TD Bank

Sr. Full Stack Data Science Engineer

TD Bank$154K — $199K *
Enterprise Technology
5 - 7 years of experience
Job Overview by Ladders

Qualifications

  • Strong business acumen with the ability to interpret complex problems in financial services.
  • Proven experience in applied analytics, creatively exploring data to derive insights.
  • Familiarity with the ML/AI lifecycle, including model adjustment and interpretation.
  • Solid cloud experience with Azure or AWS and associated AI/ML services.
  • Proficient in creating effective data visualizations tailored to various audiences.
  • Experience in handling structured and unstructured data for data quality assurance.
  • Skilled with Python, PySpark, SQL, Power BI, and Databricks.

Responsibilities

  • Lead performance diagnostics across customer and product dimensions to identify opportunities.
  • Transform data into actionable insights through analytical validation and storytelling.
  • Design and implement scalable analytics assets like dashboards and predictive models.
  • Evaluate AI/ML tools to address complex business challenges.
  • Create compelling visualizations for both technical and non-technical stakeholders.
  • Collaborate with business leaders to promote advanced analytics and AI adoption.
  • Mentor and provide guidance on advanced analytics methodologies.

Benefits

  • Comprehensive health and well-being benefits.
  • Savings and retirement programs to support financial security.
  • Generous paid time off for work-life balance.
  • Discounts on banking services and products.
  • Ongoing career development and training opportunities.
  • Recognition programs to celebrate achievements.
Full Job Description

Work Location:

Toronto, Ontario, Canada

Hours:

37.5

Line of Business:

Analytics, Insights, & Artificial Intelligence

Pay Details:

$154,000 - $199,500 CAD

The pay details posted reflect a temporary market premium specific to this role that is reassessed annually.

TD is committed to providing fair and equitable compensation opportunities to all colleagues. Growth opportunities and skill development are defining features of the colleague experience at TD. Our compensation policies and practices have been designed to allow colleagues to progress through the salary range over time as they progress in their role. The base pay actually offered may vary based upon the candidate's skills and experience, job-related knowledge, geographic location, and other specific business and organizational needs.

As a candidate, you are encouraged to ask compensation related questions and have an open dialogue with your recruiter who can provide you more specific details for this role.

Job Description:

Department Overview

Join a high-impact analytics team that shapes business decisions through data, insights, and AI/ML. Collaborate with business leaders and cross-functional teams to uncover opportunities, build scalable analytics solutions, and translate complex analysis into actionable insights.

Key Responsibilities

  • Lead end-to-end performance diagnostics across customer, product, and advisor dimensions to identify growth, efficiency, and primacy opportunities.
  • Translate curated data into actionable insights through hypothesis development, testing, analysis, and stakeholder storytelling.
  • Design and deliver scalable analytics assets, including datasets, dashboards, segmentation frameworks, and predictive AI/ML models.
  • Investigate, evaluate, and implement AI/ML tools and algorithms to solve complex business problems.
  • Develop compelling visualizations and data stories tailored to technical and non-technical audiences.
  • Partner with business owners to drive advanced analytics and AI/ML adoption.
  • Lead cross-functional collaboration with data scientists, engineers, IT partners, and business process owners.
  • Provide subject-matter expertise, mentorship, and guidance on advanced analytics and AI/ML methodologies.
  • Identify emerging analytical trends and data needs to improve repeatable and scalable solutions.

Required Qualifications & Skills

  • Business Acumen: Strong ability to frame and structure complex business problems in financial services / retail banking, connect analytical insights to commercial levers (growth, efficiency, customer and advisor outcomes), and translate findings into clear, actionable recommendations. Demonstrated comfort engaging with senior executives and C‑suite stakeholders, influencing decisions through concise, insight‑driven storytelling.
  • Applied Analytics Expertise: Demonstrated ability to creatively explore data, identify non‑obvious patterns, and rigorously test hypotheses to solve complex business problems. Brings an entrepreneurial mindset to analytics by proactively identifying opportunities, challenging assumptions, and delivering high‑impact insights that drive informed decision‑making.
  • ML/AI Lifecycle Familiarity: Experience working with existing ML/AI models (adjusting inputs, interpreting outputs) and building or modifying models as needed. Solid knowledge of applied Machine Learning, Deep Learning, Large Language Models
  • Solid cloud experience with Azure or AWS and cloud AI/ML services such as Databricks, Kubernetes, docker and container orchestration, Azure Machine Learning, Azure Data Factory
  • Visualization & Communication: Proficient in creating clear, compelling dashboards, visualizations, and data stories tailored to diverse audiences, including senior executives and C‑suite leaders, translating complex analysis into concise, decision‑ready narratives.
  • Data Stewardship: Confident working with structured and unstructured data from multiple sources, ensuring data usability, cleanliness, and reliability. Able to build or modify data pipelines or analytical assets.
  • Core Analytical Tools: Proficient in Python, PySpark, SQL, Power BI, and Databricks (or similar platforms) for data preparation, analysis, and collaboration.
  • Strong experience with PySpark for big data processing and PyTorch for deep learning model serving.
  • Non-Technical Skills: Strong relationship management, storytelling, and business communication skills for senior audiences.

