Machine Learning Engineer Remote Jobs in California (US)
This page tracks remote machine learning engineer openings that are location-eligible for California.
This page tracks remote machine learning engineer openings that are location-eligible for California.
Open jobs
3,009
Hiring companies this week
10
Salary sample
$100 - $175,000
Jobs added last hour
0
3009 Jobs
1584 Companies
• Operationalize machine learning models by building and maintaining robust, scalable pipelines for training, evaluation, deployment, and lifecycle management across cloud, on-prem, and edge compute environments • Work closely with autonomy researchers, software engineers, systems teams, and field operators to translate mission requirements into deployable ML capabilities • Implement automated CI/CD workflows tailored to ML systems, ensuring repeatable experiments, reliable packaging, and continuous delivery of both up to date models and associated data pipelines • Manage ML runtime infrastructure using containerization and orchestration frameworks (e.g., Docker, Kubernetes) and incorporating model serving platforms (e.g., Seldon, KServe, BentoML) • Develop monitoring systems to track model health, performance, data drift, system utilization, and mission relevance using tools such as Prometheus, Grafana, and ELK/EFK stacks • Ensure ML deployments meet defense, customer, and platform security requirements, with emphasis on data integrity, traceability, and operational reliability • Evaluate and integrate emerging MLOps, distributed training, and edge inference technologies to enhance reproducibility, extensibility, scalability, and deployment speed of ML systems
Role Description This role is responsible for designing, developing, implementing, troubleshooting, and optimizing scalable, high-performance software and product applications. Leveraging industry best practices, the Sr. Software & Product Engineer delivers robust, customer-focused solutions that accelerate product innovation. - Assesses and defines software and product requirements, establishing the specifications and standards that guide scalable, high-quality development. - Executes coding, debugging, testing, and troubleshooting across the full development lifecycle, incorporating AI-assisted and agentic development approaches to maintain quality and delivery efficiency. - Develops and advances software and product capabilities that integrate with design systems, infrastructure, databases, and cloud-based platforms, all with the goal of maximizing operational efficiency. - Evaluates application requirements and architects database solutions that ensure scalability, performance, and data integrity. - Serves as a subject matter expert in AI-assisted development practices; acts as a resource for the engineering team on the effective and disciplined application of AI coding tools, informs development standards around AI use, and reinforces quality expectations through code reviews. Qualifications - Bachelor's degree (or international equivalent) or equivalent experience, required. - 5+ years of related experience, required. - 2+ years of Agentic Engineering required. - Experience with Claude Code, Curser or comparable LLM. - 5+ Python required. - Experience with Git/GitHub, JIRA, Confluence, CircleCI, required. - Experience developing in Agile, SCRUM, or similar iterative methodologies, required. - Experience in fast-growing companies or entrepreneurial environments, required. - 9+ years of related experience, preferred. - Demonstrated knowledge of component-based frontend architecture and modern frontend development principles, enabling scalable, modular front-end development. - Skilled in frontend build tools and development pipeline practices. - Advanced knowledge of software testing methodologies enabling robust, reliable test coverage. - Expert-level knowledge of AI-assisted development tools and agentic coding workflows, with the ability to apply engineering judgment to evaluate, refine, and integrate AI-generated code into production software delivery. - Technical proficiency to translate detailed business requirements into actionable technical specifications and determine the most effective implementation approach using a wide range of tools and technologies. - Industry knowledge of current software engineering practices and emerging development methodologies. - Ability to serve as a technical resource for the engineering team on AI-assisted development practices, guide peer adoption of effective AI tool use, and reinforce quality standards for AI-generated code. - Ability to influence and contribute to architectural design. - Ability to travel less than 5% of the time. - Must be 18 years of age or older. - Must successfully complete pre-employment screening process, as required. - Must successfully complete any required training or orientation courses, as needed. Benefits - Work from anywhere – Thryv is a Remote First company! - Competitive medical, dental, and vision plans, plus a wellness program with added incentives. - 401(k) savings plan with company match and employee stock purchase plan. - Continuing education benefits with tuition assistance programs. - One week of paid time off at the end of the year, in addition to our standard paid time off policy.
