Innovation and Technology
The Top Augmented Reality Tools for Enhanced Collaboration and Training

In today’s fast-paced, technology-driven world, Tools for hybrid and remote work are becoming increasingly essential for businesses and organizations to stay ahead of the curve. One innovative solution that has gained significant attention in recent years is Augmented Reality (AR). By overlaying digital information onto the real world, AR has the potential to revolutionize the way we collaborate and train. In this article, we’ll explore the top AR tools for enhanced collaboration and training, and how they can benefit your organization.
Main Benefits of Augmented Reality
Augmented Reality offers a wide range of benefits for collaboration and training. Some of the main advantages include:
Improved Engagement and Participation
AR experiences are interactive and immersive, making them more engaging and participatory than traditional training methods. By incorporating AR into your training programs, you can increase learner engagement and participation, leading to better knowledge retention and transfer.
Enhanced Visualization and Understanding
AR enables learners to visualize complex concepts and processes in a more interactive and intuitive way. This can be particularly beneficial for training programs that involve technical or mechanical components, where visualizing the inner workings of a system can be challenging.
Increased Accessibility and Flexibility
AR experiences can be accessed from anywhere, at any time, making them ideal for remote or hybrid work arrangements. This flexibility can be particularly beneficial for organizations with distributed workforces or those that require training to be conducted in multiple locations.
Top Augmented Reality Tools for Collaboration and Training
There are numerous AR tools available for collaboration and training, each with its own unique features and benefits. Some of the top AR tools include:
1. ARKit and ARCore
ARKit and ARCore are AR development platforms created by Apple and Google, respectively. These platforms provide developers with the tools and resources needed to create AR experiences for iOS and Android devices.
2. Unity and Unreal Engine
Unity and Unreal Engine are popular game engines that also support AR development. These engines provide developers with a wide range of tools and features for creating interactive and immersive AR experiences.
3. Vuforia and Wikitude
Vuforia and Wikitude are AR platforms that provide developers with the tools and resources needed to create AR experiences for a wide range of applications, including training and collaboration.
4. Microsoft HoloLens and Magic Leap One
Microsoft HoloLens and Magic Leap One are AR headsets that provide users with a fully immersive AR experience. These headsets are ideal for training and collaboration applications that require a high level of interactivity and immersion.
Real-World Applications of Augmented Reality
AR is being used in a wide range of industries and applications, including:
1. Manufacturing and Production
AR is being used in manufacturing and production to provide workers with interactive and immersive training experiences. This can include virtual tutorials, guided instructions, and real-time feedback.
2. Healthcare and Medical Training
AR is being used in healthcare and medical training to provide learners with interactive and immersive experiences. This can include virtual patient simulations, anatomy tutorials, and surgical training.
3. Education and Academic Research
AR is being used in education and academic research to provide learners with interactive and immersive experiences. This can include virtual labs, interactive simulations, and 3D models.
Best Practices for Implementing Augmented Reality
When implementing AR for collaboration and training, there are several best practices to keep in mind. These include:
1. Define Clear Objectives and Goals
Before implementing AR, it’s essential to define clear objectives and goals for the project. This can include identifying the target audience, determining the desired outcomes, and establishing metrics for success.
2. Choose the Right AR Tool or Platform
With so many AR tools and platforms available, it’s essential to choose the right one for your project. This can include considering factors such as ease of use, scalability, and cost.
3. Develop a Comprehensive Training Program
AR should be used as part of a comprehensive training program that includes multiple learning modalities. This can include virtual training, in-person training, and on-the-job training.
Overcoming Challenges and Limitations of Augmented Reality
While AR offers a wide range of benefits for collaboration and training, there are also several challenges and limitations to consider. These include:
1. Cost and Accessibility
AR technology can be expensive, and not all devices are compatible with AR experiences. This can limit accessibility and create a barrier to adoption.
2. Technical Issues and Glitches
AR experiences can be prone to technical issues and glitches, which can disrupt the learning experience and decrease engagement.
3. Limited Content and Resources
There is currently a limited amount of AR content and resources available, which can make it difficult to find or create relevant and effective AR experiences.
Future of Augmented Reality in Collaboration and Training
The future of AR in collaboration and training is exciting and rapidly evolving. As the technology continues to advance and improve, we can expect to see more widespread adoption and innovative applications.
