Deal of The Day! Hurry Up, Grab the Special Discount - Save 25% - Ends In 00:00:00 Coupon code: SAVE25
Welcome to Pass4Success

- Free Preparation Discussions

Oracle Exam 1Z0-184-25 Topic 3 Question 6 Discussion

Actual exam question for Oracle's 1Z0-184-25 exam
Question #: 6
Topic #: 3
[All 1Z0-184-25 Questions]

You are working with vector search in Oracle Database 23ai and need to ensure the integrity of your vector data during storage and retrieval. Which factor is crucial for maintaining the accuracy and reliability of your vector search results?

Show Suggested Answer Hide Answer
Suggested Answer: A

In Oracle Database 23ai, vector search accuracy hinges on the consistency of the embedding model. The VECTOR data type stores embeddings as fixed-dimensional arrays, and similarity searches (e.g., using VECTOR_DISTANCE) assume that all vectors---stored and query---are generated by the same model. This ensures they occupy the same semantic space, making distance calculations meaningful. Regular updates (B) maintain data freshness, but if the model changes, integrity is compromised unless all embeddings are regenerated consistently. The distance algorithm (C) (e.g., cosine, Euclidean) defines how similarity is measured but relies on consistent embeddings; an incorrect model mismatch undermines any algorithm. Physical storage location (D) affects performance, not integrity. Oracle's documentation stresses model consistency as a prerequisite for reliable vector search within its native capabilities.


Contribute your Thoughts:

Veronika
15 days ago
I think the distance algorithm used for comparisons plays a significant role in accuracy.
upvoted 0 times
...
Emelda
18 days ago
I believe regularly updating vector embeddings is also important to reflect changes.
upvoted 0 times
...
Jerry
23 days ago
Haha, oh boy, this one's a real head-scratcher, isn't it? I'm just gonna sit back and watch the 'vector experts' duke it out. *chuckles*
upvoted 0 times
...
Staci
24 days ago
I agree with Latrice, consistency is key for reliable results.
upvoted 0 times
...
Jolene
24 days ago
You know, I was leaning towards D, but then I realized that was just me being a little too 'out there.' Gotta keep it simple, you know? B is the way to go, for sure.
upvoted 0 times
...
Latrice
27 days ago
I think using the same embedding model is crucial for accuracy.
upvoted 0 times
...
Mohammad
27 days ago
I'm going with A, no doubt. Using the same embedding model is a must for consistency. Anything else and you're just asking for trouble, am I right, folks? *winks*
upvoted 0 times
...
Elmira
28 days ago
Nah, I think C is the way to go. The distance algorithm is where the magic happens - that's what really determines the accuracy of the vector comparisons, am I right?
upvoted 0 times
Bulah
6 days ago
C) The specific distance algorithm employed for vector comparisons
upvoted 0 times
...
Precious
8 days ago
B) Regularly updating vector embeddings to reflect changes in the source data
upvoted 0 times
...
Kristeen
9 days ago
A) Using the same embedding model for both vector creation and similarity search
upvoted 0 times
...
...
Veda
1 months ago
Hmm, I'd say option B is crucial. Keeping those vector embeddings up-to-date is key to maintaining accurate search results. Gotta stay on top of those changes in the source data!
upvoted 0 times
Nettie
4 days ago
C) The specific distance algorithm employed for vector comparisons
upvoted 0 times
...
Larae
8 days ago
B) Regularly updating vector embeddings to reflect changes in the source data
upvoted 0 times
...
Aliza
21 days ago
A) Using the same embedding model for both vector creation and similarity search
upvoted 0 times
...
...

Save Cancel
az-700  pass4success  az-104  200-301  200-201  cissp  350-401  350-201  350-501  350-601  350-801  350-901  az-720  az-305  pl-300  

Warning: Cannot modify header information - headers already sent by (output started at /pass.php:70) in /pass.php on line 77