VXForward is a leading technology solutions provider that helps to create a business value with innovative and cost-effective services across different industries. VXForward is an Equal Opportunity Employer. All qualified applicants will receive consideration for employment without regard to race, color, religion, sex (including pregnancy, childbirth, or related medical conditions), sexual orientation, gender identity, age, national origin, disability, family care or medical leave status, genetic information, veteran status, marital status, or any other characteristic protected by applicable federal, state, or local law. We are committed to attracting, retaining, and maximizing the performance of a diverse and inclusive workforce. This is a remote position.
Role Description Join our innovative team and help us in shaping the future of Technology! - Design, develop, and deploy AI/ML solutions to modernize core pharmacy platforms, with a focus on scalability, reliability, performance, and security. - Leverage Generative AI, LLMs, and agentic AI frameworks to automate and enhance pharmacy workflows and decision-making processes. - Collaborate with business and technical stakeholders to understand pharmacy domain requirements and translate them into robust AI/ML-driven technical solutions. - Contribute to architecture and technical design of AI/ML pipelines, including model selection, data integration, and deployment patterns. - Establish and maintain AI/ML engineering standards, best practices, and quality assurance processes. - Conduct code reviews, provide constructive feedback, and mentor engineers on modern AI/ML engineering practices. - Partner with cross-functional teams including data scientists, product managers, platform engineers, and pharmacy domain experts. - Translate legacy system modernization needs into scalable AI applications that enhance products, workflows, and operational efficiency. - Monitor and optimize AI/ML model performance, resource utilization, and platform reliability. - Collaborate with DevOps and infrastructure teams to ensure secure, scalable deployment and operations of AI/ML solutions. - Stay current with advancements in AI/ML frameworks, Generative AI, LLMs, and pharmacy technology modernization. Qualifications - 5+ years of experience as a software engineer or AI/ML engineer delivering cloud-based solutions. - 5+ years of experience with cloud platforms such as Azure, AWS, or Google Cloud. - 5+ years of programming experience in Python, Golang, JavaScript, or Java. - 3+ years of hands-on experience with AI/ML frameworks, model development, and deployment. - 3+ years of hands-on experience with Generative AI, LLMs, and agentic AI solutions. - Experience building distributed systems and cloud-native AI/ML applications. - 1+ years of experience with security and compliance in cloud environments. - Strong problem-solving and analytical skills with the ability to propose innovative AI/ML solutions. - Excellent communication and collaboration skills across technical and non-technical teams. Company Description VXForward is a leading technology solutions provider that helps to create a business value with innovative and cost-effective services across different industries. - Exciting Projects, Meaningful Impact - Continuous Learning and Growth - State-of-the-Art Technologies - Collaborative Team Environment - Make a Real Difference - Work-Life Balance
The CES Family of Companies is a collection of strong brands and businesses providing food equipment, supplies, service.
• Design and implement advanced AI/GenAI features across applications and SDLC workflows • Build and deploy AI solutions using Azure AI Foundry and LLM platforms • Develop multi-agent workflows using frameworks like LangChain, LangGraph, Semantic Kernel, or LlamaIndex • Implement RAG architectures, prompt engineering, and vector-based retrieval systems • Drive AI-assisted development using GitHub Copilot and establish best practices • Build scalable full-stack applications using Python, TypeScript/JavaScript, and/or C# • Develop APIs, backend services, and work with relational and NoSQL databases • Implement observability, monitoring, and performance optimization for AI systems • Lead troubleshooting, design decisions, and system integrations • Mentor junior engineers and contribute to AI governance and best practices
CES has 26+ years of experience in delivering Software Product Development, Quality Engineering, and Digital Transformation Consulting Services to Global SMEs & Large Enterprises. CES has been delivering services to some of the leading Fortune 500 Companies including Automotive, AgTech, Bio Science, EdTech, FinTech, Manufacturing, Online Retailers, and Investment Banks. These are long-term relationships of more than 10 years and are nurtured by not only our commitment to timely delivery of quality services but also due to our investments and innovations in their technology roadmap. As an organization, we are in an exponential growth phase with a consistent focus on continuous improvement, process-oriented culture, and a true partnership mindset with our customers.
