As a library developer, chances are you’ll create a preferred utility that lots of of
hundreds of builders depend on each day, corresponding to lodash or React. Over time,
utilization patterns may emerge that transcend your preliminary design. When this
occurs, chances are you’ll want to increase an API by including parameters or modifying
perform signatures to repair edge instances. The problem lies in rolling out
these breaking modifications with out disrupting your customers’ workflows.
That is the place codemods are available in—a strong instrument for automating
large-scale code transformations, permitting builders to introduce breaking
API modifications, refactor legacy codebases, and preserve code hygiene with
minimal guide effort.
On this article, we’ll discover what codemods are and the instruments you may
use to create them, corresponding to jscodeshift, hypermod.io, and codemod.com. We’ll stroll by way of real-world examples,
from cleansing up function toggles to refactoring element hierarchies.
You’ll additionally discover ways to break down advanced transformations into smaller,
testable items—a observe referred to as codemod composition—to make sure
flexibility and maintainability.
By the tip, you’ll see how codemods can turn into a significant a part of your
toolkit for managing large-scale codebases, serving to you retain your code clear
and maintainable whereas dealing with even essentially the most difficult refactoring
duties.
Breaking Modifications in APIs
Returning to the state of affairs of the library developer, after the preliminary
launch, new utilization patterns emerge, prompting the necessity to prolong an
API—maybe by including a parameter or modifying a perform signature to
make it simpler to make use of.
For easy modifications, a fundamental find-and-replace within the IDE may work. In
extra advanced instances, you may resort to utilizing instruments like sed
or awk
. Nonetheless, when your library is broadly adopted, the
scope of such modifications turns into tougher to handle. You possibly can’t make sure how
extensively the modification will impression your customers, and the very last thing
you need is to interrupt current performance that doesn’t want
updating.
A typical method is to announce the breaking change, launch a brand new
model, and ask customers emigrate at their very own tempo. However this workflow,
whereas acquainted, typically does not scale effectively, particularly for main shifts.
Contemplate React’s transition from class elements to perform elements
with hooks—a paradigm shift that took years for giant codebases to completely
undertake. By the point groups managed emigrate, extra breaking modifications had been
typically already on the horizon.
For library builders, this case creates a burden. Sustaining
a number of older variations to help customers who haven’t migrated is each
expensive and time-consuming. For customers, frequent modifications danger eroding belief.
They might hesitate to improve or begin exploring extra secure options,
which perpetuating the cycle.
However what if you happen to may assist customers handle these modifications mechanically?
What if you happen to may launch a instrument alongside your replace that refactors
their code for them—renaming capabilities, updating parameter order, and
eradicating unused code with out requiring guide intervention?
That’s the place codemods are available in. A number of libraries, together with React
and Subsequent.js, have already embraced codemods to easy the trail for model
bumps. For instance, React supplies codemods to deal with the migration from
older API patterns, just like the outdated Context API, to newer ones.
So, what precisely is the codemod we’re speaking about right here?
What’s a Codemod?
A codemod (code modification) is an automatic script used to rework
code to observe new APIs, syntax, or coding requirements. Codemods use
Summary Syntax Tree (AST) manipulation to use constant, large-scale
modifications throughout codebases. Initially developed at Fb, codemods helped
engineers handle refactoring duties for giant initiatives like React. As
Fb scaled, sustaining the codebase and updating APIs grew to become
more and more troublesome, prompting the event of codemods.
Manually updating hundreds of information throughout totally different repositories was
inefficient and error-prone, so the idea of codemods—automated scripts
that remodel code—was launched to deal with this downside.
The method sometimes entails three principal steps:
- Parsing the code into an AST, the place every a part of the code is
represented as a tree construction. - Modifying the tree by making use of a change, corresponding to renaming a
perform or altering parameters. - Rewriting the modified tree again into the supply code.
Through the use of this method, codemods make sure that modifications are utilized
persistently throughout each file in a codebase, decreasing the possibility of human
error. Codemods can even deal with advanced refactoring eventualities, corresponding to
modifications to deeply nested buildings or eradicating deprecated API utilization.
If we visualize the method, it might look one thing like this:

Determine 1: The three steps of a typical codemod course of
The concept of a program that may “perceive” your code after which carry out
automated transformations isn’t new. That’s how your IDE works whenever you
run refactorings like
Primarily, your IDE parses the supply code into ASTs and applies
predefined transformations to the tree, saving the end result again into your
information.
For contemporary IDEs, many issues occur beneath the hood to make sure modifications
are utilized appropriately and effectively, corresponding to figuring out the scope of
the change and resolving conflicts like variable identify collisions. Some
refactorings even immediate you to enter parameters, corresponding to when utilizing
order of parameters or default values earlier than finalizing the change.
Use jscodeshift in JavaScript Codebases
Let’s have a look at a concrete instance to grasp how we may run a
codemod in a JavaScript venture. The JavaScript group has a number of
instruments that make this work possible, together with parsers that convert supply
code into an AST, in addition to transpilers that may remodel the tree into
different codecs (that is how TypeScript works). Moreover, there are
instruments that assist apply codemods to total repositories mechanically.
Probably the most in style instruments for writing codemods is jscodeshift, a toolkit maintained by Fb.
It simplifies the creation of codemods by offering a strong API to
manipulate ASTs. With jscodeshift, builders can seek for particular
patterns within the code and apply transformations at scale.
You need to use jscodeshift
to establish and change deprecated API calls
with up to date variations throughout a whole venture.
Let’s break down a typical workflow for composing a codemod
manually.
Clear a Stale Function Toggle
Let’s begin with a easy but sensible instance to exhibit the
energy of codemods. Think about you’re utilizing a function
toggle in your
codebase to regulate the discharge of unfinished or experimental options.
As soon as the function is dwell in manufacturing and dealing as anticipated, the subsequent
logical step is to scrub up the toggle and any associated logic.
As an illustration, contemplate the next code:
const information = featureToggle('feature-new-product-list') ? { identify: 'Product' } : undefined;
As soon as the function is totally launched and now not wants a toggle, this
may be simplified to:
const information = { identify: 'Product' };
The duty entails discovering all situations of featureToggle
within the
codebase, checking whether or not the toggle refers to
feature-new-product-list
, and eradicating the conditional logic surrounding
it. On the similar time, different function toggles (like
feature-search-result-refinement
, which can nonetheless be in growth)
ought to stay untouched. The codemod must perceive the construction
of the code to use modifications selectively.
Understanding the AST
Earlier than we dive into writing the codemod, let’s break down how this
particular code snippet appears in an AST. You need to use instruments like AST
Explorer to visualise how supply code and AST
are mapped. It’s useful to grasp the node varieties you are interacting
with earlier than making use of any modifications.
The picture beneath exhibits the syntax tree by way of ECMAScript syntax. It
accommodates nodes like Identifier
(for variables), StringLiteral
(for the
toggle identify), and extra summary nodes like CallExpression
and
ConditionalExpression
.

Determine 2: The Summary Syntax Tree illustration of the function toggle examine
On this AST illustration, the variable information
is assigned utilizing a
ConditionalExpression
. The check a part of the expression calls
featureToggle('feature-new-product-list')
. If the check returns true
,
the consequent department assigns { identify: 'Product' }
to information
. If
false
, the alternate department assigns undefined
.
For a job with clear enter and output, I desire writing assessments first,
then implementing the codemod. I begin by defining a destructive case to
guarantee we don’t unintentionally change issues we need to go away untouched,
adopted by an actual case that performs the precise conversion. I start with
a easy state of affairs, implement it, then add a variation (like checking if
featureToggle is named inside an if assertion), implement that case, and
guarantee all assessments cross.
This method aligns effectively with Take a look at-Pushed Growth (TDD), even
if you happen to don’t observe TDD commonly. Figuring out precisely what the
transformation’s inputs and outputs are earlier than coding improves security and
effectivity, particularly when tweaking codemods.
