disrupt berlin 2018

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And the winner of Startup Battlefield at Disrupt Berlin 2018 is… Legacy

At the very beginning, there were 13 startups. After two days of incredibly fierce competition, we now have a winner.

Startups participating in the Startup Battlefield have all been hand-picked to participate in our highly competitive startup competition. They all presented in front of multiple groups of VCs and tech leaders serving as judges for a chance to win $50,000 and the coveted Disrupt Cup.

After hours of deliberations, TechCrunch editors pored over the judges’ notes and narrowed the list down to five finalists: Imago AI, Kalepso, Legacy, Polyteia and Spike.

These startups made their way to the finale to demo in front of our final panel of judges, which included: Sophia Bendz (Atomico), Niko Bonatsos (General Catalyst), Luciana Luxandru (Accel), Ida Tin (Clue), Matt Turck (FirstMark Capital) and Matthew Panzarino (TechCrunch).

And now, meet the Startup Battlefield winner of TechCrunch Disrupt Berlin 2018.

Winner: Legacy

Legacy is tackling an interesting problem: the reduction of sperm motility as we age. By freezing men’s sperm, this Swiss-based company promises to keep our boys safe and potent as we get older, a consideration that many find vital as we marry and have kids later.

Read more about Legacy in our separate post.

Runner-Up: Imago AI

Imago AI is applying AI to help feed the world’s growing population by increasing crop yields and reducing food waste. To accomplish this, it’s using computer vision and machine learning technology to fully automate the laborious task of measuring crop output and quality.

Read more about Imago AI in our separate post.

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Enterprise AR is an opportunity to ‘do well by doing good,’ says General Catalyst

A founder-investor panel on augmented reality (AR) technology here at TechCrunch Disrupt Berlin suggests growth hopes for the space have regrouped around enterprise use-cases, after the VR consumer hype cycle landed with yet another flop in the proverbial ‘trough of disillusionment’.

Matt Miesnieks, CEO of mobile AR startup 6d.ai, conceded the space has generally been on another downer but argued it’s coming out of its third hype cycle now with fresh b2b opportunities on the horizon.

6d.ai investor General Catalyst‘s Niko Bonatsos was also on stage, and both suggested the challenge for AR startups is figuring out how to build for enterprises so the b2b market can carry the mixed reality torch forward.

“From my point of view the fact that Apple, Google, Microsoft, have made such big commitments to the space is very reassuring over the long term,” said Miesnieks. “Similar to the smartphone industry ten years ago we’re just gradually seeing all the different pieces come together. And as those pieces mature we’ll eventually, over the next few years, see it sort of coalesce into an iPhone moment.”

“I’m still really positive,” he continued. “I don’t think anyone should be looking for some sort of big consumer hit product yet but in verticals in enterprise, and in some of the core tech enablers, some of the tool spaces, there’s really big opportunities there.”

Investors shot the arrow over the target where consumer VR/AR is concerned because they’d underestimated how challenging the content piece is, Bonatsos suggested.

“I think what we got wrong is probably the belief that we thought more indie developers would have come into the space and that by now we would probably have, I don’t know, another ten Pokémon-type consumer massive hit applications. This is not happening yet,” he said.

“I thought we’d have a few more games because games always lead the adoption to new technology platforms. But in the enterprise this is very, very exciting.”

“For sure also it’s clear that in order to have the iPhone moment we probably need to have much better hardware capabilities,” he added, suggesting everyone is looking to the likes of Apple to drive that forward in the future. On the plus side he said current sentiment is “much, much much better than what it was a year ago”.


Discussing potential b2b applications for AR tech one idea Miesnieks suggested is for transportation platforms that want to link a rider to the location of an on-demand and/or autonomous vehicle.

Another area of opportunity he sees is working with hardware companies — to add spacial awareness to devices such as smartphones and drones to expand their capabilities.

More generally they mentioned training for technical teams, field sales and collaborative use-cases as areas with strong potential.

“There are interesting applications in pharma, oil & gas where, with the aid of the technology, you can do very detailed stuff that you couldn’t do before because… you can follow everything on your screen and you can use your hands to do whatever it is you need to be doing,” said Bonatsos. “So that’s really, really exciting.

