IT staffing and language-tech services for remote contract teams
Fidel Softech is a India-based IT services firm offering remote contract developers, QA, and analysts alongside language-localization services. The company's tech stack skews toward enterprise integrations (ServiceNow, SAP, Infor) and data tools (Python, Tableau, PowerBI), reflecting its core business: staffing and staff-augmentation work. Minimal hiring velocity and a dispersed department mix suggest operational maturity over rapid scaling; notably, they're actively tackling AI enhancement in Indian languages and speech recognition—early signals of a push into language-tech differentiation beyond traditional staffing.
Notable leadership hires: Lead Generation
Fidel Softech, founded in 2004 and headquartered in Pune, operates as a public company with 201–500 employees. The firm provides three main service lines: remote IT staffing (developers, QA, data analysts), enterprise software localization and translation (including a proprietary tool called Linguify), and bilingual staffing and consulting. They serve primarily US, UK, and European clients, with a stated focus on Fortune 500 companies and mid-market firms. Primary technical expertise centers on Java, .NET, Python development, cloud platforms (AWS, Azure, GCP), and enterprise applications (ServiceNow, SAP).
Primary stack includes Java, .NET, Python, ServiceNow, SAP, AWS, Azure, GCP, Kubernetes, Docker, and data tools (Tableau, Power BI). Analytics and sales tracking rely on Google Analytics, LinkedIn Sales Navigator, and Zoho CRM.
Active hiring occurs in India and the United States. Current open roles span engineering, data, design, marketing, sales, and support functions, with most positions at mid-level and intern seniority.
Language localization and translation services (backed by their Linguify platform), enterprise software localization, website translation, and consulting. They also manage application and infrastructure services for enterprise clients.
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