1. Advancements in AR Technology
Advances in AR technology, such as improved display resolution, increased processing power, and enhanced tracking capabilities, will enable more sophisticated and realistic AR experiences.
2. Increased Adoption and Investment
As the benefits of AR become more widely recognized, we can expect to see increased adoption and investment in the technology. This will drive innovation and lead to the development of new and exciting AR applications.
3. Integration with Other Technologies
AR will likely be integrated with other technologies, such as Artificial Intelligence (AI), Virtual Reality (VR), and the Internet of Things (IoT), to create even more powerful and immersive experiences.
Conclusion
In conclusion, AR has the potential to revolutionize the way we collaborate and train. By providing interactive and immersive experiences, AR can increase engagement and participation, enhance visualization and understanding, and increase accessibility and flexibility. While there are challenges and limitations to consider, the benefits of AR make it an exciting and rapidly evolving field that is worth exploring. By following best practices, choosing the right AR tool or platform, and developing comprehensive training programs, organizations can harness the power of AR to enhance collaboration and training.
Frequently Asked Questions (FAQs)
Q: What is Augmented Reality (AR)?
A: AR is a technology that overlays digital information onto the real world, using a device’s camera and display to create an interactive and immersive experience.
Q: What are the benefits of using AR for collaboration and training?
A: The benefits of using AR for collaboration and training include increased engagement and participation, enhanced visualization and understanding, and increased accessibility and flexibility.
Q: What are some of the top AR tools for collaboration and training?
A: Some of the top AR tools for collaboration and training include ARKit and ARCore, Unity and Unreal Engine, Vuforia and Wikitude, and Microsoft HoloLens and Magic Leap One.
Q: How can I implement AR in my organization?
A: To implement AR in your organization, define clear objectives and goals, choose the right AR tool or platform, and develop a comprehensive training program that includes multiple learning modalities.
Q: What are some of the challenges and limitations of AR?
A: Some of the challenges and limitations of AR include cost and accessibility, technical issues and glitches, and limited content and resources.
Q: What is the future of AR in collaboration and training?
A: The future of AR in collaboration and training is exciting and rapidly evolving, with advancements in AR technology, increased adoption and investment, and integration with other technologies.
Innovation and Technology
Walmart Unveils ‘Sparky’ AI Initiative

Introduction to Agentic AI in Retail
Walmart last week unveiled Sparky, a generative AI-powered shopping assistant embedded into the Walmart app. The new AI assistant, Sparky, isn’t just another chatbot bolted onto an app. It’s part of a much bigger plan to use autonomous agents to transform how people shop.
The Move Towards Automation
Beneath the surface lies something bigger: a move toward automation that could change not only the way we buy things, but also the structure of retail work itself. Increasingly intelligent apps like Sparky might become the standard way customers interact with Walmart. Then again, it might frustrate, confuse or quietly fade away.
From Shopping Assistant to Agent
Sparky can now summarize reviews, compare products, suggest items for occasions such as beach trips or birthdays and answer real-world questions such as what sports teams are playing. In the coming months, additional features will include reordering and scheduling services, visual understanding that can take image and video inputs and personalized “how-to” guides that link products with tasks such as fixing a faucet or preparing a meal.
The Capabilities of Sparky
Sparky isn’t designed to just answer product questions. It can act. If you’re planning a cookout, Sparky won’t just list grill options. It’ll check the weather, suggest menus and help schedule delivery. If you’re reordering household supplies, it remembers preferences, checks stock and confirms shipping options. The idea is to reduce friction and turn shopping from a search problem into a service experience.
What Walmart’s Data Shows About Changing Customer Preferences
Consumers may be more ready for the shift to agentic and generative AI-powered shopping than anyone expected, according to Walmart’s own research. In the company’s latest “Retail Rewired 2025” report, 27% of consumers said they now trust AI for shopping advice, more than the number who trust social media influencers (24%). That marks a clear break from traditional retail playbooks. Influence is shifting from people to systems.
The Adoption of AI in Retail
A core reason for the adoption of AI is that speed dominates. A majority (69%) of customers say quick solutions are the top reason they’d use AI in retail. AI’s rapid emergence at the core of e-commerce transactions from LLM chats to embedded applications is clear. Some of Walmart’s internal research results are genuinely surprising. Nearly half of shoppers (47%) would let AI reorder household staples, but just 8% would trust an AI to do their full shopping without oversight. And 46% say they’re unlikely to ever fully hand over control. Likewise, data transparency matters. Over a quarter of shoppers want full control over how their data is used.
