- Страна
- Мексика
Откликайтесь
на вакансии с ИИ

Data Analyst
Высокий балл обусловлен статусом компании (единорог), интересными задачами на стыке AI/ML и культурой свободы и ответственности. Это отличная возможность для карьерного роста в глобальной технологической компании.
Сложность вакансии
Роль требует серьезного опыта (4–7 лет) и глубоких знаний SQL и инструментов визуализации. Сложность заключается в необходимости работать на стыке операционных процессов и машинного обучения в быстрорастущем стартапе-единороге.
Анализ зарплаты
Зарплата для опытных аналитиков данных в Мексике в технологическом секторе обычно выше среднего по рынку, особенно в компаниях уровня 'единорог'. Указанные рыночные оценки отражают уровень компенсации для специалистов с опытом 4-7 лет в международном финтехе.
Сопроводительное письмо
I am writing to express my strong interest in the Data Analyst – Labeling position at Incode. With over 5 years of experience in operational analytics and a deep proficiency in SQL and Tableau, I have a proven track record of transforming complex operational data into actionable insights. My background in building data pipelines and dashboards aligns perfectly with your need to scale labeling operations and improve ML performance.
In my previous roles, I have focused on quantifying task complexity and optimizing SLA compliance, which directly mirrors the responsibilities outlined for this position. I am particularly drawn to Incode’s mission of powering a world of trust and am excited by the opportunity to contribute to a Series B unicorn that is redefining identity verification. I am a self-driven analyst who thrives in high-growth environments and enjoys the challenge of building data foundations from the ground up.
Составьте идеальное письмо к вакансии с ИИ-агентом

