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Senior Software Engineer - Python APIs

ExperiencedVisa sponsorship available
Fidelity Investments logo

at Fidelity Investments

Asset Management

Posted 15 days ago

No clicks

**Senior Software Engineer - Python APIs** Design, build, and operate production-grade Python APIs for Fidelity's Enterprise AI/ML Platform. Leverage your 5+ years of Python experience to architect robust web services, libraries, and automation that support model training, evaluation, deployment, and lifecycle management. Work extensively with AWS services, manage ML-enabled systems, and collaborate cross-functionally to scale AI/ML platforms and integrations. Expertise in containerization, CI/CD, and infrastructure-as-code is a plus.

Compensation
$97,000 – $185,000 USD

Currency: $ (USD)

City
Not specified
Country
Not specified

Full Job Description

Job Description:

Note: Fidelity will not provide immigration sponsorship for this position.

Senior Software Engineer - Python APIs

The Role

As a Senior Software Engineer on the Enterprise AI/ML Platform team, you will design, build, and operate production-grade software systems that enable machine learning at scale across the organization. You will focus on developing robust web services, libraries, and automation that support model training, evaluation, deployment, and lifecycle management in highly regulated, high-availability environments. This role is ideal for engineers who enjoy working on distributed systems, developer platforms, and infrastructure-heavy codebases, and who have applied software engineering best practices to systems that support AI/ML workloads.

The Expertise and Skills You Bring

  • Bachelors or Masters degree in a technology-focused discipline such as Computer Science, Software Engineering, or a closely related field.
  • Strong software engineering experience in Python, with a proven ability to design, implement, test, and maintain production-quality libraries, services, and internal platforms. Comfortable applying object-oriented and functional programming principles in Linux-based environments; scripting and automation experience required.
  • Possess 5 years of professional experience developing Python-based cloud applications or internal platforms, with demonstrated ownership of non-trivial systems in production.
  • Familiarity with Java or Groovy is a plus.
  • Familiarity with LiteLLM or GenAI Gateways is a plus.
  • Experience building and operating cloud-native systems on AWS, including services such as S3, Lambda, Batch, Step Functions, EventBridge, CloudWatch, and SNS/SQS. Experience supporting managed ML services (e.g., SageMaker or equivalent) as part of a broader platform. Exposure to Azure or GCP is beneficial but not required.
  • Strong DevOps and CI/CD experience, including automated build, test, and deployment pipelines using tools such as Jenkins and Git-based workflows. Hands-on experience with containerization (Docker) and deploying containerized workloads in scalable environments.
  • Infrastructure-as-Code expertise is a plus, using tools such as AWS CloudFormation and Terraform/OpenTofu to provision, manage, and evolve cloud infrastructure in a repeatable and auditable manner.
  • Hands-on experience supporting ML-enabled systems in production, including model packaging, deployment, inference workflows, monitoring, and operational measurement. Emphasis on system reliability, observability, and maintainability, rather than model experimentation or research.
  • Familiarity with applied machine learning concepts and data workflows, including feature pipelines and working with structured, semi-structured, and unstructured data, sufficient to design and support scalable ML platforms and integrations.
  • Strong understanding of scalable and distributed system design, with experience building or operating systems that handle high-throughput workloads, asynchronous processing, and fault tolerance using open-source technologies.
  • Proven experience supporting business-critical applications, including troubleshooting production issues, performing root cause analysis, and driving improvements to system stability and performance.
  • Excellent communication and collaboration skills, with the ability to clearly document systems, communicate technical tradeoffs, and work effectively across engineering, data, and business teams.
  • Ability to operate effectively in ambiguous, fast-paced environments, adapting to evolving business priorities and technology changes within a broader AI and data ecosystem.
  • Partner with Data Scientists to package, scale, and operationalize models, providing the platforms and tooling required to move from experimentation to reliable production use.
  • Collaborate with application and platform engineers to integrate ML capabilities with enterprise gateways and services, enabling secure and scalable access to both traditional and generative models.
  • Operationalize ML-enabled systems at enterprise scale, designing and supporting services capable of serving predictions to tens of millions of customers with high reliability and performance.
  • Build platform tooling for model and data observability, including detection of data and feature drift, monitoring prediction quality and uncertainty, and automating diagnostics and explainability workflows.
  • Continuously evaluate and adopt emerging technologies, applying sound engineering judgment to simplify the data and ML ecosystem while improving developer experience and operational stability.
  • Drive innovation through pragmatic, forward-looking solutions, balancing future capabilities with production readiness and long-term maintainability.
  • Improve team agility and productivity by introducing reusable frameworks, automation, and clear abstractions that reduce friction for downstream consumers.
  • Resolve technical roadblocks and mitigate platform risks, proactively addressing scalability, reliability, and integration challenges.
  • Increase delivery velocity and system reliability through automation, including the design and maintenance of robust CI/CD pipelines and operational workflows.

