Similarweb

Data AS Consultant, APJ

Similarweb Tokyo, Japan Today
sales

This role requires a strong blend of technical expertise, customer-facing acumen, and solution-oriented problem solving. The Data AS Consultant will work closely with Sales & Account Managers to provide technical leadership and solution design for highly consultative enterprise projects. It is a revenue-generating pre-sales position focused on enabling technical adoption and driving customer success for both new and expansion opportunities.

This role reports directly to the Team Manager, DSI, with a dotted line to the Regional Head of Japan.

Responsibilities

Technical Consultation & Solution Design

  • Serve as a trusted technical advisor to enterprise customers, translating business goals into scalable, production-grade technical architectures.

  • Design and document data integration architectures leveraging Similarweb’s APIs, DaaS feeds, and platform products to meet enterprise data requirements.

  • Architect end-to-end data delivery pipelines into client ecosystems (e.g., Snowflake, Databricks, S3, or Google Cloud Platform).

  • Provide technical workshops and POCs, guiding clients on ingestion, normalization, and querying best practices.

  • Develop Statements of Work (SOWs), technical proposals, and detailed integration documentation to accelerate collaboration between internal teams and customers.

Technical Skill Execution Examples

  1. Integration & Data Delivery

    • Role: Design and implement integration workflows delivering Similarweb’s data via API, S3, Snowflake, or GCP Storage, tailored to customer infrastructure.

    • Technical Skills:

      • Advanced SQL querying and performance tuning in Databricks / Snowflake

      • Proficiency with data file formats (CSV, JSON, Parquet, Delta) and understanding the trade-offs between performance, compression, and schema evolution

      • Strong knowledge of ETL design, data governance, and access control

    • Outcome: Clients understand technical feasibility and best practices for incorporating Similarweb data into their analytical stack.

  2. Data Quality, Coverage, and Scalability

    • Role: Explain how data is collected, validated, deduplicated, and scaled across geographies and verticals, referencing internal reruns and benchmarks.

    • Technical Skills: Understanding of data validation, sampling frameworks, distributed storage performance, and data versioning (e.g., Delta Lake advantages).

    • Outcome: Clients gain trust in data quality and scalability across enterprise-grade analytics environments.

  3. Data Sampling & Proof-of-Concept Delivery

    • Role: Generate and deliver custom data samples aligned with client use cases, whether via API queries, Parquet exports, Delta tables, or CSV snapshots.

    • Technical Skills:

      • Hands-on data extraction and transformation using SQL and Python

      • Preparing data in optimal formats (e.g., Parquet v Delta)

      • Managing delivery through multiple mechanisms: secure S3 share, Snowflake Data Share, API endpoints, or CSV download portals.

    • Outcome: Clients can validate data structure, schema, and use-case fit before full-scale adoption.

  4. Use Case Customization & Advanced Analytics

    • Role: Demonstrate how Similarweb data can be enriched with client datasets (POS, CRM, or loyalty).

    • Technical Skills: SQL and Python for data joins, REST and GraphQL APIs, JSON schema design, and familiarity with Model Context Protocol (MCP) for LLM integrations.

    • Outcome: The client sees practical, technically sound pathways to integrating Similarweb data into their own analytical models and AI workflows.

Collaboration with Sales & Customer Teams

  • Partner with Enterprise Sales Managers to qualify and design technical solutions during the sales process.

  • Work with Enterprise Account Managers to drive expansion and deepen platform adoption through technical enablement.

  • Collaborate closely with Customer Success and Delivery teams to ensure smooth technical transitions from pre-sales to production.

  • Create reusable demos, templates, and data delivery playbooks for use across GCR teams.

  • Participate in strategic account planning and contribute feedback to product and data engineering based on customer needs.

Market & Product Expertise

  • Stay up to date with AI/LLM data standards, data engineering best practices, and cloud-native architectures.

  • Provide feedback to product and data engineering on API performance, schema design, and data format optimization.

  • Maintain familiarity with Model Context Protocol (MCP), OpenAPI, and emerging standards for data interoperability and contextual AI integrations.

Project Support & Technical Governance

  • Lead technical scoping and architecture reviews during the pre-sales phase.

  • Oversee sample generation, performance validation, and schema testing.

  • Provide escalation support on data performance, pipeline reliability, and delivery troubleshooting.

  • Ensure solutions align with data security, privacy, and compliance best practices.

Qualifications

  • Bachelor’s degree in Computer Science, Engineering, or related field.

  • 5+ years in pre-sales, solution architecture, or data consulting, with a strong focus on technical delivery.
  • Technical Expertise:

    • Data Architecture & Integration: Deep understanding of cloud ecosystems (AWS, Azure, GCP) and data warehousing frameworks (Snowflake, Databricks, Redshift).

    • SQL & Data Modeling: Strong query and optimization skills for data analysis and transformation.

    • APIs & Data Exchange: REST and GraphQL API fluency, JSON schema design, authentication (OAuth 2.0, JWT).

    • File Formats: Deep understanding of CSV, JSON, Parquet, and Delta file formats—knowing when to use each for efficiency, scalability, or incremental updates.

    • Data Sample Delivery: Ability to create, test, and deliver sample datasets across APIs, S3, and warehouse sharing mechanisms.

    • MCP & AI Integrations: Awareness of Model Context Protocol, LLM context injection, and structured data retrieval patterns.

  • Proven experience translating business requirements into technical solutions for large enterprise data ecosystems.

  • Excellent communication and presentation skills—able to bridge the gap between technical and commercial teams.

  • Fluent in Japanese and English (written and spoken) with experience serving enterprise clients.
  • Strong problem-solving, self-management, and team collaboration skills.

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