I'm writing an image to servlet response with best performance. Any advices, practices, experience?
For best performance and efficiency, don't put the entire content in byte[]
. Each byte
eats, yes, one byte from Java's memory. Imagine 100 concurrent users which requests 10 images of each 100KB, that's already 100MB of Java memory eaten away.
Get the image as an InputStream
from the DB using ResultSet#getBinaryStream()
, wrap it in an BufferedInputStream
and write it to the OutputStream
of the response wrapped in an BufferedOutputStream
through a small byte[]
buffer.
Assuming that you select images by the database key as identifier, use this in your HTML:
<img src="images/123">
Create a Servlet
class which is mapped in web.xml
on an url-pattern
of /images/*
and implement its doGet()
method as follows.:
Long imageId = Long.valueOf(request.getPathInfo().substring(1)); // 123
Image image = imageDAO.find(imageId); // Get Image from DB.
// Image class is just a Javabean with the following properties:
// private String filename;
// private Long length;
// private InputStream content;
response.setHeader("Content-Type", getServletContext().getMimeType(image.getFilename()));
response.setHeader("Content-Length", String.valueOf(image.getLength()));
response.setHeader("Content-Disposition", "inline; filename=\"" + image.getFilename() + "\"");
BufferedInputStream input = null;
BufferedOutputStream output = null;
try {
input = new BufferedInputStream(image.getContent());
output = new BufferedOutputStream(response.getOutputStream());
byte[] buffer = new byte[8192];
for (int length = 0; (length = input.read(buffer)) > 0) {
output.write(buffer, 0, length);
}
} finally {
if (output != null) try { output.close(); } catch (IOException logOrIgnore) {}
if (input != null) try { input.close(); } catch (IOException logOrIgnore) {}
}
In the ImageDAO#find()
you can use ResultSet#getBinaryStream()
to get the image as an InputStream
from the database.
If you love us? You can donate to us via Paypal or buy me a coffee so we can maintain and grow! Thank you!
Donate Us With