Be a part of our every day and weekly newsletters for the newest updates and unique content material on industry-leading AI protection. Be taught Extra
Google’s Gemini sequence of AI giant language fashions (LLMs) began off tough almost a yr in the past with some embarrassing incidents of picture era gone awry, nevertheless it has steadily improved since then, and the corporate seems to be intent on making its second-generation effort — Gemini 2.0 — the largest and greatest but for customers and enterprises.
Right now, the corporate introduced the final launch of Gemini 2.0 Flash, launched Gemini 2.0 Flash-Lite, and rolled out an experimental model of Gemini 2.0 Professional.
These fashions, designed to assist builders and companies, are actually accessible via Google AI Studio and Vertex AI, with Flash-Lite in public preview and Professional obtainable for early testing.
“All of those fashions will function multimodal enter with textual content output on launch, with extra modalities prepared for common availability within the coming months,” Koray Kavukcuoglu, CTO of Google DeepMind, wrote within the firm’s announcement weblog put up — showcasing a bonus Google is bringing to the desk at the same time as rivals similar to DeepSeek and OpenAI proceed to launch highly effective rivals.
Google performs to its multimodal strenghts
Neither DeepSeek-R1 nor OpenAI’s new o3-mini mannequin can settle for multimodal inputs — that’s, photos and file uploads or attachments.
Whereas R1 can settle for them on its web site and cell app chat, The mannequin performs optical character recognition (OCR) a greater than 60-year-old know-how, to extract the textual content solely from these uploads — not truly understanding or analyzing any of the opposite options contained therein.
Nonetheless, each are a brand new class of “reasoning” fashions that intentionally take extra time to assume via solutions and replicate on “chains-of-thought” and the correctness of their responses. That’s against typical LLMs just like the Gemini 2.0 professional sequence, so the comparability between Gemini 2.0, DeepSeek-R1 and OpenAI o3 is a little bit of an apples-to-oranges.
However there was some information on the reasoning entrance in the present day from Google, too: Google CEO Sundar Pichai took to the social community X to declare that the Google Gemini cell app for iOS and Android has been up to date with Google’s personal rival reasoning mannequin Gemini 2.0 Flash Pondering. The mannequin might be linked to Google Maps, YouTube and Google Search, permitting for a complete new vary of AI-powered analysis and interactions that merely can’t be matched by upstarts with out such providers like DeepSeek and OpenAI.
I attempted it briefly on the Google Gemini iOS app on my iPhone whereas penning this piece, and it was spectacular primarily based on my preliminary queries, pondering via the commonalities of the highest 10 hottest YouTube movies of the final month and in addition offering me a desk of close by medical doctors’ places of work and opening/closing hours, all inside seconds.
![](https://venturebeat.com/wp-content/uploads/2025/02/IMG_1568.png?w=276)
![](https://venturebeat.com/wp-content/uploads/2025/02/IMG_1571.png?w=276)
![](https://venturebeat.com/wp-content/uploads/2025/02/IMG_1575_e5459f.png?w=276)
Gemini 2.0 Flash enters common launch
The Gemini 2.0 Flash mannequin, initially launched as an experimental model in December, is now production-ready.
Designed for high-efficiency AI purposes, it offers low-latency responses and helps large-scale multimodal reasoning.
One main profit over the competitors is in its context window, or the variety of tokens that the consumer can add within the type of a immediate and obtain again in a single back-and-forth interplay with an LLM-powered chatbot or software programming interface (API).
Whereas many main fashions, similar to OpenAI’s new o3-mini that debuted final week, solely assist 200,000 or fewer tokens — concerning the equal of a 400 to 500 web page novel — Gemini 2.0 Flash helps 1 million, that means it’s is able to dealing with huge quantities of data, making it significantly helpful for high-frequency and large-scale duties.
Gemini 2.0 Flash-Lite arrives to bend the price curve to the bottom but
Gemini 2.0 Flash-Lite, in the meantime, is an all-new LLM geared toward offering a cheap AI resolution with out compromising on high quality.
