Remote Ai Data Trainer Jobs

Sort by: Date | Relevance
  • Staff Data Scientist

    Key Responsibilities Create production-ready AI solutions Lead model research, data analysis, and solution recommendations Contribute to end-to-end AI processes, ensuring quality and accuracy of AI solutions Required Qualifications 7+ years of

    AI Systems Data Science Machine Learning Python
  • Technical Lead - AI/ML

    A company is looking for a Technical Lead - AI/ML & Data Platforms....Key Responsibilities Coordinate multiple workstreams in parallel, ensuring timely and high-quality delivery Collaborate with data engineers, AI/ML scientists, analysts, and product teams to translate goals into actionable plans Track progress using

    Data Pipelines Data Architecture Analytics Platforms Snowflake
  • Compliance Manager, Data Governance

    A company is looking for a Compliance Manager, Global Data Governance and AI (Remote).

    Data Governance Data Retention Data Destruction Data Integrity
  • GET ACCESS
    Access New Remote Job Listings Now

    Create a free account to begin your remote job search with our expert-vetted listings, resume tips, and career tools.

  • Senior Data Engineer

    A company is looking for a Senior Data Engineer to lead their AI/ML strategy and build data infrastructure....Key Responsibilities Design scalable, AI-first data infrastructure on GCP to support LLMs and agentic systems Develop high-performance, real-time data pipelines for processing user behavior and driving ML systems Lead the design, development, and

    Python GCP Vertex AI BigQuery
  • Data Scientist - Generative AI

    A company is looking for a Data Scientist specializing in Online Behavioural Analytics and Generative AI. Key Responsibilities Collect, clean, and preprocess clickstream data from web and mobile applications Design and implement methods to extract behavioural signals and conduct exploratory data

    Data Science Generative AI Clickstream Data Statistical Analysis
  • Commercial Account Executive

    specialists Required Qualifications Experience in sales, preferably in IT solutions or technology consulting Ability to cultivate relationships with clients and partners Proven track record of meeting or exceeding sales targets Familiarity with cloud, data..., AI, cybersecurity, and analytics solutions Willingness to pursue continuous learning and career advancement opportunities

  • Data Scientist

    Key Responsibilities Design, develop, and deploy machine learning models and data pipelines for AI applications Collaborate with teams to translate business problems into analytical use cases and contribute to the full machine learning lifecycle Integrate

    Data Pipelines Feature Engineering NLP CI/CD Pipelines
  • Backend Software Engineer

    Key Responsibilities Design, build, and maintain scalable backend services for conversation processing and data storage Integrate AI/ML models into production systems in collaboration with MIT partners Build and enhance APIs for mobile and web applications

    Python Django Flask Falcon
  • Developer Relations Manager

    engagement channels Create high-quality content, including blogs, tutorials, and technical demos Required Qualifications Experience in Developer Relations, Developer Advocacy, or Technical Evangelism Deep understanding of developer needs and trends in AI..., data, or infrastructure Hands-on experience with modern AI/ML tools or vector databases Proactive, self-starter attitude with strong organizational and leadership skills Experience building technical demos or contributing to open-source projects

    Qdrant AI/ML Tools Vector Databases Embedding-based Search
  • Product Manager - Digital Storefront

    Key Responsibilities Define and execute the product roadmap for data, analytics, and AI features across the SaaS platform Partner with cross-functional teams to build innovative, customer-centric solutions leveraging data and AI/ML Monitor product...platforms, analytics, AI/ML, and cloud technologies Proven track record of launching data-centric or AI-enabled products at scale Familiarity with data visualization tools (e.g., Tableau, Power BI)

    Data-driven Features AI-powered Capabilities Product Lifecycle Advanced Analytics