This site uses cookies to improve your experience. To help us insure we adhere to various privacy regulations, please select your country/region of residence. If you do not select a country, we will assume you are from the United States. Select your Cookie Settings or view our Privacy Policy and Terms of Use.
Cookie Settings
Cookies and similar technologies are used on this website for proper function of the website, for tracking performance analytics and for marketing purposes. We and some of our third-party providers may use cookie data for various purposes. Please review the cookie settings below and choose your preference.
Used for the proper function of the website
Used for monitoring website traffic and interactions
Cookie Settings
Cookies and similar technologies are used on this website for proper function of the website, for tracking performance analytics and for marketing purposes. We and some of our third-party providers may use cookie data for various purposes. Please review the cookie settings below and choose your preference.
Strictly Necessary: Used for the proper function of the website
Performance/Analytics: Used for monitoring website traffic and interactions
Data literacy isn’t a buzzword; it’s a fundamental skill set that empowers legal professionals to handle complex challenges like data privacy compliance, AI bias assessment, and contract analytics. Leveraging Litigation Analytics Litigation is data-intensive, and making sense of this data is crucial for managing risks effectively.
This is where law firm predictive analytics come to the rescue. Predictive analytics give legal professionals the power to forecast outcomes and shape strategies with greater precision and confidence. What is predictive analytics? What is predictive analytics for law firms? Come let us show you around and book your demo.
This is a live blog post of a Legal Value Network virtual webinar, A Look at Client-Side AI-Powered Legal Spend Analytics Tools. As with all of my live blog post, I publish as a session finishes, so please forgive typos and misunderstandings of meaning. In sum, modern systems allow not just collecting but also analyzing data.
Lawyers need automation and analytics to identify key facts faster, spot patterns that would be missed manually, and streamline operations and workflows. Legal teams are under increasing pressure to deliver timely and defensible responses to litigation and regulatory demands.
In this blog post, we’ll explore the role of AI in litigation, the benefits of e-discovery, and its overall impact on law firms and clients. Solutions like natural language processing (NLP) and machinelearning algorithms help lawyers manage large amounts of information and complex case details efficiently.
Managing complex investigative analytics As businesses and investigations grow, so does the amount of data they generate which must be included in any analysis. They must also streamline their analytics workflows and improve collaboration internally and externally. Locations (places, postcodes, etc.),
Learn how to improve legal outcomes as you tackle the challenges of acquiring electronic evidence and understand the disruptive effects of AI and machinelearning on eDiscovery. These include text analytics, predictive coding, data mining, and computer-assisted review.
Tools like artificial intelligence and data analytics play a vital role in managing risks comprehensively, improving decision-making, and protecting the company’s interests. Legal ops teams use advanced analytics to gain granular visibility into all expenses, ensuring every dollar is accounted for.
The concept of data reuse as explored in our blog “The Art and Science of eDiscovery Data Reuse: Unlocking Discovery Datasets” delves into the methodical steps required to make case data not only relevant but also reliable and robust enough for further analysis. She is admitted to practice in New York and New Jersey.
Lexis for Microsoft Office LexisNexis offers Lexis for Microsoft Office , a robust legal proofreading software that leverages machinelearning and natural language processing (NLP) to enhance legal writing and research within Microsoft Word and Outlook. Unlike other software offerings, LexCheck is almost entirely AI-powered.
This blog post explores key considerations and recommendations for attaining eDiscovery excellence. Technology-Assisted Review (TAR): TAR, also known as predictive coding or machinelearning, utilizes advanced algorithms to assist in the document review process.
The Committee has been grappling with how to handle evidence that is a product of machinelearning, which would be subject to Rule 702 if propounded by a human expert. 8, 2024) , Tab 4 Memorandum Re: Artificial Intelligence, Machine-Learning, and Possible Amendments to the Federal Rules of Evidence (Oct. 24 Report).
Australia and Japan are also witnessing increased interest in legal tech solutions, particularly in areas like online dispute resolution and legal analytics. Chinese legal tech companies are leveraging AI and blockchain technologies to address legal challenges and improve access to justice.
