惯性聚合 高效追踪和阅读你感兴趣的博客、新闻、科技资讯
阅读原文 在惯性聚合中打开

推荐订阅源

月光博客
月光博客
L
LangChain Blog
Jina AI
Jina AI
WordPress大学
WordPress大学
人人都是产品经理
人人都是产品经理
S
Secure Thoughts
T
The Exploit Database - CXSecurity.com
钛媒体:引领未来商业与生活新知
钛媒体:引领未来商业与生活新知
博客园 - 聂微东
小众软件
小众软件
Apple Machine Learning Research
Apple Machine Learning Research
C
Cyber Attacks, Cyber Crime and Cyber Security
Project Zero
Project Zero
T
Threat Research - Cisco Blogs
量子位
G
GRAHAM CLULEY
腾讯CDC
让小产品的独立变现更简单 - ezindie.com
让小产品的独立变现更简单 - ezindie.com
C
CERT Recently Published Vulnerability Notes
The Hacker News
The Hacker News
C
Cisco Blogs
Scott Helme
Scott Helme
Spread Privacy
Spread Privacy
宝玉的分享
宝玉的分享
V
V2EX
博客园 - 三生石上(FineUI控件)
T
Tor Project blog
P
Proofpoint News Feed
雷峰网
雷峰网
D
Darknet – Hacking Tools, Hacker News & Cyber Security
V
Vulnerabilities – Threatpost
PCI Perspectives
PCI Perspectives
博客园_首页
L
LINUX DO - 最新话题
IT之家
IT之家
有赞技术团队
有赞技术团队
博客园 - Franky
Hacker News: Ask HN
Hacker News: Ask HN
Last Week in AI
Last Week in AI
The Cloudflare Blog
Exploit-DB.com RSS Feed
Exploit-DB.com RSS Feed
freeCodeCamp Programming Tutorials: Python, JavaScript, Git & More
美团技术团队
博客园 - 【当耐特】
OSCHINA 社区最新新闻
OSCHINA 社区最新新闻
Security Archives - TechRepublic
Security Archives - TechRepublic
L
LINUX DO - 热门话题
AWS News Blog
AWS News Blog
S
Security Affairs
T
Tailwind CSS Blog

