The Outpost is a comprehensive collection of curated artificial intelligence software tools that cater to the needs of small business owners, bloggers, artists, musicians, entrepreneurs, marketers, writers, and researchers.
© 2025 TheOutpost.AI All rights reserved
Curated by THEOUTPOST
On Mon, 11 Nov, 8:01 AM UTC
2 Sources
[1]
AI agents more effective than GenAI for enterprise productivity: report
With the aid of an AI agent, cases that were previously deemed too complex for GenAI can now be enabled at scale in a secure and effective manner. The study says that GenAI use cases have mostly been limited to standalone applications such as generating personalised ads based on a customer's search history and reviewing contracts, among others.Artificial intelligence (AI) agents can be a more effective tool compared to large language models (LLMs) or GenAI applications, opening up new possibilities to drive enterprise productivity and program delivery through business process automation, British professional services firm Deloitte said in a study. With the aid of an AI agent, cases that were previously deemed too complex for GenAI can now be enabled at scale in a secure and effective manner, the study said. By definition, the AI agent is an autonomous intelligent system that uses AI techniques to interact with its environment, collect data, and perform tasks without human intervention. Explaining the difference between Gen AI and AI agents, the study adds that typical LLM-powered chatbots usually have limited ability to understand multistep prompts. "They (LLM or Gen AI) conform to the "input-output" paradigm of traditional applications and can get confused when presented with a request that must be deconstructed into multiple smaller tasks. They also struggle to reason over sequences, such as compositional tasks that require consideration of temporal and textual contexts. These limitations are even more pronounced when using small language models (SLMs), which, because they are trained on smaller volumes of data, typically sacrifice depth of knowledge and/or quality of outputs in favour of improved computational cost and speed," it said. The study says that GenAI use cases have mostly been limited to standalone applications such as generating personalised ads based on a customer's search history and reviewing contracts, among others. On the other hand, AI agents excel in addressing the limitations while also leveraging the capabilities of domain- and task-specific digital tools to complete more complicated tasks effectively. "AI agents equipped with long-term memory can remember customer and constituent interactions--including emails, chat sessions and phone calls--across digital channels, continuously learning and adjusting personalised recommendations. This contrasts with typical LLMs and SLMs, which are often limited to session-specific information," the study adds. The study further adds that while individual AI agents can offer valuable enhancements, businesses also need multiagent AI systems, given the limitations of single AI agents. However, the study notes that AI agents also introduce new risks that necessitate robust security and governance structures. "A significant risk is potential bias in AI. algorithms and training data, which can lead to inequitable decisions. Additionally, AI agents can be vulnerable to data breaches and cyberattacks, compromising sensitive information and data integrity," it adds.
[2]
AI Agents Outperform GenAI for Enterprise Productivity, Says Deloitte Study
Deloitte envisions a future where AI agents transform business models and enable innovative ways of working. Artificial intelligence (AI) agents can be more effective tools compared to large language models (LLMs) or generative AI (GenAI) applications, opening new possibilities for driving enterprise productivity and program delivery through business process automation, according to a study by British professional services firm Deloitte. The report suggests that AI agents are reshaping industries by expanding the potential applications of GenAI and traditional language models. Multi-agent AI systems can significantly enhance the quality of outputs and the complexity of tasks performed by individual AI agents. Also Read: 5G Combined with GenAI to Transform Industries, Says TCS: Report With the help of an AI agent, cases previously deemed too complex for GenAI can now be scaled effectively and securely, the study noted. By definition, an AI agent is an autonomous intelligent system that uses AI techniques to interact with its environment, collect data, and perform tasks without human intervention. Clarifying the distinction between GenAI and AI agents, the study explains that typical LLM-powered chatbots generally lack the ability to understand multi-step prompts or to plan and execute entire workflows from a single prompt. "They (LLM or Gen AI) conform to the "input-output" paradigm of traditional applications and can get confused when presented with a request that must be deconstructed into multiple smaller tasks. They also struggle to reason over sequences, such as compositional tasks that require consideration of temporal and textual contexts. These limitations are even more pronounced when using small language models (SLMs), which, because they are trained on smaller volumes of data, typically sacrifice depth of knowledge and/or quality of outputs in favour of improved computational cost and speed," it said. Also Read: Accenture Study Reveals AI-Driven Companies Outpace Competitors The study notes that GenAI use cases have mainly been limited to standalone applications, such as generating personalised ads based on a customer's search history, reviewing contracts and legal documents to identify regulatory concerns, or predicting molecular behaviour and drug interactions in pharmaceutical research. In contrast, AI agents excel in addressing these limitations while leveraging the capabilities of domain- and task-specific digital tools to complete more complex tasks