“These are some of the applications that I’ve seen. But it’s early days. I haven’t seen a lot of products in the space. It’s more like there’s one dev shop is working with the chief innovation officer of one specific company that is much more forward thinking and they want to come up with a really early demo.

“Now we’re seeing some early stage tech startups that are trying to attack these problems. The good news is that good dollars is being invested in trying to solve some of these problems — and whoever figures out how to get dollars from the… bigger companies, these are real enterprise businesses to be built. So I’m very excited about that.”

At the same time, the panel delved into some of the complexities and social challenges facing technologists as they try to integrate blended reality into, well, the real deal.

Including raising the spectre of Black Mirror style dystopia once smartphones can recognize and track moving objects in a scene — and 6d.ai’s tech shows that’s coming.

Miesnieks showed a brief video demo of 3D technology running live on a smartphone that’s able to identify cars and people moving through the scene in real time.

“Our team were able to solve this problem probably a year ahead of where the rest of the world is at. And it’s exciting. If we showed this to anyone who really knows 3D they’d literally jump out of the chair. But… it opens up all of these potentially unintended consequences,” he said.

“We’re wrestling with what might this be used for. Sure it’s going to make Pokémon game more fun. It could also let a blind person walk down the street and have awareness of cars and people and they may not need a cane or something.

“But it could let you like tap and literally have people be removed from your field of view and so you only see the type of people that you want to look at. Which can be dystopian.”

He pointed to issues being faced by the broader technology industry now, around social impacts and areas like privacy, adding: “We’re seeing some of the social impacts of how this stuff can go wrong, even if you assume good intentions.

“These sort of breakthroughs that we’re having are definitely causing us to be aware of the responsibility we have to think a bit more deeply about how this might be used for the things we didn’t expect.”

From the investor point of view Bonatsos said his thesis for enterprise AR has to be similarly sensitive to the world around the tech.

“It’s more about can we find the domain experts, people like Matt, that are going to do well by doing good. Because there are a tonne of different parameters to think about here and have the credibility in the market to make it happen,” he suggested, noting: “It‘s much more like traditional enterprise investing.”

“This is a great opportunity to use this new technology to do well by doing good,” Bonatsos continued. “So the responsibility is here from day one to think about privacy, to think about all the fake stuff that we could empower, what do we want to do, what do we want to limit? As well as, as we’re creating this massive, augmented reality, 3D version of the world — like who is going to own it, and share all this wealth? How do we make sure that there’s going to be a whole new ecosystem that everybody can take part of it. It’s very interesting stuff to think about.”

“Even if we do exactly what we think is right, and we assume that we have good intentions, it’s a big grey area in lots of ways and we’re going to make lots of mistakes,” conceded Miesnieks, after discussing some of the steps 6d.ai has taken to try to reduce privacy risks around its technology — such as local processing coupled with anonymizing/obfuscating any data that is taken off the phone.

“When [mistakes] happen — not if, when — all that we’re going to be able to rely on is our values as a company and the trust that we’ve built with the community by saying these are our values and then actually living up to them. So people can trust us to live up to those values. And that whole domain of startups figuring out values, communicating values and looking at this sort of abstract ‘soft’ layer — I think startups as an industry have done a really bad job of that.

“Even big companies. There’d only a handful that you could say… are pretty clear on their values. But for AR and this emerging tech domain it’s going to be, ultimately, the core that people trust us.”

Bonatsos also pointed to rising political risk as a major headwind for startups in this space — noting how China’s government has decided to regulate the gaming market because of social impacts.

“That’s unbelievable. This is where we’re heading with the technology world right now. Because we’ve truly made it. We’ve become mainstream. We’re the incumbents. Anything we build has huge, huge intended and unintended consequences,” he said.

“Having a government that regulates how many games that can be built or how many games can be released — like that’s incredible. No company had to think of that before as a risk. But when people are spending so many hours and so much money on the tech products they are using every day. This is the [inevitable] next step.”

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Instagram now lets you share Stories to a Close Friends list

No one wants to post silly, racy or vulnerable Stories if they’re worried their boss, parents and distant acquaintances are watching. So to get people sharing more, and more authentically, Instagram will let you share to fewer people. Today after 17 months of testing, Instagram is globally launching Close Friends on iOS and Android over the next two days. It lets you build a single private list of your best buddies on Instagram through suggestions or search, and then share Stories just to them. They’ll see a green circle around your profile pic in the existing Story tray to let them know this is Close Friends-only content, but no one gets notified if they’re added or removed from your list that only you can view.

