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Generative Ai Developer Jobs in Alberta (NOW HIRING)

Staff Data Scientist

Calgary, AB ยท Hybrid

CA$192K - CA$230K/yr

... engineering stack. * Architect reusable, "platform-level" forecasting frameworks to be used by ... GenAI & LLM Innovation: * Act as the subject matter expert for Generative AI; design RAG ...

Position Summary Software Engineer for the Soda-Tap project, funded by the TMU-led CFREF Bridging ... Generative AI tools Python, PyTorch, Pandas, NumPy, TensorFlow * Must have experience with testing ...

Cloud and platform infrastructure, data services, and developer tooling * AIโ€‘assisted analytics, search, and generative AI Technologies used vary by team and include: * Languages such as Java, C# ...

Design plays a pivotal role at Clio, standing alongside Product and Engineering as one of the three ... generative AI. * Highly capable in design and prototyping tools, with solid command of AI tools in ...

Design plays a pivotal role at Clio, standing alongside Product and Engineering as one of the three ... and generative AI. * Expert in design and prototyping tools and solid use of AI tools in your ...

Coordinate engagement between critical accounts, Product Management, Sales Engineering, and other ... Experience working with generative AI tools This is a new role. What you will find here:

... engineering, and assess technical risk. * AI fluency: practical familiarity with generative, predictive, and agentic AI in a delivery/PMO context, and the judgment to apply it responsibly.

Use AI tools daily, image generation, generative fill, background removal, upscaling, mockups ... How AI Fits Into the Role We don't expect you to be a prompt engineer. We do expect you to use AI ...

... from generative AI, and our innovative solutions are reshaping the way energy is consumed and ... The team consists of a group of well-rounded geoscience, engineering, land, and finance experts ...

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Generative Ai Developer information

What are some common challenges faced by Generative AI Developers when deploying models in production environments?

Generative AI Developers often encounter challenges such as ensuring model reliability, managing computational resource requirements, and addressing ethical considerations like data bias or content safety. Deploying generative models at scale requires robust monitoring to detect unexpected outputs or model drift, and collaboration with data engineers and product teams to optimize performance. Staying up-to-date with evolving frameworks and best practices is essential, as production environments demand both technical rigor and adaptability to new AI advancements.

What are the key skills and qualifications needed to thrive as a Generative AI Developer, and why are they important?

To thrive as a Generative AI Developer, you need strong programming skills (especially in Python), a deep understanding of machine learning concepts, and an advanced degree in computer science or a related field. Familiarity with frameworks like TensorFlow, PyTorch, and experience with cloud platforms or model deployment tools are typically required. Creative problem-solving, adaptability, and effective collaboration are standout soft skills in this evolving field. These abilities are crucial to design, implement, and refine generative models that solve real-world problems and drive innovation.

Is generative AI a good career?

Generative AI is a rapidly growing field with high demand for skilled developers who can create and optimize AI models using tools like deep learning frameworks. Careers in this area often require knowledge of machine learning, programming, and data handling, offering opportunities in tech companies, research, and startups. The field provides competitive salaries and continuous learning opportunities due to its evolving nature.

What is the difference between Generative Ai Developer vs Machine Learning Engineer?

AspectGenerative Ai DeveloperMachine Learning Engineer
CredentialsBachelor's or higher in CS, AI, or related fields; experience with deep learning frameworksBachelor's or higher in CS, Data Science, or related fields; strong programming skills
Work EnvironmentDevelops AI models for content creation, chatbots, and creative applicationsBuilds and deploys ML models for various data-driven solutions across industries
Industry UsageTech, entertainment, marketing, and creative sectorsFinance, healthcare, tech, and e-commerce sectors

While both roles involve AI and machine learning, Generative Ai Developers focus on creating models that generate content, such as images or text, whereas Machine Learning Engineers develop broader ML solutions for diverse applications. The roles often overlap but differ mainly in their specific focus areas and use cases.

What is the salary of a generative AI developer?

The salary of a generative AI developer typically ranges from $80,000 to $150,000 annually, depending on experience, location, and skill set. Senior developers with expertise in machine learning frameworks and deep learning may earn higher compensation, especially in tech hubs or companies with advanced AI projects.

What does a generative AI developer do?

A generative AI developer designs and builds algorithms that enable machines to create content such as text, images, or audio. They work with machine learning frameworks, train models on large datasets, and optimize algorithms for performance and accuracy, often using tools like Python and TensorFlow or PyTorch.

What is a $900000 AI job?

A $900,000 AI job typically refers to a high-level position in artificial intelligence development, such as a senior Generative AI Developer or AI research lead, often involving advanced skills in machine learning, deep learning, and large language models. These roles usually require extensive experience, specialized knowledge, and may include responsibilities like designing AI systems, managing teams, or overseeing AI strategy in organizations with competitive compensation packages. Such salaries are common in top tech companies or specialized AI firms for highly skilled professionals.

What is a Generative AI Developer?

A Generative AI Developer is a technology professional who specializes in designing, building, and deploying artificial intelligence systems that can create new content, such as text, images, audio, or code. They work with advanced machine learning models, like generative adversarial networks (GANs) or large language models, to enable computers to produce original outputs. These developers often collaborate with data scientists, researchers, and product teams to integrate AI-generated content into software applications and business solutions.
What are popular job titles related to Generative Ai Developer jobs in Alberta? For Generative Ai Developer jobs in Alberta, the most frequently searched job titles are:
What job categories do people searching Generative Ai Developer jobs in Alberta look for? The top searched job categories for Generative Ai Developer jobs in Alberta are:

Staff Data Scientist

Clio

Calgary, AB โ€ข Hybrid

CA$192K - CA$230K/yr

Full-time

Medical, Dental, Vision

Posted 25 days ago


Job description

Clio is the global leader in legal AI technology, empowering legal professionals and law firms of every size to work smarter, faster, and more securely.

