スタートアップGimlet Labs、驚くほど洗練された方法でAI推論のボトルネックを解決
スタートアップGimlet Labsは、NVIDIA、AMD、Intel、ARM、Cerebras、d-Matrixのチップを同時に活用してAI推論のボトルネックを解決する技術に対し、8000万ドルのシリーズA資金調達を実施した。
キーポイント
大規模資金調達
Gimlet LabsはAI推論ボトルネック解決技術に対して8000万ドルのシリーズA資金調達を実施し、事業拡大の基盤を築いた。
ハードウェア非依存のAI推論
同社の技術はNVIDIA、AMD、Intel、ARM、Cerebras、d-Matrixなど複数ベンダーのチップを同時に活用できる点が特徴的である。
AI推論ボトルネック解決
AIモデルの推論(推論実行)における計算リソースの制約という業界課題に対して、革新的なアプローチを提供している。
業界横断的インパクト
複数チップベンダーを同時サポートする技術は、AIインフラの柔軟性向上とベンダーロックインの軽減に寄与する可能性がある。
影響分析・編集コメントを表示
影響分析
この技術はAIインフラのベンダーロックイン問題を軽減し、企業が複数チップを柔軟に活用できる環境を提供する。AI推論の効率化とコスト削減に寄与することで、AI応用の普及加速に貢献する可能性が高い。
編集コメント
AIインフラのベンダーロックイン問題に正面から取り組む画期的なアプローチ。大規模資金調達と実用性の高さから、業界に与えるインパクトは大きいと評価できる。
Gimlet Labsは、AIをNVIDIA、AMD、Intel、ARM、Cerebras、d-Matrixの各チップ上で同時に実行可能にする技術に対し、8000万ドルのシリーズA資金調達を実施したばかりです。
原文を表示
Stanford adjunct professor and successfully exited founder Zain Asgar just raised an $80 million Series A for a startup that solve the AI inference bottleneck problem in an astute way. The round was led by Menlo Ventures.
The company, Gimlet Labs, has created what it claims is the first and only “multi-silicon inference cloud” which is software that allows an AI workload to be simultaneously run across diverse types of hardware. It can split an AI app’s work across both traditional CPUs and AI-tuned GPUs, as well as high-memory systems.
“We basically run across whatever different hardware that’s available,” Asgar told TechCrunch.
A single agent may chain together multiple steps, and each “requires different hardware: Inference is compute-bound; decode is memory-bound; and tool calls are network-bound,” writes lead investor, Menlo’s Tim Tully, in a blog post about the funding.
No chip yet does it all, but as new hardware gets rolled out, and aging GPUs get redeployed, “the multi-silicon fleet is ready — it’s just missing the software layer to make it work.” That’s what Tully believes Gimlet Labs offers.
If the current deploy-more-compute trend continues, McKinsey estimates data center spending will tally nearly $7 trillion by 2030. Asgar says that apps are only using the existing hardware already deployed “somewhere between 15 to 30 percent” of the time.
“Another way to think about this: you’re wasting hundreds of billions of dollars because you’re just leaving idle resources,” he said. “Our goal was basically to try to figure out how you can get AI workloads to be 10x more efficient than ever, today.”
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So he and his cofounders, Michelle Nguyen, Omid Azizi, and Natalie Serrino, set about building orchestration software that slices up agentic workloads so that they can be simultaneous spread across all kinds of hardware.
Gimlet Labs claims it reliably speeds AI inference up by 3x to 10x for the same cost and power. Gimlet says it can even slice the underlying model so that it runs across different architectures, using the best chip for each portion of the model.
The company has already partnered with chip makers NVIDIA, AMD, Intel, ARM, Cerebras and d-Matrix.
Gimlet’s product, delivered either as software or through an API to its own Gimlet Cloud, isn’t for the rank-and-file AI app developer. It’s for the largest AI model labs and data centers.
The company publicly launched in October with, it said, eight-figure revenues out of the gate (so at least $10 million). Asgar said that his customer base has more than doubled in the last four months and now includes a major model maker and an extremely large cloud computing company, although he declined to name them.
The cofounders had previously worked together at Pixie, a startup that created an open source observability tool for Kubernetes. Pixie was acquired by New Relic in 2020, just two months after it launched with a $9 million Series A led by Benchmark. (Pixie’s tech is now part of the open source org that oversees Kubernetes.)
After Asgar randomly ran into Tully about a year ago and also received angel investments from Stanford professors, VCs started calling. After launch, a term sheet landed on Asgar’s desk. When VCs heard Asgar was looking at offers, “we got a pretty big swarm of funding,” and the round was quickly oversubscribed, he said.
With the previous seed, the startup has now raised a total of $92 million, including from a slew of angels like Sequoia’s Bill Coughran, Stanford Professor Nick McKeown, former CEO of VMware Raghu Raghuram and Intel CEO Lip-Bu Tan. The company currently employs 30 people.
Other investors include Factory, who led the seed, Eclipse Ventures, Prosperity7 and Triatomic.
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