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Cushman & Wakefield

We will never settle for the world that’s been built, but relentlessly drive it forward. #BetterNeverSettles

Applied AI Engineer

AI EngineerMachine Learning EngineerFull TimeRemoteMid LevelTeam 10,001+Since 1917H1B No SponsorCompany SiteLinkedIn

Location

United States

Posted

3 days ago

Salary

$85K - $100K / year

Seniority

Mid Level

No structured requirement data.

Job Description

Applied AI Engineer

Cushman & Wakefield

Role Description The Applied AI Engineer is a hands-on builder who sits at the intersection of AI engineering, operational analytics, and business process expertise. This role designs, prototypes, and operationalizes AI and analytics solutions that automate work, sharpen decision-making, and measurably improve performance across the organization. - Embed directly with operational leaders to translate real-world business challenges into working proofs of concept. - Independently build end-to-end, including the data, modeling, and lightweight infrastructure needed to demonstrate value quickly. - Partner with the data engineering team to harden, scale, and operationalize solutions for production use. - Requires fluency in modern AI tooling, rigorous analytical thinking, and operational context. - Combines technical depth with business fluency to work effectively across stakeholders, data, and code. Qualifications - Bachelor’s degree in Analytics, Data Science, Computer Science, Engineering, or a related field. - 4–7 years of experience in analytics, data science, or AI/ML engineering, with at least 2 years building and deploying ML or AI solutions. - Strong proficiency in Python and SQL, including writing maintainable, tested code beyond exploratory notebooks. - Hands-on experience building applied AI or ML solutions — e.g., predictive models, NLP, or LLM-based applications. - Demonstrated ability to build end-to-end proofs of concept independently. - Experience partnering with data engineering or platform teams to take prototypes into production. - Experience working with large datasets in modern analytics platforms such as Databricks. - Demonstrated ability to translate operational problems into analytical and AI approaches that deliver measurable business outcomes. - Strong communication skills with non-technical stakeholders. Requirements - Design, build, and iterate on applied AI and machine learning solutions. - Independently build end-to-end POCs to validate AI and analytics ideas quickly. - Partner with the data engineering team to harden, scale, and operationalize solutions. - Define success metrics, design evaluations, and quantify business impact. - Analyze operational data, workflows, and performance trends. - Work directly with leadership and frontline operators to understand workflows. - Prepare, clean, and structure datasets for analytics and AI workflows. - Develop, test, and deploy analytics and AI solutions within the Databricks Lakehouse environment. - Partner with field and operational teams to pilot and drive adoption of AI tools. - Apply practical judgment around model limitations, bias, and human-in-the-loop design. Benefits - Health, vision, and dental insurance. - Flexible spending accounts and health savings accounts. - Retirement savings plans. - Life and disability insurance programs. - Paid and unpaid time away from work. - Competitive pay based on various eligibility factors.

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