Free YouTube Music accounts are now seeing their access to lyrics limited, according to multiple reports. Google started testing lyrics as an exclusive feature for Premium users in September, but it appears that it’s now receiving a wider rollout. It seems that free users will be limited to viewing lyrics for five songs per month, though we’ve reached out to Google for confirmation.
Once that limit is reached, users will only be able to see the first couple of lines. Everything beyond that will be blurred out, and they’ll be prompted to “Unlock lyrics with Premium.” The banner warning users about their limited lyric views remaining appears prominently when you open the tab, complete with a countdown.
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#YouTube #Music #starts #putting #lyrics #paywall
The updated MacBook Pro, which will keep the 14-inch screen size, will have a design that’s “in line” with what Apple is planning for the touch screen MacBooks it also has in the works, Bloomberg says. Those new touch screen laptops are set to be released between “the end of this year and early next year,” and Bloomberg has previously reported that they will get a Dynamic Island-like pill at the top of the screen.
Apple last updated the base MacBook Pro in October with an M5 chip bump. The company is working on an M6 processor, and Bloomberg says that Apple “finished work months ago” a different base MacBook Pro upgrade that keeps the laptop’s present design and is scheduled to launch this year. Apple will quickly move to the M7 line in 2027, including new Pro and Max chips, Bloomberg previously reported.
As for the iPad Pros, Bloomberg says that they’ll retain 11-inch and 13-inch screens. Apple last updated the iPad Pro line last October with the M5 chip.
The updated MacBook Pro, which will keep the 14-inch screen size, will have a design that’s “in line” with what Apple is planning for the touch screen MacBooks it also has in the works, Bloomberg says. Those new touch screen laptops are set to be released between “the end of this year and early next year,” and Bloomberg has previously reported that they will get a Dynamic Island-like pill at the top of the screen.
Apple last updated the base MacBook Pro in October with an M5 chip bump. The company is working on an M6 processor, and Bloomberg says that Apple “finished work months ago” a different base MacBook Pro upgrade that keeps the laptop’s present design and is scheduled to launch this year. Apple will quickly move to the M7 line in 2027, including new Pro and Max chips, Bloomberg previously reported.
As for the iPad Pros, Bloomberg says that they’ll retain 11-inch and 13-inch screens. Apple last updated the iPad Pro line last October with the M5 chip.
#Apples #entrylevel #MacBook #Pro #redesignApple,Gadgets,iPad,Laptops,News,Tech">Apple’s entry-level MacBook Pro could be up for a redesign
Apple is working on a “revamped” version of its entry-level MacBook Pro that it could launch as soon as the first half of 2027, Bloomberg reports. The company is also testing four new iPad Pros that are set to launch in the spring with a focus on “internal improvements.”
The updated MacBook Pro, which will keep the 14-inch screen size, will have a design that’s “in line” with what Apple is planning for the touch screen MacBooks it also has in the works, Bloomberg says. Those new touch screen laptops are set to be released between “the end of this year and early next year,” and Bloomberg has previously reported that they will get a Dynamic Island-like pill at the top of the screen.
Apple last updated the base MacBook Pro in October with an M5 chip bump. The company is working on an M6 processor, and Bloomberg says that Apple “finished work months ago” a different base MacBook Pro upgrade that keeps the laptop’s present design and is scheduled to launch this year. Apple will quickly move to the M7 line in 2027, including new Pro and Max chips, Bloomberg previously reported.
As for the iPad Pros, Bloomberg says that they’ll retain 11-inch and 13-inch screens. Apple last updated the iPad Pro line last October with the M5 chip.
Turakhia, 46, is no stranger to ambitious enterprise technology bets. Over the past two decades, he has co-founded companies including Directi, Radix, Titan, and banking software firm Zeta, largely backing them with his own cash before bringing in outside investors. He’s doing the same with Neo.
Turakhia told TechCrunch he is bootstrapping this much money because he believes AI marks a technology shift significant enough to justify rebuilding workplace software from scratch.
“If you want to build an iPhone, you can’t take the parts of a Nokia and somehow convert it into an iPhone,” he said.
