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TypeScript-first schema validation with static type inference

Zod CI status Created by Colin McDonnell License npm stars discord server

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These docs have been translated into Chinese.

Table of contents


Zod is a TypeScript-first schema declaration and validation library. I’m using the term “schema” to broadly refer to any data type, from a simple string to a complex nested object.

Zod is designed to be as developer-friendly as possible. The goal is to eliminate duplicative type declarations. With Zod, you declare a validator once and Zod will automatically infer the static TypeScript type. It’s easy to compose simpler types into complex data structures.

Some other great aspects:

  • Zero dependencies
  • Works in Node.js and all modern browsers
  • Tiny: 8kb minified + zipped
  • Immutable: methods (e.g. .optional()) return a new instance
  • Concise, chainable interface
  • Functional approach: parse, don’t validate
  • Works with plain JavaScript too! You don’t need to use TypeScript.


Sponsorship at any level is appreciated and encouraged. For individual developers, consider the Cup of Coffee tier. If you built a paid product using Zod, consider one of the podium tiers.



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There are a growing number of tools that are built atop or support Zod natively! If you’ve built a tool or library on top of Zod, tell me about it on Twitter or start a Discussion. I’ll add it below and tweet it out.


API libraries

  • tRPC: Build end-to-end typesafe APIs without GraphQL.
  • @anatine/zod-nestjs: Helper methods for using Zod in a NestJS project.
  • zod-endpoints: Contract-first strictly typed endpoints with Zod. OpenAPI compatible.
  • domain-functions: Decouple your business logic from your framework using composable functions. With first-class type inference from end to end powered by Zod schemas.
  • @zodios/core: A typescript API client with runtime and compile time validation backed by axios and zod.
  • express-zod-api: Build Express-based APIs with I/O schema validation and custom middlewares.

Form integrations

  • react-hook-form: A first-party Zod resolver for React Hook Form.
  • zod-validation-error: Generate user-friendly error messages from ZodErrors.
  • zod-formik-adapter: A community-maintained Formik adapter for Zod.
  • react-zorm: Standalone <form> generation and validation for React using Zod.
  • zodix: Zod utilities for FormData and URLSearchParams in Remix loaders and actions.
  • remix-params-helper: Simplify integration of Zod with standard URLSearchParams and FormData for Remix apps.
  • formik-validator-zod: Formik-compliant validator library that simplifies using Zod with Formik.
  • zod-i18n-map: Useful for translating Zod error messages.
  • @modular-forms/solid: Modular form library for SolidJS that supports Zod for validation.
  • houseform: A React form library that uses Zod for validation.

Zod to X

X to Zod


Powered by Zod

  • slonik: Node.js Postgres client with strong Zod integration.
  • soly: Create CLI applications with zod.
  • zod-xlsx: A xlsx based resource validator using Zod schemas.
  • znv: Type-safe environment parsing and validation for Node.js with Zod schemas.

Utilities for Zod

  • zod_utilz: Framework agnostic utilities for Zod.



  • TypeScript 4.5+!

  • You must enable strict mode in your tsconfig.json. This is a best practice for all TypeScript projects.

    // tsconfig.json
      // ...
      "compilerOptions": {
        // ...
        "strict": true

From npm (Node/Bun)

npm install zod       # npm
yarn add zod          # yarn
bun add zod           # bun
pnpm add zod          # pnpm

From (Deno)

Unlike Node, Deno relies on direct URL imports instead of a package manager like NPM. Zod is available on The latest version can be imported like so:

import { z } from "";

You can also specify a particular version:

import { z } from "";

The rest of this README assumes you are using npm and importing directly from the "zod" package.

Basic usage

Creating a simple string schema

import { z } from "zod";

// creating a schema for strings
const mySchema = z.string();

// parsing
mySchema.parse("tuna"); // => "tuna"
mySchema.parse(12); // => throws ZodError

// "safe" parsing (doesn't throw error if validation fails)
mySchema.safeParse("tuna"); // => { success: true; data: "tuna" }
mySchema.safeParse(12); // => { success: false; error: ZodError }

Creating an object schema

import { z } from "zod";

const User = z.object({
  username: z.string(),

User.parse({ username: "Ludwig" });

// extract the inferred type
type User = z.infer<typeof User>;
// { username: string }


import { z } from "zod";

// primitive values

// empty types
z.void(); // accepts undefined

// catch-all types
// allows any value

// never type
// allows no values

Coercion for primitives

Zod now provides a more convenient way to coerce primitive values.

const schema = z.coerce.string();
schema.parse("tuna"); // => "tuna"
schema.parse(12); // => "12"
schema.parse(true); // => "true"

During the parsing step, the input is passed through the String() function, which is a JavaScript built-in for coercing data into strings. Note that the returned schema is a ZodString instance so you can use all string methods.


All primitive types support coercion.

z.coerce.string(); // String(input)
z.coerce.number(); // Number(input)
z.coerce.boolean(); // Boolean(input)
z.coerce.bigint(); // BigInt(input); // new Date(input)

Boolean coercion

Zod’s boolean coercion is very simple! It passes the value into the Boolean(value) function, that’s it. Any truthy value will resolve to true, any falsy value will resolve to false.

z.coerce.boolean().parse("tuna"); // => true
z.coerce.boolean().parse("true"); // => true
z.coerce.boolean().parse("false"); // => true
z.coerce.boolean().parse(1); // => true
z.coerce.boolean().parse([]); // => true

z.coerce.boolean().parse(0); // => false
z.coerce.boolean().parse(undefined); // => false
z.coerce.boolean().parse(null); // => false


Literal schemas represent a literal type, like "hello world" or 5.

const tuna = z.literal("tuna");
const twelve = z.literal(12);
const twobig = z.literal(2n); // bigint literal
const tru = z.literal(true);

const terrificSymbol = Symbol("terrific");
const terrific = z.literal(terrificSymbol);

// retrieve literal value
tuna.value; // "tuna"

Currently there is no support for Date literals in Zod. If you have a use case for this feature, please file an issue.


Zod includes a handful of string-specific validations.

// validations
z.string().datetime(); // defaults to UTC, see below for options
z.string().ip(); // defaults to IPv4 and IPv6, see below for options

// transformations
z.string().trim(); // trim whitespace
z.string().toLowerCase(); // toLowerCase
z.string().toUpperCase(); // toUpperCase

Check out validator.js for a bunch of other useful string validation functions that can be used in conjunction with Refinements.

