UX-Designer-Interview-Questions-UXfolio.pdf
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UX-Designer-Interview-Questions-UXfolio.pdf
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π° All Type of Campus Placement Previous Material π°
Contain:- 100+ Companies
SIze 30 GB+
βDownload link:-
https://drive.google.com/drive/folders/1SkCOcAS0Kqvuz-MJkkjbFr1GSue6Ms6m
Contain:- 100+ Companies
SIze 30 GB+
βDownload link:-
https://drive.google.com/drive/folders/1SkCOcAS0Kqvuz-MJkkjbFr1GSue6Ms6m
Data Analysis with Excel
ππ
https://t.iss.one/excel_analyst/2
Power BI DAX Functions
ππ
https://t.iss.one/PowerBI_analyst/2
All about SQL
ππ
https://t.iss.one/sqlanalyst/29
Python for data analysis
ππ
https://t.iss.one/pythonanalyst/26
Statistics Book and other useful resources
ππ
https://t.iss.one/DataAnalystInterview/34
Join channel as per your interest :)
ππ
https://t.iss.one/excel_analyst/2
Power BI DAX Functions
ππ
https://t.iss.one/PowerBI_analyst/2
All about SQL
ππ
https://t.iss.one/sqlanalyst/29
Python for data analysis
ππ
https://t.iss.one/pythonanalyst/26
Statistics Book and other useful resources
ππ
https://t.iss.one/DataAnalystInterview/34
Join channel as per your interest :)
π3
Interview questions asked by top product-based companies.
A friend of mine recently shared their interview journey, and I'd like to pass on what I learned about the data structures and algorithms (DSA) rounds.
π¨πΎβπ» Data Structures: He encountered questions on topics like arrays, strings, matrices, stacks, queues, and different types of linked lists (singly, doubly, and circular).
βΆοΈ Algorithms: He was also interviewed on a wide array of algorithms like linear search, binary search, and sorting algorithms (bubble, quick, merge).
And faced questions on more challenging subjects like Greedy algorithms, Dynamic programming, and Graph algorithms.
π Specifics: The devil lies in the details! His interview also delved into advanced topics such as Advanced Data Structures, Pattern Searching, Recursion, Backtracking, and Divide and Conquer strategies.
However, your ability to apply these concepts to real-world situations will undoubtedly set you apart from others.
On top, If youβre stuck at any of the above questions and need the right guidance in cracking top product-based company interviews,
As a community of tech enthusiasts, let's share our own interview experiences in the comments below. Together, we can learn from each other's experiences.
A friend of mine recently shared their interview journey, and I'd like to pass on what I learned about the data structures and algorithms (DSA) rounds.
π¨πΎβπ» Data Structures: He encountered questions on topics like arrays, strings, matrices, stacks, queues, and different types of linked lists (singly, doubly, and circular).
βΆοΈ Algorithms: He was also interviewed on a wide array of algorithms like linear search, binary search, and sorting algorithms (bubble, quick, merge).
And faced questions on more challenging subjects like Greedy algorithms, Dynamic programming, and Graph algorithms.
π Specifics: The devil lies in the details! His interview also delved into advanced topics such as Advanced Data Structures, Pattern Searching, Recursion, Backtracking, and Divide and Conquer strategies.
However, your ability to apply these concepts to real-world situations will undoubtedly set you apart from others.
On top, If youβre stuck at any of the above questions and need the right guidance in cracking top product-based company interviews,
As a community of tech enthusiasts, let's share our own interview experiences in the comments below. Together, we can learn from each other's experiences.
A%2FB Testing 101 for PMs.pdf
662 KB
AB Testing 101 for PMs.pdf
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Product team cases where a #productteams improved content discovery
Case: Netflix and Personalized Content Recommendations
Problem: Netflix wanted to improve user engagement by enhancing content discovery and reducing churn.
Solution: Using a product outcome mindset, Netflix's product team developed a recommendation algorithm that analyzed user viewing behavior and preferences to offer personalized content suggestions.
Outcome: Netflix saw a significant increase in user engagement, with the personalized recommendations leading to higher watch times and reduced churn.
Learn more: You can read about Netflix's recommendation system in various articles and research papers, such as "Netflix Recommendations: Beyond the 5 stars" (by Netflix).
Case: Spotify and Music Discovery
Problem: Spotify users were overwhelmed by the vast music library and struggled to discover new music.
Solution: Spotify's product team used data-driven insights to create personalized playlists like "Discover Weekly" and "Release Radar," tailored to users' listening habits.
Outcome: The personalized playlists increased user engagement, time spent on the platform, and the likelihood of users discovering and enjoying new music.
Link: Learn more about Spotify's approach to music discovery in articles like "How Spotify Discover Weekly and Release Radar Playlist Work" (by The Verge).
Case: Netflix and Personalized Content Recommendations
Problem: Netflix wanted to improve user engagement by enhancing content discovery and reducing churn.
Solution: Using a product outcome mindset, Netflix's product team developed a recommendation algorithm that analyzed user viewing behavior and preferences to offer personalized content suggestions.
Outcome: Netflix saw a significant increase in user engagement, with the personalized recommendations leading to higher watch times and reduced churn.
Learn more: You can read about Netflix's recommendation system in various articles and research papers, such as "Netflix Recommendations: Beyond the 5 stars" (by Netflix).
Case: Spotify and Music Discovery
Problem: Spotify users were overwhelmed by the vast music library and struggled to discover new music.
Solution: Spotify's product team used data-driven insights to create personalized playlists like "Discover Weekly" and "Release Radar," tailored to users' listening habits.
