AI Insights
The Rise of Agentic Collaboration
By Jeff Chow
AI is transforming how people work across their organizations. As these tremendous changes unfold, it’s increasingly clear that unlocking AI’s true potential hinges on how well teams collaborate with AI agents.
While such seismic shifts can be daunting, we are on the precipice of newer, better ways of working. AI agents and, more specifically, agentic collaboration, are good for business, great for teams, and crucial for innovating at the speed of change.
What makes a high-performing team in the age of AI? These teams exhibit three core competencies: consistent and creative problem-solving; continuous co-creation; and faster, smarter decision making. Let’s take a closer look at why these human competencies are so critical, and how AI can enhance them.
1. Constant creative problem solving
As humans, we have creative problem solving in our DNA. AI’s deeper automation removes repetitive execution tasks from our workloads, freeing up more time for teams to do continuous problem-solving. This change creates more headspace for human teams to tackle the harder, more ambitious problems.
2. Continuous co-creation
As AI democratizes work itself, formerly distinct job functions are blurring. We’re entering an age when product managers have the tools to design, and designers can code. The old silos are falling away, which means teams have to get much better at “yes, and” moments that invite deeper co-creation across job lines.
3. Improved decision-making
Decisions and approvals should fuel work to get it over the finish line, not stall progress. With omnipresent data, teams and leaders now have access to more knowledge and insights than ever before. AI will enable leaders to better distinguish the signal from the noise to make informed decisions quickly.
How AI agents increase momentum
By fueling these crucial competencies, AI agents can exponentially increase a team’s momentum. And organizations that don’t embrace agentic collaboration will fall behind.
What’s been getting in the way of momentum until now?
Consider the way a team brainstorm generates a new idea for a project. Everyone leaves the session excited and eager to start their work—until the momentum-killers arrive. The team gets stalled for a week while someone synthesizes the brainstorm and clarifies next steps. Or perhaps it hits a delay, waiting for validation. Other projects get in the way, excitement fades, and momentum stalls.
AI agents offer an antidote to momentum-killers. Instead of being mired in processes and approvals, the agents can begin work immediately post-session, turning ideas into a project plan while enabling the team to maintain its energy and focus. Instead of weeks of delays, team members can move swiftly from ideation to execution. And, with agents, a team of five has the power of a team of 50.
Putting people at the center
In the age of AI, people are more important than ever.
Old models of work set up operations and processes centered around the tools themselves instead of around teams. This model adds layers of complexity around context switching and constant information transfer, and it creates laborious hoops for people to jump through.
But with agentic collaboration, an entirely different and human-centric approach takes hold: people are at the center, with AI agents at their side.
AI agents can solve problems that plague even the best organizations. Cross-functional silos, lagging processes, competing projects that dampen collaborative magic: these challenges stall momentum by creating logistical and psychological roadblocks—ones that AI agents can help relieve.
Agentic collaboration also supports stronger asynchronous work within and across teams. Team members still have the opportunity to brainstorm as they would in a traditional group session, but an agent can uncover the “aha” moments and best ideas.
This AI capability boosts inclusivity by ensuring that everyone can contribute and get equal consideration for their ideas, not just the loudest voices in the room.
This is especially important for innovation, because the strongest new ideas emerge when people from different backgrounds, perspectives, and expertise imagine new futures together.
Elevating agentic collaboration
Thanks to AI, the value of collaboration itself is changing for organizations, and the potential is tremendous. Agents are the fuel organizations need to turn ideas into reality faster than ever.
Gone are the days of individual superpowers. It’s time to focus on the power of teams, with humans at the center, and AI agents at our sides. With this new way of working, organizations can accelerate every aspect of innovation, from the spark of early ideas to the delivery of the final product.
The future of collaboration is here—and agents are poised to become every team’s most valued partner.
Jeff Chow is Chief Product and Technology Officer at Miro.
Learn more about how Miro helps teams harness the power of AI.
