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Construction Safety: A Tech Toolbox Talk
Peggy Smedley talks about Construction Safety Week and National Safety Stand-Down to Prevent Falls Week, sharing the objectives for these initiatives. She explains where this culture of safety must start, highlighting the importance of everyone being involved to ensure greater safety. She also: Shares the startling statistics about how many construction workers die on the…
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All about Additive Manufacturing
Peggy Smedley and Yung Shin, Donald A. and Nancy G. Roach distinguished professor of advanced manufacturing, Purdue University, talk about additive manufacturing and why it has been getting so much global attention. He describes additive manufacturing, explaining how it works and how it can form 3D parts and 3D objects. They also discuss: Why it…
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AI Comes to Construction Cameras
Peggy Smedley and Brian Cury, CEO and founder, EarthCam, talk about jobsite innovations, narrowing in on how technology such as AI (artificial intelligence) can help improve construction safety. He says it used to be all about making beautiful photos, but now it is about the information in the photos. They also discuss: The history of…
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When a challenge presents itself, researchers and students at universities step up to find a solution. Such was the case at Stanford when wildfire researchers ran into the challenge of deploying sensors to monitor smoke from prescribed burns. Students and researchers began working together to develop customized sensors for controlled fire monitoring and sustainability research. The fact is we will see more states fast track wildfire prevention efforts. California is one such state. These efforts could include more controlled burns, but the agencies need better data to understand how these controlled burns impact air quality. As the threat of wildfires grows, the low-cost, low-power sensors can help in several different ways. Here is how this can help: Inform risk management as state wildfire agencies and others scale up their use of prescribed burns. Better understand the impact of prescribed burns to surrounding communities. Bring notifications to the community. Low-cost ways for land managers to monitor air pollutants and smoke exposure. Looking to the future, we will see greater use of the technology. The research team will also add enhancements such as more environmental indicators and will work with local communities and…
For decades, AI (artificial intelligence) has offered the promise of new opportunities, but now with LLMs (large language models) we have an opportunity to take AI to the next level. Stanford University suggests chatbots are now turning into action bots—but the challenge persists: if systems are trained with unknown or bad data, will it still be helpful? Researchers at Stanford aim to address this challenge, having developed NNetNav, which is an AI agent that learns through its interactions with websites, which is open source and uses fewer parameters. Professor Chris Manning says NNetNav could become a lighter weight, faster, privacy-preserving alternative to OpenAI’s recently released Operator. Here’s the difference: It is not trained by how humans behave online. Rather, it gathers synthetic training data by exploring websites much the way a young child might. It clicks all the buttons and types into all the fields to see what will happen. It then prunes out the pathways that don’t help achieve the user’s goals. The team collected 10,000 positive demonstrations of NNetNav on 20 websites. Those successful trajectories were then used to fine-tune the model. When the team looked at NNetNav’s performance before and after fine-tuning, the model compared favorably with GPT-4 and did better than other open-source, unsupervised methods. It also used about one-third fewer parameters than the next-best performing model. Here is how this can help: Ensure more privacy while still leveraging AI. Become more accurate and efficient through learning. Learn through interaction as you go. Looking to the future, we can expect exponential growth for AI in the future—but there will be opportunities to use different agents. AI agents are here. How will you proceed in a new…
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The opportunities gen AI (artificial intelligence) brings to most industries are significant—dare we say remarkable? But let’s be clear, there are still some challenges. For example, most LLMs (large language models) are trained on publicly available data and the vast majority of enterprise data remains untapped, and much work needs to be done to address this. And again, dare we say address this sooner, rather than later? Enter Granite 3.0, IBM’s third-generation Granite flagship language models, which was announced earlier this week at IBM’s second annual TechXchange event. By combining a small Granite model with enterprise data, especially using the…
We have come a long way with safety. If you journey back to the year 1960 and walked a construction jobsite, you would see very different work conditions than you see today. Hard hats were not mandatory yet and PPE (personal protective equipment) wasn’t the common three-letter jobsite acronym that it is today. Workers would be hanging from the top of buildings, with little gear to protect them. We have certainly come a long way, right? Yes and no. The reality is every year, one in 100 construction workers still get hurt bad enough to need time off work. We…
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#Factoftheweek 15-fold growth. The opportunities are endless with AI (artificial intelligence), but only if the technology…
The demands of rebuilding U.S. infrastructure continue to grow. FMI Corp.’s 2025 Civil Infrastructure Construction Index…
Microsoft in Action at Hannover Messe Gen AI (generative artificial intelligence) is here for many industries.…