Data Structures for Beginners Full Course Tutorial

Data Structures for Beginners Full Course Tutorial

Introduction to Data Structures, I’ll be taking you through the topic of Data Structures in relation to Computer Science. We’ll go over what Data Structures are, how we measure a Data Structures efficiency, and then hop into talking about 12 of the most common Data Structures which will come up throughout your Computer Science journey.

Hello everyone and welcome to an Introduction to Data Structures. My name is Steven and in this lecture-style course, I’ll be taking you through the topic of #Data_Structures in relation to Computer Science. We’ll go over what Data Structures are, how we measure a Data Structures efficiency, and then hop into talking about 12 of the most common Data Structures which will come up throughout your Computer Science journey.

-------------------=+| Time Stamps |+=------------------- 💻 (00:00) Introduction ⌨️ (01:06) Timestamps ⌨️ (01:23) Script and Visuals ⌨️ (01:34) References + Research ⌨️ (01:56) Questions ⌨️ (02:12) Shameless Plug ⌨️ (02:51) What are Data Structures? ⌨️ (04:36) Series Overview 💻 (06:55) Measuring Efficiency with BigO Notation ⌨️ (09:45) Time Complexity Equations ⌨️ (11:13) The Meaning of BigO ⌨️ (12:42) Why BigO? ⌨️ (13:18) Quick Recap ⌨️ (14:27) Types of Time Complexity Equations ⌨️ (19:42) Final Note on Time Complexity Equations 💻 (20:21) The Array ⌨️ (20:58) Array Basics ⌨️ (22:09) Array Names ⌨️ (22:59) Parallel Arrays ⌨️ (23:59) Array Types ⌨️ (24:30) Array Size ⌨️ (25:45) Creating Arrays ⌨️ (26:11) Populate-First Arrays ⌨️ (28:09) Populate-Later Arrays ⌨️ (30:22) Numerical Indexes ⌨️ (31:57) Replacing information in an Array ⌨️ (32:42) 2-Dimensional Arrays ⌨️ (35:01) Arrays as a Data Structure ⌨️ (42:21) Pros and Cons 💻 (43:33) The ArrayList ⌨️ (44:42) Structure of the ArrayList ⌨️ (45:19) Initializing an ArrayList ⌨️ (47:34) ArrayList Functionality ⌨️ (49:30) ArrayList Methods ⌨️ (50:26) Add Method ⌨️ (53:57) Remove Method ⌨️ (55:33) Get Method ⌨️ (55:59) Set Method ⌨️ (56:57) Clear Method ⌨️ (57:30) toArray Method ⌨️ (59:00) ArrayList as a Data Structure ⌨️ (1:03:12) Comparing and Contrasting with Arrays 💻 (1:05:02) The Stack ⌨️ (1:05:06) The Different types of Data Structures ⌨️ (1:05:51) Random Access Data Structures ⌨️ (1:06:10) Sequential Access Data Structures ⌨️ (1:07:36) Stack Basics ⌨️ (1:09:01) Common Stack Methods ⌨️ (1:09:45) Push Method ⌨️ (1:10:32) Pop Method ⌨️ (1:11:46) Peek Method ⌨️ (1:12:27) Contains Method ⌨️ (1:13:23) Time Complexity Equations ⌨️ (1:15:28) Uses for Stacks 💻 (1:18:01) The Queue ⌨️ (1:18:51) Queue Basics ⌨️ (1:20:44) Common Queue Methods ⌨️ (1:21:13) Enqueue Method ⌨️ (1:22:20) Dequeue Method ⌨️ (1:23:08) Peek Method ⌨️ (1:24:15) Contains Method ⌨️ (1:25:05) Time Complexity Equations ⌨️ (1:27:05) Common Queue Uses 💻 (1:28:16) The Linked List ⌨️ (1:31:37 ) LinkedList Visualization ⌨️ (1:33:55) Adding and Removing Information ⌨️ (1:41:28) Time Complexity Equations ⌨️ (1:44:26) Uses for LinkedLists 💻 (1:47:19) The Doubly-LinkedList ⌨️ (1:48:44) Visualization ⌨️ (1:50:56) Adding and Removing Information ⌨️ (1:58:30) Time Complexity Equations ⌨️ (1:59:06) Uses of a Doubly-LinkedList 💻 (2:00:21) The Dictionary ⌨️ (2:01:15) Dictionary Basics ⌨️ (2:02:00) Indexing Dictionaries ⌨️ (2:02:40) Dictionary Properties 💻 (2:05:53) Hash Table Mini-Lesson ⌨️ (2:13:26) Time Complexity Equations 💻 (2:16:39) Trees ⌨️ (2:16:55) Introduction to Hierarchical Data ⌨️ (2:18:54) Formal Background on the Tree ⌨️ (2:20:03) Tree Terminology and Visualization ⌨️ (2:25:08) Different types of Trees ⌨️ (2:28:07) Uses for the Tree 💻 (2:29:00) Tries ⌨️ (2:29:50) Trie Basics ⌨️ (2:30:41) Trie Visualization ⌨️ (2:34:33) Flagging ⌨️ (2:35:15) Uses for Tries 💻 (2:38:25) Heaps ⌨️ (2:38:51) Heap Basics ⌨️ (2:39:19) Min-Heaps ⌨️ (2:40:07) Max-Heaps ⌨️ (2:40:59) Building Heaps ⌨️ (2:44:20) Deleting from Heaps ⌨️ (2:46:00) Heap Implementations 💻 (2:48:15) Graphs ⌨️ (2:49:25) Graph Basics ⌨️ (2:52:04) Directed vs. Undirected Graphs ⌨️ (2:53:45) Cyclic vs. Acyclic Graphs ⌨️ (2:55:04 Weighted Graphs ⌨️ (2:55:46) Types of Graphs 💻 (2:58:20) Conclusion 💻 (2:58:43) Shameless Plug

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