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Google Engineer Jobs in Indiana (NOW HIRING)

Principal AI Systems Engineer

Auburn, IN · On-site

$170K - $190K/yr

A prompt engineering role * A people management role * A speculative innovation lab What You Will ... Building AI-powered retrieval and synthesis workflows across Slack, CRM, Google, docs, project ...

Principal AI Systems Engineer

Auburn, IN · On-site +1

$170K - $190K/yr

A prompt engineering role * A people management role * A speculative innovation lab What You Will ... Building AI-powered retrieval and synthesis workflows across Slack, CRM, Google, docs, project ...

Civil Engineer

Michigan City, IN · Hybrid

$45 - $60/hr

... Google, Apple, Spotify, US Bank, and FedEx, as well as major engineering and construction firms. Adidev delivers innovative, data-driven solutions that modernize infrastructure, improve efficiency ...

Senior Cloud Engineer

Indianapolis, IN · On-site

$53.25 - $71.25/hr

Strong multi-cloud experience with exposure to AWS and/or Google Cloud Platform (GCP). * Proven ... Familiarity with CI/CD pipelines and DevOps methodologies. * Experience supporting cloud security ...

Data Engineer II

Indianapolis, IN · On-site

$109K - $131K/yr

Data Engineer II Job Location - Indianapolis, IN The Data Engineer is a key technical contributor ... Experience with modern data warehouses such as Snowflake, Amazon Redshift, or Google BigQuery.

Resident Engineer

Kokomo, IN · On-site

$86K - $110K/yr

The Resident Engineer is responsible to be the liaison on the site between the customer and the ... Good working knowledge of Google Suite software programs * ASQ Certification in Quality and ...

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Showing results 1-20

Google Engineer information

See Indiana salary details

$37.1K

$96.8K

$130.8K

How much do google engineer jobs pay per year?

As of Jun 25, 2026, the average yearly pay for google engineer in Indiana is $96,824.00, according to ZipRecruiter salary data. Most workers in this role earn between $79,900.00 and $110,900.00 per year, depending on experience, location, and employer.

Is Google paying engineers 600000?

Salaries for Google engineers can vary based on experience, location, and role, but total compensation for senior engineers can reach or exceed $600,000 annually, including base salary, bonuses, and stock options. Such high compensation levels are typically associated with senior or specialized roles in high-cost areas like Silicon Valley. Entry-level or mid-level engineers usually earn less than this amount.

What engineers make $500,000?

Senior software engineers at top tech companies, including those working on specialized projects or in high-cost living areas, can earn $500,000 or more annually through base salary, bonuses, and stock options. Achieving this level typically requires extensive experience, advanced skills in areas like machine learning or cloud infrastructure, and often involves leadership roles or equity compensation.

What does a Google Engineer do?

A Google Engineer is a professional who designs, develops, tests, and maintains software and systems used by Google. They work on a wide range of projects, from search algorithms to cloud infrastructure, mobile apps, and cutting-edge AI technologies. Google Engineers collaborate in teams, solve complex technical problems, and contribute to products that impact billions of users worldwide. Their work environment emphasizes innovation, scalability, and high performance.

How to get a job in Google as an engineer?

To become a Google engineer, candidates typically need a strong background in computer science or related fields, proficiency in programming languages like Python, C++, or Java, and experience with algorithms, data structures, and system design. Applying through the Google Careers website, preparing for technical interviews, and demonstrating problem-solving skills are essential steps in the hiring process.

How do Google Engineers typically collaborate across teams to solve complex problems?

At Google, engineers often work in highly collaborative, cross-functional teams that include product managers, designers, and other engineers from different specialties. Regular meetings, code reviews, and design discussions are common to ensure alignment and to leverage diverse expertise. Collaboration tools like Google Workspace, version control systems, and internal documentation platforms help streamline communication and project management. This environment encourages sharing knowledge and best practices, enabling engineers to tackle complex technical challenges more effectively. New hires can expect to participate in both team-specific and company-wide initiatives, fostering continuous learning and innovation.

What are the key skills and qualifications needed to thrive as a Google Engineer, and why are they important?

To thrive as a Google Engineer, you generally need strong programming skills (commonly in Python, Java, or C++), a solid foundation in computer science concepts, and at least a bachelor's degree in a related field. Familiarity with Google's internal tools, cloud platforms like Google Cloud, and industry-standard development environments is typical, and relevant certifications can be advantageous. Creative problem-solving, effective teamwork, and strong communication skills help engineers excel in collaborative and fast-paced environments. These skills and qualities are crucial for building scalable, high-quality products, innovating continuously, and contributing to Google's dynamic engineering culture.

How much do Google engineers get paid?

Google engineers typically earn a base salary ranging from $100,000 to over $200,000 annually, depending on experience, location, and level. Total compensation often includes bonuses, stock options, and benefits, making it competitive within the tech industry.

What is the difference between Google Engineer vs Software Engineer?

AspectGoogle Engineer

Required CredentialsBachelor's or Master’s in Computer Science or related field, coding skills, technical interviews
Work EnvironmentInnovative tech company, collaborative teams, fast-paced projects
Employer & IndustryGoogle, tech industry, software development

Google Engineers are specialized software developers working at Google, often involved in large-scale projects and cutting-edge technology. Software Engineers is a broader term used across many companies and industries, encompassing various roles in software development. While both roles require strong coding skills and similar qualifications, Google Engineers typically work within Google's unique environment and culture. The main difference lies in the specific employer and scope of projects, with Google Engineers focusing on Google's products and infrastructure.

