Ratings and Reviews 4 Ratings
Ratings and Reviews 1 Rating
What is LM-Kit.NET?
What is Google Cloud Natural Language API?
Integrations Supported
Integrations Supported
API Availability
API Availability
Pricing Information
Pricing Information
Supported Platforms
Supported Platforms
Customer Service / Support
Customer Service / Support
Training Options
Training Options
Company Facts
Organization Name
LM-Kit
Date Founded
2024
Company Location
France
Company Website
lm-kit.com
Company Facts
Organization Name
Date Founded
1998
Company Location
United States
Company Website
cloud.google.com/natural-language
Categories and Features
AI Agent Builders
LM-Kit.NET introduces sophisticated artificial intelligence capabilities to C# and VB.NET, featuring a robust enterprise-level framework and a user-friendly AI Agent Builder. This tool empowers developers to create flexible agents for tasks such as text generation, translation, and context-sensitive decision-making. With integrated runtime support that simplifies the intricate details, teams can efficiently prototype, implement, and expand intelligent applications, all while ensuring their software remains responsive to changing data and user requirements.
AI Agents
The AI agents functionality within LM-Kit.NET enables developers to design, personalize, and implement agents tailored for various applications such as text generation, translation, code evaluation, and more, all without requiring extensive modifications to the existing code. A streamlined runtime and API framework manages several agents, allowing them to share context, collaborate on tasks, and operate simultaneously. Additionally, optional on-device inference minimizes latency and ensures data privacy, while extensive hardware compatibility allows these agents to function seamlessly on laptops, edge devices, or cloud GPUs, striking a balance between performance, cost-effectiveness, and security.
AI Development
Developers can effortlessly integrate cutting-edge generative AI features into their .NET applications, enabling functionalities such as chatbots, content generation, data retrieval, natural language understanding, language translation, and structured data extraction. The on-device inference leverages a combination of CPU and GPU acceleration for fast local processing, ensuring data security. Additionally, regular updates incorporate the most recent advancements in research, empowering teams to create secure, high-performance AI solutions with an efficient development process and complete control over their applications.
AI Fine-Tuning
LM-Kit.NET empowers .NET developers to customize large language models by adjusting parameters such as LoraAlpha, LoraRank, AdamAlpha, and AdamBeta1. This tool integrates efficient optimization techniques and adaptive sample batching to achieve quick convergence. It also features automated quantization, allowing models to be compressed into lower-precision formats, enhancing inference speed on devices with limited resources while maintaining precision. Additionally, it facilitates the straightforward merging of LoRA adapters, enabling developers to add new capabilities in just minutes rather than undergoing complete retraining. With user-friendly APIs, comprehensive documentation, and on-device processing, the entire optimization process remains secure and easily integrated into your existing code infrastructure.
AI Inference
LM-Kit.NET introduces cutting-edge artificial intelligence capabilities to C# and VB.NET, enabling the development and implementation of context-sensitive agents that operate lightweight language models directly on edge devices. This approach minimizes latency, safeguards sensitive data, and ensures immediate performance, even in environments with limited resources. As a result, businesses can accelerate the deployment of both enterprise-level solutions and quick prototypes, resulting in applications that are more intelligent, efficient, and dependable.
AI Models
LM-Kit.NET now empowers your .NET applications to operate the most recent open models directly on your device. This includes advanced models such as Meta Llama 4, DeepSeek V3-0324, Microsoft Phi 4 (along with its mini and multimodal versions), Mistral Mixtral 8x22B, Google Gemma 3, and Alibaba Qwen 2.5 VL. By running these models locally, you can achieve state-of-the-art capabilities in language processing, vision, and audio without relying on external services. You can find a regularly updated catalog of models along with setup instructions and quantized builds at docs.lm-kit.com/lm-kit-net/guides/getting-started/model-catalog.html. This resource enables you to seamlessly integrate new model releases while ensuring low latency and maintaining complete data privacy.
AI Text Generators
The text generator of LM-Kit.NET operates on either CPU or GPU, enabling fast and secure content generation, summarization, grammar enhancement, and style adjustments. Its advanced dynamic sampling and customizable grammar settings allow it to produce organized outputs like JSON schemas, formatted documents, or code snippets with minimal need for further editing. Additionally, effective resource management ensures low latency and uniform results throughout various workflows.
