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Контент предоставлен Intel Embracing Digital Transformation and Darren Pulsipher. Весь контент подкастов, включая эпизоды, графику и описания подкастов, загружается и предоставляется непосредственно компанией Intel Embracing Digital Transformation and Darren Pulsipher или ее партнером по платформе подкастов. Если вы считаете, что кто-то использует вашу работу, защищенную авторским правом, без вашего разрешения, вы можете выполнить процедуру, описанную здесь https://ru.player.fm/legal.
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#187 GenAI RAG Details

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Manage episode 402383202 series 3486568
Контент предоставлен Intel Embracing Digital Transformation and Darren Pulsipher. Весь контент подкастов, включая эпизоды, графику и описания подкастов, загружается и предоставляется непосредственно компанией Intel Embracing Digital Transformation and Darren Pulsipher или ее партнером по платформе подкастов. Если вы считаете, что кто-то использует вашу работу, защищенную авторским правом, без вашего разрешения, вы можете выполнить процедуру, описанную здесь https://ru.player.fm/legal.

In part two of his interview with Eduardo Alvarez, Darren explores the use of GenAI LLMs and RAG (Retrieval Augmentation Generation) techniques to help organizations leverage the latest advancements in AI quickly and cost-effectively.

Leveraging Language Model Chains

In a landscape where accessible technologies are ubiquitous, operational efficiency sets an application apart. Be that as it may, handling an assortment of tasks with a single language model does not always yield optimal results, bringing us to the Language Model (LM) chains concept.

LM chains involve the integration of several models working simultaneously in a pipeline to improve user interaction with an application. Just as every task demands an integrating approach, every segment of your application may perform best with an individualized language model. Indeed, there's no one-size-fits-all policy when it comes to language models. Several real-world implementations are already capitalizing on the strength of multiple LMs working in harmony.

System Optimization and Data Veracity

The holistic optimization of the system is an integral part of leveraging LM chains. Everything from choosing the perfect moment to deploy a large language model to selecting the ideal architecture for computing forms an essential part of this process. The right decisions can dramatically bolster system performance and improve operational efficiency.

Integrating multiple models also opens novel avenues for research and development, particularly around data veracity within such setups. It poses fascinating challenges and opportunities ripe for exploration and discovery.

Maintaining Discreet Access to Data Privacy

When discussing data privacy, it is essential to understand the balance between utilizing more extensive institutional databases and preserving private user information. Eduardo suggests maintaining discretionary control over database access, ensuring operational superiority and data privacy.

Rising Fusion of AI and Real Data Ops

Predicting future trends, Eduardo anticipates a merger of accurate data and AI ops, which would resemble the blend of operational excellence and tool integration by configuration management engineers in the '90s. This blend translates into distributed heterogeneous computing in AI and shapes the future of AI ops.

Concluding Thoughts

Technology should invariably strive to simplify systems without sacrificing performance or efficiency. A thorough understanding of the available tools is a prerequisite to successfully leveraging them. Incorporating the LM chains in AI applications is a step in this direction, paving the way for an enriched user experience. Our conversation with Eduardo Alvarez underscores the importance of these insights in propelling the intriguing landscape of AI.

  continue reading

193 эпизодов

Artwork
iconПоделиться
 
Manage episode 402383202 series 3486568
Контент предоставлен Intel Embracing Digital Transformation and Darren Pulsipher. Весь контент подкастов, включая эпизоды, графику и описания подкастов, загружается и предоставляется непосредственно компанией Intel Embracing Digital Transformation and Darren Pulsipher или ее партнером по платформе подкастов. Если вы считаете, что кто-то использует вашу работу, защищенную авторским правом, без вашего разрешения, вы можете выполнить процедуру, описанную здесь https://ru.player.fm/legal.

In part two of his interview with Eduardo Alvarez, Darren explores the use of GenAI LLMs and RAG (Retrieval Augmentation Generation) techniques to help organizations leverage the latest advancements in AI quickly and cost-effectively.

Leveraging Language Model Chains

In a landscape where accessible technologies are ubiquitous, operational efficiency sets an application apart. Be that as it may, handling an assortment of tasks with a single language model does not always yield optimal results, bringing us to the Language Model (LM) chains concept.

LM chains involve the integration of several models working simultaneously in a pipeline to improve user interaction with an application. Just as every task demands an integrating approach, every segment of your application may perform best with an individualized language model. Indeed, there's no one-size-fits-all policy when it comes to language models. Several real-world implementations are already capitalizing on the strength of multiple LMs working in harmony.

System Optimization and Data Veracity

The holistic optimization of the system is an integral part of leveraging LM chains. Everything from choosing the perfect moment to deploy a large language model to selecting the ideal architecture for computing forms an essential part of this process. The right decisions can dramatically bolster system performance and improve operational efficiency.

Integrating multiple models also opens novel avenues for research and development, particularly around data veracity within such setups. It poses fascinating challenges and opportunities ripe for exploration and discovery.

Maintaining Discreet Access to Data Privacy

When discussing data privacy, it is essential to understand the balance between utilizing more extensive institutional databases and preserving private user information. Eduardo suggests maintaining discretionary control over database access, ensuring operational superiority and data privacy.

Rising Fusion of AI and Real Data Ops

Predicting future trends, Eduardo anticipates a merger of accurate data and AI ops, which would resemble the blend of operational excellence and tool integration by configuration management engineers in the '90s. This blend translates into distributed heterogeneous computing in AI and shapes the future of AI ops.

Concluding Thoughts

Technology should invariably strive to simplify systems without sacrificing performance or efficiency. A thorough understanding of the available tools is a prerequisite to successfully leveraging them. Incorporating the LM chains in AI applications is a step in this direction, paving the way for an enriched user experience. Our conversation with Eduardo Alvarez underscores the importance of these insights in propelling the intriguing landscape of AI.

  continue reading

193 эпизодов

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