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Remote Python Data Engineer Jobs in Ontario (NOW HIRING)

Lead Data Engineer

Toronto, ON · Remote

CA$220K - CA$300K/yr

This is a fully remote position that offers a competitive salary range of $220,000 to $300,000 USD ... Strong programming ability in languages commonly used in data engineering, such as Python, Java ...

Contract : 9-12 months, potential to extend / convert Fully remote but must be able to come into ... Build and support ETL/data ingestion frameworks to process structured and semi-structured data.

Contract : 9-12 months, potential to extend / convert Fully remote but must be able to come into ... Build and support ETL/data ingestion frameworks to process structured and semi-structured data.

\n \n \n \n \n This client is looking for a Python Developer fully remote, short term contract (10 weeks). \n \n \n \n \n \n This contract will begin in early March, so apply immediately if you would ...

Remote Duration: 1 month Commitment: 20 hours/week Role Responsibilities * Develop and maintain complex, production-grade Python systems for real-world environments. * Design modular, testable ...

... Pickering (100% Remote) Job Overview JOB FUNCTION As a Senior Data Developer, you will be ... Develop optimized, performant data pipelines and models at scale using technologies such as Python ...

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Remote Python Data Engineer information

See Ontario salary details

$29K

$130.7K

$188.5K

How much do remote python data engineer jobs pay per year?

As of Jun 18, 2026, the average yearly pay for remote python data engineer in Ontario is $130,727.00, according to ZipRecruiter salary data. Most workers in this role earn between $110,000.00 and $156,000.00 per year, depending on experience, location, and employer.

What are the key skills and qualifications needed to thrive as a Remote Python Data Engineer, and why are they important?

To thrive as a Remote Python Data Engineer, you need strong proficiency in Python, data modeling, and ETL pipeline development, typically backed by a degree in computer science or a related field. Familiarity with tools like Apache Airflow, SQL databases, cloud platforms (such as AWS or GCP), and certifications in data engineering are highly valuable. Excellent problem-solving, communication, and self-motivation are crucial soft skills for remote collaboration and project delivery. These skills ensure efficient data processing, seamless teamwork across distributed environments, and the reliable delivery of scalable data solutions.

How do Remote Python Data Engineers typically collaborate with distributed teams to ensure smooth project delivery?

Remote Python Data Engineers work closely with cross-functional teams, including data scientists, analysts, and DevOps engineers, often using collaboration tools like Slack, Jira, and GitHub to coordinate work. Regular virtual meetings, clear documentation, and code reviews are essential for maintaining alignment and ensuring code quality. Emphasis is placed on asynchronous communication and well-structured version control practices to overcome time zone differences and keep projects on track. Adapting to these remote workflows is key for successful project delivery in a distributed environment.

What is a Remote Python Data Engineer?

A Remote Python Data Engineer is a professional who specializes in designing, building, and maintaining data pipelines and architectures, primarily using Python, while working from a location outside of a traditional office setting. They are responsible for collecting, transforming, and storing vast amounts of data to support analytics and business intelligence tasks. Their role often involves working with cloud platforms, databases, and big data technologies to ensure efficient data processing and accessibility for other teams. Remote Python Data Engineers collaborate with data scientists, analysts, and developers, leveraging Python's extensive libraries to automate workflows and solve complex data challenges.

What is the difference between Remote Python Data Engineer vs Remote Data Scientist?

AspectRemote Python Data EngineerRemote Data Scientist
Required CredentialsBachelor's in CS, Data Engineering certificationsBachelor's in CS, Statistics, Data Science certifications
Work EnvironmentData pipelines, ETL processes, cloud platformsData analysis, modeling, machine learning projects
Employer & Industry UsageTech companies, finance, healthcareResearch institutions, tech firms, marketing agencies
Common Search & ComparisonYesYes

Remote Python Data Engineers focus on building and maintaining data pipelines and infrastructure using Python, while Remote Data Scientists analyze data, develop models, and generate insights. Both roles often collaborate but serve different functions within data teams.

Lead Data Engineer

CA$220K - CA$300K/yr

Full-time

Medical, Retirement

Posted 3 days ago


Job description

Overview

The Lead Data Engineer on the Nebula team plays a significant technical leadership role in shaping and scaling the data foundation that powers analytics, reporting, AI development, and operational decision-making across the organization. This role combines hands-on data engineering execution with practical team leadership, helping the organization build reliable, flexible, and production-ready data systems. 

The Lead Data Engineer heads a lean, high-caliber squad of data engineers, while remaining deeply hands-on in the design, development, and operation of core data systems. The role balances direct technical contribution with mentoring, coaching, coordination, and day-to-day support for the engineers on the squad. 

Working across ingestion, transformation, storage, modeling, orchestration, and delivery, this role partners closely with Product, Engineering, AI, Analytics, and domain Subject Matter Experts (SMEs) to translate complex business processes into scalable data platforms, pipelines, and trusted datasets. 

