The successful candidate will:
Bring strong proficiency and understanding of the AWS cloud platform and services, including (but not limited to) AWS SageMaker, AWS Lambda, Amazon S3, Step Functions, EMR, Glue, and other services supporting machine learning platforms.
Demonstrate an excellent understanding of the machine learning development lifecycle, including data engineering, exploratory data analysis, modeling, and ML implementation and operations.
Design and implement scalable machine learning solutions; develop predictive models using advanced deep learning and statistical techniques; collaborate with data science and engineering teams to integrate ML solutions; and perform rigorous model evaluation and optimization.
Be proficient in software development and well-versed in developer tools such as Python, VS Code, and Jupyter Notebooks.
Be passionate about advances in machine learning, with knowledge of supervised learning, reinforcement learning, deep learning, and GenAI.
Demonstrate knowledge of AWS security practices, including IAM, S3 bucket policies, security groups, and VPCs.
Understand best practices for model training, deployment, and operations, including hyperparameter optimization, model evaluation, and operationalizing ML solutions.
Utilize popular Python frameworks such as TensorFlow, PySpark, PyTorch, and Pandas.
Leverage software design patterns to develop modular, maintainable, and scalable code.
Responsibilities:
Participate in end-to-end machine learning projects, from conception through deployment and ongoing support.
Collaborate with data scientists to solve complex machine learning challenges, including supervised learning, reinforcement learning, deep learning, and GenAI.
Work closely with methodology researchers to integrate insights and strategies that improve investor outcomes.
Solve complex problems using multilayered datasets, enhance existing libraries, frameworks, and models, and collaborate with data analysts, data engineers, and architects to identify data distribution differences that affect model performance.
Leverage data pipeline designs and support the development of data pipelines for model development.
Use software tools to build data pipelines in distributed computing environments (e.g., PySpark, Glue ETL).
Support the integration of model pipelines into production environments and develop an understanding of the SDLC for model production.
Review pipeline designs, make data model changes as needed, and document and review design changes with data science teams.
Support data discovery and automated ingestion for model development by analyzing raw data sources for data quality, applying business context, and addressing model development needs.
Engage with internal stakeholders to understand business processes, develop hypotheses, structure requests, and translate requirements into analytic approaches.
Participate in and influence ongoing business planning and departmental prioritization activities.
Run model monitoring scripts, follow alerting processes, and address issues identified through model monitoring.
Participate in special projects and perform other duties as assigned.
Qualifications:
5–7 years of experience in programming with strong coding proficiency.
Proficiency in Python and its ecosystem, including Pandas, TensorFlow, PyTorch, software design patterns, data and model pipelines, data collection and preparation, exploratory data analysis, model evaluation, monitoring, and maintenance.
3–5 years of experience with AWS cloud services, including core services, monitoring and logging, cloud architecture, CloudFormation templates, EC2, S3, Lambda, VPC, IAM, RDS, and CloudWatch.
Undergraduate degree or an equivalent combination of education, training, and experience.
What Sets You Apart: (nice to have)
Experience in other engineering disciplines related to machine learning is a plus.
Minimum of 2–5 years of hands-on experience in machine learning.
Special Factors
Sponsorship
Vanguard is not offering visa sponsorship for this position.About Vanguard
At Vanguard, we don't just have a mission—we're on a mission.
To work for the long-term financial wellbeing of our clients. To lead through product and services that transform our clients' lives. To learn and develop our skills as individuals and as a team. From Malvern to Melbourne, our mission drives us forward and inspires us to be our best.
How We Work
Vanguard has implemented a hybrid working model for the majority of our crew members, designed to capture the benefits of enhanced flexibility while enabling in-person learning, collaboration, and connection. We believe our mission-driven and highly collaborative culture is a critical enabler to support long-term client outcomes and enrich the employee experience.
Skills Required
- 5-7 years of programming experience
- Proficiency in Python and its ecosystem
- 3-5 years of experience with AWS cloud services
- Undergraduate degree or equivalent combination of education and experience
Vanguard Compensation & Benefits Highlights
The following summarizes recurring compensation and benefits themes identified from responses generated by popular LLMs to common candidate questions about Vanguard and has not been reviewed or approved by Vanguard.
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Retirement Support — Retirement support appears unusually strong through a 401(k) design that includes a match plus an additional employer contribution, which can materially lift long-term total rewards. HSA seeding and an enhanced employer match further strengthen the savings-and-benefits value of the package.
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Wellbeing & Lifestyle Benefits — Wellbeing and lifestyle support is reinforced by a sizable annual FlexFund stipend that can be applied across many day-to-day categories such as fitness, childcare, and other personal expenses. On-site or virtual clinics and fitness options add practical health and wellness convenience.
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Affordable Benefits — Healthcare and related benefits are positioned as comparatively affordable via heavily subsidized medical plans and broad coverage options. This affordability can offset moderate base pay for employees who place higher value on out-of-pocket cost reductions.
Vanguard Insights
What We Do
We are a community of 30 million who think – and feel – differently about investing. Together, we’re changing the way the world invests. Since our founding in 1975, helping our investors achieve their goals is our sole reason for existence. With no other parties to answer to and therefore no conflicting loyalties, we make every decision—like keeping investing costs as low as possible—with only your needs in mind. Vanguard is one of the world's largest investment companies, offering a large selection of high-quality low-cost mutual funds, ETFs, advice, and related services. Individual and institutional investors, financial professionals, and plan sponsors can benefit from the size, stability, and experience Vanguard offers. As of April 30, 2019, we managed more than $5.6 trillion in global assets. In addition, we have 189 funds in the United States and 225 funds in global markets. For Commenting Guidelines & Important information, visit here: http://vanguard.com/linkedin Vanguard Marketing Corporation, Distributor.








