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Generative AI in Business: Is It Set to Shake up Enterprises?by@eliftech
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Generative AI in Business: Is It Set to Shake up Enterprises?

by ElifTechFebruary 16th, 2024
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Find out how generative AI is poised to revolutionize enterprises' operations, enhancing productivity and efficiency.
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Just as mobile apps and social media revolutionized the consumer experience more than a decade ago, now artificial intelligence (AI) is set to shake up enterprises. Over the years, businesses have come to rely heavily on technology to facilitate communications, enhance productivity, and drive innovations. Today, the integration of AI into business operations promises even greater potential.


It's worth noting that numerous groundbreaking technologies of the past have traced a similar trajectory: initial recognition, excitement culminating in the hype, a gentle letdown when the hype confronts reality, and then a meteoric rise once the technology breaches a critical threshold and demonstrates its value. This trajectory mirrors the advancement of generative AI but at an unprecedented, breakneck speed. ChatGPT was officially unveiled to the public on November 30, 2022, primarily as a techno-demonstration. A mere two months post-launch, it already had an impressive user base of approximately 100 million active users, earning the title of the fastest burgeoning consumer application in recorded history. From then on, generative AI has sustained a rapid pace of progress, with the advent of multiple new tools and applications showcasing the enormous capacity of this technology to revolutionize how individuals conduct their lives and professional activities.


Moreover, a recent survey conducted by Salesforce underscores the prevailing sentiment among IT leaders, with 86% asserting that generative AI is anticipated to play a significant role in their organizations in the future. This technological advancement enables organizations to derive greater value from their extensive data pools and streamline labor-intensive processes such as transcription of meeting notes and management of consumer inquiries. These prospects for enhanced efficiency have instigated a competitive rush among businesses to leverage AI. According to an analysis by McKinsey, generative AI is poised to add a value of $2.6 trillion to $4.4 trillion annually, primarily by enriching customer experiences, innovating research methodologies, and facilitating task automation. Furthermore, Salesforce anticipates generating over $2 trillion in business revenue and creating approximately 11.6 million jobs from 2022 to 2028.


Notably, AI adoption is not limited to just tech giants or innovators anymore. Businesses of all sizes and across industries are recognizing the potential of AI solutions to transform their operations. Whether it's improving supply chain management and forecasting, optimizing resource utilization, or delivering personalized customer experiences, AI is becoming a valuable asset across the business spectrum.

Now decides next: The swift rise of generative AI

The period of innovation that took off around 2007 made use of social media and app stores to help companies achieve scale in the consumer market, but this time is different. They were the engines of growth, brand visibility, and user acquisition, as entrepreneurs and innovators raced to tap into the ever-expanding digital marketplace. However, this time, the narrative has taken a turn. While social media networks and app stores continue to play a significant role in consumer engagement, the generative AI boom is redirecting the focus toward the engine rooms of enterprises, making people and processes radically more productive. Unlike the prior wave that saw AI-generated content as the front-rank innovation, the present technological tide is characterized by deep learning algorithms and AI systems that are increasingly sophisticated and accessible.


AI is changing how products are designed, how customer data is analyzed, and how decisions are made. Enterprises are turning to AI to optimize supply chains, forecast market changes, automate administrative tasks, personalize customer service, and improve cybersecurity. This distinction is crucial: the present era is less about reaching the consumer directly and more about enhancing the fundamental capabilities of businesses to serve those consumers more effectively and efficiently. It's a shift from consumer-facing front-end innovations to backend process optimizations that can bring about more profound and lasting transformations across industries.


Enthusiasm for generative AI solutions is still surging, and significant transformations are anticipated within the next three years. Yet, this excitement is not without its apprehensions, as 30% of IT leaders also express a sense of uncertainty.

Image credits: Deloitte


Some anticipate that generative AI will catalyze profound changes within their enterprises and respective sectors in the next three years—remarkably, almost a third are foreseeing significant transformations to either unfold presently (14%) or within a timeframe shorter than one year (17%).

