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LFM2.5-230M - Core ML (fp16)

License: Other Model Size Quantization Framework Context Length

A Core ML-optimized, 16-bit floating-point conversion of LiquidAI's LFM2.5-230M, designed for fast, on-device inference on Apple devices (iPhone, iPad, Mac). Retains full precision for maximum accuracy while enabling seamless integration with iOS/macOS apps via Core ML.


πŸ” Model Overview

Feature Details
Base Model LiquidAI/LFM2.5-230M-Base
Fine-tuned Model LiquidAI/LFM2.5-230M
Precision fp16 (16-bit floating point)
Framework Core ML (Apple's machine learning framework)
Architecture Lfm2ForCausalLM (Hybrid: 8Γ— Double-Gated LIV Convolution + 6Γ— Grouped-Query Attention)
Parameters 230M
Context Length 128,000 tokens
Vocabulary 65,536 tokens
License Other (Check LiquidAI for details)
Download Size ~1.06 GB (.mlpackage + .safetensors)

🎯 Capabilities

βœ… On-Device Inference – Optimized for Apple Silicon (iPhone, iPad, Mac) via Core ML. βœ… Blazing Fast – 213 tok/s on Galaxy S25 Ultra, 42 tok/s on Raspberry Pi 5 (LiquidAI benchmarks). βœ… Efficient Architecture – Hybrid convolution + attention layers for speed and accuracy. βœ… Long Context – 128K token context window (32K extension phase included in training). βœ… General-Purpose – Text-only model trained on 19T tokens with distillation, DPO, and RL. βœ… Agentic-Ready – Designed for agent workflows, automation, and edge deployment.


πŸ“Š Performance Highlights

Metric Value Notes
Parameters 230M Compact yet powerful.
Layers 14 8Γ— Convolution (LIV) + 6Γ— Grouped-Query Attention (GQA).
Hidden Size 1,024
Intermediate Size 2,560
Attention Heads 16 (8 KV heads) Grouped-Query Attention for efficiency.
Pre-training Tokens 19T Including 32K context extension phase.
Post-Training SFT + DPO + Multi-Domain RL Distilled from LFM2.5-350M for competitive performance.
Speed (Edge) 213 tok/s (S25 Ultra) 42 tok/s (Raspberry Pi 5).

πŸ’‘ Why LFM2.5?

  • Faster than SSM hybrids & Gated Delta Networks of similar size.
  • Runs everywhere: Cloud GPUs β†’ CPUs β†’ Mobile devices.
  • Day-one ecosystem support: llama.cpp, MLX, vLLM, SGLang, ONNX, Core ML.

πŸš€ Quick Start


🍎 1. Use in iOS/macOS Apps (Core ML)

Prerequisites

  • Xcode 15+
  • macOS 14+ / iOS 17+
  • Core ML framework

Step 1: Download the Model

git lfs install
git clone https://huggingface.co/code-and-canvas/lfm2.5-230m-coreML-fp16
cd lfm2.5-230m-coreML-fp16

Step 2: Integrate into Xcode

  1. Drag model.mlpackage into your Xcode project.
  2. Ensure it's added to your target's "Build Phases" β†’ "Copy Bundle Resources".
  3. Import Core ML in your Swift code:
import CoreML

// Load the model
guard let modelURL = Bundle.main.url(forResource: "model", withExtension: "mlpackage") else {
    fatalError("Model file not found")
}

do {
    let model = try MLModel(contentsOf: modelURL)
    // Use the model for inference
    let input = try MLDictionaryFeatureProvider(dictionary: ["input": "Your prompt here"])
    let prediction = try model.prediction(from: input)
    // Handle output
} catch {
    print("Error loading model: \(error)")
}

Step 3: Use with coremltools (Python)

import coremltools as ct

# Load the model
model = ct.models.MLModel("model.mlpackage")

# Run inference
input_data = {"input": "What is the capital of France?"}
prediction = model.predict(input_data)
print(prediction)

🐍 2. Use with Transformers (Hugging Face Format)

The repository includes both Core ML and Hugging Face formats (hf_model/).