Education & Experience

  • A graduate or undergraduate degree in a quantitative or analytics-focused discipline (e.g., Business Analytics, Data Science, Statistics, Mathematics, Engineering, Computer Science, Finance, Actuarial Science).
  • 7 years of relevant experience in advanced analytics, data science, or applied AI/ML in domains such as financial services, technology, consulting, or similar industries
  • Data Manipulation: SQL, PySpark, Python
  • AI & ML: Predictive Analytics, Natural Language Processing (NLP), Supervised and Unsupervised Learning, leveraging Generative AI tools and APIs, Model Development and Deployment, Experimentation and Optimization including emerging capabilities and their application in analytical workflows.
  • Data Visualization: Power BI, Tableau
  • Cloud & Big Data Platforms: Azure (ADF, Synapse, Databricks), Snowflake
  • Data Engineering: ETL/ELT Pipelines, Apache Spark

Nice-to-Have

  • Experience in customer analytics within financial services (e.g., engagement, onboarding, cross-sell, retention, productivity insights).
  • Expertise in optimizing analytical assets (data pipelines, models, dashboards) to drive measurable business impact.
  • Bilingual proficiency (English/French).

Aperçu du département

Joignez-vous à une équipe d’analytique stratégique qui soutient la prise de décision d’affaires grâce à des analyses rigoureuses, aux données et aux capacités d’intelligence artificielle et d’apprentissage automatique (IA/AA). En partenariat étroit avec les leaders d’affaires et les équipes transversales, vous contribuerez à identifier des occasions à forte valeur ajoutée, à développer des solutions analytiques durables et à transformer des analyses complexes en recommandations claires, concrètes et responsables.

Responsabilités principales
  • Diriger des analyses de performance de bout en bout couvrant les dimensions clients, produits et conseillers, afin d’identifier des occasions d’amélioration liées à la croissance, à l’efficacité opérationnelle et à la relation client.
  • Convertir les données en informations exploitables par l’élaboration d’hypothèses, leur validation analytique et la communication structurée des constats aux parties prenantes.
  • Concevoir, développer et maintenir des actifs analytiques évolutifs, incluant des ensembles de données, des tableaux de bord, des cadres de segmentation et des modèles prédictifs en IA/AA.
  • Évaluer et mettre en œuvre des outils, techniques et algorithmes d’IA/AA afin de répondre à des enjeux d’affaires complexes, dans le respect des cadres de gouvernance et de gestion des risques.
  • Produire des visualisations et des récits de données clairs et percutants, adaptés à des publics techniques et non techniques.
  • Travailler en étroite collaboration avec les partenaires d’affaires afin de favoriser l’adoption de l’analytique avancée et de l’IA/AA à l’échelle de l’organisation.
  • Assurer une collaboration efficace avec les équipes de science des données, d’ingénierie, des TI et les responsables des processus d’affaires.
  • Agir comme expert-conseil, en offrant du mentorat et de l’accompagnement sur les méthodologies avancées en analytique et en IA/AA.
  • Surveiller les tendances émergentes en analytique et les besoins en données afin d’améliorer la réutilisabilité, la robustesse et l’évolutivité des solutions.
Qualifications et compétences requises

Sens des affaires et communication exécutive

  • Capacité démontrée à structurer et à résoudre des problématiques complexes dans les services financiers et les services bancaires de détail.
  • Aptitude à relier les résultats analytiques aux leviers d’affaires (croissance, efficacité, expérience client et performance des conseillers) et à formuler des recommandations claires et orientées vers l’action.
  • Aisance à interagir avec des cadres supérieurs et la haute direction, en influençant les décisions grâce à une communication concise, factuelle et axée sur les insights.

Expertise en analytique appliquée

  • Solide expérience en exploration de données, en identification de tendances non évidentes et en validation rigoureuse d’hypothèses afin de soutenir des décisions d’affaires éclairées.
  • Approche proactive et structurée, axée sur l’amélioration continue et la création de valeur mesurable.

IA et apprentissage automatique

  • Expérience avec des modèles existants d’IA/AA (ajustement des paramètres, interprétation des résultats) ainsi qu’avec la conception ou l’évolution de modèles, au besoin.
  • Bonne connaissance de l’apprentissage automatique appliqué, de l’apprentissage profond et des grands modèles de langage (LLM).

Infonuagique et plateformes analytiques

  • Expérience avec des environnements infonuagiques tels qu’Azure ou AWS et avec des services d’IA/AA incluant Databricks, Kubernetes, Docker, Azure Machine Learning et Azure Data Factory.

Visualisation et narration des données

  • Capacité à concevoir des tableaux de bord et des visualisations clairs, cohérents et adaptés à divers niveaux de public, incluant la haute direction, en mettant l’accent sur la prise de décision.

Gestion et qualité des données

  • Aisance à travailler avec des données structurées et non structurées provenant de sources multiples, en assurant leur qualité, leur fiabilité et leur conformité aux normes internes.
  • Capacité à concevoir ou à améliorer des pipelines de données et des actifs analytiques.

