• 【Spring】java.lang.IndexOutOfBoundsException: Index: 256, Size: 256


    Spring接受前台的数据超过256出现例如以下异常:

    org.springframework.beans.InvalidPropertyException: Invalid property 'specificationValues[256]' of bean class [com.sencloud.entity.Specification]: Index of out of bounds in property path 'specificationValues[256]'; nested exception is java.lang.IndexOutOfBoundsException: Index: 256, Size: 256
    	org.springframework.beans.BeanWrapperImpl.getPropertyValue(BeanWrapperImpl.java:811)
    	org.springframework.beans.BeanWrapperImpl.getNestedBeanWrapper(BeanWrapperImpl.java:554)

    溯源了下Spring的代码,找到了DataBinder,先解释下DataBinder类的作用。见链接

    http://docs.spring.io/spring/docs/1.2.x/api/org/springframework/validation/DataBinder.html

    当中有一句

    Binder that allows for binding property values to a target object. The binding process can be customized through specifying allowed fields, required fields, and custom editors.
    
    Note that there are potential security implications in failing to set an array of allowed fields. In the case of HTTP form POST data for example, malicious clients can attempt to subvert an application by supplying values for fields or properties that do not exist on the form. In some cases this could lead to illegal data being set on command objects or their nested objects. For this reason, it is highly recommended to specify the allowedFields property on the DataBinder.

    大概意思是前台的Form 元素绑定到 后台的JaveBean对象,做的一个映射。可是这个映射的List长度不能够超过256

    反编译的源代码例如以下:




    解决例如以下:重set下autoGrowCollectionLimit,当做绑定的时候set为1024或者更大

      /**
         * 因为Spring在接受前台传入的List时,就会出现256的IndexOutOfBoundsException异常
         * 设置setAutoGrowCollectionLimit为1024
         * @param binder
         * @see [类、类#方法、类#成员]
         */
        @InitBinder
        public void initListBinder(WebDataBinder binder)
        {
            // 设置须要包裹的元素个数,默觉得256
            binder.setAutoGrowCollectionLimit(1024);
        }



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  • 原文地址:https://www.cnblogs.com/wzjhoutai/p/7283936.html
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