close menu
Bookswagon-24x7 online bookstore
close menu
My Account
Home > Art, Film & Photography > Data Structures, Algorithms, and Machine Learning Optimization LiveLessons (Video Training) (OASIS)
Data Structures, Algorithms, and Machine Learning Optimization LiveLessons (Video Training) (OASIS)

Data Structures, Algorithms, and Machine Learning Optimization LiveLessons (Video Training) (OASIS)

          
5
4
3
2
1

Out of Stock


Premium quality
Premium quality
Bookswagon upholds the quality by delivering untarnished books. Quality, services and satisfaction are everything for us!
Easy Return
Easy return
Not satisfied with this product! Keep it in original condition and packaging to avail easy return policy.
Certified product
Certified product
First impression is the last impression! Address the book’s certification page, ISBN, publisher’s name, copyright page and print quality.
Secure Checkout
Secure checkout
Security at its finest! Login, browse, purchase and pay, every step is safe and secured.
Money back guarantee
Money-back guarantee:
It’s all about customers! For any kind of bad experience with the product, get your actual amount back after returning the product.
On time delivery
On-time delivery
At your doorstep on time! Get this book delivered without any delay.
Notify me when this book is in stock
Add to Wishlist

About the Book

6+ Hours of Video Instruction Hands-On Approach to Learning the Essential Computer Science for Machine Learning Applications Overview Data Structures, Algorithms, and Machine Learning Optimization LiveLessons provides you with a functional, hands-on understanding of the essential computer science for machine learning applications. Customer Review I enjoy Jon's material because he painstakingly walks you through the mechanics of the operation. About the Instructor Jon Krohn is Chief Data Scientist at the machine learning company untapt. He authored the book Deep Learning Illustrated, an instant #1 bestseller that was translated into six languages. Jon is renowned for his compelling lectures, which he offers in-person at Columbia University and New York University, as well as online via O'Reilly, YouTube, and the SuperDataScience podcast. Jon holds a PhD from Oxford and has been publishing on machine learning in leading academic journals since 2010; his papers have been cited over a thousand times. Skill Level Intermediate Learn How To Use "big O" notation to characterize the time efficiency and space efficiency of a given algorithm, enabling you to select or devise the most sensible approach for tackling a particular machine learning problem with the hardware resources available to you. Get acquainted with the entire range of the most widely-used Python data structures, including list-, dictionary-, tree-, and graph-based structures. Develop a working understanding of all of the essential algorithms for working with data, including those for searching, sorting, hashing, and traversing. Discover how the statistical and machine learning approaches to optimization differ, and why you would select one or the other for a given problem you're solving. Understand exactly how the extremely versatile (stochastic) gradient descent optimization algorithm works and how to apply it. Familiarize yourself with the "fancy" optimizers that are available for advanced machine learning approaches (e.g., deep learning) and when you should consider using them.   Who Should Take This Course You use high-level software libraries (e.g., scikit-learn, Keras, TensorFlow) to train or deploy machine learning algorithms, and would now like to understand the fundamentals underlying the abstractions, enabling you to expand your capabilities You're a software developer who would like to develop a firm foundation for the deployment of machine learning algorithms into production systems You're a data scientist who would like to reinforce your understanding of the subjects at the core of your professional discipline You're a data analyst or AI enthusiast who would like to become a data scientist or data/ML engineer, and so you're keen to deeply understand the field you're entering from the ground up (very wise of you!) Course Requirements Mathematics: Familiarity with secondary school-level mathematics will make the class easier to follow along with. If you are comfortable dealing with quantitative information--such as understanding charts and rearranging simple equations--then you should be well-prepared to follow along with all of the mathematics. Programming: All code demos will be in Python so experience with it or another object-oriented programming language would be helpful for following along with the hands-on examples. Lesson Descriptions Lesson 1: Orientation to Data Structures and Algorithms In Lesson 1, Jon provides an orientation to data structures and algorithms. He starts by familiarizing you with his Machine Learning Foundations  curriculum and then provides you with historical context on both data and algorithms. He concludes with a discussion of applications of data structures and algorithms to the field of machine learning. Lesson 2: "Big O" Notation Lesson 2 focuses on "big O" notation, a fundamental computer science concept that is a prerequisite for understanding almost everything else in these LiveLessons. Jon explores three of the most common "big O" runtimes: constant, linear, and polynomial. He wraps up the lesson with an overview of the other common runtimes and performance variation based on the particular data you are working with. Lesson 3: List-Based Data Structures Lesson 3 is all about list-based data structures. Jon surveys all of the key types, including arrays, linked lists, stacks, queues, and deques. Lesson 4: Searching and Sorting In Lesson 4, Jon helps you hone your understanding of "big O" notation by applying searching and sorting algorithms to lists. Specifically, he covers binary search and three exemplary sorting algorithms: bubble, merge, and quick. Lesson 5: Sets and Hashing In Lesson 5, Jon details maps and dictionaries, which are types of sets. He digs into hash functions, which enable mind-bogglingly efficient data retrieval, including taking into account collisions, load factor, hash maps, string keys, and machine learning applications. Lesson 6: Trees In Lesson 6, Jon provides you with an introduction to the trees, a hugely useful data structure in machine learning. He presents specific hands-on examples involving decision trees, random forests, and gradient boosting. Lesson 7: Graphs Lesson 7 provides you with an introduction to graphs, another hugely useful data structure in machine learning. Jon discusses graph direction and cycles before wrapping up the coverage of data structures and algorithms with a note on DataFrames and his recommended resources for further study of the computer science field. Lesson 8: Machine Learning Optimization With Lesson 8, Jon shifts gears from data structures and algorithms to machine learning-specific optimization. He starts off by discussing when statistical optimization approaches break down and then digs into objective functions, particularly mean absolute error and mean squared error. Jon carries on by detailing how to optimize objective functions with gradient descent and what critical points are. He concludes the lesson with neat tricks like mini-batch sampling, learning rate scheduling, and gradient ascent. Lesson 9: Fancy Deep Learning Optimizers Lesson 9 wraps a bow not only on these particular LiveLessons but also on Jon's entire Machine Learning Foundations series. In this lesson Jon provides an overview of Jacobian and Hessian matrices as well as the fancy deep learning optimizers they facilitate that have momentum and are adaptive. Jon leaves you with his recommended next steps for moving forward with your machine learning journey. About Pearson Video Training Pearson publishes expert-led video tutorials covering a wide selection of technology topics designed to teach you the skills you need to succeed. These professional and personal technology videos feature world-leading author instructors published by your trusted technology brands: Addison-Wesley, Cisco Press, Pearson IT Certification, Sams, and Que Topics include: IT Certification, Network Security, Cisco Technology, Programming, Web Development, Mobile Development, and more. Learn more about Pearson Video training at http://www.informit.com/video. Video Lessons are available for download for offline viewing within the streaming format. Look for the green arrow in each lesson.

