Entering the Agentic Era: Why Businesses Need an AI Workforce Now

Traditional generative AI solutions are based on chatbots that require explicit human inputs to generate responses. Such a process, while incredibly useful, can be slow, error prone, and expensive. Over the past year, AI model capabilities have progressed to support autonomous systems that are capable of performing tasks and making decisions with very minimal human intervention. These systems continuously learn by processing real-time streams of multimodal data, leading to more intelligent insights and ultra-efficient business operations.

Many CIOs and CTOs recognize the potential impact of this technology to enterprises. However, experts in AI believe that the time for adoption is now. We are at the beginning of the agentic era and businesses that incorporate this technology will accelerate ahead of their competitors. At a high level, integrating agentic AI offers several advantages. From increasing operational efficiency by automating repetitive tasks, assisting decision-making by providing intelligent insights that are time-consuming and costly to compile manually, to better understanding of customer experience to improve satisfaction.

Reka Nexus: the AI Workforce Powering the Future of Work

There are a few options for multimodal agentic platforms. However, when it comes to security, privacy, and cost-efficiency, the option becomes very limited as most of them rely on AI models that are hosted via API.

One enterprise agentic platform that offers fully secure and private deployment with state-of-the-art agentic capabilities is Reka Nexus. It enables organizations to create and manage AI workers to automate workflows and streamline operations. In particular, Nexus workers excel at transforming multimodal unstructured data to comprehensive enterprise insights. 

Nexus workers are capable of extracting information from documents, images, videos, and audio. They have access to tools that allow them to browse internal file systems, browse the web, and execute computer code. They are trained to plan intelligently, allowing them to combine these tools and perform multi-step reasoning to perform deep research to accomplish assigned tasks. Importantly, Nexus workers provide step-by-step reasoning traces of actions that they take and their thinking process, enabling transparent auditing of workers’ outputs.

Powered by an Optimized Version of Reka Flash 3

At the core of Nexus lies a customized version of Reka Flash 3, a state-of-the-art 21-billion-parameter model trained from scratch for multimodal reasoning. It is a cost-efficient model for applications that require low latency or on-device deployment. Reka’s innovative technology allows them to develop this model to be competitive with model offerings of similar sizes from OpenAI and Google at a fraction of the cost.

How Reka Flash 3 compares to other models of similar sizes

How Nexus Benefits your Organization

Cost-efficiency. Off-the-shelf AI models based on large language models are costly to run on agentic tasks that require performing hundreds of steps. Nexus is based on Reka Flash 3, a powerful lightweight model that is cost-efficient to run.

  • Privacy. API-based models have the potential to leak sensitive information, especially for agentic tasks. Nexus can be deployed securely on-premise or on-device (with high-end laptops/desktops).

  • Transparency. Nexus workers provide human-readable execution traces and articulate their thought processes, enhancing transparency and facilitating audits. 

  • Customization. Organizations can tailor Nexus workers to specialize in their enterprise tasks such as conducting in-depth competitive research, processing reports or invoices, or others.

Integrate Nexus to harness the full potential of agentic AI today. Contact Reka to book a demo at [email protected].

Previous
Previous

Reka Visual Understanding Capabilities: Real-Time Detection, Long-Horizon Tracking, and Video Search

Next
Next

Reka launches Nexus, an AI workforce powered by its state-of-the-art multimodal reasoning model