Launched internally in April this year, Neo is an enterprise work platform that combines project management, documents, file storage, and AI into a single product. The goal, Turakhia said, is to make AI an active participant in day-to-day work rather than just another assistant employees turn to separately.
Turakhia argued most incumbents face a structural disadvantage when adding AI to products designed before generative AI. Neo, he said, was designed from the ground up for AI and is model-agnostic, allowing enterprises to switch between AI models rather than being tied to a single provider.
He’s not alone in thinking this way. Investor Chamath Palihapitiya initially launched enterprise AI coding venture 8090 with his own capital before raising a $135 million funding round this week.
Still, Turakhia’s bet comes as enterprise AI has emerged as one of the most competitive areas in technology. Microsoft, Google, and Salesforce are embedding AI across their workplace software. Meanwhile every startup from the giant labs like Anthropic and OpenAI, to the productivity companies like Notion and Superhuman are racing to reshape how businesses use AI in their daily workflow.
Turakhia argued enterprise software has never been a winner-takes-all market, saying even a small share of global enterprise AI spending would represent a sizeable company.
“Even if we end up with 2% to 5% market share, that’s larger than anything I’ve built so far,” he said.
For the past few months, Neo has been in internal use across Turakhia’s companies, including Zeta. The company plans to begin rolling out the software to mid-sized businesses in the coming months, initially targeting knowledge workers across technology, consulting, and professional services firms.
Turakhia said Neo’s initial platform was built in three months, with AI extensively used in the development process, work he estimates would have taken more than a year with a much larger engineering team before generative AI.
The Bengaluru-based startup currently employs about 45 people, including 18 engineers. Turakhia told TechCrunch that it expects to grow to around 100 employees by the end of the year, with most new hires focused on AI and software engineering.
When you purchase through links in our articles, we may earn a small commission. This doesn’t affect our editorial independence.
Turakhia, 46, is no stranger to ambitious enterprise technology bets. Over the past two decades, he has co-founded companies including Directi, Radix, Titan, and banking software firm Zeta, largely backing them with his own cash before bringing in outside investors. He’s doing the same with Neo.
Turakhia told TechCrunch he is bootstrapping this much money because he believes AI marks a technology shift significant enough to justify rebuilding workplace software from scratch.
“If you want to build an iPhone, you can’t take the parts of a Nokia and somehow convert it into an iPhone,” he said.
Launched internally in April this year, Neo is an enterprise work platform that combines project management, documents, file storage, and AI into a single product. The goal, Turakhia said, is to make AI an active participant in day-to-day work rather than just another assistant employees turn to separately.
Turakhia argued most incumbents face a structural disadvantage when adding AI to products designed before generative AI. Neo, he said, was designed from the ground up for AI and is model-agnostic, allowing enterprises to switch between AI models rather than being tied to a single provider.
He’s not alone in thinking this way. Investor Chamath Palihapitiya initially launched enterprise AI coding venture 8090 with his own capital before raising a $135 million funding round this week.
Still, Turakhia’s bet comes as enterprise AI has emerged as one of the most competitive areas in technology. Microsoft, Google, and Salesforce are embedding AI across their workplace software. Meanwhile every startup from the giant labs like Anthropic and OpenAI, to the productivity companies like Notion and Superhuman are racing to reshape how businesses use AI in their daily workflow.
Turakhia argued enterprise software has never been a winner-takes-all market, saying even a small share of global enterprise AI spending would represent a sizeable company.
“Even if we end up with 2% to 5% market share, that’s larger than anything I’ve built so far,” he said.
For the past few months, Neo has been in internal use across Turakhia’s companies, including Zeta. The company plans to begin rolling out the software to mid-sized businesses in the coming months, initially targeting knowledge workers across technology, consulting, and professional services firms.
Turakhia said Neo’s initial platform was built in three months, with AI extensively used in the development process, work he estimates would have taken more than a year with a much larger engineering team before generative AI.
The Bengaluru-based startup currently employs about 45 people, including 18 engineers. Turakhia told TechCrunch that it expects to grow to around 100 employees by the end of the year, with most new hires focused on AI and software engineering.
When you purchase through links in our articles, we may earn a small commission. This doesn’t affect our editorial independence.
