CakeResume Talent Search

Advanced filters
On
4-6 years
6-10 years
10-15 years
More than 15 years
Avatar of Massoud Rajavi.
Avatar of Massoud Rajavi.
Leader @MEK Iran
1967 ~ Present
More than one year
1980 offering a platform that promoted freedom of speech and religion, equal rights for women and separation of church and state, but one week before the election, his participation was blocked by Khomeini. At various stages in the journey that has become MEK Iran's history, Massoud Rajavi has led it with integrity, courage, and the steadfast belief in the ideals of the small group of young, freedom-loving university students and intellectuals who formed the only Muslim revolutionary movement in Iranian history, committed to guiding the nation to a free and democratic future. Work Experience MEK Iran
Political Science
Human Resources
Legal Advice
Part-time / Interested in working remotely
More than 15 years
Teheran University
Political Law
Avatar of Julie Lea.
Avatar of Julie Lea.
Founder and CEO @The Mystic Krewe of Nyx
2011 ~ Present
CEO
More than one year
Julie Lea Julie Lea is the Founder & CEO of the Mystic Krewe of Nyx , the largest parading organization in Mardi Gras history. She is also the Founder and CEO of the Krewe of Pandora and the Nola Nyxettes. Julie Lea formed the Mystic Krewe of Nyx in 2011 and has since led it to thrive as the largest parading krewe in Mardi Gras history. The krewe is known for its roots in fun, sisterhood, and merriment for women of all backgrounds who are ready to let their inner goddess shine through. In just seven short years
Not open to opportunities
Full-time / Not interested in working remotely
More than 15 years
California Coast University
Criminal Justice
Avatar of WooCasino.
1
Within one month
a gaming experience that is both safe and fun. If you're looking for a top-notch online casino, Woo Casino is the place to go because of their helpful customer service representatives and lucrative bonus programs. Are internet casinos allowed to retain winnings? The situations in which legitimate online casinos like Woo Casino have the authority to withhold earnings are often tied to the enforcement of its terms and conditions and are subject to stringent regulation. Examples of this include situations when it is necessary to confirm a player's identification in order to fore.
Word
Employed
Not open to opportunities
Intern / Remote Only
More than 15 years
Avatar of [GANZER-HD]» Geistervilla Stream Deutsch Kostenlos!!.
Within one year
aldana, 𝘀am W𝐨rthingt𝐨n, 𝘀ig𝐨urney Weaver, Kate Win𝘀let, 𝘀tephen Lang, Cli𝐟𝐟 Curti𝘀, J𝐨el M𝐨𝐨re, CCH P𝐨under, Edie 𝐟alc𝐨, Jemaine Clement „Geistervilla“ – Handlung Wa𝘀 die k𝐨nkrete Handlung v𝐨n „Geistervilla“ betri𝐟𝐟t, halten 𝘀ich die Verantw𝐨rtlichen 𝘀ehr zurück. Bi𝘀her i𝘀t lediglich bekannt, da𝘀𝘀 𝘀ich die 𝐟𝐨rt𝘀etzung um die junge 𝐟amilie de𝘀 𝘀öldner𝘀 Jake 𝘀ully (𝘀am W𝐨rthingt𝐨n) und der außerirdi𝘀chen Kriegerin Neytiri (Z𝐨e 𝘀aldana) drehen wird. Zudem 𝘀𝐨ll eine alte Bedr𝐨hung zurückkehren, 𝘀𝐨da𝘀𝘀 die kleine 𝐟amilie gezwungen i𝘀t, ihr Zuhau𝘀e zu verla
Employed
Full-time / Interested in working remotely
4-6 years
Avatar of the user.
Avatar of the user.
Attorney @Yale Fishman ESQ
2015 ~ Present
More than one year
Law
Legal Administration
Legal Assistance
Full-time / Interested in working remotely
More than 15 years
Touro College
Law
Avatar of the user.
More than one year
Business Development
Strategic
Employed
Not open to opportunities
Full-time / Not interested in working remotely
4-6 years
Avatar of David Ekpo.
Avatar of David Ekpo.
Senior Full Stack Engineer @Legitify Inc
2021 ~ Present
Within one year
versions), NodeJS, ExpressJS, Flask, Gin, Beego, Docker, MongoDB, MySQL, PostgresSQL, Jest, Cucumber, Kubernetes, Vagrant, Git, e.t.c. Others Software architecture, API Design, Kong, AWS, GCP, Heroku, BDD, Scrum, Travis CI, Gitlab CI, Github Actions, DS and algorithms, shell scripting. Work Experience Senior Full Stack Engineer • Legitify Inc MayPresent Designed microservices architecture of the platform - along with the CTO - for high availability, scalability, and performance to cater to the first 1 million users. Worked to support the CTO with day-to-day tasks. Involved in overseeing the overall development efforts which were instrumental in
Full-time / Interested in working remotely
4-6 years
University of PortHarcourt
Mathematics and Computer Science
Avatar of the user.
Avatar of the user.
Past
商標專員 @聖島國際專利商標事務所
2014 ~ 2021
專員
Within one year
Word
Excel
PowerPoint
Unemployed
Full-time / Interested in working remotely
6-10 years
輔仁大學
財經法律系
Avatar of Queen R Mastropietro.
Offline
Avatar of Queen R Mastropietro.
Offline
Coding @National Lumber
2016 ~ 2020
More than one year
Sources like blogs, social media, internal programs, systems and databases need to be vetted and consolidated. Verify the Architecture Architecture testing is another essential component of big data testing. Because Big Data architecture contains so many moving parts, each object within the architecture must be verified as a legitimate and integral part of the system. Eliminate Unnecessary Data As the name suggests, Big Data consists of a large number of data. However, not all of that data is actually important to an organization in all cases. That’s why eliminating unnecessary data points is a
Development
Enthusiastic
Advanced Communication Skills
Not open to opportunities
Full-time / Interested in working remotely
4-6 years
High School
12
Avatar of Josepe William.
Avatar of Josepe William.
Paraphrase poem @self-employed
1996 ~ Present
More than one year
has to be expressed through the personal experience. The writer then has to ensure that the Confidence is derived from the combination of ideas and sentences. This is what makes the essay different from the other types of writings that students are used to. Regarding composing a legitimate passage for a published argument, it is essential first to understand exactly why it is a relevant website assignment. One may base their choices on either strength or expertise in the area that they are taking. Ascertain that the points argued in the text should make sense
PowerPoint
Excel
Photoshop
Full-time
4-6 years
National Taipei University of Education
fas

