SKU: 15352901068

Catalytic Converter for Standard Grade Federal / EPA Compliant Universal Catalytic Converter MagnaFlow 94005

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Description

Catalytic Converter for Standard Grade Federal / EPA Compliant Universal Catalytic Converter MagnaFlow 94005Overview: MagnaFlow Standard Grade Federal EPA Compliant Universal Catalytic Converter 94005 helps keep the check engine light off. Get the right fit for a wide array of vehicles thanks to the adaptable Universal design (cutting and welding is required). With highly corrosion resistant, stainless steel construction, you can have confidence in the quality of this catalytic converter. This direct fit catalytic converter is designed to fit the 1980 1993

Overview:

MagnaFlow Standard Grade Federal/EPA Compliant Universal Catalytic Converter 94005 helps keep the check engine light off. Get the right fit for a wide array of vehicles thanks to the adaptable Universal design (cutting and welding is required). With highly corrosion resistant, stainless steel construction, you can have confidence in the quality of this catalytic converter. This direct-fit catalytic converter is designed to fit the 1980-1993 Ford Mustang, 1977-1986 Ford F-150, and additional vehicles.

Note : Not For Sale in California

Interchange:

Brand  Interchange Part Number

Application:

Year Make Model Submodel Engine Size
1978 - 1979 Chevrolet El Camino 3.3L/V6
1978 - 1980 Chevrolet El Camino 3.8L/V6
1980 Chevrolet Impala 3.8L/V6
1994 - 1995 Chevrolet Impala SS 5.7L/V8
1978 Chevrolet Malibu 5L/V8
1978 - 1980 Chevrolet Malibu 3.8L/V6
1978 - 1979 Chevrolet Malibu 3.3L/V6
1979 Chevrolet Malibu 4.4L/V8
1977 - 1979 Dodge Diplomat 5.2L/V8
1978 - 1979 Dodge Diplomat 5.9L/V8
1978 - 1979 Dodge Magnum 5.2L/V8
1978 - 1979 Dodge Magnum 5.9L/V8
1980 Dodge Mirada 5.9L/V8
1977 - 1978 Dodge Monaco 3.7L/L6
1977 - 1978 Dodge Monaco 5.2L/V8
1976 - 1979 Dodge Ramcharger 3.7L/L6
1979 - 1981 Dodge St. Regis 3.7L/L6
1979 - 1980 Dodge St. Regis 5.9L/V8
1975 - 1983 Ford Bronco 5L/V8
1980 - 1983 Ford Bronco 5.8L/V8
1980 - 1986 Ford Bronco 4.9L/L6
1979 Ford LTD 5.8L/V8
1979 Ford E-100 Econoline 4.9L/L6
1975 - 1983 Ford E-100 Econoline Club Wagon 4.9L/L6
1984 - 1987 BMW 325e 2.7L/L6
1993 - 1995 BMW 525i 2.5L/L6
1994 - 1995 BMW 530i 3L/V8
1994 - 1995 BMW 540i 4L/V8
1978 Buick Century 5L/V8
1978 - 1979 Buick Century Limited 3.8L/V6
1978 - 1979 Buick Century 3.2L/V6
1979 Buick Century 4.9L/V8
1980 Buick Electra 5.7L/V8
1980 Buick LeSabre 5.7L/V8
1980 Buick LeSabre 4.1L/V6
1980 Buick Estate Wagon 5.7L/V8
1978 Buick Regal 5L/V8
1978 - 1979 Buick Regal 3.2L/V6
1979 Buick Regal 4.9L/V8
1980 Buick Riviera 5.7L/V8
1992 - 1996 Buick Roadmaster 5.7L/V8
1991 Buick Roadmaster 5L/V8
1991 Buick Commercial Chassis 5L/V8
1992 - 1993 Buick Commercial Chassis 5.7L/V8
1993 - 1995 Cadillac Fleetwood 5.7L/V8
1993 - 1995 Cadillac Commercial Chassis 5.7L/V8
1985 - 1990 Chevrolet Astro 2.5L/L4
1980 Chevrolet Camaro 3.8L/V6
1980 Chevrolet Camaro 4.4L/V8
1995 Chevrolet Camaro 5.7L/V8
1981 Chevrolet Camaro Sport 5L/V8
1980 Chevrolet Caprice 3.8L/V6
1994 - 1995 Chevrolet Caprice 5.7L/V8
1994 - 1995 Chevrolet Caprice 4.3L/V8
1978 Chevrolet El Camino 5L/V8
1979 Chevrolet El Camino 4.4L/V8
1988 - 1992 Toyota Land Cruiser 4L/L6
1993 - 1994 Toyota T100 3L/V6
1994 - 1995 Toyota T100 2.7L/L4
1995 Toyota T100 3.4L/V6
1995 Toyota Tacoma 3.4L/V6
1978 - 1979 Buick Century Special 3.8L/V6
1979 Buick Century Custom 3.8L/V6
1981 Chevrolet Camaro Berlinetta 5L/V8
1977 - 1986 Ford F-250 4.9L/L6
1978 - 1980 GMC Caballero 3.8L/V6
1978 - 1979 GMC Caballero 3.3L/V6
1985 - 1990 GMC Safari 2.5L/L4
1981 Jeep Cherokee 4.2L/L6
1993 - 1995 Jeep Grand Cherokee 4L/L6
1993 Jeep Grand Wagoneer 5.2L/V8
1981 Jeep Wagoneer 4.2L/L6
1994 - 1995 Land Rover Discovery 3.9L/V8
1993 - 1995 Land Rover Range Rover County LWB 4.2L/V8
1986 - 1987 Lincoln Continental 5L/V8
1994 Mercedes-Benz E500 5L/V8
1994 - 1995 Mercedes-Benz S420 4.2L/V8
1994 - 1995 Mercedes-Benz S600 6L/V12
1976 - 1977 Mercury Capri 2.8L/V6
1975 - 1977 Porsche 911 2.7L/H6
1978 - 1982 Ford Fairmont 2.3L/L4
1987 - 1988 BMW 325 2.7L/L6
1980 - 1983 Ford F-100 5L/V8
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SKU: 15352901068

