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Senior Python/Machine Learning Developer - Remote - Latin America Full
Stack Labs Published 09 Mar 2024 Share this job Remote Full Time Role Highlights - Python
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- Integrations
- Full Stack
- CI
- Software Design
- SOA
- Microservices
- SAAS
- Agile
- Scrum
- Startup
- Google Analytics Tools, Libraries and Frameworks - PySpark Description Full
Stack Labs is seeking a Senior Python/Machine Learning Developer to build distributed software development teams and deliver digital solutions.
The candidate will integrate into client teams for augmentation or work on our product teams to design and develop solutions.
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Key skills include Python, Machine Learning, Azure, SQL, Spark or PySpark, and SOA architecture, with a focus on cloud-based SaaS applications.
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Requirements include proficiency in English, a four-year college degree, and at least 6 years of professional software development experience.
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Note:
Some data may have been generated via GPT-4 summarization and could contain inaccuracies.
Please refer to the full external job listing for authoritative details.
Full
Stack Labs is a rapidly growing software consultancy serving notable clients like Uber, GoDaddy, MGM, Siemens, and Stanford University.
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We focus on building distributed teams and delivering impactful digital solutions.
As an employee-first company, we prioritize hiring top talent across the Americas and fostering a positive work environment.
We are committed to providing meaningful career opportunities and have a proven track record of successful project delivery, high customer satisfaction, and a strong reputation, as reflected in our 4.5-star Glass
Door rating and a Net Promoter Score of 68.
Postúlate en Kit Empleo: kitempleo.pe/empleo/wld31
📌 Senior Python/Machine Learning Developer - Remote - Latin America (Chimbote) (Perú)
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