akka-net-best-practices
- Repo stars 1,012
- Forks 98
- Author updated Apr 16, 2026, 02:05 AM
- Author repo dotnet-skills
- Domain
- Other
- Compatible agents
-
- Claude Code
- Cursor
- Cline
- Codex
- Windsurf
- Gemini CLI
- +20
- Trust score
- 88 / 100 · community maintained
- Author / version / license
- @Aaronontheweb · no license declared
- Token usage
- Lean
- Setup complexity
- Guided setup
- External API key
- Not required
- Operating systems
- macOS · Linux · Windows
- Runtime requirements
- Node.js
- Permissions
-
- Read-only
- Write / modify
- Shell exec
- Network behavior
- External requests
- Install commands
- 26 variants
Profile is derived at build time from SKILL.md and install vectors. Subject to drift from author intent.
Heads up: 未限定 allowed-tools,默认拥有全部工具权限。
---
name: akka-net-best-practices
description: Critical Akka.NET best practices including EventStream vs DistributedPubSub, supervision strateg…
category: other
runtime: Node.js
---
# akka-net-best-practices output preview
## PART A: Task fit
- Use case: Critical Akka.NET best practices including EventStream vs DistributedPubSub, supervision strategies, error handling, Props vs DependencyResolver, work distribution patterns, and cluster/local mode abstractions for testability..
- Inputs: target material, constraints, expected output, and acceptance criteria.
- Evidence boundary: follow “When to Use This Skill / Reference Files / 1. EventStream vs DistributedPubSub” and do not present inference as author intent.
## PART B: Execution result
- **01** The card summarizes the use case; runtime output centers on “Critical Akka.NET best practices including EventStream vs DistributedPubSub, supervision strategies, error handling, Props vs DependencyResolver, work distribution patterns, and cluster/local mode abstractions for testability.”.
- **02** When the source has headings, the agent prioritizes “When to Use This Skill / Reference Files / 1. EventStream vs DistributedPubSub” so the result follows the author’s structure.
- **03** Typical output includes task judgment, concrete steps, required commands or file edits, validation, and follow-up options.
- **04** Risk context follows the fingerprint: read files, write/modify files, run shell commands; may access external network resources; usually needs no extra API key.
## Running Rules
- read files, write/modify files, run shell commands; may access external network resources; usually needs no extra API key.
- Validate with a small sample before expanding scope.
- Return the result, validation criteria, and next iteration options. The source does not require a stable slash command. After installation, invoke the skill by name and describe the task.
Name target files or source material, expected output, forbidden changes, and whether network or shell access is allowed. Permission fingerprint: read files, write/modify files, run shell commands.
Start with a small task and check whether the result follows “When to Use This Skill / Reference Files / 1. EventStream vs DistributedPubSub”. Inspect diffs, logs, previews, or tests before expanding scope.
Confirm the final output includes a concrete result, evidence, and next action. If it stays generic, tighten inputs, boundaries, and acceptance criteria.
---
name: akka-net-best-practices
description: Critical Akka.NET best practices including EventStream vs DistributedPubSub, supervision strateg…
category: other
source: Aaronontheweb/dotnet-skills
---
# akka-net-best-practices
## When to use
- Critical Akka.NET best practices including EventStream vs DistributedPubSub, supervision strategies, error handling, P…
- Use it when the task has clear inputs, repeatable steps, and validation criteria.
## What to provide
- Target material, scope, expected result, and forbidden changes.
- Whether network, commands, file writes, or external services are allowed.
## Execution rules
- Organize steps around “When to Use This Skill / Reference Files / 1. EventStream vs DistributedPubSub” and keep inference separate from source facts.
- read files, write/modify files, run shell commands; may access external network resources; usually needs no extra API key.
- Validate with a small sample before expanding the task.
## Output requirements
- Return the deliverable, key evidence, validation method, and next action.
