robotics

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Invisible AI uses computer vision to help (but hopefully not nag) assembly line workers

“Assembly” may sound like one of the simpler tests in the manufacturing process, but as anyone who’s ever put together a piece of flat-pack furniture knows, it can be surprisingly (and frustratingly) complex. Invisible AI is a startup that aims to monitor people doing assembly tasks using computer vision, helping maintain safety and efficiency — without succumbing to the obvious all-seeing-eye pitfalls. A $3.6 million seed round ought to help get them going.

The company makes self-contained camera-computer units that run highly optimized computer vision algorithms to track the movements of the people they see. By comparing those movements with a set of canonical ones (someone performing the task correctly), the system can watch for mistakes or identify other problems in the workflow — missing parts, injuries and so on.

Obviously, right at the outset, this sounds like the kind of thing that results in a pitiless computer overseer that punishes workers every time they fall below an artificial and constantly rising standard — and Amazon has probably already patented that. But co-founder and CEO Eric Danziger was eager to explain that this isn’t the idea at all.

“The most important parts of this product are for the operators themselves. This is skilled labor, and they have a lot of pride in their work,” he said. “They’re the ones in the trenches doing the work, and catching and correcting mistakes is a big part of it.”

“These assembly jobs are pretty athletic and fast-paced. You have to remember the 15 steps you have to do, then move on to the next one, and that might be a totally different variation. The challenge is keeping all that in your head,” he continued. “The goal is to be a part of that loop in real time. When they’re about to move on to the next piece we can provide a double check and say, ‘Hey, we think you missed step 8.’ That can save a huge amount of pain. It might be as simple as plugging in a cable, but catching it there is huge — if it’s after the vehicle has been assembled, you’d have to tear it down again.”

This kind of body tracking exists in various forms and for various reasons; Veo Robotics, for instance, uses depth sensors to track an operator and robot’s exact positions to dynamically prevent collisions.

But the challenge at the industrial scale is less “how do we track a person’s movements in the first place” than “how can we easily deploy and apply the results of tracking a person’s movements.” After all, it does no good if the system takes a month to install and days to reprogram. So Invisible AI focused on simplicity of installation and administration, with no code needed and entirely edge-based computer vision.

“The goal was to make it as easy to deploy as possible. You buy a camera from us, with compute and everything built in. You install it in your facility, you show it a few examples of the assembly process, then you annotate them. And that’s less complicated than it sounds,” Danziger explained. “Within something like an hour they can be up and running.”

Once the camera and machine learning system is set up, it’s really not such a difficult problem for it to be working on. Tracking human movements is a fairly straightforward task for a smart camera these days, and comparing those movements to an example set is comparatively easy, as well. There’s no “creativity” involved, like trying to guess what a person is doing or match it to some huge library of gestures, as you might find in an AI dedicated to captioning video or interpreting sign language (both still very much works in progress elsewhere in the research community).

As for privacy and the possibility of being unnerved by being on camera constantly, that’s something that has to be addressed by the companies using this technology. There’s a distinct possibility for good, but also for evil, like pretty much any new tech.

One of Invisible’s early partners is Toyota, which has been both an early adopter and skeptic when it comes to AI and automation. Their philosophy, one that has been arrived at after some experimentation, is one of empowering expert workers. A tool like this is an opportunity to provide systematic improvement that’s based on what those workers already do.

It’s easy to imagine a version of this system where, like in Amazon’s warehouses, workers are pushed to meet nearly inhuman quotas through ruthless optimization. But Danziger said that a more likely outcome, based on anecdotes from companies he’s worked with already, is more about sourcing improvements from the workers themselves.

Having built a product day in and day out year after year, these are employees with deep and highly specific knowledge on how to do it right, and that knowledge can be difficult to pass on formally. “Hold the piece like this when you bolt it or your elbow will get in the way” is easy to say in training but not so easy to make standard practice. Invisible AI’s posture and position detection could help with that.

