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logseq/pages/Agentic AI.md
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- ***Agentic AI***: Systems that can *plan*, *reason*, and *take action* to *accomplish tasks* with *minimal human intervention*.
- AI agents extend the capabilities of LLMs with respect to the following dimensions:
- *Integrating memory*, to retain and recall information across interactions
- *Tool use*, to utilize external tools, APIs, and databases
- *Decision-making*, to plan and execute multi-step workflows
- AI agents will continue to refine the ability to *reason*, *plan*, and *act*.
- The **development of agentic-based AI** is a natural progression from *statistical modeling* to *deep learning* and now to *reasoning-based systems*
- This evolution marks a shift from predictive models to autonomous systems capable of dynamic decision-making.
- The **main challenges with raw LLMs** are the following:
- *Context window limitations*: The context window typically range from 2,000 to 128,000 tokens and this create the following challenges:
- *Document processing*: long documents must be chunked to deal with context limits
- *Conversation history*: A proper memory management is required to maintain infromation across extended conversations.
- *Cost management*: It is necessary to make efficient token use, because most providers charge based on token count.
- *Limited tool orchestration:* to execute complex workflows a proper infrastructure is needed to discover tools and manage tool interactions across multiple turns.
- *Task coordination challenges*: structured control mechanisms are require to manage with LLMs multi-step workflows
- **LangChain**
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