Gorgonia
NATS
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Gorgonia | NATS | |
---|---|---|
21 | 104 | |
5,304 | 14,561 | |
1.1% | 2.4% | |
2.8 | 9.8 | |
8 days ago | 6 days ago | |
Go | Go | |
Apache License 2.0 | Apache License 2.0 |
Stars - the number of stars that a project has on GitHub. Growth - month over month growth in stars.
Activity is a relative number indicating how actively a project is being developed. Recent commits have higher weight than older ones.
For example, an activity of 9.0 indicates that a project is amongst the top 10% of the most actively developed projects that we are tracking.
Gorgonia
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Machine Learning
I did end up writing and using a custom library for Random Forest (it's also in AwesomGo) in one real-world project (detecting Alzheimer's and Parkinson's from speech from a mobile app) - https://github.com/malaschitz/randomForest I had better results than the team who used TensorFlow and most importantly I didn't have to use any other technology than Go. For NN's it's probably best to use https://gorgonia.org/ - but it's not exactly a user friendly library. But there is a whole book on it - Hands-On Deep Learning with Go.
- Why isn’t Go used in AI/ML?
- GoLang AI/ML open source projects
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A systematic framework for technical documentation authoring
Perhaps it's a product of French culture, but because Gorgonia[0] has a number of French contributors, this was actually the way we structured our documentation.
But this is the first time I've heard of the name of the framework.
[0]: https://gorgonia.org
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Most Popular GoLang Frameworks
Website: https://gorgonia.org
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[D] What framework are you using?
I use Gorgonia.
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Why can't Go be popular for machine learning?
CGO? Too much overhead in calling C functions (in which you can wrap libtorch or TF C++ code). And too much struggling woth CUDA (actually all GPU stuff). But, there are interesting attempts: https://github.com/gorgonia/gorgonia (I love it most), https://github.com/sugarme/gotch (bindings to libtorch), https://github.com/nlpodyssey/spago.
What you think about this https://github.com/gorgonia/gorgonia ? I also recall there is something else out there but can't find it at the moment...
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Neural networks in golang
Yep, all of them: https://github.com/gorgonia/gorgonia
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What do you use Go for?
For machine learning, I use https://gorgonia.org/. For games, I use https://ebiten.org/ For GUIs, I usually use https://fyne.io/ . This (https://github.com/avelino/awesome-go) is a good resource too.
NATS
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Sequential and parallel execution of long-running shell commands
Pueue dumps the state of the queue to the disk as JSON every time the state changes, so when you have a lot of queued jobs this results in considerable disk io. I actually changed it to compress the state file via zstd which helped quite a bit but then eventually just moved on to running NATS [1] locally.
[1] https://nats.io/
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Revolutionizing Real-Time Alerts with AI, NATs and Streamlit
Imagine you have an AI-powered personal alerting chat assistant that interacts using up-to-date data. Whether it's a big move in the stock market that affects your investments, any significant change on your shared SharePoint documents, or discounts on Amazon you were waiting for, the application is designed to keep you informed and alert you about any significant changes based on the criteria you set in advance using your natural language. In this post, we will learn how to build a full-stack event-driven weather alert chat application in Python using pretty cool tools: Streamlit, NATS, and OpenAI. The app can collect real-time weather information, understand your criteria for alerts using AI, and deliver these alerts to the user interface.
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New scalable, fault-tolerant, and efficient open-source MQTT broker
Why wasn't NATS[1] used ?
Written in Go, single-binary deployment... there's a lot to love about NATS !
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Introducing “Database Performance at Scale”: A Free, Open Source Book
About cost, see [1]. Also, S3 prices have been increasing and there's been a bunch of alternative offers for object store from other companies. I think people in here (HN) comment often about increasing costs of AWS offerings.
Distributed systems and consensus are inherently hard problem, but there are a lot of implementations that you can study (like Etcd that you mention, or NATS [2], which I've been playing with and looks super cool so far :-p) if you want to understand the internals, on top of many books and papers released.
Again, I never said it was "easy" to build distributed systems, I just don't think there's any esoteric knowledge to what S3 provides.
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High-Performance server for NATS.io, the cloud and edge native messaging system
Ahh, they may work on QUIC this year: https://github.com/nats-io/nats-server/issues/457
TIBCO Rednezvous, https://www.tibco.com/products/tibco-rendezvous, is the first thing that came to my mind from previous experience in the financial industry working with real-time market data. Although I'm not sure if it has built-in KV support for dealing with large payloads like NATS does, TIBCO RV and their related software packages are worth checking out to see what an long time established commercial product offers. Which leads me to...
... the protocol is text-based like HTTP with CR LF for field both for the client, https://docs.nats.io/reference/reference-protocols/nats-prot..., and cluster protocols, https://docs.nats.io/reference/reference-protocols/nats-serv... -- which means encoding overhead if your payloads are binary. So depending on your definition of performance, ymmv.
I really do not see how implementing an API across multiple languages is easier by making a new linefeed-based protocol, https://github.com/nats-io/nats-server/blob/0421c65c888bf381..., than just using code-generated JSON or gRPC (Protobuf or Flatbuffers). One could then write subscriptions/clustering algorithms in a protocol-neutral library.
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Message broker for simple strings, sockets
NATS https://nats.io
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The power of PURISTA TypeScript Framework v1.7
PURISTA v1.7 integrates NATS, a lightweight and high-performance messaging system, as a message broker option. This integration simplifies message transmission and enhances the overall messaging capabilities of your application. Say goodbye to communication bottlenecks and hello to seamless microservice interactions.
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Small EDA/Micro service Project
Nats is a good one
What are some alternatives?
RabbitMQ - Open source RabbitMQ: core server and tier 1 (built-in) plugins
celery - Distributed Task Queue (development branch)
redpanda - Redpanda is a streaming data platform for developers. Kafka API compatible. 10x faster. No ZooKeeper. No JVM!
ZeroMQ - ZeroMQ core engine in C++, implements ZMTP/3.1
Apache ActiveMQ - Mirror of Apache ActiveMQ
nsq - A realtime distributed messaging platform
Apache Kafka - Mirror of Apache Kafka
onnx-go - onnx-go gives the ability to import a pre-trained neural network within Go without being linked to a framework or library.
mosquitto - Eclipse Mosquitto - An open source MQTT broker
GoLearn - Machine Learning for Go
kubemq-community - KubeMQ is a Kubernetes native message queue broker
nanomsg - nanomsg library