“We see less of a focus on cycle time for an individual, and more like, streamlining steps, avoiding repetitive stress, etc.,” Danziger said.

Importantly, this kind of capability can be offered with a code-free, compact device that requires no connection except to an intranet of some kind to send its results to. There’s no need to stream the video to the cloud for analysis; footage and metadata are both kept totally on-premise if desired.

Like any compelling new tech, the possibilities for abuse are there, but they are not — unlike an endeavor like Clearview AI — built for abuse.

“It’s a fine line. It definitely reflects the companies it’s deployed in,” Danziger said. “The companies we interact with really value their employees and want them to be as respected and engaged in the process as possible. This helps them with that.”

The $3.6 million seed round was led by 8VC, with participating investors including iRobot Corporation, K9 Ventures, Sierra Ventures and Slow Ventures.

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The future of deep-reinforcement learning, our contemporary AI superhero

Rish Joshi
Contributor

Rish is an entrepreneur and investor. Previously, he was a VC at Gradient Ventures (Google’s AI fund), co-founded a fintech startup building an analytics platform for SEC filings and worked on deep-learning research as a graduate student in computer science at MIT.

It was not long ago that the world watched World Chess Champion Garry Kasparov lose a decisive match against a supercomputer. IBM’s Deep Blue embodied the state of the art in the late 1990s, when a machine defeating a world (human) champion at a complex game such as chess was still unheard of.

Fast-forward to today, and not only have supercomputers greatly surpassed Deep Blue in chess, they have managed to achieve superhuman performance in a string of other games, often much more complex than chess, ranging from Go to Dota to classic Atari titles.

Many of these games have been mastered just in the last five years, pointing to a pace of innovation much quicker than the two decades prior. Recently, Google released work on Agent57, which for the first time showcased superior performance over existing benchmarks across all 57 Atari 2600 games.

The class of AI algorithms underlying these feats — deep-reinforcement learning — has demonstrated the ability to learn at very high levels in constrained domains, such as the ones offered by games.

The exploits in gaming have provided valuable insights (for the research community) into what deep-reinforcement learning can and cannot do. Running these algorithms has required gargantuan compute power as well as fine-tuning of the neural networks involved in order to achieve the performance we’ve seen.

Researchers are pursuing new approaches such as multi-environment training and the use of language modeling to help enable learning across multiple domains, but there remains an open question of whether deep-reinforcement learning takes us closer to the mother lode — artificial general intelligence (AGI) — in any extensible way.

While the talk of AGI can get quite philosophical quickly, deep-reinforcement learning has already shown great performance in constrained environments, which has spurred its use in areas like robotics and healthcare, where problems often come with defined spaces and rules where the techniques can be effectively applied.

In robotics, it has shown promising results in using simulation environments to train robots for the real world. It has performed well in training real-world robots to perform tasks such as picking and how to walk. It’s being applied to a number of use cases in healthcare, such as personalized medicine, chronic care management, drug discovery and resource scheduling and allocation. Other areas that are seeing applications have included natural language processing, computer vision, algorithmic optimization and finance.

The research community is still early in fully understanding the potential of deep-reinforcement learning, but if we are to go by how well it has done in playing games in recent years, it’s likely we’ll be seeing even more interesting breakthroughs in other areas shortly.

So what is deep-reinforcement learning?

If you’ve ever navigated a corn maze, your brain at an abstract level has been using reinforcement learning to help you figure out the lay of the land by trial and error, ultimately leading you to find a way out.

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Will China’s coronavirus-related trends shape the future for American VCs?

Rocio Wu
Contributor

Rocio Wu is a second-year MBA candidate at Harvard Business School and a venture capitalist.

For the past month, VC investment pace seems to have slacked off in the U.S., but deal activities in China are picking up following a slowdown prompted by the COVID-19 outbreak.