Outils analytiques

  • Maîtrise de Python, PySpark, SQL, Power BI et Databricks (ou outils comparables).
  • Expérience confirmée avec PySpark pour le traitement de données volumineuses et PyTorch pour le déploiement de modèles d’apprentissage profond.

Compétences interpersonnelles

  • Excellentes habiletés en collaboration, en gestion des relations et en communication d’affaires auprès de partenaires et de dirigeants.
Formation et expérience
  • Diplôme universitaire (baccalauréat ou maîtrise) dans un domaine quantitatif ou analytique (analytique d’affaires, science des données, statistique, mathématiques, génie, informatique, finance, actuariat).
  • 7 années d’expérience pertinente en analytique avancée, science des données ou IA/AA appliquée, idéalement dans les services financiers, la technologie ou le conseil.

Compétences techniques clés

  • Manipulation des données : SQL, PySpark, Python
  • IA et AA : analytique prédictive, traitement du langage naturel (NLP), apprentissage supervisé et non supervisé, IA générative, développement et déploiement de modèles, expérimentation et optimisation
  • Visualisation : Power BI, Tableau
  • Infonuagique et données massives : Azure (ADF, Synapse, Databricks), Snowflake
  • Ingénierie des données : pipelines ETL/ELT, Apache Spark
Atouts
  • Expérience en analytique client dans un contexte de services financiers (engagement, intégration, ventes croisées, rétention, productivité).
  • Capacité démontrée à optimiser des actifs analytiques afin de générer des résultats d’affaires mesurables.
  • Bilinguisme (français et anglais).

Our Total Rewards Package
Our Total Rewards package reflects the investments we make in our colleagues to help them and their families achieve their financial, physical, and mental well-being goals. Total Rewards at TD includes a base salary, variable compensation, and several other key plans such as health and well-being benefits, savings and retirement programs, paid time off, banking benefits and discounts, career development, and reward and recognition programs.

Additional Information:
We’re delighted that you’re considering building a career with TD. Through regular development conversations, training programs, and a competitive benefits plan, we’re committed to providing the support our colleagues need to thrive both at work and at home.

About TD Bank

TD Securities offers a range of advisory and capital market services to its clients. The company's range of services includes research, investment banking, capital markets, and global transaction banking. Research consists of commodity and equity research. Investment banking consists of mergers, acquisitions, industry expertise, and credit origination. Global transaction banking consists of trade finance, cash management, and correspondent banking. TD Securities was founded in 1855 and is based in Ontario.

TD Bank Careers

Join the vibrant team at TD Bank, one of North America's leading financial services organizations, where innovation, leadership, and growth go hand in hand. At TD Bank, we are committed to fostering a culture of diversity and inclusion, making it an ideal place for ambitious professionals to thrive. Work You’ll Do At TD Bank, your professional journey is bolstered by a robust support system. From your first interview to every career milestone, you will find opportunities for growth and leadership. Our team is dedicated to helping you develop the skills necessary for success in the ever-evolving financial sector. TD Bank offers a variety of job opportunities across multiple fields, from customer service to investment banking. Each position at TD Bank is a chance to contribute to our culture of innovation and exceptional client service. Internship Programs Kickstart your career with a TD Bank internship. Our programs provide invaluable industry exposure and hands-on experience, making them a perfect starting point for students and recent graduates eager to make their mark in the banking industry. Interns at TD Bank enjoy the unique opportunity to work alongside seasoned professionals, gaining insights that are crucial for future employment. Benefits and Growth TD Bank is deeply committed to the well-being and continuous growth of our team members. We offer competitive benefits packages that cover health, finance, and family care. Our employees enjoy comprehensive health insurance, retirement plans, and generous paid time off, among other perks. Moreover, TD Bank encourages professional development through various training programs, including leadership development and diversity training. These initiatives ensure that our team remains at the forefront of industry standards and best practices. Join Our Team Explore the numerous career paths available at TD Bank and discover how your skills and interests align with our mission. We are actively hiring and continually looking for talented individuals who are passionate about banking and customer service. Networking and Professional Development At TD Bank, we believe in the power of networking and collaboration. Our employees have access to a wide range of networking events, workshops, and seminars that promote career development and professional growth. These platforms not only enhance your professional skills but also expand your industry connections. Stay Connected Keep up to date with the latest at TD Bank Careers by subscribing to our job alert emails. Tailor your subscription to match your career preferences and get the latest news, insider tips, and job opportunities delivered straight to your inbox. Explore job opportunities at TD Bank and be part of a team that values hard work, creativity, and a diverse workplace culture. Your next great career move is just a click away. SEARCH TD BANK JOBS Join us at TD Bank and let your ambition lead you to a rewarding career filled with opportunities to learn, grow, and innovate.
Learn more about TD Bank
Size
90,000 employees
Market Cap
$117.9 billion
Industry
Net Income
-$6.9 million
5 Year Trend
+6.6%

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