Why Now? Retail is Making a Leap
Competitors like Amazon, IKEA and Lowe’s are also racing to launch AI assistants. But Walmart is going further. It’s building a full agent framework, not just customer-facing bots. Sparky’s promise goes beyond convenience. Where recommendation engines once matched products to past clicks, Sparky looks to understand intent in context. If you say, “I need help packing for a ski trip,” Sparky should infer altitude, weather, travel dates, previous purchases and even airline baggage limits to propose a bundle, jacket, gloves, boots and all.
The Future of Agentic AI in Retail
This leap requires multimodal AI capabilities including text, image, audio and video understanding. Imagine snapping a photo of a broken cabinet hinge and getting the right part, DIY video and same-day delivery. That’s the Sparky roadmap. Walmart is also developing its own AI models, rather than relying solely on third-party APIs like OpenAI or Google Gemini. According to CTO Hari Vasudev, internal models ensure accuracy, alignment with retail-specific data and stricter control over hallucination risks.
Why Agentic AI Could Become the New Retail OS
The retail industry is saturated with automation at the warehouse and logistics layer, but AI agents at the consumer-facing layer are still new territory. Sparky might be the first mainstream proof of concept. But the real story is the architecture: a system of purpose-built, task-specific agents that talk to each other across user journeys, all tuned for high-volume retail complexity. That’s a blueprint other enterprises will want to study, and possibly copy.
Challenges and Risks
With greater autonomy comes greater risk. Will Sparky recommend the wrong allergy product? Will it misread an image and send the wrong replacement part? Walmart is trying to stay ahead with built-in guardrails: human-in-the-loop confirmations, user approval on sensitive actions and transparency around how data is used. But the challenge will scale. Sparky’s real-world performance, not its launch sizzle, will determine if customers trust it to become a permanent fixture in their shopping lives.
Conclusion
Walmart’s AI push is part of a larger shift happening across the company. It recently partnered with Wing to launch drone delivery in the Dallas-Fort Worth area, aiming to serve up to 75% of local customers in under 30 minutes. Internally, it introduced Wally, a tool that helps merchants manage product listings and run promotions using plain language, no technical training required. At the same time, Walmart has recently laid off 1,500 tech and corporate employees, a sign that automation is already reshaping how teams are structured. These changes aren’t isolated. They reflect a broader effort to rebuild Walmart’s day-to-day operations around AI-driven systems. Walmart’s Sparky is the company’s most aggressive bet yet on autonomous digital agents. The trust delta between AI and influencers may seem small now, but it will only widen.
FAQs
Q: What is Sparky and how does it work?
A: Sparky is a generative AI-powered shopping assistant that can summarize reviews, compare products, suggest items, and answer real-world questions. It can also act on behalf of the user, such as checking the weather and suggesting menus for a cookout.
Q: What are the benefits of using AI in retail?
A: The benefits of using AI in retail include quick solutions, personalized recommendations, and reduced friction in the shopping experience.
Q: What are the risks associated with using AI in retail?
A: The risks associated with using AI in retail include recommending the wrong products, misreading images, and sending the wrong replacement parts.
Q: How is Walmart addressing the risks associated with using AI in retail?
A: Walmart is addressing the risks associated with using AI in retail by building in guardrails such as human-in-the-loop confirmations, user approval on sensitive actions, and transparency around how data is used.
Q: What is the future of agentic AI in retail?
A: The future of agentic AI in retail is expected to involve the development of more advanced AI models that can understand intent in context and provide personalized recommendations to users.
Innovation and Technology
Rethinking Compliance in the Digital Era

Introduction to AI in Compliance
Compliance has long been one of the least glamorous aspects of cybersecurity. Necessary, yes—but often repetitive, reactive and resource-draining. That’s changing fast. AI is starting to reason over frameworks, detect inconsistencies and make recommendations about what your business should do next. Vanta AI Agent is a clear example of this evolution – aiming to turn governance into a dynamic, data-driven process. But it also raises new questions about transparency, accountability and whether trust itself can—or should—be automated.