You can customize some common error messages when creating a string schema.

const name = z.string({
  required_error: "Name is required",
  invalid_type_error: "Name must be a string",

When using validation methods, you can pass in an additional argument to provide a custom error message.

z.string().min(5, { message: "Must be 5 or more characters long" });
z.string().max(5, { message: "Must be 5 or fewer characters long" });
z.string().length(5, { message: "Must be exactly 5 characters long" });
z.string().email({ message: "Invalid email address" });
z.string().url({ message: "Invalid url" });
z.string().emoji({ message: "Contains non-emoji characters" });
z.string().uuid({ message: "Invalid UUID" });
z.string().includes("tuna", { message: "Must include tuna" });
z.string().startsWith("https://", { message: "Must provide secure URL" });
z.string().endsWith(".com", { message: "Only .com domains allowed" });
z.string().datetime({ message: "Invalid datetime string! Must be UTC." });
z.string().ip({ message: "Invalid IP address" });

ISO datetimes

The z.string().datetime() method defaults to UTC validation: no timezone offsets with arbitrary sub-second decimal precision.

const datetime = z.string().datetime();

datetime.parse("2020-01-01T00:00:00Z"); // pass
datetime.parse("2020-01-01T00:00:00.123Z"); // pass
datetime.parse("2020-01-01T00:00:00.123456Z"); // pass (arbitrary precision)
datetime.parse("2020-01-01T00:00:00+02:00"); // fail (no offsets allowed)

Timezone offsets can be allowed by setting the offset option to true.

const datetime = z.string().datetime({ offset: true });

datetime.parse("2020-01-01T00:00:00+02:00"); // pass
datetime.parse("2020-01-01T00:00:00.123+02:00"); // pass (millis optional)
datetime.parse("2020-01-01T00:00:00.123+0200"); // pass (millis optional)
datetime.parse("2020-01-01T00:00:00.123+02"); // pass (only offset hours)
datetime.parse("2020-01-01T00:00:00Z"); // pass (Z still supported)

You can additionally constrain the allowable precision. By default, arbitrary sub-second precision is supported (but optional).

const datetime = z.string().datetime({ precision: 3 });

datetime.parse("2020-01-01T00:00:00.123Z"); // pass
datetime.parse("2020-01-01T00:00:00Z"); // fail
datetime.parse("2020-01-01T00:00:00.123456Z"); // fail

IP addresses

The z.string().ip() method by default validate IPv4 and IPv6.

const ip = z.string().ip();

ip.parse(""); // pass
ip.parse("84d5:51a0:9114:1855:4cfa:f2d7:1f12:7003"); // pass
ip.parse("84d5:51a0:9114:1855:4cfa:f2d7:1f12:"); // pass

ip.parse(""); // fail
ip.parse("84d5:51a0:9114:gggg:4cfa:f2d7:1f12:7003"); // fail

You can additionally set the IP version.

const ipv4 = z.string().ip({ version: "v4" });
ipv4.parse("84d5:51a0:9114:1855:4cfa:f2d7:1f12:7003"); // fail

const ipv6 = z.string().ip({ version: "v6" });
ipv6.parse(""); // fail


You can customize certain error messages when creating a number schema.

const age = z.number({
  required_error: "Age is required",
  invalid_type_error: "Age must be a number",

Zod includes a handful of number-specific validations.

z.number().gte(5); // alias .min(5)
z.number().lte(5); // alias .max(5)

z.number().int(); // value must be an integer

z.number().positive(); //     > 0
z.number().nonnegative(); //  >= 0
z.number().negative(); //     < 0
z.number().nonpositive(); //  <= 0

z.number().multipleOf(5); // Evenly divisible by 5. Alias .step(5)

z.number().finite(); // value must be finite, not Infinity or -Infinity
z.number().safe(); // value must be between Number.MIN_SAFE_INTEGER and Number.MAX_SAFE_INTEGER

Optionally, you can pass in a second argument to provide a custom error message.

z.number().lte(5, { message: "this👏is👏too👏big" });


Zod includes a handful of bigint-specific validations.

z.bigint().gte(5n); // alias `.min(5n)`
z.bigint().lte(5n); // alias `.max(5n)`

z.bigint().positive(); // > 0n
z.bigint().nonnegative(); // >= 0n
z.bigint().negative(); // < 0n
z.bigint().nonpositive(); // <= 0n

z.bigint().multipleOf(5n); // Evenly divisible by 5n.


You can customize certain error messages when creating a nan schema.

const isNaN = z.nan({
  required_error: "isNaN is required",
  invalid_type_error: "isNaN must be not a number",


You can customize certain error messages when creating a boolean schema.

const isActive = z.boolean({
  required_error: "isActive is required",
  invalid_type_error: "isActive must be a boolean",


Use to validate Date instances. Date()); // success: true"2022-01-12T00:00:00.000Z"); // success: false

You can customize certain error messages when creating a date schema.

const myDateSchema ={
  required_error: "Please select a date and time",
  invalid_type_error: "That's not a date!",

Zod provides a handful of date-specific validations. Date("1900-01-01"), { message: "Too old" }); Date(), { message: "Too young!" });

Coercion to Date

Since zod 3.20, use to pass the input through new Date(input).

const dateSchema =;
type DateSchema = z.infer<typeof dateSchema>;
// type DateSchema = Date

/* valid dates */
console.log(dateSchema.safeParse("2023-01-10T00:00:00.000Z").success); // true
console.log(dateSchema.safeParse("2023-01-10").success); // true
console.log(dateSchema.safeParse("1/10/23").success); // true
console.log(dateSchema.safeParse(new Date("1/10/23")).success); // true

/* invalid dates */
console.log(dateSchema.safeParse("2023-13-10").success); // false
console.log(dateSchema.safeParse("0000-00-00").success); // false

For older zod versions, use z.preprocess like described in this thread.

