Model Gallery

7 models from 1 repositories

Filter by type:

Filter by tags:

liquidai.lfm2-2.6b-transcript
This is a large language model (2.6B parameters) designed for text-generation tasks. It is a quantized version of the original model `LiquidAI/LFM2-2.6B-Transcript`, optimized for efficiency while retaining strong performance. The model is built on the foundation of the base model, with additional optimizations for deployment and use cases like transcription or language modeling. It is trained on large-scale text data and supports multiple languages.

Repository: localai

liquidai_lfm2-350m-extract
Based on LFM2-350M, LFM2-350M-Extract is designed to extract important information from a wide variety of unstructured documents (such as articles, transcripts, or reports) into structured outputs like JSON, XML, or YAML. Use cases: Extracting invoice details from emails into structured JSON. Converting regulatory filings into XML for compliance systems. Transforming customer support tickets into YAML for analytics pipelines. Populating knowledge graphs with entities and attributes from unstructured reports. You can find more information about other task-specific models in this blog post.

Repository: localaiLicense: lfm1.0

liquidai_lfm2-1.2b-extract
Based on LFM2-1.2B, LFM2-1.2B-Extract is designed to extract important information from a wide variety of unstructured documents (such as articles, transcripts, or reports) into structured outputs like JSON, XML, or YAML. Use cases: Extracting invoice details from emails into structured JSON. Converting regulatory filings into XML for compliance systems. Transforming customer support tickets into YAML for analytics pipelines. Populating knowledge graphs with entities and attributes from unstructured reports.

Repository: localaiLicense: lfm1.0

liquidai_lfm2-1.2b-rag
Based on LFM2-1.2B, LFM2-1.2B-RAG is specialized in answering questions based on provided contextual documents, for use in RAG (Retrieval-Augmented Generation) systems. Use cases: Chatbot to ask questions about the documentation of a particular product. Custom support with an internal knowledge base to provide grounded answers. Academic research assistant with multi-turn conversations about research papers and course materials.

Repository: localaiLicense: lfm1.0

liquidai_lfm2-1.2b-tool
Based on LFM2-1.2B, LFM2-1.2B-Tool is designed for concise and precise tool calling. The key challenge was designing a non-thinking model that outperforms similarly sized thinking models for tool use. Use cases: Mobile and edge devices requiring instant API calls, database queries, or system integrations without cloud dependency. Real-time assistants in cars, IoT devices, or customer support, where response latency is critical. Resource-constrained environments like embedded systems or battery-powered devices needing efficient tool execution.

Repository: localaiLicense: lfm1.0

liquidai_lfm2-350m-math
Based on LFM2-350M, LFM2-350M-Math is a tiny reasoning model designed for tackling tricky math problems.

Repository: localaiLicense: lfm1.0

liquidai_lfm2-8b-a1b
LFM2 is a new generation of hybrid models developed by Liquid AI, specifically designed for edge AI and on-device deployment. It sets a new standard in terms of quality, speed, and memory efficiency. We're releasing the weights of our first MoE based on LFM2, with 8.3B total parameters and 1.5B active parameters. LFM2-8B-A1B is the best on-device MoE in terms of both quality (comparable to 3-4B dense models) and speed (faster than Qwen3-1.7B). Code and knowledge capabilities are significantly improved compared to LFM2-2.6B. Quantized variants fit comfortably on high-end phones, tablets, and laptops.

Repository: localaiLicense: lfm1.0