The following warnings occurred:
Warning [2] Undefined array key "extra" - Line: 100 - File: inc/plugins/google_seo/url.php PHP 8.1.33 (Linux)
File Line Function
/inc/class_error.php 157 errorHandler->error
/inc/plugins/google_seo/url.php 100 errorHandler->error_callback
/inc/plugins/google_seo.php 317 require_once
/inc/class_plugins.php 38 require_once
/inc/init.php 263 pluginSystem->load
/global.php 20 require_once
/printthread.php 16 require_once
Warning [2] Undefined variable $location - Line: 1250 - File: inc/plugins/google_seo/url.php PHP 8.1.33 (Linux)
File Line Function
/inc/class_error.php 157 errorHandler->error
/inc/plugins/google_seo/url.php 1250 errorHandler->error_callback
/inc/plugins/google_seo/url.php 174 google_seo_url_hook
/inc/plugins/google_seo.php 317 require_once
/inc/class_plugins.php 38 require_once
/inc/init.php 263 pluginSystem->load
/global.php 20 require_once
/printthread.php 16 require_once
Warning [2] Undefined variable $unreadreports - Line: 38 - File: global.php(961) : eval()'d code PHP 8.1.33 (Linux)
File Line Function
/inc/class_error.php 157 errorHandler->error
/global.php(961) : eval()'d code 38 errorHandler->error_callback
/global.php 961 eval
/printthread.php 16 require_once
Warning [2] Undefined variable $mysupport_tech_notice - Line: 38 - File: global.php(961) : eval()'d code PHP 8.1.33 (Linux)
File Line Function
/inc/class_error.php 157 errorHandler->error
/global.php(961) : eval()'d code 38 errorHandler->error_callback
/global.php 961 eval
/printthread.php 16 require_once
Warning [2] Undefined variable $mysupport_assign_notice - Line: 38 - File: global.php(961) : eval()'d code PHP 8.1.33 (Linux)
File Line Function
/inc/class_error.php 157 errorHandler->error
/global.php(961) : eval()'d code 38 errorHandler->error_callback
/global.php 961 eval
/printthread.php 16 require_once
Warning [2] Undefined array key 604202 - Line: 833 - File: inc/plugins/google_seo/url.php PHP 8.1.33 (Linux)
File Line Function
/inc/class_error.php 157 errorHandler->error
/inc/plugins/google_seo/url.php 833 errorHandler->error_callback
/inc/plugins/google_seo/url.php 1412 google_seo_url_cache
/inc/functions.php 6559 google_seo_url_thread
/printthread.php 124 get_thread_link
Warning [2] Undefined array key 16669 - Line: 833 - File: inc/plugins/google_seo/url.php PHP 8.1.33 (Linux)
File Line Function
/inc/class_error.php 157 errorHandler->error
/inc/plugins/google_seo/url.php 833 errorHandler->error_callback
/inc/plugins/google_seo/url.php 1347 google_seo_url_cache
/inc/functions.php 6444 google_seo_url_profile
/inc/functions.php 6512 get_profile_link
/printthread.php 201 build_profile_link



Softwarez.Info - Software's World!
Coursera - Vector Database Fundamentals Specialization - Printable Version

+- Softwarez.Info - Software's World! (https://softwarez.info)
+-- Forum: Library Zone (https://softwarez.info/Forum-Library-Zone)
+--- Forum: Video Tutorials (https://softwarez.info/Forum-Video-Tutorials)
+--- Thread: Coursera - Vector Database Fundamentals Specialization (/Thread-Coursera-Vector-Database-Fundamentals-Specialization)



Coursera - Vector Database Fundamentals Specialization - OneDDL - 10-05-2024

[Image: bdc5f60895584109df797ca5cfe758ca.jpeg]
Free Download Coursera - Vector Database Fundamentals Specialization
Released 9/2024
MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz, 2 Ch
Genre: eLearning | Language: English + subtitle | Duration: 29 Lessons ( 2h 31m ) | Size: 382 MB
Future-proof your AI/data career. Get job-ready vector database skills employers are actively looking for in just 1 month.

What you'll learn
Sought-after vector database skills businesses need for real-world applications like gen AI, text similarity analysis, and recommendation engines
How to develop vector database environments using embeddings, collections, and queries using Chroma DB, PostgreSQL, MongoDB, and Cassandra
How to analyze vector data using techniques such as cosine similarity
How to create recommendation system applications powered by vector databases
Skills you'll gain
Data Science
Vector databases
Recommendation systems
Artificial Intelligence
Recommender Systems
Machine Learning
Vector databases are the engines behind AI applications. Companies investing heavily in AI need expertise to build AI-powered technologies such as recommendation engines, search engine information retrieval, machine learning tasks, data analysis, semantic matching, and content generation.
This ongoing growth and increasing demand for novel uses of AI-powered applications means that the need for data professionals with vector database skills will continue to grow.
This Vector Database Fundamentals Specialization provides application developers, data scientists, and other AI professionals with valuable vector database skills for building real-world applications such as recommendation engines, personalized user experiences, and other new AI-powered technologies.
Acquire these in-demand vector database skills in this specialization using Chroma DB, MongoDB, PostgreSQL, and Cassandra. You'll perform vector database tasks such as creating embeddings and collections, plus similarity searches, including the computation of similarity scores between query embeddings and document embeddings. You'll gain practical skills through hands-on labs. And you'll complete a capstone project where you'll put your new skills into practice and incorporate RAG and LangChain to solve a real-world business problem using vector data.
Great experience for interviews and your resume! Enroll today and future-proof your AI and data career with the vector database skills businesses need.
Applied Learning Project
This Specialization emphasizes applied learning and includes hands-on activities and projects you can talk about with colleagues and in interviews. In these exercises, you'll take the theory and skills you've gained and practice them with real-world scenarios.
Projects include
Setting up environments for vector database operations and performing day-to-day database tasks using Chroma DB.
Storing, indexing, and querying data, including performing vector text similarity searches, and building recommendation systems using MongoDB and Cassandra.
Applying efficient vector storage, retrieval, and search optimization techniques in PostgreSQL.
Creating a robust real-world application that uses vector data to solve a business problem.
Homepage

[To see links please register or login]






Recommend Download Link Hight Speed | Please Say Thanks Keep Topic Live

[To see links please register or login]

No Password - Links are Interchangeable