With jscodeshift, you may write assessments to confirm how the codemod
behaves:
const remodel = require("../remove-feature-new-product-list"); defineInlineTest( remodel, {}, ` const information = featureToggle('feature-new-product-list') ? { identify: 'Product' } : undefined; `, ` const information = { identify: 'Product' }; `, "delete the toggle feature-new-product-list in conditional operator" );
The defineInlineTest
perform from jscodeshift means that you can outline
the enter, anticipated output, and a string describing the check’s intent.
Now, working the check with a traditional jest
command will fail as a result of the
codemod isn’t written but.
The corresponding destructive case would make sure the code stays unchanged
for different function toggles:
defineInlineTest( remodel, {}, ` const information = featureToggle('feature-search-result-refinement') ? { identify: 'Product' } : undefined; `, ` const information = featureToggle('feature-search-result-refinement') ? { identify: 'Product' } : undefined; `, "don't change different function toggles" );
Writing the Codemod
Let’s begin by defining a easy remodel perform. Create a file
known as remodel.js
with the next code construction:
module.exports = perform(fileInfo, api, choices) { const j = api.jscodeshift; const root = j(fileInfo.supply); // manipulate the tree nodes right here return root.toSource(); };
This perform reads the file right into a tree and makes use of jscodeshift’s API to
question, modify, and replace the nodes. Lastly, it converts the AST again to
supply code with .toSource()
.
Now we are able to begin implementing the remodel steps:
- Discover all situations of
featureToggle
. - Confirm that the argument handed is
'feature-new-product-list'
. - Change the complete conditional expression with the consequent half,
successfully eradicating the toggle.
Right here’s how we obtain this utilizing jscodeshift
:
module.exports = perform (fileInfo, api, choices) { const j = api.jscodeshift; const root = j(fileInfo.supply); // Discover ConditionalExpression the place the check is featureToggle('feature-new-product-list') root .discover(j.ConditionalExpression, { check: { callee: { identify: "featureToggle" }, arguments: [{ value: "feature-new-product-list" }], }, }) .forEach((path) => { // Change the ConditionalExpression with the 'consequent' j(path).replaceWith(path.node.consequent); }); return root.toSource(); };
The codemod above:
- Finds
ConditionalExpression
nodes the place the check calls
featureToggle('feature-new-product-list')
. - Replaces the complete conditional expression with the ensuing (i.e.,
{
), eradicating the toggle logic and leaving simplified code
identify: 'Product' }
behind.
This instance demonstrates how simple it’s to create a helpful
transformation and apply it to a big codebase, considerably decreasing
guide effort.
You’ll want to put in writing extra check instances to deal with variations like
if-else
statements, logical expressions (e.g.,
!featureToggle('feature-new-product-list')
), and so forth to make the
codemod sturdy in real-world eventualities.
As soon as the codemod is prepared, you may check it out on a goal codebase,
such because the one you are engaged on. jscodeshift supplies a command-line
instrument that you need to use to use the codemod and report the outcomes.
$ jscodeshift -t transform-name src/
After validating the outcomes, examine that each one purposeful assessments nonetheless
cross and that nothing breaks—even if you happen to’re introducing a breaking change.
As soon as glad, you may commit the modifications and lift a pull request as
a part of your regular workflow.
Codemods Enhance Code High quality and Maintainability
Codemods aren’t simply helpful for managing breaking API modifications—they will
considerably enhance code high quality and maintainability. As codebases
evolve, they typically accumulate technical debt, together with outdated function
toggles, deprecated strategies, or tightly coupled elements. Manually
refactoring these areas may be time-consuming and error-prone.
By automating refactoring duties, codemods assist preserve your codebase clear
and freed from legacy patterns. Repeatedly making use of codemods means that you can
implement new coding requirements, take away unused code, and modernize your
codebase with out having to manually modify each file.
Refactoring an Avatar Element
Now, let’s have a look at a extra advanced instance. Suppose you’re working with
a design system that features an Avatar
element tightly coupled with a
Tooltip
. Each time a consumer passes a identify
prop into the Avatar
, it
mechanically wraps the avatar with a tooltip.

Determine 3: A avatar element with a tooltip
Right here’s the present Avatar
implementation:
import { Tooltip } from "@design-system/tooltip"; const Avatar = ({ identify, picture }: AvatarProps) => { if (identify) { return (); } return ; };
The objective is to decouple the Tooltip
from the Avatar
element,
giving builders extra flexibility. Builders ought to be capable to resolve
whether or not to wrap the Avatar
in a Tooltip
. Within the refactored model,
Avatar
will merely render the picture, and customers can apply a Tooltip
manually if wanted.
Right here’s the refactored model of Avatar
:
const Avatar = ({ picture }: AvatarProps) => { return; };
Now, customers can manually wrap the Avatar
with a Tooltip
as
wanted:
import { Tooltip } from "@design-system/tooltip"; import { Avatar } from "@design-system/avatar"; const UserProfile = () => { return (); };
The problem arises when there are lots of of Avatar usages unfold
throughout the codebase. Manually refactoring every occasion could be extremely
inefficient, so we are able to use a codemod to automate this course of.
Utilizing instruments like AST Explorer, we are able to
examine the element and see which nodes symbolize the Avatar
utilization
we’re focusing on. An Avatar
element with each identify
and picture
props
is parsed into an summary syntax tree as proven beneath:

Determine 4: AST of the Avatar element utilization
Writing the Codemod
Let’s break down the transformation into smaller duties:
- Discover
Avatar
utilization within the element tree. - Test if the
identify
prop is current. - If not, do nothing.
- If current:
- Create a
Tooltip
node. - Add the
identify
to theTooltip
. - Take away the
identify
fromAvatar
. - Add
Avatar
as a toddler of theTooltip
. - Change the unique
Avatar
node with the brand newTooltip
.
To start, we’ll discover all situations of Avatar (I’ll omit among the
assessments, however you need to write comparability assessments first).
defineInlineTest( { default: remodel, parser: "tsx" }, {}, ``, ` `, "wrap avatar with tooltip when identify is supplied" );
Much like the featureToggle
instance, we are able to use root.discover
with
search standards to find all Avatar nodes:
root .discover(j.JSXElement, { openingElement: { identify: { identify: "Avatar" } }, }) .forEach((path) => { // now we are able to deal with every Avatar occasion });
Subsequent, we examine if the identify
prop is current:
root
.discover(j.JSXElement, {
openingElement: { identify: { identify: "Avatar" } },
})
.forEach((path) => {
const avatarNode = path.node;
const nameAttr = avatarNode.openingElement.attributes.discover(
(attr) => attr.identify.identify === "identify"
);
if (nameAttr) {
const tooltipElement = createTooltipElement(
nameAttr.worth.worth,
avatarNode
);
j(path).replaceWith(tooltipElement);
}
});
For the createTooltipElement
perform, we use the
jscodeshift API to create a brand new JSX node, with the identify
prop utilized to the Tooltip
and the Avatar
element as a toddler. Lastly, we name replaceWith
to
change the present path
.
Right here’s a preview of the way it appears in
Hypermod, the place the codemod is written on
the left. The highest half on the fitting is the unique code, and the underside
half is the reworked end result:

Determine 5: Run checks inside hypermod earlier than apply it to your codebase
This codemod searches for all situations of Avatar
. If a
identify
prop is discovered, it removes the identify
prop
from Avatar
, wraps the Avatar
inside a
Tooltip
, and passes the identify
prop to the
Tooltip
.
By now, I hope it’s clear that codemods are extremely helpful and
that the workflow is intuitive, particularly for large-scale modifications the place
guide updates could be an enormous burden. Nonetheless, that is not the entire
image. Within the subsequent part, I’ll make clear among the challenges
and the way we are able to handle these less-than-ideal features.