Google DeepMind states that Flash-Lite outperforms its full-size (bigger parameter-count) predecessor, Gemini 1.5 Flash, on third-party benchmarks similar to MMLU Professional (77.6% vs. 67.3%) and Fowl SQL programming (57.4% vs. 45.6%), whereas sustaining the identical pricing and velocity.
It additionally helps multimodal enter and incorporates a context window of 1 million tokens, just like the complete Flash mannequin.
At present, Flash-Lite is obtainable in public preview via Google AI Studio and Vertex AI, with common availability anticipated within the coming weeks.
As proven within the desk under, Gemini 2.0 Flash-Lite is priced at $0.075 per million tokens (enter) and $0.30 per million tokens (output). Flash-Lite is positioned as a extremely inexpensive possibility for builders, outperforming Gemini 1.5 Flash throughout most benchmarks whereas sustaining the identical price construction.
![](https://venturebeat.com/wp-content/uploads/2025/02/GjCemCUW4AEUCHT.jpg?w=800)
Logan Kilpatrick highlighted the affordability and worth of the fashions, stating on X: “Gemini 2.0 Flash is the very best worth prop of any LLM, it’s time to construct!”
Certainly, in comparison with different main conventional LLMs obtainable by way of supplier API, similar to OpenAI 4o-mini ($0.15/$0.6 per 1 million tokens in/out), Anthropic Claude ($0.8/$4! per 1M in/out) and even DeepSeek’s conventional LLM V3 ($0.14/$0.28), in Gemini 2.0 Flash seems to be the very best bang for the buck.
Gemini 2.0 Professional arrives in experimental availability with 2-million token context window
For customers requiring extra superior AI capabilities, the Gemini 2.0 Professional (experimental) mannequin is now obtainable for testing.
Google DeepMind describes this as its strongest mannequin for coding efficiency and the power to deal with complicated prompts. It incorporates a 2 million-token context window and improved reasoning capabilities, with the power to combine exterior instruments like Google Search and code execution.
Sam Witteveen, co-founder and CEO of Purple Dragon AI and an exterior Google developer knowledgeable for machine studying who typically companions with VentureBeat, mentioned the Professional mannequin in a YouTube overview. “The brand new Gemini 2.0 Professional mannequin has a two-million-token context window, helps instruments, code execution, operate calling and grounding with Google Search — every little thing we had in Professional 1.5, however improved.”
He additionally famous of Google’s iterative method to AI growth: “One of many key variations in Google’s technique is that they launch experimental variations of fashions earlier than they go GA (typically accessible), permitting for speedy iteration primarily based on suggestions.”
Efficiency benchmarks additional illustrate the capabilities of the Gemini 2.0 mannequin household. Gemini 2.0 Professional, as an example, outperforms Flash and Flash-Lite throughout duties like reasoning, multilingual understanding and long-context processing.
![](https://venturebeat.com/wp-content/uploads/2025/02/image6.original_JY99INi-1.png?w=512)
AI security and future developments
Alongside these updates, Google DeepMind is implementing new security and safety measures for its Gemini 2.0 fashions. The corporate is leveraging reinforcement studying strategies to enhance response accuracy, utilizing AI to critique and refine its personal outputs. Moreover, automated safety testing is getting used to establish vulnerabilities, together with oblique immediate injection threats.
Trying forward, Google DeepMind plans to increase the capabilities of the Gemini 2.0 mannequin household, with extra modalities past textual content anticipated to develop into typically obtainable within the coming months.
With these updates, Google is reinforcing its push into AI growth, providing a variety of fashions designed for effectivity, affordability and superior problem-solving, and answering the rise of DeepSeek with its personal suite of fashions starting from highly effective to very highly effective and very inexpensive to barely much less (however nonetheless significantly) inexpensive.
Will or not it’s sufficient to assist Google eat into among the enterprise AI market, which was as soon as dominated by OpenAI and has now been upended by DeepSeek? We’ll maintain monitoring and allow you to know!