Table of Contents:
Introduction

Lesson 1: Orientation to Data Structures and Algorithms

Topics
1.1 Orientation to the Machine Learning Foundations Series
1.2 A Brief History of Data
1.3 A Brief History of Algorithms
1.4 Applications to Machine Learning

Lesson 2: "Big O" Notation
Topics
2.1 Introduction
2.2 Constant Time
2.3 Linear Time
2.4 Polynomial Time
2.5 Common Runtimes
2.6 Best versus Worst Case

Lesson 3: List-Based Data Structures
Topics
3.1 Lists
3.2 Arrays
3.3 Linked Lists
3.4 Doubly-Linked Lists
3.5 Stacks
3.6 Queues
3.7 Deques

Lesson 4: Searching and Sorting
Topics
4.1 Binary Search
4.2 Bubble Sort
4.3 Merge Sort
4.4 Quick Sort

Lesson 5: Sets and Hashing
Topics
5.1 Maps and Dictionaries
5.2 Sets
5.3 Hash Functions
5.4 Collisions
5.5 Load Factor
5.6 Hash Maps
5.7 String Keys
5.8 Hashing in ML

Lesson 6: Trees
Topics
6.1 Introduction
6.2 Decision Trees
6.3 Random Forests
6.4 XGBoost: Gradient-Boosted Trees
6.5 Additional Concepts

Lesson 7: Graphs
Topics
7.1 Introduction
7.2 Directed versus Undirected Graphs
7.3 DAGs: Directed Acyclic Graphs
7.4 Additional Concepts
7.5 Bonus: Pandas DataFrames
7.6 Resources for Further Study of DSA

Lesson 8: Machine Learning Optimization
Topics
8.1 Statistics versus Machine Learning
8.2 Objective Functions
8.3 Mean Absolute Error
8.4 Mean Squared Error
8.5 Minimizing Cost with Gradient Descent
8.6 Gradient Descent from Scratch with PyTorch
8.7 Critical Points
8.8 Stochastic Gradient Descent
8.9 Learning Rate Scheduling
8.10 Maximizing Reward with Gradient Ascent

Lesson 9: Fancy Deep Learning Optimizers
Topics
9.1 Jacobian Matrices
9.2 Second-Order Optimization and Hessians
9.3 Momentum
9.4 Adaptive Optimizers
9.5 Congratulations and Next Steps

Summary


Best Sellers



Product Details
  • ISBN-13: 9780137644926
  • Publisher: Pearson Education (US)
  • Publisher Imprint: Addison Wesley
  • Language: English
  • ISBN-10: 0137644922
  • Publisher Date: 28 Jan 2022
  • Binding: Digital (delivered electronically)


Similar Products

How would you rate your experience shopping for books on Bookswagon?

