Actual4test Valid Braindumps 1Z0-184-25 Sheet - Obtain Right now
BTW, DOWNLOAD part of Actual4test 1Z0-184-25 dumps from Cloud Storage: https://drive.google.com/open?id=1m6R3vQiLcSgM3btMePBNXx6_4AbcKTgf
Actual4test has many Oracle AI Vector Search Professional (1Z0-184-25) practice questions that reflect the pattern of the real Oracle AI Vector Search Professional (1Z0-184-25) exam. Actual4test allows you to create a Oracle AI Vector Search Professional (1Z0-184-25) exam dumps according to your preparation. It is easy to create the Oracle 1Z0-184-25 Practice Questions by following just a few simple steps. Our Oracle AI Vector Search Professional (1Z0-184-25) exam dumps are customizable based on the time and type of questions.
Oracle 1Z0-184-25 Exam Syllabus Topics:
Topic
Details
Topic 1
Topic 2
Topic 3
>> Valid Braindumps 1Z0-184-25 Sheet <<
1Z0-184-25 Test Duration | 1Z0-184-25 Reasonable Exam Price
We strongly recommend using our 1Z0-184-25 exam dumps to prepare for the Oracle 1Z0-184-25 certification. It is the best way to ensure success. With our Oracle 1Z0-184-25 Practice Questions, you can get the most out of your studying and maximize your chances of passing your Oracle AI Vector Search Professional (1Z0-184-25) exam.
Oracle AI Vector Search Professional Sample Questions (Q17-Q22):
NEW QUESTION # 17
If a query vector uses a different distance metric than the one used to create the index, whathappens?
Answer: B
Explanation:
In Oracle Database 23ai, vector indexes (e.g., HNSW, IVF) are built with a specific distance metric (e.g., cosine, Euclidean) that defines how similarity is computed. If a query specifies a different metric (e.g., querying with Euclidean on a cosine-based index), the index cannot be used effectively, and the query fails (A) with an error, as the mismatch invalidates the index's structure. An exact match search (B) doesn't occur automatically; Oracle requires explicit control. The index doesn't update itself (C), and warnings (D) are not the default behavior-errors are raised instead. Oracle's documentation mandates metric consistency for index usage.
NEW QUESTION # 18
What is the advantage of using Euclidean Squared Distance rather than Euclidean Distance in similarity search queries?
Answer: B
Explanation:
Euclidean Squared Distance (L2-squared) skips the square-root step of Euclidean Distance (L2), i.e., ∑(xi - yi)² vs. √∑(xi - yi)². Since the square root is monotonic, ranking order remains identical, but avoiding it (C) reduces computational cost, making queries faster-crucial for large-scale vector search. It's not the default metric (A); cosine is often default in Oracle 23ai. It doesn't relate to partitioning (B), an indexing feature. Accuracy (D) is equivalent, as rankings are preserved. Oracle's documentation notes L2-squared as an optimization for performance.
NEW QUESTION # 19
A machine learning team is using IVF indexes in Oracle Database 23ai to find similar images in a large dataset. During testing, they observe that the search results are often incomplete, missing relevant images. They suspect the issue lies in the number of partitions probed. How should they improve the search accuracy?
Answer: C
Explanation:
IVF (Inverted File) indexes in Oracle 23ai partition vectors into clusters, probing a subset during queries for efficiency. Incomplete results suggest insufficient partitions are probed, reducing recall. The TARGET_ACCURACY clause (A) allows users to specify a desired accuracy percentage (e.g., 90%), dynamically increasing the number of probed partitions to meet this target, thus improving accuracy at the cost of latency. Switching to HNSW (B) offers higher accuracy but requires re-indexing and may not be necessary if IVF tuning suffices. Increasing VECTOR_MEMORY_SIZE (C) allocates more memory for vector operations but doesn't directly affect probe count. EFCONSTRUCTION (D) is an HNSW parameter, irrelevant to IVF. Oracle's IVF documentation highlights TARGET_ACCURACY as the recommended tuning mechanism.
NEW QUESTION # 20
What is the primary purpose of the VECTOR_EMBEDDING function in Oracle Database 23ai?
Answer: C
NEW QUESTION # 21
What are the key advantages and considerations of using Retrieval Augmented Generation (RAG) in the context of Oracle AI Vector Search?
Answer: C
Explanation:
RAG in Oracle AI Vector Search integrates vector search with LLMs, leveraging database-stored data. A key advantage is its use of existing database security and access controls (D), ensuring that sensitive enterprise data remains secure while being accessible to LLMs, aligning with Oracle's security model (e.g., roles, privileges). Performance optimization (A) occurs but isn't the primary focus; storage increases are minimal compared to security benefits. Real-time extraction (B) is possible but not RAG's core strength, which lies in static data augmentation. Training LLMs (C) is unrelated to RAG, which uses pre-trained models. Oracle emphasizes security integration as a standout RAG feature.
NEW QUESTION # 22
......
Actual4test certification training exam for 1Z0-184-25 are written to the highest standards of technical accuracy, using only certified subject matter experts and published authors for development. Actual4test 1Z0-184-25 certification training exam material including the examination question and the answer, complete by our senior lecturers and the 1Z0-184-25 product experts, included the current newest 1Z0-184-25 examination questions.
1Z0-184-25 Test Duration: https://www.actual4test.com/1Z0-184-25_examcollection.html
What's more, part of that Actual4test 1Z0-184-25 dumps now are free: https://drive.google.com/open?id=1m6R3vQiLcSgM3btMePBNXx6_4AbcKTgf