hydracache-core 0.17.0

Core runtime types and traits for HydraCache.
Documentation

HydraCache

HydraCache is a Rust-native local async cache that is designed to grow toward database result caching and distributed synchronization later.

Status

HydraCache is in early development. The current implementation provides the local async cache runtime, observability snapshots, optional Axum actuator routes, plus the first database result-cache adapters: hydracache-db and hydracache-sqlx.

Why HydraCache?

HydraCache is not trying to replace low-level cache engines, databases, or query processors. It is an application-facing cache layer for Rust services.

Compared with using Moka directly, HydraCache adds a smaller product-shaped API: loader helpers, TTLs, tag invalidation, local single-flight, codec-backed storage, and lightweight stats in one place.

Compared with ORM-level caches, HydraCache keeps freshness explicit. Keys, tags, and invalidation are application-controlled instead of hidden behind a large persistence framework.

Compared with Redis-style caches, HydraCache is embedded and local-first. The first version needs no server, proxy, daemon, or network hop.

Compared with ReadySet or Noria-style query engines, HydraCache deliberately does not try to incrementally maintain SQL result graphs. It is a lightweight cache library first, with database-result caching planned as an adapter layer.

The long-term direction is:

simple local cache -> database result-cache adapter -> optional distributed synchronization

v0 Scope

The first version includes:

  • local async cache runtime
  • HydraCache::local() builder
  • get
  • put
  • get_or_load
  • get_or_insert_with
  • try_get_or_insert_with
  • TypedCache<T> namespaced typed view
  • CacheKeyBuilder for escaped segmented keys
  • TagSet for reusable invalidation tag groups
  • local single-flight miss deduplication
  • contains_key
  • per-entry TTL and default TTL
  • tag-aware invalidation
  • key invalidation
  • remove as a local-cache alias for key invalidation
  • flush
  • postcard codec over Bytes
  • lightweight stats
  • diagnostics snapshot for smoke-checking cache activity
  • framework-neutral observability registry
  • optional read-only Axum actuator routes
  • single-flight join stats
  • tag-generation invalidation safety
  • Moka-backed local storage
  • database-neutral query result-cache descriptors
  • SQLx helper methods: fetch_one, fetch_optional, and fetch_all
  • database query ergonomics: entity, collection, for_entity, and collection_tag
  • CacheEntity metadata for domain-shaped database cache descriptors
  • HydraCacheEntity derive macro for generating CacheEntity impls
  • cacheable! macro for ordinary async function/result caching without DB adapter concepts
  • cacheable_infallible! macro for ordinary async loaders that cannot fail
  • tags = [...] macro shorthand for attaching several invalidation tags at once

Out of scope for v0:

  • SQL parsing or query-generation macros
  • distributed invalidation
  • cluster roles
  • public generation-counter APIs
  • write-enabled actuator/admin endpoints
  • persistence

Local Cache Quick Start

use std::time::Duration;

use hydracache::{CacheOptions, HydraCache};
use serde::{Deserialize, Serialize};

#[derive(Debug, Clone, Serialize, Deserialize)]
struct User {
    id: u64,
    name: String,
}

async fn load_user(id: u64) -> Result<User, std::io::Error> {
    Ok(User {
        id,
        name: format!("user-{id}"),
    })
}

# async fn example() -> hydracache::CacheResult<()> {
let cache = HydraCache::local()
    .default_ttl(Duration::from_secs(300))
    .max_capacity(10_000)
    .build();

let user = cache
    .try_get_or_insert_with(
        "user:42",
        CacheOptions::new()
            .ttl(Duration::from_secs(60))
            .tags(["user:42", "users"]),
        || async { load_user(42).await },
    )
    .await?;

cache.invalidate_tag("user:42").await?;

let users = cache.typed::<User>("users");
let user_key = hydracache::CacheKeyBuilder::new()
    .tenant(7)
    .entity("user", 42);

let typed_user = users
    .get_or_insert_with(
        &user_key.build_string(),
        CacheOptions::new().tag_set(
            hydracache::TagSet::new()
                .tenant(7)
                .entity("user", 42),
        ),
        || async {
            User {
                id: 42,
                name: "typed-user".to_owned(),
            }
        },
    )
    .await?;
# Ok(())
# }

This is the full-control API: you choose the key, tags, TTL, and loader. Cache hits return the decoded value immediately. Cache misses run the loader once per key under local single-flight, store the result, and share that result with concurrent callers.

