AI Fieldcraft
FM-02 · LOCAL OPERATIONS / APPLE SILICONLAST VERIFIED 2026-07 · FREE ISSUE

Ollama on a Mac: The Complete Field Manual

Purpose. Configure a Mac as a serious local-AI machine: what Apple Silicon can actually run, the exact settings that prevent the two most common failures, and how to serve models to your whole network.

Section 1 — Why the Mac is a privileged platform

1-1.Unified memory is the whole story. On a PC, a model must fit in the GPU's VRAM — and consumer cards top out around 24 GB. On Apple Silicon, CPU and GPU share one pool of unified memory, and the GPU can address most of it. A 64 GB MacBook is, for local AI purposes, a ~48 GB "GPU" — a capacity that costs multiples more to assemble from discrete cards. This is why Mac Studios are quietly everywhere in the local-AI community.

1-2.The trade. Macs have huge memory but lower raw compute than big NVIDIA cards. Practical effect: Macs excel at running large models at conversational speed; NVIDIA excels at serving many parallel requests fast. For one operator or a small team, the Mac trade is usually the right one.

Section 2 — Installation

2-1.Install and verify. Metal GPU acceleration is automatic — there is nothing to configure.

brew install ollama            # or the app from ollama.com (adds menu bar control)
ollama --version
ollama run llama3.2:3b "Reply with the single word READY."
READY

2-2.Where things live. Models are stored under ~/.ollama/models. They are large — a 70B model at Q4 is ~40 GB on disk. Keep 100+ GB free if you intend to collect.

Section 3 — The model-by-memory table

3-1.The fit rule. At the standard Q4_K_M quantization, budget roughly 0.6–0.7 GB of memory per billion parameters, then leave headroom for the context window and macOS itself (assume the OS wants 6–8 GB). A model that doesn't fit will still "run" — by swapping to SSD at unusable speed. Fit beats size, always.

Unified memoryComfortable classIssue these firstRealistic use
8 GB3–4Bllama3.2:3b, qwen3:4b, gemma3:4bDrafting, summarization, light agents; keep other apps closed
16 GB7–14Bqwen3:8b, llama3.1:8b, gemma3:12b, phi4:14bDaily assistant, capable agents, coding help
32 GB24–32Bqwen3:32b, gemma3:27b, qwen2.5-coder:32b, mistral-smallSerious coding agents, strong reasoning, RAG
64 GB70B-classllama3.3:70b, deepseek-r1:70bNear-frontier quality; the sweet spot for professionals
128 GB+70B high-quant / 100B+ MoE70B at Q8; large mixture-of-experts releasesTeam server, maximum-quality local inference

Model names move fast; the memory classes don't. When a new model drops, ask one question: how many GB is the quant, and does it fit with headroom? Current picks per task: FM-05.

Section 4 — The two settings that fix most Mac problems

4-1.Context length (the silent killer). Ollama defaults to a small context window. Long chats, agents, and RAG silently truncate — the model "forgets" your earlier instructions and loops or contradicts itself, and no error is shown. Raise it:

# per-server (recommended). Persist via launchctl or the app's settings:
OLLAMA_CONTEXT_LENGTH=16384 ollama serve

# or per-request in the API: options: {"num_ctx": 16384}

Cost: context eats memory (rough order: gigabytes at long contexts, varies by model architecture). If a bigger context makes the model swap, use a smaller model with a bigger window — for agent work, that trade is nearly always correct.

4-2.Keep-alive (the cold-start fix). Ollama unloads idle models after ~5 minutes; the next request pays a multi-second reload. If the Mac is a dedicated AI machine:

OLLAMA_KEEP_ALIVE=24h ollama serve    # or "-1" to pin the model in memory

Section 5 — Serving your network (the Mac-as-AI-server pattern)

5-1.One Mac, every device. A single capable Mac can serve models to your laptop, phone apps, and editor plugins. Bind Ollama to all interfaces:

OLLAMA_HOST=0.0.0.0 ollama serve
# other devices now use: http://<mac-ip>:11434  (OpenAI-compatible endpoint: /v1)
Warning

0.0.0.0 exposes the API to everyone on the network, unauthenticated. Do this on a trusted LAN only, or put a reverse proxy with auth in front. Never port-forward 11434 to the internet.

5-2.What plugs in. Anything that speaks the OpenAI API format: VS Code agents (Cline, Continue), Open WebUI for a ChatGPT-style interface, and the agent loop from FM-01 pointed at the Mac's IP.

Section 6 — When to use MLX instead

6-1. MLX is Apple's own ML framework; MLX-format models (via LM Studio or mlx-lm) are often meaningfully faster on Apple Silicon than the same model in Ollama, at the cost of a smaller catalog and less tooling. Doctrine: start on Ollama for the ecosystem; if a model you run constantly exists in MLX format, benchmark it — free speed is free speed. LM Studio runs both formats and is the easiest way to test.

Section 7 — Common failures

SymptomCauseFix
Tokens crawl; fans roar; Mac stuttersModel + context exceed memory → SSD swapSmaller model or lower quant. Watch memory pressure in Activity Monitor while loaded.
Agent forgets instructions / loopsDefault context window truncatingOLLAMA_CONTEXT_LENGTH=16384 (§4-1)
First request each session is slowModel unloaded after idleOLLAMA_KEEP_ALIVE=24h (§4-2)
Other devices can't reach the MacOllama bound to localhost onlyOLLAMA_HOST=0.0.0.0 (§5-1) + firewall allow
Disk mysteriously fullModel collection under ~/.ollamaollama list then ollama rm <model>

Section 8 — FAQ

Why are Macs good for local AI?
Unified memory: the GPU can address nearly all system RAM, so a 64 GB Mac behaves like a ~48 GB GPU — capacity that costs far more with discrete cards.
What size model can my Mac run?
At Q4: ~0.6–0.7 GB per billion parameters plus headroom. 16 GB → up to ~14B comfortably; 32 GB → 30B-class; 64 GB → 70B-class.
Is 8 GB enough?
For 3–4B models, yes — genuinely useful for drafting and light agents. It is a starter kit, not a workshop.
Ollama or LM Studio?
Ollama for scriptability, serving, and ecosystem; LM Studio for a GUI and easy MLX testing. Many operators run both.
Cross-references

Build your first agent on this setup: FM-01. Choosing exact models: FM-05. Whether to buy more Mac or rent cloud: FM-04.

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