According to PitchBook, “Chinese firms recorded 66 venture capital deals for the week ended March 28, the most of any week in 2020 and just below figures from the same time last year,” (although 2019 was a slow year). There is a natural lag between when deals are made and when they are announced, but still, there are some interesting trends that I couldn’t help noticing.

While many U.S.-based VCs haven’t had a chance to focus on new deals, recent investment trends coming out of China may indicate which shifts might persist after the crisis and what it could mean for the U.S. investor community.

Image Credits: PitchBook

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Anorak’s Greg Castle on early-stage investing during a crisis

As the venture landscape adjusts to the COVID-19 pandemic and seismic shifts in public markets, early-stage VCs are reassessing which bets they’re making, along with questions they’re asking of founders who are exploring bleeding-edge technology.

Anorak’s Greg Castle

Anorak Ventures is a small seed-investment firm that bets on emerging tech like AR/VR, machine learning and robotics. I recently hopped on a Zoom call with founder Greg Castle to talk about what he’s seen recently in seed investing and how the sector is responding to the crisis. Castle was an early investor in Oculus; his other bets at Anorak include Against Gravity, 6D.ai and Anduril.

Our conversation has been edited for length and clarity.

TechCrunch: Has this pandemic affected the types of companies that you’re looking at?

Greg Castle: From my experience as an investor thus far, being reactive as an investor and looking at “hot” areas has a lot of pitfalls to be mindful of. I think a lot of the areas that excite me as an investor could benefit from what’s going on here, those areas including robotics, automation, immersive entertainment and immersive computing.

Just generally, do you feel like a recession is likely to negatively impact emerging tech more so than other areas?

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Hospital droid Diligent Robotics raises $10M to assist nurses

Twenty-eight percent of a nurse’s time is wasted on low-skilled tasks like fetching medical tools. We need them focused on the complex and compassionate work of treating patients, especially amid the coronavirus outbreak. Diligent Robotics wants to give them a helper droid that can run errands for them around the hospital. The startup’s bot Moxi is equipped with a flexible arm, gripper hand and full mobility so it can hunt down lightweight medical resources, navigate a clinic’s hallways and drop them off for the nurse.

With the world facing a critical shortage of medical care professionals, Moxi could help healthcare centers use their staffs as efficiently as possible. And because robots can’t be infected by COVID-19, they’re one less potential carrier interacting with vulnerable populations.

Today, Diligent Robotics announces its $10 million Series A that will help it scale up to deliver “more robots to more hospitals,” CEO Andrea Thomaz tells me. “We’ve been designing our product, Moxi, side by side with hospital customers because we don’t just want to give them an automation solution for their materials management problems. We want to give them a robot that frontline staff are delighted to work with and feels like a part of the team.”

The round, led by DNX Ventures, brings Diligent Robotics to $15.75 million in total funding that’s propelled it to the fifth generation of its Moxi robot. It currently has two deployed in Dallas, Texas, but is already working with two of the three top hospital networks in the U.S. “As the current pandemic and circumstance has shown, the real heroes are our healthcare providers,” says Q Motiwala, partner at DNX Ventures. The new cash from DNX, True Ventures, Ubiquity Ventures, Next Coast Ventures, Grit Ventures, E14 Fund and Promus Ventures will help Diligent Robotics expand Moxi’s use cases and seamlessly complement nurses’ workflows to help alleviate the talent crunch.

Thomaz came up with the idea for a hospital droid after doing her PhD in social robotics at the MIT Media lab. Her co-founder and CTO Vivian Chu had done a master’s at UPenn on how to give robots a sense of touch, and then came to work with Thomaz at Georgia Tech. They were inspired by a study revealing how nurses spent so much time acting as hospital gofers, so in 2016 they applied for and won a National Science Foundation grant of $750,000 that funded a six-month sprint to build a prototype of Moxi.

