en
Feedback
OceanProtocol News

OceanProtocol News

Open in Telegram

A decentralized data exchange protocol

Show more
3 095
Subscribers
-424 hours
-187 days
-5830 days
Posts Archive
Every World Cup cycle, the tournament gets bigger; this year's 48-team format nearly doubled the total matches from 2022 Compute scales the same way: more data, more parameters, more memory needed to hold it all. That's exactly what H200's 141GB of HBM3e is built for Run your next job from $2.16/hr: https://dashboard.oncompute.ai/run-job/environments https://x.com/ONcompute/status/2078126576638763238?s=20

The Singapore Court of Appeal has affirmed the Singapore High Court’s decision that confidentiality has been lost in relation to the emergency arbitration proceedings. The Court of Appeal upheld the High Court’s finding that having regard in large part to Fetch’s conduct, Fetch could not have reasonably believed that confidentiality continued to subsist. Following this decision, the interim orders preserving confidentiality pending the appeal have been discharged. Therefore, we republish the emergency arbitrator’s award here: https://x.com/oceanprotocol/status/2078017924061638907?s=46&t=sfyIS0XeZHZd-w68hBLkvw

Your AI agent can now run compute jobs on Ocean NetworkšŸ¤– šŸ”ŒConnect Claude, Cursor, ChatGPT, GitHub Copilot & more at our hos
Your AI agent can now run compute jobs on Ocean NetworkšŸ¤– šŸ”ŒConnect Claude, Cursor, ChatGPT, GitHub Copilot & more at our hosted MCP endpoint: mcp.oncompute.ai/mcp It can discover compute providers, write algorithms, launch jobs & manage storage using natural language https://x.com/oncompute/status/2077670789835293154

Need one H200 for just 20 minutes? That's what you pay for Most compute contracts make you pay for the biggest GPU config upfront, whether your job needs it for 10 minutes or 10 hours. Ocean Network lets you configure GPU/CPU type, RAM, Disk space, & time duration to run compute workloads on a pay-per-use basis Configure your exact job: https://dashboard.oncompute.ai/run-job/environments https://x.com/oncompute/status/2077431748234023383?s=46&t=sfyIS0XeZHZd-w68hBLkvw

Ideas are easy; shipping is what counts Build on NVIDIA H200s at $2.16/hr, launch your workload, and let the results speak for themselves. Claim 100 complimentary tokens and run your first job on Ocean Network: https://docs.oncompute.ai/ocean-network-dashboard/claim-your-compy-tokens https://x.com/oncompute/status/2077076155396714854?s=46&t=sfyIS0XeZHZd-w68hBLkvw

Full fine-tuning isn't the only way to adapt Llama 70B LoRA can achieve performance close to full fine-tuning while using a fraction of the GPU memory. QLoRA reduces memory requirements further, making some Llama 70B fine-tuning workloads feasible on a single high-memory GPU Ocean Network lets you choose the setup that fits your workload and pay only for the compute you actually use: https://dashboard.oncompute.ai/run-job/environments https://x.com/oncompute/status/2076705715184640141?s=46&t=sfyIS0XeZHZd-w68hBLkvw

We’re bringing @ONcompute to Pragma Lisbon 2026! šŸ‡µšŸ‡¹ Come find us at the booth and see how easy it is to access on-demand compute for your next AI project. We’ll tell you all about it over a couple of pastĆ©is https://x.com/oceanprotocol/status/2075574807316287873?s=46&t=sfyIS0XeZHZd-w68hBLkvw

The best fleets aren't owned. They're joined Every GPU on Ocean Network belongs to someone who decided to put it to use, instead of letting it sit idle Every node gets benchmarked, stress-tested, proven, before it touches your job That's what makes our fleet efficient Choose your node here: https://x.com/oceanprotocol/status/2074939163388895546?s=46&t=sfyIS0XeZHZd-w68hBLkvw

You don't pay for compute on Ocean Network. You pay for verified completion of computeāœ… Book an H200 for $2.16/hr and your budget is locked in escrow before the job starts Once the network verifies completion, only your exact runtime cost is released and the remaining funds are automatically refunded šŸ˜Ž Try it: https://dashboard.oncompute.ai/run-job/environments