Zod enums

const FishEnum = z.enum(["Salmon", "Tuna", "Trout"]);
type FishEnum = z.infer<typeof FishEnum>;
// 'Salmon' | 'Tuna' | 'Trout'

z.enum is a Zod-native way to declare a schema with a fixed set of allowable string values. Pass the array of values directly into z.enum(). Alternatively, use as const to define your enum values as a tuple of strings. See the const assertion docs for details.

const VALUES = ["Salmon", "Tuna", "Trout"] as const;
const FishEnum = z.enum(VALUES);

This is not allowed, since Zod isn’t able to infer the exact values of each element.

const fish = ["Salmon", "Tuna", "Trout"];
const FishEnum = z.enum(fish);


To get autocompletion with a Zod enum, use the .enum property of your schema:

FishEnum.enum.Salmon; // => autocompletes

=> {
  Salmon: "Salmon",
  Tuna: "Tuna",
  Trout: "Trout",

You can also retrieve the list of options as a tuple with the .options property:

FishEnum.options; // ["Salmon", "Tuna", "Trout"];

Native enums

Zod enums are the recommended approach to defining and validating enums. But if you need to validate against an enum from a third-party library (or you don’t want to rewrite your existing enums) you can use z.nativeEnum().

Numeric enums

enum Fruits {

const FruitEnum = z.nativeEnum(Fruits);
type FruitEnum = z.infer<typeof FruitEnum>; // Fruits

FruitEnum.parse(Fruits.Apple); // passes
FruitEnum.parse(Fruits.Banana); // passes
FruitEnum.parse(0); // passes
FruitEnum.parse(1); // passes
FruitEnum.parse(3); // fails

String enums

enum Fruits {
  Apple = "apple",
  Banana = "banana",
  Cantaloupe, // you can mix numerical and string enums

const FruitEnum = z.nativeEnum(Fruits);
type FruitEnum = z.infer<typeof FruitEnum>; // Fruits

FruitEnum.parse(Fruits.Apple); // passes
FruitEnum.parse(Fruits.Cantaloupe); // passes
FruitEnum.parse("apple"); // passes
FruitEnum.parse("banana"); // passes
FruitEnum.parse(0); // passes
FruitEnum.parse("Cantaloupe"); // fails

Const enums

The .nativeEnum() function works for as const objects as well. ⚠️ as const required TypeScript 3.4+!

const Fruits = {
  Apple: "apple",
  Banana: "banana",
  Cantaloupe: 3,
} as const;

const FruitEnum = z.nativeEnum(Fruits);
type FruitEnum = z.infer<typeof FruitEnum>; // "apple" | "banana" | 3

FruitEnum.parse("apple"); // passes
FruitEnum.parse("banana"); // passes
FruitEnum.parse(3); // passes
FruitEnum.parse("Cantaloupe"); // fails

You can access the underlying object with the .enum property:

FruitEnum.enum.Apple; // "apple"


You can make any schema optional with z.optional(). This wraps the schema in a ZodOptional instance and returns the result.

const schema = z.optional(z.string());

schema.parse(undefined); // => returns undefined
type A = z.infer<typeof schema>; // string | undefined

For convenience, you can also call the .optional() method on an existing schema.

const user = z.object({
  username: z.string().optional(),
type C = z.infer<typeof user>; // { username?: string | undefined };

You can extract the wrapped schema from a ZodOptional instance with .unwrap().

const stringSchema = z.string();
const optionalString = stringSchema.optional();
optionalString.unwrap() === stringSchema; // true


Similarly, you can create nullable types with z.nullable().

const nullableString = z.nullable(z.string());
nullableString.parse("asdf"); // => "asdf"
nullableString.parse(null); // => null

Or use the .nullable() method.

const E = z.string().nullable(); // equivalent to nullableString
type E = z.infer<typeof E>; // string | null

Extract the inner schema with .unwrap().

const stringSchema = z.string();
const nullableString = stringSchema.nullable();
nullableString.unwrap() === stringSchema; // true


// all properties are required by default
const Dog = z.object({
  name: z.string(),
  age: z.number(),

// extract the inferred type like this
type Dog = z.infer<typeof Dog>;

// equivalent to:
type Dog = {
  name: string;
  age: number;


Use .shape to access the schemas for a particular key.; // => string schema
Dog.shape.age; // => number schema


Use .keyof to create a ZodEnum schema from the keys of an object schema.

const keySchema = Dog.keyof();
keySchema; // ZodEnum<["name", "age"]>


You can add additional fields to an object schema with the .extend method.

const DogWithBreed = Dog.extend({
  breed: z.string(),

You can use .extend to overwrite fields! Be careful with this power!


Equivalent to A.extend(B.shape).

const BaseTeacher = z.object({ students: z.array(z.string()) });
const HasID = z.object({ id: z.string() });

const Teacher = BaseTeacher.merge(HasID);
type Teacher = z.infer<typeof Teacher>; // => { students: string[], id: string }

If the two schemas share keys, the properties of B overrides the property of A. The returned schema also inherits the “unknownKeys” policy (strip/strict/passthrough) and the catchall schema of B.


Inspired by TypeScript’s built-in Pick and Omit utility types, all Zod object schemas have .pick and .omit methods that return a modified version. Consider this Recipe schema:

const Recipe = z.object({
  id: z.string(),
  name: z.string(),
  ingredients: z.array(z.string()),

To only keep certain keys, use .pick .

const JustTheName = Recipe.pick({ name: true });
type JustTheName = z.infer<typeof JustTheName>;
// => { name: string }

To remove certain keys, use .omit .

const NoIDRecipe = Recipe.omit({ id: true });

type NoIDRecipe = z.infer<typeof NoIDRecipe>;
// => { name: string, ingredients: string[] }


Inspired by the built-in TypeScript utility type Partial, the .partial method makes all properties optional.

Starting from this object:

const user = z.object({
  email: z.string()
  username: z.string(),
// { email: string; username: string }

We can create a partial version:

const partialUser = user.partial();
// { email?: string | undefined; username?: string | undefined }

You can also specify which properties to make optional:

const optionalEmail = user.partial({
  email: true,
  email?: string | undefined;
  username: string


The .partial method is shallow — it only applies one level deep. There is also a “deep” version:

const user = z.object({
  username: z.string(),
  location: z.object({
    latitude: z.number(),
    longitude: z.number(),
  strings: z.array(z.object({ value: z.string() })),

const deepPartialUser = user.deepPartial();

  username?: string | undefined,
  location?: {
    latitude?: number | undefined;
    longitude?: number | undefined;
  } | undefined,
  strings?: { value?: string}[]

Important limitation: deep partials only work as expected in hierarchies of objects, arrays, and tuples.


Contrary to the .partial method, the .required method makes all properties required.

