What technical topics should you be prepared to address?
Before you dig into the technical topics you may be asked about during your interview, connect with your recruiting point of contact to understand the subjects/skills you’ll most likely be discussing and demonstrating. In general, the technical interviews typically require you to perform coding and system design white boarding exercises. Also keep in mind that invention is in their DNA, and technology is the fundamental tool they wield to evolve and improve every aspect of the experience we provide the customers. When reviewing the below topics, keep the customer top of mind.
They do not require that you know any specific programming language before interviewing for a tech position. However, familiarity with a prominent language is generally a prerequisite for success. You should be familiar with the syntax of languages such as Java, Python, C#, C/C++, or Ruby. You should also know some of the languages’ nuances, such as how memory management works, or the most commonly used collections, libraries, etc.
Most of the work they may do involves storing and providing access to data in efficient ways. This requires a strong background in data structures. You’ll need to understand the inner workings of common data structures and be able to compare and contrast their usage in various applications. You will be expected to know the runtimes for common operations as well as how they use memory.
Your interview will not be focused on rote memorization of algorithms. However, having a good understanding of the most common algorithms will likely make solving some of the questions a lot easier. Consider reviewing common algorithms such as traversals, divide and conquer, breadth-first search vs. depth-first search and understand the tradeoffs for each. Knowing the runtimes, theoretical limitations, and basic implementation strategies of different classes of algorithms is more important than memorizing the specific details of any given algorithm.
Expect to be asked to write syntactically correct code—no pseudo code. If you feel a bit rusty coding without an IDE or coding in a specific language, it’s a good idea to dust off the cobwebs and get comfortable coding with a pen and paper. The most important thing a Software Development Engineer does at for example Amazon is write scalable, robust, and well-tested code. These are the main evaluation criteria for your code. Make sure that you check for edge cases and validate that no bad input can slip through. This is your chance to show off your coding ability.
Good design is paramount to extensible, bug-free, long-lived code. We know it’s possible to solve any given software problem in almost limitless ways, but when software needs to be extensible and maintainable, good software design is critical to success. One way to build lasting software is to use object-oriented design best practices. You should have a working knowledge of a few common and useful design patterns, along with how to write software in an object-oriented way. You likely won’t be asked to describe the details of how specific design patterns work, but expect to have to defend your design choices.
Most of the software that we write is backed by a data store. Many of the challenges tech people face arise when figuring out how to most efficiently retrieve and store data for future use. Amazon for example has been at the forefront of the non-relational DB movement. They have made Amazon Web Services such as DynamoDB available to the developer community so that they can easily leverage the benefits of non-relational databases. While they don’t expect any particular level of expertise with non-relational databases, you should be familiar with broad database concepts and their applications. The more you know about tradeoffs between relational and non-relational databases, the better prepared you will be.
Systems at Amazon / Autodesk have to work under very strict tolerances at a high load. While we have some internal tools that help us with scaling, it’s important to have an understanding of a few basic distributed computing concepts. Understanding topics such as service-oriented architectures, map-reduce, distributed caching, load balancing, and others, will help you formulate answers to some of the more complicated distributed architecture questions you might encounter.
General Machine Learning & Artificial Intelligence
Expect to be asked about data-driven modeling, train/test protocols, error analysis, and statistical significance. For example, given a problem definition, you should be able to formulate it as a machine learning problem and propose a solution, including ideas for data sources, annotation, modeling approaches, and potential pitfalls. Understand the basic AI/ML methods and algorithms – revisit your favorite ML and AI textbooks.
Know that your interviewers won’t be evaluating your ability to memorize all of the details for each of these topics. They will be looking for your ability to apply what you know to solve problems efficiently and effectively. With (sometimes) limited time to prepare for a technical interview, we recommend reviewing computer science fundamentals and practicing coding outside of an integrated development environment. This will likely yield the best results for your time
By – Rory Sugrue.
Sources: Amazon – Linkedin. Linus Media Group forums.