Thanks for the feedback! Our primary focus is charging by energy, for token pricing we really just try to be close to the market. That being said I'll take a look at our token pricing to see if we need an update there https://portal.neuralwatt.com/energy-pricing Generally our users get much lower cost on energy than token pricing though on a typical request with a high prefix cache hit the input, cached costs is very small and the output energy cost is higher.
We definitely don't have any intention to obfuscate and in fact we actually try and provide more data than any other provider out there about both an individual request, as well as the fleet behavior. Since we tend to focus directly on our energy pricing and optimizing that the issue is likely where the ROI lies on energy optimization versus token optimization (totally correlated but we have other levers to reduce energy while keeping token counts the same).
Hi I'm the CTO of neuralwatt, would love to hear your feedback on what your experience was. Feel free to email me [email protected]. Also for GLM5.2 we run the FP8 quantization at 1M context which is a common deployment target.
I use glm5.1 plus pi with a few customized skills and am very happy with it. I hadn’t touched my Claude 5x plan for a couple of weeks but opened it back up in Claude code when fable was released and did a few tasks and still was happy to return to glm/pi.
Pretty cool idea, but whats the stack behind this? As 15-25 tok/s seems a bit low as expected SoA for most providers is around 60 tok/s and quality of life dramatically improves above that.
I use OpenCode and have just started using Nanoclaw with ClaudeCode (my coworker has a post coming on this) and sometimes ClaudeCode with Claude Code Router.
I do a range of small to complex work with these but I also do drop back in to Claude Opus for some really complex things where I want it to be more autonomous.
I switch between Claude Code (Opus/Sonnet) and Qwen (OpenCode, OpenClaw) multiple times throughout the day and Qwen 3.5 is really nice. I do also use KimiK2.5 and GLM5 pretty often too and I'm starting to get a sense that the agent tool is becoming a little more important than the model with these level of models. As long as tool calling and prompt quality is all configured correctly by the provider.
I actually built this analysis while I worked at Microsoft so I 100% agree. Doing the work at the platform level is the way to go and you can actually make a significant impact with this kind of approach.
The other value of this that's not obvious is that doing it client side ends up touching all the grids/generators in the world outside of the market based accounting that tends to drive the datacenter carbon impact analysis.
There have been a few questions about the state of Show HN lately. Was actually interested in this post but I see all the OPs responses to questions are Dead? I do see its a new account but I don't really see anything egregious or against policy for these.
That is a pretty good article although the one factor not mentioned that we see that has a huge impact on energy is batch size but that would be hard to estimate with the data he has.
We've only launched to friends and family but I'll share this here since its relevant: we have a service which actually optimizes and measures the energy of your AI use: https://portal.neuralwatt.com if you want to check it out. We also have a tools repo we put together that shows some demonstrations of surfacing energy metadata in to your tools: https://github.com/neuralwatt/neuralwatt-tools/
Our underlying technology is really about OS level energy optimization and datacenter grid flexibility so if you are on the pay by KWHr plan you get additional value as we continue to roll new optimizations out.
DM me with your email and I'd be happy to add some additional credits to you.
Neuralwatt | https://neuralwatt.com | REMOTE (US – Seattle/Denver/Boulder metros only) | Full-time | $180k–$220k DOE
Energy is the #1 constraint in new datacenter buildouts. Neuralwatt is reshaping AI compute around energy efficiency to maximize revenue per kilowatt. We’re a VC-backed, early-stage startup building optimization tools for AI, HPC, and datacenter workloads.
We're hiring 2 experienced founding engineers to help architect our core systems and work directly with customers.
What you'll do:
Technically: Architect critical datacenter infrastructure - Write Rust and Python - Measure real-world energy impact - Design state-of-the-art AI-led optimizations
Non-technically: Help build the business and win customers - Present at conferences - Develop marketing and company materials
Requirements:
- 5–10+ years of software development experience
- Thrive in ambiguous, outcome-driven environments
- Experience working closely with customers
- Clear communication and strong leadership
- Familiarity with LLM/AI infrastructure
Location: Remote-first, but we meet regularly in Seattle/Denver metro areas.
To apply: Email: [email protected] Subject: HN Hiring Include: - Resume - GitHub profile - A short note on why you're interested.
Please note: At this time, we are unable to offer visa sponsorship.
We definitely don't have any intention to obfuscate and in fact we actually try and provide more data than any other provider out there about both an individual request, as well as the fleet behavior. Since we tend to focus directly on our energy pricing and optimizing that the issue is likely where the ROI lies on energy optimization versus token optimization (totally correlated but we have other levers to reduce energy while keeping token counts the same).