국내 최대 제조사, 로봇 데이터의 TSMC '컨피그(Config)' 재도약

TechCrunch | | 📰 뉴스
#b2b #lg전자 #가전 #기타 ai #물리적 ai #하드웨어/반도체
원문 출처: TechCrunch · Genesis Park에서 요약 및 분석

요약

아시아 제조국의 생산 역량을 기반으로 물리적 AI 분야가 성장하는 가운데, 로봇 기초 모델의 데이터 레이어를 구축하는 스타트업 컨피그가 삼성벤처인베스트먼트 등 국내 주요 제조사의 투자를 유치했습니다. 이번 시리즈 라운드는 2,700만 달러 규모로 초과 청약되었으며, 기업 가치는 2억 달러 이상으로 평가되었습니다. 현대차, LG, SK 등의 벤처투자사와 미래에셋 등 금융 투자사가 전략적 투자자로 합류했습니다.

본문

Asia’s push into physical AI is being fueled by the same manufacturing prowess that made the region a global industrial powerhouse. Across South Korea, Japan, China and Taiwan, manufacturing remains a central pillar of economic growth. Unlike economies more heavily weighted toward services or software, these countries have long relied on large-scale production, export-driven industries, and highly optimized supply chains. That structural foundation is now shaping how artificial intelligence is adopted and where investment flows. Which makes it particularly significant that Config, a Seoul- and San Jose- based startup building the data layer for robotic foundation models (RFMs), has secured backing from the venture arms’ of South Korea’s biggest manufacturers. Samsung Venture Investment led its oversubscribed $27 million seed round at a valuation of more than $200 million, bringing Config’s total raised to $35 million. Hyundai Motor’s venture arm ZER01NE Ventures, LG Tech Ventures, and SKT America, a South Korean telco giant’s VC unit, also joined as strategic investors, alongside angel investor Pieter Abbeel (co-founder of Covariant AI and a UC Berkeley professor) and financial backers including Mirae Asset Ventures, Korea Development Bank, GS Futures, Kakao Ventures, and Z Ventures. Config was founded in January 2025 by CEO Minjoon Seo, a former researcher at Meta and chief scientist at Twelve Labs, along with three co-founders with backgrounds at Waymo, Google and Naver. Instead of building robots themselves, the team is focused on a simpler goal, providing data robots need to learn and operate. They believe that better data will be key to making robots more useful. Training large language models is expensive, because of the computing power required to process them, but the raw material, vast amounts of text from across the internet, is easy to obtain. Teaching robots to move is a completely different challenge, Seo said in an exclusive interview with TechCrunch. Every piece of training data has to be physically collected, like you need the robot, the facility to run it, and people to operate it. That makes robotics AI more costly to develop than software-only chatbot, according to the Seo. As companies pursue more capable robots, the cost of gathering and labeling data can rise quickly. Config wants to be the company that makes everyone else’s robot AI possible. The startup compares its role to TSMC, a Taiwanese chipmaker that manufactures for Apple, Nvidia, and AMD without competing with any of them. Config aims to play a similar role in robotics by supplying the data. The approach is gaining traction as large manufacturers increasingly seek to build their own proprietary robot AI instead of relying entirely on outside vendors. That is the market Config is betting on. Config is already generating revenue, COO and co-founder of Config Jack Bang said. The startup’s current customers include large manufacturers, system integrators, and companies in the agriculture and defense sectors, Bang told TechCrunch. Peers in the space include Physical Intelligence, Generalist AI and Skild AI. This Week Only: Buy one pass, get the second at 50% off Your next round. Your next hire. Your next breakout opportunity. Find it at TechCrunch Disrupt 2026, where 10,000+ founders, investors, and tech leaders gather for three days of 250+ tactical sessions, powerful introductions, and market-defining innovation. Register before May 8 to bring a +1 at half the cost. This Week Only: Buy one pass, get the second at 50% off Your next round. Your next hire. Your next breakout opportunity. Find it at TechCrunch Disrupt 2026, where 10,000+ founders, investors, and tech leaders gather for three days of 250+ tactical sessions, powerful introductions, and market-defining innovation. Register before May 8 to bring a +1 at half the cost. Config records humans performing physical tasks in controlled studio environments and in the field. The startup operates out of Seoul and Hanoi, where a workforce of nearly 300 handles data production. To date, it has accumulated over 100,000 hours of human motion data, more than 30 times the size of AgiBot World, the largest comparable open-source dataset at roughly 3,000 hours. Most robotics teams train AI models on human motion data and then adapt those models for a robot. Config is taking a different approach, Seo said. The company focuses on transforming the data before training begins so it is better suited to the way robots move and interact with the world. Seo compared the process to language translation. Training a model on one type of data and expecting it to work seamlessly in another setting, Seo said, is trying to teach Korean using only English-language materials. “The data must be converted, not the model. This conversion technology is Config’s core technical differentiator,” Seo said. The funding will go toward three priorities: scaling its data operation in Vietnam and Seoul toward one million hours of collected data, growing its enterprise platform business to $10 million in ARR by the end of 2027, and launching a cloud-based Robot-as-a-Service product that lets companies run Config’s foundation model without requiring onboard hardware.

Genesis Park 편집팀이 AI를 활용하여 작성한 분석입니다. 원문은 출처 링크를 통해 확인할 수 있습니다.

공유

관련 저널 읽기

전체 보기 →