Same GPU energy, different bill Started the day feeling like a superhero. By evening, felt like a cautionary tale, migrating servers at 2 AM while a rubber duck watched in silence Instead, get NVIDIA H200s on-demand at Ocean Network for just $2.16/hr, on a pay-per-use basis Access here: dashboard.oncompute.ai/run-job/enviro https://x.com/ONcompute/status/2072998359829242246?s=20

Most embedding workloads are batch jobs. Text goes in, vectors come out. Nothing about indexing millions of documents needs millisecond latency, yet many teams pay per-token APIs built around it. Instead, rent an NVIDIA H200 for $2.16/hr, run your embedding workload, & pay only for the compute you use: https://dashboard.oncompute.ai/run-job/environments https://x.com/ONcompute/status/2072700321621790884?s=20

Builders, settle a debate for us: what do you actually rent GPUs for? Vote below, we're curious where most of the real demand sits https://x.com/oceanprotocol/status/2072279120768110862

Claim 100 complimentary credits and start running jobs on top-tier NVIDIA GPUs. Spin up batch compute on H200s at $2.16/hr, on demand, and pay only for what you use. Get started: https://docs.oncompute.ai/ocean-network-dashboard/claim-your-compy-tokens https://x.com/oncompute/status/2072150699941802495

Opened the GPU bill. Closed the GPU bill. Sat in silence for a bit. The expensive part isn't always the compute. It's the capacity you reserve "just in case" and never fully use. With Ocean Network, you choose the GPU, RAM, CPU cores, and runtime your job actually needs. Billing is per minute, and if your job finishes early, the meter stops too. Configure it, run it, and compare the difference: https://dashboard.oncompute.ai/run-job/environments https://x.com/oncompute/status/2071863306441122174

We considered building a data center. Then we noticed everyone already had a GPU. Billions spent on land, power, and cooling, or we just ask the GPUs already sitting online if they're free. Submit the job on Ocean Network, pay for the compute you use, and get on with your day. https://x.com/oceanprotocol/status/2071517244341829793

Claim 100 complimentary credits to access top-tier NVIDIA GPUs. Use them to run batch compute jobs on @nvidia H200s at $2.16/hr, pay-per-use with on-demand access. Learn more: https://docs.oncompute.ai/ocean-network-dashboard/claim-your-compy-tokens https://x.com/ONcompute/status/2070430740047634880?s=20

Memory is the difference between a tool and a mind. An agent that forgets everything between jobs is starting from zero every time. Persistent storage on Ocean Network changes that. It learns once, writes to a bucket you own, and every job after picks up exactly where the last one stopped. Now let them share. Open one bucket to many agents through an on-chain access list. One plans. Others execute. The memory is common, the work divides itself. This is what an agent economy was waiting for. Agents that remember can specialize. Agents that share can coordinate. And all of it stays yours, on your terms. Try it here: https://docs.oncompute.ai/persistent-storage/quickstart

@everyone 10k compute jobs later, and the only queue is the one that doesn't exist. Turns out, when you skip the waitlist, th
@everyone 10k compute jobs later, and the only queue is the one that doesn't exist. Turns out, when you skip the waitlist, the sales call, & the enterprise pricing, work just gets done. And if you own GPUs, one of those next 10k jobs could run on your hardware: dashboard.oncompute.ai/run-node/setup https://x.com/oncompute/status/2069741407208681651?s=46&t=sfyIS0XeZHZd-w68hBLkvw

Forget provisioning. What if your training job spun up its own isolated container, ran on your selected GPUs, and tore down clean the moment it finished? Here is the flow: Open the Ocean Network Dashboard and pick the GPUs that match your specs. Lock the environment you want and take it straight to your IDE. Write your training job the way you already do, point it at the data, and dispatch. It runs sealed in its own container on the hardware you selected, the data never leaves where it lives, and you get the output back. The moment it finishes, the container tears down clean. Learn more about IDE-native GPU deployment: https://docs.oncompute.ai/ocean-orchestrator/using-ocean-orchestrator-with-ocean-dashboard

Stop waiting in line for compute. The hardware shortage was real. The access shortage was a choice. NVIDIA H200s are live on the Ocean Network Dashboard at $2.16/hr. You pay for what you run and nothing else https://x.com/oceanprotocol/status/2069106670664290795?s=46&t=sfyIS0XeZHZd-w68hBLkvw