Artwork

Contenido proporcionado por Christoph Neumann and Nate Jones, Christoph Neumann, and Nate Jones. Todo el contenido del podcast, incluidos episodios, gráficos y descripciones de podcast, lo carga y proporciona directamente Christoph Neumann and Nate Jones, Christoph Neumann, and Nate Jones o su socio de plataforma de podcast. Si cree que alguien está utilizando su trabajo protegido por derechos de autor sin su permiso, puede seguir el proceso descrito aquí https://es.player.fm/legal.
Player FM : aplicación de podcast
¡Desconecta con la aplicación Player FM !

Ep 108: Testify!

22:42
 
Compartir
 

Manage episode 397588653 series 2463849
Contenido proporcionado por Christoph Neumann and Nate Jones, Christoph Neumann, and Nate Jones. Todo el contenido del podcast, incluidos episodios, gráficos y descripciones de podcast, lo carga y proporciona directamente Christoph Neumann and Nate Jones, Christoph Neumann, and Nate Jones o su socio de plataforma de podcast. Si cree que alguien está utilizando su trabajo protegido por derechos de autor sin su permiso, puede seguir el proceso descrito aquí https://es.player.fm/legal.

Each week, we discuss a different topic about Clojure and functional programming.

If you have a question or topic you'd like us to discuss, tweet @clojuredesign, send an email to feedback@clojuredesign.club, or join the #clojuredesign-podcast channel on the Clojurians Slack.

This week, the topic is: "testing around I/O". We start testing our code only to discover we need the whole world running first!

Our discussion includes:

  • How do you unit test an I/O heavy process?
  • Should you be REPL-driven or test-driven?
  • What is the REPL suited for?
  • What are tests suited for?
  • What do you need to know to figure out the bug?
  • How can a purely functional language help with testing?
  • Techniques for factoring out pure logic.
  • What is an extraction function?
  • What is an ingestion transform?
  • Outside data models verses "internal" or "working" models.
  • Code smells when working with external data.
  • Where can you use schemas in your code?

Selected quotes

  • The tracer bullet misfires every now and again.

  • Now you're going from a tracer bullet to a silver bullet—apparently trying to solve all the problems at once!

  • The REPL lets you figure out the basics of the process and your own way of thinking about it and modeling it, and the tests let you start handling more and more cases.

  • Exploration early, testing later.

  • Are you just supposed to log everything all the time? Always run your code with a profiler attached?

  • If you look between each I/O step, there is pure connective tissue that holds those things together. We remove the logic and leave just the I/O by itself.

  • With pure functions, we don't have to worry about provisioning the AWS cluster for the tests to run!

  • It's really tempting to use the external data as your working data.

  • What is the data that this application reasons on?

  • By creating an extractor function, you pull all of the parts that matter into a single place. It returns a map for that entity that you can reason on and schema check.

  • We've distilled out the sea of information into a drinkable cupful. We've gone from the mountain spring to bottled water.

  • I guess you could always take all the raw data and shove them off in an Elasticsearch instance for massive debugging later—in some super-sophisticated implementation.

  • Not how do we accomplish it, but how do we test it?

Links

  continue reading

115 episodios

Artwork

Ep 108: Testify!

Functional Design in Clojure

90 subscribers

published

iconCompartir
 
Manage episode 397588653 series 2463849
Contenido proporcionado por Christoph Neumann and Nate Jones, Christoph Neumann, and Nate Jones. Todo el contenido del podcast, incluidos episodios, gráficos y descripciones de podcast, lo carga y proporciona directamente Christoph Neumann and Nate Jones, Christoph Neumann, and Nate Jones o su socio de plataforma de podcast. Si cree que alguien está utilizando su trabajo protegido por derechos de autor sin su permiso, puede seguir el proceso descrito aquí https://es.player.fm/legal.

Each week, we discuss a different topic about Clojure and functional programming.

If you have a question or topic you'd like us to discuss, tweet @clojuredesign, send an email to feedback@clojuredesign.club, or join the #clojuredesign-podcast channel on the Clojurians Slack.

This week, the topic is: "testing around I/O". We start testing our code only to discover we need the whole world running first!

Our discussion includes:

  • How do you unit test an I/O heavy process?
  • Should you be REPL-driven or test-driven?
  • What is the REPL suited for?
  • What are tests suited for?
  • What do you need to know to figure out the bug?
  • How can a purely functional language help with testing?
  • Techniques for factoring out pure logic.
  • What is an extraction function?
  • What is an ingestion transform?
  • Outside data models verses "internal" or "working" models.
  • Code smells when working with external data.
  • Where can you use schemas in your code?

Selected quotes

  • The tracer bullet misfires every now and again.

  • Now you're going from a tracer bullet to a silver bullet—apparently trying to solve all the problems at once!

  • The REPL lets you figure out the basics of the process and your own way of thinking about it and modeling it, and the tests let you start handling more and more cases.

  • Exploration early, testing later.

  • Are you just supposed to log everything all the time? Always run your code with a profiler attached?

  • If you look between each I/O step, there is pure connective tissue that holds those things together. We remove the logic and leave just the I/O by itself.

  • With pure functions, we don't have to worry about provisioning the AWS cluster for the tests to run!

  • It's really tempting to use the external data as your working data.

  • What is the data that this application reasons on?

  • By creating an extractor function, you pull all of the parts that matter into a single place. It returns a map for that entity that you can reason on and schema check.

  • We've distilled out the sea of information into a drinkable cupful. We've gone from the mountain spring to bottled water.

  • I guess you could always take all the raw data and shove them off in an Elasticsearch instance for massive debugging later—in some super-sophisticated implementation.

  • Not how do we accomplish it, but how do we test it?

Links

  continue reading

115 episodios

Todos los episodios

×
 
Loading …

Bienvenido a Player FM!

Player FM está escaneando la web en busca de podcasts de alta calidad para que los disfrutes en este momento. Es la mejor aplicación de podcast y funciona en Android, iPhone y la web. Regístrate para sincronizar suscripciones a través de dispositivos.

 

Guia de referencia rapida