*Senior Data Engineer

Recrute Action
Montréal, QC, ca
93 $-102 $ / heure
Temps plein
Temporaire
Nous sommes désolés. L'offre d'emploi que vous recherchez n'est plus disponible.

Job Description

Senior Data Engineer

We’re seeking a talented data expert to join our client in the mining and metals industry for an exciting 4-month contract, with the potential for extension.

In this role, you'll dive into large-scale data challenges, working on cutting-edge analytics to drive smarter decision-making and improve business operations.

You'll enjoy a flexible work setup, with 35 hours per week and two days in the Montréal office. English is required, and bilingual proficiency in French is a plus.

What is in it for you :

  • Salaried : $93 to $102 per hour.
  • Incorporated Business Rate : $103 to $109 per hour.
  • 4-month contract.
  • Full-time position : 35 hours per week.
  • Hybrid work : 2 days per week at the office.
  • Join a passionate and inclusive team of professionals.

Responsibilities :

  • Design, build, and integrate data from various resources to manage large datasets for data scientists
  • Engineer data pipelines from source systems to predictive models
  • Apply best practices in software engineering to extend Machine Learning (ML) prototypes into fully functional products
  • Develop and implement GenAI solutions
  • Mentor and coach junior team members on project tasks
  • Ensure the highest quality assurance and control for all data analytics products
  • Share intellectual property and developments through GitHub to promote team learning and future improvements
  • Engage with clients and stakeholders to build understanding and use of data analytics solutions
  • Provide training and support for deploying and maintaining analytics products

What you will need to succeed :

  • Master’s degree in software engineering, computer science, or equivalent professional experience.
  • 5+ years of experience in data engineering, preferably using agile methodologies.
  • AWS or Azure certifications are an asset.
  • Proficiency in Linux workstation administration, including working with AWS Session Manager and command-line environments.
  • Experience with cloud platforms (AWS, Azure).
  • Strong development skills in Python and SQL.
  • Experience with data storage technologies, data modeling, ETL tools, and API integrations.
  • Containerized application development and deployment experience (Docker, Dockerfiles, Registry Management).
  • Knowledge of DevOps processes such as CI / CD, automated testing, and monitoring dashboards.
  • Expertise in machine learning project implementation, including libraries like Pandas, Numpy, and TensorFlow.
  • Solution design experience for ML solutions focused on scalability, performance, and fault tolerance
  • Proven experience working on GenAI solutions.
  • French (spoken and written) is an asset.

Why Recruit Action?

Recruit Action (agency permit : AP-2000003) provides recruitment services through quality support and a personalized approach to job seekers and businesses.

Only candidates who match hiring criteria will be contacted.

RIOJP00023943

Il y a 10 heures
Emplois reliés
S.i. Systems
Montréal, Québec

Senior Data Engineer Team Lead to oversee critical data engineering activities within the Digital Health sector. Provide strategic oversight of data engineering activities, shaping platform strategy and data architecture. Implement and manage data access policies in coordination with the Data Govern...

KPMG
Canada, Canada

Hands on experience with data processing and analytics using Azure Data Factory, Azure Synapse, Azure Data Lake or Azure Databricks is a plus. Contribute to the design and development of enterprise-level data solutions, including data warehouses, data lakes, and real-time analytics platforms, using ...

S.i. Systems
Montréal, Québec
Télétravail

X Senior Data Engineer to build data solutions and migrate SSIS packages from legacy systems to MuleSoft. ...

RI-MUHC | Research Institute of the MUHC | #rimuhc,
Canada

The data engineer is responsible for architecting, implementing, and maintaining compute frameworks, analysis tooling, and/or model implementations used or created by the Data Science team to support the management and analysis of clinical and administrative data at the McGill University Health Cent...

KPMG
Canada, Canada

Perform data management tasks, including data architecture design and data modeling, master data/metadata/data security/privacy/data quality management, data operations, data integration and interoperability. Participate in architecture, development, deployment and maintenance of secure, extensive, ...

Faire
Canada

Our experienced data scientists and machine learning engineers are developing solutions related to discovery, ranking, search, recommendations, ads, logistics, underwriting, and more - all with the goal of helping local retail thrive. Our team already includes experienced Data Scientists and Machine...

StackAdapt
Canada

We're looking to add Senior and Staff Data Engineers to our data science team! This team works on solving complex problems for StackAdapt's digital advertising platform. You'll be working directly with our data scientists, data engineers, Engineering team, and CTO on building pipelines and ad optimi...

KPMG
Canada, Canada

Hands on experience with data processing and analytics using Azure Data Factory, Azure Synapse, Azure Data Lake or Azure Databricks is a plus. Contribute to the design and development of enterprise-level data solutions, including data warehouses, data lakes, and real-time analytics platforms, using ...

TextNow
Canada

Be a champion of TextNow's data ecosystem by working with data science, engineering and infrastructure to implement data strategy for governance, security, privacy, quality,and retention that will satisfy business policies and requirements. Mentor junior data engineers and promote best practices in ...

Cloudbeds
Canada
Télétravail

Proven experience as a big data engineer or a similar role, with a deep understanding of big data technologies, frameworks, and best practices. Building and maintaining data infrastructure, including data lakes, data warehouses, and real-time streaming platforms. Developing and optimizing data pipel...