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4.7 ★★★★★
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Battle Creek, US
★★★★★ 5
Excellent book, possibly currently unique in coverage of latest ideas
This book is possibly currently unique in its coverage of the latest ideas in the field of deep learning -- and it is a very convenient and good survey of fundamental concepts (linear algebra, optimization, performance metrics, activation function types), different network types (multi-layer perceptron, convolutional neural networks, and recurrent neural networks), practical considerations (data set, training and validation, implementation), and applications (comments on existing real-world/commercial uses). The final 235 pages of the content portion of the book is dedicated to topics in "Deep Learning Research", and these topics are truly at the current frontier. Another reviewer said that one could gain the same knowledge of cutting-edge research by reading all of the latest papers (from academia and industry), but the "research" section of this book offers the following: Selection of the most notable research by the very experienced authors of the book, and collection of similar research in to a broader discussion of themes, and the additional insights. The book covers very advanced and new ideas currently being explored, and it is very nice to be able to have a consistent and coherent presentation of all of those ideas. However, the book is also packed with valuable observations and pointers about more basic aspects of deep learning implementations and practices -- and such commentary is in depth and includes substantial analysis and mathematical derivation (in an intuitive presentation that often includes graphs illustrating the phenomenon). As someone with an intermediate level of knowledge and experience of neural networks, I am really grateful for this book, because seems like the ideal resource for learning cutting-edge ideas and practices, with context. The book has excellent scope and depth, and I am confident that anyone with a solid background in linear algebra, calculus, statistics, and general machine learning, and basic neural networks (multi-layer perceptrons) will find this book to be very exciting and perhaps unique in its ability to take the reader to the next level and a new frontier. I was personally excited to learn about the idea of representing the dependencies of intermediate quantities by directed graphs, and how this can be used to perform calculations for recurrent neural networks efficiently. And I think the long chapter on recurrent neural networks is very helpful. Having said all of this, I think only people with significant working knowledge and experience with neural networks and mathematics -- people whose academic or professional focus has been neural networks for at least a year or two -- would benefit from this book. This book answers a lot of the deeper questions that one is likely to have while developing a solid understanding of the fundamentals, and that's one of the book's tremendous values, but this book assumes an understanding of the fundamentals (but does briskly cover the basics). I think this book is a perfect follow-up book for the excellent book "Neural Network Design (2nd edition)" by Hagan, Demuth, Beale, and de Jesus, and I highly recommend the latter for gaining the solid background needed to have a thrilling experience with the "Deep Learning" book. In summary, I am very glad this "Deep Learning" book was written, and I think the "Deep Learning" book will be a great benefit to a lot of people, and to the evolution of the field.
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Reviewed in the United States on April 18, 2017
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Zygerian99
Chelsea, US
★★★★★ 5
The definitive guide to becoming a researcher in the field
Format: Hardcover
This is not a coding book. I see a lot of negative reviews around the expectation that this book would teach the reader how to quickly build machine learning systems and write code. This book is not for that audience. If you just want to build applications, don't worry about how deep learning works. It's akin to needing to understand how an engine works just to drive a car. If you are looking for a coding resource, try: https://www.amazon.com/Hands-Machine-Learning-Scikit-Learn-TensorFlow/dp/1492032646/ref=sr_1_4?keywords=machine+learning+tensorflow&qid=1579608765&sr=8-4 . And even with that book, the material still goes far beyond what you need - use it as a light reference. I bought this book as an aspiring machine