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U of T legal startup adds employment law tool to its AI-powered product portfolio

Photo of Benjamin Alarie
Professor Benjamin Alarie is the CEO of Blue J Legal, which uses AI to predict the outcome of tax and employment law cases (photo by Lisa Sakulensky)

When it came time to develop his legal startup鈥檚 sophomore product, Benjamin Alarie did exactly what successful entrepreneurs are supposed to do: He listened to his customers.

The University of Toronto law professor co-founded Blue J Legal in 2015, using machine learning algorithms to predict the likely outcomes of future tax law cases. He focused on tax law because it was his area of research expertise and represented a potentially huge market.

Then something unexpected happened.

鈥淲e would be talking to lawyers at big law firms about employee classification from a tax law perspective, and someone would ask if we could come and show the labour and employment law group,鈥 recalls Alarie, who is the company's CEO. 

鈥淲e would say, 鈥榊eah, sure we鈥檙e happy to do that. But you should know [the AI algorithms are] being trained on all the tax case law, not employment law.鈥欌

It wasn鈥檛 long before Alarie and his Blue J Legal team, including fellow co-founders and Faculty of Law faculty members Albert Yoon and Anthony Niblett, realized that broadening their scope to include another practice area would make Blue J Legal that much more useful to its target customers.

So, in late November, Blue J Legal officially launched its Employment Foresight tool. As with its original Tax Foresight product, Blue J's machine learning algorithms scan thousands of judicial decisions and detect patterns, both obvious and hidden, in the rulings.

The findings are then used to predict how a judge is likely to rule based on a given set of facts, and provide lawyers with the relevant cases to review.  

That's in stark contrast to how lawyers currently operate. Most rely on a handful of 鈥渓eading鈥 cases and their professional experience when trying to gauge the probability of succeeding in court. 

Read more about Blue J Legal's origins here

鈥淚t鈥檚 one of those things you do as a startup,鈥 Alarie says. 鈥淵ou start off building something, and then you listen very attentively to the market about what would be interesting and solve real problems for people. 

鈥淲hat we heard loud and clear is that employment law presents a number of challenges that we could address using our technology.鈥

One example of a perennially difficult employment law question is how much notice must be given to employees who are about to be laid off 鈥 an unfortunate circumstance that affects about 800,000  Canadian workers each year. The answer depends on a number of factors, including the specifications of employment contracts, applicable statutory requirements and an understanding of how courts have previously ruled in similar circumstances. 

Alarie says the potential customers for Employment Foresight are both law firms and employers themselves. 

鈥淲e鈥檝e already got a massive amount of interest from larger organizations,鈥 he says. 鈥淔or them, it鈥檚 very interesting because they can make better decisions in-house before they seek outside legal help.鈥

Blue J Legal got its start after Alarie was asked to judge an IBM Watson competition at U of T that helped launch ROSS Intelligence, another startup that's using AI to improve the way lawyers search for cases. Blue J Legal has worked with U of T's Creative Destruction Lab and UTEST 鈥 two of the many entrepreneurship hubs on campus. 

Alarie says his goal is to eventually expand Blue J's AI prediction technology to all areas of the law. He predicts AI technologies like machine learning will dramatically reshape the profession by making the practice of law far more accurate and efficient, if significantly more complicated.

鈥淭his is about making the law work better,鈥 he says.

 

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