jsoniter
ginkgo
jsoniter | ginkgo | |
---|---|---|
12 | 13 | |
13,100 | 7,964 | |
0.7% | - | |
0.0 | 8.8 | |
9 days ago | 6 days ago | |
Go | Go | |
MIT License | MIT License |
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jsoniter
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Handling high-traffic HTTP requests with JSON payloads
Since most of the time would be spent decoding json, you could try to cut this time using https://github.com/bytedance/sonic or https://github.com/json-iterator/go, both are drop-in replacements for the stdlib, sonic is faster.
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A Journey building a fast JSON parser and full JSONPath
We all know the builtin golang JSON parser is slow.
How about doing comparisons against other implementations?
Like this one: https://github.com/json-iterator/go
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Polygon: Json Database System designed to run on small servers (as low as 16MB) and still be fast and flexible.
Json-iterator (https://github.com/json-iterator/go), you can replace all of encoding/json with this. It does the same thing but it's faster.
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How can we umarshal a Big JSON effectively?
Do you want to look at every field all at the same time? If not, you can pick out individual fields. There's other packages such as https://github.com/tidwall/gjson or https://github.com/json-iterator/go that let you pass in paths such as "a.b.c" to extract single fields.
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Designing a config API for microservices applications built using Go
For each Go type used within the config, we generate a separate unmarshaller function. The unmarshallers use json-iterator to process the output from CUE, while tracking the path within the config to the unmarshalled value. This path tracking will allow the function to check if live overrides have been provided on that path and return the override instead.
- jsoniter+1.18: panic in reflect2
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What type of software do you write at your workplace?
https://github.com/json-iterator/go an alternative JSON encoding package which allows to stream (flush out) encoded data as soon as it's able to (which is in contrast with the stock package which buffers everything until the encoding is known to be complete and OK).
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Some Go(lang) tips
What to use Easyjson is about the top of the pack and it's straightforward. The downside of efficient tools is that they use code generation to create the code required to turn your structs into json to minimise allocations. This is a manual build step which is annoying. Interestingly json-iterator also uses reflection but it's significantly faster. I suspect black magic.
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What are your favorite packages to use?
jsoniter for low level access to JSON encode and decode
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What is the best solution to unique data in golang
Takes like 10 minutes to write and parses very efficiently. https://github.com/json-iterator/go looks like it can provide such simple parsing
ginkgo
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Writing tests for a Kubernetes Operator
Ginkgo: a testing framework based on the concept of "Behavior Driven Development" (BDD)
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We moved our Cloud operations to a Kubernetes Operator
We were also able to leverage Ginkgo's parallel testing runtime to run our integration tests on multiple concurrent processes. This provided multiple benefits: we could run our entire integration test suite in under 10 minutes and also reuse the same suite to load test the operator in a production-like environment. Using these tests, we were able to identify hot spots in the code that needed further optimization and experimented with ways to save API calls to ease the load on our own Kubernetes API server while also staying under various AWS rate limits. It was only after running these tests over and over again that I felt confident enough to deploy the operator to our dev and prod clusters.
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Recommendations for Learning Test-Driven Development (TDD) in Go?
A bit off-topic, but i really like the ginkgo BDD framework
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Start test names with “should” (2020)
You obviously are not familiar with the third circle of golang continuous integration hell that is ginkgo+gomega:
https://onsi.github.io/ginkgo/#adding-specs-to-a-suite
It’s actually worse than that example suggests. Stuff like Expect(“type safety”).ShouldBe(GreaterThan(13)) throws runtime errors.
The semantics of parallel test runs weren’t defined anywhere the last time I checked.
Anyway, you’ll be thinking back fondly to the days of TestShouldReplaceChildrenWhenUpdatingInstance because now you need to write nested function calls like:
Context(“instances”, func …)
Describe(“that are being updated”, …)
Expect(“should replace children”, …)
And to invoke that from the command line, you need to write a regex against whatever undocumented and unprinted string it internally concatenates together to uniquely describe the test.
Also, they dump color codes to stdout without checking that they are writing to a terminal, so there will be line noise all over whatever automated test logs you produce, or if you pipe stdout to a file.
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ginkgo integration with jira/elasticsearch/webex/slack
If you are using Ginkgo for your e2e, this library might of help.
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Testing frameworks, which to use?
https://onsi.github.io/ginkgo/ offers a simple way to create tables with different scenarios useful to generate different test cases based on a file like a yml without to need to develop useless code. Maybe at start seems to be a little verbose but depends how you design the test case.
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Testza - A modern test framework with pretty output
What are people’s thoughts on testing frameworks? I’ve heard that most devs only use the testing package in the standard library and the testify package for assertions— I assume this is because Go is meant to be lightweight and scalable, and adding external dependencies basically goes against that. But I’ve also seen devs use packages like ginkgo to make tests more structured and readable. What do you guys think?
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What are your favorite packages to use?
Ginkgo Behavioural test framework
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Air – Live reload when developing with Go
If you write your tests with Ginkgo [0] its CLI can do this for you. It also has nice facilities to quickly disable a test or portion of a test by pretending an X to the test function name, or to focus a test (only run that test) by prepending an F. It’s pretty nice.
[0]: https://onsi.github.io/ginkgo/
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Half a million lines of Go at The Khan Academy
The BDD testing framework Ginko [1] has some "weird" / unidiomatic patterns, yet it is very popular
https://github.com/onsi/ginkgo
What are some alternatives?
go-json - Fast JSON encoder/decoder compatible with encoding/json for Go
Testify - A toolkit with common assertions and mocks that plays nicely with the standard library
mapstructure - Go library for decoding generic map values into native Go structures and vice versa.
GoConvey - Go testing in the browser. Integrates with `go test`. Write behavioral tests in Go.
easyjson - Fast JSON serializer for golang.
godog - Cucumber for golang
goprotobuf - Go support for Google's protocol buffers
goblin - Minimal and Beautiful Go testing framework
GJSON - Get JSON values quickly - JSON parser for Go
httpexpect - End-to-end HTTP and REST API testing for Go.
compare-go-json - A comparison of several go JSON packages.
gocheck - Rich testing for the Go language