- Sort Score
- Num 10 results
- Language All
Results 21 - 30 of 41 for GB (0.01 seconds)
-
src/test/java/org/codelibs/fess/helper/LabelTypeHelperTest.java
assertFalse(labelTypeHelper.matchLocale(Locale.US, Locale.UK)); // Test with same language but different country Locale enUS = new Locale("en", "US"); Locale enGB = new Locale("en", "GB"); assertFalse(labelTypeHelper.matchLocale(enUS, enGB)); // Test with same language, target has no country Locale en = new Locale("en"); assertTrue(labelTypeHelper.matchLocale(enUS, en));
Created: Tue Mar 31 13:07:34 GMT 2026 - Last Modified: Wed Jan 14 14:29:07 GMT 2026 - 12.7K bytes - Click Count (0) -
src/main/webapp/js/admin/bootstrap.min.js.map
,IAAMC,EAAqB,GAAG7e,MAAMnG,KAAK+kB,EAAgB3e,iBA1JhC,qBA4JzB5H,UAAEwmB,GAAoBjZ,SAAStH,IAGjC1G,EAAQ2H,aAAa,iBAAiB,GAGpC+Q,GACFA,K,EAKG1S,iBAAP,SAAwBrE,GACtB,OAAOgC,KAAKsC,MAAK,WACf,IAAMihB,EAAQzmB,UAAEkD,MACZwC,EAAO+gB,EAAM/gB,KAAKzB,IAOtB,GALKyB,IACHA,EAAO,IAAIogB,EAAI5iB,MACfujB,EAAM/gB,KAAKzB,GAAUyB,IAGD,iBAAXxE,EAAqB,CAC9B,GAA4B,oBAAjBwE,EAAKxE,GACd,MAAM,IAAIyB,UAA8BzB,sBAAxC,KAGFwE,EAAKxE,U,6BA1KX,WACE,MArCY,Y,EA8BV4kB,GA0LN9lB,UAAEZ,UACC0G,GAzMuB,wBAMG,mEAmMqB,SAAUxC,GACxDA,EAAMuC,iBACNigB,GA...
Created: Tue Mar 31 13:07:34 GMT 2026 - Last Modified: Sat Oct 26 01:49:09 GMT 2024 - 180.9K bytes - Click Count (0) -
mockwebserver-deprecated/src/test/java/okhttp3/mockwebserver/MockWebServerTest.kt
val connection = server.url("/").toUrl().openConnection() as HttpURLConnection connection.setRequestMethod("POST") connection.setDoOutput(true) connection.setFixedLengthStreamingMode(1024 * 1024 * 1024) // 1 GB connection.connect() val out = connection.outputStream val data = ByteArray(1024 * 1024) var i = 0 while (i < 1024) { try { out.write(data) out.flush()
Created: Fri Apr 03 11:42:14 GMT 2026 - Last Modified: Thu Jul 03 13:16:34 GMT 2025 - 22.3K bytes - Click Count (0) -
mockwebserver/src/test/java/mockwebserver3/MockWebServerTest.kt
val connection = server.url("/").toUrl().openConnection() as HttpURLConnection connection.requestMethod = "POST" connection.doOutput = true connection.setFixedLengthStreamingMode(1024 * 1024 * 1024) // 1 GB connection.connect() val out = connection.outputStream val data = ByteArray(1024 * 1024) var i = 0 while (i < 1024) { try { out!!.write(data) out.flush()
Created: Fri Apr 03 11:42:14 GMT 2026 - Last Modified: Sun Aug 03 22:38:00 GMT 2025 - 28K bytes - Click Count (0) -
docs/es/docs/deployment/concepts.md
Por ejemplo, si tu código carga un modelo de Machine Learning con **1 GB de tamaño**, cuando ejecutas un proceso con tu API, consumirá al menos 1 GB de RAM. Y si inicias **4 procesos** (4 workers), cada uno consumirá 1 GB de RAM. Así que, en total, tu API consumirá **4 GB de RAM**. Y si tu servidor remoto o máquina virtual solo tiene 3 GB de RAM, intentar cargar más de 4 GB de RAM causará problemas. 🚨
Created: Sun Apr 05 07:19:11 GMT 2026 - Last Modified: Thu Mar 19 18:15:55 GMT 2026 - 20K bytes - Click Count (0) -
