dnanexus-integration

dnanexus/dx-toolkit · updated May 19, 2026

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$npx skills add https://github.com/K-Dense-AI/scientific-agent-skills --skill dnanexus-integration
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summary

DNAnexus cloud genomics platform for app development, data management, and workflow execution.

skill.md
name
dnanexus-integration
description
DNAnexus cloud genomics platform. Build apps/applets, manage data (upload/download), dxpy Python SDK, run workflows, FASTQ/BAM/VCF, for genomics pipeline development and execution.
license
Unknown
compatibility
Requires a DNAnexus account
metadata
skill-author: K-Dense Inc.

DNAnexus Integration

Overview

DNAnexus is a cloud platform for biomedical data analysis and genomics. Build and deploy apps/applets, manage data objects, run workflows, and use the dxpy Python SDK for genomics pipeline development and execution.

When to Use This Skill

This skill should be used when:

  • Creating, building, or modifying DNAnexus apps/applets
  • Uploading, downloading, searching, or organizing files and records
  • Running analyses, monitoring jobs, creating workflows
  • Writing scripts using dxpy to interact with the platform
  • Setting up dxapp.json, managing dependencies, using Docker
  • Processing FASTQ, BAM, VCF, or other bioinformatics files
  • Managing projects, permissions, or platform resources

Core Capabilities

The skill is organized into five main areas, each with detailed reference documentation:

1. App Development

Purpose: Create executable programs (apps/applets) that run on the DNAnexus platform.

Key Operations:

  • Generate app skeleton with dx-app-wizard
  • Write Python or Bash apps with proper entry points
  • Handle input/output data objects
  • Deploy with dx build or dx build --app
  • Test apps on the platform

Common Use Cases:

  • Bioinformatics pipelines (alignment, variant calling)
  • Data processing workflows
  • Quality control and filtering
  • Format conversion tools

Reference: See references/app-development.md for:

  • Complete app structure and patterns
  • Python entry point decorators
  • Input/output handling with dxpy
  • Development best practices
  • Common issues and solutions

2. Data Operations

Purpose: Manage files, records, and other data objects on the platform.

Key Operations:

  • Upload/download files with dxpy.upload_local_file() and dxpy.download_dxfile()
  • Create and manage records with metadata
  • Search for data objects by name, properties, or type
  • Clone data between projects
  • Manage project folders and permissions

Common Use Cases:

  • Uploading sequencing data (FASTQ files)
  • Organizing analysis results
  • Searching for specific samples or experiments
  • Backing up data across projects
  • Managing reference genomes and annotations

Reference: See references/data-operations.md for:

  • Complete file and record operations
  • Data object lifecycle (open/closed states)
  • Search and discovery patterns
  • Project management
  • Batch operations

3. Job Execution

Purpose: Run analyses, monitor execution, and orchestrate workflows.

Key Operations:

  • Launch jobs with applet.run() or app.run()
  • Monitor job status and logs
  • Create subjobs for parallel processing
  • Build and run multi-step workflows
  • Chain jobs with output references

Common Use Cases:

  • Running genomics analyses on sequencing data
  • Parallel processing of multiple samples
  • Multi-step analysis pipelines
  • Monitoring long-running computations
  • Debugging failed jobs

Reference: See references/job-execution.md for:

  • Complete job lifecycle and states
  • Workflow creation and orchestration
  • Parallel execution patterns
  • Job monitoring and debugging
  • Resource management

4. Python SDK (dxpy)

Purpose: Programmatic access to DNAnexus platform through Python.

Key Operations:

  • Work with data object handlers (DXFile, DXRecord, DXApplet, etc.)
  • Use high-level functions for common tasks
  • Make direct API calls for advanced operations
  • Create links and references between objects
  • Search and discover platform resources

Common Use Cases:

  • Automation scripts for data management
  • Custom analysis pipelines
  • Batch processing workflows
  • Integration with external tools
  • Data migration and organization

Reference: See references/python-sdk.md for:

  • Complete dxpy class reference
  • High-level utility functions
  • API method documentation
  • Error handling patterns
  • Common code patterns

5. Configuration and Dependencies

Purpose: Configure app metadata and manage dependencies.