In today’s episode, we’ll be diving into the fascinating world of one of the most advanced machinelearning tools out there: ChatGPT. Professor Hoofnagle] 03:03 ChatGPT is the newest iteration of a machinelearning technology that can generate text. I’m your host, Eric Ahern.
More advanced or complicated technologies, particularly those using complex modeling or machinelearning, would be expected to require more complex evaluative strategies. As discussed further below, the definition for broker-dealers is limited to retail investors while the investment adviser rule has no such limitation.
As a representative from Lex Machina, a legal analytics company, took the stage, I had no idea that the journey I was about to embark upon would lead me to the very frontiers of human knowledge and understanding. Perspectives from Analytical, Phenomenological, and Indian Traditions. Duke University Press Books, 2007. Braidotti, Rosi.
Over the past decade, to keep pace with digital transformation, legal leaders have embraced automation and machinelearning to optimize operations and improve business outcomes. This blog goes a bit further. Conclusion AI, advanced analytics, automation, and integration are necessities, not luxuries. The Future is Today.
The panelists included, Danielle Benecke, who is the founder and Global Head of machinelearning at Baker McKenzie, so large law firms are hiring people to lead up machinelearning within our law firms. Aaron Crews as SVP of analytics and AI at UnitedLex. Foster Sayers general counsel from Pramata.
So it was around the time that Watson had, you know, won Jeopardy, and really focusing at that time on how we could potentially apply cognitive analytics to the legal space. You know, with that type of predictive analytics, it’s a much for the uses I had within my legal department. I prefer a dinner fork to eat dinner.
This blog examines AI’s impact on the legal field, empowering legal teams to lead. Predictive Analytics for Better Decision-Making One of the most promising aspects of AI in the legal industry is its predictive analytics capabilities. Predictive analytics can also play a vital role in litigation risk assessment.
IDP - On the other hand - IDP is being impacted in that, historically, machinelearning needed to be utilized within IDP engines to train semi-structured & unstructured document types like invoices, insurance claims, legal complaints, bank statements, patient prescription documents, etc.
The Leah platform uses Generative AI, natural language processing, machinelearning and data analytics to automate and enhance various aspects of contract related work, such as including redline, data extraction, and discovery tools to address day to day projects and transactions managed by procurement and legal departments.
In this blog, we will embark on a captivating journey to explore the profound impact of AI on the legal industry, unveiling its benefits and shedding light on the potential challenges it presents. By leveraging machinelearning techniques, AI systems can identify patterns and correlations that humans might miss.
This blog post explores key considerations and recommendations for attaining eDiscovery excellence. Technology-Assisted Review (TAR): TAR, also known as predictive coding or machinelearning, utilizes advanced algorithms to assist in the document review process.
Antifraud charges The SEC found that Delphia claimed in its Form ADV Part 2A, in a press release, and on its website, that it used AI and machinelearning to analyze its retail clients’ spending and social media data to inform its investment advice when it actually did not use any such data in its investment process.
Listen to our blog on the go You’ve probably heard about ChatGPT – it’s still one of the hottest topics of today. Analytics : Large batches of contracts can be analyzed much faster using this technology. That’s much faster than doing research and analytics yourself. Got no time to read?
Josh Blandi is the CEO and Co-Founder of UniCourt , a SaaS offering using machinelearning to disrupt the way court data is organized, accessed, and used.
OpenText provides Axcelerate Cloud users with the opportunity to leverage Generative AI for case and concept label summarization Building on a long tradition of incorporating AI and machinelearning to speed document review OpenText is thrilled to introduce the next generation of AI-enhanced productivity - Aviator for Axcelerate.
In this blog post, we’ll delve into the factors driving this transformation and its implications for legal professionals and their clients Technological Disruption: One of the most significant drivers of change in the legal industry is technological disruption.
Is it in AI or machinelearning or both that? Paulina Grnarova 28:22 I guess, I don’t know, machinelearning? And yeah, the YouTube channel also forces me a little bit to stay up to date on everything that’s happening in the machinelearning world. Very cool to see. I believe it? How do you define it?
