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Don't have anyone to play pingpong with? No problem with this creepy competitive robot

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Don't have anyone to play pingpong with? No problem with this creepy competitive robot

If you’ve ever found yourself without a partner for a game of pingpong, you might be excited to hear that technology has come to the rescue. Imagine having a robot that can rally with you, challenge your skills and help you improve your game — all without needing a human opponent.

This is no longer a pipe dream. Thanks to advancements in robotics, it’s becoming a reality. 

Google’s DeepMind Robotics team has developed a table tennis robot that not only competes but also learns and adapts, making it an interesting player in the world of sports technology.

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Table tennis robot playing a game of pingpong with a person. (DeepMind Robotics)

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DeepMind’s table tennis robot

Google’s DeepMind Robotics team recently made headlines with their development of a table tennis robot capable of playing at a “solidly amateur human level.” In their paper titled “Achieving Human Level Competitive Robot Table Tennis,” the researchers describe their robot’s performance against human opponents.

The robot managed to win all matches against beginner players and secured victory in 55% of games against intermediate players. However, it struggled against advanced players, losing every match. Overall, the robot won 45% of the 29 games it played.

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Table tennis robot playing a game of pingpong with a person. (DeepMind Robotics)

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How the table tennis robot works

The table tennis robot is built with a clever system that helps it decide which moves to make during a game. Think of it as having two levels of decision-making: the low-level controllers and the high-level controllers. The low-level controllers handle specific skills like forehand topspin or backhand targeting, similar to how a player might practice different shots. Meanwhile, the high-level controller acts like a coach, choosing which skill to use based on the situation in the game and what it knows about its opponent.

One of the coolest things about this robot is its ability to adapt in real time. It keeps track of how well each skill works and adjusts its strategy on the fly. As it plays, it learns more about its opponent’s strengths and weaknesses, allowing it to refine its approach and become a better competitor.

Before hitting the real table, the robot trains in a virtual world. This is where it practices and learns without any risk. Once it’s ready, it transitions smoothly to playing real matches. This process of moving from simulation to reality helps it improve its skills over time, making it more effective with each game.

The robot’s performance is constantly evaluated through matches against human players. Feedback from these games helps it get even better. This advanced system not only makes the robot a tough opponent but also a fun and engaging practice partner for players of all levels.

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Table tennis robot playing a game of pingpong with a person. (DeepMind Robotics)

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Challenges for the table tennis robot

Despite its successes, the robot faces significant challenges, particularly in reacting to fastballs. DeepMind attributes these difficulties to system latency, mandatory resets between shots and insufficient data.

To overcome these hurdles, the researchers are exploring advanced control algorithms and hardware optimizations, such as predictive models for ball trajectories and faster communication protocols between sensors and actuators.

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Table tennis robot playing a game of ping-ong with a person. (DeepMind Robotics)

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Beyond table tennis

The implications of this research extend beyond the confines of table tennis. DeepMind highlights the potential of their robot’s policy architecture, simulation use, and real-time strategy adaptation to influence robotics in broader contexts. The ultimate goal is to achieve human-level performance in various real-world tasks, paving the way for robots capable of interacting safely and skillfully with humans.

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Table tennis robot playing a game of pingpong with a person. (DeepMind Robotics)

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Kurt’s key takeaways

DeepMind’s table tennis robot demonstrates the potential for machines to engage in complex human activities. While there are still challenges to address, such as improving reaction times and handling diverse ball spins, the progress made so far is promising. As technology advances, we can expect robots to become even more adept at performing a wide range of tasks, making them valuable companions in both recreational and practical settings in our lives.

Would you feel comfortable playing a game of table tennis against a robot that learns and adapts to your moves, or does the idea of competing against AI in sports turn you off? Let us know by writing us at Cyberguy.com/Contact

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Birdbuddy’s new smart feeders aim to make spotting birds easier, even for beginners

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Birdbuddy’s new smart feeders aim to make spotting birds easier, even for beginners

Birdbuddy is introducing two new smart bird feeders: the flagship Birdbuddy 2 and the more compact, cheaper Birdbuddy 2 Mini aimed at first-time users and smaller outdoor spaces. Both models are designed to be faster and easier to use than previous generations, with upgraded cameras that can shoot in portrait or landscape and wake instantly when a bird lands so you’re less likely to miss the good stuff.

The Birdbuddy 2 costs $199 and features a redesigned circular camera housing that delivers 2K HDR video, slow-motion recording, and a wider 135-degree field of view. The upgraded built-in mic should also better pick up birdsong, which could make identifying species easier using both sound and sight.

The feeder itself offers a larger seed capacity and an integrated perch extender, along with support for both 2.4GHz and 5GHz Wi-Fi for more stable connectivity. The new model also adds dual integrated solar panels to help keep it powered throughout the day, while adding a night sleep mode to conserve power.

The Birdbuddy 2 Mini is designed to deliver the same core AI bird identification and camera experience, but in a smaller, more accessible package. At 6.95 inches tall with a smaller seed capacity, it’s geared toward first-time smart birders and smaller outdoor spaces like balconies, and it supports an optional solar panel.

Birdbuddy 2’s first batch of preorders has already sold out, with shipments expected in February 2026 and wider availability set for mid-2026. Meanwhile, the Birdbuddy 2 Mini will be available to preorder for $129 in mid-2026, with the company planning on shipping the smart bird feeder in late 2026.

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Robots learn 1,000 tasks in one day from a single demo

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Robots learn 1,000 tasks in one day from a single demo

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Most robot headlines follow a familiar script: a machine masters one narrow trick in a controlled lab, then comes the bold promise that everything is about to change. I usually tune those stories out. We have heard about robots taking over since science fiction began, yet real-life robots still struggle with basic flexibility. This time felt different.