The Team

The Enterprise Data Science Platform, part of the Fidelity Data Architecture team within the Enterprise Technology business unit, is responsible for delivering scalable AI/ML capabilities across the organization. The team designs and builds advanced cloud-based, open-source, software platforms in close collaboration with Data Scientists, enabling the efficient packaging, deployment, and operation of AI/ML models at production scale.

In addition, the platform develops and maintains enterprise-grade gateways that allow teams across the company to securely discover, access, and consume AI/ML models. These gateways provide critical visibility into model usage and costs, while generating insights into model effectiveness, adoption patterns, and opportunities for continuous improvement.

The base salary range for this position is $97,000-185,000 USD per year.

Placement in the range will vary based on job responsibilities and scope, geographic location, candidates relevant experience, and other factors.

Base salary is only part of the total compensation package. Depending on the position and eligibility requirements, the offer package may also include bonus or other variable compensation.

We offer a wide range of benefits to meet your evolving needs and help you live your best life at work and at home. These benefits include comprehensive health care coverage and emotional well-being support, market-leading retirement, generous paid time off and parental leave, charitable giving employee match program, and educational assistance including student loan repayment, tuition reimbursement, and learning resources to develop your career. Note, the application window closes when the position is filled or unposted.

Please be advised that Fidelitys business is governed by the provisions of the Securities Exchange Act of 1934, the Investment Advisers Act of 1940, the Investment Company Act of 1940, ERISA, numerous state laws governing securities, investment and retirement-related financial activities and the rules and regulations of numerous self-regulatory organizations, including FINRA, among others. Those laws and regulations may restrict Fidelity from hiring and/or associating with individuals with certain Criminal Histories.

Most roles at Fidelity are Hybrid, requiring associates to work onsite every other week (all business days, M-F) in a Fidelity office. This does not apply to Remote or fully Onsite roles. Please consult with your recruiter for the specific expectations for this position.

Certifications:

Category:

Information Technology

Apply

All fields are required.

Benefits that balance life and work

From our fully paid parent leave to our on-site health and wellness centers, our benefits support the belief that more balance you have, the better you can achieve your goals.

Benefits

Company overview

Company overview 

At Fidelity, we are passionate about making our financial expertise broadly accessible and effective in helping people live the lives they want. We are a privately held company that places a high degree of value in creating and nurturing a work environment that attracts the best talent and reflects our commitment to our associates. We are proud of our diverse and inclusive workplace where we respect and value our associates for their unique perspectives and experience. 

Reasonable accommodations

Fidelity will reasonably accommodate applicants with disabilities who need adjustments to participate in the application or interview process. To initiate a request for an accommodation contact the HR Accommodation Team by sending an email to accommodations@fmr.com, or by calling 800-835-5099, prompt 2, option 3.

Equal opportunity employer

Fidelity Investments is an equal opportunity employer. We believe that the most effective way to attract, develop, and retain a diverse workforce is to build an enduring culture of inclusion and belonging.

Hybrid work schedule 

Fidelitys hybrid working model blends the best of both onsite and offsite work experiences. Working onsite is important for our business strategy and our culture. We also value the benefits that working offsite offers associates. Most hybrid roles require associates to work onsite all business days of every other week in a Fidelity office.

Applicant screening

At Fidelity, we value honesty, integrity, and the safety of our associates and customers within a heavily regulated industry. Certain roles may require candidates to go through a preliminary credit check during the screening process. Candidates who are presented with a Fidelity offer will need to go through a background investigation and may be asked to provide additional documentation as requested. This investigation includes but is not limited to a criminal, civil litigations and regulatory review, employment, education, and credit review (role dependent). These investigations will account for 7 years or more of history, depending on the role. Where permitted by federal or state law, Fidelity will also conduct a pre-employment drug screen, which will review for the following substances: Amphetamines, THC (marijuana), cocaine, opiates, phencyclidine.