The Most Lightweight and Effective Recruiting Plan

Search resumes and take the initiative to contact job applicants for higher recruiting efficiency. The Choice of Hundreds of Companies.

  • Browse all search results
  • Unlimited access to start new conversations
  • Resumes accessible for only paid companies
  • View users’ email address & phone numbers
Search Tips
1
Search a precise keyword combination
senior backend php
If the number of the search result is not enough, you can remove the less important keywords
2
Use quotes to search for an exact phrase
"business development"
3
Use the minus sign to eliminate results containing certain words
UI designer -UX
Only public resumes are available with the free plan.
Upgrade to an advanced plan to view all search results including tens of thousands of resumes exclusive on CakeResume.

Definition of Reputation Credits

Technical Skills
Specialized knowledge and expertise within the profession (e.g. familiar with SEO and use of related tools).
Problem-Solving
Ability to identify, analyze, and prepare solutions to problems.
Adaptability
Ability to navigate unexpected situations; and keep up with shifting priorities, projects, clients, and technology.
Communication
Ability to convey information effectively and is willing to give and receive feedback.
Time Management
Ability to prioritize tasks based on importance; and have them completed within the assigned timeline.
Teamwork
Ability to work cooperatively, communicate effectively, and anticipate each other's demands, resulting in coordinated collective action.
Leadership
Ability to coach, guide, and inspire a team to achieve a shared goal or outcome effectively.
More than one year
Coder
National Lumber
2016 ~ 2020
Lyndhurst, NJ, USA
Professional Background
Current status
Job Search Progress
Not open to opportunities
Professions
Doctor
Fields of Employment
Accounting
Work experience
4-6 years
Management
I've had experience in managing 5-10 people
Skills
Development
Enthusiastic
Advanced Communication Skills
Information Technology
Dependable
Microsoft Excel
Microsoft Office
Dedicated
Committed
Hardworking
Languages
English
Professional
Job search preferences
Positions
Job types
Full-time
Locations
Remote
Interested in working remotely
Freelance
Yes, I'm currently a full-time freelancer
Educations
School
High School
Major
12
Print

Big Data Testing Best Practices

Big Data Testing Strategy

As the world becomes increasingly interconnected and digitized, big data continues to grow as one of the most critical components in organizations both big and small. In fact, according to recent studies, enterprise data is set to grow by more than 600 percent over the next five years, and the vast majority of Fortune 500 Companies are already using Big Data development as a key element within their respective competitive advantages.

