The data flow graphs shown until now are defined completely statically. However, in real situations you might need to modify the behavior of the graph based on some dynamic condition or event. The required modification could be in the data being processed, for example a modified mode of operation or a new coefficient table, or it could be in the control flow of the graph such as conditional execution or dynamically reconfiguring a graph with another graph. Run-time parameters (RTP) are useful in such situations. Either the kernels or the graphs can be defined to execute with parameters. Additional graph API are also provided to update or read these parameter values while the graph is running.
Two types of run-time parameters are supported. The first is the asynchronous or sticky parameters which can be changed at any time by either a controlling processor such as the Processing System (PS), or by another AI Engine kernel. They are read each time a kernel is invoked without any specific synchronization. These types of parameters can be used as filter coefficients that change infrequently, for example.
Synchronous or triggering parameters are the other type of supported run-time parameters. A kernel that requires a triggering parameter does not execute until these parameters have been written by a controlling processor. Upon a write, the kernel executes once, reading the new updated value. After completion, the kernel is blocked from executing until the parameter is updated again. This allows a different type of execution model from the normal streaming model, which can be useful for certain updating operations where blocking synchronization is important.
Run-time parameters can either be scalar values or array
values. In the case where a controlling processor (such as the PS) is responsible for
the update, the
graph.update() API should be used.