AI Insights
Intro robotics students build AI-powered robot dogs from scratch
Equipped with a starter robot hardware kit and cutting-edge lessons in artificial intelligence, students in CS 123: A Hands-On Introduction to Building AI-Enabled Robots are mastering the full spectrum of robotics – from motor control to machine learning. Now in its third year, the course has students build and enhance an adorable quadruped robot, Pupper, programming it to walk, navigate, respond to human commands, and perform a specialized task that they showcase in their final presentations.
The course, which evolved from an independent study project led by Stanford’s robotics club, is now taught by Karen Liu, professor of computer science in the School of Engineering, in addition to Jie Tan from Google DeepMind and Stuart Bowers from Apple and Hands-On Robotics. Throughout the 10-week course, students delve into core robotics concepts, such as movement and motor control, while connecting them to advanced AI topics.
“We believe that the best way to help and inspire students to become robotics experts is to have them build a robot from scratch,” Liu said. “That’s why we use this specific quadruped design. It’s the perfect introductory platform for beginners to dive into robotics, yet powerful enough to support the development of cutting-edge AI algorithms.”
What makes the course especially approachable is its low barrier to entry – students need only basic programming skills to get started. From there, the students build up the knowledge and confidence to tackle complex robotics and AI challenges.
Robot creation goes mainstream
Pupper evolved from Doggo, built by the Stanford Student Robotics club to offer people a way to create and design a four-legged robot on a budget. When the team saw the cute quadruped’s potential to make robotics both approachable and fun, they pitched the idea to Bowers, hoping to turn their passion project into a hands-on course for future roboticists.
“We wanted students who were still early enough in their education to explore and experience what we felt like the future of AI robotics was going to be,” Bowers said.
This current version of Pupper is more powerful and refined than its predecessors. It’s also irresistibly adorable and easier than ever for students to build and interact with.
“We’ve come a long way in making the hardware better and more capable,” said Ankush Kundan Dhawan, one of the first students to take the Pupper course in the fall of 2021 before becoming its head teaching assistant. “What really stuck with me was the passion that instructors had to help students get hands-on with real robots. That kind of dedication is very powerful.”
Code come to life
Building a Pupper from a starter hardware kit blends different types of engineering, including electrical work, hardware construction, coding, and machine learning. Some students even produced custom parts for their final Pupper projects. The course pairs weekly lectures with hands-on labs. Lab titles like Wiggle Your Big Toe and Do What I Say keep things playful while building real skills.
CS 123 students ready to show off their Pupper’s tricks. | Harry Gregory
Over the initial five weeks, students are taught the basics of robotics, including how motors work and how robots can move. In the next phase of the course, students add a layer of sophistication with AI. Using neural networks to improve how the robot walks, sees, and responds to the environment, they get a glimpse of state-of-the-art robotics in action. Many students also use AI in other ways for their final projects.
“We want them to actually train a neural network and control it,” Bowers said. “We want to see this code come to life.”
By the end of the quarter this spring, students were ready for their capstone project, called the “Dog and Pony Show,” where guests from NVIDIA and Google were present. Six teams had Pupper perform creative tasks – including navigating a maze and fighting a (pretend) fire with a water pick – surrounded by the best minds in the industry.
“At this point, students know all the essential foundations – locomotion, computer vision, language – and they can start combining them and developing state-of-the-art physical intelligence on Pupper,” Liu said.
“This course gives them an overview of all the key pieces,” said Tan. “By the end of the quarter, the Pupper that each student team builds and programs from scratch mirrors the technology used by cutting-edge research labs and industry teams today.”
All ready for the robotics boom
The instructors believe the field of AI robotics is still gaining momentum, and they’ve made sure the course stays current by integrating new lessons and technology advances nearly every quarter.
This Pupper was mounted with a small water jet to put out a pretend fire. | Harry Gregory
Students have responded to the course with resounding enthusiasm and the instructors expect interest in robotics – at Stanford and in general – will continue to grow. They hope to be able to expand the course, and that the community they’ve fostered through CS 123 can contribute to this engaging and important discipline.
“The hope is that many CS 123 students will be inspired to become future innovators and leaders in this exciting, ever-changing field,” said Tan.