Fixing Widespread Pitfalls of Codemods
As a seasoned developer, you understand the “completely satisfied path” is barely a small half
of the total image. There are quite a few eventualities to think about when writing
a change script to deal with code mechanically.
Builders write code in quite a lot of kinds. For instance, somebody
may import the Avatar
element however give it a unique identify as a result of
they may have one other Avatar
element from a unique package deal:
import { Avatar as AKAvatar } from "@design-system/avatar";
const UserInfo = () => (
AKAvatar identify="Juntao Qiu" picture="/juntao.qiu.avatar.png" />
);
A easy textual content seek for Avatar
gained’t work on this case. You’ll want
to detect the alias and apply the transformation utilizing the proper
identify.
One other instance arises when coping with Tooltip
imports. If the file
already imports Tooltip
however makes use of an alias, the codemod should detect that
alias and apply the modifications accordingly. You possibly can’t assume that the
element named Tooltip
is at all times the one you’re searching for.
Within the function toggle instance, somebody may use
if(featureToggle('feature-new-product-list'))
, or assign the results of
the toggle perform to a variable earlier than utilizing it:
const shouldEnableNewFeature = featureToggle('feature-new-product-list'); if (shouldEnableNewFeature) { //... }
They may even use the toggle with different circumstances or apply logical
negation, making the logic extra advanced:
const shouldEnableNewFeature = featureToggle('feature-new-product-list'); if (!shouldEnableNewFeature && someOtherLogic) { //... }
These variations make it troublesome to foresee each edge case,
growing the danger of unintentionally breaking one thing. Relying solely
on the instances you may anticipate isn’t sufficient. You want thorough testing
to keep away from breaking unintended elements of the code.
Leveraging Supply Graphs and Take a look at-Pushed Codemods
To deal with these complexities, codemods must be used alongside different
strategies. As an illustration, just a few years in the past, I participated in a design
system elements rewrite venture at Atlassian. We addressed this challenge by
first looking out the supply graph, which contained nearly all of inner
element utilization. This allowed us to grasp how elements had been used,
whether or not they had been imported beneath totally different names, or whether or not sure
public props had been steadily used. After this search section, we wrote our
check instances upfront, guaranteeing we lined nearly all of use instances, and
then developed the codemod.
In conditions the place we could not confidently automate the improve, we
inserted feedback or “TODOs” on the name websites. This allowed the
builders working the script to deal with particular instances manually. Normally,
there have been solely a handful of such situations, so this method nonetheless proved
useful for upgrading variations.
Using Present Code Standardization Instruments
As you may see, there are many edge instances to deal with, particularly in
codebases past your management—corresponding to exterior dependencies. This
complexity implies that utilizing codemods requires cautious supervision and a
evaluate of the outcomes.
Nonetheless, in case your codebase has standardization instruments in place, corresponding to a
linter that enforces a selected coding model, you may leverage these
instruments to scale back edge instances. By imposing a constant construction, instruments
like linters assist slender down the variations in code, making the
transformation simpler and minimizing surprising points.
As an illustration, you would use linting guidelines to limit sure patterns,
corresponding to avoiding nested conditional (ternary) operators or imposing named
exports over default exports. These guidelines assist streamline the codebase,
making codemods extra predictable and efficient.
Moreover, breaking down advanced transformations into smaller, extra
manageable ones means that you can deal with particular person points extra exactly. As
we’ll quickly see, composing smaller codemods could make dealing with advanced
modifications extra possible.
Codemod Composition
Let’s revisit the function toggle elimination instance mentioned earlier. Within the code snippet
we now have a toggle known as feature-convert-new
have to be eliminated:
import { featureToggle } from "./utils/featureToggle"; const convertOld = (enter: string) => { return enter.toLowerCase(); }; const convertNew = (enter: string) => { return enter.toUpperCase(); }; const end result = featureToggle("feature-convert-new") ? convertNew("Whats up, world") : convertOld("Whats up, world"); console.log(end result);
The codemod for take away a given toggle works advantageous, and after working the codemod,
we wish the supply to appear to be this:
const convertNew = (enter: string) => { return enter.toUpperCase(); }; const end result = convertNew("Whats up, world"); console.log(end result);
Nonetheless, past eradicating the function toggle logic, there are extra duties to
deal with:
- Take away the unused
convertOld
perform. - Clear up the unused
featureToggle
import.
After all, you would write one huge codemod to deal with all the pieces in a
single cross and check it collectively. Nonetheless, a extra maintainable method is
to deal with codemod logic like product code: break the duty into smaller,
impartial items—similar to how you’ll usually refactor manufacturing
code.
Breaking It Down
We are able to break the large transformation down into smaller codemods and
compose them. The benefit of this method is that every transformation
may be examined individually, masking totally different instances with out interference.
Furthermore, it means that you can reuse and compose them for various
functions.
As an illustration, you may break it down like this:
- A metamorphosis to take away a selected function toggle.
- One other transformation to scrub up unused imports.
- A metamorphosis to take away unused perform declarations.
By composing these, you may create a pipeline of transformations:
import { removeFeatureToggle } from "./remove-feature-toggle"; import { removeUnusedImport } from "./remove-unused-import"; import { removeUnusedFunction } from "./remove-unused-function"; import { createTransformer } from "./utils"; const removeFeatureConvertNew = removeFeatureToggle("feature-convert-new"); const remodel = createTransformer([ removeFeatureConvertNew, removeUnusedImport, removeUnusedFunction, ]); export default remodel;
On this pipeline, the transformations work as follows:
- Take away the
feature-convert-new
toggle. - Clear up the unused
import
assertion. - Take away the
convertOld
perform because it’s now not used.

Determine 6: Compose transforms into a brand new remodel
You too can extract extra codemods as wanted, combining them in
varied orders relying on the specified end result.

Determine 7: Put totally different transforms right into a pipepline to type one other remodel
The createTransformer
Perform
The implementation of the createTransformer
perform is comparatively
simple. It acts as a higher-order perform that takes an inventory of
smaller remodel capabilities, iterates by way of the checklist to use them to
the basis AST, and at last converts the modified AST again into supply
code.
import { API, Assortment, FileInfo, JSCodeshift, Choices } from "jscodeshift"; kind TransformFunction = { (j: JSCodeshift, root: Assortment): void }; const createTransformer = (transforms: TransformFunction[]) => (fileInfo: FileInfo, api: API, choices: Choices) => { const j = api.jscodeshift; const root = j(fileInfo.supply); transforms.forEach((remodel) => remodel(j, root)); return root.toSource(choices.printOptions || { quote: "single" }); }; export { createTransformer };
For instance, you would have a remodel perform that inlines
expressions assigning the function toggle name to a variable, so in later
transforms you don’t have to fret about these instances anymore:
const shouldEnableNewFeature = featureToggle('feature-convert-new'); if (!shouldEnableNewFeature && someOtherLogic) { //... }
Turns into this:
if (!featureToggle('feature-convert-new') && someOtherLogic) { //... }
Over time, you may construct up a group of reusable, smaller
transforms, which might drastically ease the method of dealing with tough edge
instances. This method proved extremely efficient in our work refining design
system elements. As soon as we transformed one package deal—such because the button
element—we had just a few reusable transforms outlined, like including feedback
initially of capabilities, eradicating deprecated props, or creating aliases
when a package deal is already imported above.
Every of those smaller transforms may be examined and used independently
or mixed for extra advanced transformations, which hastens subsequent
conversions considerably. In consequence, our refinement work grew to become extra
environment friendly, and these generic codemods at the moment are relevant to different inner
and even exterior React codebases.
Since every remodel is comparatively standalone, you may fine-tune them
with out affecting different transforms or the extra advanced, composed ones. For
occasion, you may re-implement a remodel to enhance efficiency—like
decreasing the variety of node-finding rounds—and with complete check
protection, you are able to do this confidently and safely.
