Files
claudetools/.claude/OLLAMA.md
Mike Swanson 97f93dd6d7 docs: fix broken markdown tables in OLLAMA.md
The qwen3:8b routing update inserted footnote lines mid-table in both
the "What Ollama owns" and "When to Use Which Model" sections, splitting
each table in half so renderers treated the qwen3.6 rows as paragraph
text. Moved footnotes below the closing table row in both places.

Also updated the bottom "Rule of thumb" line: previously named qwen3:14b
with a "2x faster" claim that's now stale on DESKTOP-0O8A1RL where 8b is
the prose model. Generalized to "the per-machine prose model".

Co-Authored-By: Claude Opus 4.7 (1M context) <noreply@anthropic.com>
2026-05-16 16:54:20 -07:00

10 KiB

Ollama — Local AI Reference

Ollama runs on Mike's workstation (DESKTOP-0O8A1RL) with GPU acceleration. Available to all team members via Tailscale.

Models

Model Size Use For
qwen3.6:latest 23 GB Strict-format work: JSON/structured extraction, classification, per-item rules, redaction, word-limited summaries, adherence-critical drafting. 36B MoE.
qwen3:14b 9.3 GB Bulk prose on machines with >16 GB VRAM: session log narrative, commit bodies, client notes, free-text handoffs.
qwen3:8b 5.2 GB Bulk prose on DESKTOP-0O8A1RL (12 GB VRAM). Same role as qwen3:14b but fits fully in VRAM on that machine.
codestral:22b 12 GB Code generation, refactoring suggestions, docstrings
nomic-embed-text 274 MB Embeddings only (used by GrepAI)

Routing basis

Quality routing: 16-prompt benchmark on 2026-05-16 (benchmark_qwen_3_6.py in repo root). qwen3.6 scored 15/16 vs qwen3:14b 11/16 and qwen3:32b 12/16. 3.6 won every strict-format and adherence test. Known regression: 3.6 missed one small reasoning prompt — re-validate when qwen3.7 lands. qwen3:32b dominated on every axis; not in rotation.

Speed routing: benchmarked 2026-05-16 on DESKTOP-0O8A1RL (RTX 5070 Ti Laptop, 12 GB VRAM):

Model VRAM fit Tok/s (this machine) Tok/s (full-VRAM ref)
qwen3:8b 100% (10.9/10.9 GB) 74-86 ~90
qwen3:14b 73% (11.3/15.6 GB) 17-18 ~66
qwen3.6 41% (11.3/27.5 GB) 17-19 ~32

qwen3:14b and qwen3.6 are CPU-bottlenecked on this machine (split mode, PCIe bandwidth limited). qwen3:8b fits entirely in VRAM and is 4.8x faster than qwen3:14b here.

Machine-specific prose model

Machine GPU VRAM Prose model
DESKTOP-0O8A1RL 12 GB (RTX 5070 Ti Laptop) qwen3:8b
Mikes-MacBook-Air unified memory qwen3:14b
HOWARD-HOME local Ollama qwen3:14b
Other Tailscale fallback qwen3:14b

Endpoints

Auto-detect: any machine that has a local Ollama listening on 127.0.0.1:11434 uses local. Otherwise fall back to Mike's workstation over Tailscale.

# Preferred universal resolver — works on any machine
if curl -s -m 2 http://localhost:11434/api/tags >/dev/null 2>&1; then
    OLLAMA="http://localhost:11434"
else
    OLLAMA="http://100.92.127.64:11434"
fi

Rationale:

  • Mike's workstation (DESKTOP-0O8A1RL): local matches, no change.
  • HOWARD-HOME: also has a local Ollama with the canonical model set (confirmed 2026-04-22). Uses local — faster, zero Tailscale hop, no load on Mike's GPU.
  • Other team machines: no local Ollama → falls back to Mike's over Tailscale.
  • Mike's machine offline: graceful degradation — local users continue working; non-local users get a clean timeout.

Manual override (for testing or explicit preference): set OLLAMA=http://100.92.127.64:11434 before the call.

Check reachability:

curl -s $OLLAMA/api/tags | jq -r '.models[].name'

If neither endpoint responds: verify Tailscale (tailscale status) and whether your local Ollama service is running.

Access Control

  • Port 11434 allowed ONLY from Tailscale subnet (100.0.0.0/8)
  • NOT exposed to LAN, VPN, or internet
  • Binding: OLLAMA_HOST=0.0.0.0:11434 (firewall restricts)

Calling Ollama

Use the /api/chat endpoint with think:false for qwen3 models. The older /api/generate endpoint on qwen3 puts output into thinking tokens that don't appear in the response field — you'll get an empty response if you use /api/generate.

Preferred one-liner:

python -c "
import urllib.request, json, sys, os
OLLAMA = os.environ.get('OLLAMA') or ('http://localhost:11434' if __import__('urllib.request').request.urlopen(urllib.request.Request('http://localhost:11434/api/tags'),timeout=2) else 'http://100.92.127.64:11434')
body = json.dumps({
  'model':'qwen3:14b',
  'messages':[{'role':'user','content': sys.argv[1]}],
  'stream':False,
  'think':False
}).encode()
res = json.loads(urllib.request.urlopen(urllib.request.Request(OLLAMA+'/api/chat', body), timeout=120).read())
print(res['message']['content'])
" "Your prompt here"

Or set $OLLAMA once from bash (see auto-detect formula above) and reuse it across calls.

For code suggestions, swap qwen3:14b for codestral:22b. Codestral doesn't need think:false.

Cold-start is ~30-50s on first call per model per session. Warm calls are 1-5s.

