Network Analyst (Data Analyst)

São Paulo
Research & Development – AI /
Full Time - remote /
Remote
We’re not here to waste your time. Read this carefully and only apply if you’re ready to do real work that matters.

What the job entails:

    • You’ll be part of a small, sharp team applying Network Science to real-world business problems inside a high-impact AI exploration unit. We’re turning raw data into meaningful graphs, analyzing connections, detecting hidden patterns, and building tools to help autonomous agents make better decisions.
    • You won’t be optimizing dashboards or stuck tweaking marketing reports. You’ll be building intelligence infrastructure.

Your main tasks:

    • Transform tabular data into graphs that expose structure and behavior.
    • Research, prototype, and deploy graph algorithms to detect communities, centrality, anomalies, and more.
    • Build and maintain ETL pipelines for graph data extraction and enrichment.
    • Design graph visualizations to support human and machine understanding.
    • Collaborate with Data Scientists and LLM Engineers to integrate network-based reasoning into our autonomous systems.
    • Experiment often, document clearly, and ship code that matters.

Technologies / techniques used:

    • Python (heavy use)
    • SQL (PostgreSQL, BigQuery)
    • Graph libraries (e.g. NetworkX, cuGraph, Graphistry)
    • Visualization tools (Plotly, Dash, D3, etc.)
    • Neo4j or other graph databases
    • GCP (preferred) or any major cloud provider
    • GitHub + CI/CD pipelines

What you'll need:

    • Strong Python and SQL skills.
    • Ability to break down abstract problems into experimental pipelines.
    • Clear communication skills in Portuguese and English.
    • Curiosity and initiative. You find answers, you don’t wait for them.
    • Solid data wrangling and visualization abilities.
    • Willingness to go deep into Network Science, even if you’re not an expert (yet).

Nice to have:

    • Experience with NetworkX, Neo4j, or any graph database.
    • Previous Experience or openness to learn and work with Elixir codebases
    • Background in graph theory, link prediction, community detection.
    • Knowledge of probabilistic modeling or LLM integration with graph-based systems.
    • Familiarity with GCP and large-scale data pipelines.

Recruiting process outline:

    • Open-ended technical case – you’ll analyze a small graph dataset and extract insights.
    • Technical interview – discuss your solution and background.
    • Cultural interview – aligned expectations, mutual fit.
    • If you’re not interested in doing a real technical assessment or engaging in an honest conversation, don’t apply.
Diversity and inclusion:
We believe in social inclusion, respect, and appreciation of all people. We promote a welcoming work environment, where each CloudWalker can be authentic, regardless of gender, ethnicity, race, religion, sexuality, mobility, disability, or education.