At the same time, the management and development approach necessary to learn about and incorporate Big Data into business is still being fleshed out. Processing the vast data in a meaningful way requires a new approach altogether for many companies.

Why Big Data Testing Is So Important

Big Data is different than traditional data sets, and it requires a substantially distinct method of testing. As the amount of data grows and becomes more complex, big data testing becomes critical for making use of an otherwise overwhelming amount of data.

At the same time, testing big data requires an IT team that understands the ever-changing nuances and complexities in a way that is directly applicable to your organization. Successful big data testing will result in dramatically improved efficiency and returns on investment of said data.

Key Objectives When Testing Big Data Applications

In order to fully understand why Big Data testing is so important, it’s worthwhile to break down the key objectives. The following are five of the key objectives that are looked at when testing big data.

Accumulate and Consolidate Data

Data can come from a variety of sources, and having a strategy to accumulate and consolidate that data is an important first step for some companies like on this website - https://jatapp.com/services/mobile-app-development/. Sources like blogs, social media, internal programs, systems and databases need to be vetted and consolidated.

Verify the Architecture

Architecture testing is another essential component of big data testing. Because Big Data architecture contains so many moving parts, each object within the architecture must be verified as a legitimate and integral part of the system.

Eliminate Unnecessary Data

As the name suggests, Big Data consists of a large number of data. However, not all of that data is actually important to an organization in all cases. That’s why eliminating unnecessary data points is a critical step in the process of creating an effective big data application.

Examples of unnecessary data can be duplicate or redundant data sets, corrupted or unreliable data, and data that does not directly correlate with an organization’s particular strategy or objectives.

Test the Historic and Current Performance of Data

Understanding how data has performed in the past, and how it is likely to perform moving forward, is another key element of effective big data testing. This includes verifying the ability of a big data application to accumulate data from a data source, verifying how well the data can be effectively processed, and verifying how efficiently data is stored and cached within the program.

Technology, Smartphone, Telephone, Touchscreen, Screen

Test Data Transformation

Many times before data gets to the target system, there are multiple transformations, aggregation and calculations performed prior to final transformation. During the testing it is critical to test source to target transformation , i.e. to be able to take a raw data from a source file perform all necessary aggregations/calculations manually and be able to verify that the results that one have gotten using manual data manipulation will match the result during the system transformation from source to target. If you did find an issue, it is critical to isolate it to the specific module where the culprit occurs. 

Big Data Testing Best Practices

In order to effectively achieve the key objectives described above, as well as any other objectives an organization requires, there are several best practices all of which are performed routinely by SQA Solution that ensure the most reliable and efficient results.

Create a Special Test Environment for Big Data Testing

When dealing with a wide range of distinct components, having a dedicated test environment can help prevent core data from being corrupted by the testing process.

Create a Specialized Validation Tool

With older databases, it was sometimes tenable to use a “one size fits all” solution for data testing. However, with big data there are so many variables that creating a specialized validation tool is essential.

Main Components Involved in Big Data Testing

When testing big data systems and applications, there are a few primary components that must be a part of any comprehensive testing process.

Upload and Verify Data

The first component of any comprehensive test is the verification and uploading of data from all of the various sources to an HDFS. That data is then vetted for corruption and partitioned into separate data units.

Condense and Consolidate Data

Once the data is uploaded and partitioned, the next key component is to consolidate the data and eliminate redundancies. This ensures that the data is processed efficiently and accurately.

Output Data and Generate Reports

Once all of the data has been vetted and verified, it can be uploaded into a downstream system, which in turn can be used for the generation of reports and other key insights.

The Importance of Expert-Level Execution

With a growing number of companies utilizing Big Data as one of their core competitive advantages, anything less than expert-level execution can be the difference between success and failure. The team at SQA Solution goes through extensive big data testing training to ensure that they are fully-equipped on all of the best practices needed to properly test big data applications. This high level of training is particularly important because the number of records, as well as the complexity of those records, is only getting more complex with each passing year. For additional information about big data testing, or for any other questions, please contact us at CONTACT INFORMATION.

