Hexaware Strengthens Data Capabilities with Acquisition of Softcrylic Know More
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Professional services
June 5, 2024
In court cases, evidence-based arguments heavily influence trial outcomes, prompting lawyers to invest substantial time and resources in gathering evidence before a trial. This evidence typically comes in various formats, such as interrogations, confessions, depositions, and documents, most of which are now being digitized. The process of collecting this evidence is referred to as Discovery in legal terms. E-Discovery, which involves managing large volumes of electronic data, has become a vital component of modern litigation.
However, merely digitizing Discovery is not enough. Conducting e-discovery today faces numerous challenges, the most pressing being the increasing variety of data types that need to be managed. According to the latest quarterly e-discovery Business Confidence Survey by Complex Discovery, “Increasing Types of Data” was identified as the top issue impacting the e-discovery business over the next six months by nearly 37% of respondents. This concern significantly outweighed the next-highest issue, “Budgetary Constraints,” which was selected by 19.72% of respondents.
This trend is not a one-time occurrence. Analysis by eDiscoveryToday reveals that “Increasing Types of Data” has been the leading concern in seven of the last eight fiscal quarters. Another survey indicated that 47% of respondents believe their organizations would struggle to keep up with the rapid growth in data volumes.
Data volume and variety are just the tip of the iceberg. Other critical challenges include ensuring data privacy and security, managing high costs, navigating complex regulatory compliance, and filtering massive amounts of data to identify relevant information. These issues highlight the complexity and scale of modern e-discovery.
Traditional methods struggle to meet these demands, but Generative AI (Gen AI) offers a transformative solution. Gen AI can streamline and enhance the e-discovery process, efficiently handling large volumes and varieties of data, ensuring sensitive information is protected, automating labor-intensive tasks to reduce costs, keeping up to date with regulatory changes, and improving the overall efficiency and effectiveness of the e-discovery value chain.
With the large volumes of both structured and unstructured data that lawyers usually have to analyze manually, Gen AI can greatly improve the actions, outcomes, costs, and efficiency of each case. The American Bar Association notes that 62% of lawyers already use some type of traditional e-discovery solution, making this area more suitable for automation compared to other legal uses of Gen AI.
Save up to 25-30% of time with increased precision and compliance while extracting solid evidence and preventing the loss of pertinent information.
Gen AI is vital for data redaction, helping comply with privacy regulations related to personally identifiable information (PII) and privileged information. By employing advanced data masking and redaction techniques, AI algorithms can automatically detect and redact sensitive information from documents, reducing the risk of accidental disclosure and ensuring adherence to data protection laws.
The technology ensures format consistency by converting speech and video into text in real time. By transcribing audio and video recordings into text, AI makes the content searchable and analyzable, aiding in the extraction of pertinent information during the e-discovery process.
Gains up to 45% in time & effort by extracting significant information, identifying patterns/trends, and hence expediting legal decision-making has a context menu.
Generative AI models can also automatically review and classify document collections based on relevance, privilege, and other case-specific criteria. The technology not only classifies each document but can also provide a confidence level for the classification and often a brief explanation for the classification decision.
Lowering efforts by 30% in creating compelling visuals and interactive exhibits, along with compliant, shareable data for counsels.
It can generate compliant and shareable datasets containing relevant metadata, easing collaboration with opposing counsel. By analyzing content, context, and metadata, Generative AI algorithms can compile and structure documents that meet legal standards and promote efficient information exchange between parties. Additionally, Generative AI ensures consistency and accuracy in data presentation, reducing errors and discrepancies in the materials produced.
While these are some possible use cases, lawyers have been leveraging Gen AI technology to streamline e-discovery workflows, mainly focusing on sentiment analysis and classification. For instance, in sentiment analysis, natural language processing identifies attitudes, sentiments, or emotions within documents. This capability enables legal teams to prioritize documents that are more likely to be relevant, identify patterns in communication pertinent to a case, and flag content with strong negative sentiment for further review.
Automated classification employs advanced algorithms and machine learning models to organize information into predefined classes or categories. This is particularly useful for identifying personally identifiable information (PII), protected health information (PHI), or other sensitive data and for detecting and addressing redundant, obsolete, or trivial (ROT) data. Additionally, it is being leveraged to identify foreign languages within documents, ensuring comprehensive and accurate data review.
Considering the complex and ever-changing regulatory and judicial frameworks in each jurisdiction, it’s improbable that Gen AI, as it stands, has achieved the necessary legal proficiency to stay abreast of all international legislative updates. To address gaps in knowledge, Gen AI often generates inaccurate or fictional responses, posing significant risks for legal teams as it fails to clearly distinguish between fact and fiction. Human involvement becomes crucial in conducting thorough quality-control checks.