#Indian #tech #tycoon #bets #30M #money #build #alternative #Microsoft #Office #TechCrunchBhavin Turakhia,microsoft office,neo">Indian tech tycoon bets $30M of his own money to build AI alternative to Microsoft Office | TechCrunch
Indian serial entrepreneur Bhavin Turakhia is making a $30 million personal bet that there is still room for another enterprise AI company. His new venture, Neo, is built on a simple premise: workplace software designed before the AI era cannot simply be upgraded with chatbots — it has to be redesigned from the ground up.
Turakhia, 46, is no stranger to ambitious enterprise technology bets. Over the past two decades, he has co-founded companies including Directi, Radix, Titan, and banking software firm Zeta, largely backing them with his own cash before bringing in outside investors. He’s doing the same with Neo.
Turakhia told TechCrunch he is bootstrapping this much money because he believes AI marks a technology shift significant enough to justify rebuilding workplace software from scratch.
“If you want to build an iPhone, you can’t take the parts of a Nokia and somehow convert it into an iPhone,” he said.
Launched internally in April this year, Neo is an enterprise work platform that combines project management, documents, file storage, and AI into a single product. The goal, Turakhia said, is to make AI an active participant in day-to-day work rather than just another assistant employees turn to separately.
Turakhia argued most incumbents face a structural disadvantage when adding AI to products designed before generative AI. Neo, he said, was designed from the ground up for AI and is model-agnostic, allowing enterprises to switch between AI models rather than being tied to a single provider.
He’s not alone in thinking this way. Investor Chamath Palihapitiya initially launched enterprise AI coding venture 8090 with his own capital before raising a $135 million funding round this week.
Still, Turakhia’s bet comes as enterprise AI has emerged as one of the most competitive areas in technology. Microsoft, Google, and Salesforce are embedding AI across their workplace software. Meanwhile every startup from the giant labs like Anthropic and OpenAI, to the productivity companies like Notion and Superhuman are racing to reshape how businesses use AI in their daily workflow.
Turakhia argued enterprise software has never been a winner-takes-all market, saying even a small share of global enterprise AI spending would represent a sizeable company.
“Even if we end up with 2% to 5% market share, that’s larger than anything I’ve built so far,” he said.
For the past few months, Neo has been in internal use across Turakhia’s companies, including Zeta. The company plans to begin rolling out the software to mid-sized businesses in the coming months, initially targeting knowledge workers across technology, consulting, and professional services firms.
Turakhia said Neo’s initial platform was built in three months, with AI extensively used in the development process, work he estimates would have taken more than a year with a much larger engineering team before generative AI.
The Bengaluru-based startup currently employs about 45 people, including 18 engineers. Turakhia told TechCrunch that it expects to grow to around 100 employees by the end of the year, with most new hires focused on AI and software engineering.
When you purchase through links in our articles, we may earn a small commission. This doesn’t affect our editorial independence.
To start with Transkriptor, it does not take more than 1 minute. You can sign up with Google, Microsoft, Apple, or email. Transkriptor leans on a row of recognizable logos, from Pfizer and Tesla to Harvard and Microsoft, to build your trust before using it.
Transkriptor offers a clean, easy-to-navigate dashboard with 5 ways to create a transcript. You can record live audio, upload a file, pull a video from YouTube, join a meeting, and import audio-video files from the cloud. A left rail holds the heavier tools, including text-to-speech, AI content generation, and a calendar for scheduled meetings. The core action is never more than one click; you get transcription without any technical difficulties.
How Accurate is Transkriptor at Converting Speech to Text?
Accuracy is the most important thing, and an honest answer is better than a flawless one. On clean English audio, meaning a single speaker in a quiet room, Transkriptor landed in the high-80s to low-90s percent range in my tests, which matches what independent reviewers report. If you upload a clean 30-minute file, it will take you only a few minutes to check for grammar mistakes, mostly punctuation marks.
I started testing the tool by uploading different audio and video files, and Transkriptor supports a wide range of formats, so I never had to convert the file before uploading.
Audio with background noise and overlapping speakers leads to less accurate transcription. Also, non-native heavy accents reduced accuracy. Transkriptor supports 100+ languages and adds domain-specific vocabulary for medical, legal, and IT terms, which helped with a jargon-heavy recording, though non-English audio was less even than English.
