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Sr. Machine Learning Engineer – LLMs, Agent Systems, and Simulation Tooling, Siri Core Modeling

Apple

Software and Technology Jobs

Sr. Machine Learning Engineer – LLMs, Agent Systems, and Simulation Tooling, Siri Core Modeling

full-timePosted: Nov 3, 2025

Job Description

Join a pioneering team shaping the future of voice-first, agentic platforms. As a Senior Machine Learning Engineer, you’ll help define how next-generation intelligent agents reason, plan, and interact with people through natural voice and multimodal experiences. You will develop the foundations of scalable LLM reasoning systems that will power the next wave of human–AI interaction. We’re seeking a senior ML engineer with strong expertise in large language models and agent-based systems to build the core reasoning and simulation capabilities behind a future platform for agentic voice experiences. You will work on advancing how LLMs plan, adapt, and evaluate actions in realistic environments, contributing to the development of reliable and trustworthy AI agents. Your work will focus on developing robust infrastructure and tooling for training, simulation, and evaluation of agentic LLMs. You’ll design and run experiments in simulated environments, build scalable evaluation pipelines, and help integrate agent behaviors across client and backend systems. This role is an opportunity to push the boundaries of reasoning, adaptive behavior, and platform architecture for agent-based intelligence. You will collaborate closely with ML scientists, applied researchers, and product engineers to transform early research into deployable systems. Together, we will shape a platform that empowers developers and end-users to build rich, voice-driven AI experiences.

Locations

  • Sunnyvale, California, United States 94085

Salary

Estimated Salary Rangemedium confidence

50,000,000 - 100,000,000 INR / yearly

Source: ai estimated

* This is an estimated range based on market data and may vary based on experience and qualifications.

Skills Required

  • expertise in large language modelsintermediate
  • expertise in agent-based systemsintermediate
  • developing scalable LLM reasoning systemsintermediate
  • building core reasoning and simulation capabilitiesintermediate
  • developing robust infrastructure and toolingintermediate
  • training agentic LLMsintermediate
  • simulation of agentic LLMsintermediate
  • evaluation of agentic LLMsintermediate
  • designing and running experiments in simulated environmentsintermediate
  • building scalable evaluation pipelinesintermediate
  • integrating agent behaviors across client and backend systemsintermediate
  • advancing LLM planningintermediate
  • advancing LLM adaptationintermediate
  • advancing LLM action evaluationintermediate
  • collaborating with ML scientistsintermediate
  • collaborating with applied researchersintermediate
  • collaborating with product engineersintermediate
  • transforming research into deployable systemsintermediate

Required Qualifications

  • Bachelor’s degree in Computer Science, Machine Learning, or related quantitative field, with 4+ years of relevant industry experience (experience, 4 years)
  • Strong skills in Python (preferred) and at least one other programming language (experience)
  • Proven experience in ML engineering, including system design, training pipelines, and deployment workflows (experience)
  • Deep understanding of agent-based simulation, agentic RAG systems, and LLM evaluation methodologies (experience)
  • Ability to balance long-term platform vision with pragmatic short-term delivery in fast-paced environments (experience)

Preferred Qualifications

  • Experience deploying LLM models in research or production contexts (experience)
  • Knowledge of adaptive feedback loops, reinforcement learning, or interactive agent design (experience)
  • Familiarity with client-backend integration for AI-driven applications (experience)
  • MS or PhD in Computer Science, Machine Learning, or a related field (degree in phd in computer science)

Responsibilities

  • We’re seeking a senior ML engineer with strong expertise in large language models and agent-based systems to build the core reasoning and simulation capabilities behind a future platform for agentic voice experiences. You will work on advancing how LLMs plan, adapt, and evaluate actions in realistic environments, contributing to the development of reliable and trustworthy AI agents.
  • Your work will focus on developing robust infrastructure and tooling for training, simulation, and evaluation of agentic LLMs. You’ll design and run experiments in simulated environments, build scalable evaluation pipelines, and help integrate agent behaviors across client and backend systems. This role is an opportunity to push the boundaries of reasoning, adaptive behavior, and platform architecture for agent-based intelligence.
  • You will collaborate closely with ML scientists, applied researchers, and product engineers to transform early research into deployable systems. Together, we will shape a platform that empowers developers and end-users to build rich, voice-driven AI experiences.
  • Design and implement scalable simulation and evaluation frameworks for LLM-based agents
  • Collaborate with ML researchers to translate novel reasoning approaches into production-grade systems
  • Develop infrastructure for training and experimentation with agentic behaviors
  • Integrate agent reasoning capabilities into client-side and backend environments
  • Drive iteration speed by creating reliable tooling for experimentation, prototyping, and deployment

Target Your Resume for "Sr. Machine Learning Engineer – LLMs, Agent Systems, and Simulation Tooling, Siri Core Modeling" , Apple

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Apple logo

Sr. Machine Learning Engineer – LLMs, Agent Systems, and Simulation Tooling, Siri Core Modeling

