The Good Tech Companies - Innovating Service Excellence: Leveraging AI and Machine Learning

Episode Date: October 15, 2024

This story was originally published on HackerNoon at: https://hackernoon.com/innovating-service-excellence-leveraging-ai-and-machine-learning. Debashish Acharya leverage...s AI/ML to optimize HR/IT service delivery, enhancing efficiency, user experience, and governance through innovative solutions. Check more stories related to machine-learning at: https://hackernoon.com/c/machine-learning. You can also check exclusive content about #ai, #machine-learning, #aiml, #generative-ai, #human-resources, #chatbots, #ai-governance, #good-company, and more. This story was written by: @jonstojanmedia. Learn more about this writer by checking @jonstojanmedia's about page, and for more stories, please visit hackernoon.com.

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Starting point is 00:00:00 This audio is presented by Hacker Noon, where anyone can learn anything about any technology. Innovating Service Excellence, Leveraging AI and Machine Learning, by John Stoy and Media. Debaashish Acharya is a visionary leader dedicated to advancing service delivery through Artificial Intelligence, I, and Machine Learning, ML. With 19 years of experience in the HR and IT domains, Debaashish has played a pivotal role in modernizing global operations. As ServiceNow HR Manager, he has been instrumental in implementing systems that enhance employee experiences and drive operational efficiency through technology.
Starting point is 00:00:37 Debaushish's expertise shines in his strategic adoption of technologies such as generative AI, machine learning algorithms, chatbots, agent chat, and AI-driven search. Under his guidance, these innovations have transitioned from theoretical concepts to practical solutions, streamlining workflows and supporting a diverse global workforce. For instance, his implementation of AI-driven search capabilities has significantly optimized information retrieval, improving bot efficiency and user experience across various platforms. His commitment to technological enhancement aligns with a vision of operational excellence and superior employee service. Debaushish fosters continuous improvement,
Starting point is 00:01:17 embedding a culture of progress and adaptation that drives organizational success. Implementing and expanding generative AI Deibashi Shacharia is a key advocate for generative AI, recognizing its transformative potential in HR and IT processes. His approach begins with a proof-of-value, POV, phase, which is crucial for evaluating generative ICE feasibility and impact. The initial step is to set clear objectives and establish criteria for measuring success, Deibashish explains. This phase is critical for aligning use cases with broader organizational goals and ensuring that the technology delivers tangible benefits. Following the PAV, Deibashish emphasizes a comprehensive business value assessment to gauge Generative AI's return
Starting point is 00:02:01 on investment and strategic fit. By thoroughly evaluating the business value, we can ensure that generative AI aligns with the organization's strategic goals and provides measurable outcomes, he notes. Once the business value is established, Deibashish recommends setting clear objectives and key performance indicators, KPIs, to guide implementation. This involves defining the project's scope, setting realistic timelines, and allocating resources. Well-defined objectives are crucial for aligning the team and managing expectations throughout the process, he advises. During deployment, Deba Shish advocates for careful integration of generative IINTO existing systems to minimize disruptions.
Starting point is 00:02:42 He suggests running pilot projects or limited-scale implementations to test performance and compatibility. Addressing integration challenges and data alignment issues early on is essential for smooth deployment, he says. In the final phase, Deibashish focuses on scaling up based on pilot project insights. He recommends refining technology, expanding capabilities, and providing comprehensive training and support. The goal is to ensure that generative AI meets immediate needs and is adaptable for future advancements, he adds. Enhancing user experience with iDriven solutions The deployment of iDriven search capabilities has significantly improved both employee experience
Starting point is 00:03:20 and operational efficiency. These enhancements have reduced the time spent searching for information, boosting productivity and satisfaction. AI search capabilities support multiple languages, offering contextual results, summarization, and dynamic translation, Debaushish notes. This is particularly beneficial for handling non-English content and improving global accessibility. Balancing technical complexities with a user-friendly experience is crucial. Debauchish emphasizes the importance of ensuring AI solutions are intuitive and accessible. Continuous user feedback is vital for refining these solutions. Mechanisms like portal feedback touchpoints and dedicated support channels enable
Starting point is 00:04:01 real-time adjustments, reinforcing the commitment to a seamless user experience. Why AI and machine learning? The drive to leverage AI and machine learning stems from a desire to enhance operational efficiency, personalize user experiences, and stay ahead of technological advancements. AI and machine learning analyze vast amounts of data, deriving insights that traditional methods might miss, Debauchish explains. This capability is key in transforming data utilization, improving decision-making, and enhancing service delivery. Debauchish anticipates that AI and machine learning will continue to evolve, providing advanced predictive analytics, automating complex processes, and identifying gaps in knowledge articles. These developments will streamline operations, enable high levels of customization,
