Machine Learning Engineer
Salary & Market Data
Matched to BLS occupational data · California
Job Description
As a Machine Learning Engineer, you will design and build cutting-edge AI/ML systems that drive meaningful business outcomes at scale. You will work cross-functionally to bring innovative machine learning solutions from research and experimentation through to robust, production-grade deployment.
The MLE will collaborate with other MLEs to build scalable, production-ready ML solutions, taking algorithms from initial concept through to deployment. This hire will design end-to-end AI/ML solutions with clear business impact, from concept to deployment, with a strong focus on feasibility, scalability, and performance. You will benchmark, adapt, and integrate AI/ML models into existing systems.
Deploy, monitor, and support AI tools in production environments, ensuring reliability and performance.\\nContribute to the ongoing improvement of ML infrastructure, tooling, and best practices.\\nPartner with data scientists, and engineers to translate business requirements into technical ML solutions.\\nConduct rigorous model evaluation, testing, and iteration to continuously improve model quality and efficiency.\\nDesign and integrate LLM-powered features and AI agent workflows into production systems, ensuring reliability, scalability, and performance.\\nBuild and maintain agentic pipelines that leverage tool use, memory, and multi-step reasoning to automate complex business processes.\\nEvaluate and benchmark LLM outputs as part of the model evaluation lifecycle, assessing quality, latency, and safety in production contexts.
8 years of related experience building high-throughput, scalable applications or machine learning models in a production environment.\\nBachelor"s Degree in Computer Science, Statistics, Data Mining, Machine Learning, Operations Research, or related field.\\nProficiency in one or more object-oriented programming languages such as Python, Java, or C++, with hands-on experience building distributed systems.\\nExperience building large-scale machine learning systems using big data technologies such as Spark, SQL, Snowflake, or similar platforms.\\nExperience with ML frameworks such as TensorFlow, PyTorch, or scikit-learn.\\nFamiliarity with MLOps practices including model versioning, CI/CD pipelines, and experiment tracking tools such as MLflow or similar.\\nExperience building and deploying applications using large language models (e.g., GPT-4, Claude, Gemini, or open-source alternatives) via APIs or self-hosted inference.\\nHands-on experience with agentic frameworks such as LangChain, LlamaIndex, or AutoGen to build multi-step, tool-augmented AI workflows.
10 years of related experience building high-throughput, scalable applications or machine learning models in a production environment.\\nSolid understanding of ML fundamentals including supervised/unsupervised learning, model evaluation, and feature engineering.\\nStrong problem-solving skills with the ability to translate ambiguous business problems into well-defined ML solutions.\\nExcellent cross-functional communication skills with the ability to collaborate effectively across engineering and data science teams.\\nFamiliarity with LLM evaluation practices including output quality assessment, hallucination detection, and latency benchmarking in production environments.
The MLE will collaborate with other MLEs to build scalable, production-ready ML solutions, taking algorithms from initial concept through to deployment. This hire will design end-to-end AI/ML solutions with clear business impact, from concept to deployment, with a strong focus on feasibility, scalability, and performance. You will benchmark, adapt, and integrate AI/ML models into existing systems.
Deploy, monitor, and support AI tools in production environments, ensuring reliability and performance.\\nContribute to the ongoing improvement of ML infrastructure, tooling, and best practices.\\nPartner with data scientists, and engineers to translate business requirements into technical ML solutions.\\nConduct rigorous model evaluation, testing, and iteration to continuously improve model quality and efficiency.\\nDesign and integrate LLM-powered features and AI agent workflows into production systems, ensuring reliability, scalability, and performance.\\nBuild and maintain agentic pipelines that leverage tool use, memory, and multi-step reasoning to automate complex business processes.\\nEvaluate and benchmark LLM outputs as part of the model evaluation lifecycle, assessing quality, latency, and safety in production contexts.
8 years of related experience building high-throughput, scalable applications or machine learning models in a production environment.\\nBachelor"s Degree in Computer Science, Statistics, Data Mining, Machine Learning, Operations Research, or related field.\\nProficiency in one or more object-oriented programming languages such as Python, Java, or C++, with hands-on experience building distributed systems.\\nExperience building large-scale machine learning systems using big data technologies such as Spark, SQL, Snowflake, or similar platforms.\\nExperience with ML frameworks such as TensorFlow, PyTorch, or scikit-learn.\\nFamiliarity with MLOps practices including model versioning, CI/CD pipelines, and experiment tracking tools such as MLflow or similar.\\nExperience building and deploying applications using large language models (e.g., GPT-4, Claude, Gemini, or open-source alternatives) via APIs or self-hosted inference.\\nHands-on experience with agentic frameworks such as LangChain, LlamaIndex, or AutoGen to build multi-step, tool-augmented AI workflows.
10 years of related experience building high-throughput, scalable applications or machine learning models in a production environment.\\nSolid understanding of ML fundamentals including supervised/unsupervised learning, model evaluation, and feature engineering.\\nStrong problem-solving skills with the ability to translate ambiguous business problems into well-defined ML solutions.\\nExcellent cross-functional communication skills with the ability to collaborate effectively across engineering and data science teams.\\nFamiliarity with LLM evaluation practices including output quality assessment, hallucination detection, and latency benchmarking in production environments.
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