Cacheable Function Macros

Use cacheable! when you want the same explicit cache boundary with less boilerplate at ordinary async function call sites.

use hydracache::{cacheable, CacheKeyBuilder, HydraCache, TagSet};
use serde::{Deserialize, Serialize};

#[derive(Debug, Clone, PartialEq, Eq, Serialize, Deserialize)]
struct Profile {
    id: u64,
    name: String,
}

# async fn example() -> hydracache::CacheResult<()> {
let cache = HydraCache::local().build();
let profile_id = 42_u64;
let key = CacheKeyBuilder::new()
    .entity("profile", profile_id)
    .build_string();

let profile = cacheable!(
    cache = cache,
    key = key.as_str(),
    tags = TagSet::new().tag("profiles").entity("profile", profile_id),
    ttl_secs = 60,
    load = move || async move {
        Ok::<_, std::io::Error>(Profile {
            id: profile_id,
            name: "Ada".to_owned(),
        })
    },
)
.await?;

assert_eq!(profile.id, 42);
cache.invalidate_tag("profile:42").await?;
# Ok(())
# }

Use cacheable_infallible! when the loader cannot fail and writing Ok::<_, Error>(value) would be only ceremony:

use hydracache::{cacheable_infallible, HydraCache};

# async fn example() -> hydracache::CacheResult<()> {
let cache = HydraCache::local().build();

let total = cacheable_infallible!(
    cache = cache,
    key = "profiles:count",
    tags = ["profiles"],
    ttl_secs = 60,
    load = || async { 1_u64 },
)
.await?;

assert_eq!(total, 1);
# Ok(())
# }

The macros are intentionally explicit. They do not discover a global cache, generate keys from function arguments, or hide the loader. They only build CacheOptions and call the existing runtime methods.

API Notes

get returns Ok(None) when the key is missing or expired.

get_or_load runs the loader on a miss and stores the loaded value with the provided CacheOptions.

get_or_insert_with is the short local-cache spelling for infallible async loaders.

try_get_or_insert_with is the fallible-loader spelling. It behaves the same as get_or_load.

For ordinary expensive async work, cacheable! is the compact macro form of get_or_load. It stays local-cache focused: you still pass the cache, key, TTL, tags, and loader explicitly, and it does not introduce database query metadata.

use hydracache::{cacheable, cacheable_infallible, HydraCache};

# async fn example() -> hydracache::CacheResult<()> {
let cache = HydraCache::local().build();

let value = cacheable!(
    cache = cache,
    key = "expensive:42",
    tags = ["expensive", "expensive:42"],
    ttl_secs = 60,
    load = || async { Ok::<_, std::io::Error>(42_u64) },
)
.await?;

assert_eq!(value, 42);

let total = cacheable_infallible!(
    cache = cache,
    key = "expensive-total",
    tags = ["expensive"],
    ttl_secs = 60,
    load = || async { 1_u64 },
)
.await?;

assert_eq!(total, 1);
# Ok(())
# }

When the loader captures request state, pool handles, or other non-Copy values, prefer move || async move { ... }. cacheable! expands to HydraCache::get_or_load, so the loader follows the same Send + 'static bounds as the explicit API. cacheable_infallible! follows get_or_insert_with and avoids the Ok::<_, Error>(...) wrapper for loaders that cannot fail.

cacheable! supports both repeated tag = ... entries and a single tags = ... expression. Prefer tags = [...] for simple lists and tags = TagSet::new()... when the tags are built from the same domain metadata as the key.

typed::<T>("namespace") creates a typed, namespaced view over the same cache. It keeps the shared storage, stats, single-flight, tags, and invalidation safety, but removes repeated type annotations at call sites and prefixes keys as namespace:key.

