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Welcome to SECiD

The site to connect with UNAM's Data Science Alumni Society.

SECiD (Sociedad de Egresados en Ciencia de Datos, A. C.) is a vibrant professional network empowering UNAM data science graduates. Our goal is to foster meaningful connections, drive professional growth, and create opportunities for our community through networking events, exclusive job postings, continuous learning initiatives, and collaborations that support and boost the ongoing success of data science professionals from the National Autonomous University of Mexico (UNAM).

SECiD Logo

Why join SECiD?

Professional Networking

Connect with other UNAM data science alumni and expand your professional network in the industry.

Job Opportunities

Access exclusive job offers and career opportunities at leading companies in the sector.

Professional Growth

Participate in events, workshops, and conferences to stay updated with the latest trends.

Strong Community

Be part of a community committed to knowledge and experience sharing.

Initiatives

Consulting

Get consulting services from the best prepared professionals on data science and machine learning in Mexico.

Contact Us.

Hackathons

Do you have an interesting problem within your organization and would like to co-host a hackathon?

Contact Us.

Workshops and Courses

Get the knowledge from our community with on-demand courses from experts on data science and machine learning.

In Roadmap.

Seminars

Gather around with experts in the field to present and discuss academic and engineering hot topics.

In Roadmap.

Mentoring

Are you a data science graduate who wants some mentoring or feedback from your peers? Get mentoring or become a Mentor.

In Roadmap.

Start your journey

Find your next job

Explore exclusive job opportunities for SECiD members at innovative companies.

View jobs

Join our community

Register as a SECiD member and access all the benefits of our professional network.

Register