AgTech
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Venture investors are pouring billions of dollars into feeding their hunger for food and agriculture startups. Whether that trend line is due to enthusiasm for the sector or just broader heavy investing in the VC space is much less clear.
According to a recent report published by AgFunder – a VC and investing marketplace focused on the agriculture and food sectors – the “AgriFood” space is booming. Using data from Crunchbase and several other data partners, the organization published its “2018 AgriFood Tech Investing Report” this morning, finding that investment in AgriFood companies increased 43% year-over-year, reaching $16.9 billion in 2018.
AgFunder classifies AgriFood tech as “the small but growing segment of the startup and venture capital universe that’s aiming to improve or disrupt the global food and agriculture industry.” Their definition is intentionally broad, encompassing everything from crop and livestock biotech, property management systems, and payments, to biomaterials and meat alternatives, all the way up to tech platforms for restaurants, grocers, deliveries and at-home cooks.
While some of the AgriFood tech categories – such as delivery or restaurant software – have long been popular destinations for venture capital, we’re now seeing a more diverse array of startups innovating across the entire food supply chain. According to the report, expansion in AgriFood is fairly consistent across upstream (agricultural and farming) subsectors to downstream (more consumer-facing) subsectors, with each group growing roughly 44% and 42% year-over-year respectively.
The data also shows growth occurring across almost all deal stages. AgriFood saw huge increases in the average deal size and total investment for late-stage companies in particular, as venture-backed startups have grown to global scale. And penetrating and attracting capital from international markets seems more feasible than ever. AgriFood investing, which traditionally has been largely US-centric, is rapidly becoming a global phenomenon, with more than half of total funding – and some of the largest rounds – now coming from companies and investors outside the US.
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SeeTree, a Tel Aviv-based startup that uses drones and artificial intelligence to bring precision agriculture to their groves, today announced that it has raised an $11.5 million Series A funding round led by Hanaco Ventures, with participation from previous investors Canaan Partners Israel, Uri Levine and his investors group, iAngel and Mindset. This brings the company’s total funding to $15 million.
The idea behind the company, which also has offices in California and Brazil, is that in the past, drone-based precision agriculture hasn’t really lived up to its promise and didn’t work all that well for permanent crops like fruit trees. “In the past two decades, since the concept was born, the application of it, as well as measuring techniques, has seen limited success — especially in the permanent-crop sector,” said SeeTree CEO Israel Talpaz. “They failed to reach the full potential of precision agriculture as it is meant to be.”
He argues that the future of precision agriculture has to take a more holistic view of the entire farm. He also believes that past efforts didn’t quite offer the quality of data necessary to give permanent crop farmers the actionable recommendations they need to manage their groves.

SeeTree is obviously trying to tackle these issues and it does so by offering granular per-tree data based on the imagery gathered from drones and the company’s machine learning algorithms that then analyze this imagery. Using this data, farmers can then decide to replace trees that underperform, for example, or map out a plan to selectively harvest based on the size of a tree’s fruits and its development stages. They can then also correlate all of this data with their irrigation and fertilization infrastructure to determine the ROI of those efforts.
“Traditionally, farmers made large-scale business decisions based on intuitions that would come from limited (and often unreliable) small-scale testing done by the naked eye,” said Talpaz. “With SeeTree, farmers can now make critical decisions based on accurate and consistent small and large-scale data, connecting their actions to actual results in the field.”
SeeTree was founded by Talpaz, who like so many Israeli entrepreneurs previously worked for the country’s intelligence services, as well as Barak Hachamov (who you may remember from his early personalized news startup my6sense) and Guy Morgenstern, who has extensive experience as an R&D executive with a background in image processing and communications systems.
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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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In November, we told you about Farmers Business Network, a social network for farmers that invites them to share their data, pool their know-how and bargain more effectively for better pricing from manufacturing companies. At the time, FBN, as it’s known, had just closed on $110 million in new funding in a round that brought its funding to roughly $200 million altogether.