Learn more about how Clio Duo can help your law firm. AI marketing refers to using AI tools and techniques, such as machinelearning or natural language processing, to improve the efficiency and effectiveness of marketing strategies. Read more about the ethical considerations of AI and law in our blog post.
Chatbots can be trained using machinelearning algorithms to improve their performance over time. This allows chatbots to learn from past interactions and improve their accuracy and efficiency. Predictive analytics: AI can be used to analyse past legal cases and predict the outcomes of similar cases in the future.
This blog explores how organizations can transform discovery-focused datasets into dynamic tools that predict trends, inform strategies, and optimize operations. Data Analysis: Employing statistical methods and machinelearning algorithms to analyze the data and uncover patterns or trends.
You know, we have a lot of analytics. It’s a lot of analytics, but it’s understanding what data needs to be collected in order to measure it. Well, you know, one of the things that we’re finding that that clients want to know, they want to get insight into efficiencies, and they want to know how to measure things. And then how is that?
In this blog, we’ll investigate why legal practices of all sizes are adopting Office 365 for their day-to-day operations. Here’s a glimpse into what the future may hold for Microsoft 365: AI and Automation: Microsoft is investing heavily in artificial intelligence (AI) and machinelearning (ML) to make Microsoft 365 even smarter.
In this blog, we’ll investigate why legal practices of all sizes are adopting Office 365 for their day-to-day operations. Here’s a glimpse into what the future may hold for Microsoft 365: AI and Automation: Microsoft is investing heavily in artificial intelligence (AI) and machinelearning (ML) to make Microsoft 365 even smarter.
OpenText eDiscovery solutions have a long history of incorporating artificial intelligence (AI) and advanced analytics to dramatically improve review efficiency and lower costs while ensuring defensibility of process. Axcelerate drives down the cost of eDiscovery through analytics and automation. Axcelerate CE 21.2 Axcelerate CE 21.2
To subscribe to our Data Blog, please click here. So, if an AEDT creates an output that is just one data point among a number of factors leading to a decision, under the Proposed Rules, that tool would be outside the scope of the AEDT, unless that output was weighed more than any other criterion or used to overrule a human decision.
So today we are honored and delighted to have Kriti Sharma, Chief Product Officer of Legal Tech at Thomson Reuters, where she leads the development and delivery of innovative and impactful products that leverage data analytics and AI. And at the time, the that role was about help the machineslearn how to talk to humans.
He’s an expert in AI, machinelearning, and software development. Emma is methodical, analytical, and practical, always looking at the long-term implications of financial decisions. Use platforms like blogs, social media, and even webinars to educate your audience on the importance of sustainable tech.
He’s an expert in AI, machinelearning, and software development. Emma is methodical, analytical, and practical, always looking at the long-term implications of financial decisions. Use platforms like blogs, social media, and even webinars to educate your audience on the importance of sustainable tech.
Their responses range from predictions that AI will help automate legal workflows and build tools faster, to allowing for better data analytics and metrics to improve client relationships and retention. Look at the three geeks and a law blog page for the episode. NL Patent is a AI based Patent search and analytics platform.
To do this, you would have to have analytics, a huge corpus of information that has been analyzed. I mean, I guess you could you could use the the generative AI to help with the analytics. Because if it weren’t, if it were, say 90% with a machinelearning model, you wouldn’t trust this number. This is 99.6.
As we approach the end of the year, here are the Top 10 Artificial Intelligence (“AI”) posts on the Debevoise Data Blog in 2023 by page views. If you are not already a Blog subscriber, click here to sign up. To subscribe to the Data Blog, please click here.
We organize all of the trending information in your field so you don't have to. Join 5,000+ users and stay up to date on the latest articles your peers are reading.
You know about us, now we want to get to know you!
Let's personalize your content
Let's get even more personalized
We recognize your account from another site in our network, please click 'Send Email' below to continue with verifying your account and setting a password.
Let's personalize your content