MarkTechPost

A Coding Implementation of End-to-End Brain Decoding from MEG Signals Using NeuralSet and Deep Learning for Predicting Linguistic Features Meta Introduces Autodata: An Agentic Framework That Turns AI Models into Autonomous Data Scientists for High-Quality Training Data Creation A Coding Guide on LLM Post Training with TRL from Supervised Fine Tuning to DPO and GRPO Reasoning Qwen AI Releases Qwen-Scope: An Open-Source Sparse AutoEncoders (SAE) Suite That Turns LLM Internal Features into Practical Development Tools A Coding Deep Dive into Agentic UI, Generative UI, State Synchronization, and Interrupt-Driven Approval Flows Moonshot AI Open-Sources FlashKDA: CUTLASS Kernels for Kimi Delta Attention with Variable-Length Batching and H20 Benchmarks Microsoft Research’s World-R1 Uses Flow-GRPO and 3D-Aware Rewards to Inject Geometric Consistency Into Wan 2.1 Without Architectural Changes A Coding Implementation on Pyright Type Checking Covering Generics, Protocols, Strict Mode, Type Narrowing, and Modern Python Typing IBM Releases Two Granite Speech 4.1 2B Models: Autoregressive ASR with Translation and Non-Autoregressive Editing for Fast Inference Top 10 KV Cache Compression Techniques for LLM Inference: Reducing Memory Overhead Across Eviction, Quantization, and Low-Rank Methods Qwen Team Releases FlashQLA: a High-Performance Linear Attention Kernel Library That Achieves Up to 3× Speedup on NVIDIA Hopper GPUs Step by Step Guide to Build a Complete PII Detection and Redaction Pipeline with OpenAI Privacy Filter Meta FAIR Releases NeuralSet: A Python Package for Neuro-AI That Supports fMRI, M/EEG, Spikes, and HuggingFace Embeddings smol-audio: A Colab-Friendly Notebook Collection for Fine-Tuning Whisper, Parakeet, Voxtral, Granite Speech, and Audio Flamingo 3 A Coding Implementation on Document Parsing Benchmarking with LlamaIndex ParseBench Using Python, Hugging Face, and Evaluation Metrics Poolside AI Introduces Laguna XS.2 and M.1: Agentic Coding Models Reaching 68.2% and 72.5% on SWE-bench Verified How to Build Traceable and Evaluated LLM Workflows Using Promptflow, Prompty, and OpenAI OpenAI Releases Privacy Filter: A 1.5B-Parameter Open-Source PII Redaction Model with 50M Active Parameters Top 10 Physical AI Models Powering Real-World Robots in 2026 How to Build a Lightweight Vision-Language-Action-Inspired Embodied Agent with Latent World Modeling and Model Predictive Control Meet Talkie-1930: A 13B Open-Weight LLM Trained on Pre-1931 English Text for Historical Reasoning and Generalization Research Build a Reinforcement Learning Powered Agent that Learns to Retrieve Relevant Long-Term Memories for Accurate LLM Question Answering OpenMOSS Releases MOSS-Audio: An Open-Source Foundation Model for Speech, Sound, Music, and Time-Aware Audio Reasoning Meta AI Releases Sapiens2: A High-Resolution Human-Centric Vision Model for Pose, Segmentation, Normals, Pointmap, and Albedo The LoRA Assumption That Breaks in Production How to Build a Fully Searchable AI Knowledge Base with OpenKB, OpenRouter, and Llama How to Build Smarter Multilingual Text Wrapping with BudouX Through Parsing, HTML Rendering, Model Introspection, and Toy Training Top 7 Benchmarks That Actually Matter for Agentic Reasoning in Large Language Models RAG Without Vectors: How PageIndex Retrieves by Reasoning A Coding Tutorial on Datashader on Rendering Massive Datasets with High-Performance Python Visual Analytics xAI Launches grok-voice-think-fast-1.0: Topping τ-voice Bench at 67.3%, Outperforming Gemini, GPT Realtime, and More A Coding Implementation on kvcached for Elastic KV Cache Memory, Bursty LLM Serving, and Multi-Model GPU Sharing Google DeepMind Introduces Vision Banana: An Instruction-Tuned Image Generator That Beats SAM 3 on Segmentation and Depth Anything V3 on Metric Depth Estimation Meet GitNexus: An Open-Source MCP-Native Knowledge Graph Engine That Gives Claude Code and Cursor Full Codebase Structural Awareness A Coding Implementation on Deepgram Python SDK for Transcription, Text-to-Speech, Async