Starting from this object:

const user = z.object({
  email: z.string()
  username: z.string(),
// { email?: string | undefined; username?: string | undefined }

We can create a required version:

const requiredUser = user.required();
// { email: string; username: string }

You can also specify which properties to make required:

const requiredEmail = user.required({
  email: true,
  email: string;
  username?: string | undefined;


By default Zod object schemas strip out unrecognized keys during parsing.

const person = z.object({
  name: z.string(),

  name: "bob dylan",
  extraKey: 61,
// => { name: "bob dylan" }
// extraKey has been stripped

Instead, if you want to pass through unknown keys, use .passthrough() .

  name: "bob dylan",
  extraKey: 61,
// => { name: "bob dylan", extraKey: 61 }


By default Zod object schemas strip out unrecognized keys during parsing. You can disallow unknown keys with .strict() . If there are any unknown keys in the input, Zod will throw an error.

const person = z
    name: z.string(),

  name: "bob dylan",
  extraKey: 61,
// => throws ZodError


You can use the .strip method to reset an object schema to the default behavior (stripping unrecognized keys).


You can pass a “catchall” schema into an object schema. All unknown keys will be validated against it.

const person = z
    name: z.string(),

  name: "bob dylan",
  validExtraKey: 61, // works fine

  name: "bob dylan",
  validExtraKey: false, // fails
// => throws ZodError

Using .catchall() obviates .passthrough() , .strip() , or .strict(). All keys are now considered “known”.


const stringArray = z.array(z.string());

// equivalent
const stringArray = z.string().array();

Be careful with the .array() method. It returns a new ZodArray instance. This means the order in which you call methods matters. For instance:

z.string().optional().array(); // (string | undefined)[]
z.string().array().optional(); // string[] | undefined


Use .element to access the schema for an element of the array.

stringArray.element; // => string schema


If you want to ensure that an array contains at least one element, use .nonempty().

const nonEmptyStrings = z.string().array().nonempty();
// the inferred type is now
// [string, ...string[]]

nonEmptyStrings.parse([]); // throws: "Array cannot be empty"
nonEmptyStrings.parse(["Ariana Grande"]); // passes

You can optionally specify a custom error message:

// optional custom error message
const nonEmptyStrings = z.string().array().nonempty({
  message: "Can't be empty!",


z.string().array().min(5); // must contain 5 or more items
z.string().array().max(5); // must contain 5 or fewer items
z.string().array().length(5); // must contain 5 items exactly

Unlike .nonempty() these methods do not change the inferred type.


Unlike arrays, tuples have a fixed number of elements and each element can have a different type.

const athleteSchema = z.tuple([
  z.string(), // name
  z.number(), // jersey number
    pointsScored: z.number(),
  }), // statistics

type Athlete = z.infer<typeof athleteSchema>;
// type Athlete = [string, number, { pointsScored: number }]

A variadic (“rest”) argument can be added with the .rest method.

const variadicTuple = z.tuple([z.string()]).rest(z.number());
const result = variadicTuple.parse(["hello", 1, 2, 3]);
// => [string, ...number[]];


Zod includes a built-in z.union method for composing “OR” types.

const stringOrNumber = z.union([z.string(), z.number()]);

stringOrNumber.parse("foo"); // passes
stringOrNumber.parse(14); // passes

Zod will test the input against each of the “options” in order and return the first value that validates successfully.

For convenience, you can also use the .or method:

const stringOrNumber = z.string().or(z.number());

Optional string validation:

To validate an optional form input, you can union the desired string validation with an empty string literal.

This example validates an input that is optional but needs to contain a valid URL:

const optionalUrl = z.union([z.string().url().nullish(), z.literal("")]);

console.log(optionalUrl.safeParse(undefined).success); // true
console.log(optionalUrl.safeParse(null).success); // true
console.log(optionalUrl.safeParse("").success); // true
console.log(optionalUrl.safeParse("").success); // true
console.log(optionalUrl.safeParse("not a valid url").success); // false

Discriminated unions

A discriminated union is a union of object schemas that all share a particular key.

type MyUnion =
  | { status: "success"; data: string }
  | { status: "failed"; error: Error };

Such unions can be represented with the z.discriminatedUnion method. This enables faster evaluation, because Zod can check the discriminator key (status in the example above) to determine which schema should be used to parse the input. This makes parsing more efficient and lets Zod report friendlier errors.

With the basic union method, the input is tested against each of the provided “options”, and in the case of invalidity, issues for all the “options” are shown in the zod error. On the other hand, the discriminated union allows for selecting just one of the “options”, testing against it, and showing only the issues related to this “option”.

const myUnion = z.discriminatedUnion("status", [
  z.object({ status: z.literal("success"), data: z.string() }),
  z.object({ status: z.literal("failed"), error: z.instanceof(Error) }),

myUnion.parse({ status: "success", data: "yippie ki yay" });


Record schemas are used to validate types such as { [k: string]: number }.

If you want to validate the values of an object against some schema but don’t care about the keys, use z.record(valueType):

const NumberCache = z.record(z.number());

type NumberCache = z.infer<typeof NumberCache>;
// => { [k: string]: number }

This is particularly useful for storing or caching items by ID.

const userStore: UserStore = {};

userStore["77d2586b-9e8e-4ecf-8b21-ea7e0530eadd"] = {
  name: "Carlotta",
}; // passes

userStore["77d2586b-9e8e-4ecf-8b21-ea7e0530eadd"] = {
  whatever: "Ice cream sundae",
}; // TypeError

Record key type

If you want to validate both the keys and the values, use z.record(keyType, valueType):

const NoEmptyKeysSchema = z.record(z.string().min(1), z.number());
NoEmptyKeysSchema.parse({ count: 1 }); // => { 'count': 1 }
NoEmptyKeysSchema.parse({ "": 1 }); // fails

(Notice how when passing two arguments, valueType is the second argument)

A note on numerical keys

While z.record(keyType, valueType) is able to accept numerical key types and TypeScript’s built-in Record type is Record<KeyType, ValueType>, it’s hard to represent the TypeScript type Record<number, any> in Zod.

