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Learner Reviews & Feedback for Introduction to Machine Learning in Production by DeepLearning.AI

4.8
stars
2,828 ratings

About the Course

In the first course of Machine Learning Engineering for Production Specialization, you will identify the various components and design an ML production system end-to-end: project scoping, data needs, modeling strategies, and deployment constraints and requirements; and learn how to establish a model baseline, address concept drift, and prototype the process for developing, deploying, and continuously improving a productionized ML application. Understanding machine learning and deep learning concepts is essential, but if you’re looking to build an effective AI career, you need production engineering capabilities as well. Machine learning engineering for production combines the foundational concepts of machine learning with the functional expertise of modern software development and engineering roles to help you develop production-ready skills. Week 1: Overview of the ML Lifecycle and Deployment Week 2: Selecting and Training a Model Week 3: Data Definition and Baseline...

Top reviews

RG

Jun 4, 2021

really a great course. It'll really change your way of thinking ML in production use and will help you better understand how can you leverage the power of ML in a way that I'll really create a value

DT

Aug 14, 2021

Excellent course, as always. Very well explain for both Data Sicientist, Software engineer and Manager (with some basics undertsanding of ML). One of these courses that Data Sientist should follow.

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426 - 450 of 504 Reviews for Introduction to Machine Learning in Production

By Duc A L

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Oct 11, 2021

Good

By Willah m

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Aug 8, 2021

nice

By MohammadSadegh Z

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Jul 17, 2021

By Jeffrey B

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Dec 28, 2021

I was a little disappointed that this was heavily focused on unstructured data, but it was still a wonderful course. Many of the techniques of being "Data Centric" do not carry over as well to structured data. I am hoping I will hear more in the next courses of this specialization that address being data centric with structured data (which would seem to be more applicable to many business analytics cases).

By Cristian C H

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Oct 21, 2021

While the overall content of the course for ML LifeCycle is great, the examples and general assumptions are for supervised learning and labeled data, in some real scenarios, having labeled data is just not possible but by no means this indicates there is no possible AI solutions and models that give business value. So a little inclussion of unsupervised and semisupervised learning examples would help.

By Shreya R

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Mar 25, 2024

I have worked on a lot of Machine learning projects. It has helped me to organize my thoughts. How to access the best practices beforehand based on the size and type (structured/unstructured) dataset. I prefer more hands-on experience which was missing. I didn't learn exactly something new but it did help me understand how to look at and plan for a new Machine learning project.

By Yoshihiro H

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Oct 13, 2021

This course is a practical guide for someone who's interested in developing ML models in real life, make use of it and maintain, improve, and support it for business needs. To those folks whos coming from an academic background and haven't seen the landscape of the use of ML models in real life, this course can be a really good starting point ;).

By Divij S

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Oct 21, 2022

I wish for graded programming assignments in this course as well.

Although much of the things talked about here are theoretical, a programming assignment here would be immensely useful to a beginner to get a practical idea about the related concepts being covered and referred here across the couse modules.

By Jennifer K

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Dec 13, 2021

This course offers a lot of practical advice, the kind you won't find in most machine learning courses and the kind that you'll use on a day-to-day basis in your career as a data scientist. It's quite easy to follow and appropriate for beginners and non-technical students.

By Emile S

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Jun 21, 2021

Andrew Ng's insights on the ML field are always very relevant. I would have liked to learn more about the different MLOps tools available out there, but I understand this might not be this class's objective, which is really about offering a general overview on the topic.

By Fatih C

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Jun 2, 2023

Andrew Ng is exceptional when coming to explaining Machine Learning concepts, models and real life examples. A little gamification sets, more quizzes or minor tasks (like in the Stanford Machine Learning Matlab/R ones) would be nice to have :)

By Marcel H

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Jul 31, 2023

I liked the pace but it stayed too much on the surface for my purposes. The ungraded labs could have been graded with tasks to do and not prefilled. I think that took away some of the learning experience. Lets see what the next courses bring!

By Robert J

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Feb 1, 2023

Excellent conceptual introduction to employment of ML models. This is the first course I have taken that focuses on the "outside of the box" of the individual model and working on development and improvement of a model.

By Roberto B

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Nov 4, 2021

Good course to learn the jargon of ML-OPS will definetly give you good pointers to think about things you encounter daily on the job as a data scientist or ML engineer. Wish it would have been a little more technical.

By Ildefonso M

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Feb 22, 2022

Good general info but a bit basic for anyone who has already worked within the modelling pipeline. Nevertheless, Andrew is a great teacher and I did learn some new concepts and things to think about.

By Gilles D

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Mar 5, 2023

Good refresher if you already work in ML. A bit longish and could have been shortened.

I found the code provided useful to remind the use of Keras

In short, solid but not super mandatory

By Søren J A

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Jun 25, 2021

I like the acknowledgement of the importance of data quality. Machine learning is much more than just training models. Real benefits can only be achieved when moving to real life data

By Christian S

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Aug 19, 2021

Very well explained. However, I feel that problems related to structured data are underrepresented though being extremely relevant for business in an enterprise context.

By Abhishek M

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Dec 5, 2023

Great course to get started into production, loved the philosophical discussions on building ML models for production as opposed to ones developed for industry

By Sandeep U

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Mar 17, 2022

Theoretically worth watching... but lack off hands-on excercises.... It would be more helpfull if there were any open sourse tools thought in the course...

By Lukas O

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Jul 22, 2021

The methods are generally helpful. I would have liked more overview of available paid and open source tools, even if no specific recommendations are made.

By Dhruv N

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Jun 5, 2022

Ecellent course. Although very focused on unstructured data and deep learning, so if you are from a structured data background, you might feel left out.

By Simon G

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Jan 22, 2022

Introduction to MLOps of deeplearning.ai, the course is a very good introduction and overview (even though no IT skills are learned at this point)

By Magda K

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Jul 14, 2021

The course was very nice though for a Course that is part of a Specialization Course I found it to be too basic, even for an introduction.

By akshay j

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Aug 29, 2021

The concepts covered were really usefull and informative. But it could have been a chapter in a course rather than course in itself.