AI Guidelines

Learn about our guidelines for use of AI when applying for a Fidelity job

Return to job search

Senior Software Engineer - Python APIs

Compensation

$97,000 – $185,000 USD

City: Not specified

Country: Not specified

Fidelity Investments logo
Asset Management

15 days ago

No clicks

at Fidelity Investments

ExperiencedVisa sponsorship available

**Senior Software Engineer - Python APIs** Design, build, and operate production-grade Python APIs for Fidelity's Enterprise AI/ML Platform. Leverage your 5+ years of Python experience to architect robust web services, libraries, and automation that support model training, evaluation, deployment, and lifecycle management. Work extensively with AWS services, manage ML-enabled systems, and collaborate cross-functionally to scale AI/ML platforms and integrations. Expertise in containerization, CI/CD, and infrastructure-as-code is a plus.

Full Job Description

Job Description:

Note: Fidelity will not provide immigration sponsorship for this position.

Senior Software Engineer - Python APIs

The Role

As a Senior Software Engineer on the Enterprise AI/ML Platform team, you will design, build, and operate production-grade software systems that enable machine learning at scale across the organization. You will focus on developing robust web services, libraries, and automation that support model training, evaluation, deployment, and lifecycle management in highly regulated, high-availability environments. This role is ideal for engineers who enjoy working on distributed systems, developer platforms, and infrastructure-heavy codebases, and who have applied software engineering best practices to systems that support AI/ML workloads.

The Expertise and Skills You Bring

  • Bachelors or Masters degree in a technology-focused discipline such as Computer Science, Software Engineering, or a closely related field.
  • Strong software engineering experience in Python, with a proven ability to design, implement, test, and maintain production-quality libraries, services, and internal platforms. Comfortable applying object-oriented and functional programming principles in Linux-based environments; scripting and automation experience required.
  • Possess 5 years of professional experience developing Python-based cloud applications or internal platforms, with demonstrated ownership of non-trivial systems in production.
  • Familiarity with Java or Groovy is a plus.
  • Familiarity with LiteLLM or GenAI Gateways is a plus.
  • Experience building and operating cloud-native systems on AWS, including services such as S3, Lambda, Batch, Step Functions, EventBridge, CloudWatch, and SNS/SQS. Experience supporting managed ML services (e.g., SageMaker or equivalent) as part of a broader platform. Exposure to Azure or GCP is beneficial but not required.
  • Strong DevOps and CI/CD experience, including automated build, test, and deployment pipelines using tools such as Jenkins and Git-based workflows. Hands-on experience with containerization (Docker) and deploying containerized workloads in scalable environments.
  • Infrastructure-as-Code expertise is a plus, using tools such as AWS CloudFormation and Terraform/OpenTofu to provision, manage, and evolve cloud infrastructure in a repeatable and auditable manner.
  • Hands-on experience supporting ML-enabled systems in production, including model packaging, deployment, inference workflows, monitoring, and operational measurement. Emphasis on system reliability, observability, and maintainability, rather than model experimentation or research.
  • Familiarity with applied machine learning concepts and data workflows, including feature pipelines and working with structured, semi-structured, and unstructured data, sufficient to design and support scalable ML platforms and integrations.
  • Strong understanding of scalable and distributed system design, with experience building or operating systems that handle high-throughput workloads, asynchronous processing, and fault tolerance using open-source technologies.
  • Proven experience supporting business-critical applications, including troubleshooting production issues, performing root cause analysis, and driving improvements to system stability and performance.
  • Excellent communication and collaboration skills, with the ability to clearly document systems, communicate technical tradeoffs, and work effectively across engineering, data, and business teams.
  • Ability to operate effectively in ambiguous, fast-paced environments, adapting to evolving business priorities and technology changes within a broader AI and data ecosystem.
  • Partner with Data Scientists to package, scale, and operationalize models, providing the platforms and tooling required to move from experimentation to reliable production use.
  • Collaborate with application and platform engineers to integrate ML capabilities with enterprise gateways and services, enabling secure and scalable access to both traditional and generative models.
  • Operationalize ML-enabled systems at enterprise scale, designing and supporting services capable of serving predictions to tens of millions of customers with high reliability and performance.
  • Build platform tooling for model and data observability, including detection of data and feature drift, monitoring prediction quality and uncertainty, and automating diagnostics and explainability workflows.
  • Continuously evaluate and adopt emerging technologies, applying sound engineering judgment to simplify the data and ML ecosystem while improving developer experience and operational stability.
  • Drive innovation through pragmatic, forward-looking solutions, balancing future capabilities with production readiness and long-term maintainability.
  • Improve team agility and productivity by introducing reusable frameworks, automation, and clear abstractions that reduce friction for downstream consumers.
  • Resolve technical roadblocks and mitigate platform risks, proactively addressing scalability, reliability, and integration challenges.
  • Increase delivery velocity and system reliability through automation, including the design and maintenance of robust CI/CD pipelines and operational workflows.

