Say no to manually filling long application forms
Visit any careers page and a lightning button will pop up on any compatible page with a form
Use ChatGPT to auto-fill job forms
Ask for Referral for any job post
Lawrence Yap
Full stack at Siri 🍎
About
Lawrence Y. is a highly skilled Full Stack Engineer at Apple, specializing in Siri. With almost a decade of relevant experience in the tech industry, he has honed his expertise in Software Engineering, SDET, and testing. Prior to his current role, Lawrence worked as a Software Development Engineer at Apple, where he contributed to the development of the operating system. Additionally, he has also worked as a Software Development Engineer in Test at 24/7.ai, where he was responsible for ensuring the quality of the company's software products. Lawrence holds a Bachelor of Science (B.S.) degree from Arizona State University and a Master of Science (MS) degree from the Georgia Institute of Technology. His education has provided him with a strong foundation in computer science and engineering principles. As a Full Stack Engineer, Lawrence is responsible for the development of Siri, Apple's intelligent personal assistant. He is involved in the design, development, and testing of Siri's various features and functionalities. He is also responsible for ensuring that Siri is compatible with different Apple devices and operating systems. Lawrence's technical skills include software engineering, web development, and test automation. He is proficient in programming languages such as Java, Python, and Swift. He also has experience in working with various software testing tools and frameworks. Overall, Lawrence is a highly skilled and experienced Full Stack Engineer with a strong background in software engineering and testing. He is passionate about developing innovative solutions that enhance the user experience and is committed to delivering high-quality software products.
Education Overview
Companies Overview
• apple
• 247.ai
• cognizant
Experience Overview
10.6 Years
Find anyone’s contact
Experience
Skills
Boost your visibility and stand out to employers with referrals from your LinkedIn connections.
Amazon S3
Automation
Data Pipelines
Kafka
Machine Learning (ML)
MongoDB
Natural Language Processing (NLP)
PostgreSQL
quality assurance (QA)
ReactJS
Redis
Ruby
SDET
Software Engineer
test
Test Automation
Web
Web Services
Contact Details
Email (Verified)
lawXXXXXXXXXXXXXXXXXXXXomMobile Number
+91XXXXXXXXXXEducation
No data found
Frequently asked questions
Find anyone’s contact and let Weekday reach out to them on your behalf
Start hiring nowStop manually filling job applications. Use AI to auto-apply to jobs
Look for jobs now