docs/zh/docs/deployment/concepts.md
多个进程通常**不共享任何内存**。 这意味着每个正在运行的进程都有自己的东西、变量和内存。 如果您的代码消耗了大量内存,**每个进程**将消耗等量的内存。 ### 服务器内存 { #server-memory } 例如,如果您的代码加载 **1 GB 大小**的机器学习模型,则当您使用 API 运行一个进程时,它将至少消耗 1 GB RAM。 如果您启动 **4 个进程**(4 个工作进程),每个进程将消耗 1 GB RAM。 因此,您的 API 总共将消耗 **4 GB RAM**。 如果您的远程服务器或虚拟机只有 3 GB RAM,尝试加载超过 4 GB RAM 将导致问题。 🚨 ### 多进程 - 一个例子 { #multiple-processes-an-example } 在此示例中,有一个 **Manager Process** 启动并控制两个 **Worker Processes**。Created: Sun Apr 05 07:19:11 GMT 2026 - Last Modified: Fri Mar 20 17:06:37 GMT 2026 - 16.8K bytes - Click Count (0) -
docs/uk/docs/deployment/concepts.md
Наприклад, якщо ваш код завантажує модель машинного навчання розміром **1 GB**, то при запуску одного процесу з вашим API він споживатиме щонайменше 1 GB RAM. А якщо ви запустите **4 процеси** (4 працівники) - кожен споживатиме 1 GB RAM. Отже, загалом ваш API споживатиме **4 GB RAM**. І якщо ваш віддалений сервер або віртуальна машина має лише 3 GB RAM, спроба використати понад 4 GB призведе до проблем. 🚨
Created: Sun Apr 05 07:19:11 GMT 2026 - Last Modified: Thu Mar 19 18:27:41 GMT 2026 - 29.6K bytes - Click Count (0) -
docs/tr/docs/deployment/concepts.md
### Server Belleği { #server-memory } Örneğin code'unuz **1 GB** boyutunda bir Machine Learning modelini yüklüyorsa, API'niz tek process ile çalışırken en az 1 GB RAM tüketir. **4 process** (4 worker) başlatırsanız her biri 1 GB RAM tüketir. Yani toplamda API'niz **4 GB RAM** tüketir. Uzak server'ınız veya sanal makineniz yalnızca 3 GB RAM'e sahipse, 4 GB'tan fazla RAM yüklemeye çalışmak sorun çıkarır. 🚨Created: Sun Apr 05 07:19:11 GMT 2026 - Last Modified: Fri Mar 20 07:53:17 GMT 2026 - 19.2K bytes - Click Count (0) -
docs/pt/docs/deployment/concepts.md
Por exemplo, se seu código carrega um modelo de Aprendizado de Máquina com **1 GB de tamanho**, quando você executa um processo com sua API, ele consumirá pelo menos 1 GB de RAM. E se você iniciar **4 processos** (4 trabalhadores), cada um consumirá 1 GB de RAM. Então, no total, sua API consumirá **4 GB de RAM**. E se o seu servidor remoto ou máquina virtual tiver apenas 3 GB de RAM, tentar carregar mais de 4 GB de RAM causará problemas. 🚨
Created: Sun Apr 05 07:19:11 GMT 2026 - Last Modified: Thu Mar 19 18:20:43 GMT 2026 - 20.3K bytes - Click Count (0) -
docs/de/docs/deployment/concepts.md
Wenn Ihr Code beispielsweise ein Machine-Learning-Modell mit **1 GB Größe** lädt und Sie einen Prozess mit Ihrer API ausführen, verbraucht dieser mindestens 1 GB RAM. Und wenn Sie **4 Prozesse** (4 Worker) starten, verbraucht jeder 1 GB RAM. Insgesamt verbraucht Ihre API also **4 GB RAM**. Und wenn Ihr entfernter Server oder Ihre virtuelle Maschine nur über 3 GB RAM verfügt, führt der Versuch, mehr als 4 GB RAM zu laden, zu Problemen. 🚨
Created: Sun Apr 05 07:19:11 GMT 2026 - Last Modified: Thu Mar 19 17:58:09 GMT 2026 - 21.4K bytes - Click Count (0)