Since then, 18-person Diligent Robotics has worked with hundreds of nurses to learn about exactly what they need from an autonomous assistant.Today you will go about your day, and you probably won’t interact with any robots….we want to change that,” Thomaz tells me. “The only way you can really bring robots out of the warehouses, off of the factory floors, is to build a robot that can work in our dynamic and messy everyday human environments.” The startup’s intention isn’t to fully replace humans, which it doesn’t think is possible, but to let them focus on the most human elements of their jobs.

Moxi is about the size of a human, but designed to look like an ’80s movie robot so as not to engender an uncanny valley cyborg weirdness. Its head and eyes can move to signal intent, like which direction it’s about to move, while sounds let it communicate with nurses and acknowledge their commands. A moving pillar lets it adjust its height, while its gripper hand and arm can pick and put down smaller pieces of hospital equipment. Its round shape and courteous navigation makes sure it can politely share crowded hallways and travel via elevator.

Diligent Robotics’ solution engineers work with hospitals to teach Moxi how to get around and what they need. The company hopes to eventually build the ability to learn and adapt right into the bot so nurses can teach it new tasks on the fly. “The team continues to demonstrate unmatched robotics-specific innovation by combining social intelligence and human-guided learning capabilities,” says True Ventures partner and Diligent board member Rohit Sharma.

Hospitals pay an upfront fee to buy Moxi robots, and then there’s a monthly fee for the software, services and maintenance. Thomaz admits that “Hospitals are naturally risk-averse, and can be wary to take up new technology,” so the startup is taking a slow and steady approach to deployment so it can convince buyers that Moxi is worth the learning curve.

Diligent Robotics will be competing with companies like Aethon’s TUG bot for pulling laundry and pharmacy carts. Other players in the hospital tech space include Xenex’s machine that disinfects rooms with light, and surgical bots like those from Johnson & Johnson’s Auris and Intuitive Surgical.

Diligent Robotics hopes to differentiate itself by building social intelligence into Moxi so it feels more like an intern than a gadget. “Time and again, we hear from our hospital partners that Moxi not only returns time back to their day but also brings a smile to their face,” says Thomaz. The company wants to evolve Moxi for other dull, dirty or dangerous service jobs.

Eventually, Diligent Robotics hopes to bring Moxi into people’s homes. “While we don’t see robots replacing the companionship and the human connection, we do dream of a time that robots could make nursing homes more pleasant by offsetting the often staggering numbers of caretakers to bed ratios (as bad as 30:1),” Thomaz concludes. That way, Moxi could “help people age with dignity and hold onto their independence for as long as possible.”

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This bathroom cleaning robot is trained in VR to clean up after you

You’ve no doubt heard about the three Ds of automation. Somatic’s robot handily qualifies for two. I’d say “dangerous” is probably a bit of a stretch here, but the robot is well-focused on replacing a job that’s generally regarded as both “dirty” and “dull.”

The startup, which is ostensibly based in the New York area (it’s a small, geographically dispersed team in search of a more permanent home) effectively came out of stealth onstage at TC Sessions: Robotics + AI at UC Berkeley. Its first product is a large, commercial restroom cleaning robot.

CEO Michael Levy compares the device to a “minifridge with a robot arm attached to the front.” Levy, who co-founded the company with CTO Eugene Zasoba, says he was inspired to develop a robot for bathroom cleaning after years spent working his way up at his grandfather’s restaurant.

“When I grew up, I did a bunch of jobs. He said, if you want to get to the register, you have start in the bathroom,” he explains. “The reason bathrooms are such a good application, because everything is bolted down to the floor. Things move in a predictable way. All commercial bathrooms built after 1994 are ADA compliant. What’s good for robotics is that lays a specific design.”

The static nature of most commercial restrooms means that robots only have to train on a space once. The team does the work remotely now, using a VR simulation of the bathroom to show the robot where to spray and wipe chemicals, vacuum and blow-dry. It’s an activity the team affectionately refers to as “the worst video game, ever.” Once all of that is in place, the robot uses a variety of sensors, including lidar, to navigate around.