Another significant concern revolves around the potential for bias within Gen AI. Technology is limited to what it can extract from the data patterns on which it has been trained. Consequently, any biases ingrained in the knowledge base it was trained on will influence the information it produces. Prejudices such as sexism, racism, homophobia, and xenophobia can unfairly skew the outputs, and there is little clarity on how to eliminate these inaccuracies effectively.
Furthermore, law firms and in-house counsel utilizing Gen AI must grapple with confidentiality issues, which can present numerous challenges. Legal teams must carefully assess what sensitive data can be shared with AI to improve operational efficiencies while safeguarding privileged information.
Copyright infringement poses another challenge, as lawyers may struggle to verify the sources from which Gen AI derives its outputs. Legal teams could face legal repercussions if a lawyer utilizes Gen AI tools to access information and the AI produces a response that substantially replicates someone else’s work without permission.
Distributing third-party material without consent or neglecting to attribute the rightful owner can lead to serious copyright infringement. In the legal industry, Gen AI has been likened to “an essay with no footnotes,” which is far from ideal, especially considering the paramount importance of meticulous accuracy in any competent legal department.
The issue of AI-generated copyright infringement is currently unfolding in the public eye. In the UK, Getty Images has filed a copyright infringement lawsuit against Stability AI, the developer of the AI image generator Stable Diffusion, alleging unauthorized use of millions of their photos to train AI. Simultaneously, in the US, Microsoft, GitHub, and OpenAI are seeking dismissal of a class-action lawsuit filed by a software developer who claims that the development of the AI-powered coding assistant GitHub Copilot constitutes “software piracy on an unprecedented scale.”
The outcomes of these cases will significantly impact the industry, shaping the legal, moral, and ethical boundaries of AI usage moving forward. Judges must exercise caution when interpreting the flexible concept of “fair use.” Depending on the direction of the judicial decisions, it could lead to a flood of ongoing AI copyright infringement claims.
The proactive integration of Gen AI into legal practice is not a question of if, but when. The excitement surrounding this groundbreaking AI is paving the way for meaningful discussions on the how, why, and where advanced technologies should be utilized in the modern legal landscape. While not a substitute for human lawyers, generative AI can be used effectively if its output undergoes thorough scrutiny.
Gen AI can assist in conducting extensive research, uncovering crucial evidence, and drafting initial documents. When deployed appropriately, it serves as a time-saving, efficiency-boosting, and invaluable asset for busy law firms and in-house counsel. As long as lawyers don’t take the output from Gen AI as absolute truth, they can utilize this convenient in-house ally to achieve new productivity levels.
Legal teams can shield themselves from accusations of copyright infringement by refraining from directly copying material and rewriting information to generate original content. Moreover, legal teams should consider enhancing lawyers’ capabilities with the technical expertise of Gen AI as an additional information resource. However, clear ethical guidelines regarding the personal data on which it is trained must be set to prevent professional setbacks and costly breaches of confidentiality.
Generative AI significantly enhances legal workflows by boosting efficiency and performance across both routine and intricate tasks. It excels in areas where human capabilities may wane, such as swiftly processing large volumes of data, executing repetitive duties, and generating analytical solutions without succumbing to fatigue.
Nevertheless, humans still outshine Gen AI in creativity, ethical discernment, and specialized knowledge. Optimal outcomes are achieved through the synergistic partnership between human insight and Gen AI’s capabilities. For example, Gen AI can tackle tasks ranging from mundane administrative duties to complex activities like drafting legal documents, analyzing legal theories, and overseeing e-discovery processes.
Effectively harnessing Gen AI in e-discovery necessitates a comprehension of its strengths and limitations, recognizing ethical boundaries, and diligent oversight of its applications. Beginning with simpler applications can foster familiarity and confidence, while seeking guidance from experts can optimize Gen AI integration for those requiring further assistance. A deeper understanding of Gen AI empowers legal professionals to utilize this technology safely and efficiently.
About the Author
Arun Narayanan
With over 25 years of experience in Consulting, Pre-Sales, and Thought Leadership, Arun Narayanan leads the Hi-Tech & Professional Services (HTPS) practice at Hexaware Technologies and is a key member of the Gen AI Consulting & Practice (North America) team. As an accomplished HTPS and Gen AI leader, Arun excels in driving meaningful business outcomes through technology. His expertise in customer management, combined with a strong focus on Strategy and Domain-specific solutions, enables him to deliver comprehensive services that effectively meet customer needs.
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Neha Jain
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