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Data Analyst Github Jobs in Kansas (NOW HIRING)

... analysis, and intelligent CI/CD pipelines with adaptive testing * Establish comprehensive ... Use production data to detect issues early, predict and prevent failures, and drive continuous ...

... GitHub Copilot. * Excellent communication skills with the ability to influence and collaborate across teams. * Ability to leverage data, telemetry, and analytics to inform engineering decisions.

... or data protection * Experience with observability, crash reporting, analytics, incident response, or production debugging * Experience building and maintaining automations with GitHub Actions or ...

Sr. Engineer, Software

Topeka, KS

$115K - $152K/yr

Own design and architecture reviews for your squad; drive API contract definitions, data model ... Investigate and resolve complex defects through rigorous root-cause analysis and well-tested fixes.

Posting Type Hybrid/Remote Job Overview WHO WE ARE Relativity is a leading legal data intelligence ... Write comprehensive unit and integration tests supported by static analysis and thoughtful test ...

... data * Leverage AI to assist with performance analysis, anomaly detection, and root cause ... Familiarity with tools like GitHub Copilot, Claude for test generation and optimization * Ability ...

Follow secure coding, compliance, and data protection practices. * Use CI/CD pipelines, version ... Strong problem-solving and analytical skills * Strong communication and collaboration skills

Strong software engineering fundamentals, including data structures, concurrency, design patterns ... Experience building and maintaining automations with GitHub Actions or other automation platforms

This role requires a hands-on, data-driven approach to improving release performance and enabling ... Excellent analytical and problem-solving abilities. * Strong aptitude for quick learning in dynamic ...

Senior .Net Developer

Lenexa, KS

$51.75 - $65.75/hr

... analysis of business and functional requirements for proposed software solutions * Participate in ... Experience in GitHub/GitLab/any other source control tools * Experience in development using ...

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Data Analyst Github information

See Kansas salary details

$30.3K

$73.7K

$121.3K

How much do data analyst github jobs pay per year?

As of Jun 15, 2026, the average yearly pay for data analyst github in Kansas is $73,702.00, according to ZipRecruiter salary data. Most workers in this role earn between $55,700.00 and $86,500.00 per year, depending on experience, location, and employer.

How does a Data Analyst at GitHub typically collaborate with engineering and product teams?

At GitHub, Data Analysts frequently work alongside engineering and product teams to translate business questions into actionable data insights. They participate in cross-functional meetings, help define key metrics, and build dashboards or reports tailored to the needs of different stakeholders. Effective collaboration requires strong communication skills, as analysts must explain complex data findings to both technical and non-technical colleagues. This collaborative environment fosters continual learning and often provides opportunities to contribute to strategic decisions that impact the direction of products and features.

What are the key skills and qualifications needed to thrive as a Data Analyst on GitHub, and why are they important?

To thrive as a Data Analyst on GitHub, you need strong analytical skills, experience in statistics, and proficiency in data manipulation using languages like Python or SQL, often backed by a relevant degree. Familiarity with data visualization tools (e.g., Tableau, Power BI), Git version control, and GitHub workflows is essential, and certifications in data analysis or related fields are advantageous. Attention to detail, problem-solving, and effective communication are vital soft skills for collaborating on open-source projects and sharing insights. These competencies enable accurate data-driven decision-making, efficient project collaboration, and impactful contributions to the GitHub community.

What are Data Analysts on GitHub?

Data Analysts on GitHub are professionals or contributors who use the platform to share, collaborate, and manage data analysis projects. They leverage GitHub to store datasets, share scripts and code (often in languages like Python or R), and document their analyses using tools like Jupyter Notebooks or Markdown. GitHub enables Data Analysts to version-control their work, collaborate with others through pull requests and issues, and showcase their portfolios to potential employers or collaborators.

What is the difference between Data Analyst Github vs Data Scientist?

AspectData Analyst GithubData Scientist
Required CredentialsBachelor's in Data Analytics, Statistics, or related field; proficiency in SQL, Excel, and visualization toolsBachelor's or Master's in Data Science, Computer Science, or related; knowledge of programming languages like Python or R, machine learning
Work EnvironmentCollaborates with teams to analyze data, create dashboards, and support decision-makingBuilds models, develops algorithms, and performs advanced statistical analysis
Employer & Industry UsageUsed across industries for reporting, data visualization, and business insightsApplied in AI, predictive modeling, and complex data analysis projects

While both roles involve working with data, Data Analyst Github focuses on data visualization, reporting, and supporting business decisions, often using tools like SQL and Excel. Data Scientists perform advanced analytics, build predictive models, and require programming skills in Python or R. The roles overlap in data handling but differ in complexity and technical depth.

What cities in Kansas are hiring for Data Analyst Github jobs? Cities in Kansas with the most Data Analyst Github job openings:
Sr. Engineering Manager

Other

Posted 25 days ago


Job description

Sr. Engineering Manager (AI-Native)

United States or Canada    Engineering    Full-time

Overview

We are seeking an Engineering Manager to lead and grow high-performing teams while redefining how modern, AI-native engineering organizations build and ship software.

This role is for a leader who has managed teams of 5-15+ engineers and is passionate about building systems where quality is enforced, measured, and continuously improved through automation, observability, and AI-driven workflows.