The robot will clean a restroom, then go to recharge and refill chemicals as needed. It should get around eight hours of cleaning done in a day and can even open doors and ride the elevator to get around buildings, according to Levy.

Prime targets include airports, casinos, office spaces and other spots with large commercial restrooms. The robot will be leased out for around $1,000 a month, after a trial phase. Somatic already has a handful of customers, including a FAANG company, whose offices are already being cleaned by the robot.

The first model was created with help from $50,000 in bootstrapped funds, to which Somatic has added $300,000, including $150,000 from SOSV.

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Grab your ticket: Only one week to TC Sessions: Robotics + AI 2020

It’s T-minus one week to the big day, March 3, when more than 1,000 startuppers will convene in Berkeley, Calif. for TC Sessions: Robotics + AI 2020. We’re talking a hefty cross-section representing big companies and exciting new startups. We’re talking some of the most innovative thinkers, makers, researchers, investors and influencers — all focused on creating the future of these two world-changing technologies.

Don’t miss out on this one-day conference of interviews, panel discussions, Q&As, workshops and demos dedicated to every aspect of robotics and AI. General admission tickets cost $345. Snag your ticket now and save, because prices go up at the door. Want to save even more? Save 15% when you buy four or more tickets. Are you a student? Grab a ticket for just $50.

What do we have planned for this TC Session? Here’s a small sample of the fab programming that awaits you, and be sure to check out the full TC Session agenda here.

  • Q&A with Founders: This is your chance to ask questions of Sébastien Boyer, co-founder and CEO of FarmWise and Noah Ready-Campbell, founder and CEO of Built Robotics — some of the most successful robotics founders on our stage.
  • Disney Robotics: Imagineers from Disney will present state-of-the-art robotics built to populate its theme parks.
  • Investing in Robotics and AI: Lessons from the Industry’s VCs: Dror Berman, founding partner at Innovation Endeavors, Jocelyn Goldfein, managing director at Zetta Venture Partners and Eric Migicovsky, general partner at Y Combinator will discuss the rising tide of venture capital funding in robotics and AI. The investors bring a combination of early-stage investing and corporate venture capital expertise, sharing a fondness for the wild world of robotics and AI investing.

And — new this year — don’t miss watching the finalists from our Pitch Night competition. Founders of these early-stage companies, hand-picked by TechCrunch editors, will take the stage and have just five minutes to present their wares.

With just one more week until TC Sessions: Robotics + AI 2020 kicks off, you don’t have much time left to save on tickets. Why pay more at the door? Buy your ticket now and join the best and brightest for a full day dedicated to all things robotics.

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ShapeMeasure’s smart tool and robotic cutter let contractors measure once and cut never

As much as we’d all like to believe that our houses are built with perfectly square angles and other highly regular measurements, that’s rarely the case — which makes remodeling complex and tedious. ShapeMeasure hopes to alleviate that pain with a device that automatically measures a space and a robotic mill that cuts the required lumber precisely to size, shortening and easing the process by huge amounts.

Founder Ben Blumer, who was exposed to the art of building and repair early by his father, a general contractor, had a brainwave that became the company during some renovations of his own.

“I was shocked to see our flooring installer, who had 10 years of experience, and was excellent at what he did, take over an hour to install a single stair,” Blumer said. “I started thinking, ‘a little bit of technology could go a long way here.’ ”

Finding himself at the time free to work on such a project, he recruited a former general contractor friend and applied to HAX, which soon shipped them off to Shenzhen to pursue their idea.

The main issue is stairs: they’re tricky, and especially in older homes can be pretty off-kilter. So although you know each stair is about 35 inches wide, it might be 35 and 3/64 inches, while the next one could be 34 and 61/64. Likewise, the angles might be ever so slightly off the 90 degrees or whatever they theoretically should be. Painstakingly measuring every single stair and manually cutting wood to those many slightly different dimensions is extremely time-consuming. The tool ShapeMeasure built makes it literally a push-button affair.