Key Operations:

  • Write dxapp.json with inputs, outputs, and run specs
  • Install system packages (execDepends)
  • Bundle custom tools and resources
  • Use assets for shared dependencies
  • Integrate Docker containers
  • Configure instance types and timeouts

Common Use Cases:

  • Defining app input/output specifications
  • Installing bioinformatics tools (samtools, bwa, etc.)
  • Managing Python package dependencies
  • Using Docker images for complex environments
  • Selecting computational resources

Reference: See references/configuration.md for:

  • Complete dxapp.json specification
  • Dependency management strategies
  • Docker integration patterns
  • Regional and resource configuration
  • Example configurations

Quick Start Examples

Upload and Analyze Data

import dxpy

# Upload input file
input_file = dxpy.upload_local_file("sample.fastq", project="project-xxxx")

# Run analysis
job = dxpy.DXApplet("applet-xxxx").run({
    "reads": dxpy.dxlink(input_file.get_id())
})

# Wait for completion
job.wait_on_done()

# Download results
output_id = job.describe()["output"]["aligned_reads"]["$dnanexus_link"]
dxpy.download_dxfile(output_id, "aligned.bam")

Search and Download Files

import dxpy

# Find BAM files from a specific experiment
files = dxpy.find_data_objects(
    classname="file",
    name="*.bam",
    properties={"experiment": "exp001"},
    project="project-xxxx"
)

# Download each file
for file_result in files:
    file_obj = dxpy.DXFile(file_result["id"])
    filename = file_obj.describe()["name"]
    dxpy.download_dxfile(file_result["id"], filename)

Create Simple App

# src/my-app.py
import dxpy
import subprocess

@dxpy.entry_point('main')
def main(input_file, quality_threshold=30):
    # Download input
    dxpy.download_dxfile(input_file["$dnanexus_link"], "input.fastq")

    # Process
    subprocess.check_call([
        "quality_filter",
        "--input", "input.fastq",
        "--output", "filtered.fastq",
        "--threshold", str(quality_threshold)
    ])

    # Upload output
    output_file = dxpy.upload_local_file("filtered.fastq")

    return {
        "filtered_reads": dxpy.dxlink(output_file)
    }

dxpy.run()

Workflow Decision Tree

When working with DNAnexus, follow this decision tree:

  1. Need to create a new executable?

    • Yes → Use App Development (references/app-development.md)
    • No → Continue to step 2
  2. Need to manage files or data?

    • Yes → Use Data Operations (references/data-operations.md)
    • No → Continue to step 3
  3. Need to run an analysis or workflow?

    • Yes → Use Job Execution (references/job-execution.md)
    • No → Continue to step 4
  4. Writing Python scripts for automation?

    • Yes → Use Python SDK (references/python-sdk.md)
    • No → Continue to step 5
  5. Configuring app settings or dependencies?

    • Yes → Use Configuration (references/configuration.md)

Often you'll need multiple capabilities together (e.g., app development + configuration, or data operations + job execution).

Installation and Authentication

Install dxpy

uv pip install dxpy

Login to DNAnexus

dx login

This authenticates your session and sets up access to projects and data.

Verify Installation

dx --version
dx whoami

Common Patterns

Pattern 1: Batch Processing

Process multiple files with the same analysis:

# Find all FASTQ files
files = dxpy.find_data_objects(
    classname="file",
    name="*.fastq",
    project="project-xxxx"
)

# Launch parallel jobs
jobs = []
for file_result in files:
    job = dxpy.DXApplet("applet-xxxx").run({
        "input": dxpy.dxlink(file_result["id"])
    })
    jobs.append(job)

# Wait for all completions
for job in jobs:
    job.wait_on_done()

Pattern 2: Multi-Step Pipeline

Chain multiple analyses together:

# Step 1: Quality control
qc_job = qc_applet.run({"reads": input_file})

# Step 2: Alignment (uses QC output)
align_job = align_applet.run({
    "reads": qc_job.get_output_ref("filtered_reads")
})

# Step 3: Variant calling (uses alignment output)
variant_job = variant_applet.run({
    "bam": align_job.get_output_ref("aligned_bam")
})

Pattern 3: Data Organization

Organize analysis results systematically:

# Create organized folder structure
dxpy.api.project_new_folder(
    "project-xxxx",
    {"folder": "/experiments/exp001/results", "parents": True}
)

# Upload with metadata
result_file = dxpy.upload_local_file(
    "results.txt",
    project="project-xxxx",
    folder="/experiments/exp001/results",
    properties={
        "experiment": "exp001",
        "sample": "sample1",
        "analysis_date": "2025-10-20"
    },
    tags=["validated", "published"]
)

Best Practices

  1. Error Handling: Always wrap API calls in try-except blocks
  2. Resource Management: Choose appropriate instance types for workloads
  3. Data Organization: Use consistent folder structures and metadata
  4. Cost Optimization: Archive old data, use appropriate storage classes
  5. Documentation: Include clear descriptions in dxapp.json
  6. Testing: Test apps with various input types before production use
  7. Version Control: Use semantic versioning for apps
  8. Security: Never hardcode credentials in source code
  9. Logging: Include informative log messages for debugging
  10. Cleanup: Remove temporary files and failed jobs

Resources

This skill includes detailed reference documentation:

references/

  • app-development.md - Complete guide to building and deploying apps/applets
  • data-operations.md - File management, records, search, and project operations
  • job-execution.md - Running jobs, workflows, monitoring, and parallel processing
  • python-sdk.md - Comprehensive dxpy library reference with all classes and functions
  • configuration.md - dxapp.json specification and dependency management

Load these references when you need detailed information about specific operations or when working on complex tasks.

Getting Help

how to use dnanexus-integration

How to use dnanexus-integration on Cursor

AI-first code editor with Composer

1

Prerequisites

Before installing skills in Cursor, ensure your development environment meets these requirements:

  • Cursor installed and configured on your development machine
  • Node.js version 16.0+ with npm package manager (verify with node --version)
  • Active project directory or workspace where you want to add dnanexus-integration
2

Execute installation command

Execute the skills CLI command in your project's root directory to begin installation:

$npx skills add https://github.com/K-Dense-AI/scientific-agent-skills --skill dnanexus-integration

The skills CLI fetches dnanexus-integration from GitHub repository dnanexus/dx-toolkit and configures it for Cursor.

3

Select Cursor when prompted

The CLI will show a list of available agents. Use arrow keys to navigate and space to select Cursor:

◆ Which agents do you want to install to?
│ ── Universal (.agents/skills) ── always included ────
│ • Amp
│ • Antigravity
│ • Cline
│ • Codex
│ ●Cursor(selected)
│ • Cursor
│ • Windsurf
4

Verify installation

Confirm successful installation by checking the skill directory location:

.cursor/skills/dnanexus-integration

Reload or restart Cursor to activate dnanexus-integration. Access the skill through slash commands (e.g., /dnanexus-integration) or your agent's skill management interface.

Security & Verification Notice

We perform automated surface-level scans (Gen AI Scanner, Socket, Snyk) during installation. These checks detect common vulnerabilities but do not guarantee complete security. Always review skill source code and verify the publisher's reputation before production use.

Skills execute code in your development environment. Always verify the publisher's identity, review recent commits, and test in isolated environments before production deployment.

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Use Cases

Exploratory Data Analysis

Quickly understand datasets, identify patterns, and generate insights

Example

Analyze CSV with 100K rows, identify outliers, visualize correlations, suggest hypotheses

Reduce EDA time from hours to minutes, uncover insights faster

Data Cleaning & Transformation

Write scripts to clean messy data, handle missing values, normalize formats

Example

Generate Python/SQL to fix date formats, impute missing values, remove duplicates

Automate 80% of data preprocessing work

Statistical Analysis

Perform hypothesis testing, regression, and statistical modeling

Example

Run A/B test analysis, calculate confidence intervals, interpret p-values

Get statistically sound analysis without PhD in statistics

Data Visualization

Create charts, dashboards, and visual reports

Example

Generate matplotlib/seaborn code for time series plots, distribution charts, heatmaps

Build presentation-ready visualizations 3x faster

Implementation Guide

Prerequisites

  • Claude Desktop or compatible AI client
  • Python environment (pandas, numpy, matplotlib) or SQL database access
  • Basic understanding of data analysis concepts
  • Sample datasets for testing skill capabilities