Documentation Engine

Ollama is the default documentation engine for all prose output. Any time stored text needs to be generated — session logs, commit messages, ticket comments, client notes, code docs — route it through Ollama first. Claude reviews, corrects if needed, then writes or posts.

This keeps Claude tokens focused on reasoning, decisions, and execution. Ollama handles the writing.

What Ollama owns

Output Model Claude's role
Session log narrative (summary, decisions, problems) qwen3:14b / qwen3:8b* Review + assemble with factual sections
Commit message body qwen3:14b / qwen3:8b* Review + execute git commit
Syncro comment bodies + billing descriptions qwen3:14b / qwen3:8b* Review checklist + post via API
Ticket initial issue / description text qwen3:14b / qwen3:8b* Review + post
Client-facing notes and summaries qwen3:14b / qwen3:8b* Review for accuracy
Agent phase handoff summaries (explore → plan, plan → implement) qwen3:14b / qwen3:8b* Review + include in agent brief
Client email drafts qwen3:14b / qwen3:8b* Review for accuracy + tone before sending
Ticket / issue classification (priority, type, category) qwen3.6 Review + apply label
Diff summarization before commit qwen3.6 Review + use in commit message
Error message categorization (transient / config / bug) qwen3.6 Review + act on classification
Structured data extraction (JSON, fields, tags) qwen3.6 Review + use programmatically
PII redaction in logs/transcripts qwen3.6 Review before publishing
Strict word-limit summaries (e.g. ticket subject, alert text) qwen3.6 Review + use
Multi-step / per-item rule application on lists qwen3.6 Review + use
Code comments and docstrings codestral:22b Review before applying
Refactor suggestions codestral:22b Review before applying

* Use qwen3:8b on DESKTOP-0O8A1RL — 4.8x faster than 14b there due to full VRAM fit. Use qwen3:14b on all other machines.

What Claude always owns (never Ollama)

  • Credentials, passwords, API keys — must be verbatim accurate
  • Infrastructure details, IPs, hostnames — must be verbatim accurate
  • Command outputs and error messages — verbatim from actual output
  • Security decisions, auth review, production migrations
  • Final field values on API payloads (rates, IDs, quantities)

GrepAI config (re-apply on new machines)

.grepai/ is gitignored (90 MB index + machine-specific timestamps). After running grepai init on a new machine, apply these overrides to .grepai/config.yaml:

Remove the .md penalty (markdown is primary content here, not docs noise):

# DELETE this block:
- pattern: .md
  factor: 0.6

Add these bonuses under search.boost.bonuses:

- pattern: session-logs/
  factor: 1.3
- pattern: .claude/
  factor: 1.2
- pattern: /clients/
  factor: 1.1

Start watcher + register scheduled task:

D:/claudetools/grepai.exe watch --background
# Then in PowerShell (admin not required):
$action = New-ScheduledTaskAction -Execute "D:\claudetools\grepai.exe" -Argument "watch --background" -WorkingDirectory "D:\claudetools"
$trigger = New-ScheduledTaskTrigger -AtLogOn -User $env:USERNAME
$settings = New-ScheduledTaskSettingsSet -ExecutionTimeLimit (New-TimeSpan -Hours 0) -MultipleInstances IgnoreNew
Register-ScheduledTask -TaskName "GrepAI Watcher - claudetools" -Action $action -Trigger $trigger -Settings $settings -Force

Warm-start and GrepAI

GrepAI uses nomic-embed-text for context lookups, which keeps the Ollama service running continuously. The 30-50s service cold-start is effectively eliminated in normal workflow. qwen3:14b may take ~5s to swap into VRAM if it hasn't been called recently, but that's the worst case — not 50s.

If the first Ollama call of a session needs to be fast, send a throwaway warm-up ping:

py -c "
import urllib.request, json
body = json.dumps({'model':'qwen3:14b','messages':[{'role':'user','content':'ok'}],'stream':False,'think':False}).encode()
urllib.request.urlopen(urllib.request.Request('$OLLAMA/api/chat', body), timeout=60).read()
print('warm')
"

When to Use Which Model

Task Model
Session log narrative sections qwen3:8b* / qwen3:14b
Commit message body qwen3:8b* / qwen3:14b
Ticket / client comment drafting qwen3:8b* / qwen3:14b
Summarize logs, diffs, incident notes (no length cap) qwen3:8b* / qwen3:14b
Agent phase handoff summaries qwen3:8b* / qwen3:14b
Client email drafts qwen3:8b* / qwen3:14b
Classify bug type, severity, category, priority qwen3.6
Extract structured data from text (JSON, fields) qwen3.6
Diff summarization with strict format / fields qwen3.6
Error categorization (transient / config / bug / permission) qwen3.6
PII redaction, output preserving format qwen3.6
Strict word-limit summaries (subject lines, alerts) qwen3.6
Multi-step rule application across lists qwen3.6
Untrusted input that may contain prompt injection qwen3.6
Code comment / docstring generation codestral:22b
Refactor suggestions codestral:22b

* On DESKTOP-0O8A1RL only — 4.8x faster (86 tok/s vs 18 tok/s). Use qwen3:14b on all other machines.

Rule of thumb: if the output is prose someone will read, use the per-machine prose model (qwen3:8b on DESKTOP-0O8A1RL, qwen3:14b elsewhere). If the output is structured data something will parse or must obey a tight format, use qwen3.6.

Review Policy

  • Documentation output (session logs, commit messages, comments) — Claude reviews before writing/posting
  • Code suggestions from codestral — always review before applying
  • Never use Ollama for: credentials, auth decisions, production migrations, security review, API payload field values