Applied Machine Learning Scientist I (Traditional AI)

TD BankNew York, NY
2d$76,290 - $125,260

About The Position

The Applied Machine Learning Scientist I is responsible for providing technical expertise on advance analytics and machine learning across a broad range of analytics functions including data and modelling frameworks, tools, technology, processes and procedures. This role has a contributing role in the development of AI/ML systems and provides actionable insights to solve business problems.

Requirements

  • Undergraduate degree required, advanced technical degree preferred (e.g., math, physics, engineering, finance or computer science)
  • Sound knowledge in a given AI/ML area and of various AI/ML frameworks, tools, processes and procedures, as well as organization issues, best practices and business/organization standards
  • Sound knowledge of applications, systems, innovation, design activities, best practices, business/organization standards
  • Solves complex problems, takes new perspectives on existing solutions
  • Independently performs tasks from end-to-end to deliver quality results and meet timelines
  • May work under guidance of more senior roles

Nice To Haves

  • Experience in predictive modelling using various ML/AI techniques, with a particular focus on tree-based models such as XGBoost.
  • Formal training or substantive experience in a quantitative field such as Computer Science, Statistics, Mathematics, or relevant fields.
  • In-depth knowledge of ML/AI algorithms and techniques, such as Gradient Boosting Method, NLP, modern deep Neural Networks, and time series forecasting.
  • Full stack experience in data science product delivery, including data collection, aggregation, analysis, and visualization, development and testing, implementation, and monitoring.
  • Proficiency in Python, PySpark, PyTorch, and SQL programming languages as well as object-oriented programming.
  • Familiarity with version control software or platform such as Git, Bitbucket or Github.
  • Strong analytical and problem-solving skills are required to interpret data and draw conclusions.
  • Ability to work independently and collaboratively in a fast-paced, dynamic environment.
  • Excellent written and verbal communications skills.
  • Good time management and project management skills with minimal supervision.
  • Experience with distributed computing and parallel processing on large data sets using Spark.
  • Ability to research and implement Machine Learning algorithms from academic research papers.

Responsibilities

  • Develop robust and reliable solutions leveraging advanced techniques, such as advanced statistics, machine learning and AI, NLP, geospatial analytics, storytelling & visualization, helping to solve strategic business challenges and enable insightful actions.
  • Leverage a broad stack of technologies and platforms and packages— Python, Azure DataBricks, PySpark, PyTorch, and more — to reveal the insights hidden within huge volumes of numeric and textual data.
  • Work closely with various stakeholders, to successfully move the project through all phases of the model lifecycle, from ideation and design through data gathering, training, evaluation, control and governance partners review and approval process, implementation, and ongoing monitoring and maintenance, with minimal supervision.
  • Effectively communicate model design and results to senior leaders and business partners, articulate the business problems from a technical/quantitative definition and facilitate key strategic discussions and provide thought leadership.
  • Provide expertise on mathematical concepts for the broader analytics team and inspire the adoption of advanced analytics and machine learning across the organization.
  • Maintain full professional knowledge of techniques and developments in the field of Machine Learning and AI, and share knowledge with peers, business partners, and senior management.
  • Maintain relationship with the team's strategic partners, such as business teams, AI2, and governance and control partners.

Benefits

  • Total Rewards at TD includes base salary and variable compensation/incentive awards (e.g., eligibility for cash and/or equity incentive awards, generally through participation in an incentive plan) and several other key plans such as health and well-being benefits, savings and retirement programs, paid time off (including Vacation PTO, Flex PTO, and Holiday PTO), banking benefits and discounts, career development, and reward and recognition.
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