This role owns the technical direction for core data capabilities, including ETL/ELT, batch and real-time processing, OLTP and OLAP systems, BI-ready data models, and cloud-based data infrastructure in a regulated, high-stakes environment. Success requires strong architectural judgment, operational discipline, and the ability to raise the technical bar for both systems and people.

This is a fully remote position that offers a competitive salary range of $220,000 to $300,000 USD, plus an annual bonus. You'll also receive our excellent benefits package, which includes medical coverage starting on day one and a company-matched 401(k). Compensation may vary based on experience, location, and other job-related factors.


Responsibilities

Strategic Technical Leadership 

  • Own the architecture and evolution of core data systems, including ingestion, transformation, orchestration, storage, modeling, and delivery layers 
  • Set technical direction for ETL/ELT, batch processing, real-time pipelines, OLTP and OLAP systems, and BI-ready data assets 
  • Make pragmatic architecture decisions that balance scalability, reliability, security, performance, cost, and delivery speed 
  • Establish engineering standards, reusable patterns, and design principles that improve quality and leverage across the data platform 

Hands-On Data Engineering Delivery 

  • Lead the design, build, rollout, and operations of greenfield data infrastructure 
  • Build and maintain complex data pipelines across diverse source and destination systems, including databases, APIs, files, SaaS platforms, event streams, and internal applications 
  • Design and optimize data models, warehouse schemas, semantic layers, and curated datasets for analytics, reporting, AI, and product use cases 
  • Contribute directly to critical implementation work, including writing code, code and design reviews, migrations, reliability improvements, and production issue resolution 

Squad Leadership & Management 

  • Lead a lean, high-caliber squad of data engineers, spending focused time mentoring, coaching, managing, and coordinating the team 
  • Develop engineers through regular feedback, technical guidance, code reviews, career support, and clear expectations around quality and ownership 
  • Help prioritize team work, clarify scope, remove blockers, and ensure the squad delivers reliably against business and technical goals 
  • Contribute to hiring, onboarding, performance development, and team operating rhythms as the data engineering function grows 

Cloud Platform & Production Operations 

  • Deploy, operate, and improve data pipelines, data stores, and supporting infrastructure on major cloud platforms such as AWS, GCP, or Azure 
  • Drive strong practices for CI/CD, infrastructure-as-code, automated testing, monitoring, alerting, and incident response 
  • Ensure data systems are observable, fault-tolerant, recoverable, and maintainable in production 
  • Identify opportunities to reduce operational toil, improve platform reliability, and manage cloud infrastructure costs effectively 

Data Quality, Governance & Trust 

  • Define and enforce standards for data quality, validation, reconciliation, lineage, schema evolution, metadata, and documentation 
  • Establish patterns for data contracts, ownership, SLAs, and runbooks that help downstream teams trust and use data confidently 
  • Partner with security, compliance, and business stakeholders to support privacy, auditability, access controls, and regulated data handling 
  • Raise the maturity of data governance and reliability practices without slowing down pragmatic delivery 

Cross-Functional Partnership 

  • Partner closely with Product, Engineering, AI, Analytics, and business stakeholders to align data architecture with organizational priorities 
  • Translate ambiguous business needs and operational workflows into clear technical plans, milestones, and production-ready solutions 
  • Serve as a senior technical point of contact for data-heavy initiatives, communicating tradeoffs, risks, sequencing, and timelines clearly 
  • Enable downstream consumers, including analysts, product teams, data scientists, and operational users, through reliable and well-modeled data assets 

Culture & Craft 

  • Contribute to a culture of ownership, curiosity, operational rigor, pragmatism, and engineering excellence 
  • Raise the bar for the team through thoughtful design, clear abstractions, strong reviews, and sound technical judgment 
  • Balance staff-level technical depth with practical people leadership, helping the team grow while continuing to ship high-quality systems 

Qualifications
  • 5-8+ years of experience building and operating production-grade data pipelines, platforms, and distributed data systems 
  • 2+ years of experience leading, mentoring, or managing data engineers in a tech lead, staff-level project lead, engineering manager, or TLM capacity 
  • Strong hands-on experience with industry-standard tools and platforms for ETL/ELT, orchestration, data warehousing, streaming, and BI 
  • Deep understanding of OLTP and OLAP systems, including the ability to design architectures that support transactional, analytical, and operational workloads 
  • Experience building flexible data pipelines across many source and destination types, including databases, APIs, files, queues, event streams, SaaS platforms, and internal systems 
  • Strong experience with both batch and real-time processing patterns, including tradeoffs in latency, reliability, cost, and operational complexity 
  • Experience deploying and operating cloud-based data infrastructure on AWS, GCP, or Azure 
  • Advanced SQL and data modeling expertise, including schema design, warehouse optimization, semantic modeling, and performance tuning 
  • Strong programming ability in languages commonly used in data engineering, such as Python, Java, Scala, Go, or similar 
  • Comfort with CI/CD, infrastructure-as-code, automated testing, observability, incident response, and production operations for data systems 
  • Strong architectural judgment in ambiguous environments where systems must balance speed, reliability, compliance, maintainability, and long-term leverage 
  • Clear communication skills with both technical and non-technical teammates, including the ability to explain tradeoffs and influence direction 