“As you add more and more people [on any social network], you start not to know them. That’s obviously going to change the things that you’re sharing and it makes it even harder to form very deep connections with your closest friends because you’re basically curating for the largest possible distribution,” said Instagram director of product Robby Stein, who announced the news onstage at TechCrunch Disrupt Berlin. “To really be yourself and connect and be connected to your best friends, you need your own place.”

I spent the last few days demoing Close Friends and it’s remarkably smooth, intuitive and useful. Suddenly there was a place to post what I might otherwise consider too random or embarrassing to share. Teens already invented the idea of “Finstagrams,” or fake Instagram accounts, to share feed posts to just their favorite people without the pressure to look cool. Now Instagram is formalizing that idea into “Finstastories” through Close Friends.

The feature is a wise way to counteract the natural social graph creep that occurs as people accept social networking requests out of a sense of obligatory courtesy from people they aren’t close to, which then causes them to only share blander content. Helping people express their wild side as must-see content for their Close Friends could drive up time spent on the app. But there’s also the risk that the launch creates private echo sphere havens for offensive content beyond the eyes of those who’d rightfully report it.

“No one has ever mastered a close friends graph and made it easy for people to understand,” Stein notesThe path to variable sharing privacy winds through a cemetery. Facebook’s “Lists” product struggled to find traction for a decade before being half-shut down. Google+’s big selling point was “Circles” for sharing to different groups of people. But with both, users found it too boring and confusing to make a bunch of different lists they could share to or view feeds from. Snapchat launched its own Groups feature two months ago, but it’s easy to forget who’s in which list and they’re designed around group chat. Most users just end up trying their best to reject, unfollow or mute people they didn’t want to see or share with.

Now after almost 15 years of Facebook, 12 years of Twitter, eight years of Instagram and seven years of Snapchat, that strategy has failed for many, leading to noisy feeds and a fear of sharing to too many. “People get friend requests and they feel pressure to accept,” Stein explains. “The curve is actually that your sharing goes up and as you add more people initially, as more people can respond to you. But then there’s a point where it reduces sharing over time.”

So Instagram chose to build Close Friends as just a single list in hopes that you won’t lose track of who’s part of it. As the feature rolls out today, there’ll be an explainer Story from Instagram about it in your tray, you’ll get walked through when you hit the Close Friends button on the Story composer, and there’ll be a call out on your profile to configure Close Friends in the Settings menu. You’ll be able to search for your close friends or quickly add them from a list of suggestions based on who you interact with most. You can add or remove as many people as you want without them knowing, they just will or won’t see your green circled Close Friends story. “We’re protecting you and your right to share or not share to certain people. It gives you air cover,” Stein tells me.

From then on, you can use the Close Friends shortcut in the Stories composer to share it with just those people, who’ll see a green “Close Friends” label on the story to let them know they’re special. Instagram will use the signal of who you add to help rank and order your Stories tray, but it won’t automatically pop Close Friends Stories to the front. When asked if Facebook would use that data for personalization too, Stein told me, “We’re the same company,” but said using it to improve Facebook is “not something that we’re actively working on.”

Robby Stein (Instagram) debuts a new feature called Close Friends that allows users to share Stories with a small group of friends #TCDisrupt pic.twitter.com/ontdA7CQU0

— TechCrunch (@TechCrunch) November 30, 2018

There’s no screenshot alerts, similar to the rest of Instagram Stories, but you won’t be able to DM anyone someone else’s Close Friends Story. That’s it. “We haven’t invented any new design affordances or things you need to know,” Stein beams. For now it’s meant for user profiles, but publishers, social media celebrities and brands would probably love ways to build fan clubs through the feature. Perhaps Instagram would even allow creators to charge users to be admitted to Close Friends. If not, some savvy influencers will probably do it anyways as they try to make Instagram more like Patreon.

Instagram’s Robby Stein (left) tells TechCrunch’s Josh Constine about Close Friends at Disrupt Berlin

The one concern here is that Close Friends could create little bunkers in which people can share objectionable content without consequence. It’d be sad to see it harbor racism, sexism or other stuff that doesn’t belong anywhere on Instagram. Stein says that because you’re talking with friends instead of strangers on a Reddit, “it self regulates what it’s used for. We haven’t seen a lot of that usage in the testing that we’ve done. It’s still a broadcast channel and it doesn’t generate this group discussion. It doesn’t spiral.”