Add Photo
Add Photo

Customer Reviews

REVIEWS           
Click Here To Be The First to Review this Product
Data Structures, Algorithms, and Machine Learning Optimization LiveLessons (Video Training) (OASIS)
Pearson Education (US) -
Data Structures, Algorithms, and Machine Learning Optimization LiveLessons (Video Training) (OASIS)
Writing guidlines
We want to publish your review, so please:
  • keep your review on the product. Review's that defame author's character will be rejected.
  • Keep your review focused on the product.
  • Avoid writing about customer service. contact us instead if you have issue requiring immediate attention.
  • Refrain from mentioning competitors or the specific price you paid for the product.
  • Do not include any personally identifiable information, such as full names.

Data Structures, Algorithms, and Machine Learning Optimization LiveLessons (Video Training) (OASIS)

Required fields are marked with *

Review Title*
Review
    Add Photo Add up to 6 photos
    Would you recommend this product to a friend?
    Tag this Book
    Read more
    Does your review contain spoilers?
    What type of reader best describes you?
    I agree to the terms & conditions
    You may receive emails regarding this submission. Any emails will include the ability to opt-out of future communications.

    CUSTOMER RATINGS AND REVIEWS AND QUESTIONS AND ANSWERS TERMS OF USE

    These Terms of Use govern your conduct associated with the Customer Ratings and Reviews and/or Questions and Answers service offered by Bookswagon (the "CRR Service").


    By submitting any content to Bookswagon, you guarantee that:
    • You are the sole author and owner of the intellectual property rights in the content;
    • All "moral rights" that you may have in such content have been voluntarily waived by you;
    • All content that you post is accurate;
    • You are at least 13 years old;
    • Use of the content you supply does not violate these Terms of Use and will not cause injury to any person or entity.
    You further agree that you may not submit any content:
    • That is known by you to be false, inaccurate or misleading;
    • That infringes any third party's copyright, patent, trademark, trade secret or other proprietary rights or rights of publicity or privacy;
    • That violates any law, statute, ordinance or regulation (including, but not limited to, those governing, consumer protection, unfair competition, anti-discrimination or false advertising);
    • That is, or may reasonably be considered to be, defamatory, libelous, hateful, racially or religiously biased or offensive, unlawfully threatening or unlawfully harassing to any individual, partnership or corporation;
    • For which you were compensated or granted any consideration by any unapproved third party;
    • That includes any information that references other websites, addresses, email addresses, contact information or phone numbers;
    • That contains any computer viruses, worms or other potentially damaging computer programs or files.
    You agree to indemnify and hold Bookswagon (and its officers, directors, agents, subsidiaries, joint ventures, employees and third-party service providers, including but not limited to Bazaarvoice, Inc.), harmless from all claims, demands, and damages (actual and consequential) of every kind and nature, known and unknown including reasonable attorneys' fees, arising out of a breach of your representations and warranties set forth above, or your violation of any law or the rights of a third party.


    For any content that you submit, you grant Bookswagon a perpetual, irrevocable, royalty-free, transferable right and license to use, copy, modify, delete in its entirety, adapt, publish, translate, create derivative works from and/or sell, transfer, and/or distribute such content and/or incorporate such content into any form, medium or technology throughout the world without compensation to you. Additionally,  Bookswagon may transfer or share any personal information that you submit with its third-party service providers, including but not limited to Bazaarvoice, Inc. in accordance with  Privacy Policy


    All content that you submit may be used at Bookswagon's sole discretion. Bookswagon reserves the right to change, condense, withhold publication, remove or delete any content on Bookswagon's website that Bookswagon deems, in its sole discretion, to violate the content guidelines or any other provision of these Terms of Use.  Bookswagon does not guarantee that you will have any recourse through Bookswagon to edit or delete any content you have submitted. Ratings and written comments are generally posted within two to four business days. However, Bookswagon reserves the right to remove or to refuse to post any submission to the extent authorized by law. You acknowledge that you, not Bookswagon, are responsible for the contents of your submission. None of the content that you submit shall be subject to any obligation of confidence on the part of Bookswagon, its agents, subsidiaries, affiliates, partners or third party service providers (including but not limited to Bazaarvoice, Inc.)and their respective directors, officers and employees.

    Accept

    New Arrivals



    Inspired by your browsing history


    Your review has been submitted!

    You've already reviewed this product!
    ASK VIDYA