Swarm Intelligence Archives - gettectonic.com
From Chatbots to Agentic AI

Where is AI Going?

The evolution of AI capabilities is an ongoing process, driven by research, technological advancements, and the increasing demand for more sophisticated AI systems. Here are some key areas where we can expect the next evolution of AI: 1. Enhanced Reasoning and Decision-Making 2. Generalization and Transfer Learning 3. Multimodal AI 4. Ethical and Responsible AI 5. AI in Edge Computing 6. Neuro-Symbolic AI 7. Autonomous Learning and Self-Improvement 8. AI for Complex Systems Management 9. Human-AI Collaboration 10. Quantum AI The next evolution of AI will likely be characterized by these advancements, focusing not only on technical capabilities but also on ethical considerations, societal impact, and the integration of AI into daily life in a more seamless and beneficial manner. If you need visual representations or further detailed explanations on any specific aspect, let me know, and I can generate images or delve deeper into these topics. Like1 Related Posts Who is Salesforce? Who is Salesforce? Here is their story in their own words. From our inception, we’ve proudly embraced the identity of Read more Salesforce Unites Einstein Analytics with Financial CRM Salesforce has unveiled a comprehensive analytics solution tailored for wealth managers, home office professionals, and retail bankers, merging its Financial Read more AI-Driven Propensity Scores AI plays a crucial role in propensity score estimation as it can discern underlying patterns between treatments and confounding variables Read more Tectonic’s Successful Salesforce Track Record Salesforce Technology Services Integrator – Tectonic has successfully delivered Salesforce in a variety of industries including Public Sector, Hospitality, Manufacturing, Read more

Read More
AI Agents Set to Break Through in 2025

AI Agents Set to Break Through in 2025

2025: The Year AI Agents Transform Work and Life Despite years of hype around artificial intelligence, its true disruptive impact has so far been limited. However, industry experts believe that’s about to change in 2025 as autonomous AI agents prepare to enter and reshape nearly every facet of our lives. Since OpenAI’s ChatGPT took the world by storm in late 2022, billions of dollars have been funneled into the AI sector. Big tech and startups alike are racing to harness the transformative potential of the technology. Yet, while millions now interact with AI chatbots daily, turning them into tools that deliver tangible business value has proven challenging. A recent study by Boston Consulting Group revealed that only 26% of companies experimenting with AI have progressed beyond proof of concept to derive measurable value. This lag reflects the limitations of current AI tools, which serve primarily as copilots—capable of assisting but requiring constant oversight and remaining prone to errors. AI Agents Set to Break Through in 2025 The status quo, however, is poised for a radical shift. Autonomous AI agents—capable of independently analyzing information, making decisions, and taking action—are expected to emerge as the industry’s next big breakthrough. “For the first time, technology isn’t just offering tools for humans to do work,” Salesforce CEO Marc Benioff wrote in Time. “It’s providing intelligent, scalable digital labor that performs tasks autonomously. Instead of waiting for human input, agents can analyze information, make decisions, and adapt as they go.” At their core, AI agents leverage the same large language models (LLMs) that power tools like ChatGPT. But these agents take it further, acting as reasoning engines that develop step-by-step strategies to execute tasks. Armed with access to external data sources like customer records or financial databases and equipped with software tools, agents can achieve goals independently. While current LLMs still face reasoning limitations, advancements are on the horizon. New models like OpenAI’s “o1” and DeepSeek’s “R1” are specialized for reasoning, sparking hope that 2025 will see agents grow far more capable. Big Tech and Startups Betting Big Major players are already gearing up for this new era. Startups are also eager to carve out their share of the market. According to Pitchbook, funding deals for agent-focused ventures surged by over 80% in 2024, with the median deal value increasing nearly 50%. Challenges to Overcome Despite the enthusiasm, significant hurdles remain. 2025: A Turning Point Despite these challenges, many experts believe 2025 will mark the mainstream adoption of AI agents. A New World of Work No matter the pace, it’s clear that AI agents will dominate the industry’s focus in 2025. If the technology delivers on its promise, the workplace could undergo a profound transformation, enabling entirely new ways of working and automating tasks that once required human intervention. The question isn’t if agents will redefine the way we work—it’s how fast. By the end of 2025, the shift could be undeniable. Like Related Posts Who is Salesforce? Who is Salesforce? Here is their story in their own words. From our inception, we’ve proudly embraced the identity of Read more Salesforce Marketing Cloud Transactional Emails Salesforce Marketing Cloud Transactional Emails are immediate, automated, non-promotional messages crucial to business operations and customer satisfaction, such as order Read more Salesforce Unites Einstein Analytics with Financial CRM Salesforce has unveiled a comprehensive analytics solution tailored for wealth managers, home office professionals, and retail bankers, merging its Financial Read more AI-Driven Propensity Scores AI plays a crucial role in propensity score estimation as it can discern underlying patterns between treatments and confounding variables Read more

