LLM·Dex
Rank · #1 of 7Open weightsOn-Device LLMs

Phi-4 for on-device llms

Phi-4 is the #1 pick on LLMDex's on-device llms ranking out of 7 models we track for this use case. Below, the specific reasons it slots where it does, and when you should reach for an alternative.

Updated


At a glance

Rank
#1 of 7
Context
16K tokens
Output / 1M
Pricing not published
Released
Dec 2024

Why Phi-4 fits this task

Three things about Phi-4 that map directly onto what this task rewards: Exceptional quality at 14B parameters; MIT license, clean commercial use. Beyond the task-specific fit, Phi-4 also brings strong on math, both of which compound when the workload broadens.

The criteria this task rewards

LLMDex ranks best on-device llms on 5 criteria , these are the axes the ranking uses, in priority order:

  • Performance under 8B parameters
  • Quantization tolerance (int4, int8)
  • Memory footprint after quantization
  • Inference speed on Apple Silicon / mobile NPUs
  • License permissiveness for commercial use

How Phi-4 scores on each axis

Where Phi-4 costs you: short 16k context. For most teams this is acceptable on this workload, the value of the strengths above outweighs the cost. For cost-bound workloads or teams with strict latency budgets, run an eval against the next two ranked models on real data before committing.

Strengths that pay off here

  • Exceptional quality at 14B parameters
  • MIT license, clean commercial use
  • Strong on math

Tracked weaknesses

  • Short 16k context
  • No vision

When to pick something else

If you have a binding constraint that Phi-4 doesn't satisfy, pricing, license, regional availability, modality coverage, the next-best pick on this task is Phi-3.5 Medium from Microsoft. 14B Phi-3.5, predecessor to Phi-4 with strong benchmark efficiency for its size.

Try it

Run Phi-4 now

Skip setup. Deploy via a hosted provider in under a minute.

Other models for on-device llms

Phi-4 for other use cases

Direct comparisons

Frequently asked

  • Is Phi-4 good for on-device llms?
    Phi-4 is ranked #1 on LLMDex's on-device llms list. Microsoft's 14B model, exceptional quality-per-parameter via curated synthetic training data.
  • How much does Phi-4 cost for on-device llms?
    Microsoft has not published per-token pricing for Phi-4 at the time of writing.
  • What's a cheaper alternative to Phi-4 for on-device llms?
    The next ranked model on this task is Phi-3.5 Medium. Compare both before committing.
  • When should I NOT use Phi-4 for on-device llms?
    Tracked weakness: Short 16k context. If that constraint is binding for your workload, the next-ranked model on this task is the safer pick.
Friday digest

Intelligence, distilled weekly.

One short email every Friday, new model launches, leaderboard moves, and pricing drops. Curated by hand. Free, no spam.