Overall, I think Close Friends will be a hit. When it started testing a prototype called Favorites in June 2017 it worked with feed posts too, but Instagram decided the off the cuff posts wouldn’t fit right next to your more widely broadcasted highlights. But confined to Stories, it feels like a natural and much-needed extension of what Instagram was always supposed to be but that’s gotten lost in our swelling social networks: giving the people you love a window into your life.


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Meet the five Startup Battlefield finalists at Disrupt Berlin 2018

Thirteen companies took the stage today at Disrupt Berlin, delivering six-minute pitches and demos, then answering free-for-all questions from expert judges. Now that the judges have given us their feedback, we’ve chosen five finalists.

These finalists will all take the stage again tomorrow afternoon to present in front of a new set of judges, who will have time to ask more in-depth questions. Then one winner will be chosen to take home the Disrupt Cup — not to mention $50,000, equity-free.

Here are the finalists. The competition will be live-streamed on TechCrunch starting at 2:05pm Berlin time on Friday.

Imago AI

Imago AI is applying AI to help feed the world’s growing population by increasing crop yields and reducing food waste. To accomplish this, it’s using computer vision and machine learning technology to fully automate the laborious task of measuring crop output and quality.

Read more about Imago AI here.

Kalepso

Kalepso says it can do better than other database offerings out there by melding strong security with high reliability, while filling in the spots where sensitive data can be accessed or obtained in the clear. Its Harvard-educated founders argued that all the existing database services out there are either slow or insecure.

Read more about Kalepso here.

Legacy

Legacy is tackling an interesting problem: the reduction of sperm motility as we age. By freezing men’s sperm, this Swiss-based company promises to keep our boys safe and potent as we get older, a consideration that many find vital as we marry and have kids later.

Read more about Legacy here.

Polyteia

Polyteia is building a platform that would allow city leaders to unify and analyze the data that represents the constituents they serve. The problem, the company says, is that local governments collect a lot of data, but they aren’t always great at organizing and using it efficiently.

Read more about Polyteia here.

Spike

Spike lets family and doctors lend a hand to diabetes patients by sending them real-time alerts about their stats. And the app’s artificial intelligence features can even send helpful reminders or suggest the most diabetes-friendly meals when you walk into a restaurant.

Read more about Spike Diabetes here.

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Legacy freezes your sperm so you don’t have to

Legacy is tackling an interesting problem: the reduction of sperm motility as we age. By freezing our sperm, this Swiss-based company promises to keep our boys safe and potent as we get older, a consideration that many find vital as we marry and have kids later. Legacy, which exhibited in Startup Alley at Disrupt Berlin 2018, was chosen as the wildcard company to present its services onstage during Startup Battlefield.

How does it work? Well, the company delivers a system for grabbing sperm. The material is kept in a specially made container and shipped to a nearby clinic where they then test the sperm and place it in cryogenic storage. You can then make a withdrawal when you’re ready for babies.

“Our unique at-home solution allows men to have their sperm analyzed and frozen at a clinic without leaving their home or having to meet with a physician,” said founder Khaled Kteily. “All clients receive a full fertility analysis, including personalized recommendations using our machine learning-driven technology.”

Kteily ensures us that our special sauce will stay safe over the years.

“Our core values of privacy, quality, and security ensure discretion, anonymity, and the highest level of quality for all our clients, including multi-site storage, whereby our clients’ deposits are stored in multiple tanks in multiple locations at high security.”

The company offers three packages: Bronze, Gold and Platinum. The $1,000 Bronze package requires you to take your sperm to a clinic where it will be tested and cryogenically stored. The Platinum plan costs $10,000 and ensures the company will keep up to six samples of your swimmers indefinitely, affording your genetic material practical immortality.

Kteily founded the company after a friend looked for solutions to sperm storage while facing cancer treatment. Realizing there was nothing that looked trustworthy or usable, he used his background in health and entrepreneurship to build Legacy.

The company has raised $250,000 and they are profitable. Kteily sees his company as the “Swiss Bank” of sperm storage.

