試験Agentforce-Specialist-JPN トピック4 問題341 スレッド
Salesforce Agentforce-Specialist-JPNのリアル試験問題集
問題 #: 341
トピック #: 4
問題 #: 341
トピック #: 4
Data Cloud レトリーバーの有効な使用例は何ですか?
おすすめの解答:A 解答を投票する
Comprehensive and Detailed In-Depth Explanation:
Salesforce Data Cloud integrates with Agentforce to provide real-time, unified data access for AI-driven applications.Data Cloud retrieversare specialized components that fetch relevant data from Data Cloud's vector database-a storage system optimized for semantic search and retrieval-to enhance agent responses or actions. A valid use case, as described in Option A, is using these retrievers to return pertinent data (e.g., customer purchase history, support tickets) from the vector database to augment a prompt. This process, often part of Retrieval-Augmented Generation (RAG), allows the LLM to generate more accurate, context-aware responses by grounding its output in structured, searchable data stored in Data Cloud.
* Option B: Grounding data from external websites is not a primary function of Data Cloud retrievers.
While RAG can incorporate external data, Data Cloud retrievers specifically work with data within Salesforce's ecosystem (e.g., the vector database or harmonized data lakes), not arbitrary external websites. This makes B incorrect.
* Option C: Data Cloud retrievers are read-only mechanisms designed for data retrieval, not for modifying or updating source systems. Updates to source systems are handled by other Salesforce tools (e.g., Flows or Apex), not retrievers.
Option A is correct because it aligns with the core purpose of Data Cloud retrievers: enhancing prompts with relevant, vectorized data from within Salesforce Data Cloud.
:
Salesforce Data Cloud Documentation: "Data Cloud for Agentforce" (Salesforce Help:https://help.salesforce.
com/s/articleView?id=sf.data_cloud_agentforce.htm&type=5)
Trailhead: "Data Cloud Basics" module (https://trailhead.salesforce.com/content/learn/modules/data-cloud- basics)
Salesforce Data Cloud integrates with Agentforce to provide real-time, unified data access for AI-driven applications.Data Cloud retrieversare specialized components that fetch relevant data from Data Cloud's vector database-a storage system optimized for semantic search and retrieval-to enhance agent responses or actions. A valid use case, as described in Option A, is using these retrievers to return pertinent data (e.g., customer purchase history, support tickets) from the vector database to augment a prompt. This process, often part of Retrieval-Augmented Generation (RAG), allows the LLM to generate more accurate, context-aware responses by grounding its output in structured, searchable data stored in Data Cloud.
* Option B: Grounding data from external websites is not a primary function of Data Cloud retrievers.
While RAG can incorporate external data, Data Cloud retrievers specifically work with data within Salesforce's ecosystem (e.g., the vector database or harmonized data lakes), not arbitrary external websites. This makes B incorrect.
* Option C: Data Cloud retrievers are read-only mechanisms designed for data retrieval, not for modifying or updating source systems. Updates to source systems are handled by other Salesforce tools (e.g., Flows or Apex), not retrievers.
Option A is correct because it aligns with the core purpose of Data Cloud retrievers: enhancing prompts with relevant, vectorized data from within Salesforce Data Cloud.
:
Salesforce Data Cloud Documentation: "Data Cloud for Agentforce" (Salesforce Help:https://help.salesforce.
com/s/articleView?id=sf.data_cloud_agentforce.htm&type=5)
Trailhead: "Data Cloud Basics" module (https://trailhead.salesforce.com/content/learn/modules/data-cloud- basics)
大田** 2026-06-27 02:09:24
コメント
他人の解答コメントを賛成するのも、その解答に一票を入れることになります。したがって、すでに同じ意見の投票コメントが存在する場合、新規コメントをする代わりに賛成することもできます。
コメントを通報する
コメント中
今すぐ 新規登録 / ログイン (無料です)。