Verda hits $100M revenue run rate as we build for the on-demand future of AI compute
Verda hits a $100M revenue run rate after 10x growth in 18 months, expanding AI cloud infrastructure for instant, on-demand compute across 50+ markets.
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Verda hits a $100M revenue run rate after 10x growth in 18 months, expanding AI cloud infrastructure for instant, on-demand compute across 50+ markets.
Verda hits a $100M revenue run rate after 10x growth in 18 months, expanding AI cloud infrastructure for instant, on-demand compute across 50+ markets.
May recap: NVIDIA Rubin deployment announced, first APAC office in Taipei, deepened Supermicro collaboration, MLSys 2026 and new research.
As an NVIDIA Preferred Partner, Verda brings first-availability NVIDIA Vera Rubin NVL72 & HGX™ Rubin NVL8 systems to three regions in parallel.
Step-by-step guide to writing an NVFP4 GEMM kernel for B200 in CuTeDSL: tiling, swizzling, block-scaled FP4 quantization, and a persistent 2-CTA pipeline.
April recap: $117M funding round, SOC 2 Type II compliance, Arm AGI CPU deployment, and a packed events calendar including PyTorch Conference Europe
Verda deploys the Arm AGI CPU across its next-gen AI infrastructure, paired with NVIDIA GB300 and the upcoming Vera Rubin fleet. Arm-native, built for agentic AI.
Verda raises $117M to accelerate product development and expand into new markets
Verda completes SOC 2 Type II audit, expanding its compliance coverage for AI workloads in regulated industries alongside ISO 27001, 27017, 27018, and 27701.
Verda partners with ExpressVPN to power ExpressAI using confidential computing. Learn about our joint R&D and secure GPU infrastructure.
March highlights from Verda: new data center in Sweden, platform updates, SkyPilot integration, new London office
A deep dive into NVFP4 on NVIDIA Blackwell, showing how microscaling and hardware-algorithm co-design make 4-bit floating point viable.
Verda is building a next-generation AI infrastructure hub in Sundsvall, Sweden, combining high-performance compute, sustainable energy, and advanced research to support Europe’s growing demand for AI and strengthen its sovereign AI future.
February highlights from Verda: NVIDIA Preferred Partner, Datacenter expansion plan, ISO/IEC Certificates, and more
Verda deploys NVIDIA GB300 NVL72, powered by Blackwell Ultra, in Europe. Virtualization tested with near bare-metal performance and frontier AI workloads.
Verda advances within the NVIDIA Partner Network (NPN) and becomes an NVIDIA Preferred Partner, as we build out sovereign AI infrastructure across Europe.
NVIDIA Blackwell Ultra (GB300) vs Blackwell (B200). Explore per-GPU specifications, NVL72 rack performance, Grace CPU unified memory, and NCCL test results.
January highlights from Verda
Step-by-step guide for DeepSeek-R1 NVFP4 inference with SGLang and Terraform, covering cloud B300 GPU provisioning, NVMe storage, and reproducible benchmarks.
Meta description: Manage compute and storage resources for AI workloads using Terraform with the official provider from Verda and OpenTofu compatibility.
December highlights from Verda including H200 Instant Clusters returning, ICE-01 migration, new sovereign AI ecosystems with Siili Solutions and SGLang, and our EurIPS side event in Copenhagen.
NVIDIA Blackwell and Blackwell Ultra on Verda: B200 and B300 SXM6 virtual machines with a pre-configured CUDA toolkit and the latest driver versions.
Verda and Siili Solutions have launched a strategic partnership to equip European enterprises and public-sector organizations easy access to sovereign AI models.
November was a high-momentum month for Verda, with rebrand progress, expanded GPU capacity, new pricing updates, and fresh collaborations. Catch all the highlights in our November Digest.
October was a milestone month for Verda with new hardware launches, product upgrades, events, and our rebrand from DataCrunch. Catch up on the highlights shaping the future of sustainable AI infrastructure in Europe.
Powered by 16x-128x NVIDIA B200 GPUs and InfiniBand interconnect, Instant Clusters by Verda (formerly DataCrunch) received the bronze ranking from SemiAnalysis.
DataCrunch is changing its name to Verda. Derived from the Spanish word for “true” and the Esperanto word for “green”, this name reinforces our values of technological integrity and sustainable innovation.
Join the Verda Developer Forum and Discord: two communities where AI engineers share knowledge, optimize GPUs, and collaborate on machine learning.
Performance implications and other differences between NVIDIA B300 and B200 GPUs based on the latest information available.
Verda (formerly DataCrunch) raises $64M in Series A to accelerate the ambition of becoming Europe's first AI hyperscaler, without compromising on sovereignty and sustainability.
Learn how we built and optimized our AI Cloud Platform for production-grade use cases and peak efficiency across compute, networking, storage, and software.
Discover how Happywhale revolutionized marine mammal research with AI-powered whale fluke (tail) and dorsal fin photo identification on DataCrunch
Discover how Simli powers life-like AI avatar API with DataCrunch’s GPU clusters and instances, achieving sub-300ms latency and up to 50% faster startup times.
Verda, working with the Republic of Latvia, has expressed interest to the European Commission to construct an AI GigaFactory. This proposal builds on Verda's expertise with high-performance and GPU infrastructure.
Benchmark insights on the unified memory in the NVIDIA GH200 Grace Hopper system: Testing asynchronous memory copies, a memory-bound GPU kernel, and cache flushing.
Step-by-step configuration and testing of multi-node distributed workloads using TorchTitan and by integrating with Pyxis and Enroot.
Cost-efficient and low-latency image generation without compromising on model output with high GPU utilization, elastic scaling, and near-zero cold starts.
Multi-Head Latent Attention (MLA) vs. Group Query Attention (GQA): Transformer inference optimization in DeepSeek V3 with lower KV cache and higher FLOPs/s.
How WaveSpeedAI and DataCrunch achieved an up to 6x faster image inference by optimizing FLUX-dev's latency and efficiency: NVIDIA B200 vs. H100 benchmark.
A comprehensive overview of optimization techniques applied by the SGLang team for DeepSeek-V3 inference with GitHub commits, benchmarks, and results.
Multi-Head Latent Attention (MLA) improves upon Group Query Attention (GQA), enabling long-context reasoning models and wider adoption across open-source LLMs.
## Datacenter-as-a-Computer (DaaC) and the Path to Global-DaaC for LLM Training Modern AI workloads, especially large language model (LLM) training, treat an entire data center as a single computer – a concept popularized by [Barroso et al. as "Datacenter as a Computer" (DaaC)](https://research...
A step-by-step guide for deploying and benchmarking DeepSeek-R1 on 8x H200 NVIDIA GPUs, using SGLang as the inference engine and DataCrunch.
Inference benchmark DeepSeek V3 SOTA LLM using single-node and multi-node NVIDIA H200 GPUs, BF16 and FP8 quantization, and SGLang.
DataCrunch announces the deployment of NVIDIA H200 GPUs in Finland, making it one of the first in Europe to offer this next-generation AI training and inference technology with unmatched performance and sustainability.
Verda (formerly DataCrunch) secures $13M to transform AI computing with affordable, high-performance, renewable energy-powered infrastructure across Europe.
In this article we compare options for deploying cloud GPU instances, including Google Cloud Platform, Amazon AWS, Microsoft Azure, and NeoClouds such as Nebius, Lambda, RunPod and CoreWeave