“Male fertility has declined by 50 percent. Every 8 months, men produce a new genetic mutation that gets passed on to their children. Birth rates around the world are plummeting and men are responsible for infertility in 30-50 percent of couples. Meanwhile, you can freeze sperm indefinitely with no loss in quality — through Legacy, without having to leave your home and at a tenth of the cost of egg freezing,” he said. “We treat our clients as a private bank would — our core values of quality, privacy and security ensure our clients are taken care of at every level.”


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Koo! is a social network for short-form podcasts

Alexandre Meregan says that music, and audio in general, has always been core to his life. But one day on his five-minute commute to work, trying to listen to a podcast for the first time, he realized that by the time he arrived at work he had only heard an introduction and a commercial jingle.

He immediately went to work on Koo!, a short-form podcast app aimed at young people. Koo! lets users record up to one minute of audio, add “sound stickers” like a drum roll or a poop sound, and share the “Koo” in a feed with their friends and followers.

Meregan believes that some young people are hesitant to share their thoughts on social media, which is mostly picture or video-based, because of the quantification of their self-worth through Like counters. With Koo! users can simply speak their thoughts without having to share a picture or video.

“At Koo! we believe a lot of great content is being held back by teenagers due to insecurities that comes with photo and video,” said Meregan onstage at TechCrunch Disrupt Berlin on the Startup Battlefield. “We feel that what you say should be more important than how you look.”

Like most social networks, Koo! is primarily focused on acquiring new users before focusing on a revenue model. Ad-supported revenue is the most obvious option to make money, but Meregan says that the team has been floating around a few other ideas, as well.

One user-acquisition tactic, according to Meregan, is to target YouTube content creators and give them a complimentary service to share their thoughts and voice.

A handful of startups have tried their hand at audio-based social networks, but few have managed to gain much traction.

Koo! is backed by Sweet Studio, though Meregan declined to share the amount of funding the company has received to date.


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Rlay offers a blockchain-powered platform to help companies build better crowdsourced data sets

The team behind Rlay believes that blockchain technology can play a crucial role in helping businesses crowdsource their data-gathering tasks.

Founder Michael Hirn said this is a problem he encountered while working with Sunstone Capital to develop a more quantitative approach to venture capital, which meant pulling startup data from a wide variety of online sources. It ended up being an incredibly time-consuming process, and he said, “90 percent of the time was spent cleaning the data and acquiring the data.”

CTO Max Goisser argued that this is a broad problem. There are already successful examples of crowdsourced data, most notably Wikipedia, but in his view, they succeeded because “these things were of value for the entire world — everyone’s interested in that.”

“But what if you wanted to crowdsource something that is [only] interesting to you as a company?” Goisser said. Then you’d need the right incentive system to convince people to contribute. And that’s where Rlay (pronounced “relay”) comes in — the startup is launching onstage today as part of our Startup Battlefield at Disrupt Berlin.


There are other startups, like Dirt Protocol, offering blockchain-powered tools for data collection and verification. But it sounds like one of Rlay’s big selling points is its ability to integrate with existing enterprise database technology.

In other words, Rlay leverages the blockchain side of things to provide a mechanism for people to contribute data and be rewarded for their contributions (each customer decides how they want to structure the incentives), but the goal is to collect the data in a format that’s useful for the company, and where, if the company desires, it can be kept private.

“We abstract over the backend database that you as a company would use, we abstract over the blockchain or ledger technology — it’s currently Ethereum, but technically, it doesn’t matter,” Hirn said. “So you don’t have to figure out how to work between Postgres and Ethereum, you don’t have to figure out ‘How do we represent the data?’, all of that is taken care of by Rlay.”

Rlay screenshot

As for the incentives, he said:

There are almost as many ways [of] incentivizing as there are different types of financial products. Obviously some ways are more robust than others and we outlined a very general and universal incentive mechanism in our whitepaper, but for most of the applications that is a little bit to complex. So with Rlay, we will provide some templates in the future and certainly advice for certain ways when we work with a client, but Rlay just gives a good interface to define these things very easily.

Ultimately, this should allow companies to acquire the data they need at a lower cost than going out and buying data sets or hiring their own data collection team. For example, Hirn said Rlay is working with “a big name in the blockchain space” to gather environmental, social and governance (ESG) data required by hedge funds and other investors.