Image credits: Deloitte

There is a trend where many enterprises are gearing up to escalate their applications of AI, pivoting towards a more substantial integration of generative technologies. This reflects the broader market dynamics, where firms globally are quickening their pace, advancing from experimental proof-of-concept stages to broader, more ambitious deployments. These deployments span diverse use cases and data types, with companies seeking to seize the swiftness and value that generative AI promises, all while judiciously navigating its potential risks and societal ramifications.

Measuring business value and benefits of generative AI

Companies all around continue to discover innovative, practical applications for the technology, far surpassing the realm of artificial chatbots. Businesses aren't just using generative AI for operational tasks. The technology is also being adopted in traditionally people-driven roles, such as sales and marketing, with resounding success.


Current generative AI efforts remain more focused on efficiency, productivity, and cost reduction than on innovation and growth.

Image credits: Deloitte

A significant portion of organizations are currently harnessing generative AI for practical gains such as enhancing efficiency and productivity (56%) and lowering costs (35%). This trend aligns with historical precedents associated with tech adoption phases. In the early stages, organizations typically prioritize subtle enhancements to their existing processes and services, picking off the low-hanging fruit, while fortifying their understanding, proficiency, and assurance in the nascent technology. As their expertise evolves, they broaden or recalibrate their focus towards more innovative, strategic, and transformational advancements—putting the novel technology to work for driving growth, gaining a competitive edge, and unlocking new capabilities that were previously inconceivable. Leaders with higher levels of AI proficiency demonstrate earlier indications of ascending this curve, being keener on revealing new concepts and insights. Even so, these practical advantages continue to remain their primary focus.


Image credits: Deloitte

Unquestionably, productivity and efficiency can be metamorphic, especially when contemplating the significant scale that generative AI brings to the table. However, the most substantial benefits and strategic differences will potentially emanate from using the technology as a catalyst for innovation. On one hand, it can aid in devising new products, services, and functionalities that would have been unimaginable otherwise. On the other hand, it can foster new business paradigms and workflows throughout an organization, thereby redefining the way businesses function.


As has been the case in the past, organizations are predicted to first focus their efforts on enhancing efficiency, augmenting productivity, saving costs, and pursuing other forms of gradual improvements. This approach is expected to aid the workforce in acclimating to the use of generative AI and demonstrating how this technology can simplify their professional roles. Moreover, initial successes will likely yield cost benefits and stimulate a momentum that can be redirected toward pursuing higher-value areas. This could involve more strategic and distinctive endeavors, like facilitating the creation of novel products, services, and business models. Not to mention, it paves the way for innovative work methods that were impractical before the advent of generative AI.


Reflecting the focus on immediate gains from generative AI, the majority of companies are currently leaning heavily toward readily available solutions. They're tapping into:

  • Productivity Tools with Generative AI Integration: These applications are aimed at enhancing everyday efficiency by automating routine tasks and processes.
  • Enterprise Systems with Generative AI Capabilities: These platforms are typically used across organizations to improve various business functions by leveraging AI's data processing and analysis power.
  • Standard Generative AI Applications: Such applications are designed to be broadly applicable, aiding a wide range of industries and sectors with generalized tasks.
  • Public Large Language Models (LLMs) like ChatGPT: Platforms like ChatGPT exemplify public LLMs, known for their versatility in language processing, capable of diverse applications like conversation, content generation, and more.

Image credits: Deloitte

On the flip side, there's less enthusiasm for the more niche, customized generative AI tools, including:

  • Industry-Specific Software Applications: These are specialized solutions intended for particular sectors, offering tools that align more closely with unique industry demands and vocabularies.
  • Private Large Language Models (32%): Organizations may opt for private LLMs to tailor language processing capabilities according to their proprietary needs or for enhanced data privacy.
  • Customized Open-Source LLMs (25%): It's a bit of DIY in the AI world, taking publicly available open-source LLMs and modifying them to fit their specific business requirements more closely.