- Mark missing information as unknown; do not invent commands, platforms, or dependencies. The author source anchors workflow facts; repository files anchor sources and commands; Fluxly only adds fit, limitations, and quality judgment.
skill "akka-net-best-practices" {
input -> user goal + target files + boundaries + acceptance criteria
context -> When to Use This Skill / Reference Files / 1. EventStream vs DistributedPubSub
rules -> SKILL.md triggers / order / output contract
runtime -> Node.js | read files, write/modify files, run shell commands | may access external network resources
guardrails -> usually needs no extra API key + small-sample validation + diff/log review
output -> copyable result + checklist + next iteration
} Akka.NET Best Practices
When to Use This Skill
Use this skill when:
- Designing actor communication patterns
- Deciding between EventStream and DistributedPubSub
- Implementing error handling in actors
- Understanding supervision strategies
- Choosing between Props patterns and DependencyResolver
- Designing work distribution across nodes
- Creating testable actor systems that can run with or without cluster infrastructure
- Abstracting over Cluster Sharding for local testing scenarios
Reference Files
- work-distribution-patterns.md: Database queues, Akka.Streams throttling, outbox pattern
- cluster-local-abstractions.md: GenericChildPerEntityParent, IPubSubMediator, execution mode wiring
- async-cancellation-patterns.md: Actor-scoped CancellationToken, linked CTS, timeout handling
1. EventStream vs DistributedPubSub
Critical: EventStream is LOCAL ONLY
Context.System.EventStream is local to a single ActorSystem process. It does NOT work across cluster nodes.
// BAD: This only works on a single server
// When you add a second server, subscribers on server 2 won't receive events from server 1
Context.System.EventStream.Subscribe(Self, typeof(PostCreated));
Context.System.EventStream.Publish(new PostCreated(postId, authorId));
When EventStream is appropriate:
- Logging and diagnostics within a single process
- Local event bus for truly single-process applications
- Development/testing scenarios
Use DistributedPubSub for Multi-Node
For events that must reach actors across multiple cluster nodes, use Akka.Cluster.Tools.PublishSubscribe:
using Akka.Cluster.Tools.PublishSubscribe;
public class TimelineUpdatePublisher : ReceiveActor
{
private readonly IActorRef _mediator;
public TimelineUpdatePublisher()
{
// Get the DistributedPubSub mediator
_mediator = DistributedPubSub.Get(Context.System).Mediator;
Receive<PublishTimelineUpdate>(msg =>
{
// Publish to a topic - reaches all subscribers across all nodes
_mediator.Tell(new Publish($"timeline:{msg.UserId}", msg.Update));
});
}
}
Akka.Hosting Configuration for DistributedPubSub
builder.WithDistributedPubSub(role: null); // Available on all roles, or specify a role
Topic Design Patterns
| Pattern | Topic Format | Use Case |
|---|---|---|
| Per-user | timeline:{userId} |
Timeline updates, notifications |
| Per-entity | post:{postId} |
Post engagement updates |
| Broadcast | system:announcements |
System-wide notifications |
| Role-based | workers:rss-poller |
Work distribution |
2. Supervision Strategies
Key Clarification: Supervision is for CHILDREN
A supervision strategy defined on an actor dictates how that actor supervises its children, NOT how the actor itself is supervised.
public class ParentActor : ReceiveActor
{
// This strategy applies to children of ParentActor, NOT to ParentActor itself
protected override SupervisorStrategy SupervisorStrategy()
{
return new OneForOneStrategy(
maxNrOfRetries: 10,
withinTimeRange: TimeSpan.FromSeconds(30),
decider: ex => ex switch
{
ArithmeticException => Directive.Resume,
NullReferenceException => Directive.Restart,
ArgumentException => Directive.Stop,
_ => Directive.Escalate
});
}
}
Default Supervision Strategy
The default OneForOneStrategy already includes rate limiting:
- 10 restarts within 1 second = actor is permanently stopped
- This prevents infinite restart loops
You rarely need a custom strategy unless you have specific requirements.