For now, Hirn said Rlay is focused on working with developers to collect data that’s online but not aggregated or structured in a way that makes it easily accessible. In the ESG case, that means writing scripts to pull the data from the reports that many companies are already publishing. Ultimately, Rlay could move into collecting data from the physical world, as well.

Goisser said the company is also developing various ways to recognize and resolve conflicting data, so its customers can be sure that the information they’re collecting is accurate.

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Agtech startup Imago AI is using computer vision to boost crop yields

Presenting onstage today in the 2018 TC Disrupt Berlin Battlefield is Indian agtech startup Imago AI, which is applying AI to help feed the world’s growing population by increasing crop yields and reducing food waste. As startup missions go, it’s an impressively ambitious one.

The team, which is based out of Gurgaon near New Delhi, is using computer vision and machine learning technology to fully automate the laborious task of measuring crop output and quality — speeding up what can be a very manual and time-consuming process to quantify plant traits, often involving tools like calipers and weighing scales, toward the goal of developing higher-yielding, more disease-resistant crop varieties.

Currently they say it can take seed companies between six and eight years to develop a new seed variety. So anything that increases efficiency stands to be a major boon.

And they claim their technology can reduce the time it takes to measure crop traits by up to 75 percent.

In the case of one pilot, they say a client had previously been taking two days to manually measure the grades of their crops using traditional methods like scales. “Now using this image-based AI system they’re able to do it in just 30 to 40 minutes,” says co-founder Abhishek Goyal.

Using AI-based image processing technology, they can also crucially capture more data points than the human eye can (or easily can), because their algorithms can measure and asses finer-grained phenotypic differences than a person might pick up on or be easily able to quantify just judging by eye alone.

“Some of the phenotypic traits they are not possible to identify manually,” says co-founder Shweta Gupta. “Maybe very tedious or for whatever all these laborious reasons. So now with this AI-enabled [process] we are now able to capture more phenotypic traits.

“So more coverage of phenotypic traits… and with this more coverage we are having more scope to select the next cycle of this seed. So this further improves the seed quality in the longer run.”

The wordy phrase they use to describe what their technology delivers is: “High throughput precision phenotyping.”

Or, put another way, they’re using AI to data-mine the quality parameters of crops.

“These quality parameters are very critical to these seed companies,” says Gupta. “Plant breeding is a very costly and very complex process… in terms of human resource and time these seed companies need to deploy.

“The research [on the kind of rice you are eating now] has been done in the previous seven to eight years. It’s a complete cycle… chain of continuous development to finally come up with a variety which is appropriate to launch in the market.”

But there’s more. The overarching vision is not only that AI will help seed companies make key decisions to select for higher-quality seed that can deliver higher-yielding crops, while also speeding up that (slow) process. Ultimately their hope is that the data generated by applying AI to automate phenotypic measurements of crops will also be able to yield highly valuable predictive insights.

Here, if they can establish a correlation between geotagged phenotypic measurements and the plants’ genotypic data (data which the seed giants they’re targeting would already hold), the AI-enabled data-capture method could also steer farmers toward the best crop variety to use in a particular location and climate condition — purely based on insights triangulated and unlocked from the data they’re capturing.

One current approach in agriculture to selecting the best crop for a particular location/environment can involve using genetic engineering. Though the technology has attracted major controversy when applied to foodstuffs.

Imago AI hopes to arrive at a similar outcome via an entirely different technology route, based on data and seed selection. And, well, AI’s uniform eye informing key agriculture decisions.

“Once we are able to establish this sort of relation this is very helpful for these companies and this can further reduce their total seed production time from six to eight years to very less number of years,” says Goyal. “So this sort of correlation we are trying to establish. But for that initially we need to complete very accurate phenotypic data.”

“Once we have enough data we will establish the correlation between phenotypic data and genotypic data and what will happen after establishing this correlation we’ll be able to predict for these companies that, with your genomics data, and with the environmental conditions, and we’ll predict phenotypic data for you,” adds Gupta.

“That will be highly, highly valuable to them because this will help them in reducing their time resources in terms of this breeding and phenotyping process.”

“Maybe then they won’t really have to actually do a field trial,” suggests Goyal. “For some of the traits they don’t really need to do a field trial and then check what is going to be that particular trait if we are able to predict with a very high accuracy if this is the genomics and this is the environment, then this is going to be the phenotype.”