Transkriptor’s editor did the real work. Every line of transcription carries a timestamp and speaker label. You can play back the audio while reading the transcription to ensure everything is up to the point. Additionally, AI chat and summary let you pull a quick recap of the whole conversation. You get richer insights, such as sentiment analysis and speaker talk time, but it is locked behind the Team plan.
Does Transkriptor Handle Zoom, Google Meet, and Teams Meetings?
Yes, Transkriptor handles Zoom, Google Meet, and Teams meetings with ease. You paste the link to add a recording bot to the live call. Or you can connect your Google or Outlook calendar so Transkriptor auto-joins scheduled meetings. I connected my Google Calendar in 2 clicks and set it to auto-detect the platform and record the meeting.
After each call, I got a transcript with speaker labels and an auto-generated summary with action items, which is exactly what a remote team wants from a note-taker. The bot-joins-the-call model is the same approach Otter uses, and Transkriptor matches it while supporting far more languages.
What Does Transkriptor Cost, and How Does It Compare to Otter and Sonix?
To get access to all features, you need to buy a Transkriptor subscription. It’s a limited free tier with a small daily allowance that lets you test it. Lite plan starts at $9.99 per month for 5 hours of transcription. Pro is $19.99 per month or $8.33 per month on annual billing ($99.99 a year) and unlocks 2,400 minutes per month with unlimited files.
Team runs $30 per seat monthly, or $20 per seat on annual billing ($240 a year per seat), adding 3,000 minutes per seat, shared workspaces, call analysis, and custom vocabulary. A custom-priced Business tier is available for larger orgs. Transkriptor is also ISO 27001, SOC 2, and GDPR compliant, which matters for regulated work.
Against the alternative transcription tools, Transkriptor lands in a useful middle ground. Otter is the polished meeting assistant with strong CRM sync, but it transcribes only 6 languages and caps your minutes. Sonix charges per hour and delivers the highest audio accuracy. Here is how the three line up.
Tool
Entry pricing
Languages
Best at
Watch out for
Transkriptor
$9.99/mo, free tier available
100+
Files plus live meeting recordings in one tool
Accuracy dips on noisy or accented audio
Otter
Free, then $8.33/mo annual
6 languages
Live meeting notes and CRM sync
Few languages, strict minute caps
Sonix
$10 per audio hour, pay as you go
50+
High accuracy on clean files
No live meeting recording
Who is Transkriptor Best For?
With Transkriptor, you get a practical mix of transcription, meeting recording, AI summaries, and multilingual support. During my testing, Transkriptor handled clean audio and video files well and integrated smoothly with Zoom, Google Meet, and Teams. It made it easy to turn speech into readable meeting notes and summaries.
While accuracy can vary with heavy background noise or challenging accents, the overall experience is reliable enough for most everyday transcription needs. The combination of 100+ language support, meeting integrations, and competitive pricing gives it a broader feature set than many alternatives.
For students, journalists, podcasters, and remote teams working across multiple languages, Transkriptor is a capable and cost-effective speech-to-text solution.
To start with Transkriptor, it does not take more than 1 minute. You can sign up with Google, Microsoft, Apple, or email. Transkriptor leans on a row of recognizable logos, from Pfizer and Tesla to Harvard and Microsoft, to build your trust before using it.
Transkriptor offers a clean, easy-to-navigate dashboard with 5 ways to create a transcript. You can record live audio, upload a file, pull a video from YouTube, join a meeting, and import audio-video files from the cloud. A left rail holds the heavier tools, including text-to-speech, AI content generation, and a calendar for scheduled meetings. The core action is never more than one click; you get transcription without any technical difficulties.
How Accurate is Transkriptor at Converting Speech to Text?
Accuracy is the most important thing, and an honest answer is better than a flawless one. On clean English audio, meaning a single speaker in a quiet room, Transkriptor landed in the high-80s to low-90s percent range in my tests, which matches what independent reviewers report. If you upload a clean 30-minute file, it will take you only a few minutes to check for grammar mistakes, mostly punctuation marks.
I started testing the tool by uploading different audio and video files, and Transkriptor supports a wide range of formats, so I never had to convert the file before uploading.