learning researcher, and towards that end, it is the best resource available in print (still true as of 2020). For instance: The first 5 chapters are timeless. These are things that were mostly established 20 or 30 years ago and beyond and are mostly STEM fundamentals at this point. There are whole textbooks dedicated to each of those chapters, but the authors provide a quick refresher and overview of probably 80% of what you'll encounter in deep learning. If you haven't previously learned each of these subtopics, you'll probably want to study them individually since they are the key to innovating (linear algebra, probability & stats, numerical computation, machine learning fundamentals). Chapters 6 thru 9 are the foundation of deep learning. We're about 12 years into seeing rapid change in the deep learning space, yet all of these principles and techniques still hold (many recent innovations are still relying on Convolutional models in 2020, which is the most layered/complex topics in those chapters). Therefore, I'd wager that these chapters are also fairly stable knowledge that is worth internalizing if you want to be deeply involved in the future of machine learning. Chapters after 9 are mostly experimental topics, and many of them are already the wrong strategies for optimal results. But there are interesting ideas in here that you'll often encounter in the wild, so it's good exposure to various topics. But probably not worth much of your time. And lastly, there is good history in here from people who know the space intimately. It's a good way to piece together the developments and learn the lexicon of deep learning so you can have intelligent conversation with experts.
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Reviewed in the United States on January 21, 2020
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Shannon
Whiting, US
★★★★★ 5
The best DL/ML book I have ever seen!!
Format: Hardcover
Fantastic deep-learning book! The logic is very easy to follow, but the content is very thorough when it comes to explaining the theories behind it, making it perfect for beginners as well as math and CS students. The best DL/ML book I have ever seen!!
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Reviewed in the United States on November 30, 2025
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William P Ross
Dallas, US
★★★★★ 5
Comprehensive Look At An Incredibly Complex Topic
Format: Hardcover
Deep Learning is an advanced book with great explanations and details. There is a heavy math focus with the book's beginning chapters detailing the necessary linear algebra and probability that one will need to understand deep learning. I liked that the author's chose to cover only the parts of these subjects which are relevant to deep learning. There are many interesting philosophical sections in the book as well. Just about when I was feeling overwhelmed with the complexity of the mathematics the authors take a step back and cover the foundations of deep learning such as borrowing concepts from human learning. There was an interesting dicussion about the early studies done on the vision of cat's and monkey's in the 1970s. The text covers the entire history of deep learning and the bibliography is hundreds of sources. It is clear this is the most comprehensive text available about deep learning. For anybody interested in this topic this book is a mandatory read. There are sections about machine learning as well, which makes sense because deep learning is a subset of machine learning. These sections focused on the machine learning concepts which are most relevant to deep learning. The book was well organized and divided into three parts which cover mathematics related to deep learning, typical deep learning techniques, and then more experiment learning techniques. Often the author's state when a technique works well or when it does not, and which types of data works best for the technique. Just a warning, the math in this book is highly complex. It requires a lot of work to go through this book, but the effort will be well rewarded.
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Reviewed in the United States on March 15, 2017
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Adam
Birmingham, US
★★★★★ 4
Too Dry.
Format: Hardcover
This was a required textbook for my class in college. I think it was too dry. The book titled Deep Learning: From Curiosity To Mastery is much more approachable.
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Reviewed in the United States on May 22, 2026

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