Key takeaways
- General AI models are often inadequate for legal data applications due to the complexity of legal workflows.
- Fine-tuning general models for legal applications is typically ineffective, necessitating tailored solutions.
- Building specific applications on top of AI models is crucial for their utility in legal environments.
- The legal market has rapidly embraced AI technology, altering competitive dynamics.
- Law firms are adopting AI to differentiate services in a traditionally low-differentiation market.
- The legal sector’s historical lack of software solutions has created opportunities for AI-driven innovations.
- Legal AI products must surpass foundational models to gain acceptance from tech-savvy lawyers.
- AI software companies differ structurally from traditional software firms due to evolving model capabilities.
- Rapid advancements in AI models can quickly render specific features obsolete.
- Investing in product and engineering is vital for success in the competitive legal tech market.
- A focus on product readiness can delay sales, ensuring quality and reliability.
- AI adoption in law firms is driven by the need to offer better services at competitive prices.
- The legal sector’s underserved status in software has led to pent-up demand for AI solutions.
- AI companies must deeply understand model capabilities to offer differentiated products.
- The fast-paced nature of AI development impacts product strategy and feature relevance.
Guest intro
Max Junestrand is the CEO and co-founder of Legora, the AI platform transforming how lawyers work across 800 customers in more than 50 markets. At 23 with no legal background, he co-founded the company in Stockholm, growing it from 40 to 400 team members worldwide. Legora recently raised $550 million at a $5.55 billion valuation in a Series D round to accelerate US expansion.
The limitations of general AI models in legal applications
- General models are not sufficient for legal data applications, necessitating tailored solutions.
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I think part of the paradigm was you should train your own models and like the general models aren’t great and fine tuning is gonna be really important for two reasons… fine tuning doesn’t really seem to work at least on the scale that we were operating.
— Max Junestrand
- Fine-tuning general models is often ineffective in the legal sector.
- The complexity of legal workflows requires specific AI applications on top of models.
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There was so much application that you had to build on top of the models to make them useful in your environment.
— Max Junestrand
- Tailored AI solutions are crucial for addressing legal data challenges.
- Understanding the limitations of general AI models is essential for effective legal tech solutions.
- The need for tailored AI applications highlights the unique demands of the legal industry.
Rapid AI adoption in the legal market
- The legal market has rapidly adopted AI technology, surprising many observers.
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Yes, it’s been like vivid but but second and maybe more importantly the law firm market is very interesting because it’s it’s like this perfect equilibrium with frankly like pretty low differentiation.
— Max Junestrand
- Law firms are incentivized to adopt AI to differentiate their services.
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If one of them starts leveraging legora to offer a better service at a better price point.
— Max Junestrand
- AI adoption is driven by the need to stand out in a low-differentiation market.
- The competitive landscape of law firms is evolving due to AI technology.
- Law firms leverage AI to offer better services at competitive prices.
- AI adoption is altering the dynamics of legal service offerings.
The gap in legal software solutions
- The legal sector was underserved with software, creating demand for AI solutions.
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I just think the legal sector was so underserved with great software for such a long time that there was this like a lot of built up problems that we could easily solve with llms but they were really hard to solve like pre llms.
— Max Junestrand
- Large language models (LLMs) address longstanding issues in the legal sector.
- The historical lack of software solutions in law has created opportunities for AI.
- AI-driven innovations are filling the gap in legal software solutions.
- The emergence of LLMs has transformed the legal tech landscape.
- Legal professionals are increasingly relying on AI to solve complex problems.
- The underserved status of legal software highlights the potential for AI advancements.
The necessity for superior legal AI products
- Legal AI products must outperform foundational models to gain acceptance.
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If you showed up with a legal ai product it had to be better than the foundation models yeah otherwise they were just gonna say why are you deserving of my dollars.
— Max Junestrand
- Tech-savvy lawyers demand superior AI solutions.
- Legal AI products need to demonstrate superior value to be adopted.
- The competitive landscape in legal tech requires high-quality AI products.
- Lawyers expect legal AI solutions to offer clear advantages over existing models.
- The necessity for superior products drives innovation in legal AI.
- Legal AI solutions must meet the high expectations of informed users.
Structural differences in AI software companies
- AI software companies differ structurally from traditional software firms.
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One of the unique things about an ai software company is that it’s tactically built differently than a traditional software company… we need to deeply understand model capabilities and then we need to bring that to our customers in a way that’s deeply differentiated.
— Max Junestrand
- Rapid evolution of model capabilities impacts AI company operations.
- AI companies must navigate unique structural and strategic considerations.
- Understanding model capabilities is crucial for AI software companies.
- AI firms need to offer differentiated products to succeed.
- The operational dynamics of AI companies differ from traditional firms.
- AI software companies must adapt to the fast-paced nature of technology evolution.
The impact of rapid AI advancements on product strategy
- As AI models improve, the relevance of specific features can diminish rapidly.
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As models got better your features may not matter in six months.
— Max Junestrand
- Rapid advancements in AI impact product development strategies.
- AI development is fast-paced, affecting feature relevance and strategy.
- Product strategy must adapt to the evolving capabilities of AI models.
- The speed of AI evolution necessitates agile product development.
- Stakeholders must understand the implications of rapid AI advancements.
- AI product strategies need to be flexible to accommodate technological changes.
The importance of investing in product and engineering
- Investing in product and engineering is essential for success in a competitive market.
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If you wanna be best well then you need to invest in product you need to invest in engineering and I think you need to build that culture of like reliability first.
— Max Junestrand
- A culture of reliability is crucial for market leadership in legal tech.
- Product development investment is vital for achieving competitive advantage.
- Engineering excellence is a key factor in legal tech success.
- Companies must prioritize product readiness to succeed in legal tech.
- Investment in product and engineering drives innovation and market success.
- A focus on quality and reliability is essential for long-term success.
Balancing product readiness with market entry
- A focus on product readiness can delay sales to ensure quality and reliability.
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We actually had a time period in the company for six months where we didn’t sell basically because we weren’t ready to like hit the gas on onboarding a thousand lawyers a day.
— Max Junestrand
- Prioritizing product quality can impact immediate sales strategies.
- Startups face challenges in balancing product development with market entry.
- Ensuring product readiness is crucial for successful market entry.
- Delaying sales to focus on quality can lead to long-term success.
- Strategic decisions to prioritize product readiness can impact growth.
- Companies must balance product development with market demands.