Codemods in Different Languages
Whereas the examples we’ve explored to date deal with JavaScript and JSX
utilizing jscodeshift, codemods can be utilized to different languages. For
occasion, JavaParser affords the same
mechanism in Java, utilizing AST manipulation to refactor Java code.
Utilizing JavaParser in a Java Codebase
JavaParser may be helpful for making breaking API modifications or refactoring
massive Java codebases in a structured, automated manner.
Assume we now have the next code in FeatureToggleExample.java
, which
checks the toggle feature-convert-new
and branches accordingly:
public class FeatureToggleExample { public void execute() { if (FeatureToggle.isEnabled("feature-convert-new")) { newFeature(); } else { oldFeature(); } } void newFeature() { System.out.println("New Function Enabled"); } void oldFeature() { System.out.println("Outdated Function"); } }
We are able to outline a customer to search out if
statements checking for
FeatureToggle.isEnabled
, after which change them with the corresponding
true department—just like how we dealt with the function toggle codemod in
JavaScript.
// Customer to take away function toggles class FeatureToggleVisitor extends VoidVisitorAdapter{ @Override public void go to(IfStmt ifStmt, Void arg) { tremendous.go to(ifStmt, arg); if (ifStmt.getCondition().isMethodCallExpr()) { MethodCallExpr methodCall = ifStmt.getCondition().asMethodCallExpr(); if (methodCall.getNameAsString().equals("isEnabled") && methodCall.getScope().isPresent() && methodCall.getScope().get().toString().equals("FeatureToggle")) { BlockStmt thenBlock = ifStmt.getThenStmt().asBlockStmt(); ifStmt.change(thenBlock); } } } }
This code defines a customer sample utilizing
JavaParser to traverse and manipulate the AST. The
FeatureToggleVisitor
appears for if
statements
that decision FeatureToggle.isEnabled()
and replaces the complete
if
assertion with the true department.
You too can outline guests to search out unused strategies and take away
them:
class UnusedMethodRemover extends VoidVisitorAdapter{ non-public Set calledMethods = new HashSet(); non-public Record methodsToRemove = new ArrayList(); // Gather all known as strategies @Override public void go to(MethodCallExpr n, Void arg) { tremendous.go to(n, arg); calledMethods.add(n.getNameAsString()); } // Gather strategies to take away if not known as @Override public void go to(MethodDeclaration n, Void arg) { tremendous.go to(n, arg); String methodName = n.getNameAsString(); if (!calledMethods.accommodates(methodName) && !methodName.equals("principal")) { methodsToRemove.add(n); } } // After visiting, take away the unused strategies public void removeUnusedMethods() { for (MethodDeclaration technique : methodsToRemove) { technique.take away(); } } }
This code defines a customer, UnusedMethodRemover
, to detect and
take away unused strategies. It tracks all known as strategies within the calledMethods
set and checks every technique declaration. If a technique isn’t known as and isn’t
principal
, it provides it to the checklist of strategies to take away. As soon as all strategies are
processed, it removes any unused strategies from the AST.
Composing Java Guests
You possibly can chain these guests collectively and apply them to your codebase
like so:
public class FeatureToggleRemoverWithCleanup { public static void principal(String[] args) { strive { String filePath = "src/check/java/com/instance/Instance.java"; CompilationUnit cu = StaticJavaParser.parse(new FileInputStream(filePath)); // Apply transformations FeatureToggleVisitor toggleVisitor = new FeatureToggleVisitor(); cu.settle for(toggleVisitor, null); UnusedMethodRemover remover = new UnusedMethodRemover(); cu.settle for(remover, null); remover.removeUnusedMethods(); // Write the modified code again to the file strive (FileOutputStream fos = new FileOutputStream(filePath)) { fos.write(cu.toString().getBytes()); } System.out.println("Code transformation accomplished efficiently."); } catch (IOException e) { e.printStackTrace(); } } }
Every customer is a unit of transformation, and the customer sample in
JavaParser makes it simple to compose them.
OpenRewrite
One other in style choice for Java initiatives is OpenRewrite. It makes use of a unique format of the
supply code tree known as Lossless Semantic Timber (LSTs), which
present extra detailed info in comparison with conventional AST (Summary
Syntax Tree) approaches utilized by instruments like JavaParser or jscodeshift.
Whereas AST focuses on the syntactic construction, LSTs seize each syntax and
semantic which means, enabling extra correct and complicated
transformations.
OpenRewrite additionally has a sturdy ecosystem of open-source refactoring
recipes for duties corresponding to framework migrations, safety fixes, and
sustaining stylistic consistency. This built-in library of recipes can
save builders vital time by permitting them to use standardized
transformations throughout massive codebases with no need to put in writing customized
scripts.
For builders who want custom-made transformations, OpenRewrite permits
you to create and distribute your individual recipes, making it a extremely versatile
and extensible instrument. It’s broadly used within the Java group and is
progressively increasing into different languages, due to its superior
capabilities and community-driven method.
Variations Between OpenRewrite and JavaParser or jscodeshift
The important thing distinction between OpenRewrite and instruments like JavaParser or
jscodeshift lies of their method to code transformation:
- OpenRewrite’s Lossless Semantic Timber (LSTs) seize each the
syntactic and semantic which means of the code, enabling extra correct
transformations. - JavaParser and jscodeshift depend on conventional ASTs, which focus
totally on the syntactic construction. Whereas highly effective, they might not at all times
seize the nuances of how the code behaves semantically.
Moreover, OpenRewrite affords a big library of community-driven
refactoring recipes, making it simpler to use widespread transformations with out
needing to put in writing customized codemods from scratch.
Different Instruments for Codemods
Whereas jscodeshift and OpenRewrite are highly effective instruments, there are
different choices value contemplating, relying in your wants and the ecosystem
you are working in.
Hypermod
Hypermod introduces AI help to the codemod writing course of.
As an alternative of manually crafting the codemod logic, builders can describe
the specified transformation in plain English, and Hypermod will generate
the codemod utilizing jscodeshift. This makes codemod creation extra
accessible, even for builders who will not be conversant in AST
manipulation.
You possibly can compose, check, and deploy a codemod to any repository
related to Hypermod. It may possibly run the codemod and generate a pull
request with the proposed modifications, permitting you to evaluate and approve
them. This integration makes the complete course of from codemod growth
to deployment way more streamlined.
Codemod.com
Codemod.com is a community-driven platform the place builders
can share and uncover codemods. Should you want a selected codemod for a
widespread refactoring job or migration, you may seek for current
codemods. Alternatively, you may publish codemods you’ve created to assist
others within the developer group.
Should you’re migrating an API and wish a codemod to deal with it,
Codemod.com can prevent time by providing pre-built codemods for
many widespread transformations, decreasing the necessity to write one from
scratch.
Conclusion
Codemods are highly effective instruments that permit builders to automate code
transformations, making it simpler to handle API modifications, refactor legacy
code, and preserve consistency throughout massive codebases with minimal guide
intervention. Through the use of instruments like jscodeshift, Hypermod, or
OpenRewrite, builders can streamline all the pieces from minor syntax
modifications to main element rewrites, bettering total code high quality and
maintainability.
Nonetheless, whereas codemods supply vital advantages, they aren’t
with out challenges. One of many key issues is dealing with edge instances,
significantly when the codebase is numerous or publicly shared. Variations
in coding kinds, import aliases, or surprising patterns can result in
points that codemods might not deal with mechanically. These edge instances
require cautious planning, thorough testing, and, in some situations, guide
intervention to make sure accuracy.
To maximise the effectiveness of codemods, it’s essential to interrupt
advanced transformations into smaller, testable steps and to make use of code
standardization instruments the place attainable. Codemods may be extremely efficient,
however their success depends upon considerate design and understanding the
limitations they might face in additional various or advanced codebases.