Откликнитесь в incode уже сейчас
Присоединяйтесь к Incode и станьте ключевым звеном в развитии AI-технологий мирового уровня!
Описание вакансии
POWER A WORLD OF TRUST
Incode is the leading provider of world-class identity solutions that is reinventing the way humans authenticate and verify their identities online to power a world of digital trust.
Through our revolutionary identity solutions, we are unleashing the business potential of universal industries including finance, government, retail, hospitality, gaming, and more, by reducing fraud and transforming human interactions with data, products, and services.
We’re in the process of rapidly scaling our diverse global team and we’re looking for entrepreneurial individuals and leaders who are curious, driven, and excited by ownership to join a Unicorn-status scale-up!
About Incode
Incode is a Series B unicorn ($1.25 B valuation) rewriting how the world proves identity. Our AI-powered platform lets leading banks, fintechs, marketplaces, and governments deliver friction-free experiences while defeating fraud and safeguarding privacy. Customers such as Citi, AirBnB, Block, Chime, Sixt, and TikTok rely on Incode to power their identity verification and security. Recently named a leader in the Gartner® Magic Quadrant™ for Identity Verification, we’re scaling fast.
The Impact You’ll Make
As our Data Analyst – Labeling, you will be the analytical heartbeat of our Data Labeling Team. You’ll design the dashboards, pipelines, and reporting layers that reveal performance, identify friction, and enable high-precision decisions. Your work will help transform how we measure and scale labeling operations — influencing ML performance, customer delivery, and internal alignment. You will report to the Head of Live Services and serve as the dedicated analytics partner for labeling leadership.
What You’ll Own & Drive
- Build visibility: Design dashboards and reporting tools to track labeling throughput, SLA compliance, backlog dynamics, reviewer performance, and QA patterns.
- Define new metrics: Propose and implement creative ways to measure labeling quality, accuracy, efficiency, and cost across workflows.
- Support stakeholders: Provide analytical support to ML Engineering (e.g., model-label performance), Product (labeling impact on features), and Sales/CS (client deliverables and operational SLAs).
- Model labeling effort: Quantify task complexity, labeling speed, and reviewer dynamics across tools and task types.
- Own the data foundation: Build pipelines that consolidate data from SQL (Redshift, Postgres), annotation tools, QA audits, and semi-structured feedback into a coherent source of truth.
- Scale trust in data: Help the labeling org move from intuition to instrumentation by making operational data accessible and reliable.
The Qualities That Set You Apart
- Analytical precision – You turn operational noise into clarity using logic, structure, and well-formed hypotheses.
- Builder mindset – You bring structure to ambiguity and enjoy being the first to formalize systems.
- Cross-functional fluency – You can speak with ML, Ops, Product, or Sales and deliver insights in a language they understand.
- Operational curiosity – You care about effort, feedback loops, and improving the system — not just answering questions.
- Trustworthy and self-driven – You operate independently and with integrity, always raising the bar for analytical rigor.
Your Background
- 4–7 years of experience as a data analyst, business analyst, or ops analyst (preferably in tech, fintech, or ML/ops settings).
- Strong SQL skills (Redshift preferred), with experience in joining large datasets and building reproducible queries.
- Proficiency in dashboarding tools like Tableau, Metabase, or Looker.
- Working knowledge of Pythonfor automation or data exploration.
- Experience with labeling systems, QA pipelines, or operations metrics is a plus.
- Proven success owning end-to-end analytics cycles (from question to insight to impact).
- Comfortable translating complex systems into understandable views for diverse audiences.
Why Incode?
- Mission with Meaning – Shape how billions of people prove identity—safely, simply, and ethically.
- Rocket-Ship Growth – Join at an inflection point where your strategies will compound in value for years.
- Elite Team & Backing – Work a truly global with top engineers, designers, and investors who share your ambition to dominate a category.
- Ownership & Autonomy – Operate like a founder with the resources of a unicorn.
- Global Impact – Every program you launch will reverberate across industries and continents.
Ready to ignite the future of trust?
Lead the narrative. Empower the field. Join Incode and turn innovation into unstoppable market momentum.
Aspects of our Culture:
- High performance
- Freedom & responsibility
- Context, not control
- Highly aligned, loosely coupled
- Continuous Feedback
- Promotions & Development
- Learn more about Life at Incode!
Benefits & Perks:
- Flexible Working Hours & Workplace
- Open Vacation Policy
Equal Opportunities:
Incode is an equal opportunity employer, committed to creating a diverse and inclusive work environment. We take great pride in having an inclusive, diverse, and global team, and we are always looking for talented and passionate individuals from all backgrounds and walks of life. As part of our commitment to inclusion, we ensure that reasonable accommodations are available throughout the hiring process. If you require any accommodation due to a disability or specific need, please let our Talent Acquisition team know—we’ll do our best to support you.
Applicant Data Privacy:
We will only use your personal information concerning Incode’s application, recruitment, and hiring processes.
Создайте идеальное резюме с помощью ИИ-агента

Навыки
- SQL
- Amazon Redshift
- PostgreSQL
- Tableau
- Metabase
- Looker
- Python
- Data Visualization
- Dashboard design
- Data Pipelines
Возможные вопросы на собеседовании
Проверка навыков работы с данными в специфическом контексте разметки.
Как бы вы спроектировали систему метрик для оценки качества работы команды разметки данных?
Оценка технического владения SQL для работы с большими данными.
Опишите ваш опыт оптимизации сложных SQL-запросов в Redshift или Postgres при работе с миллионами строк.
Проверка умения работать с неопределенностью и строить процессы с нуля.
Расскажите о случае, когда вам пришлось создавать аналитическую отчетность для процесса, который ранее никак не измерялся.
Оценка навыков взаимодействия с техническими командами.
Как вы будете объяснять команде ML-инженеров, что текущие данные разметки негативно влияют на точность модели?
Проверка навыков приоритизации в условиях стартапа.
Как вы расставляете приоритеты, когда одновременно поступают запросы от отделов продукта, продаж и разработки ML?
Похожие вакансии
Health Information Specialist I
Health Information Specialist I
Health Information Specialist I
Health Information Specialist I
Health Information Specialist I
Staff Data Platform Engineer
1000+ офферов получено
Устали искать работу? Мы найдём её за вас
Quick Offer улучшит ваше резюме, подберёт лучшие вакансии и откликнется за вас. Результат — в 3 раза больше приглашений на собеседования и никакой рутины!
- Страна
- Мексика