CacheKeyBuilder builds escaped :-separated keys from segments. TagSet collects reusable invalidation tags and can be attached with CacheOptions::tag_set.

Concurrent get_or_load calls for the same missing key share one loader execution. Cache hits bypass single-flight entirely.

If a tag is invalidated while a tagged loader is still running, HydraCache skips storing that stale loader result. Callers after the invalidation start or join a fresh in-flight load instead of joining the stale one.

contains_key checks whether a key currently maps to a usable value. Expired entries are removed and reported as absent.

remove and invalidate_key both remove one key. remove is the shorter local-cache spelling; invalidate_key is kept for consistency with tag invalidation.

invalidate_tag removes all entries currently associated with the tag.

Use CacheOptions::tag("users") for one tag and CacheOptions::tags(["users", "user:42"]) for multiple tags.

stats returns lightweight counters for hits, misses, loads, single-flight joins, stale load discards, invalidations, and evictions. It also exposes helpers such as total_requests, hit_ratio, has_single_flight_activity, and has_stale_load_discards. v0 does not wire backend eviction listeners yet, so evictions remains zero.

diagnostics().await returns a small smoke-test snapshot: the same stats plus the local backend's approximate entry count. It is useful for answering "did the second call hit the cache?" without wiring a metrics system.

How Do I Know It Works?

The fastest local check is to call the same cached operation twice, then inspect cache.diagnostics(). The first call should miss and run the loader. The second call should hit the cache and avoid the loader.

use hydracache::{cacheable_infallible, HydraCache};

# async fn example() -> hydracache::CacheResult<()> {
let cache = HydraCache::local().build();

let first = cacheable_infallible!(
    cache = cache,
    key = "expensive:42",
    tags = ["expensive"],
    ttl_secs = 60,
    load = || async { 42_u64 },
)
.await?;

let second = cacheable_infallible!(
    cache = cache,
    key = "expensive:42",
    tags = ["expensive"],
    ttl_secs = 60,
    load = || async { 7_u64 },
)
.await?;

let diagnostics = cache.diagnostics().await;

assert_eq!((first, second), (42, 42));
assert_eq!(diagnostics.stats.loads, 1);
assert_eq!(diagnostics.stats.hits, 1);
assert_eq!(diagnostics.total_requests(), 2);
assert_eq!(diagnostics.hit_ratio(), Some(0.5));
assert!(!diagnostics.is_empty());
# Ok(())
# }

Optional Axum Actuator

HydraCache keeps HTTP support out of the base runtime. If an application wants a Spring Boot-style read-only actuator surface, it can opt in through hydracache-observability and hydracache-actuator-axum.

use axum::Router;
use hydracache::HydraCache;
use hydracache_actuator_axum::HydraCacheActuator;
use hydracache_observability::HydraCacheRegistry;

let cache = HydraCache::local().build();
let registry = HydraCacheRegistry::new().with_cache("main", cache);

let app: Router = Router::new().nest(
    "/actuator/hydracache",
    HydraCacheActuator::new(registry).routes(),
);
# let _ = app;

The actuator exposes read-only routes:

GET /actuator/hydracache/health
GET /actuator/hydracache/caches
GET /actuator/hydracache/caches/main/diagnostics
GET /actuator/hydracache/caches/main/stats
GET /actuator/hydracache/

Mutation endpoints such as flush, invalidate-key, or invalidate-tag are not included yet. They need an explicit security and deployment model before becoming public API.

