Job Closed
This listing is no longer active.
Avvoka is a next generation document automation, negotiation and analysis platform.
Graduate Software Developer – Document Template Automation Specialist
Location
Philippines
Posted
71 days ago
Salary
0
Seniority
Entry Level
Job Description
Graduate Software Developer – Document Template Automation Specialist
Avvoka
• Design and build intelligent automated templates • Turn flat Word precedents into structured, automated templates using Avvoka’s platform. • Apply coding fundamentals, conditional logic, and variable fields to create reliable and dynamic documents. • Translate structured instructions and client briefs into functional, scalable automation solutions. • Test, debug, and optimise your creations • Conduct thorough quality checks to ensure templates generate accurately under multiple scenarios. • Troubleshoot and resolve logic, formatting, or automation errors. • Maintain reusable, scalable structures that can evolve with client needs. • Work directly with clients to understand their document automation requirements. • Partner with Customer Success and Product teams to ensure templates meet best practices. • Advise on contract structure to improve automation efficiency and clarity. • Update and improve templates based on feedback and evolving client requirements. • Implement dynamic fields, integrations, and conditional workflows to support complex contracts. • Ensure consistency and alignment across templates with client branding and formatting standards.
Job Requirements
- A degree in software development, computer science, or a related field.
- Strong coding fundamentals and logical problem-solving skills.
- Excellent written and spoken English for client-facing communication.
- Attention to detail, ownership, and a proactive approach to learning.
- Bonus points if:
- You have experience with workflow automation, scripting, or low-code/no-code platforms.
- You have prior exposure to document or contract automation.
Benefits
- Clear scope of work, with clear success criteria and meaningful deliverables
- Ability to invoice via own company / umbrella / sole trader
- Autonomy over how and when work is delivered
- Access to necessary systems, tools, and documentation
- Clear success criteria and delivery milestones
- Opportunity to work on complex, high-impact problems
- Exposure to enterprise / scale-up environments
- Ability to shape systems, processes, or architecture
- Strong portfolio / reference value
Related Guides
Related Job Pages
More Full-stack Engineer Jobs
Data Product Engineer Job Description We are seeking an experienced and highly motivated Data Product Engineer to bridge the gap between engineering and product management. This role involves owning the end-to-end lifecycle of our data products, from strategic conception and requirement gathering to technical implementation, quality assurance, and adoption. The ideal candidate will leverage a strong background in scalable data engineering, cloud architecture, and business intelligence to transform complex business problems into reliable, high-value data assets and actionable insights.Key Responsibilities. ● Product Strategy & Roadmap: Partner with Product Managers, Business Analysts, and key stakeholders (Finance, Operations) to define the vision, strategy, and roadmap for critical data products. ● Requirements & Design: Translate high-level business objectives and user needs into detailed, clear, and actionable data requirements, architecture, and technical designs for data products. ● Data Pipeline Development: Design, build, and maintain highly scalable and reliable ETL/ELT data pipelines using modern cloud tools (e.g., Azure Data Factory, AWS Glue, Databricks, PySpark) to integrate diverse data sources. ● Data Modeling & Warehousing: Develop and optimize performant data models (Star/Snowflake schema) in cloud data warehouses (e.g., Snowflake, BigQuery, Synapse) with a focus on data quality, governance, and compliance. ● Quality & Governance: Implement data quality checks, data lineage tracking (e.g., dbt), and robust testing to ensure the accuracy and trustworthiness of all delivered data products. ● Visualization & Adoption: Lead the delivery of BI solutions (e.g., Power BI, Tableau), ensuring dashboards and reports are intuitive, accurate, and drive measurable business decisions. ● Deployment & Operations: Utilize Agile methodologies and CI/CD practices (e.g., GitHub, Azure DevOps, Jenkins) to deploy, monitor, and optimize data products, ensuring high availability and cost efficiency. ● Mentorship & Collaboration: Act as a technical leader, mentoring junior team members and fostering a culture of data-as-a-product within the organization.
