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Funding To Food Tech Startups Reaches New Peak

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The US food tech scene shows no sign of slowing down as food startups raise over $750M year-to-date.

VCs have not slowed down their funding to food technology companies, even after more than $1B in investments and 200% year-over-year growth in 2014.

The food tech category covers companies across a range of food-related industries, including food delivery (companies like Instacart or Postmates), food replacements (Hampton Creek FoodsSoylent), and restaurant tech (E La CarteReserve), among others.

US-based, VC-backed food tech companies pulled in over $750M in equity funding in the first half of 2015. Specifically, Q2’15 reached a 10-quarter high in funding, with $549M raised across 20 deals, including large rounds to Blue Apron ($135M Series D), Munchery ($85M Series C), and Postmates ($80M Series D).

While the bulk of the funding has gone to mid- and late-stage companies, multiple early-stage companies have also been funded in 2014 and 2015 year-to-date.

With this in mind, we used CB Insights Company Mosaic to track the US-based early-stage companies with the most momentum.

CB Insights algorithmically assesses the health of private companies and gives them a Mosaic score, which has several components, including a Momentum score. Momentum measures a company’s traction, based on factors including web traffic, social mentions, and hiring pace. 

No food tech company had a higher Momentum score than Favor, at 820. Favor is an Austin-based delivery platform (similar to Postmates) with a sizeable portion of their business focused on food delivery. The company recently raised $13M in Series A financing from S3 Ventures and Silverton Partners, among others. Favor’s overall Mosaic score, 880, also ranks them among the top 5% of all private tech companies.

Drizly, a developer of an alcohol delivery application, ranked second with a 770 momentum score. The company most recently raised $13M in Series A financing from First Beverage Group, Polaris Partners, and Wine & Spirits Wholesalers of America. Drizly has seen growth across news mentions, social media, as well as job listings.

Home Chef — a Blue Apron and Plated competitor — ranked third with a 670 momentum score. The company has seen steady growth in web traffic as well as job listings in recent months.

High-Momentum Early-Stage US VC-Backed Food Tech Companies

Company Total Funding ($M) Momentum Overall Mosaic Select Investors
Favor $15.1 820 880 S3 Ventures, Silverton Partners, Tim Draper
Drizly $17.8 770 870 Abundance Partners, Atlas Venture, Fairhaven Capital, Polaris Partners, Vayner RSE
Home Chef N/A 670 660 Guild Capital
Bento $1.9 610 750 500 Startups, FundersClub, Launch Fund, Slow Ventures
Maple $26.0 610 810 Bessemer Venture Partners, Primary Venture Partners, Thrive Capital, Trisiras Group
Gobble $1.2 610 700 Felicis Ventures, Founder Collective, Greylock Partners, SV Angel, Thrive Capital, Y Combinator
Sourcery $2.5 590 720 BoxGroup
TouchBistro $12.0 580 770 Difference Capital Financial, Relay Ventures,Walden Venture Capital
Club W $12.7 540 750 500 Startups, Amplify L.A., Bessemer Venture Partners, CrossCut Ventures, Guild Capital
Feastly $1.32 540 690 Boost.vc, Westly Group

The most active VC in US-based food tech companies since 2013 on a unique company basis has been Khosla Ventures. Khosla has invested in Instacart, which most recently raised $220M at a $2B valuation, as well as DoorDash, Hampton Creek Foods, and Unreal Brands.

500 Startups and Slow Ventures rounded out the top 3 most active VCs. 500 Startups’ recent bets include Platejoy and Bento, while Slow Ventures most recently participated in Postmates’ $80M Series D, which valued the company at $500M.

The full list is below.

Most Active VCs In US Food Tech

Rank Investor Rank Investor
1 Khosla Ventures 6 BoxGroup
2 500 Startups 6 SV Angel
2 Slow Ventures 9 Sherpa Ventures
4 Lerer Hippeau Ventures 9 Great Oaks Venture Capital
4 Index Ventures 9 Spark Capital
6 First Round Capital 9 Andreessen Horowitz

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Funding & Business

Musk Needs to Focus on Tesla, Not Trump, Says Azoria CEO

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Azoria CEO James Fishback says Elon Musk should focus his time on Tesla and SpaceX and not trying to sabotage President Donald Trump. Fishback, a shareholder, says if Musk doesn’t want to be a fulltime CEO, he “should tell us now.” Fishback speaks on “Bloomberg Technology.” (Source: Bloomberg)



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Hunter Point CEO on the PE Investor Pivot

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Last month, Hunter Point Capital agreed to acquire a 16% stake in Equitix, an international infrastructure investor and fund manager, at a valuation near $2 billion. Since the deal, Equitix’s portfolio has grown to nearly $16 billion in assets under management. CEO and co-Founder Avi Kalichstein joined Wall Street Beat on Bloomberg Open Interest to talk about the partnership. (Corrected guest name and title) (Source: Bloomberg)



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How Capital One built production multi-agent AI workflows to power enterprise use cases

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How do you balance risk management and safety with innovation in agentic systems — and how do you grapple with core considerations around data and model selection? In this VB Transform session, Milind Naphade, SVP, technology, of AI Foundations at Capital One, offered best practices and lessons learned from real-world experiments and applications for deploying and scaling an agentic workflow.