Role Description As an organization, we are in an exponential growth phase with a consistent focus on continuous improvement, process-oriented culture, and a true partnership mindset with our customers. We are looking for the right qualified and committed individuals to play an exceptional role as well as to support our accelerated growth. - Design and implement AI/GenAI features across applications and SDLC workflows - Build AI solutions using platforms like Azure AI Foundry and LLM APIs - Develop agent-based workflows using frameworks such as LangChain, LangGraph, or Semantic Kernel - Implement RAG-based solutions and prompt engineering strategies - Leverage GitHub Copilot for AI-assisted development and productivity - Build full-stack applications using Python, JavaScript/TypeScript, and/or C# (.NET) - Develop APIs, backend services, and integrate with databases (SQL/NoSQL) - Ensure application quality through testing, monitoring, and observability - Collaborate with cross-functional teams (product, UX, data science) - Troubleshoot and optimize AI models, pipelines, and integrations Qualifications - 3+ years of full-stack software development experience - 1–2 years of experience in AI/LLM-based application development - Hands-on experience with AI platforms (Azure OpenAI, OpenAI, or similar) - Knowledge of RAG, embeddings, and vector databases - Experience with AI orchestration frameworks (LangChain, Semantic Kernel, etc.) - Strong programming skills in Python (preferred) and/or JavaScript/C# - Experience with REST APIs and database systems (SQL & NoSQL) - Familiarity with GitHub Copilot or AI-assisted development tools - Strong problem-solving and communication skills - Experience working in Agile environments Benefits - Flexible working hours to create a work-life balance - Opportunity to work on advanced tools and technologies - Global exposure to not only collaborate with the team, but also to connect with the client portfolio and build professional relationships - Highly encouraged for any innovative ideas & thoughts and we support in executing the same - Periodical and on-spot rewards and recognitions on your performance - Provides a better platform for enhancing skills via many different L&D programs - Enabling and empowering atmosphere to work along
Waymo is a company in the autonomous driving technology space offering self-driving vehicles with the potential to increase mobility and decrease lives lost in
Title: ML Microarchitect Location: Mountain View, California, United States Full-Time Hardware Engineering ID: 4594 Job Description: Waymo is an autonomous driving technology company with the mission to be the world's most trusted driver. Since its start as the Google Self-Driving Car Project in 2009, Waymo has focused on building the Waymo Driver-The World's Most Experienced Driver-to improve access to mobility while saving thousands of lives now lost to traffic crashes. The Waymo Driver powers Waymo's fully autonomous ride-hail service and can also be applied to a range of vehicle platforms and product use cases. The Waymo Driver has provided over ten million rider-only trips, enabled by its experience autonomously driving over 100 million miles on public roads and tens of billions in simulation across 15+ U.S. states. Waymo's Compute Team is tasked with a critical and exciting mission: We deliver the compute platform responsible for running the fully autonomous vehicle's software stack. To achieve our mission, we architect and create high-performance custom silicon; we develop system-level compute architectures that push the boundaries of performance, power, and latency; and we collaborate closely with many other teammates to ensure we design and optimize hardware and software for maximum performance. We are a multidisciplinary team seeking curious and talented teammates to work on one of the world's highest performance automotive compute platforms. This role follows a hybrid work schedule and you will report to the Senior Staff Silicon Engineer. You will: - Work with researchers and architects to translate high level requirements into hardware features - Specify and design microarchitectures to deliver world class ML performance - Perform power, area and performance exploration and optimization of digital designs - Design high performance execution units, arithmetic circuits and programmable engines - Work with verification teams to guarantee functional correctness and performance You have: - BS degree in Computer Engineering or equivalent practical experience - 5+ years of industry experience with SystemVerilog, RTL design and microarchitecture - 3+ years designing and specifying