Артем
Automation engineer
- Рассматривает должности:
- Automation engineer, AI-креатор
- Возраст:
- 31 год
- Город проживания:
- Умань
- Готов работать:
- Киев
Контактная информация
Соискатель указал телефон и эл. почту.
Фамилия, контакты и фото доступны только для зарегистрированных работодателей. Чтобы получить доступ к личным данным кандидатов, войдите как работодатель или зарегистрируйтесь.
Получить контакты этого кандидата можно на странице https://www.work.ua/resumes/17438691/
Загруженный файл
Это резюме размещено в виде файла. Эта версия для быстрого просмотра может быть хуже, чем оригинал резюме.
PROMPT ENGINEER · AI SPECIALIST · QA & TEST BACKGROUND
[
PROFESSIONAL SUMMARY
IT professional with nearly 5 years of hands-on experience in mobile software and network testing
(ThunderSoft, field engineering), making a deliberate transition into Prompt Engineering and AI automation.
Completed the Prompt Engineer course at GoIT (2025) and applied the knowledge across a series of personal
non-commercial projects.
A QA background is a direct advantage in Prompt Engineering: the ability to write precise test cases translates into
accurate task descriptions for LLMs; experience with log analysis (QXDM, QCAT, ELT) builds the systematic thinking
needed to debug complex prompt chains; structured bug reporting skills provide a disciplined approach to evaluating
expected vs. actual AI model output.
KEY SKILLS
Prompt Engineering AI Tools & LLMs
System Prompt Design · Few-Shot · Zero-Shot GPT-4o · Claude 3 · Gemini
Role Prompting · Tree of Thought · ReAct Midjourney · DALL-E 3 · Notion AI
Prompt Chaining · Negative Prompting LangChain (basics)
Prompt Library Management
Automation & Integrations IT / QA Background
Make · Zapier · n8n Test Cases · Bug Reports · Requirements Analysis
REST API · Webhooks · JSON · Markdown BRD/SRS Documentation · UML · SQL
Basic Python (API requests) QXDM · QCAT · ELT · 2G/3G/4G/5G
WORK EXPERIENCE
Prompt Engineer — Personal Non-Commercial Projects
Self-directed Practice | 2024 – 2025 | Remote
Alongside GoIT coursework, built a series of personal projects to practise real-world LLM application and workflow automation
scenarios.
Project 1: AI Assistant for Job Description Analysis GPT-4o · Python · JSON
– Built a prompt system to automatically parse job descriptions: extracted requirements, tech stack, and soft skills into a
structured JSON format
– Designed a chain-of-thought prompt: 'what is the company looking for' → 'what is the candidate missing' → final
recommendation
– Added few-shot examples for 5 role types (QA, Dev, PM, Data, DevOps) — improved classification accuracy by
~40% vs. zero-shot baseline
– Outcome: reduced time to analyse a single job posting from 15 minutes to under 2 minutes
Project 2: QA Documentation Generator Claude 3 · Notion API · n8n
– Automated workflow: feature description in → Claude 3 generates test cases in a standardised format → auto-saved
to Notion
– Engineered a system prompt with strict output rules (title, reproduction steps, expected result, priority) to meet QA
standards out of the box
– Applied role prompting: model acts as a senior QA engineer that asks clarifying questions before generating test
cases
– 85% of generated test cases required no manual editing, validated against 30+ real feature descriptions from
ThunderSoft experience
Project 3: Prompt Testing Framework GPT API · Python · Google Sheets
– Applied a QA mindset to prompt evaluation: scoring table across 5 metrics (accuracy, completeness, format,
reproducibility, edge case handling)
– Wrote a Python script for batch testing: each prompt runs against 20 input variations; results logged to Google Sheets
for analysis
– Identified and documented 12 common prompt anti-patterns — used as a quality standard across all subsequent
projects
Project 4: Image Generation Prompt Library Midjourney · DALL-E 3 · Notion
– Structured library of 60+ prompts for branding tasks: logos, banners, illustrations, UI elements, social media visuals
– Designed a reusable template with fixed style parameters and variable fields to ensure brand consistency across
outputs
– Defined negative prompting rules to eliminate common Midjourney v6 artefacts (extra limbs, blurred text, inconsistent
shadows)
Test Team Leader
ThunderSoft | Aug 2022 – Jun 2025 (2 yrs 11 mos) | Kyiv · Remote
– Led a team of testers: task distribution, daily stand-ups, quality control, and blocker resolution
– Structured daily progress reporting in a standardised format — a skill directly transferable to documenting AI
workflows and prompt libraries
– Log analysis using ELT, QXDM, and QCAT: device activity monitoring, log parsing, and deep diagnostics of complex
technical issues
– Detailed bug documentation: reproduction steps, expected vs. actual results, registration and tracking in the bug
tracking system
– Cross-team collaboration with development: regular communication on findings, sprint planning participation, and
improvement proposals
– Ensured test reproducibility in line with industry standards — a consistency principle carried into prompt engineering
practice
Field Test Engineer
Mobile Industry | Sep 2020 – Aug 2022 (2 yrs) | Kyiv
– Mobile network testing (2G/3G/4G/5G): signal strength, connectivity, and performance across diverse environments
and scenarios
– VoLTE / VoWiFi / transition tests (SRVCC, CSFB): validation of voice calls, SMS, MMS, and data packages under
various network conditions
– Prototype device testing (MTK & Qualcomm chipsets): execution of predefined test cases, software-hardware
compatibility verification
– Log capture and analysis (QXDM, QCAT, ELT): device activity recording, log parsing, and targeted data extraction for
issue diagnosis
– Mobility and roaming testing: handovers between network cells and regions
EDUCATION & CERTIFICATIONS
Prompt Engineer
GoIT · Online Course · 2025
– LLM fundamentals: transformer architecture, tokens, temperature, context window
– Prompting techniques: few-shot, chain-of-thought, role prompting, ReAct, tree of thought
– Image generation: Midjourney, DALL-E 3, Stable Diffusion — style transfer, negative prompting
– AI workflow automation: Make, Zapier, n8n, REST API
– Capstone project: AI assistant built for a real business use case
LANGUAGES
Ukrainian English
Native B1/B2 — technical documentation, business correspondence
Похожие кандидаты
-
QA-інженер
Киев, Днепр , еще 2 города -
Тестувальник (hardware, ПЗ)
Киев -
Тестувальник
Киев, Удаленно -
Тестувальник
Киев -
Тестувальник
Киев -
Тестувальник
Киев, Удаленно