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The future is bright Mar 30, 2025 Software Engineering is here to stay Mar 3, 2024 On luck and gumption Oct 8, 2023 Book review: Clojure for the Brave and True Oct 2, 2022 Why don’t they tell you that in the instructions? Aug 31, 2022 Monolithic repository vs a monolith Aug 23, 2022 Scripting languages are tools for tying APIs together, not building complex systems Jun 8, 2022 Good developers can pick up new programming languages Jun 3, 2022 Java is no longer relevant May 29, 2022 Automation and coding tools for pet projects on the Apple hardware May 28, 2022 There is no such thing as one grand unified full-stack programming language May 27, 2022 Best practices for building a microservice architecture Apr 25, 2022 Tools of the craft Dec 18, 2021 What programming language to use for a brand new project? Feb 18, 2020 Which AWS messaging and queuing service to use? Jan 25, 2019 The religion of JavaScript Nov 26, 2018 Let’s talk cloud neutrality Sep 17, 2018 TypeScript starts where JavaScript leaves off Aug 2, 2017 Design patterns in TypeScript: Chain of Responsibility Jul 22, 2017 Amazon Alexa is eating the retailers alive Jun 22, 2016 What can we learn from the last week's salesforce.com outage ? May 15, 2016 Why it makes perfect sense for Dropbox to leave AWS May 7, 2016 OAuth 2.0: the protocol at the center of the universe Jan 1, 2016 What Every College Computer Science Freshman Should Know Aug 14, 2015 The Three Myths About JavaScript Simplicity Jul 10, 2015 The longer the chain of responsibility the less likely there is anyone in the hierarchy who can actually accept it Jun 7, 2015 Big Data is not all about Hadoop May 30, 2015 Exploration of the Software Engineering as a Profession Apr 8, 2015 Thanking MIT Scratch Sep 14, 2013 Have computers become too complicated for teaching ? Jan 1, 2013 Scripting News: After X years programming Jun 5, 2012

Scripting languages are tools for tying APIs together, not building complex systems

June 8, 2022

There are two general categories of programming languages: compiled, and interpreted.



A program written in a compiled language must first be converted into native machine code to run. This step is called compilation.



A program written in an interpreted language does not need to be converted into native code. The interpreter parses the program and executes it in real-time. It is possible to use the interpreter interactively as a calculator or debugger.



In some cases, the interpreter may store the program in the form of intermediate code in memory and compile parts of it into native code in-real-time in a process called Just-in-time Compilation.



The interpreter may save the intermediate bytecode for faster loading times during future execution as an optimization. Python, for example, saves *.pyc files with compiled bytecode of the imported modules. 



Similarly, though technically a compiled language, Java produces *.class files with bytecode. Java is not a strictly interpreted language and is outside of this post's scope.



An interpreted language is typically a higher-level language. It may explicitly represent data structures, such as lists, tuples, and dictionaries (maps). It may also have higher-level abstractions over algorithms. It does not have to be loosely typed, though most interpreted languages are.



Under most circumstances, a program written in an interpreted language is slower than compiled. However, program performance needs to be balanced against developer productivity. The very purpose of an interpreted language is to hide complex algorithms from the developer and make programs available to run immediately after every change. A program being executed is in the same language that it is written in.



To paraphrase Mel Conway, an interpreted language is an application language, not algorithm (aka platform ) language. Interpreted languages are best used as a "glue" that ties algorithms and APIs together — not to implement algorithms.



There is a reason why many modern interpreted languages are also referred to as "scripting." Scripting is automating existing APIs and algorithms and combining them into new APIs and algorithms. Scripting is about controlling or orchestrating existing tools, APIs, and algorithms.








A reader may rightfully ask, "Oleg, what are you getting at?"



What makes me think of these things early in the mornings is the proliferation of JavaScript as an enterprise application language. I believe using JS as a hammer to solve every problem will hound enterprise IT for decades.



JavaScript is an interpreted scripting language. It's a tool for tying things together — DOM objects on a web page and APIs.



I love JavaScript as a tool for quickly building simple apps that tie cloud APIs together.



I'm not too fond of JavaScript for the religion it cultivates among its fans who are in denial about its limitations and feel the need to use it to solve every problem, however inappropriate it might be for the task.