microarchitectures of high performance computing cores (CPU/GPU/NPU) - Fluency in at least one high level programming language such as Python, C++ We prefer: - Experience designing datapath elements of high performance cores (CPU/GPU/NPU) - Experience working with Chisel (Scala) or other higher-level hardware DSLs - Working knowledge of machine learning algorithms & how they map to hardware - Familiarity with Synthesis and power analysis tools - Experience working with formal tools for datapath verification The expected base salary range for this full-time position across US locations is listed below. Actual starting pay will be based on job-related factors, including exact work location, experience, relevant training and education, and skill level. Your recruiter can share more about the specific salary range for the role location or, if the role can be performed remote, the specific salary range for your preferred location, during the hiring process. Waymo employees are also eligible to participate in Waymo's discretionary annual bonus program, equity incentive plan, and generous Company benefits program, subject to eligibility requirements. Salary Range $175,000-$215,000 USD We appreciate your interest in Waymo. Waymo is proud to be an equal opportunity employer, committed to creating a culture of belonging and maintaining a supportive workplace for all employees. We welcome applicants of all backgrounds, and employment decisions are based on a candidate's qualifications, experience, and alignment with job requirements and business needs. Waymo does not discriminate against, and prohibits harassment of, any applicant or employee based on race, color, sex, sexual orientation, gender identity, religion, national origin, age, disability, military status, family status, pregnancy, genetic information or any other basis protected by applicable law. Waymo will also consider for employment qualified applicants with criminal records in accordance with applicable law. Waymo is committed to making sure our hiring process is accessible for all candidates.
• Own ML production reliability strategy • Define and lead the operational strategy for production ML systems, including monitoring, traceability, deployment safety, incident response, and post-deployment validation. • Set the standards ML teams use to assess model health, performance, and trustworthiness in production. • Own model traceability and governance • Ensure every production model has clear lineage (data, features, code, artifacts, validation, deployment history) and drive adoption of model registry and metadata tooling across ML teams. • Build end-to-end ML observability • Design and implement monitoring across the full ML signal path: data arrival, feature freshness, distribution stability, candidate generation, ranking behavior, model metrics, serving latency, and SLA performance. • Define production health metrics • Partner with ML, data, product, and business stakeholders to define post-deployment metrics covering model quality, system reliability, business guardrails, and degradation indicators. • Detect drift and degradation proactively • Detect data drift, feature drift, model behavior changes, and silent failures before they impact customers via thresholding, alerting, anomaly detection, and release-over-release monitoring. • Lead diagnostic tooling and root-cause analysis • Build dashboards, logs, and diagnostic workflows that progress quickly from “recommendations look off” to root cause, with context captured across candidates, features, scores, ranking decisions, and downstream outcomes. • Own ML deployment safety • Define and operate automated gates that prevent bad models or bad data from being promoted to production. • Partner with MLEs to establish validation checks, rollback criteria, canary strategies, shadow testing, and release health reviews. • Lead ML incident response • Own incident response practices for ML systems, including rollback playbooks, hotfix strategies, severity definitions, tradeoff frameworks, communications, and post-mortems. • Drive closure of systemic gaps after incidents rather than only resolving the immediate issue. • Partner across ML Platform, Data, and ML • Partner with DevOps/Platform on infrastructure and observability needs; with Data Engineering on data quality, drift, and freshness; and with ML Engineering to embed operational requirements into development and deployment workflows. • Set standards and mentor others • Act as the technical lead for ML operations: establish reusable patterns, playbooks, and standards, and mentor engineers on reliability, observability, and operational rigor.
