--- layout: default title: Using Agents & Function Calls with SLIM Models parent: Learn nav_order: 1 description: overview of the major modules and classes of LLMWare permalink: /learn/using_agents_functions_slim_models --- Using Agents, Function Calls and SLIM Models --- **Tutorial Videos** - check out our Youtube channel for high-impact 5-10 minute tutorials on the latest examples. Check back often as this list is always growing ... 🎬 **Using Agents, Function Calls and SLIM models** - [Agent Automation with Web Services for Financial Research](https://youtu.be/l0jzsg1_Ik0?si=oBGtALHLplouY9x2) - [Sentiment Analysis](https://youtu.be/ERCHP21oAN8?si=fp6D4Tk9J2HdDRXa) - [SLIMS Playlist](https://youtube.com/playlist?list=PL1-dn33KwsmAHWCWK6YjZrzicQ2yR6W8T&si=TSFGqQ3ObOO5vDde) - [Agent-based Complex Research Analysis](https://youtu.be/y4WvwHqRR60?si=jX3KCrKcYkM95boe) - [Getting Started with SLIMs (with code)](https://youtu.be/aWZFrTDmMPc?si=lmo98_quo_2Hrq0C) - [SLIM Models Intro](https://www.youtube.com/watch?v=cQfdaTcmBpY) - [Text2SQL Intro](https://youtu.be/BKZ6kO2XxNo?si=tXGt63pvrp_rOlIP) - [Pop up LLMWare Inference Server](https://www.youtube.com/watch?v=qiEmLnSRDUA&t=20s) - [Hardest Problem in RAG - handling 'Not Found'](https://youtu.be/slDeF7bYuv0?si=j1nkdwdGr5sgvUtK) - [Extract Information from Earnings Releases](https://youtu.be/d6HFfyDk4YE?si=VmnIiWFmgBtR4DxS) - [Summary Function Calls](https://youtu.be/yNg_KH5cPSk?si=Yl94tp_vKA8e7eT7) - [Boolean Yes-No Function Calls](https://youtu.be/jZQZMMqAJXs?si=lU4YVI0H0tfc9k6e) - [Autogenerate Topics, Tags and NER](https://youtu.be/N6oOxuyDsC4?si=vo2Fd8VG5xTbH4SD) # More information about the project - [see main repository](https://www.github.com/llmware-ai/llmware.git) # About the project `llmware` is © 2023-{{ "now" | date: "%Y" }} by [AI Bloks](https://www.aibloks.com/home). ## Contributing Please first discuss any change you want to make publicly, for example on GitHub via raising an [issue](https://github.com/llmware-ai/llmware/issues) or starting a [new discussion](https://github.com/llmware-ai/llmware/discussions). You can also write an email or start a discussion on our Discrod channel. Read more about becoming a contributor in the [GitHub repo](https://github.com/llmware-ai/llmware/blob/main/CONTRIBUTING.md). ## Code of conduct We welcome everyone into the ``llmware`` community. [View our Code of Conduct](https://github.com/llmware-ai/llmware/blob/main/CODE_OF_CONDUCT.md) in our GitHub repository. ## ``llmware`` and [AI Bloks](https://www.aibloks.com/home) ``llmware`` is an open source project from [AI Bloks](https://www.aibloks.com/home) - the company behind ``llmware``. The company offers a Software as a Service (SaaS) Retrieval Augmented Generation (RAG) service. [AI Bloks](https://www.aibloks.com/home) was founded by [Namee Oberst](https://www.linkedin.com/in/nameeoberst/) and [Darren Oberst](https://www.linkedin.com/in/darren-oberst-34a4b54/) in October 2022. ## License `llmware` is distributed by an [Apache-2.0 license](https://www.github.com/llmware-ai/llmware/blob/main/LICENSE). ## Thank you to the contributors of ``llmware``! --- ---