So — in plainer language — the technology could suggest the best seed variety for a particular place and climate, based on a finer-grained understanding of the underlying traits.

In the case of disease-resistant plant strains it could potentially even help reduce the amount of pesticides farmers use, say, if the the selected crops are naturally more resilient to disease.

While, on the seed generation front, Gupta suggests their approach could shrink the production time frame — from up to eight years to “maybe three or four.”

“That’s the amount of time-saving we are talking about,” she adds, emphasizing the really big promise of AI-enabled phenotyping is a higher amount of food production in significantly less time.

As well as measuring crop traits, they’re also using computer vision and machine learning algorithms to identify crop diseases and measure with greater precision how extensively a particular plant has been affected.

This is another key data point if your goal is to help select for phenotypic traits associated with better natural resistance to disease, with the founders noting that around 40 percent of the world’s crop load is lost (and so wasted) as a result of disease.

And, again, measuring how diseased a plant is can be a judgement call for the human eye — resulting in data of varying accuracy. So by automating disease capture using AI-based image analysis the recorded data becomes more uniformly consistent, thereby allowing for better quality benchmarking to feed into seed selection decisions, boosting the entire hybrid production cycle.

Sample image processed by Imago AI showing the proportion of a crop affected by disease

In terms of where they are now, the bootstrapping, nearly year-old startup is working off data from a number of trials with seed companies — including a recurring paying client they can name (DuPont Pioneer); and several paid trials with other seed firms they can’t (because they remain under NDA).

Trials have taken place in India and the U.S. so far, they tell TechCrunch.

“We don’t really need to pilot our tech everywhere. And these are global [seed] companies, present in 30, 40 countries,” adds Goyal, arguing their approach naturally scales. “They test our technology at a single country and then it’s very easy to implement it at other locations.”

Their imaging software does not depend on any proprietary camera hardware. Data can be captured with tablets or smartphones, or even from a camera on a drone or using satellite imagery, depending on the sought for application.

Although for measuring crop traits like length they do need some reference point to be associated with the image.

“That can be achieved by either fixing the distance of object from the camera or by placing a reference object in the image. We use both the methods, as per convenience of the user,” they note on that.

While some current phenotyping methods are very manual, there are also other image-processing applications in the market targeting the agriculture sector.

But Imago AI’s founders argue these rival software products are only partially automated — “so a lot of manual input is required,” whereas they couch their approach as fully automated, with just one initial manual step of selecting the crop to be quantified by their AI’s eye.

Another advantage they flag up versus other players is that their approach is entirely non-destructive. This means crop samples do not need to be plucked and taken away to be photographed in a lab, for example. Rather, pictures of crops can be snapped in situ in the field, with measurements and assessments still — they claim — accurately extracted by algorithms which intelligently filter out background noise.

“In the pilots that we have done with companies, they compared our results with the manual measuring results and we have achieved more than 99 percent accuracy,” is Goyal’s claim.

While, for quantifying disease spread, he points out it’s just not manually possible to make exact measurements. “In manual measurement, an expert is only able to provide a certain percentage range of disease severity for an image example; (25-40 percent) but using our software they can accurately pin point the exact percentage (e.g. 32.23 percent),” he adds.

They are also providing additional support for seed researchers — by offering a range of mathematical tools with their software to support analysis of the phenotypic data, with results that can be easily exported as an Excel file.

“Initially we also didn’t have this much knowledge about phenotyping, so we interviewed around 50 researchers from technical universities, from these seed input companies and interacted with farmers — then we understood what exactly is the pain-point and from there these use cases came up,” they add, noting that they used WhatsApp groups to gather intel from local farmers.

While seed companies are the initial target customers, they see applications for their visual approach for optimizing quality assessment in the food industry too — saying they are looking into using computer vision and hyper-spectral imaging data to do things like identify foreign material or adulteration in production line foodstuffs.

“Because in food companies a lot of food is wasted on their production lines,” explains Gupta. “So that is where we see our technology really helps — reducing that sort of wastage.”

“Basically any visual parameter which needs to be measured that can be done through our technology,” adds Goyal.

They plan to explore potential applications in the food industry over the next 12 months, while focusing on building out their trials and implementations with seed giants. Their target is to have between 40 to 50 companies using their AI system globally within a year’s time, they add.

