Confie
Machine Learning Engineer
Confie, Huntington Beach, California, us, 92615
Work From Home - CA7711 Center AvenueSuite 200Huntington Beach, CA 92647, USA
Generous PTO plans, sick pay and health benefitsAnnual bonus based on employment standing*Work from home and hybrid model employmentCorporate Social Responsibility ProgramDiversity, Equity and Inclusion InitiativesConfie Hub and Discount Programs (Gym Membership)PurposeThe Machine Learning (ML) Engineer is accountable for designing and developing machine learning and deep learning systems. Your responsibilities include data collection, cleansing, and preprocessing, creating machine learning models and retaining systems. With your exceptional skills in statistics, programming, data science and software engineering, we'd like to meet you. Your ultimate goal will be to shape and build efficient self-learning applications and support the foundational Machine Learning infrastructure.You will devise evaluation strategies, build evaluation sets, run benchmarks, ensure quality monitoring is in place, and set the agenda / prioritization for where to focus our quality iterations. You will be empowered to model & prototype solutions and will either get them implemented in production or work with one of our other ML engineers and Applied Scientists to make sure it gets implemented at the highest standard of quality.Develop, deploy, and optimize the inference frameworks.Research, analyze, develop and test machine learning components necessary for business strategies and roadmap.Collaborate with data scientists, software engineers and DevOps to deploy forecasting algorithms into production.Implement monitoring systems to track how models are performing.Work to continuously improve model performance and debug where necessary.Manage the memory and computational footprint of our algorithms.Participate or lead discussions with cross-functional teams to understand and collaborate on highly complex business objectives and influence solution strategies.Incorporate visualization techniques to support the relevant points of the analysis and ease the understanding for less technical audiences.Remain informed on current data and analytics trends (i.e., Cloud, Data Mining, Python, Neural Networks, Sensor data, IoT, Streaming/NRT data).See opportunities to continue to learn in the data and analytics space, whether informal (e.g., Coursera, Udemy, Kaggle, Code Up, etc.) or formal (e.g. Certifications or advanced coursework).Qualifications and Education RequirementsBachelor's degree in a quantitative analytics field such as Statistics, Mathematics, Engineering, Actuarial Sciences, or other quantitative discipline.Experience working with large, dynamic data sets and developing code to ingest, cleanse, and evaluate data.Proficiency with deep learning and machine learning algorithms and familiarity with ML frameworks.Demonstrates advanced skills in mathematical and statistical techniques and approaches used to drive fact-based decision-making.Knowledge and application of data analysis, data visualization, synthesizing information to communicate insights and drive business outcomes.Experience with new and emerging data sets, and incorporation (data wrangling, data munging) into new insights.Preferred SkillsSophisticated knowledge of cloud databases/data warehouses (preferably Snowflake and AWS)Advanced knowledge of programming languages (Python) in ML environment3+ years leveraging data visualization and BI tools (Tableau Preferred)3+ years performing complex data extraction from multiple, large data sources3+ years performing complex data aggregation, cleaning, and quality checkingPreferred experience in Personal Lines Auto InsuranceOther DutiesThis job description is not designed to cover or contain a comprehensive listing of activities, duties, or responsibilities that are required of the employee for this job. Duties, responsibilities, and activities may change at any time with or without notice.
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Generous PTO plans, sick pay and health benefitsAnnual bonus based on employment standing*Work from home and hybrid model employmentCorporate Social Responsibility ProgramDiversity, Equity and Inclusion InitiativesConfie Hub and Discount Programs (Gym Membership)PurposeThe Machine Learning (ML) Engineer is accountable for designing and developing machine learning and deep learning systems. Your responsibilities include data collection, cleansing, and preprocessing, creating machine learning models and retaining systems. With your exceptional skills in statistics, programming, data science and software engineering, we'd like to meet you. Your ultimate goal will be to shape and build efficient self-learning applications and support the foundational Machine Learning infrastructure.You will devise evaluation strategies, build evaluation sets, run benchmarks, ensure quality monitoring is in place, and set the agenda / prioritization for where to focus our quality iterations. You will be empowered to model & prototype solutions and will either get them implemented in production or work with one of our other ML engineers and Applied Scientists to make sure it gets implemented at the highest standard of quality.Develop, deploy, and optimize the inference frameworks.Research, analyze, develop and test machine learning components necessary for business strategies and roadmap.Collaborate with data scientists, software engineers and DevOps to deploy forecasting algorithms into production.Implement monitoring systems to track how models are performing.Work to continuously improve model performance and debug where necessary.Manage the memory and computational footprint of our algorithms.Participate or lead discussions with cross-functional teams to understand and collaborate on highly complex business objectives and influence solution strategies.Incorporate visualization techniques to support the relevant points of the analysis and ease the understanding for less technical audiences.Remain informed on current data and analytics trends (i.e., Cloud, Data Mining, Python, Neural Networks, Sensor data, IoT, Streaming/NRT data).See opportunities to continue to learn in the data and analytics space, whether informal (e.g., Coursera, Udemy, Kaggle, Code Up, etc.) or formal (e.g. Certifications or advanced coursework).Qualifications and Education RequirementsBachelor's degree in a quantitative analytics field such as Statistics, Mathematics, Engineering, Actuarial Sciences, or other quantitative discipline.Experience working with large, dynamic data sets and developing code to ingest, cleanse, and evaluate data.Proficiency with deep learning and machine learning algorithms and familiarity with ML frameworks.Demonstrates advanced skills in mathematical and statistical techniques and approaches used to drive fact-based decision-making.Knowledge and application of data analysis, data visualization, synthesizing information to communicate insights and drive business outcomes.Experience with new and emerging data sets, and incorporation (data wrangling, data munging) into new insights.Preferred SkillsSophisticated knowledge of cloud databases/data warehouses (preferably Snowflake and AWS)Advanced knowledge of programming languages (Python) in ML environment3+ years leveraging data visualization and BI tools (Tableau Preferred)3+ years performing complex data extraction from multiple, large data sources3+ years performing complex data aggregation, cleaning, and quality checkingPreferred experience in Personal Lines Auto InsuranceOther DutiesThis job description is not designed to cover or contain a comprehensive listing of activities, duties, or responsibilities that are required of the employee for this job. Duties, responsibilities, and activities may change at any time with or without notice.
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