Time Estimate

20-40 minutes to set up and run first analysis

Installation Steps

  1. 1.Install data analysis skill using provided command
  2. 2.Prepare a sample dataset (CSV, JSON, or database connection)
  3. 3.Start with descriptive statistics: 'Summarize this dataset'
  4. 4.Progress to visualization: 'Create a scatter plot of X vs Y'
  5. 5.Advanced analysis: 'Run linear regression and interpret results'
  6. 6.Validate outputs: check calculations, verify visualizations make sense
  7. 7.Document analysis workflow for reproducibility

Common Pitfalls

  • Not validating statistical assumptions before applying tests
  • Accepting visualizations without checking data accuracy
  • Overlooking data quality issues (missing values, outliers)
  • Misinterpreting correlation as causation
  • Using wrong statistical test for data distribution
  • Not considering sample size and statistical power

Best Practices

✓ Do

  • +Always validate data quality before analysis
  • +Check statistical assumptions (normality, independence, etc.)
  • +Visualize data before running statistical tests
  • +Document analysis steps for reproducibility
  • +Cross-validate findings with domain experts
  • +Use skill for initial exploration, then dive deeper manually
  • +Save generated code for reuse on similar datasets

✗ Don't

  • Don't trust analysis without verifying data quality
  • Don't apply statistical tests without checking assumptions
  • Don't make business decisions solely on AI-generated analysis
  • Don't ignore outliers without investigating cause
  • Don't skip data validation and sanity checks
  • Don't use for mission-critical financial or medical analysis without expert review

💡 Pro Tips

  • Describe data context: 'This is user behavior data from e-commerce site'
  • Ask for interpretation: 'What does this correlation mean for business?'
  • Request multiple approaches: 'Show 3 ways to handle missing data'
  • Combine AI analysis with domain expertise for best insights
  • Use for rapid prototyping, then refine analysis manually

When to Use This

✓ Use When

Use for exploratory data analysis, data cleaning, statistical testing, visualization prototyping, and learning new analysis techniques. Best for initial exploration and rapid insights.

✗ Avoid When

Avoid for mission-critical financial analysis, medical research requiring regulatory compliance, production ML models, or when deep statistical expertise is required for nuanced interpretation.

Learning Path

  1. 1Basic: descriptive statistics, data cleaning, simple visualizations
  2. 2Intermediate: hypothesis testing, regression, correlation analysis
  3. 3Advanced: time series analysis, clustering, predictive modeling
  4. 4Expert: causal inference, experimental design, advanced statistical methods

Discussion

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general reviews

Ratings

4.834 reviews
  • Isabella Brown· Dec 20, 2024

    We added dnanexus-integration from the explainx registry; install was straightforward and the SKILL.md answered most questions upfront.

  • Shikha Mishra· Dec 12, 2024

    Useful defaults in dnanexus-integration — fewer surprises than typical one-off scripts, and it plays nicely with `npx skills` flows.

  • Nia Bansal· Dec 4, 2024

    dnanexus-integration fits our agent workflows well — practical, well scoped, and easy to wire into existing repos.

  • William Flores· Nov 15, 2024

    Solid pick for teams standardizing on skills: dnanexus-integration is focused, and the summary matches what you get after install.

  • Aditi Farah· Nov 11, 2024

    dnanexus-integration reduced setup friction for our internal harness; good balance of opinion and flexibility.

  • Rahul Santra· Nov 3, 2024

    dnanexus-integration is among the better-maintained entries we tried; worth keeping pinned for repeat workflows.

  • Pratham Ware· Oct 22, 2024

    Keeps context tight: dnanexus-integration is the kind of skill you can hand to a new teammate without a long onboarding doc.

  • Ava Iyer· Oct 6, 2024

    dnanexus-integration has been reliable in day-to-day use. Documentation quality is above average for community skills.

  • Isabella Chen· Oct 2, 2024

    Registry listing for dnanexus-integration matched our evaluation — installs cleanly and behaves as described in the markdown.

  • Amina Tandon· Sep 21, 2024

    Useful defaults in dnanexus-integration — fewer surprises than typical one-off scripts, and it plays nicely with `npx skills` flows.

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