Long View Systems Logo

Long View Systems

Machine Learning Engineer/Data Scientist

Reposted 9 Days Ago
Be an Early Applicant
In-Office or Remote
Hiring Remotely in Vancouver, BC
Senior level
In-Office or Remote
Hiring Remotely in Vancouver, BC
Senior level
The role involves leading and implementing Machine Learning solutions, from problem framing to model deployment, while collaborating with various stakeholders.
The summary above was generated by AI
Are you passionate about driving high value solutions to your clients and want to work with a team in a company that believes in Integrity, Competence, Value and Fun?

We are looking for Machine Learning Engineer/Data Scientist for our Data & Dynamics team to be based out of our Calgary, Edmonton, Toronto and Vancouver branch. You will own the end‑to‑end analytics lifecycle—from problem framing and hypothesis design to model development, validation, deployment, and monitoring—collaborating closely with engineers, architects, and business stakeholders.

A Day in Life:

  • Detailed documentation including conceptual design, logical design, physical design, bill of materials, as-built diagrams, knowledge transfer materials, FAQs, transition to operations information
  • Being one of the few trusted advisors for clients, building long-term relationships that will further business value
  • Attending and representing Long View at the latest industry events
  • Lead discovery to translate business goals into well‑scoped analytical problems, measurable KPIs, and model success criteria
  • Build reproducible experiments and models (classification, regression, forecasting, NLP/LLMs) using Python and Azure ML/Databricks, document assumptions and limitations.
  • Engineer and select features; perform rigorous validation (cross‑validation, leakage checks), bias/variance trade‑off, and error analysis; apply Responsible AI practices.
  • Partner with ML Engineers for operational models with CI/CD, experiment tracking (ML flow), model registries, and online/offline evaluation pipelines.
  • Design and evaluate GenAI use cases when relevant (prompt engineering, evaluation harnesses, RAG with Azure AI Search, grounded generation, safety testing).
  • Communicate results and trade‑offs to non‑technical stakeholders; create compelling visuals and narratives; facilitate decisions that balance accuracy, cost, and operational risk.
  • Architect and implement ML platforms and pipelines in Azure (Azure Machine Learning, Azure Databricks, Azure Synapse/Microsoft Fabric, Azure Data Lake Storage, Event/Service Bus).
  • Participate in discovery workshops, solution estimation, Statements of Work inputs, and stakeholder demos; produce clear design docs, runbooks, and handover materials.
  • Carry a mobile phone for client and / or for Long View Systems support
  • Track personal time billings and report them in a timely manner.
  • Attend a quarterly Career Life Planning session with your Team Lead or Manager to discuss your interests, training opportunities, your utilization, and other exciting topic
  • Contribute to various government audits and special programs that Long View participates in every year. Part of your duties will be to participate in these programs where needed as they relate to your technology area(s).
  • Attending and representing Long View at the latest industry events 

What You Bring:

  • A minimum of 5-6 years in applied data science/analytics with shipped models impacting business KPIs.
  • Experience with Python, statistical modeling, experiment design, and ML techniques (tree‑based methods, GLMs, time‑series, causal inference basics).
  • Experience with Azure ML, Databricks/Spark, SQL, and data wrangling at scale; familiarity with Fabric/Synapse data pipelines.
  • Strong MLOps collaboration (MLflow, model lifecycle, monitoring/alerts, data quality checks such as Great Expectations equivalent patterns).
  • Exceptional customer engagement, interpersonal, stakeholder facilitation, presentation and overall communication skills
  • Consulting experience.
  • Good understanding of ITIL Incident Management
  • Excellent problem‑solving and multitasking skills.

What Makes You Extra Awesome:

  • Certifications: DP‑100, DP‑203, AI‑102, AZ‑900/AI‑900
  • Experience with NLP/LLMs and RAG on Azure
  • Probabilistic modeling; optimization, Bayesian methods, A‑B testing at scale
  • Experience in supply chain analytics or inventory optimization

Top Skills

Azure Data Lake Storage
Azure Databricks
Azure Ml
Azure Synapse
Mlflow
Python
SQL

Similar Jobs

5 Hours Ago
Remote or Hybrid
8 Locations
Senior level
Senior level
eCommerce • Fintech • Hardware • Payments • Software • Financial Services
Lead product-focused risk analytics to improve payments risk outcomes and seller experience. Design and analyze A/B tests, build models and monitoring, partner with Product and Engineering, and translate insights into product and risk improvements.
Top Skills: Python,Pandas,Numpy,Sql,Snowflake,Bigquery,Mysql,Looker,Mode,Git,Llms,Prompt Engineering
5 Hours Ago
Remote or Hybrid
8 Locations
Junior
Junior
eCommerce • Fintech • Hardware • Payments • Software • Financial Services
Convert inbound leads and source outbound opportunities to close SMB accounts. Own full sales cycle, qualify and demo quickly, forecast in Salesforce, collaborate cross-functionally, and consistently exceed monthly and quarterly revenue targets.
Top Skills: CRMSalesforce
10 Hours Ago
Easy Apply
Remote
3 Locations
Easy Apply
Junior
Junior
Artificial Intelligence • Enterprise Web • Software • Design • Generative AI
Build and ship performant, accessible subscription and billing UIs. Implement plan selection, checkout, and billing management features using React/TypeScript, ensuring maintainable, tested, and high-quality front-end code. Collaborate with product, design, and cross-functional teams to improve monetization, conversion, and retention.
Top Skills: CSSCypressHTMLJavaScriptJestMochaPlaywrightReactTypescript

What you need to know about the Toronto Tech Scene

Although home to some of the biggest names in tech, including Google, Microsoft and Amazon, Toronto has established itself as one of the largest startup ecosystems in the world. And with over 2,000 startups — more than 30 percent of the country's total startups — Toronto continues to attract new businesses. Be it helping entrepreneurs manage their finances, simplifying business operations by automating payroll or assisting pharmaceutical companies in launching new drugs, the city's tech scene is just getting started.

Sign up now Access later

Create Free Account

Please log in or sign up to report this job.

Create Free Account