This is a remote position.
Junior Android Engineer - Remote Job, 1+ Year Experience
Annual Income: $61K - $71K
About us: Patterned Learning is a platform that aims to help developers code faster and more efficiently. It offers features such as collaborative coding, real-time multiplayer editing, and the ability to build, test, and deploy directly from the browser. The platform also provides tightly integrated code generation, editing, and output capabilities.
Responsibilities:
Create and maintain best-in-class Android apps in Kotlin
Execute product specifications, and offer insight from the Android user's perspective
Ensure Android and Software best practices are utilized in the code base
Participate in spec reviews and offer solutions specific to your platform
Collaborate with QA, Product, and Backend teams
Participate in pull request meetings and general development meetings
Requirements:
Experience implementing 3rd party SDKs
Comfortable with REST API integrations
Experience with git or similar source control
Desire to learn new technologies and remain on the cutting-edge
1+ years experience in professional mobile development, ideally including experience in Kotlin
BS degree or equivalent work experience
Skills:
Python Development
Web development (HTML, CSS, Angular)
FastAPI, Keras, Flask, langchain, Pydantic, etc
UI Engineer
Windows Server Management
Strong SQL Database experience
Content Management Systems
Databases and Structured Data
AWS experience
Flexible and adaptable with the ability to align to changing priorities
Ability to work independently
Why Patterned Learning LLC?
Patterned Learning can provide intelligent suggestions, automate repetitive tasks, and assist developers in writing code more effectively. This can help reduce coding errors, improve productivity, and accelerate the development process.
The pattern recognition is particularly relevant in the context of coding. Neural networks, especially deep learning models, are commonly employed for pattern detection and classification tasks. These models simulate human decision-making and can identify patterns in data, making them well-suited for tasks like code analysis and generation.