While the business is revenue-generating now — and “fully self-enabled” as they put it — they are also looking to take in some strategic investment.

“Right now we are in touch with a few investors,” confirms Goyal. “We are looking for strategic investors who have access to agriculture industry or maybe food industry… but at present haven’t raised any amount.”


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Discover the next messaging giant at Disrupt Berlin

Truecaller may already be a familiar name, but many of you probably don’t know that it’s slowly becoming a significant messaging app. That’s why I’m excited to announce that Truecaller co-founder and CEO Alan Mamedi will join us at TechCrunch Disrupt Berlin.

Truecaller first started as a call screening app. Some countries are more affected than others. But it’s clear that text and call spam is the most intrusive form of spam.

The Swedish company then leveraged this user base to quietly turn the app into a full-fledged messaging app with one focus in particular — India.

With the acquisition of Chillr, the company shows that it wants to recreate a sort of WeChat for India. The company launched payment features — Truecaller Pay lets you pay other Truecaller users as well as pay your bills.

Eventually, Truecaller wants to open up its platform to third-party services. Back in April, the company reported that it had 100 million daily active users.

If you’re impressed by Truecaller’s growth strategy, you should buy your ticket to Disrupt Berlin to listen to this discussion and many others. The conference will take place on November 29-30.

In addition to fireside chats and panels, like this one, new startups will participate in the Startup Battlefield Europe to win the highly coveted Battlefield cup.

Alan Mamedi

CEO & Co-founder, Truecaller

Alan Mamedi is the CEO and Co-founder of Truecaller. Truecaller is one of the leading communication apps in the world with services in messaging, payment, caller ID, spam detection, dialer functionalities, and has more than 300 million users globally. In this position, Alan focuses on product development and innovation, and charting the strategic roadmap for the company’s success. To date, Truecaller has raised 80 million USD from Sequoia Capital, Atomico, and Kleiner Perkins Caufield & Byers.

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Robby Stein to talk about Instagram beyond Systrom at Disrupt Berlin

Last month, Instagram co-founders CEO Kevin Systrom and CTO Mike Krieger announced that they would be leaving Instagram and Facebook. All eyes are now on Instagram to figure out what’s going to happen to the photo and video app. That’s why I’m excited to announce that Instagram Product Director Robby Stein is joining us at TechCrunch Disrupt Berlin.

Instagram is Facebook’s next big bet. Facebook’s growth has slowed down, which puts even more pressure on Instagram. Compared to Facebook, Instagram is still a relatively young platform. More and more people are joining Instagram and stories are boosting engagement.

Facebook currently has 2.23 billion monthly users while Instagram has 1 billion users. Many people have an active account on both platforms. But does Instagram have what it takes to reach Facebook’s scale?

When it comes to product, Instagram has relentlessly released new features over the past few years. Stories have become a creative playground, stars can share longer videos on IGTV and you can now start group video chats from the app.

It’s impressive to see that such a big platform keeps releasing radical changes that will affect over a billion users. Instagram has been moving incredibly fast. And it’s been key when it comes to fostering growth.

Stein will tell us more about Instagram’s product design strategy and what’s coming up. It’s always interesting to hear the perspective of an insider to analyze product decisions and discuss them.

Before joining Instagram, he was the co-founder and CEO of Stamped, which was acquired by Yahoo back in 2012. Stein started his career at Google. In a short period of time, he managed to work for Google, Facebook and Yahoo, and he also founded his own startup. Quite an impressive resume.

And if you want to hear what it feels like to work for Instagram at a pivotal moment, you should come to Disrupt Berlin. The conference will take place on November 29-30 and you can buy your ticket right now.

In addition to fireside chats and panels, like this one, new startups will participate in the Startup Battlefield Europe to win the highly coveted Battlefield cup.

Robby Stein

Product Director, Instagram

Robby Stein is Product Director at Instagram, where he leads the consumer product team for sharing, which includes Stories, Feed, Live and Direct Messaging. Previously he was the Co-Founder and CEO of Stamped, which was acquired by Yahoo in 2012. At Yahoo, Robby led mobile video products focused around recommended content. He started his career at Google, where he worked to bring new features to market for Gmail and Ad Exchange. He has been recognized on the Forbes 30 under 30 and graduated summa cum laude from Northwestern University.

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