Audio with background noise and overlapping speakers leads to less accurate transcription. Also, non-native heavy accents reduced accuracy. Transkriptor supports 100+ languages and adds domain-specific vocabulary for medical, legal, and IT terms, which helped with a jargon-heavy recording, though non-English audio was less even than English.
Transkriptor’s editor did the real work. Every line of transcription carries a timestamp and speaker label. You can play back the audio while reading the transcription to ensure everything is up to the point. Additionally, AI chat and summary let you pull a quick recap of the whole conversation. You get richer insights, such as sentiment analysis and speaker talk time, but it is locked behind the Team plan.
Does Transkriptor Handle Zoom, Google Meet, and Teams Meetings?
Yes, Transkriptor handles Zoom, Google Meet, and Teams meetings with ease. You paste the link to add a recording bot to the live call. Or you can connect your Google or Outlook calendar so Transkriptor auto-joins scheduled meetings. I connected my Google Calendar in 2 clicks and set it to auto-detect the platform and record the meeting.
After each call, I got a transcript with speaker labels and an auto-generated summary with action items, which is exactly what a remote team wants from a note-taker. The bot-joins-the-call model is the same approach Otter uses, and Transkriptor matches it while supporting far more languages.
What Does Transkriptor Cost, and How Does It Compare to Otter and Sonix?
To get access to all features, you need to buy a Transkriptor subscription. It’s a limited free tier with a small daily allowance that lets you test it. Lite plan starts at $9.99 per month for 5 hours of transcription. Pro is $19.99 per month or $8.33 per month on annual billing ($99.99 a year) and unlocks 2,400 minutes per month with unlimited files.
Team runs $30 per seat monthly, or $20 per seat on annual billing ($240 a year per seat), adding 3,000 minutes per seat, shared workspaces, call analysis, and custom vocabulary. A custom-priced Business tier is available for larger orgs. Transkriptor is also ISO 27001, SOC 2, and GDPR compliant, which matters for regulated work.
Against the alternative transcription tools, Transkriptor lands in a useful middle ground. Otter is the polished meeting assistant with strong CRM sync, but it transcribes only 6 languages and caps your minutes. Sonix charges per hour and delivers the highest audio accuracy. Here is how the three line up.
Tool
Entry pricing
Languages
Best at
Watch out for
Transkriptor
$9.99/mo, free tier available
100+
Files plus live meeting recordings in one tool
Accuracy dips on noisy or accented audio
Otter
Free, then $8.33/mo annual
6 languages
Live meeting notes and CRM sync
Few languages, strict minute caps
Sonix
$10 per audio hour, pay as you go
50+
High accuracy on clean files
No live meeting recording
Who is Transkriptor Best For?
With Transkriptor, you get a practical mix of transcription, meeting recording, AI summaries, and multilingual support. During my testing, Transkriptor handled clean audio and video files well and integrated smoothly with Zoom, Google Meet, and Teams. It made it easy to turn speech into readable meeting notes and summaries.
While accuracy can vary with heavy background noise or challenging accents, the overall experience is reliable enough for most everyday transcription needs. The combination of 100+ language support, meeting integrations, and competitive pricing gives it a broader feature set than many alternatives.
For students, journalists, podcasters, and remote teams working across multiple languages, Transkriptor is a capable and cost-effective speech-to-text solution.
#Transkriptor #Review #SpeechtoText #AppAI">Transkriptor Review: Is It the Best Speech-to-Text App?
Manual transcription takes much time that most people do not have. I usually spend hours every week turning interviews and meetings into text, so I tried Transkriptor through a test to see if it could take notes and save me time. Transkriptor is an AI speech-to-text tool. It converts audio and video files into editable transcripts, and it supports 100+ languages. Over a week, I uploaded my clean and slightly messy recordings, ran them against accented audio, and also linked them to Zoom and Google Meet calls.
Here is how Transkriptor does well, where it goes wrong, and who should use it.
How Do You Get Started With Transkriptor?
To start with Transkriptor, it does not take more than 1 minute. You can sign up with Google, Microsoft, Apple, or email. Transkriptor leans on a row of recognizable logos, from Pfizer and Tesla to Harvard and Microsoft, to build your trust before using it.
