

Picture by Editor | Gemini & Canva
# Introduction
The Google Gemini 2.5 Flash Picture mannequin, affectionately generally known as Nano Banana, represents a big leap in AI-powered picture manipulation, transferring past the scope of conventional editors. Nano Banana excels at complicated duties corresponding to multi-image composition, conversational refinement, and semantic understanding, permitting it to carry out edits that seamlessly combine new parts and protect photorealistic consistency throughout lighting and texture. This text will function your sensible information to leveraging this highly effective instrument.
Right here, we are going to dive into what Nano Banana is really able to, from its core strengths in visible evaluation to its superior composition strategies. We’ll present important ideas and tips to optimize your workflow and, most significantly, lay out a sequence of instance prompts and prompting methods designed that will help you unlock the mannequin’s full inventive and technical potential to your picture enhancing and technology wants.
# What Nano Banana Can Do
The Google Gemini 2.5 Flash Picture mannequin is ready to carry out complicated picture manipulations that rival or exceed the capabilities of conventional picture editors. These capabilities typically depend on deep semantic understanding, multi-turn dialog, and multi-image synthesis.
Listed below are 5 issues Nano Banana can do this sometimes transcend the scope of standard picture enhancing instruments.
// 1. Multi-Picture Composition and Seamless Digital Attempt-On
The mannequin can use a number of enter pictures as context to generate a single, lifelike composite scene. That is exemplified by its means to carry out superior composition, corresponding to taking a blue floral gown from one picture and having an individual from a second picture realistically put on it, adjusting the lighting and shadows to match a brand new surroundings. Equally, it might take a brand from one picture and place it onto a t-shirt in one other picture, making certain the brand seems naturally printed on the material, following the folds of the shirt.
// 2. Iterative and Conversational Refinement of Edits
In contrast to commonplace editors the place modifications are finalized one step at a time, Nano Banana helps multi-turn conversational enhancing. You possibly can interact in a chat to progressively refine a picture, offering a sequence of instructions to make small changes till the result’s good. For instance, a person can instruct the AI to add a picture of a pink automotive, then in a follow-up immediate, ask to “Flip this automotive right into a convertible,” and subsequently ask, “Now change the colour to yellow,” all conversationally.
// 3. Advanced Conceptual Synthesis and Meta-Narrative Creation
The AI can rework topics into elaborate conceptual artworks that embrace a number of artificial parts and a story layer. An instance of that is the favored development of reworking character pictures right into a 1/7 scale commercialized figurine set inside a desktop workspace, together with producing an expert packaging design and visualizing the 3D modeling course of on a pc display screen throughout the identical picture. This entails synthesizing an entire, extremely detailed fictional surroundings and product ecosystem.
// 4. Semantic Inpainting and Contextually Acceptable Scene Filling
Nano Banana permits for extremely selective, semantic enhancing — aka inpainting — by pure language prompts. A person can instruct the mannequin to vary solely a particular component inside an image (e.g. altering solely a blue couch to a classic, brown leather-based chesterfield couch) whereas preserving every thing else within the room, together with the pillows and the unique lighting. Moreover, when eradicating an undesirable object (like a phone pole), the AI intelligently fills the vacated area with contextually applicable surroundings that matches the surroundings, making certain the ultimate panorama appears pure and seamlessly cleaned up.
// 5. Visible Evaluation and Optimization Options
The mannequin can perform as a visible guide somewhat than simply an editor. It will probably analyze a picture, corresponding to a photograph of a face, and supply visible suggestions with annotations (utilizing a simulated “pink pen”) to indicate areas the place make-up approach, coloration selections, or software strategies may very well be improved, providing constructive strategies for enhancement.
# Nano Banana Suggestions & Tips
Listed below are 5 fascinating ideas and tips that transcend past primary prompting for enhancing and creation for optimizing your workflow and outcomes when utilizing Nano Banana.
// 1. Begin with Excessive-High quality Supply Pictures
The standard of the ultimate edited or generated picture is considerably influenced by the unique picture you present. For the very best outcomes, at all times start with well-lit, clear pictures. When making complicated edits involving particular particulars, corresponding to clothes pleats or character options, the unique pictures must be clear and detailed.
// 2. Handle Advanced Edits Step-by-Step
For intricate or complicated picture enhancing wants, it is suggested to course of the duty in phases somewhat than making an attempt every thing in a single immediate. A advisable workflow entails breaking down the method:
- Step 1: Full primary changes (brightness, distinction, coloration steadiness)
- Step 2: Apply stylization processing (filters, results)
- Step 3: Carry out element optimization (sharpening, noise discount, native changes)
// 3. Apply Iterative Refinement
Don’t anticipate to attain an ideal picture consequence on the very first try. The most effective apply is to interact in multi-turn conversational enhancing and iteratively refine your edits. You need to use subsequent prompts to make small, particular modifications, corresponding to instructing the mannequin to “make the impact extra delicate” or “add heat tones to the highlights”.
// 4. Prioritize Lighting Consistency Throughout Edits
When making use of main transformations, corresponding to altering backgrounds or changing clothes, it’s essential to make sure that the lighting stays constant all through the picture to take care of realism and keep away from an clearly “faux” look. The mannequin should be guided to protect the unique topic shadows and lighting course in order that the topic matches believably into the brand new surroundings.
// 5. Observe Enter and Output Limitations
Preserve sensible limitations in thoughts to streamline your workflow:
- Enter Restrict: The nano banana mannequin works finest when utilizing as much as 3 pictures as enter for duties like superior composition or enhancing.
- Watermarks: All generated pictures created by this mannequin embrace a SynthID watermark
- Clothes compatibility: Clothes substitute works most successfully when the reference picture reveals a brand new garment that has an analogous protection and construction to the unique clothes on the topic
# Prompting Nano Banana
Nano Banana affords superior picture technology and enhancing capabilities, together with text-to-image technology, conversational enhancing (picture + text-to-image), and mixing a number of pictures (multi-image to picture). The important thing to unlocking its performance is utilizing clear, descriptive prompts that adhere to a construction, corresponding to specifying the topic, motion, surroundings, artwork fashion, lighting, and particulars.
Beneath are 5 prompts designed to discover and exhibit the superior performance and creativity of the Nano Banana mannequin.
// 1. Hyper-Life like Surrealism with Targeted Inpainting
This immediate assessments the mannequin’s means to execute hyper-realistic surreal artwork and carry out exact semantic masking (inpainting) whereas sustaining the integrity of key particulars.
- Immediate kind: Picture + text-to-image
- Enter required: Excessive-resolution portrait picture (face clearly seen)
- Performance examined: Inpainting, hyper-realism, element preservation
The immediate:
Utilizing the supplied portrait picture of an individual’s head and shoulders, carry out a hyper-realistic edit. Change solely the topic’s neck and shoulders, changing them with intricate, mechanical clockwork gears made from vintage brass and polished copper. The particular person’s face (eyes, nostril, and impartial expression) should stay utterly untouched and photorealistic. Guarantee the brand new mechanical parts solid lifelike shadows in keeping with the unique picture’s key gentle supply (e.g. top-right studio lighting). Extremely detailed, 8K ultra-realistic rendering of the metallic textures.
This immediate forces the mannequin to deal with the topic as two separate entities: the unchanged face (testing high-fidelity element preservation) and the hyper-realistic new component (testing the flexibility to seamlessly add complicated textures and lifelike physics/lighting, as seen within the liquid physics simulation instance). The requirement to vary solely the neck/shoulders particularly targets the mannequin’s exact inpainting functionality.
Instance enter (left) and output (proper):