Manual Sandbox

The workspace includes hydracache-sandbox, a non-published manual backend for trying the cache, actuator routes, Swagger UI, and database-backed loaders without writing a separate app.

cargo run -p hydracache-sandbox

The sandbox has a committed .env demo profile with safe, non-secret defaults. Supported settings:

HYDRACACHE_SANDBOX_PROFILE=memory
HYDRACACHE_SANDBOX_BIND=127.0.0.1:3000
HYDRACACHE_SANDBOX_SQLITE_PATH=target/hydracache-sandbox.sqlite
HYDRACACHE_SANDBOX_DATABASE_URL=postgres://hydracache:hydracache@127.0.0.1:54329/hydracache
HYDRACACHE_SANDBOX_EVENT_LOG_PATH=target/hydracache-sandbox-events.jsonl
# HYDRACACHE_SANDBOX_TOKEN=local-dev-token

HYDRACACHE_SANDBOX_EVENT_LOG_PATH is optional. When set, the sandbox writes recent demo events to an append-only JSONL file while still keeping the bounded in-memory event log for the API and UI. HYDRACACHE_SANDBOX_TOKEN is also optional; when set, sandbox routes require Authorization: Bearer <token>.

Supported profile values are memory, sqlite-memory, sqlite-file, postgres-compose, and postgres-docker. CLI flags override the committed .env values, which is handy for one-off manual checks. --profile is the preferred demo preset; --backend remains available as a lower-level compatibility override.

cargo run -p hydracache-sandbox -- --profile memory
cargo run -p hydracache-sandbox -- --profile sqlite-memory
cargo run -p hydracache-sandbox -- --profile sqlite-file --sqlite-path target/hydracache-sandbox.sqlite
cargo run -p hydracache-sandbox -- --profile postgres-compose
cargo run -p hydracache-sandbox -- --profile postgres-docker

Compose files live next to the sandbox crate. To run only the local Postgres dependency and start the Rust sandbox from the host:

docker compose -f crates/hydracache-sandbox/compose/docker-compose.yml --profile postgres up -d
cargo run -p hydracache-sandbox -- --profile postgres-compose

Compatibility shortcut:

docker compose -f crates/hydracache-sandbox/compose/docker-compose.postgres.yml up -d
cargo run -p hydracache-sandbox -- --profile postgres-compose

To run both Postgres and the sandbox API in Docker with the prebuilt sandbox image:

docker compose -f crates/hydracache-sandbox/compose/docker-compose.yml --profile full up --build

After startup:

http://127.0.0.1:3000/demo/ui
http://127.0.0.1:3000/swagger-ui
http://127.0.0.1:3000/openapi.json
http://127.0.0.1:3000/ready
http://127.0.0.1:3000/demo/config
http://127.0.0.1:3000/demo/presets
http://127.0.0.1:3000/demo/report
http://127.0.0.1:3000/demo/events
http://127.0.0.1:3000/demo/export
http://127.0.0.1:3000/demo/scenarios/files
http://127.0.0.1:3000/demo/scenarios/file/run
http://127.0.0.1:3000/demo/scenarios/suite/file/run
http://127.0.0.1:3000/demo/scenarios/document/run
http://127.0.0.1:3000/demo/flows
http://127.0.0.1:3000/demo/benchmarks/compare
http://127.0.0.1:3000/demo/observability/prometheus
http://127.0.0.1:3000/demo/openapi/client-smoke
http://127.0.0.1:3000/demo/security
http://127.0.0.1:3000/actuator/hydracache/health
http://127.0.0.1:3000/actuator/hydracache/caches/main/diagnostics

The OpenAPI document is generated from Rust route/schema declarations through utoipa. Swagger UI is served from local embedded assets through utoipa-swagger-ui; it does not depend on a CDN. The Swagger surface is meant to be an interactive HydraCache lab, not only reference documentation. It can exercise raw local-cache operations, typed-cache namespacing, database-backed query caching, cached non-database functions, TTL expiry, single-flight, and invalidation/load race safety.