Resume
Profile

Big Data Testing Best Practices

Big Data Testing Strategy

As the world becomes increasingly interconnected and digitized, big data continues to grow as one of the most critical components in organizations both big and small. In fact, according to recent studies, enterprise data is set to grow by more than 600 percent over the next five years, and the vast majority of Fortune 500 Companies are already using Big Data development as a key element within their respective competitive advantages.

At the same time, the management and development approach necessary to learn about and incorporate Big Data into business is still being fleshed out. Processing the vast data in a meaningful way requires a new approach altogether for many companies.

Why Big Data Testing Is So Important

Big Data is different than traditional data sets, and it requires a substantially distinct method of testing. As the amount of data grows and becomes more complex, big data testing becomes critical for making use of an otherwise overwhelming amount of data.

At the same time, testing big data requires an IT team that understands the ever-changing nuances and complexities in a way that is directly applicable to your organization. Successful big data testing will result in dramatically improved efficiency and returns on investment of said data.

Key Objectives When Testing Big Data Applications

In order to fully understand why Big Data testing is so important, it’s worthwhile to break down the key objectives. The following are five of the key objectives that are looked at when testing big data.

Accumulate and Consolidate Data

Data can come from a variety of sources, and having a strategy to accumulate and consolidate that data is an important first step for some companies like on this website - https://jatapp.com/services/mobile-app-development/. Sources like blogs, social media, internal programs, systems and databases need to be vetted and consolidated.

Verify the Architecture

Architecture testing is another essential component of big data testing. Because Big Data architecture contains so many moving parts, each object within the architecture must be verified as a legitimate and integral part of the system.

Eliminate Unnecessary Data

As the name suggests, Big Data consists of a large number of data. However, not all of that data is actually important to an organization in all cases. That’s why eliminating unnecessary data points is a critical step in the process of creating an effective big data application.

Examples of unnecessary data can be duplicate or redundant data sets, corrupted or unreliable data, and data that does not directly correlate with an organization’s particular strategy or objectives.

Test the Historic and Current Performance of Data

Understanding how data has performed in the past, and how it is likely to perform moving forward, is another key element of effective big data testing. This includes verifying the ability of a big data application to accumulate data from a data source, verifying how well the data can be effectively processed, and verifying how efficiently data is stored and cached within the program.

Technology, Smartphone, Telephone, Touchscreen, Screen

Test Data Transformation

Many times before data gets to the target system, there are multiple transformations, aggregation and calculations performed prior to final transformation. During the testing it is critical to test source to target transformation , i.e. to be able to take a raw data from a source file perform all necessary aggregations/calculations manually and be able to verify that the results that one have gotten using manual data manipulation will match the result during the system transformation from source to target. If you did find an issue, it is critical to isolate it to the specific module where the culprit occurs. 

Big Data Testing Best Practices

In order to effectively achieve the key objectives described above, as well as any other objectives an organization requires, there are several best practices all of which are performed routinely by SQA Solution that ensure the most reliable and efficient results.

Create a Special Test Environment for Big Data Testing

When dealing with a wide range of distinct components, having a dedicated test environment can help prevent core data from being corrupted by the testing process.

Create a Specialized Validation Tool

With older databases, it was sometimes tenable to use a “one size fits all” solution for data testing. However, with big data there are so many variables that creating a specialized validation tool is essential.

Main Components Involved in Big Data Testing

When testing big data systems and applications, there are a few primary components that must be a part of any comprehensive testing process.

Upload and Verify Data

The first component of any comprehensive test is the verification and uploading of data from all of the various sources to an HDFS. That data is then vetted for corruption and partitioned into separate data units.

Condense and Consolidate Data

Once the data is uploaded and partitioned, the next key component is to consolidate the data and eliminate redundancies. This ensures that the data is processed efficiently and accurately.

Output Data and Generate Reports

Once all of the data has been vetted and verified, it can be uploaded into a downstream system, which in turn can be used for the generation of reports and other key insights.

The Importance of Expert-Level Execution

With a growing number of companies utilizing Big Data as one of their core competitive advantages, anything less than expert-level execution can be the difference between success and failure. The team at SQA Solution goes through extensive big data testing training to ensure that they are fully-equipped on all of the best practices needed to properly test big data applications. This high level of training is particularly important because the number of records, as well as the complexity of those records, is only getting more complex with each passing year. For additional information about big data testing, or for any other questions, please contact us at CONTACT INFORMATION.