Audio Processing, and Text Intelligence A Coding Implementation on Microsoft’s OpenMementos with Trace Structure Analysis, Context Compression, and Fine-Tuning Data Preparation DeepSeek AI Releases DeepSeek-V4: Compressed Sparse Attention and Heavily Compressed Attention Enable One-Million-Token Contexts Google DeepMind Introduces Decoupled DiLoCo: An Asynchronous Training Architecture Achieving 88% Goodput Under High Hardware Failure Rates Mend Releases AI Security Governance Framework: Covering Asset Inventory, Risk Tiering, AI Supply Chain Security, and Maturity Model Mend.io Releases AI Security Governance Framework Covering Asset Inventory, Risk Tiering, AI Supply Chain Security, and Maturity Model OpenAI Releases GPT-5.5, a Fully Retrained Agentic Model That Scores 82.7% on Terminal-Bench 2.0 and 84.9% on GDPval A Coding Tutorial on OpenMythos on Recurrent-Depth Transformers with Depth Extrapolation, Adaptive Computation, and Mixture-of-Experts Routing Google Cloud AI Research Introduces ReasoningBank: A Memory Framework that Distills Reasoning Strategies from Agent Successes and Failures Xiaomi Releases MiMo-V2.5-Pro and MiMo-V2.5: Matching Frontier Model Benchmarks at Significantly Lower Token Cost How to Design a Production-Grade CAMEL Multi-Agent System with Planning, Tool Use, Self-Consistency, and Critique-Driven Refinement Alibaba Qwen Team Releases Qwen3.6-27B: A Dense Open-Weight Model Outperforming 397B MoE on Agentic Coding Benchmarks A Detailed Implementation on Equinox with JAX Native Modules, Filtered Transforms, Stateful Layers, and End-to-End Training Workflows Next Leap to Harness Engineering: JiuwenClaw Pioneers ‘Coordination Engineering’ Photon Releases Spectrum: An Open-Source TypeScript Framework that Deploys AI Agents Directly to iMessage, WhatsApp, and Telegram OpenAI Open-Sources Euphony: A Browser-Based Visualization Tool for Harmony Chat Data and Codex Session Logs Hugging Face Releases ml-intern: An Open-Source AI Agent that Automates the LLM Post-Training Workflow A Coding Implementation to Build a Conditional Bayesian Hyperparameter Optimization Pipeline with Hyperopt, TPE, and Early Stopping Google Introduces Simula: A Reasoning-First Framework for Generating Controllable, Scalable Synthetic Datasets Across Specialized AI Domains A Coding Implementation on Qwen 3.6-35B-A3B Covering Multimodal Inference, Thinking Control, Tool Calling, MoE Routing, RAG, and Session Persistence Moonshot AI Releases Kimi K2.6 with Long-Horizon Coding, Agent Swarm Scaling to 300 Sub-Agents and 4,000 Coordinated Steps A Coding Implementation on Microsoft’s Phi-4-Mini for Quantized Inference Reasoning Tool Use RAG and LoRA Fine-Tuning OpenAI Scales Trusted Access for Cyber Defense With GPT-5.4-Cyber: a Fine-Tuned Model Built for Verified Security Defenders Moonshot AI and Tsinghua Researchers Propose PrfaaS: A Cross-Datacenter KVCache Architecture that Rethinks How LLMs are Served at Scale Meet OpenMythos: An Open-Source PyTorch Reconstruction of Claude Mythos Where 770M Parameters Match a 1.3B Transformer How TabPFN Leverages In-Context Learning to Achieve Superior Accuracy on Tabular Datasets Compared to Random Forest and CatBoost A Coding Implementation to Build an AI-Powered File Type Detection and Security Analysis Pipeline with Magika and OpenAI NVIDIA Releases Ising: the First Open Quantum AI Model Family for Hybrid Quantum-Classical Systems xAI Launches Standalone Grok Speech-to-Text and Text-to-Speech APIs, Targeting Enterprise Voice Developers A Coding Tutorial for Running PrismML Bonsai 1-Bit LLM on CUDA with GGUF, Benchmarking, Chat, JSON, and RAG A Coding Guide for Property-Based Testing Using Hypothesis with Stateful, Differential, and Metamorphic Test Design Anthropic Releases Claude Opus 4.7: A Major Upgrade for Agentic Coding, High-Resolution Vision, and Long-Horizon Autonomous Tasks Google AI Releases Auto-Diagnose: An Large Language Model LLM-Based System to Diagnose Integration Test Failures at Scale A End-to-End Coding Guide