Preferred Experience 

  • Experience operating as a Technical Lead or Tech Lead Manager responsible for both technical implementation, technical direction, and people development 
  • Experience with modern orchestration and transformation tools such as Airflow, Dagster, dbt, or similar platforms 
  • Experience with cloud-native warehouses or lakehouse platforms such as Snowflake, BigQuery, Redshift, Databricks, or equivalent technologies 
  • Experience with streaming systems such as Kafka, Kinesis, Pub/Sub, Flink, Spark Streaming, or similar technologies 
  • Experience enabling BI and self-service analytics through curated datasets, semantic layers, and reporting platforms such as Looker, Tableau, Power BI, or similar tools 
  • Experience building data platforms that support AI, machine learning, decisioning, or LLM-powered workflows 
  • Experience scaling a data engineering function, including technical standards, operating rhythms, hiring, onboarding, and team development 
  • Experience in fintech, mortgage, lending, payments, insurance, or other regulated domains 

A Note to Candidates 

You do not need prior fintech or finance experience to succeed in this role. If you are a senior data engineer with strong architectural judgment, a hands-on builder mindset, and the ability to develop other engineers, we would love to hear from you. If your background does not line up perfectly with every bullet, but this role feels like the kind of work you want to do, please apply. 

Bayview is an Equal Employment Opportunity employer.  All aspects of consideration for employment and employment with the Company are governed on the basis of merit, competence and qualifications without regard to race, color, religion, sex, national origin, age, disability, veteran status, sexual orientation, or any other category protected by federal, state, or local law. 

#LI-Remote

Qualifications:
  • 5-8+ years of experience building and operating production-grade data pipelines, platforms, and distributed data systems 
  • 2+ years of experience leading, mentoring, or managing data engineers in a tech lead, staff-level project lead, engineering manager, or TLM capacity 
  • Strong hands-on experience with industry-standard tools and platforms for ETL/ELT, orchestration, data warehousing, streaming, and BI 
  • Deep understanding of OLTP and OLAP systems, including the ability to design architectures that support transactional, analytical, and operational workloads 
  • Experience building flexible data pipelines across many source and destination types, including databases, APIs, files, queues, event streams, SaaS platforms, and internal systems 
  • Strong experience with both batch and real-time processing patterns, including tradeoffs in latency, reliability, cost, and operational complexity 
  • Experience deploying and operating cloud-based data infrastructure on AWS, GCP, or Azure 
  • Advanced SQL and data modeling expertise, including schema design, warehouse optimization, semantic modeling, and performance tuning 
  • Strong programming ability in languages commonly used in data engineering, such as Python, Java, Scala, Go, or similar 
  • Comfort with CI/CD, infrastructure-as-code, automated testing, observability, incident response, and production operations for data systems 
  • Strong architectural judgment in ambiguous environments where systems must balance speed, reliability, compliance, maintainability, and long-term leverage 
  • Clear communication skills with both technical and non-technical teammates, including the ability to explain tradeoffs and influence direction 

Preferred Experience 

  • Experience operating as a Technical Lead or Tech Lead Manager responsible for both technical implementation, technical direction, and people development 
  • Experience with modern orchestration and transformation tools such as Airflow, Dagster, dbt, or similar platforms 
  • Experience with cloud-native warehouses or lakehouse platforms such as Snowflake, BigQuery, Redshift, Databricks, or equivalent technologies 
  • Experience with streaming systems such as Kafka, Kinesis, Pub/Sub, Flink, Spark Streaming, or similar technologies 
  • Experience enabling BI and self-service analytics through curated datasets, semantic layers, and reporting platforms such as Looker, Tableau, Power BI, or similar tools 
  • Experience building data platforms that support AI, machine learning, decisioning, or LLM-powered workflows 
  • Experience scaling a data engineering function, including technical standards, operating rhythms, hiring, onboarding, and team development 
  • Experience in fintech, mortgage, lending, payments, insurance, or other regulated domains 

A Note to Candidates 

You do not need prior fintech or finance experience to succeed in this role. If you are a senior data engineer with strong architectural judgment, a hands-on builder mindset, and the ability to develop other engineers, we would love to hear from you. If your background does not line up perfectly with every bullet, but this role feels like the kind of work you want to do, please apply. 

Bayview is an Equal Employment Opportunity employer.  All aspects of consideration for employment and employment with the Company are governed on the basis of merit, competence and qualifications without regard to race, color, religion, sex, national origin, age, disability, veteran status, sexual orientation, or any other category protected by federal, state, or local law. 

#LI-Remote

Education:UNAVAILABLEEmployment Type: FULL_TIME