Coursera - Introduction to Data Science (University of Washington) - Printable Version +- Krafty Internet Marketing Forum (https://kraftymarketingprofits.com/internetmarketingforum) +-- Forum: Internet Marketing Tips, Tricks, Courses & Bots! (https://kraftymarketingprofits.com/internetmarketingforum/Forum-internet-marketing-tips-tricks-courses-bots--50) +--- Forum: Internet Marketing Special Downloads! (https://kraftymarketingprofits.com/internetmarketingforum/Forum-internet-marketing-special-downloads--53) +--- Thread: Coursera - Introduction to Data Science (University of Washington) (/Thread-coursera-introduction-to-data-science-university-of-washington--21750) |
Coursera - Introduction to Data Science (University of Washington) - aretr - 06-04-2019 Coursera - Introduction to Data Science (University of Washington) WEBRip | English | MP4 + PDF Slides | 960 x 540 | AVC ~69.9 kbps | 30 fps AAC | 117 Kbps | 44.1 KHz | 2 channels | Subs: English (.srt) | ~17 hours | 1.36 GB Genre: eLearning Video / Computer Science, Programming Commerce and research are being transformed by data-driven discovery and prediction. Skills required for data analytics at massive levels - scalable data management on and off the cloud, parallel algorithms, statistical modeling, and proficiency with a complex ecosystem of tools and platforms - span a variety of disciplines and are not easy to obtain through conventional curricula. Tour the basic techniques of data science, including both SQL and NoSQL solutions for massive data management (e.g., MapReduce and contemporaries), algorithms for data mining (e.g., clustering and association rule mining), and basic statistical modeling (e.g., linear and non-linear regression). Commerce and research are being transformed by data-driven discovery and prediction. Skills required for data analytics at massive levels - scalable data management on and off the cloud, parallel algorithms, statistical modeling, and proficiency with a complex ecosystem of tools and platforms - span a variety of disciplines and are not easy to obtain through conventional curricula. Tour the basic techniques of data science, including both SQL and NoSQL solutions for massive data management (e.g., MapReduce and contemporaries), algorithms for data mining (e.g., clustering and association rule mining), and basic statistical modeling (e.g., linear and non-linear regression). Syllabus Part 0: Introduction Examples, data science articulated, history and context, technology landscape Part 1: Data Manipulation at Scale Databases and the relational algebra Parallel databases, parallel query processing, in-database analytics MapReduce, Hadoop, relationship to databases, algorithms, extensions, languages Key-value stores and NoSQL; tradeoffs of SQL and NoSQL Part 2: Analytics Topics in statistical modeling: basic concepts, experiment design, pitfalls Topics in machine learning: supervised learning (rules, trees, forests, nearest neighbor, regression), optimization (gradient descent and variants), unsupervised learning Part 3: Communicating Results Visualization, data products, visual data analytics Provenance, privacy, ethics, governance Part 4: Special Topics Graph Analytics: structure, traversals, analytics, PageRank, community detection, recursive queries, semantic web Guest Lectures Taught by Bill Howe DOWNLOAD Code: http://nitroflare.com/view/35B93B98B4B91E7/f0lhn.Coursera..Introduction.to.Data.Science.University.of.Washington.part01.rar Code: https://rapidgator.net/file/784097a2f3a61ee90d5f20cacc067676/f0lhn.Coursera..Introduction.to.Data.Science.University.of.Washington.part01.rar Code: http://turbobit.net/5iditl3210du/f0lhn.Coursera..Introduction.to.Data.Science.University.of.Washington.part01.rar.html |