Machine Learning Engineer at Populous
New York, New York, USA -
Full Time


Start Date

Immediate

Expiry Date

16 Nov, 25

Salary

124000.0

Posted On

16 Aug, 25

Experience

3 year(s) or above

Remote Job

Yes

Telecommute

Yes

Sponsor Visa

No

Skills

Flask, Spatial Data, Built Environment, Collaboration, Version Control, Aws, Argo, Git, Azure, Prototype, Data Privacy, Communication Skills, Unstructured Data, Urban Design

Industry

Information Technology/IT

Description

WHO WE ARE:

We design places where people love to be together.
Populous is a global design firm that began with a singular focus: to draw people together around the things they love, through experiences that capture all the senses, amplifying the atmosphere of excitement and pure joy shared in human moments.
We’ve designed and delivered some of the world’s most memorable civic, sports and entertainment buildings, from iconic stadia to ground-breaking live music venues. Populous is where architects and designers of all kinds create moments bigger than ourselves. We offer the best of both worlds: the resources and impact of the design giants and the tightly knit atmosphere and growth opportunities of smaller firms.

WHO WE ARE LOOKING FOR:

We’re seeking a Machine Learning Engineer with at least 3 years of experience in applied ML to join our Global AI Technology team.
Are you an ML engineer who loves solving real-world problems with data and AI? You’ll thrive at Populous if you’re hands-on, curious, and excited to bring new AI capabilities into tools that shape spaces and human experience.
Collaborating across time zones with full stack developers and our AI Lead, you’ll help prototype, fine-tune, and integrate machine learning models—particularly in natural language processing (NLP), generative AI, and semantic search—into production systems that drive better outcomes in the built environment.
You’ll join a passionate and forward-thinking team using the latest tools and cloud technologies to work on projects at the intersection of design, data, sports and entertainment, and AI.

REQUIREMENTS FOR SUCCESS:

Core Technical Skills

  • Strong Python programming skills and familiarity with ML libraries (e.g. scikit-learn, PyTorch, TensorFlow).
  • Solid understanding of vector search and embedding-based systems (e.g. FAISS, Pinecone, Weaviate).
  • Comfortable operationalizing models via REST APIs (e.g. using FastAPI or Flask).
  • Proficient in handling both structured and unstructured data (text, images, spatial data).
  • Familiarity with retrieval-augmented generation (RAG), prompt tuning, or hybrid search architectures is preferred.
  • Exposure to MLOps workflows or orchestration tools (e.g. Airflow, Argo) is preferred.

Development & Collaboration

  • Comfortable building and maintaining ML pipelines from prototype to production.
  • Familiarity with tools for experiment tracking and version control (e.g. MLflow, Git, W&B).
  • Excellent communication skills – able to explain technical decisions to non-technical collaborators.
  • Research-oriented and self-motivated with a desire to apply AI in tangible, impactful ways.
  • Interest in the built environment – whether through urban design, spatial data, or large-scale civic infrastructure.
  • Understanding of AI governance topics such as data privacy, fairness, and explainability is preferred.
  • Comfortable collaborating across disciplines, time zones, and cultures in a hybrid or remote setting.

ESSENTIAL QUALIFICATIONS:

Required

  • 3+ years of experience in machine learning engineering or applied ML roles.
  • Experience integrating machine learning models into workflows and applications.
  • Experience working in cloud-based environments (AWS, Azure, or GCP).

Preferred

  • Experience in the AEC (architecture, engineering, construction) industry or in location-aware applications.
  • Experience with LLM orchestration frameworks (e.g. LongChain, Haystack).
  • Experience building internal tooling, design assistants, or custom AI interfaces for non-technical users.
Responsibilities

Please refer the Job description for details

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