Chatbot
This .NET on-device chatbot framework incorporates advanced multi-turn conversational AI that maintains context while ensuring minimal response times and complete privacy. By utilizing compact models, it eliminates the need for cloud connectivity. You can customize responses using RandomSampling or MirostatSampling techniques, and control token usage with LogitBias and RepetitionPenalty, allowing for diverse and non-repetitive outputs. The system includes event-driven hooks that facilitate the integration of personalized logic before or after each message, as well as enabling human oversight when necessary.
Conversational AI
LM-Kit.NET empowers C# and VB.NET applications to incorporate conversational AI via simplified APIs. This tool facilitates engaging multi-turn dialogues and contextually relevant responses for chatbots, virtual assistants, and customer support agents, allowing for user interactions that feel more human and responsive in real-time.
Data Extraction
LM-Kit.NET is designed to transform unstructured text and images into organized data suitable for your .NET applications. Utilizing a sophisticated extraction engine equipped with dynamic sampling, it efficiently analyzes documents, emails, logs, and various other formats with exceptional accuracy. You can create personalized fields complete with metadata and adaptable formats. Use the Parse method for synchronous processing or ParseAsync for asynchronous execution, allowing you to integrate seamlessly into any workflow. The Retrieval-Augmented Generation feature connects relevant segments to enhance search intelligence. All operations are performed locally, ensuring rapid performance, robust security, and complete data privacy, without the requirement for registration.
Large Language Models
LM-Kit.NET empowers developers working with C# and VB.NET to seamlessly incorporate both extensive and compact language models for applications such as natural language comprehension, text creation, interactive dialogues, and rapid on-device inference. Additionally, its vision language models enhance functionality with image processing and caption generation, while embedding models convert text into vectors to facilitate quick semantic searches. The LM-Lit catalog provides an exhaustive and regularly updated list of cutting-edge models, all contained within a single, streamlined toolkit that integrates effortlessly into your codebase, ensuring that the AI origins remain hidden from the end user.
Natural Language Generation
The on-device Natural Language Generation (NLG) component designed for .NET harnesses streamlined local language models to swiftly and securely generate context-sensitive text. This tool is capable of producing code snippets, summaries, grammar corrections, and style adaptations all within your local environment, ensuring data privacy remains intact. Utilize this technology to streamline document creation, maintain a consistent brand voice, and generate content in multiple languages. Its adaptable controls allow you to specify formats and styles, making it perfect for tasks such as reporting, code development, and succinct summaries.
Natural Language Processing
The on-device Natural Language Processing Toolkit for .NET is designed to handle substantial text data swiftly and securely, ensuring that no information is transmitted to the cloud. Key functionalities encompass multilingual sentiment evaluation, the ability to identify emotions and sarcasm, custom categorization of text, extraction of keywords, and generation of semantic embeddings to capture deep contextual meaning. Its dynamic sampling leverages both CPU and GPU capabilities to optimize performance and efficiency.
Retrieval-Augmented Generation (RAG)
LM-Kit RAG introduces enhanced context-aware search and response capabilities for C# and VB.NET applications, all through a single NuGet installation and an immediate free trial that requires no registration. This hybrid search method combines keyword and vector retrieval, which operates on your local CPU or GPU. It efficiently selects only the most relevant data segments for the language model, reducing the chance of inaccuracies and ensuring that all data remains secure within your infrastructure for privacy and regulatory adherence. The RagEngine manages a variety of modular components: the DataSource integrates documents and web pages, the TextChunking feature divides files into segments that are aware of overlaps, and the Embedder transforms these segments into vectors that allow for rapid similarity searches. Workflows can operate synchronously or asynchronously, accommodating millions of entries and updating indexes in real-time. Leverage RAG for applications such as intelligent chatbots, corporate search functions, legal discovery processes, and research assistants. Customize chunk sizes, metadata tags, and embedding models to find the right balance between recall and latency, while on-device inference ensures predictable expenses and maintains data integrity.
Sentiment Analysis
With on-device sentiment analysis tailored for .NET, you can gain immediate and confidential insights. This tool categorizes text into positive, negative, or neutral sentiments while also identifying emotions such as joy, anger, sadness, and fear. It even recognizes sarcasm for a more nuanced understanding. Transform unprocessed text into valuable intelligence that can enhance support services, social monitoring, marketing efforts, and product development strategies.