As a library developer, chances are you’ll create a preferred utility that lots of of
hundreds of builders depend on each day, corresponding to lodash or React. Over time,
utilization patterns may emerge that transcend your preliminary design. When this
occurs, chances are you’ll want to increase an API by including parameters or modifying
perform signatures to repair edge instances. The problem lies in rolling out
these breaking modifications with out disrupting your customers’ workflows.
That is the place codemods are available in—a strong instrument for automating
large-scale code transformations, permitting builders to introduce breaking
API modifications, refactor legacy codebases, and preserve code hygiene with
minimal guide effort.
On this article, we’ll discover what codemods are and the instruments you may
use to create them, corresponding to jscodeshift, hypermod.io, and codemod.com. We’ll stroll by way of real-world examples,
from cleansing up function toggles to refactoring element hierarchies.
You’ll additionally discover ways to break down advanced transformations into smaller,
testable items—a observe referred to as codemod composition—to make sure
flexibility and maintainability.
By the tip, you’ll see how codemods can turn into a significant a part of your
toolkit for managing large-scale codebases, serving to you retain your code clear
and maintainable whereas dealing with even essentially the most difficult refactoring
duties.
Breaking Modifications in APIs
Returning to the state of affairs of the library developer, after the preliminary
launch, new utilization patterns emerge, prompting the necessity to prolong an
API—maybe by including a parameter or modifying a perform signature to
make it simpler to make use of.
For easy modifications, a fundamental find-and-replace within the IDE may work. In
extra advanced instances, you may resort to utilizing instruments like sed
or awk
. Nonetheless, when your library is broadly adopted, the
scope of such modifications turns into tougher to handle. You possibly can’t make sure how
extensively the modification will impression your customers, and the very last thing
you need is to interrupt current performance that doesn’t want
updating.
A typical method is to announce the breaking change, launch a brand new
model, and ask customers emigrate at their very own tempo. However this workflow,
whereas acquainted, typically does not scale effectively, particularly for main shifts.
Contemplate React’s transition from class elements to perform elements
with hooks—a paradigm shift that took years for giant codebases to completely
undertake. By the point groups managed emigrate, extra breaking modifications had been
typically already on the horizon.
For library builders, this case creates a burden. Sustaining
a number of older variations to help customers who haven’t migrated is each
expensive and time-consuming. For customers, frequent modifications danger eroding belief.
They might hesitate to improve or begin exploring extra secure options,
which perpetuating the cycle.
However what if you happen to may assist customers handle these modifications mechanically?
What if you happen to may launch a instrument alongside your replace that refactors
their code for them—renaming capabilities, updating parameter order, and
eradicating unused code with out requiring guide intervention?
That’s the place codemods are available in. A number of libraries, together with React
and Subsequent.js, have already embraced codemods to easy the trail for model
bumps. For instance, React supplies codemods to deal with the migration from
older API patterns, just like the outdated Context API, to newer ones.
So, what precisely is the codemod we’re speaking about right here?
What’s a Codemod?
A codemod (code modification) is an automatic script used to rework
code to observe new APIs, syntax, or coding requirements. Codemods use
Summary Syntax Tree (AST) manipulation to use constant, large-scale
modifications throughout codebases. Initially developed at Fb, codemods helped
engineers handle refactoring duties for giant initiatives like React. As
Fb scaled, sustaining the codebase and updating APIs grew to become
more and more troublesome, prompting the event of codemods.
Manually updating hundreds of information throughout totally different repositories was
inefficient and error-prone, so the idea of codemods—automated scripts
that remodel code—was launched to deal with this downside.
The method sometimes entails three principal steps:
- Parsing the code into an AST, the place every a part of the code is
represented as a tree construction. - Modifying the tree by making use of a change, corresponding to renaming a
perform or altering parameters. - Rewriting the modified tree again into the supply code.
Through the use of this method, codemods make sure that modifications are utilized
persistently throughout each file in a codebase, decreasing the possibility of human
error. Codemods can even deal with advanced refactoring eventualities, corresponding to
modifications to deeply nested buildings or eradicating deprecated API utilization.
If we visualize the method, it might look one thing like this:

Determine 1: The three steps of a typical codemod course of
The concept of a program that may “perceive” your code after which carry out
automated transformations isn’t new. That’s how your IDE works whenever you
run refactorings like
Primarily, your IDE parses the supply code into ASTs and applies
predefined transformations to the tree, saving the end result again into your
information.
For contemporary IDEs, many issues occur beneath the hood to make sure modifications
are utilized appropriately and effectively, corresponding to figuring out the scope of
the change and resolving conflicts like variable identify collisions. Some
refactorings even immediate you to enter parameters, corresponding to when utilizing
order of parameters or default values earlier than finalizing the change.
Use jscodeshift in JavaScript Codebases
Let’s have a look at a concrete instance to grasp how we may run a
codemod in a JavaScript venture. The JavaScript group has a number of
instruments that make this work possible, together with parsers that convert supply
code into an AST, in addition to transpilers that may remodel the tree into
different codecs (that is how TypeScript works). Moreover, there are
instruments that assist apply codemods to total repositories mechanically.
Probably the most in style instruments for writing codemods is jscodeshift, a toolkit maintained by Fb.
It simplifies the creation of codemods by offering a strong API to
manipulate ASTs. With jscodeshift, builders can seek for particular
patterns within the code and apply transformations at scale.
You need to use jscodeshift
to establish and change deprecated API calls
with up to date variations throughout a whole venture.
Let’s break down a typical workflow for composing a codemod
manually.
Clear a Stale Function Toggle
Let’s begin with a easy but sensible instance to exhibit the
energy of codemods. Think about you’re utilizing a function
toggle in your
codebase to regulate the discharge of unfinished or experimental options.
As soon as the function is dwell in manufacturing and dealing as anticipated, the subsequent
logical step is to scrub up the toggle and any associated logic.
As an illustration, contemplate the next code:
const information = featureToggle('feature-new-product-list') ? { identify: 'Product' } : undefined;
As soon as the function is totally launched and now not wants a toggle, this
may be simplified to:
const information = { identify: 'Product' };
The duty entails discovering all situations of featureToggle
within the
codebase, checking whether or not the toggle refers to
feature-new-product-list
, and eradicating the conditional logic surrounding
it. On the similar time, different function toggles (like
feature-search-result-refinement
, which can nonetheless be in growth)
ought to stay untouched. The codemod must perceive the construction
of the code to use modifications selectively.
Understanding the AST
Earlier than we dive into writing the codemod, let’s break down how this
particular code snippet appears in an AST. You need to use instruments like AST
Explorer to visualise how supply code and AST
are mapped. It’s useful to grasp the node varieties you are interacting
with earlier than making use of any modifications.
The picture beneath exhibits the syntax tree by way of ECMAScript syntax. It
accommodates nodes like Identifier
(for variables), StringLiteral
(for the
toggle identify), and extra summary nodes like CallExpression
and
ConditionalExpression
.

Determine 2: The Summary Syntax Tree illustration of the function toggle examine
On this AST illustration, the variable information
is assigned utilizing a
ConditionalExpression
. The check a part of the expression calls
featureToggle('feature-new-product-list')
. If the check returns true
,
the consequent department assigns { identify: 'Product' }
to information
. If
false
, the alternate department assigns undefined
.
For a job with clear enter and output, I desire writing assessments first,
then implementing the codemod. I begin by defining a destructive case to
guarantee we don’t unintentionally change issues we need to go away untouched,
adopted by an actual case that performs the precise conversion. I start with
a easy state of affairs, implement it, then add a variation (like checking if
featureToggle is named inside an if assertion), implement that case, and
guarantee all assessments cross.
This method aligns effectively with Take a look at-Pushed Growth (TDD), even
if you happen to don’t observe TDD commonly. Figuring out precisely what the
transformation’s inputs and outputs are earlier than coding improves security and
effectivity, particularly when tweaking codemods.