“We strongly believe that now is the time to make the integration of AI and robotics accessible to more students,” Bowers said. “And that effort starts here at Stanford and we hope to see it grow beyond campus, too.”
AI Insights
Why Infuse Asset Management’s Q2 2025 Letter Signals a Shift to Artificial Intelligence and Cybersecurity Plays
The rapid evolution of artificial intelligence (AI) and the escalating complexity of cybersecurity threats have positioned these sectors as the next frontier of investment opportunity. Infuse Asset Management’s Q2 2025 letter underscores this shift, emphasizing AI’s transformative potential and the urgent need for robust cybersecurity infrastructure to mitigate risks. Below, we dissect the macroeconomic forces, sector-specific tailwinds, and portfolio reallocation strategies investors should consider in this new paradigm.
The AI Uprising: Macro Drivers of a Paradigm Shift
The AI revolution is accelerating at a pace that dwarfs historical technological booms. Take ChatGPT, which reached 800 million weekly active users by April 2025—a milestone achieved in just two years. This breakneck adoption is straining existing cybersecurity frameworks, creating a critical gap between innovation and defense.
Meanwhile, the U.S.-China AI rivalry is fueling a global arms race. China’s industrial robot installations surged from 50,000 in 2014 to 290,000 in 2023, outpacing U.S. adoption. This competition isn’t just about economic dominance—it’s a geopolitical chess match where data sovereignty, espionage, and AI-driven cyberattacks now loom large. The concept of “Mutually Assured AI Malfunction (MAIM)” highlights how even a single vulnerability could destabilize critical systems, much like nuclear deterrence but with far less predictability.
Cybersecurity: The New Infrastructure for an AI World
As AI systems expand into physical domains—think autonomous taxis or industrial robots—so do their vulnerabilities. In San Francisco, autonomous taxi providers now command 27% market share, yet their software is a prime target for cyberattacks. The decline in AI inference costs (outpacing historical declines in electricity and memory) has made it cheaper to deploy AI, but it also lowers the barrier for malicious actors to weaponize it.
Tech giants are pouring capital into AI infrastructure—NVIDIA and Microsoft alone increased CapEx from $33 billion to $212 billion between 2014 and 2024. This influx creates a vast, interconnected attack surface. Investors should prioritize cybersecurity firms that specialize in quantum-resistant encryption, AI-driven threat detection, and real-time infrastructure protection.
The Human Element: Skills Gaps and Strategic Shifts
The demand for AI expertise is soaring, but the workforce is struggling to keep pace. U.S. AI-related IT job postings have surged 448% since 2018, while non-AI IT roles have declined by 9%. This bifurcation signals two realities:
1. Cybersecurity skills are now mission-critical for safeguarding AI systems.
2. Ethical AI development and governance are emerging as compliance priorities, particularly in regulated industries.
The data will likely show a stark divergence, reinforcing the need for investors to back training platforms and cybersecurity firms bridging this skills gap.
Portfolio Reallocation: Where to Deploy Capital
Infuse’s insights suggest three actionable strategies:
-
Core Holdings in Cybersecurity Leaders:
Target firms like CrowdStrike (CRWD) and Palo Alto Networks (PANW), which excel in AI-powered threat detection and endpoint security. -
Geopolitical Plays:
Invest in companies addressing data sovereignty and cross-border compliance, such as Palantir (PLTR) or Cloudflare (NET), which offer hybrid cloud solutions. -
Emerging Sectors:
Look to quantum computing security (e.g., Rigetti Computing (RGTI)) and AI governance platforms like DataRobot (NASDAQ: MGNI), which help enterprises audit and validate AI models.
The Bottom Line: AI’s Growth Requires a Security Foundation
The “productivity paradox” of AI—where speculative valuations outstrip tangible ROI—is real. Yet, cybersecurity is one area where returns are measurable: breaches cost companies millions, and defenses reduce risk. Investors should treat cybersecurity as the bedrock of their AI investments.
As Infuse’s letter implies, the next decade will belong to those who balance AI’s promise with ironclad security. Position portfolios accordingly.
JR Research
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