Install Dependencies

pip install transformers torch

Load and Run

from transformers import AutoModelForCausalLM, AutoTokenizer

model_id = "code-and-canvas/lfm2.5-230m-coreML-fp16"
tokenizer = AutoTokenizer.from_pretrained(model_id)
model = AutoModelForCausalLM.from_pretrained(
    model_id,
    device_map="auto",
    torch_dtype="auto"
)

# Generate text
inputs = tokenizer("Write a haiku about coding:", return_tensors="pt").to(model.device)
outputs = model.generate(**inputs, max_new_tokens=50)
print(tokenizer.decode(outputs[0], skip_special_tokens=True))

Streaming Generation

from transformers import TextStreamer

streamer = TextStreamer(tokenizer, skip_prompt=True, skip_special_tokens=True)
outputs = model.generate(**inputs, streamer=streamer, max_new_tokens=100)

3. Command Line (llama.cpp)

If you convert to GGUF:

# Example (requires GGUF conversion first)
llama-cli -m lfm2.5-230m-fp16.gguf -p "Explain quantum computing simply."

πŸ› οΈ Configuration

Model Architecture

Setting Value
Architecture Lfm2ForCausalLM
Layers 14 (8Γ— Conv + 6Γ— GQA)
Hidden Size 1,024
Intermediate Size 2,560
Attention Heads 16
Key-Value Heads 8
Vocabulary Size 65,536
Max Position Embeddings 128,000
ROPE Theta 1,000,000
Tie Word Embeddings True
Use Cache True

Generation Config (Default)

{
  "bos_token_id": 1,
  "eos_token_id": 7,
  "pad_token_id": 0,
  "do_sample": true,
  "temperature": 0.1,
  "top_k": 50,
  "repetition_penalty": 1.05,
  "use_cache": true
}

Special Tokens

Token Type ID
BOS 1
EOS 7
PAD 0

πŸ“ Files

File Description
model.mlpackage/ Core ML model (for iOS/macOS integration).
hf_model/config.json Hugging Face model configuration.
hf_model/generation_config.json Default generation parameters.
hf_model/model.safetensors Model weights in safetensors format (fp16).
hf_model/tokenizer.json Tokenizer configuration.
hf_model/tokenizer_config.json Tokenizer metadata.
model_config.json Core ML model configuration.

πŸ”§ Use Cases

βœ… Recommended

  • On-Device AI Apps – Deploy on iPhone, iPad, or Mac with Core ML.
  • Edge Deployment – Run on Raspberry Pi, Jetson, or low-power devices.
  • Agentic Workflows – Lightweight model for automation, chatbots, or tools.
  • Local Inference – Fast, private inference without cloud dependency.
  • Prototyping – Quickly test ideas offline or on-device.

⚠️ Considerations

Aspect LFM2.5-230M (fp16)
Size ~1.06 GB
Speed Very Fast (213 tok/s on high-end mobile)
Accuracy Competitive with larger models (thanks to distillation)
Context 128K tokens (long conversations, documents)
Multimodal ❌ Text-only
Fine-Tunable βœ… Yes (Hugging Face format included)

πŸ’‘ Why choose this over larger models?

  • Speed: Optimized for real-time on-device inference.
  • Size: Fits on mobile devices with limited storage.
  • Efficiency: Lower power consumption and memory usage.

πŸ”„ Training & Architecture Details

Base Model

Post-Training (LFM2.5-230M)

  1. Supervised Fine-Tuning (SFT) – Distilled from LFM2.5-350M.
  2. Direct Preference Optimization (DPO) – Alignment for quality.
  3. Multi-Domain Reinforcement Learning (RL) – Flexibility for downstream tasks.

Architecture (LFM2)

  • Hybrid Design: Combines convolution (LIV blocks) and attention (GQA).
  • Double-Gated LIV Convolution: 8 layers for efficient sequence processing.
  • Grouped-Query Attention (GQA): 6 layers for scalable attention.
  • Efficiency: Faster than SSM hybrids and Gated Delta Networks of similar size.

Core ML Conversion

  • Precision: fp16 (16-bit floating point) for balance of speed and accuracy.
  • Compatibility: Works on all Apple devices supporting Core ML.
  • Format: .mlpackage (modern Core ML bundle format).


πŸ“œ License

Other – Refer to LiquidAI's terms for usage rights. (Original LFM2.5 models may have specific licensing; verify before commercial use.)



πŸ™ Acknowledgments

  • Base Model: LiquidAI/LFM2.5-230M (Liquid AI).
  • Architecture: LFM2 (Hybrid convolution + attention).
  • Core ML: Apple Core ML framework.
  • Conversion: Powered by coremltools and Hugging Face ecosystem.


πŸ’¬ Example Prompts

General Q&A

What are the key differences between Python and JavaScript?

Coding

Write a Python function to reverse a linked list in-place.

Creative Writing

Write a short story about a robot discovering emotions.

Agentic Tasks

Act as a personal assistant. My calendar is empty tomorrow. Suggest 3 productive things I could do.

Long Context

Here's a 500-line Python script. Can you:
1. Summarize what it does.
2. Identify potential bugs.
3. Suggest improvements.
[Insert long script here...]


πŸ› Issues & Support



πŸ“š Additional Resources


πŸš€ Happy Building! Built with ❀️ by Code and Canvas.

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