AI

Artificial Intelligence (AI) stands at the forefront of modern technological advancements, promising transformative capabilities across industries. Yet, the journey to harness the full potential of AI is paved with challenges and complexities that demand keen insight and expertise. In this exclusive interview, we engage with Kausik Chaudhuri, Chief Innovation Officer at Lemongrass Consulting, a distinguished authority in the realm of AI and innovation.

With an illustrious career dedicated to pushing the boundaries of AI, Kausik Chaudhuri brings a wealth of knowledge and practical experience to the table. He shares his profound insights on critical aspects of AI that often go unnoticed but are paramount for success: the art of AI training, the peril of bias, and the roadmap to utilizing AI effectively.

Throughout our conversation, Mr. Chaudhuri delves into the pivotal role of AI training in shaping its value, emphasizing the nuances of data collection, preparation, and the transformative outcomes that effective training can yield. He also addresses the pressing concern of bias in AI and the imperative to recognize and mitigate it, offering pragmatic solutions based on his extensive industry experience.

Moreover, Kausik Chaudhuri provides a straightforward guide for organizations aiming to unlock the full potential of AI while avoiding pitfalls and errors. From selecting the right AI tools to deploying models effectively, his guidance paves the way for informed decision-making in the AI landscape.

As we explore these pivotal topics with Mr. Chaudhuri, we gain invaluable insights that not only shed light on the present challenges of AI but also illuminate the path to a future where AI is an indispensable ally for businesses and society alike. Join us as we embark on this enlightening conversation with a visionary in AI and innovation.

Artificial Intelligence (AI) stands at the forefront of modern technological advancements, promising transformative capabilities across industries. Yet, the journey to harness the full potential of AI is paved with challenges and complexities that demand keen insight and expertise. In this exclusive interview, we engage with Kausik Chaudhuri, Chief Innovation Officer at Lemongrass Consulting, a distinguished authority in the realm of AI and innovation.
  • Could you tell ERP News readers about the vision of Lemongrass Consulting and your role at Lemongrass Consulting?

Lemongrass specializes in helping clients migrate to and manage their operations on AWS, Microsoft, and Google. Our main goal is to help clients efficiently manage their businesses and related costs, especially those associated with infrastructure and IT services while minimizing operational downtime.

I joined Lemongrass in September 2022 in the role of Chief Innovation Officer. My responsibilities include advancing our intellectual property initiatives, which include working on LCP (Lemongrass Cloud Platform), our multi-cloud control plane. My focus is to ensure that the teams overseeing customer migration and steady-state operations have the best tools (in-house and third-party) for the appropriate actions. I also facilitate the development of innovations that not only assist our clients in conducting their business but also grow our intellectual property portfolio.

  • Can you explain why the training process is so crucial in the development of AI systems, and how it influences their value?

The results produced by artificial intelligence are shaped by the data used during its training. It’s imperative to recognize that data is dynamic; what was accurate ten years ago may not hold true today. Therefore, decisions grounded in historical data might require revisiting as situations evolve.

That being said, data alone doesn’t drive AI. Two main factors influence AI training: the data itself and the experts handling said data. Domain knowledge is essential. Those responsible for curating data fed into AI tools must possess a strong understanding of the subject matter context. Without such expertise, the data’s significance and accuracy can be compromised.

  • What are some key considerations organisations should keep in mind when collecting and preparing data for AI training?

Organizations should understand that every piece of data, either historical or current, carries significance and context. Without grasping this context, data loses its meaning. For effective AI training, algorithms require a diverse range of information to make well-informed choices on our behalf.

It’s equally crucial to have deep subject matter knowledge when inputting data into AI systems. Lacking this, the data becomes less valuable and pertinent. The absence of appropriate domain expertise increases the likelihood of biases in AI decision-making. Feeding biased data to an AI without proper oversight can lead to unreliable results. Hence, domain knowledge is indispensable.

  • Bias in AI is a critical concern. Can you elaborate on why AI systems often exhibit bias, and what are the potential consequences of this bias?

Data, much like humans and society, inherently contains biases and subjective perspectives. Since data emerges from tools crafted by people, it can naturally encapsulate their biases. Such prejudiced data results in skewed decisions. These biases can take the form of representational bias and subjectivity, deeply rooted in human nature, that can compromise the impartiality of AI system responses.

  • Many organisations aspire to leverage AI but face challenges. What is your advice for organisations looking to use AI effectively while avoiding common errors?

It’s crucial to recognise that data landscapes are continually evolving. The data used to train AI systems a decade ago may no longer be relevant today. Therefore, organisations must understand their legacy data and prioritize it based on the goals of the campaign. Regularly updating and curating datasets ensures that AI systems operate with the most up-to-date information, enhancing their effectiveness.

Data may also encompass extraneous details or noise that can adversely affect AI performance. For example, a camera mounted on a moving vehicle captures everything in its surroundings, not just the intended focus point. Removing unnecessary noise from the data is essential to improving its quality and ensuring that AI systems focus on the most relevant information.

Finally, human intervention and supervision are essential for the successful implementation of machine learning. While AI tools themselves are important, they also require supervision and governance by humans to prevent unintended actions or outcomes.

  • Can you outline a step-by-step guide or best practices for organisations to follow when integrating AI into their operations?

Have Clear Objectives

It’s vital to precisely outline your objectives and aims when incorporating AI. It’s crucial to have a well-defined purpose to guide the entire process. Objective ambiguity can lead to misalignment between your intentions and the AI integration process.

Collect Relevant Data

Gather and organize high-quality, relevant data that aligns with your goals. Make sure the data is pristine, comprehensive, and correctly tagged. Data quality is a critical factor in the success of AI integration.

Test and Validate the Data

Implement rigorous testing and validation procedures to ensure that the AI model performs as expected. This involves creating a pilot environment for testing, ensuring that it aligns with your anticipated outcomes.

  • How should organisations approach the selection of AI tools and frameworks to match their specific needs and goals?

AI solutions aren’t one-size-fits-all in the market. Organisations should seek tools that have been created by experts for specific sectors, such as manufacturing or healthcare.

Given AI’s often opaque nature, it’s advisable for organizations to use tools that provide as much clarity as possible.  This transparency enables teams to better understand the AI’s decision-making processes, illuminating both the ‘what’ and ‘why’ of its results.

  • Looking ahead, what emerging trends in AI do you find most exciting, and how can organisations prepare to embrace these trends?

There are a few sectors where we can expect to see rapid implementation of AI. For example, transportation, healthcare, scientific research, customer experience, manufacturing, and the government sector will all benefit from machine learning and AI tools.

One thing is clear: AI will serve as a foundation for human workers to evolve and flourish – its intentions are meant to support the existing workforce, not replace it.

  • Are there any final recommendations or insights you’d like to share with organisations seeking to maximise the potential of AI in their operations?

Change is inevitable in whatever we do in our lives, therefore we should keep an open mind. Enterprises and employees need to be ready to manage whatever new challenges arise. AI will have a significant impact on a number of industries, so we need to understand this technology and develop practices that are fair and ethical.