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Contents contributed and discussions participated by Rob Laporte

Rob Laporte

Redefining SEO: AI Overviews and the road ahead - 0 views

  • Many reports highlight similarities between featured snippets and the answers provided in AI Overviews.  Some experts have even suggested that this redundancy could lead Google to eventually phase out featured snippets altogether.
Rob Laporte

Large language models as tax attorneys: a case study in legal capabilities emergence | ... - 0 views

  • LLM prompting involves designing text inputs to generate a response from an LLM. The goal of prompting is to steer the behaviour of the LLM in a way that elicits a desired outcome. Recent research has focused on developing effective prompting techniques that can expand LLMs' capabilities when carrying out a variety of tasks. Examples include prompt patterns [21], in-context instruction learning [22], evolutionary prompt engineering [23] and domain-specific keywords with a trainable gated prompt to guide toward a target domain for general-domain LLMs [24]. Zhong et al. [25] experiment with prompting LLMs to do scientific tasks across fields like business, science, and health by providing the LLM with a research goal and two large corpora, asking the LLM for corpus-level difference. Reppert et al. [26] develop iterated decomposition, a human-in-the-loop workflow for developing and refining compositional LLM programs that improves performance on real-world science question and answer tasks.
Rob Laporte

The state of AI in early 2024 | McKinsey - 0 views

  • services.2Includes respondents working for organizations focused on human resources, legal services, management consulting, market research, R&D, tax preparation, and training. Exhibit 1
  • Also, responses suggest that companies are now using AI in more parts of the business. Half of respondents say their organizations have adopted AI in two or more business functions, up from less than a third of respondents in 2023 (Exhibit 2)
  • The biggest increase from 2023 is found in marketing and sales, where reported adoption has more than doubled. Yet across functions, only two use cases, both within marketing and sales, are reported by 15 percent or more of respondents.
Rob Laporte

Neo4j Finds the Vector for Graph-LLM Integration - 0 views

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    "Neo4j Finds the Vector for Graph-LLM Integration"
Rob Laporte

What Is Retrieval-Augmented Generation aka RAG | NVIDIA Blogs - 0 views

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    "description of a RAG process"
Rob Laporte

How important are backlinks in 2024? - 0 views

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    "MonsterInsights"
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