That kind of financial backing might dissuade newcomers to the space, but a months-old startup called AgVend has just raised $1.75 million in seed funding on the premise that, well, FBN is doing it wrong. Specifically, AgVend’s pitch is that manufacturers aren’t so crazy about FBN getting between their offerings and their end users — in large part because FBN is able to secure group discounts on those users’ behalf.
AgVend is instead planning to work directly with manufacturers and retailers, selling their goods through its own site as well as helping them develop their own web shops. The idea is to “protect their channel pricing power,” explains CEO Alexander Reichert, who previously spent more than four years with Euclid Analytics, a company that helps brands monitor and understand their foot traffice. AgVend is their white knight, coming to save them from getting disrupted out of business. “Why cut them out of the equation?” he asks.
Whether farmers will go along is the question. Those who’ve joined FBN can ostensibly save money on seeds, fertilizers, pesticides and more by being invited to comparison shop through FBN’s own online store. It’s not the easiest sell, though. FBN charges farmers $600 per year to access its platform, which is presumably a hurdle for some.
AgVend meanwhile is embracing good-old-fashioned opacity. While it invites farmers to search for products at its own site based on the farmers’ needs and location, it’s only after someone has purchased something that the retailer who sold the items is revealed. The reason: retailers don’t necessarily want to put all of their pricing online and be bound to those numbers, explains Reichert.
Naturally, AgVend insists that it’s not just better for retailers and the manufacturers standing behind them. For one thing, says Reichert, AgVend’s farming customers are sometimes offered rebates. Customers are also better informed about the products they’re buying because the information is coming from the retailers and not a third party, he insists. “When a third party like FBN comes in and tries going around the retailers, the manufacturers can’t guarantee that FBN is giving the right guidance about their products.”
In the end, its customers will decide. But the market looks big enough to support a number of players if they figure out how to play it. According to USDA data from last year, U.S. farms spent an estimated $346.9 billion in 2016 on farm production expenditures.
That’s a lot of feed and fertilizer. It’s no wonder that founders, and the VCs who are writing them checks, see fertile ground. This particular deal was led by 8VC and included the participation of Precursor Ventures, Green Bay Ventures, FJ Labs and House Fund, among others.
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SoftBank Vision Fund, the huge tech-investment vehicle helmed by Japanese billionaire Masayoshi Son, has led a $200 million investment into indoor farming startup Plenty. Joining Son are notable tech billionaires Eric Schmidt and Jeff Bezos. Plenty farms can grow anything except tree fruit and root vegetables, and produce crops at yields 530x greater than a typical field. Read More
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Agriculture startups that raised seed rounds in recent years are blossoming into businesses sought after by later-stage investors. Investment in the agtech space is up sharply this year, driven by a spike of rounds at Series B and later stages, according to Crunchbase data. Altogether, agtech startups raised more than $320 million in 2017 so far. Read More
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Oakland, Calif.-based Ceres Imaging has raised $5 million in a Series A investment led by Romulus Capital. The startup uses cameras, sensors and software to pinpoint crop stress in the field for farmers, so that they can apply herbicides, pesticides and irrigation just where it’s needed. Ceres, like several other startups, started out with the notion to build a drone just for… Read More
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GV (formerly Google Ventures) is leading a $10 million investment in Abundant Robotics, a company building apple-picking robots that could eventually be adapted to harvest other fruits. Joining GV in the round were BayWa AG and Tellus Partners, along with the company’s earlier backers Yamaha Motor Company, KPCB Edge and Comet Labs. Read More
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Full Harvest, a San Francisco-based startup, has raised $2 million in seed funding to reduce food waste at the farm level. Founded by Christine Moseley, formerly the head of business development for cold-pressed juice makers Organic Avenue, Full Harvest connects farmers with food makers who want to buy the fruit and veggies that grocers deem too ugly to sell in stores. While she was helping… Read More
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