/demo/ui is a small local no-CDN developer console on top of the same API. It can run the golden flow, negative scenarios, readiness checks, reset the demo state, show structured events, run the built-in self-test, export a portable report bundle, compare local profiles, replay named scenarios, run fault injection, launch a manual benchmark, run JSON/YAML scenario documents, compare benchmark reports, run committed scenario files/suites, replay retained flow contexts, inspect seeded product/order query-cache demos, run generated-client smoke checks, inspect Prometheus-style metrics, and display small hit/miss/load counters with a visual flow timeline. The dashboard also includes a textarea scenario editor for quickly pasting JSON/YAML recipes.

Useful Swagger/API groups:

GET  /ready
GET  /demo/ui
GET  /demo/config
GET  /demo/presets
GET  /demo/events
GET  /demo/events?kind=cache-hit
GET  /demo/events?flow_id=manual-flow&limit=10
GET  /demo/export
GET  /demo/flows
GET  /demo/flows/{flow_id}/timeline
POST /demo/flows/{flow_id}/replay
GET  /demo/observability/prometheus
GET  /demo/observability/traces/latest
GET  /demo/db/seed-report
GET  /demo/openapi/client-check
GET  /demo/openapi/client-smoke
GET  /demo/security
POST /demo/import
POST /demo/self-test
POST /demo/scenarios/run
GET  /demo/scenarios/files
POST /demo/scenarios/file/run
POST /demo/scenarios/suite/run
POST /demo/scenarios/suite/file/run
POST /demo/scenarios/document/parse
POST /demo/scenarios/document/run
POST /demo/profiles/compare
POST /demo/replay
POST /demo/faults/run
POST /demo/benchmarks/manual
POST /demo/benchmarks/compare
POST /demo/events/clear
POST /demo/reset
POST /demo/cache/put
POST /demo/cache/get
POST /demo/cache/get-or-load
POST /demo/cache/contains
POST /demo/cache/remove
POST /demo/cache/invalidate-tag
POST /demo/query/users/{id}/load
POST /demo/query/products/{id}/load
POST /demo/query/orders/{id}/summary/load
POST /demo/typed/users/{id}/load
POST /demo/functions/double/{input}
POST /demo/scenarios/ttl
POST /demo/scenarios/single-flight
POST /demo/scenarios/invalidation-race
POST /demo/negative/missing-key
POST /demo/negative/missing-user
POST /demo/negative/loader-error
POST /demo/negative/expired-entry
POST /demo/negative/invalidation-miss
GET  /demo/report

/demo/report returns a cumulative application report with active profile, backend, loader counters, function counters, retained event count, capabilities, and cache diagnostics. /demo/events returns the bounded structured event log for recent cache hits, misses, loads, invalidations, scenario runs, resets, and expected errors. It can be filtered by exact kind, key, tag, flow_id, and capped with limit. /demo/export combines sandbox info, readiness, config, report, and events into one bundle; POST /demo/self-test runs a built-in smoke scenario and returns step-level results plus a filtered event log for that self-test flow.

The scenario lab endpoints turn the sandbox into a reproducible cache behavior workbench:

POST /demo/scenarios/run        # golden-path, ttl, single-flight, invalidation-race, negative-suite, self-test
GET  /demo/scenarios/files      # committed JSON/YAML recipes
POST /demo/scenarios/file/run   # run one committed recipe
POST /demo/scenarios/suite/run  # run an inline scenario suite
POST /demo/scenarios/suite/file/run
GET  /demo/flows                # retained flow ids that can be replayed
GET  /demo/flows/{flow_id}/timeline
POST /demo/flows/{flow_id}/replay
POST /demo/profiles/compare    # memory/sqlite-memory/sqlite-file; Postgres is reported as skipped
POST /demo/replay              # rerun a named scenario and link it to a previous flow id
POST /demo/faults/run          # loader errors, loader delays, invalidation timing
POST /demo/benchmarks/manual   # small request/concurrency/key-distribution workload
POST /demo/benchmarks/compare  # baseline/candidate latency, throughput, loader-call/p95 diff, verdict