With jscodeshift, you may write assessments to confirm how the codemod
behaves:
const remodel = require("../remove-feature-new-product-list"); defineInlineTest( remodel, {}, ` const information = featureToggle('feature-new-product-list') ? { identify: 'Product' } : undefined; `, ` const information = { identify: 'Product' }; `, "delete the toggle feature-new-product-list in conditional operator" );
The defineInlineTest
perform from jscodeshift means that you can outline
the enter, anticipated output, and a string describing the check’s intent.
Now, working the check with a traditional jest
command will fail as a result of the
codemod isn’t written but.
The corresponding destructive case would make sure the code stays unchanged
for different function toggles:
defineInlineTest( remodel, {}, ` const information = featureToggle('feature-search-result-refinement') ? { identify: 'Product' } : undefined; `, ` const information = featureToggle('feature-search-result-refinement') ? { identify: 'Product' } : undefined; `, "don't change different function toggles" );
Writing the Codemod
Let’s begin by defining a easy remodel perform. Create a file
known as remodel.js
with the next code construction:
module.exports = perform(fileInfo, api, choices) { const j = api.jscodeshift; const root = j(fileInfo.supply); // manipulate the tree nodes right here return root.toSource(); };
This perform reads the file right into a tree and makes use of jscodeshift’s API to
question, modify, and replace the nodes. Lastly, it converts the AST again to
supply code with .toSource()
.
Now we are able to begin implementing the remodel steps:
- Discover all situations of
featureToggle
. - Confirm that the argument handed is
'feature-new-product-list'
. - Change the complete conditional expression with the consequent half,
successfully eradicating the toggle.
Right here’s how we obtain this utilizing jscodeshift
:
module.exports = perform (fileInfo, api, choices) { const j = api.jscodeshift; const root = j(fileInfo.supply); // Discover ConditionalExpression the place the check is featureToggle('feature-new-product-list') root .discover(j.ConditionalExpression, { check: { callee: { identify: "featureToggle" }, arguments: [{ value: "feature-new-product-list" }], }, }) .forEach((path) => { // Change the ConditionalExpression with the 'consequent' j(path).replaceWith(path.node.consequent); }); return root.toSource(); };
The codemod above:
- Finds
ConditionalExpression
nodes the place the check calls
featureToggle('feature-new-product-list')
. - Replaces the complete conditional expression with the ensuing (i.e.,
{
), eradicating the toggle logic and leaving simplified code
identify: 'Product' }
behind.
This instance demonstrates how simple it’s to create a helpful
transformation and apply it to a big codebase, considerably decreasing
guide effort.
You’ll want to put in writing extra check instances to deal with variations like
if-else
statements, logical expressions (e.g.,
!featureToggle('feature-new-product-list')
), and so forth to make the
codemod sturdy in real-world eventualities.
As soon as the codemod is prepared, you may check it out on a goal codebase,
such because the one you are engaged on. jscodeshift supplies a command-line
instrument that you need to use to use the codemod and report the outcomes.
$ jscodeshift -t transform-name src/
After validating the outcomes, examine that each one purposeful assessments nonetheless
cross and that nothing breaks—even if you happen to’re introducing a breaking change.
As soon as glad, you may commit the modifications and lift a pull request as
a part of your regular workflow.
Codemods Enhance Code High quality and Maintainability
Codemods aren’t simply helpful for managing breaking API modifications—they will
considerably enhance code high quality and maintainability. As codebases
evolve, they typically accumulate technical debt, together with outdated function
toggles, deprecated strategies, or tightly coupled elements. Manually
refactoring these areas may be time-consuming and error-prone.
By automating refactoring duties, codemods assist preserve your codebase clear
and freed from legacy patterns. Repeatedly making use of codemods means that you can
implement new coding requirements, take away unused code, and modernize your
codebase with out having to manually modify each file.
Refactoring an Avatar Element
Now, let’s have a look at a extra advanced instance. Suppose you’re working with
a design system that features an Avatar
element tightly coupled with a
Tooltip
. Each time a consumer passes a identify
prop into the Avatar
, it
mechanically wraps the avatar with a tooltip.

Determine 3: A avatar element with a tooltip
Right here’s the present Avatar
implementation:
import { Tooltip } from "@design-system/tooltip"; const Avatar = ({ identify, picture }: AvatarProps) => { if (identify) { return (); } return ; };
The objective is to decouple the Tooltip
from the Avatar
element,
giving builders extra flexibility. Builders ought to be capable to resolve
whether or not to wrap the Avatar
in a Tooltip
. Within the refactored model,
Avatar
will merely render the picture, and customers can apply a Tooltip
manually if wanted.
Right here’s the refactored model of Avatar
:
const Avatar = ({ picture }: AvatarProps) => { return; };
Now, customers can manually wrap the Avatar
with a Tooltip
as
wanted:
import { Tooltip } from "@design-system/tooltip"; import { Avatar } from "@design-system/avatar"; const UserProfile = () => { return (); };
The problem arises when there are lots of of Avatar usages unfold
throughout the codebase. Manually refactoring every occasion could be extremely
inefficient, so we are able to use a codemod to automate this course of.
Utilizing instruments like AST Explorer, we are able to
examine the element and see which nodes symbolize the Avatar
utilization
we’re focusing on. An Avatar
element with each identify
and picture
props
is parsed into an summary syntax tree as proven beneath:

Determine 4: AST of the Avatar element utilization
Writing the Codemod
Let’s break down the transformation into smaller duties:
- Discover
Avatar
utilization within the element tree. - Test if the
identify
prop is current. - If not, do nothing.
- If current:
- Create a
Tooltip
node. - Add the
identify
to theTooltip
. - Take away the
identify
fromAvatar
. - Add
Avatar
as a toddler of theTooltip
. - Change the unique
Avatar
node with the brand newTooltip
.
To start, we’ll discover all situations of Avatar (I’ll omit among the
assessments, however you need to write comparability assessments first).
defineInlineTest( { default: remodel, parser: "tsx" }, {}, ``, ` `, "wrap avatar with tooltip when identify is supplied" );
Much like the featureToggle
instance, we are able to use root.discover
with
search standards to find all Avatar nodes:
root .discover(j.JSXElement, { openingElement: { identify: { identify: "Avatar" } }, }) .forEach((path) => { // now we are able to deal with every Avatar occasion });
Subsequent, we examine if the identify
prop is current:
root
.discover(j.JSXElement, {
openingElement: { identify: { identify: "Avatar" } },
})
.forEach((path) => {
const avatarNode = path.node;
const nameAttr = avatarNode.openingElement.attributes.discover(
(attr) => attr.identify.identify === "identify"
);
if (nameAttr) {
const tooltipElement = createTooltipElement(
nameAttr.worth.worth,
avatarNode
);
j(path).replaceWith(tooltipElement);
}
});
For the createTooltipElement
perform, we use the
jscodeshift API to create a brand new JSX node, with the identify
prop utilized to the Tooltip
and the Avatar
element as a toddler. Lastly, we name replaceWith
to
change the present path
.
Right here’s a preview of the way it appears in
Hypermod, the place the codemod is written on
the left. The highest half on the fitting is the unique code, and the underside
half is the reworked end result:

Determine 5: Run checks inside hypermod earlier than apply it to your codebase
This codemod searches for all situations of Avatar
. If a
identify
prop is discovered, it removes the identify
prop
from Avatar
, wraps the Avatar
inside a
Tooltip
, and passes the identify
prop to the
Tooltip
.
By now, I hope it’s clear that codemods are extremely helpful and
that the workflow is intuitive, particularly for large-scale modifications the place
guide updates could be an enormous burden. Nonetheless, that is not the entire
image. Within the subsequent part, I’ll make clear among the challenges
and the way we are able to handle these less-than-ideal features.