The Evolution of Compliance
I recently spoke with Jeremy Epling, chief product officer at Vanta, about the motivation behind the agent. “From day one, this whole notion of automated compliance and continuous GRC, continuous control monitoring has been at the heart of our founding mission,” he told me. Epling described the current landscape of compliance as burdened by unstructured files—policy documents, screenshots and spreadsheets—and emphasized that the AI Agent is designed to automate and unify those fragmented processes.
Compliance, Once a Bottleneck, Now a Business Enabler
For many companies, compliance has historically been a blocker—something that slows down audits, sales and vendor onboarding. Tony English, CISO at WorkJam, described that pain firsthand for me. “Before Vanta, our compliance efforts were manual and largely time-consuming,” he said. “It became a bottleneck for our small security team, slowing down sales cycles and diverting valuable time toward documentation and evidence gathering.” With the shift to continuous monitoring, platforms like Vanta—and increasingly, their AI agents—promise not only faster audits but smarter ones. English said WorkJam now spends about an hour a week on compliance tasks instead of seven or eight. “Compliance has moved from a resource-draining task into a function that strengthens our overall security posture.”
The Role of AI in Compliance
The significance here isn’t about one vendor. It’s about a broader industry trend: compliance moving from episodic to real-time, from reactive to proactive. And AI is the connective tissue making that shift possible. Of course, the more autonomy we grant AI, the more critical it becomes to know how it works. Is it explaining its reasoning? Is it using up-to-date evidence? Can it cite its sources? “A major focus for us has been on AI quality,” Epling said. “We have an internal team of former auditors and GRC experts that go through and run our human eval loop on golden data sets… and we lean into references and explanations. If we give a recommendation, we tell you where it came from.”
What It Means to Trust an Algorithm
That traceability matters. With security reviews and audits becoming more dynamic, AI has to be more than helpful—it has to be right. And when it’s not, there must be clear signals and paths for correction. Platforms that support feedback loops, accuracy metrics and user control (such as setting concise vs. verbose answer preferences) are more likely to foster real trust.
The Human Element in a Machine-Led World
Despite impressive gains, AI agents aren’t eliminating human expertise—they’re redefining it. “We’ve seen a huge shift,” English told me. “Responsibilities are now more transparent, ownership is better distributed and our security and engineering teams operate from a shared view of strong compliance.” The AI Agent, in this case, isn’t replacing the team—it’s amplifying it. By detecting policy conflicts, pre-validating evidence and flagging overlooked risks, it frees up human bandwidth to focus on higher-order tasks. And that kind of augmented intelligence might be the most responsible application of AI in compliance today.
A Blueprint for What Comes Next
WorkJam sees Vanta’s AI Agent as the next logical step—automating routine tasks, identifying inconsistencies early and creating space for security to be a proactive business function. That aligns with what many GRC leaders now want: not just to check the box, but to build a culture of trust that’s as responsive as the threats it faces. As AI begins to write, monitor and enforce compliance, it’s reshaping more than workflows. It’s redefining the relationship between security teams and the systems they manage. The challenge ahead isn’t simply deploying more advanced agents—it’s making sure those agents remain transparent, accurate and accountable to human judgment.
Conclusion
Because trust can be accelerated by automation—but it can’t be outsourced entirely. The integration of AI in compliance is a significant step forward, but it requires careful consideration of transparency, accountability, and the role of human expertise. As the industry continues to evolve, it’s crucial to strike a balance between the benefits of automation and the need for human judgment and oversight.
FAQs
Q: What is the role of AI in compliance?
A: AI is being used to automate compliance tasks, detect inconsistencies, and make recommendations for improvement.
Q: How does AI impact the compliance process?
A: AI can make the compliance process faster, smarter, and more proactive, reducing the burden on security teams and enabling them to focus on higher-order tasks.
Q: What are the challenges of implementing AI in compliance?
A: The challenges include ensuring transparency, accountability, and accuracy, as well as addressing the potential for over-trust and the erosion of scrutiny.
Q: How can organizations ensure that AI is used effectively in compliance?
A: Organizations can ensure effective use of AI by prioritizing transparency, accountability, and human oversight, and by implementing feedback loops, accuracy metrics, and user control.
Q: What is the future of compliance in the age of AI?
