Forward Deployed Data Analyst

Deepstreamtech
London
3 weeks ago
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Requirements
  • Proficient in Python
  • (Desirable) Quick learner who can master new AI/ML platforms and concepts
  • Quantitative degree (mathematics, statistics, economics, physics, computer science, psychology, or related field)
  • (Desirable) Be able to identify root cause of technical issues in data and evaluation pipelines
  • 1-4 years in data analysis, market research, consulting, or customer-facing technical roles
  • Excellence at translating complex technical concepts for non-technical executives
  • Proven ability to manage sophisticated customer relationships independently
  • Thrives in ambiguous, fast-moving startup environments
What the job involves
  • As a Forward Deployed Analyst, you'll be the critical bridge between our AI platform and the end user. Working directly with clients, you'll configure synthetic populations that mirror their real-world audiences and help them extract maximum value from behavioral insights
  • This high-impact, customer-facing technical role operates at the intersection of AI, data science, and strategic consulting - ideal for someone with a quantitative/data science background looking to move into AI products
  • Transform Datasets to Onboard onto our Product: Design synthetic population queries by onboarding custom datasets for customers
  • Improve Data Pipelines: Diagnose data issues and partner with engineering to enhance platform capabilities
  • Build confidence through rigor: Evaluate synthetic methodologies using established validation frameworks to build client trust in AI insights for high-stakes decisions
  • Lead technical engagements: Own the technical dialogue with customers—understand their data, design optimal solutions, and implement them collaboratively
  • Shape our product: Represent the voice of the customer - gather field feedback and inform product priorities based on real implementation patterns
  • Scale adoption: Enable customers to unlock full product value across the whole organisation through effective training, documentation, and use case storytelling
  • Working with high-agency individuals from all backgrounds across sales, marketing, engineering and science.


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