As it turns out, TypeScript’s behavior surrounding [k: number] is a little unintuitive:

const testMap: { [k: number]: string } = {
  1: "one",

for (const key in testMap) {
  console.log(`${key}: ${typeof key}`);
// prints: `1: string`

As you can see, JavaScript automatically casts all object keys to strings under the hood. Since Zod is trying to bridge the gap between static and runtime types, it doesn’t make sense to provide a way of creating a record schema with numerical keys, since there’s no such thing as a numerical key in runtime JavaScript.


const stringNumberMap =, z.number());

type StringNumberMap = z.infer<typeof stringNumberMap>;
// type StringNumberMap = Map<string, number>


const numberSet = z.set(z.number());
type NumberSet = z.infer<typeof numberSet>;
// type NumberSet = Set<number>

Set schemas can be further constrained with the following utility methods.

z.set(z.string()).nonempty(); // must contain at least one item
z.set(z.string()).min(5); // must contain 5 or more items
z.set(z.string()).max(5); // must contain 5 or fewer items
z.set(z.string()).size(5); // must contain 5 items exactly


Intersections are useful for creating “logical AND” types. This is useful for intersecting two object types.

const Person = z.object({
  name: z.string(),

const Employee = z.object({
  role: z.string(),

const EmployedPerson = z.intersection(Person, Employee);

// equivalent to:
const EmployedPerson = Person.and(Employee);

Though in many cases, it is recommended to use A.merge(B) to merge two objects. The .merge method returns a new ZodObject instance, whereas A.and(B) returns a less useful ZodIntersection instance that lacks common object methods like pick and omit.

const a = z.union([z.number(), z.string()]);
const b = z.union([z.number(), z.boolean()]);
const c = z.intersection(a, b);

type c = z.infer<typeof c>; // => number

Recursive types

You can define a recursive schema in Zod, but because of a limitation of TypeScript, their type can’t be statically inferred. Instead you’ll need to define the type definition manually, and provide it to Zod as a “type hint”.

const baseCategorySchema = z.object({
  name: z.string(),

type Category = z.infer<typeof baseCategorySchema> & {
  subcategories: Category[];

const categorySchema: z.ZodType<Category> = baseCategorySchema.extend({
  subcategories: z.lazy(() => categorySchema.array()),

  name: "People",
  subcategories: [
      name: "Politicians",
      subcategories: [
          name: "Presidents",
          subcategories: [],
}); // passes

Thanks to crasite for this example.

ZodType with ZodEffects

When using z.ZodType with z.ZodEffects ( .refine, .transform, preprocess, etc… ), you will need to define the input and output types of the schema. z.ZodType<Output, z.ZodTypeDef, Input>

const isValidId = (id: string): id is `${string}/${string}` =>
  id.split("/").length === 2;

const baseSchema = z.object({
  id: z.string().refine(isValidId),

type Input = z.input<typeof baseSchema> & {
  children: Input[];

type Output = z.output<typeof baseSchema> & {
  children: Output[];

const schema: z.ZodType<Output, z.ZodTypeDef, Input> = baseSchema.extend({
  children: z.lazy(() => schema.array()),

Thanks to marcus13371337 and JoelBeeldi for this example.

JSON type

If you want to validate any JSON value, you can use the snippet below.

const literalSchema = z.union([z.string(), z.number(), z.boolean(), z.null()]);
type Literal = z.infer<typeof literalSchema>;
type Json = Literal | { [key: string]: Json } | Json[];
const jsonSchema: z.ZodType<Json> = z.lazy(() =>
  z.union([literalSchema, z.array(jsonSchema), z.record(jsonSchema)])


Thanks to ggoodman for suggesting this.

Cyclical objects

Despite supporting recursive schemas, passing cyclical data into Zod will cause an infinite loop.


const numberPromise = z.promise(z.number());

“Parsing” works a little differently with promise schemas. Validation happens in two parts:

  1. Zod synchronously checks that the input is an instance of Promise (i.e. an object with .then and .catch methods.).
  2. Zod uses .then to attach an additional validation step onto the existing Promise. You’ll have to use .catch on the returned Promise to handle validation failures.
// ZodError: Non-Promise type: string

// => Promise<number>

const test = async () => {
  await numberPromise.parse(Promise.resolve("tuna"));
  // ZodError: Non-number type: string

  await numberPromise.parse(Promise.resolve(3.14));
  // => 3.14


You can use z.instanceof to check that the input is an instance of a class. This is useful to validate inputs against classes that are exported from third-party libraries.

class Test {
  name: string;

const TestSchema = z.instanceof(Test);

const blob: any = "whatever";
TestSchema.parse(new Test()); // passes
TestSchema.parse("blob"); // throws


Zod also lets you define “function schemas”. This makes it easy to validate the inputs and outputs of a function without intermixing your validation code and “business logic”.

You can create a function schema with z.function(args, returnType) .

const myFunction = z.function();

type myFunction = z.infer<typeof myFunction>;
// => ()=>unknown

Define inputs and outputs.

const myFunction = z
  .args(z.string(), z.number()) // accepts an arbitrary number of arguments

type myFunction = z.infer<typeof myFunction>;
// => (arg0: string, arg1: number)=>boolean

Function schemas have an .implement() method which accepts a function and returns a new function that automatically validates its inputs and outputs.

const trimmedLength = z
  .args(z.string()) // accepts an arbitrary number of arguments
  .implement((x) => {
    // TypeScript knows x is a string!
    return x.trim().length;

trimmedLength("sandwich"); // => 8
trimmedLength(" asdf "); // => 4

If you only care about validating inputs, just don’t call the .returns() method. The output type will be inferred from the implementation.

You can use the special z.void() option if your function doesn’t return anything. This will let Zod properly infer the type of void-returning functions. (Void-returning functions actually return undefined.)

const myFunction = z
  .implement((arg) => {
    return [arg.length];

myFunction; // (arg: string)=>number[]

Extract the input and output schemas from a function schema.

// => ZodTuple<[ZodString, ZodNumber]>

// => ZodBoolean


Zod now supports primitive coercion without the need for .preprocess(). See the coercion docs for more information.

Typically Zod operates under a “parse then transform” paradigm. Zod validates the input first, then passes it through a chain of transformation functions. (For more information about transforms, read the .transform docs.)

But sometimes you want to apply some transform to the input before parsing happens. A common use case: type coercion. Zod enables this with the z.preprocess().

const castToString = z.preprocess((val) => String(val), z.string());

This returns a ZodEffects instance. ZodEffects is a wrapper class that contains all logic pertaining to preprocessing, refinements, and transforms.

Custom schemas

You can create a Zod schema for any TypeScript type by using z.custom(). This is useful for creating schemas for types that are not supported by Zod out of the box, such as template string literals.

const px = z.custom<`${number}px`>((val) => {
  return /^\d+px$/.test(val as string);

type px = z.infer<typeof px>; // `${number}px`

px.parse("42px"); // "42px"
px.parse("42vw"); // throws;

If you don’t provide a validation function, Zod will allow any value. This can be dangerous!

z.custom<{ arg: string }>(); // performs no validation

You can customize the error message and other options by passing a second argument. This parameter works the same way as the params parameter of .refine.

z.custom<...>((val) => ..., "custom error message");

Schema methods

All Zod schemas contain certain methods.


