Skip to main content

The Industrial Impact of Generative AI


 

Hype of Generative AI

Generative AI is not just a fleeting trend; it's a transformative force that's been captivating global interest. Comparable in significance to the dawn of the internet, its influence extends across various domains, altering the way we search, communicate, and leverage data. From enhancing business processes to serving as an academic guide or a tool for crafting articulate emails, its applications are vast. Developers have even begun to favor it over traditional resources for coding assistance. The term Retrieval Augmented Generation (RAG), introduced by Meta in 2020 (1), is now familiar in the corporate world. However, the deployment of such technologies at an enterprise level often encounters hurdles like task-specificity, accuracy, and the need for robust controls.

Why enterprises struggle with Industrializing Generative AI

Despite the enthusiasm, enterprises are grappling with the practicalities of adopting Generative AI.

According to survey by MLInsider,

  • 62% of AI professionals continue to say it is difficult to execute successful AI projects. The larger the company, the more difficult it is to execute a successful AI project.
  • Lack of expertise, budget, and finding AI talent are the top challenges organizations are facing when it comes to executing ML programs.
  • Only 25% of organizations have deployed Generative AI models to production in the past year.
  • Of those who have deployed Generative AI models in the past year, several benefits have been realized. About half said they have seen improved customer experiences (58%) and improved efficiency (53%).

In summary, Generative AI offers massive opportunities to enterprise but due to skills, requirements for enterprise security and governance, they are still behind in the adoption curve.

Industrialization of Generative AI applications

The quest for enterprise-grade Generative AI applications is now easier, thanks to SaaS-based model APIs and packages like Langchain and Llama Index. Yet, scaling these initiatives across an enterprise remains challenging. Historical trends show that companies thrive when utilizing a centralized platform that promotes reusability and governance, a practice seen in the formation of AI and ML platform teams.

GenAIOps four layer cake

Enterprises should think about Gen AI platforms with the above four layered cake,

  1. Infrastructure

     - Most companies have a primary cloud infrastructure and typically utilize Gen AI building blocks offered by the cloud.
  2. Capabilities

     - These are set of foundational building block services offered by cloud native (e.g. Opensearch, Azure OpenAI) or 3rd party SAAS products(e.g. Milvus Vector search)
  3. Reusable services

     - Central Gen AI teams typically have to build a RAG (Retrieval Augmented Generation), Fine Tuning or Model Hub Services that can be readily consumed with enterprise guard-rails
  4. Use cases

     - Using the reusable services, use cases can be deployed and integrated with a variety of applications such as Customer support bot, summarizing customer reviews and more.

Many Data, ML and AI vendors are snapping these capabilities on top of their existing platform. ML Platforms that start with supervised labels and depend on model building & deployment aspect of MLOps, Generative AI platforms begin with a pre-trained Open source model(e.g. Llama2) or proprietary SAAS model(GPT4), focuses on capabilities to contextualize Large Language models and deploy capabilities to enable smarts in applications such as Copilots or Agents. Hence we propose a radically different approach to fulfill the promise of industrialized Gen AI that focuses on LLMOps development loop ( Connect to Model Hub -> Contextualize Model for Data -> Human Evaluation )

Introducing Generative AI Platform for all

Karini AI presents "Generative AI platform", designed to revolutionize enterprise operations by integrating proprietary data with advanced language models, effectively creating a digital co-pilot for every user. Karini simplifies the process, offering intuitive Gen AI templates that allow rapid application development. The platform offers an array of data processing tools and adheres to LLMOps practices for deploying Models, Data, and Copilots. It also provides customization options and incorporates continuous feedback mechanisms to enhance the quality of RAG implementations.

AI Platform Architecture

Conclusion

Karini AI accelerates experimentation, expedite market delivery, and bridge the generative AI adoption gap, enabling businesses to harness the full potential of this groundbreaking technology.

About Karini AI:
Fueled by innovation, we're making the dream of robust Generative AI systems a reality. No longer confined to specialists, Karini.ai empowers non-experts to participate actively in building/testing/deploying Generative AI applications. As the world's first GenAIOps platform, we've democratized GenAI, empowering people to bring their ideas to life – all in one evolutionary platform. 

Contact:

Jerome Mendell

(404) 891-0255


Comments

Popular posts from this blog

Collaborative Robot (Cobot) Market Insights Deep Analysis 2022-2030

  With the advancements in technology, robotics is becoming available at a price that suits the pockets of even smaller as well as bigger companies. All thanks to the development of low-cost components, which have paved way for the   upsurge of the collaborative robots or cobots  .Collaborative robots are intended to collaborate with humans at work sites, and hence making automation a trouble-free job for businesses of all sizes. By now, cobots have been seen as a game-changer for a wide variety of applications. W hy cobots over traditional robots? The new robotics technology is outdoing the weighty, daunting robots usually locked in the cages for security reasons. Now, it’s time to make use of cobots in those heavy industrial tasks! These robots are quite affordable, safe, and flexible to deploy. They are programmed to work in collaboration with humans and not under humans—unlike traditional robots. With these advanced-automated robots, you can forget the cages and make ...

Intraoperative Neuromonitoring Market Revenue to Record Stellar Growth Rate

  According to  Intraoperative Neuromonitoring Market   Analysis by Research Dive, the global market forecast will be   $3,413.0 million   by the end of 2026 , at a   4.5% CAGR , growing from   $2,400.0 million in the end of 2018 . Intraoperative Neuromonitoring Market Drivers: Growing aged populace globally, along with increasing occurrence of chronic illnesses, are the major driving aspects for the intraoperative neuromonitoring market growth. Furthermore, intraoperative monitoring is an important process that assists in risk management throughout complex surgeries. This factor is projected to propel the market size in the coming years. Furthermore, rising trend of medical tourism along with growing investments for healthcare infrastructure in developing economies are projected to create significant revenue generating opportunities in the global market. Nevertheless, shortage of trained workforce for the control and maintenance of intraoperative neur...

2-ethylhexyl Caprate Market to Incur Meteoric Growth During 2018-2026

Introduction: 2-Ethylhexyl Caprate Market 2-ethylhexyl caprate , also known as 2-ethylhexyl decanoate, is an organic chemical compound with the molecular formula C18H32O2. In the manufacturing of 2-ethylhexyl caprate, ethyl reacts with hexyl in the presence of caproic acid as a catalyst to form 2-ethylhexyl caproic acid, which on further treatment with esterification process forms a mixture of 2-ethylhexyl caprate crude. This mixture of 2-ethylhexyl caprate crude is distilled to obtain pure 2-ethylhexyl caprate. 2-ethylhexyl caprate finds several applications in chemical, pharmaceutical and textile industries as a reagent, catalyst and excipient. Along with this, 2-ethylhexyl caprate is used in the manufacturing of elastomers and coatings. On the basis of safety, 2-ethylhexyl caprate is the least harmful in the available caprate group and has low vapor pressure, which can reduce hazards while handling as compared to other caprates, such as ethylhexyl palmitate and oth...