When to Define Custom Supervision
Good reasons:
- Actor throws exceptions indicating irrecoverable state corruption -> Restart
- Actor throws exceptions that should NOT cause restart (expected failures) -> Resume
- Child failures should affect siblings -> Use
AllForOneStrategy - Need different retry limits than the default
Bad reasons:
- "Just to be safe" - the default is already safe
- Don't understand what the actor does - understand it first
3. Error Handling: Supervision vs Try-Catch
When to Use Try-Catch (Most Cases)
Use try-catch when:
- The failure is expected (network timeout, invalid input, external service down)
- You know exactly why the exception occurred
- You can handle it gracefully (retry, return error response, log and continue)
- Restarting would not help (same error would occur again)
public class RssFeedPollerActor : ReceiveActor
{
public RssFeedPollerActor()
{
ReceiveAsync<PollFeed>(async msg =>
{
try
{
var feed = await _httpClient.GetStringAsync(msg.FeedUrl);
var items = ParseFeed(feed);
// Process items...
}
catch (HttpRequestException ex)
{
// Expected failure - log and schedule retry
_log.Warning("Feed {Url} unavailable: {Error}", msg.FeedUrl, ex.Message);
Context.System.Scheduler.ScheduleTellOnce(
TimeSpan.FromMinutes(5), Self, msg, Self);
}
catch (XmlException ex)
{
// Invalid feed format - log and mark as bad
_log.Error("Feed {Url} has invalid format: {Error}", msg.FeedUrl, ex.Message);
Sender.Tell(new FeedPollResult.InvalidFormat(msg.FeedUrl));
}
});
}
}
When to Let Supervision Handle It
Let exceptions propagate (trigger supervision) when:
- You have no idea why the exception occurred
- The actor's state might be corrupt
- A restart would help (fresh state, reconnect resources)
- It's a programming error (NullReferenceException, InvalidOperationException from bad logic)
Anti-Pattern: Swallowing Unknown Exceptions
// BAD: Swallowing exceptions hides problems
catch (Exception ex)
{
_log.Error(ex, "Error processing work");
// Actor continues with potentially corrupt state
}
// GOOD: Handle known exceptions, let unknown ones propagate
catch (HttpRequestException ex)
{
// Known, expected failure - handle gracefully
_log.Warning("HTTP request failed: {Error}", ex.Message);
Sender.Tell(new WorkResult.TransientFailure());
}
// Unknown exceptions propagate to supervision
4. Props vs DependencyResolver
When to Use Plain Props
Use Props.Create() when:
- Actor doesn't need
IServiceProviderorIRequiredActor<T> - All dependencies can be passed via constructor
- Actor is simple and self-contained
// Simple actor with no DI needs
public static Props Props(PostId postId, IPostWriteStore store)
=> Akka.Actor.Props.Create(() => new PostEngagementActor(postId, store));
When to Use DependencyResolver
Use resolver.Props<T>() when:
- Actor needs
IServiceProviderto create scoped services - Actor uses
IRequiredActor<T>to get references to other actors - Actor has many dependencies that are already in DI container
// Registration with DI
builder.WithActors((system, registry, resolver) =>
{
var actor = system.ActorOf(resolver.Props<OrderProcessorActor>(), "order-processor");
registry.Register<OrderProcessorActor>(actor);
});
Remote Deployment Considerations
You almost never need remote deployment. If you're not doing remote deployment (and you probably aren't):
Props.Create(() => new Actor(...))with closures is fine- The "serialization issue" warning doesn't apply
For most applications, use cluster sharding instead of remote deployment - it handles distribution automatically.
5. Work Distribution Patterns
When you have many background jobs (RSS feeds, email sending, etc.), don't process them all at once - this causes thundering herd problems.
Three patterns to solve this:
- Database-Driven Work Queue - Use
FOR UPDATE SKIP LOCKEDfor natural cross-node distribution - Akka.Streams Rate Limiting - Throttle processing within a single node
- Durable Queue (Outbox Pattern) - Database-backed outbox for reliable processing
See work-distribution-patterns.md for full code samples.