to Running OpenAI GPT-OSS Open-Weight Models with Advanced Inference Workflows Top 19 AI Red Teaming Tools (2026): Secure Your ML Models A Coding Guide to Build a Production-Grade Background Task Processing System Using Huey with SQLite, Scheduling, Retries, Pipelines, and Concurrency Control Qwen Team Open-Sources Qwen3.6-35B-A3B: A Sparse MoE Vision-Language Model with 3B Active Parameters and Agentic Coding Capabilities OpenAI Launches GPT-Rosalind: Its First Life Sciences AI Model Built to Accelerate Drug Discovery and Genomics Research Building Transformer-Based NQS for Frustrated Spin Systems with NetKet UCSD and Together AI Research Introduces Parcae: A Stable Architecture for Looped Language Models That Achieves the Quality of a Transformer Twice the Size How to Build a Universal Long-Term Memory Layer for AI Agents Using Mem0 and OpenAI A Coding Implementation to Build Multi-Agent AI Systems with SmolAgents Using Code Execution, Tool Calling, and Dynamic Orchestration A Technical Deep Dive into the Essential Stages of Modern Large Language Model Training, Alignment, and Deployment Google AI Launches Gemini 3.1 Flash TTS: A New Benchmark in Expressive and Controllable AI Voice Google DeepMind Releases Gemini Robotics-ER 1.6: Bringing Enhanced Embodied Reasoning and Instrument Reading to Physical AI Google Launches ‘Skills’ in Chrome: Turning Reusable AI Prompts into One-Click Browser Workflows A Coding Implementation of Crawl4AI for Web Crawling, Markdown Generation, JavaScript Execution, and LLM-Based Structured Extraction TinyFish AI Releases Full Web Infrastructure Platform for AI Agents: Search, Fetch, Browser, and Agent Under One API Key NVIDIA and the University of Maryland Researchers Released Audio Flamingo Next (AF-Next): A Super Powerful and Open Large Audio-Language Model A Hands-On Coding Tutorial for Microsoft VibeVoice Covering Speaker-Aware ASR, Real-Time TTS, and Speech-to-Speech Pipelines Meta AI and KAUST Researchers Propose Neural Computers That Fold Computation, Memory, and I/O Into One Learned Model A Coding Implementation of MolmoAct for Depth-Aware Spatial Reasoning, Visual Trajectory Tracing, and Robotic Action Prediction MiniMax Just Open Sourced MiniMax M2.7: A Self-Evolving Agent Model that Scores 56.22% on SWE-Pro and 57.0% on Terminal Bench 2 Researchers from MIT, NVIDIA, and Zhejiang University Propose TriAttention: A KV Cache Compression Method That Matches Full Attention at 2.5× Higher Throughput How to Build a Secure Local-First Agent Runtime with OpenClaw Gateway, Skills, and Controlled Tool Execution How Knowledge Distillation Compresses Ensemble Intelligence into a Single Deployable AI Model Alibaba’s Tongyi Lab Releases VimRAG: a Multimodal RAG Framework that Uses a Memory Graph to Navigate Massive Visual Contexts A Coding Guide to Markerless 3D Human Kinematics with Pose2Sim, RTMPose, and OpenSim NVIDIA Releases AITune: An Open-Source Inference Toolkit That Automatically Finds the Fastest Inference Backend for Any PyTorch Model Five AI Compute Architectures Every Engineer Should Know: CPUs, GPUs, TPUs, NPUs, and LPUs Compared An End-to-End Coding Guide to NVIDIA KVPress for Long-Context LLM Inference, KV Cache Compression, and Memory-Efficient Generation Meta Superintelligence Lab Releases Muse Spark: A Multimodal Reasoning Model With Thought Compression and Parallel Agents Sigmoid vs ReLU Activation Functions: The Inference Cost of Losing Geometric Context A Coding Guide to Build Advanced Document Intelligence Pipelines with Google LangExtract, OpenAI Models, Structured Extraction, and Interactive Visualization Google AI Research Introduces PaperOrchestra: A Multi-Agent Framework for Automated AI Research Paper Writing A Comprehensive Implementation Guide to ModelScope for Model Search, Inference, Fine-Tuning, Evaluation, and Export
Liquid AI Releases LFM2.5-VL-450M: a 450M-Parameter Vision-Language Model with Bounding Box Prediction, Multilingual Support, and Sub-250ms Edge Inference
Asif Razzaq · 2026-04-12 · via MarkTechPost

