Ir al contenidoIr al pie de página
  • Empleos
  • Empresas
  • Sueldos
  • Para empresas

      Impulsa tu carrera profesional

      Averigua cuánto podrías ganar, encuentra el empleo perfecto y comparte información sobre tu vida laboral y personal de forma anónima.

      employer cover photo
      employer logo
      employer logo

      UpLift (CA)

      ¿Esta es tu empresa?

      Información
      Opiniones
      Sueldos y beneficios
      Empleos
      Entrevistas
      Entrevistas
      Búsquedas relacionadas: Opiniones sobre UpLift (CA) | Ofertas de empleos en UpLift (CA) | Sueldos en UpLift (CA) | Beneficios en UpLift (CA)
      Entrevistas de UpLift (CA)Entrevistas para el puesto de Data Engineer en UpLift (CA)Entrevista de UpLift (CA)


      Glassdoor

      • Acerca de
      • Premios
      • Blog
      • Contacto

      Empresas

      • Cuenta gratuita de empresa
      • Centro de empresas

      Información

      • Ayuda
      • Normas
      • Condiciones de uso
      • Privacidad y opciones de anuncios
      • No vender ni compartir mi información
      • Herramienta de consentimiento de cookies

      Trabaja con nosotros

      • Anunciantes
      • Empleo
      Descargar aplicación

      • Buscar por:
      • Empresas
      • Empleos
      • Ubicaciones

      Copyright © 2008-2026. Glassdoor LLC. «Glassdoor», «Worklife Pro», «Bowls» y sus logotipos son marcas comerciales registradas de Glassdoor LLC.

      Empresas seguidas

      Sigue a tus empresas favoritas para estar al tanto de las últimas oportunidades y disponer de información de primera mano.

      Búsquedas de empleo

      Recibe recomendaciones y actualizaciones personalizadas al iniciar tu búsqueda.

      Entrevista de Data Engineer

      29 abr 2023
      Candidato de entrevista anónimo
      Toronto, ON
      Sin oferta
      Experiencia positiva
      Entrevista normal

      Solicitud

      Envié una solicitud electrónica. El proceso duró 3 semanas. Acudí a una entrevista en UpLift (CA) (Toronto, ON) en abr 2023

      Entrevista

      The interview process consisted of 5 phases, I only got to phase 3. Phase 1: Phone Screen Phase 2: Hiring Manager Interview Phase 3: Coding Challenge Phase 4: Panel Phase 5: Cultural fit

      Preguntas de entrevista [1]