Starting point is 00:04:49 and enhance decision-making, leading to greater efficiency and improved service delivery across HR and IT. Chatbots revolutionizing service delivery Chatbot and agent chat technologies have transformed global service delivery. Anaria where Debaashish Acharya has demonstrated considerable foresight. His focus is on using these technologies to provide dynamic and efficient employee support. Chatbots handle routine inquiries and are integrated with knowledge bases AndreQuest catalogs to offer precise answers. Debaashish advocates for a conversational catalog, which provides contextually aware responses and captures
Starting point is 00:05:25 detailed answers. The goal is to create an engaging, human-like interaction that feels intuitive and responsive, he says. Training generative AI and large language models, LLMs, to handle sensitive matters is also crucial. AI systems must discern between routine inquiries and sensitive issues, routing the latter to live agents for proper handling. There are also country-specific legal requirements, Deibashish notes. For more complex queries, integrating agent chat allows seamless transitions to live agents when automation cannot fully resolve issues. Blending automated and real-time support ensures timely and accurate assistance without delays,
Starting point is 00:06:04 he adds. These advanced features, contextually aware responses, auto-resolution, and multi-platform integration, have the potential to optimize global support operations and enhance the employee experience by delivering swift, accurate, and personalized solutions. AI governance and ethical considerations Debauchiche is acutely aware of the importance of AI governance, particularly as AI and machine learning technologies become more integrated into service delivery platforms. He stresses that responsible AI deployment is not just about efficiency and innovation but also about ensuring ethical guidelines are in place. AI models need to be governed with transparency and fairness, he explains.
Starting point is 00:06:44 To minimize bias and ensure equitable decision-making, Debauchish advocates for continuous monitoring of AI systems, focusing on data integrity and accountability. Debauchish has also been proactive in addressing concerns related to data privacy and compliance with global regulations like GDPR. He works closely with legal, compliance, and data privacy teams to ensure that AI models respect country-specific legal requirements, especially when dealing with sensitive HR issues. His leadership in building frameworks for ethical AI use demonstrates a forward-thinking approach, ensuring that technological advancements align with corporate responsibility.
Starting point is 00:07:21 Cross-functional collaboration for AI integration Debasheesh attributes much of his success in deploying AI-driven solutions to strong cross-functional collaboration. He emphasizes the need for aligning AI initiatives with broader organizational goals, involving stakeholders from HR, IT, legal, and operations. AI is not a siloed technology. Its value is maximized when integrated into existing workflows and when teams collaborate seamlessly, he notes. Under his leadership, teams work collaboratively to ensure that AI and ML implementations are adaptable and scalable across various departments. Deibashish highlights the importance of providing cross-functional
Starting point is 00:08:00 training so that employees from different areas understand how AI-driven solutions can enhance their specific workflows. This holistic approach fosters a culture of innovation, ensuring that AI is not only a technical advancement but a business enabler. AI strategies and lessons LEARNED integrating AI and machine learning tools with existing platforms requires a strategic approach. Debasheesh focuses on aligning these technologies with existing workflows and data structures. Comprehensive testing and validation ensure that AI and ML tools provide actionable insights and operate effectively within our system, he notes. This involves determining the necessary data volume and key data points for effective machine learning. Ensuring data from the past 6 to 12 months is
Starting point is 00:08:45 available for continuous model training. High-quality data is essential for AI and machine learning systems. Guidelines for support personnel to provide detailed notes, maintain accurate content, and ensure proper indexing significantly optimize AI outcomes. Debauchish emphasizes the importance of involving end-users early for feedback and refining technology to meet their needs. Regular reviews and updates of AI models ensure these technologies remain effective and aligned with business objectives, enhancing operational efficiency. Debaushish Acharya's commitment to leveraging AI and machine learning in HR and it exemplifies his vision for a future where technology drives service excellence.
Starting point is 00:09:30 His focus on operational efficiency, ethical governance, and cross-functional collaboration has not only enhanced employee experiences but also set a standard for innovation in service delivery. As AI technologies continue to evolve, Deibashish remains at the forefront of this transformation, ensuring that these advancements are aligned with organizational goals and create lasting value. His leadership is not only shaping the present but also laying the foundation for the future of AI-driven solutions in HR and beyond. Thank you for listening to this Hackernoon story, read by Artificial Intelligence. Visit hackernoon.com to read, write, learn and publish.

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