You will be responsible for driving execution, scaling teams, and embedding AI-powered development and testing practices into every stage of the SDLC. Delivering consistently high-quality, production-grade software is a key requirement of this role.

What You'll Do

Team Leadership & Execution

  • Lead, mentor, and grow a team (or teams) of 5-15+ engineers
  • Drive delivery of software that meets strict, measurable standards for quality, reliability, and maintainability
  • Establish clear expectations where quality is owned by the team and enforced through systems, not heroics
  • Foster a culture of accountability, continuous improvement, and engineering excellence

Customer Impact & Product Excellence

  • Ensure engineering decisions are grounded in customer outcomes and product impact
  • Partner closely with Product Management to translate customer needs into scalable, high-quality systems
  • Define and track metrics connecting engineering output to customer satisfaction, product adoption, and business outcomes
  • Balance speed, quality, and innovation in service of real-world user value

AI-Native Quality & Testing Systems

  • Define and implement AI-driven quality strategies across your teams
  • Build and operationalize automated and autonomous testing systems, including AI-generated test cases (unit, integration, end-to-end), self-healing test suites, and agent-assisted validation
  • Leverage LLMs and agent-based systems to continuously expand test coverage, identify edge cases, and reduce manual QA effort while increasing confidence
  • Ensure quality is continuously validated in CI/CD, not deferred to later stages

Process, Tooling & Observability

  • Design and enforce engineering processes where quality gates are automated and non-bypassable
  • Implement AI-powered tooling across the SDLC: code generation and review assistants, automated code quality and security analysis, and intelligent CI/CD pipelines with adaptive testing
  • Establish comprehensive observability including logging, metrics, tracing, alerting, and SLOs/SLIs aligned with customer expectations
  • Use production data to detect issues early, predict and prevent failures, and drive continuous evidence-based improvement
  • Track and improve key engineering metrics: test coverage, mutation testing scores, defect rates, production incident frequency, and service reliability

AI-Native Engineering Practices

  • Define and implement AI-first development workflows across your teams
  • Evaluate and integrate modern AI tooling (copilots, LLMs, agent-based systems)
  • Ensure AI adoption increases both velocity and quality
  • Stay current with emerging AI capabilities and translate them into practical engineering improvements

Technical Strategy & Execution

  • Contribute to and execute the technical roadmap in alignment with business objectives
  • Balance innovation (AI-first approaches) with long-term maintainability
  • Manage technical debt strategically to ensure sustainable velocity and system health
  • Guide architectural decisions that enable scale, reliability, and agility

What We're Looking For

Required Experience

  • 5+ years of software engineering experience
  • 3+ years of engineering management experience leading teams of 5-15+ engineers
  • Proven track record of delivering high-quality, production-grade systems with measurable outcomes
  • Experience defining and enforcing quality standards through automation and systems, not manual processes
  • Experience partnering with Product Management to deliver customer-focused solutions

Our Tech Stack

  • Languages: TypeScript, JavaScript, Python
  • Frontend: Next.js, React
  • Backend / Platform: Supabase (PostgreSQL, Auth, Edge Functions, Storage), Node/TypeScript services
  • Data: PostgreSQL (Supabase + AWS RDS during migration), Redis
  • Auth & Security: Supabase Auth, OAuth2/OIDC, GitHub, Trivy, Snyk
  • Infrastructure: AWS, Docker, Kubernetes (for supporting services), modern CI/CD
  • AI Tools: Cursor, Devin, GitHub Copilot, and modern agent frameworks where appropriate

AI-Native Mindset

  • Hands-on experience with AI-powered developer tools and workflows (e.g., Cursor, Claude, Codex, or similar)
  • Strong understanding of how to apply LLMs and agent-based systems to code generation, testing and validation, and developer productivity
  • Ability to evaluate emerging AI technologies pragmatically and integrate them into real-world systems

Quality, Observability & Systems Thinking

  • Deep understanding of modern testing strategies and quality engineering
  • Experience building or scaling automated testing frameworks, CI/CD pipelines with enforced quality gates, and observability systems (metrics, logging, tracing, alerting)
  • Experience defining and operating against SLOs/SLIs, reliability and performance targets, and data-driven engineering metrics
  • Strong bias toward automation, instrumentation, and continuous validation

Leadership & Communication

  • Strong coaching and mentoring skills
  • Ability to drive alignment and influence across teams
  • Clear communicator across technical and business contexts

Nice-to-Have (Strong Bonus)

  • Software Security / Application Security
  • Software Supply Chain Security (SCA, SBOMs, CI/CD security)
  • Experience in cybersecurity, IoT, or embedded systems domains
  • Experience in high-scale, high-reliability, or security-sensitive environments

What Success Looks Like

  • Teams deliver consistently high-quality software with measurable improvements in reliability, defect rates, and customer satisfaction
  • Automated and AI-driven testing systems provide broad, continuously improving coverage
  • Quality issues are detected early-or prevented entirely-through intelligent, data-driven systems
  • Engineering velocity increases without tradeoffs in quality, security, or stability
  • Teams rely on systems, automation, and observability-not manual effort-to maintain excellence
  • Engineering output is clearly tied to customer value and business impact