      Pregunta 1

      Phone Screen 1. Asked general questions about me, what do I know about the company? 2. Provided information about the company 3. Asked about projects I have worked on before. 4. Technical screening from hiring team, rapid fire questions a. In a relational database, which operator is used to get the unique values of a column Ans: DISTINCT b. Which process would benefit from columnar data. MCQ: A. OLTP B. OLAP C. Quick read Ans: B (OLAP) - think data warehouse and analytics. Can ignore whole columns that aren’t needed. c. In python, which data structure consists of a key that can be looked up. Ans: dictionary d. Given an ordered list, what would be the time complexity of doing binary search on it? Ans: O(log n) - keyword is “ordered” here. Hiring Manager Interview 1. What am I looking for in my next role? 2. Provided information about company and team. Talked about the perks of being part of that team in particular. Lots of learning opportunities which is great. 3. Asked about a project I was proud of/successful in. a. Followed up with technical questions on it, for example, why did you choose to architect it that way versus another way. 4. I talked a lot about bronze and silver tables (medallion architecture in Databricks) a. Followed up with technical question: should a bronze table be read optimized or write optimized? Ans: write optimized - we are capturing large volumes of data from potentially multiple sources. 5. Asked about if I am comfortable with technologies like AWS, databricks, python, spark 6. Asked if my vanilla python skills are good? (vanilla as in not pyspark...or similar) Coding Challenge 1. Quick introduction then presented me with the problem. 2. Problem snippet Q1: Overall Goal: You want to pre-process this data such that you can look up a loan_id and transaction_id and efficiently get the latest data returned Context: The data is unique by loan_id-transaction_date Assumptions: for a loan_id, a row that comes later has the most update data, previous row can be ignored For example if we look up loan_id=123 and transaction_date='2022-12-01', we get 100.0 and 'def' back. file = [ (123, 50.0, '2022-11-01', 'xyz'), (234, 70.0, '2022-10-01', 'abc'), (123, 100.0, '2022-12-01', 'def'), (234, 50.0, '2022-11-01', 'xyz'), (567, 30.0, '2022-09-01', 'abc'), (123, 70.0, '2022-11-01', 'xyz'), ] # Q2: Which (primitive) data structure would you use to pre-process the data above to make it efficient to retrieve a certain loan_id on a certain date? Ans: dictionary (because of O(1) lookup) # Q3: Let's assume that any loan_id and transaction_date desired are present in the data, how does this change your approach or simplify the problem? Ans: This simplifies the problem because we can directly lookup the key we want # Q4: Let's assume that the above assumption is NOT true, that is we might need to lookup dates that are not present in the data and we want to find the closest date seen so far. For example if we look up loan_id=123 and transaction_date='2022-11-15', we get 70.0 and 'xyz' because the closest lower-bound date is '2022-11-01'. In the data, there are two records for that loan_id and transaction_date but we take the most recent one (the lower one in the data) Let's actually get to coding it now import pytest def file_preprocessing(file): transaction_dict = {} loan_date_dict = {} for loan_id, amount, transaction_date, application_id in file: if loan_id in transaction_dict: transaction_dict[loan_id][transaction_date] = (amount, application_id) loan_date_dict[loan_id].add(transaction_date) else: transaction_dict[loan_id] = {transaction_date: (amount, application_id)} loan_date_dict[loan_id] = {transaction_date} return transaction_dict, loan_date_dict def get_transaction(loan_id, transaction_date, transaction_dict, loan_date_dict): closest_date = max({tr_d for tr_d in loan_date_dict[loan_id] if tr_d <= transaction_date}) return transaction_dict[loan_id][closest_date] def test_file_processing(): assert len(file_preprocessing(file)) == 3 def test_file_processing_type(): assert isinstance(file_preprocessing(file), dict) def test_file_processing_1(): assert len(file_preprocessing(file)[123]) == 2 def test_get_transaction(): # did not reach this part pass if __name__ == "__main__": pytest.main()
      Responder pregunta
      3

      Otras opiniones sobre las entrevistas para el puesto de Data Engineer en UpLift (CA)

      Entrevista de Data Engineer

      19 nov 2021
      Candidato de entrevista anónimo
      Sin oferta
      Experiencia negativa
      Entrevista normal

      Solicitud

      Envié una solicitud electrónica. Acudí a una entrevista en UpLift (CA)

      Entrevista

      I recently interviewed with Uplift for Data Engineer position. The recruiter call went really well with 5 short answer type technical questions. Later on I had a technical round with one of the team members for 45 minutes. Questions were normal based on python and sql but the interviewer was pretty bad and he expects us to answer what he has in his mind. I felt that he doesn't have enough knowledge on few things, don't know how he is working in that company.

      Preguntas de entrevista [1]

      Pregunta 1

      python and sql questions related to joins
      Responder pregunta
      1

      Entrevista de Data Engineer

      19 jun 2022
      Candidato de entrevista anónimo
      Sin oferta
      Experiencia negativa
      Entrevista normal

      Solicitud

      Envié una solicitud electrónica. Acudí a una entrevista en UpLift (CA) en ene 2020

      Entrevista

      It was not too hard or too easy. Basic questions about your interests, experiences and knowledge. The interviewers are nice. The process was smooth and convenient. Very nice people. Very nice people.

      Preguntas de entrevista [1]

      Pregunta 1

      Some basic questions about your experiences.
      Responder pregunta

      Las mejores empresas en cuanto a «Remuneración y beneficios» cerca de ti

      avatar
      HSBC
      3.7★Remuneración y beneficios
      avatar
      Bank of America
      3.8★Remuneración y beneficios
      avatar
      Barclays
      3.8★Remuneración y beneficios
      avatar
      Capital One
      3.9★Remuneración y beneficios