.parse(data: unknown): T

Given any Zod schema, you can call its .parse method to check data is valid. If it is, a value is returned with full type information! Otherwise, an error is thrown.

IMPORTANT: The value returned by .parse is a deep clone of the variable you passed in.

const stringSchema = z.string();

stringSchema.parse("fish"); // => returns "fish"
stringSchema.parse(12); // throws error


.parseAsync(data:unknown): Promise<T>

If you use asynchronous refinements or transforms (more on those later), you’ll need to use .parseAsync.

const stringSchema = z.string().refine(async (val) => val.length <= 8);

await stringSchema.parseAsync("hello"); // => returns "hello"
await stringSchema.parseAsync("hello world"); // => throws error


.safeParse(data:unknown): { success: true; data: T; } | { success: false; error: ZodError; }

If you don’t want Zod to throw errors when validation fails, use .safeParse. This method returns an object containing either the successfully parsed data or a ZodError instance containing detailed information about the validation problems.

// => { success: false; error: ZodError }

// => { success: true; data: 'billie' }

The result is a discriminated union, so you can handle errors very conveniently:

const result = stringSchema.safeParse("billie");
if (!result.success) {
  // handle error then return
} else {
  // do something;


Alias: .spa

An asynchronous version of safeParse.

await stringSchema.safeParseAsync("billie");

For convenience, this has been aliased to .spa:



.refine(validator: (data:T)=>any, params?: RefineParams)

Zod lets you provide custom validation logic via refinements. (For advanced features like creating multiple issues and customizing error codes, see .superRefine.)

Zod was designed to mirror TypeScript as closely as possible. But there are many so-called “refinement types” you may wish to check for that can’t be represented in TypeScript’s type system. For instance: checking that a number is an integer or that a string is a valid email address.

For example, you can define a custom validation check on any Zod schema with .refine :

const myString = z.string().refine((val) => val.length <= 255, {
  message: "String can't be more than 255 characters",

⚠️ Refinement functions should not throw. Instead they should return a falsy value to signal failure.


As you can see, .refine takes two arguments.

  1. The first is the validation function. This function takes one input (of type T — the inferred type of the schema) and returns any. Any truthy value will pass validation. (Prior to zod@1.6.2 the validation function had to return a boolean.)
  2. The second argument accepts some options. You can use this to customize certain error-handling behavior:
type RefineParams = {
  // override error message
  message?: string;

  // appended to error path
  path?: (string | number)[];

  // params object you can use to customize message
  // in error map
  params?: object;

For advanced cases, the second argument can also be a function that returns RefineParams.

const longString = z.string().refine(
  (val) => val.length > 10,
  (val) => ({ message: `${val} is not more than 10 characters` })

Customize error path

const passwordForm = z
    password: z.string(),
    confirm: z.string(),
  .refine((data) => data.password === data.confirm, {
    message: "Passwords don't match",
    path: ["confirm"], // path of error

passwordForm.parse({ password: "asdf", confirm: "qwer" });

Because you provided a path parameter, the resulting error will be:

ZodError {
  issues: [{
    "code": "custom",
    "path": [ "confirm" ],
    "message": "Passwords don't match"

Asynchronous refinements

Refinements can also be async:

const userId = z.string().refine(async (id) => {
  // verify that ID exists in database
  return true;

⚠️ If you use async refinements, you must use the .parseAsync method to parse data! Otherwise Zod will throw an error.

Relationship to transforms

Transforms and refinements can be interleaved:

  .transform((val) => val.length)
  .refine((val) => val > 25);


The .refine method is actually syntactic sugar atop a more versatile (and verbose) method called superRefine. Here’s an example:

const Strings = z.array(z.string()).superRefine((val, ctx) => {
  if (val.length > 3) {
      code: z.ZodIssueCode.too_big,
      maximum: 3,
      type: "array",
      inclusive: true,
      message: "Too many items 😡",

  if (val.length !== new Set(val).size) {
      code: z.ZodIssueCode.custom,
      message: `No duplicates allowed.`,

You can add as many issues as you like. If ctx.addIssue is not called during the execution of the function, validation passes.

Normally refinements always create issues with a ZodIssueCode.custom error code, but with superRefine it’s possible to throw issues of any ZodIssueCode. Each issue code is described in detail in the Error Handling guide:

Abort early

By default, parsing will continue even after a refinement check fails. For instance, if you chain together multiple refinements, they will all be executed. However, it may be desirable to abort early to prevent later refinements from being executed. To achieve this, pass the fatal flag to ctx.addIssue and return z.NEVER.

const schema = z.number().superRefine((val, ctx) => {
  if (val < 10) {
      code: z.ZodIssueCode.custom,
      message: "should be >= 10",
      fatal: true,

    return z.NEVER;

  if (val !== 12) {
      code: z.ZodIssueCode.custom,
      message: "should be twelve",

Type refinements

If you provide a type predicate to .refine() or .superRefine(), the resulting type will be narrowed down to your predicate’s type. This is useful if you are mixing multiple chained refinements and transformations:

const schema = z
    first: z.string(),
    second: z.number(),
  .superRefine((arg, ctx): arg is { first: string; second: number } => {
    if (!arg) {
        code: z.ZodIssueCode.custom, // customize your issue
        message: "object should exist",

    return z.NEVER; // The return value is not used, but we need to return something to satisfy the typing
  // here, TS knows that arg is not null
  .refine((arg) => arg.first === "bob", "`first` is not `bob`!");

⚠️ You must use ctx.addIssue() instead of returning a boolean value to indicate whether the validation passes. If ctx.addIssue is not called during the execution of the function, validation passes.


To transform data after parsing, use the transform method.

const stringToNumber = z.string().transform((val) => val.length);

stringToNumber.parse("string"); // => 6

Chaining order

Note that stringToNumber above is an instance of the ZodEffects subclass. It is NOT an instance of ZodString. If you want to use the built-in methods of ZodString (e.g. .email()) you must apply those methods before any transforms.

const emailToDomain = z
  .transform((val) => val.split("@")[1]);

emailToDomain.parse(""); // =>

Validating during transform

The .transform method can simultaneously validate and transform the value. This is often simpler and less duplicative than chaining transform and refine.