Transkriptor offers a clean, easy-to-navigate dashboard with 5 ways to create a transcript. You can record live audio, upload a file, pull a video from YouTube, join a meeting, and import audio-video files from the cloud. A left rail holds the heavier tools, including text-to-speech, AI content generation, and a calendar for scheduled meetings. The core action is never more than one click; you get transcription without any technical difficulties.
How Accurate is Transkriptor at Converting Speech to Text?
Accuracy is the most important thing, and an honest answer is better than a flawless one. On clean English audio, meaning a single speaker in a quiet room, Transkriptor landed in the high-80s to low-90s percent range in my tests, which matches what independent reviewers report. If you upload a clean 30-minute file, it will take you only a few minutes to check for grammar mistakes, mostly punctuation marks.
I started testing the tool by uploading different audio and video files, and Transkriptor supports a wide range of formats, so I never had to convert the file before uploading.
Audio with background noise and overlapping speakers leads to less accurate transcription. Also, non-native heavy accents reduced accuracy. Transkriptor supports 100+ languages and adds domain-specific vocabulary for medical, legal, and IT terms, which helped with a jargon-heavy recording, though non-English audio was less even than English.
Transkriptor’s editor did the real work. Every line of transcription carries a timestamp and speaker label. You can play back the audio while reading the transcription to ensure everything is up to the point. Additionally, AI chat and summary let you pull a quick recap of the whole conversation. You get richer insights, such as sentiment analysis and speaker talk time, but it is locked behind the Team plan.
Does Transkriptor Handle Zoom, Google Meet, and Teams Meetings?
Yes, Transkriptor handles Zoom, Google Meet, and Teams meetings with ease. You paste the link to add a recording bot to the live call. Or you can connect your Google or Outlook calendar so Transkriptor auto-joins scheduled meetings. I connected my Google Calendar in 2 clicks and set it to auto-detect the platform and record the meeting.
After each call, I got a transcript with speaker labels and an auto-generated summary with action items, which is exactly what a remote team wants from a note-taker. The bot-joins-the-call model is the same approach Otter uses, and Transkriptor matches it while supporting far more languages.
What Does Transkriptor Cost, and How Does It Compare to Otter and Sonix?
To get access to all features, you need to buy a Transkriptor subscription. It’s a limited free tier with a small daily allowance that lets you test it. Lite plan starts at $9.99 per month for 5 hours of transcription. Pro is $19.99 per month or $8.33 per month on annual billing ($99.99 a year) and unlocks 2,400 minutes per month with unlimited files.
Team runs $30 per seat monthly, or $20 per seat on annual billing ($240 a year per seat), adding 3,000 minutes per seat, shared workspaces, call analysis, and custom vocabulary. A custom-priced Business tier is available for larger orgs. Transkriptor is also ISO 27001, SOC 2, and GDPR compliant, which matters for regulated work.
Against the alternative transcription tools, Transkriptor lands in a useful middle ground. Otter is the polished meeting assistant with strong CRM sync, but it transcribes only 6 languages and caps your minutes. Sonix charges per hour and delivers the highest audio accuracy. Here is how the three line up.
Tool
Entry pricing
Languages
Best at
Watch out for
Transkriptor
$9.99/mo, free tier available
100+
Files plus live meeting recordings in one tool
Accuracy dips on noisy or accented audio
Otter
Free, then $8.33/mo annual
6 languages
Live meeting notes and CRM sync
Few languages, strict minute caps
Sonix
$10 per audio hour, pay as you go
50+
High accuracy on clean files
No live meeting recording
Who is Transkriptor Best For?
With Transkriptor, you get a practical mix of transcription, meeting recording, AI summaries, and multilingual support. During my testing, Transkriptor handled clean audio and video files well and integrated smoothly with Zoom, Google Meet, and Teams. It made it easy to turn speech into readable meeting notes and summaries.
While accuracy can vary with heavy background noise or challenging accents, the overall experience is reliable enough for most everyday transcription needs. The combination of 100+ language support, meeting integrations, and competitive pricing gives it a broader feature set than many alternatives.
For students, journalists, podcasters, and remote teams working across multiple languages, Transkriptor is a capable and cost-effective speech-to-text solution.
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