Probitas Info
by probitas-test
Information about Probitas framework. Use when asked "what is Probitas", explaining its purpose, features, or comparing with other test frameworks.
Skill Details
Repository Files
1 file in this skill directory
name: probitas-info description: Information about Probitas framework. Use when asked "what is Probitas", explaining its purpose, features, or comparing with other test frameworks.
What is Probitas?
Scenario-based E2E testing framework for backend services (APIs, databases, message queues).
Key Features
| Feature | Description |
|---|---|
| Scenario-Based | Tests as readable scenarios with steps |
| Built-in Clients | HTTP, gRPC, GraphQL, SQL, Redis, MongoDB |
| Fluent Assertions | Unified expect() with chainable checks |
| Auto Cleanup | Resources with automatic cleanup |
| Batteries | faker, FakeTime, spy, stub included |
Quick Example
import { client, expect, scenario } from "jsr:@probitas/probitas";
export default scenario("API Test", { tags: ["http"] })
.resource("http", () =>
client.http.createHttpClient({
url: Deno.env.get("API_URL") ?? "http://localhost:8080",
}))
.step("GET /users", async (ctx) => {
const res = await ctx.resources.http.get("/users");
expect(res).toBeOk().toHaveStatus(200);
})
.build();
Available Clients
| Client | Factory Function | Use Case |
|---|---|---|
| HTTP | client.http.createHttpClient() |
REST APIs, webhooks |
| HTTP OIDC | client.http.oidc.createOidcHttpClient() |
OAuth 2.0/OIDC APIs |
| PostgreSQL | client.sql.postgres.createPostgresClient() |
PostgreSQL databases |
| MySQL | client.sql.mysql.createMySqlClient() |
MySQL databases |
| SQLite | client.sql.sqlite.createSqliteClient() |
Embedded databases |
| DuckDB | client.sql.duckdb.createDuckDbClient() |
Analytics databases |
| gRPC | client.grpc.createGrpcClient() |
gRPC services |
| ConnectRPC | client.connectrpc.createConnectRpcClient() |
Connect/gRPC-Web |
| GraphQL | client.graphql.createGraphqlClient() |
GraphQL APIs |
| Redis | client.redis.createRedisClient() |
Cache, pub/sub |
| MongoDB | client.mongodb.createMongoClient() |
Document databases |
| Deno KV | client.deno_kv.createDenoKvClient() |
Deno KV store |
| RabbitMQ | client.rabbitmq.createRabbitMqClient() |
AMQP message queues |
| SQS | client.sqs.createSqsClient() |
AWS message queues |
API Reference
Use deno doc to look up API:
# Core module
deno doc jsr:@probitas/probitas
# Client modules (use pattern: jsr:@probitas/probitas/client/<name>)
deno doc jsr:@probitas/probitas/client/http
deno doc jsr:@probitas/probitas/client/http/oidc
deno doc jsr:@probitas/probitas/client/grpc
deno doc jsr:@probitas/probitas/client/connectrpc
deno doc jsr:@probitas/probitas/client/graphql
deno doc jsr:@probitas/probitas/client/redis
deno doc jsr:@probitas/probitas/client/mongodb
deno doc jsr:@probitas/probitas/client/rabbitmq
deno doc jsr:@probitas/probitas/client/sqs
deno doc jsr:@probitas/probitas/client/deno_kv
deno doc jsr:@probitas/probitas/client/sql # Common SQL types
deno doc jsr:@probitas/probitas/client/sql/postgres
deno doc jsr:@probitas/probitas/client/sql/mysql
deno doc jsr:@probitas/probitas/client/sql/sqlite
deno doc jsr:@probitas/probitas/client/sql/duckdb
Documentation
- LLM sitemap: https://probitas-test.github.io/llms.txt
Related Skills
Attack Tree Construction
Build comprehensive attack trees to visualize threat paths. Use when mapping attack scenarios, identifying defense gaps, or communicating security risks to stakeholders.
Grafana Dashboards
Create and manage production Grafana dashboards for real-time visualization of system and application metrics. Use when building monitoring dashboards, visualizing metrics, or creating operational observability interfaces.
Matplotlib
Foundational plotting library. Create line plots, scatter, bar, histograms, heatmaps, 3D, subplots, export PNG/PDF/SVG, for scientific visualization and publication figures.
Scientific Visualization
Create publication figures with matplotlib/seaborn/plotly. Multi-panel layouts, error bars, significance markers, colorblind-safe, export PDF/EPS/TIFF, for journal-ready scientific plots.
Seaborn
Statistical visualization. Scatter, box, violin, heatmaps, pair plots, regression, correlation matrices, KDE, faceted plots, for exploratory analysis and publication figures.
Shap
Model interpretability and explainability using SHAP (SHapley Additive exPlanations). Use this skill when explaining machine learning model predictions, computing feature importance, generating SHAP plots (waterfall, beeswarm, bar, scatter, force, heatmap), debugging models, analyzing model bias or fairness, comparing models, or implementing explainable AI. Works with tree-based models (XGBoost, LightGBM, Random Forest), deep learning (TensorFlow, PyTorch), linear models, and any black-box model
Pydeseq2
Differential gene expression analysis (Python DESeq2). Identify DE genes from bulk RNA-seq counts, Wald tests, FDR correction, volcano/MA plots, for RNA-seq analysis.
Query Writing
For writing and executing SQL queries - from simple single-table queries to complex multi-table JOINs and aggregations
Pydeseq2
Differential gene expression analysis (Python DESeq2). Identify DE genes from bulk RNA-seq counts, Wald tests, FDR correction, volcano/MA plots, for RNA-seq analysis.
Scientific Visualization
Meta-skill for publication-ready figures. Use when creating journal submission figures requiring multi-panel layouts, significance annotations, error bars, colorblind-safe palettes, and specific journal formatting (Nature, Science, Cell). Orchestrates matplotlib/seaborn/plotly with publication styles. For quick exploration use seaborn or plotly directly.