Outcome: The personalized playlists increased user engagement, time spent on the platform, and the likelihood of users discovering and enjoying new music.
Link: Learn more about Spotify's approach to music discovery in articles like "How Spotify Discover Weekly and Release Radar Playlist Work" (by The Verge).
π4
Product management tools & tech stack
Tools for capturing qualitative user feedback
βͺ Zoom and Chorus.ai for conducting interviews
βͺ Slack, Google Docs, or Notion for making notes of key points and action items
βͺ Zendesk and Intercom for meeting customers where they are
βͺ Saleforce for better understanding the needs and pain points of prospects
Tools for capturing quantitative feedback
βͺ FullStory records how people flow through your product
βͺ Amplitude and Mixpanel help you dive deep into product analytics.
βͺ SurveyMonkey allows you to measure your NPS score, get a sense of product/market fit, and understand how happy/unhappy people are with your product.
Tools for validating the problem
βͺ Miro enables virtual whiteboarding to communicate your ideas visually.
βͺ Loom lets you record a screen capture along with audio, making it easy to walk people through your thinking
Product management tools for exploring the solution space
Tools for ideating solutions
βͺ Figma lets you create interactive prototypes
Tools for prioritizing your work
βͺ Productboard helps you decide which projects and features to move forward with, what sort of timeline to address them in, and how to keep stakeholders in the loop.
Tools for capturing qualitative user feedback
βͺ Zoom and Chorus.ai for conducting interviews
βͺ Slack, Google Docs, or Notion for making notes of key points and action items
βͺ Zendesk and Intercom for meeting customers where they are
βͺ Saleforce for better understanding the needs and pain points of prospects
Tools for capturing quantitative feedback
βͺ FullStory records how people flow through your product
βͺ Amplitude and Mixpanel help you dive deep into product analytics.
βͺ SurveyMonkey allows you to measure your NPS score, get a sense of product/market fit, and understand how happy/unhappy people are with your product.
Tools for validating the problem
βͺ Miro enables virtual whiteboarding to communicate your ideas visually.
βͺ Loom lets you record a screen capture along with audio, making it easy to walk people through your thinking
Product management tools for exploring the solution space
Tools for ideating solutions
βͺ Figma lets you create interactive prototypes
Tools for prioritizing your work
βͺ Productboard helps you decide which projects and features to move forward with, what sort of timeline to address them in, and how to keep stakeholders in the loop.
Hey marketers!
You know what? I just found these stories. I hope it will encourage you as much as they encouraged me.
1.
Walt Disney was rejected before anyone invested in Mickey Mouse
Walt Disney is one of the most creative minds ever, but his creativity wasn't immediately recognized by the world around him. When he was 22, Disney was fired from a Missouri newspaper for his lack of creativity. When he brought the idea of Mickey Mouse to more than 300 investors, they thought it was absurd. Eventually, Disney went on to garner 59 Academy Award nominations and 32 wins, the most by any individual.
2.
The Museum of Modern Art turned down Andy Warhol's gift of a drawing
In 1956, famous pop artist Andy Warhol attempted to gift one of his drawings, "Shoe," to the MoMA in New York. He received a rejection letter, saying the museum did not have space for it. Today, art experts expect Andy Warhol paintings to sell for $50 million at auctions, and the MoMA now has 168 pieces by the artist.
3.
Jim Lee was rejected multiple times by Marvel before being hired as a cartoonist
Today, Jim Lee is known for his legendary comics style, drawing "X-Men" in the 1980s and founding his own comics company, Image Comics. However, Lee sent multiple comic submissions to Marvel and DC before he was hired, and they were all rejected. Lucky for all of us, the cartoonist was eventually hired by Marvel to draw "Double Vision," and his career blossomed from there.
I know itβs not really marketing post. But I want to inspire you to do big things, two of the most important traits to have are perseverance and belief in yourself. These now-legendary creatives received crazy rejections but didn't give up, ultimately climbing to their great levels of success.
Go for it!!!
You know what? I just found these stories. I hope it will encourage you as much as they encouraged me.
1.
Walt Disney was rejected before anyone invested in Mickey Mouse
Walt Disney is one of the most creative minds ever, but his creativity wasn't immediately recognized by the world around him. When he was 22, Disney was fired from a Missouri newspaper for his lack of creativity. When he brought the idea of Mickey Mouse to more than 300 investors, they thought it was absurd. Eventually, Disney went on to garner 59 Academy Award nominations and 32 wins, the most by any individual.
2.
The Museum of Modern Art turned down Andy Warhol's gift of a drawing
In 1956, famous pop artist Andy Warhol attempted to gift one of his drawings, "Shoe," to the MoMA in New York. He received a rejection letter, saying the museum did not have space for it. Today, art experts expect Andy Warhol paintings to sell for $50 million at auctions, and the MoMA now has 168 pieces by the artist.
3.
Jim Lee was rejected multiple times by Marvel before being hired as a cartoonist
Today, Jim Lee is known for his legendary comics style, drawing "X-Men" in the 1980s and founding his own comics company, Image Comics. However, Lee sent multiple comic submissions to Marvel and DC before he was hired, and they were all rejected. Lucky for all of us, the cartoonist was eventually hired by Marvel to draw "Double Vision," and his career blossomed from there.
I know itβs not really marketing post. But I want to inspire you to do big things, two of the most important traits to have are perseverance and belief in yourself. These now-legendary creatives received crazy rejections but didn't give up, ultimately climbing to their great levels of success.
Go for it!!!