Scenario documents can be kept as JSON or a small YAML subset in crates/hydracache-sandbox/scenarios/. They describe steps plus pass/fail assertions and optional timeline assertions, so a manual demo can become a reusable regression recipe:

{
  "name": "golden-path-json",
  "flow_id": "file-json-golden",
  "reset": true,
  "steps": [
    {"name": "first load", "action": "load-user", "id": 42, "expected_source": "loader"},
    {"name": "second load", "action": "load-user", "id": 42, "expected_source": "cache"}
  ],
  "assertions": [
    {"name": "cache hit observed", "metric": "cache-hits", "op": "gte", "value": 1},
    {"name": "loader called once", "metric": "loader-calls", "op": "eq", "value": 1}
  ],
  "timeline_assertions": [
    {"name": "load before hit", "assertion": "kind-before-kind", "before": "cache-load", "after": "cache-hit"}
  ]
}

Use POST /demo/scenarios/document/parse for YAML text normalization and POST /demo/scenarios/document/run for execution. Use POST /demo/scenarios/file/run for a committed recipe and POST /demo/scenarios/suite/file/run for a committed suite such as crates/hydracache-sandbox/scenarios/regression-suite.json. The bundled YAML example is at crates/hydracache-sandbox/scenarios/golden-path.yaml.

Latency is recorded on demo events where the sandbox controls the operation. /demo/report, /demo/events, /demo/export, scenario responses, timelines, and benchmark responses include min/max/average/p50/p95/p99-style summaries. Benchmark comparison responses also include loader-call ratio deltas, p95 latency deltas, and a compact verdict (candidate-better, candidate-worse, or mixed).

For observability demos, /demo/observability/prometheus emits dependency-free Prometheus text metrics and /demo/observability/traces/latest returns an OpenTelemetry-style teaching view derived from the retained event log. The sandbox also includes SQLite/Postgres schema and seed files under crates/hydracache-sandbox/migrations/ and crates/hydracache-sandbox/seeds/; GET /demo/db/seed-report summarizes those assets. The seeded query-cache demo now covers users, products, and order summaries:

POST /demo/query/users/42/load
POST /demo/query/products/100/load
POST /demo/query/orders/5000/summary/load

GET /demo/openapi/client-check verifies that representative generated-client paths exist in the current OpenAPI document. GET /demo/openapi/client-smoke checks that the committed minimal fetch client still contains the expected methods for scenarios, suites, flows, products, orders, benchmarks, export, and import. crates/hydracache-sandbox/openapi/generated-client.js shows a minimal fetch client shape.

The read-only actuator remains available for operational views: /actuator/hydracache/health, /actuator/hydracache/caches, /actuator/hydracache/caches/main/stats, and /actuator/hydracache/caches/main/diagnostics.

Golden demo path:

GET  /ready
POST /demo/reset
POST /demo/load/42
POST /demo/load/42
POST /demo/users/42 {"name":"Grace"}
POST /demo/load/42
POST /demo/invalidate/user/42
POST /demo/load/42
GET  /demo/events
GET  /demo/report

The first load should report source = "loader", the second should report source = "cache", and the post-invalidation load should read the updated backing store value.

Negative scenarios deliberately return 200 OK with expected_failure = true when the edge case was reproduced. They are meant for demos and manual checks, not for production actuator behavior.

For editor-based REST clients, use crates/hydracache-sandbox/http/sandbox.http. For a scripted smoke flow:

crates\hydracache-sandbox\scripts\run-demo-flow.ps1

To start a specific profile without editing .env:

crates\hydracache-sandbox\scripts\start-profile.ps1 -Profile sqlite-memory
crates\hydracache-sandbox\scripts\start-profile.ps1 -Profile postgres-compose

The sandbox also includes an optional Postgres Docker smoke test. If Docker is available, it runs the cache/invalidate/reload flow against a real Postgres container. If Docker is unavailable, it prints a skip message and exits successfully.