As with .superRefine, the transform function receives a ctx object with an addIssue method that can be used to register validation issues.

const numberInString = z.string().transform((val, ctx) => {
  const parsed = parseInt(val);
  if (isNaN(parsed)) {
      code: z.ZodIssueCode.custom,
      message: "Not a number",

    // This is a special symbol you can use to
    // return early from the transform function.
    // It has type `never` so it does not affect the
    // inferred return type.
    return z.NEVER;
  return parsed;

Relationship to refinements

Transforms and refinements can be interleaved. These will be executed in the order they are declared.

const nameToGreeting = z
  .transform((val) => val.toUpperCase())
  .refine((val) => val.length > 15)
  .transform((val) => `Hello ${val}`)
  .refine((val) => val.indexOf("!") === -1);

Async transforms

Transforms can also be async.

const IdToUser = z
  .transform(async (id) => {
    return await getUserById(id);

⚠️ If your schema contains asynchronous transforms, you must use .parseAsync() or .safeParseAsync() to parse data. Otherwise Zod will throw an error.


You can use transforms to implement the concept of “default values” in Zod.

const stringWithDefault = z.string().default("tuna");

stringWithDefault.parse(undefined); // => "tuna"

Optionally, you can pass a function into .default that will be re-executed whenever a default value needs to be generated:

const numberWithRandomDefault = z.number().default(Math.random);

numberWithRandomDefault.parse(undefined); // => 0.4413456736055323
numberWithRandomDefault.parse(undefined); // => 0.1871840107401901
numberWithRandomDefault.parse(undefined); // => 0.7223408162401552

Conceptually, this is how Zod processes default values:

  1. If the input is undefined, the default value is returned
  2. Otherwise, the data is parsed using the base schema


Use .describe() to add a description property to the resulting schema.

const documentedString = z
  .describe("A useful bit of text, if you know what to do with it.");
documentedString.description; // A useful bit of text…

This can be useful for documenting a field, for example in a JSON Schema using a library like zod-to-json-schema).


Use .catch() to provide a “catch value” to be returned in the event of a parsing error.

const numberWithCatch = z.number().catch(42);

numberWithCatch.parse(5); // => 5
numberWithCatch.parse("tuna"); // => 42

Optionally, you can pass a function into .catch that will be re-executed whenever a default value needs to be generated. A ctx object containing the caught error will be passed into this function.

const numberWithRandomCatch = z.number().catch((ctx) => {
  ctx.error; // the caught ZodError
  return Math.random();

numberWithRandomCatch.parse("sup"); // => 0.4413456736055323
numberWithRandomCatch.parse("sup"); // => 0.1871840107401901
numberWithRandomCatch.parse("sup"); // => 0.7223408162401552

Conceptually, this is how Zod processes “catch values”:

  1. The data is parsed using the base schema
  2. If the parsing fails, the “catch value” is returned


A convenience method that returns an optional version of a schema.

const optionalString = z.string().optional(); // string | undefined

// equivalent to


A convenience method that returns a nullable version of a schema.

const nullableString = z.string().nullable(); // string | null

// equivalent to


A convenience method that returns a “nullish” version of a schema. Nullish schemas will accept both undefined and null. Read more about the concept of “nullish” in the TypeScript 3.7 release notes.

const nullishString = z.string().nullish(); // string | null | undefined

// equivalent to


A convenience method that returns an array schema for the given type:

const stringArray = z.string().array(); // string[]

// equivalent to


A convenience method for promise types:

const stringPromise = z.string().promise(); // Promise<string>

// equivalent to


A convenience method for union types.

const stringOrNumber = z.string().or(z.number()); // string | number

// equivalent to
z.union([z.string(), z.number()]);


A convenience method for creating intersection types.

const nameAndAge = z
  .object({ name: z.string() })
  .and(z.object({ age: z.number() })); // { name: string } & { age: number }

// equivalent to
z.intersection(z.object({ name: z.string() }), z.object({ age: z.number() }));


.brand<T>() => ZodBranded<this, B>

TypeScript’s type system is structural, which means that any two types that are structurally equivalent are considered the same.

type Cat = { name: string };
type Dog = { name: string };

const petCat = (cat: Cat) => {};
const fido: Dog = { name: "fido" };
petCat(fido); // works fine

In some cases, its can be desirable to simulate nominal typing inside TypeScript. For instance, you may wish to write a function that only accepts an input that has been validated by Zod. This can be achieved with branded types (AKA opaque types).

const Cat = z.object({ name: z.string() }).brand<"Cat">();
type Cat = z.infer<typeof Cat>;

const petCat = (cat: Cat) => {};

// this works
const simba = Cat.parse({ name: "simba" });

// this doesn't
petCat({ name: "fido" });

Under the hood, this works by attaching a “brand” to the inferred type using an intersection type. This way, plain/unbranded data structures are no longer assignable to the inferred type of the schema.

const Cat = z.object({ name: z.string() }).brand<"Cat">();
type Cat = z.infer<typeof Cat>;
// {name: string} & {[symbol]: "Cat"}

Note that branded types do not affect the runtime result of .parse. It is a static-only construct.


Schemas can be chained into validation “pipelines”. It’s useful for easily validating the result after a .transform():

  .transform((val) => val.length)

The .pipe() method returns a ZodPipeline instance.

You can use .pipe() to fix common issues with z.coerce.

You can constrain the input to types that work well with your chosen coercion. Then use .pipe() to apply the coercion.

without constrained input:

const toDate =

// works intuitively
console.log(toDate.safeParse('2023-01-01').success) // true

// might not be what you want
console.log(toDate.safeParse(null).success) // true

with constrained input:

const datelike = z.union([z.number(), z.string(),])
const datelikeToDate = datelike.pipe(

// still works intuitively
console.log(datelikeToDate.safeParse('2023-01-01').success) // true

// more likely what you want
console.log(datelikeToDate.safeParse(null).success) // false

You can also use this technique to avoid coercions that throw uncaught errors.

without constrained input:

const toBigInt = z.coerce.bigint()

// works intuitively
console.log( toBigInt.safeParse( '42' ) ) // true

// probably not what you want
console.log( toBigInt.safeParse( null ) ) // throws uncaught error

with constrained input:

const toNumber = z.number().or( z.string() ).pipe( z.coerce.number() )
const toBigInt = z.bigint().or( toNumber ).pipe( z.coerce.bigint() )

// still works intuitively
console.log( toBigInt.safeParse( '42' ).success ) // true

// error handled by zod, more likely what you want
console.log( toBigInt.safeParse( null ).success ) // false

Guides and concepts

Type inference

You can extract the TypeScript type of any schema with z.infer<typeof mySchema> .

const A = z.string();
type A = z.infer<typeof A>; // string

const u: A = 12; // TypeError
const u: A = "asdf"; // compiles

What about transforms?