Data Product Engineer Job Description We are seeking an experienced and highly motivated Data Product Engineer to bridge the gap between engineering and product management. This role involves owning the end-to-end lifecycle of our data products, from strategic conception and requirement gathering to technical implementation, quality assurance, and adoption. The ideal candidate will leverage a strong background in scalable data engineering, cloud architecture, and business intelligence to transform complex business problems into reliable, high-value data assets and actionable insights.Key Responsibilities. ● Product Strategy & Roadmap: Partner with Product Managers, Business Analysts, and key stakeholders (Finance, Operations) to define the vision, strategy, and roadmap for critical data products. ● Requirements & Design: Translate high-level business objectives and user needs into detailed, clear, and actionable data requirements, architecture, and technical designs for data products. ● Data Pipeline Development: Design, build, and maintain highly scalable and reliable ETL/ELT data pipelines using modern cloud tools (e.g., Azure Data Factory, AWS Glue, Databricks, PySpark) to integrate diverse data sources. ● Data Modeling & Warehousing: Develop and optimize performant data models (Star/Snowflake schema) in cloud data warehouses (e.g., Snowflake, BigQuery, Synapse) with a focus on data quality, governance, and compliance. ● Quality & Governance: Implement data quality checks, data lineage tracking (e.g., dbt), and robust testing to ensure the accuracy and trustworthiness of all delivered data products. ● Visualization & Adoption: Lead the delivery of BI solutions (e.g., Power BI, Tableau), ensuring dashboards and reports are intuitive, accurate, and drive measurable business decisions. ● Deployment & Operations: Utilize Agile methodologies and CI/CD practices (e.g., GitHub, Azure DevOps, Jenkins) to deploy, monitor, and optimize data products, ensuring high availability and cost efficiency. ● Mentorship & Collaboration: Act as a technical leader, mentoring junior team members and fostering a culture of data-as-a-product within the organization.
Data Product Engineer Job Description We are seeking an experienced and highly motivated Data Product Engineer to bridge the gap between engineering and product management. This role involves owning the end-to-end lifecycle of our data products, from strategic conception and requirement gathering to technical implementation, quality assurance, and adoption. The ideal candidate will leverage a strong background in scalable data engineering, cloud architecture, and business intelligence to transform complex business problems into reliable, high-value data assets and actionable insights.Key Responsibilities. ● Product Strategy & Roadmap: Partner with Product Managers, Business Analysts, and key stakeholders (Finance, Operations) to define the vision, strategy, and roadmap for critical data products. ● Requirements & Design: Translate high-level business objectives and user needs into detailed, clear, and actionable data requirements, architecture, and technical designs for data products. ● Data Pipeline Development: Design, build, and maintain highly scalable and reliable ETL/ELT data pipelines using modern cloud tools (e.g., Azure Data Factory, AWS Glue, Databricks, PySpark) to integrate diverse data sources. ● Data Modeling & Warehousing: Develop and optimize performant data models (Star/Snowflake schema) in cloud data warehouses (e.g., Snowflake, BigQuery, Synapse) with a focus on data quality, governance, and compliance. ● Quality & Governance: Implement data quality checks, data lineage tracking (e.g., dbt), and robust testing to ensure the accuracy and trustworthiness of all delivered data products. ● Visualization & Adoption: Lead the delivery of BI solutions (e.g., Power BI, Tableau), ensuring dashboards and reports are intuitive, accurate, and drive measurable business decisions. ● Deployment & Operations: Utilize Agile methodologies and CI/CD practices (e.g., GitHub, Azure DevOps, Jenkins) to deploy, monitor, and optimize data products, ensuring high availability and cost efficiency. ● Mentorship & Collaboration: Act as a technical leader, mentoring junior team members and fostering a culture of data-as-a-product within the organization.
• Deliver backend services that coordinate fast, fault-tolerant cross-chain transactions across multiple blockchain ecosystems • Improve system reliability and resilience under adversarial conditions to strengthen protocol trust and uptime • Reduce transaction processing latency through optimizations in RPC usage and system performance • Enable seamless integration across EVM and non-EVM ecosystems, accelerating adoption of CCIP • Increase throughput to scale CCIP to support thousands of concurrent cross-chain transfers without degradation or backlog • Build internal systems that allow rapid debugging, replay, and resolution of failed transactions