SQLx Adapter

hydracache-db provides the database-neutral result-cache adapter API. It keeps your database client responsible for pools, transactions, queries, and row mapping, while HydraCache owns the explicit cache boundary: key, tags, TTL, single-flight, and storage.

hydracache-sqlx re-exports the same API for SQLx users and keeps SQLx as an adapter dependency instead of making the generic database cache API depend on SQLx.

use hydracache::HydraCache;
use hydracache_sqlx::{DbCache, SqlxQueryExt};

# async fn example(pool: sqlx::PgPool) -> hydracache_sqlx::Result<()> {
let local = HydraCache::local().build();
let queries = DbCache::new(local, "db");

let (id, name): (i64, String) = queries
    .entity::<(i64, String)>("user", 42)
    .collection_tag("users")
    .fetch_one(
        pool.clone(),
        sqlx::query_as("select id, name from users where id = $1").bind(42_i64),
    )
    .await?;

assert_eq!(id, 42);
assert!(!name.is_empty());

let users: Vec<(i64, String)> = queries
    .collection::<(i64, String)>("users")
    .fetch_all(
        pool.clone(),
        sqlx::query_as("select id, name from users order by id"),
    )
    .await?;

assert!(!users.is_empty());
# Ok(())
# }

SqlxQueryExt adds fetch_one, fetch_optional, and fetch_all for common pool-backed reads. fetch_optional caches None, and fetch_all caches empty vectors, so repeated misses do not keep hitting the database. Use fetch_with when you need sqlx::query!, sqlx::query_as!, transactions, or repository methods at the call site. Use named::<T>("load-user") when you want a diagnostic label; otherwise cached::<T>() derives diagnostics from the namespace/key context.

Use entity::<T>("user", 42) when one cached result belongs to one domain entity. It generates logical key user:42 and tag user:42. Use collection::<T>("users") when a cached result represents a whole list or group. Use collection_tag("users") when an entity result should also be invalidated together with a broader collection.

When the same entity metadata is used in several places, derive or implement CacheEntity once and use for_entity::<T>(id). CacheEntity and HydraCacheEntity live in hydracache-db; hydracache-sqlx only re-exports them as an adapter convenience.

use hydracache_db::{CacheEntity, HydraCacheEntity};
use hydracache_sqlx::DbCache;

#[derive(serde::Serialize, serde::Deserialize, HydraCacheEntity)]
#[hydracache(entity = "user", collection = "users", id = i64)]
struct User {
    id: i64,
    name: String,
}

# async fn example(queries: DbCache) -> hydracache_sqlx::Result<()> {
let user = queries
    .for_entity::<User>(42)
    .fetch_with(|| async {
        Ok::<_, std::io::Error>(User {
            id: 42,
            name: "Ada".to_owned(),
        })
    })
    .await?;

assert_eq!(user.id, 42);
assert_eq!(User::collection_tag(), Some("users".to_owned()));
# Ok(())
# }

Manual CacheEntity implementations remain supported when you prefer no proc-macro dependency or want to generate metadata from your own macro layer.

The older .cached::<T>().key(...).tag(...) style remains available and is the full-control API. The ergonomic helpers only generate common keys and tags on top of the same descriptor model.

For repository-style code or future ORM adapters, move the cache metadata into a reusable QueryCachePolicy and keep the loader itself fully under your control:

use std::time::Duration;

use hydracache_db::QueryCachePolicy;

let policy = QueryCachePolicy::named("load-user")
    .for_cache_entity::<User>(42)
    .ttl(Duration::from_secs(60));

let user = queries
    .cached_with::<User>(policy)
    .load(move || async move {
        // This can call SQLx, Diesel, SeaORM, or a repository method.
        Ok::<_, std::io::Error>(User {
            id: 42,
            name: "Ada".to_owned(),
        })
    })
    .await?;