The device they settled on is essentially a super-precise lidar that measures around itself in wide arc, and the exact details of which comprise part of the company’s secret sauce. This gives the precise dimensions and attachment angles of the area around it, in the first intended use case a stair. The design, helped along by HAX’s Noel Joyce, looks a bit like a giant Dust Buster by way of the original “Alien.”

Obviously his shirt contradicts my headline, but if you think about the cutting as an automated process rather than something a person has to do, mine makes sense.

“We were working with Noel Joyce, HAX’s lead industrial designer. We wanted a product that looked and felt like a tool. We figured, if you’re trying to convince contractors to try something new, it should feel familiar,” Blumer said. “We spent hundreds of hours sourcing parts and re-engineering our scanning mechanism so that it could fit into Noel’s beautiful form factor. Turns out, contractors don’t care what it looks like. They liked the design, but were way more excited for the functionality.”

Once the shapes are scanned in and checked, that information can be beamed off to ShapeMeasure’s other device, a robotic lumber sizing system that cuts wood into the exact size and shape necessary to fit together as stairs. Of course, the contractor still has to bring them to the location and attach them by whatever means they see fit, but what was once a process with perhaps hundreds of steps has been simplified by an order of magnitude.

The machine is similar to other lumber-cutting devices, but simpler and easier to operate.

“There are lots of automatic cutting systems — often big, heavy, expensive and operated by professional CNC technicians. To cut flooring on a machine like that involves setting up jigs, clamping and reclamping each board, and generating custom gcode for each stair we cut,” Blumer said. They can be several times more costly and difficult to employ. “The cutting solution we’re building is compact, requires no clamping, and can be operated with just a few hours of training.”

It’s not just about length and width, either — molding and other flourishes on the stairs can make complex cuts necessary that would be impractical or at the very least extremely time-consuming to attempt manually.

Examples of complex cuts made by the ShapeMeasure machine.

The result is that the installation process from start to finish is about four times faster, they determined. If this seems a bit optimistic, know that it isn’t just armchair theorizing — they were careful to back up these numbers from the start.

“We take our speedup data really seriously,” said Blumer. “This is our top metric! One of the first purchases I made for the company was a dozen stopwatches. We’ve done installations in the ShapeMeasure lab and on real, messy construction sites — filming, timing and logging every moment.”

Interestingly, the precut lumber made other improvements possible — the team designed a bucket to accommodate the increased rate at which the installer uses glue and other parts. It’s a bit like if you improved painting speed so much that your new bottleneck was mixing and pouring the paint into roller trays fast enough.

Currently the company is working on establishing standard practices and packaging so that a ShapeMeasure “microfactory” can be set up easily anywhere in the country on short notice. And they’re “considering” raising money before then to accelerate the process. Blumer built the prototype with his own money and they pulled in a bit from HAX and then a small pre-seed round to get things started.

With luck and a bit of elbow grease, ShapeMeasure could turn out to be a real differentiator in the contractor space — every hour counts, as does every dollar in an estimate.

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Last day for early-bird tickets to TC Sessions: Robotics + AI 2020

Today’s your last day to score early-bird pricing on tickets to TC Sessions: Robotics + AI 2020, which takes place on March 3. If you want to keep $150 in your wallet, beat the deadline and buy your ticket here before the clock strikes 11:59 p.m. (PT) tonight!

Our one-day conference dedicated to robotics and AI — the good, the bad and the challenging — features interviews, panel discussions, Q&As, workshops and demos. Join roughly 1,500 experts, visionaries, creators, founders, investors, researchers and engineers. Rub elbows, network and engage with current and aspiring leaders, as well as students poised to drive future innovation.