Read More
Patterns for AI Security

Patterns for AI Security

Supporting the development of AI design patterns that demonstrate trustworthiness not only enhances user experiences but also serves as an enabling tool for informing more effective policy and compliance measures. Patterns for AI Security. By prototyping patterns, teams can effectively communicate complex policies, illustrating how they could function within industries and for users. This approach also facilitates the testing of patterns, enabling teams to swiftly identify trade-offs and challenge assumptions, thereby accelerating the establishment of industry standards for best practices. Ultimately, this iterative process leads to the creation of better policies and services that yield superior outcomes for both individuals and organizations. Patterns for AI Security For instance, consider the pattern of “watermarking,” mandated by China’s Cyberspace Administration and poised to be adopted by the USA and EU. Through exploration of this pattern, the team at IF highlighted the inherent challenges associated with implementing watermarking for users and businesses. Another design pattern is the AI query router. A user inputs a query, that query is sent to a router, which is a classifier that categorizes the input. A recognized query routes to small language model, which tends to be more accurate, more responsive, & less expensive to operate. If the query is not recognized, a large language model handles it. LLMs much more expensive to operate, but successfully returns answers to a larger variety of queries. In this way, an AI product can balance cost, performance, & user experience. Moreover, investing in trustworthy solutions not only addresses immediate challenges but also positions businesses for long-term success. As reliance on AI systems becomes ubiquitous, the complexities of trust, collaboration, and robustness will only intensify. Stakeholders, both in the private and public sectors, increasingly expect organizations to deliver responsible solutions that prioritize user value without compromising on privacy. This is particularly evident among Gen Z individuals, who demand technology that understands and anticipates their needs while upholding privacy standards. Gen Alpha will be even moreso inclined. Organizations that recognize the significance of trustworthiness and proactively invest in differentiating their products and services accordingly stand to gain a competitive advantage in the evolving landscape. By prioritizing trustworthiness, businesses can not only meet the expectations of their stakeholders but also foster lasting relationships built on transparency, reliability, and integrity. We all anchor to some tried and tested methods, approaches and patterns when building something new. This statement is very true for those in software engineering, however for generative AI and artificial intelligence itself this may not be the case. With emerging technologies such as generative AI we lack well documented patterns to ground our solution’s. Here are a handful of approaches and patterns for generative AI, based on evaluation of countless production implementations of LLM’s in production. The goal of these patterns is to help mitigate and overcome some of the challenges with generative AI implementations such as cost, latency and hallucinations. List of Patterns Like Related Posts Who is Salesforce? Who is Salesforce? Here is their story in their own words. From our inception, we’ve proudly embraced the identity of Read more AI-Driven Propensity Scores AI plays a crucial role in propensity score estimation as it can discern underlying patterns between treatments and confounding variables Read more What is Salesforce? Salesforce is cloud-based CRM software. It makes it easier for companies to find more prospects, close more deals, and connect Read more Causes of Data Loss Amidst the unprecedented challenges faced by organizations worldwide, many are swiftly enacting their business continuity plans to mitigate operational disruptions. Read more

Read More
gettectonic.com