[bmdpat]

THE 5090 REPORTS

Vol. 01 / NashvilleMeasured 2026-07-09Controlled compute weekly

§ 001 / Lead entry

Local-first AI systems for builders running open models on controlled compute.

I publish benchmark rows, failure logs, and build notes for open models running on controlled compute. AgentGuard stays available for budget, loop, timeout, and rate limits. This journal starts from an RTX 5090 workstation in Nashville, but the entries hold for local rigs, rented accelerators, private cloud, and GPU-backed clusters.

Measured benchmark rows from the 2026-07-09 sweep
ModelQuantWorkloadGen tok/sPrompt tok/sPeak VRAM
llama3.1:8bQ4_K_Mshort-gen-256228.96797.2 GB
llama3.1:8bQ4_K_Mlong-context-summarize206.712,1097.8 GB
llama3.1:8bQ4_K_Magent-code-task-512227.81,0287.8 GB
gemma4:26bQ4_K_Mshort-gen-256198.815 (cold)19.9 GB
gemma4:26bQ4_K_Mlong-context-summarize180.26,17920.2 GB
gemma4:26bQ4_K_Magent-code-task-512207.419720.2 GB
Fig. 1 Six measured rows on the RTX 5090 workstation, Ollama 0.31.1, temperature 0. Headline: llama3.1:8b Q4_K_M at 228.9 tok/s generation, measured 2026-07-09.Raw artifact

Changing num_ctx between requests forces a full model reload. On a 26B that is 140 seconds per swap. Pin your context size.

Field note, 2026-07-09

Every entry carries the model, quant, prompt, hardware, and result. Failed runs stay in the record: the June timeout that preceded this sweep is still published beside it. The archive is the proof surface for local-first work on controlled compute.

Read the 5090 Reports

§ 002 / Instrumentation note

Runtime guardrails

AgentGuard stays in the stack when a run needs budget, loop, timeout, or rate limits before it touches real work. Every experiment in this journal runs behind it.

$ pip install agentguard47Open AgentGuard docs
OPERATING LOOP

One person. Small tools. Agent-assisted ops.

01

Run

Execute the open-model path on controlled compute.

02

Measure

Record tokens, latency, VRAM, cost, and failure mode.

03

Publish

Turn the result into a report, tool, or guarded SDK path.

§ 004 / Subscription desk

Get the journal by email.

Weekly entries from controlled compute: benchmark rows, failure logs, VRAM fit checks, and the tools that fall out of repeated local AI work. No spam, one click out.

Get the local AI lab notes

Benchmark rows, VRAM fit checks, quant choices, and what actually runs on consumer GPUs. M-F, only when there is something worth sending.