Nomadicが自律走行車のデータ管理のために840万ドルを調達
企業のNomadicは、自律走行車両から流出する映像データを深層学習モデルで構造化・検索可能なデータセットに変換する技術を開発し、840万ドルの資金調達に成功した。
キーポイント
資金調達の成功
Nomadicが840万ドルの資金調達を実施し、事業拡大の基盤を整えた。
技術の核心
自律走行車両のロボットから取得した映像を、深層学習モデルを用いて構造化され検索可能なデータセットに変換する。
解決する課題
自律走行車両から大量に生成される非構造化データ(映像)の管理と活用の難しさに対処する。
提供価値
生の映像データを分析や開発に活用しやすい形式に変換し、自律走行技術の開発・改善を支援する。
影響分析・編集コメントを表示
影響分析
このニュースは、自律走行技術の発展においてデータ処理基盤の整備が重要な投資対象となっていることを示している。Nomadicの技術が普及すれば、車両から収集される膨大な映像データの活用効率が向上し、自律走行アルゴリズムの開発・訓練を加速させる可能性がある。
編集コメント
自律走行の実用化には、車両自体の開発だけでなく、生成データをどう処理・活用するかというデータ基盤の整備が不可欠である点を改めて認識させるニュース。技術的な詳細が少ないため、今後の具体的な進展に注目したい。
Nomadic、自律走行車からの映像データを管理するため840万ドルを調達
同社はロボットからの映像を、深層学習モデルを用いて構造化された検索可能なデータセットに変換する。
原文を表示
To build the autonomous machines of the future, sometimes your model needs a model.
Companies developing self-driving cars, robots manipulating the physical environment, or autonomous construction equipment collect thousands, if not millions, of hours of video data for evaluation and training.
Organizing and cataloging that video is now a job for humans, who have to watch all of it. Even fast-forwarding, that doesn’t scale. NomadicML, a startup founded by CEO Mustafa Bal and CTO Varun Krishnan, wants to solve problems for customers who have 95% of their fleet data sitting in archives.
The challenge becomes harder when looking for edge cases — the most valuable data depicts events that rarely occur and can befuddle inexperienced physical AI models.
Nomadic is working to solve that problem with a platform that turns footage into a structured, searchable dataset through a collection of vision language models. That, in turn, allows for better fleet monitoring and the creation of unique datasets for reinforcement learning and faster iteration.
The company announced an $8.4 million seed round Tuesday at a post-money valuation of $50 million. The round was led by TQ Ventures, with participation from Pear VC and Jeff Dean, and will allow the company to onboard more customers and continue refining its platform. Nomadic also won first prize at Nvidia GTC’s pitch contest last month.
The two founders, who met as Harvard computer science undergrads, “kept running into the same technical challenges again and again at our jobs” at companies like Lyft and Snowflake, Bal told TechCrunch.
Techcrunch event
San Francisco, CA
|
October 13-15, 2026
“We are providing folks insight on their own footage, whatever drives their own AVs [and] robots,” he said. ”That is what moves these autonomous systems builders forward, not random data.”
Imagine, for example, trying to fine-tune an AV’s understanding that it can run a red light if a police officer is directing it to do so, or isolating every time that vehicles drive under a specific type of bridge. Nomadic’s platform allows these incidents to be identified both for compliance purposes, and to be fed directly into training pipelines.
Customers like Mitsubishi Electric, Natix Network, and Zendar are already using the platform to develop intelligent machines. Antonio Puglielli, the VP of Engineering at Zendar, said that Nomadic’s tool allowed the company to scale up its work much faster than the alternative of outsourcing, and that its domain expertise set it apart from other competitors.
This kind of model-based, auto-annotation tool is emerging as a key workflow for physical AI. Established data labeling firms like Scale, Kognic, and Encord are developing AI tools to do this work, while Nvidia has released a family of open source models, Alpamayo, that can be adapted to tackle the problem.
Varun argues that his company’s tool is more than a labeler; it is an “agentic reasoning system: you describe what it needs and it figures out how to find it,” using multiple models to understand action taking place and put it in context. Nomadic’s backers expect the startup’s focus on this specific infrastructure to win out.
“It’s the same reason Salesforce doesn’t build its own cloud and Netflix doesn’t build its own [content distribution facilities],” Schuster Tanger, a partner at TQ Ventures who led the round, told TechCrunch. “The second an autonomous vehicle company tries to build Nomadic internally, they’re distracted from what makes them win, which is the robot itself.”
Tanger praises Nomadic’s talent, noting that Krishnan is an international chess master ranked as the world’s 1,549th-best player. Krishnan, meanwhile, brags that all of the company’s dozen or so engineers have published scientific papers.
Now, they’re hard at work developing specific tools, like one that understands the physics of lane changes from camera footage, or another that derives more precise locations for a robot’s grippers in a video. The next challenge, from the point of view of Nomadic and its customers, is to develop similar tools for non-visual data like lidar sensor readings, or to integrate sensor data across multiple modes.
“Juggling around terabytes of video, slamming that against hundreds of 100 billion-plus parameter models, and then extracting their accurate insights, is really insanely difficult,” Bal said.
Tim Fernholz is a journalist who writes about technology, finance and public policy. He has closely covered the rise of the private space industry and is the author of Rocket Billionaires: Elon Musk, Jeff Bezos and the New Space Race. Formerly, he was a senior reporter at Quartz, the global business news site, for more than a decade, and began his career as a political reporter in Washington, D.C.
You can contact or verify outreach from Tim by emailing tim.fernholz@techcrunch.com or via an encrypted message to tim_fernholz.21 on Signal.
View Bio
関連記事
今日のまとめ
AI日報で今日の重要ニュースをまとめ読み