The prevalent reliance on generic, out-of-the-box solutions aligns with the present, emergent phase of generative AI integration, with a strong emphasis on streamlining and augmenting the productivity of conventional operations. Nevertheless, as the applications for generative AI branch out — becoming more distinct, specialized, and strategically imperative — it is anticipated that the strategies for development and the supporting tech infrastructures will evolve accordingly, embracing a more bespoke approach to deliver greater competitive advantage and value generation.

What’s the change?

Generative AI may not possess the ability to rapidly build a large user base like social media platforms or mobile apps, but it is bringing about a unique change—one that is transforming large organizations from within. It’s all about transforming how large organizations operate from the inside out, making every task more efficient and boosting overall productivity.


Unlike consumer-centric technologies, generative AI doesn't construct an external user platform; instead, it builds an internal one, bolstering the backbone of organizations. This helps free up employees to engage with more challenging, valuable work. And it doesn’t stop there. AI-powered analytics can dig into the deep sea of data an organization produces, pulling out valuable insights and trends. The kind that can shape and guide strategic decisions, leading the business down a more profitable path.


AI models can automate routine tasks, reducing the workforce's mundane load and freeing up time for higher-value work. AI-powered analytics can sift through vast amounts of data to generate insights that inform strategic decision-making, consequently steering the company towards more profitable paths. It can revolutionize customer service by deploying chatbots for instant query resolution, elevate human resource functions with predictive hiring and talent analytics, and improve the supply chain with predictive logistics.


The point to emphasize here is that generative AI isn't about displacing human effort; it is about enhancing it. It's about 'augmentation' rather than 'automation.' It’s a tool that empowers the workforce to be more creative, strategic, and efficient, driving a significant upswing in productivity. The ultimate triumph of generative AI in the enterprise context is that it manifests the power to transform large organizations by enhancing the efficacy of their most valuable asset - people. It fosters a culture of collaborative intelligence where human creativity and decision-making are complemented by AI capabilities, harnessing the best attributes of both to give businesses a quantifiable competitive edge.


As we move forward, generative AI's distinctive proposition—to make organizations fundamentally more efficient and productive—will be key. In a world increasingly driven by technological advancements, it is this potential to bolster human talent and streamline business processes that positions AI as a game-changing force in enterprise evolution.


One of the most compelling facets of generative AI is its universal applicability. From small startups to multinational enterprises, businesses can deploy AI technologies to automate complex tasks, derive insights from large data sets, and create new ways of engaging customers. Unlike previous tech waves that often required substantial investment, making them the domain of large players, generative AI levels the playing field. Now, even small enterprises have the potential to disrupt established markets and challenge incumbents by leveraging AI-driven innovation.


Furthermore, generative AI's versatility extends beyond mere operational efficiency. It's a catalyst for creating new products, services, and business models. With the ability to analyze trends and forecast demands with unprecedented accuracy, businesses can identify and capitalize on emerging market opportunities faster than ever before. Moreover, generative AI empowers companies to deliver highly personalized customer experiences, something that has become a significant differentiator in today’s competitive landscape.


However, the journey toward AI integration is not without its challenges. Data privacy, ethical considerations, technical infrastructure, and skill gaps are some of the key issues enterprises must navigate to unlock the full potential of AI. As businesses push the boundaries of what's possible with AI, they also bear responsibility for ensuring that their innovations are ethical, transparent, and equitable. This includes addressing issues related to privacy, data security, employment, and the potential unintended consequences of AI systems. Business leaders must prepare their organizations for this transformation journey, fostering an AI-ready culture grounded in learning, adaptability, and ethical responsibility.

Final Say

Summing up, the generative AI boom is not just another chapter in the annals of technological advancement. It is a critical moment with the potential to fundamentally transform how businesses operate and compete. By embracing this revolution, companies can unlock new levels of efficiency, innovation, and customer engagement. But this requires not just adopting new technologies, but also adapting to the new realities they create—cultivating the right skills, embracing change, and navigating the ethical landscape with consideration. In doing so, businesses can harness the full power of generative AI, propelling themselves into a future where they’re not just participants in the digital revolution, but leaders shaping its course.