Apple

Software and Technology Jobs

Sr. Machine Learning Engineer – LLMs, Agent Systems, and Simulation Tooling, Siri Core Modeling

full-timePosted: Nov 3, 2025

Job Description

Join a pioneering team shaping the future of voice-first, agentic platforms. As a Senior Machine Learning Engineer, you’ll help define how next-generation intelligent agents reason, plan, and interact with people through natural voice and multimodal experiences. You will develop the foundations of scalable LLM reasoning systems that will power the next wave of human–AI interaction. We’re seeking a senior ML engineer with strong expertise in large language models and agent-based systems to build the core reasoning and simulation capabilities behind a future platform for agentic voice experiences. You will work on advancing how LLMs plan, adapt, and evaluate actions in realistic environments, contributing to the development of reliable and trustworthy AI agents. Your work will focus on developing robust infrastructure and tooling for training, simulation, and evaluation of agentic LLMs. You’ll design and run experiments in simulated environments, build scalable evaluation pipelines, and help integrate agent behaviors across client and backend systems. This role is an opportunity to push the boundaries of reasoning, adaptive behavior, and platform architecture for agent-based intelligence. You will collaborate closely with ML scientists, applied researchers, and product engineers to transform early research into deployable systems. Together, we will shape a platform that empowers developers and end-users to build rich, voice-driven AI experiences.

Locations

  • Sunnyvale, California, United States 94085

Salary

Estimated Salary Rangemedium confidence

50,000,000 - 100,000,000 INR / yearly

Source: ai estimated

* This is an estimated range based on market data and may vary based on experience and qualifications.

Skills Required

  • expertise in large language modelsintermediate
  • expertise in agent-based systemsintermediate
  • developing scalable LLM reasoning systemsintermediate
  • building core reasoning and simulation capabilitiesintermediate
  • developing robust infrastructure and toolingintermediate
  • training agentic LLMsintermediate
  • simulation of agentic LLMsintermediate
  • evaluation of agentic LLMsintermediate
  • designing and running experiments in simulated environmentsintermediate
  • building scalable evaluation pipelinesintermediate
  • integrating agent behaviors across client and backend systemsintermediate
  • advancing LLM planningintermediate
  • advancing LLM adaptationintermediate
  • advancing LLM action evaluationintermediate
  • collaborating with ML scientistsintermediate
  • collaborating with applied researchersintermediate
  • collaborating with product engineersintermediate
  • transforming research into deployable systemsintermediate

Required Qualifications

  • Bachelor’s degree in Computer Science, Machine Learning, or related quantitative field, with 4+ years of relevant industry experience (experience, 4 years)
  • Strong skills in Python (preferred) and at least one other programming language (experience)
  • Proven experience in ML engineering, including system design, training pipelines, and deployment workflows (experience)
  • Deep understanding of agent-based simulation, agentic RAG systems, and LLM evaluation methodologies (experience)
  • Ability to balance long-term platform vision with pragmatic short-term delivery in fast-paced environments (experience)

Preferred Qualifications

  • Experience deploying LLM models in research or production contexts (experience)
  • Knowledge of adaptive feedback loops, reinforcement learning, or interactive agent design (experience)
  • Familiarity with client-backend integration for AI-driven applications (experience)
  • MS or PhD in Computer Science, Machine Learning, or a related field (degree in phd in computer science)

Responsibilities

  • We’re seeking a senior ML engineer with strong expertise in large language models and agent-based systems to build the core reasoning and simulation capabilities behind a future platform for agentic voice experiences. You will work on advancing how LLMs plan, adapt, and evaluate actions in realistic environments, contributing to the development of reliable and trustworthy AI agents.
  • Your work will focus on developing robust infrastructure and tooling for training, simulation, and evaluation of agentic LLMs. You’ll design and run experiments in simulated environments, build scalable evaluation pipelines, and help integrate agent behaviors across client and backend systems. This role is an opportunity to push the boundaries of reasoning, adaptive behavior, and platform architecture for agent-based intelligence.
  • You will collaborate closely with ML scientists, applied researchers, and product engineers to transform early research into deployable systems. Together, we will shape a platform that empowers developers and end-users to build rich, voice-driven AI experiences.
  • Design and implement scalable simulation and evaluation frameworks for LLM-based agents
  • Collaborate with ML researchers to translate novel reasoning approaches into production-grade systems
  • Develop infrastructure for training and experimentation with agentic behaviors
  • Integrate agent reasoning capabilities into client-side and backend environments
  • Drive iteration speed by creating reliable tooling for experimentation, prototyping, and deployment

Target Your Resume for "Sr. Machine Learning Engineer – LLMs, Agent Systems, and Simulation Tooling, Siri Core Modeling" , Apple

Get personalized recommendations to optimize your resume specifically for Sr. Machine Learning Engineer – LLMs, Agent Systems, and Simulation Tooling, Siri Core Modeling. Takes only 15 seconds!

AI-powered keyword optimization
Skills matching & gap analysis
Experience alignment suggestions

Check Your ATS Score for "Sr. Machine Learning Engineer – LLMs, Agent Systems, and Simulation Tooling, Siri Core Modeling" , Apple

Find out how well your resume matches this job's requirements. Get comprehensive analysis including ATS compatibility, keyword matching, skill gaps, and personalized recommendations.

ATS compatibility check
Keyword optimization analysis
Skill matching & gap identification
Format & readability score

Tags & Categories

Hardware

Answer 10 quick questions to check your fit for Sr. Machine Learning Engineer – LLMs, Agent Systems, and Simulation Tooling, Siri Core Modeling @ Apple.

Quiz Challenge
10 Questions
~2 Minutes
Instant Score

Related Books and Jobs

No related jobs found at the moment.