users, and helping students and researchers weed through the excess noise on the internet.

What was the original vision behind Liner, and how has it evolved since its inception?

Liner began as a simple tool to help users highlight and save key parts of online content. The goal was to make it easier for users to focus on the most relevant information without being overwhelmed. Over time, we recognized that users needed more than a way to collect and sort information—they needed better ways to find it and discern its reliability. This realization guided Liner’s transformation into an AI search engine.

What were the major challenges you faced while transitioning Liner from a highlighting tool to an AI-driven search engine?

One of the most significant challenges was ensuring that our AI could consistently deliver reliable and accurate results. Academic research requires a high degree of trust, and meeting those expectations was critical. Another challenge was integrating years of user-highlighted data into the AI’s training process while keeping the platform intuitive. Striking the right balance between technological innovation and a seamless user experience was essential but also incredibly rewarding.

By building Liner’s definition of “agent” from scratch, we were able to create a robust and stable framework for understanding what an agent really is. We then implemented a search agent that prioritized reliability and credibility. Given that our target audience represents the pinnacle of credibility-focused expectations, we needed a distinctive solution capable of addressing the most complex problems. Our strength lay in leveraging our proprietary datasets, the technical insights gained during the agent definition process, and our implementation expertise. Together, these elements became our most powerful tools for success.

Can you elaborate on how the integration of user-highlighted data enhances the accuracy and reliability of Liner’s AI search results?

User-highlighted data acts as a valuable layer of quality control, helping our LLM discern what other users find important and credible. By leveraging this curated data, we are able to prioritize relevant and trustworthy information in our search results. This approach ensures that users get precise and actionable insights while avoiding irrelevant or low-quality content.

How does Liner differentiate itself from other AI search tools like ChatGPT or Perplexity?

Liner stands out by prioritizing reliability and transparency. Every search result includes a citation, and users can filter out less reliable sources to ensure accuracy. As an additional measure, students can pull sources and view the original quoted text on their screen. Unlike tools designed for casual queries, Liner is purpose-built for students, academics, and researchers, helping users focus on in-depth learning and analysis instead of verifying facts. This commitment to trust and usability makes Liner a go-to tool for over 10 million users, including students at universities like UC Berkeley, USC, University of Michigan, and Texas A&M. Liner continues to differentiate itself through partnerships, like a recent one with Tako, which integrates knowledge visualization tools to present complex data in a more accessible and interactive format, empowering users to dive deeper into their research.

What measures does Liner take to reduce hallucinations in its AI responses, and how does this impact user trust?

Reducing hallucinations requires anchoring AI-generated responses to verifiable sources. Liner achieves this by cross-referencing its results with academic papers, government databases, and other trusted repositories. Our Source Filtering System further allows users to exclude unreliable content, providing an added layer of quality assurance. These steps not only minimize errors but also build trust with the user.

Liner’s system is based on relevance (the relevance score between agent-generated claims and reference passages) and factuality (which assesses how well the agent-generated claims are supported by the reference passages). The more supportive the passage, the higher the factuality score.Since our product strongly encourages users to verify claims to ensure they are free from hallucinations, enhancing the factuality of our agent system is crucial. Ultimately, we observe a positive correlation between the factuality score and user retention.

What steps is Liner taking to build trust among users, especially those skeptical about relying on AI for critical information?

Building trust begins with transparency. Liner provides clear citations for every result, giving users the ability to verify the information themselves. Additionally, we rank sources based on reliability and allow users to engage directly with the original content. Continuous user education and open communication also play a role in demonstrating that AI, when designed responsibly, can be a dependable ally in education.

What trends do you think will shape the future of AI in academic research and professional knowledge retrieval?

AI will become increasingly personalized, adapting to the unique needs of each user and providing tailored insights. Transparency will be key, as users seek greater clarity about how AI processes information and delivers results. Advancements will also focus on addressing information overload and streamlining research tools. By automating repetitive tasks like data gathering and synthesis, AI will speed up the early stages of research, enabling researchers to focus more on critical thinking, analysis, and innovation. This balance between efficiency and intellectual engagement will shape the future of academic and professional research.

Liner recently successfully raised a $29 million funding round. How will this investment help Liner grow, and what areas are you focusing on for expansion?

This funding enables us to advance our mission of improving AI in education. We're growing our global team and rolling out new features like Essay Mode, designed to help students refine their skills in writing, structuring, and formatting essays. We're also prioritizing partnerships with universities and professional organizations to reach more users and showcase the impact of AI-powered research tools. Recent collaborations with companies like ThetaLabs and Tako have expanded our capabilities. This investment highlights the growing need for dependable search solutions, and we're eager to build on this momentum.

Thank you for the great interview, readers who wish to learn more should visit Liner.

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Liner AI搜索 学术研究 信息可靠性 AI工具
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