Rephonic
Artwork for Convex Optimization

Convex Optimization (EE364A)

Stephen Boyd

Concentrates on recognizing and solving convex optimization problems that arise in engineering. Convex sets, functions, and optimization problems. Basics of convex analysis. Least-squares, linear and quadratic programs, semidefinite programming, minimax, extremal volume, and other problems. Optimality conditions, duality theory, theorems of alternative, and applications. Interiorpoint methods. App... more

PublishesDailyEpisodes19Founded14 years ago
Category
Technology

Listen to the Podcast

Artwork for Convex Optimization

Latest Episodes

Professor Stephen Boyd, of the Stanford University Electrical Engineering department, continues his lecture on equality constrained minimization for the course, Convex Optimization I (EE 364A).

--:--
--:--
16 years ago

Professor Stephen Boyd, of the Stanford University Electrical Engineering department, lectures on the interior-point methods of electrical engineering and convex optimization for the course, Convex Optimization I (EE 364A).

--:--
--:--
16 years ago

Professor Stephen Boyd, of the Stanford University Electrical Engineering department, gives the final lecture on convex optimization for the course, Convex Optimization I (EE 364A).

--:--
--:--
16 years ago

Professor Stephen Boyd, of the Stanford University Electrical Engineering department, gives the introductory lecture for the course, Convex Optimization I (EE 364A).

--:--
--:--
16 years ago

Professor Stephen Boyd, of the Stanford University Electrical Engineering department, lectures on convex sets and their applications in electrical engineering and beyond for the course, Convex Optimization I (EE 364A).

--:--
--:--
16 years ago

Professor Stephen Boyd, of the Stanford University Electrical Engineering department, lectures on convex and concave functions for the course, Convex Optimization I (EE 364A).

--:--
--:--
16 years ago

Professor Stephen Boyd, of the Stanford University Electrical Engineering department, continues his lecture on convex functions in electrical engineering for the course, Convex Optimization I (EE 364A).

--:--
--:--
16 years ago

Professor Stephen Boyd, of the Stanford University Electrical Engineering department, lectures on the different problems that are included within convex optimization for the course, Convex Optimization I (EE 364A).

--:--
--:--
16 years ago

Insights

Contact Information
Podcast Host

Find out how many people listen to Convex Optimization and see how many downloads it gets.

We scanned the web and collated all of the information that we could find in our comprehensive podcast database.

Listen to the audio and view podcast download numbers, contact information, listener demographics and more to help you make better decisions about which podcasts to sponsor or be a guest on.

Reviews

4.1 out of 5 stars from 54 ratings
  • Top notch

    Really great material. Prof. Boyd is an excellent teacher, the material on the website is all free (CVX software and the CVX book). Very enlightening. Poor recording video but so what. more

    Apple Podcasts
    5
    Thierry BM
    Canada9 years ago
  • Haim Cohen

    One of the best teachers!!! The subject is realy interesting and he teach it clearly.

    Apple Podcasts
    5
    Haimco10
    Israel13 years ago

Top Technology Podcasts

Audience

Listeners, engagement and demographics and more for this podcast.

Gender SkewEngagement ScorePrimary Location
Social Media Reach

Frequently Asked Questions About Convex Optimization

Where can I find podcast stats for Convex Optimization?

Rephonic provides a wide range of data for three million podcasts so you can understand how popular each one is. See how many people listen to Convex Optimization and access YouTube viewership numbers, download stats, chart rankings, ratings and more.

Simply upgrade your account and use these figures to decide if the show is worth pitching as a guest or sponsor.

How do I find the number of podcast views for Convex Optimization?

There are two ways to find viewership numbers for podcasts on YouTube. First, you can search for the show on the channel and if it has an account, scroll through the videos to see how many views it gets per episode.

Rephonic also pulls the total number of views for each podcast we find a YouTube account for. You can access these figures by upgrading your account and looking at a show's social media section.

How do I find listening figures for Convex Optimization?

Podcast streaming numbers or 'plays' are notoriously tricky to find. Fortunately, Rephonic provides estimated listener figures for Convex Optimization and three million other podcasts in our database.

To check these stats and get a feel for the show's audience size, you'll need to upgrade your account.

How many subscribers does Convex Optimization have?

To see how many followers or subscribers Convex Optimization has, simply upgrade your account. You'll find a whole host of extra information to help you decide whether appearing as a sponsor or guest on this podcast is right for you or your business.

If it's not, use the search tool to find other podcasts with subscriber numbers that match what you're looking for.

How many listeners does Convex Optimization get?

Rephonic provides a full set of podcast information for three million podcasts, including the number of listeners. You can see some of this data for free. But you will need to upgrade your account to access premium data.

How many episodes of Convex Optimization are there?

Convex Optimization launched 14 years ago and published 19 episodes to date. You can find more information about this podcast including rankings, audience demographics and engagement in our podcast database.

How do I contact Convex Optimization?

Our systems regularly scour the web to find email addresses and social media links for this podcast. But in the unlikely event that you can't find what you're looking for, our concierge service lets you request our research team to source better contact information for you.

Where do you get podcast emails for Convex Optimization from?

Our systems scan a variety of public sources including the podcast's official website, RSS feed, and email databases to provide you with a trustworthy source of podcast contact information. We also have our own research team on-hand to manually find email addresses if you can't find exactly what you're looking for.

Where does Rephonic collect Convex Optimization reviews from?

Rephonic pulls reviews for Convex Optimization from multiple sources, including Apple Podcasts, Castbox, Podcast Addict and more.

View all the reviews in one place instead of visiting each platform individually and use this information to decide whether this podcast is worth pitching as a guest or sponsor.

How does Rephonic know which podcasts are like Convex Optimization?

You can view podcasts similar to Convex Optimization by exploring Rephonic's 3D interactive graph. This tool uses the data displayed on the 'Listeners Also Subscribed To' section of Apple Podcasts to visualise connections between shows.