I'm using bazel on a computer with 4 GB RAM (to compile the tensorflow project). Bazel does however not take into account the amount of memory I have and spawns too many jobs causing my machine to swap and leading to a longer build time.

I already tried setting the ram_utilization_factor flag through the following lines in my ~/.bazelrc

build --ram_utilization_factor 30
test --ram_utilization_factor 30

but that did not help. How are these factors to be understood anyway? Should I just randomly try out some others?


Some other flags that might help:

  • --host_jvm_args can be used to set how much memory the JVM should use by setting -Xms and/or -Xmx, e.g., bazel --host_jvm_args=-Xmx4g --host_jvm_args=-Xms512m build //foo:bar (docs).
  • --local_resources in conjunction with the --ram_utilization_factor flag (docs).
  • --jobs=10 (or some other low number, it defaults to 200), e.g. bazel build --jobs=2 //foo:bar (docs).

Note that --host_jvm_args is a startup option so it goes before the command (build) and --jobs is a "normal" build option so it goes after the command.

  • 2
    Thanks for your input. Nothing worked but setting --jobs manually to some low number, which I wanted to avoid initially.
    – panmari
    Dec 23 '15 at 11:38
  • Same here. JVM arguments didn't give any effect, --jobs made it work. Dec 2 '19 at 15:24

For me, the --jobs argument from @kristina's answer worked:

bazel build --jobs=1 tensorflow:libtensorflow_all.so

Note: --jobs=1 must follow, not precede build, otherwise bazel will not recognize it. If you were to type bazel --jobs=1 build tensorflow:libtensorflow_all.so, you would get this error message:

Unknown Bazel startup option: '--jobs=1'.

Just wanted to second @sashoalm's comment that the --jobs=1 flag was what made bazel build finally work.

For reference, I'm running bazel on Lubuntu 17.04, running as a VirtualBox guest with about 1.5 GB RAM and two cores of an Intel i3 (I'm running a Thinkpad T460). I was following the O'Reilly tutorial on TensorFlow (https://www.oreilly.com/learning/dive-into-tensorflow-with-linux), and ran into trouble at the following step:

$ bazel build tensorflow/examples/label_image:label_image

Changing this to bazel build --jobs=1 tensorflow/... did the trick.


i ran into quite a few unstability that bazel build failed in my k8s cluster.

Besides --jobs=1, try this: https://docs.bazel.build/versions/master/command-line-reference.html#flag--local_resources E.g. --local_resources=4096,2.0,1.0

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