effectively. "For example, AI agents equipped with long-term memory can remember customer and constituent interactions-including emails, chat sessions and phone calls-across digital channels, continuously learning and adjusting personalised recommendations," the report explains. "This capability contrasts with typical LLMs and SLMs, which often are limited to session-specific information." Additionally, AI agents can automate end-to-end processes, especially those requiring sophisticated reasoning, planning, and execution. AI agents are opening new possibilities to drive enterprise productivity and program delivery through business process automation. Use cases that were once thought too complicated for GenAI can now be enabled at scale -- securely and efficiently, the report further adds. "AI agents don't just interact. They more effectively reason and act on behalf of the user," Deloitte said. Also Read: Responsible AI Can Unlock New Revenue Streams and Growth for Telcos: McKinsey The study further notes that while individual AI agents can provide valuable improvements, the transformative potential of AI agents is realised when they work collaboratively in multi-agent systems. Such systems are crucial, given the limitations of single AI agents. However, AI agents also introduce new risks, requiring robust security and governance measures. "A significant risk is potential bias in AI Algorithms and training data, which can lead to inequitable decisions. Additionally, AI agents can be vulnerable to data breaches and cyberattacks, compromising sensitive information and data integrity," the study added. "Multiagent AI systems don't just reason and act on behalf of the user. They can orchestrate complex workflows in a matter of minutes," Deloitte report noted. Deloitte envisions, "We see a future where agents will transform foundational business models and entire industries, enabling new ways of working, operating, and delivering value." "It's important for C-suite and public service leaders to begin preparing now for this next chapter in the evolution of human-machine collaboration and business innovation," the report said.
Share
Share
Copy Link
A Deloitte study highlights the superiority of AI agents over GenAI for enterprise productivity, showcasing their ability to handle complex tasks and drive business process automation more effectively.
A recent study by Deloitte has shed light on the transformative potential of AI agents in the business world, positioning them as more effective tools compared to large language models (LLMs) or generative AI (GenAI) applications. The research highlights how AI agents are opening new avenues for driving enterprise productivity and program delivery through advanced business process automation [1][2].
AI agents are autonomous intelligent systems that utilize AI techniques to interact with their environment, collect data, and perform tasks without human intervention. Unlike traditional GenAI applications, AI agents excel in addressing complex, multi-step tasks that require sophisticated reasoning, planning, and execution [1].
The study emphasizes several crucial distinctions between AI agents and GenAI:
Multi-step processing: While LLM-powered chatbots often struggle with multi-step prompts, AI agents can effectively deconstruct and execute complex requests [1][2].
Long-term memory: AI agents can remember and learn from customer interactions across various digital channels, continuously improving personalized recommendations. This contrasts with typical LLMs and SLMs, which are often limited to session-specific information [1][2].
End-to-end automation: AI agents can automate sophisticated processes requiring advanced reasoning and planning, enabling the execution of tasks previously deemed too complex for GenAI [1].
The Deloitte study notes that GenAI use cases have primarily been confined to standalone applications such as generating personalized ads, reviewing contracts, or predicting molecular behavior in pharmaceutical research. In contrast, AI agents can tackle more intricate tasks by leveraging domain- and task-specific digital tools [1][2].
While individual AI agents offer significant enhancements, the study emphasizes the transformative potential of multi-agent AI systems. These collaborative systems can orchestrate complex workflows in minutes, potentially revolutionizing business models and entire industries [2].
Despite their potential, AI agents introduce new risks that require robust security and governance structures. Key concerns include:
Deloitte envisions a future where AI agents will transform foundational business models and enable innovative ways of working, operating, and delivering value. The study urges C-suite and public service leaders to prepare for this next chapter in human-machine collaboration and business innovation [2].
Reference
[1]
AI agents are emerging as the next big thing in artificial intelligence, offering autonomous decision-making and task execution capabilities beyond traditional language models.
9 Sources
AI agents are emerging as autonomous systems capable of handling complex tasks across various industries, from customer service to operations management. While promising increased efficiency, their deployment raises questions about definition, effectiveness, and potential risks.
12 Sources
AI agents are emerging as the next frontier in artificial intelligence, promising autonomous task execution and revolutionizing various industries. This article explores the capabilities, potential impacts, and challenges of AI agents in the evolving landscape of AI technology.
7 Sources
A comprehensive look at how Generative AI is transforming business strategies across various sectors in India, highlighting the balance between its transformative potential and cost considerations.
2 Sources
Enterprise AI agents are transforming various industries, from customer service to data analysis. This article explores the top use cases and potential impact of these AI-powered tools on businesses.
2 Sources