Liquid AI just released LFM2.5-VL-450M, an updated version of its earlier LFM2-VL-450M vision-language model. The new release introduces bounding box prediction, improved instruction following, expanded multilingual understanding, and function calling support — all within a 450M-parameter footprint designed to run directly on edge hardware ranging from embedded AI modules like NVIDIA Jetson Orin, to mini-PC APUs like AMD Ryzen AI Max+ 395, to flagship phone SoCs like the Snapdragon 8 Elite inside the Samsung S25 Ultra.

What is a Vision-Language Model and Why Model Size Matters

Before going deeper, it helps to understand what a vision-language model (VLM) is. A VLM is a model that can process both images and text together — you can send it a photo and ask questions about it in natural language, and it will respond. Most large VLMs require substantial GPU memory and cloud infrastructure to run. That’s a problem for real-world deployment scenarios like warehouse robots, smart glasses, or retail shelf cameras, where compute is limited and latency must be low.

LFM2.5-VL-450M is Liquid AI’s answer to this constraint: a model small enough to fit on edge hardware while still supporting a meaningful set of vision and language capabilities.

Architecture and Training

LFM2.5-VL-450M uses LFM2.5-350M as its language model backbone and SigLIP2 NaFlex shape-optimized 86M as its vision encoder. The context window is 32,768 tokens with a vocabulary size of 65,536.

For image handling, the model supports native resolution processing up to 512×512 pixels without upscaling, preserves non-standard aspect ratios without distortion, and uses a tiling strategy that splits large images into non-overlapping 512×512 patches while including thumbnail encoding for global context. The thumbnail encoding is important: without it, tiling would give the model only local patches with no sense of the overall scene. At inference time, users can tune the maximum image tokens and tile count for a speed/quality tradeoff without retraining, which is useful when deploying across hardware with different compute budgets.

The recommended generation parameters from Liquid AI are temperature=0.1, min_p=0.15, and repetition_penalty=1.05 for text, and min_image_tokens=32, max_image_tokens=256, and do_image_splitting=True for vision inputs.

On the training side, Liquid AI scaled pre-training from 10T to 28T tokens compared to LFM2-VL-450M, followed by post-training using preference optimization and reinforcement learning to improve grounding, instruction following, and overall reliability across vision-language tasks.

New Capabilities Over LFM2-VL-450M

The most significant addition is bounding box prediction. LFM2.5-VL-450M scored 81.28 on RefCOCO-M, up from zero on the previous model. RefCOCO-M is a visual grounding benchmark that measures how accurately a model can locate an object in an image given a natural language description. In practice, the model outputs structured JSON with normalized coordinates identifying where objects are in a scene — not just describing what is there, but also locating it. This is meaningfully different from pure image captioning and makes the model directly usable in pipelines that need spatial outputs.

Multilingual support also improved substantially. MMMB scores improved from 54.29 to 68.09, covering Arabic, Chinese, French, German, Japanese, Korean, Portuguese, and Spanish. This is relevant for global deployments where local-language prompts must be understood alongside visual inputs, without needing separate localization pipelines.

Instruction following improved as well. MM-IFEval scores went from 32.93 to 45.00, meaning the model more reliably adheres to explicit constraints given in a prompt — for example, responding in a particular format or restricting output to specific fields.

Function calling support for text-only input was also added, measured by BFCLv4 at 21.08, a capability the previous model did not include. Function calling allows the model to be used in agentic pipelines where it needs to invoke external tools — for instance, calling a weather API or triggering an action in a downstream system.

https://www.liquid.ai/blog/lfm2-5-vl-450m

Benchmark Performance

Across vision benchmarks evaluated using VLMEvalKit, LFM2.5-VL-450M outperforms both LFM2-VL-450M and SmolVLM2-500M on most tasks. Notable scores include 86.93 on POPE, 684 on OCRBench, 60.91 on MMBench (dev en), and 58.43 on RealWorldQA.

