Call Us Now

+91 9606900005 / 04

For Enquiry

legacyiasacademy@gmail.com

Putting AI to Work in Business Environment

Context:

Generative AI is undergoing training for various commercial applications such as automated customer support, financial forecasting, and fraud detection.

Relevance:

GS3- Science and Technology-Awareness in the fields of IT, Space, Computers, Robotics, Nano-technology, Bio-technology and issues relating to Intellectual Property Rights.

Mains Question:

GenAI can significantly transform enterprise growth and development. Comment. (10 marks, 150 words).

Statistics related to GenAI:

  • In the context of enterprises, an estimated 60% of IT leaders are considering GenAI implementation. However, concerns, particularly regarding security (cited by 71% of IT leaders), pose a hurdle to adoption.
  • The Dell Technologies 2023 Innovation Index report notes that 59% of Indian businesses are either investing or exploring the feasibility of investing in AI, Machine Learning, and advanced analytics for innovation.
  • The key to widespread GenAI adoption lies in identifying and deploying purpose-built models that suit the specific needs of enterprises, such as automating customer support, financial forecasting, and fraud detection.
  • The Dell Technologies 2023 Innovation Index report highlights that India leads in the adoption of AI-based optimization software for process automation (37% of businesses).

Purpose-built Gen AI:

  • To drive this transformative change, enterprise utilization of GenAI is likely to differ from the broad application of general-purpose Large Language Models (LLMs) like ChatGPT.
  • Instead, enterprises are expected to employ GenAI models tailored to address specific challenges, ensuring more accurate results than those achieved by general-purpose models.

Advantages of purpose-built GenAI models:

  1. Data Security: As enterprises leverage AI for handling vast datasets, the importance of securely managing this data becomes paramount. Industries with strict data privacy regulations, such as healthcare and finance, need purpose-built models to comply with these standards.
  2. Time to Market: Updating GenAI models is a frequent requirement for most enterprises, and purpose-built models streamline this process. General-purpose LLMs, like ChatGPT, have longer training times due to the extensive data required, compromising speed to market.
  3. Performance: Purpose-built models outperform general-purpose models, particularly in applications requiring real-time processing. Enterprises utilizing third-party LLMs may struggle to optimize performance and minimize latency for GenAI workloads.
  4. Cost: Purpose-built GenAI models, requiring less training data, translate to cost savings in terms of training and re-training compared to general-purpose LLMs.

Conclusion:

GenAI, with its potential to automate intricate processes, enhance customer interactions, and provide superior machine intelligence, holds profound possibilities for enterprises worldwide, with CIOs playing a crucial role in its advancement. Unlocking the full capabilities of Generative AI (GenAI) demands tailored approaches to mitigate inherent adoption risks.


November 2024
MTWTFSS
 123
45678910
11121314151617
18192021222324
252627282930 
Categories

Register For a Free Online Counselling Session Now !

Welcome Pop Up
+91