6. Common Mistakes Summary
| Mistake | Why It's Wrong | Fix |
|---|---|---|
| Using EventStream for cross-node pub/sub | EventStream is local only | Use DistributedPubSub |
| Defining supervision to "protect" an actor | Supervision protects children | Understand the hierarchy |
| Catching all exceptions | Hides bugs, corrupts state | Only catch expected errors |
| Always using DependencyResolver | Adds unnecessary complexity | Use plain Props when possible |
| Processing all background jobs at once | Thundering herd, resource exhaustion | Use database queue + rate limiting |
| Throwing exceptions for expected failures | Triggers unnecessary restarts | Return result types, use messaging |
7. Quick Reference
Communication Pattern Decision Tree
Need to communicate between actors?
├── Same process only? -> EventStream is fine
├── Across cluster nodes?
│ ├── Point-to-point? -> Use ActorSelection or known IActorRef
│ └── Pub/sub? -> Use DistributedPubSub
└── Fire-and-forget to external system? -> Consider outbox pattern
Error Handling Decision Tree
Exception occurred in actor?
├── Expected failure (HTTP timeout, invalid input)?
│ └── Try-catch, handle gracefully, continue
├── State might be corrupt?
│ └── Let supervision restart
├── Unknown cause?
│ └── Let supervision restart
└── Programming error (null ref, bad logic)?
└── Let supervision restart, fix the bug
Props Decision Tree
Creating actor Props?
├── Actor needs IServiceProvider?
│ └── Use resolver.Props<T>()
├── Actor needs IRequiredActor<T>?
│ └── Use resolver.Props<T>()
├── Simple actor with constructor params?
│ └── Use Props.Create(() => new Actor(...))
└── Remote deployment needed?
└── Probably not - use cluster sharding instead
8. Cluster/Local Mode Abstractions
For applications that need to run both in clustered production and local/test environments, use abstraction patterns to toggle between implementations:
AkkaExecutionModeenum - Controls which implementations are used (LocalTest vs Clustered)GenericChildPerEntityParent- Mimics sharding behavior locally using the sameIMessageExtractorIPubSubMediator- Abstracts DistributedPubSub for swappable local/cluster implementations
See cluster-local-abstractions.md for complete implementation code.
9. Actor Logging
Use ILoggingAdapter, Not ILogger
In actors, use ILoggingAdapter from Context.GetLogger() instead of DI-injected ILogger<T>:
public class MyActor : ReceiveActor
{
private readonly ILoggingAdapter _log = Context.GetLogger();
public MyActor()
{
Receive<MyMessage>(msg =>
{
_log.Info("Processing message for user {UserId}", msg.UserId);
_log.Error(ex, "Failed to process {MessageType}", msg.GetType().Name);
});
}
}
Why ILoggingAdapter:
- Integrates with Akka's logging pipeline and supervision
- Supports semantic/structured logging as of v1.5.57
- Method names:
Info(),Debug(),Warning(),Error()(notLog*variants) - No DI required - obtained directly from actor context
Don't inject ILogger
Semantic Logging (v1.5.57+)
// Named placeholders for better log aggregation and querying
_log.Info("Order {OrderId} processed for customer {CustomerId}", order.Id, order.CustomerId);
// Prefer named placeholders over positional
// Good: {OrderId}, {CustomerId}
// Avoid: {0}, {1}
10. Managing Async Operations with CancellationToken
When actors launch async operations via PipeTo, those operations can outlive the actor if not properly managed. Key practices:
- Actor CTS in PostStop - Always cancel and dispose in
PostStop() - New CTS per operation - Cancel previous before starting new work
- Pass token everywhere - EF Core queries, HTTP calls, etc.
- Linked CTS for timeouts - External calls get short timeouts to prevent hanging
- Graceful handling - Distinguish timeout vs shutdown in catch blocks
See async-cancellation-patterns.md for complete implementation code.
Decide Fit First
Design Intent
How To Use It
Boundaries And Review