Entry Level AI ML Platform Jobs
New grad ai ml platform jobs welcome recent graduates and entry level candidates with zero to two years of experience, where a strong portfolio or internship project can carry more weight than a long resume. Most openings reflect a mix of on-site, remote, and hybrid settings across Electronics & Hardware, Agriculture & Farming, and Manufacturing, with employers like Apple and PTx Trimble hiring at this level now.
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Join Apple Services Engineering to build the next generation of AI evaluation systems. We are seeking machine learning platform engineers at multiple levels (Mid-Level to Principal) to architect and build high-availability services and internal tools that enable self-service evaluation at scale. You will partner with researchers to operationalize their innovations, transforming complex workflows into intuitive, developer-first platforms. We are looking for builders who thrive in the ambiguity of new initiatives and are passionate about creating scalable infrastructure.
Description
You will join the engineering team responsible for democratizing AI evaluation across the organization. Your focus will be on developing the developer experience-architecting and implementing the APIs, SDKs, and platform services that turn complex evaluation metrics into simple, self-service calls. You will work hand-in-hand with researchers to operationalize sophisticated measurement techniques, ensuring they scale reliably within our high-availability infrastructure. In this role, you will drive the engineering standards for a new organization, upholding the code quality, automation, and testing rigor required to support the rapid evolution of Generative AI and Agentic systems.","responsibilities":"System Design & Implementation: Design, code, and ship high-quality Python services. For senior candidates: Lead the architecture for the core evaluation engine and distributed services. For mid-level candidates: Own the end-to-end implementation of specific features and API endpoints.
Technical Leadership & Collaboration: Mentor junior engineers, conduct code reviews, and drive technical decision-making. Foster a culture of technical excellence and rapid delivery through example and collaboration.
Operationalizing Science: Partner closely with Applied Scientists to translate novel metrics, judge prompts, and scoring algorithms into scalable, production-grade services. Create frameworks to evaluate not just simple responses, but also multi-turn agent trajectories and tool usage.
System Integration: Serve as a technical bridge between the research organization and the broader engineering ecosystem, ensuring our tools integrate seamlessly with existing ML infrastructure and developer workflows.
Engineering Rigor: Champion the software development lifecycle (SDLC) for the team, writing comprehensive automated testing (CI/CD), and instrumenting monitoring to ensure high availability and reliability.
Preferred Qualifications
Experience building MLOps & Platform Infrastructure: You have architected the foundational infrastructure for AI, such as model registries, inference services, or feature stores (using tools like Kubernetes, Ray, or Kubeflow).
Deep familiarity with AI Evaluation Frameworks: You have used or contributed to modern evaluation tools like DeepEval, Ragas, TruLens, or LangSmith. You understand how to implement and scale model-based evaluation workflows.
Deep understanding of Generative AI & Agents: You understand the engineering challenges of relying on LLMs and Agents as software components-specifically managing token economics, handling rate limits, and evaluating non-deterministic, multi-step reasoning capabilities.
Builder Experience: You have thrived in startup-like environments, navigating high ambiguity to deliver complex technical roadmaps from scratch.
Minimum Qualifications
2+ years of hands-on software engineering experience (or Master's degree with relevant project experience). Note: We are hiring across multiple seniority levels; expectations will scale with experience.
Strong proficiency in the Python ecosystem (e.g., FastAPI, Pydantic, Pandas). You are capable of writing production-grade code and contributing to architectural discussions on day one.
Customer Obsession & Product Thinking: Experience acting as a technical partner to internal customers. You can translate vague requirements from other teams into concrete engineering specifications.
Demonstrated experience partnering with Data Scientists or Researchers: You have the ability to navigate the ambiguity of research workflows and operationalize scientific code.
Functional literacy in AI/ML concepts: You understand the fundamental lifecycle of machine learning (datasets, training vs. inference, evaluation metrics) and can discuss the engineering challenges involved in serving models.
Strong expertise in API Design & Internal Tools: You have built APIs that other developers rely on, with a focus on versioning, backward compatibility, and developer experience.
Operational excellence background: You have practical experience using CI/CD pipelines, containerization (Docker/Kubernetes), and monitoring (Datadog/Prometheus).
BS CS , Master's preferred.
Pay & Benefits
At Apple, base pay is one part of our total compensation package and is determined within a range. This provides the opportunity to progress as you grow and develop within a role. The base pay range for this role is between $171,600 and $258,100, and your base pay will depend on your skills, qualifications, experience, and location.
Apple employees also have the opportunity to become an Apple shareholder through participation in Apple's discretionary employee stock programs. Apple employees are eligible for discretionary restricted stock unit awards, and can purchase Apple stock at a discount if voluntarily participating in Apple's Employee Stock Purchase Plan. You'll also receive benefits including: Comprehensive medical and dental coverage, retirement benefits, a range of discounted products and free services, and for formal education related to advancing your career at Apple, reimbursement for certain educational expenses - including tuition. Additionally, this role might be eligible for discretionary bonuses or commission payments as well as relocation. Learn more about Apple Benefits
Note: Apple benefit, compensation and employee stock programs are subject to eligibility requirements and other terms of the applicable plan or program.
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Who's Hiring
- Apple4
- PTx Trimble2

Top Industries Hiring
- Electronics & Hardware4
- Agriculture & Farming2
- Manufacturing1
- Technology & Software1
Entry Level AI ML Platform Jobs: Frequently Asked Questions
How do I get an entry level ai ml platform job?
Employers hiring entry level ai ml platform candidates look for hands-on project work more than years on a resume. Build out a GitHub portfolio showing model training pipelines, MLOps tooling, or data preprocessing workflows. Familiarity with Python, cloud platforms like AWS or GCP, and tools such as MLflow or Kubeflow signals readiness. Internship experience or a relevant capstone project can make a real difference at this stage.
Which companies hire entry level ai ml platforms?
Companies hiring entry level ai ml platforms right now include Apple and PTx Trimble, based on current listings on Migrate Mate as of July 2026. At this level, hiring covers large tech employers building internal ML infrastructure, mid-size software companies scaling their AI products, and startups looking for candidates who can contribute quickly with strong fundamentals.
Are there remote entry level ai ml platform jobs?
Yes, though availability varies by employer and team. About 50% of entry level ai ml platform openings are remote or hybrid as of July 2026, reflecting how much of this work can be done distributed. On-site roles still exist, particularly at companies that prefer new hires to onboard in person before moving to flexible arrangements.
Are these new grad ai ml platform jobs?
Yes. Many of the ai ml platform roles listed here are new grad and junior positions that explicitly welcome recent graduates and candidates with little to no prior experience. A new grad friendly posting typically accepts zero to two years of experience, counts internships or academic projects toward that threshold, and values a portfolio over a long employment history.
Which industries hire the most entry level ai ml platforms?
Entry Level ai ml platform roles concentrate in Electronics & Hardware, Agriculture & Farming, and Manufacturing, based on current listings on Migrate Mate as of July 2026. These sectors drive hiring at this level because they are actively building or expanding ML infrastructure and need junior contributors who can support pipeline development, model deployment, and platform tooling under more experienced engineers.