Capital One, committed to staying at the forefront of emerging technologies, recently launched a production-grade, state-of-the-art multi-agent AI system to enhance the car-buying experience. In this system, multiple AI agents work together to not only provide information to the car buyer, but to take specific actions based on the customer’s preferences and needs. For example, one agent communicates with the customer. Another creates an action plan based on business rules and the tools it is allowed to use. A third agent evaluates the accuracy of the first two, and a fourth agent explains and validates the action plan with the user. With over 100 million customers using a wide range of other potential Capital One use case applications, the agentic system is built for scale and complexity.

“When we think of improving the customer experience, delighting the customer, we think of, what are the ways in which that can happen?” Naphade said. “Whether you’re opening an account or you want to know your balance or you’re trying to make a reservation to test a vehicle, there are a bunch of things that customers want to do. At the heart of this, very simply, how do you understand what the customer wants? How do you understand the fulfillment mechanisms at your disposal? How do you bring all the rigors of a regulated entity like Capital One, all the policies, all the business rules, all the constraints, regulatory and otherwise?”

Agentic AI was clearly the next step, he said, for internal as well as customer-facing use cases.

Designing an agentic workflow

Financial institutions have particularly stringent requirements when designing any workflow that supports customer journeys. And Capital One’s applications include a number of complex processes as customers raise issues and queries leveraging conversational tools. These two factors made the design process especially complex, requiring a holistic view of the entire journey — including how both customers and human agents respond, react, and reason at every step.

“When we looked at how humans do reasoning, we were struck by a few salient facts,” Naphade said. “We saw that if we designed it using multiple logical agents, we would be able to mimic human reasoning quite well. But then you ask yourself, what exactly do the different agents do? Why do you have four? Why not three? Why not 20?”

They studied customer experiences in the historic data: where those conversations go right, where they go wrong, how long they should take and other salient facts. They learned that it often takes multiple turns of conversation with an agent to understand what the customer wants, and any agentic workflow needs to plan for that, but also be completely grounded in an organization’s systems, available tools, APIs, and organizational policy guardrails.

“The main breakthrough for us was realizing that this had to be dynamic and iterative,” Naphade said. “If you look at how a lot of people are using LLMs, they’re slapping the LLMs as a front end to the same mechanism that used to exist. They’re just using LLMs for classification of intent. But we realized from the beginning that that was not scalable.”

Taking cues from existing workflows

Based on their intuition of how human agents reason while responding to customers, researchers at Capital One developed  a framework in which  a team of expert AI agents, each with different expertise, come together and solve a problem.

Additionally, Capital One incorporated robust risk frameworks into the development of the agentic system. As a regulated institution, Naphade noted that in addition to its range of internal risk mitigation protocols and frameworks,”Within Capital One, to manage risk, other entities that are independent observe you, evaluate you, question you, audit you,” Naphade said. “We thought that was a good idea for us, to have an AI agent whose entire job was to evaluate what the first two agents do based on Capital One policies and rules.”

The evaluator determines whether the earlier agents were successful, and if not, rejects the plan and requests the planning agent to correct its results based on its judgement of where the problem was. This happens in an iterative process until the appropriate plan is reached. It’s also proven to be a huge boon to the company’s agentic AI approach.

“The evaluator agent is … where we bring a world model. That’s where we simulate what happens if a series of actions were to be actually executed. That kind of rigor, which we need because we are a regulated enterprise – I think that’s actually putting us on a great sustainable and robust trajectory. I expect a lot of enterprises will eventually go to that point.”

The technical challenges of agentic AI

Agentic systems need to work with fulfillment systems across the organization, all with a variety of permissions. Invoking tools and APIs within a variety of contexts while maintaining high accuracy was also challenging — from disambiguating user intent to generating and executing a reliable plan.

“We have multiple iterations of experimentation, testing, evaluation, human-in-the-loop, all the right guardrails that need to happen before we can actually come into the market with something like this,” Naphade said. “But one of the biggest challenges was we didn’t have any precedent. We couldn’t go and say, oh, somebody else did it this way. How did that work out? There was that element of novelty. We were doing it for the first time.”

Model selection and partnering with NVIDIA

In terms of models, Capital One is keenly tracking academic and industry research, presenting at conferences and staying abreast of what’s state of the art. In the present use case, they used open-weights models, rather than closed, because that allowed them significant customization. That’s critical to them, Naphade asserts, because competitive advantage in AI strategy relies on proprietary data.

In the technology stack itself, they use a combination of tools, including in-house technology, open-source tool chains, and NVIDIA inference stack. Working closely with NVIDIA has helped Capital One get the performance they need, and collaborate on industry-specific  opportunities in NVIDIA’s library, and prioritize features for the Triton server and their TensoRT LLM.

Agentic AI: Looking ahead

Capital One continues to deploy, scale, and refine AI agents across their business. Their first multi-agentic workflow was Chat Concierge, deployed through the company’s auto business. It was designed to support both auto dealers and customers with the car-buying process.  And with rich customer data, dealers are identifying serious leads, which has improved their customer engagement metrics significantly — up to 55% in some cases.

“They’re able to generate much better serious leads through this natural, easier, 24/7 agent working for them,” Naphade said. “We’d like to bring this capability to [more] of our customer-facing engagements. But we want to do it in a well-managed way. It’s a journey.”



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