github.com/pyroscope-io/pyroscope@v0.37.3-0.20230725203016-5f6947968bd0/examples/ruby/README.md (about)

     1  ## Continuous Profiling for Ruby applications
     2  ### Profiling a Ruby Rideshare App with Pyroscope
     3  ![ruby_example_architecture_new_00](https://user-images.githubusercontent.com/23323466/173369670-ba6fe5ce-eab0-4824-94dd-c72255efc063.gif)
     4  
     5  Note: For documentation on the Pyroscope ruby gem visit [our website](https://pyroscope.io/docs/ruby/)
     6  ## Background
     7  In this example we show a simplified, basic use case of Pyroscope. We simulate a "ride share" company which has three endpoints found in `server.rb`:
     8  - `/bike`    : calls the `order_bike(search_radius)` function to order a bike
     9  - `/car`     : calls the `order_car(search_radius)` function to order a car
    10  - `/scooter` : calls the `order_scooter(search_radius)` function to order a scooter
    11  
    12  We also simulate running 3 distinct servers in 3 different regions (via [docker-compose.yml](https://github.com/pyroscope-io/pyroscope/blob/main/examples/ruby/docker-compose.yml))
    13  - us-east
    14  - eu-north
    15  - ap-south
    16  
    17  One of the most useful capabilities of Pyroscope is the ability to tag your data in a way that is meaningful to you. In this case, we have two natural divisions, and so we "tag" our data to represent those:
    18  - `region`: statically tags the region of the server running the code
    19  - `vehicle`: dynamically tags the endpoint (similar to how one might tag a controller rails)
    20  
    21  
    22  ## Tagging static region
    23  Tagging something static, like the `region`, can be done in the initialization code in the `config.tags` variable:
    24  ```
    25  Pyroscope.configure do |config|
    26    config.app_name = "ride-sharing-app"
    27    config.server_address = "http://pyroscope:4040"
    28    config.tags = {
    29      "region": ENV["REGION"],                     # Tags the region based of the environment variable
    30    }
    31  end
    32  ```
    33  
    34  ## Tagging dynamically within functions
    35  Tagging something more dynamically, like we do for the `vehicle` tag can be done inside our utility `find_nearest_vehicle()` function using a `Pyroscope.tag_wrapper` block
    36  ```
    37  def find_nearest_vehicle(n, vehicle)
    38    Pyroscope.tag_wrapper({ "vehicle" => vehicle }) do
    39      ...code to find nearest vehicle
    40    end
    41  end
    42  ```
    43  
    44  What this block does, is:
    45  1. Add the tag `{ "vehicle" => "car" }`
    46  2. execute the `find_nearest_vehicle()` function
    47  3. Before the block ends it will (behind the scenes) remove the `{ "vehicle" => "car" }` from the application since that block is complete
    48  
    49  ## Resulting flamgraph / performance results from the example
    50  ### Running the example
    51  To run the example run the following commands:
    52  ```
    53  # Pull latest pyroscope image:
    54  docker pull pyroscope/pyroscope:latest
    55  
    56  # Run the example project:
    57  docker-compose up --build
    58  
    59  # Reset the database (if needed):
    60  # docker-compose down
    61  ```
    62  
    63  What this example will do is run all the code mentioned above and also send some mock-load to the 3 servers as well as their respective 3 endpoints. If you select our application: `ride-sharing-app.cpu` from the dropdown, you should see a flamegraph that looks like this. After we give 20-30 seconds for the flamegraph to update and then click the refresh button we see our 3 functions at the bottom of the flamegraph taking CPU resources _proportional to the size_ of their respective `search_radius` parameters.
    64  
    65  ## Where's the performance bottleneck?
    66  ![ruby_first_slide_01-01](https://user-images.githubusercontent.com/23323466/139566972-2f04b826-d05c-4307-9b60-4376840001ab.jpg)
    67  
    68  
    69  The first step when analyzing a profile outputted from your application, is to take note of the _largest node_ which is where your application is spending the most resources. In this case, it happens to be the `order_car` function.
    70  
    71  The benefit of using the Pyroscope package, is that now that we can investigate further as to _why_ the `order_car()` function is problematic. Tagging both `region` and `vehicle` allows us to test two good hypotheses:
    72  - Something is wrong with the `/car` endpoint code
    73  - Something is wrong with one of our regions
    74  
    75  To analyze this we can select one or more tags from the "Select Tag" dropdown:
    76  
    77  ![image](https://user-images.githubusercontent.com/23323466/135525308-b81e87b0-6ffb-4ef0-a6bf-3338483d0fc4.png)
    78  
    79  ## Narrowing in on the Issue Using Tags
    80  Knowing there is an issue with the `order_car()` function we automatically select that tag. Then, after inspecting multiple `region` tags, it becomes clear by looking at the timeline that there is an issue with the `eu-north` region, where it alternates between high-cpu times and low-cpu times.
    81  
    82  We can also see that the `mutex_lock()` function is consuming almost 70% of CPU resources during this time period.
    83  
    84  ![ruby_second_slide_01](https://user-images.githubusercontent.com/23323466/139566994-f3f8c2f3-6bc4-40ca-ac4e-8fc862d0c0ad.jpg)
    85  
    86  ## Comparing two time periods
    87  Using Pyroscope's "comparison view" we can actually select two different time ranges from the timeline to compare the resulting flamegraphs. The pink section on the left timeline results in the left flamegraph and the blue section on the right represents the right flamegraph.
    88  
    89  When we select a period of low-cpu utilization, and a period of high-cpu utilization we can see that there is clearly different behavior in the `mutex_lock()` function where it takes **23% of CPU** during low-cpu times and **70% of CPU** during high-cpu times.
    90  
    91  ![ruby_third_slide_01-01](https://user-images.githubusercontent.com/23323466/139567004-96064c5b-570c-48a4-aa9a-07a46a0646a5.jpg)
    92  
    93  ## Visualizing Diff Between Two Flamegraphs
    94  While the difference _in this case_ is stark enough to see in the comparison view, sometimes the diff between the two flamegraphs is better visualized with them overlayed over each other. Without changing any parameters, we can simply select the diff view tab and see the difference represented in a color-coded diff flamegraph.
    95  
    96  ![ruby_fourth_slide_01-01](https://user-images.githubusercontent.com/23323466/139567016-3f738923-2429-4f93-8fe0-cc0ca8c765fd.jpg)
    97  
    98  
    99  ### More use cases
   100  We have been beta testing this feature with several different companies and some of the ways that we've seen companies tag their performance data:
   101  - Tagging controllers
   102  - Tagging regions
   103  - Tagging jobs from a redis or sidekiq queue
   104  - Tagging commits
   105  - Tagging staging / production environments
   106  - Tagging different parts of their testing suites
   107  - Etc...
   108  
   109  ### Future Roadmap
   110  We would love for you to try out this example and see what ways you can adapt this to your ruby application. Continuous profiling has become an increasingly popular tool for the monitoring and debugging of performance issues (arguably the fourth pillar of observability).
   111  
   112  We'd love to continue to improve this gem by adding things like integrations with popular tools, memory profiling, etc. and we would love to hear what features _you would like to see_.