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URL: https://willitrunai.com/can-run/codestral-2-25.08-on-m3-24gb


Can Codestral 2 25.08 run on MacBook Pro M3 24GB?

BARELY — Tight on Memory

B69Good
Estimated from fit model

Codestral 2 25.08 needs ~19.4 GB VRAM. MacBook Pro M3 24GB has 17.3 GB. With Q4_K_M quantization, expect ~4 tok/s.

Runtime: llama.cppCapacity: OffloadBandwidth: Very lowStack: StandardBottleneck: Host offload
Share:

Operating mode

Choose the run profile you care about

Interactive favors responsiveness, while light API and scale-out lean harder on serving readiness. The fit stays the same, but the recommendation lens changes.

Current mode

Balanced

Balanced for general local use. Keeps the ranking neutral across personal and serving workflows.

Capabilities:

Select quantization to explore

Q4_K_M (Medium quality) — 19.4 GB, 4.3 tok/s, Very compromised (needs ~1.4 GB host RAM)
19.4 GB required17.3 GB available
112% VRAM needed

2.1 GB over capacity — needs offload or smaller quantization

Fit status

Very compromised (needs ~1.4 GB host RAM)

Decode

4.3 tok/s

TTFT

45417 ms

Safe context

4K

Memory

19.4 GB / 17.3 GB

Offload

10%

Memory breakdown

Weights13.4 GB
KV Cache2.4 GB
Runtime0.9 GB
Headroom2.6 GB

See how fast it feels

See how fast it feelsCodestral 2 25.08 on MacBook Pro M3 24GB
1st promptCold start — includes initialization
>Write a Python function to sort a list
Here's a Python function that sorts a list using quicksort: def quicksort(arr): if len(arr) <= 1: return arr pivot = arr[len(arr) // 2] left = [x for x in arr if x < pivot] middle = [x for x in arr if x == pivot] right = [x for x in arr if x > pivot] return quicksort(left) + middle + quicksort(right) # Example usage numbers = [3, 6, 8, 10, 1, 2, 1] print(quicksort(numbers)) # [1, 1, 2, 3, 6, 8, 10] The algorithm picks a pivot, partitions the list into smaller, equal, and larger elements, then recursively sorts each partition and concatenates the results.
2nd promptWarm — model ready, no init overhead
>Now add type hints and a docstring
def quicksort(arr: list[int]) -> list[int]: """Sort a list using the quicksort algorithm. Args: arr: List of integers to sort. Returns: A new sorted list. """ if len(arr) <= 1: return arr pivot = arr[len(arr) // 2] left = [x for x in arr if x < pivot] middle = [x for x in arr if x == pivot] right = [x for x in arr if x > pivot] return quicksort(left) + middle + quicksort(right) Added type hints for the input and return type, plus a Google-style docstring.
Estimated: 4.3 tok/s decode · 45.4s TTFT (warm) · 11 tok/s prefill

What limits this setup

It fits through host-memory offload, and offload is the main reason performance drops.

CPU or host-memory offload is active

About 10% of the working set spills out of accelerator memory, which usually hurts latency and sustained decode throughput.

Very little memory headroom

You can run the model, but there is not much room left for longer context, bigger batches, extra apps, or future model updates.

Shared-memory contention still exists

The OS, browser, and inference runtime all compete for the same physical memory pool, so real-world headroom is less forgiving than raw capacity suggests.

Best improvement path

Remove offload with more accelerator memory

Prioritize a GPU or unified-memory tier that fits the whole model natively. Removing offload usually helps more than small compute gains.

Buy headroom, not only minimum fit

A slightly larger memory tier gives you safer context growth and makes the recommendation more future-proof.

Increase host RAM if you keep offloading

This setup may need roughly 1.4 GB of extra host RAM just for the offloaded portion, before OS and other tools.

Performance by workload

WorkloadGradeFitDecodeTTFTContext
ChatARuns with offload (needs ~0.6 GB host RAM)4.7 tok/s22581 ms4K
CodingBVery compromised (needs ~1.4 GB host RAM)4.3 tok/s45417 ms4K
Agentic CodingFToo heavy3.7 tok/s76791 ms4K
ReasoningBVery compromised (needs ~1.4 GB host RAM)4.3 tok/s53674 ms4K
RAGFToo heavy3.7 tok/s95989 ms

Quantization options

How Codestral 2 25.08 (22B params) fits at each quantization level on MacBook Pro M3 24GB (17.3 GB usable).

QuantBitsVRAMQualityFit
Q2_K
2
8.6 GB
LowS85
Q3_K_S
3
10.8 GB
LowS85
NVFP4Best for your GPU

Get started

Copy-paste commands to run Codestral 2 25.08 on your machine.

Run

lms load codestral-2508 && lms server start

Upgrade options

Hardware that runs Codestral 2 25.08 well

MacBook Pro M4 32GBBudget pick
32 GB Unified (+8)120 GB/s (+20)
A
Removes host-memory offload, which is usually the single biggest latency and throughput win.9.1 tok/s decode

Removes host-memory offload, which is usually the single biggest latency and throughput win.

Raises estimated decode speed by about 112%.

~$799 MSRP

Mac mini M4 32GBBest value
32 GB Unified (+8)120 GB/s (+20)
A
Removes host-memory offload, which is usually the single biggest latency and throughput win.9.1 tok/s decode

Removes host-memory offload, which is usually the single biggest latency and throughput win.

Raises estimated decode speed by about 112%.

~$1,099 MSRP

Mac mini M4 64GBApple upgrade
64 GB Unified (+40)120 GB/s (+20)
A
Removes host-memory offload, which is usually the single biggest latency and throughput win.9.1 tok/s decode

Removes host-memory offload, which is usually the single biggest latency and throughput win.

Raises estimated decode speed by about 112%.

~$1,099 MSRP

👁 NVIDIA
RTX 5090 Laptop 24GBBiggest leap
896 GB/s (+796)
S
Removes host-memory offload, which is usually the single biggest latency and throughput win.53.8 tok/s decode

Removes host-memory offload, which is usually the single biggest latency and throughput win.

Raises estimated decode speed by about 1151%.

Frequently asked questions

See all results for MacBook Pro M3 24GBSee all hardware for Codestral 2 25.08
4K
4
12.3 GB
Medium
A85
Q4_K_M
4
13.4 GB
MediumF0
Q5_K_M
5
15.8 GB
HighF0
Q6_K
6
18.0 GB
HighF0
Q8_0
8
23.5 GB
Very HighF0
F16
16
45.1 GB
MaximumF0

Remove offload with more accelerator memory. Prioritize a GPU or unified-memory tier that fits the whole model natively. Removing offload usually helps more than small compute gains.