Top world’s largest social discovery company uniting 70+ brands with 500M+ users
• Train and fine-tune language models powering our AI companions • Own and improve agent harnesses, agentic loops, and the chat interface algorithm • Build and maintain the full LLM stack — from model training to production deployment • Track cutting-edge NLP research and open-source developments; translate them into an NLP roadmap • Collaborate closely with the validation, content, and dataset preparation teams to design experiments and measure model quality
Enabling better, smarter, safer healthcare to improve lives.
Role Description As a Senior AI Engineer, Enterprise Agentic Solution, you will serve as the premier technical authority driving the enterprise-wide architecture, engineering, and deployment of Agentic AI and Generative AI platforms. Operating at a highly senior level, your focus extends beyond data science and model training into the rigorous engineering of scalable, high-performance AI systems. You will architect robust, multi-agent frameworks that integrate seamlessly into mission-critical healthcare operations. Furthermore, you will act as a primary technical liaison, partnering directly with executive stakeholders and healthcare customers to translate complex business challenges into highly reliable, autonomous AI solutions. Key Responsibilities - Agent Development & Engineering: - Build, test, and deploy autonomous, multi-agent systems using frameworks such as AutoGen and LangGraph. - Implement the core logic for agent orchestration, tool utilization, and state management. - Advanced RAG & Data Integration: - Engineer robust data ingestion pipelines capable of processing complex, multi-modal healthcare data. - Implement advanced retrieval techniques, including Graph RAG, and develop solutions for high-accuracy document intelligence (e.g., page-by-page parsing of complex PDFs). - Performance Optimization & Evaluation: - Design and execute prompt engineering strategies. - Establish and monitor rigorous evaluation of metrics for LLM performance to ensure clinical safety, minimize hallucinations, and optimize inference latency in production environments. - Technical Execution & Collaboration: - Partner with data scientists, product managers, and cloud engineers to transition AI models into high-concurrency production environments. - Establish code quality standards, write comprehensive technical documentation, and mentor junior developers. - Operational Rigor: - Build and maintain MLOps pipelines, ensuring secure containerization, CI/CD integration, and comprehensive system telemetry in adherence to healthcare privacy regulations (HIPAA, HITRUST). Qualifications - Bachelor's degree in Computer Science, Software Engineering, AI, or related field AND 8+ years of professional experience in software engineering and ML/AI development OR a Master's degree AND 6+ years of experience. - Deep, hands-on programming expertise in Python and extensive experience building backend systems and APIs. - Direct experience developing and deploying Agentic workflows and orchestration frameworks (e.g., AutoGen, LangChain) in production. - Strong practical understanding of Generative AI paradigms, prompt engineering, and LLM evaluation metrics. - Experience building ML infrastructure and deploying applications using cloud-native technologies (AWS, Azure, or GCP). Additional Qualifications - Hands-on experience implementing Graph RAG and complex document parsing workflows. - Experience with healthcare data standards (e.g., FHIR) and secure data handling practices. - Strong background in system design patterns, microservices, and infrastructure as code. - Demonstrated ability to lead development pods and translate complex business requirements into technical deliverables. Work Location Remote Travel May include up to 10% domestic. Requirements - Must be legally authorized to work in a country of employment without sponsorship for employment visa status (e.g., H1B status). Benefits - Competitive pay and benefits. - Medical, Dental & Vision. - Health Savings Accounts. - Health Care & Dependent Care Flexible Spending Accounts. - Disability Benefits. - Life Insurance. - Voluntary Benefits. - Paid Absences and Retirement Benefits.
This opportunity is available through a leading AI-driven work platform.