We are transforming the legal experience for all by bettering the lives of legal professionals while increasing access to justice.

Summary:Job DutiesArchitectural Strategy & Forecasting Leadership:
  • Define the long-term forecasting roadmap and establish architectural standards for the entire company.
  • Lead the architectural design of complex ML systems, ensuring they are scalable, maintainable, and integrated seamlessly with the broader engineering stack.

  • Architect reusable, "platform-level" forecasting frameworks to be used by other Data Science teams.

High-Impact Modeling:
  • Own the development of "tier-1" models-those with the highest business risk or technical complexity-using advanced statistical, deep learning, or Reinforcement Learning techniques.

  • Tackle high-ambiguity challenges, such as integrating causal inference or deep learning into global forecasts.

GenAI & LLM Innovation:
  • Act as the subject matter expert for Generative AI; design RAG architectures, evaluate foundation models, and establish fine-tuning protocols for proprietary data.

MLOps & Quality Assurance:
  • Define the team's technical standards for CI/CD, model versioning, and automated testing.

  • Audit codebases to ensure high-performance and "production-ready" quality.

Strategic Experimentation:
  • Own the end-to-end design and evaluation of high-impact product and business experiments, establishing rigorous statistical standards and frameworks to ensure trustworthy, data-driven decisions.

Technical Mentorship & Influence:
  • Provide deep technical guidance to more junior Data Scientists.

  • Influence the roadmap by identifying "blind spots" in current data strategy and proposing novel solutions.

Cross-Functional Translation & Ethics:
  • Partner with Data Engineering to optimize data pipelines for ML and with Product to ensure technical feasibility of the long-term vision.

  • Lead the implementation of Model Interpretability (XAI) frameworks to ensure all automated decisions are transparent and unbiased.

Skills & Qualifications
  • 8+ years of experience in Data Science, Machine Learning, or a highly quantitative field, with a track record of deploying models that drove significant revenue or cost savings.

  • Mastery of System Design and state-of-the-art time-series research.

  • Leadership without Authority: Proven ability to influence executive leadership and mentor senior technical staff. Proven ability to lead large-scale technical projects across multiple teams without being a direct people manager.

  • Deep Technical Stack: * Expertise in Python and SQL.

    • Advanced experience with AWS and Databricks.

    • Proficiency in distributed computing (e.g., Spark, Ray) and modern data platforms (Snowflake/Databricks).

  • Modern AI Toolkit: Hands-on experience with LLM orchestration (LangChain, Haystack), vector databases, and PyTorch or TensorFlow.

  • System Design: Strong understanding of software engineering principles (microservices, API design) as they relate to deploying ML at scale.

  • Education: Master's or PhD in Computer Science, Physics, Statistics, Mathematics, or a related quantitative field.

Communication: Ability to persuade executive leadership on technical investments and "sell" a long-term technical vision.

This is a new role.

What you will find here:

Compensation is one of the main components of Clio's Total Rewards Program. We have developed a series of programs and processes to ensure we are creating fair and competitive pay practices that form the foundation of our human and high-performing culture.

Some highlights of our Total Rewards program include:

  • Competitive, equitable salary with top-tier health benefits, dental, and vision insurance

  • Hybrid work environment, with expectation for local Clions (Vancouver, Calgary, Toronto, Dublin and Sydney) to be in office min. twice per week.

  • Flexible time off policy, with an encouraged 20 days off per year.

  • $2000 annual counseling benefit

  • RRSP matching and RESP contribution

  • Clioversary recognition program with special acknowledgement at 3, 5, 7, and 10 years

The expected salary range* for this role is $153,600 to $192,000 to $230,400 CAD. There are a separate set of salary bands for other regions based on local currency.


*Our salary bands are designed to reflect the range of skills and experience needed for the position and to allow room for growth at Clio. For experienced individuals, we typically hire at or around the midpoint of the band. The top portion of the salary band is reserved for employees who demonstrate sustained high performance and impact at Clio. Those who are new to the role may join below the midpoint and develop their skills over time. The final offer amount for this role will be dependent on geographical region, applicable experience, and skillset of the candidate.

Diversity, Inclusion, Belonging and Equity (DIBE) & Accessibility

Our team shows up as their authentic selves, and are united by our mission. We are dedicated todiversity, equity and inclusion. We pride ourselves in building and fostering an environment where our teams feel included, valued, and enabled to do the best work of their careers, wherever they choose to log in from. We believe that different perspectives, skills, backgrounds, and experiences result in higher-performing teams and better innovation. We are committed to equal employment and we encourage candidates from all backgrounds to apply.

Clio provides accessibility accommodations during the recruitment process. Should you require any accommodation, please let us know and we will work with you to meet your needs.

Learn more about our culture atclio.com/careers

We're a Human and High Performing AI company, meaning we use artificial intelligence to improve all of our operations. In recruitment, AI helps us streamline the process for greater efficiency. However, we've built our systems to ensure that a human always reviews AI-generated output, and we never make automated hiring decisions.

Disclaimer: We only communicate with candidates through official @clio.com email addresses.