A: The future of compliance will likely involve a combination of automation and human expertise, with AI augmenting the capabilities of security teams and enabling them to build a culture of trust that is responsive to emerging threats.
Innovation and Technology
Connecting with Buyers in the AI Era

Introduction to the Era of Buying Network
Your B2B buyer’s network is driving organizations to reimagine their messaging. Gone are the days when targeting a single decision-maker with a one-size-fits-all message would suffice. Even the days of building messaging for the buying group alone are now numbered. Welcome to the era of the buying network — a complex web of external influencers, customers, partners, providers (that’s us!), and even buyer AI such as ChatGPT, all of which are engaging with our buyers in the buying process. This new era is characterized by:
- Buyers who have grown up using technology and are accustomed to self-service interactions and options.
- Increasingly large internal buying groups that contribute to buying complexity.
- Growing reliance on external influencers for third-party insights and validation.
- Unparalleled adoption and dependence on generative AI for support throughout the entire purchasing process.
Connected Messaging Provides The Link Between Audiences
As marketers, we must rethink our approach to building and deploying messaging. We’re dealing with participants that demand a lot of insight from us, and we can’t just shout into the void hoping that our message sticks. Instead, messaging in the era of the buying network requires a more thoughtful approach, one that prioritizes building connected messaging that engages not only our buyers but all of the stakeholders and AI tools that they are increasingly turning to in order to help them buy better. This ensures that our message is not only heard but resonates everywhere.
Navigate The New Frontier By Building Messaging That Resonates Across Audiences
But how do we achieve this? It’s not just about crafting a great message; it’s about understanding the dynamics of the buying network and how each participant interacts with and influences the buying process. Here are five pointers to get you started:
- Know your audience (all of them). Dive deep into identifying and mapping your buyer’s buying network. Who are they? What motivates them? How do they prefer to receive information? The better you understand each participant, the more tailored and effective your messaging will be.
- Consistency is key. Your message needs to be consistent across all touchpoints and channels. This doesn’t mean being repetitive or boring; it means ensuring that the core message is clear, whether it’s being communicated through an email, a blog post, or even an AI chatbot.
- Leverage technology. Your buyers are using it, and so should you! Technology, and especially AI, is your ally in the quest for connected messaging. Use analytics to gain insights into how messages are received and shared within the buying network. While nascent, AI may eventually help personalize the message at scale, ensuring relevance for every member of the network.
- Foster collaboration. Encourage and facilitate dialogue within the buying network. When influencers, customers, and partners talk to each other, they reinforce your message and add their unique perspectives, making the narrative around your product or service even more compelling.
- Be human. Last but certainly not least, remember that at the heart of every B2B transaction, there are people. Your messaging should not only be clear and concise but also authentic. Buyers are looking for trust and relationships, so show empathy, understand their frustrations and challenges, and offer solutions that resonate on a human level.
Leveraging The Buying Network To Deliver Your Message
The rise of the buying network represents both a challenge but, more importantly, an opportunity for B2B marketers. It’s a call to elevate our game by being more thoughtful, strategic, and connected in our messaging. By doing so, we can engage more deeply with our audiences, build lasting relationships, and ultimately drive higher buyer satisfaction.
Conclusion
Remember, in the end, it’s not about shouting louder than everyone else; it’s about understanding and speaking directly to the needs and wants of our buyers by engaging with the buying network in a language that resonates with every member of it. This approach will lead to more effective messaging, stronger relationships, and ultimately, greater success in the B2B marketplace.
FAQs
- Q: What is the buying network?
A: The buying network refers to a complex web of external influencers, customers, partners, providers, and even buyer AI that engage with buyers in the buying process. - Q: Why is connected messaging important?
A: Connected messaging is crucial because it ensures that the message is not only heard but resonates everywhere, engaging not only buyers but all stakeholders and AI tools. - Q: How can I leverage technology for connected messaging?
A: You can leverage technology by using analytics to gain insights into how messages are received and shared within the buying network and by utilizing AI to personalize the message at scale. - Q: What are the key elements of effective messaging in the era of the buying network?
A: The key elements include knowing your audience, consistency, leveraging technology, fostering collaboration, and being human. - Q: What is the ultimate goal of mastering B2B messaging in the AI era?
A: The ultimate goal is to drive higher buyer satisfaction by engaging more deeply with audiences and building lasting relationships.
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