Overview
Intuit is looking for innovative and hands-on Staff Data Scientist to join the Intuit AI team.
Come join our collaborative and creative group of data scientists and machine learning engineers and build models that directly affect hundreds of thousands of our customers. In this role you will be building and deploying machine learning models using both analytical algorithms and deep learning approaches.
What you'll bring
4+ years of industry experience with data scienceBS, MS or PhD in Statistics, Mathematics, Computer Science, Economics, Operations Research, or equivalent4+ years of hands-on expertise in ML paradigms such as Causal-ML, supervised/unsupervised, Online, Bayesian, Reinforcement or Deep Learning.Proficient in multiple optimization paradigms such as combinatorial optimization, gradient methods, or Bayesian optimization.Proficient in NLP techniques, Explainable AI, and ML frameworks. Expertise in modern advanced analytical tools and programming languages such as Python, Scala, Java and/or R.Efficient in SQL, Hive, SparkSQL, etc.Comfortable working in a Linux environmentExperience with building end-to-end reusable pipelines from data acquisition to model output deliveryQuick learner, adaptable, with the ability to work independently in a fast-paced environmentStrong oral and written communication skills. Ability to conduct meetings and make professional presentations, and to explain complex concepts and technical material to non-technical users
How you will lead
Practices leadership and communication skills to influence teams and to evangelize data science across the organizationCollaborates with stakeholders to define success criteria and align model metrics with business goals. Works side-by-side with product managers, software engineers, and designers in designing experiments and minimum viable productsLeads technical work of a scrum team: initiating and designing model solutions, driving end-to-end architecture designs of the team's work, and holding the team accountable for high quality code, git, design, costs and implementation standardsPerforms hands-on data analysis and modeling with large data sets, including discovering data sources, getting data access, cleaning up data, and making them "model-ready". You need to be willing and able to do your own ETL and design/build featurization. Applies data mining, NLP, and machine learning (such as supervised/unsupervised, Causal-ML, Online Learning, Bayesian Learning, Reinforcement Learning, or Deep Learning) to real-world problems and datasets. Runs A/B tests to draw conclusions on the impact of your team's work and communicates results to peers and leadersCommunicates with partners to ensure successful delivery and integration of DS solutions. Proactively researches, explores, and enables new ML technologies. Keeps up with the new developments in academia and industry and considers possible extensions to solve Intuit customer problems.