Instance output picture: Hyper-realistic surrealism with centered inpainting
// 2. Multi-Modal Product Mockup with Excessive-Constancy Textual content
This immediate demonstrates the flexibility to execute superior composition by combining a number of enter pictures with the mannequin’s core power in rendering correct and legible textual content in pictures.
- Immediate kind: Multi-image to picture
- Enter required: Picture of a glass jar of honey; picture of a minimalist round brand
- Performance examined: Multi-image composition, high-fidelity textual content rendering, product images
The immediate:
Utilizing picture 1 (a glass jar of amber honey) and picture 2 (a minimalist round brand), create a high-resolution, studio-lit product {photograph}. The jar needs to be positioned precariously on the sting of a frozen waterfall cliff at sundown (photorealistic surroundings). The jar’s label should cleanly show the textual content ‘Golden Cascade Honey Co.’ in a daring, elegant sans-serif font. Use delicate, golden hour lighting (8500K coloration temperature) to focus on the graceful texture of the glass and the complicated construction of the ice. The digital camera angle needs to be a low-angle perspective to emphasise the cliff peak. Sq. facet ratio.
The mannequin should efficiently merge the brand onto the jar, place the ensuing product right into a dramatic, new surroundings, and execute particular lighting circumstances (softbox setup, golden hour). Crucially, the demand for particular, branded textual content ensures the AI demonstrates its textual content rendering proficiency.
Instance enter:


Glass jar of amber honey (created with ChatGPT)


Minimalist round brand (created with ChatGPT)
Instance output:


Instance output picture: Multi-modal product mockup with high-fidelity textual content
// 3. Iterative Atmospheric and Temper Refinement (Chat-based Enhancing)
This process simulates a two-step conversational enhancing session, specializing in utilizing coloration grading and atmospheric results to vary the complete emotional temper of an current picture.
- Immediate kind: Multi-turn picture enhancing (chat)
- Enter required: A photograph of a sunny, brightly lit suburban avenue scene
- Performance examined: Iterative refinement, coloration grading, atmospheric results
The primary immediate:
Utilizing the supplied picture of the sunny suburban avenue, dramatically change the background sky (the higher 65% of the body) with layered, deep dark-cumulonimbus clouds. Shift the general coloration grading to a cool, desaturated midnight blue palette (shifting white-balance to 3000K) to create a right away sense of impending hazard and a cinematic, noir temper.
The second immediate:
That is a lot better. Now, preserve the brand new sky and coloration grade, however add a delicate, superb layer of rain and reflective wetness to the road pavement. Introduce a single, harsh, dramatic aspect lighting from digital camera left in a piercing yellow coloration to make the reflections glow and spotlight the topic’s silhouette in opposition to the darkish background. Preserve a 4K photoreal look.
This instance showcases the ability of iterative refinement, the place the mannequin builds upon a earlier complicated edit (sky substitute, coloration shift) with native changes (including rain/reflections) and particular directional lighting. This demonstrates superior management over the visible temper and consistency between turns.
Instance enter:


Picture of a sunny, brightly lit suburban avenue scene (created with ChatGPT)
Instance output from the primary immediate:


Instance output picture: Iterative atmospheric and temper refinement (chat-based enhancing), step 1
Instance output from the second immediate:


Instance output picture: Iterative atmospheric and temper refinement (chat-based enhancing), step 2
// 4. Advanced Character Development and Pose Switch
This immediate assessments the mannequin’s functionality to execute multi-image to picture composition for character creation mixed with pose switch. That is a sophisticated model of clothes/pose swap.
- Immediate kind: Multi-image to picture (composition)
- Enter required: Portrait of a face/headshot; full-body picture exhibiting a particular, dynamic preventing stance pose
- Performance examined: Pose switch, multi-image composition, high-detail costume technology (figurine fashion)
The immediate:
Create a 1/7 scale commercialized figurine of the particular person in picture 1. The determine should undertake the dynamic preventing pose proven in picture 2. Costume the determine in ornate, dieselpunk-style plate armor, etched with complicated clockwork gears and pistons. The armor needs to be rendered in tarnished silver and black leather-based textures. Place the ultimate figurine on a sophisticated, darkish obsidian pedestal in opposition to a misty, industrial metropolis background. Make sure the face from picture 1 is clearly preserved on the determine, sustaining the identical expression. Extremely-realistic, centered depth of area.
This process layers three complicated capabilities: 1) figurine creation (defining scale, base, and industrial aesthetic); 2) pose switch from a separate reference picture; and three) multi-image composition, the place the mannequin pulls the topic’s id (face) from one picture and the physique construction (pose) from one other, integrating them right into a newly generated costume and surroundings.
Instance inputs:


Portrait of a face/headshot


Full-body picture exhibiting a particular, dynamic preventing stance pose (generated with ChatGPT)
Instance output:


Instance output picture: Advanced character building and pose switch
// 5. Technical Evaluation and Stylized Doodle Overlay
This immediate combines the flexibility of the AI to carry out visible evaluation and supply suggestions/annotations with the creation of a stylized inventive overlay.
- Immediate kind: Picture + text-to-image
- Enter required: Detailed technical drawing or blueprint of a machine
- Performance examined: Evaluation, doodle overlay, textual content integration
The immediate:
Analyze the supplied technical drawing of a sophisticated manufacturing facility machine. First, apply a shiny neon-green doodle overlay fashion so as to add massive, playful arrows and sparkle marks declaring 5 distinct, complicated mechanical parts. Subsequent, add enjoyable, daring, hand-written textual content labels above every of the parts, labeling them ‘HYPER-PISTON’, ‘JOHNSON ROD’, ‘ZAPPER COIL’, ‘POWER GLOW’, and ‘FLUX CAPACITOR’. The ensuing picture ought to appear to be a technical diagram crossed with a enjoyable, brightly coloured, tutorial poster with a light-weight and youthful vibe.
The mannequin should first analyze the picture content material (the machine parts) to precisely place the annotations. Then, it should execute a stylized overlay (doodle, neon-green coloration, playful textual content) with out obscuring the core technical diagram, balancing the playful aesthetic with the need of clear, legible textual content integration.
Instance enter:


Technical drawing of a sophisticated manufacturing facility machine (generate with ChatGPT)
Instance output:


Instance output picture: Technical evaluation and stylized doodle overlay
# Wrapping Up
This information has showcased Nano Banana’s superior capabilities, from complicated multi-image composition and semantic inpainting to highly effective iterative enhancing methods. By combining a transparent understanding of the mannequin’s strengths with the specialised prompting strategies we lined, you’ll be able to obtain visible outcomes that have been beforehand unattainable with standard instruments. Embrace the conversational and inventive energy of Nano Banana, and you will find you’ll be able to rework your visible concepts into gorgeous, photorealistic realities.
The sky is the restrict in the case of creativity with this mannequin.
Matthew Mayo (@mattmayo13) holds a grasp’s diploma in laptop science and a graduate diploma in knowledge mining. As managing editor of KDnuggets & Statology, and contributing editor at Machine Studying Mastery, Matthew goals to make complicated knowledge science ideas accessible. His skilled pursuits embrace pure language processing, language fashions, machine studying algorithms, and exploring rising AI. He’s pushed by a mission to democratize data within the knowledge science neighborhood. Matthew has been coding since he was 6 years outdated.