Fixing Widespread Pitfalls of Codemods
As a seasoned developer, you understand the “completely satisfied path” is barely a small half
of the total image. There are quite a few eventualities to think about when writing
a change script to deal with code mechanically.
Builders write code in quite a lot of kinds. For instance, somebody
may import the Avatar
element however give it a unique identify as a result of
they may have one other Avatar
element from a unique package deal:
import { Avatar as AKAvatar } from "@design-system/avatar";
const UserInfo = () => (
AKAvatar identify="Juntao Qiu" picture="/juntao.qiu.avatar.png" />
);
A easy textual content seek for Avatar
gained’t work on this case. You’ll want
to detect the alias and apply the transformation utilizing the proper
identify.
One other instance arises when coping with Tooltip
imports. If the file
already imports Tooltip
however makes use of an alias, the codemod should detect that
alias and apply the modifications accordingly. You possibly can’t assume that the
element named Tooltip
is at all times the one you’re searching for.
Within the function toggle instance, somebody may use
if(featureToggle('feature-new-product-list'))
, or assign the results of
the toggle perform to a variable earlier than utilizing it:
const shouldEnableNewFeature = featureToggle('feature-new-product-list'); if (shouldEnableNewFeature) { //... }
They may even use the toggle with different circumstances or apply logical
negation, making the logic extra advanced:
const shouldEnableNewFeature = featureToggle('feature-new-product-list'); if (!shouldEnableNewFeature && someOtherLogic) { //... }
These variations make it troublesome to foresee each edge case,
growing the danger of unintentionally breaking one thing. Relying solely
on the instances you may anticipate isn’t sufficient. You want thorough testing
to keep away from breaking unintended elements of the code.
Leveraging Supply Graphs and Take a look at-Pushed Codemods
To deal with these complexities, codemods must be used alongside different
strategies. As an illustration, just a few years in the past, I participated in a design
system elements rewrite venture at Atlassian. We addressed this challenge by
first looking out the supply graph, which contained nearly all of inner
element utilization. This allowed us to grasp how elements had been used,
whether or not they had been imported beneath totally different names, or whether or not sure
public props had been steadily used. After this search section, we wrote our
check instances upfront, guaranteeing we lined nearly all of use instances, and
then developed the codemod.
In conditions the place we could not confidently automate the improve, we
inserted feedback or “TODOs” on the name websites. This allowed the
builders working the script to deal with particular instances manually. Normally,
there have been solely a handful of such situations, so this method nonetheless proved
useful for upgrading variations.
Using Present Code Standardization Instruments
As you may see, there are many edge instances to deal with, particularly in
codebases past your management—corresponding to exterior dependencies. This
complexity implies that utilizing codemods requires cautious supervision and a
evaluate of the outcomes.
Nonetheless, in case your codebase has standardization instruments in place, corresponding to a
linter that enforces a selected coding model, you may leverage these
instruments to scale back edge instances. By imposing a constant construction, instruments
like linters assist slender down the variations in code, making the
transformation simpler and minimizing surprising points.
As an illustration, you would use linting guidelines to limit sure patterns,
corresponding to avoiding nested conditional (ternary) operators or imposing named
exports over default exports. These guidelines assist streamline the codebase,
making codemods extra predictable and efficient.
Moreover, breaking down advanced transformations into smaller, extra
manageable ones means that you can deal with particular person points extra exactly. As
we’ll quickly see, composing smaller codemods could make dealing with advanced
modifications extra possible.
Codemod Composition
Let’s revisit the function toggle elimination instance mentioned earlier. Within the code snippet
we now have a toggle known as feature-convert-new
have to be eliminated:
import { featureToggle } from "./utils/featureToggle"; const convertOld = (enter: string) => { return enter.toLowerCase(); }; const convertNew = (enter: string) => { return enter.toUpperCase(); }; const end result = featureToggle("feature-convert-new") ? convertNew("Whats up, world") : convertOld("Whats up, world"); console.log(end result);
The codemod for take away a given toggle works advantageous, and after working the codemod,
we wish the supply to appear to be this:
const convertNew = (enter: string) => { return enter.toUpperCase(); }; const end result = convertNew("Whats up, world"); console.log(end result);
Nonetheless, past eradicating the function toggle logic, there are extra duties to
deal with:
- Take away the unused
convertOld
perform. - Clear up the unused
featureToggle
import.
After all, you would write one huge codemod to deal with all the pieces in a
single cross and check it collectively. Nonetheless, a extra maintainable method is
to deal with codemod logic like product code: break the duty into smaller,
impartial items—similar to how you’ll usually refactor manufacturing
code.
Breaking It Down
We are able to break the large transformation down into smaller codemods and
compose them. The benefit of this method is that every transformation
may be examined individually, masking totally different instances with out interference.
Furthermore, it means that you can reuse and compose them for various
functions.
As an illustration, you may break it down like this:
- A metamorphosis to take away a selected function toggle.
- One other transformation to scrub up unused imports.
- A metamorphosis to take away unused perform declarations.
By composing these, you may create a pipeline of transformations:
import { removeFeatureToggle } from "./remove-feature-toggle"; import { removeUnusedImport } from "./remove-unused-import"; import { removeUnusedFunction } from "./remove-unused-function"; import { createTransformer } from "./utils"; const removeFeatureConvertNew = removeFeatureToggle("feature-convert-new"); const remodel = createTransformer([ removeFeatureConvertNew, removeUnusedImport, removeUnusedFunction, ]); export default remodel;
On this pipeline, the transformations work as follows:
- Take away the
feature-convert-new
toggle. - Clear up the unused
import
assertion. - Take away the
convertOld
perform because it’s now not used.

Determine 6: Compose transforms into a brand new remodel
You too can extract extra codemods as wanted, combining them in
varied orders relying on the specified end result.

Determine 7: Put totally different transforms right into a pipepline to type one other remodel
The createTransformer
Perform
The implementation of the createTransformer
perform is comparatively
simple. It acts as a higher-order perform that takes an inventory of
smaller remodel capabilities, iterates by way of the checklist to use them to
the basis AST, and at last converts the modified AST again into supply
code.
import { API, Assortment, FileInfo, JSCodeshift, Choices } from "jscodeshift"; kind TransformFunction = { (j: JSCodeshift, root: Assortment): void }; const createTransformer = (transforms: TransformFunction[]) => (fileInfo: FileInfo, api: API, choices: Choices) => { const j = api.jscodeshift; const root = j(fileInfo.supply); transforms.forEach((remodel) => remodel(j, root)); return root.toSource(choices.printOptions || { quote: "single" }); }; export { createTransformer };
For instance, you would have a remodel perform that inlines
expressions assigning the function toggle name to a variable, so in later
transforms you don’t have to fret about these instances anymore:
const shouldEnableNewFeature = featureToggle('feature-convert-new'); if (!shouldEnableNewFeature && someOtherLogic) { //... }
Turns into this:
if (!featureToggle('feature-convert-new') && someOtherLogic) { //... }
Over time, you may construct up a group of reusable, smaller
transforms, which might drastically ease the method of dealing with tough edge
instances. This method proved extremely efficient in our work refining design
system elements. As soon as we transformed one package deal—such because the button
element—we had just a few reusable transforms outlined, like including feedback
initially of capabilities, eradicating deprecated props, or creating aliases
when a package deal is already imported above.
Every of those smaller transforms may be examined and used independently
or mixed for extra advanced transformations, which hastens subsequent
conversions considerably. In consequence, our refinement work grew to become extra
environment friendly, and these generic codemods at the moment are relevant to different inner
and even exterior React codebases.
Since every remodel is comparatively standalone, you may fine-tune them
with out affecting different transforms or the extra advanced, composed ones. For
occasion, you may re-implement a remodel to enhance efficiency—like
decreasing the variety of node-finding rounds—and with complete check
protection, you are able to do this confidently and safely.