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Researchers highlight the milestone that shows how a robot learned 1,000 real-world tasks in just one day. (Science Robotics)

How robots learned 1,000 physical tasks in one day

A new report published in Science Robotics caught our attention because the results feel genuinely meaningful, impressive and a little unsettling in the best way. The research comes from a team of academic scientists working in robotics and artificial intelligence, and it tackles one of the field’s biggest limitations.

The researchers taught a robot to learn 1,000 different physical tasks in a single day using just one demonstration per task. These were not small variations of the same movement. The tasks included placing, folding, inserting, gripping and manipulating everyday objects in the real world. For robotics, that is a big deal.

Why robots have always been slow learners

Until now, teaching robots physical tasks has been painfully inefficient. Even simple actions often require hundreds or thousands of demonstrations. Engineers must collect massive datasets and fine-tune systems behind the scenes. That is why most factory robots repeat one motion endlessly and fail as soon as conditions change. Humans learn differently. If someone shows you how to do something once or twice, you can usually figure it out. That gap between human learning and robot learning has held robotics back for decades. This research aims to close that gap.

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The research team behind the study focuses on teaching robots to learn physical tasks faster and with less data. (Science Robotics)

How the robot learned 1,000 tasks so fast

The breakthrough comes from a smarter way of teaching robots to learn from demonstrations. Instead of memorizing entire movements, the system breaks tasks into simpler phases. One phase focuses on aligning with the object, and the other handles the interaction itself. This method relies on artificial intelligence, specifically an AI technique called imitation learning that allows robots to learn physical tasks from human demonstrations.

The robot then reuses knowledge from previous tasks and applies it to new ones. This retrieval-based approach allows the system to generalize rather than start from scratch each time. Using this method, called Multi-Task Trajectory Transfer, the researchers trained a real robot arm on 1,000 distinct everyday tasks in under 24 hours of human demonstration time.

Importantly, this was not done in a simulation. It happened in the real world, with real objects, real mistakes and real constraints. That detail matters.

Why this research feels different

Many robotics papers look impressive on paper but fall apart outside perfect lab conditions. This one stands out because it tested the system through thousands of real-world rollouts. The robot also showed it could handle new object instances it had never seen before. That ability to generalize is what robots have been missing. It is the difference between a machine that repeats and one that adapts.

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The robot arm practices everyday movements like gripping, folding and placing objects using a single human demonstration. (Science Robotics)

A long-standing robotics problem may finally be cracking

This research addresses one of the biggest bottlenecks in robotics: inefficient learning from demonstrations. By decomposing tasks and reusing knowledge, the system achieved an order of magnitude improvement in data efficiency compared to traditional approaches. That kind of leap rarely happens overnight. It suggests that the robot-filled future we have talked about for years may be nearer than it looked even a few years ago.

What this means for you

Faster learning changes everything. If robots need less data and less programming, they become cheaper and more flexible. That opens the door to robots working outside tightly controlled environments.

In the long run, this could enable home robots to learn new tasks from simple demonstrations instead of specialist code. It also has major implications for healthcare, logistics and manufacturing.

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More broadly, it signals a shift in artificial intelligence. We are moving away from flashy tricks and toward systems that learn in more human-like ways. Not smarter than people. Just closer to how we actually operate day to day.

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Kurt’s key takeaways 

Robots learning 1,000 tasks in a day does not mean your house will have a humanoid helper tomorrow. Still, it represents real progress on a problem that has limited robotics for decades. When machines start learning more like humans, the conversation changes. The question shifts from what robots can repeat to what they can adapt to next. That shift is worth paying attention to.

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If robots can now learn like us, what tasks would you actually trust one to handle in your own life? Let us know by writing to us at Cyberguy.com

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Plaud updates the NotePin with a button

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Plaud updates the NotePin with a button

Plaud has updated its compact NotePin AI recorder. The new NotePin S is almost identical to the original, except for one major difference: a button. It’s joined by a new Plaud Desktop app for recording audio in online meetings, which is free to owners of any Plaud Note or NotePin.

The NotePin S has the same FitBit-esque design as the 2024 original and ships with a lanyard, wristband, clip, and magnetic pin, so you can wear it just about any way you please — now all included in the box, whereas before the lanyard and wristband were sold separately.

It’s about the same size as the NotePin, comes in the same colors (black, purple, or silver), offers similar battery life, and still supports Apple Find My. Like the NotePin, it records audio and generates transcriptions and summaries, whether those are meeting notes, action points, or reminders.

But now it has a button. Whereas the first NotePin used haptic controls, relying on a long squeeze to start recording, with a short buzz to let you know it worked, the S switches to something simpler. A long press of the button starts recording, a short tap adds highlight markers. Plaud’s explanation for the change is simple: buttons are less ambiguous, so you’ll always know you’ve successfully pressed it and started recording, whereas original NotePin users complained they sometimes failed to record because they hadn’t squeezed just right.

AI recorders like this live or die by ease of use, so removing a little friction gives Plaud better odds of survival.

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Alongside the NotePin S, Plaud is launching a new Mac and PC application for recording the audio from online meetings. Plaud Desktop runs in the background and activates whenever it detects calls from apps including Zoom, Meet, and Teams, recording both system audio and from your microphone. You can set it to either record meetings automatically or require manual activation, and unlike some alternatives it doesn’t create a bot that joins the call with you.

Recordings and notes are synced with those from Plaud’s line of hardware recorders, with the same models used for transcription and generation, creating a “seamless” library of audio from your meetings, both online and off.

Plaud Desktop is available now and is free to anyone who already owns a Plaud Note or NotePin device. The new NotePin S is also available today, for $179 — $20 more than the original, which Plaud says will now be phased out.

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