Braindumps 1Z0-184-25 Pdf, 1Z0-184-25 Download Demo
We hope you can find the information you need at any time while using our 1Z0-184-25 study materials. In addition to the content updates, our system will also be updated for the 1Z0-184-25 training materials. If you have any opinions, you can tell us that our common goal is to create a product that users are satisfied with. We have three different 1Z0-184-25 Exam Braindumps for you to choose: the PDF, Software and APP online. And the varied displays can help you study at any time and condition.
What do you think of Oracle 1Z0-184-25 Certification Exam? As one of the most popular Oracle certification exams, 1Z0-184-25 test is also very important. When you are looking for reference materials in order to better prepare for the exam, you will find it is very hard to get the excellent exam dumps. What should we do? It doesn't matter. LatestCram is well aware of your aspirations and provide you with the best certification training dumps to satisfy your demands.
>> Braindumps 1Z0-184-25 Pdf <<
Reliable Oracle - 1Z0-184-25 - Braindumps Oracle AI Vector Search Professional Pdf
The secret of success is constancy to purpose. If your purpose is passing exams and getting a certification. 1Z0-184-25 exam cram PDF will be the right shortcut for your exam. You shouldn't miss any possible chance or method to achieve your goal, especially our 1Z0-184-25 Exam Cram Pdf always has 100% passing rate. Mostly choice is greater than effort. Well-pointed preparation for your test will help you save a lot of time. Oracle 1Z0-184-25 exam cram PDF will be great helper for your coming exam definitely.
Oracle 1Z0-184-25 Exam Syllabus Topics:
Topic
Details
Topic 1
Topic 2
Topic 3
Oracle AI Vector Search Professional Sample Questions (Q19-Q24):
NEW QUESTION # 19
Which SQL function is used to create a vector embedding for a given text string in Oracle Database 23ai?
Answer: C
Explanation:
The VECTOR_EMBEDDING function in Oracle Database 23ai generates a vector embedding from input data (e.g., a text string) using a specified model, such as an ONNX model loaded into the database. It's designed for in-database embedding creation, supporting vector search and AI applications. Options A, B, and C (GENERATE_EMBEDDING, CREATE_VECTOR_EMBEDDING, EMBED_TEXT) are not valid SQL functions in 23ai. VECTOR_EMBEDDING integrates seamlessly with the VECTOR data type and is documented as the standard method for embedding generation in SQL queries.
NEW QUESTION # 20
Why would you choose to NOT define a specific size for the VECTOR column during development?
Answer: A
Explanation:
In Oracle Database 23ai, a VECTOR column can be defined with a specific size (e.g., VECTOR(512, FLOAT32)) or left unspecified (e.g., VECTOR). Not defining a size (D) provides flexibility during development because different embedding models (e.g., BERT, SentenceTransformer) generate vectors with varying dimensions (e.g., 768, 384) and data types (e.g., FLOAT32, INT8). This avoids locking the schema into one model, allowing experimentation. Accuracy (A) isn't directly impacted by size definition; it depends on the model and metric. A fixed size doesn't restrict the database to one model (B) but requires matching dimensions. Text length (C) affects tokenization, not vector dimensions. Oracle's documentation supports undefined VECTOR columns for flexibility in AI workflows.
NEW QUESTION # 21
What is the purpose of the VECTOR_DISTANCE function in Oracle Database 23ai similarity search?
Answer: D
Explanation:
The VECTOR_DISTANCE function in Oracle 23ai (D) computes the distance between two vectors using a specified metric (e.g., COSINE, EUCLIDEAN), enabling similarity search by quantifying proximity. It doesn't fetch exact matches (A); it measures similarity. Index creation (B) is handled by CREATE INDEX, not this function. Grouping (C) requires additional SQL (e.g., GROUP BY), not VECTOR_DISTANCE's role. Oracle's SQL reference defines it as the core tool for distance calculation in vector queries.
NEW QUESTION # 22
Which parameter is used to define the number of closest vector candidates considered during HNSW index creation?
Answer: A
Explanation:
In Oracle 23ai, EFCONSTRUCTION (A) controls the number of closest vector candidates (edges) considered during HNSW index construction, affecting the graph's connectivity and search quality. Higher values improve accuracy but increase build time. VECTOR_MEMORY_SIZE (B) sets memory allocation, not candidate count. NEIGHBOURS (C) isn't a parameter; it might confuse with NEIGHBOR_PARTITIONS (IVF). TARGET_ACCURACY (D) adjusts query-time accuracy, not index creation. Oracle's HNSW documentation specifies EFCONSTRUCTION for this purpose.
NEW QUESTION # 23
What is the primary purpose of a similarity search in Oracle Database 23ai?
Answer: B
Explanation:
Similarity search in Oracle 23ai (C) uses vector embeddings in VECTOR columns to retrieve entries semantically similar to a query vector, based on distance metrics (e.g., cosine, Euclidean) via functions like VECTOR_DISTANCE. This is key for AI applications like RAG, finding "close" rather than exact matches. Optimizing relational operations (A) is unrelated; similarity search is vector-specific. Exact matches in BLOBs (B) don't leverage vector semantics. Grouping by scores (D) is a post-processing step, not the primary purpose. Oracle's documentation defines similarity search as retrieving semantically proximate vectors.
NEW QUESTION # 24
......
1Z0-184-25 exam dumps will give you enough information that you don't requirement to seek out any other source. LatestCram can save you valuable time and money, resulting in satisfying results. 1Z0-184-25 exam dumps will increase your level of preparation in minimum time. It's the perfect time to take the right decision. Download LatestCram Oracle 1Z0-184-25 Exam Dumps now to proceed successfully in your professional career.
1Z0-184-25 Download Demo: https://www.latestcram.com/1Z0-184-25-exam-cram-questions.html