Codemods in Different Languages
Whereas the examples we’ve explored to date deal with JavaScript and JSX
utilizing jscodeshift, codemods can be utilized to different languages. For
occasion, JavaParser affords the same
mechanism in Java, utilizing AST manipulation to refactor Java code.
Utilizing JavaParser in a Java Codebase
JavaParser may be helpful for making breaking API modifications or refactoring
massive Java codebases in a structured, automated manner.
Assume we now have the next code in FeatureToggleExample.java
, which
checks the toggle feature-convert-new
and branches accordingly:
public class FeatureToggleExample { public void execute() { if (FeatureToggle.isEnabled("feature-convert-new")) { newFeature(); } else { oldFeature(); } } void newFeature() { System.out.println("New Function Enabled"); } void oldFeature() { System.out.println("Outdated Function"); } }
We are able to outline a customer to search out if
statements checking for
FeatureToggle.isEnabled
, after which change them with the corresponding
true department—just like how we dealt with the function toggle codemod in
JavaScript.
// Customer to take away function toggles class FeatureToggleVisitor extends VoidVisitorAdapter{ @Override public void go to(IfStmt ifStmt, Void arg) { tremendous.go to(ifStmt, arg); if (ifStmt.getCondition().isMethodCallExpr()) { MethodCallExpr methodCall = ifStmt.getCondition().asMethodCallExpr(); if (methodCall.getNameAsString().equals("isEnabled") && methodCall.getScope().isPresent() && methodCall.getScope().get().toString().equals("FeatureToggle")) { BlockStmt thenBlock = ifStmt.getThenStmt().asBlockStmt(); ifStmt.change(thenBlock); } } } }
This code defines a customer sample utilizing
JavaParser to traverse and manipulate the AST. The
FeatureToggleVisitor
appears for if
statements
that decision FeatureToggle.isEnabled()
and replaces the complete
if
assertion with the true department.
You too can outline guests to search out unused strategies and take away
them:
class UnusedMethodRemover extends VoidVisitorAdapter{ non-public Set calledMethods = new HashSet(); non-public Record methodsToRemove = new ArrayList(); // Gather all known as strategies @Override public void go to(MethodCallExpr n, Void arg) { tremendous.go to(n, arg); calledMethods.add(n.getNameAsString()); } // Gather strategies to take away if not known as @Override public void go to(MethodDeclaration n, Void arg) { tremendous.go to(n, arg); String methodName = n.getNameAsString(); if (!calledMethods.accommodates(methodName) && !methodName.equals("principal")) { methodsToRemove.add(n); } } // After visiting, take away the unused strategies public void removeUnusedMethods() { for (MethodDeclaration technique : methodsToRemove) { technique.take away(); } } }
This code defines a customer, UnusedMethodRemover
, to detect and
take away unused strategies. It tracks all known as strategies within the calledMethods
set and checks every technique declaration. If a technique isn’t known as and isn’t
principal
, it provides it to the checklist of strategies to take away. As soon as all strategies are
processed, it removes any unused strategies from the AST.
Composing Java Guests
You possibly can chain these guests collectively and apply them to your codebase
like so:
public class FeatureToggleRemoverWithCleanup { public static void principal(String[] args) { strive { String filePath = "src/check/java/com/instance/Instance.java"; CompilationUnit cu = StaticJavaParser.parse(new FileInputStream(filePath)); // Apply transformations FeatureToggleVisitor toggleVisitor = new FeatureToggleVisitor(); cu.settle for(toggleVisitor, null); UnusedMethodRemover remover = new UnusedMethodRemover(); cu.settle for(remover, null); remover.removeUnusedMethods(); // Write the modified code again to the file strive (FileOutputStream fos = new FileOutputStream(filePath)) { fos.write(cu.toString().getBytes()); } System.out.println("Code transformation accomplished efficiently."); } catch (IOException e) { e.printStackTrace(); } } }
Every customer is a unit of transformation, and the customer sample in
JavaParser makes it simple to compose them.
OpenRewrite
One other in style choice for Java initiatives is OpenRewrite. It makes use of a unique format of the
supply code tree known as Lossless Semantic Timber (LSTs), which
present extra detailed info in comparison with conventional AST (Summary
Syntax Tree) approaches utilized by instruments like JavaParser or jscodeshift.
Whereas AST focuses on the syntactic construction, LSTs seize each syntax and
semantic which means, enabling extra correct and complicated
transformations.
OpenRewrite additionally has a sturdy ecosystem of open-source refactoring
recipes for duties corresponding to framework migrations, safety fixes, and
sustaining stylistic consistency. This built-in library of recipes can
save builders vital time by permitting them to use standardized
transformations throughout massive codebases with no need to put in writing customized
scripts.
For builders who want custom-made transformations, OpenRewrite permits
you to create and distribute your individual recipes, making it a extremely versatile
and extensible instrument. It’s broadly used within the Java group and is
progressively increasing into different languages, due to its superior
capabilities and community-driven method.
Variations Between OpenRewrite and JavaParser or jscodeshift
The important thing distinction between OpenRewrite and instruments like JavaParser or
jscodeshift lies of their method to code transformation:
- OpenRewrite’s Lossless Semantic Timber (LSTs) seize each the
syntactic and semantic which means of the code, enabling extra correct
transformations. - JavaParser and jscodeshift depend on conventional ASTs, which focus
totally on the syntactic construction. Whereas highly effective, they might not at all times
seize the nuances of how the code behaves semantically.
Moreover, OpenRewrite affords a big library of community-driven
refactoring recipes, making it simpler to use widespread transformations with out
needing to put in writing customized codemods from scratch.
Different Instruments for Codemods
Whereas jscodeshift and OpenRewrite are highly effective instruments, there are
different choices value contemplating, relying in your wants and the ecosystem
you are working in.
Hypermod
Hypermod introduces AI help to the codemod writing course of.
As an alternative of manually crafting the codemod logic, builders can describe
the specified transformation in plain English, and Hypermod will generate
the codemod utilizing jscodeshift. This makes codemod creation extra
accessible, even for builders who will not be conversant in AST
manipulation.
You possibly can compose, check, and deploy a codemod to any repository
related to Hypermod. It may possibly run the codemod and generate a pull
request with the proposed modifications, permitting you to evaluate and approve
them. This integration makes the complete course of from codemod growth
to deployment way more streamlined.
Codemod.com
Codemod.com is a community-driven platform the place builders
can share and uncover codemods. Should you want a selected codemod for a
widespread refactoring job or migration, you may seek for current
codemods. Alternatively, you may publish codemods you’ve created to assist
others within the developer group.
Should you’re migrating an API and wish a codemod to deal with it,
Codemod.com can prevent time by providing pre-built codemods for
many widespread transformations, decreasing the necessity to write one from
scratch.
Conclusion
Codemods are highly effective instruments that permit builders to automate code
transformations, making it simpler to handle API modifications, refactor legacy
code, and preserve consistency throughout massive codebases with minimal guide
intervention. Through the use of instruments like jscodeshift, Hypermod, or
OpenRewrite, builders can streamline all the pieces from minor syntax
modifications to main element rewrites, bettering total code high quality and
maintainability.
Nonetheless, whereas codemods supply vital advantages, they aren’t
with out challenges. One of many key issues is dealing with edge instances,
significantly when the codebase is numerous or publicly shared. Variations
in coding kinds, import aliases, or surprising patterns can result in
points that codemods might not deal with mechanically. These edge instances
require cautious planning, thorough testing, and, in some situations, guide
intervention to make sure accuracy.
To maximise the effectiveness of codemods, it’s essential to interrupt
advanced transformations into smaller, testable steps and to make use of code
standardization instruments the place attainable. Codemods may be extremely efficient,
however their success depends upon considerate design and understanding the
limitations they might face in additional various or advanced codebases.