Two benchmark gains stand out beyond the headline numbers. MMVet — which tests more open-ended visual understanding — improved from 33.85 to 41.10, a substantial relative gain. CountBench, which evaluates the model’s ability to count objects in a scene, improved from 47.64 to 73.31, one of the largest relative improvements in the table. InfoVQA held roughly flat at 43.02 versus 44.56 on the prior model.

On language-only benchmarks, IFEval improved from 51.75 to 61.16 and Multi-IF from 26.21 to 34.63. The model does not outperform on all tasks — MMMU (val) dropped slightly from 34.44 to 32.67 — and Liquid AI notes the model is not well-suited for knowledge-intensive tasks or fine-grained OCR.

Edge Inference Performance

LFM2.5-VL-450M with Q4_0 quantization runs across the full range of target hardware, from embedded AI modules like Jetson Orin to mini-PC APUs like Ryzen AI Max+ 395 to flagship phone SoCs like Snapdragon 8 Elite.

The latency numbers tell a clear story. On Jetson Orin, the model processes a 256×256 image in 233ms and a 512×512 image in 242ms — staying well under 250ms at both resolutions. This makes it fast enough to process every frame in a 4 FPS video stream with full vision-language understanding, not just detection. On Samsung S25 Ultra, latency is 950ms for 256×256 and 2.4 seconds for 512×512. On AMD Ryzen AI Max+ 395, it is 637ms for 256×256 and 944ms for 512×512 — under one second for the smaller resolution on both consumer devices, which keeps interactive applications responsive.

Real-World Use Cases

LFM2.5-VL-450M is especially well suited to real-world deployments where low latency, compact structured outputs, and efficient semantic reasoning matter most, including settings where offline operation or on-device processing is important for privacy.

In industrial automation, compute-constrained environments such as passenger vehicles, agricultural machinery, and warehouses often limit perception models to bounding-box outputs. LFM2.5-VL-450M goes further, providing grounded scene understanding in a single pass — enabling richer outputs for settings like warehouse aisles, including worker actions, forklift movement, and inventory flow — while still fitting existing edge hardware like a Jetson Orin.

For wearables and always-on monitoring, devices such as smart glasses, body-worn assistants, dashcams, and security or industrial monitors cannot afford large perception stacks or constant cloud streaming. An efficient VLM can produce compact semantic outputs locally, turning raw video into useful structured understanding while keeping compute demands low and preserving privacy.

In retail and e-commerce, tasks like catalog ingestion, visual search, product matching, and shelf compliance require more than object detection, but richer visual understanding is often too expensive to deploy at scale. LFM2.5-VL-450M makes structured visual reasoning practical for these workloads.

Key Takeaways

  • LFM2.5-VL-450M adds bounding box prediction for the first time, scoring 81.28 on RefCOCO-M versus zero on the previous model, enabling the model to output structured spatial coordinates for detected objects — not just describe what it sees.
  • Pre-training was scaled from 10T to 28T tokens, combined with post-training via preference optimization and reinforcement learning, driving consistent benchmark gains across vision and language tasks over LFM2-VL-450M.
  • The model runs on edge hardware with sub-250ms latency, processing a 512×512 image in 242ms on NVIDIA Jetson Orin with Q4_0 quantization — fast enough for full vision-language understanding on every frame of a 4 FPS video stream without cloud offloading.
  • Multilingual visual understanding improved significantly, with MMMB scores rising from 54.29 to 68.09 across Arabic, Chinese, French, German, Japanese, Korean, Portuguese, and Spanish, making the model viable for global deployments without separate localization models.

Check out the Technical details and Model WeightAlso, feel free to follow us on Twitter and don’t forget to join our 120k+ ML SubReddit and Subscribe to our Newsletter. Wait! are you on telegram? now you can join us on telegram as well.

Need to partner with us for promoting your GitHub Repo OR Hugging Face Page OR Product Release OR Webinar etc.? Connect with us