Role Description We are sharing a specialised part-time consulting opportunity for experienced Machine Learning Engineers and Applied ML Researchers with expertise in end-to-end modeling, dataset analysis, feature engineering, validation strategy, model evaluation, reference solution development, and technical quality review. This role supports current and upcoming remote consulting opportunities focused on complex machine learning challenge design, applied modeling workflows, reference solution development, technical evaluation, reproducible documentation, and high-quality project execution. Selected professionals will design, solve, and review challenging machine learning tasks that reflect real-world ML development across multiple domains and data modalities. Key Responsibilities - End-to-End Machine Learning Solution Development - Develop complete machine learning solutions for challenging prediction and modeling problems. - Analyze datasets and define appropriate modeling approaches, validation strategies, and evaluation metrics. - Perform exploratory data analysis, feature engineering, data preprocessing, model training, tuning, and evaluation. - Work across tabular, text, image, time-series, recommendation, ranking, or other applied ML problem types. - Reference Solutions & Technical Documentation - Develop strong reference solutions using industry-standard machine learning techniques and best practices. - Document methodologies, assumptions, modeling choices, validation approaches, and evaluation results clearly. - Ensure solutions are accurate, reproducible, and technically well-structured. - Identify opportunities to improve model performance through systematic experimentation and iteration. - ML Project Review & Evaluation - Review and validate the technical quality of machine learning projects and deliverables. - Evaluate modeling choices, data preparation decisions, performance metrics, and experimental design. - Identify weak assumptions, data leakage risks, flawed validation, underdeveloped features, or unsupported modeling conclusions. - Provide clear written technical feedback that improves correctness, rigor, and reproducibility. Qualifications - Master's degree, PhD, or equivalent advanced experience in Computer Science, Machine Learning, Statistics, Mathematics, Electrical Engineering, or a related field. - 2+ years of hands-on experience developing, training, evaluating, and optimizing machine learning models in a professional or research setting. - Strong proficiency in Python and modern machine learning frameworks such as scikit-learn, XGBoost, LightGBM, PyTorch, or TensorFlow. - Demonstrated experience building end-to-end machine learning solutions, including data preparation, model development, validation, and evaluation. - Strong understanding of model evaluation metrics, validation methodologies, and experimental design. - Ability to work independently on open-ended machine learning problems and deliver high-quality technical outputs. Requirements - Relevant experience may include: - Tabular machine learning. - Natural language processing. - Computer vision. - Recommendation systems. - Ranking systems. - Time-series forecasting. - Applied modeling across structured or unstructured datasets. Nice to Have - PhD from a leading research university. - Experience at leading technology companies, AI-focused teams, research institutions, or high-growth startups. - Participation in competitive machine learning or data science competitions. - Experience optimizing models against performance-based evaluation metrics. - Familiarity with advanced techniques such as ensembling, hyperparameter optimization, transfer learning, foundation model fine-tuning, or reinforcement learning. - Publications, patents, or significant open-source contributions in machine learning or AI. - Experience reviewing, mentoring, or evaluating the work of other machine learning practitioners. Why This Opportunity - Apply machine learning engineering and applied research expertise to structured remote consulting work. - Contribute to high-quality ML challenge design, reference solution development, and technical evaluation. - Work on flexible assignments aligned with your modeling, Python, experimentation, and ML framework experience. - Use your technical judgment to evaluate complex ML workflows and improve solution quality. - Remote structure with competitive hourly compensation. Contract Details - Independent contractor role. - Fully remote with flexible scheduling. - Eligible professionals may be based in approved project locations depending on project needs. - Project commitment may vary depending on availability and scope. - Competitive rates up to $100 per hour depending on expertise and project scope. - Weekly payments via Stripe or Wise. - Projects may be extended, shortened, or adjusted depending on scope and performance. - Work will not involve access to confidential or proprietary information from any employer, client, or institution. About the Platform This opportunity is available through 24-MAG LLC. We connect experienced professionals with remote consulting opportunities across technical, evaluation, and project-based workstreams. By submitting this application, you acknowledge that your information may be processed by 24-MAG LLC for recruitment and opportunity matching in accordance with our Privacy Policy: https://www.24-mag.com/privacy-policy .
2,999more opportunities are still waiting for you.Log in now and take your next shot before someone else does.
Python, PyTorch, SQL, Airflow, Cloud, Docker