When the policy is mostly declarative, query_cache_policy! can generate it from compact metadata:

use hydracache_db::query_cache_policy;

let user_id = 42_i64;
let policy = query_cache_policy!(
    name = "load-user",
    entity = User,
    id = user_id,
    tag = "tenant:7",
    ttl_secs = 60,
);

let user = queries
    .cached_with::<User>(policy)
    .load(move || async move {
        Ok::<_, std::io::Error>(User {
            id: user_id,
            name: "Ada".to_owned(),
        })
    })
    .await?;

hydracache-sqlx includes a Postgres integration test backed by testcontainers. When Docker is available, it verifies cache hits, tag invalidation, and reloads against a real database. When Docker is unavailable, the test logs a skip message and exits successfully instead of failing the build.

Testing and coverage commands are documented in docs/TESTING.md.

Quality Gate

The main local verification commands are:

cargo fmt --all -- --check
cargo check --workspace --all-targets --locked
cargo test --workspace --all-targets --locked
cargo clippy --workspace --all-targets --all-features --locked -- -D warnings
cargo test --doc --workspace --locked
cargo llvm-cov --workspace --all-targets --locked --summary-only

Coverage is tracked with cargo-llvm-cov. The current target is 100% function coverage and 99%+ total line coverage, with visible uncovered source lines investigated before release.

Which Crate Should I Use?

  • hydracache - use this for the local async cache, cacheable!, cacheable_infallible!, typed cache, TTLs, tags, single-flight, stats, and diagnostics.
  • hydracache-observability - use this for a framework-neutral registry and serializable cache diagnostic snapshots.
  • hydracache-actuator-axum - use this when exposing read-only HydraCache diagnostics through Axum routes.
  • hydracache-db - use this when wrapping database or repository calls with explicit query-result caching.
  • hydracache-sqlx - use this if you want the SQLx-facing crate, SQLx re-export, and fetch_one/fetch_optional/fetch_all helpers.
  • hydracache-macros - usually use this through local-cache macros from hydracache or macro re-exports from hydracache-db/hydracache-sqlx.
  • hydracache-core - use this only if you need core shared types without the runtime.
  • hydracache-sandbox - non-published manual sandbox for local actuator, Swagger, memory, SQLite, and Postgres Docker checks.

Release Plan

The v0 release plan is maintained here:

Workspace

  • crates/hydracache-core - core public types: keys, tags, options, stats, diagnostics, codec, errors
  • crates/hydracache - user-facing local cache runtime, typed cache, single-flight, tag index, stats, and diagnostics
  • crates/hydracache-observability - framework-neutral cache registry and serializable diagnostic snapshots
  • crates/hydracache-actuator-axum - optional read-only Axum actuator routes
  • crates/hydracache-sandbox - non-published manual backend for exercising actuator and database modes
  • crates/hydracache-db - database-neutral query result-cache adapter API
  • crates/hydracache-macros - procedural macros such as cacheable!, cacheable_infallible!, HydraCacheEntity, and query_cache_policy!
  • crates/hydracache-sqlx - SQLx-facing integration crate and re-exports

Crate Layout

hydracache keeps public API re-exports in src/lib.rs and splits runtime code into focused modules:

  • cache.rs - HydraCache runtime API
  • builder.rs - local cache builder
  • typed.rs - TypedCache<T> namespaced view
  • entry.rs - encoded cache entries and TTL expiration
  • inflight.rs - local single-flight in-flight load tracking
  • tag_index.rs - tag index and generation freshness checks
  • stats.rs - internal stats counters

hydracache-core keeps public API re-exports in src/lib.rs and splits shared types into:

  • key.rs - CacheKey and CacheKeyBuilder
  • tags.rs - TagSet
  • options.rs - CacheOptions
  • stats.rs - CacheStats and CacheDiagnostics
  • codec.rs - CacheCodec and PostcardCodec
  • error.rs - CacheError