Infographic showing various Google Engineer job openings in Indiana as of June 2026, with employment types broken down into 90% Full Time, 3% Part Time, and 7% Contract. Highlights an 69% Physical, 3% Hybrid, and 28% Remote job distribution, with an average salary of $96,824 per year, or $46.5 per hour.
Principal AI Systems Engineer

Principal AI Systems Engineer

Traction Ag Inc.

Auburn, IN • On-site

Other

Medical, Dental, Vision, Life, Retirement, PTO

Posted 13 days ago


Job description

Traction Ag helps farmers simplify the business of farming through cloud-based software that brings together farm financials and operations. 

In this role, you will operate as a cross-functional technical leader partnering closely with the COO and engineering leadership. You will help define the company's AI architecture, tooling standards, and governance practices. 

Core Priorities

  1. Build a secure internal AI data and retrieval layer
  2. Establish governance and safe AI usage patterns
  3. Ship high-leverage internal workflows and automations
  4. Enable responsible AI adoption across the company
  5. Create scalable foundations for future agentic systems

What the role is not: 

  • An AI research role
  • A pure ML modeling role
  • A prompt engineering role
  • A people management role
  • A speculative innovation lab

What You Will Build

The Operating Layer

Our internal AI operating layer. A secure internal AI layer that connects company knowledge systems and makes institutional context searchable, usable, and operational.

  • Building AI-powered retrieval and synthesis workflows across Slack, CRM, Google, docs, project management, and meeting transcripts so teams can access institutional knowledge and historical context in seconds
  • Creating scalable systems for meeting capture, decision logging, onboarding, SOP generation, and cross-functional communication
  •  Implementing RAG pipelines, vector search, embeddings, and AI orchestration frameworks that power the entire internal AI toolkit
  • Reducing knowledge silos, duplicated work, and dependency on tribal knowledge by making information flow to where it is needed, when it is needed

The Internal AI Workflow Platform

A centralized library of reusable AI-powered workflows, automations, and internal tools employees can safely use without exposing sensitive company or customer data.

  • Curated, tested AI workflows for each department that non-technical team members can invoke without prompt engineering from scratch
  • Version control, access governance, and audit trails so the organization can scale AI usage without sacrificing security or consistency
  • A framework that lets team members go from idea to prototype to production-ready workflow, with guardrails that keep outputs safe and on-brand

Operational Intelligence

  • Automations and agents that transform raw information into actionable insights, summaries, tasks, and operational reporting
  • Tools that make operational metrics, goal tracking, and leadership reporting more accessible, more actionable, and harder to ignore
  • Governance, security, and data quality standards for every internal AI system

Security & Governance

  • Define safe AI usage standards across the organization
  • Establish data handling and model access policies aligned with security requirements
  • Evaluate AI vendors, infrastructure, and deployment patterns for security and scalability
  • Design human-in-the-loop workflows, auditability, and operational safeguards
  • Ensure customer financial data is protected across all AI systems

What We Are Looking For

Required

  • 7+ years in software engineering, data engineering, or platform/infrastructure roles, with at least 2 years focused on AI/ML systems or AI-powered tooling
  • Demonstrated track record designing and implementing AI-powered retrieval systems, knowledge architectures, and workflow orchestration patterns in production environments.
  • Proficiency in Python, Node,  Angular, and TypeScript; comfortable working across the stack from data pipelines to lightweight front-end interfaces
  • Proven ability to build integrations across SaaS tools using APIs, webhooks, and automation platforms
  • Strong understanding of context engineering: designing retrieval strategies, memory systems, and information architectures that make AI outputs reliable and high-quality
  • Excellent communication: you can translate between technical architecture and business outcomes, and you can teach complex concepts to non-technical colleagues
  • Comfortable operating autonomously, prioritizing ambiguous problems, and making pragmatic technical tradeoffs.

Nice to Have

  • Familiarity with structured operating systems for scaling companies
  • Background in ag-tech, fintech, or B2B SaaS
  • Experience building internal developer platforms, plugin systems, or self-service tooling for non-engineers
  • Contributions to open-source AI tooling or a portfolio of internal tools you have built and shipped
  • Experience with our stack: Atlassian, Notion (including the API), HubSpot, Slack, Jira, Figma, Google Workspace, Canva

What Success Looks Like

Foundation

  • Initial secure AI retrieval architecture is operational against at least one core company data source
  • Foundational AI infrastructure, governance standards, and approved tooling patterns are established
  • At least two vetted internal AI workflows are published and actively used

Quick Wins - First 90 Days

  • Three to five automations are shipped and saving measurable time across multiple departments
  • At least one cross-functional AI workflow is operational and adopted by non-technical teams
  • A prioritized six-month roadmap for AI infrastructure, workflow automation, and governance is delivered to leadership

Organizational Trust

  • You have established strong working relationships across department leadership
  • The organization trusts the systems, guardrails, and architectural direction being established
  • The company has begun moving from fragmented AI experimentation toward secure, production-oriented AI adoption

What We Offer

  • Mission-driven work that directly supports farmers and rural communities.
  • A nimble, passionate team where your ideas have real impact.
  • Competitive and cost-effective benefits plans - Health, Dental, Vision, and Life Insurance
  • 401(k) Plans with Company Match
  • Unlimited Paid Time Off 
  • Paid Holidays
  • A company culture rooted in our values:
    • Put the Farmer First
    • Gain Traction as a Team
    • Think Outside the Silo
    • Take the Right Next Step 
    • Choose Joy