We have a stellar line up, and just because we’re biased doesn’t mean we’re wrong. I mean come on — assistive robots, ethics and AI, the state of VC investment and robot demos. And that’s just for starters. Here are a couple of specific examples (peruse the full agenda right here):

  • Cultivating Intelligence in Agricultural Robots: The benefits of robotics in agriculture are undeniable, yet at the same time only getting started. Lewis Anderson (Traptic) and Sebastien Boyer (FarmWise) will compare notes on the rigors of developing industrial-grade robots that both pick crops and weed fields, respectively. Pyka’s Michael Norcia will discuss taking flight over those fields with an autonomous crop-spraying drone.
  • Building the Robots that Build: Join Daniel Blank (Toggle), Tessa Lau (Dusty Robotics) and Noah Ready-Campbell (Built Robotics) as they discuss whether robots can help us build structures faster, smarter and cheaper. Built Robotics makes a self-driving excavator. Toggle is developing a new fabrication of rebar for reinforced concrete and Dusty Robotics builds robot-powered tools. We’ll talk with the founders to learn how and when robots will become a part of the construction crew.

And in case you haven’t heard, we’ve added Pitch Night, a mini pitch-off, into the mix this year. We’re accepting applications until tomorrow, February 1. This is no time for fence-sitting! Apply to compete in Pitch Night now. TechCrunch editors will review the applications and choose 10 startups to pitch at a private event the night before the conference. A panel of VC judges will select five teams as finalists. Those founders will pitch again the next day — live from the Main Stage. It’s awesome exposure that could take your startup to the next level.

If you love robots, you need to be at TC Sessions: Robotics + AI 2020 on March 3. And there’s no point paying more than necessary. Today’s the last day to buy an early-bird ticket. Buy yours before the deadline expires at 11:59 p.m. (PT) and save $150.

Is your company interested in sponsoring or exhibiting at TC Sessions: Robotics + AI 2020? Contact our sponsorship sales team by filling out this form.

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One day left for early-bird tickets to TC Sessions: Robotics + AI 2020

No one ever wants to pay more, and that’s as true for well-financed companies as it is for early-stage startup founders on a shoe-string budget. So if you love robots and machine learning, why spend more on your ticket to TC Sessions: Robotics + AI 2020? Prices go up on January 31, which means you have just one day left to buy an early-bird ticket. You’ll save a tidy $150 in the process. Sweet!

On March 3, roughly 1,500 attendees will spend the day delving into the future of robots, the AI that drives them and the people at the forefront. We’re talking some of the top makers, visionaries, founders, investors and engineers. Join your community for live interviews, panel discussions, demos, workshops, audience/speaker Q&As and world-class networking.

We’ve posted the day’s agenda, and we’ll add a few more surprises in the coming weeks. Here’s a quick peek at just some of the engaging speakers and presentations you’ll enjoy:

  • Lending a Helping Robotic Hand: As populations age, caregivers in many countries are turning to robots for assistance. Vivian Chu, co-founder and CEO of Diligent Robotics, and Mike Dooley, co-founder and CEO of Labrador Systems, will join us to discuss the role technology can play in helping care for and assist those in need.
  • Fostering the Next Generation of Robotics Startups: Robotics and AI are the future of many or most industries, but the barrier of entry is still difficult to surmount for many startups. Joshua Wilson, co-founder and CEO of Freedom Robotics, joins us to talk about how these companies are helping ease the first steps into the wider world of automation.

In a classic “but wait, there’s more” moment, our Pitch Night finalists will present live on the Main Stage. Don’t know what we’re talking about? Read more about Pitch Night here, and hey — we’re accepting applications until February 1. Don’t wait — toss your hat into the ring. It’s free, and you’ll have a chance to introduce your early-stage startup to a group of heavy-hitting influencers. What’s not to love?

TC Sessions: Robotics + AI 2020 takes place on March 3. You have plenty of time to plan the day, but your opportunity to save $150 runs out in one short day. Prices go up on January 31buy your early-bird ticket today.

Is your company interested in sponsoring or exhibiting at TC Sessions: Robotics + AI 2020? Contact our sponsorship sales team by filling out this form.

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