The Team

The Enterprise Data Science Platform, part of the Fidelity Data Architecture team within the Enterprise Technology business unit, is responsible for delivering scalable AI/ML capabilities across the organization. The team designs and builds advanced cloud-based, open-source, software platforms in close collaboration with Data Scientists, enabling the efficient packaging, deployment, and operation of AI/ML models at production scale.

In addition, the platform develops and maintains enterprise-grade gateways that allow teams across the company to securely discover, access, and consume AI/ML models. These gateways provide critical visibility into model usage and costs, while generating insights into model effectiveness, adoption patterns, and opportunities for continuous improvement.

The base salary range for this position is $97,000-185,000 USD per year.

Placement in the range will vary based on job responsibilities and scope, geographic location, candidates relevant experience, and other factors.

Base salary is only part of the total compensation package. Depending on the position and eligibility requirements, the offer package may also include bonus or other variable compensation.

We offer a wide range of benefits to meet your evolving needs and help you live your best life at work and at home. These benefits include comprehensive health care coverage and emotional well-being support, market-leading retirement, generous paid time off and parental leave, charitable giving employee match program, and educational assistance including student loan repayment, tuition reimbursement, and learning resources to develop your career. Note, the application window closes when the position is filled or unposted.

Please be advised that Fidelitys business is governed by the provisions of the Securities Exchange Act of 1934, the Investment Advisers Act of 1940, the Investment Company Act of 1940, ERISA, numerous state laws governing securities, investment and retirement-related financial activities and the rules and regulations of numerous self-regulatory organizations, including FINRA, among others. Those laws and regulations may restrict Fidelity from hiring and/or associating with individuals with certain Criminal Histories.

Most roles at Fidelity are Hybrid, requiring associates to work onsite every other week (all business days, M-F) in a Fidelity office. This does not apply to Remote or fully Onsite roles. Please consult with your recruiter for the specific expectations for this position.

Certifications:

Category:

Information Technology

Apply

All fields are required.

Benefits that balance life and work

From our fully paid parent leave to our on-site health and wellness centers, our benefits support the belief that more balance you have, the better you can achieve your goals.

Benefits

Company overview

Company overview 

At Fidelity, we are passionate about making our financial expertise broadly accessible and effective in helping people live the lives they want. We are a privately held company that places a high degree of value in creating and nurturing a work environment that attracts the best talent and reflects our commitment to our associates. We are proud of our diverse and inclusive workplace where we respect and value our associates for their unique perspectives and experience. 

Reasonable accommodations

Fidelity will reasonably accommodate applicants with disabilities who need adjustments to participate in the application or interview process. To initiate a request for an accommodation contact the HR Accommodation Team by sending an email to accommodations@fmr.com, or by calling 800-835-5099, prompt 2, option 3.

Equal opportunity employer

Fidelity Investments is an equal opportunity employer. We believe that the most effective way to attract, develop, and retain a diverse workforce is to build an enduring culture of inclusion and belonging.

Hybrid work schedule 

Fidelitys hybrid working model blends the best of both onsite and offsite work experiences. Working onsite is important for our business strategy and our culture. We also value the benefits that working offsite offers associates. Most hybrid roles require associates to work onsite all business days of every other week in a Fidelity office.

Applicant screening

At Fidelity, we value honesty, integrity, and the safety of our associates and customers within a heavily regulated industry. Certain roles may require candidates to go through a preliminary credit check during the screening process. Candidates who are presented with a Fidelity offer will need to go through a background investigation and may be asked to provide additional documentation as requested. This investigation includes but is not limited to a criminal, civil litigations and regulatory review, employment, education, and credit review (role dependent). These investigations will account for 7 years or more of history, depending on the role. Where permitted by federal or state law, Fidelity will also conduct a pre-employment drug screen, which will review for the following substances: Amphetamines, THC (marijuana), cocaine, opiates, phencyclidine.

AI Guidelines

Learn about our guidelines for use of AI when applying for a Fidelity job

Return to job search