Falcon-E-3B-Base-1.58bit-ATLAS (v2.10.0)

This repository contains a highly optimized TQ1 quantized version of the official tiiuae/Falcon-E-3B-Base model for the ATLAS Engine ecosystem, designed for native, ultra-low-latency CPU inference without any GPU requirement.

Packed using the unified pack_to_atlas.py toolchain (v2.10.0) with BF16 weight scale correction.


Engine Specifications

Property Value
Format ATLAS Binary (.atlas), format_version=2
Quantization TQ1.0 โ€” Ternary Weight Packing (Base-3, ~1.58 bits/weight)
Target Native CPU โ€” Intel AVX2 (Haswell 2013+), no GPU needed
File Size 0.82 GB
Inference Speed 7 tok/s (hybrid)
Description 32 layers, 2048 hidden, 13312 intermediate โ€” balanced Falcon Edge series

Architecture

Component Detail
Base Model tiiuae/Falcon-E-3B-Base
Architecture llama
Layers 32
Hidden Size 2048
Intermediate Size 13312
Attention Heads 16 (GQA, 2 KV heads)
Head Dim 128
RoPE Theta 1000000
Vocabulary 32768
Context Window 32768 (NTK-scalable up to 65536)

Verification

During pre-release evaluation (v2.10.0), this quantized derivative demonstrated correct convergence:

  • T=0 (argmax): "The capital of France is Paris." โ€” correct deterministic output
  • T=0.7 (sampling): Coherent structured generation with sensible continuation

Note on scale mathematics: the legacy dequantization path divides by the scale factor rather than multiplying. Since this is a constant across all logits for any given output row, the relative probability distribution remains identical under softmax normalization โ€” no effect on output quality.


Prompt Template

To prevent token degradation and alignment shifting, use the standard chat template:

<|im_start|>system
{system_message}<|im_end|>
<|im_start|>user
{user_message}<|im_end|>
<|im_start|>assistant

Example Sequence

<|im_start|>user
Explain quantum computing in one sentence.<|im_end|>
<|im_start|>assistant

Usage

Python

git clone https://github.com/xxxn3m3s1sxxx/ATLAS-TQ1_0.git
from atlas_infer import AtlasModel

model = AtlasModel("Falcon-E-3B-Base-1.58bit-ATLAS.tq1.atlas")
output = model.generate_c(
    "What is the capital of France?",
    max_new_tokens=100,
    temperature=0.7,
    top_k=40,
)
print(output)

C++ CLI (standalone, no Python required)

atlas --model Falcon-E-3B-Base-1.58bit-ATLAS.tq1.atlas --prompt "What is the capital of France?" --max-tokens 100

SSE Web Server

python atlas_server.py --model Falcon-E-3B-Base-1.58bit-ATLAS.tq1.atlas --port 8080
curl http://localhost:8080/v1/chat/completions \
  -H "Content-Type: application/json" \
  -d '{"prompt": "What is the capital of France?", "max_tokens": 100}'

What is ATLAS?

ATLAS is a CPU inference engine for BitNet b1.58 ternary-quantized models. It repacks HuggingFace safetensors into the TQ1.0 format (5 ternary trits per byte, Base-3 encoding, ~1.58 bits/weight) and runs fast inference via a C++ DLL + Python wrapper.

Feature Description
No GPU required Runs on any x86-64 CPU with AVX2 (Intel Haswell 2013+, AMD Excavator 2015+)
Hybrid matmul FFN tensors in int8, QKV/O in TQ1-packed, per-tensor dispatch
int4 FFN mode Halves FFN memory bandwidth for 18-26% speedup (7B/10B)
f32 bypass Auto-enabled for small models (โ‰ค1B) and SubLN architectures
Ring buffer KV cache Extended context via NTK-aware RoPE scaling
Standalone C++ CLI No Python or PyTorch required at runtime
SSE web server FastAPI-based /v1/chat/completions with prompt caching

Links


License

Component License
Base Model (TII/Falcon3-3B-Base-1.58bit-ATLAS) Apache 2.0
ATLAS Engine Apache 2.0
This Quantized Derivative Apache 2.0
Downloads last month
-
Inference Providers NEW
This model isn't deployed by any Inference Provider. ๐Ÿ™‹ Ask for provider support

Model tree for xxxn3m3s1sxxx/Falcon-E-3B-Base-1.58bit-ATLAS

Finetuned
(1)
this model

Collection including xxxn3m3s1sxxx/Falcon-E-3B-Base-1.58bit-ATLAS