In reality each Zod schema internally tracks two types: an input and an output. For most schemas (e.g. z.string()) these two are the same. But once you add transforms into the mix, these two values can diverge. For instance z.string().transform(val => val.length) has an input of string and an output of number.

You can separately extract the input and output types like so:

const stringToNumber = z.string().transform((val) => val.length);

// ⚠️ Important: z.infer returns the OUTPUT type!
type input = z.input<typeof stringToNumber>; // string
type output = z.output<typeof stringToNumber>; // number

// equivalent to z.output!
type inferred = z.infer<typeof stringToNumber>; // number

Writing generic functions

When attempting to write a function that accepts a Zod schema as an input, it’s common to try something like this:

function makeSchemaOptional<T>(schema: z.ZodType<T>) {
  return schema.optional();

This approach has some issues. The schema variable in this function is typed as an instance of ZodType, which is an abstract class that all Zod schemas inherit from. This approach loses type information, namely which subclass the input actually is.

const arg = makeSchemaOptional(z.string());

A better approach is for the generic parameter to refer to the schema as a whole.

function makeSchemaOptional<T extends z.ZodTypeAny>(schema: T) {
  return schema.optional();

ZodTypeAny is just a shorthand for ZodType<any, any, any>, a type that is broad enough to match any Zod schema.

As you can see, schema is now fully and properly typed.

const arg = makeSchemaOptional(z.string());
arg.unwrap(); // ZodString

Constraining allowable inputs

The ZodType class has three generic parameters.

class ZodType<
  Output = any,
  Def extends ZodTypeDef = ZodTypeDef,
  Input = Output
> { ... }

By constraining these in your generic input, you can limit what schemas are allowable as inputs to your function:

function makeSchemaOptional<T extends z.ZodType<string>>(schema: T) {
  return schema.optional();

// works fine

// Error: 'ZodNumber' is not assignable to parameter of type 'ZodType<string, ZodTypeDef, string>'

Error handling

Zod provides a subclass of Error called ZodError. ZodErrors contain an issues array containing detailed information about the validation problems.

const result = z
    name: z.string(),
  .safeParse({ name: 12 });

if (!result.success) {
  /* [
        "code": "invalid_type",
        "expected": "string",
        "received": "number",
        "path": [ "name" ],
        "message": "Expected string, received number"
  ] */

For detailed information about the possible error codes and how to customize error messages, check out the dedicated error handling guide:

Zod’s error reporting emphasizes completeness and correctness. If you are looking to present a useful error message to the end user, you should either override Zod’s error messages using an error map (described in detail in the Error Handling guide) or use a third-party library like zod-validation-error

Error formatting

You can use the .format() method to convert this error into a nested object.

const result = z
    name: z.string(),
  .safeParse({ name: 12 });

if (!result.success) {
  const formatted = result.error.format();
  /* {
    name: { _errors: [ 'Expected string, received number' ] }
  } */;
  // => ["Expected string, received number"]


There are a handful of other widely-used validation libraries, but all of them have certain design limitations that make for a non-ideal developer experience.


Doesn’t support static type inference 😕


Yup is a full-featured library that was implemented first in vanilla JS, and later rewritten in TypeScript.

  • Supports casting and transforms
  • All object fields are optional by default
  • Missing object methods: (partial, deepPartial)
  • Missing promise schemas
  • Missing function schemas
  • Missing union & intersection schemas


io-ts is an excellent library by gcanti. The API of io-ts heavily inspired the design of Zod.

In our experience, io-ts prioritizes functional programming purity over developer experience in many cases. This is a valid and admirable design goal, but it makes io-ts particularly hard to integrate into an existing codebase with a more procedural or object-oriented bias. For instance, consider how to define an object with optional properties in io-ts:

import * as t from "io-ts";

const A = t.type({
  foo: t.string,

const B = t.partial({
  bar: t.number,

const C = t.intersection([A, B]);

type C = t.TypeOf<typeof C>;
// returns { foo: string; bar?: number | undefined }

You must define the required and optional props in separate object validators, pass the optionals through t.partial (which marks all properties as optional), then combine them with t.intersection .

Consider the equivalent in Zod:

const C = z.object({
  foo: z.string(),
  bar: z.number().optional(),

type C = z.infer<typeof C>;
// returns { foo: string; bar?: number | undefined }

This more declarative API makes schema definitions vastly more concise.

io-ts also requires the use of gcanti’s functional programming library fp-ts to parse results and handle errors. This is another fantastic resource for developers looking to keep their codebase strictly functional. But depending on fp-ts necessarily comes with a lot of intellectual overhead; a developer has to be familiar with functional programming concepts and the fp-ts nomenclature to use the library.

  • Supports codecs with serialization & deserialization transforms
  • Supports branded types
  • Supports advanced functional programming, higher-kinded types, fp-ts compatibility
  • Missing object methods: (pick, omit, partial, deepPartial, merge, extend)
  • Missing nonempty arrays with proper typing ([T, ...T[]])
  • Missing promise schemas
  • Missing function schemas


Good type inference support, but limited options for object type masking (no .pick , .omit , .extend , etc.). No support for Record s (their Record is equivalent to Zod’s object ). They DO support readonly types, which Zod does not.

  • Supports “pattern matching”: computed properties that distribute over unions
  • Supports readonly types
  • Missing object methods: (deepPartial, merge)
  • Missing nonempty arrays with proper typing ([T, ...T[]])
  • Missing promise schemas
  • Missing error customization


Ow is focused on function input validation. It’s a library that makes it easy to express complicated assert statements, but it doesn’t let you parse untyped data. They support a much wider variety of types; Zod has a nearly one-to-one mapping with TypeScript’s type system, whereas ow lets you validate several highly-specific types out of the box (e.g. int32Array , see full list in their README).

If you want to validate function inputs, use function schemas in Zod! It’s a much simpler approach that lets you reuse a function type declaration without repeating yourself (namely, copy-pasting a bunch of ow assertions at the beginning of every function). Also Zod lets you validate your return types as well, so you can be sure there won’t be any unexpected data passed downstream.


View the changelog at