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Retrieval Augmented Generation (RAG) helps large language models (LLMs) answer questions using up-to-date or private information by connecting them to external data sources, unlike fine-tuning which retrains the model on specific data. RAG is useful when you need current, dynamic information without costly retraining, making it ideal for tasks like customer support or knowledge management. Fine-tuning is better for deep expertise in a specialized field but requires more data and effort. Using RAG lets you get accurate, relevant answers quickly by combining the model’s language skills with fresh, specific data, improving usefulness and reliability.
https://github.com/langchain-ai/rag-from-scratch
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#PHA/USDT analysis :
#PHA has experienced a breakout followed by a retest of the support zone. The price is now anticipated to continue its downward trajectory and test lower levels. This bearish outlook is supported by the breakout and retest pattern, suggesting a potential continuation of the downtrend.
TF : 4H
Entry : $0.1465
Target : $0.1146
SL : $0.1642